- Version 2.0
- Sold by Mphasis
Quantum Emulator based damaged shipment classifier is a Hybrid QML image classifier designed to detect damaged shipment images.
Mphasis applies next generation technology to help enterprises transform businesses globally. Customer centricity is foundational to Mphasis and is reflected in the Mphasis FrontBack™ Transformation approach. 'Front2Back' uses the exponential power of cloud and cognitive to provide hyper-personalized digital experience to clients and their customers. Mphasis Service Transformation approach helps 'shrink the core' through application of digital technologies across legacy environments within an enterprise, enabling businesses to stay ahead in a changing world.
Quantum Emulator based damaged shipment classifier is a Hybrid QML image classifier designed to detect damaged shipment images.
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