AWS Machine Learning Blog 2024年11月07日
Unleash the power of generative AI with Amazon Q Business: How CCoEs can scale cloud governance best practices and drive innovation
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赫斯特公司为了加速云采用、简化流程和推动创新,其云卓越中心(CCoE)团队面临着资源有限、需求激增的挑战。为了解决这个问题,他们利用Amazon Q Business构建了一个自助式生成式AI对话助手,为业务部门提供云治理最佳实践指南。通过整合AWS IAM Identity Center和Amazon S3,并构建自定义Web界面,该解决方案实现了业务部门对云治理信息的自助访问,显著减少了对CCoE团队的支持请求,提高了云治理的一致性和效率,使CCoE团队能够专注于更具战略意义的任务。该案例为其他组织提供了宝贵的参考,展示了如何利用生成式AI扩展云治理,并使CCoE团队发挥更大的影响力。

🤔 **挑战:**赫斯特公司云卓越中心(CCoE)面临着业务部门对云治理指南需求激增、可扩展性不足以及治理不一致等挑战,导致CCoE团队成为瓶颈,无法满足日益增长的需求。

💡 **解决方案:**赫斯特公司利用Amazon Q Business构建了一个生成式AI对话助手,通过整合AWS IAM Identity Center和Amazon S3,并创建自定义Web界面,实现了业务部门对云治理信息的自助访问。

📊 **成果:**该解决方案有效减少了对CCoE团队的支持请求,在第一个月内减少了70%,次月减少了76%,同时提高了云治理的一致性和质量,增强了组织的云安全和合规性。

🚀 **价值:**该案例证明了生成式AI在扩展云治理和提高CCoE团队效率方面的价值,为其他组织提供了宝贵的参考,帮助他们提升云治理能力,推动云转型。

🎯 **建议:**其他组织的CCoE团队可以借鉴赫斯特公司的经验,利用类似Amazon Q Business的对话式AI服务,将自身定位为云转型的战略推动者。

This post is co-written with Steven Craig from Hearst. 

To maintain their competitive edge, organizations are constantly seeking ways to accelerate cloud adoption, streamline processes, and drive innovation. However, Cloud Center of Excellence (CCoE) teams often can be perceived as bottlenecks to organizational transformation due to limited resources and overwhelming demand for their support.

In this post, we share how Hearst, one of the nation’s largest global, diversified information, services, and media companies, overcame these challenges by creating a self-service generative AI conversational assistant for business units seeking guidance from their CCoE. With Amazon Q Business, Hearst’s CCoE team built a solution to scale cloud best practices by providing employees across multiple business units self-service access to a centralized collection of documents and information. This freed up the CCoE to focus their time on high-value tasks by reducing repetitive requests from each business unit.

Readers will learn the key design decisions, benefits achieved, and lessons learned from Hearst’s innovative CCoE team. This solution can serve as a valuable reference for other organizations looking to scale their cloud governance and enable their CCoE teams to drive greater impact.

The challenge: Enabling self-service cloud governance at scale

Hearst undertook a comprehensive governance transformation for their Amazon Web Services (AWS) infrastructure. The CCoE implemented AWS Organizations across a substantial number of business units. These business units then used AWS best practice guidance from the CCoE by deploying landing zones with AWS Control Tower, managing resource configuration with AWS Config, and reporting the efficacy of controls with AWS Audit Manager. As individual business units sought guidance on adhering to the AWS recommended best practices, the CCoE created written directives and enablement materials to facilitate the scaled adoption across Hearst.

The existing CCoE model had several obstacles slowing adoption by business units:

To address these challenges, Hearst’s CCoE team recognized the need to quickly create a scalable, self-service application that could empower the business units with more access to updated CCoE best practices and patterns to follow.

