Drive personalized user engagement through machine learning solutions that influence business impact while collaborating with cross-functional teams.
SmartNews is a leading global information and news discovery company dedicated to delivering quality information to the people who need it. Thanks to our unique machine-learning technology and relationships with more than 3,000 global publisher partners, we provide news that matters to millions of users.
Founded in 2012 in Tokyo, SmartNews also has offices in Osaka (Kansai Office), Palo Alto, New York and Singapore.
If you share our vision and are passionate about our mission, we encourage you to apply!

About Team
The Vertical Ranking Team builds the machine learning systems that power personalized experiences across SmartNews. We partner closely with Product and Business teams to design and deploy scalable recommendation solutions that drive user engagement and revenue growth across key surfaces such as For You, Push Notifications, Follow Recommendations, Search, Ads, and emerging vertical experiences.
Our work sits at the intersection of business impact and ML innovation. We translate product requirements and strategic priorities into high-performing ranking strategies that optimize engagement, retention, and monetization. From feature design and model development to experimentation and online iteration, we play a critical role in evolving and enhancing the recommendation pipeline to deliver measurable results.
We operate in a fast-moving environment where real-world impact matters. Every model is evaluated against clear business metrics. By leveraging large-scale behavioral data, advanced modeling techniques, and rigorous A/B testing, we continuously refine performance and elevate the quality of recommendations for our users.
Our team values strong ownership and accountability. Each initiative is grounded in data, aligned with business goals, and contributes to strengthening both vertical strategies and the broader recommendation ecosystem.
If you’re passionate about applying machine learning to solve meaningful business challenges, shaping recommendation strategies that directly influence growth, and collaborating cross-functionally to turn data into impact, the Vertical Ranking Team offers a unique opportunity to drive results at scale.
Responsibilities
In this role, you will translate business goals and product strategies into impactful machine learning solutions that power personalized experiences at scale. You will design, experiment with, and optimize ranking strategies that directly influence user engagement, retention, and monetization across key SmartNews surfaces.
You will collaborate closely with Product, Business, and cross-functional engineering teams to identify opportunities, define success metrics, and deliver measurable improvements through data-driven experimentation. By continuously refining models, features, and ranking logic based on performance insights and user feedback, you will help evolve our recommendation systems to drive sustainable business growth.
Requirements
Minimum requirements
Nice to have experiences/skills
Related Links
Working condition
Click here or visit our careers site for more info.
Benefits
Benefits available at the SmartNews Tokyo Office
Click here or visit our careers site for more info about our benefits.
Visa Sponsorship
Visa sponsorship and overseas relocation support available for eligible candidates
SmartNews, Inc. builds a dynamic news application that connects millions of users in Japan and the US with quality information from over 3,000 global publisher partners. By leveraging unique machine-learning technology, we deliver relevant news and diverse content, recently expanding our offerings with the subscription service SmartNews+. Our focus is on ensuring users receive the information they need, when they need it.
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