Seemless Integration, Exceptional Results

Knowledge Graph Specialist

eTeam

About the job

Title: Knowledge Graph Curator / Specialist

Location: Region – EMEA Remote

Clients mission is to bring community and belonging to everyone in the world. Client is a community of communities where people can dive into anything through experiences built around their interests, hobbies, and passions. With more than 50 million people visiting 100,000+ communities daily, it is home to the most open and authentic conversations on the internet. From pets to parenting, skincare to stocks, there’s a community for everybody.

The Ads Content Understanding team’s mission is to build the foundational engine for interpretable and frictionless understanding of all organic and paid content. Leverage state-of-the-art applied ML and a robust Knowledge Graph (KG) to extract high-quality, monetization-focused signals from raw content — powering better ads, marketplace performance, and actionable business insights at scale. We are seeking a Knowledge Graph Expert to help us grow and curate our KG of entities and relationships, bringing it to the next level.

Role Overview

We are looking for a detail-oriented and strategic Knowledge Graph Curator. In this role, you will sit at the intersection of AI automation and human judgment. You will not only manage incoming requests from partner teams but also proactively shape the growth of our Knowledge Graph (KG) to ensure high fidelity, relevance, and connectivity. You will serve as the expert human-in-the-loop, validating LLM-generated entities and ensuring our graph represents the “ground truth” for the business.

What You’ll Do

1. Pipeline Management & Prioritization

â—Ź Manage Inbound Requests: Act as the primary point of contact for partner teams (Product, Engineering, Analytics) requesting new entities or schema changes.

â—Ź Strategic Prioritization: Triage the backlog of requests by assessing business impact, urgency, and technical feasibility.

2. AI-Assisted Curation & Human-in-the-Loop

â—Ź Oversee Automation: Interact with internal tooling to review entities generated by Large Language Models (LLMs). You will approve high-confidence data, edit near-misses, and reject hallucinations.

â—Ź Quality Validation: Perform rigorous QA on batches of generated entities to ensure they adhere to the strict ontological standards and factual accuracy required by the KG.

â—Ź Model Feedback Loops: Participate in ad-hoc labeling exercises (creation of Golden Sets) to measure current model quality and provide training data to fine-tune classifiers and extraction algorithms.

3. Data Integrity & Stakeholder Management

â—Ź Manual Curation & Debugging: Investigate bug reports from downstream users or automated anomaly detection systems. You will manually fix data errors, merge duplicate entities, and resolve conflicting relationships.

â—Ź Feedback & Reporting: Close the loop with partner teams. You will report on the status of their requests, explain why certain modeling decisions were made, and educate stakeholders on how to best query the new data.

Required Skills

Technical & Domain Expertise

â—Ź Knowledge Graph Fundamentals: Understanding of graph concepts (Nodes, Edges, Properties)

â—Ź Taxonomy & Ontology: Experience categorizing data, managing hierarchies, and understanding semantic relationships between entities.

â—Ź Data Literacy: Proficiency in navigating complex datasets. Experience with SQL, SPARQL, or Cypher is a strong plus.

â—Ź AI/LLM Familiarity: Understanding of how Generative AI works, common failure modes (hallucinations), and the importance of ground-truth data in training. Operational & Soft Skills

â—Ź Analytical Prioritization: Ability to look at a list of 50 tasks and determine the 5 that will drive the most business value.

â—Ź Attention to Detail: An “eagle eye” for spotting inconsistencies, typos, and logical fallacies in data.

â—Ź Stakeholder Communication: Ability to translate complex data modeling concepts into clear language for non-technical product managers and business stakeholders.

â—Ź Tool Proficiency: Comfort learning proprietary internal tools, ticketing systems (e.g., Jira), and spreadsheet manipulation (Excel/Google Sheets).

Share this job

Categories

Recruiter Features

Related Jobs

AmaliTech

Data Engineer

AmaliTech is looking for an experienced Data Engineer to join our data team

Aya Data

AI SOLUTIONS – PRODUCT ASSOCIATE

Manage project timelines and client communications

Raya

Senior Data Engineer, Data Products

You will be a founding member of the data engineering team

Turing

Remote Business Analyst

You will be working on projects to help fine-tune large language models

Deel

Data Scientist

Solve real world problems using Data Science

FAO

National Soil Information and Data Specialist

Data collection, systematization and harmonization of soil maps

Sporty Group

BI Analyst

Create dashboards that are used on a daily basis by product managers

Moralis

Senior ClickHouse Engineer

We’re looking for a dedicated and experienced ClickHouse DBA

Raya

Senior Data Scientist

We’re looking for a Senior Data Scientist

Testlio

Business Intelligence Engineer

We are hiring a Business Intelligence (BI) Engineer