Note: For technical and other select roles, your first day will be spent at our HQ in Medford, MA to facilitate a smooth onboarding experience. Willingness to travel is required, as you may need to attend on-site team meetings from time to time.
Role Description and Mission:
The Data Science / ML Engineering Manager is a critical leadership role responsible for managing a team of Data Scientists, ML Engineers, and Software Engineers focused on architecting, building, and operating the next-generation Dispatch Optimization platform. This role demands deep expertise in Data Science, Machine Learning, constrained Optimization (Operations Research), and scalable cloud-native service development.
You will drive scientific rigor and engineering excellence to transform model outputs into real-time, high-impact dispatch decisions that directly optimize cost efficiency and service levels.
Key Outcomes:
Team Development & People Management
- Leadership & Mentorship: Directly manage and foster a small and high-impact squad of Data Scientists, ML Engineers, and Optimization Specialists, providing expert technical guidance, mentorship, and day-to-day support.
- Talent Strategy: Attract, develop, and retain top talent in modeling, ML engineering, and cloud-native service development by cultivating a positive, inclusive, and collaborative high-performance team culture.
- Roadmapping & Project Management: Own the successful implementation and delivery of projects defined on the ML roadmap with the highest quality and on time. Define and implement robust Software Development Lifecycle (SDLC) processes tailored for ML and optimization (Agile/Scrum). Plan and manage platform feature development, including project estimation, risk management, and resource allocation.
Strategic Technical Direction & Delivery
- Scientific Strategy: Lead the process to define and select the optimal Data Science, Machine Learning, and Optimization strategy. This includes facilitating deep technical discussions within the team, reviewing and challenging proposed approaches, and making the strategic decision that balances scientific rigor (as assessed by the team), technical feasibility, and overall business impact.
- System Architecture & MLOps: Guide the design and implementation of end-to-end cloud-native Python services (batch/streaming) that execute constrained optimization algorithms and deliver low-latency, real-time dispatch decisions.
- Operationalize: Define and foster the MLOps strategy, ensuring the automation of model training, validation, A/B testing/rollout, and production monitoring using tools like SageMaker, Airflow, or similar industry platforms.
- Technical Excellence: Actively manage technical debt and ensure the prompt resolution of critical production issues by maintaining robust monitoring, alerting, and logging systems. Collaborate with Architecture to guide platform design and identify opportunities to integrate emerging technology trends.
Communication & Operational Rigor
- Communication: Partner effectively with Product, Operations, and Data Engineering teams. Clearly communicate complex technical findings, scientific trade-offs, and operational risks to non-technical stakeholders and executive leadership.
- Continuous Improvement: Establish metrics for product performance (e.g., NPS / cost telemetry), monitor operational health, identify failure modes, and drive rapid iteration cycles based on empirical data.
- Operational Compliance: Maintain rigorous operational standards, manage platform development and deployment costs, and ensure security and regulatory compliance activities, including external audits and system documentation
Skills, Education and Experience:
EDUCATION: Bachelor's Degree (Master's preferred) in Computer Science, Computer Engineering, Data Science, Operations Research, or a closely related quantitative field.
EXPERIENCE:
- 6+ years relevant experience in Data Science, ML Engineering, or Operations Research, with significant experience transitioning research models into production-grade, scalable systems.
- 2+ years proven experience in engineering management or a similar technical leadership role, specifically managing Data Science or ML Engineering teams.
- Demonstrated track record of successfully leading and shipping complex DS/ML and Optimization projects (e.g., dispatch platforms, real-time decision engines) that delivered measurable business value.
- Experience managing and operating 24x7 real-time information systems and/or technical operations.
ROLE BASED COMPETENCIES (KNOWLEDGE, SKILLS & ABILITIES):
- Technical Expertise: Deep understanding of Data Science, ML techniques (e.g., XGBoost, PyTorch, Transformers), optimization methods (MIP/Linear/Stochastic), and architectural requirements for low-latency, real-time decision services. Skilled in Python, SQL, and Cloud (AWS) MLOps and Data pipelines (Airflow, SageMaker, or equivalents).
Leadership and Team Management: Proven ability to inspire, lead, mentor, and hire specialized DS/ML talent, fostering a collaborative, data-driven environment.
- Project Management: Expertise in project estimation, planning, and risk management within an Agile/Scrum framework, including defining and driving technical roadmaps.
- Communication: Exceptional ability to partner with cross-functional stakeholders (Product, Ops) and present scientific and operational findings to executive audiences.
Innovation and Trend Awareness: Proactively identifies, evaluates, and champions emerging Machine Learning models and research paradigms (e.g., LLMs, Generative AI, Causal Inference, Foundation Models) and assesses their direct potential to solve critical business problems or unlock new product capabilities.
WORKING RELATIONSHIPS: Collaborates with cross-functional teams, including engineering, product management, QA, and operations. Communicates regularly with senior leadership and external stakeholders as needed.
ADDITIONAL REQUIREMENTS: Flexibility to adapt to changing priorities and fast-paced environments. Availability for occasional travel or extended hours as required for project deadlines production incidents and critical issues.
Hiring In:
United States: Arizona, California, Florida, Georgia, Illinois, Massachusetts, Michigan, New Hampshire, New Mexico, New York, North Carolina, Tennessee, Virginia
The anticipated closing date to submit applications for this role is January 19, 2026.
The base salary range presented represents the anticipated low and high end salary range for new hires in this position. Your final base salary will be determined based on factors such as work location, experience, job related skills, and relevant training and education. The range listed is just one component of the total compensation package provided by Agero to employees.
Life at Agero:
At Agero, you'll find a workplace where your unique perspective is not just welcomed, it's celebrated. We believe that our differences make us stronger, and we're committed to creating an environment where every employee feels a sense of belonging. If you're looking for a company that values your individuality, provides opportunities for growth, and champions open communication, Agero is the place for you. Join our team and help us drive the future of driver assistance, while experiencing a workplace where you can truly thrive.
Benefits Built for Well-being:
Agero’s innovation is driven by a workforce where all associates feel like they can truly thrive. Agero offers a wide range of benefits to promote well-being, encourage personal development, and ensure financial stability. Our benefits include:
- Health and Wellness: Healthcare, dental, vision, disability, life insurance, and mental health benefits for associates and their families.
- Financial Security: 401(k) plan with company match and tuition assistance to support your future goals.
- Work-Life Balance: Flexible time off, paid sick leave, and ten paid holidays annually.
- For Contact Center Roles: Accrual of up to 3 weeks Paid Time Off per year, paid sick leave, and ten paid holidays annually.
- Family Support: Parental planning benefits to assist associates through life’s milestones.
- Bonus/Incentive Programs
Join Agero and experience a workplace that invests in your success both personally and professionally.
*It is unlawful in Massachusetts to required or administer a lie detector test as a condition of employment or continued employment. An employer who violates this law shall be subject to criminal penalties and civil liability.
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