
EnCharge AI
A leader in advanced AI hardware and software systems for edge computing.
Date | Investors | Amount | Round |
---|---|---|---|
- | investor | €0.0 | round |
investor | €0.0 | round | |
investor investor investor investor investor investor investor | €0.0 | round | |
investor investor investor investor investor investor investor investor | €0.0 | round | |
investor | €0.0 | round | |
* | $100m | Series B | |
Total Funding | 000k |
Related Content
EnCharge AI is a pioneering company in the field of artificial intelligence (AI) computation, focusing on delivering high-efficiency and sustainable AI solutions from the Edge to the Cloud. The company serves a diverse range of clients, including businesses that require advanced AI capabilities without being constrained by power, space, or cost limitations. Operating in the AI hardware and software market, EnCharge AI leverages its expertise in semiconductor design and AI systems to provide scalable and robust analog in-memory computing solutions. The business model revolves around the development and sale of AI hardware, such as chiplets, ASICs, and PCIe cards, as well as flexible software for seamless integration across various platforms. EnCharge AI generates revenue through the sale of these products and potentially through licensing its technology and intellectual property. The company stands out for its commitment to sustainability, boasting significantly lower CO2 emissions and total cost of ownership (TCO) compared to traditional AI computation methods. EnCharge AI's leadership and engineering team bring over 20 years of groundbreaking innovations in AI hardware, software, and algorithms, with a proven track record of 350 million chips shipped, 150 patents granted, and 300 technical publications. The company's core technology integrates seamlessly into the existing semiconductor supply chain, enabling unprecedented AI capabilities for its partners and customers. EnCharge AI envisions a future where advanced AI is democratized, making it accessible and economically viable to tackle significant human challenges sustainably.
Keywords: AI computation, Edge to Cloud, analog in-memory computing, semiconductor design, scalable AI, sustainable AI, chiplets, ASICs, PCIe cards, low CO2 emissions.