Skip to content

Navigation Menu

Sign in
Appearance settings

Search code, repositories, users, issues, pull requests...

Provide feedback

We read every piece of feedback, and take your input very seriously.

Saved searches

Use saved searches to filter your results more quickly

Appearance settings

This repository contains an advanced tutorial on optimizing Python code for machine learning applications, focusing on processing large amounts of data efficiently. It covers three powerful libraries: Numba, NumPy, and Polars.

License

Notifications You must be signed in to change notification settings

jman4162/Accelerated-Python-Computing-for-ML-Applications

Open more actions menu

Repository files navigation

Accelerated Python Computing for ML Applications

This repository contains an advanced tutorial on optimizing Python code for machine learning applications, focusing on processing large amounts of data efficiently. It covers three powerful libraries: Numba, NumPy, and Polars.

Key features:

  • In-depth guide to Numba's JIT compilation for high-performance computing
  • Advanced NumPy techniques for efficient array operations
  • Introduction to Polars for fast data manipulation of large datasets
  • Parallel processing strategies on CPUs
  • GPU acceleration using CUDA
  • Custom data types for complex ML algorithms
  • Profiling and optimization strategies

Topics covered:

  • Numba: JIT compilation, parallel processing, GPU acceleration
  • NumPy: Vectorization, advanced indexing, and array operations
  • Polars: Fast data frame operations, lazy evaluation, and parallel execution

Ideal for ML researchers and data scientists looking to dramatically improve computational efficiency, reduce execution times from hours to minutes, and handle larger datasets with ease. Dive in to supercharge your Python code for machine learning and data processing tasks!

About

This repository contains an advanced tutorial on optimizing Python code for machine learning applications, focusing on processing large amounts of data efficiently. It covers three powerful libraries: Numba, NumPy, and Polars.

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published
Morty Proxy This is a proxified and sanitized view of the page, visit original site.