Second CERN openlab summer student lightning talk session
Thursday 15 August 2019 -
14:00
Monday 12 August 2019
Tuesday 13 August 2019
Wednesday 14 August 2019
Thursday 15 August 2019
14:00
Welcome and introduction
Welcome and introduction
14:00 - 14:05
Room: 31/3-004 - IT Amphitheatre
14:05
Evaluation of Erasure Coding & other features of Hadoop 3
-
Nazerke Seidan
Evaluation of Erasure Coding & other features of Hadoop 3
Nazerke Seidan
14:05 - 14:12
Room: 31/3-004 - IT Amphitheatre
Apache Hadoop is a set of 2 domains: data computation such as Spark, MapReduce, Flink, etc and data storage - HDFS. HDFS is a distributed file system. Current HDFS provides 3x replication for data redundancy and availability. But it has 200% storage overhead. However there is a big improvement in Hadoop 3 for replication which is Erasure Coding (EC). Erasure Coding gives the same level of fault tolerance as 3x replication but with much less storage space. My project aims to evaluate the performance of Erasure Coding.
14:12
Automate Cloud Infrastructure deployment for Oracle Cloud and Openstack
-
Priyanshu Khandelwal
Automate Cloud Infrastructure deployment for Oracle Cloud and Openstack
Priyanshu Khandelwal
14:12 - 14:19
Room: 31/3-004 - IT Amphitheatre
14:19
Neuromorphic Computing in High Energy Physics
-
Bartlomiej Pawel Borzyszkowski
Neuromorphic Computing in High Energy Physics
Bartlomiej Pawel Borzyszkowski
14:19 - 14:26
Room: 31/3-004 - IT Amphitheatre
Spiking neural networks are an interesting candidate for signal processing at the High-Luminosity LHC, the next stage of the LHC upgrade. For HL-LHC, new particle detectors will be built, what will allow to take a time-sequence of snapshots for a given collision. This additional information will allow to separate the signal belonging to the interesting collision from those generated parasitic collisions occurring at the same time (in-time pileup) or before/after the interesting one (out-of-time pileup). By powering the LHC real-time processing with spiking neural networks, one could be able to apply advance and accurate signal-to-noise discrimination algorithms in real time, without affecting the overall system latency beyond the given tolerance. This project is investigating the potential of Spiking neural networks deployed on neuromorphic chips as a technological solution to increase the precision of the upgraded CMS detector for HL-LHC. We propose to focus on the characterization of a particle type (classification) based on the recorded time profile of the signal, and to determine the arrival time of the particle on the detector (regression). These informations can be used to determine if a particle belongs to the interesting collision or to one of the parasitic collisions.
14:26
Evaluate ElastAlert for IT-DB use cases
-
Dimitra Chatzichrysou
Evaluate ElastAlert for IT-DB use cases
Dimitra Chatzichrysou
14:26 - 14:33
Room: 31/3-004 - IT Amphitheatre
14:33
Explorations in heterogeneous computing
-
Davide Marcato
Explorations in heterogeneous computing
Davide Marcato
14:33 - 14:40
Room: 31/3-004 - IT Amphitheatre
Exploring the use of cupla to write accelerator-independent code.
14:40
Chaos Monkey
-
Elizaveta Svitanko
Chaos Monkey
Elizaveta Svitanko
14:40 - 14:47
Room: 31/3-004 - IT Amphitheatre
Chaos Monkey
14:47
Comparing different approaches for hit finding and trigger generation
-
Jan Niklas Bohm
Comparing different approaches for hit finding and trigger generation
Jan Niklas Bohm
14:47 - 14:54
Room: 31/3-004 - IT Amphitheatre
14:54
Portable Early Prediction of Sepsis from Clinical Data on Intel Myriad X
-
Priyanka Kumar Mathur
Portable Early Prediction of Sepsis from Clinical Data on Intel Myriad X
Priyanka Kumar Mathur
14:54 - 15:01
Room: 31/3-004 - IT Amphitheatre
15:01
FaaS on Kubernetes with Knative
-
Juan Carlos Gallegos Dupuis
FaaS on Kubernetes with Knative
Juan Carlos Gallegos Dupuis
15:01 - 15:08
Room: 31/3-004 - IT Amphitheatre
Knative is a relatively new technology that extends the Kubernetes API to support deployment of server-less apps. On the CERN cloud team, we are investigating Knative as a candidate technology for offering Function-as-a-Service (FaaS) infrastructure to CERN cloud users.
