Case Study | Retail and CPG | AI and Data Engineering

Global QSR unifies enterprise knowledge with AI search

A RAG-based conversational AI platform on AWS replaced manual searching with natural-language access to authoritative enterprise knowledge.

Download as PDF 30th June, 2026
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The answer almost always existed somewhere. The trouble was finding it - buried across a dozen systems, in versions no one was sure were current, behind searches that too often ended at the help desk.

At a glance

  • A global quick-service restaurant enterprise kept critical knowledge scattered across systems, slowing every search for SOPs and compliance guidance.
  • We built a secure, RAG-based conversational AI platform on AWS for natural-language access to enterprise knowledge.
  • Amazon Bedrock generates answers; OpenSearch Serverless retrieves them, grounded in indexed enterprise content for relevance and trust.
  • Users now find authoritative answers in plain language, with less manual searching and less dependence on support channels.

Knowledge without a map

Critical information lived everywhere and nowhere – spread across systems no single search could reach.

Our client is a global enterprise in the quick-service restaurant industry, running a complex and highly distributed supply chain ecosystem. Its day-to-day depends on a constant flow of business-critical documentation – standard operating procedures, supplier onboarding materials, compliance guidelines, training resources – shared across a broad network of suppliers, franchise operators, and compliance teams.

The problem was never a shortage of knowledge. It was that the knowledge had no center. Critical information sat scattered across multiple systems and repositories, so finding the right answer meant knowing where to look and searching by hand. That fragmentation rippled outward: inconsistent access to standardized knowledge, heavier reliance on support channels, a user experience that shifted depending on who was asking and where, and real compliance risk in a business where an outdated answer carries consequences.

Ask in plain language

We replaced the hunt with a conversation – one secure platform that understands the question and grounds every answer in source.

We built a production-grade conversational AI platform on AWS, designed around a Retrieval-Augmented Generation (RAG) architecture so users could simply ask for what they needed in natural language and get an authoritative answer back.

The design pairs generation with retrieval so nothing is invented. Amazon Bedrock powers the language model that generates responses, while Amazon OpenSearch Serverless handles semantic search and vector retrieval across indexed enterprise content – so the platform answers from the company’s own authoritative sources rather than guessing.

Amazon S3 stores the underlying documents, AWS Lambda and API Gateway provide serverless orchestration, Amazon DynamoDB holds structured metadata, and Amazon ElastiCache for Redis maintains session state and conversational context, so a follow-up question knows what came before.

We delivered the engagement end to end, from strategy and architecture design through model selection, implementation, and operationalization. The result is a scalable, cloud-native, serverless deployment – semantic retrieval and contextual grounding wired into integrated backend services – built to serve knowledge access across the entire enterprise.

From hunt to answer

One place to ask, authoritative answers in return, and a lighter load on the people who used to field the questions.

The platform gave the client something it never had: a single, intelligent layer for knowledge access across every repository. Instead of hunting through systems, internal users and external partners alike can now ask in plain language and get a relevant, authoritative answer drawn from indexed enterprise content.

The downstream effects follow from that. The chatbot not only provides answers but also cites the source from which the information was derived. Time spent locating critical information drops. Dependence on manual support channels eases. And because every response is grounded in the company’s own source content, answers stay relevant and consistent – strengthening trust in enterprise knowledge and making it genuinely usable across the ecosystem.

What the client achieved:

  • Centralized, intelligent knowledge access across multiple repositories
  • Natural-language search in place of manual hunting
  • Reduced time locating critical information
  • Lower dependence on manual support channels
  • Answers grounded in authoritative enterprise sources
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