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nemo-guardrails

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An end-to-end AI pipeline that scrapes LinkedIn profile and post data to predict 16-personality (MBTI) types using a RAG-enhanced LLM fine-tuned with LoRA. It automates data collection, preprocessing, storage in PostgreSQL, and personality inference from real-world behavioral and linguistic patterns.

  • Updated Nov 15, 2025
  • Jupyter Notebook

This bootcamp is designed to give NLP researchers an end-to-end overview on the fundamentals of NVIDIA NeMo framework, complete solution for building large language models. It will also have hands-on exercises complimented by tutorials, code snippets, and presentations to help researchers kick-start with NeMo LLM Service and Guardrails.

  • Updated Mar 7, 2024
  • Jupyter Notebook

Hands-on demos for the Pluralsight course: Generative AI Data Privacy and Safe Use for Developers. Covers PII masking, prompt injection attacks and defenses, five guardrail rail types (input, retrieval, dialog, execution, output), evaluation release gates, and dashboards mapped to EU AI Act, NIST AI RMF, and ISO/IEC 42001.

  • Updated May 3, 2026
  • Python

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