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6 Commits

Author SHA1 Message Date
Devin AI
50508297c9 feat: centralize default memory path logic & add path validation tests
Co-Authored-By: Joe Moura <joao@crewai.com>
2024-12-28 01:36:03 +00:00
Devin AI
58b2ba4d90 refactor: update database connections to use storage_path
Co-Authored-By: Joe Moura <joao@crewai.com>
2024-12-28 01:12:30 +00:00
Arnaud Gelas
4274cde583 Improve handling of optional configurations in memory and storage
- Initialize contextual_memory in src/crewai/agent.py and src/crewai/crew.py
- Make UserMemory optional and add checks in src/crewai/memory/contextual/contextual_memory.py
- Add crew checks in src/crewai/memory/entity/entity_memory.py and
  src/crewai/memory/short_term/short_term_memory.py
- Allow optional storage_path in src/crewai/memory/storage/base_rag_storage.py
- Update storage classes to accept optional db_path in:
  src/crewai/memory/storage/kickoff_task_outputs_storage.py,
  src/crewai/memory/storage/ltm_sqlite_storage.py, and
  src/crewai/memory/storage/mem0_storage.py
- Modify src/crewai/memory/storage/rag_storage.py to use storage_path
- Enhance src/crewai/utilities/embedding_configurator.py to handle missing providers
2024-12-28 01:12:30 +00:00
Arnaud Gelas
12245d66a7 Run uv run ruff format 2024-12-28 01:12:30 +00:00
devin-ai-integration[bot]
2433819c4f fix: handle optional storage with null checks (#1808)
Co-authored-by: Devin AI <158243242+devin-ai-integration[bot]@users.noreply.github.com>
Co-authored-by: João Moura <joaomdmoura@gmail.com>
2024-12-27 21:30:39 -03:00
Erick Amorim
97fc44c930 fix: Change storage initialization to None for KnowledgeStorage (#1804)
* fix: Change storage initialization to None for KnowledgeStorage

* refactor: Change storage field to optional and improve error handling when saving documents

---------

Co-authored-by: João Moura <joaomdmoura@gmail.com>
2024-12-27 21:18:25 -03:00
27 changed files with 404 additions and 497 deletions

View File

@@ -4,7 +4,6 @@ from crewai.agent import Agent
from crewai.crew import Crew
from crewai.flow.flow import Flow
from crewai.knowledge.knowledge import Knowledge
from crewai.lite_agent import LiteAgent
from crewai.llm import LLM
from crewai.process import Process
from crewai.task import Task
@@ -24,5 +23,4 @@ __all__ = [
"LLM",
"Flow",
"Knowledge",
"LiteAgent",
]

View File

@@ -294,14 +294,7 @@ class Agent(BaseAgent):
)
if self.crew and self.crew.memory:
contextual_memory = ContextualMemory(
self.crew.memory_config,
self.crew._short_term_memory,
self.crew._long_term_memory,
self.crew._entity_memory,
self.crew._user_memory,
)
memory = contextual_memory.build_context_for_task(task, context)
memory = self.crew.contextual_memory.build_context_for_task(task, context)
if memory.strip() != "":
task_prompt += self.i18n.slice("memory").format(memory=memory)

View File

@@ -358,9 +358,9 @@ class CrewAgentExecutor(CrewAgentExecutorMixin):
if self.crew is not None and hasattr(self.crew, "_train_iteration"):
train_iteration = self.crew._train_iteration
if agent_id in training_data and isinstance(train_iteration, int):
training_data[agent_id][train_iteration][
"improved_output"
] = result.output
training_data[agent_id][train_iteration]["improved_output"] = (
result.output
)
training_handler.save(training_data)
else:
self._printer.print(

View File

@@ -153,8 +153,12 @@ class ToolCommand(BaseCommand, PlusAPIMixin):
login_response_json = login_response.json()
settings = Settings()
settings.tool_repository_username = login_response_json["credential"]["username"]
settings.tool_repository_password = login_response_json["credential"]["password"]
settings.tool_repository_username = login_response_json["credential"][
"username"
]
settings.tool_repository_password = login_response_json["credential"][
"password"
]
settings.dump()
console.print(
@@ -179,7 +183,7 @@ class ToolCommand(BaseCommand, PlusAPIMixin):
capture_output=False,
env=self._build_env_with_credentials(repository_handle),
text=True,
check=True
check=True,
)
if add_package_result.stderr:
@@ -204,7 +208,11 @@ class ToolCommand(BaseCommand, PlusAPIMixin):
settings = Settings()
env = os.environ.copy()
env[f"UV_INDEX_{repository_handle}_USERNAME"] = str(settings.tool_repository_username or "")
env[f"UV_INDEX_{repository_handle}_PASSWORD"] = str(settings.tool_repository_password or "")
env[f"UV_INDEX_{repository_handle}_USERNAME"] = str(
settings.tool_repository_username or ""
)
env[f"UV_INDEX_{repository_handle}_PASSWORD"] = str(
settings.tool_repository_password or ""
)
return env

View File

@@ -25,6 +25,7 @@ from crewai.crews.crew_output import CrewOutput
from crewai.knowledge.knowledge import Knowledge
from crewai.knowledge.source.base_knowledge_source import BaseKnowledgeSource
from crewai.llm import LLM
from crewai.memory.contextual.contextual_memory import ContextualMemory
from crewai.memory.entity.entity_memory import EntityMemory
from crewai.memory.long_term.long_term_memory import LongTermMemory
from crewai.memory.short_term.short_term_memory import ShortTermMemory
@@ -278,6 +279,13 @@ class Crew(BaseModel):
)
else:
self._user_memory = None
self.contextual_memory = ContextualMemory(
memory_config=self.memory_config,
stm=self._short_term_memory,
ltm=self._long_term_memory,
em=self._entity_memory,
um=self._user_memory,
)
return self
@model_validator(mode="after")

