from __future__ import annotations import sys import tempfile from argparse import Namespace from collections import defaultdict from pathlib import Path import pytest from codeflash.code_utils.code_extractor import GlobalAssignmentCollector, add_global_assignments from codeflash.code_utils.code_replacer import replace_functions_and_add_imports from codeflash.discovery.functions_to_optimize import FunctionToOptimize from codeflash.languages.python.context.code_context_extractor import ( enrich_testgen_context, get_code_optimization_context, ) from codeflash.models.models import CodeString, CodeStringsMarkdown, FunctionParent from codeflash.optimization.optimizer import Optimizer class HelperClass: def __init__(self, name): self.name = name def innocent_bystander(self): pass def helper_method(self): return self.name class NestedClass: def __init__(self, name): self.name = name def nested_method(self): return self.name def main_method(): return "hello" class MainClass: def __init__(self, name): self.name = name def main_method(self): self.name = HelperClass.NestedClass("test").nested_method() return HelperClass(self.name).helper_method() class Graph: def __init__(self, vertices): self.graph = defaultdict(list) self.V = vertices # No. of vertices def addEdge(self, u, v): self.graph[u].append(v) def topologicalSortUtil(self, v, visited, stack): visited[v] = True for i in self.graph[v]: if visited[i] == False: self.topologicalSortUtil(i, visited, stack) stack.insert(0, v) def topologicalSort(self): visited = [False] * self.V stack = [] for i in range(self.V): if visited[i] == False: self.topologicalSortUtil(i, visited, stack) # Print contents of stack return stack def test_code_replacement10() -> None: file_path = Path(__file__).resolve() func_top_optimize = FunctionToOptimize( function_name="main_method", file_path=file_path, parents=[FunctionParent("MainClass", "ClassDef")] ) code_ctx = get_code_optimization_context(function_to_optimize=func_top_optimize, project_root_path=file_path.parent) qualified_names = {func.qualified_name for func in code_ctx.helper_functions} # HelperClass.__init__ is now tracked because HelperClass(self.name) instantiates the class assert qualified_names == { "HelperClass.helper_method", "HelperClass.__init__", } # Nested method should not be in here read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_write_context = f""" ```python:{file_path.relative_to(file_path.parent)} from __future__ import annotations class HelperClass: def __init__(self, name): self.name = name def helper_method(self): return self.name class MainClass: def __init__(self, name): self.name = name def main_method(self): self.name = HelperClass.NestedClass("test").nested_method() return HelperClass(self.name).helper_method() ``` """ expected_read_only_context = """ """ expected_hashing_context = f""" ```python:{file_path.relative_to(file_path.parent)} class HelperClass: def helper_method(self): return self.name class MainClass: def main_method(self): self.name = HelperClass.NestedClass('test').nested_method() return HelperClass(self.name).helper_method() ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_class_method_dependencies() -> None: file_path = Path(__file__).resolve() function_to_optimize = FunctionToOptimize( function_name="topologicalSort", file_path=str(file_path), parents=[FunctionParent(name="Graph", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, file_path.parent.resolve()) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_write_context = f""" ```python:{file_path.relative_to(file_path.parent)} from __future__ import annotations from collections import defaultdict class Graph: def __init__(self, vertices): self.graph = defaultdict(list) self.V = vertices # No. of vertices def topologicalSortUtil(self, v, visited, stack): visited[v] = True for i in self.graph[v]: if visited[i] == False: self.topologicalSortUtil(i, visited, stack) stack.insert(0, v) def topologicalSort(self): visited = [False] * self.V stack = [] for i in range(self.V): if visited[i] == False: self.topologicalSortUtil(i, visited, stack) # Print contents of stack return stack ``` """ expected_read_only_context = "" expected_hashing_context = f""" ```python:{file_path.relative_to(file_path.parent.resolve())} class Graph: def topologicalSortUtil(self, v, visited, stack): visited[v] = True for i in self.graph[v]: if visited[i] == False: self.topologicalSortUtil(i, visited, stack) stack.insert(0, v) def topologicalSort(self): visited = [False] * self.V stack = [] for i in range(self.V): if visited[i] == False: self.topologicalSortUtil(i, visited, stack) return stack ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_bubble_sort_helper() -> None: path_to_fto = ( Path(__file__).resolve().parent.parent / "code_to_optimize" / "code_directories" / "retriever" / "bubble_sort_imported.py" ) function_to_optimize = FunctionToOptimize( function_name="sort_from_another_file", file_path=str(path_to_fto), parents=[], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, Path(__file__).resolve().parent.parent) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_write_context = """ ```python:code_to_optimize/code_directories/retriever/bubble_sort_with_math.py import math def sorter(arr): arr.sort() x = math.sqrt(2) print(x) return arr ``` ```python:code_to_optimize/code_directories/retriever/bubble_sort_imported.py from bubble_sort_with_math import sorter def sort_from_another_file(arr): sorted_arr = sorter(arr) return sorted_arr ``` """ expected_read_only_context = "" expected_hashing_context = """ ```python:code_to_optimize/code_directories/retriever/bubble_sort_with_math.py def sorter(arr): arr.sort() x = math.sqrt(2) print(x) return arr ``` ```python:code_to_optimize/code_directories/retriever/bubble_sort_imported.py def sort_from_another_file(arr): sorted_arr = sorter(arr) return sorted_arr ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_flavio_typed_code_helper(tmp_path: Path) -> None: code = ''' _P = ParamSpec("_P") _KEY_T = TypeVar("_KEY_T") _STORE_T = TypeVar("_STORE_T") class AbstractCacheBackend(CacheBackend, Protocol[_KEY_T, _STORE_T]): """Interface for cache backends used by the persistent cache decorator.""" def __init__(self) -> None: ... def hash_key( self, *, func: Callable[_P, Any], args: tuple[Any, ...], kwargs: dict[str, Any], ) -> tuple[str, _KEY_T]: ... def encode(self, *, data: Any) -> _STORE_T: # noqa: ANN401 ... def decode(self, *, data: _STORE_T) -> Any: # noqa: ANN401 ... def get(self, *, key: tuple[str, _KEY_T]) -> tuple[datetime.datetime, _STORE_T] | None: ... def delete(self, *, key: tuple[str, _KEY_T]) -> None: ... def put(self, *, key: tuple[str, _KEY_T], data: _STORE_T) -> None: ... def get_cache_or_call( self, *, func: Callable[_P, Any], args: tuple[Any, ...], kwargs: dict[str, Any], lifespan: datetime.timedelta, ) -> Any: # noqa: ANN401 """ Retrieve the cached results for a function call. Args: ---- func (Callable[..., _R]): The function to retrieve cached results for. args (tuple[Any, ...]): The positional arguments passed to the function. kwargs (dict[str, Any]): The keyword arguments passed to the function. lifespan (datetime.timedelta): The maximum age of the cached results. Returns: ------- _R: The cached results, if available. """ if os.environ.get("NO_CACHE"): return func(*args, **kwargs) try: key = self.hash_key(func=func, args=args, kwargs=kwargs) except: # noqa: E722 # If we can't create a cache key, we should just call the function. logging.warning("Failed to hash cache key for function: %s", func) return func(*args, **kwargs) result_pair = self.get(key=key) if result_pair is not None: cached_time, result = result_pair if not os.environ.get("RE_CACHE") and ( datetime.datetime.now() < (cached_time + lifespan) # noqa: DTZ005 ): try: return self.decode(data=result) except CacheBackendDecodeError as e: logging.warning("Failed to decode cache data: %s", e) # If decoding fails we will treat this as a cache miss. # This might happens if underlying class definition of the data changes. self.delete(key=key) result = func(*args, **kwargs) try: self.put(key=key, data=self.encode(data=result)) except CacheBackendEncodeError as e: logging.warning("Failed to encode cache data: %s", e) # If encoding fails, we should still return the result. return result _P = ParamSpec("_P") _R = TypeVar("_R") _CacheBackendT = TypeVar("_CacheBackendT", bound=CacheBackend) class _PersistentCache(Generic[_P, _R, _CacheBackendT]): """ A decorator class that provides persistent caching functionality for a function. Args: ---- func (Callable[_P, _R]): The function to be decorated. duration (datetime.timedelta): The duration for which the cached results should be considered valid. backend (_backend): The backend storage for the cached results. Attributes: ---------- __wrapped__ (Callable[_P, _R]): The wrapped function. __duration__ (datetime.timedelta): The duration for which the cached results should be considered valid. __backend__ (_backend): The backend storage for the cached results. """ # noqa: E501 __wrapped__: Callable[_P, _R] __duration__: datetime.timedelta __backend__: _CacheBackendT def __init__( self, func: Callable[_P, _R], duration: datetime.timedelta, ) -> None: self.__wrapped__ = func self.__duration__ = duration self.__backend__ = AbstractCacheBackend() functools.update_wrapper(self, func) def cache_clear(self) -> None: """Clears the cache for the wrapped function.""" self.__backend__.del_func_cache(func=self.__wrapped__) def no_cache_call(self, *args: _P.args, **kwargs: _P.kwargs) -> _R: """ Calls the wrapped function without using the cache. Args: ---- *args (_P.args): Positional arguments for the wrapped function. **kwargs (_P.kwargs): Keyword arguments for the wrapped function. Returns: ------- _R: The result of the wrapped function. """ return self.__wrapped__(*args, **kwargs) def __call__(self, *args: _P.args, **kwargs: _P.kwargs) -> _R: """ Calls the wrapped function, either using the cache or bypassing it based on environment variables. Args: ---- *args (_P.args): Positional arguments for the wrapped function. **kwargs (_P.kwargs): Keyword arguments for the wrapped function. Returns: ------- _R: The result of the wrapped function. """ # noqa: E501 if "NO_CACHE" in os.environ: return self.__wrapped__(*args, **kwargs) os.makedirs(DEFAULT_CACHE_LOCATION, exist_ok=True) return self.__backend__.get_cache_or_call( func=self.__wrapped__, args=args, kwargs=kwargs, lifespan=self.__duration__, ) ''' # Create a temporary Python file using pytest's tmp_path fixture file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") opt = Optimizer( Namespace( project_root=file_path.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize = FunctionToOptimize( function_name="__call__", file_path=file_path, parents=[FunctionParent(name="_PersistentCache", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, opt.args.project_root) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_write_context = f""" ```python:{file_path.relative_to(opt.args.project_root)} _P = ParamSpec("_P") _KEY_T = TypeVar("_KEY_T") _STORE_T = TypeVar("_STORE_T") class AbstractCacheBackend(CacheBackend, Protocol[_KEY_T, _STORE_T]): def __init__(self) -> None: ... def get_cache_or_call( self, *, func: Callable[_P, Any], args: tuple[Any, ...], kwargs: dict[str, Any], lifespan: datetime.timedelta, ) -> Any: # noqa: ANN401 \"\"\" Retrieve the cached results for a function call. Args: ---- func (Callable[..., _R]): The function to retrieve cached results for. args (tuple[Any, ...]): The positional arguments passed to the function. kwargs (dict[str, Any]): The keyword arguments passed to the function. lifespan (datetime.timedelta): The maximum age of the cached results. Returns: ------- _R: The cached results, if available. \"\"\" if os.environ.get("NO_CACHE"): return func(*args, **kwargs) try: key = self.hash_key(func=func, args=args, kwargs=kwargs) except: # noqa: E722 # If we can't create a cache key, we should just call the function. logging.warning("Failed to hash cache key for function: %s", func) return func(*args, **kwargs) result_pair = self.get(key=key) if result_pair is not None: cached_time, result = result_pair if not os.environ.get("RE_CACHE") and ( datetime.datetime.now() < (cached_time + lifespan) # noqa: DTZ005 ): try: return self.decode(data=result) except CacheBackendDecodeError as e: logging.warning("Failed to decode cache data: %s", e) # If decoding fails we will treat this as a cache miss. # This might happens if underlying class definition of the data changes. self.delete(key=key) result = func(*args, **kwargs) try: self.put(key=key, data=self.encode(data=result)) except CacheBackendEncodeError as e: logging.warning("Failed to encode cache data: %s", e) # If encoding fails, we should still return the result. return result _P = ParamSpec("_P") _R = TypeVar("_R") _CacheBackendT = TypeVar("_CacheBackendT", bound=CacheBackend) class _PersistentCache(Generic[_P, _R, _CacheBackendT]): def __init__( self, func: Callable[_P, _R], duration: datetime.timedelta, ) -> None: self.__wrapped__ = func self.__duration__ = duration self.__backend__ = AbstractCacheBackend() functools.update_wrapper(self, func) def __call__(self, *args: _P.args, **kwargs: _P.kwargs) -> _R: \"\"\" Calls the wrapped function, either using the cache or bypassing it based on environment variables. Args: ---- *args (_P.args): Positional arguments for the wrapped function. **kwargs (_P.kwargs): Keyword arguments for the wrapped function. Returns: ------- _R: The result of the wrapped function. \"\"\" # noqa: E501 if "NO_CACHE" in os.environ: return self.__wrapped__(*args, **kwargs) os.makedirs(DEFAULT_CACHE_LOCATION, exist_ok=True) return self.__backend__.get_cache_or_call( func=self.__wrapped__, args=args, kwargs=kwargs, lifespan=self.