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Lead Software Engineer - Python / AWS / MLOps

J.P. Morgan
City of London
1 month ago
Applications closed

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Join the Applied Artificial Intelligence and Machine Learning team as a Lead Software Engineer within Corporate and Investment Banking.

You will play a pivotal role in transforming the operations of the world's largest bank. You will collaborate with Data Scientists and Line of Business teams to integrate AI/ML solutions and develop horizontal capabilities, focusing on creating robust APIs, services, and libraries.

Job Responsibilities
  • Develop and maintain high-quality applications using Python.
  • Architect scalable and resilient cloud infrastructure solutions using AWS/Kubernetes/EKS/ECS.
  • Design and deploy solutions with MLOps best practices.
  • Collaborate with AI experts and internal teams to understand and integrate AI/ML with existing systems.
  • Mentor and guide junior team members, lead initiatives to promote best practices and automation.
  • Collaborate closely with SRE and production monitoring teams to ensure system reliability and performance.
Required Qualifications, Capabilities and Skills
  • Formal training or certification in Computer Science, Engineering, or a related field, along with strong advanced experience in key concepts.
  • Proven hands-on experience with Python and Kubernetes or ECS.
  • Proven hands-on experience with as infrastructure-as-code tools such as Terraform or equivalent.
  • Experience with cloud platforms such as AWS.
  • Ability to work independently to understand and integrate with other systems within a bank.
  • Excellent communication and collaboration skills.
Preferred Qualifications, Capabilities and Skills
  • Practical understanding of MLOPS.


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