View File

@@ -14,13 +14,13 @@ class Knowledge(BaseModel):
Knowledge is a collection of sources and setup for the vector store to save and query relevant context.
Args:
sources: List[BaseKnowledgeSource] = Field(default_factory=list)
storage: KnowledgeStorage = Field(default_factory=KnowledgeStorage)
storage: Optional[KnowledgeStorage] = Field(default=None)
embedder_config: Optional[Dict[str, Any]] = None
"""
sources: List[BaseKnowledgeSource] = Field(default_factory=list)
model_config = ConfigDict(arbitrary_types_allowed=True)
storage: KnowledgeStorage = Field(default_factory=KnowledgeStorage)
storage: Optional[KnowledgeStorage] = Field(default=None)
embedder_config: Optional[Dict[str, Any]] = None
collection_name: Optional[str] = None
@@ -49,8 +49,13 @@ class Knowledge(BaseModel):
"""
Query across all knowledge sources to find the most relevant information.
Returns the top_k most relevant chunks.
Raises:
ValueError: If storage is not initialized.
"""
if self.storage is None:
raise ValueError("Storage is not initialized.")
results = self.storage.search(
query,
limit,

View File

@@ -22,7 +22,7 @@ class BaseFileKnowledgeSource(BaseKnowledgeSource, ABC):
default_factory=list, description="The path to the file"
)
content: Dict[Path, str] = Field(init=False, default_factory=dict)
storage: KnowledgeStorage = Field(default_factory=KnowledgeStorage)
storage: Optional[KnowledgeStorage] = Field(default=None)
safe_file_paths: List[Path] = Field(default_factory=list)
@field_validator("file_path", "file_paths", mode="before")
@@ -62,7 +62,10 @@ class BaseFileKnowledgeSource(BaseKnowledgeSource, ABC):
def _save_documents(self):
"""Save the documents to the storage."""
self.storage.save(self.chunks)
if self.storage:
self.storage.save(self.chunks)
else:
raise ValueError("No storage found to save documents.")
def convert_to_path(self, path: Union[Path, str]) -> Path:
"""Convert a path to a Path object."""

View File

@@ -16,7 +16,7 @@ class BaseKnowledgeSource(BaseModel, ABC):
chunk_embeddings: List[np.ndarray] = Field(default_factory=list)
model_config = ConfigDict(arbitrary_types_allowed=True)
storage: KnowledgeStorage = Field(default_factory=KnowledgeStorage)
storage: Optional[KnowledgeStorage] = Field(default=None)
metadata: Dict[str, Any] = Field(default_factory=dict) # Currently unused
collection_name: Optional[str] = Field(default=None)
@@ -46,4 +46,7 @@ class BaseKnowledgeSource(BaseModel, ABC):
Save the documents to the storage.
This method should be called after the chunks and embeddings are generated.
"""
self.storage.save(self.chunks)
if self.storage:
self.storage.save(self.chunks)
else:
raise ValueError("No storage found to save documents.")

View File

@@ -1,258 +0,0 @@
import os
from typing import Any, Dict, List, Optional, Union
from pydantic import Field, InstanceOf, PrivateAttr, model_validator
from crewai.agents import CacheHandler
from crewai.agents.agent_builder.base_agent import BaseAgent
from crewai.agents.crew_agent_executor import CrewAgentExecutor
from crewai.llm import LLM
from crewai.task import Task
from crewai.tools import BaseTool
from crewai.tools.base_tool import Tool
from crewai.utilities import Converter, Prompts
from crewai.utilities.token_counter_callback import TokenCalcHandler
class LiteAgent(BaseAgent):
"""Represents a lightweight agent in a system.
Each agent has a role, a goal, a backstory, and an optional language model (llm).
The agent can execute tasks but with fewer features compared to the full Agent class.
This is a simplified version of the Agent class with less dependencies and overhead.
Attributes:
agent_executor: An instance of the CrewAgentExecutor class.
role: The role of the agent.
goal: The objective of the agent.
backstory: The backstory of the agent.
llm: The language model that will run the agent.
max_iter: Maximum number of iterations for an agent to execute a task.
verbose: Whether the agent execution should be in verbose mode.
tools: Tools at agent's disposal
"""
_times_executed: int = PrivateAttr(default=0)
max_execution_time: Optional[int] = Field(
default=None,
description="Maximum execution time for an agent to execute a task",
)
cache_handler: InstanceOf[CacheHandler] = Field(
default=None, description="An instance of the CacheHandler class."
)
llm: Union[str, InstanceOf[LLM], Any] = Field(
description="Language model that will run the agent.", default=None
)
max_iter: int = Field(
default=20,
description="Maximum number of iterations for an agent to execute a task before giving it's best answer",
)
max_retry_limit: int = Field(
default=2,
description="Maximum number of retries for an agent to execute a task when an error occurs.",
)
tools_results: Optional[List[Any]] = Field(
default=[], description="Results of the tools used by the agent."
)
@model_validator(mode="after")
def post_init_setup(self):
if isinstance(self.llm, str):
self.llm = LLM(model=self.llm)
elif isinstance(self.llm, LLM):
pass
elif self.llm is None:
model_name = (
os.environ.get("OPENAI_MODEL_NAME")
or os.environ.get("MODEL")
or "gpt-4o-mini"
)
llm_params = {"model": model_name}
api_base = os.environ.get("OPENAI_API_BASE") or os.environ.get(
"OPENAI_BASE_URL"
)
if api_base:
llm_params["base_url"] = api_base
api_key = os.environ.get("OPENAI_API_KEY")
if api_key:
llm_params["api_key"] = api_key
self.llm = LLM(**llm_params)
else:
llm_params = {
"model": getattr(self.llm, "model_name", None)
or getattr(self.llm, "deployment_name", None)
or str(self.llm),
"temperature": getattr(self.llm, "temperature", None),
"max_tokens": getattr(self.llm, "max_tokens", None),
"api_key": getattr(self.llm, "api_key", None),
"base_url": getattr(self.llm, "base_url", None),
"organization": getattr(self.llm, "organization", None),
}
llm_params = {k: v for k, v in llm_params.items() if v is not None}
self.llm = LLM(**llm_params)
if not self.agent_executor:
self._setup_agent_executor()
return self
def _setup_agent_executor(self):
if not self.cache_handler:
self.cache_handler = CacheHandler()
self.set_cache_handler(self.cache_handler)
def execute_task(
self,
task: Task,
context: Optional[str] = None,
tools: Optional[List[BaseTool]] = None,
) -> str:
"""Execute a task with the agent.
Args:
task: Task to execute.
context: Context to execute the task in.
tools: Tools to use for the task.
Returns:
Output of the agent
"""
if self.tools_handler:
self.tools_handler.last_used_tool = {}
task_prompt = task.prompt()
if task.output_json or task.output_pydantic:
if task.output_json:
schema = Converter.generate_model_description(task.output_json)
elif task.output_pydantic:
schema = Converter.generate_model_description(task.output_pydantic)
task_prompt += "\n" + self.i18n.slice("formatted_task_instructions").format(
output_format=schema
)
if context:
task_prompt = self.i18n.slice("task_with_context").format(
task=task_prompt, context=context
)
tools = tools or self.tools or []
self.create_agent_executor(tools=tools, task=task)
try:
result = self.agent_executor.invoke(
{
"input": task_prompt,
"tool_names": self.agent_executor.tools_names,
"tools": self.agent_executor.tools_description,
"ask_for_human_input": task.human_input,
}
)["output"]
except Exception as e:
self._times_executed += 1
if self._times_executed > self.max_retry_limit:
raise e
result = self.execute_task(task, context, tools)
if self.max_rpm and self._rpm_controller:
self._rpm_controller.stop_rpm_counter()
for tool_result in self.tools_results:
if tool_result.get("result_as_answer", False):
result = tool_result["result"]
return result
def create_agent_executor(
self, tools: Optional[List[BaseTool]] = None, task=None
) -> None:
"""Create an agent executor for the agent.
Returns:
An instance of the CrewAgentExecutor class.
"""
tools = tools or self.tools or []
parsed_tools = self._parse_tools(tools)
prompt = Prompts(
agent=self,
tools=tools,
i18n=self.i18n,
).task_execution()
stop_words = [self.i18n.slice("observation")]
self.agent_executor = CrewAgentExecutor(
llm=self.llm,
task=task,
agent=self,
crew=self.crew,
tools=parsed_tools,
prompt=prompt,
original_tools=tools,
stop_words=stop_words,
max_iter=self.max_iter,
tools_handler=self.tools_handler,
tools_names=self.__tools_names(parsed_tools),
tools_description=self._render_text_description_and_args(parsed_tools),
respect_context_window=True,
request_within_rpm_limit=(
self._rpm_controller.check_or_wait if self._rpm_controller else None
),
callbacks=[TokenCalcHandler(self._token_process)],
)
def get_delegation_tools(self, agents: List[BaseAgent]):
"""Stub implementation - LiteAgent doesn't support delegation."""
return []
def get_multimodal_tools(self) -> List[Tool]:
"""Stub implementation - LiteAgent doesn't support multimodal tools."""
return []
def get_code_execution_tools(self):
"""Stub implementation - LiteAgent doesn't support code execution."""
return []
def get_output_converter(self, llm, text, model, instructions):
"""Get the output converter for the agent."""
return Converter(llm=llm, text=text, model=model, instructions=instructions)
def _parse_tools(self, tools: List[Any]) -> List[Any]:
"""Parse tools to be used for the task."""
tools_list = []
try:
from crewai.tools import BaseTool as CrewAITool
for tool in tools:
if isinstance(tool, CrewAITool):
tools_list.append(tool.to_structured_tool())
else:
tools_list.append(tool)
except ModuleNotFoundError:
tools_list = []
for tool in tools:
tools_list.append(tool)
return tools_list
def _render_text_description_and_args(self, tools: List[BaseTool]) -> str:
"""Render the tool name, description, and args in plain text."""
tool_strings = []
for tool in tools:
tool_strings.append(tool.description)
return "\n".join(tool_strings)
@staticmethod
def __tools_names(tools) -> str:
"""Get the names of the tools as a comma-separated string."""
return ", ".join([t.name for t in tools])
def __repr__(self):
return f"LiteAgent(role={self.role}, goal={self.goal}, backstory={self.backstory})"

