As an ML Engineer at SEMRON, you will be responsible for developing the training infrastructure that enables models to run efficiently on our novel analog in-memory compute platform. A core part of this work is designing a geo-distributed Quantization-Aware Training (QAT) framework that allows the machine learning community to collectively contribute compute resources, enabling them to quantize their favorite models and make them compatible with SEMRON’s hardware.

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