About the Client
Our client, a compliance-driven enterprise, relies heavily on Standard Operating Procedures (SOPs) to ensure efficiency, quality, and regulatory adherence. However, employees faced significant challenges in retrieving relevant information quickly from scattered documents and keyword-only search tools.
Business Impact
The client needed a system that could reduce manual search time, improve compliance accuracy, and streamline onboarding. By deploying an AI-powered SOP Query System, Nimap delivered measurable business impact:
- 40–60% reduction in time spent searching SOPs.
- Enhanced compliance through context-grounded SOP retrieval.
- Faster employee onboarding with natural language access to SOPs.
- Future-ready knowledge system scalable across teams and regions.
The Results
Metric | Before | After | Improvement |
SOP Search Time | 15–20 mins per query | 6–8 mins per query | 40–60% faster access |
Onboarding Training Effort | Heavy reliance on managers | Self-service Q&A via AI system | Reduced dependency on experts |
Compliance Accuracy | Inconsistent document retrieval | Context-aware, accurate SOP responses | Improved adherence to standards |
Knowledge Access | Scattered PDFs & Word docs | Centralized intelligent repository | Unified knowledge base |
The Challenge
Employees struggled to find accurate SOP information at the right time due to fragmented documentation, keyword-only search, and limited contextual retrieval.
“Our staff spent too much time digging through documents, which slowed productivity and created inconsistencies in SOP compliance.”
— Client Representative
Our Approach
We developed an end-to-end AI-powered SOP Query System that combined advanced LLM capabilities with semantic search to make SOP access intuitive, accurate, and efficient.
Why AI-Powered SOP Query with LLaMA + Qdrant?
- LLaMA 3.2: Advanced embedding and natural language understanding for accurate contextual answers.
- Qdrant Vector Database: High-speed semantic indexing and retrieval.
- React/Next.js Web App: User-friendly interface for seamless adoption.
- Apache Tika + Ollama: Robust document ingestion and model serving.
Key Initiatives
- Built an ingestion pipeline to upload SOPs (PDF/Word) via scripts or app.
- Converted SOPs into embeddings using LLaMA 3.2.
- Implemented Qdrant for high-speed semantic search and retrieval.
- Integrated RunPod-hosted LLaMA 3.2 for contextual query answering.
- Delivered a React/Next.js web app for natural language Q&A.
The Solution
Nimap implemented a centralized AI-powered knowledge platform that allows employees to ask SOP-related questions in plain English and receive accurate, context-aware answers in real-time. This solution reduced the time spent searching, improved compliance adherence, and empowered employees with a self-service knowledge system.
Features Delivered
- Faster SOP Access – Natural language search instead of manual browsing.
- Reduced Training Time – New hires quickly get SOP answers without constant supervision.
- Centralized Knowledge Base – Unified repository for SOPs, always up to date.
- Context-Aware Responses – AI delivers answers from semantically relevant chunks.
- User-Friendly Web App – Intuitive, scalable interface for enterprise-wide adoption.
Client Testimonial
“Nimap’s AI-powered SOP Query System transformed the way our teams access information. What once took minutes now takes seconds, and compliance has never been more consistent.”
— Head of Operations
Conclusion
This project demonstrated how AI and semantic search can reshape enterprise knowledge management. By combining LLaMA-powered embeddings, Qdrant vector search, and a user-friendly web interface, Nimap delivered a future-ready platform that reduced costs, accelerated workflows, and improved compliance.