15:08
Machine Learning and Kubernetes
-
Fedor Kitashov
Machine Learning and Kubernetes
Fedor Kitashov
15:08 - 15:15
Room: 31/3-004 - IT Amphitheatre
Fedor Kitashov
15:15
Break
Break
15:15 - 15:35
Room: 31/3-004 - IT Amphitheatre
15:35
Anomaly Detection in the Elasticsearch Service
-
Jennifer Rosina Andersson
Anomaly Detection in the Elasticsearch Service
Jennifer Rosina Andersson
15:35 - 15:42
Room: 31/3-004 - IT Amphitheatre
15:42
Performance Study of Parquet Codecs
-
Javier Garcia Rubio
Performance Study of Parquet Codecs
Javier Garcia Rubio
15:42 - 15:49
Room: 31/3-004 - IT Amphitheatre
Performance Study of Parquet Codecs
15:49
Performance monitoring using intel performance counters for HEP applications
-
Khadidja Hadj Henni
Performance monitoring using intel performance counters for HEP applications
Khadidja Hadj Henni
15:49 - 15:56
Room: 31/3-004 - IT Amphitheatre
15:56
Graph Neural Network(GNN) Inference of FPGA
-
Kazi Ahmed Asif Fuad
Graph Neural Network(GNN) Inference of FPGA
Kazi Ahmed Asif Fuad
15:56 - 16:03
Room: 31/3-004 - IT Amphitheatre
16:03
Modeling HEP Workloads under Multidimensional Restrictions
-
Riccardo Maganza
Modeling HEP Workloads under Multidimensional Restrictions
Riccardo Maganza
16:03 - 16:10
Room: 31/3-004 - IT Amphitheatre
16:10
Progressive GAN for satellite image generation
-
Yoann Boget
Progressive GAN for satellite image generation
Yoann Boget
16:10 - 16:17
Room: 31/3-004 - IT Amphitheatre
16:17
support JS rendering websites in The CERN Search Crawler
-
Khanssa El Amrouni
(
Openlab Summer Student
)
support JS rendering websites in The CERN Search Crawler
Khanssa El Amrouni
(
Openlab Summer Student
)
16:17 - 16:24
Room: 31/3-004 - IT Amphitheatre
support JS rendering websites in The CERN Search Crawler
16:24
Benchmarking and optimising large scale parallel workflows
-
Jesus Perales Hernandez
Benchmarking and optimising large scale parallel workflows
Jesus Perales Hernandez
16:24 - 16:31
Room: 31/3-004 - IT Amphitheatre
16:31
Building effective Restful APIs with Oracle Rest Data Services (ORDS) 19
-
Iheb Eddine Imad
Building effective Restful APIs with Oracle Rest Data Services (ORDS) 19
Iheb Eddine Imad
16:31 - 16:38
Room: 31/3-004 - IT Amphitheatre
16:38
Big data analysis and machine learning in the cloud
-
Michal Bien
Big data analysis and machine learning in the cloud
Michal Bien
16:38 - 16:45
Room: 31/3-004 - IT Amphitheatre
16:45
Accelerating TMVA Deep Learning - Integration of the NVIDIA cuDNN Library
-
Joana Niermann
Accelerating TMVA Deep Learning - Integration of the NVIDIA cuDNN Library
Joana Niermann
16:45 - 16:52
Room: 31/3-004 - IT Amphitheatre
16:52
Deliberations of the Jury
Deliberations of the Jury
16:52 - 17:22
Room: 31/3-004 - IT Amphitheatre
17:22
Farewell and best lightning talk drink openlab summer students
Farewell and best lightning talk drink openlab summer students
17:22 - 18:52
Room: 31/3-004 - IT Amphitheatre