Data Science Engineer

Posted Yesterday
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San Francisco, CA, USA
In-Office
Senior level
News + Entertainment
The Role
Lead end-to-end ML efforts: frame ambiguous business problems, design/build/deploy models and data pipelines, monitor and retrain to prevent drift, set validation and reproducibility standards, partner with engineering for production reliability, mentor data scientists, and evaluate new methods and tooling balancing innovation with maintainability.
Summary Generated by Built In
About Us

Beast Industries is a multifaceted media and entertainment company founded by Jimmy Donaldson, popularly known as MrBeast, the most watched person in the world. Renowned for revolutionizing digital content creation, Beast Industries encompasses a diverse portfolio of ventures that extend far beyond its origins on YouTube. With a mission to entertain, inspire, and create significant social impact, Beast Industries operates across various domains including digital media, philanthropy, consumer products, and innovative business initiatives. At Beast Industries, we believe in the transformative power of digital media and its potential to entertain, educate, and effect positive change. Our commitment to innovation, creativity, and philanthropy drives us to explore new frontiers, create unforgettable experiences, and build a legacy that inspires future generations.

Data Science Engineer

Primary: Bay Area (San Francisco / Peninsula)   |   Secondary: NYC


The Opportunity

We're doing an AI-first engineering rebuild for a company that already has an audience of 100M+ people. This is a zero-to-one build with no legacy constraints, so the models and data systems you ship define the foundation instead of patching an old one. You're here to turn ambiguous, high-stakes business problems into models that actually move a number in production.

The Product

You'll be the senior technical anchor for a data science domain, owning the full lifecycle from framing the problem through deployment, monitoring, and iteration. The work spans consumer products, media, and fintech analytics, all sitting on top of an audience of 100M+ people. That means:

  • Frame vague business problems as tractable data science problems, and pick the approach and evaluation criteria when there's little precedent.
  • Design, build, and deploy models and the data pipelines that feed and serve them in production.
  • Build the monitoring and retraining framework that catches drift before it hits the business.

What You'll Do

  • Own the full model lifecycle: data sourcing and quality, features, training, evaluation, deployment, monitoring, and retraining.
  • Set and enforce the domain's standards for validation, reproducibility, experimentation, and monitoring.
  • Partner with engineering to productionize models reliably, with the right latency, scale, and observability.
  • Translate model behavior and its limits for product and business stakeholders, including where data science can't help.
  • Anticipate the failure modes (leakage, drift, bias, fragility) and build safeguards before they reach production.
  • Guide the technical work of other data scientists and engineers through design review, pairing, and mentorship.
  • Evaluate and adopt new methods and tooling, weighing innovation against maintainability and cost.

Who You Are

  • AI-Native: You're already burning through tokens and using AI in your daily workflow to move faster from idea to shipped model.
  • Production ML Builder: Typically 8+ years designing, building, and deploying ML models in production, with deep expertise in statistical modeling and sound judgment about method selection under uncertainty.
  • End-to-End Owner: You've owned problems start to finish with limited supervision and been accountable for the result, not just the experiment.
  • Honest Communicator: You frame problems as testable hypotheses, hold the line on validation rigor under deadline pressure, and communicate uncertainty honestly instead of overselling.

Strong software engineering practice: production-quality code, version control, testing, and reproducible pipelines. Bonus points for setting technical direction for a data science domain, MLOps tooling for deployment and monitoring, and domain exposure in consumer products, media, or fintech.

Benefits

  • Equity: Highly competitive equity package designed for a foundational hire.
  • Hybrid Model: Expected ~3 days per week in-office (Bay Area or NYC).

The Perks — Why Work On the MrBeast Team

We are redefining what entertainment and storytelling look like at global scale. Every piece of content we publish reaches millions and influences culture in real time. This is your opportunity to join the team that decides how those moments come to life across every screen.

  • Competitive Salary
  • Generous Medical (Blue Cross Blue Shield), Dental, Vision and company-paid Life Insurance
  • Company contributions to employee Health Savings Accounts (HSA)
  • 401k Plan with Safe Harbor company-matching
  • Flexible vacation policy and paid company holidays
  • Company-provided technology package
  • Relocation assistance where applicable, including travel and company-provided housing for the first 90 days

Come build the future of the creator ecosystem with us.

BenefitsThe Perks, Why Work On the MrBeast Team

We are redefining what entertainment and storytelling look like at global scale. Every piece of content we publish reaches millions and influences culture in real time. This is your opportunity to lead the team that decides how those moments come to life across every screen.

  • Competitive Salary
  • Generous Medical (Blue Cross Blue Shield), Dental, Vision and company-paid Life Insurance 
  • Company contributions to employee Health Savings Accounts (HSA) 
  • 401k Plan with Safe Harbor company-matching
  • Flexible vacation policy and paid company holidays
  • Company-provided technology package 
  • Relocation assistance where applicable, including travel and company-provided housing for the first 90 days

Skills Required

  • 8+ years designing, building, and deploying ML models in production
  • Strong software engineering practices: production-quality code, version control, testing, reproducible pipelines
  • Ownership of full model lifecycle: data sourcing, feature engineering, training, evaluation, deployment, monitoring, retraining
  • Experience anticipating and mitigating failure modes (leakage, drift, bias, fragility) and building safeguards
  • AI-native workflow familiarity (regular use of LLMs / AI tools to accelerate model development)
  • Ability to guide, mentor, and review technical work of other data scientists and engineers
  • Experience with MLOps tooling for deployment and monitoring
  • Domain exposure in consumer products, media, or fintech
Am I A Good Fit?
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The Company
HQ: Greenville, NC
113 Employees

What We Do

The YouTube Streamy Awards' 2020 Creator of the Year Accomplishments - Raised $20,000,000 To Plant 20,000,000 Trees - Given millions to charity - Donated over 100 cars lol - Gave away a private island - Given away over 100 ps4s lol - Gave away 1 million dollars in one video - Counted to 100k - Read the Dictionary - Watched Dance Till You're Dead For 10 Hours - Read Bee Movie Script - Read Longest English Word - Watched Paint Dry - Ubering Across America - Watched It's Every Day Bro For 10 Hours - Ran a marathon in the world's largest shoes - Adopted every dog in a shelter You get the point haha

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