Job Board
LogoLogo

Get Jobs Tailored to Your Resume

Filtr uses AI to scan 1000+ jobs and finds postings that perfectly matches your resume

Launch Potato Logo

Senior Machine Learning Engineer, Recommendation Systems

Launch Potato

Salary not specified
Sep 5, 2025
Leon County, TX, US
Apply Now

Launch Potato is seeking a Machine Learning Engineer to build the personalization engine behind its portfolio of brands, connecting consumers with leading brands through data-driven content and technology.

Requirements

  • 5+ years building and scaling production ML systems with measurable business impact
  • Experience deploying ML systems serving 100M+ predictions daily
  • Strong background in ranking algorithms (collaborative filtering, learning-to-rank, deep learning)
  • Proficiency with Python and ML frameworks (TensorFlow or PyTorch)
  • Skilled with SQL and modern data warehouses (Snowflake, BigQuery, Redshift) plus data lakes
  • Familiarity with distributed computing (Spark, Ray) and LLM/AI Agent frameworks
  • Track record of improving business KPIs via ML-powered personalization

Responsibilities

  • Build and deploy ML models serving 100M+ predictions per day to personalize user experiences at scale
  • Enhance data processing pipelines (Spark, Beam, Dask) with efficiency and reliability improvements
  • Design ranking algorithms that balance relevance, diversity, and revenue
  • Deliver real-time personalization with latency <50ms across key product surfaces
  • Run statistically rigorous A/B tests to measure true business impact
  • Optimize for latency, throughput, and cost efficiency in production
  • Partner with product, engineering, and analytics to launch high-impact personalization features

Other

  • Experience with A/B testing platforms and experiment logging best practices
  • Collaborative: Thrive working with engineers, PMs, and analysts to scope features
  • Analytical Thinking: Break down data trends and design rigorous test methodologies
  • Ownership Mentality: Own your models post-deployment and continuously improve them
  • Execution-Oriented: Deliver production-grade systems quickly without sacrificing rigor