__duration__, ) ``` """ expected_read_only_context = f''' ```python:{file_path.relative_to(opt.args.project_root)} _P = ParamSpec("_P") _KEY_T = TypeVar("_KEY_T") _STORE_T = TypeVar("_STORE_T") class AbstractCacheBackend(CacheBackend, Protocol[_KEY_T, _STORE_T]): """Interface for cache backends used by the persistent cache decorator.""" def __init__(self) -> None: ... def hash_key( self, *, func: Callable[_P, Any], args: tuple[Any, ...], kwargs: dict[str, Any], ) -> tuple[str, _KEY_T]: ... def encode(self, *, data: Any) -> _STORE_T: # noqa: ANN401 ... def decode(self, *, data: _STORE_T) -> Any: # noqa: ANN401 ... def get(self, *, key: tuple[str, _KEY_T]) -> tuple[datetime.datetime, _STORE_T] | None: ... def delete(self, *, key: tuple[str, _KEY_T]) -> None: ... def put(self, *, key: tuple[str, _KEY_T], data: _STORE_T) -> None: ... _P = ParamSpec("_P") _R = TypeVar("_R") _CacheBackendT = TypeVar("_CacheBackendT", bound=CacheBackend) class _PersistentCache(Generic[_P, _R, _CacheBackendT]): """ A decorator class that provides persistent caching functionality for a function. Args: ---- func (Callable[_P, _R]): The function to be decorated. duration (datetime.timedelta): The duration for which the cached results should be considered valid. backend (_backend): The backend storage for the cached results. Attributes: ---------- __wrapped__ (Callable[_P, _R]): The wrapped function. __duration__ (datetime.timedelta): The duration for which the cached results should be considered valid. __backend__ (_backend): The backend storage for the cached results. """ # noqa: E501 __wrapped__: Callable[_P, _R] __duration__: datetime.timedelta __backend__: _CacheBackendT ``` ''' expected_hashing_context = f""" ```python:{file_path.relative_to(opt.args.project_root)} class AbstractCacheBackend(CacheBackend, Protocol[_KEY_T, _STORE_T]): def get_cache_or_call(self, *, func: Callable[_P, Any], args: tuple[Any, ...], kwargs: dict[str, Any], lifespan: datetime.timedelta) -> Any: if os.environ.get('NO_CACHE'): return func(*args, **kwargs) try: key = self.hash_key(func=func, args=args, kwargs=kwargs) except: logging.warning('Failed to hash cache key for function: %s', func) return func(*args, **kwargs) result_pair = self.get(key=key) if result_pair is not None: {"cached_time, result = result_pair" if sys.version_info >= (3, 11) else "(cached_time, result) = result_pair"} if not os.environ.get('RE_CACHE') and datetime.datetime.now() < cached_time + lifespan: try: return self.decode(data=result) except CacheBackendDecodeError as e: logging.warning('Failed to decode cache data: %s', e) self.delete(key=key) result = func(*args, **kwargs) try: self.put(key=key, data=self.encode(data=result)) except CacheBackendEncodeError as e: logging.warning('Failed to encode cache data: %s', e) return result class _PersistentCache(Generic[_P, _R, _CacheBackendT]): def __call__(self, *args: _P.args, **kwargs: _P.kwargs) -> _R: if 'NO_CACHE' in os.environ: return self.__wrapped__(*args, **kwargs) os.makedirs(DEFAULT_CACHE_LOCATION, exist_ok=True) return self.__backend__.get_cache_or_call(func=self.__wrapped__, args=args, kwargs=kwargs, lifespan=self.__duration__) ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_example_class(tmp_path: Path) -> None: code = """ class MyClass: \"\"\"A class with a helper method.\"\"\" def __init__(self): self.x = 1 def target_method(self): y = HelperClass().helper_method() class HelperClass: \"\"\"A helper class for MyClass.\"\"\" def __init__(self): \"\"\"Initialize the HelperClass.\"\"\" self.x = 1 def __repr__(self): \"\"\"Return a string representation of the HelperClass.\"\"\" return "HelperClass" + str(self.x) def helper_method(self): return self.x """ # Create a temporary Python file using pytest's tmp_path fixture file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") opt = Optimizer( Namespace( project_root=file_path.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize = FunctionToOptimize( function_name="target_method", file_path=file_path, parents=[FunctionParent(name="MyClass", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, opt.args.project_root) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_write_context = f""" ```python:{file_path.relative_to(opt.args.project_root)} class MyClass: def __init__(self): self.x = 1 def target_method(self): y = HelperClass().helper_method() class HelperClass: def __init__(self): \"\"\"Initialize the HelperClass.\"\"\" self.x = 1 def helper_method(self): return self.x ``` """ expected_read_only_context = f""" ```python:{file_path.relative_to(opt.args.project_root)} class MyClass: \"\"\"A class with a helper method.\"\"\" class HelperClass: \"\"\"A helper class for MyClass.\"\"\" def __repr__(self): \"\"\"Return a string representation of the HelperClass.\"\"\" return "HelperClass" + str(self.x) ``` """ expected_hashing_context = f""" ```python:{file_path.relative_to(opt.args.project_root)} class MyClass: def target_method(self): y = HelperClass().helper_method() class HelperClass: def helper_method(self): return self.x ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_example_class_token_limit_3(tmp_path: Path) -> None: string_filler = " ".join( ["This is a long string that will be used to fill up the token limit." for _ in range(1000)] ) code = f""" class MyClass: \"\"\"A class with a helper method. \"\"\" def __init__(self): self.x = 1 def target_method(self): \"\"\"{string_filler}\"\"\" y = HelperClass().helper_method() class HelperClass: \"\"\"A helper class for MyClass.\"\"\" def __init__(self): \"\"\"Initialize the HelperClass.\"\"\" self.x = 1 def __repr__(self): \"\"\"Return a string representation of the HelperClass.\"\"\" return "HelperClass" + str(self.x) def helper_method(self): return self.x """ # Create a temporary Python file using pytest's tmp_path fixture file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") opt = Optimizer( Namespace( project_root=file_path.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize = FunctionToOptimize( function_name="target_method", file_path=file_path, parents=[FunctionParent(name="MyClass", type="ClassDef")], starting_line=None, ending_line=None, ) # In this scenario, the read-writable code is too long, so we abort. with pytest.raises(ValueError, match="Read-writable code has exceeded token limit, cannot proceed"): get_code_optimization_context(function_to_optimize, opt.args.project_root, optim_token_limit=8000) def test_example_class_token_limit_4(tmp_path: Path) -> None: string_filler = " ".join( ["This is a long string that will be used to fill up the token limit." for _ in range(1000)] ) code = f""" class MyClass: \"\"\"A class with a helper method. \"\"\" def __init__(self): global x x = 1 def target_method(self): \"\"\"Docstring for target method\"\"\" y = HelperClass().helper_method() x = '{string_filler}' class HelperClass: \"\"\"A helper class for MyClass.\"\"\" def __init__(self): \"\"\"Initialize the HelperClass.\"\"\" self.x = 1 def __repr__(self): \"\"\"Return a string representation of the HelperClass.\"\"\" return "HelperClass" + str(self.x) def helper_method(self): return self.x """ # Create a temporary Python file using pytest's tmp_path fixture file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") opt = Optimizer( Namespace( project_root=file_path.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize = FunctionToOptimize( function_name="target_method", file_path=file_path, parents=[FunctionParent(name="MyClass", type="ClassDef")], starting_line=None, ending_line=None, ) # In this scenario, the read-writable code context becomes too large because the __init__ function is referencing the global x variable instead of the class attribute self.x, so we abort. with pytest.raises(ValueError, match="Read-writable code has exceeded token limit, cannot proceed"): get_code_optimization_context(function_to_optimize, opt.args.project_root, optim_token_limit=8000) def test_example_class_token_limit_5(tmp_path: Path) -> None: string_filler = " ".join( ["This is a long string that will be used to fill up the token limit." for _ in range(1000)] ) code = f""" class MyClass: \"\"\"A class with a helper method. \"\"\" def __init__(self): self.x = 1 def target_method(self): \"\"\"Docstring for target method\"\"\" y = HelperClass().helper_method() x = '{string_filler}' class HelperClass: \"\"\"A helper class for MyClass.\"\"\" def __init__(self): \"\"\"Initialize the HelperClass.\"\"\" self.x = 1 def __repr__(self): \"\"\"Return a string representation of the HelperClass.\"\"\" return "HelperClass" + str(self.x) def helper_method(self): return self.x """ # Create a temporary Python file using pytest's tmp_path fixture file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") opt = Optimizer( Namespace( project_root=file_path.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize = FunctionToOptimize( function_name="target_method", file_path=file_path, parents=[FunctionParent(name="MyClass", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, opt.args.project_root) # the global x variable shouldn't be included in any context type assert ( code_ctx.read_writable_code.flat == '''# file: test_code.py class MyClass: def __init__(self): self.x = 1 def target_method(self): """Docstring for target method""" y = HelperClass().helper_method() class HelperClass: def __init__(self): """Initialize the HelperClass.""" self.x = 1 def helper_method(self): return self.x ''' ) assert ( code_ctx.testgen_context.flat == '''# file: test_code.py class MyClass: """A class with a helper method. """ def __init__(self): self.x = 1 def target_method(self): """Docstring for target method""" y = HelperClass().helper_method() class HelperClass: """A helper class for MyClass.""" def __init__(self): """Initialize the HelperClass.""" self.x = 1 def __repr__(self): """Return a string representation of the HelperClass.""" return "HelperClass" + str(self.x) def helper_method(self): return self.x ''' ) def test_repo_helper() -> None: project_root = Path(__file__).resolve().parent.parent / "code_to_optimize" / "code_directories" / "retriever" path_to_file = project_root / "main.py" path_to_utils = project_root / "utils.py" function_to_optimize = FunctionToOptimize( function_name="fetch_and_process_data", file_path=str(path_to_file), parents=[], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, project_root) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_write_context = f""" ```python:{path_to_utils.relative_to(project_root)} import math class DataProcessor: def __init__(self, default_prefix: str = "PREFIX_"): \"\"\"Initialize the DataProcessor with a default prefix.\"\"\" self.default_prefix = default_prefix self.number += math.log(self.number) def process_data(self, raw_data: str) -> str: \"\"\"Process raw data by converting it to uppercase.\"\"\" return raw_data.upper() def add_prefix(self, data: str, prefix: str = "PREFIX_") -> str: \"\"\"Add a prefix to the processed data.\"\"\" return prefix + data ``` ```python:{path_to_file.relative_to(project_root)} import requests from globals import API_URL from utils import DataProcessor def fetch_and_process_data(): # Use the global variable for the request response = requests.get(API_URL) response.raise_for_status() raw_data = response.text # Use code from another file (utils.py) processor = DataProcessor() processed = processor.process_data(raw_data) processed = processor.add_prefix(processed) return processed ``` """ expected_read_only_context = f""" ```python:{path_to_utils.relative_to(project_root)} class DataProcessor: \"\"\"A class for processing data.\"\"\" number = 1 def __repr__(self) -> str: \"\"\"Return a string representation of the DataProcessor.\"\"\" return f"DataProcessor(default_prefix={{self.default_prefix!r}})" ``` """ expected_hashing_context = f""" ```python:{path_to_utils.relative_to(project_root)} class DataProcessor: def process_data(self, raw_data: str) -> str: return raw_data.upper() def add_prefix(self, data: str, prefix: str='PREFIX_') -> str: return prefix + data ``` ```python:{path_to_file.relative_to(project_root)} def fetch_and_process_data(): response = requests.get(API_URL) response.raise_for_status() raw_data = response.text processor = DataProcessor() processed = processor.process_data(raw_data) processed = processor.add_prefix(processed) return processed ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_repo_helper_of_helper() -> None: project_root = Path(__file__).resolve().parent.parent / "code_to_optimize" / "code_directories" / "retriever" path_to_file = project_root / "main.py" path_to_utils = project_root / "utils.py" path_to_transform_utils = project_root / "transform_utils.py" function_to_optimize = FunctionToOptimize( function_name="fetch_and_transform_data", file_path=str(path_to_file), parents=[], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, project_root) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_write_context = f""" ```python:{path_to_utils.relative_to(project_root)} import math from transform_utils import DataTransformer class DataProcessor: def __init__(self, default_prefix: str = "PREFIX_"): \"\"\"Initialize the DataProcessor with a default prefix.\"\"\" self.default_prefix = default_prefix self.number += math.log(self.number) def process_data(self, raw_data: str) -> str: \"\"\"Process raw data by converting it to uppercase.\"\"\" return raw_data.upper() def transform_data(self, data: str) -> str: \"\"\"Transform the processed data\"\"\" return DataTransformer().transform(data) ``` ```python:{path_to_file.relative_to(project_root)} import requests from globals import API_URL from utils import DataProcessor def fetch_and_transform_data(): # Use the global variable for the request response = requests.get(API_URL) raw_data = response.text # Use code from another file (utils.py) processor = DataProcessor() processed = processor.process_data(raw_data) transformed = processor.transform_data(processed) return transformed ``` """ expected_read_only_context = f""" ```python:{path_to_utils.relative_to(project_root)} class DataProcessor: \"\"\"A class for processing data.