AI Firewall and guardrails for LLM-based Elixir applications
- Updated
Dec 1, 2025 - Elixir
AI Firewall and guardrails for LLM-based Elixir applications
Interactive Phoenix LiveView demonstrations of the Crucible Framework - showcasing ensemble voting, request hedging, statistical analysis, and more with mock LLMs
Data validation and quality library for ML pipelines in Elixir
Explainable AI (XAI) tools for the Crucible framework
Advanced telemetry collection and analysis for AI research
Structured causal reasoning chain logging for LLM transparency
Request hedging for tail latency reduction in distributed systems
Experimental research framework for running AI benchmarks at scale
CrucibleFramework: A scientific platform for LLM reliability research on the BEAM
Adversarial testing and robustness evaluation for the Crucible framework
Fairness and bias detection library for Elixir AI/ML systems
Dataset management and caching for AI research benchmarks
Statistical testing and analysis framework for AI research
Multi-model ensemble voting strategies for LLM reliability
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