Podcast:Practical AI Published On: Tue Nov 17 2020 Description: What’s it like to try and build your own deep learning workstation? Is it worth it in terms of money, effort, and maintenance? Then once built, what’s the best way to utilize it? Chris and Daniel dig into questions today as they talk about Daniel’s recent workstation build. He built a workstation for his NLP and Speech work with two GPUs, and it has been serving him well (minus a few things he would change if he did it again).Join the discussionChangelog++ members get a bonus 1 minute at the end of this episode and zero ads. Join today!Sponsors:Linode – Get $100 in free credit to get started on Linode – our cloud of choice and the home of Changelog.com. Head to linode.com/changelogChangelog++ – You love our content and you want to take it to the next level by showing your support. We’ll take you closer to the metal with no ads, extended episodes, outtakes, bonus content, a deep discount in our merch store (soon), and more to come. Let’s do this! Fastly – Our bandwidth partner. Fastly powers fast, secure, and scalable digital experiences. Move beyond your content delivery network to their powerful edge cloud platform. Learn more at fastly.com. Featuring:Chris Benson – Website, GitHub, LinkedIn, XDaniel Whitenack – Website, GitHub, XShow Notes:Daniel’s workstation components:CPU - AMD YD292XA8AFWOF Ryzen Threadripper 2920XCPU cooler - Noctua NH-U12S TR4-SP3, Premium-Grade CPU Cooler for AMD sTRX4/TR4/SP3Motherboard - GIGABYTE X399 AORUS PROMemory - Corsair Vengeance LPX 16GB (2x 2 packs), total 64GBStorage 1 - Samsung (MZ-V7S1T0B/AM) 970 EVO Plus SSD 1TBGPU 1 - RTX 2080 TiGPU 2 - Titan RTXCase - Lian Li PC-O11AIRPower Supply - Rosewill HerculesCase fan(s) - Coolmaster 8mmDaniel’s NUC 9 Extreme machineReferences:How to build the perfect Deep Learning Computer and save thousands of dollarsCurtis Northcut’s blog postsSomething missing or broken? PRs welcome! ★ Support this podcast ★