SlideShare a Scribd company logo
Building a Front End
   Interface for a
Sensor Data Cloud
          Ian Rolewicz
      Semester Project, FALL 2010
Supervised by Hoyoung Jeung, Michele
       Catasta & Zoltán Miklós
Introducing TimeCloud


• Platform for massive time-series
  management and analysis
• Currently developed at the LSIR
TimeCloud System Overview
My job
The Front End
• Web-based interface
• Main Goals:
  – Display the Data
  – Be user-friendly (preferably)
  – Reduce the work performed at the Back End
• Implemented in Python using the Django
  Framework and the YUI 2 library.
• Visualizations implemented with Protovis
TimeCloud Front End
    Live Demo
Full Precision vs. Model-Based
• Full Precision
  – Real Data
  – Whole Data taken from the Back End
  – Only display at the Front End
• Model-Based Approximations
  – Reconstructed Data from Parameters
  – Less Data retrieved from the Back End
  – Reconstruction and display of the values at
    the Front End
The Data Model




• NULLs not stored in HBase → better for sparse
  data
• Column families stored in separate files
Performance Measures
• Testbed on a cluster of 13 Amazon EC2
  servers, each having:
  – 15 GB Memory
  – 8 EC2 Computing Units
  – 1.7 TB Storage
  – 64-bit platform
• One of them: HBase Master + Front End
• 12 others: HBase Region Servers
Data Used for Measures

• « Worst-case » for TimeCloud
• Compress no more than 1/5 of original
  data when linearly approximated
• Linear regression → in GSN, usually 99%
  of compression
Random Reads

• 1000 random reads in approximated
  dataset
• Evenly spread
• 22% improvement in query execution time
• Less data retrieved → more cache hits
Scan
Network usage
          KB transferred   KB transferred
Graph #
            (original)     (approximated)
  1           112.3            23.3
  2           124.5            28.0
  3           126.6            25.9
  4           120.2            25.1
  5           119.9            26.8
  6           124.4            27.7
Conclusion
• Goals achieved:
  – Display the Data
  – Keep it simple
  – Reduce the work performed at the Back End
• Good Basis for future extensions
• Future Work
  – User/Group-based managment and access
  – Completion of the model-based views
  – Design of additional visualizations
Questions ?
Building a Front End for a Sensor Data Cloud
Building a Front End for a Sensor Data Cloud
Building a Front End for a Sensor Data Cloud
Building a Front End for a Sensor Data Cloud

More Related Content

What's hot

Cloud infrastructure on Apache Mesos
Cloud infrastructure on Apache MesosCloud infrastructure on Apache Mesos
Cloud infrastructure on Apache Mesos
Ahmed Bacha
 
Simulating Heterogeneous Resources in CloudLightning
Simulating Heterogeneous Resources in CloudLightningSimulating Heterogeneous Resources in CloudLightning
Simulating Heterogeneous Resources in CloudLightning
CloudLightning
 
Solving Your Backup Needs Using MongoDB Ops Manager, Cloud Manager and Atlas
Solving Your Backup Needs Using MongoDB Ops Manager, Cloud Manager and AtlasSolving Your Backup Needs Using MongoDB Ops Manager, Cloud Manager and Atlas
Solving Your Backup Needs Using MongoDB Ops Manager, Cloud Manager and Atlas
MongoDB
 
The Google BigQuery Story: Optimizing 25PB Storage
The Google BigQuery Story: Optimizing 25PB StorageThe Google BigQuery Story: Optimizing 25PB Storage
The Google BigQuery Story: Optimizing 25PB Storage
Ivan Kosianenko
 
Why would I store my data in more than one database?
Why would I store my data in more than one database?Why would I store my data in more than one database?
Why would I store my data in more than one database?
Kurtosys Systems
 
MongoDB.local Austin 2018: Solving Your Backup Needs Using MongoDB Ops Manage...
MongoDB.local Austin 2018: Solving Your Backup Needs Using MongoDB Ops Manage...MongoDB.local Austin 2018: Solving Your Backup Needs Using MongoDB Ops Manage...
MongoDB.local Austin 2018: Solving Your Backup Needs Using MongoDB Ops Manage...
MongoDB
 
Apache Hadoop India Summit 2011 talk "The Next Generation of Hadoop MapReduce...
Apache Hadoop India Summit 2011 talk "The Next Generation of Hadoop MapReduce...Apache Hadoop India Summit 2011 talk "The Next Generation of Hadoop MapReduce...
Apache Hadoop India Summit 2011 talk "The Next Generation of Hadoop MapReduce...
Yahoo Developer Network
 
MapReduce - Hadoop - Big Data
MapReduce - Hadoop - Big DataMapReduce - Hadoop - Big Data
MapReduce - Hadoop - Big Data
Nafiz Ishtiaque Ahmed
 
Surge 2013: Maximizing Scalability, Resiliency, and Engineering Velocity in t...
Surge 2013: Maximizing Scalability, Resiliency, and Engineering Velocity in t...Surge 2013: Maximizing Scalability, Resiliency, and Engineering Velocity in t...
Surge 2013: Maximizing Scalability, Resiliency, and Engineering Velocity in t...
Coburn Watson
 
