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BeeAI Framework is a Python / TypeScript framework from IBM for building production-grade AI agents — tools, memory, multi-step reasoning, and pluggable LLM backends. Arize AX captures every BeeAI agent run via the openinference-instrumentation-beeai package.

Prerequisites

Launch Arize AX

  1. Sign in to your Arize AX account.
  2. From Space Settings, copy your Space ID and API Key. You will set them as ARIZE_SPACE_ID and ARIZE_API_KEY below.

Install

Configure credentials

Setup tracing

Instrument BeeAI with BeeAIInstrumentor. Do not use a provider instrumentor such as AnthropicInstrumentor or OpenAIInstrumentor — they do not capture BeeAI traces. A single BeeAIInstrumentor covers every model provider.

Run BeeAI

Expected output

Verify in Arize AX

  1. Open your Arize AX space and select project beeai-tracing-example.
  2. You should see a new trace within ~30 seconds with this shape: a LiteAgent root span (AGENT) wraps an OpenAIChatModel LLM child span (model gpt-5.5, prompt + response + token usage attached).
  3. If no traces appear, see Troubleshooting.

Check from the skill, CLI, or SDK

Confirm spans are actually reaching your Arize AX project. Use whichever fits your workflow — the skill and CLI work for any framework; the SDK check is shown for each language.
Install the Arize Skills plugin and let your coding agent check for you:
Then prompt your agent:
Use the arize-trace skill to export and analyze recent traces from my project. Confirm spans are arriving, and summarize any errors or latency issues.

Troubleshooting

  • No traces in Arize AX. Confirm ARIZE_SPACE_ID and ARIZE_API_KEY are set in the same shell that runs example.py. Enable OpenTelemetry debug logs with export OTEL_LOG_LEVEL=debug and re-run.
  • BeeAI spans missing but other spans present. BeeAIInstrumentor().instrument(...) must run before any from beeai_framework import .... Make sure instrumentation.py is the first import in your entry point.
  • 401 from OpenAI. Verify OPENAI_API_KEY is set and has access to gpt-5.5. Swap the openai:gpt-5.5 slug in ChatModel.from_name(...) for a model your key can call.
  • Other LLM providers. BeeAI delegates model calls to LiteLLM, so any LiteLLM-supported provider works — ChatModel.from_name("anthropic:claude-sonnet-4-6"), ChatModel.from_name("groq:llama-3.3-70b-versatile"), ChatModel.from_name("ollama:granite3.1-dense:8b"), etc. The same BeeAIInstrumentor covers them.

Resources

BeeAI Framework Documentation

OpenInference BeeAI Instrumentor (Python)

BeeAI Framework GitHub