senior Machine Learning Engineer ic · Posted Jan 28, 2026
$193,300 – $261,500
USD per year

About this role

Amazon is hiring a senior-level Machine Learning Engineer based in Cupertino, CA. The posting calls out experience with AWS, TensorFlow, PyTorch, LLMs. Compensation is listed at $193,300–$261,500 per year.

Role
Machine Learning Engineer
Function
machine learning
Level
senior
Track
Individual contributor
Employment
Full-time
Location
Cupertino, CA
Work mode
On-site
Department
Software Development
Posted
Jan 28, 2026
AI Summary
Develop and scale a deep learning compiler for AWS custom ML hardware, converting neural network models from frameworks like PyTorch and TensorFlow into optimized code. Lead architectural design, publish research, mentor engineers, and partner with AWS ML services teams on pre-silicon design and product launches.

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Job description

from Amazon careers

The Product: AWS Machine Learning accelerators are at the forefront of AWS innovation and one of several AWS tools used for building Generative AI on AWS. The Inferentia chip delivers best-in-class ML inference performance at the lowest cost in cloud. Trainium will deliver the best-in-class ML training performance with the most teraflops (TFLOPS) of compute power for ML in the cloud. This is all enabled by cutting edge software stack, the AWS Neuron Software Development Kit (SDK), which includes an ML compiler, runtime and natively integrates into popular ML frameworks, such as PyTorch, TensorFlow and MxNet. AWS Neuron and Inferentia are used at scale with customers like Snap, Autodesk, Amazon Alexa, Amazon Rekognition and more customers in various other segments. The Team: As a whole, the Amazon Annapurna Labs team is responsible for silicon development at AWS. The team covers multiple disciplines including silicon engineering, hardware design and verification, software and operations. The AWS Neuron team works to optimize the performance of complex neural net models on our custom-built AWS hardware. More specifically, the AWS Neuron team is developing a deep learning compiler stack that takes neural network descriptions created in frameworks such as TensorFlow, PyTorch, and MXNET, and converts…

This is an excerpt. Read the full job description on Amazon careers →
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