Мы в Telegram
Добавить новость
Январь 2010 Февраль 2010 Март 2010 Апрель 2010 Май 2010
Июнь 2010
Июль 2010 Август 2010
Сентябрь 2010
Октябрь 2010
Ноябрь 2010
Декабрь 2010
Январь 2011
Февраль 2011 Март 2011 Апрель 2011 Май 2011 Июнь 2011 Июль 2011 Август 2011
Сентябрь 2011
Октябрь 2011 Ноябрь 2011 Декабрь 2011 Январь 2012 Февраль 2012 Март 2012 Апрель 2012 Май 2012 Июнь 2012 Июль 2012 Август 2012 Сентябрь 2012 Октябрь 2012 Ноябрь 2012 Декабрь 2012 Январь 2013 Февраль 2013 Март 2013 Апрель 2013 Май 2013 Июнь 2013 Июль 2013 Август 2013 Сентябрь 2013 Октябрь 2013 Ноябрь 2013 Декабрь 2013 Январь 2014 Февраль 2014
Март 2014
Апрель 2014 Май 2014 Июнь 2014 Июль 2014 Август 2014 Сентябрь 2014 Октябрь 2014 Ноябрь 2014 Декабрь 2014 Январь 2015 Февраль 2015 Март 2015 Апрель 2015 Май 2015 Июнь 2015 Июль 2015 Август 2015 Сентябрь 2015 Октябрь 2015 Ноябрь 2015 Декабрь 2015 Январь 2016 Февраль 2016 Март 2016 Апрель 2016 Май 2016 Июнь 2016 Июль 2016 Август 2016 Сентябрь 2016 Октябрь 2016 Ноябрь 2016 Декабрь 2016 Январь 2017 Февраль 2017 Март 2017 Апрель 2017 Май 2017
Июнь 2017
Июль 2017
Август 2017 Сентябрь 2017 Октябрь 2017 Ноябрь 2017 Декабрь 2017 Январь 2018 Февраль 2018 Март 2018 Апрель 2018 Май 2018 Июнь 2018 Июль 2018 Август 2018 Сентябрь 2018 Октябрь 2018 Ноябрь 2018 Декабрь 2018 Январь 2019
Февраль 2019
Март 2019 Апрель 2019 Май 2019 Июнь 2019 Июль 2019 Август 2019 Сентябрь 2019 Октябрь 2019 Ноябрь 2019 Декабрь 2019 Январь 2020
Февраль 2020
Март 2020 Апрель 2020 Май 2020 Июнь 2020 Июль 2020 Август 2020 Сентябрь 2020 Октябрь 2020 Ноябрь 2020 Декабрь 2020 Январь 2021 Февраль 2021 Март 2021 Апрель 2021 Май 2021 Июнь 2021 Июль 2021 Август 2021 Сентябрь 2021 Октябрь 2021 Ноябрь 2021 Декабрь 2021 Январь 2022 Февраль 2022 Март 2022 Апрель 2022 Май 2022 Июнь 2022 Июль 2022 Август 2022 Сентябрь 2022 Октябрь 2022 Ноябрь 2022 Декабрь 2022 Январь 2023 Февраль 2023 Март 2023 Апрель 2023 Май 2023 Июнь 2023 Июль 2023 Август 2023 Сентябрь 2023 Октябрь 2023 Ноябрь 2023 Декабрь 2023 Январь 2024 Февраль 2024 Март 2024 Апрель 2024 Май 2024
1 2 3 4 5 6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
Game News |

Nvidia's GPU-powered AI is creating chips with 'better than human design'

 Nvidia's GPU-powered AI is creating chips with 'better than human design'

Nvidia has been quick to hop on the artificial intelligence bus一with many of its consumer facing technologies, such as Deep Learning Super Sampling (DLSS) and AI-accelerated denoising exemplifying that. However, it has also found many uses for AI in its silicon development process and, as Nvidia's chief scientist Bill Dally said in a GTC conference, even designing new hardware.

Dally outlines a few use cases for AI in its own development process of the latest and greatest graphic cards (among other things), as noted by HPC Wire

"It’s natural as an expert in AI that we would want to take that AI and use it to design better chips," Dally says.

"We do this in a couple of different ways. The first and most obvious way is we can take existing computer-aided design tools that we have. For example, we have one that takes a map of where power is used in our GPUs, and predicts how far the voltage grid drops一what’s called IR drop for current times resistance drop. Running this on a conventional CAD tool takes three hours."

