Back to Skills

tuning-hyperparameters

jeremylongshore
Updated Yesterday
26 views
712
74
712
View on GitHub
Othergeneral

About

This skill automatically tunes machine learning model hyperparameters using grid search, random search, or Bayesian optimization to find the best configurations for maximum performance. Use it when asked to "tune hyperparameters" or "optimize model" in your ML workflows. It analyzes requirements and generates the necessary Python code to execute the optimization.

Quick Install

Claude Code

Recommended
Plugin CommandRecommended
/plugin add https://github.com/jeremylongshore/claude-code-plugins-plus
Git CloneAlternative
git clone https://github.com/jeremylongshore/claude-code-plugins-plus.git ~/.claude/skills/tuning-hyperparameters

Copy and paste this command in Claude Code to install this skill

Documentation

Overview

This skill empowers Claude to fine-tune machine learning models by automatically searching for the optimal hyperparameter configurations. It leverages different search strategies (grid, random, Bayesian) to efficiently explore the hyperparameter space and identify settings that maximize model performance.

How It Works

  1. Analyzing Requirements: Claude analyzes the user's request to determine the model, the hyperparameters to tune, the search strategy, and the evaluation metric.
  2. Generating Code: Claude generates Python code using appropriate ML libraries (e.g., scikit-learn, Optuna) to implement the specified hyperparameter search. The code includes data loading, preprocessing, model training, and evaluation.
  3. Executing Search: The generated code is executed to perform the hyperparameter search. The plugin iterates through different hyperparameter combinations, trains the model with each combination, and evaluates its performance.
  4. Reporting Results: Claude reports the best hyperparameter configuration found during the search, along with the corresponding performance metrics. It also provides insights into the search process and potential areas for further optimization.

When to Use This Skill

This skill activates when you need to:

  • Optimize the performance of a machine learning model.
  • Automatically search for the best hyperparameter settings.
  • Compare different hyperparameter search strategies.
  • Improve model accuracy, precision, recall, or other relevant metrics.

Examples

Example 1: Optimizing a Random Forest Model

User request: "Tune hyperparameters of a Random Forest model using grid search to maximize accuracy on the iris dataset. Consider n_estimators and max_depth."

The skill will:

  1. Generate code to perform a grid search over the specified hyperparameters (n_estimators, max_depth) of a Random Forest model using the iris dataset.
  2. Execute the grid search and report the best hyperparameter combination and the corresponding accuracy score.

Example 2: Using Bayesian Optimization

User request: "Optimize a Gradient Boosting model using Bayesian optimization with Optuna to minimize the root mean squared error on the Boston housing dataset."

The skill will:

  1. Generate code to perform Bayesian optimization using Optuna to find the best hyperparameters for a Gradient Boosting model on the Boston housing dataset.
  2. Execute the optimization and report the best hyperparameter combination and the corresponding RMSE.

Best Practices

  • Define Search Space: Clearly define the range and type of values for each hyperparameter to be tuned.
  • Choose Appropriate Strategy: Select the hyperparameter search strategy (grid, random, Bayesian) based on the complexity of the hyperparameter space and the available computational resources. Bayesian optimization is generally more efficient for complex spaces.
  • Use Cross-Validation: Implement cross-validation to ensure the robustness of the evaluation metric and prevent overfitting.

Integration

This skill integrates seamlessly with other Claude Code plugins that involve machine learning tasks, such as data analysis, model training, and deployment. It can be used in conjunction with data visualization tools to gain insights into the impact of different hyperparameter settings on model performance.

GitHub Repository

jeremylongshore/claude-code-plugins-plus
Path: plugins/ai-ml/hyperparameter-tuner/skills/hyperparameter-tuner
aiautomationclaude-codedevopsmarketplacemcp

Related Skills

subagent-driven-development

Development

This skill executes implementation plans by dispatching a fresh subagent for each independent task, with code review between tasks. It enables fast iteration while maintaining quality gates through this review process. Use it when working on mostly independent tasks within the same session to ensure continuous progress with built-in quality checks.

View skill

algorithmic-art

Meta

This Claude Skill creates original algorithmic art using p5.js with seeded randomness and interactive parameters. It generates .md files for algorithmic philosophies, plus .html and .js files for interactive generative art implementations. Use it when developers need to create flow fields, particle systems, or other computational art while avoiding copyright issues.

View skill

executing-plans

Design

Use the executing-plans skill when you have a complete implementation plan to execute in controlled batches with review checkpoints. It loads and critically reviews the plan, then executes tasks in small batches (default 3 tasks) while reporting progress between each batch for architect review. This ensures systematic implementation with built-in quality control checkpoints.

View skill

cost-optimization

Other

This Claude Skill helps developers optimize cloud costs through resource rightsizing, tagging strategies, and spending analysis. It provides a framework for reducing cloud expenses and implementing cost governance across AWS, Azure, and GCP. Use it when you need to analyze infrastructure costs, right-size resources, or meet budget constraints.

View skill