All Updates

All Updates

icon
Filter
Partnerships
Infleqtion secures DARPA IMPAQT contract to advance quantum algorithm
Quantum Computing
Oct 10, 2023
This week:
Partnerships
Apple discloses use of AWS GenAI chips at re:Invent 2024 conference
Generative AI Infrastructure
Today
Product updates
AWS launches Automated Reasoning checks to combat AI hallucinations
Generative AI Infrastructure
Today
Product updates
Roonyx releases enhanced BNPL platform to facilitate secure transactions
Buy Now, Pay Later
Yesterday
Product updates
AWS announces next generation of SageMaker platform at re:Invent 2024
Generative AI Infrastructure
Yesterday
Product updates
Equal1 launches quantum controller chip for cryogenic computing
Quantum Computing
Yesterday
Partnerships
Exotec partners with BlueStar to deploy Skypod warehouse automation system
Logistics Tech
Yesterday
Partnerships
Amaero enters long-term supply agreement with Perryman
Additive Manufacturing
Yesterday
Product updates
Raise3D launches six new resins for DF2 DLP solution
Additive Manufacturing
Yesterday
M&A
Anzu Partners acquires voxeljet for EUR 20 million
Additive Manufacturing
Yesterday
Funding
Soda Health raises USD 50 million in oversubscribed Series B funding to scale operations
Health Benefits Platforms
Yesterday
Quantum Computing

Quantum Computing

Oct 10, 2023

Infleqtion secures DARPA IMPAQT contract to advance quantum algorithm

Partnerships

  • Colorado-based quantum hardware company Infleqtion has been awarded a Defense Advanced Research Projects Agency (DARPA) contract as part of the Imagining Practical Applications for a Quantum Tomorrow (IMPAQT) program to advance quantum algorithms for generative machine learning.

  • The project aims to advance data analysis with a focus on applications in genomics and other domains. The partnership will leverage quantum computing capabilities to model long-range correlations in various types of datasets and will co-design the algorithm implementation with the quantum hardware to maximize problem-solving capabilities. The goal is to accelerate the timeline for applications of quantum machine-learning models by optimizing the algorithm implementation with the underlying quantum hardware.

Contact us

Gain access to all industry hubs, market maps, research tools, and more
Get a demo
arrow
menuarrow

By using this site, you agree to allow SPEEDA Edge and our partners to use cookies for analytics and personalization. Visit our privacy policy for more information about our data collection practices.