Lumenova Beacon SDK - A Python SDK for observability tracing with OpenTelemetry-compatible span export
Project description
Lumenova Beacon SDK
A Python observability SDK for AI/LLM applications — trace agentic frameworks (LangChain, LangGraph, CrewAI, Strands), LLM calls, and custom code with OpenTelemetry-compatible spans.
Features
- LangChain/LangGraph Integration - Automatic tracing for chains, agents, tools, retrievers, with interrupt/resume and agent handoff support
- Strands Agents Integration - Callback handler for AWS Strands agent tracing
- CrewAI Integration - Event listener for CrewAI crew tracing
- LiteLLM Integration - Callback logger for LiteLLM proxy tracing
- Agentic Governance - Real-time policy enforcement for AI agent tool calls and LLM invocations
- OpenTelemetry Integration - Automatic instrumentation for Anthropic, OpenAI, FastAPI, Redis, HTTPX, and more
- Manual & Decorator Tracing - Create spans manually or use
@tracedecorator - Dataset Management - ActiveRecord-style API for managing test datasets
- Prompt Management - Version-controlled prompt templates with labels (staging, production)
- Experiment & Evaluation Management - Run experiments over datasets and evaluate results
- Data Masking - Built-in PII detection and redaction via Beacon Guardrails
- Flexible Transport - HTTP or file-based span export
- Full Async Support - Async/await throughout
Requirements
- Python 3.10+
Installation
# Base installation
pip install lumenova-beacon
# With OpenTelemetry support
pip install lumenova-beacon[opentelemetry]
# With LangChain/LangGraph support
pip install lumenova-beacon[langchain]
# With LiteLLM support
pip install lumenova-beacon[litellm]
# With Strands Agents support
pip install lumenova-beacon[strands]
# With CrewAI support
pip install lumenova-beacon[crewai]
# With AWS Secrets Manager support
pip install lumenova-beacon[aws]
Quick Start
LangChain / LangGraph
from lumenova_beacon import BeaconClient, BeaconLangGraphHandler
from langchain_openai import ChatOpenAI
from langchain_core.prompts import ChatPromptTemplate
# Initialize client
client = BeaconClient(
endpoint="https://your-beacon-endpoint.lumenova.ai",
api_key="your-api-key",
)
# Create a tracing handler
handler = BeaconLangGraphHandler(session_id="session-123")
# All LangChain operations are now traced automatically
llm = ChatOpenAI(model="gpt-4")
prompt = ChatPromptTemplate.from_template("Tell me about {topic}")
chain = prompt | llm
response = chain.invoke(
{"topic": "AI agents"},
config={"callbacks": [handler]}
)
Basic Tracing
from lumenova_beacon import BeaconClient, trace
client = BeaconClient(
endpoint="https://your-beacon-endpoint.lumenova.ai",
api_key="your-api-key",
session_id="my-session"
)
@trace
def my_function(x, y):
return x + y
result = my_function(10, 20) # Automatically traced
Configuration
Environment Variables
All environment variables work as fallback — constructor parameters override them:
| Variable | Purpose | Default |
|---|---|---|
BEACON_ENDPOINT |
API base URL for OTLP export | (required unless using file_directory) |
BEACON_API_KEY |
Authentication token | |
BEACON_SESSION_ID |
Default session ID for spans | |
BEACON_SERVICE_NAME |
Service name for OTEL resource (fallback: OTEL_SERVICE_NAME) |
|
BEACON_ENVIRONMENT |
Deployment environment (e.g., "production", "staging") | |
BEACON_USER_EMAIL |
Default user email for attribution | |
BEACON_USER_NAME |
Default user display name for attribution | |
BEACON_USER_ID |
Default user ID for attribution | |
BEACON_VERIFY |
SSL certificate verification | true |
BEACON_EAGER_EXPORT |
Export spans eagerly on end | true |
BEACON_ISOLATED |
Use private TracerProvider (avoids conflicts) | false |
BEACON_EXTRA_OTLP_ENDPOINTS |
Additional OTLP gRPC endpoints (comma-separated) | |
BEACON_AWS_SECRET_NAME |
AWS Secrets Manager secret name (resolves API key) | |
BEACON_AWS_SECRET_KEY |
Key path within AWS secret | api_key |
BEACON_AWS_REGION |
AWS region for Secrets Manager | (boto3 default) |
