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Job details
Company
semron
Location
Dresden, Germany
Employment type
Full-time
Seniority
Mid level
Primary category
Machine Learning & AI
Secondary category
Higher Education & Research
Posted date
20 Feb 2024
Valid through
20 Apr 2024
Job description
About the Role
As an ML Research Engineer at SEMRON, you will design the algorithms and quantization schemes that unlock efficient, high-accuracy inference on our analog in-memory compute platform. Your work will bridge cutting-edge quantization research, mathematical modeling, and hardware-aware algorithm design, ensuring that deep neural networks execute with maximal accuracy and throughput on our custom silicon.What you will do:
- Research and develop novel analog-aware quantization methods (PTQ and QAT) tailored to in-memory compute constraints
- Design mathematically principled matrix-vector multiplication algorithms that exploit sparsity, noise resilience, and non-idealities to improve hardware efficiency
Collaborate with analog hardware engineers to define algorithmic requirements and guide co-development of compute primitives
What you should bring in:
- PhD or equivalent research experience in machine learning, applied mathematics, or a related field
- Strong understanding of quantization, model optimization, and numerical methods for DNNs
- Proficiency in Python and PyTorch, with the ability to rapidly prototype and evaluate research ideas
- A research mindset: curiosity, rigor, and the ability to explore and discard ideas efficiently
Helpful but not required:
- Contributions to quantization libraries or novel compression methods
- Publications in top-tier ML venues (NeurIPS, ICLR, ICML, etc.)
- Familiarity with analog computation challenges (noise, nonlinearity, limited precision, etc.) and the ability to abstract them into robust algorithms
- Experience collaborating with hardware teams or formulating algorithm-hardware co-design strategies