The cost model leverages SMT‑based solving (Z3) to achieve optimal decoding speed under CPU, I/O, and memory constraints.The cost model leverages SMT‑based solving (Z3) to achieve optimal decoding speed under CPU, I/O, and memory constraints.

How PowerInfer‑2 Turns Your Smartphone Into an AI Workstation

Abstract and 1. Introduction

  1. Background and Motivation
  2. PowerInfer-2 Overview
  3. Neuron-Aware Runtime Inference
  4. Execution Plan Generation
  5. Implementation
  6. Evaluation
  7. Related Work
  8. Conclusion and References

5 Execution Plan Generation

Today’s smartphones are equipped with a variety of hardware specifications, such as differing CPU capabilities, I/O throughput, and DRAM sizes. Users deploying LLMs on these devices also have diverse objectives. Some may prioritize a balance between generation speed and memory usage, while others aim to maximize hardware utilization for increased speed. Additionally, the models themselves vary in weight numbers, structures, and sparsity levels. To manage this complexity, PowerInfer-2 includes an offline planner specifically designed to develop execution plans that optimally meet these varied requirements.

\

5.1 Execution Plan

\

5.2 Input Parameters

Table 2 also lists three categories of input parameters:

\ • Hardware: Parameters profiled from the hardware, such as CPU FLOPS, I/O throughput, and memory bandwidth.

\ • User: Parameters specified by the user, such as CPU constraints, memory limit, and lower bound of decoding speed.

\ • Model: Parameters about the model collected by an offline profiler, such as the size of the model, sparsity levels and caching characteristics, etc.

\

\

5.3 Cost Model

After collecting the input parameters, the planner uses a cost model to generate the execution plan. The goal is to maximize the generation speed s (as defined by Equation 1) while adhering to user-specified constraints (Formulas 3-5). The decoding speed s is inversely proportional to the time taken to decode one token (Equation 1), which is determined by the computation times for that token (Equation 2), as we efficiently overlap the computation and I/O operations. As we have defined the objective function and the constraints, the constructed model can be solved by mature SMT solvers. In our implementation, we utilize the Z3 solver [11] to solve the cost model.

\

\ To compute the decoding time, we first model the times for computation. As we observed that memory opeartion is not a significant factor compared to the computation, we do not consider it in the computation time. Computation time (Equation 6) is primarily influenced by the attention blocks, predictors, and FFN blocks. The calculation involves dividing the computational workload of these components by the CPU flops (defined in Equation 7- 8). The flops of the selected CPU cores are specified in Equations 9.

\

\ Table 2: Symbols used in execution planning.

\ As FFN block computation overlaps with neuron loading, the planner must also account for I/O transmission time. This is calculated by dividing the volume of neurons transferred from flash storage (Equation 10) by the I/O bandwidth. This transferred volume depends on both the activation rate and the cache miss rate.

\

\ Finally, the planner calculates the time to load neurons from memory, which relates to the weight sizes of attention blocks, predictors, and neurons activated at runtime. The memory time is determined by dividing the total weight of activated neurons for one token by the memory bandwidth (Equation 11).

\

6 Implementation

PowerInfer-2 is developed on top of PowerInfer [30], a stateof-the-art serving framework designed for sparsely-activated LLMs, by integrating an additional 12K lines of C++ code into PowerInfer [30]. These enhancements encompass several key areas, including the polymorphic neuron engine, neuron cache, flexible neuron loading, and neuron-cluster-level I/O pipeline.

\ Since PowerInfer-2 depends on privileged system APIs (e.g., mlock that locks pages in memory) that needs the root permission, we built it on the Android [5] platform. Even though there is no need to alter the system kernel, a rooted Android system still provides us with considerable flexibility in developing and debugging our system. Furthermore, PowerInfer-2 is inherently designed with no modifications to the kernel, making it easily portable to other operating systems, including iOS [14] platform.

\ The current implementation of PowerInfer-2 supports a diverse array of LLMs with varying model sizes, including Llama-2 family [27] (7B, 13B), TurboSparse-Mistral [31] (7B), and TurboSparse-Mixtral [31] (47B).

