Job Description:
Rakuten International is a division of Rakuten Group, Inc., a Japanese global technology leader in services that empower individuals, communities, businesses and society. Headquartered in San Mateo, California with more than 4,000 employees worldwide, the Rakuten International business portfolio includes market leaders in e-commerce, digital marketing, advertising, communications and entertainment. We create products and services that provide exceptional value by aligning members and the businesses that want to engage them in a shared community.
Rakuten is the most rewarding way to shop, giving millions of members Cash Back when they buy from their favorite brands. As a leading shopping platform, Rakuten partners with thousands of top brands across apparel, beauty and wellness, grocery, travel, on-demand services, subscriptions, and dining, helping members save on everyday purchases. Since 1999, Rakuten members have earned more than $4.6 billion in Cash Back, making it the largest Cash Back platform of its kind. Learn more at
Rakuten.com
.
Job Summary:
Rakuten Rewards is seeking a Director of Data Science to lead our centralized data science organization, influence strategy and drive execution of machine learning and generative AI initiatives that deliver measurable, company-wide business impact. Reporting directly to the CTO, this role combines organizational leadership, technical depth, and business ownership, with a mandate to scale high-impact AI solutions from concept to production. You will be responsible for setting the technical vision, mentoring a high-performing team, and ensuring that our data science efforts directly translate into competitive advantages and improved member experiences.
Key Responsibilities:
Organizational Leadership & Business Impact
- Lead and grow a high-performing centralized data science organization, including managing managers, hiring top talent, and fostering a strong, accountable culture
- Help shape data science strategy and prioritize initiatives based on feasibility and expected business outcomes
- Translate ambiguous business problems into clear, actionable AI and machine learning strategies
- Own problem framing, success metrics, and end to end accountability to ensure data science efforts translate into measurable business outcomes
- Serve as a trusted partner to senior leaders, clearly communicating strategy, trade‑offs, progress, and impact
AI & Machine Learning Execution
- Own the end‑to‑end delivery and effectiveness of machine learning and generative AI solutions, ensuring successful progression from problem definition through production deployment, monitoring, and iteration.
- Set technical direction and quality standards for scalable ML, optimization, and GenAI systems that deliver measurable impact across domains such as campaign forecasting, campaign optimization, and member experience optimization
- Ensure solutions are production‑ready, observable, and continuously improved, with a strong focus on reliability and business effectiveness
Foundations, Platforms & Innovation
- Strengthen best practices and technical standards for applied AI across the organization
- Partner with engineering and platform teams to improve foundations for production AI, including experimentation, evaluation, model monitoring, and scalable infrastructure
- Stay current with advances in ML and generative AI and guide thoughtful, pragmatic adoption of new capabilities
Qualifications:
- Strong foundation in machine learning, statistical modeling, optimization, and/or AI systems
- Experience leading the deployment and scaling of models in production environments
- Familiarity with modern data and ML ecosystems (Python, SQL, cloud platforms, and production ML tooling)
- Demonstrated ability to lead in ambiguous environments and define strategy from first principles
- Strong communication skills with experience influencing senior stakeholders and cross-functional teams
- Ability to balance technical depth with business pragmatism
- Preferred: Experience in e-commerce, ad-tech, marketing science, recommender systems, or related domains
- Preferred: Experience integrating AI into customer-facing products and internal workflows
- Preferred: Experience with LLM-based systems, retrieval-augmented generation (RAG), and evaluation of generative AI solutions
Minimum Requirements:
- 10+ years of experience in data science, machine learning, or applied AI in industry; 15+ years Preferred
- 5+ years of leadership experience, including managing managers and building scaled teams
- Proven track record of delivering measurable business impact through production-grade ML/AI systems
- Bachelor's Degree Required; Master's Degree Preferred
Five Principles for Success
Our worldwide practices describe specific behaviors that make Rakuten unique and united across the world. We expect Rakuten employees to model these 5 Shugi Principles of Success.
Always improve, Always Adv