Senior Level Machine Learning Jobs
Senior level machine learning jobs place experienced practitioners in charge of model architecture decisions, production system ownership, and the cross-functional teams that ship them. Hiring concentrates across Technology & Software, Electronics & Hardware, and Banking & Financial Services, with 45% of openings remote or hybrid, and employers like Apple, Netflix, and Pinterest hiring at this level now.
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We are seeking an Associate Director, Core Algorithms (Cloud) to lead the teams responsible for WHOOP's cloud-based algorithmic intelligence — the models and systems that transform physiological data into the sleep, recovery, and training insights our members rely on daily. This role is also responsible for ensuring our cloud algorithms evolve alongside WHOOP hardware, partnering with Sensor Intelligence and Hardware teams to translate new sensor capabilities into production-grade algorithmic experiences.
You will own the technical vision, execution, and organizational health of this team. You'll drive the evolution of our core production algorithms such as workout detection, strain, and sleep staging toward higher accuracy, better member experiences, and more mature development practices. You will partner closely with ML Platform, Sensor Intelligence, Research, Product, and Software Engineering to define what WHOOP algorithms can enable — not just how they perform technically, but how they show up for members.
This is a role for someone who has built and shipped physiological ML at scale in a consumer product, who has a deep product instinct for what algorithms mean to end users, and who knows how to elevate an ML organization's practices: raising the bar on tooling, processes, and standards to match the ambition of the work.
RESPONSIBILITIES
- Lead the cloud ML team responsible for the algorithms powering sleep, recovery, and training
- Directly manage applied ML scientists and ML engineers; provide coaching, career development, and performance feedback that grows individual contributors into strong technical leaders
- Ensure the technical quality bar for algorithm development is maintained by establishing the processes, reviews, and standards that guarantee rigor from research through deployment, and diving into designs and architectural decisions where necessary
- Help drive the vision for what WHOOP algorithms and next-generation sensors can enable; advocate for member experience and push the boundaries of what our data makes possible
- Ensure cloud algorithms remain compatible with future hardware generations; partner with Sensor Intelligence and Hardware to evolve proof-of-concept algorithms that leverage new sensor capabilities and bring them to production readiness
- Establish and improve development lifecycle practices: experiment management, model validation, deployment pipelines, and production monitoring
Partner with ML Platform / MLOps to define requirements and drive maturity improvements across experiment tracking, model monitoring, deployment automation, and observability
- Drive cross-functional alignment with Sensor Intelligence, Product, Software Engineering, and Research teams
QUALIFICATIONS
- 8+ years of experience in machine learning or applied data science, with hands-on experience developing and shipping ML models for a consumer product
- 4+ years of people leadership experience directly managing machine learning scientists/engineers, with demonstrated growth of team members and a track record of building high-performing teams
- Experience scaling a production ML organization: growing teams and leaders, identifying gaps in the development lifecycle, and driving improvements that increase velocity, reliability, and rigor
- Deep product sense: ability to think about algorithms from the member's perspective, drive the vision for what algorithms can enable, and ensure the team is building toward meaningful user outcomes
- Ability to evaluate technical designs, guide architectural decisions, and ensure quality at the system level, without needing to write code day-to-day
- Experience defining and driving cross-functional programs with engineering, product, and science partners
- Strong communication skills with the ability to translate complex ML concepts to diverse audiences including product, engineering, and executive stakeholders
PREFERRED
- Experience building algorithms using physiological or wearable sensor data (e.g., PPG, accelerometer, temperature, bioimpedance)
- Experience managing through hardware-coupled development timelines where sensor availability and device generations constrain algorithm roadmaps
- Familiarity with time-series modeling, sequential data, and the specific challenges of continuous physiological monitoring
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Who's Hiring
- Apple63
- Netflix13
- Pinterest13
- Adobe12
- SentiLink12

Top Industries Hiring
- Technology & Software250
- Electronics & Hardware65
- Banking & Financial Services42
- Consulting & Professional Services28
- Media & Entertainment27
Senior Level Machine Learning Jobs: Frequently Asked Questions
How do I get a senior level machine learning job?
Employers at this level look for candidates who have owned the full lifecycle of a production ML system, not just contributed to one. Strong signals include leading model development from research through deployment, influencing architecture decisions across teams, and mentoring junior engineers. Publishing work, contributing to open-source projects, and demonstrating measurable business impact from your models all sharpen a senior-level candidacy considerably.
Which companies hire senior level machine learnings?
Companies hiring senior level machine learnings right now include Apple, Netflix, and Pinterest, based on current listings on Migrate Mate as of July 2026. Hiring at this level comes from a wide range of organizations, including technology platforms, financial services firms, healthcare companies, and enterprise software providers that run large-scale ML infrastructure.
Are there remote senior level machine learning jobs?
Yes, remote availability is strong at this level. About 45% of senior level machine learning openings are remote or hybrid as of July 2026, reflecting employer willingness to hire experienced practitioners regardless of location. On-site roles tend to cluster around research labs, regulated industries, or teams building hardware-adjacent systems.
What makes a machine learning role senior level?
Senior level machine learning roles are defined by ownership, not just execution. Expectations include setting the technical direction for a model or system, making architectural trade-offs independently, delivering results that affect product or business outcomes, and raising the skill level of the team around you. The distinction from mid-level work is accountability: senior engineers are responsible for outcomes, not just outputs.
Which industries hire the most senior level machine learnings?
Senior Level machine learning roles concentrate in Technology & Software, Electronics & Hardware, and Banking & Financial Services, based on current listings on Migrate Mate as of July 2026. These sectors invest heavily in ML at scale, where experienced practitioners are needed to build systems that are reliable, interpretable, and tightly connected to high-stakes business or operational decisions.