Slides: The 2025 AI Engineering Report — Barr Yaron, Amplify
Source Video
The 2025 AI Engineering Report — Barr Yaron, Amplify
Relationship To World's Fair 2026
These slides are extracted from a public AI Engineer YouTube video connected to World's Fair 2026. Speaker-matched clips are supporting context unless later confirmed as exact session recordings; official livestream recordings are day-level/event-level source material.
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Extracted Slides

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2025 Al Engineering Survey
June5.2025
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Microsoft
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Top newsletters from respondents Top podcasts from respondents
“ Latent Space (swyx) “ Latent Space (swyx & Alessio)
“ The Batch (Andrew Ng) * Machine Learning Street Talk (Tim Scarfe)
™ Interconnects (Nathan Lambert) ” The Cognitive Revolution (Nathan Labenz)
“ Ahead of Al (Sebastian Raschka) “ No Priors (Sarah Guo and Elad Gil)
AlphaSignal (Lior Alexander) This Week in Machine Learning/Al (Sam C.)
* SemiAnalysis (Dylan Patel) ” Gradient Dissent (Lukas Biewald)
Eugene Yan’s Newsletter Practical Al (Dan Whitenack)
“ Ben's Bites (Ben Tossell) “ The Gradient (Daniel Bashir)
™ Import Al (Jack Clark) ” Weaviate Podcast (Connor Shorten)
” The Neuron (Noah Edelman) ” Robot Brains (Pieter Abbeel)

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