The massive computing resources required to train neural networks for AI/ML tasks has driven interest in two forms of learning presumed to be more efficient: transfer learning and incremental learning. Experts at BrainChip Holdings Ltd (ASX: BRN), (OTCQX: BRCHF), a leading provider of ultra-low power high performance artificial intelligence technology, offered the following insight and considerations for their use in edge AI/IoT environments. In transfer learning, applicable knowledge established in a previously trained AI model is “imported” and used as the basis of a new model. After taking this shortcut of using a pretrained model, such as an open-source image or NLP dataset, new objects can be added to customize the result for the particular scenario.
AMI Awarded $2M Grant from Florida Department of Commerce to Deploy Smart Manufacturing Lab
TALLAHASSEE, FL – Advanced Manufacturing International (AMI) has been awarded a $2M grant