Skip to content

Latest commit

 

History

History
154 lines (115 loc) · 7.4 KB

README.md

File metadata and controls

154 lines (115 loc) · 7.4 KB

Supplementary Material for Lectures

YouTube Channel

The PMPP Book: Programming Massively Parallel Processors: A Hands-on Approach (Amazon link)

Lecture 1: Profiling and Integrating CUDA kernels in PyTorch

Lecture 2: Recap Ch. 1-3 from the PMPP book

Lecture 3: Getting Started With CUDA

Lecture 4: Intro to Compute and Memory Architecture

Lecture 5: Going Further with CUDA for Python Programmers

Lecture 6: Optimizing PyTorch Optimizers

Lecture 7: Advanced Quantization

Lecture 8: CUDA Performance Checklist

Lecture 9: Reductions

Lecture 10: Build a Prod Ready CUDA Library

Lecture 11: Sparsity

Lecture 12: Flash Attention

Lecture 13: Ring Attention

Lecture 14: Practitioner's Guide to Triton

Lecture 15: CUTLASS

Lecture 16: On Hands profiling

Bonus Lecture: CUDA C++ llm.cpp

Lecture 17: GPU Collective Communication (NCCL)

Lecture 18: Fused Kernels

Lecture 19: Data Processing on GPUs

Lecture 20: Scan Algorithm

Lecture 21: Scan Algorithm Part 2

Lecture 22: Hacker's Guide to Speculative Decoding in VLLM

Lecture 23: Tensor Cores

  • Speaker: Vijay Thakkar & Pradeep Ramani
  • Slides

Lecture 24: Scan at the Speed of Light

  • Speaker: Jake Hemstad & Georgii Evtushenko

Lecture 25: Speaking Composable Kernel

  • Speaker: Haocong Wang
  • Slides

Lecture 26: SYCL MODE (Intel GPU)

Lecture 27: gpu.cpp

Lecture 28: Liger Kernel

Lecture 29: Triton Internals

Lecture 30: Quantized training

Lecture 31: Beginners Guide to Metal Kernels

Lecture 32: Unsloth - LLM Systems Engineering

Lecture 33: BitBLAS

Lecture 34: Low Bit Triton Kernels

Lecture 35: SGLang Performance Optimization