Agivant Technologies
Website:
agivant.com
Job details:
We are seeking a Graph Database Engineer with deep expertise in Neo4j to design, build, and optimize scalable graph data solutions. This role focuses on developing high-performance graph infrastructures that power knowledge graphs and AI-driven applications. The ideal candidate will bring strong hands-on experience with Cypher query optimization, graph data modeling, and database administration. You will work closely with data, engineering, and AI teams to enable efficient data relationships and insights at scale.
Key Responsibilities
- Design and implement scalable graph database architectures using Neo4j.
- Develop, optimize, and maintain complex Cypher queries for high-performance data retrieval.
- Model complex datasets into efficient graph structures aligned with business use cases.
- Monitor and tune database performance, including indexing strategies and query execution plans.
- Manage database operations such as backups, recovery, clustering, and scaling.
- Collaborate with data scientists and AI teams to support knowledge graph and RAG-based applications.
- Ensure data integrity, consistency, and security across graph systems.
- Troubleshoot performance bottlenecks and implement improvements in query and schema design.
- Automate routine database maintenance and monitoring tasks.
- Document graph schemas, data flows, and operational procedures for internal stakeholders.
Requirements
Required Qualifications
- Strong hands-on experience with Neo4j in production environments.
- Proficiency in writing and optimizing Cypher queries for large-scale datasets.
- Solid understanding of graph data structures, relationships, and traversal techniques.
- Experience with indexing, query planning, and performance tuning in graph databases.
- Knowledge of database administration including backup, recovery, and clustering.
- Familiarity with integrating graph databases into application ecosystems via APIs or services.
- Experience working with large, complex datasets in distributed environments.
- Understanding of data modeling principles for knowledge graphs or connected data systems.
Preferred Qualifications
- Experience with graph-based AI/ML use cases such as recommendation systems or fraud detection.
- Exposure to Neo4j Aura or other managed graph database services.
- Familiarity with ETL pipelines and data ingestion into graph databases.
- Experience working with cloud platforms (AWS, GCP, or Azure).
- Knowledge of other database systems (SQL/NoSQL) and data integration patterns.
Experience Requirements
- 3–6 years of experience in database engineering or backend development.
- At least 2+ years of hands-on experience with Neo4j or other graph databases.
- Proven experience working on data-intensive applications or graph-based systems.
Click on Apply to know more.