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Machine Learning Engineer

Mastek
City of London
3 weeks ago
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Location: London, UK (3 days in office)

SC Cleared: Required

Job Type: Full-Time

Experience: 10 –15 years (Relevant exp 5+ years)


Job Summary:We are seeking an experienced Machine Learning Engineer with expertise in big programmes and has contributed to the delivery of complex business cloud solutions. The ideal candidate will have a strong background in Machine Learning engineering and an expert in operationalising models in the Databricks MLFlow environment (chosen MLOps Platform).


Responsibilities:

  • Collaborate with Data Scientists and operationalise the model with auditing enabled, ensure the run can be reproduced if needed.
  • Implement Databricks best practices in building and maintaining economic modelling (Machine Learning) pipelines.
  • Ensure the models are modular.
  • Ensure the model is source controlled with agreed release numbering.
  • Extract any hard-coded elements and parameterise them so that the model execution can be controlled through input parameters.
  • Ensure the model input parameters are version controlled and logged to the model execution runs for auditability.
  • Ensure model metrics are logged to the model runs.
  • Ensure model logging, monitoring, alerting to make sure any failure points are captured, monitored and alerted for support team to investigate or re-run
  • If the model involves running of multiple experiments and chooses the best model (champion challenger) based on the accuracy/error rate of each experiment, ensure this is done in an automated manner.
  • Ensure the model is triggered to run as per the defined schedule.
  • If the process involves executing multiple models feeding each other to produce the final business outcome, orchestrate them to run based on the defined dependencies.
  • Define and Maintain the ML Frameworks (Python, R & MATLAB templates) with any common reusable code that might emerge as part of model developments/operationalisation for future models to benefit.
  • Where applicable, capture data drift, concept drift, model performance degradation signals and ensure model retrain.
  • Implement CI/CD pipelines for ML models and automate the deployment.
  • Maintain relevant documentation.

Requirements:

  • Bachelor's degree in a relevant field.
  • Minimum of 5 years of experience as a business analyst, with a focus on capturing and documenting business requirements and business processes.
  • Strong understanding of banking and financial industry practices and regulations.
  • Solid knowledge of Data Management process, data analysis and modeling techniques.
  • Experience in monetary policy analysis (nice to have)
  • Experience in time series database analysis
  • Familiarity with business intelligence tools and concepts.
  • Strong analytical and problem-solving skills.
  • Experience in managing software development lifecycles within Agile frameworks to ensure timely and high-quality delivery.
  • Excellent communication and collaboration skills.
  • Ability to adapt to changing requirements and priorities in a fast-paced environment.

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National AI Awards 2025

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