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OpenRaiser

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OpenRaiser

16 skills22.384 estrelas no totalgithub.com/OpenRaiser

Skills publicadas

nanoresearch-ideation

1.4k

Search academic literature and generate research hypotheses

Pesquisa e Web#aipor OpenRaiser

nanoresearch-experiment

1.4k

Generate a Python code skeleton from an experiment blueprint

Pesquisa e Web#python#aipor OpenRaiser

brainstorming-research-ideas

1.4k

Guides researchers through structured ideation frameworks to discover high-impact research directions. Use when exploring new problem spaces, pivoting between projects, or seeking novel angles on existing work.

Pesquisa e Web#aipor OpenRaiser

nanoresearch-planning

1.4k

Produce an experiment blueprint from a research hypothesis

Pesquisa e Web#aipor OpenRaiser

huggingface-accelerate

1.4k

Simplest distributed training API. 4 lines to add distributed support to any PyTorch script. Unified API for DeepSpeed/FSDP/Megatron/DDP. Automatic device placement, mixed precision (FP16/BF16/FP8). Interactive config, single launch command. HuggingFace ecosystem standard.

Pesquisa e Web#ai#apipor OpenRaiser

ml-paper-writing

1.4k

Write publication-ready ML/AI/Systems papers for NeurIPS, ICML, ICLR, ACL, AAAI, COLM, OSDI, NSDI, ASPLOS, SOSP. Use when drafting papers from research repos, structuring arguments, verifying citations, or preparing camera-ready submissions. Includes LaTeX templates, reviewer guidelines, and citation verification workflows.

Pesquisa e Web#aipor OpenRaiser

NanoResearch

1.4k

🦞+🔬 NanoResearch: The Autonomous AI Research Assistant

Pesquisa e Web#aipor OpenRaiser

skypilot-multi-cloud-orchestration

1.4k

Multi-cloud orchestration for ML workloads with automatic cost optimization. Use when you need to run training or batch jobs across multiple clouds, leverage spot instances with auto-recovery, or optimize GPU costs across providers.

Pesquisa e Web#aipor OpenRaiser

academic-plotting

1.4k

Generates publication-quality figures for ML papers from research context. Given a paper section or description, extracts system components and relationships to generate architecture diagrams via Gemini. Given experiment results or data, auto-selects chart type and generates data-driven figures via matplotlib/seaborn. Use when creating any figure for a conference paper.

Dados e Análise#aipor OpenRaiser

creative-thinking-for-research

1.4k

Applies cognitive science frameworks for creative thinking to CS and AI research ideation. Use when seeking genuinely novel research directions by leveraging combinatorial creativity, analogical reasoning, constraint manipulation, and other empirically grounded creative strategies.

Pesquisa e Web#aipor OpenRaiser

ray-data

1.4k

Scalable data processing for ML workloads. Streaming execution across CPU/GPU, supports Parquet/CSV/JSON/images. Integrates with Ray Train, PyTorch, TensorFlow. Scales from single machine to 100s of nodes. Use for batch inference, data preprocessing, multi-modal data loading, or distributed ETL pipelines.

Dados e Análise#aipor OpenRaiser

nanoresearch-writing

1.4k

Draft a LaTeX research paper from all previous stage outputs

Pesquisa e Web#aipor OpenRaiser

evaluating-llms-harness

1.4k

Evaluates LLMs across 60+ academic benchmarks (MMLU, HumanEval, GSM8K, TruthfulQA, HellaSwag). Use when benchmarking model quality, comparing models, reporting academic results, or tracking training progress. Industry standard used by EleutherAI, HuggingFace, and major labs. Supports HuggingFace, vLLM, APIs.

Pesquisa e Web#llm#aipor OpenRaiser

autoresearch

1.4k

Orchestrates end-to-end autonomous AI research projects using a two-loop architecture. The inner loop runs rapid experiment iterations with clear optimization targets. The outer loop synthesizes results, identifies patterns, and steers research direction. Routes to domain-specific skills for execution, supports continuous agent operation via Claude Code /loop and OpenClaw heartbeat, and produces r

Pesquisa e Web#ai#apipor OpenRaiser

peft-fine-tuning

1.4k

Parameter-efficient fine-tuning for LLMs using LoRA, QLoRA, and 25+ methods. Use when fine-tuning large models (7B-70B) with limited GPU memory, when you need to train <1% of parameters with minimal accuracy loss, or for multi-adapter serving. HuggingFace's official library integrated with transformers ecosystem.

Pesquisa e Web#llm#aipor OpenRaiser

unsloth

1.4k

Expert guidance for fast fine-tuning with Unsloth - 2-5x faster training, 50-80% less memory, LoRA/QLoRA optimization

Pesquisa e Web#aipor OpenRaiser

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