Senior Data Scientist
About the Project
This position is offered through hubQuest and delivered for one of our strategic client-partners. It is a long-term collaboration, where you will become part of a dedicated analytical hub built and operated by hubQuest.
You will work in an embedded model — closely integrated with the client’s global structures — while remaining part of hubQuest’s growing international data community. This is not a short-term contract or project-based engagement, but a stable, long-term partnership focused on building and evolving advanced AI-driven solutions.
We’re reimagining how global brands plan and execute promotions by building scalable, AI-driven advisory solutions powered by advanced Machine Learning and Operations Research models, robust cloud infrastructure, and intuitive front-end interfaces.
Our solutions directly drive measurable revenue growth for global brands. As part of this journey, you’ll make a tangible impact through the models, insights, and innovations you create.
You’ll join a diverse, multicultural, fully remote team of Data Scientists, Backend Engineers, and Frontend Developers working together to shape the future of promotional intelligence.
Your Role
As a Senior Data Scientist, you will take ownership of developing and productionizing advanced machine learning models and services. Your work will go far beyond notebooks — you’ll help design stable, reproducible, and automated ML pipelines that operate reliably in production environments.
You will:
Lead full-cycle data science initiatives — from requirements gathering and exploratory analysis to deployment, monitoring, and iterative improvement.
Design scalable data and ML pipelines, build reusable components, improve model accuracy, and contribute to documentation and PR reviews.
Collaborate closely with Data Engineering, MLOps, Product, and Frontend teams to deploy and maintain solutions on Azure.
Work effectively within complex development environments (Dev Containers, pre-commit frameworks, virtual machines).
Drive client-facing delivery, including production rollouts, UAT, and model acceptance.
Translate analytical results into clear business insights and communicate commercial impact (P&L, revenue implications).
Provide training and post-deployment support.
Apply optimization techniques to real-world promotional planning problems and build strong domain expertise.
Guide 1–2 Data Scientists during deployments, coordinate features across multiple workstreams, and align timelines and expectations with internal and client stakeholders.
What You Bring
Core Expertise
Advanced expertise in Machine Learning and Data Science, with the ability to design, validate, and productionize sophisticated models.
Strong Python proficiency, including writing clean, modular, and production-ready code.
Solid hands-on experience with Azure, including deploying and maintaining data/ML solutions in cloud environments.
Basic familiarity with Deep Learning concepts and frameworks, with the ability to understand and apply them when needed.
Working knowledge of SQL, sufficient to query, validate, and explore data independently.
Good understanding of Git-based version control workflows, including collaborative development and pull request processes.
Experience & Skills
5+ years of experience in Data Science or ML Engineering with ownership of the production ML lifecycle.
Strong analytical thinking and quantitative problem-solving skills (formal degrees welcome but not required).
Hands-on experience with ML tools such as pandas, NumPy, SciPy, scikit-learn, and Matplotlib.
Experience working with Azure-based solutions in production environments.
Familiarity with CI/CD, MLOps concepts, Docker/Kubernetes, and model deployment strategies.
Strong ability to reason about model behavior, edge cases, and failure modes.
Fluent English (spoken and written) for global collaboration.
Appreciation for diversity and the ability to thrive in a global, multicultural environment.
What Will Make You Successful
Comfortable working under high-pressure deadlines and managing multiple priorities.
Strong organizational habits — transparent workstreams, disciplined Jira updates, proactive risk communication.
Thrives in a hybrid role combining technical execution, client interaction, and business understanding.
Highly self-directed and proactive, able to take initiative with minimal supervision.
Adaptable in rapidly changing technical and business contexts.
Committed to continuous learning and professional growth.
Nice to Have
Knowledge of deep learning frameworks.
Practical SQL experience.
Experience in Agile delivery environments.
Experience with optimization solvers (e.g., Gurobi).
Familiarity with data quality frameworks and validation strategies.
Experience working in distributed teams across multiple time zones.
About hubQuest
hubQuest is a team of tech and data enthusiasts on a mission to bring together the best minds in IT and analytics. We build and operate long-term analytical hubs for our partners, enabling them to become truly data-driven organizations through cutting-edge AI and data solutions.
By joining us, you become part of a stable, growing international structure — not a temporary project team.
What We Offer
Long-term cooperation within a stable strategic partnership
Flexible working hours
Remote or hybrid work model
Private medical care and Multisport card
Access to online learning platforms and certifications
Global knowledge exchange
A relaxed, non-corporate atmosphere with genuine respect for expertise and ownership
Please add to your CV the following clause:
"I hereby agree to the processing of my personal data included in my job offer by hubQuest spółka z ograniczoną odpowiedzialnością located in Warsaw for the purpose of the current recruitment process.”
If you want to be considered in the future recruitment processes please add the following statement:
"I also agree to the processing of my personal data for the purpose of future recruitment processes.”
Senior Data Scientist
Senior Data Scientist