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:octocat:
Working from bed recently
:octocat:
Working from bed recently

Organizations

@AUT-AP-2020 @AUT-CE-Archive @Computer-Engineering-Department-Archive @NEAK-Group @AUTDMC @AUT-CE-SE-Nerdware @metacave @dejavu-project

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keivanipchihagh/README.md

Hello There πŸ‘‹ I'm Keivan!

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STATS (THOPHES)

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  1. x-ui x-ui Public

    Want to bypass Iran's GFW censorship? You are in the right place! πŸ‘» V2ray VPN with X-UI dashboard, and Cloudflare's CDN, CFW and Self-Signed SSL

    Shell 74 5

  2. Intro-to-ML-and-Data-Science Intro-to-ML-and-Data-Science Public

    My journey to learn fast-paced Machine Learning, Deep Learning & Data Science courses and references. :octocat:

    Jupyter Notebook 13 1

  3. easy-peasy-deployment easy-peasy-deployment Public

    Painless deployment of your favorite MLOps technologies with Docker - Grafana, Prometheus, Airflow, Spark, Postgres, Redis, NPM, Traefik and ...

    Dockerfile 12

  4. machinelearning-roadmap machinelearning-roadmap Public

    A hands-on and industry-oriented roadmap to learn to become a Full-Stack Machine Learning Engineer

    8

  5. makemore makemore Public

    Forked from karpathy/makemore

    An autoregressive character-level language model for making more things

    Python

  6. multi-stage-two-tower-recommender multi-stage-two-tower-recommender Public

    A Movie Recommender System using YouTube's Two-Tower Architecture built with TFRS+TFR and served with FastAPI

    Jupyter Notebook