--- name: azure-ai-evaluation-py description: | Azure AI Evaluation SDK for Python. Use for evaluating generative AI applications with quality, safety, and custom evaluators. Triggers: "azure-ai-evaluation", "evaluators", "GroundednessEvaluator", "evaluate", "AI quality metrics". package: azure-ai-evaluation --- # Azure AI Evaluation SDK for Python Assess generative AI application performance with built-in and custom evaluators. ## Installation ```bash pip install azure-ai-evaluation # With remote evaluation support pip install azure-ai-evaluation[remote] ``` ## Environment Variables ```bash # For AI-assisted evaluators AZURE_OPENAI_ENDPOINT=https://.openai.azure.com AZURE_OPENAI_API_KEY= AZURE_OPENAI_DEPLOYMENT=gpt-4o-mini # For Foundry project integration AIPROJECT_CONNECTION_STRING= ``` ## Built-in Evaluators ### Quality Evaluators (AI-Assisted) ```python from azure.ai.evaluation import ( GroundednessEvaluator, RelevanceEvaluator, CoherenceEvaluator, FluencyEvaluator, SimilarityEvaluator, RetrievalEvaluator ) # Initialize with Azure OpenAI model config model_config = { "azure_endpoint": os.environ["AZURE_OPENAI_ENDPOINT"], "api_key": os.environ["AZURE_OPENAI_API_KEY"], "azure_deployment": os.environ["AZURE_OPENAI_DEPLOYMENT"] } groundedness = GroundednessEvaluator(model_config) relevance = RelevanceEvaluator(model_config) coherence = CoherenceEvaluator(model_config) ``` ### Quality Evaluators (NLP-based) ```python from azure.ai.evaluation import ( F1ScoreEvaluator, RougeScoreEvaluator, BleuScoreEvaluator, GleuScoreEvaluator, MeteorScoreEvaluator ) f1 = F1ScoreEvaluator() rouge = RougeScoreEvaluator() bleu = BleuScoreEvaluator() ``` ### Safety Evaluators ```python from azure.ai.evaluation import ( ViolenceEvaluator, SexualEvaluator, SelfHarmEvaluator, HateUnfairnessEvaluator, IndirectAttackEvaluator, ProtectedMaterialEvaluator ) violence = ViolenceEvaluator(azure_ai_project=project_scope) sexual = SexualEvaluator(azure_ai_project=project_scope) ``` ## Single Row Evaluation ```python from azure.ai.evaluation import GroundednessEvaluator groundedness = GroundednessEvaluator(model_config) result = groundedness( query="What is Azure AI?", context="Azure AI is Microsoft's AI platform...", response="Azure AI provides AI services and tools." ) print(f"Groundedness score: {result['groundedness']}") print(f"Reason: {result['groundedness_reason']}") ``` ## Batch Evaluation with evaluate() ```python from azure.ai.evaluation import evaluate result = evaluate( data="test_data.jsonl", evaluators={ "groundedness": groundedness, "relevance": relevance, "coherence": coherence }, evaluator_config={ "default": { "column_mapping": { "query": "${data.query}", "context": "${data.context}", "response": "${data.response}" } } } ) print(result["metrics"]) ``` ## Composite Evaluators ```python from azure.ai.evaluation import QAEvaluator, ContentSafetyEvaluator # All quality metrics in one qa_evaluator = QAEvaluator(model_config) # All safety metrics in one safety_evaluator = ContentSafetyEvaluator(azure_ai_project=project_scope) result = evaluate( data="data.jsonl", evaluators={ "qa": qa_evaluator, "content_safety": safety_evaluator } ) ``` ## Evaluate Application Target ```python from azure.ai.evaluation import evaluate from my_app import chat_app # Your application result = evaluate( data="queries.jsonl", target=chat_app, # Callable that takes query, returns response evaluators={ "groundedness": groundedness }, evaluator_config={ "default": { "column_mapping": { "query": "${data.query}", "context": "${outputs.context}", "response": "${outputs.response}" } } } ) ``` ## Custom Evaluators ### Code-Based ```python from azure.ai.evaluation import evaluator @evaluator def word_count_evaluator(response: str) -> dict: return {"word_count": len(response.split())} # Use in evaluate() result = evaluate( data="data.jsonl", evaluators={"word_count": word_count_evaluator} ) ``` ### Prompt-Based ```python from azure.ai.evaluation import PromptChatTarget class CustomEvaluator: def __init__(self, model_config): self.model = PromptChatTarget(model_config) def __call__(self, query: str, response: str) -> dict: prompt = f"Rate this response 1-5: Query: {query}, Response: {response}" result = self.model.send_prompt(prompt) return {"custom_score": int(result)} ``` ## Log to Foundry Project ```python from azure.ai.projects import AIProjectClient from azure.identity import DefaultAzureCredential project = AIProjectClient.from_connection_string( conn_str=os.environ["AIPROJECT_CONNECTION_STRING"], credential=DefaultAzureCredential() ) result = evaluate( data="data.jsonl", evaluators={"groundedness": groundedness}, azure_ai_project=project.scope # Logs results to Foundry ) print(f"View results: {result['studio_url']}") ``` ## Evaluator Reference | Evaluator | Type | Metrics | |-----------|------|---------| | `GroundednessEvaluator` | AI | groundedness (1-5) | | `RelevanceEvaluator` | AI | relevance (1-5) | | `CoherenceEvaluator` | AI | coherence (1-5) | | `FluencyEvaluator` | AI | fluency (1-5) | | `SimilarityEvaluator` | AI | similarity (1-5) | | `RetrievalEvaluator` | AI | retrieval (1-5) | | `F1ScoreEvaluator` | NLP | f1_score (0-1) | | `RougeScoreEvaluator` | NLP | rouge scores | | `ViolenceEvaluator` | Safety | violence (0-7) | | `SexualEvaluator` | Safety | sexual (0-7) | | `SelfHarmEvaluator` | Safety | self_harm (0-7) | | `HateUnfairnessEvaluator` | Safety | hate_unfairness (0-7) | | `QAEvaluator` | Composite | All quality metrics | | `ContentSafetyEvaluator` | Composite | All safety metrics | ## Best Practices 1. **Use composite evaluators** for comprehensive assessment 2. **Map columns correctly** — mismatched columns cause silent failures 3. **Log to Foundry** for tracking and comparison across runs 4. **Create custom evaluators** for domain-specific metrics 5. **Use NLP evaluators** when you have ground truth answers 6. **Safety evaluators require** Azure AI project scope 7. **Batch evaluation** is more efficient than single-row loops ## Reference Files | File | Contents | |------|----------| | [references/built-in-evaluators.md](references/built-in-evaluators.md) | Detailed patterns for AI-assisted, NLP-based, and Safety evaluators with configuration tables | | [references/custom-evaluators.md](references/custom-evaluators.md) | Creating code-based and prompt-based custom evaluators, testing patterns | | [scripts/run_batch_evaluation.py](scripts/run_batch_evaluation.py) | CLI tool for running batch evaluations with quality, safety, and custom evaluators |