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awesome-copilot/plugins/phoenix/skills/phoenix-evals/references/fundamentals.md
2026-04-01 23:04:18 +00:00

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Fundamentals

Application-specific tests for AI systems. Code first, LLM for nuance, human for truth.

Evaluator Types

Type Speed Cost Use Case
Code Fast Cheap Regex, JSON, format, exact match
LLM Medium Medium Subjective quality, complex criteria
Human Slow Expensive Ground truth, calibration

Decision: Code first → LLM only when code can't capture criteria → Human for calibration.

Score Structure

Property Required Description
name Yes Evaluator name
kind Yes "code", "llm", "human"
score No* 0-1 numeric
label No* "pass", "fail"
explanation No Rationale

*One of score or label required.

Binary > Likert

Use pass/fail, not 1-5 scales. Clearer criteria, easier calibration.

# Multiple binary checks instead of one Likert scale
evaluators = [
    AnswersQuestion(),    # Yes/No
    UsesContext(),        # Yes/No
    NoHallucination(),    # Yes/No
]

Quick Patterns

Code Evaluator

from phoenix.evals import create_evaluator

@create_evaluator(name="has_citation", kind="code")
def has_citation(output: str) -> bool:
    return bool(re.search(r'\[\d+\]', output))

LLM Evaluator

from phoenix.evals import ClassificationEvaluator, LLM

evaluator = ClassificationEvaluator(
    name="helpfulness",
    prompt_template="...",
    llm=LLM(provider="openai", model="gpt-4o"),
    choices={"not_helpful": 0, "helpful": 1}
)

Run Experiment

from phoenix.client.experiments import run_experiment

experiment = run_experiment(
    dataset=dataset,
    task=my_task,
    evaluators=[evaluator1, evaluator2],
)
print(experiment.aggregate_scores)