Project Progress
Project ProgressProject Progress
Project Progress
sunnysomchok
 
High Performance SSRS
High Performance SSRSHigh Performance SSRS
High Performance SSRS
Bert Wagner
 
goto; London: Keeping your Cloud Footprint in Check
goto; London: Keeping your Cloud Footprint in Checkgoto; London: Keeping your Cloud Footprint in Check
goto; London: Keeping your Cloud Footprint in Check
Coburn Watson
 
ETL with Clustered Columnstore - PASS Summit 2014
ETL with Clustered Columnstore - PASS Summit 2014ETL with Clustered Columnstore - PASS Summit 2014
ETL with Clustered Columnstore - PASS Summit 2014
Niko Neugebauer
 
Modeling heterogeneous virtual machines on iaa s data centers
Modeling heterogeneous virtual machines on iaa s data centersModeling heterogeneous virtual machines on iaa s data centers
Modeling heterogeneous virtual machines on iaa s data centers
ieeepondy
 
XRM: An Event-based Resource Management Framework for XCP
XRM: An Event-based Resource Management Framework for XCPXRM: An Event-based Resource Management Framework for XCP
XRM: An Event-based Resource Management Framework for XCP
Pradeep Padala
 
Psdot 1 optimization of resource provisioning cost in cloud computing
Psdot 1 optimization of resource provisioning cost in cloud computingPsdot 1 optimization of resource provisioning cost in cloud computing
Psdot 1 optimization of resource provisioning cost in cloud computing
ZTech Proje
 
AWS Customer Presentation - JovianDATA
AWS Customer Presentation - JovianDATAAWS Customer Presentation - JovianDATA
AWS Customer Presentation - JovianDATA
Amazon Web Services
 
Jelastic Overview
Jelastic OverviewJelastic Overview
Jelastic Overview
Jelastic Multi-Cloud PaaS
 
Cloud - High Availability @ Low Cost - Workshop - Gurpreet ahuja
Cloud - High Availability @ Low Cost - Workshop - Gurpreet ahujaCloud - High Availability @ Low Cost - Workshop - Gurpreet ahuja
Cloud - High Availability @ Low Cost - Workshop - Gurpreet ahuja
ResellerClub
 

What's hot (19)

Cloud infrastructure on Apache Mesos
Cloud infrastructure on Apache MesosCloud infrastructure on Apache Mesos
Cloud infrastructure on Apache Mesos
 
Simulating Heterogeneous Resources in CloudLightning
Simulating Heterogeneous Resources in CloudLightningSimulating Heterogeneous Resources in CloudLightning
Simulating Heterogeneous Resources in CloudLightning
 
Solving Your Backup Needs Using MongoDB Ops Manager, Cloud Manager and Atlas
Solving Your Backup Needs Using MongoDB Ops Manager, Cloud Manager and AtlasSolving Your Backup Needs Using MongoDB Ops Manager, Cloud Manager and Atlas
Solving Your Backup Needs Using MongoDB Ops Manager, Cloud Manager and Atlas
 
The Google BigQuery Story: Optimizing 25PB Storage
The Google BigQuery Story: Optimizing 25PB StorageThe Google BigQuery Story: Optimizing 25PB Storage
The Google BigQuery Story: Optimizing 25PB Storage
 
Why would I store my data in more than one database?
Why would I store my data in more than one database?Why would I store my data in more than one database?
Why would I store my data in more than one database?
 
MongoDB.local Austin 2018: Solving Your Backup Needs Using MongoDB Ops Manage...
MongoDB.local Austin 2018: Solving Your Backup Needs Using MongoDB Ops Manage...MongoDB.local Austin 2018: Solving Your Backup Needs Using MongoDB Ops Manage...
MongoDB.local Austin 2018: Solving Your Backup Needs Using MongoDB Ops Manage...
 
Apache Hadoop India Summit 2011 talk "The Next Generation of Hadoop MapReduce...
Apache Hadoop India Summit 2011 talk "The Next Generation of Hadoop MapReduce...Apache Hadoop India Summit 2011 talk "The Next Generation of Hadoop MapReduce...
Apache Hadoop India Summit 2011 talk "The Next Generation of Hadoop MapReduce...
 
MapReduce - Hadoop - Big Data
MapReduce - Hadoop - Big DataMapReduce - Hadoop - Big Data
MapReduce - Hadoop - Big Data
 
Surge 2013: Maximizing Scalability, Resiliency, and Engineering Velocity in t...
Surge 2013: Maximizing Scalability, Resiliency, and Engineering Velocity in t...Surge 2013: Maximizing Scalability, Resiliency, and Engineering Velocity in t...
Surge 2013: Maximizing Scalability, Resiliency, and Engineering Velocity in t...
 
