LGAIDec 26, 2024

Latenrgy: Model Agnostic Latency and Energy Consumption Prediction for Binary Classifiers

arXiv:2412.19241v1h-index: 1
Originality Incremental advance
AI Analysis

It addresses scalability and sustainability issues in machine learning systems for researchers and practitioners, though it is incremental as it builds on existing gaps without empirical validation.

This study tackled the problem of predicting latency and energy consumption for binary classifiers during inference, especially with responsible AI guardrails, by developing a model-agnostic theoretical framework that synthesizes classifier characteristics, dataset properties, and guardrails into predictive equations.

Machine learning systems increasingly drive innovation across scientific fields and industry, yet challenges in compute overhead, specifically during inference, limit their scalability and sustainability. Responsible AI guardrails, essential for ensuring fairness, transparency, and privacy, further exacerbate these computational demands. This study addresses critical gaps in the literature, chiefly the lack of generalized predictive techniques for latency and energy consumption, limited cross-comparisons of classifiers, and unquantified impacts of RAI guardrails on inference performance. Using Theory Construction Methodology, this work constructed a model-agnostic theoretical framework for predicting latency and energy consumption in binary classification models during inference. The framework synthesizes classifier characteristics, dataset properties, and RAI guardrails into a unified analytical instrument. Two predictive equations are derived that capture the interplay between these factors while offering generalizability across diverse classifiers. The proposed framework provides foundational insights for designing efficient, responsible ML systems. It enables researchers to benchmark and optimize inference performance and assists practitioners in deploying scalable solutions. Finally, this work establishes a theoretical foundation for balancing computational efficiency with ethical AI principles, paving the way for future empirical validation and broader applications.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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