[Remote] Data Scientist, AI Data Foundations
Note: The job is a remote job and is open to candidates in USA. MeridianLink is a company focused on data engineering and AI applications. The Data Scientist in AI Data Foundations will design and build curated data structures for AI and ML applications, ensuring high-quality data for model training and inference while leading data discovery efforts to uncover trends in lending and account-opening data.
Responsibilities
- Build and maintain vector stores for RAG: Design embedding pipelines, chunking strategies, indexing approaches, and refresh patterns for the vector stores powering retrieval-augmented generation across MeridianLink products
- Own the feature store: Design, build, and operate feature store assets used for model training and online/offline inference, including feature definitions, freshness SLAs, lineage, point-in-time correctness, and reuse across teams
- Design graph data structures: Build graph databases that model relationships between applicants, applications, products, lenders, decisions, and outcomes — and make them queryable for both AI use cases and analytical investigations
- Lead data discovery: Profile our lending, deposit, and behavioral datasets to identify hidden trends, segments, anomalies, and potential model drivers; turn findings into actionable hypotheses for product, risk, and growth teams
- Engineer for AI consumption: Build the curated, AI-ready datasets that downstream model builders, application engineers, and analysts rely on — with appropriate quality, documentation, and governance baked in
- Evaluate retrieval and feature quality: Define and run evaluation frameworks for RAG retrieval quality, feature drift, embedding quality, and graph completeness; iterate based on what the metrics tell you
- Partner with model builders: Work closely with ML engineers and applied scientists to make sure the data structures you build accelerate their work rather than slow it down
- Champion responsible data use: Partner with governance, security, and compliance to ensure that AI-facing data assets respect data classification, customer consent, and regulatory boundaries from day one
- Communicate findings: Translate discovery work into clear narratives — write-ups, notebooks, dashboards, and short presentations — that help non-technical stakeholders act on what the data is showing
Skills
- 4–7 years of experience in a data science, ML engineering, or applied data role, with a meaningful portion of that time spent building data assets that other people's models or applications consumed
- Hands-on experience designing and operating vector stores for RAG or semantic search, including embedding generation, chunking, indexing, and retrieval evaluation
- Experience building or operating a feature store (e.g., Databricks Feature Store, Feast, or a custom internal platform), including offline training and online serving patterns and point-in-time correctness
- Experience modeling and building graph data structures using Neo4j, TigerGraph, Azure Cosmos DB Gremlin, or similar graph databases — and writing graph queries to answer real questions
- Strong proficiency in Python (pandas, NumPy, scikit-learn, PySpark) and SQL; comfortable working day-to-day in Databricks notebooks and jobs
- Practical experience with embedding models and LLM tooling (e.g., Hugging Face transformers, OpenAI / Azure OpenAI APIs, LangChain or similar) in a production or near-production context
- Demonstrated data discovery skills: profiling messy real-world datasets, surfacing non-obvious patterns, validating findings statistically, and explaining them clearly
- Solid grounding in classical ML concepts — supervised vs. unsupervised learning, train/test discipline, leakage, evaluation metrics — even though you will not own model training day-to-day
- Strong written and verbal communication skills; able to write up findings for both technical and business audiences
- Experience working in a SaaS or FinTech environment, particularly with lending, deposit, credit, fraud, or KYC/AML data
- Experience with Databricks-native AI/ML tooling: Databricks Vector Search, Databricks Feature Store, MLflow, and Unity Catalog
- Familiarity with open-source vector databases such as pgvector, Pinecone, Weaviate, Chroma, or FAISS, and a clear point of view on when to use which
- Experience with Microsoft Azure data and AI services (Azure OpenAI, Azure AI Search, ADLS Gen2)
- Experience evaluating RAG systems end-to-end (recall@k, faithfulness, answer quality, hallucination measurement)
- Exposure to graph algorithms (community detection, link prediction, centrality) applied to real business problems
- Bachelor's or Master's degree in Computer Science, Statistics, Mathematics, Engineering, or a related quantitative field, or equivalent professional experience
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