- AWS for Data›
- Partners
Fuel your data-driven future with AWS Partners
Accelerate your generative AI journey and business transformation with deep technical knowledge, differentiated solutions, and proven customer success of AWS Partners.
Build an end-to-end data foundation with AWS Partners
As generative AI capabilities advance, organizations are exploring how to leverage this technology to create new products, services, and experiences. However, realizing the full potential of generative AI requires a strong data foundation that can ingest diverse data sources, and support iterative model refinement and customization techniques.
Whether it's creating hyper-personalized content, automating complex tasks, or reinventing customer experiences, a robust data foundation on AWS can help you take your generative AI ambition from prototype to production to scale quickly.
Why work with an AWS Data Foundation Partner
Power generative AI success with a robust data foundation
Partners can meet you where you are on your data and generative AI journey
1
Step 1: Ideate
- Define business objectives and goals
- Shortlist most promising use case for generative AI
- Align stakeholders
2
Step 2: Strategize
- Data Foundation & AI assessment
- Align on approach to enterprise data covering business value, technology, and governance
- Build business case to support investment
3
Step 3: Prototype
- Validate right technology for business use case with data
- Deliver minimum viable product (MVP) to end users and generate value
- Run responsible AI assessment
4
Step 4: Modernize and Build
- Design and build an end-to-end data foundation
- Establish data and AI governance framework
- Build generative AI application. Select LLM model and supporting infrastructure.
5
Step 5: Productionize
- Build production grade data foundation and generative AI applications
- Create data pipelines for High Quality Data Flow
- Assess and address compliance and technical risks
- Document Business as Usual activities
6
Step 6: Optimize and Scale
- Implement comprehensive DataOps, LLMOps and Governance controls
- Optimize for scale and performance
- Establish continuous improvement cycles