• Contact Us
  • Privacy Policy
  • Terms of Use
  • DMCA
  • Disclaimer
Monday, September 9, 2024
CryptoBangs.com
Advertisement
  • Home
  • Live Crypto Prices
  • Crypto News
    • Bitcoin
    • Ethereum
    • Ripple
    • Altcoin
    • NFT News
  • DeFi
  • Blockchain
  • Regulation
  • Shop
  • Blog
  • Calculator
No Result
View All Result
  • Home
  • Live Crypto Prices
  • Crypto News
    • Bitcoin
    • Ethereum
    • Ripple
    • Altcoin
    • NFT News
  • DeFi
  • Blockchain
  • Regulation
  • Shop
  • Blog
  • Calculator
No Result
View All Result
CryptoBangs.com
No Result
View All Result

NVIDIA Explores Generative AI Models for Enhanced Circuit Design

September 7, 2024
in Blockchain
Reading Time: 2 mins read
A A
NVIDIA Explores Generative AI Models for Enhanced Circuit Design
ShareShareShareShareShare

Related articles

Gala Price Prediction for Today, September 8 – GALA Technical Analysis

Gala Price Prediction for Today, September 8 – GALA Technical Analysis

September 8, 2024
Simon’s Cat Price Prediction: CAT Leaps 17% As Whale Buyers Send The Pepe Unchained ICO Soaring Towards $13 Million

Simon’s Cat Price Prediction: CAT Leaps 17% As Whale Buyers Send The Pepe Unchained ICO Soaring Towards $13 Million

September 8, 2024


Rebeca Moen
Sep 07, 2024 07:01

NVIDIA leverages generative AI models to optimize circuit design, showcasing significant improvements in efficiency and performance.





Generative models have made considerable strides in recent years, from large language models (LLMs) to creative image and video-generation tools. NVIDIA is now applying these advancements to circuit design, aiming to enhance efficiency and performance, according to NVIDIA Technical Blog.

The Complexity of Circuit Design

Circuit design presents a challenging optimization problem. Designers must balance multiple conflicting objectives, such as power consumption and area, while satisfying constraints like timing requirements. The design space is vast and combinatorial, making it difficult to find optimal solutions. Traditional methods have relied on hand-crafted heuristics and reinforcement learning to navigate this complexity, but these approaches are computationally intensive and often lack generalizability.

Introducing CircuitVAE

In their recent paper, CircuitVAE: Efficient and Scalable Latent Circuit Optimization, NVIDIA demonstrates the potential of Variational Autoencoders (VAEs) in circuit design. VAEs are a class of generative models that can produce better prefix adder designs at a fraction of the computational cost required by previous methods. CircuitVAE embeds computation graphs in a continuous space and optimizes a learned surrogate of physical simulation via gradient descent.

How CircuitVAE Works

The CircuitVAE algorithm involves training a model to embed circuits into a continuous latent space and predict quality metrics such as area and delay from these representations. This cost predictor model, instantiated with a neural network, allows for gradient descent optimization in the latent space, circumventing the challenges of combinatorial search.

Training and Optimization

The training loss for CircuitVAE consists of the standard VAE reconstruction and regularization losses, along with the mean squared error between the true and predicted area and delay. This dual loss structure organizes the latent space according to cost metrics, facilitating gradient-based optimization. The optimization process involves selecting a latent vector using cost-weighted sampling and refining it through gradient descent to minimize the cost estimated by the predictor model. The final vector is then decoded into a prefix tree and synthesized to evaluate its actual cost.

Results and Impact

NVIDIA tested CircuitVAE on circuits with 32 and 64 inputs, using the open-source Nangate45 cell library for physical synthesis. The results, as shown in Figure 4, indicate that CircuitVAE consistently achieves lower costs compared to baseline methods, owing to its efficient gradient-based optimization. In a real-world task involving a proprietary cell library, CircuitVAE outperformed commercial tools, demonstrating a better Pareto frontier of area and delay.

