Head of Software Engineering

Fimador
Greater London
2 months ago
Applications closed

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Head of Software Engineering | £150k – Java, Machine Learning, and Data-Driven Innovation

Head of Software Engineering | £150k – Java, Machine Learning, and Data-Driven Innovation

Staff Data Scientist Data and Insights · London

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Staff Data Scientist

Software Engineer

Head of Software Engineering

Fimador is seeking a highly skilled and experienced Head of Software Engineering to lead and drive the development of next-generation solutions for a highly successful SaaS firm. This role requires a strong blend of technical expertise, leadership, and strategic thinking to spearhead innovation within our value stream. The successful candidate will be happy to participate in active coding while guiding a full-practice engineering team in delivering high-performance, cloud-native solutions.

Key Responsibilities:

  • Lead and mentor a team of 7-10 engineers, fostering a culture of innovation, collaboration, and continuous improvement.
  • Drive the design and development of a workflow solution that handles complex calculations and integrates with a data intelligence and data lakehouse.
  • Architect and develop cloud-native solutions on AWS, ensuring high availability, security, and scalability.
  • Oversee the integration of Gen AI capabilities into the product to enhance automation and intelligence.
  • Develop and maintain REST APIs, ensuring seamless communication between services.
  • Manage YAML splits to facilitate configuration and deployment automation.
  • Collaborate with cross-functional teams, including Product Management and Data Science, to align technology solutions with business objectives.

Required Skills & Experience:

  • Extensive experience building cloud-based SaaS solutions, particularly on AWS.
  • Hands-on experience with Databricks, data intelligence, and data lakehouse architectures.
  • Proven ability to lead an engineering team and deliver high-impact solutions.
  • Knowledge of Gen AI and its application within cloud-based platforms.
  • Expertise in performance optimization and scalable cloud architecture.

Seniority level

Director

Employment type

Full-time

Job function

Information Technology

Industries

Software Development

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