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    <title>image-segmentation on Cristóbal Alcázar</title>
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      <title>A Deep Learning Workflow Part 1, Hugging Face datasets &#43; Weights &amp; Biases</title>
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      <description>Last update: 22/02/2023
  
This post was highlighted by the Weights &amp;amp; Biases community and published in their Fully Connected blog. You can read the interactive version here.
 tl;dr Colabs are powerful, but they make experimentation difficult. In this article, we explore how to change your workflow with HuggingFace and Weights &amp;amp; Biases.
 Over the years, I’ve used many Google Colab notebooks. They’re great for experimentation and sharing your deep learning projects with others and save you the hassle of needing to set up a Python environment.</description>
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