A Python package for extracting and managing LLM logs to build a collaborative workspace
Project description
Neatlogs
A comprehensive LLM tracking system that automatically captures and logs all LLM API calls with detailed metrics.
Features
- 🚀 Automatic LLM Call Tracking: Seamlessly tracks all LLM API calls without code changes
- 📊 Comprehensive Metrics: Token usage, costs, response times, and more
- 🔌 Multi-Provider Support: OpenAI, Anthropic, Google Gemini, Azure OpenAI, and LiteLLM
- 🔗 LangChain Integration: Seamless tracking for LangChain chains, agents, and tools
- 🧵 Session Management: Track conversations across multiple threads and agents
- 📝 Structured Logging: Detailed logs with OpenTelemetry support
- 🎯 Easy Integration: Simple one-line initialization
- 🔍 Real-time Monitoring: Live tracking and statistics
Quick Start
Installation
Basic installation (no LLM libraries):
pip install neatlogs
Basic Usage
import neatlogs
# Initialize tracking with your API key
neatlogs.init(
api_key="your-api-key-here"
)
# add tags
neatlogs.add_tags(["neatlogs"])
# Now all LLM calls are automatically tracked!
# Use any supported LLM library normally
# Get session statistics
stats = neatlogs.get_session_stats()
print(f"Total calls: {stats['total_calls']}")
print(f"Total cost: ${stats['total_cost']:.4f}")
Supported Providers
- OpenAI (GPT models)
- Anthropic (Claude models)
- Google Gemini (Gemini models)
- Azure OpenAI
- LiteLLM (unified interface)
Framework
Neatlogs provides comprehensive support for various AI frameworks and models:
LangChain Integration
Neatlogs provides comprehensive tracking for all LangChain components and workflows:
- LLM & Chat Models: Track all LLM calls, token usage, costs, and response times
- Chains: Monitor chain execution, inputs, outputs, and performance metrics
- Agents: Capture agent actions, tool calls, decision-making processes, and reasoning
- Tools: Record tool usage, inputs, outputs, and execution times
- RAG Systems: Track retrieval-augmented generation workflows including vector searches and document retrieval
- Async Workflows: Full support for asynchronous LangChain pipelines and concurrent operations
- Error Handling: Capture and log errors across all LangChain components
- Model Detection: Automatic identification of underlying LLM models and providers.
LangChain Callback Handler
Neatlogs provides a dedicated callback handler for LangChain to enable detailed tracking of your LangChain applications without modifying your existing code.
Usage
from langchain.chains import LLMChain
from langchain.llms import OpenAI
import neatlogs
# Get the callback handler
handler = neatlogs.get_langchain_callback_handler(api_key="your-api-key")
# Use it with your LangChain components
llm = OpenAI()
chain = LLMChain(llm=llm, callbacks=[handler])
# Your chain calls will now be tracked automatically
result = chain.run("Hello world")
Features
- LLM Tracking: Captures all LLM calls with token usage, costs, and response times
- Chain Monitoring: Tracks chain executions, inputs, and outputs
- Tool Call Tracking: Monitors tool usage and performance
- Agent Monitoring: Records agent actions and decision processes
- Automatic Detection: Automatically detects model types and providers
- Async Support: Full support for both synchronous and asynchronous workflows
Asynchronous Usage
For asynchronous LangChain workflows:
from neatlogs.integration.callbacks.langchain.callback import AsyncNeatlogsLangchainCallbackHandler
# Use the async handler for async workflows
async_handler = AsyncNeatlogsLangchainCallbackHandler(api_key="your-api-key")
# Use with async chains
result = await async_chain.arun(..., callbacks=[async_handler])
CrewAI Integration
CrewAI is a framework for orchestrating role-playing AI agents. Neatlogs provides seamless integration with CrewAI through automatic instrumentation:
- Agent Tracking: Monitor all agent activities, tasks, and interactions
- Crew Orchestration: Track crew-level operations and agent coordination
- Task Monitoring: Capture task execution, delegation, and completion
- Automatic Setup: No code changes required - just initialize with
neatlogs.init()
import neatlogs
from crewai import Agent, Task, Crew
# Initialize Neatlogs (that's all you need!)
neatlogs.init(api_key="your-api-key")
# Your CrewAI code works normally and gets tracked automatically
agent = Agent(role="Researcher", goal="Research AI trends")
task = Task(description="Research latest AI developments")
crew = Crew(agents=[agent], tasks=[task])
result = crew.kickoff()
Configuration Options
neatlogs.init(
api_key="your-api-key",
tags=["tag1", "tag2"],
)
Session Statistics
Get comprehensive insights into your LLM usage:
stats = neatlogs.get_session_stats()
# Available metrics:
# - total_calls: Number of LLM API calls
# - total_tokens_input: Total input tokens
# - total_tokens_output: Total output tokens
# - total_cost: Total cost in USD
# - average_response_time: Average response time
# - provider_breakdown: Usage by provider
# - model_breakdown: Usage by model
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