Difference between revisions of "Reading Material & Glossary"
m |
m |
||
| Line 49: | Line 49: | ||
|| | || | ||
<youtube>jlZsgUZaIyY</youtube> | <youtube>jlZsgUZaIyY</youtube> | ||
| − | <b> | + | <b>[[Creatives#Shan Carter|Shan Carter]] - OpenVisConf 2018 |
| − | </b><br> | + | </b><br>LESSONS FROM A YEAR OF DISTILLING MACHINE LEARNING RESEARCH |
|} | |} | ||
|<!-- M --> | |<!-- M --> | ||
| Line 66: | Line 66: | ||
|| | || | ||
<youtube>SHTOI0KtZnU</youtube> | <youtube>SHTOI0KtZnU</youtube> | ||
| − | <b> | + | <b>How to Read a Research Paper |
| − | </b><br> | + | </b><br>Ever wondered how I consume research so fast? I'm going to describe the process i use to read lots of machine learning research papers fast and efficiently. It's basically a 3-pass approach, i'll go over the details and show you the extra resources I use to learn these advanced topics. You don't have to be a PhD, anyone can read research papers. It just takes practice and patience. |
|} | |} | ||
|<!-- M --> | |<!-- M --> | ||
| Line 74: | Line 74: | ||
|| | || | ||
<youtube>pQyzdwHBbqo</youtube> | <youtube>pQyzdwHBbqo</youtube> | ||
| − | <b> | + | <b>Research to Code - Machine Learning tutorial |
| − | </b><br> | + | </b><br>A lot of times, research papers don't have an associated codebase that you can browse and run yourself. In cases like that, you'll have to code up the paper yourself. That is easier said than done, and in this video i'll show you how you should read and dissect a research paper so you can quickly implement it programmatically. The paper we'll be implementing in this video is called Neural Style transfer, that applies artistic filters to an image using 3 loss functions. Its a great starting point, i'll demo it using code, animations, and math. Enjoy! |
|} | |} | ||
|}<!-- B --> | |}<!-- B --> | ||
Revision as of 12:10, 31 August 2020
- Connected Papers ... explore connected papers in a visual graph
- Distill ...an academic journal dedicated to human understanding
- Nomenclature:
- Courses & Certifications
- Python
- AITopics | The Association for the Advancement of Artificial Intelligence (AAAI)
- Summarized Top 2018 Papers | Mariya Yao
- Reddit - Machine Learning Sub-reddit
- Arxiv Sanity Preserver to accelerate research
- DOD and ODNI/IARPA public search
- Academic and Scholar Search Engines and Sources | Marcus P. Zillman - Virtual Private Library
- Machine Translation Reading List | Tsinghua Natural Language Processing Group
- 24 Best (and Free) Books To Understand Machine Learning | Reashikaa Verma - KDnuggets
- Natural Language Processing (NLP):
- Taming Text - How to Find, Organize, and Manipulate It | Grant S. Ingersoll, Thomas S. Morton, and Andrew L. Farris
- Natural Language Processing with Python - Analyzing Text with the Natural Language Toolkit | Steven Bird, Ewan Klein, and Edward Loper
- Foundations of Statistical Natural Language Processing | Chris Manning and Hinrich Schütze
- The Deep Learning AI Playbook: Strategy for Disruptive Artificial Intelligence | Carlos E Perez
- Artificial Intuition: The Improbable Deep Learning Revolution | Carlos E Perez
- Top 8 Free Must-Read Books on Deep Learning
- 10 Free Must-Read Books for Machine Learning and Data Science
- Grasp Mathematical Foundations on Machine Learning and Data Science
- Neural Network Zoo | Fjodor Van Veen
- TensorFlow Programmer's Guide
- Programming Collective Intelligence: Building Smart Web 2.0 Applications | Toby Segaran
|
|
|
|