Summary for learning RAPIDS

What is RAPIDS?

A package for speeding up machine learning pre-processing by using GPU for pandas processing

API type cuDF, cuML, cuSPATIAL, cuGRAPH, cuSIGNAL, cuXFILTER, CLX, NVSTRINGS

Overview

https://docs.rapids.ai/overview/RAPIDS%200.13%20Release%20Deck.pdf

What can be done (example of use)

https://medium.com/rapids-ai

document

https://docs.rapids.ai/api

Notebook sample

cuDF and Dask-cuDF https://rapidsai.github.io/projects/cudf/en/0.13.0/10min.html RAPIDS Notebooks https://github.com/rapidsai/notebooks RAPIDS Notebooks 2 https://github.com/rapidsai/notebooks-contrib

Recommended Posts

Summary for learning RAPIDS
Machine learning tutorial summary
Machine learning ⑤ AdaBoost Summary
Reinforcement learning for tic-tac-toe
Anaconda, site summary that was helpful for learning Python
Japanese preprocessing for machine learning
Ensemble learning summary! !! (With implementation)
Learning memorandum for me w
Machine learning ② Naive Bayes Summary
Deep learning for compound formation?
Pipenv usage summary (for myself)
Checkio's recommendation for learning Python
Machine learning ④ K-nearest neighbor Summary
Reference resource summary (for beginners)
[Learning memo] Django command summary
[PyTorch] TRANSFER LEARNING FOR COMPUTER VISION
TF2RL: Reinforcement learning library for TensorFlow2.x
Sentence summary using BERT [for relatives]
Web teaching materials for learning Python
Machine learning ① SVM (Support Vector Machine) Summary
Machine learning summary by Python beginners
Machine learning ③ Summary of decision tree
Learning method output for LPIC acquisition
Binary search summary for competition professionals
<For beginners> python library <For machine learning>
Summary of recommended APIs for artificial intelligence, machine learning, and AI
A Tour of Go Learning Summary
Machine learning meeting information for HRTech
Summary of pages useful for studying the deep learning framework Chainer
Pandas basics summary link for beginners
[For competition professionals] Run-length compression summary
[For competition professionals] Summary of doubling
[AI] Deep Learning for Image Denoising
[Summary of books and online courses used for programming and data science learning]
Summary of mathematical scope and learning resources required for machine learning and data science
Installation summary often used for AI projects
Summary Note on Deep Learning -4.2 Loss Function-
scikit-learn How to use summary (machine learning)
Summary of methods for automatically determining thresholds
[For competition professionals] Union Find Tree Summary
Amplify images for machine learning with python
First Steps for Machine Learning (AI) Beginners
An introduction to OpenCV for machine learning
[Linux command summary] Command list [Must-see for beginners]
Make your own PC for deep learning
"Python Machine Learning Programming" Summary Note (Jupyter)
Django tutorial summary for beginners by beginners ③ (View)
[Shakyo] Encounter with Python for machine learning
Linux operation for beginners Basic command summary
Machine learning algorithm classification and implementation summary
[Python] Web application design for machine learning
Summary of petit techniques for Linux commands
[For competition pros] Priority queue (heapq) Summary
[Deep learning] Nogizaka face detection ~ For beginners ~
An introduction to Python for machine learning
About data expansion processing for deep learning
Machine learning algorithm (linear regression summary & regularization)
Django tutorial summary for beginners by beginners ⑤ (test)
Creating a development environment for machine learning
Python learning plan for AI learning Progress management
[Reinforcement learning] Search for the best route