# Bash/Linux/macOS
export BEACON_ENDPOINT="https://your-beacon-endpoint.lumenova.ai"
export BEACON_API_KEY="your-api-key"
export BEACON_SESSION_ID="my-session"
# PowerShell
$env:BEACON_ENDPOINT = "https://your-beacon-endpoint.lumenova.ai"
$env:BEACON_API_KEY = "your-api-key"
$env:BEACON_SESSION_ID = "my-session"
Configuration Options
from lumenova_beacon import BeaconClient
client = BeaconClient(
# Connection
endpoint="https://your-beacon-endpoint.lumenova.ai",
api_key="your-api-key",
verify=True,
# Span Configuration
session_id="my-session",
service_name="my-service",
environment="production",
# User Identity
user_email="user@example.com",
user_name="Alice",
user_id="user-123",
# OpenTelemetry
auto_instrument_opentelemetry=True, # Auto-configure OTEL (default: True)
isolated=False, # Use private TracerProvider (default: False)
auto_instrument_litellm=False, # Auto-configure LiteLLM (default: False)
# Data Masking
masking_function=None, # Custom masking function (optional)
# General
eager_export=True,
record_stacktrace=False, # Capture stack traces on exceptions (default: False)
# Additional options passed via **kwargs
# enabled=True, # Enable/disable tracing
# headers={"Custom-Header": "value"}, # Custom HTTP headers
)
File Transport
For local development or testing, use file_directory instead of endpoint:
from lumenova_beacon import BeaconClient
client = BeaconClient(
file_directory="./traces",
)
Integrations
1. LangChain/LangGraph
Automatically trace all LangChain and LangGraph operations — chains, agents, tools, retrievers, and LLM calls:
from lumenova_beacon import BeaconClient, BeaconLangGraphHandler
from langchain_openai import ChatOpenAI
from langchain_core.prompts import ChatPromptTemplate
client = BeaconClient()
handler = BeaconLangGraphHandler(session_id="session-123")
# Use with request-time callbacks (recommended)
llm = ChatOpenAI(model="gpt-4")
response = llm.invoke(
"What is the capital of France?",
config={"callbacks": [handler]}
)
# Works with chains
prompt = ChatPromptTemplate.from_template("Tell me about {topic}")
chain = prompt | llm
response = chain.invoke(
{"topic": "AI"},
config={"callbacks": [handler]}
)
# Traces agents, tools, retrievers, and more
from langchain.agents import create_react_agent, AgentExecutor
agent = create_react_agent(llm, tools, prompt)
executor = AgentExecutor(agent=agent, tools=tools)
result = executor.invoke(
{"input": "What's the weather?"},
config={"callbacks": [handler]}
)
LangGraph with Interrupt/Resume
For LangGraph agents with checkpointing, use BeaconLangGraphConfig to automatically continue traces across interrupt/resume cycles:
from lumenova_beacon import BeaconClient, BeaconLangGraphConfig
client = BeaconClient()
beacon = BeaconLangGraphConfig(
graph=agent.graph,
thread_id=thread_id,
agent_name="planner",
session_id="session-123",
autodetect_handoffs=True, # Auto-detect agent-to-agent handoffs
)
config = beacon.get_config()
result = await agent.graph.ainvoke(state, config)
# For async checkpointers (e.g., AsyncPostgresSaver):
config = await beacon.aget_config()
2. LiteLLM
Trace all LiteLLM operations across multiple LLM providers:
from lumenova_beacon import BeaconClient, BeaconLiteLLMLogger
import litellm
# Option 1: Auto-instrumentation
client = BeaconClient(auto_instrument_litellm=True)
# Option 2: Manual registration
client = BeaconClient()
litellm.callbacks = [BeaconLiteLLMLogger()]
# All LiteLLM calls are now traced
response = litellm.completion(
model="gpt-4",
messages=[{"role": "user", "content": "Hello"}],
metadata={
"generation_name": "greeting",
"session_id": "user-123",
}
)
3. Strands Agents
Trace AWS Strands Agent executions with automatic span hierarchy:
from lumenova_beacon import BeaconClient, BeaconStrandsHandler
from strands import Agent
client = BeaconClient()
handler = BeaconStrandsHandler(
session_id="my-session",
agent_name="My Agent",
)
agent = Agent(model=model, callback_handler=handler)
result = agent("Hello, world!")
