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Senior Research Engineer

mem0San Francisco Bay Area
FullTimeUSD 104,000 – 234,000 per year (estimated)pythonpytorchmachine-learning+4 more
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mem0 logo

Senior Research Engineer

mem0

Apply Now

Role Summary:

Own the end-to-end lifecycle of memory features—from research to production. You'll fine-tune models for extraction, updates, consolidation/forgetting, and conflict resolution; turn customer pain points into research hypotheses; implement and benchmark ideas from papers; and ship with Engineering to SOTA latency, reliability, and cost. You'll also build evaluation at scale (offline metrics + online A/Bs) and close the loop with real-world feedback to continuously improve quality.

What You'll Do:

- Fine-tune and train models for memory extraction, updates, consolidation/forgetting, and conflict resolution; iterate based on data and outcomes.

- Read, reproduce, and implement research: quickly prototype paper ideas, benchmark against baselines, and productionize what wins.

- Build evaluation at scale: automated relevance/accuracy/consistency metrics, gold sets, online A/B & interleaving, and clear dashboards.

- Work closely with customers to uncover pain points, turn them into research hypotheses, and validate solutions through field trials.

- Partner with Engineering to ship: design APIs and data contracts, plan safe rollouts, and maintain SOTA latency, reliability, and cost at scale.

Minimum Qualifications

- Experience in RAG or information retrieval (retrieval, ranking, query understanding) for real products.

- Model training/fine-tuning experience (LLMs/encoders) with a strong footing in experimental design and iteration.

- Strong Python; deep experience with PyTorch and familiarity with vLLM and modern serving frameworks.

- Built evaluation for complex vision-and-language tasks (gold sets, offline metrics, online tests).

- Able to orchestrate data pipelines to run these models in production with low-latency SLAs (batch + streaming).

- Clear, concise communication with stakeholders (engineering, product, GTM, and customers).

Nice to Have:

- Publications at venues like CVPR, NeurIPS, ICML, ACL, etc.

- Experience with privacy-preserving ML (redaction, differential privacy, data governance).

- Deep familiarity with memory/retrieval literature or prior work on memory systems.

- Expertise with embeddings, vector-DB internals, deduplication, and contradiction detection.

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