Close Menu
StreamLineCrypto.comStreamLineCrypto.com
  • Home
  • Crypto News
  • Bitcoin
  • Altcoins
  • NFT
  • Defi
  • Blockchain
  • Metaverse
  • Regulations
  • Trading
What's Hot

XRP Analyst Reveals The Question No One Asks And Why It’s Important

May 9, 2026

Second Bitcoin ETF issuer predicts BTC hitting $1M

May 9, 2026

Bollinger Bands Creator Has Just Gone All In On Bitcoin, Is $100,000 Next?

May 9, 2026
Facebook X (Twitter) Instagram
Saturday, May 9 2026
  • Contact Us
  • Privacy Policy
  • Cookie Privacy Policy
  • Terms of Use
  • DMCA
Facebook X (Twitter) Instagram
StreamLineCrypto.comStreamLineCrypto.com
  • Home
  • Crypto News
  • Bitcoin
  • Altcoins
  • NFT
  • Defi
  • Blockchain
  • Metaverse
  • Regulations
  • Trading
StreamLineCrypto.comStreamLineCrypto.com

HP and NVIDIA Collaborate on Open-Source Manufacturing Digital Twin

July 22, 2024Updated:July 22, 2024No Comments4 Mins Read
Facebook Twitter Pinterest LinkedIn Tumblr Email
HP and NVIDIA Collaborate on Open-Source Manufacturing Digital Twin
Share
Facebook Twitter LinkedIn Pinterest Email
ad


Rongchai Wang
Jul 22, 2024 18:14

HP 3D Printing and NVIDIA Modulus crew as much as improve manufacturing digital twins utilizing physics-informed machine studying.





HP 3D Printing and NVIDIA Modulus have introduced a collaboration to develop an open-source manufacturing digital twin, leveraging physics-informed machine studying (physics-ML). This partnership goals to foster innovation in AI engineering functions by embedding bodily legal guidelines into the educational course of, in response to NVIDIA Technical Weblog.

Developments in Physics-ML

Physics-ML is a burgeoning subject that comes with bodily legal guidelines into machine studying fashions, enhancing the generalizability and effectivity of neural networks. NVIDIA Modulus, an open-source framework, facilitates the constructing, coaching, and fine-tuning of those fashions with a easy Python interface. The framework affords reference functions to assist area specialists apply physics-ML to real-world use circumstances.

The Digital Twin crew at HP 3D Printing Software program Group has utilized physics-ML fashions for his or her manufacturing digital twin and contributed this work to Modulus. HP, a pacesetter in additive manufacturing, goals to speed up the onboarding of latest functions and undertake this know-how in manufacturing environments. Dr. Jun Zeng, HP’s distinguished technologist, emphasised the significance of physics simulation engines grounded in manufacturing course of variability, noting the numerous speedups achieved with well-trained physics-ML fashions.

Digital Twins in Additive Manufacturing

HP has a wealthy historical past of technological innovation, together with the event of thermal inkjet know-how. The corporate’s newest innovation, HP Steel Jet, allows the manufacturing of industrial-grade 3D steel elements. HP is creating a digital twin for Steel Jet know-how to optimize design parameters and course of management, thereby bettering half high quality and manufacturing yield.

The HP crew created the Digital Foundry Graphnet mannequin, making use of physics-ML to speed up the computation of steel powder materials part transitions. This mannequin has achieved important speedups, enabling close to real-time, high-fidelity emulation of the steel sintering course of. The mannequin has additionally demonstrated its applicability to numerous geometrical designs and course of parameter configurations.

Physics-ML Innovation at HP

Though physics-ML continues to be in its early levels, the HP Digital Twin crew believes within the function of the open-source neighborhood in accelerating its growth. By open-sourcing Digital Foundry Graphnet by means of NVIDIA Modulus, HP has joined the physics-ML open-source neighborhood. Conventional high-fidelity physics simulations are computationally intensive, usually taking hours or days for one design iteration. Physics-ML surrogate fashions provide high-fidelity emulation, enabling sooner design iterations.

Immediate suggestions on product design manufacturability and automatic design screening at the moment are doable with physics-ML surrogate fashions. These fashions additionally enable product design groups to make use of prior simulation knowledge as a supply of ground-truth knowledge. The combination of product design and manufacturing optimizations, which historically required a number of iterations between departments, can now be considerably accelerated.

HP’s course of physics simulation software program, Digital Sintering, has been deployed to HP Steel Jet clients to enhance manufacturing outcomes. Operating a well-trained steel sintering inferencing engine takes simply seconds to acquire the ultimate sintering deformation worth, considerably decreasing the time required for design iterations.

Empowering Researchers

Physics-ML surrogate fashions are on the forefront of near-real-time simulation workflows. Improvements like Digital Foundry Graphnet exhibit the ability of AI to speed up simulation workflows, delivering predictions in seconds. Democratizing AI for manufacturing is important to empower a wider vary of innovators to unravel business challenges.

AI researchers and the HP 3D Printing crew make the most of the NVIDIA Modulus open-source challenge to collaborate with area specialists. NVIDIA helps the physics-ML analysis neighborhood by offering a platform that enhances collaboration and innovation, making certain that superior AI instruments are accessible to all.

Picture supply: Shutterstock


ad
Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
Related Posts

XRP Analyst Reveals The Question No One Asks And Why It’s Important

May 9, 2026

Second Bitcoin ETF issuer predicts BTC hitting $1M

May 9, 2026

It might be too late for bitcoin’s quantum migration, Project Eleven report argues

May 9, 2026

Why a 2017 Linux bug is now a major concern for the crypto industry

May 9, 2026
Add A Comment
Leave A Reply Cancel Reply

ad
What's New Here!
XRP Analyst Reveals The Question No One Asks And Why It’s Important
May 9, 2026
Second Bitcoin ETF issuer predicts BTC hitting $1M
May 9, 2026
Bollinger Bands Creator Has Just Gone All In On Bitcoin, Is $100,000 Next?
May 9, 2026
Bank of Canada to bring stablecoin rules in 2027 with US Clarity Act on the brink of stalling
May 9, 2026
It might be too late for bitcoin’s quantum migration, Project Eleven report argues
May 9, 2026
Facebook X (Twitter) Instagram Pinterest
  • Contact Us
  • Privacy Policy
  • Cookie Privacy Policy
  • Terms of Use
  • DMCA
© 2026 StreamlineCrypto.com - All Rights Reserved!

Type above and press Enter to search. Press Esc to cancel.