We are seeking ML Search Engineers who enjoy building a modern, machine-learning–driven search platform that powers product discovery across e-commerce ecosystem. As an ML Search Engineer, you’ll work hands-on implementing and supporting the machine learning pipelines that drive intelligent search, relevance, and intent understanding.
This role sits at the core of a newly formed Search Engineering team and works closely with a senior ML Architect and the Innovation organization. You’ll help take an existing ML search proof-of-concept and evolve it into a scalable, production-ready system used across dot-com and internal branch platforms.
This is a hands-on engineering role focused on building, operating, and improving ML systems in production—not research-only work.
Responsibilities:
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Implement ML-driven search components designed by the Search Architect
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Build and maintain Python-based ML pipelines for embeddings, inference, and relevance
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Work with vector search and similarity matching to support intent-based product discovery
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Support GPU-based workloads for model computation and inference
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Participate in MLOps workflows, including deployment, monitoring, retraining, and maintenance
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Help rerun and refresh embeddings as product data evolves over time
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Collaborate with Innovation, Architecture, and Engineering teams to produce ML systems
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Debug, optimize, and improve performance, reliability, and relevance of search pipelines
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Contribute to ongoing improvements as the search platform evolves
Required Qualifications:
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Strong Python development experience (primary language)
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Experience building or supporting machine learning pipelines in production
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Understanding of ML lifecycle concepts (training, inference, retraining, monitoring)
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Familiarity with MLOps principles
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Experience working with large datasets and model outputs
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Ability to work hands-on with evolving systems and ambiguous requirements
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Strong problem-solving and collaboration skills
Preferred Qualifications:
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Experience with vector databases or similarity search
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Exposure to embeddings, semantic search, or recommendation systems
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Experience with GPU-based workloads
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Cloud ML experience (GCP, AWS, or Azure)
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Prior work on e-commerce search, discovery, or relevance systems