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Machine Learning

Training models and neural networks.

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machine-learning
138

training-data-curation

Guidelines for creating high-quality datasets for LLM post-training (SFT/DPO/RLHF). Use when preparing data for fine-tuning, evaluating data quality, or designing data collection strategies.

sundial-org
sundial-org
data-ai
open
machine-learning
109

agent-evals

Design and implement evaluation frameworks for AI agents. Use when testing agent reasoning quality, building graders, doing error analysis, or establishing regression protection. Framework-agnostic concepts that apply to any SDK.

panaversity
panaversity
data-ai
open
machine-learning
107

prompt-engineering-patterns

Master advanced prompt engineering techniques to maximize LLM performance, reliability, and controllability in production. Use when optimizing prompts, improving LLM outputs, or designing production prompt templates.

Microck
Microck
data-ai
open
machine-learning
107

llm-evaluation

Implement comprehensive evaluation strategies for LLM applications using automated metrics, human feedback, and benchmarking. Use when testing LLM performance, measuring AI application quality, or establishing evaluation frameworks.

Microck
Microck
data-ai
open
machine-learning
90

machine-learning

Machine learning development patterns, model training, evaluation, and deployment. Use when building ML pipelines, training models, feature engineering, model evaluation, or deploying ML systems to production.

aiskillstore
aiskillstore
data-ai
open
machine-learning
90

agentdb-learning-plugins

Create and train AI learning plugins with AgentDB's 9 reinforcement learning algorithms. Includes Decision Transformer, Q-Learning, SARSA, Actor-Critic, and more. Use when building self-learning agents, implementing RL, or optimizing agent behavior through experience.

aiskillstore
aiskillstore
data-ai
open
machine-learning
90

model-discovery

Fetch current model names from AI providers (Anthropic, OpenAI, Gemini, Ollama), classify them into tiers (fast/default/heavy), and detect new models. Use when needing up-to-date model IDs for API calls or when other skills reference model names.

aiskillstore
aiskillstore
data-ai
open
machine-learning
90

embedding-strategies

Select and optimize embedding models for semantic search and RAG applications. Use when choosing embedding models, implementing chunking strategies, or optimizing embedding quality for specific domains.

aiskillstore
aiskillstore
data-ai
open
machine-learning
90

prompt-optimization

Expert prompt optimization for LLMs and AI systems. Use when building AI features, improving agent performance, crafting system prompts, or optimizing LLM interactions. Masters prompt patterns and techniques.

aiskillstore
aiskillstore
data-ai
open
machine-learning
90

ml-training-debugger

Diagnose machine learning training failures including loss divergence, mode collapse, gradient issues, architecture problems, and optimization failures. This skill spawns a specialist ML debugging ...

aiskillstore
aiskillstore
data-ai
open
machine-learning
90

fiftyone-dataset-inference

Create a FiftyOne dataset from a directory of media files (images, videos, point clouds), optionally import labels in common formats (COCO, YOLO, VOC), run model inference, and store predictions. Use when users want to load local files into FiftyOne, apply ML models for detection, classification, or segmentation, or build end-to-end inference pipelines.

aiskillstore
aiskillstore
data-ai
open
machine-learning
90

ml-antipattern-validator

Prevents 30+ critical AI/ML mistakes including data leakage, evaluation errors, training pitfalls, and deployment issues. Use when working with ML training, testing, model evaluation, or deployment.

aiskillstore
aiskillstore
data-ai
open
machine-learning
90

ai-native-development

Build AI-first applications with RAG pipelines, embeddings, vector databases, agentic workflows, and LLM integration. Master prompt engineering, function calling, streaming responses, and cost optimization for 2025+ AI development.

aiskillstore
aiskillstore
data-ai
open
machine-learning
90

agentdb-reinforcement-learning-training

Train AI agents using AgentDB's 9 reinforcement learning algorithms including Q-Learning, DQN, PPO, and Actor-Critic. Build self-learning agents, implement RL training loops with experience replay, and deploy optimized models to production.

aiskillstore
aiskillstore
data-ai
open
machine-learning
90

logprob-prefill-analysis

Reproduces the full prefill sensitivity analysis pipeline for reward hacking indicators. Use when evaluating how susceptible model checkpoints are to exploit-eliciting prefills, computing token-based trajectories, or comparing logprob vs token-count as predictors of exploitability.

aiskillstore
aiskillstore
data-ai
open
machine-learning
90

when-training-neural-networks-use-flow-nexus-neural

This SOP provides a systematic workflow for training and deploying neural networks using Flow Nexus platform with distributed E2B sandboxes. It covers architecture selection, distributed training, ...

aiskillstore
aiskillstore
data-ai
open
machine-learning
90

learn-off

Disable continuous learning mode

aiskillstore
aiskillstore
data-ai
open
machine-learning
88

pricing

Guide for updating model pricing in Splitrail. Use when adding new AI model costs or updating existing pricing data.

Piebald-AI
Piebald-AI
data-ai
open
machine-learning
66

prompt-engineer

Optimize prompts for LLMs and AI systems. Use when building AI features, improving agent performance, or crafting system prompts.

htlin222
htlin222
data-ai
open
machine-learning
66

ml-engineer

Implement ML pipelines, model serving, and feature engineering. Use for ML model integration or production deployment.

htlin222
htlin222
data-ai
open
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