Data Science Lead Visa Sponsorship Jobs in Massachusetts
Massachusetts is one of the strongest markets in the U.S. for data science lead roles, with major employers including Amazon, Google, Biogen, and HubSpot actively hiring across Boston, Cambridge, and the Route 128 corridor. The state's concentration of biotech, fintech, and research institutions creates consistent demand for senior data science talent with visa sponsorship.
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Data Science Practice Lead
We are seeking an experienced Data Science Practice Lead to help drive and scale data science use cases and AI-enabled capabilities for internal technology and operations. In this Boston-based leadership role, you will focus on internal-facing use cases, supporting teams like customer support/call centers, document workflow, compliance, finance, and other corporate functions. The ideal candidate combines deep technical data science expertise with strong leadership and business collaboration skills. You will guide a team of data scientists to deliver innovative solutions, working closely with business stakeholders and engineering partners to ensure projects are well-scoped, aligned to business needs and enterprise standards. A key aspect of this role is driving experimentation and pilot projects to prove value before scaling solutions to full production. If you are passionate about making measurable operational improvements and can communicate clearly to both technical and non-technical audiences, we want to hear from you.
Key Responsibilities:
-
Identify and Scope High-Impact Use Cases: Work directly with internal business stakeholders to identify high-value internal problems and frame them into AI use cases. Translate business needs into AI/ML capabilities, experiments, and measurable outcomes that align solution delivery with business objectives.
-
Drive Experimentation and Pilot Solutions: Lead prototyping efforts and experimental pilot programs to validate solution approaches and quantify business value before full-scale deployment. Employ an iterative, test-and-learn approach – designing A/B tests or proof-of-concepts to quickly learn what works and adjusting based on data-driven learnings and business stakeholder input. Ensure success metrics and KPIs are defined for each initiative to objectively evaluate impact.
-
Leadership and Team Development: Guide and mentor a team of data scientists, providing technical direction and oversight. Set the example for best practices in modeling, coding, and project execution. Manage project portfolios to ensure multiple workstreams progress on schedule and deliver high-quality results, while fostering a culture of curiosity, collaboration, and continuous learning on the team.
-
Cross-Functional Collaboration and Delivery: Partner closely with engineering and architecture teams to implement data science solutions into production. Oversee the development of robust data pipelines and integration of models into existing systems, ensuring solutions are scalable, well-documented, and maintainable. Work with business stakeholders (e.g. operations, finance, HR, compliance) to pilot and roll out tools that create efficiencies and drive value, making sure these solutions fit seamlessly into business operations.
-
Communication and Stakeholder Management: Communicate progress, tradeoffs, and recommendations in clear, impactful ways. Translate technical concepts into business terms, including end-to-end impact of AI solutions, total cost (build/maintain), risks and controls, and value realized against agreed KPIs. Present solution performance and insights to non-technical leaders using compelling storytelling and visualizations. Regularly update stakeholders, align on success metrics, and drive adoption and change management so solutions are used and sustained.
Required Qualifications:
-
Education and Experience: Bachelor’s degree in Statistics, Computer Science, Data Analytics, or a related quantitative field. 15 years of hands-on experience in data science or analytics (with at least a few years in a senior or team lead capacity) delivering business-focused solutions. Proven track record of end-to-end project ownership, from initial concept and prototyping to deploying models into production and iterating on them post-launch.
-
Business Acumen and Stakeholder Collaboration: Demonstrated ability to work closely with business stakeholders to understand operational processes and challenges and translate them into data analysis or machine learning solutions. Strong project management skills, with an ability to prioritize projects by business need and value impact. Able to serve as a trusted advisor to cross-functional leaders by providing actionable insights that inform strategy and decision-making.
-
Communication Skills: Excellent written and verbal communication skills, including the ability to distill complex analytical findings into clear presentations for non-technical audiences. Proven experience communicating data stories and recommendations to influence senior executives and frontline operational teams alike.