\"\"\" number = 1 def __repr__(self) -> str: \"\"\"Return a string representation of the DataProcessor.\"\"\" return f"DataProcessor(default_prefix={{self.default_prefix!r}})" ``` ```python:{path_to_transform_utils.relative_to(project_root)} class DataTransformer: def __init__(self): self.data = None def transform(self, data): self.data = data return self.data ``` """ expected_hashing_context = f""" ```python:{path_to_utils.relative_to(project_root)} class DataProcessor: def process_data(self, raw_data: str) -> str: return raw_data.upper() def transform_data(self, data: str) -> str: return DataTransformer().transform(data) ``` ```python:{path_to_file.relative_to(project_root)} def fetch_and_transform_data(): response = requests.get(API_URL) raw_data = response.text processor = DataProcessor() processed = processor.process_data(raw_data) transformed = processor.transform_data(processed) return transformed ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_repo_helper_of_helper_same_class() -> None: project_root = Path(__file__).resolve().parent.parent / "code_to_optimize" / "code_directories" / "retriever" path_to_utils = project_root / "utils.py" path_to_transform_utils = project_root / "transform_utils.py" function_to_optimize = FunctionToOptimize( function_name="transform_data_own_method", file_path=str(path_to_utils), parents=[FunctionParent(name="DataProcessor", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, project_root) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_write_context = f""" ```python:{path_to_transform_utils.relative_to(project_root)} class DataTransformer: def __init__(self): self.data = None def transform_using_own_method(self, data): return self.transform(data) ``` ```python:{path_to_utils.relative_to(project_root)} import math from transform_utils import DataTransformer class DataProcessor: def __init__(self, default_prefix: str = "PREFIX_"): \"\"\"Initialize the DataProcessor with a default prefix.\"\"\" self.default_prefix = default_prefix self.number += math.log(self.number) def transform_data_own_method(self, data: str) -> str: \"\"\"Transform the processed data using own method\"\"\" return DataTransformer().transform_using_own_method(data) ``` """ expected_read_only_context = f""" ```python:{path_to_transform_utils.relative_to(project_root)} class DataTransformer: def transform(self, data): self.data = data return self.data ``` ```python:{path_to_utils.relative_to(project_root)} class DataProcessor: \"\"\"A class for processing data.\"\"\" number = 1 def __repr__(self) -> str: \"\"\"Return a string representation of the DataProcessor.\"\"\" return f"DataProcessor(default_prefix={{self.default_prefix!r}})" ``` """ expected_hashing_context = f""" ```python:transform_utils.py class DataTransformer: def transform_using_own_method(self, data): return self.transform(data) ``` ```python:{path_to_utils.relative_to(project_root)} class DataProcessor: def transform_data_own_method(self, data: str) -> str: return DataTransformer().transform_using_own_method(data) ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_repo_helper_of_helper_same_file() -> None: project_root = Path(__file__).resolve().parent.parent / "code_to_optimize" / "code_directories" / "retriever" path_to_utils = project_root / "utils.py" path_to_transform_utils = project_root / "transform_utils.py" function_to_optimize = FunctionToOptimize( function_name="transform_data_same_file_function", file_path=str(path_to_utils), parents=[FunctionParent(name="DataProcessor", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, project_root) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_write_context = f""" ```python:{path_to_transform_utils.relative_to(project_root)} class DataTransformer: def __init__(self): self.data = None def transform_using_same_file_function(self, data): return update_data(data) ``` ```python:{path_to_utils.relative_to(project_root)} import math from transform_utils import DataTransformer class DataProcessor: def __init__(self, default_prefix: str = "PREFIX_"): \"\"\"Initialize the DataProcessor with a default prefix.\"\"\" self.default_prefix = default_prefix self.number += math.log(self.number) def transform_data_same_file_function(self, data: str) -> str: \"\"\"Transform the processed data using a function from the same file\"\"\" return DataTransformer().transform_using_same_file_function(data) ``` """ expected_read_only_context = f""" ```python:{path_to_transform_utils.relative_to(project_root)} def update_data(data): return data + " updated" ``` ```python:{path_to_utils.relative_to(project_root)} class DataProcessor: \"\"\"A class for processing data.\"\"\" number = 1 def __repr__(self) -> str: \"\"\"Return a string representation of the DataProcessor.\"\"\" return f"DataProcessor(default_prefix={{self.default_prefix!r}})" ``` """ expected_hashing_context = f""" ```python:transform_utils.py class DataTransformer: def transform_using_same_file_function(self, data): return update_data(data) ``` ```python:{path_to_utils.relative_to(project_root)} class DataProcessor: def transform_data_same_file_function(self, data: str) -> str: return DataTransformer().transform_using_same_file_function(data) ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_repo_helper_all_same_file() -> None: project_root = Path(__file__).resolve().parent.parent / "code_to_optimize" / "code_directories" / "retriever" path_to_transform_utils = project_root / "transform_utils.py" function_to_optimize = FunctionToOptimize( function_name="transform_data_all_same_file", file_path=str(path_to_transform_utils), parents=[FunctionParent(name="DataTransformer", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, project_root) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_write_context = f""" ```python:{path_to_transform_utils.relative_to(project_root)} class DataTransformer: def __init__(self): self.data = None def transform_using_own_method(self, data): return self.transform(data) def transform_data_all_same_file(self, data): new_data = update_data(data) return self.transform_using_own_method(new_data) def update_data(data): return data + " updated" ``` """ expected_read_only_context = f""" ```python:{path_to_transform_utils.relative_to(project_root)} class DataTransformer: def transform(self, data): self.data = data return self.data ``` """ expected_hashing_context = f""" ```python:{path_to_transform_utils.relative_to(project_root)} class DataTransformer: def transform_using_own_method(self, data): return self.transform(data) def transform_data_all_same_file(self, data): new_data = update_data(data) return self.transform_using_own_method(new_data) def update_data(data): return data + ' updated' ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_repo_helper_circular_dependency() -> None: project_root = Path(__file__).resolve().parent.parent / "code_to_optimize" / "code_directories" / "retriever" path_to_utils = project_root / "utils.py" path_to_transform_utils = project_root / "transform_utils.py" function_to_optimize = FunctionToOptimize( function_name="circular_dependency", file_path=str(path_to_transform_utils), parents=[FunctionParent(name="DataTransformer", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, project_root) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_write_context = f""" ```python:{path_to_utils.relative_to(project_root)} import math from transform_utils import DataTransformer class DataProcessor: def __init__(self, default_prefix: str = "PREFIX_"): \"\"\"Initialize the DataProcessor with a default prefix.\"\"\" self.default_prefix = default_prefix self.number += math.log(self.number) def circular_dependency(self, data: str) -> str: \"\"\"Test circular dependency\"\"\" return DataTransformer().circular_dependency(data) ``` ```python:{path_to_transform_utils.relative_to(project_root)} from code_to_optimize.code_directories.retriever.utils import DataProcessor class DataTransformer: def __init__(self): self.data = None def circular_dependency(self, data): return DataProcessor().circular_dependency(data) ``` """ expected_read_only_context = f""" ```python:{path_to_utils.relative_to(project_root)} class DataProcessor: \"\"\"A class for processing data.\"\"\" number = 1 def __repr__(self) -> str: \"\"\"Return a string representation of the DataProcessor.\"\"\" return f"DataProcessor(default_prefix={{self.default_prefix!r}})" ``` ```python:{path_to_transform_utils.relative_to(project_root)} class DataTransformer: def __init__(self): self.data = None ``` """ expected_hashing_context = f""" ```python:utils.py class DataProcessor: def circular_dependency(self, data: str) -> str: return DataTransformer().circular_dependency(data) ``` ```python:{path_to_transform_utils.relative_to(project_root)} class DataTransformer: def circular_dependency(self, data): return DataProcessor().circular_dependency(data) ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_indirect_init_helper(tmp_path: Path) -> None: code = """ class MyClass: def __init__(self): self.x = 1 self.y = outside_method() def target_method(self): return self.x + self.y def outside_method(): return 1 """ # Create a temporary Python file using pytest's tmp_path fixture file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") opt = Optimizer( Namespace( project_root=file_path.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize = FunctionToOptimize( function_name="target_method", file_path=file_path, parents=[FunctionParent(name="MyClass", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, opt.args.project_root) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_write_context = f""" ```python:{file_path.relative_to(opt.args.project_root)} class MyClass: def __init__(self): self.x = 1 self.y = outside_method() def target_method(self): return self.x + self.y ``` """ expected_read_only_context = f""" ```python:{file_path.relative_to(opt.args.project_root)} def outside_method(): return 1 ``` """ expected_hashing_context = f""" ```python:{file_path.relative_to(opt.args.project_root)} class MyClass: def target_method(self): return self.x + self.y ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_direct_module_import() -> None: project_root = Path(__file__).resolve().parent.parent / "code_to_optimize" / "code_directories" / "retriever" path_to_main = project_root / "main.py" path_to_fto = project_root / "import_test.py" function_to_optimize = FunctionToOptimize( function_name="function_to_optimize", file_path=str(path_to_fto), parents=[], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, project_root) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context expected_read_only_context = """ ```python:utils.py import math from transform_utils import DataTransformer class DataProcessor: \"\"\"A class for processing data.\"\"\" number = 1 def __init__(self, default_prefix: str = "PREFIX_"): \"\"\"Initialize the DataProcessor with a default prefix.\"\"\" self.default_prefix = default_prefix self.number += math.log(self.number) def __repr__(self) -> str: \"\"\"Return a string representation of the DataProcessor.\"\"\" return f"DataProcessor(default_prefix={self.default_prefix!r})" def process_data(self, raw_data: str) -> str: \"\"\"Process raw data by converting it to uppercase.\"\"\" return raw_data.upper() def transform_data(self, data: str) -> str: \"\"\"Transform the processed data\"\"\" return DataTransformer().transform(data) ```""" expected_hashing_context = """ ```python:main.py def fetch_and_transform_data(): response = requests.get(API_URL) raw_data = response.text processor = DataProcessor() processed = processor.process_data(raw_data) transformed = processor.transform_data(processed) return transformed ``` ```python:import_test.py def function_to_optimize(): return code_to_optimize.code_directories.retriever.main.fetch_and_transform_data() ``` """ expected_read_write_context = f""" ```python:{path_to_main.relative_to(project_root)} import requests from globals import API_URL from utils import DataProcessor def fetch_and_transform_data(): # Use the global variable for the request response = requests.get(API_URL) raw_data = response.text # Use code from another file (utils.py) processor = DataProcessor() processed = processor.process_data(raw_data) transformed = processor.transform_data(processed) return transformed ``` ```python:{path_to_fto.relative_to(project_root)} import code_to_optimize.code_directories.retriever.main def function_to_optimize(): return code_to_optimize.code_directories.retriever.main.fetch_and_transform_data() ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_module_import_optimization() -> None: main_code = """ import utility_module class Calculator: def __init__(self, precision="high", fallback_precision=None, mode="standard"): # This is where we use the imported module self.precision = utility_module.select_precision(precision, fallback_precision) self.mode = mode # Using variables from the utility module self.backend = utility_module.CALCULATION_BACKEND self.system = utility_module.SYSTEM_TYPE self.default_precision = utility_module.DEFAULT_PRECISION def add(self, a, b): return a + b def subtract(self, a, b): return a - b def calculate(self, operation, x, y): if operation == "add": return self.add(x, y) elif operation == "subtract": return self.subtract(x, y) else: return None """ utility_module_code = """ import sys import platform import logging DEFAULT_PRECISION = "medium" DEFAULT_MODE = "standard" # Try-except block with variable definitions try: import numpy as np # Used variable in try block CALCULATION_BACKEND = "numpy" # Unused variable in try block VECTOR_DIMENSIONS = 3 except ImportError: # Used variable in except block CALCULATION_BACKEND = "python" # Unused variable in except block FALLBACK_WARNING = "NumPy not available, using slower Python implementation" # Nested if-else with variable definitions if sys.platform.startswith('win'): # Used