Optimizes deep learning models with Adam, SGD optimizers, learning rate scheduling, and regularization to boost accuracy and cut training time.
From deep-learning-optimizernpx claudepluginhub nickloveinvesting/nick-love-plugins --plugin deep-learning-optimizerThis skill is limited to using the following tools:
assets/README.mdassets/optimization_config.jsonreferences/README.mdscripts/README.mdscripts/analyze_model.pyGuides Next.js Cache Components and Partial Prerendering (PPR) with cacheComponents enabled. Implements 'use cache', cacheLife(), cacheTag(), revalidateTag(), static/dynamic optimization, and cache debugging.
Migrates code, prompts, and API calls from Claude Sonnet 4.0/4.5 or Opus 4.1 to Opus 4.5, updating model strings on Anthropic, AWS, GCP, Azure platforms.
Details PluginEval's skill quality evaluation: 3 layers (static, LLM judge), 10 dimensions, rubrics, formulas, anti-patterns, badges. Use to interpret scores, improve triggering, calibrate thresholds.
Optimize deep learning models by tuning optimizers (Adam, SGD), learning rate schedules, and regularization strategies to improve accuracy and reduce training time.
This skill empowers Claude to automatically optimize deep learning models, enhancing their performance and efficiency. It intelligently applies various optimization techniques based on the model's characteristics and the user's objectives.
This skill activates when you need to:
User request: "Optimize this deep learning model for improved image classification accuracy."
The skill will:
User request: "Reduce the training time of this deep learning model."
The skill will:
This skill can be integrated with other plugins that provide model building and data preprocessing capabilities. It can also be used in conjunction with monitoring tools to track the performance of optimized models.
The skill produces structured output relevant to the task.