Machine Learning Engineer - Data & Analytics

Matific

Description

ABOUT MATIFIC

Matific is a leading global EdTech provider, delivering an adaptive online learning platform for primary school mathematics. With our product being utilised by millions of students, teachers and parents in 100+ countries we are helping educate the youth and bring equality to education. With over $50M USD invested and a global team of over 200+ employees, we are committed to achieving our goals. We’ve also picked up a number of awards including numerous CODiEs, Academics’ Choice and Edtech Digest to name a few.

THE ROLE

We are seeking a skilled Machine Learning Engineer to join our team. This role involves end-to-end ownership of the machine learning lifecycle — from model design and development to scalable deployment and monitoring in production. You will play a key role in developing high-impact ML solutions and ensuring their reliability and performance on our platform. This role combines deep ML research with strong engineering and MLOps practices to bring state-of-the-art models from concept to production.

KEY RESPONSIBILITIES

  • Design, develop, and train robust machine learning models, with a focus on transformer-based architectures, large language models (LLMs), and multimodal systems.
  • Conduct applied research and experimentation in cutting-edge areas such as agentic AI, few-shot learning, tool-use capabilities and prompt engineering.
  • Conduct data exploration, feature engineering, and experimentation to optimize model performance, leveraging SQL for large-scale data analysis and extraction.
  • Lead cloud-based deployment and operationalization of ML models, primarily on AWS.
  • Build and maintain automated CI/CD pipelines tailored for ML workflows, including data validation, model versioning, testing, and rollout.
  • Monitor model performance in production, implement retraining strategies, and manage model drift.
  • Scale ML pipelines and inference systems to handle large datasets and high-throughput environments efficiently.
  • Collaborate closely with data scientists, software engineers, and product teams to integrate ML solutions into customer-facing products and internal systems.
  • Drive best practices in ML system design, model reproducibility, and responsible AI.
  • Stay current with emerging trends, tools, and techniques in machine learning, deep learning, and MLOps.

Requirements

Bachelor's degree in computer science, Data Science, or a related field. Advanced degrees preferred.

Minimum of 2 years of hands-on experience in machine learning, with a demonstrable portfolio of projects.

Deep Learning: Familiarity with neural network architectures, including CNNs, RNNs, and Transformers.

Proficiency in SQL and data analytics—able to query, transform, and analyze large datasets to support modelling and decision-making.

Experience working with platforms such as Kubeflow in managing ML experiments is an added benefit.

Strong skills in evaluating, fine-tuning, and scaling ML models in real-world production settings.

Proficient in ML frameworks and languages such as TensorFlow, PyTorch, and Python.

Exceptional problem-solving skills, analytical mindset, and attention to detail.

Excellent communication skills, both verbal and written.

Benefits

A business with a strong purpose: to provide quality education to children everywhere

A fast and exciting scale-up environment

Work in the booming Edtech industry

Collaborate closely with seasoned, successful entrepreneurs from around the world

Opportunity to innovate and challenge the status quo

Great remuneration, paid in USD

A fun-loving office environment with full facilities for tech professionals at One Galle Face Office Tower

Comprehensive insurance coverage for you and your family, ensuring your health and well-being

Flexibility to support a healthy work-life balance

Access to continuous learning opportunities to enhance your skills and grow your career

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Confirmed 7 hours ago. Posted 24 days ago.

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