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    Generative AI Workshop for Enterprise Use Cases (Gen AI)

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    Accelerate innovation with Generative AI on AWS. We design and deliver hands-on workshops that help your team build, deploy, and scale Gen AI solutions using AWS tailored to your business goals.

    Overview

    Generative AI Workshop (Proof of Concept)

    Our hands-on Generative AI Workshop is a focused, collaborative engagement designed to rapidly validate how generative AI can deliver measurable value for your business. Over a 6 - 8 week engagement, we’ll guide your team from discovery to a working proof-of-concept that demonstrates capability, data fit, and operational feasibility.

    We begin with a discovery session so we can tailor the workshop to align on business outcomes, success metrics, and data availability. From there we move through business understanding, data understanding, and data preparation stages, followed by iterative model prototyping, validation, and deployment planning. The engagement culminates in the delivery of a targeted generative AI capability (for example, document summarization, code generation, conversational agents, or content aggregation / retrieval) and an actionable plan to take the solution to production.

    Key features of the workshop include:

    • Business-aligned use case selection and success metrics.
    • Privacy and security-aware data exploration and transformation.
    • Rapid prototyping using responsible generative AI patterns (guardrails, prompt engineering, and evaluation metrics).
    • Deployment feasibility and cost / operation estimate for production.
    • A preliminary demonstration showcasing the feasibility and potential effectiveness of a specific generative AI solution in a real-world scenario.

    Deliverables

    • A feasibility report that summarizes business impact, success metrics, technical feasibility, and recommended next steps.
    • Foundation candidate generative AI model(s) and prototypes (notably prompt sets, fine-tune seeds, or retrieval-augmented generation pipelines) that form the basis of a production model.
    • Roadmap and timeline to production, including recommended milestones and required engineering tasks.
    • Technical architecture and operational requirements (compute, storage, networking, security controls).
    • Dataset inventory and data transformation notes, including data sensitivity classification and recommended anonymization steps.
    • Evaluation plan and benchmark results with clear acceptance criteria for moving to production.

    AWS AI & ML Services Commonly Used in our Workshops

    Below are AWS services we frequently use to build, prototype, and prepare generative AI solutions during the workshop. We’ll recommend the best mix based on your use case, scale, and compliance needs.

    Amazon SageMaker

    Use: Model training, hyperparameter tuning, hosted endpoints, and managed fine-tuning for many model architectures.

    Notes: Good for end-to-end MLOps and model lifecycle management; integrates with data labeling and pipelines.

    Amazon Bedrock

    Use: Access to multiple managed foundational models (FMs) for text, embeddings, and multimodal use cases.

    Notes: Ideal for rapid experimentation with LLMs without heavy infrastructure setup; supports foundation model selection and prompt orchestration.

    Amazon SageMaker JumpStart

    Use: Quick-start templates and pre-built solutions for common generative tasks.

    Notes: Helps accelerate prototype development using proven patterns.

    Amazon Rekognition / Amazon Textract

    Use: Extract structured data from images and documents (Textract), and analyze images/video content (Rekognition).

    Notes: Useful when the generative use case requires multimodal inputs or document understanding.

    Amazon Elasticsearch / OpenSearch Service

    Use: Indexing and fast retrieval for RAG systems and analytics.

    Notes: Common component in retrieval pipelines and logging/observability.

    AWS Glue & AWS Data Pipeline

    Use: Data cataloging, ETL, and transformation for dataset preparation.

    Notes: Useful where data needs cleaning, normalization, or joining from multiple sources.

    Highlights

    • 6–8 week hands-on workshop to rapidly prototype generative AI solutions, delivering a feasibility report, working prototypes (prompts, fine‑tune seeds, or RAG pipelines), and an AWS-focused production roadmap with cost and architecture guidance.
    • Security and compliance-first approach: data classification, anonymization recommendations, least‑privilege IAM, KMS / Secrets Manager guidance, VPC patterns, and monitoring for production readiness.
    • Fast validation with AWS tooling (SageMaker, Bedrock, Kendra, Textract) plus serverless orchestration and evaluation benchmarks — includes knowledge transfer to accelerate adoption.

    Details

    Delivery method

    Deployed on AWS

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    Pricing

    Custom pricing options

    Pricing is based on your specific requirements and eligibility. To get a custom quote for your needs, request a private offer.

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