Thursday, December 5, 2024
HomeRecent ArticlesDecart Secures $21 Mn in Seed Funding Round

Decart Secures $21 Mn in Seed Funding Round

Israel-based Decart has secured $21 million in a Seed funding round led by Sequoia Capital, with participation from Oren Zeev.
Decart Founders

Israel-based Decart has secured $21 million in a Seed funding round led by Sequoia Capital, with participation from Oren Zeev.

Read also – ADB, Canvest Sign $50 Mn Deal to Support Waste-to-Energy in PRC

Decart’s efficient systems-level AI infrastructure enables a tenfold improvement in training and inferencing of the generative models. Leveraging these capabilities, Decart can train its foundational generative interactive models and make them accessible to everyone in real time.

Read also – ADB to Help Improve Agricultural Productivity, Irrigation in Nepal

“Decart’s journey has been unconventional from the outset—and we are executing a game-changing platform that maximizes AI training efficiency for organizations,” said Dean Leitersdorf, Co-Founder and CEO of Decart. “With this new funding, we take our vision to the next level – doubling down on our business momentum and technical expertise to usher in a new era of generative experiences and unlock possibilities that were once only imagined.”

Sequoia helps daring founders build legendary companies from idea to IPO and beyond. It aims to be the first true believers in tomorrow’s most valuable and enduring businesses.

Sequoia partners with a few outliers each year and goes all-in, providing them with the hands-on help required at every stage of the company-building journey, and its expertise comes from 50 years of working with legendary founders like Steve Jobs, Larry Page, Jan Koum, Adi Tatarko, Brian Chesky, Jensen Huang, Anne Wojcicki, Eric Yuan, Patrick Collison, Julia Hartz, and Sebastian Siemiatkowski. 

About Decart

Founded by Dean Leitersdorf (CEO) and Moshe Shalev (CPO) in 2023, Decart has built an AI infrastructure platform that enhances the efficiency of AI models, offering faster and more reliable training as well as real-time inference.

- Advertisement -
RELATED ARTICLES
- Advertisment -

Most Popular