From a91fada366090193d1dcfaee76a14e69821745a7 Mon Sep 17 00:00:00 2001 From: Manos Athanassoulis Date: Sat, 22 Jun 2024 09:01:26 -0400 Subject: [PATCH] add missing abstract and update schedule, on: hdms/2024/program.html --- hdms/2024/program.html | 24 ++++++++++++++++-------- 1 file changed, 16 insertions(+), 8 deletions(-) diff --git a/hdms/2024/program.html b/hdms/2024/program.html index 6016e6f..c4a2ac1 100644 --- a/hdms/2024/program.html +++ b/hdms/2024/program.html @@ -250,10 +250,10 @@

Download the program 12:00 - 12:10pm TIMBER: On supporting data pipelines in Mobile Cloud Environments
Tomaras, Dimitris; Tsenos, Michalis; Kalogeraki, Vana; Gunopulos, Dimitrios - + The radical advances in mobile computing, the IoT technological evolution along with cyberphysical components (e.g., sensors, actuators, control centers) have led to the de- velopment of smart city applications that generate raw or pre- processed data, enabling workflows involving the city to better sense the urban environment and support citizens’ everyday lives. Recently, a new era of Mobile Edge Cloud (MEC) infrastructures has emerged to support smart city applications that aim to address the challenges raised due to the spatio-temporal dynamics of the urban crowd as well as bring scalability and on-demand computing capacity to urban system applications for timely response. In these, resource capabilities are distributed at the edge of the network and in close proximity to end-users, making it possible to perform computation and data processing at the network edge. However, there are important challenges related to real-time execution, not only due to the highly dynamic and transient crowd, the bursty and highly unpredictable amount of requests but also due to the resource constraints imposed by the Mobile Edge Cloud environment. In this paper, we present TIMBER, our framework for efficiently supporting mobile daTa processing pIpelines in MoBile cloud EnviRonments that ef- fectively addresses the aforementioned challenges. Our detailed experimental results illustrate that our approach can reduce the operating costs by 66.245% on average and achieve up to 96.4% similar throughput performance for agnostic workloads. + @@ -378,10 +378,6 @@

Download the program 3:00 - 3:30pm - Industry Session - - - 3:30 - 4:00pm Keynote 2: Robust Query Optimization in the Era of Machine Learning, Verena Kantere (Univeristy of Ottawa)
Click to display the abstract and bio @@ -391,6 +387,10 @@

Download the program + + 3:30 - 4:00pm + Industry Session +