Inhalt des Dokuments
Adaptive Resource Management (ARM)
[1]
- © ARM / DOS / TUB
The ARM subgroup, lead by Dr. Lauritz Thamsen [2], works at the intersection of distributed systems, operating systems, and software engineering, focusing on adaptive resource management in critical and data-intensive distributed systems.
News
- December 2020: We are going to present a couple of recent works at IEEE Big Data 2020 in December! The pre-print PDFs are online already here: [1] [3], [2] [4], and [3] [5].
- November 2020: We are on twitter now: @ARM_TUBerlin [6]. Follow us for the latest news and research results!
Full-Time Researchers
[7]
- © ARM / DOS / TUB
Lauritz [8], Morgan [9], Felix [10], Ilja [11], Kordian [12], Dominik [13], Philipp [14], Jonathan B. [15], and Jonathan W. [16]
Student Assistants
Martin Haug [17], Benjamin Pfister [18], Alexander Scharmann [19], and Houkun Zhu [20]
Research Theme
More and more important applications are relying increasingly on the processing of large volumes of data. These include, for instance, IoT applications for monitoring of traffic, transport systems, water networks, and other critical infrastructures within cities. Other applications monitor the vital parameters of remote patients in distributed telemedicine setups and current environment conditions such as seismic activities using large-scale distributed sensor networks. Moreover, businesses and the sciences have to deal with increasingly large amounts of real-time and historic data, be it to quickly detect fraudulent behavior in millions of payment transactions or comparing terabytes of human genomic data to accurately identify genetic disorders.
For many of these applications, there are clearly defined expectations for the required quality of service in terms of end-to-end latencies, throughput, scalability, availability, as well as the reliability of ingested and produced data. Another major concern is efficiency and especially so, when it comes to the consumption of energy generated from fossil fuels. At the same time, distributed data processing applications are being deployed to more heterogeneous and dynamic environments.
As a result, running large-scale distributed applications is often a very difficult task, especially when given critical targets for performance and dependability. In fact, we argue that – while high-level programming abstractions and comprehensive processing frameworks have made it easier to develop data-intensive applications – efficiently operating critical data-intensive systems and applications has become more difficult over the last decade. And there is abundant evidence of low resource utilization, limited energy-efficiency, and severe failures with infrastructures, systems, and applications deployed in practice that back up this claim.
Addressing these problems, we develop methods, systems, and tools to make the implementation, testing, and operation of efficient and dependable data-intensive distributed applications easier. Towards this goal, we work on adaptive resource management and fault tolerance in distributed heterogeneous computing environments from small IoT devices to large-scale clusters of virtual resources, aiming to create systems that automatically adapt to current workloads, dynamic distributed computing environments, and performance as well as dependability requirements of users and applications.
Topics of Interest
- Resource management, scheduling, data and task placement, system configuration
- Profiling, performance modeling, testing, simulations, testbeds
- Distributed data-parallel processing, scalable batch and stream processing, distributed dataflow systems
- Cluster infrastructures, virtual resources, heterogeneous hardware, real-time operating systems, networked embedded devices, sensor networks
- Big data analytics, internet of things, urban infrastructure applications
- Quality of service, efficiency, scalability, dependability, fault tolerance, usability
Research Methodology
We mostly do empirical systems research. Therefore, we evaluate new ideas by implementing them prototypically in context of relevant open-source systems (such as Flink, YARN, Kubernetes, and FreeRTOS) and then conduct experiments on actual hardware, with exemplary applications, and real-world input data. For this, we have access to state-of-the-art infrastructures, including a 200-nodes commodity cluster, a GPU cluster, our faculty's HPC cluster, private and public clouds, as well as IoT devices and sensors. That is, as far as possible, we empirically evaluate new ideas in their actual environments, making use of emulations and simulations only to be able to investigate more and more large-scale scenarios than physically feasible for us.
At the same time, we also work on practical applications in interdisciplinary projects to experience relevant problems ourselves and, thereby, uncover opportunities for well motivated and impactful research.
