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awesome-copilot/plugins/phoenix/skills/phoenix-evals/references/evaluators-pre-built.md
2026-04-10 04:45:41 +00:00

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Evaluators: Pre-Built

Use for exploration only. Validate before production.

Python

from phoenix.evals import LLM
from phoenix.evals.metrics import FaithfulnessEvaluator

llm = LLM(provider="openai", model="gpt-4o")
faithfulness_eval = FaithfulnessEvaluator(llm=llm)

Note: HallucinationEvaluator is deprecated. Use FaithfulnessEvaluator instead. It uses "faithful"/"unfaithful" labels with score 1.0 = faithful.

TypeScript

import { createHallucinationEvaluator } from "@arizeai/phoenix-evals";
import { openai } from "@ai-sdk/openai";

const hallucinationEval = createHallucinationEvaluator({ model: openai("gpt-4o") });

Available (2.0)

Evaluator Type Description
FaithfulnessEvaluator LLM Is the response faithful to the context?
CorrectnessEvaluator LLM Is the response correct?
DocumentRelevanceEvaluator LLM Are retrieved documents relevant?
ToolSelectionEvaluator LLM Did the agent select the right tool?
ToolInvocationEvaluator LLM Did the agent invoke the tool correctly?
ToolResponseHandlingEvaluator LLM Did the agent handle the tool response well?
MatchesRegex Code Does output match a regex pattern?
PrecisionRecallFScore Code Precision/recall/F-score metrics
exact_match Code Exact string match

Legacy evaluators (HallucinationEvaluator, QAEvaluator, RelevanceEvaluator, ToxicityEvaluator, SummarizationEvaluator) are in phoenix.evals.legacy and deprecated.

When to Use

Situation Recommendation
Exploration Find traces to review
Find outliers Sort by scores
Production Validate first (>80% human agreement)
Domain-specific Build custom

Exploration Pattern

from phoenix.evals import evaluate_dataframe

results_df = evaluate_dataframe(dataframe=traces, evaluators=[faithfulness_eval])

# Score columns contain dicts — extract numeric scores
scores = results_df["faithfulness_score"].apply(
    lambda x: x.get("score", 0.0) if isinstance(x, dict) else 0.0
)
low_scores = results_df[scores < 0.5]   # Review these
high_scores = results_df[scores > 0.9]  # Also sample

Validation Required

from sklearn.metrics import classification_report

print(classification_report(human_labels, evaluator_results["label"]))
# Target: >80% agreement