RFP Response Assistant – Winning More Deals with AI-Powered Proposals
.
Responding to Requests for Proposals (RFPs) is often tedious and resource-intensive — especially for non-profits, consultancies, and IT vendors. At DivamTech, we built the RFP Response Assistant to automate this process and help you respond faster, better, and at scale.
📄 The Problem
Proposal teams are bogged down with:
Reading long and complex RFPs
Matching requirements with prior responses
Writing personalized yet compliant content — over and over
This limits the number of RFPs a team can respond to in a given window.
🤖 The AI Agent Solution
Our AI agent reads and understands the uploaded RFP, then drafts a tailored proposal using:
Internal past responses
Project databases
Structured logic and voice compliance
🧠 Technical Framework
Interface: Chat Assistant UI
LLM Used: Claude 3.5 Sonnet
Data Sources: RFP document + indexed past responses
Time to Launch: Easy
💼 Business Outcomes
🕐 Cut proposal drafting time from hours to 15 minutes
🎯 Increase proposal quality and brand consistency
🚀 Respond to more opportunities and grow win rates
💡 Why DivamTech?
We specialize in crafting enterprise-grade AI agents that go beyond chat to handle document understanding, logic routing, and customized output — all tailored to your domain.
Want to win more RFPs with less effort?
Let us show you how → divamtech.com/contact
Divam 2024
May 25, 2025
AI Agents in Action – 25 Real-World Use Cases That Prove the Power of Intelligent Automation
Explore how AI agents are transforming industries from finance to healthcare. 25 case studies. One powerful truth: automation is no longer optional.
Apr 18, 2025
Why AI Agents and RAG Applications Are Essential for Your Next Business Move
In an era where speed, personalization, and intelligence define success, businesses cannot afford to rely on traditional systems alone. The future belongs to companies that harness the power of AI — not just in data analysis, but in making intelligent decisions, automating operations, and understanding customers in real-time. At the heart of this transformation are AI Agents and RAG (Retrieval-Augmented Generation) applications.