print(handler.trace_id) # Link to Beacon trace
4. CrewAI
Trace CrewAI Crew executions via the event listener:
from lumenova_beacon import BeaconClient, BeaconCrewAIListener
from crewai import Agent, Crew, Task
client = BeaconClient()
# Auto-registers with CrewAI event bus
listener = BeaconCrewAIListener(
session_id="my-session",
crew_name="My Research Crew",
)
crew = Crew(agents=[...], tasks=[...])
result = crew.kickoff()
print(listener.trace_id) # Link to Beacon trace
5. OpenTelemetry
Beacon automatically configures OpenTelemetry to export spans:
from lumenova_beacon import BeaconClient
from opentelemetry.instrumentation.anthropic import AnthropicInstrumentor
from opentelemetry.instrumentation.openai import OpenAIInstrumentor
# Initialize (auto-configures OpenTelemetry)
client = BeaconClient(
endpoint="https://your-beacon-endpoint.lumenova.ai",
api_key="your-api-key",
auto_instrument_opentelemetry=True # Default
)
# Instrument libraries
AnthropicInstrumentor().instrument()
OpenAIInstrumentor().instrument()
# Now all API calls are automatically traced!
from anthropic import Anthropic
anthropic = Anthropic()
response = anthropic.messages.create(
model="claude-3-5-sonnet-20241022",
messages=[{"role": "user", "content": "Hello!"}]
) # Automatically traced with proper span hierarchy
Supported Instrumentors
Install additional instrumentors as needed:
pip install opentelemetry-instrumentation-anthropic
pip install opentelemetry-instrumentation-openai
pip install opentelemetry-instrumentation-fastapi
pip install opentelemetry-instrumentation-redis
pip install opentelemetry-instrumentation-httpx
pip install opentelemetry-instrumentation-requests
Tracing
Decorator Tracing
The @trace decorator automatically captures function execution:
from lumenova_beacon import trace
# Simple usage
@trace
def process_data(data):
return data.upper()
# With custom name
@trace(name="custom_operation")
def another_function():
pass
# Capture inputs and outputs
@trace(capture_args=True, capture_result=True)
def calculate(x, y):
return x + y
# Works with async functions
@trace
async def async_operation():
await some_async_call()
Manual Tracing
For more control, use context managers:
from lumenova_beacon import BeaconClient
from lumenova_beacon.types import SpanKind, StatusCode
client = BeaconClient()
# Context manager
with client.trace("operation_name") as span:
span.set_attribute("user_id", "123")
span.set_input({"query": "search term"})
try:
result = do_work()
span.set_output(result)
span.set_status(StatusCode.OK)
except Exception as e:
span.record_exception(e)
span.set_status(StatusCode.ERROR, str(e))
raise
# Async context manager
async with client.trace("async_operation") as span:
result = await async_work()
span.set_output(result)
# Direct span creation
span = client.create_span(
name="manual_span",
kind=SpanKind.CLIENT,
)
span.start()
# ... do work ...
span.end()
Agentic Governance
Enforce governance policies on AI agent actions in real time. The governance system evaluates tool calls and LLM invocations against policy stacks before and after execution, blocking actions that violate your rules.
