Search Results for author: Shaoshan Liu

Found 26 papers, 0 papers with code

ICE-SEARCH: A Language Model-Driven Feature Selection Approach

no code implementations28 Feb 2024 Tianze Yang, Tianyi Yang, Shaoshan Liu, Fuyuan Lvu, Xue Liu

This study unveils the In-Context Evolutionary Search (ICE-SEARCH) method, the first work that melds language models (LMs) with evolutionary algorithms for feature selection (FS) tasks and demonstrates its effectiveness in Medical Predictive Analytics (MPA) applications.

Diabetes Prediction Disease Prediction +4

Timely Fusion of Surround Radar/Lidar for Object Detection in Autonomous Driving Systems

no code implementations9 Sep 2023 Wenjing Xie, Tao Hu, Neiwen Ling, Guoliang Xing, Shaoshan Liu, Nan Guan

Surround Radar/Lidar can provide 360-degree view sampling with the minimal cost, which are promising sensing hardware solutions for autonomous driving systems.

Autonomous Driving object-detection +1

A Comprehensive Review and Systematic Analysis of Artificial Intelligence Regulation Policies

no code implementations23 Jul 2023 Weiyue Wu, Shaoshan Liu

This study, containing historical lessons and analysis methods, aims to help governing bodies untangling the AI regulatory chaos through a divide-and-conquer manner.

Autonomy 2.0: The Quest for Economies of Scale

no code implementations8 Jul 2023 Shuang Wu, Bo Yu, Shaoshan Liu, Yuhao Zhu

With the advancement of robotics and AI technologies in the past decade, we have now entered the age of autonomous machines.

Autonomous Vehicles

AI Clinics on Mobile (AICOM): Universal AI Doctors for the Underserved and Hard-to-Reach

no code implementations17 Jun 2023 Tim Tianyi Yang, Tom Tianze Yang, Na An, Ao Kong, Shaoshan Liu, Steve Xue Liu

This paper introduces Artificial Intelligence Clinics on Mobile (AICOM), an open-source project devoted to answering the United Nations Sustainable Development Goal 3 (SDG3) on health, which represents a universal recognition that health is fundamental to human capital and social and economic development.

Compliance Costs of AI Technology Commercialization: A Field Deployment Perspective

no code implementations31 Jan 2023 Weiyue Wu, Shaoshan Liu

While Artificial Intelligence (AI) technologies are progressing fast, compliance costs have become a huge financial burden for AI startups, which are already constrained on research & development budgets.

Thales: Formulating and Estimating Architectural Vulnerability Factors for DNN Accelerators

no code implementations5 Dec 2022 Abhishek Tyagi, Yiming Gan, Shaoshan Liu, Bo Yu, Paul Whatmough, Yuhao Zhu

As Deep Neural Networks (DNNs) are increasingly deployed in safety critical and privacy sensitive applications such as autonomous driving and biometric authentication, it is critical to understand the fault-tolerance nature of DNNs.

Autonomous Driving

AICOM-MP: an AI-based Monkeypox Detector for Resource-Constrained Environments

no code implementations21 Nov 2022 Tim Tianyi Yang, Tom Tianze Yang, Andrew Liu, Jie Tang, Na An, Shaoshan Liu, Xue Liu

Also, through the AICOM-MP project, we have generalized a methodology of developing health AI technologies for AMCs to allow universal access even in resource-constrained environments.

Autonomous Mobile Clinics: Empowering Affordable Anywhere Anytime Healthcare Access

no code implementations11 Apr 2022 Shaoshan Liu, Yuzhang Huang, Leiyu Shi

Nevertheless, to enable a universal autonomous mobile clinic network, a three-stage technical roadmap needs to be achieved: In stage one, we focus on solving the inequity challenge in the existing healthcare system by combining autonomous mobility and telemedicine.

Dilemma of the Artificial Intelligence Regulatory Landscape

no code implementations17 Dec 2021 Weiyue Wu, Shaoshan Liu

As a startup company in the autonomous driving space, we have undergone four years of painful experiences dealing with a broad spectrum of regulatory requirements.

Autonomous Driving

Dataflow Accelerator Architecture for Autonomous Machine Computing

no code implementations15 Sep 2021 Shaoshan Liu, Yuhao Zhu, Bo Yu, Jean-Luc Gaudiot, Guang R. Gao

Commercial autonomous machines is a thriving sector, one that is likely the next ubiquitous computing platform, after Personal Computers (PC), cloud computing, and mobile computing.

Cloud Computing

Rise of the Autonomous Machines

no code implementations26 Jun 2021 Shaoshan Liu, Jean-Luc Gaudiot

After decades of uninterrupted progress and growth, information technology has so evolved that it can be said we are entering the age of autonomous machines, but there exist many roadblocks in the way of making this a reality.

