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    Microck

    llm-evaluation

    Microck/llm-evaluation
    AI & ML
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    Implement comprehensive evaluation strategies for LLM applications using automated metrics, human feedback, and benchmarking...

    SKILL.md

    LLM Evaluation

    Master comprehensive evaluation strategies for LLM applications, from automated metrics to human evaluation and A/B testing.

    When to Use This Skill

    • Measuring LLM application performance systematically
    • Comparing different models or prompts
    • Detecting performance regressions before deployment
    • Validating improvements from prompt changes
    • Building confidence in production systems
    • Establishing baselines and tracking progress over time
    • Debugging unexpected model behavior

    Core Evaluation Types

    1. Automated Metrics

    Fast, repeatable, scalable evaluation using computed scores.

    Text Generation:

    • BLEU: N-gram overlap (translation)
    • ROUGE: Recall-oriented (summarization)
    • METEOR: Semantic similarity
    • BERTScore: Embedding-based similarity
    • Perplexity: Language model confidence

    Classification:

    • Accuracy: Percentage correct
    • Precision/Recall/F1: Class-specific performance
    • Confusion Matrix: Error patterns
    • AUC-ROC: Ranking quality

    Retrieval (RAG):

    • MRR: Mean Reciprocal Rank
    • NDCG: Normalized Discounted Cumulative Gain
    • Precision@K: Relevant in top K
    • Recall@K: Coverage in top K

    2. Human Evaluation

    Manual assessment for quality aspects difficult to automate.

    Dimensions:

    • Accuracy: Factual correctness
    • Coherence: Logical flow
    • Relevance: Answers the question
    • Fluency: Natural language quality
    • Safety: No harmful content
    • Helpfulness: Useful to the user

    3. LLM-as-Judge

    Use stronger LLMs to evaluate weaker model outputs.

    Approaches:

    • Pointwise: Score individual responses
    • Pairwise: Compare two responses
    • Reference-based: Compare to gold standard
    • Reference-free: Judge without ground truth

    Quick Start

    from llm_eval import EvaluationSuite, Metric
    
    # Define evaluation suite
    suite = EvaluationSuite([
        Metric.accuracy(),
        Metric.bleu(),
        Metric.bertscore(),
        Metric.custom(name="groundedness", fn=check_groundedness)
    ])
    
    # Prepare test cases
    test_cases = [
        {
            "input": "What is the capital of France?",
            "expected": "Paris",
            "context": "France is a country in Europe. Paris is its capital."
        },
        # ... more test cases
    ]
    
    # Run evaluation
    results = suite.evaluate(
        model=your_model,
        test_cases=test_cases
    )
    
    print(f"Overall Accuracy: {results.metrics['accuracy']}")
    print(f"BLEU Score: {results.metrics['bleu']}")
    

    Automated Metrics Implementation

    BLEU Score

    from nltk.translate.bleu_score import sentence_bleu, SmoothingFunction
    
    def calculate_bleu(reference, hypothesis):
        """Calculate BLEU score between reference and hypothesis."""
        smoothie = SmoothingFunction().method4
    
        return sentence_bleu(
            [reference.split()],
            hypothesis.split(),
            smoothing_function=smoothie
        )
    
    # Usage
    bleu = calculate_bleu(
        reference="The cat sat on the mat",
        hypothesis="A cat is sitting on the mat"
    )
    

    ROUGE Score

    from rouge_score import rouge_scorer
    
    def calculate_rouge(reference, hypothesis):
        """Calculate ROUGE scores."""
        scorer = rouge_scorer.RougeScorer(['rouge1', 'rouge2', 'rougeL'], use_stemmer=True)
        scores = scorer.score(reference, hypothesis)
    
        return {
            'rouge1': scores['rouge1'].fmeasure,
            'rouge2': scores['rouge2'].fmeasure,
            'rougeL': scores['rougeL'].fmeasure
        }
    

    BERTScore

    from bert_score import score
    
    def calculate_bertscore(references, hypotheses):
        """Calculate BERTScore using pre-trained BERT."""
        P, R, F1 = score(
            hypotheses,
            references,
            lang='en',
            model_type='microsoft/deberta-xlarge-mnli'
        )
    
        return {
            'precision': P.mean().item(),
            'recall': R.mean().item(),
            'f1': F1.mean().item()
        }
    