Key capabilities:
- Pre & post execution hooks — evaluate actions before they run (prevent violations) and after (audit outputs)
- Fail-open resilience — defaults to allowing actions when the governance API is unreachable
- Violation strategies — raise immediately, stop gracefully after current action, or escalate after N violations
Decorator
from lumenova_beacon import governance
# Bare decorator — requires GovernanceConfig on the active BeaconClient
@governance
def search_web(query: str) -> str:
return web_search(query)
# With policy stack IDs
@governance(stack_ids=["my-policy-stack"])
def send_email(to: str, body: str) -> bool:
return email_client.send(to, body)
# Tag-based policy discovery with strict mode
@governance(tags=["env:prod", "team:security"], fail_open=False)
def delete_record(record_id: str) -> None:
db.delete(record_id)
# Works with async functions
@governance(stack_ids=["my-policy-stack"])
async def run_query(sql: str) -> list[dict]:
return await db.execute(sql)
LangChain/LangGraph Callback Handler
from lumenova_beacon import BeaconLangGraphHandler, BeaconLangGraphGovernanceHandler
from langchain_openai import ChatOpenAI
handler = BeaconLangGraphHandler(session_id="session-123")
governance_handler = BeaconLangGraphGovernanceHandler(
stack_ids=["my-policy-stack"],
fail_open=True,
on_violation="raise",
)
llm = ChatOpenAI(model="gpt-4")
response = llm.invoke(
"What is the capital of France?",
config={"callbacks": [handler, governance_handler]}
)
Integrated Tracing + Governance with BeaconLangGraphConfig
For LangGraph agents, pass a GovernanceConfig to BeaconLangGraphConfig to get both tracing and governance in a single setup:
from lumenova_beacon import BeaconLangGraphConfig, GovernanceConfig
beacon = BeaconLangGraphConfig(
graph=agent.graph,
thread_id=thread_id,
agent_name="planner",
governance=GovernanceConfig(
stack_ids=["my-policy-stack"],
fail_open=True,
on_violation="raise",
max_violations=3,
),
)
config = beacon.get_config()
result = await agent.graph.ainvoke(state, config)
GovernanceConfig Options
from lumenova_beacon import GovernanceConfig
config = GovernanceConfig(
stack_ids=["stack-1", "stack-2"], # Policy stack IDs (at least one of stack_ids/tags required)
tags=["env:prod"], # Tag-based policy discovery
fail_open=True, # Allow actions when API is unreachable (default: True)
enabled_hooks={"pre_tool", "post_tool"}, # Which hooks to run (default: all four)
on_violation="raise", # "raise" (immediate) or "stop" (graceful shutdown)
max_violations=5, # Escalate to stop mode after N violations
timeout=2.0, # API call timeout in seconds
debug=False, # Enable debug logging
)
Available hooks: pre_tool, post_tool, pre_llm, post_llm.
Handling Violations
from lumenova_beacon.exceptions import GovernanceViolationError
try:
result = agent.invoke(state, config)
except GovernanceViolationError as e:
print(e.message) # Human-readable reason
print(e.policies) # List of rules that were evaluated
print(e.latency_ms) # Evaluation latency
Dataset Management
Manage test datasets with an ActiveRecord-style API. All methods have async variants with an a prefix (e.g., acreate, aget, alist).
from lumenova_beacon import BeaconClient
from lumenova_beacon.datasets import Dataset, DatasetRecord
client = BeaconClient()
# Create dataset
dataset = Dataset.create(
name="qa-evaluation",
description="Question answering test cases"
)
# Add records with flexible column-based data
dataset.create_record(
data={
"prompt": "What is AI?",
"expected_answer": "Artificial Intelligence is...",
"difficulty": "easy",
"category": "definitions"
}
)
# Bulk create records
dataset.bulk_create_records([
{"data": {"question": "What is ML?", "expected_answer": "Machine Learning..."}},
{"data": {"question": "What is DL?", "expected_answer": "Deep Learning..."}},
])
# List, get, update, delete
datasets, pagination = Dataset.list(page=1, page_size=20, search="qa")
dataset = Dataset.get(dataset_id="dataset-uuid", include_records=True)
dataset.update(name="updated-name", description="New description")
dataset.delete()
Prompt Management
Version-controlled prompt templates with labels. All methods have async variants with an a prefix.
