Brilliant Infotech Inc. | MBE Certified e-Verify Employer 200 Metroplex Dr, Suite 414 | Edison NJ - 08817 www.brilliantinfotech.com
Neo4j Platform Engineer
Location
United States
Posted
4 days ago
Salary
$50 - $55 / hour
Seniority
Mid Level
Job Description
Neo4j Platform Engineer
Brilliant Infotech, Inc.
Role Description We are seeking a Platform Engineer with a strong interest in DevSecOps practices, cloud-native platforms, containerization, and graph databases. This role is ideal for an engineer who is eager to learn, proactive in solving problems, and motivated to grow into a technical leader while contributing to the reliability, security, and scalability of our platform ecosystem. This Platform Engineer will work closely with development, security, and operations teams to support CI/CD pipelines, infrastructure automation, container platforms, and an internal LLM-enabled application built for Neo4j, while helping to establish and follow platform best practices. As a Platform Engineer - Neo4j you will: - Design, implement, and maintain CI/CD pipelines using modern DevSecOps practices, including Git-based workflows, artifact management, security controls integration, and containerized workloads (Docker/Kubernetes) - Develop automation solutions using scripting languages or AI platforms to automate operational tasks to improve platform reliability and efficiency - Provide platform and DevOps support for a graph database application, including deployments, upgrades, configuration management, and environment maintenance - Troubleshoot infrastructure issues across storage, networking, load balancers, firewalls, and security groups, analyzing logs and metrics to identify root causes and recommend solutions - Document platform best practices, promote operational standards, and support incident response and problem resolution efforts Qualifications - 3-4 years of experience in Platform engineering, DevOps, SRE, or system administration - Experience building, deploying, maintaining, and scaling Neo4j and related applications - Experience with Application Performance Monitoring (APM) systems, such as AppDynamics - Experience integrating with observability and monitoring/logging tools, such as Splunk - Must know containers, k8s, and Helm - Exposure to Kubernetes distributions; prefer RKE experience, but similar experience with other distributions such as OpenShift acceptable - Experience with Azure DevOps pipelines and deployments or similar (Jenkins, GitLab) - General cloud knowledge required, GCP experience preferred - Understand the Container Storage Interface and implemented applications, preferably Portworx CSI (PX-CSI) - Basic understanding of Networking concepts (TCP/IP, DNS, routing, firewalls) and Load balancing (application and network) - Strong troubleshooting and analytical skills - Exposure to API gateways and API management platforms - Understanding of security fundamentals (certificates, TLS, secrets management) - Eager to learn and grow technically in a fast-paced environment - Proactive and self-motivated, willing to take ownership of problems - Strong communication skills and ability to collaborate across teams - Interest in building reliable, secure, and scalable platforms
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