Job Closed
This listing is no longer active.
Passionate music fans. Innovative tech pros. Perfect harmony. Join our band.
Staff Machine Learning Engineer, Podcast
Location
New York
Posted
59 days ago
Salary
$227.5K - $325.0K / year
Seniority
Lead
Job Description
Staff Machine Learning Engineer, Podcast
Spotify
• contribute to designing, scaling/building, evaluating, integrating, shipping, and refining reward signals for recommendations by hands-on ML development • promote and role-model best practices of ML systems development, testing, evaluation • lead collaborations and align across PZN to integrate and A/B test mid-term signals in various recommendation systems
Job Requirements
- strong background in machine learning
- expertise in statistics and optimization
- experience in sequential models, transformers, generative AI and large language models
- hands-on experience with large cross-collaborative machine learning projects
- hands-on experience implementing production machine learning systems at scale in Java, Scala, Python, or similar languages
- experience with PyTorch, Ray, Hugging Face and related tools
- experience with large scale, distributed data processing frameworks/tools like Apache Beam, Apache Spark, or Scio
- cloud platforms like GCP or AWS
- care about agile software processes, data-driven development, reliability, and disciplined experimentation
Benefits
- health insurance
- six month paid parental leave
- 401(k) retirement plan
- monthly meal allowance
- 23 paid days off
- 13 paid flexible holidays
- paid sick leave
Related Guides
Related Job Pages
More Machine Learning Engineer Jobs
Senior AI/ML Engineer – Founding Technical Lead
VulcuryVulcury invests in early stage startups and advises companies of all sizes on strategy, growth, and efficiency
• Own the technical build of the first-generation Trustbridge supplier app end-to-end • Lead and mentor a team of junior engineers and interns based in India • Translate business and product specifications into technical plans • Collaborate with the founder and Fractional CTO on architecture decisions
Senior AI/ML Engineer – Founding Technical Lead
VulcuryVulcury invests in early stage startups and advises companies of all sizes on strategy, growth, and efficiency
• Own the technical build of the first-generation Trustbridge supplier app end-to-end: architecture, model selection, agent design, inference layer, and production deployment. • Lead and mentor a team of 2–4 junior engineers and interns based in India. • Set the technical bar, run code reviews, and grow the team's capability. • Translate business and product specifications into buildable technical plans. • Work directly with the founder, who owns domain logic but is not a builder. • Collaborate with our Fractional CTO (background in major financial technology) on architecture decisions and technical strategy. • Once the first-generation product is in production, help shape the cross-portfolio semantic layer that connects Trustbridge, Calisade, and future ventures. • Be redeployed, over time, to new internal products and external client engagements as the practice grows.
• deliver AI/ML models from initial planning through to deployment • create AI-based prototypes to evaluate model and design options • train and tune models to optimize algorithmic outcomes • integrate models into production systems • conduct research into emerging AI models and technologies • support operational excellence and customer-centricity
Senior Machine Learning Engineer – Generative AI, Full-Stack Applications
CVS HealthBringing our heart to every moment of your health.
• Implement AI-powered services and application features that integrate enterprise data and systems with LLMs and ML models • Contribute to solution design by proposing approaches, identifying dependencies, and documenting tradeoffs and implementation plans • Deliver features using strong engineering practices: test automation, code review, CI/CD, and operational readiness • Build and tune RAG pipelines and implement prompt patterns • Contribute to evaluation suites and regression testing to ensure quality and safety • Implement guardrails and security controls under guidance from senior engineers • Instrument services with metrics, traces, logs, and dashboards • Support performance and cost optimization efforts