    Custom Metrics

    def calculate_groundedness(response, context):
        """Check if response is grounded in provided context."""
        # Use NLI model to check entailment
        from transformers import pipeline
    
        nli = pipeline("text-classification", model="microsoft/deberta-large-mnli")
    
        result = nli(f"{context} [SEP] {response}")[0]
    
        # Return confidence that response is entailed by context
        return result['score'] if result['label'] == 'ENTAILMENT' else 0.0
    
    def calculate_toxicity(text):
        """Measure toxicity in generated text."""
        from detoxify import Detoxify
    
        results = Detoxify('original').predict(text)
        return max(results.values())  # Return highest toxicity score
    
    def calculate_factuality(claim, knowledge_base):
        """Verify factual claims against knowledge base."""
        # Implementation depends on your knowledge base
        # Could use retrieval + NLI, or fact-checking API
        pass
    

    LLM-as-Judge Patterns

    Single Output Evaluation

    def llm_judge_quality(response, question):
        """Use GPT-5 to judge response quality."""
        prompt = f"""Rate the following response on a scale of 1-10 for:
    1. Accuracy (factually correct)
    2. Helpfulness (answers the question)
    3. Clarity (well-written and understandable)
    
    Question: {question}
    Response: {response}
    
    Provide ratings in JSON format:
    {{
      "accuracy": <1-10>,
      "helpfulness": <1-10>,
      "clarity": <1-10>,
      "reasoning": "<brief explanation>"
    }}
    """
    
        result = openai.ChatCompletion.create(
            model="gpt-5",
            messages=[{"role": "user", "content": prompt}],
            temperature=0
        )
    
        return json.loads(result.choices[0].message.content)
    

    Pairwise Comparison

    def compare_responses(question, response_a, response_b):
        """Compare two responses using LLM judge."""
        prompt = f"""Compare these two responses to the question and determine which is better.
    
    Question: {question}
    
    Response A: {response_a}
    
    Response B: {response_b}
    
    Which response is better and why? Consider accuracy, helpfulness, and clarity.
    
    Answer with JSON:
    {{
      "winner": "A" or "B" or "tie",
      "reasoning": "<explanation>",
      "confidence": <1-10>
    }}
    """
    
        result = openai.ChatCompletion.create(
            model="gpt-5",
            messages=[{"role": "user", "content": prompt}],
            temperature=0
        )
    
        return json.loads(result.choices[0].message.content)
    

    Human Evaluation Frameworks

    Annotation Guidelines

    class AnnotationTask:
        """Structure for human annotation task."""
    
        def __init__(self, response, question, context=None):
            self.response = response
            self.question = question
            self.context = context
    
        def get_annotation_form(self):
            return {
                "question": self.question,
                "context": self.context,
                "response": self.response,
                "ratings": {
                    "accuracy": {
                        "scale": "1-5",
                        "description": "Is the response factually correct?"
                    },
                    "relevance": {
                        "scale": "1-5",
                        "description": "Does it answer the question?"
                    },
                    "coherence": {
                        "scale": "1-5",
                        "description": "Is it logically consistent?"
                    }
                },
                "issues": {
                    "factual_error": False,
                    "hallucination": False,
                    "off_topic": False,
                    "unsafe_content": False
                },
                "feedback": ""
            }
    

    Inter-Rater Agreement

    from sklearn.metrics import cohen_kappa_score
    
    def calculate_agreement(rater1_scores, rater2_scores):
        """Calculate inter-rater agreement."""
        kappa = cohen_kappa_score(rater1_scores, rater2_scores)
    
        interpretation = {
            kappa < 0: "Poor",
            kappa < 0.2: "Slight",
            kappa < 0.4: "Fair",
            kappa < 0.6: "Moderate",
            kappa < 0.8: "Substantial",
            kappa <= 1.0: "Almost Perfect"
        }
    
        return {
            "kappa": kappa,
            "interpretation": interpretation[True]
        }
    

    A/B Testing

    Statistical Testing Framework

    from scipy import stats
    import numpy as np
    
    class ABTest:
        def __init__(self, variant_a_name="A", variant_b_name="B"):
            self.variant_a = {"name": variant_a_name, "scores": []}
            self.variant_b = {"name": variant_b_name, "scores": []}
    
        def add_result(self, variant, score):
            """Add evaluation result for a variant."""
            if variant == "A":
                self.variant_a["scores"].append(score)
            else:
                self.variant_b["scores"].append(score)
    
        def analyze(self, alpha=0.05):
            """Perform statistical analysis."""
            a_scores = self.variant_a["scores"]
            b_scores = self.variant_b["scores"]
    