"...what we’d like to do instead is train an AI model to take the same data; we do this over a bunch of designs, and then we can basically feed in the power map. The inference time is just three seconds. Of course, it’s 18 minutes if you include the time for feature extraction.

"...we’re able to get very accurate power estimations much more quickly than with conventional tools and in a tiny fraction of the time," Dally continues.

Dally mentions other ways AI can be handy for developing next-generation chips. One is in predicting parasitics, which are essentially unwanted elements in components or designs that could be inefficient or simply cause something to not work as intended. Rather than use human work hours to scope these out, it's possible to reduce the number of steps required in designing circuits by having an AI do it. Sort of like a digital parasitic sniffer dog.

Furthermore, Dally explains that crucial design choices in designing the layout of Nvidia's chips can be aided by AI. Think of this job as avoiding traffic jams with transistors and you'd probably not be that far off. AI may have a future ahead of it in simply pre-warning designers where these traffic jams may occur, which could save heaps of time in the long-run.

Nvidia's H100 GPU

Nvidia's latest Hopper H100 GPU. (Image credit: Nvidia)

Perhaps the most interesting of all the use cases Dally explains is in automating standard cell migration. Okay, it doesn't sound all that interesting, but it actually is. Essentially, it's a way of automating the process of migrating a cell, like a fundamental building block of a computer chip, to a newer process node.

So this is like an Atari video game, but it’s a video game for fixing design rule errors in a standard cell.

Bill Dally, Nvidia

"So each time we get a new technology, say we’re moving from a seven nanometer technology to a five nanometer technology, we have a library of cells. A cell is something like an AND gate and OR gate, a full adder. We’ve got actually many thousands of these cells that have to be redesigned in the new technology with a very complex set of design rules," Dally says.

"We basically do this using reinforcement learning to place the transistors. But then more importantly, after they’re placed, there are usually a bunch of design rule errors, and it goes through almost like a video game. In fact, this is what reinforcement learning is good at. One of the great examples is using reinforcement learning for Atari video games. So this is like an Atari video game, but it’s a video game for fixing design rule errors in a standard cell. By going through and fixing these design rule errors with reinforcement learning, we’re able to basically complete the design of our standard cells."

The tool Nvidia uses for this automated cell migration is called NVCell, and reportedly 92% of the cell library can be migrated using this tool with no errors. Then 12% of those cells were smaller than the human-designed cells.

Your next upgrade

(Image credit: Future)

Best CPU for gaming: The top chips from Intel and AMD
Best gaming motherboard: The right boards
Best graphics card: Your perfect pixel-pusher awaits
Best SSD for gaming: Get into the game ahead of the rest

"This does two things for us. One is it’s a huge labor saving. It’s a group on the order of 10 people will take the better part of a year to port a new technology library. Now we can do it with a couple of GPUs running for a few days. Then the humans can work on those 8 percent of the cells that didn’t get done automatically. And in many cases, we wind up with a better design as well. So it’s labor savings and better than human design."

So Nvidia's using AI accelerated by its own GPUs to accelerate its GPU development. Nice. And of course most of these developments will be useful in any form of chipmaking, not just GPUs.

It's a clever use of time for Nvidia: developing these AI tools for its own development not only sees it speed up its own processes, it also allows it to better sell the benefits of AI to its customers, whom it provides GPUs to accelerate AI with. So I imagine Nvidia sees it as a win-win scenario.

You can check out the full talk with Dally over on the Nvidia website, though you will need to sign up to Nvidia's Developer Program to do so.



Читайте также

Подробности о Terminator Survivors и слухи об анонсе Resident Evil 9

Авторы "Смуты" обещают потратить пять обновлений на исправление боёвки, стелса и диалогов

Today's Wordle answer for Sunday, May 5

Москва

На площадках «Московских сезонов» работают шесть скейт-парков и роллердром

Новости тенниса



Game24.pro — паблик игровых новостей в календарном формате на основе технологичной новостной информационно-поисковой системы с элементами искусственного интеллекта, гео-отбора и возможностью мгновенной публикации авторского контента в режиме Free Public. Game24.pro — ваши Game News сегодня и сейчас в Вашем городе.

Опубликовать свою новость, реплику, комментарий, анонс и т.д. можно мгновенно — здесь.



Персональные новости

Сотрудники Росгвардии обеспечили безопасность встречи Благодатного огня в Москве

Пресс-релиз | CRYPTONIUM | Новая экосистема для заработка на криптовалюте | Арбитраж | Трейдинг | Обучение

Галина Янко: главные традиции и приметы Пасхи

Композитор Классической музыки Сергей Брановицкий представляет произведения классической музыки.