CERN openlab online summer intern project presentations
Thursday 24 September 2020 -
16:30
Monday 21 September 2020
Tuesday 22 September 2020
Wednesday 23 September 2020
Thursday 24 September 2020
16:30
Welcome and introduction
Welcome and introduction
16:30 - 16:35
16:35
Development of BioDynaMo Notebook Service
-
Berina Bandic
(
International Burch University
)
Development of BioDynaMo Notebook Service
Berina Bandic
(
International Burch University
)
16:35 - 16:42
16:42
Service Level Objectives : What's working and what's not?
-
Felipe Bastos
(
Federal University of Pará (UFPA)
)
Service Level Objectives : What's working and what's not?
Felipe Bastos
(
Federal University of Pará (UFPA)
)
16:42 - 16:49
The constant evolution of the IT technologies brings possibility of providing new services which also contributes to the increased expectations regarding their functionality and reliability. This results in a constant race of delivering new features whilst aiming to keep the services as reliable as possible and triggers one fundamental question: “How do we know that our service is still good enough in the client’s eyes?” This is where the Service Level Objectives come in place and help identifying the quality of the provided service. Their usage is a standard practice in many organisations to monitor and improve the operations, and to establish better communication with the users. SLOs are set on top of measured Service Level Indicators (SLIs) and represent the required percent of time that a given SLI should meet the expected quality standards. The major goal of this project is to implement a central SLO dashboard for the IT Monitoring Service at CERN. It will provide SLI/SLO information in near real-time and notify in case of drop in the service availability.
16:49
HEP Analysis workloads for the benchmarking suite
-
Dominika Kankowska
(
Gdańsk University of Technology
)
HEP Analysis workloads for the benchmarking suite
Dominika Kankowska
(
Gdańsk University of Technology
)
16:49 - 16:56
16:56
Deep learning for 40 MHz scouting with Level-1 trigger muons for CMS at LHC run-3
-
Maria Popa
(
Babes Bolyai University, Cluj Napoca, Romania
)
Deep learning for 40 MHz scouting with Level-1 trigger muons for CMS at LHC run-3
Maria Popa
(
Babes Bolyai University, Cluj Napoca, Romania
)
16:56 - 17:03
Project Description: CMS will include a new paradigm for the Level 1 Trigger at CMS run 3. This is the approach of reading out trigger objects at the full collision rate (40 MHz), in order to perform studies and take measurements not possible with the constraints of the allowed 100 KHz Level 1 rate. One such set of trigger objects are the Global Muon Trigger objects. The Global Muon Trigger accumulates muon candidates from barrel, endcap, and overlap trigger regions, and selects eight based on their quality and transverse momentum to send to the Global Trigger. A deep learning machine inference solution has been proposed to manipulate these trigger objects such that they are more usable in offline or semi-offline analysis, rather than simply near the triggering thresholds. This can be done by targeting the offline reconstructed objects with an artificial neural network. This machine inference will be done in Micron provided FPGA-based data-processing PCIe boards. The project will focus on data analysis and the development of machine learning models.
17:03
Exploring hybrid quantum-classical neural networks for particle tracking
-
Carla Rieger
(
ETH Zurich
)
Exploring hybrid quantum-classical neural networks for particle tracking
Carla Rieger
(
ETH Zurich
)
17:03 - 17:10
17:10
Deep Learning for disaster relief: generating synthetic high resolution images
-
Surendrabikram Thapa
(
Delhi Technological University
)
Deep Learning for disaster relief: generating synthetic high resolution images
Surendrabikram Thapa
(
Delhi Technological University
)
17:10 - 17:17
17:17
Estimating Support Size of Generative models for High Energy Physics
-
Kristina Jaruskova
(
Czech Technical University in Prague
)
Estimating Support Size of Generative models for High Energy Physics
Kristina Jaruskova
(
Czech Technical University in Prague
)
17:17 - 17:24
17:24
Pre-processing for Anomaly Detection on Linear Accelerator
-
Martin Molan
Pre-processing for Anomaly Detection on Linear Accelerator
Martin Molan
17:24 - 17:31
17:31
Using Intel oneAPI for Reconstruction algorithms
-
Laura Capelli
(
Alma Mater Studiorum, Università di Bologna
)
Viola Cavallini
(
University of Ferrara, Italy
)
Using Intel oneAPI for Reconstruction algorithms
Laura Capelli
(
Alma Mater Studiorum, Università di Bologna
)
Viola Cavallini
(
University of Ferrara, Italy
)
17:31 - 17:40
17:41
Anomaly Detection with Spiking Neural Networks
-
Bartłomiej Borzyszkowski
(
Gdańsk University of Technology
)
Anomaly Detection with Spiking Neural Networks
Bartłomiej Borzyszkowski
(
Gdańsk University of Technology
)
17:41 - 17:48
The detection of gravitational waves (GW) from stellar binaries such as black hole and neutron star mergers have ushered in a new era of analyzing the universe. With this, the Laser Interferometer Gravitational-wave Observatory (LIGO) can peer into deep space giving astronomers the ability to uncover hidden stellar processes. Instrumental on the software side of these observations are the algorithms which pick up the faint signals of GWs from a strongly isolated and increasingly quantum noise environment. The identification of GWs presents itself as a good candidate for machine learning approaches which can learn complex non-linear relationships in their data. The aim of this project is an exploration into the unsupervised regime of detection algorithms such as deep autoencoders for Gravitational Wave Anomaly Detection. Moreover, we propose a set of artificial neural network architectures for supervised learning in order to classify GWs on the labeled dataset. Eventually, we discuss the accuracy of both approaches and accelerate their inference by low-level optimization of code in hls4ml library and Intel oneAPI toolkits designed for cross-hardware deployment. Finally, we propose an experimental path for anomaly detection with biologically-inspired Spiking Neural Networks deployed on Intel Loihi neuromorphic chips and benefit from time-dependency of generated data
17:48
Intel oneAPI Integration Tests With the ATLAS Offline Software
-
Angéla Czirkos
(
Eötvös Loránd University, Budapest
)
Intel oneAPI Integration Tests With the ATLAS Offline Software
Angéla Czirkos
(
Eötvös Loránd University, Budapest
)
17:48 - 17:55
17:56
Heterogeneous computing for Deep Learning: deploying generative models via Intel OneAPI
-
Silke Donayre
(
Karlsruhe Institute of Technology
)
Heterogeneous computing for Deep Learning: deploying generative models via Intel OneAPI
Silke Donayre
(
Karlsruhe Institute of Technology
)
17:56 - 18:03
18:03
Inference engine for custom neural networks with oneAPI
-
Marcin Swiniarski
(
Gdańsk University of Technology, Poland
)
Inference engine for custom neural networks with oneAPI
Marcin Swiniarski
(
Gdańsk University of Technology, Poland
)
18:03 - 18:10
18:10
Wrap up
Wrap up
18:10 - 18:15