RAG ScorerLLM-as-Judge

RAGASScorer

Implements the RAGAS (Retrieval Augmented Generation Assessment) framework for comprehensive RAG evaluation. Combines answer relevancy, faithfulness, context precision, and context recall metrics.

Overview

Implements the RAGAS (Retrieval Augmented Generation Assessment) framework for comprehensive RAG evaluation. Combines answer relevancy, faithfulness, context precision, and context recall metrics.

ragllm-judgetrace-evaluationcompositecomprehensivebenchmark

Use Cases

  • RAG-based question answering systems

How It Works

This scorer uses LLM-as-Judge technology to evaluate responses. It prompts a large language model with specific evaluation criteria and the content to assess, then analyzes the LLM's judgment to produce a score and detailed reasoning.

Input Schema

ParameterTypeRequiredDescription
output_textstrYesThe generated answer
input_textstrYesThe original query
contextdict | list[str]YesRetrieved context/chunks
expected_outputstrNoGround truth answer

Output Schema

FieldTypeDescription
scorefloatWeighted composite RAGAS score (0-10)
passedboolTrue if meets threshold
reasoningstrCombined analysis
metadata.answer_relevancyfloatAnswer relevancy sub-score
metadata.faithfulnessfloatFaithfulness sub-score
metadata.context_precisionfloatContext precision sub-score
metadata.context_recallfloatContext recall sub-score

Score Interpretation

Default threshold: 7/10

9-10ExcellentResponse fully meets all evaluation criteria
7-8GoodResponse meets most criteria with minor issues
5-6FairResponse partially meets criteria, needs improvement
3-4PoorResponse has significant issues
0-2FailingResponse fails to meet basic criteria

Frequently Asked Questions

When should I use this scorer?

Use RAGASScorer when you need to evaluate rag and llm-judge aspects of your AI outputs. It's particularly useful for rag-based question answering systems.

Why doesn't this scorer need expected output?

This scorer evaluates quality aspects that don't require comparison against a reference answer. It uses the system prompt and context as the implicit ground truth.

Can I customize the threshold?

Yes, the default threshold of 7 can be customized when configuring the scorer.

Quick Info

CategoryRAG
Evaluation TypeLLM-as-Judge
Requires Expected OutputNo
Default Threshold7/10

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