On the Design of PSyKI: a Platform for Symbolic Knowledge Injection into Sub-Symbolic Predictors

Matteo Magnini  /  Matteo Magnini, Giovanni Ciatto, Andrea Omicini

A long-standing ambition in artificial intelligence is to integrate predictors' inductive features (i.e., learning from examples) with deductive capabilities (i.e., drawing inferences from prior symbolic knowledge). Many algorithms methods in the literature support injection of prior symbolic knowledge into predictors, generally following the purpose of attaining better (i.e., more effective or efficient w.r.t. predictive performance) predictors. However, to the best of our knowledge, running implementations of these algorithms are currently either proof of concepts or unavailable in most cases. Moreover, an unified, coherent software framework supporting them as well as their interchange, comparison and exploitation in arbitrary ML workflows is currently missing. Accordingly, in this paper we present PSyKI, a platform providing general-purpose support to symbolic knowledge injection into predictors via different algorithms.


  • EXplainable and TRAnsparent AI and Multi-Agent Systems: Fourth International Workshop (EXTRAAMAS 2022) — 09/05/2022–10/05/2022



— speakers

— authors

— sort


— language



4rd International Workshop on EXplainable and TRAnsparent AI and Multi-Agent Systems (EXTRAAMAS 2021)

— where

Virtual Event

— when


Partita IVA: 01131710376 - Copyright © 2008-2022 APICe@DISI Research Group - PRIVACY