As a
Data Scientist
, you will play a pivotal role in building and scaling machine learning solutions that drive product intelligence and data-informed decision-making across SiteMinder. You will work closely with Principal Data Scientists and the Core Data Lab team to develop, validate, and productionise models that deliver real business impact. In collaboration with Engineering, you will focus on integrating models into products and tackling complex data science challenges related to prediction, recommendation, and optimisation.
What you ll do
-
Design and develop end-to-end ML solutions
from data exploration and feature engineering to model training, validation, and deployment. -
Collaborate cross-functionally
with engineers, analysts, and product teams to integrate predictive and recommendation models into customer-facing and internal applications. -
Implement scalable ML pipelines
using Databricks, PySpark, and Delta Lake, ensuring reproducibility, performance, and maintainability. -
Run controlled experiments
(A/B tests, uplift modelling, causal inference) to measure model performance and quantify business impact. -
Operationalise models
through CI/CD and MLOps best practices, including model versioning, monitoring, retraining strategies, and governance. -
Monitor production systems
for drift, performance degradation, and anomalies, applying explainability and fairness techniques where needed. -
Contribute to the development of feature stores
and reusable data assets to accelerate experimentation and deployment cycles. -
Stay current with emerging trends
in ML, MLOps, and cloud data technologies to continuously improve model accuracy, scalability, and efficiency.
What you have
-
5+ years of hands-on experience applying
machine learning and statistical modelling
in production or product
-oriented environments. -
Proven understanding of the
full spectrum of ML techniques
from traditional models
(linear/logistic regression, tree-based methods, ensemble learning) to modern deep learning architectures
(CNNs, RNNs, transformers, graph neural networks, diffusion and foundation models). -
Strong experience in Python, with proficiency in Scikit-learn, Autogluone,
PyTorch
or TensorFlow
, and PySpark
MLlib. -
Demonstrated ability to design scalable ML pipelines and automate workflows with
MLOps tools
(MLflow, Kubeflow, Databricks
ML runtime, AWS Sagemaker, or AWS Bedrock). -
Familiarity with retrieval-augmented generation (RAG) and fine-tuning of large language models is a plus.
-
Proficiency in SQL and distributed data frameworks, with experience in feature engineering at scale.
Nice to Have
-
Familiarity with real-time ML applications, such as online learning, streaming inference, or live recommendations.
-
Exposure to forecasting, anomaly detection, or probabilistic modelling in production systems.
-
Experience contributing to open-source projects, writing technical blogs, or presenting at data science conferences.
-
Interest in continuous learning and keeping up with cutting-edge AI research (e.g., foundation models, self-supervised learning, model compression).
Our Perks & Benefits
- Mental health and well-being initiatives
- Generous parental (including secondary) leave policy
- Flexibility to work in a Hybrid model (2-3 days in-office)
- Paid birthday, study and volunteering leave every year
- Sponsored social clubs, team events, and celebrations
- Employee Resource Groups (ERG) to help you connect and get involved
- Investment in your personal growth offering training for your advancement