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GenAI – How To Optimize User Query Component ?
GenAI – How To Optimize User Query Component ? Table Of Contents: What Is Query Input Component? Network Optimization Techniques. Use HTTP/2 or gRPC Compress Payloads Avoid Cold Start Problem (1) What Is Query Input Component ? (2) Network Optimization Techniques. (3) Use HTTP/2 or gRPC (4) Compress Payloads Use Compression (gzip or Brotli) import gzip import requests query = { “user_query”:”…” # a very large string } #Compress JSON compressed_data = gzip.compress(bytes(str(query), ‘utf-8’)) headers = { “Content-Encoding”: “gzip”, “Content-Type”: “application/json” } response = request.post(“http://localhost:8000/rag/query”, data=compressed_data, headers=headers) Use Decompression (gzip or Brotli) from fastapi import FastAPI, Request import gzip import
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GenAI – You Are Facing High Latency In RAG Pipeline What Are The Steps You Will Follow To Solve This ?
GenAI – How To Solve Latency In RAG Pipeline ? Table Of Contents: Break Down the Pipeline Components Measure and Profile Latency per Component Query Embedding Generation Time Vector Retrieval / Vector Database Time Reranking (if used) Time LLM Inference Time Prompt Construction Time Network / System-Level Issues Time Parallelize Where Possible Tools & Techniques (1) Breakdown The Pipeline Component (2) Measure And Profile Latency Per Component. (3) Query Input Component Solution: (4) Query Preprocessing & Embedding Component (5) Vector Search Component (6) Vector Search Component (7) Prompt Construction Component (8) LLM Inference Component (9) Post Processing Component (10) Caching/Storage
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GenAI – Scenario Based Q & A
