Machine Learning Software Technology Manager

ARM
Cambridge
1 year ago
Applications closed

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Job Description

Job Overview:

As a Software Technology Manager, you will work with Arm's key customers to define and prioritise requirements for software enablement and optimization and to develop strategies to deliver them working within Arm and our software ecosystem!

 

Our Machine Learning group is our centre of excellence for all AI and ML on Arm's CPUs, GPUs, and dedicated accelerators. You will be part of our team of technology managers who are addressing the growing demand for Machine Learning on Arm technology.

 

We are responsible for the roadmap and vision for our software development, configuration, optimization, plus productisation and delivery activities. We develop strategies around new and existing software components to support Arm's products.

 

We gather use-cases and requirements for how software solutions can fulfil the needs of complex systems. We engage with open-source communities and communicate the opportunities of open-source software. We create product plans to ensure Arm's software solution products are successfully deployed to our partners across multiple market segments. Our knowledge of software communities, development practices and release methodologies enable us to match the lifecycle of our hardware products to build and deliver complete product solutions.

 

We work closely with Project Managers, Architects, Engineering Leads and Product M...

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