Senior Machine Learning Engineer
Nedbank Group Technology
Requisition Details & Talent Acquisition Specialist
REQ 138363 - Keabetswe Modise
Closing Date: 30 April 2025
Information Technology
Career StreamApplication Development
Leadership PipelineManage Self Expert
Job PurposeLead the design, development, and implementation of cutting-edge analytic engines and services, leveraging extensive experience and expertise in machine learning to develop and deploy scalable models, optimize algorithms, and drive data-driven decision-making.
Job Responsibilities Develop and maintain a machine learning platform, ensuring it meets the needs of the community and stakeholders. Design and build robust inference systems, such as APIs, batch processing, and real-time streaming, to facilitate the deployment and utilization of machine learning models. Implement MLOps practices to streamline the deployment, monitoring, and management of machine learning models in production. Automate the end-to-end machine learning pipeline, from data ingestion to model deployment and monitoring. Ensure the scalability and reliability of the machine learning platform, addressing performance bottlenecks and optimizing resource usage. Utilize big data technologies such as Spark, Ray, and Dask to handle large-scale data processing and distributed computing. Leverage GPU acceleration to enhance the performance and efficiency of machine learning models, particularly for deep learning tasks. Collaborate with cross-functional teams to integrate machine learning solutions into existing systems and workflows. Contribute to the development and maintenance of documentation, tutorials, and guides for the machine learning platform. Engage with the data science community, participating in discussions, code reviews, and contributions to foster collaboration and innovation. Spearheaded best-in-class statistical models and algorithms, building upon previous experiences and learnings. Conduct in-depth statistical analysis to extract valuable insights and patterns from complex datasets, contributing to data-driven decision-making. Offer actionable insights and advice to stakeholders, utilizing a solid foundation in AI/ML and contributing to the team's expertise. Contribute to the creation of value from enterprise-wide data, assisting in the translation of data into meaningful business solutions. Experienced in deploying or contributed to deployment of at least one end-to-end data science solution that has yielded significant value in the organization at an enterprise level. Contribute to the shaping of the organization's AI/ML strategy, aligning it with evolving business needs. Assist in transforming data science prototypes into scalable machine learning solutions for deployment. Collaborate with experienced team members to design dynamic ML models and systems, incorporating the capability for adaptability and retraining. Participate in periodic evaluations of ML systems, ensuring they align with corporate and IT strategies. Expert proficiency in programming tools (such as Python, R, etc.) for data manipulation, statistical analysis, and machine learning tasks is essential. Demonstrate a profound command over computer science fundamentals, encompassing expert-level knowledge of data structures, algorithms, computability and complexity, and computer architecture. Utilize machine learning algorithms and libraries effectively, following established best practices and guidelines. Communicate technical concepts effectively to diverse audiences, adapting explanations for non-programming experts. Stay informed about the latest tools and techniques, engaging in continuous learning to enhance skills and knowledge. Proficiency in cloud computing and hands-on experience with deploying complex data science projects on cloud platforms. Collaborate with the team, sharing ideas and insights while conducting experiments and researching best practices. Seek opportunities for personal growth and development, actively participating in knowledge-sharing and mentorship. Contribute to the achievement of the business strategy, objectives, and values, contributing to the organization's success. Essential Qualifications - NQF Level Advanced Diplomas/National 1st Degrees Matric / Grade 12 / National Senior Certificate Preferred Qualification STEM Qualification Engineering, Computer Science, Econometrics, Mathematical Statistics, Actuary Science Masters or Doctorate will be an added advantage Preferred Certifications Cloud (Azure, AWS), DEVOPS or Data engineering certification. Any Data Science certification will be an added advantage, Coursera, Udemy, SAS Data Scientist certification, Microsoft Data Scientist. Minimum Experience Level MS/PhD in STEM or related technical discipline 7 years’ plus experience in a data science or software engineering role. Deep knowledge of machine learning, statistics, optimization or related field. Knowledge of Graph Database technology will be a major advantage Excellent written and verbal communication skills along with strong desire to work in cross functional teams. Attitude to thrive in a fun, fast-paced start-up like environment Technical / Professional Knowledge Data Mining Data analysis Statistical Analysis Supervised Learning Big Data Technologies Unsupervised Learning NLP Deep Learning Feature Engineering/Selection HyperParameter Tuning Programming Model Deployment/Monitoring MLOps API Development Inference Systems GPU Utilization Distributed Computing (Spark, Ray, Dask) Automation of ML Pipelines Scalability and Reliability Engineering Cloud Computing Documentation and Tutorials Development Graph Databases PostgreSQL, Redis Behavioural Competencies Decision Making Innovation Technical/Professional Knowledge and Skills Customer Focus Applied Learning Improvement Continuous Improvement---------------------------------------------------------------------------------------
Please contact the Nedbank Recruiting Team at +27 860 555 566
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