CUDA 13.0—New Features and Beyond | NVIDIA GTC D.C.
The NVIDIA CUDA platform is the foundation of the GPU computing ecosystem. Every application and framework that uses the GPU does so through CUDA's libraries, compilers, runtimes, and language—which means CUDA is growing as fast as its ecosystem is evolving. At this engineering-focused talk by CUDA's technical product lead, you'll learn what's new and what's coming next for both CUDA and GPU computing as a whole. Speakers: Rob Armstrong, CUDA Technical Product Management Lead, NVIDIA Watch more: https://www.nvidia.com/en-us/on-demand/

▶︎
Distributed AI Inference at Scale on NVIDIA Dynamo With Gcore and Orange Business

▶︎
How do Graphics Cards Work? Exploring GPU Architecture
![Part2.2 - "MACHINE: UNLEARNING . . . [████░░░░░░░░░░░░] 28%"](https://i.ytimg.com/vi/c4CKNmvTs8E/hqdefault.jpg?sqp=-oaymwEjCNACELwBSFryq4qpAxUIARUAAAAAGAElAADIQj0AgKJDeAE=&rs=AOn4CLDzq69zI9EXyNTvAuyeu5uRvPpO3g)
▶︎
Part2.2 - "MACHINE: UNLEARNING . . . [████░░░░░░░░░░░░] 28%"

▶︎
1,001 Ways to Accelerate Python with CUDA Kernels | NVIDIA GTC 2025

▶︎
Deconstructing Nvidia’s Vera Rubin — The Successor To Blackwell That’s 10x More Efficient

▶︎
Getting Started with CUDA and Parallel Programming | NVIDIA GTC 2025 Session

▶︎
CudaPAD Tutorial

▶︎
Insights from NVIDIA Research | NVIDIA GTC

▶︎
Photonic Chips Are Coming Faster Than Anyone Expected | Akhetonics #003

▶︎
HW News - DRAM Companies Hit Trillions of Dollars, Bambu Open Source, NVIDIA Spark Concerns

▶︎
What is CUDA? - Computerphile

▶︎
I built a private AI mini-cluster with Framework Desktop

▶︎
How CUDA Programming Works | GTC 2022

▶︎
Lecture 44: NVIDIA Profiling

▶︎
Building Faster and Smarter AI Systems with Nemotron

▶︎
How Nvidia GPUs Compare To Google’s And Amazon’s AI Chips

▶︎
NVIDIA Nemotron Unpacked: Build, Fine-Tune, and Deploy Open Models From NVIDIA

▶︎
Writing Code That Runs FAST on a GPU

▶︎
Reverse Proxy vs Load Balancer vs API Gateway: The Real Difference ?

▶︎
