Overview
Skills
Job Details
Key Responsibilities:
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Design, develop, and implement Generative AI solutions leveraging Amazon Bedrock and related AWS services.
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Configure and optimize Amazon Bedrock Agent Orchestration for intelligent workflow and model lifecycle management.
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Apply Prompt Engineering methodologies for fine-tuning and optimizing AI model outputs.
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Implement Amazon Bedrock Guardrails to ensure compliance, brand safety, and responsible AI governance.
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Integrate and manage Amazon Knowledge Bases and Vector Databases to enhance contextual understanding and retrieval-augmented generation (RAG) workflows.
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Employ MLOps practices to automate model training, deployment, and monitoring within enterprise environments.
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Build and maintain CI/CD pipelines to support scalable and efficient deployment of AI and cloud-native applications.
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Utilize AWS services including CloudFormation, CDK, Step Functions, Lambda, EventBridge, DynamoDB, S3, Glue, and Athena to design and orchestrate robust cloud infrastructures.
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Develop infrastructure as code (IaC) solutions using AWS CDK and CloudFormation, ensuring version control and repeatable deployments.
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Collaborate with data scientists, solution architects, and DevOps teams to integrate AI capabilities with existing business systems.
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Create and maintain comprehensive technical documentation, including runbooks, design documents, and troubleshooting guides for deployed solutions.
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Ensure all solutions meet AWS best practices for security, compliance, scalability, and cost optimization.
Required Skills & Experience:
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10+ years of hands-on experience in AWS Cloud Computing within enterprise environments.
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Proven experience with Amazon Bedrock, including agent orchestration, workflow management, and model fine-tuning.
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Strong knowledge of Generative AI architectures, LLM integration, and Prompt Engineering techniques.
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Expertise in AWS Cloud Development Kit (CDK), CloudFormation, and Infrastructure as Code (IaC) principles.
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Proficiency with AWS services such as S3, Lambda, EventBridge, DynamoDB, Glue, Step Functions, and Athena.
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Experience implementing MLOps pipelines using AWS-native tools and frameworks.
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Solid understanding of CI/CD pipeline automation using AWS or third-party tools (e.g., CodePipeline, Jenkins, GitHub Actions).
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Familiarity with security and compliance standards for AI and cloud environments.
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Strong problem-solving, analytical, and communication skills, with a proven ability to work collaboratively across technical and non-technical teams.
Preferred Qualifications:
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AWS Certified Solutions Architect / DevOps Engineer / Machine Learning Specialty certification.
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Experience deploying Retrieval-Augmented Generation (RAG) systems using AWS Bedrock and vector search technologies.
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Prior experience integrating LLMs (e.g., Anthropic Claude, Amazon Titan, or other Bedrock models) into enterprise solutions.
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Working knowledge of Python, TypeScript, or Java for automation and API integration.