\ Table 3: Hardware specifications of smartphones we used in the evaluation. “DRAM” is the physical memory size. “Available” is the maximum memory size that can be occupied by an application.

\

:::info Authors:

(1) Zhenliang Xue, Co-first author from Institute of Parallel and Distributed Systems (IPADS), Shanghai Jiao Tong University;

(2) Yixin Song, Co-first author from Institute of Parallel and Distributed Systems (IPADS), Shanghai Jiao Tong University;

(3) Zeyu Mi, Institute of Parallel and Distributed Systems (IPADS), Shanghai Jiao Tong University (yzmizeyu@sjtu.edu.cn);

(4) Le Chen, Institute of Parallel and Distributed Systems (IPADS), Shanghai Jiao Tong University;

(5) Yubin Xia, Institute of Parallel and Distributed Systems (IPADS), Shanghai Jiao Tong University;

(6) Haibo Chen, Institute of Parallel and Distributed Systems (IPADS), Shanghai Jiao Tong University.

:::


:::info This paper is available on arxiv under CC BY 4.0 license.

:::

\

Market Opportunity
Sleepless AI Logo
Sleepless AI Price(AI)
$0.03529
$0.03529$0.03529
-4.28%
USD
Sleepless AI (AI) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

Horror Thriller ‘Bring Her Back’ Gets HBO Max Premiere Date

Horror Thriller ‘Bring Her Back’ Gets HBO Max Premiere Date

The post Horror Thriller ‘Bring Her Back’ Gets HBO Max Premiere Date appeared on BitcoinEthereumNews.com. Jonah Wren Phillips in “Bring Her Back.” A24 Bring Her Back, a new A24 horror movie from the filmmakers of the smash hit Talk to Me, is coming soon to HBO Max. Bring Her Back opened in theaters on May 30 before debuting on digital streaming via premium video on demand on July 1. The official logline for Bring Her Back reads, “A brother and sister uncover a terrifying ritual at the secluded home of their new foster mother.” Forbes‘South Park’ Season 27 Updated Release Schedule: When Do New Episodes Come Out?By Tim Lammers Directed by twin brothers Danny Philippou and Michael Philippou, Bring Her Back stars Billy Barratt, Sora Wong, Jonah Wren Philips, Sally–Anne Upton, Stephen Philips, Mischa Heywood and Sally Hawkins. Warner Bros. Discovery announced on Wednesday that Bring Her Back will arrive on streaming on HBO Max on Friday, Oct. 3, and on HBO linear on Saturday, Oct. 4, at 8 p.m. ET. Prior to the debut of Bring Her Back on HBO on Oct. 4, the cable outlet will air the Philippou brothers’ 2022 horror hit Talk to Me. ForbesHit Horror Thriller ’28 Years Later’ Is New On Netflix This WeekBy Tim Lammers For viewers who don’t have HBO Max, the streaming platform offers three tiers: The ad-based tier costs $9.99 per month, while an ad-free tier is $16.99 per month. Additionally, an ad-free tier with 4K Ultra HD programming costs $20.99 per month. The Success Of ‘Talk To Me’ Weighed On The Minds Of Philippou Brothers While Making ‘Bring Her Back’ During the film’s theatrical run, Bring Her Back earned $19.3 million domestically and nearly $19.8 million internationally for a worldwide box office tally of $39.1 million. Bring Her Back had a production budget of $17 million before prints and advertising, according to The Numbers.…
Share
BitcoinEthereumNews2025/09/18 09:23
U Mobile and IGB Collaborate on Malaysia’s 5G Indoor Networks

U Mobile and IGB Collaborate on Malaysia’s 5G Indoor Networks

U Mobile partners with IGB Berhad for 5G indoor network deployment across 20 Malaysian properties.
Share
bitcoininfonews2025/12/21 20:20
SOL Price Prediction: Targeting $165-175 Recovery Within 6 Weeks as Technical Setup Improves

SOL Price Prediction: Targeting $165-175 Recovery Within 6 Weeks as Technical Setup Improves

The post SOL Price Prediction: Targeting $165-175 Recovery Within 6 Weeks as Technical Setup Improves appeared on BitcoinEthereumNews.com. Felix Pinkston Dec
Share
BitcoinEthereumNews2025/12/21 19:51