View File

@@ -1,4 +1,5 @@
from typing import Any, Dict, Optional
from crewai.task import Task
from crewai.memory import EntityMemory, LongTermMemory, ShortTermMemory, UserMemory
@@ -10,7 +11,7 @@ class ContextualMemory:
stm: ShortTermMemory,
ltm: LongTermMemory,
em: EntityMemory,
um: UserMemory,
um: Optional[UserMemory],
):
if memory_config is not None:
self.memory_provider = memory_config.get("provider")
@@ -21,7 +22,7 @@ class ContextualMemory:
self.em = em
self.um = um
def build_context_for_task(self, task, context) -> str:
def build_context_for_task(self, task: Task, context: str) -> str:
"""
Automatically builds a minimal, highly relevant set of contextual information
for a given task.
@@ -39,7 +40,7 @@ class ContextualMemory:
context.append(self._fetch_user_context(query))
return "\n".join(filter(None, context))
def _fetch_stm_context(self, query) -> str:
def _fetch_stm_context(self, query: str) -> str:
"""
Fetches recent relevant insights from STM related to the task's description and expected_output,
formatted as bullet points.
@@ -53,7 +54,7 @@ class ContextualMemory:
)
return f"Recent Insights:\n{formatted_results}" if stm_results else ""
def _fetch_ltm_context(self, task) -> Optional[str]:
def _fetch_ltm_context(self, task: str) -> Optional[str]:
"""
Fetches historical data or insights from LTM that are relevant to the task's description and expected_output,
formatted as bullet points.
@@ -72,7 +73,7 @@ class ContextualMemory:
return f"Historical Data:\n{formatted_results}" if ltm_results else ""
def _fetch_entity_context(self, query) -> str:
def _fetch_entity_context(self, query: str) -> str:
"""
Fetches relevant entity information from Entity Memory related to the task's description and expected_output,
formatted as bullet points.
@@ -94,6 +95,8 @@ class ContextualMemory:
Returns:
str: Formatted user memories as bullet points, or an empty string if none found.
"""
if not self.um:
return ""
user_memories = self.um.search(query)
if not user_memories:
return ""

View File

@@ -11,7 +11,7 @@ class EntityMemory(Memory):
"""
def __init__(self, crew=None, embedder_config=None, storage=None, path=None):
if hasattr(crew, "memory_config") and crew.memory_config is not None:
if crew and hasattr(crew, "memory_config") and crew.memory_config is not None:
self.memory_provider = crew.memory_config.get("provider")
else:
self.memory_provider = None