variable in outer if SYSTEM_TYPE = "windows" if platform.architecture()[0] == '64bit': # Unused variable in nested if MEMORY_MODEL = "x64" else: # Unused variable in nested else MEMORY_MODEL = "x86" elif sys.platform.startswith('linux'): # Used variable in outer elif SYSTEM_TYPE = "linux" # Unused variable in outer elif KERNEL_VERSION = platform.release() else: # Used variable in outer else SYSTEM_TYPE = "other" # Unused variable in outer else UNKNOWN_SYSTEM_MSG = "Running on an unrecognized platform" # Function that will be used in the main code def select_precision(precision, fallback_precision): if precision is None: return fallback_precision or DEFAULT_PRECISION # Using the variables defined above if CALCULATION_BACKEND == "numpy": # Higher precision available with NumPy precision_options = ["low", "medium", "high", "ultra"] else: # Limited precision without NumPy precision_options = ["low", "medium", "high"] if isinstance(precision, str): if precision.lower() not in precision_options: if fallback_precision: return fallback_precision else: return DEFAULT_PRECISION return precision.lower() else: return DEFAULT_PRECISION # Function that won't be used def get_system_details(): return { "system": SYSTEM_TYPE, "backend": CALCULATION_BACKEND, "default_precision": DEFAULT_PRECISION, "python_version": sys.version } """ # Create a temporary directory for the test with tempfile.TemporaryDirectory() as temp_dir: # Set up the package structure package_dir = Path(temp_dir) / "package" package_dir.mkdir() # Create the __init__.py file with open(package_dir / "__init__.py", "w") as init_file: init_file.write("") # Write the utility_module.py file with open(package_dir / "utility_module.py", "w") as utility_file: utility_file.write(utility_module_code) utility_file.flush() # Write the main code file main_file_path = package_dir / "main_module.py" with open(main_file_path, "w") as main_file: main_file.write(main_code) main_file.flush() # Set up the optimizer file_path = main_file_path.resolve() project_root = package_dir.resolve() opt = Optimizer( Namespace( project_root=project_root, disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) # Define the function to optimize function_to_optimize = FunctionToOptimize( function_name="calculate", file_path=file_path, parents=[FunctionParent(name="Calculator", type="ClassDef")], starting_line=None, ending_line=None, ) # Get the code optimization context code_ctx = get_code_optimization_context(function_to_optimize, opt.args.project_root) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code hashing_context = code_ctx.hashing_code_context # The expected contexts # Resolve both paths to handle symlink issues on macOS relative_path = file_path.relative_to(project_root) expected_read_write_context = f""" ```python:{main_file_path.resolve().relative_to(opt.args.project_root.resolve())} import utility_module class Calculator: def __init__(self, precision="high", fallback_precision=None, mode="standard"): # This is where we use the imported module self.precision = utility_module.select_precision(precision, fallback_precision) self.mode = mode # Using variables from the utility module self.backend = utility_module.CALCULATION_BACKEND self.system = utility_module.SYSTEM_TYPE self.default_precision = utility_module.DEFAULT_PRECISION def add(self, a, b): return a + b def subtract(self, a, b): return a - b def calculate(self, operation, x, y): if operation == "add": return self.add(x, y) elif operation == "subtract": return self.subtract(x, y) else: return None ``` """ expected_read_only_context = """ ```python:utility_module.py DEFAULT_PRECISION = "medium" # Try-except block with variable definitions try: # Used variable in try block CALCULATION_BACKEND = "numpy" except ImportError: # Used variable in except block CALCULATION_BACKEND = "python" # Function that will be used in the main code def select_precision(precision, fallback_precision): if precision is None: return fallback_precision or DEFAULT_PRECISION # Using the variables defined above if CALCULATION_BACKEND == "numpy": # Higher precision available with NumPy precision_options = ["low", "medium", "high", "ultra"] else: # Limited precision without NumPy precision_options = ["low", "medium", "high"] if isinstance(precision, str): if precision.lower() not in precision_options: if fallback_precision: return fallback_precision else: return DEFAULT_PRECISION return precision.lower() else: return DEFAULT_PRECISION ``` """ expected_hashing_context = """ ```python:main_module.py class Calculator: def add(self, a, b): return a + b def subtract(self, a, b): return a - b def calculate(self, operation, x, y): if operation == 'add': return self.add(x, y) elif operation == 'subtract': return self.subtract(x, y) else: return None ``` """ # Verify the contexts match the expected values assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() assert hashing_context.strip() == expected_hashing_context.strip() def test_module_import_init_fto() -> None: main_code = """ import utility_module class Calculator: def __init__(self, precision="high", fallback_precision=None, mode="standard"): # This is where we use the imported module self.precision = utility_module.select_precision(precision, fallback_precision) self.mode = mode # Using variables from the utility module self.backend = utility_module.CALCULATION_BACKEND self.system = utility_module.SYSTEM_TYPE self.default_precision = utility_module.DEFAULT_PRECISION def add(self, a, b): return a + b def subtract(self, a, b): return a - b def calculate(self, operation, x, y): if operation == "add": return self.add(x, y) elif operation == "subtract": return self.subtract(x, y) else: return None """ utility_module_code = """ import sys import platform import logging DEFAULT_PRECISION = "medium" DEFAULT_MODE = "standard" # Try-except block with variable definitions try: import numpy as np # Used variable in try block CALCULATION_BACKEND = "numpy" # Unused variable in try block VECTOR_DIMENSIONS = 3 except ImportError: # Used variable in except block CALCULATION_BACKEND = "python" # Unused variable in except block FALLBACK_WARNING = "NumPy not available, using slower Python implementation" # Nested if-else with variable definitions if sys.platform.startswith('win'): # Used variable in outer if SYSTEM_TYPE = "windows" if platform.architecture()[0] == '64bit': # Unused variable in nested if MEMORY_MODEL = "x64" else: # Unused variable in nested else MEMORY_MODEL = "x86" elif sys.platform.startswith('linux'): # Used variable in outer elif SYSTEM_TYPE = "linux" # Unused variable in outer elif KERNEL_VERSION = platform.release() else: # Used variable in outer else SYSTEM_TYPE = "other" # Unused variable in outer else UNKNOWN_SYSTEM_MSG = "Running on an unrecognized platform" # Function that will be used in the main code def select_precision(precision, fallback_precision): if precision is None: return fallback_precision or DEFAULT_PRECISION # Using the variables defined above if CALCULATION_BACKEND == "numpy": # Higher precision available with NumPy precision_options = ["low", "medium", "high", "ultra"] else: # Limited precision without NumPy precision_options = ["low", "medium", "high"] if isinstance(precision, str): if precision.lower() not in precision_options: if fallback_precision: return fallback_precision else: return DEFAULT_PRECISION return precision.lower() else: return DEFAULT_PRECISION # Function that won't be used def get_system_details(): return { "system": SYSTEM_TYPE, "backend": CALCULATION_BACKEND, "default_precision": DEFAULT_PRECISION, "python_version": sys.version } """ # Create a temporary directory for the test with tempfile.TemporaryDirectory() as temp_dir: # Set up the package structure package_dir = Path(temp_dir) / "package" package_dir.mkdir() # Create the __init__.py file with open(package_dir / "__init__.py", "w") as init_file: init_file.write("") # Write the utility_module.py file with open(package_dir / "utility_module.py", "w") as utility_file: utility_file.write(utility_module_code) utility_file.flush() # Write the main code file main_file_path = package_dir / "main_module.py" with open(main_file_path, "w") as main_file: main_file.write(main_code) main_file.flush() # Set up the optimizer file_path = main_file_path.resolve() project_root = package_dir.resolve() opt = Optimizer( Namespace( project_root=project_root, disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) # Define the function to optimize function_to_optimize = FunctionToOptimize( function_name="__init__", file_path=file_path, parents=[FunctionParent(name="Calculator", type="ClassDef")], starting_line=None, ending_line=None, ) # Get the code optimization context code_ctx = get_code_optimization_context(function_to_optimize, opt.args.project_root) read_write_context, read_only_context = code_ctx.read_writable_code, code_ctx.read_only_context_code # The expected contexts relative_path = file_path.relative_to(project_root) expected_read_write_context = f""" ```python:utility_module.py DEFAULT_PRECISION = "medium" # Try-except block with variable definitions try: # Used variable in try block CALCULATION_BACKEND = "numpy" except ImportError: # Used variable in except block CALCULATION_BACKEND = "python" # Function that will be used in the main code def select_precision(precision, fallback_precision): if precision is None: return fallback_precision or DEFAULT_PRECISION # Using the variables defined above if CALCULATION_BACKEND == "numpy": # Higher precision available with NumPy precision_options = ["low", "medium", "high", "ultra"] else: # Limited precision without NumPy precision_options = ["low", "medium", "high"] if isinstance(precision, str): if precision.lower() not in precision_options: if fallback_precision: return fallback_precision else: return DEFAULT_PRECISION return precision.lower() else: return DEFAULT_PRECISION ``` ```python:{main_file_path.resolve().relative_to(opt.args.project_root.resolve())} import utility_module class Calculator: def __init__(self, precision="high", fallback_precision=None, mode="standard"): # This is where we use the imported module self.precision = utility_module.select_precision(precision, fallback_precision) self.mode = mode # Using variables from the utility module self.backend = utility_module.CALCULATION_BACKEND self.system = utility_module.SYSTEM_TYPE self.default_precision = utility_module.DEFAULT_PRECISION ``` """ expected_read_only_context = """ ```python:utility_module.py DEFAULT_PRECISION = "medium" # Try-except block with variable definitions try: # Used variable in try block CALCULATION_BACKEND = "numpy" except ImportError: # Used variable in except block CALCULATION_BACKEND = "python" ``` """ assert read_write_context.markdown.strip() == expected_read_write_context.strip() assert read_only_context.strip() == expected_read_only_context.strip() def test_hashing_code_context_removes_imports_docstrings_and_init(tmp_path: Path) -> None: """Test that hashing context removes imports, docstrings, and __init__ methods properly.""" code = ''' import os import sys from pathlib import Path class MyClass: """A class with a docstring.""" def __init__(self, value): """Initialize with a value.""" self.value = value def target_method(self): """Target method with docstring.""" result = self.helper_method() helper_cls = HelperClass() data = helper_cls.process_data() return self.value * 2 def helper_method(self): """Helper method with docstring.""" return self.value + 1 class HelperClass: """Helper class docstring.""" def __init__(self): """Helper init method.""" self.data = "test" def process_data(self): """Process data method.""" return self.data.upper() def standalone_function(): """Standalone function.""" return "standalone" ''' # Create a temporary Python file using pytest's tmp_path fixture file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") opt = Optimizer( Namespace( project_root=file_path.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize = FunctionToOptimize( function_name="target_method", file_path=file_path, parents=[FunctionParent(name="MyClass", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, opt.args.project_root) hashing_context = code_ctx.hashing_code_context # Expected behavior based on current implementation: # - Should not contain imports # - Should remove docstrings from target functions (but currently doesn't - this is a bug) # - Should not contain __init__ methods # - Should contain target function and helper methods that are actually called # - Should be formatted as markdown # Test that it's formatted as markdown assert hashing_context.startswith("```python:") assert hashing_context.endswith("```") # Test basic structure requirements assert "import" not in hashing_context # Should not contain imports assert "__init__" not in hashing_context # Should not contain __init__ methods assert "target_method" in hashing_context # Should contain target function assert "standalone_function" not in hashing_context # Should not contain unused functions # Test that helper functions are included when they're called assert "helper_method" in hashing_context # Should contain called helper method assert "process_data" in hashing_context # Should contain called helper method # Test for docstring removal (this should pass when implementation is fixed) # Currently this will fail because docstrings are not being removed properly assert '"""Target method with docstring."""' not in hashing_context, ( "Docstrings should be removed from target functions" ) assert '"""Helper method with docstring."""' not in hashing_context, ( "Docstrings should be removed from helper functions" ) assert '"""Process data method."""' not in hashing_context, "Docstrings should be removed from helper class methods" def test_hashing_code_context_with_nested_classes(tmp_path: Path) -> None: """Test that hashing context handles nested classes properly (should exclude them).""" code = ''' class OuterClass: """Outer class docstring.""" def __init__(self): """Outer init.""" self.value = 1 def target_method(self): """Target method.""" return self.NestedClass().nested_method() class NestedClass: """Nested class - should be excluded.""" def __init__(self): self.nested_value = 2 def nested_method(self): return self.nested_value ''' # Create a temporary Python file using pytest's tmp_path fixture file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") opt = Optimizer( Namespace( project_root=file_path.