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488 lines
16 KiB
Python
488 lines
16 KiB
Python
from typing import Dict, Any, List, Optional
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import opik
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from opik import Prompt, synchronization
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from opik.evaluation import metrics
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from opik.evaluation.metrics import BaseMetric, score_result
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from opik.message_processing.emulation import models
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from .. import verifiers
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from ..conftest import random_chars
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def _wait_for_per_item_feedback_scores(
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opik_client: opik.Opik,
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experiment_name: str,
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expected_count_per_item: int,
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expected_item_count: int,
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max_try_seconds: float = 10.0,
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) -> List[Any]:
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"""
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Poll the backend until every experiment item has ``expected_count_per_item``
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feedback scores. Returns the materialized list of experiment items.
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The verifier ``verifiers.verify_experiment`` only checks the **experiment-
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level** ``feedback_scores`` aggregate (one row per unique score name).
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Per-item feedback scores can lag for an extra moment after the
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aggregate has converged — especially when task-span scoring writes the
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second batch of scores via ``client.log_traces_feedback_scores`` after
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the per-item trace has been emitted. Polling avoids race-condition
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flakes against the read-back without masking real bugs (a bounded
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timeout still fails the test if the count never settles).
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"""
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last_items: List[Any] = []
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def _check() -> bool:
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nonlocal last_items
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experiment = opik_client.get_experiment_by_name(experiment_name)
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last_items = experiment.get_items()
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if len(last_items) != expected_item_count:
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return False
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return all(
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len(item.feedback_scores) == expected_count_per_item for item in last_items
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)
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converged = synchronization.until(
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_check, max_try_seconds=max_try_seconds, allow_errors=True
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)
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assert converged, (
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f"Per-item feedback score counts did not converge to "
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f"{expected_count_per_item} within {max_try_seconds}s. "
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f"Last observed: items={len(last_items)}, "
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f"counts={[len(item.feedback_scores) for item in last_items]}"
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)
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return last_items
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class TaskSpanTestMetric(BaseMetric):
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def __init__(
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self,
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name: str = "task_span_test_metric",
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track: bool = True,
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project_name: Optional[str] = None,
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):
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super().__init__(name=name, track=track, project_name=project_name)
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def score(
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self, task_span: models.SpanModel, **ignored_kwargs: Any
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) -> score_result.ScoreResult:
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score = 1.0 if task_span.name == "task" else 0.0
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return score_result.ScoreResult(
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value=score,
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name=self.name,
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reason="Correct task span name"
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if score == 1.0
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else "Incorrect task span name",
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)
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class TaskSpanInputTestMetric(BaseMetric):
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def __init__(
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self,
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name: str = "task_span_input_test_metric",
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track: bool = True,
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project_name: Optional[str] = None,
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):
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super().__init__(name=name, track=track, project_name=project_name)
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def score(
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self, task_span: models.SpanModel, **ignored_kwargs: Any
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) -> score_result.ScoreResult:
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input_data = task_span.input
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has_question = (
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isinstance(input_data, dict)
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and "item" in input_data
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and "input" in input_data["item"]
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and isinstance(input_data["item"]["input"], dict)
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and "question" in input_data["item"]["input"]
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)
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score = 1.0 if has_question else 0.0
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return score_result.ScoreResult(
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value=score,
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name=self.name,
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reason="Task span has question input"
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if score == 1.0
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else "Task span missing question input",
