home/categories/machine-learning
category focus

Machine Learning

Training models and neural networks.

1987 مهارةall categories
sorting
stars
current ordering strategy
query
all entries
refine the visible subset
machine-learning
11

verify-training-pipeline

Verify a CVlization training pipeline example is properly structured, can build, trains successfully, and logs appropriate metrics. Use when validating example implementations or debugging training issues.

kungfuai
kungfuai
data-ai
open
machine-learning
11

identify-architecture

Analyze ML model architecture from papers and code. Use when understanding model structure for implementation.

mvillmow
mvillmow
data-ai
open
machine-learning
11

ml-system-design

End-to-end ML system design for production. Use when designing ML pipelines, feature stores, model training infrastructure, or serving systems. Covers the complete lifecycle from data ingestion to model deployment and monitoring.

melodic-software
melodic-software
data-ai
open
machine-learning
11

extract-hyperparameters

Identify and document model hyperparameters from papers. Use when setting up training configurations.

mvillmow
mvillmow
data-ai
open
machine-learning
11

verify-inference-example

Verify a CVlization inference example is properly structured, builds successfully, and runs inference correctly. Use when validating inference example implementations or debugging inference issues.

kungfuai
kungfuai
data-ai
open
machine-learning
11

model-equivariance-auditor

Use when you have implemented an equivariant model and need to verify it correctly respects the intended symmetries. Invoke when user mentions testing model equivariance, debugging symmetry bugs, verifying implementation correctness, checking if model is actually equivariant, or diagnosing why equivariant model isn't working. Provides verification tests and debugging guidance.

lyndonkl
lyndonkl
data-ai
open
machine-learning
11

train-model

Execute model training with optimization algorithms. Use when running training loops on datasets.

mvillmow
mvillmow
data-ai
open
machine-learning
10

mlx

Running and fine-tuning LLMs on Apple Silicon with MLX. Use when working with models locally on Mac, converting Hugging Face models to MLX format, fine-tuning with LoRA/QLoRA on Apple Silicon, or serving models via HTTP API.

itsmostafa
itsmostafa
data-ai
open
machine-learning
10

qlora

Memory-efficient fine-tuning with 4-bit quantization and LoRA adapters. Use when fine-tuning large models (7B+) on consumer GPUs, when VRAM is limited, or when standard LoRA still exceeds memory. Builds on the lora skill.

itsmostafa
itsmostafa
data-ai
open
machine-learning
10

transformers

Loading and using pretrained models with Hugging Face Transformers. Use when working with pretrained models from the Hub, running inference with Pipeline API, fine-tuning models with Trainer, or handling text, vision, audio, and multimodal tasks.

itsmostafa
itsmostafa
data-ai
open
machine-learning
10

lora

Parameter-efficient fine-tuning with Low-Rank Adaptation (LoRA). Use when fine-tuning large language models with limited GPU memory, creating task-specific adapters, or when you need to train multiple specialized models from a single base.

itsmostafa
itsmostafa
data-ai
open
machine-learning
10

council

Run multi-LLM council for adversarial debate and cross-validation. Orchestrates Claude, GPT-4, and Gemini for production-grade implementation, code review, architecture design, research, and security analysis.

sherifkozman
sherifkozman
data-ai
open
machine-learning
10

agents

Patterns and architectures for building AI agents and workflows with LLMs. Use when designing systems that involve tool use, multi-step reasoning, autonomous decision-making, or orchestration of LLM-driven tasks.

itsmostafa
itsmostafa
data-ai
open
machine-learning
9

calibrate

Post-launch AI feature calibration workflow. Document error patterns, review eval performance, and decide on agency promotion. Based on CC/CD framework for continuous calibration of AI products.

breethomas
breethomas
data-ai
open
machine-learning
9

prompt-engineering

Expert prompt optimization system for building production-ready AI features. Use when users request help improving prompts, want to create system prompts, need prompt review/critique, ask for prompt optimization strategies, want to analyze prompt effectiveness, mention prompt engineering best practices, request prompt templates, or need guidance on structuring AI instructions. Also use when users provide prompts and want suggestions for improvement.

breethomas
breethomas
data-ai
open
machine-learning
9

senior-ml-engineer

World-class ML engineering skill for productionizing ML models, MLOps, and building scalable ML systems. Expertise in PyTorch, TensorFlow, model deployment, feature stores, model monitoring, and ML infrastructure. Includes LLM integration, fine-tuning, RAG systems, and agentic AI. Use when deploying ML models, building ML platforms, implementing MLOps, or integrating LLMs into production systems.

rickydwilson-dcs
rickydwilson-dcs
data-ai
open
machine-learning
9

senior-prompt-engineer

World-class prompt engineering skill for LLM optimization, prompt patterns, structured outputs, and AI product development. Expertise in Claude, GPT-4, prompt design patterns, few-shot learning, chain-of-thought, and AI evaluation. Includes RAG optimization, agent design, and LLM system architecture. Use when building AI products, optimizing LLM performance, designing agentic systems, or implementing advanced prompting techniques.

rickydwilson-dcs
rickydwilson-dcs
data-ai
open
machine-learning
9

senior-computer-vision

World-class computer vision skill for image/video processing, object detection, segmentation, and visual AI systems. Expertise in PyTorch, OpenCV, YOLO, SAM, diffusion models, and vision transformers. Includes 3D vision, video analysis, real-time processing, and production deployment. Use when building vision AI systems, implementing object detection, training custom vision models, or optimizing inference pipelines.

rickydwilson-dcs
rickydwilson-dcs
data-ai
open
machine-learning
9

pal-mcp-server

AI orchestration and multi-model collaboration MCP server. Use when you need multi-model AI collaboration, code reviews, debugging assistance, planning, consensus building, or advanced reasoning across multiple AI providers (Gemini, OpenAI, Grok, Azure, Ollama, etc.).

pacphi
pacphi
data-ai
open
machine-learning
9

mc-waypoint

Labels a coordinate with a waypoint name for reasoning about spatial relationships. Use to mark important locations for navigation and planning

bdambrosio
bdambrosio
data-ai
open
machine-learning
9

mc-training-capture

Enable or disable automatic training data capture (partial observation grid + optional ground truth).

bdambrosio
bdambrosio
data-ai
open
machine-learning
9

pytorch-ml

Deep learning with PyTorch - model training, GPU acceleration, and data science workflows

pacphi
pacphi
data-ai
open
machine-learning
8

artificial-analysis-compare

Compare LLM models using the Artificial Analysis API. This skill should be used when the user asks to compare AI models, benchmark LLMs, evaluate model performance, compare pricing between models, or find the best model for a specific use case (coding, math, speed, cost). Triggers on requests like "compare GPT-5 and Claude", "which model is fastest", "cheapest model for coding", "benchmark comparison", "model performance analysis", or "artificial analysis". (user)

alexfazio
alexfazio
data-ai
open
machine-learning
8

ask-council

Multi-model ensemble consultation. Runs 3 models in parallel for diverse perspectives.

doodledood
doodledood
data-ai
open
Previous
Page 61 / 83
Next