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Testing and validation framework for monocle AI agent tracing

Project description

Monocle Test Tools

A comprehensive testing and validation framework for monocle AI agent tracing. This package provides tools for validating agent behavior, tool invocations, inference responses, and overall AI system performance.

Features

  • Test Generator: Automatically generate test code from trace files
  • Agentic Response: Verify that agent requests get the appropriate response.
  • Agent Invocation: Verify that specific agents are invoked and delegate tasks correctly.
  • Tool Validation: Ensure tools are called with expected inputs and produce expected outputs.
  • Inference Testing: Test model inference responses against expected content.
  • Cost/Performance/Quality: Verify token usage, duration limits, error states, and warnings.
  • Evaluation: Integrate with Okahu or custom evaluation tools to validate LLM responses.
  • Fluent API: Chain assertions using a readable, expressive builder pattern.
  • Mock Tools: Simulate tool behavior without invoking external dependencies.
  • Offline Testing: Assert against pre-recorded trace JSON files without running live agents.

How does it work

The test tool runs your agent or workflow code with Monocle instrumentation enabled. It examines the traces generated by the genAI components used in your code (e.g. Google ADK, LangGraph, CrewAI, etc.) and verifies the test conditions you want to validate.

Installation

pip install monocle_test_tools

Project Setup

conftest.py

If you are running tests locally without installing the package, register the pytest plugin in your conftest.py:

# conftest.py
pytest_plugins = ["monocle_test_tools.pytest_plugin"]

When installed as a package, the plugin is registered automatically.


Quick Start

Declarative API (@monocle_testcase)

Decorate a test function with @MonocleValidator().monocle_testcase(test_cases) to run parameterized test cases automatically. Works with sync and async functions.

import pytest
from monocle_test_tools import TestCase, MonocleValidator
from adk_travel_agent import root_agent

agent_test_cases: list[dict] = [
    # Test 1: Validate the end-to-end response with similarity matching
    {
        "test_input": ["Book a flight from San Francisco to Mumbai for 26th Nov 2025."],
        "test_output": "A flight from San Francisco to Mumbai has been booked.",
        "comparer": "similarity",
    },
    # Test 2: Validate specific span types (tool and agent invocations)
    {
        "test_input": ["Book a flight from San Francisco to Mumbai for 26th Nov 2025."],
        "test_spans": [
            {
                "span_type": "agentic.turn",
                "output": "A flight from San Francisco to Mumbai has been booked.",
                "comparer": "similarity"
            },
            {
                "span_type": "agentic.tool.invocation",
                "entities": [
                    {"type": "tool", "name": "adk_book_flight"},
                    {"type": "agent", "name": "adk_flight_booking_agent"}
                ]
            }
        ]
    },
    # Test 3: BERTScore evaluation on a span
    {
        "test_input": ["Book a flight from San Francisco to Mumbai for 26th Nov 2025."],
        "test_spans": [
            {
                "span_type": "agentic.turn",
                "eval": {
                    "eval": "bert_score",
                    "args": ["input", "output"],
                    "expected_result": {"Precision": 0.5, "Recall": 0.5, "F1": 0.5},
                    "comparer": "metric"
                }
            }
        ]
    },
]

@MonocleValidator().monocle_testcase(agent_test_cases)
async def test_run_agents(my_test_case: TestCase):
    await MonocleValidator().test_agent_async(root_agent, "google_adk", my_test_case)

if __name__ == "__main__":
    pytest.main([__file__])

Fluent API (monocle_trace_asserter)

Use the monocle_trace_asserter pytest fixture to write expressive, chainable assertions. Each assertion method filters the span context for subsequent calls.

import pytest
from my_agent import my_agent

@pytest.mark.asyncio
async def test_tool_called_with_input(monocle_trace_asserter):
    await monocle_trace_asserter.run_agent_async(my_agent, "google_adk", "book a flight to Mumbai")

    monocle_trace_asserter \
        .called_tool("book_flight", agent_name="flight_booking_agent") \
        .contains_input("Mumbai") \
        .contains_output("booked")

@pytest.mark.asyncio
async def test_agent_under_limits(monocle_trace_asserter):
    await monocle_trace_asserter.run_agent_async(my_agent, "langgraph", "summarize this document")

    monocle_trace_asserter \
        .called_agent("summarizer_agent") \
        .under_token_limit(500) \
        .under_duration(5.0, units="seconds", span_type="agent_invocation")