Future Prospects

CircuitVAE illustrates the transformative potential of generative models in circuit design by shifting the optimization process from a discrete to a continuous space. This approach significantly reduces computational costs and holds promise for other hardware design areas, such as place-and-route. As generative models continue to evolve, they are expected to play an increasingly central role in hardware design.

For more information about CircuitVAE, visit the NVIDIA Technical Blog.

Image source: Shutterstock


Credit: Source link

ShareTweetSendPinShare
Previous Post

VanEck Shuts Down Ethereum Futures ETF Amidst Struggling Market Conditions

Next Post

SingularityNET (AGIX) Releases Latest Biweekly Development Update for Decentralized AI Platform

Related Posts

Gala Price Prediction for Today, September 8 – GALA Technical Analysis

Gala Price Prediction for Today, September 8 – GALA Technical Analysis

September 8, 2024

Join Our Telegram channel to stay up to date on breaking news coverage According to the daily chart, the Gala...

Simon’s Cat Price Prediction: CAT Leaps 17% As Whale Buyers Send The Pepe Unchained ICO Soaring Towards $13 Million

Simon’s Cat Price Prediction: CAT Leaps 17% As Whale Buyers Send The Pepe Unchained ICO Soaring Towards $13 Million

September 8, 2024

Join Our Telegram channel to stay up to date on breaking news coverage The Simon’s Cat price surged 17% in...

AssemblyAI Launches C# .NET SDK and New AI Tutorials

AssemblyAI Launches C# .NET SDK and New AI Tutorials

September 8, 2024

Alvin Lang Sep 08, 2024 01:48 AssemblyAI introduces its C# .NET SDK and releases new tutorials...

Sui (SUI) Price Analysis for Today, September 7 – SUI Technical Analysis

Sui (SUI) Price Analysis for Today, September 7 – SUI Technical Analysis

September 7, 2024

Join Our Telegram channel to stay up to date on breaking news coverage Sui (SUI) has exhibited a recent surge,...

5 Best Meme Coins to Buy Now That Could Potentially Turn $1K Into $10K – $TURBO, $DOGE2014, $PEPE, $T1500, $PEPU

5 Best Meme Coins to Buy Now That Could Potentially Turn $1K Into $10K – $TURBO, $DOGE2014, $PEPE, $T1500, $PEPU

September 7, 2024

Join Our Telegram channel to stay up to date on breaking news coverage Meme coins have garnered significant attention in...

Load More
Next Post
SingularityNET (AGIX) Releases Latest Biweekly Development Update for Decentralized AI Platform

SingularityNET (AGIX) Releases Latest Biweekly Development Update for Decentralized AI Platform

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Explore the Potential of Husky Inu ($HINU)

Explore the Potential of Husky Inu ($HINU)

September 2, 2024
U.S. Spot Bitcoin ETFs See Record $287 Million in Outflows, Except BlackRock

U.S. Spot Bitcoin ETFs See Record $287 Million in Outflows, Except BlackRock

September 4, 2024
Crypto ETFs account for more than half of all funds launched in the US this year

Crypto ETFs account for more than half of all funds launched in the US this year

September 2, 2024
1INCH Price Dips 5% Post Rebound, Eyes Support at $0.2381

1INCH Price Dips 5% Post Rebound, Eyes Support at $0.2381

September 5, 2024
Galois Capital hit with SEC charges for failing custody requirements

Galois Capital hit with SEC charges for failing custody requirements

September 3, 2024
CryptoBangs.com

CryptoBangs.com is an online news portal that aims to share the latest crypto news, bitcoin, altcoin, blockchain, nft news and much more stuff like that.

What’s New Here!

