TM Machine learning 70

  • Full-time

Company Description

  • Define, implement and manage test automation tools, frameworks and methodologies promoting an automation-first approach across all Quality Assurance activities.
  • Foster and promote a QA Engineering approach, uplifting automation capabilities across the QA team as well as within projects and delivery squads.
  • Define appropriate levels of test automation coverage for new initiatives as well as BAU activities, leading a team of QA Analysts in delivering maintainable and robust automated suites.
  • Promote and foster a ‘shift-left’ approach to QA, demonstrating QA value across design and delivery of solutions.
  • Estimate test automation efforts including resources, licensing and infrastructure required.
  • Work closely with the DevOps practice to embed automated testing in CI/CD pipelines, enabling faster delivery cycles whilst ensuring quality of releases.
  • Actively manage Test Automation tools to ensure frameworks leverage modern QA practices.
  • Mentor and guide a team of QA Analysts in delivering test automation work on time and on budget.
  • Leverage automation tools to generate test data, setup and validate environments.
  • Be a champion for automation and agile ways-of-working, continuously identifying new automation opportunities, managing an automation backlog.
  • Conduct peer reviews of development work.
  • Playing an active role in establishing and maturing the RMIT QA Community of Practice.
  • Assist the QA Manager for Ad Hoc testing duties.

 

    Job Description

    We are looking for a skilled Machine Learning Engineer to design, develop, and deploy scalable machine learning models that solve real-world business problems. The ideal candidate will work closely with data scientists, software engineers, and product teams to build intelligent, data-driven systems.

    Key Responsibilities

    • Design, build, and deploy machine learning models and pipelines

    • Analyze large datasets to extract insights and improve model performance

    • Develop and maintain data preprocessing, feature engineering, and model evaluation workflows

    • Optimize models for performance, scalability, and reliability

    • Integrate ML models into production systems and APIs

    • Monitor model performance and retrain models as needed

    • Stay up to date with the latest machine learning techniques and tools

    Required Skills & Qualifications

    • Bachelor’s degree in Computer Science, Data Science, Engineering, or a related field

    • Strong understanding of machine learning algorithms (supervised, unsupervised, deep learning)

    • Proficiency in Python and ML libraries (TensorFlow, PyTorch, Scikit-learn)

    • Experience with data processing tools (Pandas, NumPy)

    • Knowledge of SQL and data storage systems

    • Understanding of model evaluation metrics and validation techniques

    Additional Information

    All your information will be kept confidential according to EEO guidelines.

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