Overview of solution

To enable self-service cloud governance at scale, Hearst’s CCoE team decided to use the power of generative AI with Amazon Q Business to build a conversational assistant. The following diagram shows the solution architecture:

The key steps Hearst took to implement Amazon Q Business were:

    Application deployment and authentication – First, the CCoE team deployed Amazon Q Business and integrated AWS IAM Identity Center with their existing identity provider (using Okta in this case) to seamlessly manage user access and permissions between their existing identity provider and Amazon Q Business. Data source curation and authorization – The CCoE team created several Amazon Simple Storage Service (Amazon S3) buckets to store their curated content, including cloud governance best practices, patterns, and guidance. They set up a general bucket for all users and specific buckets tailored to each business unit’s needs. User authorization for documents within the individual S3 buckets were controlled through access control lists (ACLs). You add access control information to a document in an Amazon S3 data source using a metadata file associated with the document. This made sure end users would only receive responses from documents they were authorized to view. With the Amazon Q Business S3 connector, the CCoE team was able to sync and index their data in just a few clicks. User access management – With the data source and access controls in place, the CCoE team then set up user access on a business unit by business unit basis, considering various security, compliance, and custom requirements. As a result, the CCoE could deliver a personalized experience to each business unit. User interface development – To provide a user-friendly experience, Hearst built a custom web interface so employees could interact with the Amazon Q Business assistant through a familiar and intuitive interface. This encouraged widespread adoption and self-service among the business units. Rollout and continuous improvement – Finally, the CCoE team shared the web experience with the various business units, empowering employees to access the guidance and best practices they needed through natural language interactions. Going forward, the team enriched the knowledge base (S3 buckets) and implemented a feedback loop to facilitate continuous improvement of the solution.

For Hearst’s CCoE team, Amazon Q Business was the quickest way to use generative AI on AWS, with minimal risk and less upfront technical complexity.

The results: Decreased support requests and increased cloud governance consistency

By using Amazon Q Business, Hearst’s CCoE team achieved remarkable results in empowering self-service cloud governance across the organization. The initial impact was immediate—within the first month, the CCoE team saw a 70% reduction in the volume of requests for guidance and support from the various business units. This freed up the team to focus on higher-value initiatives instead of getting bogged down in repetitive, routine requests. The following month, the number of requests for CCoE support dropped by 76%, demonstrating the power of a self-service assistant with Amazon Q Business. The benefits went beyond just reduced request volume. The CCoE team also saw a significant improvement in the consistency and quality of cloud governance practices across Hearst, enhancing the organization’s overall cloud security, compliance posture, and cloud adoption.

Conclusion

Cloud governance is a critical set of rules, processes, and reports that guide organizations to follow best practices across their IT estate. For Hearst, the CCoE team sets the tone and cloud governance standards that each business unit follows. The implementation of Amazon Q Business allowed Hearst’s CCoE team to scale the governance and security that support business units depend on through a generative AI assistant. By disseminating best practices and guidance across the organization, the CCoE team freed up resources to focus on strategic initiatives, while employees gained access to a self-service application, reducing the burden on the central team. If your CCoE team is looking to scale its impact and enable your workforce, consider using the power of conversational AI through services like Amazon Q Business, which can position your team as a strategic enabler of cloud transformation.

Listen to Steven Craig share how Hearst leveraged Amazon Q Business to scale the Cloud Center of Excellence

Reading References:


About the Authors

Steven Craig is a Sr. Director, Cloud Center of Excellence. He oversees Cloud Economics, Cloud Enablement, and Cloud Governance for all Hearst-owned companies. Previously, as VP Product Strategy and Ops at Innova Solutions, he was instrumental in migrating applications to public cloud platforms and creating IT Operations Managed Service offerings. His leadership and technical solutions were key in achieving sequential AWS Managed Services Provider certifications. Steven has been AWS Professionally certified for over 8 years.

Oleg Chugaev is a Principal Solutions Architect and Serverless evangelist with 20+ years in IT, holding multiple AWS certifications. At AWS, he drives customers through their cloud transformation journeys by converting complex challenges into actionable roadmaps for both technical and business audiences.

Rohit Chaudhari is a Senior Customer Solutions Manager with over 15 years of diverse tech experience. His background spans customer success, product management, digital transformation coaching, engineering, and consulting. At AWS, Rohit serves as a trusted advisor for customers to work backwards from their business goals, accelerate their journey to the cloud, and implement innovative solutions.

Al Destefano is a Generative AI Specialist at AWS based in New York City. Leveraging his AI/ML domain expertise, Al develops and executes global go-to-market strategies that drive transformative results for AWS customers at scale. He specializes in helping enterprise customers harness the power of Amazon Q, a generative AI-powered assistant, to overcome complex challenges and unlock new business opportunities.

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云治理 生成式AI Amazon Q Business CCoE 赫斯特
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