from lumenova_beacon import BeaconClient
from lumenova_beacon.prompts import Prompt
client = BeaconClient()
# Create text prompt
prompt = Prompt.create(
name="greeting",
template="Hello {{name}}! Welcome to {{company}}.",
description="Customer greeting template",
tags=["customer-support", "greeting"]
)
# Create chat prompt
prompt = Prompt.create(
name="support-bot",
messages=[
{"role": "system", "content": "You are a helpful assistant for {{product}}."},
{"role": "user", "content": "{{question}}"}
],
)
# Get latest version (sync)
prompt = Prompt.get(name="greeting")
# Get specific version (async)
prompt = await Prompt.aget(name="greeting", version=2)
# Get labeled version (sync)
prompt = Prompt.get(name="greeting", label="production")
# Get by ID (async)
prompt = await Prompt.aget(prompt_id="prompt-uuid")
# Format prompt with variables
message = prompt.format(name="Alice", company="Acme Corp")
# Result: "Hello Alice! Welcome to Acme Corp."
# Versioning and labels
new_version = prompt.publish(
template="Hi {{name}}! Welcome to {{company}}. We're excited to have you!",
message="Added enthusiastic tone"
)
prompt.set_label("production", version=2)
# Convert to LangChain template
lc_prompt = prompt.to_langchain() # Returns PromptTemplate or ChatPromptTemplate
LangChain Conversion
from langchain_core.prompts import PromptTemplate, ChatPromptTemplate
# Convert text prompt to LangChain (sync)
prompt = Prompt.get(name="greeting", label="production")
lc_prompt = prompt.to_langchain() # Returns PromptTemplate
result = lc_prompt.format(name="Bob", company="TechCorp")
# Convert chat prompt to LangChain (async)
chat_prompt = await Prompt.aget("support-bot", label="production")
lc_chat = chat_prompt.to_langchain() # Returns ChatPromptTemplate
messages = lc_chat.format_messages(product="DataHub", question="Reset password?")
# Use in chain
from langchain_openai import ChatOpenAI
llm = ChatOpenAI(model="gpt-4")
chain = lc_chat | llm
response = await chain.ainvoke({"product": "CloudSync", "question": "Why sync failing?"})
List and Search
# List all prompts (sync)
prompts = Prompt.list(page=1, page_size=20)
# Filter by tags (async)
support_prompts = await Prompt.alist(tags=["customer-support"])
# Search by text (sync)
results = Prompt.list(search="greeting")
# Async version
prompts = await Prompt.alist(page=1, page_size=10)
Experiment & Evaluation Management
from lumenova_beacon.experiments import Experiment
from lumenova_beacon.evaluations import Evaluation
# Create and run an experiment
experiment = Experiment.create(
name="qa-eval-v1",
dataset_id="dataset-uuid",
description="Evaluate QA model accuracy",
)
run = experiment.run(process_fn=my_pipeline)
# Start the experiment
experiment.start()
# Start with external agents - blocks until matching agent steps complete
experiment.start(external_agents={"My Agent": my_agent_fn})
# Continue a stopped/waiting experiment from where it left off
experiment.continue_experiment(external_agents={"My Agent": my_agent_fn})
# Create an evaluation
evaluation = Evaluation.create(
name="accuracy-check",
experiment_id="experiment-uuid",
)
LLM Config Management
from lumenova_beacon.llm_configs import LLMConfig
config = LLMConfig.get(config_id="config-uuid")
configs, pagination = LLMConfig.list(page=1, page_size=20)
Data Masking
Automatically mask sensitive data (PII) before spans are exported:
from lumenova_beacon import BeaconClient
from lumenova_beacon.masking.integrations.beacon_guardrails import (
create_beacon_masking_function,
MaskingMode,
PIIType,
)
# Create a masking function backed by Beacon Guardrails API
masking_fn = create_beacon_masking_function(
pii_types=[PIIType.PERSON, PIIType.EMAIL_ADDRESS, PIIType.US_SSN],
mode=MaskingMode.REDACT,
)
# Pass it to the client - all span data is masked before export
client = BeaconClient(
endpoint="https://your-beacon-endpoint.lumenova.ai",