  • Ripple: XRP Mid-September Price Prediction
  • Solana Bull Predicts SOL Could Soon Rally 5,000% Against Ethereum – Here Is the Realistic Timeline
  • Don’t Miss Out! The Catizen Token Launch Could Be Your Next Big Win!
  • Gala Price Prediction for Today, September 8 – GALA Technical Analysis

Newsletter

Don't miss a beat and stay up to date with our Newsletter!
Loading

  • Contact Us
  • Privacy Policy
  • Terms of Use
  • DMCA
  • Disclaimer

© 2023 - CryptoBangs.com - All Rights Reserved!

No Result
View All Result
  • Home
  • Live Crypto Prices
  • Crypto News
    • Bitcoin
    • Ethereum
    • Ripple
    • Altcoin
    • NFT News
  • DeFi
  • Blockchain
  • Regulation
  • Shop
  • Blog
  • Calculator

© 2018 JNews by Jegtheme.

  • bitcoinBitcoin(BTC)$55,069.001.15%
  • ethereumEthereum(ETH)$2,304.300.62%
  • tetherTether(USDT)$1.00-0.03%
  • binancecoinBNB(BNB)$505.191.63%
  • solanaSolana(SOL)$128.610.20%
  • usd-coinUSDC(USDC)$1.00-0.04%
  • rippleXRP(XRP)$0.530.22%
  • staked-etherLido Staked Ether(STETH)$2,303.250.71%
  • dogecoinDogecoin(DOGE)$0.0969800.95%
  • tronTRON(TRX)$0.1532470.57%
  • the-open-networkToncoin(TON)$4.945.01%
  • cardanoCardano(ADA)$0.3449763.98%
  • avalanche-2Avalanche(AVAX)$23.625.18%
  • Wrapped stETHWrapped stETH(WSTETH)$2,711.000.70%
  • wrapped-bitcoinWrapped Bitcoin(WBTC)$55,013.001.24%
  • shiba-inuShiba Inu(SHIB)$0.0000131.29%
  • WETHWETH(WETH)$2,304.690.64%
  • chainlinkChainlink(LINK)$10.382.08%
  • bitcoin-cashBitcoin Cash(BCH)$306.640.80%
  • polkadotPolkadot(DOT)$4.140.58%
  • daiDai(DAI)$1.00-0.03%
  • leo-tokenLEO Token(LEO)$5.410.07%
  • uniswapUniswap(UNI)$6.460.13%
  • litecoinLitecoin(LTC)$60.38-2.79%
  • nearNEAR Protocol(NEAR)$3.801.90%
  • Wrapped eETHWrapped eETH(WEETH)$2,413.040.68%
  • kaspaKaspa(KAS)$0.1506590.34%
  • internet-computerInternet Computer(ICP)$7.462.57%
  • moneroMonero(XMR)$171.14-0.49%
  • PepePepe(PEPE)$0.0000072.87%
  • aptosAptos(APT)$6.082.77%
  • fetch-aiArtificial Superintelligence Alliance(FET)$1.123.12%
  • Ethena USDeEthena USDe(USDE)$1.000.02%
  • ethereum-classicEthereum Classic(ETC)$17.951.24%
  • stellarStellar(XLM)$0.0902250.35%
  • First Digital USDFirst Digital USD(FDUSD)$1.00-0.15%
  • suiSui(SUI)$0.92-0.41%
  • okbOKB(OKB)$36.471.99%
  • POL (ex-MATIC)POL (ex-MATIC)(POL)$0.3775100.82%
  • crypto-com-chainCronos(CRO)$0.0788862.92%
  • blockstackStacks(STX)$1.420.58%
  • filecoinFilecoin(FIL)$3.410.32%
  • immutable-xImmutable(IMX)$1.210.62%
  • aaveAave(AAVE)$127.310.97%
  • render-tokenRender(RENDER)$4.840.92%
  • BittensorBittensor(TAO)$251.865.52%
  • hedera-hashgraphHedera(HBAR)$0.0498701.62%
  • mantleMantle(MNT)$0.550.38%
  • arbitrumArbitrum(ARB)$0.510.71%
  • matic-networkPolygon(MATIC)$0.3756631.07%
WP Twitter Auto Publish Powered By : XYZScripts.com