Debbie's repositories

ColabDesign

Making Protein Design accessible to all via Google Colab!

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100-days-of-code

Fork this template for the 100 days journal - to keep yourself accountable (multiple languages available)

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AgentGPT

🤖 Assemble, configure, and deploy autonomous AI Agents in your browser.

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awesome-chatgpt-prompts

This repo includes ChatGPT prompt curation to use ChatGPT better.

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awesome-python

A curated list of awesome Python frameworks, libraries, software and resources

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rnaseq_tutorial

Informatics for RNA-seq: A web resource for analysis on the cloud. Educational tutorials and working pipelines for RNA-seq analysis including an introduction to: cloud computing, critical file formats, reference genomes, gene annotation, expression, differential expression, alternative splicing, data visualization, and interpretation.

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AiLearning-Theory-Applying

快速上手Ai理论及应用实战:基础知识、ML、DL、NLP-BERT、竞赛。含大量注释及数据集,力求每一位能看懂并复现。

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alphafill

AlphaFill is an algorithm based on sequence and structure similarity that “transplants” missing compounds to the AlphaFold models. By adding the molecular context to the protein structures, the models can be more easily appreciated in terms of function and structure integrity.

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awesome-immigration

An Awesome list of long-term visas

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awesome-jax

JAX - A curated list of resources https://github.com/google/jax

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ChatGPT-Next-Web

A well-designed cross-platform ChatGPT UI (Web / PWA / Linux / Win / MacOS). 一键拥有你自己的跨平台 ChatGPT 应用。

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clearml

ClearML - Auto-Magical CI/CD to streamline your ML workflow. Experiment Manager, MLOps and Data-Management

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ColossalAI

Making large AI models cheaper, faster and more accessible

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Data-Analysis

Data Science Using Python

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folding_tools

A collection of *fold* tools

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free-programming-books

:books: Freely available programming books

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GitHub520

:kissing_heart: 让你“爱”上 GitHub,解决访问时图裂、加载慢的问题。(无需安装)

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google-research

Google Research

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graph-based-deep-learning-literature

links to conference publications in graph-based deep learning

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machine-learning-book

Code Repository for Machine Learning with PyTorch and Scikit-Learn

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material-design-data

关于 Material Design 的一切资料都在这里

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ML-For-Beginners

12 weeks, 26 lessons, 52 quizzes, classic Machine Learning for all

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NotionNext

使用 NextJS + Notion API 实现的,支持多种部署方案的静态博客,无需服务器、零门槛搭建网站,为Notion和所有创作者设计。

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PaddleHub

Awesome pre-trained models toolkit based on PaddlePaddle. (400+ models including Image, Text, Audio, Video and Cross-Modal with Easy Inference & Serving)

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papers_for_protein_design_using_DL

List of papers about Proteins Design using Deep Learning

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protein-design-tutorials

Tutorials, cheat sheets, and other resources for computational methods for protein design.

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ProteinFlow

Versatile computational pipeline for processing protein structure data for deep learning applications.

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segment-anything

The repository provides code for running inference with the SegmentAnything Model (SAM), links for downloading the trained model checkpoints, and example notebooks that show how to use the model.

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single-cell-tutorial

Single cell current best practices tutorial case study for the paper:Luecken and Theis, "Current best practices in single-cell RNA-seq analysis: a tutorial"

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