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May I add the Chipotle in Sedona to this conversation? https://t.co/DxSjeR7Gfb

Every damn day, another post with a thousand plus likes for a year old "breaking" paper that should "scare everyone using AI" because of issues with "latest top models" like Llama 4 and o3. (The paper was good & multi-turn is hard, but, again, big progress since it was written.) https://t.co/9d3rYisbJ5
I gave ChatGPT for Excel and Claude for Excel a try on a very hard Excel file: macro-economic data from 1,000 years of English history across over a hundred tabs. I think both did a good job, and I did not spot errors (though I only did spot checks). However, Claude was harder to check because ChatGPT tended to stick within the Excel app, building formulas and manipulating the data in the way a person would. On the other hand, Claude used Python and often pasted material into Excel for display purposes only, making it harder to trace or edit. If that holds, I think it will generally make ChatGPT more useful for serious users if you want to audit the results. Prompt: "help me understand the relationship between the mix of agricultural products in the UK, GDP, and population, along with hours worked. I want this over the total period, and you should illustrate interesting trends with graphs and statistical analysis

@saintgeorge Nope https://t.co/XV1eS1FEi2
Like the AI generates absolute bangers of metaphor that make no sense, but, because the writing is meaning-like, you figure out ways for it to make sense, and through that interpretation, find something deeply meaningful Very indicative of the general problem of AI personality https://t.co/iw9aGeOEkA

We present a research preview of Self-Flow: a scalable approach for training multi-modal generative models. Multi-modal generation requires end-to-end learning across modalities: image, video, audio, text - without being limited by external models for representation learning. Self-Flow addresses this with self-supervised flow matching that scales efficiently across modalities. Results: โข Up to 2.8x faster convergence across modalities. โข Improved temporal consistency in video โข Sharper text rendering and typography This is foundational research for our path towards multimodal visual intelligence.
๐จBREAKING: Yann LeCun just dropped a paper that should make every AI lab rethink its roadmap. One brutal conclusion: chasing AGI is the wrong goal. Hereโs why: โ Humans arenโt general weโre survival specialists. โ Walking and seeing feel โgeneralโ only because they keep us alive. โ Outside that zone, weโre terrible. Chess computers proved it decades ago. โ Most AGI definitions today either canโt be measured or assume human = general. We built the benchmark around the wrong species. The team proposes a new target: Superhuman Adaptable Intelligence (SAI). Not โcan it do what humans do,โ but: how fast can it learn something new? The approach: specialized expert systems with internal world models + self-supervised learning built to master the massive task space that humans biologically canโt reach. One giant model mimicking human limits isnโt the ceiling. Itโs the trap.

We asked people around the world to rate the morality and ethics of others in their country. The U.S. is the only place we surveyed where more adults describe the morality and ethics of others living in the country as bad than good. See our full morality report here: https://t.co/qBtj1ycDkP

Jobs report uniformly weak: 92K jobs lost (with job losses in almost every industry), household survey employment down too, unemployment rate up to 4.4%, participation down, avg weekly hours flat. Main sign in the other direction was strong wage growth. https://t.co/tX3LF6WfVN
Trumpโs second-term pardons are historic in their enormityโbillions in fines erased, allies protected, donors rewarded, DOJ undermined, and election norms threatened. Corruption looks less like an exception and more like the rule, says Catoโs Dan Greenberg. https://t.co/rR2YH0O7py
Israeli Finance Minister Bezalel Smotrich says that Beirutโs Dahiya district will soon โlook like Khan Younis.โ https://t.co/KjQDryRAeK
Israeli strikes displace hundreds of thousands across Lebanon https://t.co/LRMn3B31hk
Israeli strikes displace hundreds of thousands across Lebanon https://t.co/LRMn3B31hk
As a reference to my good friends in SF curious about the scale of displacement in Lebanon https://t.co/Y0swBEpAvO

As a reference to my good friends in SF curious about the scale of displacement in Lebanon https://t.co/Y0swBEpAvO

The Taco Bell in Pacifica, CA https://t.co/VXxRz97j5Q
The Taco Bell in Pacifica, CA https://t.co/VXxRz97j5Q
We just published our 1H 2026 roadmap (https://t.co/qRKP2wg7RN) and an accompanying blog (https://t.co/fjVDnvk37c) for enabling the IBM's Spyre accelerator in PyTorch โ ecosystem-first, building on torch.inductor, vLLM, and contributing back (Dataflow accelerator's Tile IR, OpenReg, out-of-tree CI). While the market debates whether AI disrupts legacy tech, we're busy building the accelerator infrastructure that enterprise AI runs on. We're sharing this journey in the open. Come see our talks on extending torch.inductor for dataflow accelerators and Spyre's vLLM integration at the inaugural PyTorch Conference Europe in Paris, April 7โ8! @PyTorch @IBMResearch @IBM @RedHat_AI
Building on the previous correctness-focused pipeline, KernelAgent can now integrate GPU hardware-performance signals into a closed-loop multi-agent workflow to guide the optimization for Triton Kernels. Learn more: https://t.co/r2WqASIhWG @KaimingCheng @marksaroufim https://t.co/OrtOp9boum
ใใฎใใใชๆๅ ็ซฏใฎAI็ ็ฉถใใๅฎ้ใฎใใธใใน็ฐๅขใธ้ฉ็จใ็คพไผๅฎ่ฃ ใ้ฒใใใใใSakana AIใงใฏใจใณใธใใขใฎๆก็จใๅผทๅใใฆใใพใใ ๆฅๆฌใงใฎAIใฎๆชๆฅใๅ ฑใซๅใๆใใใจใณใฟใผใใฉใคใบใฎ็พๅ ดใงๅฎ้็จใใใAIใจใผใธใงใณใใฎ้็บใซ่ๅณใใใๆนใฏใใใฒ่ฉณ็ดฐใใ่ฆงใใ ใใใ https://t.co/hbpNDyUKrj
AIใฎ้ฒๅใง้็บๅน็ใไธใใไธๆนใใธใงใใณใบใฎใใฉใใใฏใน(Jevons paradox)ใซใใSoftware Engineerใฎ้่ฆใฏใใคใฆใชใ้ซใพใฃใฆใใพใใ Sakana AIใงใฏใใๅคใใฎSoftware Engineerใๆก็จใใพใใใใฒใ่ฆงใใ ใใใ https://t.co/buNwDbN6tv https://t.co/nKxUiNtrvl

As AI makes coding more efficient, Jevons Paradox kicks in. The cost of building software is dropping, which means the demand for great Software Engineers to build even more ambitious systems is higher than ever. We are actively hiring more Software Engineers at Sakana AI to help us build these systems. Come join us in Tokyo ๐ผ๐ฏ๐ต https://t.co/RzpIewkP9Y
Itโs happening โจ https://t.co/vtCn1EkHan
I wrote this 2 years ago as a joke but it is no longer a joke: โForget Torch, Tensorflow, and Theano. I decided to implement Backprop NEAT in Javascript, because it is considered the best language for Deep Learning.โ https://t.co/eGNEpBWm6e https://t.co/JD27jievYB
