Blumind reimagines AI processing with breakthrough analog chip
Toronto-based developers tackle monster power demands of processing neural networks
By Stephen Law, EP&T | March 31, 2025
Toronto-based Blumind Inc. is making waves in the semiconductor world with a bold new approach to artificial intelligence (AI) processing. The startup has developed a processor designed using analog neural networks—a departure from traditional digital Von Neumann-based architectures that dominate today’s AI workloads. By leveraging analog computation, Blumind’s chip development promises significant gains in efficiency, speed and power consumption, offering a compelling alternative for AI-driven applications ranging from edge devices to large-scale data centres.
Could this Canadian innovation redefine the way AI models are trained and deployed? Well, based on recent achievements of the firm’s co-founder Niraj Mathur, Blumind is on the fast-track.
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