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Java AI Developer

Job

Cynet Systems

Palo Alto, CA (In Person)

$114,400 Salary, Full-Time

Posted 2 days ago (Updated 9 hours ago) • Actively hiring

Expires 7/4/2026

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Job Description

We are looking for Java AI Developer for our client in Palo Alto, CA / Plano, TX / Jersey City, NJ .
Job Title:
Java AI Developer Job Location:
Palo Alto, CA / Plano, TX /
Jersey City, NJ Job Type:
Contract Job Overview:
Pay Range $53/hr - $57/hr Seeking a Java AI Developer with strong programming skills and experience in cloud services to design and implement AI-powered applications.
Requirement/Must Have:
Strong hands-on experience in Java (17+ preferred) and Spring Boot. Proven experience with AWS services (Lambda, EMR, S3, RDS, EKS/ECS). Familiarity with AI/ML frameworks (TensorFlow, PyTorch) and experience with generative AI tools (e.g., Bedrock, SageMaker). Experience with Terraform or CloudFormation. Understanding of microservices, event-driven architectures, and RESTful API design. Experience with Docker, Kubernetes, and Jenkins.
Responsibilities:
Design, develop, and implement AI-powered automation and applications using AWS Bedrock, LLMs (Large Language Models), or SageMaker. Develop robust backend services and RESTful APIs using Java 17/21, Spring Boot, and microservices architecture. Build scalable, resilient solutions utilizing AWS services such as Lambda, S3, API Gateway, and DynamoDB. Implement CI/CD pipelines to automate the deployment, monitoring, and operational lifecycle of AI models. Process and clean data to feed machine learning models, creating intelligent algorithms to enhance automation. Work with cross-functional teams (data scientists, DevOps) to translate business requirements into technical AI solutions.