Skip to main content
Manus에서 모든 스킬 실행
원클릭으로
GitHub 저장소

AutoResearchClaw

AutoResearchClaw에는 aiming-lab에서 수집한 skills 34개가 있으며, 저장소 수준 직업 범위와 사이트 내 skill 상세 페이지를 제공합니다.

수집된 skills
34
Stars
13.6k
업데이트
2026-05-20
Forks
1.6k
직업 범위
직업 카테고리 8개 · 100% 분류됨
저장소 탐색

이 저장소의 skills

fba-simulator
데이터 과학자

Run Flux Balance Analysis (FBA) and related constraint-based simulations using COBRApy. Covers standard FBA, parsimonious FBA (pFBA), Flux Variability Analysis (FVA), loopless FBA, gene/reaction knockouts, and carbon source swapping. Outputs flux distributions and CSV files.

2026-05-20
flux-analyzer
데이터 과학자

Analyse FBA flux distributions to extract biological insights. Covers gene essentiality, phenotypic phase planes, flux sampling, pathway-level aggregation, secretion product prediction, and production of publication- quality figures.

2026-05-20
gsmm-builder
데이터 과학자

Build or load a genome-scale metabolic model (GSMM) using COBRApy. Covers loading from BIGG, constructing minimal models from scratch, setting medium constraints, and exporting validated .json model files.

2026-05-20
gsmm-validator
데이터 과학자

Validate a COBRApy genome-scale metabolic model for mass/charge balance, stoichiometric consistency, biomass producibility, dead-end metabolites, thermodynamic loops, and GPR rule formatting. Outputs a structured validation report with errors and warnings.

2026-05-20
metabolic-study-planner
기타 생물 과학자

Plan publishable constraint-based metabolic modelling studies when the user has a broad biological or metabolic-engineering topic but no concrete dataset, organism, model, or hypothesis. Selects feasible BiGG/COBRA models, objectives, perturbations, analyses, metrics, figures, and risk controls before FBA code is generated.

2026-05-20
mfa-pipeline-orchestrator
데이터 과학자

Orchestrate the full metabolic flux analysis pipeline from model loading to phenotype prediction and publication figures. Triggers when the user provides an organism name, BIGG model ID, or custom reaction list and wants end-to-end metabolic modelling run automatically.

2026-05-20
stat-research-orchestrator
데이터 과학자

Orchestrate a statistical research pipeline centered on formal problem formulation, method proposal, theoretical analysis, experimental evaluation, comparison, and final result synthesis.

2026-05-20
stat-result-validator
통계학자

Validate statistical research outputs for formulation quality, method-to- problem alignment, theory presence, experimental evidence, fair comparison, artifact completeness, and final-claim consistency.

2026-05-20
statistical-experimental-evaluation
통계학자

Design and run statistical experiments that test the formal problem, proposed methods, theoretical predictions, baselines, and ablations.

2026-05-20
statistical-method-design
통계학자

Design statistical methods, baselines, diagnostics, variants, and ablations that directly address a formal problem formulation.

2026-05-20
statistical-problem-formulation
통계학자

Formulate statistical research problems with formal notation, target parameters, assumptions, hypotheses, evaluation criteria, and theory targets.

2026-05-20
statistical-theory-analysis
통계학자

Analyze theoretical properties of statistical methods under the formal formulation: identifiability, bias, variance, consistency, asymptotics, coverage, error bounds, robustness, and limitations.

2026-05-20
quantum-qiskit
데이터 과학자

Reference qiskit 2.x patterns for variational quantum machine learning. Covers data-encoding feature maps, variational quantum classifier (VQC) training, variational quantum eigensolver (VQE) for chemistry, matrix-product-state circuits, and noise model integration. Use when writing Python code that imports `qiskit`, `qiskit_aer`, `qiskit_algorithms`, `qiskit_machine_learning`, or `qiskit_nature`.

2026-05-20
researchclaw
소프트웨어 개발자

Run the ResearchClaw autonomous research pipeline from a topic, config, and output directory.

