Seamless transition from single-core Python to Julia Multi-GPU | Omlin | JuliaCon 2024
Seamless transition from single-core Python to Julia Multi-GPU by Samuel Omlin PreTalx: https://pretalx.com/juliacon2024/talk... Check points for correctness can be straightforwardly defined for ported and verified code blocks in order to later automatically signal potential issues that manifest due to refactoring work or consideration of new input classes. We have demonstrated the approach's effectiveness in a real-world use case, a collaboration between domain scientists and HPC experts in the scope of Europe's Human Brain Project (HBP). Based on a single-CPU-core Python prototype developed by the domain scientists, we have jointly created a Julia application for Bayesian optimization of hyper-parameters of a neurological network that is deployable on the world's largest GPU supercomputers and achieves near optimal performance and scaling. Furthermore, as a result of the automatic correctness verification, the domain scientists - with no previous Julia experience - could quickly gain confidence in the ported Julia application, which is an important aspect in HPC collaboration projects as the presented one. The Julia application serves the domain scientists now also for further prototyping: leveraging [ParallelStencil.jl](https://github.com/omlins/ParallelSte...) has made it feasible to fully unify prototyping and production in a single code that is deployable on a single CPU core or thousands of GPUs.

Introduction to kernel (GPU) programming in Julia with an NBody simulation

Training Sand to Think: Artificial General Intelligence & Future of Physics

Compute and Accelerator Forum - Julia and GPUs for fun and profit

Keynote: After the AI Hype – What’s Real, and What’s Next - Richard Campbell - 2026

What Nobody Tells You About Being a Quant

Inside Anthropic, the $965 Billion AI Juggernaut | The Circuit

Ilya Sutskever – We're moving from the age of scaling to the age of research

The FULL VIDEO of Trump they didn’t want released

Creator of C++: Bell Labs, Negative Overhead Abstraction, Mistakes | Bjarne Stroustrup

Linus Torvalds: AI Is Changing Linux Fast

The French Do Not Care About Work

Chris Lattner on Julia programming language | Lex Fridman Podcast Clips

Germany’s army chief on AI, drones and the future of the tank | The Economist

Stop Rambling: The 3-2-1 Speaking Trick That Makes You Sound Like A CEO

Turing Award Winner: Disagreeing with Google, Postgres, Future Problems | Mike Stonebraker

You Know This Song (but the Orchestra Doesn’t) | Jacob Collier & VSO School of Music Orchestra | TED

FortranCon2021: Standard Fortran on GPUs and its utility in quantum chemistry codes

Google DeepMind Distinguished Eng (L9): How To Land a Job at a Frontier Lab | Vlad Feinberg

From Child Prodigy to Winning Fields Medal, Nobel of Math

