Home Insights White Papers Simplifying, accelerating, and optimizing enterprise generative AI adoption

Simplifying, accelerating, and optimizing enterprise generative AI adoption

Abstract AI-generated human face with generative AI white paper headline

The rapid adoption of generative AI in enterprises has created both excitement and challenges for organizations seeking to harness its potential. As companies move from proof of concept (POC) to production, they face numerous obstacles that require expert guidance to overcome. In this context, the partnership between Amazon Web Services (AWS) and Grid Dynamics has emerged as a powerful alliance to help businesses navigate the complexities of generative AI implementation. This white paper explores the current state of generative AI adoption, the challenges organizations face, and how the AWS-Grid Dynamics collaboration offers solutions to accelerate and optimize enterprise generative AI initiatives.

Current state of generative AI adoption

Generative AI adoption is accelerating rapidly, with 26% of organizations having use cases in production and 24% in pilots or POCs. The top use cases include automating business processes, supporting analytics tasks, increasing employee productivity, improving operational efficiency, and enhancing customer experience. This growing adoption is not limited to technical teams; C-suite executives and business stakeholders are actively participating in generative AI purchasing and use case decisions, indicating a broader acceptance and trust in the technology.

Challenges in moving from POC to production

Organizations face several significant challenges when transitioning generative AI projects from POC to production. The most pressing issue is the skills gap, with 39% of organizations citing employee expertise and skills as their top challenge. Regulatory compliance is another major concern, as 51% of organizations struggle to balance accuracy, performance, fairness, and ethics in their machine learning models.

Time to value is also a critical factor, with 28% of organizations reporting that it took at least three months to see value from their AI initiatives. Additionally, data quality and availability pose significant hurdles, as limited access to high-quality data for models is a primary challenge in AI implementations.

To address these challenges, the white paper advises against attempting to implement generative AI solutions alone. Instead, it recommends partnering with experienced third parties, as 76% of organizations rely on external help for AI infrastructure management. Organizations should focus on data preparedness and quality to ease the transition from POC to production.

Implementing Large Language Model Operations (LLMOps) is essential for efficient, scalable, and consistent implementation. A well-structured and curated data ecosystem is crucial for training generative AI models at scale, promoting desirable characteristics such as observability, scalability, and comprehensive data governance.

Grid Dynamics and AWS solution

Grid Dynamics, in partnership with AWS, has developed the LLMOps Platform Starter Kit for AWS to streamline the development, deployment, and operationalization of LLM projects in AWS environments. This toolkit addresses key areas such as data management, architectural design, retrieval-augmented generation (RAG), efficient deployment, data privacy and protection, and ethics and fairness.

The solution aims to overcome challenges such as the AI skills gap, technical hurdles in development and deployment, performance scalability, and the need for greater visibility in managing LLMs. By leveraging Grid Dynamics’ expertise and close relationship with AWS, organizations can accelerate their generative AI journey and achieve substantial ROI.

Conclusion

As generative AI continues to evolve and present new opportunities, organizations should seek guidance from seasoned professionals to successfully transition from POC to production-class solutions. The partnership between Grid Dynamics and AWS offers a compelling option for businesses looking to navigate the complexities of generative AI implementation. By leveraging this expertise, organizations can overcome challenges, accelerate their generative AI initiatives, and realize tangible business value in the rapidly evolving landscape of AI technology.

Tags

You might also like

Cover of a Grid Dynamics white paper titled
White Paper
4 advanced techniques to make your data AI-ready
White Paper 4 advanced techniques to make your data AI-ready

From retail to manufacturing, and from financial services to healthcare, every industry is eager to capitalize on the potential of artificial intelligence. But AI-ready data is essential to realizing that promise. Download our latest white paper to explore advanced techniques for making your d...

Abstract black and white graph lines flowing, intersecting lines creating a wave-like pattern.
White Paper
CTO insights: AI in quality assurance
White Paper CTO insights: AI in quality assurance

Delivering reliable software at speed is challenging. Even more challenging is continuing to rely on traditional quality assurance as digital transformation accelerates. Manual testing and conventional test automation simply can't keep up with the complexity and pace of modern development. Arti...

Greyscale whale on digital background
White Paper
CTO insights: DeepSeek
White Paper CTO insights: DeepSeek

Is DeepSeek AI development the right choice for your organization? Download the full white paper to get your hands on comprehensive technical details, in-depth performance benchmarks, and actionable insights from CTOs—for CTOs (and AI innovators).  DeepSeek has quickly established itsel...

Abstract geometric image with layered white and gray lines forming a stylized
White Paper
CTO insights: Vercel frontend deployment platform
White Paper CTO insights: Vercel frontend deployment platform

This white paper explores how Vercel frontend deployment innovations, including developer experience optimization, fluid computing, and AI-assisted development, help you accelerate development velocity by 30-50%, improve global performance by 30-50%, and reduce infrastructure management overhea...

Abstract, futuristic rendering of a human face merged with digital and network elements to represent agentic AI technology.
White Paper
CTO insights: Agentic AI
White Paper CTO insights: Agentic AI

For technical leaders seeking a comprehensive understanding of Agentic AI technology—including architectural innovations, implementation frameworks, and detailed technical guidance—download the full white paper for an in-depth analysis, technical deep dive, and actionable strategies to accelera...

A futuristic, metallic human figure surrounded by abstract geometric shapes and digital light effects
White Paper
Client-side AI: Privacy, performance, and cost advantages in modern browsers
White Paper Client-side AI: Privacy, performance, and cost advantages in modern browsers

Download the white paper to get your hands on a comprehensive guide on the privacy and performance benefits, as well as implementation, optimization, and security best practices of client-side AI. Below is a taste of what you can expect, with more in-depth details, code samples, and actionable...

Clothing and shoes with the title
White Paper
Find it or forget it: Why your legacy commerce stack is killing conversions
White Paper Find it or forget it: Why your legacy commerce stack is killing conversions

The Grid Dynamics Pre-composed Commerce Starter Kit for Google Cloud is an AI-powered eCommerce platform representing a strategic solution for retailers facing the dual challenges of delivering exceptional customer experiences while reducing order fulfillment costs. This MACH-based (Microservic...

Get in touch

Let's connect! How can we reach you?

    Invalid phone format
    Submitting
    Simplifying, accelerating, and optimizing enterprise generative AI adoption

    Thank you!

    It is very important to be in touch with you.
    We will get back to you soon. Have a great day!

    check

    Something went wrong...

    There are possible difficulties with connection or other issues.
    Please try again after some time.

    Retry