A Mindmap summarising Machine Learning concepts, from Data Analysis to Deep Learning.
Machine Learning is a subfield of computer science that gives computers the ability to learn without being explicitly programmed. It explores the study and construction of algorithms that can learn from and make predictions on data.
Machine Learning is as fascinating as it is broad in scope. It spans over multiple fields in Mathematics, Computer Science, and Neuroscience. This is an attempt to summarize this enormous field in one .PDF file.
Download the PDF here:
https://github.com/dformoso/machine-learning-mindmap/blob/master/Machine%20Learning.pdf
Same, but with a white background:
I've built the mindmap with MindNode for Mac. https://mindnode.com
This Mindmap/Cheatsheet has a companion Jupyter Notebook that runs through most of the Data Science steps that can be found at the following link:
Here's another mindmap which focuses only on Deep Learning
The Data Science it's not a set-and-forget effort, but a process that requires design, implementation and maintenance. The PDF contains a quick overview of what's involved. Here's a quick screenshot.
First, we'll need some data. We must find it, collect it, clean it, and about 5 other steps. Here's a sample of what's required.
Machine Learning is a house built on Math bricks. Browse through the most common components, and send your feedback if you see something missing.
A partial list of the types, categories, approaches, libraries, and methodology.
A sampling of the most popular models. Send your comments to add more.
I'm planning to build a more complete list of references in the future. For now, these are some of the sources I've used to create this Mindmap.
Stanford and Oxford Lectures. CS20SI, CS224d.
> Books:
> Deep Learning - Goodfellow.
> Pattern Recognition and Machine Learning - Bishop.
> The Elements of Statistical Learning - Hastie.
- Colah's Blog. http://colah.github.io
- Kaggle Notebooks.
- Tensorflow Documentation pages.
- Google Cloud Data Engineer certification materials.
- Multiple Wikipedia articles.
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