【演講】2019/11/19 (二) @工四816 (智易空間),邀請到Prof. Geoffrey Li(Georgia Tech, USA)與Prof. Li-Chun Wang(NCTU, Taiwan) 演講「Deep Learning based Wireless Resource Allocation/Deep Learning in Physical Layer Communications/Machine Learning Interference Management」
IBM中心特別邀請到Prof. Geoffrey Li(Georgia Tech, USA)與Prof. Li-Chun Wang(NCTU, Taiwan)前來為我們演講,歡迎有興趣的老師與同學報名參加!
演講標題:Deep Learning based Wireless Resource Allocation/Deep Learning in Physical Layer Communications/Machine Learning Interference Management
演 講 者:Prof. Geoffrey Li與Prof. Li-Chun Wang
時 間:2019/11/19(二) 9:00 ~ 12:00
地 點:交大工程四館816 (智易空間)
活動報名網址:https://forms.gle/vUr3kYBDB2vvKtca6
報名方式:
費用:(費用含講義、午餐及茶水)
1.費用:(1) 校內學生免費,校外學生300元/人 (2) 業界人士與老師1500/人
2.人數:60人,依完成報名順序錄取(完成繳費者始完成報名程序)
※報名及繳費方式:
1.報名:請至報名網址填寫資料
2.繳費:
(1)親至交大工程四館813室完成繳費(前來繳費者請先致電)
(2)匯款資訊如下:
戶名: 曾紫玲(國泰世華銀行 竹科分行013)
帳號: 075506235774 (國泰世華銀行 竹科分行013)
匯款後請提供姓名、匯款時間以及匯款帳號後五碼以便對帳
※將於上課日發放課程繳費領據
聯絡方式:曾紫玲 Tel:03-5712121分機54599 Email:tzuling@nctu.edu.tw
Abstract:
1.Deep Learning based Wireless Resource Allocation
【Abstract】
Judicious resource allocation is critical to mitigating interference, improving network efficiency, and ultimately optimizing wireless network performance. The traditional wisdom is to explicitly formulate resource allocation as an optimization problem and then exploit mathematical programming to solve it to a certain level of optimality. However, as wireless networks become increasingly diverse and complex, such as high-mobility vehicular networks, the current design methodologies face significant challenges and thus call for rethinking of the traditional design philosophy. Meanwhile, deep learning represents a promising alternative due to its remarkable power to leverage data for problem solving. In this talk, I will present our research progress in deep learning based wireless resource allocation. Deep learning can help solve optimization problems for resource allocation or can be directly used for resource allocation. We will first present our research results in using deep learning to solve linear sum assignment problems (LSAP) and reduce the complexity of mixed integer non-linear programming (MINLP), and introduce graph embedding for wireless link scheduling. We will then discuss how to use deep reinforcement learning directly for wireless resource allocation with application in vehicular networks.
2.Deep Learning in Physical Layer Communications
【Abstract】
It has been demonstrated recently that deep learning (DL) has great potentials to break the bottleneck of the conventional communication systems. In this talk, we present our recent work in DL in physical layer communications. DL can improve the performance of each individual (traditional) block in the conventional communication systems or jointly optimize the whole transmitter or receiver. Therefore, we can categorize the applications of DL in physical layer communications into with and without block processing structures. For DL based communication systems with block structures, we present joint channel estimation and signal detection based on a fully connected deep neural network, model-drive DL for signal detection, and some experimental results. For those without block structures, we provide our recent endeavors in developing end-to-end learning communication systems with the help of deep reinforcement learning (DRL) and generative adversarial net (GAN). At the end of the talk, we provide some potential research topics in the area.
3.Machine Learning Interference Management
【Abstract】
In this talk, we discuss how machine learning algorithms can address the performance issues of high-capacity ultra-dense small cells in an environment with dynamical traffic patterns and time-varying channel conditions. We introduce a bi adaptive self-organizing network (Bi-SON) to exploit the power of data-driven resource management in ultra-dense small cells (UDSC). On top of the Bi-SON framework, we further develop an affinity propagation unsupervised learning algorithm to improve energy efficiency and reduce interference of the operator deployed and the plug-and-play small cells, respectively. Finally, we discuss the opportunities and challenges of reinforcement learning and deep reinforcement learning (DRL) in more decentralized, ad-hoc, and autonomous modern networks, such as Internet of things (IoT), vehicle -to-vehicle networks, and unmanned aerial vehicle (UAV) networks.