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize = FunctionToOptimize( function_name="target_method", file_path=file_path, parents=[FunctionParent(name="OuterClass", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, opt.args.project_root) hashing_context = code_ctx.hashing_code_context # Test basic requirements assert hashing_context.startswith("```python:") assert hashing_context.endswith("```") assert "target_method" in hashing_context assert "__init__" not in hashing_context # Should not contain __init__ methods # Verify nested classes are excluded from the hashing context # The prune_cst function in hashing mode should not recurse into nested classes assert "class NestedClass:" not in hashing_context # Nested class definition should not be present # The target method will reference NestedClass, but the actual nested class definition should not be included # The call to self.NestedClass().nested_method() should be in the target method but the nested class itself excluded target_method_call_present = "self.NestedClass().nested_method()" in hashing_context assert target_method_call_present, "The target method should contain the call to nested class" # But the actual nested method definition should not be present nested_method_definition_present = "def nested_method(self):" in hashing_context assert not nested_method_definition_present, "Nested method definition should not be present in hashing context" def test_hashing_code_context_hash_consistency(tmp_path: Path) -> None: """Test that the same code produces the same hash.""" code = """ class TestClass: def target_method(self): return "test" """ # Create a temporary Python file using pytest's tmp_path fixture file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") opt = Optimizer( Namespace( project_root=file_path.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize = FunctionToOptimize( function_name="target_method", file_path=file_path, parents=[FunctionParent(name="TestClass", type="ClassDef")], starting_line=None, ending_line=None, ) # Generate context twice code_ctx1 = get_code_optimization_context(function_to_optimize, opt.args.project_root) code_ctx2 = get_code_optimization_context(function_to_optimize, opt.args.project_root) # Hash should be consistent assert code_ctx1.hashing_code_context_hash == code_ctx2.hashing_code_context_hash assert code_ctx1.hashing_code_context == code_ctx2.hashing_code_context # Hash should be valid SHA256 import hashlib expected_hash = hashlib.sha256(code_ctx1.hashing_code_context.encode("utf-8")).hexdigest() assert code_ctx1.hashing_code_context_hash == expected_hash def test_hashing_code_context_different_code_different_hash(tmp_path: Path) -> None: """Test that different code produces different hashes.""" code1 = """ class TestClass: def target_method(self): return "test1" """ code2 = """ class TestClass: def target_method(self): return "test2" """ # Create two temporary Python files using pytest's tmp_path fixture file_path1 = tmp_path / "test_code1.py" file_path2 = tmp_path / "test_code2.py" file_path1.write_text(code1, encoding="utf-8") file_path2.write_text(code2, encoding="utf-8") opt1 = Optimizer( Namespace( project_root=file_path1.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) opt2 = Optimizer( Namespace( project_root=file_path2.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize1 = FunctionToOptimize( function_name="target_method", file_path=file_path1, parents=[FunctionParent(name="TestClass", type="ClassDef")], starting_line=None, ending_line=None, ) function_to_optimize2 = FunctionToOptimize( function_name="target_method", file_path=file_path2, parents=[FunctionParent(name="TestClass", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx1 = get_code_optimization_context(function_to_optimize1, opt1.args.project_root) code_ctx2 = get_code_optimization_context(function_to_optimize2, opt2.args.project_root) # Different code should produce different hashes assert code_ctx1.hashing_code_context_hash != code_ctx2.hashing_code_context_hash assert code_ctx1.hashing_code_context != code_ctx2.hashing_code_context def test_hashing_code_context_format_is_markdown(tmp_path: Path) -> None: """Test that hashing context is formatted as markdown.""" code = """ class SimpleClass: def simple_method(self): return 42 """ # Create a temporary Python file using pytest's tmp_path fixture file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") opt = Optimizer( Namespace( project_root=file_path.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize = FunctionToOptimize( function_name="simple_method", file_path=file_path, parents=[FunctionParent(name="SimpleClass", type="ClassDef")], starting_line=None, ending_line=None, ) code_ctx = get_code_optimization_context(function_to_optimize, opt.args.project_root) hashing_context = code_ctx.hashing_code_context # Should be formatted as markdown code block assert hashing_context.startswith("```python:") assert hashing_context.endswith("```") # Should contain the relative file path in the markdown header relative_path = file_path.relative_to(opt.args.project_root) assert str(relative_path) in hashing_context # Should contain the actual code between the markdown markers lines = hashing_context.strip().split("\n") assert lines[0].startswith("```python:") assert lines[-1] == "```" # Code should be between the markers code_lines = lines[1:-1] code_content = "\n".join(code_lines) assert "class SimpleClass:" in code_content assert "def simple_method(self):" in code_content assert "return 42" in code_content # This shouldn't happen as we are now using a scoped optimization context, but keep it just in case def test_circular_deps(): path_to_root = Path(__file__).resolve().parent.parent / "code_to_optimize" / "code_directories" / "circular_deps" file_abs_path = path_to_root / "api_client.py" optimized_code = Path(path_to_root / "optimized.py").read_text(encoding="utf-8") content = Path(file_abs_path).read_text(encoding="utf-8") new_code = replace_functions_and_add_imports( source_code=add_global_assignments(optimized_code, content), function_names=["ApiClient.get_console_url"], optimized_code=optimized_code, module_abspath=Path(file_abs_path), preexisting_objects={ ("ApiClient", ()), ("get_console_url", (FunctionParent(name="ApiClient", type="ClassDef"),)), }, project_root_path=Path(path_to_root), ) assert "import ApiClient" not in new_code, "Error: Circular dependency found" assert "import urllib.parse" in new_code, "Make sure imports for optimization global assignments exist" def test_global_assignment_collector_with_async_function(): """Test GlobalAssignmentCollector correctly identifies global assignments outside async functions.""" import libcst as cst source_code = """ # Global assignment GLOBAL_VAR = "global_value" OTHER_GLOBAL = 42 async def async_function(): # This should not be collected (inside async function) local_var = "local_value" INNER_ASSIGNMENT = "should_not_be_global" return local_var # Another global assignment ANOTHER_GLOBAL = "another_global" """ tree = cst.parse_module(source_code) collector = GlobalAssignmentCollector() tree.visit(collector) # Should collect global assignments but not the ones inside async function assert len(collector.assignments) == 3 assert "GLOBAL_VAR" in collector.assignments assert "OTHER_GLOBAL" in collector.assignments assert "ANOTHER_GLOBAL" in collector.assignments # Should not collect assignments from inside async function assert "local_var" not in collector.assignments assert "INNER_ASSIGNMENT" not in collector.assignments # Verify assignment order expected_order = ["GLOBAL_VAR", "OTHER_GLOBAL", "ANOTHER_GLOBAL"] assert collector.assignment_order == expected_order def test_global_assignment_collector_nested_async_functions(): """Test GlobalAssignmentCollector handles nested async functions correctly.""" import libcst as cst source_code = """ # Global assignment CONFIG = {"key": "value"} def sync_function(): # Inside sync function - should not be collected sync_local = "sync" async def nested_async(): # Inside nested async function - should not be collected nested_var = "nested" return nested_var return sync_local async def async_function(): # Inside async function - should not be collected async_local = "async" def nested_sync(): # Inside nested function - should not be collected deeply_nested = "deep" return deeply_nested return async_local # Another global assignment FINAL_GLOBAL = "final" """ tree = cst.parse_module(source_code) collector = GlobalAssignmentCollector() tree.visit(collector) # Should only collect global-level assignments assert len(collector.assignments) == 2 assert "CONFIG" in collector.assignments assert "FINAL_GLOBAL" in collector.assignments # Should not collect any assignments from inside functions assert "sync_local" not in collector.assignments assert "nested_var" not in collector.assignments assert "async_local" not in collector.assignments assert "deeply_nested" not in collector.assignments def test_global_assignment_collector_mixed_async_sync_with_classes(): """Test GlobalAssignmentCollector with async functions, sync functions, and classes.""" import libcst as cst source_code = """ # Global assignments GLOBAL_CONSTANT = "constant" class TestClass: # Class-level assignment - should not be collected class_var = "class_value" def sync_method(self): # Method assignment - should not be collected method_var = "method" return method_var async def async_method(self): # Async method assignment - should not be collected async_method_var = "async_method" return async_method_var def sync_function(): # Function assignment - should not be collected func_var = "function" return func_var async def async_function(): # Async function assignment - should not be collected async_func_var = "async_function" return async_func_var # More global assignments ANOTHER_CONSTANT = 100 FINAL_ASSIGNMENT = {"data": "value"} """ tree = cst.parse_module(source_code) collector = GlobalAssignmentCollector() tree.visit(collector) # Should only collect global-level assignments assert len(collector.assignments) == 3 assert "GLOBAL_CONSTANT" in collector.assignments assert "ANOTHER_CONSTANT" in collector.assignments assert "FINAL_ASSIGNMENT" in collector.assignments # Should not collect assignments from inside any scoped blocks assert "class_var" not in collector.assignments assert "method_var" not in collector.assignments assert "async_method_var" not in collector.assignments assert "func_var" not in collector.assignments assert "async_func_var" not in collector.assignments # Verify correct order expected_order = ["GLOBAL_CONSTANT", "ANOTHER_CONSTANT", "FINAL_ASSIGNMENT"] assert collector.assignment_order == expected_order def test_global_assignment_collector_annotated_assignments(): """Test GlobalAssignmentCollector correctly handles annotated assignments (AnnAssign).""" import libcst as cst source_code = """ # Regular global assignment REGULAR_VAR = "regular" # Annotated global assignments TYPED_VAR: str = "typed" CACHE: dict[str, int] = {} SENTINEL: object = object() # Annotated without value (type declaration only) - should NOT be collected DECLARED_ONLY: int def some_function(): # Annotated assignment inside function - should not be collected local_typed: str = "local" return local_typed class SomeClass: # Class-level annotated assignment - should not be collected class_attr: str = "class" # Another regular assignment FINAL_VAR = 123 """ tree = cst.parse_module(source_code) collector = GlobalAssignmentCollector() tree.visit(collector) # Should collect both regular and annotated global assignments with values assert len(collector.assignments) == 5 assert "REGULAR_VAR" in collector.assignments assert "TYPED_VAR" in collector.assignments assert "CACHE" in collector.assignments assert "SENTINEL" in collector.assignments assert "FINAL_VAR" in collector.assignments # Should not collect type declarations without values assert "DECLARED_ONLY" not in collector.assignments # Should not collect assignments from inside functions or classes assert "local_typed" not in collector.assignments assert "class_attr" not in collector.assignments # Verify correct order expected_order = ["REGULAR_VAR", "TYPED_VAR", "CACHE", "SENTINEL", "FINAL_VAR"] assert collector.assignment_order == expected_order def test_global_function_collector(): """Test GlobalFunctionCollector correctly collects module-level function definitions.""" import libcst as cst from codeflash.code_utils.code_extractor import GlobalFunctionCollector source_code = """ # Module-level functions def helper_function(): return "helper" def another_helper(x: int) -> str: return str(x) class SomeClass: def method(self): # This is a method, not a module-level function return "method" def another_method(self): # Also a method def nested_function(): # Nested function inside method return "nested" return nested_function() def final_function(): def inner_function(): # This is a nested function, not module-level return "inner" return inner_function() """ tree = cst.parse_module(source_code) collector = GlobalFunctionCollector() tree.visit(collector) # Should collect only module-level functions assert len(collector.functions) == 3 assert "helper_function" in collector.functions assert "another_helper" in collector.functions assert "final_function" in collector.functions # Should not collect methods or nested functions assert "method" not in collector.functions