AI ML Engineer Jobs in Boston, MA
AI ML Engineer jobs in Boston are concentrated in the Seaport District, Kendall Square, and the Longwood Medical Area, with strong demand from biotech, fintech, and enterprise software firms. Companies actively hiring include Zoox, Wayfair, and Chewy. See the openings below and apply to the ones that match your experience.
Find AI ML Engineer JobsOverview
Showing 5 of 107+ AI ML Engineer jobs







Who we are looking for
Lead a global AI & ML Field Deployment Engineering and Data Science organization that partners directly with businesses to develop, deploy, and scale AI, machine learning, and data science solutions, delivering on State Street’s enterprise and business objectives.
The Head of AI & ML Field Deployment Engineering & Data Science is accountable for ensuring that State Street’s AI capabilities translate into real, measurable business outcomes across all lines of business.
This role leads a business-aligned engineering and data science organization that works directly with:
- Investment Services
- Investment Management
- Wealth
- Alpha platform
- Global Markets
- Corporate and control functions
to deliver model-driven insights, predictive capabilities, and AI-powered solutions embedded into business workflows.
This is a front-line execution role, focused on:
- Developing and deploying AI/ML and data science solutions
- Scaling adoption of models across business processes
- Enabling effective use of enterprise AI platforms
- Delivering tangible business outcomes through AI
The role serves as the execution bridge between AI platform capabilities and business impact, ensuring that models and analytical solutions are not only built, but productionized, scaled, and delivering value.
Success is measured by AI adoption, model deployment at scale, speed to production, and business outcomes delivered through AI and data science.
What you will do
Business-Aligned AI, ML & Data Science Execution
-
Lead a global organization of:
- Data scientists
- Machine learning engineers
- Applied AI engineers
-
Partner directly with business and technology teams to:
- Develop AI/ML and data science solutions aligned to business objectives
- Deploy models into production environments
- Scale AI capabilities across business workflows
- Act as a trusted AI and data science partner to business leaders
Delivery of AI-Driven Business Outcomes
-
Translate AI, ML, and data science capabilities into:
- Revenue and client opportunities
- Operational efficiencies
- Decision intelligence and insights
-
Ensure alignment of solutions with:
- Enterprise strategy
- Business-specific KPIs
- Drive measurable impact across all business domains
AI/ML & Data Science Solution Development
-
Deliver end-to-end solutions, including:
- Predictive and machine learning models
- Statistical and analytical models
- Feature engineering and data pipelines
- Generative AI use cases (non-agentic)
Ensure efficient progression from:
Experimentation production - scaled deployment
- Standardize delivery approaches for repeatability and scale
AI Platform Adoption & Utilization
-
Drive adoption of enterprise AI platforms by:
- Enabling model development and deployment workflows
- Supporting teams in leveraging platform capabilities effectively
- Ensure consistent usage of platform capabilities across the enterprise
Reusable Models, Features & Analytical Assets
-
Promote reuse of:
- Feature engineering pipelines
- Model components and frameworks
- Analytical and statistical methodologies
- Reduce duplication and accelerate time to value across teams
Data Scientist & Engineer Enablement
-
Improve productivity of data scientists and AI engineers by:
- Enabling self-service capabilities
- Streamlining development and deployment workflows
- Simplifying access to data and tools
-
Establish best practices across:
- Model lifecycle management
- Experimentation and evaluation
- Production deployment
Feedback Loop to Platform & Data Teams
-
Serve as the voice of AI practitioners and business users into:
- AI Platform Engineering
- Data Platform Engineering
-
Identify:
- Platform usability and capability gaps
- Data availability and quality issues
- Scaling challenges in production environments
- Drive continuous improvement based on real-world usage
Standardized AI Delivery Patterns
-
Develop and scale repeatable playbooks and patterns for:
- Model development
- Deployment and operationalization
- Scaling across business use cases
- Ensure consistency while enabling flexibility for domain-specific needs
Cross-Functional Collaboration
-
Partner with:
- AI Platform Engineering to evolve platform capabilities
- Data Platform Engineering for data access and pipelines
- Data Architecture for domain alignment and reusable assets
- Data & AI Strategy, Portfolio & Value for prioritized use cases
Team Leadership
- Build and lead a global AI & ML Field Deployment and Data Science organization
-
Align teams to:
- Business domains
- Strategic AI initiatives
-
Foster a culture of:
- Business impact and accountability
- Strong engineering and data science rigor
- Speed, agility, and execution discipline
Qualifications & Experience
-
Senior leadership experience in:
- AI/ML engineering, data science, or applied AI roles
- Large-scale enterprise environments
-
Strong technical expertise in:
- Machine learning, statistical modeling, and data science
- Production deployment of AI/ML solutions
-
Proven ability to:
- Partner with business stakeholders
- Deliver measurable outcomes through AI and data science
- Experience in financial services or complex enterprise environments preferred
Leadership Profile
- Business-oriented AI and data science leader with strong execution focus
- Deep technical credibility across AI, ML, and data science
- Able to translate advanced analytics into real business value
- Pragmatic, outcome-driven, and delivery-focused
- Collaborative leader across business, platform, and engineering teams
Salary Range:
$225,000 - $337,500 AnnualThe range quoted above applies to the role in the primary location specified. If the candidate would ultimately work outside of the primary location above, the applicable range could differ.
Employees are eligible to participate in State Street’s comprehensive benefits program, which includes: our retirement savings plan (401K) with company match; insurance coverage including basic life, medical, dental, vision, long-term disability, and other optional additional coverages; paid-time off including vacation, sick leave, short term disability, and family care responsibilities; access to our Employee Assistance Program; incentive compensation including eligibility for annual performance-based awards (excluding certain sales roles subject to sales incentive plans); and, eligibility for certain tax advantaged savings plans.
For a full overview, visit https://hrportal.ehr.com/statestreet/Home.
About State Street
Across the globe, institutional investors rely on us to help them manage risk, respond to challenges, and drive performance and profitability. We keep our clients at the heart of everything we do, and smart, engaged employees are essential to our continued success.
We are committed to fostering an environment where every employee feels valued and empowered to reach their full potential. As an essential partner in our shared success, you’ll benefit from inclusive development opportunities, flexible work-life support, paid volunteer days, and vibrant employee networks that keep you connected to what matters most. Join us in shaping the future.
As an Equal Opportunity Employer, we consider all qualified applicants for all positions without regard to race, creed, color, religion, national origin, ancestry, ethnicity, age, disability, genetic information, sex, sexual orientation, gender identity or expression, citizenship, marital status, domestic partnership or civil union status, familial status, military and veteran status, and other characteristics protected by applicable law.
Discover more information on jobs at StateStreet.com/careers
Read our CEO Statement
Job Application Disclosure:
It is unlawful in Massachusetts to require 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.
See All 107+ AI ML Engineer Jobs in Boston
Find roles in Boston that match your experience and apply in just a few clicks.
Find AI ML Engineer JobsAI ML Engineer Job Market in Boston
Who's Hiring
- Zoox12