An Energy-Efficient Quad-Camera Visual System for Autonomous Machines on FPGA Platform

no code implementations1 Apr 2021 Zishen Wan, Yuyang Zhang, Arijit Raychowdhury, Bo Yu, Yanjun Zhang, Shaoshan Liu

In our past few years' of commercial deployment experiences, we identify localization as a critical task in autonomous machine applications, and a great acceleration target.

Engineering Education in the Age of Autonomous Machines

no code implementations16 Feb 2021 Shaoshan Liu, Jean-Luc Gaudiot, Hironori Kasahara

In the past few years, we have observed a huge supply-demand gap for autonomous driving engineers.

Autonomous Driving Electrical Engineering

Eudoxus: Characterizing and Accelerating Localization in Autonomous Machines

no code implementations2 Dec 2020 Yiming Gan, Yu Bo, Boyuan Tian, Leimeng Xu, Wei Hu, Shaoshan Liu, Qiang Liu, Yanjun Zhang, Jie Tang, Yuhao Zhu

We develop and commercialize autonomous machines, such as logistic robots and self-driving cars, around the globe.

Self-Driving Cars Hardware Architecture

A Survey of FPGA-Based Robotic Computing

no code implementations13 Sep 2020 Zishen Wan, Bo Yu, Thomas Yuang Li, Jie Tang, Yuhao Zhu, Yu Wang, Arijit Raychowdhury, Shaoshan Liu

On the other hand, FPGA-based robotic accelerators are becoming increasingly competitive alternatives, especially in latency-critical and power-limited scenarios.

Autonomous Vehicles

CoCoPIE: Making Mobile AI Sweet As PIE --Compression-Compilation Co-Design Goes a Long Way

no code implementations14 Mar 2020 Shaoshan Liu, Bin Ren, Xipeng Shen, Yanzhi Wang

Assuming hardware is the major constraint for enabling real-time mobile intelligence, the industry has mainly dedicated their efforts to developing specialized hardware accelerators for machine learning and inference.

CAVBench: A Benchmark Suite for Connected and Autonomous Vehicles

no code implementations15 Oct 2018 Yifan Wang, Shaoshan Liu, Xiaopei Wu, Weisong Shi

Meanwhile, several pioneer efforts have focused on the edge computing system and architecture design for the CAVs scenario and provided various heterogeneous platform prototypes for CAVs.

Distributed, Parallel, and Cluster Computing Performance

Trifo-VIO: Robust and Efficient Stereo Visual Inertial Odometry using Points and Lines

no code implementations6 Mar 2018 Feng Zheng, Grace Tsai, Zhe Zhang, Shaoshan Liu, Chen-Chi Chu, Hongbing Hu

In this paper, we present the Trifo Visual Inertial Odometry (Trifo-VIO), a tightly-coupled filtering-based stereo VIO system using both points and lines.

Teaching Autonomous Driving Using a Modular and Integrated Approach

no code implementations22 Feb 2018 Jie Tang, Shaoshan Liu, Songwen Pei, Stephane Zuckerman, Chen Liu, Weisong Shi, Jean-Luc Gaudiot

Then, once the students have understood these modules, the experimental platforms for integration we have developed allow the students to fully understand how the modules interact with each other.

Autonomous Driving

PIRVS: An Advanced Visual-Inertial SLAM System with Flexible Sensor Fusion and Hardware Co-Design

no code implementations2 Oct 2017 Zhe Zhang, Shaoshan Liu, Grace Tsai, Hongbing Hu, Chen-Chi Chu, Feng Zheng

In this paper, we present the PerceptIn Robotics Vision System (PIRVS) system, a visual-inertial computing hardware with embedded simultaneous localization and mapping (SLAM) algorithm.

Sensor Fusion Simultaneous Localization and Mapping

Learn-Memorize-Recall-Reduce A Robotic Cloud Computing Paradigm

no code implementations16 Apr 2017 Shaoshan Liu, Bolin Ding, Jie Tang, Dawei Sun, Zhe Zhang, Grace Tsai, Jean-Luc Gaudiot

The rise of robotic applications has led to the generation of a huge volume of unstructured data, whereas the current cloud infrastructure was designed to process limited amounts of structured data.

Cloud Computing Memorization

Enabling Embedded Inference Engine with ARM Compute Library: A Case Study

no code implementations12 Apr 2017 Dawei Sun, Shaoshan Liu, Jean-Luc Gaudiot

Our conclusion is that, on embedded devices, we most likely will use very simple deep learning models for inference, and with well-developed building blocks such as ACL, it may be better in both performance and development time to build the engine from scratch.

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