Google DeepMind says its synthetic intelligence has helped design chips which can be already being utilized in information centres and even smartphones. However some chip design consultants are sceptical of the corporate’s claims that such AI can plan new chip layouts higher than people can.
The newly named AlphaChip methodology can design “superhuman chip layouts” in hours, fairly than counting on weeks or months of human effort, stated Anna Goldie and Azalia Mirhoseini, researchers at Google DeepMind, in a weblog put up. This AI method makes use of reinforcement studying to determine the relationships amongst chip elements and will get rewarded based mostly on the ultimate structure high quality. However impartial researchers say the corporate has not but confirmed such AI can outperform knowledgeable human chip designers or business software program instruments – they usually need to see AlphaChip’s efficiency on public benchmarks involving present, state-of-the-art circuit designs.
“If Google would provide experimental results for these designs, we could have fair comparisons, and I expect that everyone would accept the results,” says Patrick Madden at Binghamton College in New York. “The experiments would take at most a day or two to run, and Google has near-infinite resources – that these results have not been offered speaks volumes to me.” Google DeepMind declined to supply further remark.
Google DeepMind’s weblog put up accompanies an replace to Google’s 2021 Nature journal paper concerning the firm’s AI course of. Since that point, Google DeepMind says that AlphaChip has helped design three generations of Google’s Tensor Processing Models (TPU) – specialised chips used to coach and run generative AI fashions for companies reminiscent of Google’s Gemini chatbot.
The corporate additionally claims that the AI-assisted chip designs carry out higher than these designed by human consultants and have been bettering steadily. The AI achieves this by decreasing the overall size of wires required to attach chip elements – an element that may decrease chip energy consumption and probably enhance processing pace. And Google DeepMind says that AlphaChip has created layouts for general-purpose chips utilized in Google’s information centres, together with serving to the corporate MediaTek develop a chip utilized in Samsung cellphones.
However the code publicly launched by Google lacks assist for widespread business chip information codecs, which suggests the AI methodology is at the moment extra suited to Google’s proprietary chips, says Igor Markov, a chip design researcher. “We really don’t know what AlphaChip is today, what it does and what it doesn’t do,” he says. “We do know that reinforcement learning takes two to three orders of magnitude greater compute resources than methods used in commercial tools and is usually behind [in terms of] results.”
Markov and Madden critiqued the unique paper’s controversial claims about AlphaChip outperforming unnamed human consultants. “Comparisons to unnamed human designers are subjective, not reproducible, and very easy to game. The human designers may be applying low effort or be poorly qualified – there is no scientific result here,” says Markov. “Imagine if AlphaGo reported wins over unnamed Go players.”
In 2023, an impartial knowledgeable who had reviewed Google’s paper retracted his Nature commentary article that had initially praised Google’s work. That knowledgeable, Andrew Kahng on the College of California, San Diego, additionally ran a public benchmarking effort that attempted to duplicate Google’s AI methodology and located it didn’t persistently outperform a human knowledgeable or typical pc algorithms. One of the best-performing strategies had been business software program for chip design from firms reminiscent of Cadence and NVIDIA.
“On every benchmark where there’s what I would consider a fair comparison, it seems like reinforcement learning lags behind the state of the art by a wide margin,” says Madden. “For circuit placement, I don’t believe that it’s a promising research direction.”
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