View File

@@ -15,8 +15,17 @@ class LongTermMemory(Memory):
"""
def __init__(self, storage=None, path=None):
"""Initialize long term memory.
Args:
storage: Optional custom storage instance
path: Optional custom path for storage location
Note:
If both storage and path are provided, storage takes precedence
"""
if not storage:
storage = LTMSQLiteStorage(db_path=path) if path else LTMSQLiteStorage()
storage = LTMSQLiteStorage(storage_path=path) if path else LTMSQLiteStorage()
super().__init__(storage)
def save(self, item: LongTermMemoryItem) -> None: # type: ignore # BUG?: Signature of "save" incompatible with supertype "Memory"

View File

@@ -15,7 +15,7 @@ class ShortTermMemory(Memory):
"""
def __init__(self, crew=None, embedder_config=None, storage=None, path=None):
if hasattr(crew, "memory_config") and crew.memory_config is not None:
if crew and hasattr(crew, "memory_config") and crew.memory_config is not None:
self.memory_provider = crew.memory_config.get("provider")
else:
self.memory_provider = None

View File

@@ -1,5 +1,11 @@
from abc import ABC, abstractmethod
from typing import Any, Dict, List, Optional
from pathlib import Path
import os
from typing import Any, Dict, List, Optional, TypeVar
from abc import ABC, abstractmethod
from pathlib import Path
from crewai.utilities.paths import get_default_storage_path
class BaseRAGStorage(ABC):
@@ -12,17 +18,46 @@ class BaseRAGStorage(ABC):
def __init__(
self,
type: str,
storage_path: Optional[Path] = None,
allow_reset: bool = True,
embedder_config: Optional[Any] = None,
crew: Any = None,
):
) -> None:
"""Initialize the BaseRAGStorage.
Args:
type: Type of storage being used
storage_path: Optional custom path for storage location
allow_reset: Whether storage can be reset
embedder_config: Optional configuration for the embedder
crew: Optional crew instance this storage belongs to
Raises:
PermissionError: If storage path is not writable
OSError: If storage path cannot be created
"""
self.type = type
self.storage_path = storage_path if storage_path else get_default_storage_path('rag')
# Validate storage path
try:
self.storage_path.parent.mkdir(parents=True, exist_ok=True)
if not os.access(self.storage_path.parent, os.W_OK):
raise PermissionError(f"No write permission for storage path: {self.storage_path}")
except OSError as e:
raise OSError(f"Failed to initialize storage path: {str(e)}")
self.allow_reset = allow_reset
self.embedder_config = embedder_config
self.crew = crew
self.agents = self._initialize_agents()
def _initialize_agents(self) -> str:
"""Initialize agent identifiers for storage.
Returns:
str: Underscore-joined string of sanitized agent role names
"""
if self.crew:
return "_".join(
[self._sanitize_role(agent.role) for agent in self.crew.agents]
@@ -31,12 +66,27 @@ class BaseRAGStorage(ABC):
@abstractmethod
def _sanitize_role(self, role: str) -> str:
"""Sanitizes agent roles to ensure valid directory names."""
"""Sanitizes agent roles to ensure valid directory names.
Args:
role: The agent role name to sanitize
Returns:
str: Sanitized role name safe for use in paths
"""
pass
@abstractmethod
def save(self, value: Any, metadata: Dict[str, Any]) -> None:
"""Save a value with metadata to the storage."""
"""Save a value with metadata to the storage.
Args:
value: The value to store
metadata: Additional metadata to store with the value
Raises:
OSError: If there is an error writing to storage
"""
pass
@abstractmethod
@@ -46,25 +96,55 @@ class BaseRAGStorage(ABC):
limit: int = 3,
filter: Optional[dict] = None,
score_threshold: float = 0.35,
) -> List[Any]:
"""Search for entries in the storage."""
) -> List[Dict[str, Any]]:
"""Search for entries in the storage.
Args:
query: The search query string
limit: Maximum number of results to return
filter: Optional filter criteria
score_threshold: Minimum similarity score threshold
Returns:
List[Dict[str, Any]]: List of matching entries with their metadata
"""
pass
@abstractmethod
def reset(self) -> None:
"""Reset the storage."""
"""Reset the storage.
Raises:
OSError: If there is an error clearing storage
PermissionError: If reset is not allowed
"""
pass
@abstractmethod
def _generate_embedding(
self, text: str, metadata: Optional[Dict[str, Any]] = None
) -> Any:
"""Generate an embedding for the given text and metadata."""
) -> List[float]:
"""Generate an embedding for the given text and metadata.
Args:
text: Text to generate embedding for
metadata: Optional metadata to include in embedding
Returns:
List[float]: Vector embedding of the text
Raises:
ValueError: If text is empty or invalid
"""
pass
@abstractmethod
def _initialize_app(self):
"""Initialize the vector db."""
def _initialize_app(self) -> None:
"""Initialize the vector db.
Raises:
OSError: If vector db initialization fails
"""
pass
def setup_config(self, config: Dict[str, Any]):

