Description & Requirements
About the Role
Join our team as a Principal MLOps Engineer and help build the infrastructure and deployment systems for a revolutionary new music discovery platform. You'll play a critical role in designing and implementing scalable, reliable, and efficient systems that support our platform's machine learning models and data pipelines. This includes setting up robust development environments for ML engineers, managing model training and experimentation workflows, building and operating data pipelines, and automating deployment of our recommendation systems. Our product is modern, challenging, and ambitious, delivering a first-class, highly engaging user experience that integrates content delivery, audio playback, machine learning, and recommendation systems. Join us in transforming the world of music consumption.
What You Will Do
- Operate in a fast-paced, startup-like environment to launch a new business within Harman.
- Work with a high degree of autonomy and ownership.
- Make critical early-stage development decisions to ensure long-term success.
- Serve as a strong technical voice on backend engineering, ML Engineering, DevOps, and MLOps considerations.
- Actively engage with product stakeholders in an iterative, dynamic environment.
- Develop a scalable, maintainable, and operable MLOps infrastructure to support both product launch and future growth.
- Collaborate closely with app developers and engineers to ensure project success.
What You Need to Be Successful
- Experience: 10+ years across MLOps and DevOps
- Technical Skills: Strong understanding of modern MLOps and DevOps tools and best practices, including model training and deployment, experiment management, scalable data pipelines, and real-time / eventually consistent systems.
- Programming Languages: Proficient in Python and bash
- Cloud Platforms: Extensive hands-on experience with GCP, AWS, or Azure.
- Deployment Technologies: Expertise with Docker, Kubernetes, Terraform, and Serverless architectures.
- Infrastructure Management: Proven experience with data pipelines, infrastructure as code (IaC), monitoring, logging, and alerting systems.
- System Architecture: Strong knowledge of components such as databases, caches, event streaming, queues, data warehouses, and ML-specific data infrastructure.
- Automation: Skilled in automating infrastructure, deployments, model training pipelines, and system management using industry-standard tools.
- MLOps-Specific Skills: Familiarity with setting up robust development environments for ML engineers, managing model experimentation workflows, building and operating data pipelines, and automating end-to-end ML lifecycle management.
Bonus Points if You Have
- Bachelor's degree in computer science or another related field.
- A passion for music and interest in working on products that bring joy to music lovers worldwide.
- Experience working with machine learning workloads in production
- Experience with social products or recommendation systems
What Makes You Eligible
- Position is 100% Remote
- You must be available for meetings and team interaction during typical continental US business hours.
- Be willing to travel up to 5%, domestically and internationally.
- Successfully complete a background investigation and drug screen as a condition of employment.
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Pay is based on a wide range of factors, including, without limitation, skill set, experience, training, location, and business need. While the above range is a reasonable estimate of the wage range for this position, please note the disclosed range estimate has not been adjusted for the applicable geographical differential associated with the location where the position may be filled.