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)
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def test_evaluate__with_task_span_metrics__single_metric__happy_flow(
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opik_client: opik.Opik, dataset_name: str, experiment_name: str
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):
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dataset = opik_client.create_dataset(dataset_name)
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dataset.insert(
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[
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{
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"input": {"question": "What is the capital of France?"},
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"expected_model_output": {"output": "Paris"},
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},
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{
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"input": {"question": "What is the capital of Germany?"},
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"expected_model_output": {"output": "Berlin"},
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},
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]
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)
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def task(item: Dict[str, Any]):
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if item["input"] == {"question": "What is the capital of France?"}:
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return {"output": "Paris"}
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if item["input"] == {"question": "What is the capital of Germany?"}:
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return {"output": "Berlin"}
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raise AssertionError(
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f"Task received dataset item with an unexpected input: {item['input']}"
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)
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prompt = Prompt(
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name=f"test-task-span-prompt-{random_chars()}",
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prompt=f"test-task-span-prompt-template-{random_chars()}",
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)
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task_span_metric = TaskSpanTestMetric()
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equals_metric = metrics.Equals()
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evaluation_result = opik.evaluate(
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dataset=dataset,
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task=task,
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scoring_metrics=[equals_metric, task_span_metric],
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experiment_name=experiment_name,
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experiment_config={
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"model_name": "test-model",
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},
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scoring_key_mapping={
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"reference": lambda x: x["expected_model_output"]["output"],
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},
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prompts=[prompt],
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)
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verifiers.verify_experiment(
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opik_client=opik_client,
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id=evaluation_result.experiment_id,
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experiment_name=evaluation_result.experiment_name,
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experiment_metadata={"model_name": "test-model"},
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traces_amount=2,
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feedback_scores_amount=2, # equals_metric + task_span_metric
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prompts=[prompt],
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)
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assert evaluation_result.dataset_id == dataset.id
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experiment_items_contents = _wait_for_per_item_feedback_scores(
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opik_client,
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experiment_name,
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expected_count_per_item=2,
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expected_item_count=2,
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)
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for item in experiment_items_contents:
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score_names = [score["name"] for score in item.feedback_scores]
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assert "equals_metric" in score_names
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assert "task_span_test_metric" in score_names
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# Find task span metric score
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task_span_score = next(
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score
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for score in item.feedback_scores
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if score["name"] == "task_span_test_metric"
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)
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assert task_span_score["value"] == 1.0
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assert "Correct task span name" in task_span_score["reason"]
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def test_evaluate__with_task_span_metrics__multiple_task_span_metrics__happyflow(
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opik_client: opik.Opik, dataset_name: str, experiment_name: str
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):
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dataset = opik_client.create_dataset(dataset_name)
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dataset.insert(
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[
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{
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"input": {"question": "What is the capital of Spain?"},
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"expected_model_output": {"output": "Madrid"},
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},
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]
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)
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def task(item: Dict[str, Any]):
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if item["input"] == {"question": "What is the capital of Spain?"}:
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return {"output": "Madrid"}
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raise AssertionError(
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f"Task received dataset item with an unexpected input: {item['input']}"
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)
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task_span_metric_1 = TaskSpanTestMetric(name="task_span_metric_1")
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task_span_metric_2 = TaskSpanInputTestMetric(name="task_span_metric_2")
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equals_metric = metrics.Equals()
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evaluation_result = opik.evaluate(
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dataset=dataset,
