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apache 2.0

  1. S

    Protótipo: Identificação de Crateras Lunares por Aprendizado Profundo

    Neste notebook, vamos desenvolver um protótipo de algoritmo para identificar crateras lunares em imagens de elevação digital (DEM) da Lua usando técnicas de aprendizado profundo. Por se tratar de um protótipo, sua primeira versão irá utilizar um conjunto de Datasets e um modelo já treinado pela...
  2. Linaqeuf

    Kohya LoRA Dreambooth

    An advanced and flexible Colab Notebook to train Stable Diffusion LoRA model based on kohya-ss/sd-scripts training script.
  3. giswqs

    Segment Anything Model for Geospatial Data

    This notebook shows how to use segment satellite imagery using the Segment Anything Model (SAM) with a few lines of code.
  4. batuhandurmaz

    Keyword Similarty tool in Google Colab

    Here is a colab file you can use for the determine which keyword is similar in your keyword list. I created a python code in Google colab. With this colab file, you can give your keyword list, and get insgiht about the similarty ratio of this keywords. - First, upload your keyword list as a...
  5. flustercluck

    Camenduru's, EVERY STABLE DIFFUSION MODEL, and then some more!

    It really is the be all end all for me. https://colab.research.google.com/github/camenduru/stable-diffusion-webui-colab/blob/main/stable/berry_mix_1_5_webui_colab.ipynb But do yourself a favor before going to the first colab, and go to his github page where there are SO many.
  6. Unclaimed Colabs

    GPT-NeoX-20B on Flax (xmap)

    The Flax implementation on TPUs currently has a slight performance regression relative to the PyTorch implementations. The comparison can be seen here. If you want to evaluate GPT-NeoX-20B for research purposes, please use the original GPT-Neox, Minimal PyTorch or Hugging Face implementations...
  7. Unclaimed Colabs

    Alpaca-Lora (GPT)

    The Colab of this GitHub Repo: https://github.com/tloen/alpaca-lora/. After running the cells, a prompt box appears that functions like any other GPT.
  8. eskayML

    Cheating in Marriage Detection Using Machine Learning

    I made use of a dataset from statsmodels(the affair dataset) to train a model which detects if a spouse is cheating DISCLAIMER: THE MODEL IS QUITE BIASED!!
  9. mim

    NY TAXI Analysis using DuckDB and Vegafusion

    Using DuckDB and Vegafusion to analyse NY TAXI dataset
  10. Unclaimed Colabs

    Image Similarity

    Detecting similar images, e.g. for recognizing same person or duplicated images.
  11. Unclaimed Colabs

    Handwritten Text Recognition

    This tutorial shows how you can use the project Handwritten Text Recognition in your Google Colab.
  12. Unclaimed Colabs

    Making talking robots with GPT-2

    Making talking robots with GPT-2 This is a tutorial in using machine learning to generate realistic English text, in any style you like. It doesn't require any coding, and by the end you will have built a simple chatbot, using the state-of-the art GPT-2 model, and hopefully learned a little...
  13. Unclaimed Colabs

    Twitter Pulse Checker

    Find current sentiment on any subject on Twitter
  14. Unclaimed Colabs

    Learn to paint

    Teach machines to paint like human painters
  15. Unclaimed Colabs


    Generate High quality DeepFake Videos
  16. Unclaimed Colabs

    Clothing image classification

    Classify clothing images
  17. Unclaimed Colabs

    Pneumonia detection

    Detect pneumonia from medical x-ray images
  18. Unclaimed Colabs

    Traffic Counting

    Counts the traffic on roads
  19. Sentigral

    Sentigral People Tracking and Counting

    Find all the people in a video, Count how many there are in shot, Count how many there have been in total (with no duplication when someone leaves and re-enters), and Track all the movements of all the individual people. Get the output as annotated images or videos, and as JSON metadata. Can...
  20. Unclaimed Colabs


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