Chaining span selectors to narrow context

Calling called_agent() followed by called_tool() narrows the span context to tools invoked within that specific agent:

# Verify tools called only within the flight booking agent, not other agents
monocle_trace_asserter \
    .called_agent("adk_flight_booking_agent") \
    .called_tool("adk_book_flight") \
    .under_duration(0.1, units="minutes", span_type="tool_invocation")

Custom assertion messages

Every assertion method accepts an optional message= parameter to provide a clear error description when the assertion fails:

monocle_trace_asserter.called_tool(
    "book_flight",
    message="BOOKING FAILED: The flight booking tool was never invoked"
)
monocle_trace_asserter.under_token_limit(
    500,
    message="COST ALERT: Token usage exceeded the allowed budget"
)
monocle_trace_asserter.contains_input(
    "Mumbai",
    message="INPUT VALIDATION ERROR: Destination city was not passed to the tool"
)

Count and aggregate assertions

Assert specific or total invocation counts for agents and tools:

# Exact count: retry agent called exactly 3 times
monocle_trace_asserter.called_agent("retry_agent", count=3)

# Range: worker agent called 2-5 times
monocle_trace_asserter.called_agent("worker_agent", min_count=2, max_count=5)

# Min only: search tool called at least once
monocle_trace_asserter.called_tool("search_tool", min_count=1)

# Max only: expensive API called at most twice
monocle_trace_asserter.called_tool("expensive_api", max_count=2)

# Total agent invocations across all agents
monocle_trace_asserter.called_agents(count=10)  # Exactly 10 agent calls total
monocle_trace_asserter.called_agents(min_count=5, max_count=15)  # Between 5-15 calls

# Total tool invocations across all tools
monocle_trace_asserter.called_tools(max_count=20)  # At most 20 tool calls total

Framework Examples

Google ADK

@pytest.mark.asyncio
async def test_adk_parallel_agents(monocle_trace_asserter):
    await monocle_trace_asserter.run_agent_async(root_agent_parallel, "google_adk",
                        "Book a flight to Mumbai and a hotel for 4 nights.")

    # Verify all agents in the parallel workflow were called
    monocle_trace_asserter.called_agent("adk_parallel_booking_coordinator")
    monocle_trace_asserter.called_agent("adk_flight_booking_agent")
    monocle_trace_asserter.called_agent("adk_hotel_booking_agent")

    # Verify both tools were invoked
    monocle_trace_asserter.called_tool("adk_book_flight", "adk_flight_booking_agent")
    monocle_trace_asserter.called_tool("adk_book_hotel", "adk_hotel_booking_agent")

    # Verify output mentions both bookings
    monocle_trace_asserter.contains_output("flight")
    monocle_trace_asserter.contains_output("hotel")

CrewAI

@MonocleValidator().monocle_testcase(agent_test_cases)
async def test_crewai_travel_agent(my_test_case: TestCase):
    result = await execute_crewai_travel_request(my_test_case.test_input[0])
    return result

Fluent style:

@pytest.mark.asyncio
async def test_crewai_tool_invocation(monocle_trace_asserter):
    crew = create_crewai_travel_crew("Book a hotel at Marriott in New York for 2 nights")
    await monocle_trace_asserter.run_agent_async(crew, "crewai", travel_request)

    monocle_trace_asserter \
        .called_tool("crew_book_hotel", "CrewAI Hotel Booking Agent") \
        .contains_output("success")

LlamaIndex

LlamaIndex supports multiple runner methods — coordinator agents, ReActAgent (chat and query), and QueryEngine (sync and async):

@MonocleValidator().monocle_testcase(agent_test_cases)
async def test_llamaindex_agent(my_test_case: TestCase):
    agent_workflow = await setup_agents()
    await MonocleValidator().test_agent_async(agent_workflow, "llamaindex", my_test_case)

Test cases can validate the full multi-agent coordinator hierarchy:

{
    "test_spans": [
        {"span_type": "agentic.invocation", "entities": [{"type": "agent", "name": "lmx_coordinator_05"}]},
        {"span_type": "agentic.invocation", "entities": [{"type": "agent", "name": "lmx_flight_booking_agent_05"}]},
        {"span_type": "agentic.tool.invocation", "entities": [
            {"type": "tool",  "name": "lmx_book_flight_tool_05"},
            {"type": "agent", "name": "lmx_flight_booking_agent_05"}
        ]}
    ]
}

