Langfuse API client for universal JavaScript environments
Wraps the Langfuse client to snapshot prompts to disk at startup. If Langfuse is unreachable at runtime, the local backup is used as fallback.
No description provided.
Core functions and utilities for Langfuse packages
Langfuse OpenTelemetry export helpers
Langfuse instrumentation methods based on OpenTelemetry
No description provided.
Langfuse integration for OpenAI SDK
Langfuse integration for LangChain
No description provided.
No description provided.
Interact with Langfuse API from the command line
Boson API client (compat wrapper around @langfuse/client)
No description provided.
Langfuse observability provider for Mastra - uses official Langfuse v5 SDK
Genkit AI framework plugin for Langfuse observability and tracing.
Langfuse observability plugin for OpenCode - LLM tracing, prompt versioning, and cost tracking
Langfuse nodes for n8n
Configure AI coding tools with Langfuse tracing and install the oh-ai-report issue feedback plugin.
Universal coding-agent Langfuse backfiller and live OTLP helpers
Use npm scripts to configure Claude Code / OpenCode / Codex with Langfuse tracing.
n8n community node: Langfuse + OpenAI-compatible LLM provider
Conclave AI observability sink — forwards efficiency-gate metrics to Langfuse (self-hosted per decision #13).
OpenTelemetry SpanExporter for sending VoltAgent traces to Langfuse.
## Authentication Authenticate with the API using [Basic Auth](https://en.wikipedia.org/wiki/Basic_access_authentication), get API keys in the project settings: - username: Langfuse Public Key - password: Langfuse Secret Key ## Exports - OpenAPI spec: https://cloud.langfuse.com/generated/api/openapi.yml - Postman collection: https://cloud.langfuse.com/generated/postman/collection.json
Auto-generated Langfuse API client from OpenAPI specification
Langfuse is an open source observability platform for LLM applications. This is the Ruby client for Langfuse's API. Rough first alpha
Ruby client library for Langfuse, providing tracing, prompt management, and evaluation capabilities for LLM applications
No description provided.
No description provided.
No description provided.