How to Process Unstructured RFQs using OpenAI RAG and Node.js

📰 Dev.to · Seaflux Technologies

Learn to process unstructured RFQs using OpenAI RAG and Node.js to streamline procurement workflows

intermediate Published 25 Mar 2026
Action Steps
  1. Set up an OpenAI account and enable RAG API
  2. Install Node.js and required libraries for API integration
  3. Configure RAG to extract relevant information from unstructured RFQs
  4. Build a Node.js script to send RFQs to the RAG API for processing
  5. Test and refine the script to handle various RFQ formats and edge cases
Who Needs to Know This

Procurement teams and developers can benefit from this tutorial to automate RFQ processing, reducing manual effort and increasing efficiency

Key Insight

💡 OpenAI RAG can be used to extract relevant information from unstructured RFQs, enabling automated procurement workflows

Share This
🚀 Automate RFQ processing with OpenAI RAG and Node.js! 📈

Key Takeaways

Learn to process unstructured RFQs using OpenAI RAG and Node.js to streamline procurement workflows

Full Article

Procurement workflows rarely begin inside structured systems. They begin in emails. In PDFs. In...
Read full article → ← Back to Reads

Related Videos

Google RAG Secret to Higher Rankings w/ Josh Bachynski #shorts
Google RAG Secret to Higher Rankings w/ Josh Bachynski #shorts
josh bachynski
Does RAG relevant now? #aiwithakash #genai #llm #rag
Does RAG relevant now? #aiwithakash #genai #llm #rag
AI with Akash
🔥 Complete Semantic Caching Tutorial for Beginners | Explained in Tamil | GenAI | RAG | AI Agents
🔥 Complete Semantic Caching Tutorial for Beginners | Explained in Tamil | GenAI | RAG | AI Agents
AI with Akash
Integration with Streamlit | Explained in Tamil | RAG | AI Agents | GenAI | LLM | VectorDB | Caching
Integration with Streamlit | Explained in Tamil | RAG | AI Agents | GenAI | LLM | VectorDB | Caching
AI with Akash
10. Fuzzy Matching | Explained in Tamil | RAG | AI Agents | GenAI | LLM | Vector DB | Redis
10. Fuzzy Matching | Explained in Tamil | RAG | AI Agents | GenAI | LLM | Vector DB | Redis
AI with Akash
9. LLM call with Evaluation | Explained in Tamil | RAG | AI Agents | GenAI | LLM | Redis Cache
9. LLM call with Evaluation | Explained in Tamil | RAG | AI Agents | GenAI | LLM | Redis Cache
AI with Akash