Skip to content
#

model-observability

Here are 10 public repositories matching this topic...

Language: All
Filter by language

ExpertFingerprinting: Behavioral Pattern Analysis and Specialization Mapping of Experts in GPT-OSS-20B's Mixture-of-Experts Architecture

  • Updated Feb 3, 2026
  • HTML

Capability Schema Spec defines a shared semantic language for world model evaluation. Standardize capability definition, observation, and verification across models and benchmarks. Not a benchmark—a shared language. Define • Observe • Verify

  • Updated Jul 3, 2026
  • Python

Architecture and training decisions determine how observable an LLM is. Transformer activations carry decision-quality signals that output confidence misses; training can preserve or erase them during convergence, even as predictive performance improves.

  • Updated May 12, 2026
  • Python

Reference implementation of the Capability Schema Specification. Proves that world model capabilities can be defined, observed, and verified in practice — with real checkpoints, real simulators, and real scores. Define • Observe • Verify • Deliver

  • Updated Jul 2, 2026
  • Python

"An end-to-end Medical Imaging pipeline built on AWS SageMaker utilizing Transfer Learning (ResNet18). The project implements Hyperparameter Optimization (HPO) to minimize loss, leverages SageMaker Debugger & Profiler for resource optimization, and concludes with a Production-ready real-time inference endpoint

  • Updated Apr 24, 2026
  • Python

Improve this page

Add a description, image, and links to the model-observability topic page so that developers can more easily learn about it.

Curate this topic

Add this topic to your repo

To associate your repository with the model-observability topic, visit your repo's landing page and select "manage topics."

Learn more