            # T-test
            t_stat, p_value = stats.ttest_ind(a_scores, b_scores)
    
            # Effect size (Cohen's d)
            pooled_std = np.sqrt((np.std(a_scores)**2 + np.std(b_scores)**2) / 2)
            cohens_d = (np.mean(b_scores) - np.mean(a_scores)) / pooled_std
    
            return {
                "variant_a_mean": np.mean(a_scores),
                "variant_b_mean": np.mean(b_scores),
                "difference": np.mean(b_scores) - np.mean(a_scores),
                "relative_improvement": (np.mean(b_scores) - np.mean(a_scores)) / np.mean(a_scores),
                "p_value": p_value,
                "statistically_significant": p_value < alpha,
                "cohens_d": cohens_d,
                "effect_size": self.interpret_cohens_d(cohens_d),
                "winner": "B" if np.mean(b_scores) > np.mean(a_scores) else "A"
            }
    
        @staticmethod
        def interpret_cohens_d(d):
            """Interpret Cohen's d effect size."""
            abs_d = abs(d)
            if abs_d < 0.2:
                return "negligible"
            elif abs_d < 0.5:
                return "small"
            elif abs_d < 0.8:
                return "medium"
            else:
                return "large"
    

    Regression Testing

    Regression Detection

    class RegressionDetector:
        def __init__(self, baseline_results, threshold=0.05):
            self.baseline = baseline_results
            self.threshold = threshold
    
        def check_for_regression(self, new_results):
            """Detect if new results show regression."""
            regressions = []
    
            for metric in self.baseline.keys():
                baseline_score = self.baseline[metric]
                new_score = new_results.get(metric)
    
                if new_score is None:
                    continue
    
                # Calculate relative change
                relative_change = (new_score - baseline_score) / baseline_score
    
                # Flag if significant decrease
                if relative_change < -self.threshold:
                    regressions.append({
                        "metric": metric,
                        "baseline": baseline_score,
                        "current": new_score,
                        "change": relative_change
                    })
    
            return {
                "has_regression": len(regressions) > 0,
                "regressions": regressions
            }
    

    Benchmarking

    Running Benchmarks

    class BenchmarkRunner:
        def __init__(self, benchmark_dataset):
            self.dataset = benchmark_dataset
    
        def run_benchmark(self, model, metrics):
            """Run model on benchmark and calculate metrics."""
            results = {metric.name: [] for metric in metrics}
    
            for example in self.dataset:
                # Generate prediction
                prediction = model.predict(example["input"])
    
                # Calculate each metric
                for metric in metrics:
                    score = metric.calculate(
                        prediction=prediction,
                        reference=example["reference"],
                        context=example.get("context")
                    )
                    results[metric.name].append(score)
    
            # Aggregate results
            return {
                metric: {
                    "mean": np.mean(scores),
                    "std": np.std(scores),
                    "min": min(scores),
                    "max": max(scores)
                }
                for metric, scores in results.items()
            }
    

    Resources

    • references/metrics.md: Comprehensive metric guide
    • references/human-evaluation.md: Annotation best practices
    • references/benchmarking.md: Standard benchmarks
    • references/a-b-testing.md: Statistical testing guide
    • references/regression-testing.md: CI/CD integration
    • assets/evaluation-framework.py: Complete evaluation harness
    • assets/benchmark-dataset.jsonl: Example datasets
    • scripts/evaluate-model.py: Automated evaluation runner

    Best Practices

    1. Multiple Metrics: Use diverse metrics for comprehensive view
    2. Representative Data: Test on real-world, diverse examples
    3. Baselines: Always compare against baseline performance
    4. Statistical Rigor: Use proper statistical tests for comparisons
    5. Continuous Evaluation: Integrate into CI/CD pipeline
    6. Human Validation: Combine automated metrics with human judgment
    7. Error Analysis: Investigate failures to understand weaknesses
    8. Version Control: Track evaluation results over time

    Common Pitfalls

    • Single Metric Obsession: Optimizing for one metric at the expense of others
    • Small Sample Size: Drawing conclusions from too few examples
    • Data Contamination: Testing on training data
    • Ignoring Variance: Not accounting for statistical uncertainty
    • Metric Mismatch: Using metrics not aligned with business goals
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