This Quick Start notebook introduces Fiddler Guardrails, an enterprise solution that safeguards LLM applications from risks like hallucinations, toxicity, and jailbreaking attempts. Learn how to implement the FTL Faithfulness Model, which evaluates factual consistency between AI-generated responses and their source context in RAG applications.Documentation Index
Fetch the complete documentation index at: https://handbook.fiddler.ai/llms.txt
Use this file to discover all available pages before exploring further.
This tutorial covers FTL Faithfulness (
ftl_response_faithfulness) — Fiddler’s proprietary Fast Trust Model for real-time guardrail use cases. For the LLM-as-a-Judge RAG Faithfulness evaluator used in Agentic Monitoring and Experiments, see the RAG Health Metrics Tutorial.- Step-by-step implementation instructions
- Code examples for evaluating response accuracy
- Practical demonstration of hallucination detection
- Sample inputs and outputs with score interpretation