Uneek Global is a fast-growing, AI-driven company building real-time ad infrastructure and personalized commerce platforms. They are seeking a Senior Machine Learning & Data Platform Engineer to build the production-grade ML infrastructure that powers intelligent decision-making across the platform.
Responsibilities:
- Designing and building the machine learning platform that powers optimisation, personalisation, and decisioning across the business
- Developing production ML models for CTR prediction, conversion prediction, ROAS optimisation, dynamic bidding, pricing, and recommendation systems
- Building scalable feature engineering pipelines and reusable feature stores for both real-time and batch inference
- Creating automated MLOps workflows covering training, deployment, monitoring, evaluation, and retraining
- Analysing large-scale commerce, advertising, and customer datasets to improve prediction accuracy and business outcomes
- Designing and running online experiments and A/B tests to measure model effectiveness
- Developing optimisation algorithms focused on objectives including CTR, CPC, CPA, ROAS, sales lift, customer acquisition, and lifetime value
- Building low-latency APIs and services that deliver real-time predictions at scale
- Driving best practices around model governance, experimentation, observability, and versioning
- Collaborating closely with Product, Engineering, Data, and Ad Operations teams to embed ML into core platform capabilities
Requirements:
- 5+ years building production machine learning systems, data platforms, or large-scale analytics infrastructure
- Strong Python and SQL skills
- Proven experience deploying machine learning models into production environments
- Hands-on experience with frameworks such as TensorFlow, PyTorch, scikit-learn, XGBoost, or LightGBM
- Experience building feature engineering pipelines and training datasets from large-scale event data
- Strong understanding of recommendation systems, ranking models, predictive analytics, optimisation, experimentation, and statistical modelling
- Experience with distributed data technologies such as Spark, Databricks, Kafka, or similar platforms
- Strong MLOps experience including model versioning, experiment tracking, monitoring, and automated retraining
- Familiarity with cloud-native infrastructure, Kubernetes, containers, and scalable API development
- Experience within ad tech, retail media, e-commerce, or recommendation engines
- Experience optimising towards metrics such as CTR, CPC, CPA, ROAS, incrementality, or lift
- Experience with feature stores, MLflow, vector databases, or real-time inference systems
- Exposure to reinforcement learning, multi-armed bandits, learning-to-rank, or dynamic pricing algorithms
- Experience working with clickstream, purchase, POS, or identity graph data
- Experience building personalisation or recommendation systems at scale