Data Scientist (l5) - Content Understanding

Netflix Netflix · Big Tech · United States · Remote · Data & Insights

Netflix is seeking a Data Scientist to join the Merchandising and Content Understanding team. This role will focus on developing content understanding signals across all formats and improving the discovery experience on their service. The Data Scientist will act as a strategic partner, define and execute roadmaps for measuring impact and improving member experience using Causal Inference and Machine Learning, and partner with other leaders to refine and scale Causal Inference model-based systems. The role requires a proven track record in Experimentation and Causal Inference methods, proficiency in Python, SQL, and common Causal Inference frameworks, and 4+ years of relevant experience.

What you'd actually do

  1. Act as strategic partner for stakeholders and cross-functional collaborators to identify business opportunities and enhance business strategies with novel data science methods in the live event space
  2. Define and execute on roadmaps for measuring the impact of content merchandising and improving member experience with Causal Inference and Machine Learning
  3. Partner closely with other business leaders, product managers, and other data scientists to refine and scale Causal Inference model based systems
  4. Present your research and insights to all levels of the company
  5. Become a regional expert on Merchandising and Content Understanding Data Science and Engineering, helping educate and connect with regional offices

Skills

Required

  • Python
  • SQL
  • Experimentation (HTEs, multiple hypotheses correction)
  • propensity score matching
  • double machine learning
  • 4+ years of relevant experience with Experimentation and Causal Inference applications

Nice to have

  • standard tech stack
  • common Causal Inference frameworks
  • Exceptional communication and collaboration skills
  • strong business acumen
  • Comfortable with ambiguity
  • able to take ownership
  • thrive with minimal oversight and process

What the JD emphasized

  • Causal Inference
  • Experimentation
  • Causal Inference

Other signals

  • content understanding signals
  • improving the discovery experience
  • Causal Inference and Machine Learning
  • Causal Inference model based systems