-
Analytical Mindset: Strong problem-solving orientation with a data-driven and experimental mindset. Comfortable designing hypotheses, setting up experiments or analyses to test them, and making pragmatic decisions based on results. Able to ask the right questions and pursue whatever data or analyses are needed to answer them. Highly detail-oriented with a commitment to data quality, validation, and rigorous methodology.
Preferred Qualifications:
-
Advanced Degree: Master’s or PhD in a relevant field (e.g. Data Science, Statistics, Computer Science, Engineering, etc.) for deeper theoretical foundation.
-
Industry/Domain Experience: Experience applying data science in internal/corporate operations contexts – for instance, analytics projects in call centers, back-office processes, compliance, or other support functions. Familiarity with operational metrics and challenges in these domains can help you hit the ground running.
-
Experimentation and Agile Methods: Hands-on experience designing and analyzing experiments (A/B tests or pilots) to evaluate solution impact is a strong plus. Knowledge of Agile project management or iterative development methodologies to drive analytics projects from conception through completion is desirable.
-
Advanced Analytics and Tools: Demonstrated experience with modern NLP and Generative AI techniques (LLMs, RAG, agentic workflows, and multimodal where relevant). Hands-on experience with LLM evaluation and observability/tracing practices (e.g., experiment tracking, prompt/model evaluation, runtime monitoring, and debugging of agent behavior). Experience implementing safety and compliance guardrails and governance controls for enterprise GenAI deployments. Familiarity with data visualization and BI tools (Tableau, Power BI, etc.) for dashboarding and reporting to stakeholders is a plus.
The base salary range for this position is $140,000-285,000 USD per year. Placement in the range will vary based on job responsibilities and scope, geographic location, candidate’s relevant experience, and other factors.
Base salary is only part of the total compensation package. Depending on the position and eligibility requirements, the offer package may also include bonus or other variable compensation.
We offer a wide range of benefits to meet your evolving needs and help you live your best life at work and at home. These benefits include comprehensive health care coverage and emotional well-being support, market-leading retirement, generous paid time off and parental leave, charitable giving employee match program, and educational assistance including student loan repayment, tuition reimbursement, and learning resources to develop your career. Note, the application window closes when the position is filled or unposted.
Please be advised that Fidelity’s business is governed by the provisions of the Securities Exchange Act of 1934, the Investment Advisers Act of 1940, the Investment Company Act of 1940, ERISA, numerous state laws governing securities, investment and retirement-related financial activities and the rules and regulations of numerous self-regulatory organizations, including FINRA, among others. Those laws and regulations may restrict Fidelity from hiring and/or associating with individuals with certain Criminal Histories.
Most roles at Fidelity are Hybrid, requiring associates to work onsite every other week (all business days, M-F) in a Fidelity office. This does not apply to Remote or fully Onsite roles. Please consult with your recruiter for the specific expectations for this position.
Certifications:
Category:
Data Analytics and Insights

Data Science Practice Lead
We are seeking an experienced Data Science Practice Lead to help drive and scale data science use cases and AI-enabled capabilities for internal technology and operations. In this Boston-based leadership role, you will focus on internal-facing use cases, supporting teams like customer support/call centers, document workflow, compliance, finance, and other corporate functions. The ideal candidate combines deep technical data science expertise with strong leadership and business collaboration skills. You will guide a team of data scientists to deliver innovative solutions, working closely with business stakeholders and engineering partners to ensure projects are well-scoped, aligned to business needs and enterprise standards. A key aspect of this role is driving experimentation and pilot projects to prove value before scaling solutions to full production. If you are passionate about making measurable operational improvements and can communicate clearly to both technical and non-technical audiences, we want to hear from you.
Key Responsibilities:
-
Identify and Scope High-Impact Use Cases: Work directly with internal business stakeholders to identify high-value internal problems and frame them into AI use cases. Translate business needs into AI/ML capabilities, experiments, and measurable outcomes that align solution delivery with business objectives.
-
Drive Experimentation and Pilot Solutions: Lead prototyping efforts and experimental pilot programs to validate solution approaches and quantify business value before full-scale deployment. Employ an iterative, test-and-learn approach – designing A/B tests or proof-of-concepts to quickly learn what works and adjusting based on data-driven learnings and business stakeholder input. Ensure success metrics and KPIs are defined for each initiative to objectively evaluate impact.
