Experience the Covariant Brain's vision. Our Robotic Foundation Model, trained on data from real-world warehouse operations and simulated scenarios, enables our robots to identify objects, understand 3D spaces, and predict optimal grasping and placement.
Covariant
Software Development
Berkeley, CA 24,899 followers
The future of automation, today. AI-first robotics delivering guaranteed performance starting on Day 1.
About us
Our mission is to build the Covariant Brain, a universal AI to give robots the ability to see, reason and act on the world around them. Bringing AI from research in the lab to the infinite variability and constant change of our customer’s real-world operations requires new ideas, approaches and techniques. Success in the real world requires a team that represents that world: diversity of backgrounds, points of view, and experiences. Our common denominator: ambitious expectations, love of learning, empathy for those around us, and a team-first mindset.
- Website
-
http://covariant.ai/
External link for Covariant
- Industry
- Software Development
- Company size
- 51-200 employees
- Headquarters
- Berkeley, CA
- Type
- Privately Held
- Founded
- 2017
Locations
-
Primary
Berkeley, CA 94710, US
Employees at Covariant
Updates
-
Five years of groundbreaking teamwork. Our partnership with KNAPP has yielded 26 global customers and dozens of live robotic stations operating on 3 continents. “We decided to run some tests together and challenge Covariant’s artificial intelligence. The results were very impressive. That’s why we decided to partner and combine our robot and logistics expertise with Covariant’s AI,” - Peter Puchwein, Vice President of Research & Development at KNAPP Read the press release: https://lnkd.in/ehqnjzUn
-
Covariant reposted this
🎉We are pleased to announce the extension of our partnership with Covariant. AI opened up new possibilities for using robotics in logistics applications.🚀 The Pick-it-Easy Robot underlines the commitment we have made to technological excellence and provides an effective solution for the labor shortage. Find here the current press release: https://lnkd.in/g_ZQnV5b #AI #makingcomplexitysimple #pickiteasyrobot
-
Covariant reposted this
Unloading the pallets. 🗃️ These robots will handle all the pallets. People often talk about palletization, and much less about depalletization - that is, unloading individual SKUs from a pallet and placing them on a conveyor belt. Can robots do it faster than humans? Yes, it achieves an amazing performance of up to 1,200 cases per hour (ca. 10,000 a shift!). 💨 It also guarantees punctual replenishment of storage and pick zones. Covariant Brain-enabled robots can handle mixed, rainbow, or single pallets. Thanks to AI Brain they learn over time and share good practices over the entire robot network – which leads to real-time improvements. This is a very non-ergonomic process for a human operator. Using AI-enabled robots from Covariant reduces strain and injuries on associates. 🚧 Efficient, safety-improving & adaptive! Also, great to see FANUC Europe robots in action! Congrats to Peter Chen & Covariant team! 🖤 ~~~ ♻️ Repost to help 1 robot find a new workplace.
-
"This is a game changer for us" - Kay Schiebur, Board Member for Service at Otto Group, tells LOGISTIK HEUTE "We have a very complex application here. The robot takes the goods to be picked from a mixed container with a wide variety of items without knowing the type of items and the sequence beforehand. It adapts to many unpredictable dynamics and can pass on its learning successes to all other robots at different locations via the Covariant Brain. This means they then also have these new skills immediately."
-
Bloomberg has just released their second annual AI leaderboard, recognizing Covariant alongside AI innovators and industry leaders like OpenAI, Anthropic, Perplexity, Scale AI, and Cohere. We're honored to be featured as the leading company pioneering AI for the physical world, and remain motivated to transform industries through intelligent robotic automation. https://lnkd.in/gNbG72PN