- Job Type: Full-Time
- Function: Engineering Software
- Industry: Frontier Tech
- Post Date: 03/25/2026
- Website: www.treasuredata.com
- Company Address: 2440 W El Camino Real, Suite 101, Mountain View, CA, 94040
About Treasure Data
Treasure Data empowers the world’s largest and most innovative companies to drive connected customer experiences that increase revenue and reduce costs. Built on a big data foundation of trust and scale, Treasure Data is a customer data platform (CDP) pioneer and continues to reinvent the CDP by putting AI and real-time experiences at the center of the customer journey.Job Description
We are seeking strong ML engineers to join the ML team and help us sharpen the ML vision and deliver more solutions to satisfy our customers' needs. You will be working closely with other ML engineers and people from cross-functional teams.
You will be a good fit if you:
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Are a self-driven, organized, and independent individual who proactively takes initiatives, anticipates needs, and solves problems to contribute to delivering values to our customers.
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Have a strong sense of ownership and responsibility to get things done.
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Have a growth mindset; are curious to learn new things and adaptive to changes.
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Know how to navigate ambiguity and thrive in uncertain environments, consistently driving work forward.
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Are passionate about productizing ML products, knowing how to make practical trade-offs when turning ideas into working software.
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Excel in adapting communication styles and simplifying complex technical concepts for diverse audiences, ensuring clear and effective communication.
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Enjoy working in a collaborative work environment with people from diverse backgrounds.
This is an ideal position for those with not only data science and machine learning skills, but also cloud service engineering skills for developing, deploying, and operating these critical ML products.
Key Responsibilities
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Design and develop ML products to be integrated with our CDP.
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Own specific technical areas, drive and execute ML product projects, track progress and mitigate risks by collaborating closely with product managers, UX designers, architects, engineers, and stakeholders from other cross-functional teams.
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Play a key role in defining system architecture for the ML products and implementing specific components to enhance the user experience.
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Design and implement performant, scalable ELT (Extract, Load, Transform) data pipelines, considering an ML model's lifecycle (training and inference).
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Take responsibility for technical problem solving and meeting ML product objectives creatively in ambiguous scenarios.
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Participate in the on-call rotation for production support.
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Drive best practices including ML research methodologies, coding standards, code reviews, source control management, development processes, build processes, testing and release, and operational excellence.
Requirements
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Advanced degree in computer science, data science, machine learning, or related field, or equivalent work experience.
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6+ years of professional experience in software engineering designing and building ML-driven products, with at least 3 years focused on production ML systems.
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Fundamental knowledge of Data Engineering and extensive experience in developing and deploying ML models, as well as building and maintaining ML pipelines and products.
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Experience in applying scientific method: hypothesis formulation and testing, exploratory data analysis, cross-validation, reproducible research, and structured reporting/documentation, result explanation and presentation.
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Experience designing, deploying, and operating scalable ML systems in production. This includes responsibility for model selection, performance benchmarking, and lifecycle management to solve real-world business problems.
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Proficiency in Python and general ML ecosystem tooling in data processing and modelling (such as NumPy, Pandas, Scikit-learn, PyTorch, etc.).
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Experience in designing and building products using public cloud services such as AWS.
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Excellent verbal and written communication skills in English, and ability to convey research findings and implications to both technical and non-technical audiences.
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Ability to work effectively in cross-functional and distributed teams across different time zones.
Nice To Have
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Experience with security design principles and best practices.
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Experience working with big data technologies such as Hive, Trino, Spark, BigQuery, and Redshift.
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OSS contribution experiences.
Physical requirements
3 days at Treasure Data Office
About Treasure Data:
Treasure Data is the Intelligent Customer Data Platform (CDP) built for enterprise scale and powered by AI. Recognized as a Leader by Forrester and IDC, Treasure Data empowers the world’s largest and most innovative companies to deliver hyper-personalized customer experiences at scale that increase revenue, reduce costs, and build trust.
Through unique capabilities such as the Diamond Record, AI Agent Foundry, and AI Decisioning with Real-Time Personalization, Treasure Data enables marketing and CX teams to personalize cross-channel engagement in real-time, optimize marketing spend while increasing ROI, and drive customer lifetime value through more intelligent retention and loyalty.
Our Dedication to You:
We value and promote diversity, equity, inclusion, and belonging in all aspects of our business and at all levels. Success comes from acknowledging, welcoming, and incorporating diverse perspectives.
Diverse representation alone is not the desired outcome. We also strive to create an inclusive culture that encourages growth, ownership of your role, and achieving innovation in new and unique ways. Your voice will be heard, and we will help amplify it.
Agencies and Recruiters:
We cannot consider your candidate(s) without a contract in place. Any resumes received without having an active agreement will be considered gratis referrals to us. Thank you for your understanding and cooperation!