View File

@@ -1,11 +1,13 @@
import json
import os
import sqlite3
from pathlib import Path
from typing import Any, Dict, List, Optional
from crewai.task import Task
from crewai.utilities import Printer
from crewai.utilities.crew_json_encoder import CrewJSONEncoder
from crewai.utilities.paths import db_storage_path
from crewai.utilities.paths import get_default_storage_path
class KickoffTaskOutputsSQLiteStorage:
@@ -13,10 +15,26 @@ class KickoffTaskOutputsSQLiteStorage:
An updated SQLite storage class for kickoff task outputs storage.
"""
def __init__(
self, db_path: str = f"{db_storage_path()}/latest_kickoff_task_outputs.db"
) -> None:
self.db_path = db_path
def __init__(self, storage_path: Optional[Path] = None) -> None:
"""Initialize kickoff task outputs storage.
Args:
storage_path: Optional custom path for storage location
Raises:
PermissionError: If storage path is not writable
OSError: If storage path cannot be created
"""
self.storage_path = storage_path if storage_path else get_default_storage_path('kickoff')
# Validate storage path
try:
self.storage_path.parent.mkdir(parents=True, exist_ok=True)
if not os.access(self.storage_path.parent, os.W_OK):
raise PermissionError(f"No write permission for storage path: {self.storage_path}")
except OSError as e:
raise OSError(f"Failed to initialize storage path: {str(e)}")
self._printer: Printer = Printer()
self._initialize_db()
@@ -25,7 +43,7 @@ class KickoffTaskOutputsSQLiteStorage:
Initializes the SQLite database and creates LTM table
"""
try:
with sqlite3.connect(self.db_path) as conn:
with sqlite3.connect(str(self.storage_path)) as conn:
cursor = conn.cursor()
cursor.execute(
"""
@@ -55,9 +73,21 @@ class KickoffTaskOutputsSQLiteStorage:
task_index: int,
was_replayed: bool = False,
inputs: Dict[str, Any] = {},
):
) -> None:
"""Add a task output to storage.
Args:
task: The task whose output is being stored
output: The output data from the task
task_index: Index of this task in the sequence
was_replayed: Whether this was from a replay
inputs: Optional input data that led to this output
Raises:
sqlite3.Error: If there is an error saving to database
"""
try:
with sqlite3.connect(self.db_path) as conn:
with sqlite3.connect(str(self.storage_path)) as conn:
cursor = conn.cursor()
cursor.execute(
"""
@@ -90,7 +120,7 @@ class KickoffTaskOutputsSQLiteStorage:
Updates an existing row in the latest_kickoff_task_outputs table based on task_index.
"""
try:
with sqlite3.connect(self.db_path) as conn:
with sqlite3.connect(str(self.storage_path)) as conn:
cursor = conn.cursor()
fields = []
@@ -119,7 +149,7 @@ class KickoffTaskOutputsSQLiteStorage:
def load(self) -> Optional[List[Dict[str, Any]]]:
try:
with sqlite3.connect(self.db_path) as conn:
with sqlite3.connect(str(self.storage_path)) as conn:
cursor = conn.cursor()
cursor.execute("""
SELECT *
@@ -155,7 +185,7 @@ class KickoffTaskOutputsSQLiteStorage:
Deletes all rows from the latest_kickoff_task_outputs table.
"""
try:
with sqlite3.connect(self.db_path) as conn:
with sqlite3.connect(str(self.storage_path)) as conn:
cursor = conn.cursor()
cursor.execute("DELETE FROM latest_kickoff_task_outputs")
conn.commit()

View File

@@ -1,9 +1,11 @@
import json
import os
import sqlite3
from pathlib import Path
from typing import Any, Dict, List, Optional, Union
from crewai.utilities import Printer
from crewai.utilities.paths import db_storage_path
from crewai.utilities.paths import get_default_storage_path
class LTMSQLiteStorage:
@@ -11,10 +13,26 @@ class LTMSQLiteStorage:
An updated SQLite storage class for LTM data storage.
"""
def __init__(
self, db_path: str = f"{db_storage_path()}/long_term_memory_storage.db"
) -> None:
self.db_path = db_path
def __init__(self, storage_path: Optional[Path] = None) -> None:
"""Initialize LTM SQLite storage.
Args:
storage_path: Optional custom path for storage location
Raises:
PermissionError: If storage path is not writable
OSError: If storage path cannot be created
"""
self.storage_path = storage_path if storage_path else get_default_storage_path('ltm')
# Validate storage path
try:
self.storage_path.parent.mkdir(parents=True, exist_ok=True)
if not os.access(self.storage_path.parent, os.W_OK):
raise PermissionError(f"No write permission for storage path: {self.storage_path}")
except OSError as e:
raise OSError(f"Failed to initialize storage path: {str(e)}")
self._printer: Printer = Printer()
self._initialize_db()
@@ -23,7 +41,7 @@ class LTMSQLiteStorage:
Initializes the SQLite database and creates LTM table
"""
try:
with sqlite3.connect(self.db_path) as conn:
with sqlite3.connect(str(self.storage_path)) as conn:
cursor = conn.cursor()
cursor.execute(
"""
@@ -51,9 +69,20 @@ class LTMSQLiteStorage:
datetime: str,
score: Union[int, float],
) -> None:
"""Save a memory entry to long-term memory.
Args:
task_description: Description of the task this memory relates to
metadata: Additional data to store with the memory
datetime: Timestamp for when this memory was created
score: Relevance score for this memory (higher is more relevant)
Raises:
sqlite3.Error: If there is an error saving to the database
"""
"""Saves data to the LTM table with error handling."""
try:
with sqlite3.connect(self.db_path) as conn:
with sqlite3.connect(str(self.storage_path)) as conn:
cursor = conn.cursor()
cursor.execute(
"""
@@ -74,7 +103,7 @@ class LTMSQLiteStorage:
) -> Optional[List[Dict[str, Any]]]:
"""Queries the LTM table by task description with error handling."""
try:
with sqlite3.connect(self.db_path) as conn:
with sqlite3.connect(str(self.storage_path)) as conn:
cursor = conn.cursor()
cursor.execute(
f"""
@@ -109,7 +138,7 @@ class LTMSQLiteStorage:
) -> None:
"""Resets the LTM table with error handling."""
try:
with sqlite3.connect(self.db_path) as conn:
with sqlite3.connect(str(self.storage_path)) as conn:
cursor = conn.cursor()
cursor.execute("DELETE FROM long_term_memories")
conn.commit()

View File

@@ -19,7 +19,7 @@ class Mem0Storage(Storage):
self.memory_type = type
self.crew = crew
self.memory_config = crew.memory_config
self.memory_config = crew.memory_config if crew else None
# User ID is required for user memory type "user" since it's used as a unique identifier for the user.
user_id = self._get_user_id()
@@ -27,9 +27,10 @@ class Mem0Storage(Storage):
raise ValueError("User ID is required for user memory type")
# API key in memory config overrides the environment variable
mem0_api_key = self.memory_config.get("config", {}).get("api_key") or os.getenv(
"MEM0_API_KEY"
)
if self.memory_config and self.memory_config.get("config"):
mem0_api_key = self.memory_config.get("config").get("api_key")
else:
mem0_api_key = os.getenv("MEM0_API_KEY")
self.memory = MemoryClient(api_key=mem0_api_key)
def _sanitize_role(self, role: str) -> str:

