Baseball Analyst / Data Scientist

Miami Marlins and loanDepot park
Tipton
2 days ago
Create job alert

At the Miami Marlins, we make waves — on and off the field.

We’re built for sustainable success thanks to our commitment to be great teammates, bold innovators, and thinking long-term. These three pillars guide us in championing a winning culture across the organization. The work we do doesn’t just impact our team — it reaches fans and communities across South Florida.

Position Summary

As a Baseball Analyst in Baseball Solutions or a Data Scientist in Baseball Research, you will be responsible for supporting the department in developing sophisticated statistical models, advancing our ability to forecast player performance, and translating insights into actionable recommendations for the Miami Marlins front office. These roles involve prioritizing and executing research requests, creating innovative models, and collaborating with other departments across baseball operations. Strong statistical modeling skills, technical expertise, ability to communicate to technical and non-technical audiences, and a passion for baseball are essential for success in these positions. Note that these are two separate positions, and applicants will automatically be considered for both positions.

Essential Functions

Construct advanced statistical models to support decision-making within Baseball Operations. Convert key baseball (and physical) concepts into metrics, features, and insights for consumption by the Baseball Solutions and Baseball Research departments, as well as those outside of R&D. Develop and maintain production pipelines for daily implementation of statistical models. Collaborate with other analysts, engineers, and stakeholders to identify opportunities for improvement. Manage and clean large datasets from various sources. Provide actionable insights through detailed statistical analysis. Assist with recruiting and evaluating applicants to join the Baseball R&D team. Create and maintain documentation outlining departmental best practices.

Our Values

We Are Great Teammates

Supports and encourages colleagues.Provides and receives feedback without judgement or ego.Holds one another to a high standard.Provides help and encouragement proactively.Assumes positive intentions from others. Looks for ways to help make their teammates better.

We Are Innovators

Embraces a growth mindset.Challenges conventional wisdom.Unafraid to fail.Pushes boundaries and doesn't accept impossible.Asks why and asks why not.

We Think Long-Term

Asks: what can I do today that will pay off a year from now. Eschews instant gratification for bigger benefits in the future.Always trying to think three steps ahead.

Skill Requirements

Proficiency in programming languages such as Python, R, and SQL.Experience in advanced modeling approaches preferred (Bayesian methods, neural networks, time-series forecasting)Experience with probabilistic programming languages preferred (Stan, PyMC)Strong analytical and problem-solving skills.Excellent written and verbal communication skills.Ability to manage multiple tasks and meet deadlines.Collaborative mindset and willingness to work in a team environment.Willingness to relocate to Miami and commute to loanDepot Park.Familiarity with public baseball research.Experience with Git and cloud-based computing preferred.

Education & Experience Guidelines

Bachelor’s degree in Statistics, Mathematics, Data Science, or a related quantitative field. Graduate degree is preferred, or equivalent real-world experience.0-2 years of experience in a data analysis role.Note that education may be considered in lieu of experience and vice-versa.Experience in a baseball or sports-related environment is preferred.

Work Environment

Ability to work flexible hours, including evenings, weekends, and holidays as needed.Occasional travel may be required.Standard office working conditions with extended periods of sitting and working on a computer.

We are an equal opportunity employer, and all qualified applicants will receive consideration for employment without regard to race, color, religion, national origin, sex, sexual orientation, age, disability, gender identity, marital, or veteran status, or any other protected status.


#J-18808-Ljbffr

Related Jobs

View all jobs

Quantitative Analyst - Cricket

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

How to Write a Data Science Job Ad That Attracts the Right People

Data science plays a critical role in how organisations across the UK make decisions, build products and gain competitive advantage. From forecasting and personalisation to risk modelling and experimentation, data scientists help translate data into insight and action. Yet many employers struggle to attract the right data science candidates. Job adverts often generate high volumes of applications, but few applicants have the mix of analytical skill, business understanding and communication ability the role actually requires. At the same time, experienced data scientists skip over adverts that feel vague, inflated or misaligned with real data science work. In most cases, the issue is not a lack of talent — it is the quality and clarity of the job advert. Data scientists are analytical, sceptical of hype and highly selective. A poorly written job ad signals unclear expectations and immature data practices. A well-written one signals credibility, focus and serious intent. This guide explains how to write a data science job ad that attracts the right people, improves applicant quality and positions your organisation as a strong data employer.

Maths for Data Science Jobs: The Only Topics You Actually Need (& How to Learn Them)

If you are applying for data science jobs in the UK, the maths can feel like a moving target. Job descriptions say “strong statistical knowledge” or “solid ML fundamentals” but they rarely tell you which topics you will actually use day to day. Here’s the truth: most UK data science roles do not require advanced pure maths. What they do require is confidence with a tight set of practical topics that come up repeatedly in modelling, experimentation, forecasting, evaluation, stakeholder comms & decision-making. This guide focuses on the only maths most data scientists keep using: Statistics for decision making (confidence intervals, hypothesis tests, power, uncertainty) Probability for real-world data (base rates, noise, sampling, Bayesian intuition) Linear algebra essentials (vectors, matrices, projections, PCA intuition) Calculus & gradients (enough to understand optimisation & backprop) Optimisation & model evaluation (loss functions, cross-validation, metrics, thresholds) You’ll also get a 6-week plan, portfolio projects & a resources section you can follow without getting pulled into unnecessary theory.

Neurodiversity in Data Science Careers: Turning Different Thinking into a Superpower

Data science is all about turning messy, real-world information into decisions, products & insights. It sits at the crossroads of maths, coding, business & communication – which means it needs people who see patterns, ask unusual questions & challenge assumptions. That makes data science a natural fit for many neurodivergent people, including those with ADHD, autism & dyslexia. If you’re neurodivergent & thinking about a data science career, you might have heard comments like “you’re too distracted for complex analysis”, “too literal for stakeholder work” or “too disorganised for large projects”. In reality, the same traits that can make traditional environments difficult often line up beautifully with data science work. This guide is written for data science job seekers in the UK. We’ll explore: What neurodiversity means in a data science context How ADHD, autism & dyslexia strengths map to common data science roles Practical workplace adjustments you can request under UK law How to talk about your neurodivergence in applications & interviews By the end, you’ll have a clearer sense of where you might thrive in data science – & how to turn “different thinking” into a real career advantage.