JOBSEARCHER

Java Fullstack Engineer

ARCHIVED

We can't find an active application page for this role right now. It may reopen or be listed elsewhere. Use Next Steps to search for an active apply link and similar live jobs.

Role Overview:We are seeking a highly skilled Full Stack Developer with expertise in Java, AWS, Golang, and AI/ML integration to build next-gen, intelligent, cloud-native applications. The role focuses on developing scalable microservices, embedding AI capabilities into business workflows, and delivering high-performance systems. Key Responsibilities:· Design and develop end-to-end solutions across frontend, backend, and AI layers.· Build scalable microservices using Java (Spring Boot) and Golang for high-performance workloads· Develop modern UI using React/Angular.· Design and deploy cloud-native applications on AWS· Integrate AI/ML models and APIs (LLMs, predictive models) into applications· Build and manage RESTful and event-driven architectures· Implement CI/CD pipelines and DevOps practices for cloud deployments· Ensure performance, scalability, and security of applications· Collaborate with data scientists, architects, and product teams Required Skills & Qualification:· 5+ years of full stack development experience· Strong expertise in Java (5+), Spring Boot, Python, and Golang· Hands-on experience with AWS services: EC2, Lambda, S3, API Gateway, RDS, DynamoDB, SNS/SQS, IAM· Frontend experience with React/Angular, JavaScript, HTML, CSS· Experience integrating AI/ML services or APIs (OpenAI, AWS Bedrock, SageMaker, etc.)· Strong knowledge of microservices, REST APIs, and distributed systems· Experience with Docker, Kubernetes (EKS), and CI/CD tools· Familiarity and experience with NoSQL databases like PostgreSQL, Cassandra, Couchbase, Redis, Elasticsearch. Preferred Qualifications:· Experience building AI-powered applications (chatbots, recommendation systems, NLP use cases)· Knowledge of RAG architectures, prompt engineering, and LLM integration· Experience with streaming/event platforms (Kafka or AWS EventBridge)· Exposure to MLOps practices and ML lifecycle management· Understanding of security standards (OAuth2, JWT)