How do you turn your internal documents, product manuals, or research reports into an AI assistant that delivers real-time, accurate, and source-backed answers?

That’s what RAG (Retrieval-Augmented Generation) is built for — and it’s one of the most powerful AI business models.

Here’s a standout case study:

🔎 Sector.app – Real-Time AI for Fast-Moving Markets Built by our consultant Samuel Chan, Sector.app combines LLMs with live data retrieval to deliver intelligent, source-based answers in industries like crypto, finance, and tech. It’s not just a chatbot — it’s a domain-trained knowledge engine designed for speed, depth, and reliability.

Other notable use cases of RAG systems:

  • Lexion.ai – an AI assistant for legal teams that extracts insights from contracts and case law
  • Humata.ai – helps teams query large research documents and technical papers in seconds

RAG systems are now being deployed across:

  • Legal, compliance, and finance teams
  • Manufacturing and R&D knowledge bases
  • Healthcare and pharma research departments

If your business has rich data but struggles to access insights when it matters — this model can change that.

I’ll be sharing more about how businesses are using Production-Ready RAG Systems to scale their expertise in my upcoming AI + Business Model Innovation Workshop. Curious how AI trends will impact your business or industry? Let’s talk. 📞 +60126669892 . I’ll help you identify the trends, tools, and opportunities tailored to your industry

#AIstrategy #RAG #SectorApp #SamuelChan #BusinessModelInnovation #AIimplementation #LegalTech #HealthTech #AIworkshop #AIPoweredBusinessModel

Similar Posts

Leave a Reply

Your email address will not be published. Required fields are marked *