Cloud Software Engineer - ML Infrastructure
at GraphcoreAlready Applied? Save to tracker
About the job
6 job requirements
Preview the competition
1 years GitHub experience, used daily | Must Have | |
1 years GitLab experience, used daily | Must Have | |
1 years Kubernetes experience, used daily | Must Have | |
1 years Linux experience, used daily | Must Have | |
Education level: Bachelor's degree / degree apprenticeship / Level 6 NVQ | Must Have | |
Have the right to work in United Kingdom without the need for sponsorship | Must Have |
About Graphcore
How often do you get the chance to build a technology that transforms the future of humanity? Graphcore products have set the standard in made-for-AI compute hardware and software, gaining global attention and industry acclaim. Now we are developing the next generation of artificial intelligence compute with systems that will allow AI researchers to develop more advanced models, help scientists unlock exciting new discoveries, and power companies around the world as they put AI at the heart of their business. Graphcore recently joined SoftBank Group – bringing large and ongoing investment from one of the world’s leading backers of innovative AI companies.
Job Summary
As a Cloud Software Engineer , you will play a critical role in enabling new AI accelerator hardware within Kubernetes environments. This position focuses on investigating how to integrate the new generation of our hardware into key MLOps technologies from the Kubernetes ecosystem, such as Kubeflow , Volcano , Kueue , and others. Additionally, you will be responsible for developing Go applications , ensuring a seamless and native Kubernetes end-user experience. While Kubernetes integration is the primary responsibility, this role emphasizes the importance of MLOps and machine learning (ML) knowledge to effectively support the development of K8s integration. Please be aware that this is not a DevOps position, read on for further details on the role requirements.
Responsibilities and Duties
- Investigate integration strategies for our AI accelerator hardware with MLOps technologies in the Kubernetes ecosystem, such as Kubeflow , Volcano , Kueue , and others.
- Develop and maintain applications in Go for integrating new AI accelerator hardware into Kubernetes environments.
- Ensure seamless hardware integration with Kubernetes clusters, delivering a native end-user experience.
- Participate in code reviews, design discussions, and troubleshooting sessions to enhance system reliability and performance.
- Maintain high software quality standards by following best practices.
- Write and maintain comprehensive documentation for code, projects, and integration guides.
- Stay up-to-date with the latest trends in Kubernetes, AI/ML technologies, and MLOps workflows to ensure the platform remains cutting-edge.
Skills and Experience
Essential Qualifications
- Bachelor’s degree in Computer Science, Engineering, or a related field, or equivalent experience.
- At least 3 years of experience in software development.
- Experience with machine learning technologies in the Kubernetes ecosystem, such as Kubeflow , Volcano , and Kueue.
- Familiarity with MLOps workflows and tools for deploying and managing machine learning workloads.
- Working knowledge of Go or Python programming language.
- Expertise in Kubernetes , including resource management and scaling.
- Familiarity with Linux.
- English proficiency at a B2 level.
Preferred Qualifications
- Knowledge of distributed training frameworks and techniques for scaling machine learning workloads.
- Hands-on experience with cloud platforms such as AWS, Azure, or GCP, including their machine learning services.
- Knowledge of container orchestration and cloud-native development.
- Familiarity with CI/CD pipelines and DevOps tools like GitHub or GitLab.
Benefits
Sponsorship
Applicants for this position must hold the right to work in the UK. Unfortunately at this time, we are unable to provide visa sponsorship or support for visa applications.
Graphcore
Classification:
Do your company research faster enabled by 1-click.
Details and stages
Reporting to: details unknown
the hiring process information will appear here if available.
Job ref blurredText
Posted on blurredText
Last checked on blurredText
Closing on blurredText
Understand who you are up against, now and in the future.
Total attempts: 22Unique: 10Passed: 6
Discuss this job
Share your intel on this vacancy and help others - anonymously
pretend that this is a blurredText long comment