Search Machine Learning Research Engineer

This listing is synced directly from the company ATS.

Role Overview

This senior-level role involves designing and building core search platform components, training large-scale deep learning models for retrieval and ranking, and conducting advanced research in representation learning. The engineer will collaborate with cross-functional teams to deploy scalable models and optimize RAG pipelines, directly impacting the quality and performance of Perplexity's search technologies.

Perks & Benefits

This is a fully remote position offering flexibility in work location. The role involves collaboration with Data, AI, Infrastructure, and Product teams, suggesting a collaborative culture. Career growth opportunities include working on cutting-edge search technologies and potentially contributing to AI/ML research publications.

⚠️ This job was posted over 8 months ago and may no longer be open. We recommend checking the company's site for the latest status.

Full Job Description

Perplexity is seeking an experienced Senior Machine Learning Engineer to help build the next generation of advanced search technologies, with a focus on retrieval and ranking.

Responsibilities

  • Relentlessly push search quality forward — through models, data, tools, or any other leverage available

  • Architect and build core components of the search platform and model stack

  • Design, train, and optimize large-scale deep learning models using frameworks like PyTorch, leveraging distributed training (e.g., PyTorch Distributed, DeepSpeed, FSDP) and hardware acceleration, with a focus on retrieval and ranking models

  • Conduct advanced research in representation learning, including contrastive learning, multilingual, and multimodal modeling for search and retrieval

  • Deploy models — from boosting algorithms to LLMs — in a scalable and performant way

  • Build and optimize RAG pipelines for grounding and answer generation

  • Collaborate with Data, AI, Infrastructure, and Product teams to ensure fast and high-quality delivery

Qualifications

  • Deep understanding of search and retrieval systems, including quality evaluation principles and metrics

  • Proven track record with large-scale search or recommender systems

  • Strong proficiency with PyTorch, including experience in distributed training techniques and performance optimization for large models

  • Expertise in representation learning, including contrastive learning and embedding space alignment for multilingual and multimodal applications

  • Strong publication record in AI/ML conferences or workshops (e.g., NeurIPS, ICML, ICLR, ACL, CVPR, SIGIR)

  • Self-driven, with a strong sense of ownership and execution

  • Minimum of 3 years (preferably 5+) working on search, recommender systems, or closely related research areas


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