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[The 41st TrustML Young Scientist Seminar]

Wed, 16 Nov 2022 16:30 - 17:30 JST
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-Passcode 12bMJDrcC2 -Time Zone:JST -The seats are available on a first-come-first-served basis. -When the seats are fully booked, we may stop accepting applications. -Simultaneous interpretation will not be available.

Description

The TrustML Young Scientist Seminars (TrustML YSS) started from January 28, 2022.

The TrustML YSS is a video series that features young scientists giving talks and discoveries in relation with Trustworthy Machine Learning.

Timetable for the TrustML YSS online seminars from Nov. to Dec. 2022.

For more information please see the following site.
TrustML YSS

This network is funded by RIKEN-AIP's subsidy and JST, ACT-X Grant Number JPMJAX21AF, Japan.


【The 41st Seminar】


Date and Time: Nov. 16th 4:30 pm - 5:30 pm(JST)

Venue: Zoom webinar

Language: English

Speaker: Phi Le Nguyen (Hanoi University of Science and Technology)
Title: Trustworthy AI in SmartHealth and a case-study in Vietnam
Short Abstract
Vietnam is in a severe shortage of physicians, with the ratio of doctors and nurses per population being much lower than the average of low- and middle-income countries. This situation necessitates the development of systems that help Vietnamese be proactive in taking care of their health, monitoring risks in the pre-disease stages, and thereby improving healthcare quality in general. One obvious solution is to digitize healthcare information and deliver it to every citizen. The VAIPE project aims to build an intelligent healthcare system to assist users in collecting, managing, and analyzing their health-related data. Our system enables users to collect heterogeneous data captured from multiple sources using a convenient smartphone camera, provides visualizations of analytical and predicted results, and includes functions to support users, for example, reminding of medication schedules and warning of early-disease risks. Our system is AI-assisted and involves original research and development of several key modules: (1) representation, storage, and processing of multi-source multi-type data, (2) training, learning, and mining on data for clinical insights and disease risk prediction with supporting evidence, (3) enhancement of user privacy and engagement in sharing their health-related data, and (4) optimized resource allocation to reduce deployment cost while guaranteeing QoS constraints. In this talk, I would like to share our recent findings on trustworthy AI in VAIPE. Specifically, I will focus on pill detection with reliability and explainability, and Federated learning under non-ideal and uncontrollable clients’ data.


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Please see the URL below.
https://aip.riken.jp/event-list/termsofparticipation/?lang=en

RIKEN AIP will expect adherence to this code throughout the event. We expect cooperation from all participants to help ensure a safe environment for everybody.


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