Bio:
Dr. Geoffrey Li is a Professor with the School of Electrical and Computer Engineering at Georgia Institute of Technology. He was with AT&T Labs – Research for five years before joining Georgia Tech in 2000. His general research interests include statistical signal processing and machine learning for wireless communications. In these areas, he has published around 500 referred journal and conference papers in addition to over 40 granted patents. His publications have cited by 37,000 times and he has been listed as the World’s Most Influential Scientific Mind, also known as a Highly-Cited Researcher, by Thomson Reuters almost every year since 2001. He has been an IEEE Fellow since 2006. He received 2010 IEEE ComSoc Stephen O. Rice Prize Paper Award, 2013 IEEE VTS James Evans Avant Garde Award, 2014 IEEE VTS Jack Neubauer Memorial Award, 2017 IEEE ComSoc Award for Advances in Communication, and 2017 IEEE SPS Donald G. Fink Overview Paper Award. He also won the 2015 Distinguished Faculty Achievement Award from the School of Electrical and Computer Engineering, Georgia Tech.
Li-Chun Wang (M'96 -- SM'06 -- F'11) received Ph. D. degree from the Georgia Institute of Technology, Atlanta, in 1996. From 1996 to 2000, he was with AT&T Laboratories, where he was a Senior Technical Staff Member in the Wireless Communications Research Department. Currently, he is the Chair Professor of the Department of Electrical and Computer Engineering and the Director of Big Data Research Center of of National Chiao Tung University in Taiwan. Dr. Wang was elected to the IEEE Fellow in 2011 for his contributions to cellular architectures and radio resource management in wireless networks. He was the co-recipients of IEEE Communications Society Asia-Pacific Board Best Award (2015), Y. Z. Hsu Scientific Paper Award (2013), and IEEE Jack Neubauer Best Paper Award (1997). He won the Distinguished Research Award of Ministry of Science and Technology in Taiwan twice (2012 and 2016). He is currently the associate editor of IEEE Transaction on Cognitive Communications and Networks. His current research interests are in the areas of software-defined mobile networks, heterogeneous networks, and data-driven intelligent wireless communications. He holds 23 US patents, and have published over 300 journal and conference papers, and co-edited a book, “Key Technologies for 5G Wireless Systems,” (Cambridge University Press 2017).
ad hoc network 在 凌宗湧 Alfie Lin 花藝生活美學 Facebook 的最佳解答
能在朱先生身旁協助與學習 這絕對是一個很難得的好機會!
我們團隊有個難得的空缺,請大家幫忙介紹準備好的人。
朱先生的特助Nicole 要離開我們了,祝福她開啟新的人生章節,當旅人遊走歐洲。
這是很難得的機會,可以跟朱先生和我們學習。當然要求挺高的,能獨立工作,關注細節的同時又要有全局觀,但是我們可以接受不完美。工作細節請看英文的JD。
Executive Assistant to Founder
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You will be working closely with our founder 朱平 Ping Chu (http://www.pingchu.com) as a Project Manager/Executive Assistant. This role offers you a chance to get involved and learn from the many social innovation projects that Mr Chu champions, for example Ripplemaker Foundation, Forward Taiwan and “Taiwan-Your Home in Asia” movement.
Are you the one?
We are looking for that special someone who is kind-hearted, risk-taker with a growth-mindset. This person should also be good at connecting the dots and drawing insights to keep up with Mr Chu’s broad range of interests and passion.
• A happy person
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• Comfortable and able to deal with uncertainty and ambiguity, especially when working with ad hoc teams
• Good with (or at least not afraid to learn) technology and digital media
• Ideally able to be on board the last week of September, 2019
Job description
• Manage Mr Chu’s very active calendar
• Responsible for organising meetings e.g. meeting venue, aroma & decoration, equipment, prepare agendas, write and distribute meeting minutes
• Writing articles, reports and presentations
• Manage special projects, organize events and parties
• Act as a PR agent for Mr Chu and manage his media presence (social media, blogs, interview requests etc.)
• Time keeper, and deadline enforcer
Perks
• Travel or work from Taitung Dulan several times a year
• Broaden your network of contacts and learn from the most impressive people in Mr Chu’s network.
• Access to amazing Aveda products!