Project Progress
Project ProgressProject Progress
Project Progress
 
High Performance SSRS
High Performance SSRSHigh Performance SSRS
High Performance SSRS
 
goto; London: Keeping your Cloud Footprint in Check
goto; London: Keeping your Cloud Footprint in Checkgoto; London: Keeping your Cloud Footprint in Check
goto; London: Keeping your Cloud Footprint in Check
 
ETL with Clustered Columnstore - PASS Summit 2014
ETL with Clustered Columnstore - PASS Summit 2014ETL with Clustered Columnstore - PASS Summit 2014
ETL with Clustered Columnstore - PASS Summit 2014
 
Modeling heterogeneous virtual machines on iaa s data centers
Modeling heterogeneous virtual machines on iaa s data centersModeling heterogeneous virtual machines on iaa s data centers
Modeling heterogeneous virtual machines on iaa s data centers
 
XRM: An Event-based Resource Management Framework for XCP
XRM: An Event-based Resource Management Framework for XCPXRM: An Event-based Resource Management Framework for XCP
XRM: An Event-based Resource Management Framework for XCP
 
Psdot 1 optimization of resource provisioning cost in cloud computing
Psdot 1 optimization of resource provisioning cost in cloud computingPsdot 1 optimization of resource provisioning cost in cloud computing
Psdot 1 optimization of resource provisioning cost in cloud computing
 
AWS Customer Presentation - JovianDATA
AWS Customer Presentation - JovianDATAAWS Customer Presentation - JovianDATA
AWS Customer Presentation - JovianDATA
 
Jelastic Overview
Jelastic OverviewJelastic Overview
Jelastic Overview
 
Cloud - High Availability @ Low Cost - Workshop - Gurpreet ahuja
Cloud - High Availability @ Low Cost - Workshop - Gurpreet ahujaCloud - High Availability @ Low Cost - Workshop - Gurpreet ahuja
Cloud - High Availability @ Low Cost - Workshop - Gurpreet ahuja
 

Similar to Building a Front End for a Sensor Data Cloud

سکوهای ابری و مدل های برنامه نویسی در ابر
سکوهای ابری و مدل های برنامه نویسی در ابرسکوهای ابری و مدل های برنامه نویسی در ابر
سکوهای ابری و مدل های برنامه نویسی در ابر
datastack
 
Deliver Best-in-Class HPC Cloud Solutions Without Losing Your Mind
Deliver Best-in-Class HPC Cloud Solutions Without Losing Your MindDeliver Best-in-Class HPC Cloud Solutions Without Losing Your Mind
Deliver Best-in-Class HPC Cloud Solutions Without Losing Your Mind
Avere Systems
 
Big Data Analytics on the Cloud Oracle Applications AWS Redshift & Tableau
Big Data Analytics on the Cloud Oracle Applications AWS Redshift & TableauBig Data Analytics on the Cloud Oracle Applications AWS Redshift & Tableau
Big Data Analytics on the Cloud Oracle Applications AWS Redshift & Tableau
Sam Palani
 
Windows Azure introduction
Windows Azure introductionWindows Azure introduction
Windows Azure introduction
Microsoft Iceland
 
Visualizing big data in the browser using spark
Visualizing big data in the browser using sparkVisualizing big data in the browser using spark
Visualizing big data in the browser using spark
Databricks
 
Java scalability considerations yogesh deshpande
Java scalability considerations   yogesh deshpandeJava scalability considerations   yogesh deshpande
Java scalability considerations yogesh deshpande
IndicThreads
 
Cloud
CloudCloud
Taking Splunk to the Next Level - Architecture Breakout Session
Taking Splunk to the Next Level - Architecture Breakout SessionTaking Splunk to the Next Level - Architecture Breakout Session
Taking Splunk to the Next Level - Architecture Breakout Session
Splunk
 
Mobile+Cloud: a viable replacement for desktop cheminformatics?
Mobile+Cloud: a viable replacement for desktop cheminformatics?Mobile+Cloud: a viable replacement for desktop cheminformatics?
Mobile+Cloud: a viable replacement for desktop cheminformatics?
Alex Clark
 
advance computing and big adata analytic.pptx
advance computing and big adata analytic.pptxadvance computing and big adata analytic.pptx
advance computing and big adata analytic.pptx
TeddyIswahyudi1
 
#GeodeSummit - Where Does Geode Fit in Modern System Architectures
#GeodeSummit - Where Does Geode Fit in Modern System Architectures#GeodeSummit - Where Does Geode Fit in Modern System Architectures
#GeodeSummit - Where Does Geode Fit in Modern System Architectures
PivotalOpenSourceHub
 
10 Reasons Snowflake Is Great for Analytics
10 Reasons Snowflake Is Great for Analytics10 Reasons Snowflake Is Great for Analytics
10 Reasons Snowflake Is Great for Analytics
Senturus
 
IBM - Introduction to Cloudant
IBM - Introduction to CloudantIBM - Introduction to Cloudant
IBM - Introduction to Cloudant
Francisco González Jiménez
 
0812 2014 01_toronto-smac meetup_i_os_cloudant_worklight_part2
0812 2014 01_toronto-smac meetup_i_os_cloudant_worklight_part20812 2014 01_toronto-smac meetup_i_os_cloudant_worklight_part2
0812 2014 01_toronto-smac meetup_i_os_cloudant_worklight_part2
Raul Chong
 
