AILGMay 19, 2023

Energy-frugal and Interpretable AI Hardware Design using Learning Automata

arXiv:2305.11928v11 citations
Originality Incremental advance
AI Analysis

This work addresses energy efficiency and interpretability in AI hardware design for microedge applications, but it is incremental as it builds on the existing Tsetlin machine algorithm.

The paper tackles the challenge of designing energy-efficient and interpretable AI hardware for microedge applications by tuning hyperparameters of the Tsetlin machine, showing that frugal resource allocation with systematic prodigality reduces energy while maintaining robust learning.

Energy efficiency is a crucial requirement for enabling powerful artificial intelligence applications at the microedge. Hardware acceleration with frugal architectural allocation is an effective method for reducing energy. Many emerging applications also require the systems design to incorporate interpretable decision models to establish responsibility and transparency. The design needs to provision for additional resources to provide reachable states in real-world data scenarios, defining conflicting design tradeoffs between energy efficiency. is challenging. Recently a new machine learning algorithm, called the Tsetlin machine, has been proposed. The algorithm is fundamentally based on the principles of finite-state automata and benefits from natural logic underpinning rather than arithmetic. In this paper, we investigate methods of energy-frugal artificial intelligence hardware design by suitably tuning the hyperparameters, while maintaining high learning efficacy. To demonstrate interpretability, we use reachability and game-theoretic analysis in two simulation environments: a SystemC model to study the bounded state transitions in the presence of hardware faults and Nash equilibrium between states to analyze the learning convergence. Our analyses provides the first insights into conflicting design tradeoffs involved in energy-efficient and interpretable decision models for this new artificial intelligence hardware architecture. We show that frugal resource allocation coupled with systematic prodigality between randomized reinforcements can provide decisive energy reduction while also achieving robust and interpretable learning.

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