assert "another_method" not in collector.functions assert "nested_function" not in collector.functions assert "inner_function" not in collector.functions # Verify correct order expected_order = ["helper_function", "another_helper", "final_function"] assert collector.function_order == expected_order def test_add_global_assignments_with_new_functions(): """Test add_global_assignments correctly adds new module-level functions.""" source_code = """\ from functools import lru_cache class SkyvernPage: @staticmethod def action_wrap(action): return _get_decorator_for_action(action) @lru_cache(maxsize=None) def _get_decorator_for_action(action): def decorator(fn): return fn return decorator """ destination_code = """\ from functools import lru_cache class SkyvernPage: @staticmethod def action_wrap(action): # Original implementation return action """ expected = """\ from functools import lru_cache class SkyvernPage: @staticmethod def action_wrap(action): # Original implementation return action @lru_cache(maxsize=None) def _get_decorator_for_action(action): def decorator(fn): return fn return decorator """ result = add_global_assignments(source_code, destination_code) assert result == expected def test_add_global_assignments_does_not_duplicate_existing_functions(): """Test add_global_assignments does not duplicate functions that already exist in destination.""" source_code = """\ def helper(): return "source_helper" def existing_function(): return "source_existing" """ destination_code = """\ def existing_function(): return "dest_existing" class MyClass: pass """ expected = """\ def existing_function(): return "dest_existing" class MyClass: pass def helper(): return "source_helper" """ result = add_global_assignments(source_code, destination_code) assert result == expected def test_add_global_assignments_with_decorated_functions(): """Test add_global_assignments correctly adds decorated functions.""" source_code = """\ from functools import lru_cache from typing import Callable _LOCAL_CACHE: dict[str, int] = {} @lru_cache(maxsize=128) def cached_helper(x: int) -> int: return x * 2 def regular_helper(): return "regular" """ destination_code = """\ from typing import Any class MyClass: def method(self): return cached_helper(5) """ expected = """\ from typing import Any _LOCAL_CACHE: dict[str, int] = {} class MyClass: def method(self): return cached_helper(5) @lru_cache(maxsize=128) def cached_helper(x: int) -> int: return x * 2 def regular_helper(): return "regular" """ result = add_global_assignments(source_code, destination_code) assert result == expected def test_add_global_assignments_references_class_defined_in_module(): """Test that global assignments referencing classes are placed after those class definitions. This test verifies the fix for a bug where LLM-generated optimization code like: _REIFIERS = {MessageKind.XXX: lambda d: ...} was placed BEFORE the MessageKind class definition, causing NameError at module load. The fix ensures that new global assignments are inserted AFTER all class/function definitions in the module, so they can safely reference any class defined in the module. """ source_code = """\ import enum class MessageKind(enum.StrEnum): ASK = "ask" REPLY = "reply" _MESSAGE_HANDLERS = { MessageKind.ASK: lambda: "ask handler", MessageKind.REPLY: lambda: "reply handler", } def handle_message(kind): return _MESSAGE_HANDLERS[kind]() """ destination_code = """\ import enum class MessageKind(enum.StrEnum): ASK = "ask" REPLY = "reply" def handle_message(kind): if kind == MessageKind.ASK: return "ask" return "reply" """ # Global assignments are now inserted AFTER class/function definitions # to ensure they can reference classes defined in the module expected = """\ import enum class MessageKind(enum.StrEnum): ASK = "ask" REPLY = "reply" def handle_message(kind): if kind == MessageKind.ASK: return "ask" return "reply" _MESSAGE_HANDLERS = { MessageKind.ASK: lambda: "ask handler", MessageKind.REPLY: lambda: "reply handler", } """ result = add_global_assignments(source_code, destination_code) assert result == expected def test_add_global_assignments_function_calls_after_function_definitions(): """Test that global function calls are placed after the functions they reference. This test verifies the fix for a bug where LLM-generated optimization code like: def _register(kind, factory): _factories[kind] = factory _register(MessageKind.ASK, lambda: "ask") would have the _register(...) calls placed BEFORE the _register function definition, causing NameError at module load time. The fix ensures that new global statements (like function calls) are inserted AFTER all class/function definitions, so they can safely reference any function defined in the module. """ source_code = """\ import enum class MessageKind(enum.StrEnum): ASK = "ask" REPLY = "reply" _factories = {} def _register(kind, factory): _factories[kind] = factory _register(MessageKind.ASK, lambda: "ask handler") _register(MessageKind.REPLY, lambda: "reply handler") def handle_message(kind): return _factories[kind]() """ destination_code = """\ import enum class MessageKind(enum.StrEnum): ASK = "ask" REPLY = "reply" def handle_message(kind): if kind == MessageKind.ASK: return "ask" return "reply" """ expected = """\ import enum _factories = {} class MessageKind(enum.StrEnum): ASK = "ask" REPLY = "reply" def handle_message(kind): if kind == MessageKind.ASK: return "ask" return "reply" def _register(kind, factory): _factories[kind] = factory _register(MessageKind.ASK, lambda: "ask handler") _register(MessageKind.REPLY, lambda: "reply handler") """ result = add_global_assignments(source_code, destination_code) assert result == expected def test_class_instantiation_includes_init_as_helper(tmp_path: Path) -> None: """Test that when a class is instantiated, its __init__ method is tracked as a helper. This test verifies the fix for the bug where class constructors were not included in the context when only the class instantiation was called (not any other methods). This caused LLMs to not know the constructor signatures when generating tests. """ code = ''' class DataDumper: """A class that dumps data.""" def __init__(self, data): """Initialize with data.""" self.data = data def dump(self): """Dump the data.""" return self.data def target_function(): # Only instantiates DataDumper, doesn't call any other methods dumper = DataDumper({"key": "value"}) return dumper ''' file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") opt = Optimizer( Namespace( project_root=file_path.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize = FunctionToOptimize( function_name="target_function", file_path=file_path, parents=[], starting_line=None, ending_line=None ) code_ctx = get_code_optimization_context(function_to_optimize, opt.args.project_root) # The __init__ method should be tracked as a helper since DataDumper() instantiates the class qualified_names = {func.qualified_name for func in code_ctx.helper_functions} assert "DataDumper.__init__" in qualified_names, ( "DataDumper.__init__ should be tracked as a helper when the class is instantiated" ) # The testgen context should contain the class with __init__ (critical for LLM to know constructor) testgen_context = code_ctx.testgen_context.markdown assert "class DataDumper:" in testgen_context, "DataDumper class should be in testgen context" assert "def __init__(self, data):" in testgen_context, "__init__ method should be included in testgen context" # The hashing context should NOT contain __init__ (excluded for stability) hashing_context = code_ctx.hashing_code_context assert "__init__" not in hashing_context, "__init__ should NOT be in hashing context (excluded for hash stability)" def test_class_instantiation_preserves_full_class_in_testgen(tmp_path: Path) -> None: """Test that instantiated classes are fully preserved in testgen context. This is specifically for the unstructured LayoutDumper bug where helper classes that were instantiated but had no other methods called were being excluded from the testgen context. """ code = ''' class LayoutDumper: """Base class for layout dumpers.""" layout_source: str = "unknown" def __init__(self, layout): self._layout = layout def dump(self) -> dict: raise NotImplementedError() class ObjectDetectionLayoutDumper(LayoutDumper): """Specific dumper for object detection layouts.""" def __init__(self, layout): super().__init__(layout) def dump(self) -> dict: return {"type": "object_detection", "layout": self._layout} def dump_layout(layout_type, layout): """Dump a layout based on its type.""" if layout_type == "object_detection": dumper = ObjectDetectionLayoutDumper(layout) else: dumper = LayoutDumper(layout) return dumper.dump() ''' file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") opt = Optimizer( Namespace( project_root=file_path.parent.resolve(), disable_telemetry=True, tests_root="tests", test_framework="pytest", pytest_cmd="pytest", experiment_id=None, test_project_root=Path().resolve(), ) ) function_to_optimize = FunctionToOptimize( function_name="dump_layout", file_path=file_path, parents=[], starting_line=None, ending_line=None ) code_ctx = get_code_optimization_context(function_to_optimize, opt.args.project_root) qualified_names = {func.qualified_name for func in code_ctx.helper_functions} # Both class __init__ methods should be tracked as helpers assert "ObjectDetectionLayoutDumper.__init__" in qualified_names, ( "ObjectDetectionLayoutDumper.__init__ should be tracked" ) assert "LayoutDumper.__init__" in qualified_names, "LayoutDumper.__init__ should be tracked" # The testgen context should include both classes with their __init__ methods testgen_context = code_ctx.testgen_context.markdown assert "class LayoutDumper:" in testgen_context, "LayoutDumper should be in testgen context" assert "class ObjectDetectionLayoutDumper" in testgen_context, ( "ObjectDetectionLayoutDumper should be in testgen context" ) # Both __init__ methods should be in the testgen context (so LLM knows constructor signatures) assert testgen_context.count("def __init__") >= 2, "Both __init__ methods should be in testgen context" def test_enrich_testgen_context_extracts_project_classes(tmp_path: Path) -> None: """Test that enrich_testgen_context extracts class definitions from project modules.""" # Create a package structure with two modules package_dir = tmp_path / "mypackage" package_dir.mkdir() (package_dir / "__init__.py").write_text("", encoding="utf-8") # Create a module with a class definition (simulating Element-like class) elements_code = ''' import abc class Element(abc.ABC): """An element in the document.""" def __init__(self, element_id: str = None): self._element_id = element_id self.text = "" def __str__(self): return self.text class Text(Element): """A text element.""" def __init__(self, text: str, element_id: str = None): super().__init__(element_id) self.text = text ''' elements_path = package_dir / "elements.py" elements_path.write_text(elements_code, encoding="utf-8") # Create another module that imports from elements chunking_code = """ from mypackage.elements import Element class PreChunk: def __init__(self, elements: list[Element]): self._elements = elements class Accumulator: def will_fit(self, chunk: PreChunk) -> bool: return True """ chunking_path = package_dir / "chunking.py" chunking_path.write_text(chunking_code, encoding="utf-8") # Create CodeStringsMarkdown from the chunking module (simulating testgen context) context = CodeStringsMarkdown(code_strings=[CodeString(code=chunking_code, file_path=chunking_path)]) # Call enrich_testgen_context result = enrich_testgen_context(context, tmp_path) # Verify Element class was extracted assert len(result.code_strings) == 1, "Should extract exactly one class (Element)" extracted_code = result.code_strings[0].code # Verify the extracted code contains the Element class assert "class Element" in extracted_code, "Should contain Element class definition" assert "def __init__" in extracted_code, "Should contain __init__ method" assert "element_id" in extracted_code, "Should contain constructor parameter" assert "import abc" in extracted_code, "Should include necessary imports for base class" def test_enrich_testgen_context_skips_existing_definitions(tmp_path: Path) -> None: """Test that enrich_testgen_context skips classes already defined in context.""" # Create a package structure package_dir = tmp_path / "mypackage" package_dir.mkdir() (package_dir / "__init__.py").write_text("", encoding="utf-8") # Create a module with a class definition elements_code = """ class Element: def __init__(self, text: str): self.text = text """ elements_path = package_dir / "elements.py" elements_path.write_text(elements_code, encoding="utf-8") # Create code that imports Element but also redefines it locally code_with_local_def = """ from mypackage.elements import Element # Local redefinition (this happens when LLM redefines classes) class Element: def __init__(self, text: str): self.text = text class User: def process(self, elem: Element): pass """ code_path = package_dir / "user.py" code_path.write_text(code_with_local_def, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code_with_local_def, file_path=code_path)]) # Call enrich_testgen_context result = enrich_testgen_context(context, tmp_path) # Should NOT extract Element since it's already defined locally assert len(result.code_strings) == 0, "Should not extract classes already defined in context" def test_enrich_testgen_context_skips_third_party(tmp_path: Path) -> None: """Test that enrich_testgen_context skips third-party/stdlib imports.""" # Create a simple package package_dir = tmp_path / "mypackage" package_dir.mkdir() (package_dir / "__init__.py").write_text("", encoding="utf-8") # Code with stdlib/third-party imports code = """ from pathlib import Path from typing import Optional from dataclasses import dataclass class MyClass: def __init__(self, path: Path): self.path = path """ code_path = package_dir / "main.