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  1. Concepts
  2. Tracing

What is OpenInference?

An OSS package to enable standardized tracing of AI applications

Last updated 3 months ago

Was this helpful?

OpenInference is a set of conventions and plugins that is complimentary to to enable tracing of AI applications. It instruments and monitors different code executions across models, frameworks, and vendors and maps them to a set of standardized attributes for traces and spans.

OpenInference is natively supported by Arize, but can be used with any OpenTelemetry-compatible backend as well. OpenInference provides a set of instrumentations for popular machine learning SDKs and frameworks in a variety of languages.

Python

Package
Description
Version

openinference-semantic-conventions

Semantic conventions for tracing of LLM Apps.

openinference-instrumentation-openai

OpenInference Instrumentation for OpenAI SDK.

openinference-instrumentation-llama-index

OpenInference Instrumentation for LlamaIndex.

openinference-instrumentation-dspy

OpenInference Instrumentation for DSPy.

openinference-instrumentation-bedrock

OpenInference Instrumentation for AWS Bedrock.

openinference-instrumentation-langchain

OpenInference Instrumentation for LangChain.

openinference-instrumentation-mistralai

OpenInference Instrumentation for MistralAI.

openinference-instrumentation-guardrails

OpenInference Instrumentation for Guardrails.

openinference-instrumentation-vertexai

OpenInference Instrumentation for VertexAI.

openinference-instrumentation-crewai

OpenInference Instrumentation for CrewAI.

openinference-instrumentation-haystack

OpenInference Instrumentation for Haystack.

openinference-instrumentation-litellm

OpenInference Instrumentation for liteLLM.

openinference-instrumentation-groq

OpenInference Instrumentation for Groq.

openinference-instrumentation-instructor

OpenInference Instrumentation for Instructor.

openinference-instrumentation-anthropic

OpenInference Instrumentation for Anthropic.

Javascript

Package
Description
Version

Semantic conventions for tracing of LLM Apps.

Core utility functions for instrumentation

OpenInference Instrumentation for OpenAI SDK.

OpenInference Instrumentation for LangChain.js.

OpenInference Support for Vercel AI SDK

@arizeai/openinference-semantic-conventions
@arizeai/openinference-core
@arizeai/openinference-instrumentation-openai
@arizeai/openinference-instrumentation-langchain
@arizeai/openinference-vercel
OpenTelemetry
GitHub - Arize-ai/openinference: Auto-Instrumentation for AI ObservabilityGitHub
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