Babysitter langsmith-tracing
LangSmith tracing and debugging setup for LLM applications. Configure observability, capture traces, and enable debugging for LangChain/LangGraph agents.
install
source · Clone the upstream repo
git clone https://github.com/a5c-ai/babysitter
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/a5c-ai/babysitter "$T" && mkdir -p ~/.claude/skills && cp -r "$T/library/specializations/ai-agents-conversational/skills/langsmith-tracing" ~/.claude/skills/a5c-ai-babysitter-langsmith-tracing && rm -rf "$T"
manifest:
library/specializations/ai-agents-conversational/skills/langsmith-tracing/SKILL.mdsource content
langsmith-tracing
Configure LangSmith observability and tracing for LLM applications built with LangChain and LangGraph frameworks.
Overview
LangSmith is the managed observability suite by LangChain that provides:
- Dashboards and alerting for LLM applications
- Human-in-the-loop evaluation capabilities
- Deep LangChain/LangGraph integration
- Run Tree model for nested traces
- MCP connectivity to Claude, VSCode
Capabilities
Core Tracing Setup
- Initialize LangSmith client and API configuration
- Configure project/workspace settings
- Set up trace collection and sampling
- Enable debug logging for agent execution
Integration Patterns
- LangChain chain tracing with automatic instrumentation
- LangGraph workflow state tracking
- Custom span creation for non-LangChain code
- Parent-child trace relationships
Debugging Features
- Fetch execution traces for analysis
- Query run history and metadata
- Export traces for offline analysis
- Compare runs across different versions
Usage
Environment Setup
# Set required environment variables export LANGCHAIN_TRACING_V2=true export LANGCHAIN_API_KEY=<your-api-key> export LANGCHAIN_PROJECT=<project-name>
Python Integration
from langsmith import Client, traceable from langchain.callbacks.tracers import LangChainTracer # Initialize client client = Client() # Use @traceable decorator for custom functions @traceable(name="custom_operation") def my_function(input_data): # Your logic here return result # Initialize tracer for LangChain tracer = LangChainTracer(project_name="my-project") # Use with LangChain chains chain.invoke(input, config={"callbacks": [tracer]})
Trace Retrieval
# Fetch traces from LangSmith runs = client.list_runs( project_name="my-project", start_time=datetime.now() - timedelta(hours=24), execution_order=1, # Root runs only error=False, # Successful runs only ) for run in runs: print(f"Run ID: {run.id}") print(f"Latency: {run.latency_p99}") print(f"Tokens: {run.total_tokens}")
Task Definition
When used in a babysitter process, this skill produces:
const langsmithTracingTask = defineTask({ name: 'langsmith-tracing-setup', description: 'Configure LangSmith tracing for the application', inputs: { projectName: { type: 'string', required: true }, apiKeyEnvVar: { type: 'string', default: 'LANGCHAIN_API_KEY' }, samplingRate: { type: 'number', default: 1.0 }, enableDebug: { type: 'boolean', default: false } }, outputs: { configured: { type: 'boolean' }, projectUrl: { type: 'string' }, artifacts: { type: 'array' } }, async run(inputs, taskCtx) { return { kind: 'skill', title: `Configure LangSmith tracing for ${inputs.projectName}`, skill: { name: 'langsmith-tracing', context: { projectName: inputs.projectName, apiKeyEnvVar: inputs.apiKeyEnvVar, samplingRate: inputs.samplingRate, enableDebug: inputs.enableDebug, instructions: [ 'Verify LangSmith API credentials are available', 'Create or validate project configuration', 'Set up tracing instrumentation in codebase', 'Configure sampling rate and debug settings', 'Verify traces are being captured correctly' ] } }, io: { inputJsonPath: `tasks/${taskCtx.effectId}/input.json`, outputJsonPath: `tasks/${taskCtx.effectId}/result.json` } }; } });
Applicable Processes
- llm-observability-monitoring
- agent-evaluation-framework
- react-agent-implementation
- conversation-quality-testing
- regression-testing-agent
External Dependencies
- LangSmith account and API key
- LangChain Python library
- langsmith Python package
References
Related Skills
- SK-OBS-002 langfuse-integration
- SK-OBS-003 phoenix-arize-setup
- SK-OBS-004 opentelemetry-llm
Related Agents
- AG-OPS-004 observability-engineer
- AG-SAF-004 agent-evaluator