DevOps Engineer

Third Republic
London
1 year ago
Applications closed

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Job Title:DevOps Engineer(interest in ML a plus) 
Location:Remote (UK) 
Salary:up to £75,000 + equity.

Role: We are currently seeking a skilled engineer to join our team and contribute to the build, deployment, and machine learning pipelines. This role is an excellent opportunity for individuals with DevOps experience looking to explore machine learning or for machine learning engineers passionate about shipping code.

Responsibilities:

Implementing and enhancing CI/CD pipelines for optimal performance. Taking ownership of features within our HDAS product and internal tooling. Utilizing infrastructure as code technology to deploy, manage, and run high-quality products. Proactively suggesting and implementing process improvements within and beyond the team. Advocating for quality and testing automation practices within the team. Effectively communicating product features to non-technical colleagues. Continuous learning and skill development.

Qualifications:

Experience with AWS services (EC2, Lambda), PyTorch, Cuda, TensorFlow, Sagemaker, and other machine learning technologies. Proficiency in programming languages such as C++ and Python. Familiarity with API Gateway, Step Functions, Terraform, Github Actions, DVC, Git, Ansible, Linux, Bash (and Zsh), and PyTest. Strong problem-solving skills and ability to work independently. Comfortable giving and receiving constructive feedback.

What's in it for You:

Collaborative work environment with a diverse team of engineers, social scientists, and commercial professionals. Influence in shaping company operations. Personal development budget of £350/yr. Pension scheme. 25 days holiday per annum + bank holidays. Flexible working hours and the option to work remotely. 26 weeks paid maternity/paternity leave. Cycle to Work scheme. "Work where you work best" policy - choose between remote or office work.

How to Apply:If you are excited about contributing to groundbreaking technology and believe this role is the right fit for you, we would love to hear from you! Please submit your resume.. We are an Equal Opportunity Employer and encourage applicants from all backgrounds to apply. Come as you are.

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