Gcp dataflow
Gcp dataflowGcp dataflow
Gcp dataflow
Igor Roiter
 
2014 09-12 lambda-architecture-at-indix
2014 09-12 lambda-architecture-at-indix2014 09-12 lambda-architecture-at-indix
2014 09-12 lambda-architecture-at-indix
Yu Ishikawa
 
4 C’s for Using Cloud to Support Scientific Research
4 C’s for Using Cloud to Support Scientific Research4 C’s for Using Cloud to Support Scientific Research
4 C’s for Using Cloud to Support Scientific Research
Avere Systems
 
Distributed Computing with Apache Hadoop: Technology Overview
Distributed Computing with Apache Hadoop: Technology OverviewDistributed Computing with Apache Hadoop: Technology Overview
Distributed Computing with Apache Hadoop: Technology Overview
Konstantin V. Shvachko
 
IBM Cognos 10.2 Dynamic Cubes Deeper Dive
IBM Cognos 10.2 Dynamic Cubes Deeper DiveIBM Cognos 10.2 Dynamic Cubes Deeper Dive
IBM Cognos 10.2 Dynamic Cubes Deeper Dive
Senturus
 
Scalability Design Principles - Internal Session
Scalability Design Principles - Internal SessionScalability Design Principles - Internal Session
Scalability Design Principles - Internal Session
Sachin Sancheti - Microsoft Azure Architect
 

Similar to Building a Front End for a Sensor Data Cloud (20)

سکوهای ابری و مدل های برنامه نویسی در ابر
سکوهای ابری و مدل های برنامه نویسی در ابرسکوهای ابری و مدل های برنامه نویسی در ابر
سکوهای ابری و مدل های برنامه نویسی در ابر
 
Deliver Best-in-Class HPC Cloud Solutions Without Losing Your Mind
Deliver Best-in-Class HPC Cloud Solutions Without Losing Your MindDeliver Best-in-Class HPC Cloud Solutions Without Losing Your Mind
Deliver Best-in-Class HPC Cloud Solutions Without Losing Your Mind
 
Big Data Analytics on the Cloud Oracle Applications AWS Redshift & Tableau
Big Data Analytics on the Cloud Oracle Applications AWS Redshift & TableauBig Data Analytics on the Cloud Oracle Applications AWS Redshift & Tableau
Big Data Analytics on the Cloud Oracle Applications AWS Redshift & Tableau
 
Windows Azure introduction
Windows Azure introductionWindows Azure introduction
Windows Azure introduction
 
Visualizing big data in the browser using spark
Visualizing big data in the browser using sparkVisualizing big data in the browser using spark
Visualizing big data in the browser using spark
 
Java scalability considerations yogesh deshpande
Java scalability considerations   yogesh deshpandeJava scalability considerations   yogesh deshpande
Java scalability considerations yogesh deshpande
 
Cloud
CloudCloud
Cloud
 
Taking Splunk to the Next Level - Architecture Breakout Session
Taking Splunk to the Next Level - Architecture Breakout SessionTaking Splunk to the Next Level - Architecture Breakout Session
Taking Splunk to the Next Level - Architecture Breakout Session
 
Mobile+Cloud: a viable replacement for desktop cheminformatics?
Mobile+Cloud: a viable replacement for desktop cheminformatics?Mobile+Cloud: a viable replacement for desktop cheminformatics?
Mobile+Cloud: a viable replacement for desktop cheminformatics?
 
advance computing and big adata analytic.pptx
advance computing and big adata analytic.pptxadvance computing and big adata analytic.pptx
advance computing and big adata analytic.pptx
 
#GeodeSummit - Where Does Geode Fit in Modern System Architectures
#GeodeSummit - Where Does Geode Fit in Modern System Architectures#GeodeSummit - Where Does Geode Fit in Modern System Architectures
#GeodeSummit - Where Does Geode Fit in Modern System Architectures
 
10 Reasons Snowflake Is Great for Analytics
10 Reasons Snowflake Is Great for Analytics10 Reasons Snowflake Is Great for Analytics
10 Reasons Snowflake Is Great for Analytics
 
IBM - Introduction to Cloudant
IBM - Introduction to CloudantIBM - Introduction to Cloudant
IBM - Introduction to Cloudant
 
0812 2014 01_toronto-smac meetup_i_os_cloudant_worklight_part2
0812 2014 01_toronto-smac meetup_i_os_cloudant_worklight_part20812 2014 01_toronto-smac meetup_i_os_cloudant_worklight_part2
0812 2014 01_toronto-smac meetup_i_os_cloudant_worklight_part2
 
Gcp dataflow
Gcp dataflowGcp dataflow
Gcp dataflow
 
2014 09-12 lambda-architecture-at-indix
2014 09-12 lambda-architecture-at-indix2014 09-12 lambda-architecture-at-indix
2014 09-12 lambda-architecture-at-indix
 
4 C’s for Using Cloud to Support Scientific Research
4 C’s for Using Cloud to Support Scientific Research4 C’s for Using Cloud to Support Scientific Research
4 C’s for Using Cloud to Support Scientific Research
 
