Engineering Manager - Advertising

Spotify Spotify · Consumer · New York, NY · Advertising R&D

Engineering Manager for Spotify's Advertising team, focusing on foundational data, services, and tooling for the ad-serving ecosystem. Responsibilities include data architecture, integrity, targeting data propagation, and observability. The role involves leading a team of data and backend engineers, mentoring, managing OKRs, roadmaps, and fostering technical quality.

What you'd actually do

  1. Build and lead a robust team of data and backend engineers by attracting top talent, mentoring individuals and managing conflict.
  2. Work with product managers and lead the team to design and implement product features, while improving the quality of the current big-data intensive tools that exist for audiences and targeting.
  3. Lead the team to utilize, homogenize and make available for peer teams to use, diverse large-volume datasets built around user preferences, behavior, identity and location - gathered from a user's mobile as well as other connected platforms.
  4. Grow the technical expertise of the team around system design, quality and testing, scalability, performance and fault tolerance.
  5. Manage OKRs, roadmaps, career conversations, performance and accountability, and thereby carefully plan, track, and report on work of the team and identify problems early.

Skills

Required

  • leading, managing, coaching and mentoring software developers
  • object-oriented programming including Java, Python
  • working with high volume heterogeneous data
  • data modeling, data access and data storage techniques
  • designed and built distributed production services / pipelines with data processing frameworks like Scio, Storm, Spark and the Google Cloud Platform
  • led agile ceremonies
  • yearly and quarterly project roadmap planning
  • mentored and coached software engineers

Nice to have

  • Hadoop
  • BigTable
  • BigQuery
  • Hive

What the JD emphasized

  • big-data intensive tools
  • high volume heterogeneous data
  • distributed production services / pipelines