TVS Motor invests $3.85 million in TagBox as part of Series A funding

TVS Motor, TagBox, Supply chain, IIoT, Logistics, Rajesh Narasimhan, Machine learning, BoxLens

TVS Motor Company has invested $3.85 million in TagBox, a supply chain IIoT and Machine Learning platform company as part of its Series A funding round. This round was entirely led by TVS Motor Company and its Singapore based subsidiary, TVS Motor (Singapore).

Rajesh Narasimhan, board member of TVS Motor Company and CEO of TVS Motor (Singapore), said, “We evaluated many companies providing IoT solutions in the supply chain and logistics space and found TagBox’s product offerings and solutions to be an unique blend of IoT, Machine Learning and close-loop AI. Their ability to help organisations monitor, predict and prevent SKU health risk in the supply chain is a clear differentiator. We are happy to invest in and strategically partner TagBox as they continue to pursue bottomline impact for Fortune 1000 companies by improving their supply chain processes while leveraging them for our own group businesses. Our current investment in Tagbox is part of the initial set of investments being made in strategically relevant digital startups.”

“Organisations across the globe are increasingly adopting IoT and Machine Learning solutions to improve their supply chains and operations. We are excited that TVS Motor’s worldwide operations and experiences will help make our product and value proposition stronger and highly differentiated," said Adarsh Kumar, CEO of TagBox. He added, “We have already delivered RoI from our IoT based predictive insights solutions for leading retail, e-commerce, pharma, F&B, dairy and manufacturing companies in India and APAC. We believe it is now time to scale our product globally.”

TagBox plans to use the funds to strengthen product innovation and R&D while expanding its global footprint. TagBox will continue to invest in their BoxLens and AssetLens platforms and develop new predictive analytics and automation solutions to solve various customer use cases.


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