What are the responsibilities and job description for the F2F interview || Lead Java Developer || OFallon, MO (Local with DL) position at Shift Code Analytics?
Hi,
I hope you are doing well.
Please let me know if you are looking for a job change and interested in the below position.
Job Title: Lead Java Developer
Position Type: Contract
Location: O’Fallon, MO (Local with DL)
Description:
Interview: Video F2F
Responsible for identifying and resolving end-to-end performance bottlenecks across distributed systems, Spring Boot services, middleware components, and hybrid cloud environments (private cloud AWS). This role goes far beyond traditional testing by deeply analyzing container orchestration, networking paths, and system interactions under load. This position maps full system workflows, sets realistic latency budgets, and ensures each component meets its SLOs. Ideal candidates have extensive experience with high-scale, multi-region, and high-transaction platforms (e.g., financial systems, payment processing, or large enterprise SaaS) running in a Cloud environment.
Key Responsibilities
- Define service-level objectives (SLOs), performance budgets, and latency/throughput targets across services.
- Architect and champion comprehensive distributed tracing strategies (Dynatrace, AWS X-Ray, etc.).
- Analyze application, platform, and cloud behavior using deep-dive techniques such as heap dumps, thread dumps, flame graphs, logs, network traces, and storage I/O profiling.
- Review service and system architectures for performance risks (e.g., synchronous hops, excessive dependencies, misconfigured connection pools, poor cache placement).
- Conduct and lead root-cause analysis for performance incidents in production and pre-production environments.
- Develop capacity models and performance baselines for services running across cloud environments.
Areas of Expertise
- Application Layer: Spring Boot internals, JVM tuning, thread/heap management, concurrency debugging, optimization
- Container Runtime: PCF, Docker, container resource limits, CPU throttling, memory pressure
- Orchestrators: PCF, Kubernetes, ECS (autoscaling, pod health, scheduling issues)
- Networking: Service-to-service hops, TLS overhead, DNS, routing, load balancer configs (F5, Nginx, ALB/NLB), service mesh performance
- Storage: Latency, IOPS constraints, distributed file system behavior
- Caching & Middleware: Redis, Hazelcast, NATS, Kafka, RabbitMQ configuration and throughput tuning
- Databases: Connection pool tuning, slow queries, indexing, replication lag
- Cloud Layer: AWS compute/storage/network performance, regional latency, cross-cloud traffic patterns
Thanks & Regards,
Anikat Kumar
Sr. Technical Recruiter
ShiftCode Analytics Inc.
Email:
Address :