View File

@@ -11,7 +11,6 @@ from chromadb.api import ClientAPI
from crewai.memory.storage.base_rag_storage import BaseRAGStorage
from crewai.utilities import EmbeddingConfigurator
from crewai.utilities.constants import MAX_FILE_NAME_LENGTH
from crewai.utilities.paths import db_storage_path
@contextlib.contextmanager
@@ -40,9 +39,15 @@ class RAGStorage(BaseRAGStorage):
app: ClientAPI | None = None
def __init__(
self, type, allow_reset=True, embedder_config=None, crew=None, path=None
self,
type,
storage_path=None,
allow_reset=True,
embedder_config=None,
crew=None,
path=None,
):
super().__init__(type, allow_reset, embedder_config, crew)
super().__init__(type, storage_path, allow_reset, embedder_config, crew)
agents = crew.agents if crew else []
agents = [self._sanitize_role(agent.role) for agent in agents]
agents = "_".join(agents)
@@ -90,7 +95,7 @@ class RAGStorage(BaseRAGStorage):
"""
Ensures file name does not exceed max allowed by OS
"""
base_path = f"{db_storage_path()}/{type}"
base_path = f"{self.storage_path}/{type}"
if len(file_name) > MAX_FILE_NAME_LENGTH:
logging.warning(
@@ -152,7 +157,7 @@ class RAGStorage(BaseRAGStorage):
try:
if self.app:
self.app.reset()
shutil.rmtree(f"{db_storage_path()}/{self.type}")
shutil.rmtree(f"{self.storage_path}/{self.type}")
self.app = None
self.collection = None
except Exception as e:

View File

@@ -66,7 +66,6 @@ def cache_handler(func):
def crew(func) -> Callable[..., Crew]:
@wraps(func)
def wrapper(self, *args, **kwargs) -> Crew:
instantiated_tasks = []

View File

@@ -216,5 +216,5 @@ def CrewBase(cls: T) -> T:
# Include base class (qual)name in the wrapper class (qual)name.
WrappedClass.__name__ = CrewBase.__name__ + "(" + cls.__name__ + ")"
WrappedClass.__qualname__ = CrewBase.__qualname__ + "(" + cls.__name__ + ")"
return cast(T, WrappedClass)

View File

@@ -373,7 +373,9 @@ class Task(BaseModel):
content = (
json_output
if json_output
else pydantic_output.model_dump_json() if pydantic_output else result
else pydantic_output.model_dump_json()
if pydantic_output
else result
)
self._save_file(content)

View File

@@ -27,7 +27,7 @@ class EmbeddingConfigurator:
if embedder_config is None:
return self._create_default_embedding_function()
provider = embedder_config.get("provider")
provider = embedder_config.get("provider", "")
config = embedder_config.get("config", {})
model_name = config.get("model")
@@ -38,12 +38,13 @@ class EmbeddingConfigurator:
except Exception as e:
raise ValueError(f"Invalid custom embedding function: {str(e)}")
if provider not in self.embedding_functions:
embedding_function = self.embedding_functions.get(provider, None)
if not embedding_function:
raise Exception(
f"Unsupported embedding provider: {provider}, supported providers: {list(self.embedding_functions.keys())}"
)
return self.embedding_functions[provider](config, model_name)
return embedding_function(config, model_name)
@staticmethod
def _create_default_embedding_function():

View File

@@ -22,3 +22,26 @@ def get_project_directory_name():
cwd = Path.cwd()
project_directory_name = cwd.name
return project_directory_name
def get_default_storage_path(storage_type: str) -> Path:
"""Returns the default storage path for a given storage type.
Args:
storage_type: Type of storage ('ltm', 'kickoff', 'rag')
Returns:
Path: Default storage path for the specified type
Raises:
ValueError: If storage_type is not recognized
"""
base_path = db_storage_path()
if storage_type == 'ltm':
return base_path / 'latest_long_term_memories.db'
elif storage_type == 'kickoff':
return base_path / 'latest_kickoff_task_outputs.db'
elif storage_type == 'rag':
return base_path
else:
raise ValueError(f"Unknown storage type: {storage_type}")

View File

@@ -28,9 +28,10 @@ def test_create_success(mock_subprocess):
with in_temp_dir():
tool_command = ToolCommand()
with patch.object(tool_command, "login") as mock_login, patch(
"sys.stdout", new=StringIO()
) as fake_out:
with (
patch.object(tool_command, "login") as mock_login,
patch("sys.stdout", new=StringIO()) as fake_out,
):
tool_command.create("test-tool")
output = fake_out.getvalue()
@@ -82,7 +83,7 @@ def test_install_success(mock_get, mock_subprocess_run):
capture_output=False,
text=True,
check=True,
env=unittest.mock.ANY
env=unittest.mock.ANY,
)
assert "Successfully installed sample-tool" in output

View File

@@ -1,125 +0,0 @@
"""Test LiteAgent creation and execution basic functionality."""
import os
from unittest.mock import patch, MagicMock
import pytest
from crewai import LiteAgent, Task
from crewai.llm import LLM
from crewai.tools import tool
def test_lite_agent_creation():
"""Test creating a LiteAgent with basic properties."""
agent = LiteAgent(role="test role", goal="test goal", backstory="test backstory")
assert agent.role == "test role"
assert agent.goal == "test goal"
assert agent.backstory == "test backstory"
assert agent.tools == []
def test_lite_agent_default_values():
"""Test default values for LiteAgent."""
agent = LiteAgent(role="test role", goal="test goal", backstory="test backstory")
assert agent.llm.model == "gpt-4o-mini"
assert agent.max_iter == 20
assert agent.max_retry_limit == 2
def test_custom_llm():
"""Test creating a LiteAgent with a custom LLM string."""
agent = LiteAgent(
role="test role", goal="test goal", backstory="test backstory", llm="gpt-4"
)
assert agent.llm.model == "gpt-4"
def test_custom_llm_with_langchain():
"""Test creating a LiteAgent with a langchain LLM."""
mock_langchain_llm = MagicMock()
mock_langchain_llm.model_name = "gpt-4"
agent = LiteAgent(
role="test role",
goal="test goal",
backstory="test backstory",
llm=mock_langchain_llm,
)
assert agent.llm.model == "gpt-4"
@patch("crewai.agents.crew_agent_executor.CrewAgentExecutor.invoke")
def test_lite_agent_execute_task(mock_invoke):
"""Test executing a task with a LiteAgent."""
mock_invoke.return_value = {"output": "The area of a circle with radius 5 cm is 78.54 square centimeters."}
agent = LiteAgent(
role="Math Tutor",
goal="Solve math problems accurately",
backstory="You are an experienced math tutor with a knack for explaining complex concepts simply.",
)
task = Task(
description="Calculate the area of a circle with radius 5 cm.",
expected_output="The calculated area of the circle in square centimeters.",
agent=agent,
)
result = agent.execute_task(task)
assert result is not None
assert "square centimeters" in result.lower()
mock_invoke.assert_called_once()
@patch("crewai.agents.crew_agent_executor.CrewAgentExecutor.invoke")
def test_lite_agent_execution(mock_invoke):
"""Test executing a simple task."""
mock_invoke.return_value = {"output": "1 + 1 = 2"}
agent = LiteAgent(
role="test role",
goal="test goal",
backstory="test backstory",
)
task = Task(
description="How much is 1 + 1?",
agent=agent,
expected_output="the result of the math operation.",
)
output = agent.execute_task(task)
assert "2" in output
mock_invoke.assert_called_once()
@patch("crewai.agents.crew_agent_executor.CrewAgentExecutor.invoke")
def test_lite_agent_execution_with_tools(mock_invoke):
"""Test executing a task with tools."""
mock_invoke.return_value = {"output": "3 times 4 is 12"}
@tool
def multiplier(first_number: int, second_number: int) -> float:
"""Useful for when you need to multiply two numbers together."""
return first_number * second_number
agent = LiteAgent(
role="test role",
goal="test goal",
backstory="test backstory",
tools=[multiplier],
)
task = Task(
description="What is 3 times 4?",
agent=agent,
expected_output="The result of the multiplication.",
)
output = agent.execute_task(task)
assert "12" in output
mock_invoke.assert_called_once()