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task=task,
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scoring_metrics=[equals_metric, task_span_metric_1, task_span_metric_2],
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experiment_name=experiment_name,
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experiment_config={
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"model_name": "test-model-v2",
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},
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scoring_key_mapping={
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"reference": lambda x: x["expected_model_output"]["output"],
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},
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)
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verifiers.verify_experiment(
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opik_client=opik_client,
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id=evaluation_result.experiment_id,
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experiment_name=evaluation_result.experiment_name,
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experiment_metadata={"model_name": "test-model-v2"},
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traces_amount=1,
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feedback_scores_amount=3, # equals_metric + 2 task_span_metrics
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)
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assert evaluation_result.dataset_id == dataset.id
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experiment_items_contents = _wait_for_per_item_feedback_scores(
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opik_client,
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experiment_name,
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expected_count_per_item=3,
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expected_item_count=1,
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)
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item = experiment_items_contents[0]
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score_names = [score["name"] for score in item.feedback_scores]
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assert "equals_metric" in score_names
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assert "task_span_metric_1" in score_names
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assert "task_span_metric_2" in score_names
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# Verify all task span metrics scored correctly
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for score in item.feedback_scores:
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if score["name"] in ["task_span_metric_1", "task_span_metric_2"]:
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assert score["value"] == 1.0
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def test_evaluate__with_task_span_metrics__only_task_span_metrics__no_regular_metrics(
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opik_client: opik.Opik, dataset_name: str, experiment_name: str
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):
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dataset = opik_client.create_dataset(dataset_name)
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dataset.insert(
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[
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{
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"input": {"question": "What is the capital of Italy?"},
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"expected_model_output": {"output": "Rome"},
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},
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]
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)
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def task(item: Dict[str, Any]):
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if item["input"] == {"question": "What is the capital of Italy?"}:
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return {"output": "Rome"}
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raise AssertionError(
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f"Task received dataset item with an unexpected input: {item['input']}"
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)
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task_span_metric = TaskSpanTestMetric()
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evaluation_result = opik.evaluate(
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dataset=dataset,
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task=task,
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scoring_metrics=[task_span_metric],
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experiment_name=experiment_name,
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experiment_config={
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"model_name": "task-span-only-model",
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},
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)
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verifiers.verify_experiment(
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opik_client=opik_client,
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id=evaluation_result.experiment_id,
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experiment_name=evaluation_result.experiment_name,
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experiment_metadata={"model_name": "task-span-only-model"},
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traces_amount=1,
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feedback_scores_amount=1, # only task_span_metric
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)
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assert evaluation_result.dataset_id == dataset.id
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experiment_items_contents = _wait_for_per_item_feedback_scores(
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opik_client,
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experiment_name,
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expected_count_per_item=1,
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expected_item_count=1,
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)
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item = experiment_items_contents[0]
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score = item.feedback_scores[0]
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assert score["name"] == "task_span_test_metric"
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assert score["value"] == 1.0
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def test_evaluate__with_task_span_metrics__mixed_with_regular_metrics__multiple_trials(
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opik_client: opik.Opik, dataset_name: str, experiment_name: str
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):
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dataset = opik_client.create_dataset(dataset_name)
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dataset.insert(
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[
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{
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"input": {"question": "What is the capital of Japan?"},
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"expected_model_output": {"output": "Tokyo"},
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},
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{
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"input": {"question": "What is the capital of Canada?"},
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"expected_model_output": {"output": "Ottawa"},
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},
