Why Generative AI Projects Struggle to Reach Production

Introduction

The rapid advancements in Generative AI (GenAI) have captured the imagination of organizations worldwide. Yet, many Proof-of-Concept (PoC) initiatives fail to transition into production. Based on surveys with AWS GenAI partners, six critical roadblocks have been identified. Here, we unpack these challenges and explore potential solutions to help organisations overcome them.


1. Lack of Meticulous Business Scoping and ROI Modeling

“We had FOMO, but also had higher hopes…”

Many organisations dive into GenAI projects without clear business objectives or Return on Investment (ROI) frameworks. The absence of well-defined use cases leads to disappointing benefits, leaving projects to flounder after initial enthusiasm.

Solution: Start with a business-first approach:

  • Define specific goals tied to measurable outcomes.

  • Leverage AWS tools like Amazon Bedrock to build scalable, targeted solutions.

  • Use frameworks like “working backward” to ensure alignment with business needs.


2. Lack of a Robust Data Strategy

“Turned out that real life needs more robust data…”

Data discrepancies between PoC and production environments are common. Many organisations underestimate the data quality, volume, and diversity needed for GenAI solutions to perform effectively in production.

Solution:

  • Invest in a comprehensive data strategy:

    • Use Retrieval-Augmented Generation (RAG) for more reliable results.

    • Regularly fine-tune models with real-world data.

  • Employ AWS data services like Amazon S3 and AWS Glue to centralize, clean, and prepare data.


3. Lack of Advanced Optimization for ROI

“It works. But it’s just too expensive…”

Generative AI projects can falter due to cost, performance, or latency concerns that make production deployment financially unsustainable.

Solution:

  • Optimize costs with targeted model usage:

    • Utilize AWS tools for model evaluation to balance accuracy, cost, and speed.

    • Leverage Amazon Bedrock for access to multiple cost-efficient foundation models.

  • Explore model customization to fine-tune only the necessary components and reduce computational overhead.


4. Lack of Skilled ML/FM Engineers

“We do not yet have those specialists…”

Transitioning GenAI projects into production requires specialized engineering skills, such as foundational model (FM) deployment and ML pipeline management. A shortage of such talent can halt progress.

Solution:

  • Upskill your team with AWS training programs and certifications (e.g., AWS Generative AI Specialty).

  • Consider managed services like Amazon SageMaker for deploying and maintaining ML pipelines without deep expertise.


5. Lack of Strategic Priority

“To be honest, this capability is a nice-to-have…”

Without a strong strategic commitment, AI initiatives are often deprioritized or shelved. This is especially true when GenAI projects are treated as exploratory rather than essential.

Solution:

  • Embed GenAI initiatives into the organization's broader digital transformation strategy.

  • Highlight quick wins and measurable outcomes to secure buy-in from leadership.


6. Challenges in Governance, Security, and Compliance

“We are unsure this won’t go wrong…”

Concerns around security, compliance, and legal risks frequently delay production deployment. Issues such as prompt injection vulnerabilities or personal data exposure exacerbate the hesitation.

Solution:

  • Use Amazon Bedrock’s built-in guardrails to mitigate risks:

    • Implement word and topic filters to prevent harmful outputs.

    • Ensure compliance with PII filters and robust security measures.

  • Work with AWS experts or trusted GenAI partners to navigate regulatory landscapes effectively.


Conclusion: Bridging the Gap Between PoC and Production

The journey from experimentation to production in GenAI is complex but navigable. By addressing the above challenges systematically, organisations can unlock the full potential of their GenAI initiatives. AWS’s ecosystem of tools, from Amazon Bedrock to SageMaker, provides a robust foundation for deploying scalable, secure, and cost-effective GenAI solutions.

Take the first step today. Explore AWS Generative AI resources, fine-tune your strategy, and move from PoC to production with confidence.

Ready to get started? Visit AWS Generative AI to learn more.

Credits

AWS Partner pages

AWS Partner pages

1
Subscribe to my newsletter

Read articles from Wojciech Kaczmarczyk directly inside your inbox. Subscribe to the newsletter, and don't miss out.

Written by

Wojciech Kaczmarczyk
Wojciech Kaczmarczyk