/compact.png
s/texts/GeldenhuysThamsenKao_2020_ChironOptimizingFault
ToleranceInQoSAwareDistributedStreamProcessingJobs.pdf
s/texts/WillBaderThamsen_2020_TowardsCollaborativeOptim
izationOfClusterConfigurationsForDistributedDataflowJob
s.pdf
s/texts/LorenzGeldenhuysSommerJakobsLueringSkwarekBehnk
eThamsen_2020_AScalableAndDependableDataAnalyticsPlatfo
rmForWaterInfrastructureMonitoring.pdf
os/arm-team-2020-10-07.png
auritz/
s_morgan/
elix/
lja/
a_kordian/
t_dominik/
philipp/
nathan/
athan/
ve_resource_management/?showp=2&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=7db468c792cdc0316f0c1d832f37f
392
ve_resource_management/?showp=3&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=8eab2b03e1b9ac4ccba20facb9069
3ed
ve_resource_management/?showp=4&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=9ff0890460a627127d2394c138ebd
aac
ve_resource_management/?showp=5&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=de3ccc864a2466f68f9f41b61e0cd
633
ve_resource_management/?showp=6&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=692b6fc00309d983a371650576ca3
f67
ve_resource_management/?showp=7&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=d17b693718ede3bc8e4c2abda67f8
f5b
ve_resource_management/?showp=8&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=d96262e428741a0ea629bcad82c1d
c3b
ve_resource_management/?showp=9&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=1541a82b520bf2b5ab3860dad9301
0f0
ve_resource_management/?showp=10&tx_sibibtex_pi1%5B
sort%5D=year%3A0&cHash=74a896058246c86703ba866f870d
cd3a
ve_resource_management/?showp=11&tx_sibibtex_pi1%5B
sort%5D=year%3A0&cHash=ae99d0b5e7b3e58dca432bcdb748
a975
ve_resource_management/?showp=2&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=7db468c792cdc0316f0c1d832f37f
392
ve_resource_management/?tx_sibibtex_pi1%5Bsort%5D=autho
r%3A1&cHash=b6077cf633cb4e38213e3f1f71b96933&ty
pe=1
ve_resource_management/?tx_sibibtex_pi1%5Bsort%5D=year%
3A1&cHash=25fc5498ec91f6ffc8f30fa8abc38dff&type
=1
ve_resource_management/?tx_sibibtex_pi1%5Bsort%5D=journ
al%3A1&cHash=b635ea797fa48262316254556af8c534&t
ype=1
ve_resource_management/?tx_sibibtex_pi1%5Bcontentelemen
t%5D=tt_content%3A998361&tx_sibibtex_pi1%5BshowUid%
5D=11187341&cHash=9585579e5c1df73019fbb47ae040f52f
ve_resource_management/?tx_sibibtex_pi1%5Bcontentelemen
t%5D=tt_content%3A998361&tx_sibibtex_pi1%5BshowUid%
5D=11187366&cHash=06c26c8b6ade59b3e09fe2bfe30f92ac
ve_resource_management/?tx_sibibtex_pi1%5Bcontentelemen
t%5D=tt_content%3A998361&tx_sibibtex_pi1%5BshowUid%
5D=11187384&cHash=0c5f3dfb4f2c9d9459a723abbb19d4a7
ve_resource_management/?showp=2&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=7db468c792cdc0316f0c1d832f37f
392
ve_resource_management/?showp=3&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=8eab2b03e1b9ac4ccba20facb9069
3ed
ve_resource_management/?showp=4&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=9ff0890460a627127d2394c138ebd
aac
ve_resource_management/?showp=5&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=de3ccc864a2466f68f9f41b61e0cd
633
ve_resource_management/?showp=6&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=692b6fc00309d983a371650576ca3
f67
ve_resource_management/?showp=7&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=d17b693718ede3bc8e4c2abda67f8
f5b
ve_resource_management/?showp=8&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=d96262e428741a0ea629bcad82c1d
c3b
ve_resource_management/?showp=9&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=1541a82b520bf2b5ab3860dad9301
0f0
ve_resource_management/?showp=10&tx_sibibtex_pi1%5B
sort%5D=year%3A0&cHash=74a896058246c86703ba866f870d
cd3a
ve_resource_management/?showp=11&tx_sibibtex_pi1%5B
sort%5D=year%3A0&cHash=ae99d0b5e7b3e58dca432bcdb748
a975
ve_resource_management/?showp=2&tx_sibibtex_pi1%5Bs
ort%5D=year%3A0&cHash=7db468c792cdc0316f0c1d832f37f
392
/parameter/en/id/114441/?no_cache=1&ask_mail=YIDWpA
AHYExzWFPhtWQwoA%2BuD878ouwR8DODNfvQqMM71BYJ%2FSLBXQ%3D
%3D&ask_name=Lauritz%20Thamsen