Role overview

Staff Machine Learning Engineer, Consumer

Requirements and responsibilities

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Details

  • Relevance & recommendation systems (content, search, notifications)
  • AI-powered discovery & LLM-driven experiences
  • Content and user understanding & large-scale representation learning
  • Large-scale ML infrastructure and pipelines
  • Lead end-to-end ML initiatives from ideation through production and iteration, shaping technical direction and translating product goals into scalable solutions
  • Architect, build and deploy large-scale ML systems across recommendation, search, and content/user understanding, including retrieval/ranking models, representation learnings embeddings optimizations, and LLM or GenAI-powered capabilities
  • Drive measurable impact on user engagement, discovery, and long-term value
  • Collaborate with cross-functional teams to align product and technical roadmaps and unlock key future ML capabilities
  • Stay at the forefront of AI research, evaluating and introducing new AI/ML paradigms to keep Reddit’s ML ecosystem at the cutting edge
  • Contribute to the development of best practices, guidelines, and ethical AI principles for responsible LLM development and deployment
  • Mentor and guide senior and mid-level ML engineers, fostering a culture of excellence, innovation, and knowledge sharing
  • Set technical vision and drive technical discussions, present findings to leadership, and contribute to long-term ML planning and decision-making
  • 7+ years of experience building, deploying, and operating machine learning systems in production
  • Deep understanding of machine learning methods, spanning classical approaches and modern deep learning (e.g., Transformers, GNN, etc)
  • Expert at developing and productionizing models using TensorFlow, PyTorch, or Hugging Face Transformers
  • Experience building production-quality code incorporating testing, evaluation, and monitoring using object-oriented programming, including experience in Python and Golang
  • Experience designing and scaling ML systems, including data pipelines, feature engineering, model training/serving, and production monitoring
  • Excellent communication and collaboration skills, with the ability to discuss complex technical topics with diverse teams and translating product needs into scalable ML solutions
  • Track record of driving measurable impact through applied machine learning in real-world products
  • Subject matter expertise in one of the following domains:
  • Recommender systems
  • Search systems (lexical and semantic retrieval and ranking)
  • Content understanding (NLU/NLP/LLM, topic/taxonomy modeling, interest graphs or clustering, and multimodal understanding)
  • Familiarity with distributed systems and large-scale data processing frameworks (Spark, Kafka, Ray, Airflow, BigQuery, Redis, etc.)
  • Experience working with real-time systems and low-latency production environments
  • Experience with LLM/GenAI techniques, including but not limited to LLM evaluation, alignment, fine-tuning, knowledge distillation, RAG/agentic systems and productionizing LLM-powered products at scale
  • Strong experimentation rigor, with experience formulating clear hypotheses, designing actionable learning plans and building offline/online correlations
  • Advanced degree in Computer Science, Machine Learning, or related quantitative field
  • Recommender systems
  • Search systems (lexical and semantic retrieval and ranking)
  • Content understanding (NLU/NLP/LLM, topic/taxonomy modeling, interest graphs or clustering, and multimodal understanding)
  • Home Experience
  • ML Understanding
  • Feed Relevance
  • Answer Experience
  • Search and Answers Relevance
  • Search Experience
  • Comprehensive Healthcare Benefits and Income Replacement Programs
  • 401k with Employer Match
  • Global Benefit programs that fit your lifestyle, from workspace to professional development to caregiving support
  • Family Planning Support
  • Gender-Affirming Care
  • Mental Health & Coaching Benefits
  • Flexible Vacation & Paid Volunteer Time Off
  • Generous Paid Parental Leave
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Browse stack
FocusMachine LearningRole area
Seniority signalLeadCandidate level
StackGolang, Python, SparkPrimary skills
Location1 accepted countryEligibility

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