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* Add 9 Arize LLM observability skills Add skills for Arize AI platform covering trace export, instrumentation, datasets, experiments, evaluators, AI provider integrations, annotations, prompt optimization, and deep linking to the Arize UI. Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com> * Add 3 Phoenix AI observability skills Add skills for Phoenix (Arize open-source) covering CLI debugging, LLM evaluation workflows, and OpenInference tracing/instrumentation. Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com> * Ignoring intentional bad spelling * Fix CI: remove .DS_Store from generated skills README and add codespell ignore Remove .DS_Store artifact from winmd-api-search asset listing in generated README.skills.md so it matches the CI Linux build output. Add queston to codespell ignore list (intentional misspelling example in arize-dataset skill). Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com> * Add arize-ax and phoenix plugins Bundle the 9 Arize skills into an arize-ax plugin and the 3 Phoenix skills into a phoenix plugin for easier installation as single packages. Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com> * Fix skill folder structures to match source repos Move arize supporting files from references/ to root level and rename phoenix references/ to rules/ to exactly match the original source repository folder structures. Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com> * Fixing file locations * Fixing readme --------- Co-authored-by: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
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4.9 KiB
Manual Instrumentation (Python)
Add custom spans using decorators or context managers for fine-grained tracing control.
Setup
pip install arize-phoenix-otel
from phoenix.otel import register
tracer_provider = register(project_name="my-app")
tracer = tracer_provider.get_tracer(__name__)
Quick Reference
| Span Kind | Decorator | Use Case |
|---|---|---|
| CHAIN | @tracer.chain |
Orchestration, workflows, pipelines |
| RETRIEVER | @tracer.retriever |
Vector search, document retrieval |
| TOOL | @tracer.tool |
External API calls, function execution |
| AGENT | @tracer.agent |
Multi-step reasoning, planning |
| LLM | @tracer.llm |
LLM API calls (manual only) |
| EMBEDDING | @tracer.embedding |
Embedding generation |
| RERANKER | @tracer.reranker |
Document re-ranking |
| GUARDRAIL | @tracer.guardrail |
Safety checks, content moderation |
| EVALUATOR | @tracer.evaluator |
LLM evaluation, quality checks |
Decorator Approach (Recommended)
Use for: Full function instrumentation, automatic I/O capture
@tracer.chain
def rag_pipeline(query: str) -> str:
docs = retrieve_documents(query)
ranked = rerank(docs, query)
return generate_response(ranked, query)
@tracer.retriever
def retrieve_documents(query: str) -> list[dict]:
results = vector_db.search(query, top_k=5)
return [{"content": doc.text, "score": doc.score} for doc in results]
@tracer.tool
def get_weather(city: str) -> str:
response = requests.get(f"https://api.weather.com/{city}")
return response.json()["weather"]
Custom span names:
@tracer.chain(name="rag-pipeline-v2")
def my_workflow(query: str) -> str:
return process(query)
Context Manager Approach
Use for: Partial function instrumentation, custom attributes, dynamic control
from opentelemetry.trace import Status, StatusCode
import json
def retrieve_with_metadata(query: str):
with tracer.start_as_current_span(
"vector_search",
openinference_span_kind="retriever"
) as span:
span.set_attribute("input.value", query)
results = vector_db.search(query, top_k=5)
documents = [
{
"document.id": doc.id,
"document.content": doc.text,
"document.score": doc.score
}
for doc in results
]
span.set_attribute("retrieval.documents", json.dumps(documents))
span.set_status(Status(StatusCode.OK))
return documents
Capturing Input/Output
Always capture I/O for evaluation-ready spans.
Automatic I/O Capture (Decorators)
Decorators automatically capture input arguments and return values:
@tracer.chain
def handle_query(user_input: str) -> str:
result = agent.generate(user_input)
return result.text
# Automatically captures:
# - input.value: user_input
# - output.value: result.text
# - input.mime_type / output.mime_type: auto-detected
Manual I/O Capture (Context Manager)
Use set_input() and set_output() for simple I/O capture:
from opentelemetry.trace import Status, StatusCode
def handle_query(user_input: str) -> str:
with tracer.start_as_current_span(
"query.handler",
openinference_span_kind="chain"
) as span:
span.set_input(user_input)
result = agent.generate(user_input)
span.set_output(result.text)
span.set_status(Status(StatusCode.OK))
return result.text
What gets captured:
{
"input.value": "What is 2+2?",
"input.mime_type": "text/plain",
"output.value": "2+2 equals 4.",
"output.mime_type": "text/plain"
}
Why this matters:
- Phoenix evaluators require
input.valueandoutput.value - Phoenix UI displays I/O prominently for debugging
- Enables exporting data for fine-tuning datasets
Custom I/O with Additional Metadata
Use set_attribute() for custom attributes alongside I/O:
def process_query(query: str):
with tracer.start_as_current_span(
"query.process",
openinference_span_kind="chain"
) as span:
# Standard I/O
span.set_input(query)
# Custom metadata
span.set_attribute("input.length", len(query))
result = llm.generate(query)
# Standard output
span.set_output(result.text)
# Custom metadata
span.set_attribute("output.tokens", result.usage.total_tokens)
span.set_status(Status(StatusCode.OK))
return result
See Also
- Span attributes:
span-chain.md,span-retriever.md,span-tool.md,span-llm.md,span-agent.md,span-embedding.md,span-reranker.md,span-guardrail.md,span-evaluator.md - Auto-instrumentation:
instrumentation-auto-python.mdfor framework integrations - API docs: https://docs.arize.com/phoenix/tracing/manual-instrumentation