AI Data Analyst

RenishawDayton, OH
$78,800 - $131,300Hybrid

About The Position

LexisNexis Risk Solutions is seeking an AI Data Analyst to support teams in preparing and maintaining AI‑ready data for use in AI tools, copilots, and intelligent agents. This role focuses on data readiness, quality, metadata, and governance, helping teams understand how to structure, document, and manage their data so it can be safely and effectively used by AI systems. The AI Data Analyst partners with data engineering, AI, and governance teams to assess data readiness, identify gaps and recommend improvements. This role does not own end‑to‑end data pipelines and is not expected to be a deep technical expert in RAG or embeddings, but should have a solid working understanding of AI‑driven data needs.

Requirements

  • Proven experience in data analysis, analytics engineering, data operations, or data quality roles.
  • Good understanding of data quality principles and how poor data impacts downstream systems.
  • Experience working with structured and unstructured data (tables, files, documents, knowledge assets).
  • Proficiency in SQL and comfort investigating data issues.
  • Familiarity with data governance fundamentals (classification, access controls, ownership, retention).
  • Strong communication skills and ability to explain data concepts to non‑technical stakeholders.

Nice To Haves

  • Exposure to AI‑enabled products, copilots, or search‑based solutions.
  • Basic familiarity with AI data concepts such as semantic search, embeddings, or retrieval patterns.
  • Experience working in enterprise or regulated environments.
  • Experience contributing to standards, playbooks, or shared data practices.

Responsibilities

  • Work with product and delivery teams to assess whether datasets and content are fit for AI use cases.
  • Help teams understand and apply AI data readiness standards, including quality, freshness, metadata, and access expectations.
  • Identify common data issues that impact AI outcomes (e.g., stale data, unclear ownership, missing metadata) and recommend remediation steps.
  • Contribute to repeatable checklists, guidance, or documentation that help teams prepare data for AI.
  • Support data quality checks focused on accuracy, completeness, consistency, and timeliness for AI‑consumed data.
  • Assist in monitoring and validating data freshness and relevance, escalating issues to engineering or data owners as needed.
  • Help teams improve data clarity and usability to reduce ambiguity in AI outputs.
  • Assist teams in improving metadata, documentation, and business descriptions so AI systems can better interpret content.
  • Support basic semantic labeling or categorization efforts that improve AI retrieval and reasoning (in coordination with engineering teams).
  • Promote good content hygiene practices (clear structure, consistent naming, well‑scoped documents).
  • Support the upkeep and documentation of approved data sources used by AI solutions.
  • Help ensure data included in AI retrieval scenarios is appropriate, governed, and up to date.
  • Collaborate with AI and platform teams on data inclusion/exclusion decisions without owning technical implementation.
  • Help teams align AI‑consumed data with enterprise governance requirements, including classification, access controls, and retention.
  • Support basic data lineage and ownership documentation for AI‑relevant datasets.
  • Partner with governance and security teams by surfacing risks or gaps; does not act as final approval authority.

Benefits

  • Medical Inpatient and Outpatient Insurance
  • Life Assurance Policies
  • Modern Family Benefits
  • Long Service Award
  • Celebratory Allowance/Gifts
  • Flexible Benefits Plan
  • Employee Assistance Program
  • Flexible Working Arrangements
  • Access to Learning and Development Resources
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