Distributed Computing with Apache Hadoop: Technology Overview
Distributed Computing with Apache Hadoop: Technology OverviewDistributed Computing with Apache Hadoop: Technology Overview
Distributed Computing with Apache Hadoop: Technology Overview
 
IBM Cognos 10.2 Dynamic Cubes Deeper Dive
IBM Cognos 10.2 Dynamic Cubes Deeper DiveIBM Cognos 10.2 Dynamic Cubes Deeper Dive
IBM Cognos 10.2 Dynamic Cubes Deeper Dive
 
Scalability Design Principles - Internal Session
Scalability Design Principles - Internal SessionScalability Design Principles - Internal Session
Scalability Design Principles - Internal Session
 

More from PlanetData Network of Excellence

Dl2014 slides
Dl2014 slidesDl2014 slides
A Contextualized Knowledge Repository for Open Data about Trentino
A Contextualized Knowledge Repository for Open Data about TrentinoA Contextualized Knowledge Repository for Open Data about Trentino
A Contextualized Knowledge Repository for Open Data about Trentino
PlanetData Network of Excellence
 
On Leveraging Crowdsourcing Techniques for Schema Matching Networks
On Leveraging Crowdsourcing Techniques for Schema Matching NetworksOn Leveraging Crowdsourcing Techniques for Schema Matching Networks
On Leveraging Crowdsourcing Techniques for Schema Matching Networks
PlanetData Network of Excellence
 
Towards Enabling Probabilistic Databases for Participatory Sensing
Towards Enabling Probabilistic Databases for Participatory SensingTowards Enabling Probabilistic Databases for Participatory Sensing
Towards Enabling Probabilistic Databases for Participatory Sensing
PlanetData Network of Excellence
 
Privacy-Preserving Schema Reuse
Privacy-Preserving Schema ReusePrivacy-Preserving Schema Reuse
Privacy-Preserving Schema Reuse
PlanetData Network of Excellence
 
Pay-as-you-go Reconciliation in Schema Matching Networks
Pay-as-you-go Reconciliation in Schema Matching NetworksPay-as-you-go Reconciliation in Schema Matching Networks
Pay-as-you-go Reconciliation in Schema Matching Networks
PlanetData Network of Excellence
 
Demo: tablet-based visualisation of transport data in Madrid using SPARQLstream
Demo: tablet-based visualisation of transport data in Madrid using SPARQLstreamDemo: tablet-based visualisation of transport data in Madrid using SPARQLstream
Demo: tablet-based visualisation of transport data in Madrid using SPARQLstream
PlanetData Network of Excellence
 
On the need for a W3C community group on RDF Stream Processing
On the need for a W3C community group on RDF Stream ProcessingOn the need for a W3C community group on RDF Stream Processing
On the need for a W3C community group on RDF Stream Processing
PlanetData Network of Excellence
 
Urbanopoly: Collection and Quality Assessment of Geo-spatial Linked Data via ...
Urbanopoly: Collection and Quality Assessment of Geo-spatial Linked Data via ...Urbanopoly: Collection and Quality Assessment of Geo-spatial Linked Data via ...
Urbanopoly: Collection and Quality Assessment of Geo-spatial Linked Data via ...
PlanetData Network of Excellence
 
Linking Smart Cities Datasets with Human Computation: the case of UrbanMatch
Linking Smart Cities Datasets with Human Computation: the case of UrbanMatchLinking Smart Cities Datasets with Human Computation: the case of UrbanMatch
Linking Smart Cities Datasets with Human Computation: the case of UrbanMatch
PlanetData Network of Excellence
 
SciQL, Bridging the Gap between Science and Relational DBMS
SciQL, Bridging the Gap between Science and Relational DBMSSciQL, Bridging the Gap between Science and Relational DBMS
SciQL, Bridging the Gap between Science and Relational DBMS
PlanetData Network of Excellence
 
CLODA: A Crowdsourced Linked Open Data Architecture
CLODA: A Crowdsourced Linked Open Data ArchitectureCLODA: A Crowdsourced Linked Open Data Architecture
CLODA: A Crowdsourced Linked Open Data Architecture
PlanetData Network of Excellence
 
Scalable Nonmonotonic Reasoning over RDF Data Using MapReduce
Scalable Nonmonotonic Reasoning over RDF Data Using MapReduceScalable Nonmonotonic Reasoning over RDF Data Using MapReduce
Scalable Nonmonotonic Reasoning over RDF Data Using MapReduce
PlanetData Network of Excellence
 
Data and Knowledge Evolution
Data and Knowledge Evolution  Data and Knowledge Evolution
Data and Knowledge Evolution
PlanetData Network of Excellence
 
Evolution of Workflow Provenance Information in the Presence of Custom Infere...
Evolution of Workflow Provenance Information in the Presence of Custom Infere...Evolution of Workflow Provenance Information in the Presence of Custom Infere...
Evolution of Workflow Provenance Information in the Presence of Custom Infere...
PlanetData Network of Excellence
 
Access Control for RDF graphs using Abstract Models
Access Control for RDF graphs using Abstract ModelsAccess Control for RDF graphs using Abstract Models
Access Control for RDF graphs using Abstract Models
PlanetData Network of Excellence
 
