Download PDF
Malong
Unlock the unlimited potential of Artificial Intelligence
Overview
HQ Location
China
Year Founded
2014
Company Type
Private
Revenue
NA
Employees
51 - 200
Website
Company Description
Malong Technologies is an award-winning Artificial Intelligence company whose mission is to empower developers and businesses with the most accurate visual product recognition technologies available on the market. The company is the maker of ProductAI®, which offers visual product recognition at human-like performance to any customer via a Public Cloud platform (productai.com), Private Cloud, or embedded module hardware for IoT scenarios.
ProductAI is based on cutting-edge deep learning and computer vision R&D, developed by an elite team of scientists and engineers hailing from Microsoft Research, Google and Oxford's famed VGG lab. Product recognition with industry-leading accuracy is now accessible to any developer for pennies on the dollar.
In 2014, the company, known as “Malong” in China, was founded by Matthew Scott and Dr. Dinglong Huang. Prior to co-founding, Dr. Dinglong Huang, CEO, was a VP at TripAdvisor, with previous experience at Google and Microsoft. Matthew Scott, CTO, was a senior technical staff member of Microsoft Research, with 15+ years R&D experience in computer vision and Machine Learning.
In 2015, the company graduated with honors from the Microsoft Ventures Startup Accelerator, won the first “AI Pioneer” award from Microsoft in 2016 and received other top tier awards for its AI technology from Amazon and NVIDIA. In 2017, Malong achieved a technical breakthrough in semi-supervised deep learning and used it to outperform over 100 AI teams from around the world and win the WebVision Challenge from Google, ETH Zürich and CMU, held in conjunction with CVPR, the premier annual computer vision scientific conference. The company has raised over $10 million in VC funding.
ProductAI is based on cutting-edge deep learning and computer vision R&D, developed by an elite team of scientists and engineers hailing from Microsoft Research, Google and Oxford's famed VGG lab. Product recognition with industry-leading accuracy is now accessible to any developer for pennies on the dollar.
In 2014, the company, known as “Malong” in China, was founded by Matthew Scott and Dr. Dinglong Huang. Prior to co-founding, Dr. Dinglong Huang, CEO, was a VP at TripAdvisor, with previous experience at Google and Microsoft. Matthew Scott, CTO, was a senior technical staff member of Microsoft Research, with 15+ years R&D experience in computer vision and Machine Learning.
In 2015, the company graduated with honors from the Microsoft Ventures Startup Accelerator, won the first “AI Pioneer” award from Microsoft in 2016 and received other top tier awards for its AI technology from Amazon and NVIDIA. In 2017, Malong achieved a technical breakthrough in semi-supervised deep learning and used it to outperform over 100 AI teams from around the world and win the WebVision Challenge from Google, ETH Zürich and CMU, held in conjunction with CVPR, the premier annual computer vision scientific conference. The company has raised over $10 million in VC funding.
IoT Snapshot
Malong is a provider of Industrial IoT analytics and modeling technologies, and also active in the food and beverage, and retail industries.
Technologies
Use Cases
Industries
Technology Stack
Malong’s Technology Stack maps Malong’s participation in the analytics and modeling IoT Technology stack.
-
Devices Layer
-
Edge Layer
-
Cloud Layer
-
Application Layer
-
Supporting Technologies
Technological Capability:
None
Minor
Moderate
Strong
Similar Suppliers.
Supplier
COGNEX
Cognex Corporation is the world leading provider of vision systems, vision software, vision sensors and surface inspection systems used in manufacturing automation. Cognex is also a leader in industrial ID readers.Cognex vision helps companies improve product quality, eliminate production errors, lower manufacturing costs, and exceed consumer expectations for high quality products at an affordable price.
Supplier
Placemeter
Placemeter uses public video feeds and computer vision algorithms to create a real time data layer about places, streets, and neighborhoods. They use computer vision at a massive scale, on a large number of rich and ubiquitous video feeds, to understand what is going in in the physical world in real time. They measure how busy places are, what people do, how fast cars go, and much more. They offer that data to developers, citizens, cities, and retailers, radically changing the way they interact with the physical world.