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What is it all about?

This blog will be about machine learning and all the stuff which comes along with it. You will read about statistics, informatics, mathematics and software.

I am not an expert in machine learning and I am not even close. Why would I write a blog about machine learning then?

One of the most useful things I experienced in the web are blogs or homepages, where people write about things they've learned. They let other people be part of their learning progress, which is a benefit to both the blogger and the reader.

Next question: Why machine learning?

I want to search for cats in the web, thats why!









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