Senior Applied Scientist - NBA 2K
Who We Are
2K is headquartered in Novato, California and is a wholly owned label of Take-Two Interactive Software, Inc. (NASDAQ: TTWO). Founded in 2005, 2K Games is a global video game company, publishing titles developed by some of the most influential game development studios in the world. Our studios responsible for developing 2K’s portfolio of world-class games across multiple platforms, include Visual Concepts, Firaxis, Hangar 13, CatDaddy, Cloud Chamber, 31st Union, HB Studios, and 2K SportsLab. Our portfolio of titles is expanding due to our global strategic plan, building and acquiring exciting studios whose content continues to inspire all of us! 2K publishes titles in today’s most popular gaming genres, including sports, shooters,
action, role-playing, strategy, casual, and family entertainment.
Our team of engineers, marketers, artists, writers, data scientists, producers, thinkers and doers, are the professional publishing stewards of 2K’s portfolio currently includes several AAA, sports and entertainment brands, including global powerhouse NBA®️ 2K, renowned BioShock®️ , Borderlands®️ , Mafia, Sid Meier’s Civilization®️ and XCOM®️ brands; popular WWE®️ 2K and WWE®️ SuperCard franchises, TopSpin 2K25, as well as the critically and commercially acclaimed PGA TOUR®️ 2K.
At 2K, we pride ourselves on creating an inclusive work environment, which means encouraging our teams to Come as You Are and do your best work! We encourage ALL applicants to explore our global positions, even if they don’t meet every requirement
for the role. If you're interested in the job and think you have what it takes to work at 2K, we encourage you to apply!
What We Need
The Applied AI Team within 2K’s Product Organization is seeking a Sr. Applied Scientist to contribute to the continued innovation behind our flagship title, NBA 2K. This team builds production-grade algorithmic systems that directly shape the player experience. Our work spans core areas such as:
- Matchmaking
- In-game experience personalization
- Player engagement
- In-game economy
- Content optimization
- Fraud detection
We combine techniques from machine learning, statistics, operations research, and economics, and partner closely with engineering, game design, and LiveOps to bring AI-driven decisioning to life across the game.
What You'll Do
- Research, build, and deploy advanced machine learning and optimization models to improve gameplay and player engagement.
- Work across areas like matchmaking, ranking systems, personalization, and in-game economy modeling.
- Collaborate with game development, LiveOps, tech and data engineers, and product managers to scope high-impact problems and deliver solutions.
- Lead technical discussions, advocate for best practices in model development and deployment, and ensure scientific rigor.
- Stay informed on state-of-the-art techniques, evaluate their applicability, and lead efforts to integrate promising methods into our systems.
What Will Make You a Great Fit
We are seeking a hands-on senior scientist who combines deep technical expertise in machine learning with strong product sense and a track record of delivering high-impact, production-ready solutions. You are comfortable leading projects independently and thrive in a collaborative, fast-moving environment.
Requirements:
- Master’s or Ph.D. in a quantitative field such as Computer Science, Statistics, Applied Math, Physics, Operations Research, or a related discipline.
- 4+ years of experience in applied science, machine learning, or data science roles, including experience deploying ML models in production environments.
- Strong background in machine learning (traditional and/or deep learning), statistical modeling, and experimentation.
- Proficiency in Python and SQL; experience with distributed computing (e.g., Spark).
- Working knowledge of ML frameworks like scikit-learn, PyTorch, TensorFlow, and pipeline tools for model training and deployment.
- Demonstrated ability to own projects end-to-end and deliver measurable business value.
- Excellent communication skills, with the ability to explain complex ideas to both technical and non-technical audiences.
Preferred Qualifications (Helpful, but Not Required):
- Experience with discrete optimization, reinforcement learning, recommender systems, and simulation-based modeling.
- Familiarity with production ML infrastructure, including cloud services (AWS), containerization, and model orchestration/serving.
- Knowledge of the gaming industry and experience working with game-related AI solutions.
- Interest in basketball and a willingness to engage with video games as products.
#LI-Hybrid
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