Double Q-Learning Python and Open AI

Double Q-Learning Python and Open AI

In the previous couple of articles, we explored reinforcement learning ecosystem, how it can be described and how it functions. Reinforcement learning is a type of learning that is different from supervised and unsupervised...

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This Week in AI – Issue #1

This Week in AI – Issue #1

Every week we bring to you best research papers, articles and videos that we have found interesting that week. Have fun! Research Papers An Adversarial Approach for the Robust Classification of Pneumonia from Chest Radiographs...

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Introduction to Double Q-Learning

Introduction to Double Q-Learning

Reinforcement learning is field that keeps growing and not only because of the breakthroughs in deep learning. Sure if we talk about deep reinforcement learning, it uses neural networks underneath, but there is more to it than...

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Artificial Intelligence – What Is Next?

Artificial Intelligence – What Is Next?

Ghost of AI Past As we are all quite aware, artificial intelligence has been a topic of many books, comics, movies, and everything, pretty much from the moment the ‘machine’ stepped into place – perhaps correlating with the...

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Top 5 Deep Learning Research Papers in 2019

Top 5 Deep Learning Research Papers in 2019

This year was important year for deep learning and machine learning in general. Things are happening pretty quickly and the number of application of these technologies is growing. We crossed the chasm and deep learning is in the...

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Creating Custom TensorFlow Dataset

Creating Custom TensorFlow Dataset

In the previous article, we had a chance to see how one can scrape images from the web using Python. Apart from that, in one of the articles before that we could see how we can perform transfer learning with TensorFlow. In that...

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Scraping Images with Python

Scraping Images with Python

Process of building machine learning, deep learning or AI applications has several steps. One of them is analysis of the data and finding which parts of it are usable and which are not. We also need to pick machine learning...

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