发现data science & ml类别的 Claude 技能。浏览 61 个技能,找到适合您 AI 工作流程的完美功能。
Trains Reinforcement Learning models across multiple market timeframes with automated data resampling and professional market alignment.
Corrects financial logic in trading simulators to prevent inflated equity curves and inaccurate drawdown metrics.
Implements robust model validation and resampling techniques using the R tidymodels ecosystem and rsample package.
Validates machine learning training scripts and configurations to ensure path accuracy, weight consistency, and environment compatibility.
Manages version compatibility between trained trading models and live trading environments by embedding metadata into checkpoints.
Standardizes import patterns and file paths for MaxFuse Jupyter notebooks to ensure reliable package integration.
Enforces reproducible research and academic writing standards for Quarto and RMarkdown documents to eliminate generic AI-generated content.
Accesses real-time prediction market data, betting odds, and trading analytics from the Kalshi platform.
Optimizes financial market universe selection using a multi-stage pipeline and SQLite-backed data management.
Calibrates reinforcement learning reward scales to eliminate unrealistic drawdown metrics in algorithmic trading models.
Validates and assesses reinforcement learning trading models through systematic gating, backtesting, and walk-forward validation.
Automates quality control for stitched microscopy images by detecting saturation failures and visible tile grid patterns.
Optimizes PPO training performance on A100 and H100 GPUs by automatically aligning hyperparameters with hardware capabilities.
Provides a specialized laboratory environment for experimenting with and implementing advanced Claude capabilities.
Integrates multiple LLM providers like Anthropic, OpenAI, and Google Gemini into applications using advanced orchestration and reasoning patterns.
Builds and orchestrates end-to-end MLOps pipelines from data preparation and training through to production deployment.
Backtests and evaluates quantitative trading strategies using historical stock market data to generate performance metrics and visualizations.
Implements and trains autonomous agents using nine specialized reinforcement learning algorithms for self-improving behavior.
Constructs personalized recommendation engines using collaborative and content-based filtering to deliver tailored user experiences.
Train, deploy, and manage distributed neural networks across sandboxed E2B environments using multiple architectures and federated learning.
Optimizes local LLM orchestration and GPU performance for Ollama-integrated AI environments.
Manages and automates complex text transformation pipelines via the TextCleaner REPL interface.
Guides developers through selecting, implementing, and optimizing vector search solutions for AI applications and RAG pipelines.
Calculates core financial technical indicators including MA, MACD, RSI, and Bollinger Bands for stock market analysis and quantitative trading.
Calculates TAM, SAM, and SOM using top-down, bottom-up, and value theory methodologies to quantify business opportunities.
Streamlines the process of training and finetuning large language models using industry-standard frameworks and memory optimization techniques.
Automates the productionization and deployment of machine learning models into scalable environments using FastAPI, Docker, and Kubernetes.
Extracts structured data from complex PDFs, scanned documents, and multi-column layouts using the advanced Docling engine and Granite vision-language models.
Automates the end-to-end creation, evaluation, and deployment of machine learning classification models from natural language requests.
Implements persistent, high-performance memory and learning patterns for AI agents using AgentDB.
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