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chore: import upstream snapshot with attribution
2026-07-13 13:24:08 +08:00

187 lines
6.3 KiB
Python

"""
OpenTelemetry-traced Python provider for Promptfoo.
This provider demonstrates how to instrument a Python application with
OpenTelemetry and send traces to Promptfoo's OTLP receiver using the
protobuf format (application/x-protobuf).
The Python OpenTelemetry SDK uses protobuf by default when using the
`opentelemetry-exporter-otlp-proto-http` package, making it ideal for
testing protobuf support in Promptfoo.
"""
import re
import time
from opentelemetry import trace
from opentelemetry.exporter.otlp.proto.http.trace_exporter import OTLPSpanExporter
from opentelemetry.sdk.resources import Resource
from opentelemetry.sdk.trace import TracerProvider
from opentelemetry.sdk.trace.export import SimpleSpanProcessor
from opentelemetry.trace import SpanContext, SpanKind, Status, StatusCode, TraceFlags
# Initialize OpenTelemetry with OTLP HTTP exporter (uses protobuf by default)
resource = Resource.create(
{
"service.name": "python-rag-provider",
"service.version": "1.0.0",
"deployment.environment": "development",
}
)
# Create OTLP exporter pointing to Promptfoo's receiver
# This uses application/x-protobuf content type by default
exporter = OTLPSpanExporter(
endpoint="http://localhost:4318/v1/traces",
)
# Use SimpleSpanProcessor for immediate export (synchronous)
# This ensures spans are exported before the provider returns
# For production use, consider BatchSpanProcessor for better performance
provider = TracerProvider(resource=resource)
processor = SimpleSpanProcessor(exporter)
provider.add_span_processor(processor)
trace.set_tracer_provider(provider)
tracer = trace.get_tracer("python-rag-provider", "1.0.0")
def parse_traceparent(traceparent: str) -> SpanContext | None:
"""Parse W3C Trace Context traceparent header."""
match = re.match(r"^(\d{2})-([a-f0-9]{32})-([a-f0-9]{16})-(\d{2})$", traceparent)
if not match:
return None
version, trace_id, parent_id, trace_flags = match.groups()
return SpanContext(
trace_id=int(trace_id, 16),
span_id=int(parent_id, 16),
is_remote=True,
trace_flags=TraceFlags(int(trace_flags, 16)),
)
def simulate_document_retrieval(doc_name: str, delay: float = 0.05) -> dict:
"""Simulate retrieving a document from a knowledge base."""
time.sleep(delay)
return {
"name": doc_name,
"content": f"This is the content of {doc_name}",
"relevance": 0.95,
}
def simulate_reasoning_step(step_name: str, delay: float = 0.03) -> str:
"""Simulate a reasoning step in the RAG pipeline."""
time.sleep(delay)
return f"Completed reasoning: {step_name}"
def simulate_llm_call(prompt: str, delay: float = 0.1) -> str:
"""Simulate calling an LLM for generation."""
time.sleep(delay)
return f"Generated response for: {prompt[:50]}..."
def call_api(prompt: str, options: dict, promptfoo_context: dict) -> dict:
"""
Main provider entry point called by Promptfoo.
Args:
prompt: The rendered prompt to process
options: Provider options from config
promptfoo_context: Context including traceparent for distributed tracing
Returns:
dict with 'output' key containing the response
"""
traceparent = promptfoo_context.get("traceparent")
# If no trace context, run without tracing
if not traceparent:
return {"output": simulate_llm_call(prompt)}
# Parse the trace context from Promptfoo
span_context = parse_traceparent(traceparent)
if not span_context:
return {"output": simulate_llm_call(prompt)}
# Create a context with the parent span
ctx = trace.set_span_in_context(trace.NonRecordingSpan(span_context))
# Run the RAG pipeline within the trace context
with tracer.start_as_current_span(
"rag_agent_workflow",
context=ctx,
kind=SpanKind.SERVER,
attributes={
"rag.prompt_length": len(prompt),
"rag.model": "simulated-model",
},
) as workflow_span:
try:
# Phase 1: Document Retrieval
documents = []
for i in range(3):
doc_name = f"document_{i + 1}"
with tracer.start_as_current_span(
f"retrieve_document_{i + 1}",
kind=SpanKind.CLIENT,
attributes={
"retrieval.document_name": doc_name,
"retrieval.source": "knowledge_base",
},
) as retrieval_span:
doc = simulate_document_retrieval(doc_name)
documents.append(doc)
retrieval_span.set_attribute(
"retrieval.relevance", doc["relevance"]
)
workflow_span.set_attribute("rag.documents_retrieved", len(documents))
# Phase 2: Reasoning Steps
reasoning_results = []
for i, step in enumerate(
["analyze_query", "rank_documents", "synthesize_context"]
):
with tracer.start_as_current_span(
f"reasoning_{step}",
kind=SpanKind.INTERNAL,
attributes={
"reasoning.step_number": i + 1,
"reasoning.step_name": step,
},
) as reasoning_span:
result = simulate_reasoning_step(step)
reasoning_results.append(result)
reasoning_span.set_attribute("reasoning.completed", True)
# Phase 3: LLM Generation
with tracer.start_as_current_span(
"llm_generation",
kind=SpanKind.CLIENT,
attributes={
"llm.model": "simulated-model",
"llm.prompt_tokens": len(prompt.split()),
},
) as generation_span:
output = simulate_llm_call(prompt)
generation_span.set_attribute(
"llm.completion_tokens", len(output.split())
)
workflow_span.set_status(Status(StatusCode.OK))
return {"output": output}
except Exception as e:
workflow_span.set_status(Status(StatusCode.ERROR, str(e)))
workflow_span.record_exception(e)
raise
# Export the function for Promptfoo
__all__ = ["call_api"]