Arrays in Databases, the next frontier?
Arrays in Databases, the next frontier?Arrays in Databases, the next frontier?
Arrays in Databases, the next frontier?
PlanetData Network of Excellence
 
Abstract Access Control Model for Dynamic RDF Datasets
Abstract Access Control Model for Dynamic RDF DatasetsAbstract Access Control Model for Dynamic RDF Datasets
Abstract Access Control Model for Dynamic RDF Datasets
PlanetData Network of Excellence
 
Towards Parallel Nonmonotonic Reasoning with Billions of Facts
Towards Parallel Nonmonotonic Reasoning with Billions of FactsTowards Parallel Nonmonotonic Reasoning with Billions of Facts
Towards Parallel Nonmonotonic Reasoning with Billions of Facts
PlanetData Network of Excellence
 
Automation in Cytomics: A Modern RDBMS Based Platform for Image Analysis and ...
Automation in Cytomics: A Modern RDBMS Based Platform for Image Analysis and ...Automation in Cytomics: A Modern RDBMS Based Platform for Image Analysis and ...
Automation in Cytomics: A Modern RDBMS Based Platform for Image Analysis and ...
PlanetData Network of Excellence
 

More from PlanetData Network of Excellence (20)

Dl2014 slides
Dl2014 slidesDl2014 slides
Dl2014 slides
 
A Contextualized Knowledge Repository for Open Data about Trentino
A Contextualized Knowledge Repository for Open Data about TrentinoA Contextualized Knowledge Repository for Open Data about Trentino
A Contextualized Knowledge Repository for Open Data about Trentino
 
On Leveraging Crowdsourcing Techniques for Schema Matching Networks
On Leveraging Crowdsourcing Techniques for Schema Matching NetworksOn Leveraging Crowdsourcing Techniques for Schema Matching Networks
On Leveraging Crowdsourcing Techniques for Schema Matching Networks
 
Towards Enabling Probabilistic Databases for Participatory Sensing
Towards Enabling Probabilistic Databases for Participatory SensingTowards Enabling Probabilistic Databases for Participatory Sensing
Towards Enabling Probabilistic Databases for Participatory Sensing
 
Privacy-Preserving Schema Reuse
Privacy-Preserving Schema ReusePrivacy-Preserving Schema Reuse
Privacy-Preserving Schema Reuse
 
Pay-as-you-go Reconciliation in Schema Matching Networks
Pay-as-you-go Reconciliation in Schema Matching NetworksPay-as-you-go Reconciliation in Schema Matching Networks
Pay-as-you-go Reconciliation in Schema Matching Networks
 
Demo: tablet-based visualisation of transport data in Madrid using SPARQLstream
Demo: tablet-based visualisation of transport data in Madrid using SPARQLstreamDemo: tablet-based visualisation of transport data in Madrid using SPARQLstream
Demo: tablet-based visualisation of transport data in Madrid using SPARQLstream
 
On the need for a W3C community group on RDF Stream Processing
On the need for a W3C community group on RDF Stream ProcessingOn the need for a W3C community group on RDF Stream Processing
On the need for a W3C community group on RDF Stream Processing
 
Urbanopoly: Collection and Quality Assessment of Geo-spatial Linked Data via ...
Urbanopoly: Collection and Quality Assessment of Geo-spatial Linked Data via ...Urbanopoly: Collection and Quality Assessment of Geo-spatial Linked Data via ...
Urbanopoly: Collection and Quality Assessment of Geo-spatial Linked Data via ...
 
Linking Smart Cities Datasets with Human Computation: the case of UrbanMatch
Linking Smart Cities Datasets with Human Computation: the case of UrbanMatchLinking Smart Cities Datasets with Human Computation: the case of UrbanMatch
Linking Smart Cities Datasets with Human Computation: the case of UrbanMatch
 
SciQL, Bridging the Gap between Science and Relational DBMS
SciQL, Bridging the Gap between Science and Relational DBMSSciQL, Bridging the Gap between Science and Relational DBMS
SciQL, Bridging the Gap between Science and Relational DBMS
 
CLODA: A Crowdsourced Linked Open Data Architecture
CLODA: A Crowdsourced Linked Open Data ArchitectureCLODA: A Crowdsourced Linked Open Data Architecture
CLODA: A Crowdsourced Linked Open Data Architecture
 
Scalable Nonmonotonic Reasoning over RDF Data Using MapReduce
Scalable Nonmonotonic Reasoning over RDF Data Using MapReduceScalable Nonmonotonic Reasoning over RDF Data Using MapReduce
Scalable Nonmonotonic Reasoning over RDF Data Using MapReduce
 
Data and Knowledge Evolution
Data and Knowledge Evolution  Data and Knowledge Evolution
Data and Knowledge Evolution
 
Evolution of Workflow Provenance Information in the Presence of Custom Infere...
Evolution of Workflow Provenance Information in the Presence of Custom Infere...Evolution of Workflow Provenance Information in the Presence of Custom Infere...
Evolution of Workflow Provenance Information in the Presence of Custom Infere...
 
