Job Title: Backend Java Developer with Graph Database Knowledge
Location: San Diego CA
LOCAL ONLY
Pay Rate : On C2C
Job Summary:
We are looking for a talented Backend Java Developer with hands-on experience in graph databases to join our growing engineering team. You will be responsible for developing scalable and efficient backend services using Java and designing and integrating complex data models with graph database systems such as Neo4j or Amazon Neptune.
Key Responsibilities:
- Design develop and maintain backend services and APIs using Java (Spring Boot or similar frameworks)
- Build and optimize graph-based data models and queries using technologies like Neo4j Cypher or Gremlin
- Integrate graph databases with microservices to deliver advanced querying capabilities and relationship-based analytics
- Collaborate with front-end developers data engineers and product managers to deliver end-to-end solutions
- Ensure code quality through testing code reviews and adherence to software development best practices
- Monitor and troubleshoot system performance especially around data modeling and query execution in graph systems
- Design and implement secure and efficient data access and storage strategies
Required Qualifications:
- Bachelors or Masters degree in Computer Science Engineering or related field
- 3 years of backend development experience in Java (Spring Boot Hibernate etc.)
- Hands-on experience with graph databases such as Neo4j Amazon Neptune ArangoDB or OrientDB
- Strong understanding of graph theory and data modeling techniques for graphs
- Proficiency in graph query languages such as Cypher or Gremlin
- Familiarity with RESTful APIs JSON and HTTP protocols
- Experience with relational and NoSQL databases
- Knowledge of version control tools (e.g. Git) and CI/CD workflows
Preferred Qualifications:
- Experience designing recommendation systems fraud detection or knowledge graphs
- Understanding of GraphQL and its integration with graph databases
- Familiarity with containerization (Docker) and orchestration tools (Kubernetes)
- Exposure to cloud platforms like AWS GCP or Azure (especially services like Amazon Neptune)
- Performance tuning of large-scale graph databases