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    <title>docker on Mari Galicer.</title>
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      <title>Machine learning in production with Flask, Twilio, Docker, and Google Cloud</title>
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      <pubDate>Fri, 08 Mar 2019 08:19:24 +0000</pubDate>
      
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      <description>The code for this project - excluding the model and training data, both of which are too big to upload - can be found on my Github.
It&amp;rsquo;s common to hear how powerful machine learning models are, but courses and tutorials usually stop short of showing you how to use them in real life. Here, I want to talk about how I was able to train and export an image classification model and set it up in a small web app using Flask, Twilio, and Docker, so that anyone can text images to the model and have them return a classification.</description>
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