Strands

Use session_id to associate multiple turns with the same session:

@MonocleValidator().monocle_testcase(agent_test_cases)
async def test_strands_agent(test_case: TestCase):
    await MonocleValidator().test_agent_async(
        root_agent, "strands", test_case, session_id="my_session"
    )

Offline Testing with Pre-Recorded Traces

Run assertions against saved trace JSON files without invoking live agents. This is useful for unit tests and CI environments without API access.

from monocle_test_tools import TraceAssertion
from monocle_test_tools.span_loader import JSONSpanLoader

def test_tool_invocation_from_trace(monocle_trace_asserter):
    # Load spans from a saved trace file
    monocle_trace_asserter.load_spans(JSONSpanLoader.from_json("traces/trace1.json"))

    monocle_trace_asserter \
        .called_tool("adk_book_hotel", "adk_hotel_booking_agent") \
        .has_input("{'city': 'Mumbai', 'hotel_name': 'Marriot Intercontinental'}") \
        .has_output("{'status': 'success', 'message': 'Successfully booked a stay...'}") \
        .contains_input("Mumbai") \
        .contains_output("Successfully booked") \
        .does_not_contain_input("Delhi") \
        .does_not_contain_output("failed")

def test_agent_invocation_from_trace(monocle_trace_asserter):
    monocle_trace_asserter.load_spans(JSONSpanLoader.from_json("traces/trace1.json"))

    monocle_trace_asserter \
        .called_agent("adk_hotel_booking_agent") \
        .has_input("Book a flight from San Francisco...") \
        .contains_output("I have booked a stay at Marriot Intercontinental") \
        .does_not_have_output("cancel the booking")

You can also use MonocleValidator directly for programmatic validation:

from monocle_test_tools import MonocleValidator, TestCase, TestSpan, Entity, DefaultComparer
from monocle_test_tools.span_loader import JSONSpanLoader

@pytest.fixture(scope="module")
def validator():
    v = MonocleValidator()
    spans = JSONSpanLoader.from_json("traces/trace1.json")
    v.memory_exporter.export(spans)
    yield v
    v.memory_exporter.clear()

def test_tool_span(validator):
    test_case = TestCase(
        test_spans=[
            TestSpan(
                span_type="agentic.tool.invocation",
                entities=[
                    Entity(type="tool",  name="adk_book_hotel"),
                    Entity(type="agent", name="adk_hotel_booking_agent"),
                ],
                input="{'city': 'Mumbai', 'hotel_name': 'Marriot Intercontinental'}",
                output="{'status': 'success', ...}",
                comparer=DefaultComparer(),
            )
        ]
    )
    validator.validate(test_case)

Test Generator

Automatically generate test code by analyzing trace files. The generator scans spans and creates Python test assertions for agents, tools, and outputs.

Quick Start

# Generate test code from a trace file
python -m monocle_test_tools.generate_test trace.json

# With custom test name
python -m monocle_test_tools.generate_test trace.json --test-name test_my_agent

# Save to file
python -m monocle_test_tools.generate_test trace.json > test_generated.py

Example Output

import pytest
from monocle_test_tools import TraceAssertion
from monocle_test_tools.span_loader import JSONSpanLoader

def test_generated(monocle_trace_asserter: TraceAssertion):
    """Auto-generated test from trace analysis."""
    
    # Option 1: Load from JSON file
    spans = JSONSpanLoader.from_json("path/to/trace.json")
    # monocle_trace_asserter.validator.add_remote_spans(spans)
    
    # Option 2: Load from Okahu
    # from monocle_test_tools.span_loader import OkahuSpanLoader
    # spans = OkahuSpanLoader.get_spans(workflow_name="your_workflow", trace_id="trace_id")
    # monocle_trace_asserter.validator.add_remote_spans(spans)
    
    # Option 3: Run agent directly
    # from your_module import your_agent
    # await monocle_trace_asserter.run_agent_async(your_agent, "framework_name", "user input")
    
    asserter = monocle_trace_asserter
    
    # Agent invocations with output checks
    asserter.called_agent("travel_agent").contains_output("Successfully booked")
    asserter.called_agent("hotel_agent").contains_output("Marriott reservation confirmed")
    
