Role Overview
We are seeking an experienced Engineering Manager – Data Science to lead a high-performing Data Science squad responsible for delivering scalable machine learning solutions, predictive models, and AI-driven products that drive business impact.
The ideal candidate combines deep technical expertise in Data Science and Machine Learning with strong people leadership capabilities. This role requires a strategic thinker who can manage a multidisciplinary squad, define technical roadmaps, mentor engineers and data scientists, and collaborate closely with Product, Engineering, Analytics, and Business stakeholders.
Key ResponsibilitiesLeadership & Team Management
-
Lead, coach, and develop a squad of Data Scientists, Machine Learning Engineers.
-
Drive team performance through goal setting, mentoring, career development, and continuous feedback.
-
Build and foster a culture of innovation, ownership, collaboration, and technical excellence.
-
Support recruitment, onboarding, and talent development initiatives.
-
Manage squad capacity, planning, and execution to ensure successful delivery of strategic projects.
Technical Leadership
-
Define and execute the Data Science roadmap aligned with business objectives.
-
Lead the design, development, deployment, and monitoring of machine learning models and AI solutions.
-
Establish engineering best practices for model development, experimentation, MLOps, and production deployment.
-
Guide architectural decisions related to data platforms, machine learning infrastructure, and AI systems.
-
Ensure scalability, reliability, and maintainability of Data Science solutions.
Stakeholder Management
-
Partner with Product Managers, Engineering Leaders, and Business stakeholders to identify opportunities for data-driven decision making.
-
Translate complex business problems into analytical and machine learning solutions.
-
Communicate technical findings and recommendations to both technical and non-technical audiences.
-
Drive alignment across cross-functional teams to deliver measurable business outcomes.
Delivery & Execution
-
Oversee end-to-end project delivery from discovery and experimentation to production deployment.
-
Monitor KPIs and model performance to ensure continuous improvement.
-
Balance technical debt, innovation, and business priorities effectively.
-
Drive agile delivery practices within the squad.
Requirements-
10+ years of experience in Data Science, Machine Learning, Software Engineering, or related technical fields.
-
4+ years of people management experience leading Data Science or Machine Learning teams.
-
Proven experience leading cross-functional squads in product-driven environments.
-
Demonstrated track record of deploying machine learning models into production.
Technical Skills
Strong expertise in:
- Machine Learning
-
Statistical Modeling
-
Predictive Analytics
-
Deep Learning
-
NLP and/or Generative AI
-
Experiment Design and A/B Testing
Advanced proficiency in:
- Python
-
SQL
-
Data Visualization tools
Experience with:
- MLOps practices
-
Model monitoring and governance
-
Cloud platforms (Azure, AWS, or GCP)
-
Data Engineering concepts and modern data platforms
Familiarity with:
- LLMs and Generative AI applications
-
Feature stores
-
Recommendation systems
-
Real-time machine learning solutions
Preferred Qualifications
-
Master's degree in Computer Science, Data Science, Artificial Intelligence, Statistics, Mathematics, or a related field.
-
Experience within FinTech, Digital Products, E-commerce, Banking, or Technology organizations.
-
Experience managing large-scale data platforms and AI initiatives.
-
Knowledge of modern software engineering practices and DevOps methodologies.
Benefits-
Lead cutting-edge AI and Data Science initiatives.
-
Build products impacting millions of users.
-
Work with highly talented engineering and product teams.
-
Shape the future of data-driven decision making within the organization.
- When you come to our b_labs office, you'll find creative workspaces and an open design to foster collaboration between teams.
- You know best whether you want to work from home or in the office.
- From "Day 1" you will receive all the equipment you need be successful at work.