Toward Among-Device AI from On-Device AI with Stream Pipelines
Fri 13 May 2022 05:15 - 05:20 at ICSE room 2-odd hours - Software Architecture and Design 1 Chair(s): Daria Bogdanova
Wed 25 May 2022 09:45 - 09:50 at Room 301+302 - Papers 2: Software Engineering in Practice Chair(s): Ipek Ozkaya
Wed 25 May 2022 13:30 - 15:00 at Ballroom Gallery - Posters 1
Modern consumer electronic devices often provide intelligence services with deep neural networks. We have started migrating the computing locations of intelligence services from cloud servers (traditional AI systems) to the corresponding devices (on-device AI systems). On-device AI systems generally have the advantages of preserving privacy, removing network latency, and saving cloud costs. With the emergent of on-device AI systems having relatively low computing power, the inconsistent and varying hardware resources and capabilities pose difficulties. Authors’ affiliation has started applying a stream pipeline framework, NNStreamer, for on-device AI systems, saving developmental costs and hardware resources and improving performance. We want to expand the types of devices and applications with on-device AI services products of both the affiliation and second/third parties. We also want to make each AI service atomic, re-deployable, and shared among connected devices of arbitrary vendors; we now have yet another requirement introduced as it always has been. The new requirement of “among-device AI” includes connectivity between AI pipelines so that they may share computing resources and hardware capabilities across a wide range of devices regardless of vendors and manufacturers. We propose extensions of the stream pipeline framework, NNStreamer, for on-device AI so that NNStreamer may provide among-device AI capability. This work is a Linux Foundation (LF AI & Data) open source project accepting contributions from the general public.
Mon 9 MayDisplayed time zone: Eastern Time (US & Canada) change
22:00 - 23:00 | Synthesis and PerformanceTechnical Track / SEIP - Software Engineering in Practice at ICSE room 5-even hours Chair(s): John Grundy Monash University | ||
22:00 5mTalk | Toward Among-Device AI from On-Device AI with Stream Pipelines SEIP - Software Engineering in Practice MyungJoo Ham Samsung Electronics, Sangjung Woo Samsung Electronics, Jaeyun Jung Samsung Electronics, Wook Song Samsung Electronics, Gichan Jang Samsung Electronics, Yongjoo Ahn Samsung Electronics, Hyoungjoo Ahn Samsung Electronics Pre-print Media Attached | ||
22:05 5mTalk | SapientML: Synthesizing Machine Learning Pipelines by Learning from Human-Written Solutions Technical Track Ripon Saha , Akira Ura Fujitsu Ltd., Sonal Mahajan Uber Technologies Inc., Chenguang Zhu University of Texas at Austin, Linyi Li University of Illinois at Urbana-Champaign, Yang Hu The University of Texas at Austin, Hiroaki Yoshida AMD, Sarfraz Khurshid The University of Texas at Austin, Mukul Prasad Fujitsu Research of America Pre-print Media Attached | ||
22:10 5mTalk | Automatic Detection of Performance Bugs in Database Systems using Equivalent Queries Technical Track Xinyu Liu Georgia Institute of Technology, Qi Zhou Facebook, Joy Arulraj Georgia Institute of Technology, Alessandro Orso Georgia Tech Pre-print Media Attached |
Fri 13 MayDisplayed time zone: Eastern Time (US & Canada) change
Wed 25 MayDisplayed time zone: Eastern Time (US & Canada) change
09:30 - 10:30 | Papers 2: Software Engineering in PracticeJournal-First Papers / SEIP - Software Engineering in Practice at Room 301+302 Chair(s): Ipek Ozkaya Carnegie Mellon Software Engineering Institute | ||
09:30 5mTalk | The Agile Success Model: A Mixed-methods Study of a Large-scale Agile Transformation Journal-First Papers Daniel Russo Department of Computer Science, Aalborg University Link to publication DOI Pre-print | ||
09:35 5mTalk | Automatically Identifying Shared Root Causes of Test Breakages in SAP HANA SEIP - Software Engineering in Practice Gabin An KAIST, Juyeon Yoon Korea Advanced Institute of Science and Technology, Jeongju Sohn University of Luxembourg, Jingun Hong SAP Labs, Dongwon Hwang SAP Labs, Shin Yoo KAIST Pre-print Media Attached | ||
09:40 5mTalk | Automatic Anti-Pattern Detection in Microservice Architectures based on Distributed Tracing SEIP - Software Engineering in Practice Tim Hubener ING Bank N.V., Yaping Luo ING; Eindhoven University of Technology, Pieter Vallen ING, Jonck van der Kogel ING Bank N.V., Tom Liefheid ING Bank N.V., Michel Chaudron Eindhoven University of Technology, The Netherlands Media Attached | ||
09:45 5mTalk | Toward Among-Device AI from On-Device AI with Stream Pipelines SEIP - Software Engineering in Practice MyungJoo Ham Samsung Electronics, Sangjung Woo Samsung Electronics, Jaeyun Jung Samsung Electronics, Wook Song Samsung Electronics, Gichan Jang Samsung Electronics, Yongjoo Ahn Samsung Electronics, Hyoungjoo Ahn Samsung Electronics Pre-print Media Attached | ||
09:50 5mTalk | Counterfactual Explanations for Models of Code SEIP - Software Engineering in Practice Jürgen Cito TU Wien and Meta, Işıl Dillig University of Texas at Austin, Vijayaraghavan Murali Meta Platforms, Inc., Satish Chandra Facebook Pre-print Media Attached | ||
09:55 5mTalk | The Unexplored Terrain of Compiler Warnings SEIP - Software Engineering in Practice Gunnar Kudrjavets University of Groningen, Aditya Kumar Snap, Inc., Nachiappan Nagappan Microsoft Research, Ayushi Rastogi University of Groningen, The Netherlands DOI Pre-print Media Attached |