Application
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Send to: nicoley@canmeng.com.tw
ad hoc network 在 台灣物聯網實驗室 IOT Labs Facebook 的最讚貼文
國際/技術領先企業創建AllSeen聯盟 推動物聯網
中央日報 (2013-12-11 15:32)
Marketwired/2013年12月10日/美國加利福尼亞州三藩市消息/
致力於促進Linux和協同開發發展的非營利性組織Linux基金會(The Linux Foundation)今天宣佈成立AllSeen聯盟(AllSeen Alliance),這是迄今為止推動家庭和工業"物聯網"應用與創新的最廣泛的跨行業聯盟。
物聯網的概念基礎是設備、物品和系統能夠簡單、透明地連接在一起,可以進行無縫的資訊分享及協調、智慧化的操作。由於沒有一家公司能夠獨自實現支持物聯網、滿足現實需求的互通性水準,因此需要各行業聯合行動,共同向消費者和企業提供新體驗。
AllSeen聯盟期望進一步闡述"物聯網",納入包括各品牌和行業(如聯網家庭、醫療保健、教育、汽車和企業等)的更多功能和互動。Gartner公司預計,到2020年,"物聯網"將為全球經濟帶來1.9萬億美元的價值。
AllSeen聯盟創始成員包括全球領先消費電子製 造商、家用電器製造商、服務提供者、零售商、企業級科技公司、創新型初創公司和晶片製造商。骨幹成員包括海爾(Haier)、LG電子(LG Electronics)、松下(Panasonic)、高通(Qualcomm)、夏普(Sharp)、Silicon Image和TP-LINK等。社區成員包括Canary、思科(Cisco)、D-Link、doubleTwist、Fon、Harman、HTC、Letv、LIFX、光寶(Lite-on)、Moxtreme、Musaic、Sears Brand Management Corporation、Sproutling、The Sprosty Network、Weaved和Wilocity等。
Linux基金會執行理事Jim Zemlin表示:"開源軟體和 協同開發業已證明在一些正在發生重大變革的市場上加快技術創新。這在消費、工業和嵌入式領域尤為明顯,在這些領域裡,聯網設備、系統和服務正在形成人機互 動的新的智慧化水準。AllSeen聯盟代表著推動家庭和工業物聯網發展的前所未有的機會。能夠主持和指導這項工作,我們感到非常高興。"
AllSeen聯盟成員將貢獻軟體和工程技 術資源,這是他們在開源軟體框架方面開展協作的一部分,開源軟體框架有助硬體製造商、服務提供者和軟體發展商開發可交互操作的設備和服務。這個開源框架能 讓ad hoc系統無縫發現附近的設備並與其進行動態連接和互動,且與這些設備的品牌、傳輸層、平臺和作業系統無關。
初始框架基 於AllJoyn(TM)開源項目,該項目原由高通創新中心(Qualcomm Innovation Center, Inc)(高通旗下子公司)開發,將貢獻給AllSeen聯盟,聯盟成員和開源社區將共同努力拓展該專案。利用AllJoyn開源專案開 發的產品、應用和服務能夠在各種傳輸層(如Wi-Fi、電力線或乙太網)上傳輸,與製造商或作業系統無關,且無需互聯網連接。該軟體可在一些流行平臺上運 行,如Linux、基於Linux的安卓、iOS和Windows等,包括嵌入式作業系統。初始代碼庫現在可在聯盟網站 http://www.allseenalliance.org 獲取,供開發者使用和評價。
利用這個用作設備和服務間的公共語言的框架,可以實現更高的智慧化和互通性,例如,家庭可以在大門上安裝用該框架打造的智慧鎖,並把智能鎖和同樣用該框架 打造的智慧燈以及其他製造商生產的安全攝像頭連接在一起。未經授權的闖入將觸發智慧燈閃爍,攝像頭拍攝闖入者的圖像,並向智慧電視發送通知和圖片。而在工 業應用中,工廠――用需要動態調節的系統改善環境--能夠受益於這個框架支援自感知網路的能力,自感知網路能夠不斷感知新添加的設備以及新設備擁有的功能和介面,以便在製造流程中可以立即發揮新設備的作用。
AllSeen聯盟是第11個Linux基金會協作專案。這些專案是獨立籌資的軟體專案,利用協同開發的力量加快行業和生態系統的創新。Linux基金會 傳承這個歷史上最大的協同軟體發展項目的協作精髓,提供基本的協作和組織框架,使專案主持方可以把重點放在創新和結果上。Linux基金會協作專案涵蓋企 業、移動、嵌入和生命科學市場,得到了科技領域眾多知名人士的支援。
【中央網路報】
資料來源:http://news.sina.com.tw/article/20131211/11332109.html
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