api_key="your-api-key",
masking_function=masking_fn,
)
You can also provide a custom masking function:
def my_masking_fn(text: str) -> str:
return text.replace("secret", "***")
client = BeaconClient(masking_function=my_masking_fn)
Guardrails
Apply content guardrail policies via the Beacon API:
from lumenova_beacon.guardrails import Guardrail
guardrail = Guardrail(guardrail_id="guardrail-uuid")
# Sync
result = guardrail.apply("some user input")
# Async
result = await guardrail.aapply("some user input")
API Reference
Main Exports
from lumenova_beacon import (
BeaconClient, # Main client
BeaconConfig, # Configuration class
get_client, # Get current client singleton
trace, # Tracing decorator
# Integrations (lazy-loaded)
BeaconLangGraphHandler, # LangChain/LangGraph
BeaconLangGraphConfig, # LangGraph configuration (adds support for interruptions)
BeaconStrandsHandler, # Strands Agents
BeaconCrewAIListener, # CrewAI
BeaconLiteLLMLogger, # LiteLLM
# Governance (lazy-loaded)
BeaconLangGraphGovernanceHandler, # LangChain/LangGraph governance
GovernanceConfig, # Governance configuration
)
from lumenova_beacon.governance import governance # Function decorator
from lumenova_beacon.datasets import Dataset, DatasetRecord
from lumenova_beacon.prompts import Prompt
from lumenova_beacon.experiments import Experiment
from lumenova_beacon.evaluations import Evaluation, EvaluationRun
from lumenova_beacon.llm_configs import LLMConfig
from lumenova_beacon.guardrails import Guardrail
from lumenova_beacon.types import SpanKind, StatusCode, SpanType
BeaconClient
client = BeaconClient(
endpoint: str | None = None,
api_key: str | None = None,
file_directory: str | None = None,
session_id: str | None = None,
user_email: str | None = None,
user_name: str | None = None,
user_id: str | None = None,
service_name: str | None = None,
environment: str | None = None,
auto_instrument_opentelemetry: bool = True,
isolated: bool = False,
auto_instrument_litellm: bool = False,
masking_function: Callable | None = None,
verify: bool | None = None,
eager_export: bool | None = None,
record_stacktrace: bool = False,
)
# Methods
span = client.create_span(name, kind, span_type, session_id)
ctx = client.trace(name, kind, span_type) # Context manager (sync & async)
client.export_span(span) # Export a single span
client.export_spans(spans) # Export multiple spans
client.flush() # Flush pending spans
Dataset
# Class methods (sync - simple names)
dataset = Dataset.create(name: str, description: str | None = None, column_schema: list[dict[str, Any]] | None = None)
dataset = Dataset.get(dataset_id: str, include_records: bool = False)
datasets, pagination = Dataset.list(page=1, page_size=20, search=None)
# Class methods (async - 'a' prefix)
dataset = await Dataset.acreate(...)
dataset = await Dataset.aget(...)
datasets, pagination = await Dataset.alist(...)
# Instance methods (sync - simple names)
dataset.save()
dataset.update(name=None, description=None)
dataset.delete()
record = dataset.create_record(data: dict[str, Any])
dataset.bulk_create_records(records: list[dict])
records, pagination = dataset.list_records(page=1, page_size=50)
# Instance methods (async - 'a' prefix)
await dataset.asave()
await dataset.aupdate(...)
await dataset.adelete()
record = await dataset.acreate_record(...)
await dataset.abulk_create_records(...)
records, pagination = await dataset.alist_records(...)
# Properties
dataset.id
dataset.name
dataset.description
dataset.record_count
dataset.created_at
dataset.updated_at
dataset.column_schema
DatasetRecord
# Class methods (sync - simple names)
record = DatasetRecord.get(dataset_id: str, record_id: str)
records, pagination = DatasetRecord.list(dataset_id: str, page=1, page_size=50)
# Class methods (async - 'a' prefix)
record = await DatasetRecord.aget(...)
records, pagination = await DatasetRecord.alist(...)