-
Leadership and Team Development: Guide and mentor a team of data scientists, providing technical direction and oversight. Set the example for best practices in modeling, coding, and project execution. Manage project portfolios to ensure multiple workstreams progress on schedule and deliver high-quality results, while fostering a culture of curiosity, collaboration, and continuous learning on the team.
-
Cross-Functional Collaboration and Delivery: Partner closely with engineering and architecture teams to implement data science solutions into production. Oversee the development of robust data pipelines and integration of models into existing systems, ensuring solutions are scalable, well-documented, and maintainable. Work with business stakeholders (e.g. operations, finance, HR, compliance) to pilot and roll out tools that create efficiencies and drive value, making sure these solutions fit seamlessly into business operations.
-
Communication and Stakeholder Management: Communicate progress, tradeoffs, and recommendations in clear, impactful ways. Translate technical concepts into business terms, including end-to-end impact of AI solutions, total cost (build/maintain), risks and controls, and value realized against agreed KPIs. Present solution performance and insights to non-technical leaders using compelling storytelling and visualizations. Regularly update stakeholders, align on success metrics, and drive adoption and change management so solutions are used and sustained.
Required Qualifications:
-
Education and Experience: Bachelor’s degree in Statistics, Computer Science, Data Analytics, or a related quantitative field. 15 years of hands-on experience in data science or analytics (with at least a few years in a senior or team lead capacity) delivering business-focused solutions. Proven track record of end-to-end project ownership, from initial concept and prototyping to deploying models into production and iterating on them post-launch.
-
Business Acumen and Stakeholder Collaboration: Demonstrated ability to work closely with business stakeholders to understand operational processes and challenges and translate them into data analysis or machine learning solutions. Strong project management skills, with an ability to prioritize projects by business need and value impact. Able to serve as a trusted advisor to cross-functional leaders by providing actionable insights that inform strategy and decision-making.
-
Communication Skills: Excellent written and verbal communication skills, including the ability to distill complex analytical findings into clear presentations for non-technical audiences. Proven experience communicating data stories and recommendations to influence senior executives and frontline operational teams alike.
-
Analytical Mindset: Strong problem-solving orientation with a data-driven and experimental mindset. Comfortable designing hypotheses, setting up experiments or analyses to test them, and making pragmatic decisions based on results. Able to ask the right questions and pursue whatever data or analyses are needed to answer them. Highly detail-oriented with a commitment to data quality, validation, and rigorous methodology.
Preferred Qualifications:
-
Advanced Degree: Master’s or PhD in a relevant field (e.g. Data Science, Statistics, Computer Science, Engineering, etc.) for deeper theoretical foundation.
-
Industry/Domain Experience: Experience applying data science in internal/corporate operations contexts – for instance, analytics projects in call centers, back-office processes, compliance, or other support functions. Familiarity with operational metrics and challenges in these domains can help you hit the ground running.
-
Experimentation and Agile Methods: Hands-on experience designing and analyzing experiments (A/B tests or pilots) to evaluate solution impact is a strong plus. Knowledge of Agile project management or iterative development methodologies to drive analytics projects from conception through completion is desirable.
-
Advanced Analytics and Tools: Demonstrated experience with modern NLP and Generative AI techniques (LLMs, RAG, agentic workflows, and multimodal where relevant). Hands-on experience with LLM evaluation and observability/tracing practices (e.g., experiment tracking, prompt/model evaluation, runtime monitoring, and debugging of agent behavior). Experience implementing safety and compliance guardrails and governance controls for enterprise GenAI deployments. Familiarity with data visualization and BI tools (Tableau, Power BI, etc.) for dashboarding and reporting to stakeholders is a plus.
The base salary range for this position is $140,000-285,000 USD per year. Placement in the range will vary based on job responsibilities and scope, geographic location, candidate’s relevant experience, and other factors.
Base salary is only part of the total compensation package. Depending on the position and eligibility requirements, the offer package may also include bonus or other variable compensation.
