EricDarve / cme213-spring-2021Links
CME 213 Spring 2021
☆65Updated 4 years ago
Alternatives and similar repositories for cme213-spring-2021
Users that are interested in cme213-spring-2021 are comparing it to the libraries listed below
Sorting:
- Examples and exercises from the book Programming Massively Parallel Processors - A Hands-on Approach. David B. Kirk and Wen-mei W. Hwu (T…☆67Updated 4 years ago
- Introduction to CUDA programming☆118Updated 8 years ago
- Some CUDA projects and utility☆29Updated 5 years ago
- Harvard Applied Math 205: Code Examples☆87Updated 2 years ago
- Simple MPI implementation for prototyping or learning☆153Updated this week
- undergraduate numerical analysis course in MIT☆38Updated 4 years ago
- CUDA solutions for the lab assignments in the UIUC-ECE408 Applied Parallel Programming course.☆14Updated 2 years ago
- Small scale distributed training of sequential deep learning models, built on Numpy and MPI.☆133Updated last year
- An implementation of the transformer architecture onto an Nvidia CUDA kernel☆183Updated last year
- Stanford CS149 -- Assignment 3☆27Updated 7 months ago
- Stanford CS149 -- Assignment 1☆107Updated 8 months ago
- Write a fast kernel and run it on Discord. See how you compare against the best!☆44Updated this week
- Step-by-step optimization of CUDA SGEMM☆333Updated 3 years ago
- ring-attention experiments☆145Updated 7 months ago
- Advanced Linear Algebra: Foundations to Frontiers (ALAFF) assignments repository☆80Updated 2 years ago
- Matrix Multiply-Accumulate with CUDA and WMMA( Tensor Core)☆134Updated 4 years ago
- Backpropagation in Python, C++, and Cuda☆45Updated 5 years ago
- ☆157Updated last year
- JAX-Toolbox☆308Updated this week
- Home for "How To Scale Your Model", a short blog-style textbook about scaling LLMs on TPUs☆385Updated last month
- A curated collection of resources, tutorials, and best practices for learning and mastering NVIDIA CUTLASS☆183Updated last month
- 18.336 - Fast Methods for Partial Differential and Integral Equations☆185Updated last year
- JAX-DIPS is a differentiable interfacial PDE solver.☆44Updated 8 months ago
- CUDA Matrix Multiplication Optimization☆189Updated 10 months ago
- Efficient Distributed GPU Programming for Exascale, an SC/ISC Tutorial☆268Updated this week
- NVIDIA tools guide☆133Updated 5 months ago
- ☆32Updated 2 months ago
- LLM training in simple, raw C/CUDA☆99Updated last year
- ☆169Updated last year
- ☆158Updated 10 months ago