AI & ML interests

None defined yet.

Recent Activity

SparseTech  updated a Space 2 days ago
Sparse-Tech/README
SparseTech  published a Space 2 days ago
Sparse-Tech/README
SparseTech  updated a collection 2 days ago
SparseTech Research
View all activity

Organization Card

⚡️ SparseTech

Redefining LLM reliability for edge AI through variance reduction, sparse knowledge distillation, and probability-domain manifold correction.

Standard benchmarks measure whether a model is correct; SparseTech measures whether a model is reliable. We believe that in agentic and edge AI, hallucinations live in variance. Our mission is to crush stochastic variance and stabilize reasoning without relying on massive, server-side inference ensembles.


📚 Foundational Research

We believe models should be built upon a rigorous axiomatic framework recently published in early 2026. You can read our core methodology here:

The Core Theory

The Distillation Framework

Advanced Manifold Correction

models 0

None public yet

datasets 0

None public yet