Intelligence per Watt: Measuring Intelligence Efficiency of Local AI
Jon Saad-Falcon, Avanika Narayan, Hakki Orhun Akengin, J. Wes Griffin, Herumb Shandilya, Adrian Gamarra Lafuente, Medhya Goel, Rebecca Joseph, Shlok Natarajan, Etash Kumar Guha, Shang Zhu, Ben Athiwaratkun, John Hennessy, Azalia Mirhoseini, Christopher R\'e

TL;DR
This paper introduces 'intelligence per watt' (IPW), a metric to evaluate the efficiency and accuracy of local AI inference, demonstrating significant improvements and potential for decentralizing AI query processing.
Contribution
It proposes IPW as a unified metric, evaluates over 20 local LMs and hardware, and shows local inference's growing viability for real-world AI tasks.
Findings
Local LMs answer 88.7% of queries accurately.
IPW improved 5.3x from 2023-2025 due to algorithm and hardware advances.
Local accelerators are at least 1.4x more efficient than cloud accelerators.
Abstract
Large language model (LLM) queries are predominantly processed by frontier models in centralized cloud infrastructure. Demand growth strains this paradigm faster than providers can scale. Two advances create an opportunity to rethink it: small, local LMs (<=20B active parameters) now achieve competitive performance to frontier models on many tasks, and local accelerators (e.g., Apple M4 Max) can host these models at interactive latencies. This raises the question: can local inference viably redistribute demand from centralized infrastructure? This requires measuring both whether local LMs can accurately answer real-world queries and whether they can do so efficiently on power-constrained devices (e.g., laptops). We propose intelligence per watt (IPW), task accuracy per unit of power, as a unified metric for the capability and efficiency of local inference across model-accelerator…
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Taxonomy
TopicsBig Data and Digital Economy · Cloud Computing and Resource Management · Advanced Neural Network Applications