# Instance methods (sync - simple names)
record.save()
record.update(data: dict[str, Any] | None = None)
record.delete()
# Instance methods (async - 'a' prefix)
await record.asave()
await record.aupdate(...)
await record.adelete()
# Properties
record.id
record.dataset_id
record.data # dict[str, Any] - flexible column data
record.created_at
record.updated_at
Prompt
# Class methods (sync - simple names)
prompt = Prompt.create(name, template=None, messages=None, description=None, tags=None)
prompt = Prompt.get(prompt_id=None, *, name=None, label="latest", version=None)
prompts = Prompt.list(page=1, page_size=10, tags=None, search=None)
# Class methods (async - 'a' prefix)
prompt = await Prompt.acreate(...)
prompt = await Prompt.aget(...)
prompts = await Prompt.alist(...)
# Instance methods (sync - simple names)
prompt.update(name=None, description=None, tags=None)
prompt.delete()
new_version = prompt.publish(template=None, messages=None, message="")
prompt.set_label(label: str, version: int | None = None)
# Instance methods (async - 'a' prefix)
await prompt.aupdate(...)
await prompt.adelete()
new_version = await prompt.apublish(...)
await prompt.aset_label(...)
# Rendering (always sync)
result = prompt.format(**kwargs)
result = prompt.compile(variables: dict)
template = prompt.to_template() # Convert to Python f-string format
lc_prompt = prompt.to_langchain() # Convert to LangChain template
# Properties
prompt.id
prompt.name
prompt.type # "text" or "chat"
prompt.version
prompt.template # For TEXT prompts
prompt.messages # For CHAT prompts
prompt.labels # list[str]
prompt.tags # list[str]
Span
span = Span(name, kind, span_type)
# Lifecycle
span.start()
span.end(status_code=StatusCode.OK)
# Status
span.set_status(StatusCode.ERROR, "description")
span.record_exception(exc: Exception)
# Attributes
span.set_attribute("key", value)
span.set_attributes({"k1": "v1", "k2": "v2"})
span.set_input(data: dict)
span.set_output(data: dict)
span.set_metadata("key", value)
# Properties
span.trace_id
span.span_id
span.parent_id
span.name
span.kind
span.span_type
Type Enums
from lumenova_beacon.types import SpanKind, StatusCode, SpanType
# SpanKind
SpanKind.INTERNAL
SpanKind.SERVER
SpanKind.CLIENT
SpanKind.PRODUCER
SpanKind.CONSUMER
# StatusCode
StatusCode.UNSET
StatusCode.OK
StatusCode.ERROR
# SpanType
SpanType.SPAN
SpanType.GENERATION
SpanType.CHAIN
SpanType.TOOL
SpanType.RETRIEVAL
SpanType.AGENT
SpanType.FUNCTION
SpanType.REQUEST
SpanType.SERVER
SpanType.TASK
SpanType.CACHE
SpanType.EMBEDDING
SpanType.HANDOFF
SpanType.CONDITIONAL
Error Handling
All exceptions inherit from BeaconError. Key exception types:
ConfigurationError— invalid configurationTransportError(HTTPTransportError,FileTransportError) — export failuresGovernanceViolationError— policy blocked an action (includesmessage,policies,latency_ms)DatasetError,PromptError,ExperimentError,EvaluationError— resource-specific errors (each withNotFoundandValidationvariants)
Retry Logic
All HTTP operations automatically retry up to 3 times with exponential backoff:
from lumenova_beacon.exceptions import PromptNetworkError
try:
prompt = Prompt.get(name="my-prompt")
except PromptNetworkError as e:
# Failed after 3 automatic retries
print(f"Network error: {e}")
except PromptNotFoundError as e:
# Prompt doesn't exist
print(f"Not found: {e}")
Graceful Degradation
from lumenova_beacon import BeaconClient
# Disable tracing in development
client = BeaconClient(enabled=False)
# Tracing becomes no-op when disabled
@trace
def my_function():
return "result" # No tracing overhead
License
This project is licensed under the Apache License 2.0 - see the LICENSE file for details.
Project details
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