    # Tool invocations
    asserter.called_tool("book_flight", "travel_agent")
    asserter.called_tool("book_hotel", "hotel_agent")

Python API

from monocle_test_tools.test_generator import TestGenerator

# From local file
generator = TestGenerator.from_json_file("trace.json")
test_code = generator.generate_test_code(test_name="test_my_agent")
print(test_code)

# Write to file
generator.write_to_file("test_my_agent.py")

# From Okahu
generator = TestGenerator.from_okahu(trace_id="abc123", workflow_name="my_app")
print(generator.generate_test_code())

The generator extracts:

  • Agent invocations with output checks (first 80 chars as key phrase)
  • Tool invocations with parent agent references
  • Sorted by invocation order for readability

Mock Tools

MockTool simulates tool calls without invoking real external services. Useful for testing agent logic in isolation.

Response templates

Use {{placeholder}} syntax in the response to substitute values from tool input at runtime:

from monocle_test_tools import TestCase, MockTool, ToolType

test_case = TestCase(
    test_input=["Book a flight from San Francisco to Mumbai for 26th Nov 2025."],
    mock_tools=[
        MockTool(
            name="adk_book_flight",
            type=ToolType.ADK,
            response={
                "status": "success",
                "message": "Flight booked from {{from_airport}} to {{to_airport}}."
            }
        )
    ],
    test_spans=[
        {
            "span_type": "agentic.tool.invocation",
            "entities": [{"type": "tool", "name": "adk_book_flight"}],
            "output": "{'status': 'success', 'message': 'Flight booked from San Francisco to Mumbai.'}"
        }
    ]
)

Simulating errors

MockTool(
    name="failing_tool",
    type=ToolType.OPENAI,
    raise_error=True,
    error_message="Service unavailable"
)

Supported ToolType values: tool.openai, tool.adk, tool.llama_index, tool.langgraph, tool.strands.


Test Format Reference

TestCase

{
    "test_name":        "Optional name (default: 'monocle_test').",
    "test_input":       "Tuple of inputs passed to the workflow or agent function.",
    "test_output":      "Expected output compared against the actual result using 'comparer'.",
    "comparer":         "Comparison method. See Comparers section.",
    "test_description": "Human-readable description of what the test verifies.",
    "test_spans":       "Array of TestSpan objects for specific interactions.",
    "expect_errors":    "If true, errors during the run are expected and do not fail the test.",
    "expect_warnings":  "If true, warnings during the run are expected.",
    "mock_tools":       "Array of MockTool objects to simulate tool behavior."
}

TestSpan

Validation rules enforced by span type:

  • agentic.tool.invocation — first entity must be type tool; optional second must be type agent
  • agentic.delegation — requires at least two agent entities (delegator first, delegatee second)
  • agentic.invocation — first entity must be type agent
{
    "span_type":        "Type of interaction. See Span Types.",
    "entities":         "List of entities involved. Each has 'type' (tool|agent|inference) and 'name'.",
    "input":            "Expected input for this interaction.",
    "output":           "Expected output from this interaction.",
    "test_type":        "'positive' (default) or 'negative'. Negative tests assert the interaction does NOT occur.",
    "eval":             "Evaluation configuration. See Evaluation section.",
    "expect_errors":    "Whether errors are expected during this span.",
    "expect_warnings":  "Whether warnings are expected during this span.",
    "comparer":         "Comparison method. See Comparers."
}

Span Types

Span Type Constant Description
agentic.tool.invocation SpanType.TOOL_INVOCATION A tool was invoked by an agent
agentic.invocation SpanType.AGENTIC_INVOCATION An agent was invoked
agentic.turn SpanType.AGENTIC_REQUEST An end-to-end agentic request/response turn
agentic.delegation SpanType.AGENTIC_DELEGATION An agent delegated to another agent
inference SpanType.INFERENCE A model inference call

Entity Types

Entity Type Constant Description
tool EntityType.TOOL A tool or function called by an agent
agent EntityType.AGENT An agent or sub-agent
inference EntityType.INFERENCE A model inference entity

Comparers

Name Class Description
default DefaultComparer Exact string equality (default)
similarity SentenceComparer Semantic similarity via sentence-transformers (threshold: 0.8)
bert_score BertScoreComparer BERTScore-based text similarity
metric MetricComparer Numeric metric comparison (used with BERTScore eval results)
token_match TokenMatchComparer Substring/token containment check

Pass comparers as strings ("similarity") or class instances (SentenceComparer()). Extend BaseComparer to create a custom comparer.


