ABR has designed an innovative chip, the ABR TSP (Time Series Processor - https://appliedbrainresearch.com/products/tsp/ ), for speech recognition, natural language processing, and any other time series data. The TSP has the goal of delivering cloud-quality time-series inference for use in sensor data processing and dialog systems implementations at the edge. For speech processing, ABR's TSP will run BERT-sized NLP models at less than 60 mW SoC level power. Device makers can deliver low-power, low-latency, low-cost, real-time voice interfaces that save costs over CPUs and GPUs. For the same price as a keyword spotter chip, the TSP can move speech interactions to natural conversation from keyword-spotting, increasing customer satisfaction. For IoT uses, the TSP delivers larger models comparable with CPUs and GPUs, for less cost and with more accuracy and lower latency than using an MPU. ABR's TSP implements ABR's patented Legendre Memory Unit (LMU) algorithm which enables smaller ASR and NLP models. We will discuss ABR's LMU algorithm and the uses of the TSP chip for edge NLP and ASR, with examples.
Peter Suma
Peter is a co-CEO of Applied Brain Research Inc. Prior to ABR, Peter led start-ups in robotics and financial services as well as managed two seed venture capital funds. Peter holds degrees in systems engineering, science, law and business.