Access Control for RDF graphs using Abstract Models
Access Control for RDF graphs using Abstract ModelsAccess Control for RDF graphs using Abstract Models
Access Control for RDF graphs using Abstract Models
 
Arrays in Databases, the next frontier?
Arrays in Databases, the next frontier?Arrays in Databases, the next frontier?
Arrays in Databases, the next frontier?
 
Abstract Access Control Model for Dynamic RDF Datasets
Abstract Access Control Model for Dynamic RDF DatasetsAbstract Access Control Model for Dynamic RDF Datasets
Abstract Access Control Model for Dynamic RDF Datasets
 
Towards Parallel Nonmonotonic Reasoning with Billions of Facts
Towards Parallel Nonmonotonic Reasoning with Billions of FactsTowards Parallel Nonmonotonic Reasoning with Billions of Facts
Towards Parallel Nonmonotonic Reasoning with Billions of Facts
 
Automation in Cytomics: A Modern RDBMS Based Platform for Image Analysis and ...
Automation in Cytomics: A Modern RDBMS Based Platform for Image Analysis and ...Automation in Cytomics: A Modern RDBMS Based Platform for Image Analysis and ...
Automation in Cytomics: A Modern RDBMS Based Platform for Image Analysis and ...
 

Recently uploaded

Freshworks Rethinks NoSQL for Rapid Scaling & Cost-Efficiency
Freshworks Rethinks NoSQL for Rapid Scaling & Cost-EfficiencyFreshworks Rethinks NoSQL for Rapid Scaling & Cost-Efficiency
Freshworks Rethinks NoSQL for Rapid Scaling & Cost-Efficiency
ScyllaDB
 
AppSec PNW: Android and iOS Application Security with MobSF
AppSec PNW: Android and iOS Application Security with MobSFAppSec PNW: Android and iOS Application Security with MobSF
AppSec PNW: Android and iOS Application Security with MobSF
Ajin Abraham
 
Harnessing the Power of NLP and Knowledge Graphs for Opioid Research
Harnessing the Power of NLP and Knowledge Graphs for Opioid ResearchHarnessing the Power of NLP and Knowledge Graphs for Opioid Research
Harnessing the Power of NLP and Knowledge Graphs for Opioid Research
Neo4j
 
Connector Corner: Seamlessly power UiPath Apps, GenAI with prebuilt connectors
Connector Corner: Seamlessly power UiPath Apps, GenAI with prebuilt connectorsConnector Corner: Seamlessly power UiPath Apps, GenAI with prebuilt connectors
Connector Corner: Seamlessly power UiPath Apps, GenAI with prebuilt connectors
DianaGray10
 
Leveraging the Graph for Clinical Trials and Standards
Leveraging the Graph for Clinical Trials and StandardsLeveraging the Graph for Clinical Trials and Standards
Leveraging the Graph for Clinical Trials and Standards
Neo4j
 
Y-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PPY-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PP
c5vrf27qcz
 
Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving | Nameplate Manufacturing Process - 2024Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving
 
Essentials of Automations: Exploring Attributes & Automation Parameters
Essentials of Automations: Exploring Attributes & Automation ParametersEssentials of Automations: Exploring Attributes & Automation Parameters
Essentials of Automations: Exploring Attributes & Automation Parameters
Safe Software
 
What is an RPA CoE? Session 1 – CoE Vision
What is an RPA CoE?  Session 1 – CoE VisionWhat is an RPA CoE?  Session 1 – CoE Vision
What is an RPA CoE? Session 1 – CoE Vision
DianaGray10
 
Crafting Excellence: A Comprehensive Guide to iOS Mobile App Development Serv...
Crafting Excellence: A Comprehensive Guide to iOS Mobile App Development Serv...Crafting Excellence: A Comprehensive Guide to iOS Mobile App Development Serv...
Crafting Excellence: A Comprehensive Guide to iOS Mobile App Development Serv...
Pitangent Analytics & Technology Solutions Pvt. Ltd
 
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
Alex Pruden
 
Astute Business Solutions | Oracle Cloud Partner |
Astute Business Solutions | Oracle Cloud Partner |Astute Business Solutions | Oracle Cloud Partner |
Astute Business Solutions | Oracle Cloud Partner |
AstuteBusiness
 
The Microsoft 365 Migration Tutorial For Beginner.pptx
The Microsoft 365 Migration Tutorial For Beginner.pptxThe Microsoft 365 Migration Tutorial For Beginner.pptx
The Microsoft 365 Migration Tutorial For Beginner.pptx
operationspcvita
 
Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024
Jason Packer
 
JavaLand 2024: Application Development Green Masterplan
JavaLand 2024: Application Development Green MasterplanJavaLand 2024: Application Development Green Masterplan
JavaLand 2024: Application Development Green Masterplan
Miro Wengner
 
Dandelion Hashtable: beyond billion requests per second on a commodity server
Dandelion Hashtable: beyond billion requests per second on a commodity serverDandelion Hashtable: beyond billion requests per second on a commodity server
Dandelion Hashtable: beyond billion requests per second on a commodity server
Antonios Katsarakis
 
