| name | evaluating-machine-learning-models |
| description | This skill allows Claude to evaluate machine learning models using a comprehensive suite of metrics. It should be used when the user requests model performance analysis, validation, or testing. Claude can use this skill to assess model accuracy, precision, recall, F1-score, and other relevant metrics. Trigger this skill when the user mentions "evaluate model", "model performance", "testing metrics", "validation results", or requests a comprehensive "model evaluation". |
Overview
This skill empowers Claude to perform thorough evaluations of machine learning models, providing detailed performance insights. It leverages the model-evaluation-suite plugin to generate a range of metrics, enabling informed decisions about model selection and optimization.
How It Works
- Analyzing Context: Claude analyzes the user's request to identify the model to be evaluated and any specific metrics of interest.
- Executing Evaluation: Claude uses the
/eval-modelcommand to initiate the model evaluation process within themodel-evaluation-suiteplugin. - Presenting Results: Claude presents the generated metrics and insights to the user, highlighting key performance indicators and potential areas for improvement.
When to Use This Skill
This skill activates when you need to:
- Assess the performance of a machine learning model.
- Compare the performance of multiple models.
- Identify areas where a model can be improved.
- Validate a model's performance before deployment.
Examples
Example 1: Evaluating Model Accuracy
User request: "Evaluate the accuracy of my image classification model."
The skill will:
- Invoke the
/eval-modelcommand. - Analyze the model's performance on a held-out dataset.
- Report the accuracy score and other relevant metrics.
Example 2: Comparing Model Performance
User request: "Compare the F1-score of model A and model B."
The skill will:
- Invoke the
/eval-modelcommand for both models. - Extract the F1-score from the evaluation results.
- Present a comparison of the F1-scores for model A and model B.
Best Practices
- Specify Metrics: Clearly define the specific metrics of interest for the evaluation.
- Data Validation: Ensure the data used for evaluation is representative of the real-world data the model will encounter.
- Interpret Results: Provide context and interpretation of the evaluation results to facilitate informed decision-making.
Integration
This skill integrates seamlessly with the model-evaluation-suite plugin, providing a comprehensive solution for model evaluation within the Claude Code environment. It can be combined with other skills to build automated machine learning workflows.