12-22-2025, 03:45 PM
![[Image: 2512220759060314.png]](https://www.hostpic.org/images/2512220759060314.png)
Systematically Improving RAG Applications | 13.7 GB
Stop building RAG systems that impress in demos but disappoint in production
Transform your retrieval from "good enough" to "mission-critical" in weeks, not months
Most RAG implementations get stuck in prototype purgatory. They work well for simple cases but fail on complex queries-leading to frustrated users, lost trust, and wasted engineering time. The difference between a prototype and a production-ready system isn't just better technology, it's a fundamentally different mindset.
The RAG Implementation Reality
What you're experiencing right now:
- Your RAG demo impressed stakeholders, but real users encounter hallucinations when they need accuracy most
- Engineers spend countless hours tweaking prompts with minimal improvement
- Colleagues report finding information manually that your system failed to retrieve
- You keep making changes but have no way to measure if they're actually helping
- Every improvement feels like guesswork instead of systematic progress
- You're unsure which 10% of possible enhancements will deliver 90% of the value
What your RAG system could be:
With the RAG Flywheel methodology, you'll build a system that:
- Retrieves the right information even for complex, ambiguous queries
- Continuously improves with each user interaction
- Provides clear metrics to demonstrate ROI to stakeholders
- Allows your team to make data-driven decisions about improvements
- Adapts to different content types with specialized capabilities
- Creates value that compounds over time instead of degrading
What Makes This Course Different
Unlike courses that focus solely on technical implementation, this program gives you the systematic, data-driven approach used by companies to transform prototypes into production systems that deliver real business value:
- The Improvement Flywheel: Build synthetic evaluation data that identifies exactly what's failing in your system-even before you have users
- Fine-tuning Framework: Create custom embedding models with minimal data (as few as 6,000 examples)
- Feedback Acceleration: Design interfaces that collect 5x more high-quality feedback without annoying users
- Segmentation System: Analyze user queries to identify which segments need specialized retrievers for 20-40% accuracy gains
- Multimodal Architecture: Implement specialized indices for different content types (documents, images, tables)
- Query Routing: Create a unified system that intelligently selects the right retriever for each query
The Complete RAG Implementation Framework
Week 1: Evaluation Systems
Build synthetic datasets that pinpoint RAG failures instead of relying on subjective assessments
BEFORE: "We need to make the AI better, but we don't know where to start."
AFTER: "We know exactly which query types are failing and by how much."
Week 2: Fine-tune Embeddings
Customize models for 20-40% accuracy gains with minimal examples
BEFORE: "Generic embeddings don't understand our domain terminology."
AFTER: "Our embedding models understand exactly what 'similar' means in our business context."
Week 3: Feedback Systems
Design interfaces that collect 5x more feedback without annoying users
BEFORE: "Users get frustrated waiting for responses and rarely tell us what's wrong."
AFTER: "Every interaction provides signals that strengthen our system."
Week 4: Query Segmentation
Identify high-impact improvements and prioritize engineering resources
BEFORE: "We don't know which features would deliver the most value."
AFTER: "We have a clear roadmap based on actual usage patterns and economic impact."
Week 5: Specialized Search
Build specialized indices for different content types that improve retrieval
BEFORE: "Our system struggles with anything beyond basic text documents."
AFTER: "We can retrieve information from tables, images, and complex documents with high precision."
Week 6: Query Routing
Implement intelligent routing that selects optimal retrievers automatically
BEFORE: "Different content requires different interfaces, creating a fragmented experience."
AFTER: "Users have a seamless experience while the system intelligently routes to specialized components."
Real-world Impact From Implementation
- 85% blueprint image recall: Construction company using visual LLM captioning
- 90% research report retrieval: Through better text preprocessing techniques
- $50M revenue increase: Retail company enhancing product search with embedding fine-tuning
- +14% accuracy boost: Fine-tuning cross-encoders with minimal examples
- +20% response accuracy: Using re-ranking techniques
- -30% irrelevant documents: Through improved query segmentation
Join 400+ engineers who've transformed their RAG systems with this methodology
Your Instructor
Jason Liu has built AI systems across diverse domains-from computer vision at the University of Waterloo to content policy at Facebook to recommendation systems at Stitch Fix that boosted revenue by $50 million. His background in managing large-scale data curation, designing multimodal retrieval models, and processing hundreds of millions of recommendations weekly has directly informed his consulting work with companies implementing RAG systems.
Homepage:
Code:
https://maven.com/applied-llms/rag-playbookScreenshots
![[Image: 2512220759060303.jpg]](https://www.hostpic.org/images/2512220759060303.jpg)
Link Download:
Code:
Download Via Rapidgator
https://rg.to/folder/8371796/SystematicallyImprovingRAGApplications.html
Download Via Uploadgig Free Download
https://uploadgig.com/file/download/05ee8426f89e75b1/Systematically.Improving.RAG.Applications.part01.rar
https://uploadgig.com/file/download/67dAd3057f14459D/Systematically.Improving.RAG.Applications.part02.rar
https://uploadgig.com/file/download/c95Cdf2f8021Fcf4/Systematically.Improving.RAG.Applications.part03.rar
https://uploadgig.com/file/download/8b94c8a02e2c176A/Systematically.Improving.RAG.Applications.part04.rar
https://uploadgig.com/file/download/058Fe7d7e59a4e42/Systematically.Improving.RAG.Applications.part05.rar
https://uploadgig.com/file/download/C694b1f1542E317F/Systematically.Improving.RAG.Applications.part06.rar
https://uploadgig.com/file/download/35a468d7eb3daf4a/Systematically.Improving.RAG.Applications.part07.rar
https://uploadgig.com/file/download/55d4f9cbBf6Ab0fd/Systematically.Improving.RAG.Applications.part08.rar
https://uploadgig.com/file/download/4f1b202e7f02b5b3/Systematically.Improving.RAG.Applications.part09.rar
https://uploadgig.com/file/download/D118CeeC721f1b6c/Systematically.Improving.RAG.Applications.part10.rar
Download Via Nitroflare
https://nitroflare.com/view/2980B1B68A625D0/Systematically.Improving.RAG.Applications.part01.rar
https://nitroflare.com/view/FBA212B3E7F16E7/Systematically.Improving.RAG.Applications.part02.rar
https://nitroflare.com/view/635E0092F5B2FAA/Systematically.Improving.RAG.Applications.part03.rar
https://nitroflare.com/view/35D90DAAD351D92/Systematically.Improving.RAG.Applications.part04.rar
https://nitroflare.com/view/182B6A3A9A99943/Systematically.Improving.RAG.Applications.part05.rar
https://nitroflare.com/view/EBF265C8BA5660B/Systematically.Improving.RAG.Applications.part06.rar
https://nitroflare.com/view/8E31D9BC0ABB1A8/Systematically.Improving.RAG.Applications.part07.rar
https://nitroflare.com/view/AA53C8F987A6E13/Systematically.Improving.RAG.Applications.part08.rar
https://nitroflare.com/view/B25EB4BAB9E758D/Systematically.Improving.RAG.Applications.part09.rar
https://nitroflare.com/view/76BAAABC96DCDF6/Systematically.Improving.RAG.Applications.part10.rarExtract files with WinRar Latest !
Contact dead link: [email protected]