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) # Call enrich_testgen_context result = enrich_testgen_context(context, tmp_path) # Should not extract any classes (Path, Optional, dataclass are stdlib/third-party) assert len(result.code_strings) == 0, "Should not extract stdlib/third-party classes" def test_enrich_testgen_context_handles_multiple_imports(tmp_path: Path) -> None: """Test that enrich_testgen_context handles multiple class imports.""" # Create a package structure package_dir = tmp_path / "mypackage" package_dir.mkdir() (package_dir / "__init__.py").write_text("", encoding="utf-8") # Create a module with multiple class definitions types_code = """ class TypeA: def __init__(self, value: int): self.value = value class TypeB: def __init__(self, name: str): self.name = name class TypeC: def __init__(self): pass """ types_path = package_dir / "types.py" types_path.write_text(types_code, encoding="utf-8") # Create code that imports multiple classes code = """ from mypackage.types import TypeA, TypeB class Processor: def process(self, a: TypeA, b: TypeB): pass """ code_path = package_dir / "processor.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) # Call enrich_testgen_context result = enrich_testgen_context(context, tmp_path) # Should extract both TypeA and TypeB (but not TypeC since it's not imported) assert len(result.code_strings) == 2, "Should extract exactly two classes (TypeA, TypeB)" all_extracted_code = "\n".join(cs.code for cs in result.code_strings) assert "class TypeA" in all_extracted_code, "Should contain TypeA class" assert "class TypeB" in all_extracted_code, "Should contain TypeB class" assert "class TypeC" not in all_extracted_code, "Should NOT contain TypeC (not imported)" def test_enrich_testgen_context_includes_dataclass_decorators(tmp_path: Path) -> None: """Test that enrich_testgen_context includes decorators when extracting dataclasses.""" # Create a package structure package_dir = tmp_path / "mypackage" package_dir.mkdir() (package_dir / "__init__.py").write_text("", encoding="utf-8") # Create a module with dataclass definitions (like LLMConfig in skyvern) models_code = """from dataclasses import dataclass, field from typing import Optional @dataclass(frozen=True) class LLMConfigBase: model_name: str required_env_vars: list[str] supports_vision: bool add_assistant_prefix: bool @dataclass(frozen=True) class LLMConfig(LLMConfigBase): litellm_params: Optional[dict] = field(default=None) max_tokens: int | None = None """ models_path = package_dir / "models.py" models_path.write_text(models_code, encoding="utf-8") # Create code that imports the dataclass code = """from mypackage.models import LLMConfig class ConfigRegistry: def get_config(self) -> LLMConfig: pass """ code_path = package_dir / "registry.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) # Call enrich_testgen_context result = enrich_testgen_context(context, tmp_path) # Should extract both LLMConfigBase (base class) and LLMConfig assert len(result.code_strings) == 2, "Should extract both LLMConfig and its base class LLMConfigBase" # Combine extracted code to check for all required elements all_extracted_code = "\n".join(cs.code for cs in result.code_strings) # Verify the base class is extracted first (for proper inheritance understanding) base_class_idx = all_extracted_code.find("class LLMConfigBase") derived_class_idx = all_extracted_code.find("class LLMConfig(") assert base_class_idx < derived_class_idx, "Base class should appear before derived class" # Verify both classes include @dataclass decorators assert all_extracted_code.count("@dataclass(frozen=True)") == 2, ( "Should include @dataclass decorator for both classes" ) assert "class LLMConfig" in all_extracted_code, "Should contain LLMConfig class definition" assert "class LLMConfigBase" in all_extracted_code, "Should contain LLMConfigBase class definition" # Verify imports are included for dataclass-related items assert "from dataclasses import" in all_extracted_code, "Should include dataclasses import" def test_enrich_testgen_context_extracts_imports_for_decorated_classes(tmp_path: Path) -> None: """Test that extract_imports_for_class includes decorator and type annotation imports.""" # Create a package structure package_dir = tmp_path / "mypackage" package_dir.mkdir() (package_dir / "__init__.py").write_text("", encoding="utf-8") # Create a module with decorated class that uses field() and various type annotations models_code = """from dataclasses import dataclass, field from typing import Optional, List @dataclass class Config: name: str values: List[int] = field(default_factory=list) description: Optional[str] = None """ models_path = package_dir / "models.py" models_path.write_text(models_code, encoding="utf-8") # Create code that imports the class code = """from mypackage.models import Config def create_config() -> Config: return Config(name="test") """ code_path = package_dir / "main.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) assert len(result.code_strings) == 1, "Should extract Config class" extracted_code = result.code_strings[0].code # The extracted code should include the decorator assert "@dataclass" in extracted_code, "Should include @dataclass decorator" # The imports should include dataclass and field assert "from dataclasses import" in extracted_code, "Should include dataclasses import for decorator" def test_enrich_testgen_context_multiple_decorators(tmp_path: Path) -> None: """Test that classes with multiple decorators are extracted correctly.""" package_dir = tmp_path / "mypackage" package_dir.mkdir() (package_dir / "__init__.py").write_text("", encoding="utf-8") models_code = """from dataclasses import dataclass from functools import total_ordering @total_ordering @dataclass class OrderedConfig: name: str priority: int def __lt__(self, other): return self.priority < other.priority """ models_path = package_dir / "models.py" models_path.write_text(models_code, encoding="utf-8") code = """from mypackage.models import OrderedConfig def sort_configs(configs: list[OrderedConfig]) -> list[OrderedConfig]: return sorted(configs) """ code_path = package_dir / "main.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) assert len(result.code_strings) == 1 extracted_code = result.code_strings[0].code # Both decorators should be included assert "@total_ordering" in extracted_code, "Should include @total_ordering decorator" assert "@dataclass" in extracted_code, "Should include @dataclass decorator" assert "class OrderedConfig" in extracted_code def test_enrich_testgen_context_extracts_multilevel_inheritance(tmp_path: Path) -> None: """Test that base classes are recursively extracted for multi-level inheritance. This is critical for understanding dataclass constructor signatures, as fields from parent classes become required positional arguments in child classes. """ # Create a package structure package_dir = tmp_path / "mypackage" package_dir.mkdir() (package_dir / "__init__.py").write_text("", encoding="utf-8") # Create a module with multi-level inheritance like skyvern's LLM models: # GrandParent -> Parent -> Child models_code = '''from dataclasses import dataclass, field from typing import Optional, Literal @dataclass(frozen=True) class GrandParentConfig: """Base config with common fields.""" model_name: str required_env_vars: list[str] @dataclass(frozen=True) class ParentConfig(GrandParentConfig): """Intermediate config adding vision support.""" supports_vision: bool add_assistant_prefix: bool @dataclass(frozen=True) class ChildConfig(ParentConfig): """Full config with optional parameters.""" litellm_params: Optional[dict] = field(default=None) max_tokens: int | None = None temperature: float | None = 0.7 @dataclass(frozen=True) class RouterConfig(ParentConfig): """Router config branching from ParentConfig.""" model_list: list main_model_group: str routing_strategy: Literal["simple", "least-busy"] = "simple" ''' models_path = package_dir / "models.py" models_path.write_text(models_code, encoding="utf-8") # Create code that imports only the child classes (not the base classes) code = """from mypackage.models import ChildConfig, RouterConfig class ConfigRegistry: def get_child_config(self) -> ChildConfig: pass def get_router_config(self) -> RouterConfig: pass """ code_path = package_dir / "registry.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) # Call enrich_testgen_context result = enrich_testgen_context(context, tmp_path) # Should extract 4 classes: GrandParentConfig, ParentConfig, ChildConfig, RouterConfig # (all classes needed to understand the full inheritance hierarchy) assert len(result.code_strings) == 4, ( f"Should extract 4 classes (GrandParent, Parent, Child, Router), got {len(result.code_strings)}" ) # Combine extracted code all_extracted_code = "\n".join(cs.code for cs in result.code_strings) # Verify all classes are extracted assert "class GrandParentConfig" in all_extracted_code, "Should extract GrandParentConfig base class" assert "class ParentConfig(GrandParentConfig)" in all_extracted_code, "Should extract ParentConfig" assert "class ChildConfig(ParentConfig)" in all_extracted_code, "Should extract ChildConfig" assert "class RouterConfig(ParentConfig)" in all_extracted_code, "Should extract RouterConfig" # Verify classes are ordered correctly (base classes before derived) grandparent_idx = all_extracted_code.find("class GrandParentConfig") parent_idx = all_extracted_code.find("class ParentConfig(") child_idx = all_extracted_code.find("class ChildConfig(") router_idx = all_extracted_code.find("class RouterConfig(") assert grandparent_idx < parent_idx, "GrandParentConfig should appear before ParentConfig" assert parent_idx < child_idx, "ParentConfig should appear before ChildConfig" assert parent_idx < router_idx, "ParentConfig should appear before RouterConfig" # Verify the critical fields are visible for constructor understanding assert "model_name: str" in all_extracted_code, "Should include model_name field from GrandParent" assert "required_env_vars: list[str]" in all_extracted_code, "Should include required_env_vars field" assert "supports_vision: bool" in all_extracted_code, "Should include supports_vision field from Parent" assert "litellm_params:" in all_extracted_code, "Should include litellm_params field from Child" assert "model_list: list" in all_extracted_code, "Should include model_list field from Router" def test_enrich_testgen_context_extracts_userdict(tmp_path: Path) -> None: """Extracts __init__ from collections.UserDict when a class inherits from it.""" code = """from collections import UserDict class MyCustomDict(UserDict): pass """ code_path = tmp_path / "mydict.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) assert len(result.code_strings) == 1 code_string = result.code_strings[0] expected_code = """\ class UserDict: def __init__(self, dict=None, /, **kwargs): self.data = {} if dict is not None: self.update(dict) if kwargs: self.update(kwargs) """ assert code_string.code == expected_code assert code_string.file_path.as_posix().endswith("collections/__init__.py") def test_enrich_testgen_context_skips_unresolvable_base_classes(tmp_path: Path) -> None: """Returns empty when base class module cannot be resolved.""" child_code = """from base import ProjectBase class Child(ProjectBase): pass """ child_path = tmp_path / "child.py" child_path.write_text(child_code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=child_code, file_path=child_path)]) result = enrich_testgen_context(context, tmp_path) assert result.code_strings == [] def test_enrich_testgen_context_skips_builtin_base_classes(tmp_path: Path) -> None: """Returns empty for builtin classes like list that have no inspectable source.""" code = """class MyList(list): pass """ code_path = tmp_path / "mylist.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) assert result.code_strings == [] def test_enrich_testgen_context_deduplicates(tmp_path: Path) -> None: """Extracts the same external base class only once even when inherited multiple times.""" code = """from collections import UserDict class MyDict1(UserDict): pass class MyDict2(UserDict): pass """ code_path = tmp_path / "mydicts.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) assert len(result.code_strings) == 1 expected_code = """\ class UserDict: def __init__(self, dict=None, /, **kwargs): self.data = {} if dict is not None: self.update(dict) if kwargs: self.update(kwargs) """ assert result.code_strings[0].code == expected_code def test_enrich_testgen_context_empty_when_no_inheritance(tmp_path: Path) -> None: """Returns empty when there are no external base classes.""" code = """class SimpleClass: pass """ code_path = tmp_path / "simple.