2026-04-01
a-evolve
소프트웨어 개발자

Apply A-Evolve's agentic evolution methodology to improve AI agent performance across runs. Use when the user wants to diagnose agent failures, generate targeted skills from error patterns, evolve system prompts, or accumulate episodic knowledge. Works standalone or inside AutoResearchClaw pipelines. Triggers on: "evolve", "self-improve", "diagnose failures", "generate skills from errors", "what went wrong and how to fix it", or any mention of A-Evolve.

2026-03-31
biology-biopython
데이터 과학자

Bioinformatics with Biopython for sequence manipulation, file parsing, BLAST, and phylogenetics. Use when working with DNA/RNA/protein sequences or biological databases.

2026-03-31
chemistry-rdkit
데이터 과학자

Computational chemistry with RDKit for molecular analysis, descriptors, fingerprints, and substructure search. Use when working with SMILES, drug discovery, or cheminformatics tasks.

2026-03-31
hypothesis-formulation
생화학자 및 생물물리학자

Structured scientific hypothesis generation from observations. Use when formulating testable hypotheses, competing explanations, or experimental predictions.

2026-03-31
literature-search
기타 중등 후 교사

Systematic literature review methodology including search strategy, screening, and synthesis. Use when conducting literature reviews or writing background sections.

2026-03-31
scientific-visualization
데이터 과학자

Publication-ready scientific figure design with matplotlib and seaborn. Use when creating journal submission figures with proper formatting, accessibility, and statistical annotations.

2026-03-31
scientific-writing
생화학자 및 생물물리학자

Academic manuscript writing with IMRAD structure, citation formatting, and reporting guidelines. Use when drafting or revising research papers.

2026-03-31
statistical-reporting
데이터 과학자

Statistical test selection, assumption checking, and APA-formatted reporting. Use when analyzing experimental results or writing results sections.

2026-03-31
cv-classification
컴퓨터·정보 연구 과학자데이터 과학자

Best practices for image classification tasks. Use when working on CIFAR, ImageNet, or other classification benchmarks.

2026-03-23
cv-detection
컴퓨터·정보 연구 과학자데이터 과학자+1

Best practices for object detection tasks. Use when working on COCO, VOC, or detection architectures like YOLO and DETR.

2026-03-23
nlp-alignment
컴퓨터·정보 연구 과학자데이터 과학자

Best practices for LLM alignment techniques including RLHF, DPO, and instruction tuning. Use when working on alignment or safety.

2026-03-23
nlp-pretraining
컴퓨터·정보 연구 과학자데이터 과학자

Best practices for language model pretraining and fine-tuning. Use when generating or reviewing NLP training code.

2026-03-23
rl-policy-optimization
데이터 과학자

Best practices for reinforcement learning policy optimization. Use when working on RL agents, PPO, SAC, or reward design.

2026-03-23
experimental-design
데이터 과학자소프트웨어 개발자

Best practices for designing reproducible ML experiments. Use when planning ablations, baselines, or controlled experiments.

2026-03-23
meta-analysis
경제학자

Statistical methods for combining results across multiple studies. Use when aggregating cross-study or cross-experiment results.

2026-03-23
systematic-review
기타 중등 후 교사

Structured methodology for comprehensive literature review following PRISMA guidelines. Use during literature search and screening stages.

2026-03-23
data-loading
컴퓨터·정보 연구 과학자소프트웨어 개발자+1

Optimize data loading pipeline to prevent GPU starvation. Use when setting up DataLoader or data preprocessing.

2026-03-23
distributed-training
소프트웨어 개발자

Multi-GPU and distributed training patterns with PyTorch DDP. Use when scaling training across GPUs.

2026-03-23
mixed-precision
컴퓨터·정보 연구 과학자소프트웨어 개발자+1

Use FP16/BF16 mixed precision to accelerate training and reduce memory. Use when optimizing GPU performance.

2026-03-23
pytorch-training
소프트웨어 개발자

Best practices for building robust PyTorch training loops. Use when generating or reviewing ML training code.

2026-03-23