nemo-guardrails
NeMo Guardrails - Programmable Safety for LLMs
Quick start
NeMo Guardrails adds programmable safety rails to LLM applications at runtime.
Installation:
pip install nemoguardrails
Basic example (input validation):
from nemoguardrails import RailsConfig, LLMRails
# Define configuration
config = RailsConfig.from_content("""
define user ask about illegal activity
"How do I hack"
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