Evaluators

BERTScore (local)

Run directly on span input/output without external services:

{
    "span_type": "agentic.turn",
    "eval": {
        "eval": "bert_score",
        "args": ["input", "output"],
        "expected_result": {"Precision": 0.5, "Recall": 0.5, "F1": 0.5},
        "comparer": "metric"
    }
}

Okahu Evaluation (cloud)

Submits traces to the Okahu evaluation service. Requires OKAHU_API_KEY.

Use with_evaluation("okahu") in the fluent API, then call check_eval() with an eval template name and expected result:

# Basic usage — single eval on the default fact (traces)
monocle_trace_asserter.with_evaluation("okahu").check_eval("sentiment", expected="positive")

# Using not_expected to assert a result is absent
monocle_trace_asserter.with_evaluation("okahu") \
    .check_eval("toxicity", not_expected=["highly_toxic", "moderately_toxic", "mildly_toxic"])

# Chaining multiple evals
monocle_trace_asserter.with_evaluation("okahu") \
    .check_eval("hallucination", expected="no_hallucination") \
    .check_eval("bias", expected="unbiased") \
    .check_eval("pii_leakage", not_expected="pii_leakage")

# Evaluating on a specific fact
monocle_trace_asserter.with_evaluation("okahu") \
    .check_eval(fact_name="agentic_sessions", eval_name="role_adherence",
                expected=["excellent_adherence", "good_adherence"],
                not_expected=["poor_adherence", "no_adherence"])

# Evaluating filtered spans (after called_agent or called_tool)
monocle_trace_asserter.called_agent("adk_flight_booking_agent")
monocle_trace_asserter.with_evaluation("okahu") \
    .check_eval("conversation_completeness", expected="complete")

Okahu fact_name values

fact_name Description
traces Whole traces (default)
inferences Individual inference calls
agentic_turns Agent request/response turns
agentic_sessions Agent sessions
agent_invocation Individual agent invocations
tool_execution Individual tool executions
commits Git commits
conversations Conversations
test_runs Test runs
tests Tests

Okahu evaluation templates (examples)

The following eval template names have been validated against real traces in tests:

Template Supported facts Example expected values
sentiment traces, inferences, agentic_turns "positive", "negative", "neutral"
bias traces, agentic_turns, agentic_sessions "unbiased"
hallucination traces, agentic_sessions, agentic_turns "no_hallucination"
toxicity traces, agentic_turns, agentic_sessions "non_toxic"
pii_leakage traces, agentic_turns, agentic_sessions "pii_leakage" (use not_expected)
frustration traces, conversations "ok"
offtopic agentic_turns "on_topic"
argument_correctness agentic_turns "correct"
contextual_relevancy agentic_turns, agentic_sessions "highly_relevant"
conversation_completeness agent_invocation "complete"
summarization traces, agentic_sessions "excellent", "good"
correctness agentic_sessions "correct"
role_adherence agentic_sessions "excellent_adherence", "good_adherence"
knowledge_retention agentic_sessions "excellent_retention", "good_retention"
answer_relevancy agentic_sessions "yes"
misuse agentic_sessions "clear_misuse" (use not_expected)

Passing a template name or fact combination that does not exist in Okahu raises an AssertionError with the list of valid templates. Use @pytest.mark.xfail for tests that are expected to fail.


Supported Agent Frameworks (Runners)

Agent type string Framework
google_adk Google Agent Development Kit (ADK)
openai OpenAI Agents
langgraph LangGraph
crewai CrewAI
llamaindex LlamaIndex
strands Strands Agents
msagent Microsoft Semantic Kernel / AutoGen

Fluent API Reference (TraceAssertion)

The monocle_trace_asserter fixture provides a TraceAssertion instance. All assertion methods return self for chaining and accept an optional message= keyword argument for custom failure messages.

