Java Developer – Senior
Location
Brazil
Posted
2 days ago
Salary
0
Seniority
Senior
Job Description
Java Developer – Senior
INEX
• Work in an agile squad • Participate in the development and evolution of scalable, high-availability solutions in a cloud environment.
Job Requirements
- Solid experience as a Senior Java Developer
- Advanced knowledge of Java
- Experience with Spring Boot
- Experience with microservices architecture
- Experience with REST APIs
- Knowledge of relational databases (Oracle, SQL Server, or PostgreSQL)
- Experience with Git and CI/CD practices
- Experience with AWS services (such as EC2, ECS, EKS, Lambda, S3, RDS, CloudWatch, IAM, or similar)
- Knowledge of Docker and containerization
- Experience with agile methodologies (Scrum/Kanban).
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