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) assert result.code_strings == [] @pytest.mark.skipif(sys.version_info < (3, 11), reason="enum.StrEnum requires Python 3.11+") def test_dependency_classes_kept_in_read_writable_context(tmp_path: Path) -> None: """Tests that classes used as dependencies (enums, dataclasses) are kept in read-writable context. This test verifies that when a function uses classes like enums or dataclasses as types or in match statements, those classes are included in the optimization context, even though they don't contain any target functions. """ code = """ import dataclasses import enum import typing as t class MessageKind(enum.StrEnum): ASK_FOR_CLIPBOARD_RESPONSE = "ask-for-clipboard-response" BEGIN_EXFILTRATION = "begin-exfiltration" @dataclasses.dataclass class Message: kind: str @dataclasses.dataclass class MessageInAskForClipboardResponse(Message): kind: t.Literal[MessageKind.ASK_FOR_CLIPBOARD_RESPONSE] = MessageKind.ASK_FOR_CLIPBOARD_RESPONSE text: str = "" @dataclasses.dataclass class MessageInBeginExfiltration(Message): kind: t.Literal[MessageKind.BEGIN_EXFILTRATION] = MessageKind.BEGIN_EXFILTRATION MessageIn = ( MessageInAskForClipboardResponse | MessageInBeginExfiltration ) def reify_channel_message(data: dict) -> MessageIn: kind = data.get("kind", None) match kind: case MessageKind.ASK_FOR_CLIPBOARD_RESPONSE: text = data.get("text") or "" return MessageInAskForClipboardResponse(text=text) case MessageKind.BEGIN_EXFILTRATION: return MessageInBeginExfiltration() case _: raise ValueError(f"Unknown message kind: '{kind}'") """ code_path = tmp_path / "message.py" code_path.write_text(code, encoding="utf-8") func_to_optimize = FunctionToOptimize(function_name="reify_channel_message", file_path=code_path, parents=[]) code_ctx = get_code_optimization_context(function_to_optimize=func_to_optimize, project_root_path=tmp_path) expected_read_writable = """ ```python:message.py import dataclasses import enum import typing as t class MessageKind(enum.StrEnum): ASK_FOR_CLIPBOARD_RESPONSE = "ask-for-clipboard-response" BEGIN_EXFILTRATION = "begin-exfiltration" @dataclasses.dataclass class Message: kind: str @dataclasses.dataclass class MessageInAskForClipboardResponse(Message): kind: t.Literal[MessageKind.ASK_FOR_CLIPBOARD_RESPONSE] = MessageKind.ASK_FOR_CLIPBOARD_RESPONSE text: str = "" @dataclasses.dataclass class MessageInBeginExfiltration(Message): kind: t.Literal[MessageKind.BEGIN_EXFILTRATION] = MessageKind.BEGIN_EXFILTRATION MessageIn = ( MessageInAskForClipboardResponse | MessageInBeginExfiltration ) def reify_channel_message(data: dict) -> MessageIn: kind = data.get("kind", None) match kind: case MessageKind.ASK_FOR_CLIPBOARD_RESPONSE: text = data.get("text") or "" return MessageInAskForClipboardResponse(text=text) case MessageKind.BEGIN_EXFILTRATION: return MessageInBeginExfiltration() case _: raise ValueError(f"Unknown message kind: '{kind}'") ``` """ assert code_ctx.read_writable_code.markdown.strip() == expected_read_writable.strip() def test_testgen_context_includes_external_base_inits(tmp_path: Path) -> None: """Test that external base class __init__ methods are included in testgen context. This covers line 65 in code_context_extractor.py where external_base_inits.code_strings are appended to the testgen context when a class inherits from an external library. """ code = """from collections import UserDict class MyCustomDict(UserDict): def target_method(self): return self.data """ file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") func_to_optimize = FunctionToOptimize( function_name="target_method", file_path=file_path, parents=[FunctionParent(name="MyCustomDict", type="ClassDef")], ) code_ctx = get_code_optimization_context(function_to_optimize=func_to_optimize, project_root_path=tmp_path) # The testgen context should include the UserDict __init__ method testgen_context = code_ctx.testgen_context.markdown assert "class UserDict:" in testgen_context, "UserDict class should be in testgen context" assert "def __init__" in testgen_context, "UserDict __init__ should be in testgen context" assert "self.data = {}" in testgen_context, "UserDict __init__ body should be included" def test_testgen_raises_when_exceeds_limit(tmp_path: Path) -> None: """Test that ValueError is raised when testgen context exceeds token limit.""" # Create a function with a very long body that exceeds limits even without imports/docstrings long_lines = [" x = 0"] for i in range(200): long_lines.append(f" x = x + {i}") long_lines.append(" return x") long_body = "\n".join(long_lines) code = f""" def target_function(): {long_body} """ file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") func_to_optimize = FunctionToOptimize(function_name="target_function", file_path=file_path, parents=[]) # Use a very small testgen_token_limit that cannot fit even the base function with pytest.raises(ValueError, match="Testgen code context has exceeded token limit"): get_code_optimization_context( function_to_optimize=func_to_optimize, project_root_path=tmp_path, testgen_token_limit=50, # Very small limit ) def test_enrich_testgen_context_attribute_base(tmp_path: Path) -> None: """Test handling of base class accessed as module.ClassName (ast.Attribute). This covers line 616 in code_context_extractor.py. """ # Use the standard import style which the code actually handles code = """from collections import UserDict class MyDict(UserDict): def custom_method(self): return self.data """ code_path = tmp_path / "mydict.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) # Should extract UserDict __init__ assert len(result.code_strings) == 1 assert "class UserDict:" in result.code_strings[0].code assert "def __init__" in result.code_strings[0].code def test_enrich_testgen_context_no_init_method(tmp_path: Path) -> None: """Test handling when base class has no __init__ method. This covers line 641 in code_context_extractor.py. """ # Create a class inheriting from a class that doesn't have inspectable __init__ code = """from typing import Protocol class MyProtocol(Protocol): pass """ code_path = tmp_path / "myproto.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) # Protocol's __init__ can't be easily inspected, should handle gracefully # Result may be empty or contain Protocol based on implementation assert isinstance(result.code_strings, list) def test_annotated_assignment_in_read_writable(tmp_path: Path) -> None: """Test that annotated assignments used by target function are in read-writable context. This covers lines 965-969 in code_context_extractor.py. """ code = """ CONFIG_VALUE: int = 42 class MyClass: def __init__(self): self.x = CONFIG_VALUE def target_method(self): return self.x """ file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") func_to_optimize = FunctionToOptimize( function_name="target_method", file_path=file_path, parents=[FunctionParent(name="MyClass", type="ClassDef")] ) code_ctx = get_code_optimization_context(function_to_optimize=func_to_optimize, project_root_path=tmp_path) # CONFIG_VALUE should be in read-writable context since it's used by __init__ read_writable = code_ctx.read_writable_code.markdown assert "CONFIG_VALUE" in read_writable def test_imported_class_definitions_module_path_none(tmp_path: Path) -> None: """Test handling when module_path is None in enrich_testgen_context. This covers line 560 in code_context_extractor.py. """ # Create code that imports from a non-existent or unresolvable module code = """ from nonexistent_module_xyz import SomeClass class MyClass: def method(self, obj: SomeClass): pass """ code_path = tmp_path / "test.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) # Should handle gracefully and return empty or partial results assert isinstance(result.code_strings, list) def test_imported_class_with_base_in_same_module(tmp_path: Path) -> None: """Test that imported classes with bases in the same module are extracted correctly. This covers line 528 in code_context_extractor.py - early return for already extracted. """ package_dir = tmp_path / "mypackage" package_dir.mkdir() (package_dir / "__init__.py").write_text("", encoding="utf-8") # Create a module with inheritance chain module_code = """ class BaseClass: def __init__(self): self.base = True class MiddleClass(BaseClass): def __init__(self): super().__init__() self.middle = True class DerivedClass(MiddleClass): def __init__(self): super().__init__() self.derived = True """ module_path = package_dir / "classes.py" module_path.write_text(module_code, encoding="utf-8") # Main module imports and uses the derived class main_code = """ from mypackage.classes import DerivedClass def target_function(obj: DerivedClass) -> bool: return obj.derived """ main_path = package_dir / "main.py" main_path.write_text(main_code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=main_code, file_path=main_path)]) result = enrich_testgen_context(context, tmp_path) # Should extract the inheritance chain all_code = "\n".join(cs.code for cs in result.code_strings) assert "class BaseClass" in all_code or "class DerivedClass" in all_code def test_augmented_assignment_not_in_context(tmp_path: Path) -> None: """Test that augmented assignments are handled but not included unless used. This covers line 962-969 in code_context_extractor.py. """ code = """ counter = 0 class MyClass: def __init__(self): global counter counter += 1 def target_method(self): return 42 """ file_path = tmp_path / "test_code.py" file_path.write_text(code, encoding="utf-8") func_to_optimize = FunctionToOptimize( function_name="target_method", file_path=file_path, parents=[FunctionParent(name="MyClass", type="ClassDef")] ) code_ctx = get_code_optimization_context(function_to_optimize=func_to_optimize, project_root_path=tmp_path) # counter should be in context since __init__ uses it read_writable = code_ctx.read_writable_code.markdown assert "counter" in read_writable def test_enrich_testgen_context_extracts_click_option(tmp_path: Path) -> None: """Extracts __init__ from click.Option when directly imported.""" code = """from click import Option def my_func(opt: Option) -> None: pass """ code_path = tmp_path / "myfunc.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) assert len(result.code_strings) == 1 code_string = result.code_strings[0] assert "class Option:" in code_string.code assert "def __init__" in code_string.code assert code_string.file_path is not None and "click" in code_string.file_path.as_posix() def test_enrich_testgen_context_extracts_project_class_defs(tmp_path: Path) -> None: """Extracts project class definitions via jedi resolution.""" # Create a project module with a class (tmp_path / "mymodule.py").write_text("class ProjectClass:\n pass\n", encoding="utf-8") code = """from mymodule import ProjectClass def my_func(obj: ProjectClass) -> None: pass """ code_path = tmp_path / "myfunc.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) assert len(result.code_strings) == 1 assert "class ProjectClass" in result.code_strings[0].code def test_enrich_testgen_context_skips_non_classes(tmp_path: Path) -> None: """Returns empty when imported name is a function, not a class.""" code = """from collections import OrderedDict from os.path import join def my_func() -> None: pass """ code_path = tmp_path / "myfunc.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) # join is a function, not a class — should be skipped # OrderedDict is a class and should be included class_names = [cs.code.split("\n")[0] for cs in result.code_strings] assert not any("join" in name for name in class_names) def test_enrich_testgen_context_skips_already_defined_classes(tmp_path: Path) -> None: """Skips classes already defined in the context (e.g., added by enrich_testgen_context).""" code = """from collections import UserDict class UserDict: def __init__(self): pass def my_func(d: UserDict) -> None: pass """ code_path = tmp_path / "myfunc.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) # UserDict is already defined in the context, so it should be skipped assert result.code_strings == [] def test_enrich_testgen_context_skips_builtin_annotations(tmp_path: Path) -> None: """Returns empty for builtin type annotations like list/dict that are not imported.""" code = """x: list = [] y: dict = {} def my_func() -> None: pass """ code_path = tmp_path / "myfunc.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) assert result.code_strings == [] def test_enrich_testgen_context_skips_object_init(tmp_path: Path) -> None: """Skips classes whose __init__ is just object.__init__ (trivial).""" # enum.Enum has a metaclass-based __init__, but individual enum members # effectively use object.__init__. Use a class we know has object.__init__. code = """from xml.etree.ElementTree import QName def my_func(q: QName) -> None: pass """ code_path = tmp_path / "myfunc.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) # QName has its own __init__, so it should be included if it's in site-packages. # But since it's stdlib (not site-packages), it should be skipped. assert result.code_strings == [] def test_enrich_testgen_context_empty_when_no_imports(tmp_path: Path) -> None: """Returns empty when there are no from-imports.""" code = """def my_func() -> None: pass """ code_path = tmp_path / "myfunc.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) assert result.code_strings == [] # --- Integration tests for transitive resolution in enrich_testgen_context --- def test_enrich_testgen_context_transitive_deps(tmp_path: Path) -> None: """Extracts transitive type dependencies from __init__ annotations.""" code = """from click import Context def my_func(ctx: Context) -> None: pass """ code_path = tmp_path / "myfunc.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) class_names = {cs.code.split("\n")[0].replace("class ", "").rstrip(":") for cs in result.code_strings} assert "Context" in class_names # Command is a transitive dep via Context.__init__ assert "Command" in class_names def test_enrich_testgen_context_no_infinite_loops(tmp_path: Path) -> None: """Handles classes with circular type references without infinite loops.""" # click.Context references Command, and Command references Context back # This should terminate without issues due to the processed_classes set code = """from click import Context def my_func(ctx: Context) -> None: pass """ code_path = tmp_path / "myfunc.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) # Should complete without hanging; just verify we got results assert len(result.code_strings) >= 1 def test_enrich_testgen_context_no_duplicate_stubs(tmp_path: Path) -> None: """Does not emit duplicate stubs for the same class name.""" code = """from click import Context def my_func(ctx: Context) -> None: pass """ code_path = tmp_path / "myfunc.py" code_path.write_text(code, encoding="utf-8") context = CodeStringsMarkdown(code_strings=[CodeString(code=code, file_path=code_path)]) result = enrich_testgen_context(context, tmp_path) class_names = [cs.code.split("\n")[0].replace("class ", "").rstrip(":") for cs in result.code_strings] assert len(class_names) == len(set(class_names)), f"Duplicate class stubs found: {class_names}"