Run agents

Method Description
run_agent(agent, agent_type, *args) Run a sync agent
await run_agent_async(agent, agent_type, *args, session_id=None) Run an async agent
load_spans(spans) Load pre-recorded ReadableSpan objects for offline assertions

Span selectors (narrow context for subsequent assertions)

Method Description
called_tool(tool_name, agent_name=None, count=None, min_count=None, max_count=None) Assert a tool was called; narrows context to those spans. Optional: count for exact count, min_count/max_count for range
does_not_call_tool(tool_name, agent_name=None) Assert a tool was NOT called
called_agent(agent_name, count=None, min_count=None, max_count=None) Assert an agent was called; narrows context to those spans. Optional: count for exact count, min_count/max_count for range
does_not_call_agent(agent_name) Assert an agent was NOT called
called_agents(count=None, min_count=None, max_count=None) Assert total number of agent invocations across all agents. Optional: count for exact count, min_count/max_count for range
called_tools(count=None, min_count=None, max_count=None) Assert total number of tool invocations across all tools. Optional: count for exact count, min_count/max_count for range

Input assertions

Method Description
has_input(expected) Exact input match
has_any_input(*expected) Exact match against any of the given inputs
does_not_have_input(unexpected) Assert input does not exactly match
does_not_have_any_input(*unexpected) Assert none of the inputs exactly match
contains_input(substring) Input contains the given substring
contains_any_input(*substrings) Input contains any of the given substrings
does_not_contain_input(substring) Input does not contain the substring
does_not_contain_any_input(*substrings) Input does not contain any of the substrings

Output assertions

Method Description
has_output(expected) Exact output match
has_any_output(*expected) Exact match against any of the given outputs
does_not_have_output(unexpected) Assert output does not exactly match
does_not_have_any_output(*unexpected) Assert none of the outputs exactly match
contains_output(substring) Output contains the given substring
contains_any_output(*substrings) Output contains any of the given substrings
does_not_contain_output(substring) Output does not contain the substring
does_not_contain_any_output(*substrings) Output does not contain any of the substrings

Performance assertions

Method Description
under_token_limit(limit) Assert total tokens across current spans are under the limit
under_duration(limit, units="seconds", span_type="workflow") Assert each span of the given type is under the duration limit. units: ms, seconds, minutes. span_type: workflow, agent_invocation, tool_invocation, agent_turn, inference

Evaluation

Method Description
with_evaluation(eval, eval_options=None) Configure the evaluator ("okahu", "bert_score", or a BaseEval instance)
with_comparer(comparer) Override the comparer used by subsequent has_input, has_any_input, does_not_have_input, has_output, has_any_output, does_not_have_output assertions. Does not affect contains_* methods (those always use token/substring matching). Accepts a string key or class instance: "default" (exact match), "similarity" (semantic via sentence-transformers, threshold 0.8), "bert_score" (BERTScore similarity), "metric" (numeric metric comparison), "token_match" (substring containment), or any BaseComparer subclass instance.
check_eval(eval_name, expected=None, not_expected=None, fact_name="traces") Run an evaluation and assert the result. expected and not_expected each accept a string or list of strings

Direct Validation Methods (MonocleValidator)

For use outside the fluent API or fixture:

validator = MonocleValidator()

# Run and validate a sync or async workflow function
validator.test_workflow(my_func, test_case)
await validator.test_workflow_async(my_func, test_case)

# Run and validate a named agent (sync or async)
validator.test_agent(agent, "langgraph", test_case)
await validator.test_agent_async(agent, "google_adk", test_case, session_id="abc")

# Token and duration checks (call after a run or after loading spans)
validator.check_completion_token_limits(max_output_tokens=200)
validator.check_total_token_limits(max_total_tokens=1000)
validator.check_duration_limits(max_duration=30.0, units="seconds", span_type="workflow")

Environment Variables

Variable Description Default
MONOCLE_EXPORTER Comma-separated exporter names (file, okahu, etc.) file
MONOCLE_EXPORT_FAILED_TESTS_ONLY Set to true to export traces only for failed tests false
MONOCLE_TEST_WORKFLOW_NAME Workflow name tag applied to all test traces Git repo name
MONOCLE_TRACE_OUTPUT_PATH Directory for file-based trace output .monocle/test_traces
OKAHU_API_KEY API key for Okahu evaluation and trace export
OKAHU_EVALUATION_ENDPOINT Override the Okahu evaluation endpoint https://eval.okahu.co/api
LOCAL_RUN_ID Run identifier applied to all spans in a session ISO datetime at session start

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