SCHEDULE AT-A-GLANCE
DAY1. Monday, April 29Day 3 of ONE Summit only | |
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2 hour on-site discussion |
Day2. Monday, April 29 (APAC time zone friendly)
21:00 – 23:10 EDT (UTC-4)
03:00 – 05:10 CEST (UTC+2) (Friday)
09:00 – 11:10 CST (UTC+8) (Friday)
Day3. Wednesday, May 1 (APAC time zone friendly)
*Reserve day
21:00 – 23:10 EDT (UTC-4)
03:00 – 05:10 CEST (UTC+2) (Friday)
09:00 – 11:10 CST (UTC+8) (Friday)
Day2.
Monday, April 29 (APAC time zone friendly)
Introduction to Akraino activities in 2023, Collaboration with other open communities
Zoom Link: TBDCollaboration with other communities | SAN JOSE MCENERY CONVENTION CENTER |
Day 3 of ONE Summit
Wednesday, May 1
Zoom Link: https://zoom.us/j/98538301700?pwd=RXlFdHpZRDlHTzFaVFRnakw2b0F5QT09
Recording: TBD
Welcome note
Yin Ding TSC Chair
Haruhisa Fukano TSC Co-Chair
Time(UTC-7) | Topics | |||
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1815:00-1815:0510 | Welcome note | |||
1815:10-18:40 | 18:40-19:10 | 19:10-19:40 | 19:40-20:10 | Closing |
Monday, May 1 (APAC time zone friendly)
Introduction to Akraino activities in 2023, Collaboration with other open communities
Zoom Link: TBD
Recording: TBD
15:30 | Jeff Brower, Device AI applications running at the AI Edge on very small form-factor devices (for example pico ITX), and without an online cloud connection, need to perform automatic speech recognition (ASR) under difficult conditions, including background noise, urgent or stressed voice input, and other talkers in the background. For robotics applications, background noise may also include servo motor and other mechanical noise. Under these conditions, efficient open source ASRs such as Kaldi and Whisper tend to produce "sound-alike" errors, for example: in the early days a king rolled the stake To address this issue independently of ASR model, Signalogic is developing a Small Language Model (SLM) to correct sound-alike errors, capable of running in a very small form-factor and under 10W, for example using two (2) Atom CPU cores. The SLM must run every 1/2 second and with a backwards/forwards context of 3-4 words. Unlike an LLM, a wide context window, domain knowledge, and extensive web page training are not needed.
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15:30-15:50 | Hidetsugu Sugiyama, Chief Technology Strategist - Global TME, Red Hat
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15:50-16:20 | Vijay Pal, Predictive Maintenance of Hardware : In the world of smart systems, encompassing 5G, IoT, and data centers uncertainty of hardware failures is very critical. Proactive maintenance of hardware can eliminate these challenges. Our device-agnostic approach, rooted in data analysis and anomaly detection using AI and ML, positions us to fortify the entire smart ecosystem, ensuring reliability and efficiency at scale.
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16:20-17:00 | ・Discussion about Akraino 2024 activities ・Collaboration with LF Edge AI Edge and EdgeLake | ||||||
Closing |
Call for proposal
No | Name | Company | Presentation title | AbstractionAbstract | Preferred Time Zone | Comments | |
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1 | Jeff Brower | Signalogic | jbrower at signalogic dot com | Small Language Model for Edge AI ApplicationsAbstract - Small Language Model for Device AI Applications | Device AI applications running at the AI Edge on very small form-factor edge devices (for example pico ITX), and without a an online cloud connection, need to perform automatic speech recognition (ASR) under difficult conditions, including background noise, urgent or stressed voice input, and other talkers in the background. For robotics applications, background noise may also include servo motor and other mechanical noise. Under these conditions, efficient open source ASRs such as Kaldi and Whisper tend to produce "sound-alike" errors, for example: in the early days , a king rolled the stake To address this issue independently of ASR implementation, Signalogic is developing a Small Language Model (SLM) is needed to correct sound-alike errors, capable of running in a very small form-factor and under 10W, for example using two (2) Atom CPU cores. The SLM must run every 1/2 second and with a backwards/forwards context of 3-4 words. Unlike an LLM, a wide context window, domain knowledge, and extensive web page training is are not needed. | PDT | |
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