Arm unveils new AI designs and software for smartphones

Arm unveils new AI designs and software for smartphones


AI models are rapidly evolving, outpacing hardware capabilities, which presents an opportunity for Arm to innovate across the compute stack.

Recently, Arm unveiled new chip blueprints and software tools aimed at enhancing smartphones’ ability to handle AI tasks more efficiently. But they didn’t stop there – Arm also implemented changes to how they deliver these blueprints, potentially accelerating adoption.

Arm is evolving its solution offerings to maximise the benefits of leading process nodes. They announced the Arm Compute Subsystems (CSS) for Client, their latest cutting-edge compute solution tailored for AI applications in smartphones and PCs.

This CSS for Client promises a significant performance leap – we’re talking over 30% increased compute and graphics performance, along with an impressive 59% faster AI inference for AI, machine learning, and computer vision workloads.

bybit

While Arm’s technology powered the smartphone revolution, it’s also gaining traction in PCs and data centres, where energy efficiency is prized. Though smartphones remain Arm’s biggest market, supplying IP to rivals like Apple, Qualcomm, and MediaTek, the company is expanding its offerings.

They’ve launched new CPU designs optimised for AI workloads and new GPUs, as well as software tools to ease the development of chatbots and other AI apps on Arm chips.

But the real gamechanger is how these products are delivered. Historically, Arm provided specs or abstract designs that chipmakers had to translate into physical blueprints – an immense challenge arranging billions of transistors.

For this latest offering, Arm collaborated with Samsung and TSMC to provide physical chip blueprints ready for manufacturing, which was a huge time saver.

Samsung’s Jongwook Kye praised the partnership, stating their 3nm process combined with Arm’s CPU solutions meets soaring demand for generative AI in mobiles through “early and tight collaboration” in the areas of DTCO and PPA maximisation for an on-time silicon delivery that hit performance and efficiency demands.

TSMC’s head of the ecosystem and alliance management division, Dan Kochpatcharin echoed this, calling the AI-optimised CSS “a prime example” of Arm-TSMC collaboration helping designers push semiconductor innovation’s boundaries for unmatched AI performance and efficiency.

“Together with Arm and our Open Innovation Platform® (OIP) ecosystem partners, we empower our customers to accelerate their AI innovation using the most advanced process technologies and design solutions,” Kochpatcharin emphasised.

Arm isn’t trying to compete with customers, but rather enable faster time-to-market by providing optimised designs for neural processors delivering cutting-edge AI performance.

As Arm’s Chris Bergey said, “We’re combining a platform where these accelerators can be very tightly coupled” to customer NPUs.

Essentially, Arm provides more refined, “baked” designs customers can integrate with their own accelerators to rapidly develop powerful AI-driven chips and devices.

Want to learn more about AI and big data from industry leaders? Check out AI & Big Data Expo taking place in Amsterdam, California, and London. The comprehensive event is co-located with other leading events including Intelligent Automation Conference, BlockX, Digital Transformation Week, and Cyber Security & Cloud Expo.

Explore other upcoming enterprise technology events and webinars powered by TechForge here.

Tags: ai, arm, artificial intelligence, chips, hardware, machine learning, Samsung, smartphones



Source link

Leave a Reply

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

Pin It on Pinterest

CryptoKorner
Ledger
CryptoKorner
Arm unveils new AI designs and software for smartphones
bybit
Coinbase
Anthropic unveils 'auditing agents' to test for AI misalignment
Amazon Researchers Reveal Mitra: Advancing Tabular Machine Learning with Synthetic Priors
Mixture-of-recursions delivers 2x faster inference—Here's how to implement it
Brain made up of dollar symbols as Google releases the stable version of Gemini 2.5 Flash-Lite and they've essentially created a model that's designed to be the workhorse for developers who need to build things at scale without breaking the bank.
Top 15+ Most Affordable Proxy Providers 2025
bitcoin
ethereum
bnb
xrp
cardano
solana
dogecoin
polkadot
shiba-inu
dai
Free book
TokenMetrics
XRP Ledger at Core of VERT’s Strategy for $500M in Tokenized Private Credit Pipeline
Bitcoin
Is Dogecoin Ready to Rally After 10% Drop?
Everything You Need to Know About Finalbosu
VeChain Renaissance Overview: A Series of Major VeChainThor Upgrades Paving the Road to Blockchain Mass Adoption
XRP Ledger at Core of VERT’s Strategy for $500M in Tokenized Private Credit Pipeline
Bitcoin
Is Dogecoin Ready to Rally After 10% Drop?
Everything You Need to Know About Finalbosu
ar
zh-CN
nl
en
fr
de
it
pt
ru
es
en
bitcoin
ethereum
xrp
tether
bnb
solana
usd-coin
dogecoin
staked-ether
tron
bitcoin
ethereum
xrp
tether
bnb
solana
usd-coin
dogecoin
staked-ether
tron