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]
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)
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def task(item: Dict[str, Any]):
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if item["input"] == {"question": "What is the capital of Japan?"}:
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return {"output": "Tokyo"}
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if item["input"] == {"question": "What is the capital of Canada?"}:
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return {"output": "Ottawa"}
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raise AssertionError(
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f"Task received dataset item with an unexpected input: {item['input']}"
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)
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prompt = Prompt(
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name=f"test-mixed-metrics-prompt-{random_chars()}",
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prompt=f"test-mixed-metrics-prompt-template-{random_chars()}",
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)
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# Mix of regular and task span metrics
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equals_metric = metrics.Equals(name="regular_equals")
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contains_metric = metrics.Contains(name="regular_contains")
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task_span_metric = TaskSpanTestMetric(name="span_name_check")
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task_span_input_metric = TaskSpanInputTestMetric(name="span_input_check")
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evaluation_result = opik.evaluate(
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dataset=dataset,
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task=task,
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scoring_metrics=[
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equals_metric,
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task_span_metric,
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contains_metric,
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task_span_input_metric,
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],
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experiment_name=experiment_name,
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experiment_config={
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"model_name": "mixed-metrics-model",
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"version": "1.0",
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},
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scoring_key_mapping={
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"reference": lambda x: x["expected_model_output"]["output"],
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},
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prompt=prompt,
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trial_count=5,
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)
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verifiers.verify_experiment(
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opik_client=opik_client,
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id=evaluation_result.experiment_id,
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experiment_name=evaluation_result.experiment_name,
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experiment_metadata={"model_name": "mixed-metrics-model", "version": "1.0"},
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traces_amount=2 * 5, # 2 traces per dataset item per trial
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feedback_scores_amount=4, # 2 regular + 2 task_span metrics
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prompts=[prompt],
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)
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experiment_items_contents = _wait_for_per_item_feedback_scores(
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opik_client,
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experiment_name,
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expected_count_per_item=4,
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expected_item_count=2 * 5,
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)
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expected_score_names = {
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"regular_equals",
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"regular_contains",
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"span_name_check",
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"span_input_check",
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}
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for item in experiment_items_contents:
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|
actual_score_names = {score["name"] for score in item.feedback_scores}
|
|
assert actual_score_names == expected_score_names
|
|
|
|
# Verify all metrics scored correctly (assuming perfect matches)
|
|
for score in item.feedback_scores:
|
|
assert score["value"] == 1.0
|
|
|
|
|
|
class TaskSpanWithMultipleParametersMetric(BaseMetric):
|
|
"""
|
|
Metric that verifies multiple parameters are passed correctly:
|
|
- task_span: the span information
|
|
- input: from dataset item
|
|
- output: from task output
|
|
- **ignored_kwargs: to handle any other parameters
|
|
"""
|
|
|
|
def __init__(
|
|
self,
|
|
name: str = "task_span_multi_param_metric",
|
|
track: bool = True,
|
|
project_name: Optional[str] = None,
|
|
):
|
|
super().__init__(name=name, track=track, project_name=project_name)
|
|
|
|
def score(
|
|
self,
|
|
task_span: models.SpanModel,
|
|
input: Dict[str, Any],
|
|
output: str,
|
|
**ignored_kwargs: Any,
|
|
) -> score_result.ScoreResult:
|
|
# Simply verify all expected parameters are present and store them in metadata
|
|
return score_result.ScoreResult(
|
|
value=1.0,
|
|
name=self.name,
|
|
reason=f"Received task_span={type(task_span).__name__}, input={type(input).__name__}, output={type(output).__name__}",
|
|
metadata={
|
|
"input": input,
|
|
"output": output,
|
|
"task_span_name": task_span.name,
|
|
},
|
|
)
|
|
|
|
|
|
def test_evaluate__with_task_span_metrics__metric_with_multiple_parameters__happy_flow(
|
|
opik_client: opik.Opik, dataset_name: str, experiment_name: str
|
|
):
|
|
"""
|
|
Test that task_span metrics can access task_span, dataset item content (input),
|
|
and task output (output) parameters. Verifies arguments are passed correctly.
|
|
"""
|
|
dataset = opik_client.create_dataset(dataset_name)
|
|
|
|
dataset.insert([{"input": {"question": "What is 2+2?"}}])
|
|
|
|
def task(item: Dict[str, Any]):
|
|
return {"output": "4"}
|
|
|
|
multi_param_metric = TaskSpanWithMultipleParametersMetric()
|
|
|
|
evaluation_result = opik.evaluate(
|
|
dataset=dataset,
|
|
task=task,
|
|
scoring_metrics=[multi_param_metric],
|
|
experiment_name=experiment_name,
|
|
)
|
|
|
|
# Verify the metric received all expected parameters in local test results
|
|
assert len(evaluation_result.test_results) == 1
|
|
test_result = evaluation_result.test_results[0]
|
|
assert len(test_result.score_results) == 1
|
|
|
|
score_result = test_result.score_results[0]
|
|
assert score_result.name == "task_span_multi_param_metric"
|
|
assert score_result.value == 1.0
|
|
assert "task_span=SpanModel" in score_result.reason
|
|
assert "input=dict" in score_result.reason
|
|
assert "output=str" in score_result.reason
|
|
|
|
# Verify the parameters were stored correctly in metadata
|
|
assert score_result.metadata is not None
|
|
assert score_result.metadata["input"] == {"question": "What is 2+2?"}
|
|
assert score_result.metadata["output"] == "4"
|
|
assert score_result.metadata["task_span_name"] == "task"
|