- Wayfair6

- Chewy4

- WHOOP4

- State Street4

Top Industries Hiring
- Technology & Software31
- Automotive12
- Insurance8
- Science & Research8
- Investment & Asset Management8
AI ML Engineer Jobs in Boston: Frequently Asked Questions
How do I get a ai ml engineer job in Boston?
Focus your search on the Seaport District, Kendall Square, and the Innovation District, where biotech, healthtech, and fintech employers concentrate most of their ai ml engineering hiring. Candidates who show experience with production model deployment and cross-functional collaboration with data science teams stand out. Familiarity with Boston's dense life sciences and clinical AI sector gives applicants a concrete edge over generalist ml profiles.
Which companies hire ai ml engineers in Boston?
Companies currently hiring ai ml engineers in Boston include Zoox, Wayfair, and Chewy, per current listings on Migrate Mate as of June 2026. Boston's employer mix skews heavily toward research-driven organizations including biotech companies, academic medical centers, and venture-backed AI startups, many clustered near Kendall Square and the Longwood Medical Area.
Are there remote ai ml engineer jobs in Boston?
Yes, ai ml engineering is relatively remote-friendly for modeling, research, and pipeline work, though roles requiring access to sensitive clinical or financial data are often hybrid or on-site. About 42% of ai ml engineer openings tied to Boston are remote or hybrid as of June 2026. Research-focused and NLP roles with Boston-area AI startups tend to offer the most scheduling flexibility.
How can I get a ai ml engineer job in Boston with little or no experience?
The most realistic entry path in Boston is through a junior data scientist or machine learning associate role at one of the city's many healthtech or fintech startups, which often hire earlier than large enterprises. Contributing to open-source projects and building a portfolio that includes clinical or financial datasets signals relevance to Boston's dominant sectors. Programs at MIT, Harvard, and Northeastern frequently place graduates directly into Boston-area ai ml roles.
Which industries hire the most ai ml engineers in Boston?
Most ai ml engineer openings in Boston sit in Technology & Software, Automotive, and Insurance, per current listings on Migrate Mate as of June 2026. Boston's position as a global biotech hub and its dense concentration of academic medical institutions drive consistent demand for ai ml engineers who can work with clinical data, genomics pipelines, and regulated financial systems.
Related Jobs in Massachusetts
See All 107+ AI ML Engineer Jobs in Boston
Find roles in Boston that match your experience and apply in just a few clicks.
Find AI ML Engineer Jobs