View File

@@ -0,0 +1,83 @@
import os
import tempfile
from pathlib import Path
import pytest
from unittest.mock import patch
from crewai.memory.storage.ltm_sqlite_storage import LTMSQLiteStorage
from crewai.memory.storage.kickoff_task_outputs_storage import KickoffTaskOutputsSQLiteStorage
from crewai.memory.storage.base_rag_storage import BaseRAGStorage
from crewai.utilities.paths import get_default_storage_path
class MockRAGStorage(BaseRAGStorage):
"""Mock implementation of BaseRAGStorage for testing."""
def _sanitize_role(self, role: str) -> str:
return role.lower()
def save(self, value, metadata):
pass
def search(self, query, limit=3, filter=None, score_threshold=0.35):
return []
def reset(self):
pass
def _generate_embedding(self, text, metadata=None):
return []
def _initialize_app(self):
pass
def test_default_storage_paths():
"""Test that default storage paths are created correctly."""
ltm_path = get_default_storage_path('ltm')
kickoff_path = get_default_storage_path('kickoff')
rag_path = get_default_storage_path('rag')
assert str(ltm_path).endswith('latest_long_term_memories.db')
assert str(kickoff_path).endswith('latest_kickoff_task_outputs.db')
assert isinstance(rag_path, Path)
def test_custom_storage_paths():
"""Test that custom storage paths are respected."""
with tempfile.TemporaryDirectory() as temp_dir:
custom_path = Path(temp_dir) / 'custom.db'
ltm = LTMSQLiteStorage(storage_path=custom_path)
assert ltm.storage_path == custom_path
kickoff = KickoffTaskOutputsSQLiteStorage(storage_path=custom_path)
assert kickoff.storage_path == custom_path
rag = MockRAGStorage('test', storage_path=custom_path)
assert rag.storage_path == custom_path
def test_directory_creation():
"""Test that storage directories are created automatically."""
with tempfile.TemporaryDirectory() as temp_dir:
test_dir = Path(temp_dir) / 'test_storage'
storage_path = test_dir / 'test.db'
assert not test_dir.exists()
LTMSQLiteStorage(storage_path=storage_path)
assert test_dir.exists()
def test_permission_error():
"""Test that permission errors are handled correctly."""
with tempfile.TemporaryDirectory() as temp_dir:
test_dir = Path(temp_dir) / 'readonly'
test_dir.mkdir()
os.chmod(test_dir, 0o444) # Read-only
storage_path = test_dir / 'test.db'
with pytest.raises((PermissionError, OSError)) as exc_info:
LTMSQLiteStorage(storage_path=storage_path)
# Verify that the error message mentions permission
assert "permission" in str(exc_info.value).lower()
def test_invalid_path():
"""Test that invalid paths raise appropriate errors."""
with pytest.raises(OSError):
# Try to create storage in a non-existent root directory
LTMSQLiteStorage(storage_path=Path('/nonexistent/dir/test.db'))

