Skip to content
Branch: master
Find file Copy path
Find file Copy path
Fetching contributors…
Cannot retrieve contributors at this time
51 lines (51 sloc) 2.58 KB
categories description image session_attendee_num session_id session_room session_slot session_speakers session_track tag tags title youtube_video_url amazon_s3_presentation_url amazon_s3_video_url
As deep learning (DL) expands is application into ever more areas, DL at the edge has become an area of rapid innovation and has also become highly fragmented. This creates a challenge in the ecosystem for framework providers that want to take advantage of specialized hardware, and an equal challenge for SoC providers, or makers of DL accelerators that need to support various frameworks, customer innovations, device constraints, etc. This talk will explore what constitutes DL at the edge, it will highlight the recent trends in this area from runtimes and compilers, to model formats, and explore the challenges, and scalability needs of collaborative solutions.
featured path
Keynote Room (World Ballroom BC)
end_time start_time
2019-04-04 09:25:00
2019-04-04 08:30:00
speaker_bio speaker_company speaker_image speaker_location speaker_name speaker_position speaker_username
Mark is Director Engineering in Qualcomm Technologies Inc (QTI) in the Machine Learning Group. Currently he is focused on Neural Processing Runtime for Qualcomm SoCs, AI Benchmarking, and also serves as an open source Trusted Advisor for the MLG group. He has represented QTI on the Linux Foundation board, served on the Dronecode board and Core Infrastructure Initiative steering committee, and as the TSC lead for Dronecode. Mark also contributed code to the PX4 Open Source Flight Stack (, and to the LLVMLinux project with associated patches for the Linux kernel. He also helps support the Dragonboard developer platforms and has been working in embedded software for over 25 years. Mark has a BASc in Systems Design Engineering from the University of Waterloo, and a MASc in Engineering Science from Simon Frazer University.
Qualcomm Technologies Inc
Mark Charlebois
Director, Engineering Qualcomm Technologies Inc
Machine Learning/AI
Open Source Development
Linux Kernel
BKK19-402 - Inferencing at the edge and Fragmentation Challenges
You can’t perform that action at this time.