Software Engineer - ML Developer Tools

Cambridge
3 days ago
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Job Overview:
Arm-based hardware is deployed everywhere computing happens, from the cloud to the edge. It is essential that software developers have intuitive tools to take advantage of this hardware.

 

In the Developer Platforms group, our mission is to make software development on the Arm architecture simple and intuitive. We are growing our team and are looking for a passionate software engineer to help us build the next generation of machine learning experiences for developers.

 

 

Responsibilities:

Work as part of a diverse team to design, deliver and refine the tools and experiences required to support machine learning development on Arm processors.

Solve diverse technical problems requiring creative thinking and dynamic approaches.

Form effective relationships with other engineers, product managers and UX specialists to enable collaboration and best understand and empower our users.

Engage with our agile planning and development processes to help craft delivery of our products.

Demonstrate quality through unit testing and continuous integration.

Required Skills and Experience :

We are seeking an experienced engineer with the following skills:

Proficiency with the basics of modern, effective software development: source control, automated testing, CI/CD, object-oriented or functional paradigms, containerisation and Agile methodologies.

Demonstrable experience delivering web or desktop apps and services.

A result-driven, "get things done" approach to shipping high-quality, robust software which is maintainable and responsive to evolving requirements.

A passion to push forward the state of the art in developer tooling by embracing new technologies and continually innovating.

 

“Nice To Have” Skills and Experience :

Any experience with the technologies listed below is beneficial, however, a desire to learn is far more valuable than experience in any tool, and we actively support ongoing training.

Experience with ML frameworks and tools to design, train and deploy machine learning models or (e.g. PyTorch, TensorFlow, ONNX, TensorRT).

TypeScript (browser, server, and client) - Node.js, Electron, React, Visual Studio Code extensions.

API and service development (e.g. web services, linux services).

In Return:

You will join an established and experienced team working with innovative technologies on greenfield software products which ship with new Arm hardware on day one.

Our team interacts with many technical areas, including frontend development, CI, Linux, and Machine Learning. You will have lots of opportunities to learn new things in the ML space.

Accommodations at Arm

At Arm, we want our people to Do Great Things. If you need support or an accommodation to Be Your Brilliant Self during the recruitment process, please email . To note, by sending us the requested information, you consent to its use by Arm to arrange for appropriate accommodations. All accommodation requests will be treated with confidentiality, and information concerning these requests will only be disclosed as necessary to provide the accommodation. Although this is not an exhaustive list, examples of support include breaks between interviews, having documents read aloud or office accessibility. Please email us about anything we can do to accommodate you during the recruitment process.

Hybrid Working at Arm

Arm’s approach to hybrid working is designed to create a working environment that supports both high performance and personal wellbeing. We believe in bringing people together face to face to enable us to work at pace, whilst recognizing the value of flexibility. Within that framework, we empower groups/teams to determine their own hybrid working patterns, depending on the work and the team’s needs. Details of what this means for each role will be shared upon application. In some cases, the flexibility we can offer is limited by local legal, regulatory, tax, or other considerations, and where this is the case, we will collaborate with you to find the best solution. Please talk to us to find out more about what this could look like for you.

Equal Opportunities at Arm

Arm is an equal opportunity employer, committed to providing an environment of mutual respect where equal opportunities are available to all applicants and colleagues. We are a diverse organization of dedicated and innovative individuals, and don’t discriminate on the basis of race, color, religion, sex, sexual orientation, gender identity, national origin, disability, or status as a protected veteran

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