We offer a wide range of benefits to meet your evolving needs and help you live your best life at work and at home. These benefits include comprehensive health care coverage and emotional well-being support, market-leading retirement, generous paid time off and parental leave, charitable giving employee match program, and educational assistance including student loan repayment, tuition reimbursement, and learning resources to develop your career. Note, the application window closes when the position is filled or unposted.
Please be advised that Fidelity’s business is governed by the provisions of the Securities Exchange Act of 1934, the Investment Advisers Act of 1940, the Investment Company Act of 1940, ERISA, numerous state laws governing securities, investment and retirement-related financial activities and the rules and regulations of numerous self-regulatory organizations, including FINRA, among others. Those laws and regulations may restrict Fidelity from hiring and/or associating with individuals with certain Criminal Histories.
Most roles at Fidelity are Hybrid, requiring associates to work onsite every other week (all business days, M-F) in a Fidelity office. This does not apply to Remote or fully Onsite roles. Please consult with your recruiter for the specific expectations for this position.
Certifications:
Category:
Data Analytics and Insights
Data Science Lead Job Roles in Massachusetts
See all 63+ Data Science Lead Jobs in Massachusetts
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Search Data Science Lead Jobs in MassachusettsData Science Lead Jobs in Massachusetts: Frequently Asked Questions
Which companies sponsor visas for data science leads in Massachusetts?
Large technology and life sciences employers are the most active visa sponsors for data science leads in Massachusetts. Companies like Amazon Web Services, Google, Microsoft, Biogen, Moderna, Wayfair, and HubSpot have consistent H-1B filing histories for senior data roles. Smaller biotech firms in the Kendall Square area and financial services companies in Boston's Financial District also sponsor regularly, though their volume varies year to year.
Which visa types are most common for data science lead roles in Massachusetts?
The H-1B is the most common visa category for data science leads in Massachusetts, as the role typically requires at least a bachelor's degree in computer science, statistics, or a related field, meeting the specialty occupation standard. Candidates with exceptional research records may qualify for the O-1A. Those on F-1 OPT or STEM OPT can work while an employer files an H-1B petition on their behalf.
Which cities in Massachusetts have the most data science lead sponsorship jobs?
Boston and Cambridge account for the large majority of data science lead sponsorship activity in Massachusetts. Cambridge's Kendall Square is particularly dense with biotech and AI employers. The Route 128 corridor, including Burlington and Waltham, hosts established technology and defense contractors with senior data science teams. Worcester has a smaller but growing presence, largely connected to its university research ecosystem.
How to find data science lead visa sponsorship jobs in Massachusetts?
Migrate Mate filters job listings specifically by visa sponsorship availability, which saves significant time when searching for data science lead roles in Massachusetts. Rather than manually reviewing employer sponsorship histories, you can browse verified sponsoring employers in the state directly on Migrate Mate. Focusing your search on Boston, Cambridge, and the Route 128 corridor will surface the highest concentration of relevant openings.
Are there any state-specific considerations for data science leads seeking sponsorship in Massachusetts?
Massachusetts has one of the highest concentrations of research universities in the U.S., including MIT, Harvard, and Northeastern, which creates a strong local pipeline of data science talent and makes employer expectations for senior roles competitive. The state's life sciences sector is heavily grant-funded, and some biotech employers operate on project-based hiring cycles. For H-1B purposes, the prevailing wage level for data science leads in the Boston metro is among the highest in the country, which employers must certify through a Labor Condition Application before sponsoring.
What is the prevailing wage for sponsored data science lead jobs in Massachusetts?
U.S. employers sponsoring a visa must pay at least the prevailing wage, which is what workers in the same role, area, and experience level typically earn. The Department of Labor sets this rate to make sure companies aren't hiring foreign workers simply because they'd accept lower pay than a U.S. worker. It varies by job title, location, and experience. You can look up current prevailing wage rates for any occupation and location using the OFLC Wage Search page.
See which data science lead employers are hiring and sponsoring visas in Massachusetts right now.
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