68
uv.lock generated
View File

@@ -1,10 +1,18 @@
version = 1
requires-python = ">=3.10, <3.13"
resolution-markers = [
"python_full_version < '3.11'",
"python_full_version == '3.11.*'",
"python_full_version >= '3.12' and python_full_version < '3.12.4'",
"python_full_version >= '3.12.4'",
"python_full_version < '3.11' and sys_platform == 'darwin'",
"python_full_version < '3.11' and platform_machine == 'aarch64' and sys_platform == 'linux'",
"(python_full_version < '3.11' and platform_machine != 'aarch64' and sys_platform == 'linux') or (python_full_version < '3.11' and sys_platform != 'darwin' and sys_platform != 'linux')",
"python_full_version == '3.11.*' and sys_platform == 'darwin'",
"python_full_version == '3.11.*' and platform_machine == 'aarch64' and sys_platform == 'linux'",
"(python_full_version == '3.11.*' and platform_machine != 'aarch64' and sys_platform == 'linux') or (python_full_version == '3.11.*' and sys_platform != 'darwin' and sys_platform != 'linux')",
"python_full_version >= '3.12' and python_full_version < '3.12.4' and sys_platform == 'darwin'",
"python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_machine == 'aarch64' and sys_platform == 'linux'",
"(python_full_version >= '3.12' and python_full_version < '3.12.4' and platform_machine != 'aarch64' and sys_platform == 'linux') or (python_full_version >= '3.12' and python_full_version < '3.12.4' and sys_platform != 'darwin' and sys_platform != 'linux')",
"python_full_version >= '3.12.4' and sys_platform == 'darwin'",
"python_full_version >= '3.12.4' and platform_machine == 'aarch64' and sys_platform == 'linux'",
"(python_full_version >= '3.12.4' and platform_machine != 'aarch64' and sys_platform == 'linux') or (python_full_version >= '3.12.4' and sys_platform != 'darwin' and sys_platform != 'linux')",
]
[[package]]
@@ -300,7 +308,7 @@ name = "build"
version = "1.2.2.post1"
source = { registry = "https://pypi.org/simple" }
dependencies = [
{ name = "colorama", marker = "os_name == 'nt'" },
{ name = "colorama", marker = "(os_name == 'nt' and platform_machine != 'aarch64' and sys_platform == 'linux') or (os_name == 'nt' and sys_platform != 'darwin' and sys_platform != 'linux')" },
{ name = "importlib-metadata", marker = "python_full_version < '3.10.2'" },
{ name = "packaging" },
{ name = "pyproject-hooks" },
@@ -535,7 +543,7 @@ name = "click"
version = "8.1.7"
source = { registry = "https://pypi.org/simple" }
dependencies = [
{ name = "colorama", marker = "platform_system == 'Windows'" },
{ name = "colorama", marker = "sys_platform == 'win32'" },
]
sdist = { url = "https://files.pythonhosted.org/packages/96/d3/f04c7bfcf5c1862a2a5b845c6b2b360488cf47af55dfa79c98f6a6bf98b5/click-8.1.7.tar.gz", hash = "sha256:ca9853ad459e787e2192211578cc907e7594e294c7ccc834310722b41b9ca6de", size = 336121 }
wheels = [
@@ -642,7 +650,6 @@ tools = [
[package.dev-dependencies]
dev = [
{ name = "cairosvg" },
{ name = "crewai-tools" },
{ name = "mkdocs" },
{ name = "mkdocs-material" },
{ name = "mkdocs-material-extensions" },
@@ -696,7 +703,6 @@ requires-dist = [
[package.metadata.requires-dev]
dev = [
{ name = "cairosvg", specifier = ">=2.7.1" },
{ name = "crewai-tools", specifier = ">=0.17.0" },
{ name = "mkdocs", specifier = ">=1.4.3" },
{ name = "mkdocs-material", specifier = ">=9.5.7" },
{ name = "mkdocs-material-extensions", specifier = ">=1.3.1" },
@@ -2462,7 +2468,7 @@ version = "1.6.1"
source = { registry = "https://pypi.org/simple" }
dependencies = [
{ name = "click" },
{ name = "colorama", marker = "platform_system == 'Windows'" },
{ name = "colorama", marker = "sys_platform == 'win32'" },
{ name = "ghp-import" },
{ name = "jinja2" },
{ name = "markdown" },
@@ -2643,7 +2649,7 @@ version = "2.10.2"
source = { registry = "https://pypi.org/simple" }
dependencies = [
{ name = "pygments" },
{ name = "pywin32", marker = "platform_system == 'Windows'" },
{ name = "pywin32", marker = "sys_platform == 'win32'" },
{ name = "tqdm" },
]
sdist = { url = "https://files.pythonhosted.org/packages/3a/93/80ac75c20ce54c785648b4ed363c88f148bf22637e10c9863db4fbe73e74/mpire-2.10.2.tar.gz", hash = "sha256:f66a321e93fadff34585a4bfa05e95bd946cf714b442f51c529038eb45773d97", size = 271270 }
@@ -2890,7 +2896,7 @@ name = "nvidia-cudnn-cu12"
version = "9.1.0.70"
source = { registry = "https://pypi.org/simple" }
dependencies = [
{ name = "nvidia-cublas-cu12", marker = "(platform_machine != 'aarch64' and platform_system != 'Darwin') or (platform_system != 'Darwin' and platform_system != 'Linux')" },
{ name = "nvidia-cublas-cu12", marker = "(platform_machine != 'aarch64' and sys_platform == 'linux') or (sys_platform != 'darwin' and sys_platform != 'linux')" },
]
wheels = [
{ url = "https://files.pythonhosted.org/packages/9f/fd/713452cd72343f682b1c7b9321e23829f00b842ceaedcda96e742ea0b0b3/nvidia_cudnn_cu12-9.1.0.70-py3-none-manylinux2014_x86_64.whl", hash = "sha256:165764f44ef8c61fcdfdfdbe769d687e06374059fbb388b6c89ecb0e28793a6f", size = 664752741 },
@@ -2917,9 +2923,9 @@ name = "nvidia-cusolver-cu12"
version = "11.4.5.107"
source = { registry = "https://pypi.org/simple" }
dependencies = [
{ name = "nvidia-cublas-cu12", marker = "(platform_machine != 'aarch64' and platform_system != 'Darwin') or (platform_system != 'Darwin' and platform_system != 'Linux')" },
{ name = "nvidia-cusparse-cu12", marker = "(platform_machine != 'aarch64' and platform_system != 'Darwin') or (platform_system != 'Darwin' and platform_system != 'Linux')" },
{ name = "nvidia-nvjitlink-cu12", marker = "(platform_machine != 'aarch64' and platform_system != 'Darwin') or (platform_system != 'Darwin' and platform_system != 'Linux')" },
{ name = "nvidia-cublas-cu12", marker = "(platform_machine != 'aarch64' and sys_platform == 'linux') or (sys_platform != 'darwin' and sys_platform != 'linux')" },
{ name = "nvidia-cusparse-cu12", marker = "(platform_machine != 'aarch64' and sys_platform == 'linux') or (sys_platform != 'darwin' and sys_platform != 'linux')" },
{ name = "nvidia-nvjitlink-cu12", marker = "(platform_machine != 'aarch64' and sys_platform == 'linux') or (sys_platform != 'darwin' and sys_platform != 'linux')" },
]
wheels = [
{ url = "https://files.pythonhosted.org/packages/bc/1d/8de1e5c67099015c834315e333911273a8c6aaba78923dd1d1e25fc5f217/nvidia_cusolver_cu12-11.4.5.107-py3-none-manylinux1_x86_64.whl", hash = "sha256:8a7ec542f0412294b15072fa7dab71d31334014a69f953004ea7a118206fe0dd", size = 124161928 },
@@ -2930,7 +2936,7 @@ name = "nvidia-cusparse-cu12"
version = "12.1.0.106"
source = { registry = "https://pypi.org/simple" }
dependencies = [
{ name = "nvidia-nvjitlink-cu12", marker = "(platform_machine != 'aarch64' and platform_system != 'Darwin') or (platform_system != 'Darwin' and platform_system != 'Linux')" },
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