May 21, 2026 Melissa Kashouh

Whoop – Staff AI/ML Researcher (Foundation AI)

  • Anywhere

● TALENT ONE MARKET INTELLIGENCE: WHOOP

🔥 TALENT LIQUIDITY:
Extremely tight. The intersection of wearable-domain expertise and foundation model research is a niche with fewer than 500 qualified candidates globally.

📈 ALPHA SIGNAL:
This role is the ‘brain’ of the company. By owning the foundation model architecture, you are building the IP that will define the company’s valuation in the next funding round, directly impacting your equity upside and long-term mortgage-crushing potential.

EST. COMPENSATION
$260k – $340k Base + Significant Equity Package
SECTOR HEAT
85.8/100
CANDIDATE PROTOCOL: Focus your narrative on ‘multimodal fusion’—specifically how you handle noisy, high-frequency sensor data alongside sparse clinical/text data. This is the specific technical hurdle they are failing to clear.

Official Role Description: Whoop

WHOOP is an advanced health and fitness wearable on a mission to unlock human performance and extend healthspan. By providing members with a deep understanding of their bodies, behaviors, and daily lives, WHOOP empowers healthier choices and peak performance.We are seeking a Staff Machine Learning Engineer to join our Foundation AI team. This team builds the multimodal foundation models that underpin WHOOP’s next generation of intelligent, personalized, and health-enhancing experiences. These models integrate data across wearable sensors, language, biomarkers, clinical information, and self-reported inputs to create scalable AI systems that understand human physiology and behavior.In this role, you’ll serve as a senior individual contributor driving the research, development, and deployment of large-scale multimodal models. You’ll collaborate closely with data scientists, ML engineers, and cross-functional partners to push the boundaries of deep learning and ensure our models deliver measurable value to WHOOP members.RESPONSIBILITIES:Design, train, and optimize large-scale multimodal foundation models that integrate wearable sensor data, text, biomarkers, and behavioral data.Conduct applied research in self-supervised learning, representation learning, and downstream task fine tuning to advance WHOOP’s core model capabilities.Develop scalable, distributed training pipelines for large models on high-performance compute environments.Collaborate with MLOps, data engineering, and software engineering teams to operationalize models for production deployment, ensuring robustness, reproducibility, and observability.Partner with product and research teams to translate foundation model capabilities into downstream features that deliver meaningful member value.Contribute to the technical roadmap and architectural direction for foundation model development at WHOOP.Serve as a technical mentor for other data scientists, sharing best practices in deep learning, large-scale training, and multimodal data integration.Ensure models adhere to WHOOP’s standards for ethical, transparent, and privacy-preserving AI.QUALIFICATIONS:Advanced degree (Master’s or Ph.D.) in Computer Science, Machine Learning, Electrical Engineering, or a related field, or equivalent professional experience.7+ years of experience in applied ML, AI research, or large-scale modeling, with a track record of delivering production systems.Expertise in modern deep learning (e.g., transformers, state space models), multimodal model training. Proficiency in Python and deep learning frameworks (e.g., PyTorch, TensorFlow). Experience building and scaling large datasets and training large models in mulit-node, multi-gpu distributed compute environments. Familiarity with best practices for data, model, and context parallelisms.Strong applied experience with representation learning, self-supervised methods, and post-training for downstream applications.Experience with reinforcement learning for post-training foundation models (PPO, DPO, GRPO etc.). Familiarity with MLOps best practices including model versioning, evaluation, CI/CD for ML, and cloud-based compute.Excellent communication skills and ability to collaborate cross-functionally with engineers, researchers, and product teams.Passion for WHOOP’s mission to improve human performance and extend healthspan through science and technology.This role is based in the WHOOP office located in Boston, MA. The successful candidate must be prepared to relocate if necessary to work out of the Boston, MA office.  Interested in the role, but don’t meet every qualification? We encourage you to still apply! At WHOOP, we believe there is much more to a candidate than what is written on paper, and we value character as much as experience. As we continue to build a diverse and inclusive environment, we encourage anyone who is interested in this role to apply. WHOOP is an Equal Opportunity Employer and participates in E-verify to determine employment eligibility.  It is unlawful in Massachusetts to require or administer a lie detector test as a condition of employment or continued employment. An employer who violates this law shall be subject to criminal penalties and civil liability. The WHOOP compensation philosophy is designed to attract, motivate, and retain exceptional talent by offering competitive base salaries, meaningful equity, and consistent pay practices that reflect our mission and core values. At WHOOP, we view total compensation as the combination of base salary, equity, and benefits, with equity serving as a key differentiator that aligns our employees with the long-term success of the company and allows every member of our corporate team to own part of WHOOP and share in the company’s long-term growth and success. The U.S. base salary range for this full-time position is $215,000-$260,000. Salary ranges are determined by role, level, and location. Within each range, individual pay is based on factors such as job-related skills, experience, performance, and relevant education or training. In addition to the base salary, the successful candidate will also receive benefits and a generous equity package. These ranges may be modified in the future to reflect evolving market conditions and organizational needs. While most offers will typically fall toward the starting point of the range, total compensation will depend on the candidate’s specific qualifications, expertise, and alignment with the role’s requirements. Learn more about WHOOP.

Melissa Kashouh

Founder of Talent One I help enterprise leaders and investors forecast hiring surges, talent shortages, and market friction up to six weeks in advance using our patent-pending predictive intelligence platform. As the founder of Talent One AI (the intelligence layer of The Talent One), I built a system that turns lagging recruiting data into actionable foresight — helping companies reduce technical debt, protect employer brand, and hire ahead of the curve. Based in Providence, Rhode Island.
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