"Choosing proper type of scaling", Olena Syrota
"Choosing proper type of scaling", Olena Syrota"Choosing proper type of scaling", Olena Syrota
"Choosing proper type of scaling", Olena Syrota
Fwdays
 
"Frontline Battles with DDoS: Best practices and Lessons Learned", Igor Ivaniuk
"Frontline Battles with DDoS: Best practices and Lessons Learned",  Igor Ivaniuk"Frontline Battles with DDoS: Best practices and Lessons Learned",  Igor Ivaniuk
"Frontline Battles with DDoS: Best practices and Lessons Learned", Igor Ivaniuk
Fwdays
 
Energy Efficient Video Encoding for Cloud and Edge Computing Instances
Energy Efficient Video Encoding for Cloud and Edge Computing InstancesEnergy Efficient Video Encoding for Cloud and Edge Computing Instances
Energy Efficient Video Encoding for Cloud and Edge Computing Instances
Alpen-Adria-Universität
 

Recently uploaded (20)

Freshworks Rethinks NoSQL for Rapid Scaling & Cost-Efficiency
Freshworks Rethinks NoSQL for Rapid Scaling & Cost-EfficiencyFreshworks Rethinks NoSQL for Rapid Scaling & Cost-Efficiency
Freshworks Rethinks NoSQL for Rapid Scaling & Cost-Efficiency
 
AppSec PNW: Android and iOS Application Security with MobSF
AppSec PNW: Android and iOS Application Security with MobSFAppSec PNW: Android and iOS Application Security with MobSF
AppSec PNW: Android and iOS Application Security with MobSF
 
Artificial Intelligence and Electronic Warfare
Artificial Intelligence and Electronic WarfareArtificial Intelligence and Electronic Warfare
Artificial Intelligence and Electronic Warfare
 
Harnessing the Power of NLP and Knowledge Graphs for Opioid Research
Harnessing the Power of NLP and Knowledge Graphs for Opioid ResearchHarnessing the Power of NLP and Knowledge Graphs for Opioid Research
Harnessing the Power of NLP and Knowledge Graphs for Opioid Research
 
Connector Corner: Seamlessly power UiPath Apps, GenAI with prebuilt connectors
Connector Corner: Seamlessly power UiPath Apps, GenAI with prebuilt connectorsConnector Corner: Seamlessly power UiPath Apps, GenAI with prebuilt connectors
Connector Corner: Seamlessly power UiPath Apps, GenAI with prebuilt connectors
 
Leveraging the Graph for Clinical Trials and Standards
Leveraging the Graph for Clinical Trials and StandardsLeveraging the Graph for Clinical Trials and Standards
Leveraging the Graph for Clinical Trials and Standards
 
Y-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PPY-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PP
 
Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving | Nameplate Manufacturing Process - 2024Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving | Nameplate Manufacturing Process - 2024
 
Essentials of Automations: Exploring Attributes & Automation Parameters
Essentials of Automations: Exploring Attributes & Automation ParametersEssentials of Automations: Exploring Attributes & Automation Parameters
Essentials of Automations: Exploring Attributes & Automation Parameters
 
What is an RPA CoE? Session 1 – CoE Vision
What is an RPA CoE?  Session 1 – CoE VisionWhat is an RPA CoE?  Session 1 – CoE Vision
What is an RPA CoE? Session 1 – CoE Vision
 
Crafting Excellence: A Comprehensive Guide to iOS Mobile App Development Serv...
Crafting Excellence: A Comprehensive Guide to iOS Mobile App Development Serv...Crafting Excellence: A Comprehensive Guide to iOS Mobile App Development Serv...
Crafting Excellence: A Comprehensive Guide to iOS Mobile App Development Serv...
 
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
 
Astute Business Solutions | Oracle Cloud Partner |
Astute Business Solutions | Oracle Cloud Partner |Astute Business Solutions | Oracle Cloud Partner |
Astute Business Solutions | Oracle Cloud Partner |
 
The Microsoft 365 Migration Tutorial For Beginner.pptx
The Microsoft 365 Migration Tutorial For Beginner.pptxThe Microsoft 365 Migration Tutorial For Beginner.pptx
The Microsoft 365 Migration Tutorial For Beginner.pptx
 
Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024
 
JavaLand 2024: Application Development Green Masterplan
JavaLand 2024: Application Development Green MasterplanJavaLand 2024: Application Development Green Masterplan
JavaLand 2024: Application Development Green Masterplan
 
Dandelion Hashtable: beyond billion requests per second on a commodity server
Dandelion Hashtable: beyond billion requests per second on a commodity serverDandelion Hashtable: beyond billion requests per second on a commodity server
Dandelion Hashtable: beyond billion requests per second on a commodity server
 
"Choosing proper type of scaling", Olena Syrota
"Choosing proper type of scaling", Olena Syrota"Choosing proper type of scaling", Olena Syrota
"Choosing proper type of scaling", Olena Syrota
 
"Frontline Battles with DDoS: Best practices and Lessons Learned", Igor Ivaniuk
"Frontline Battles with DDoS: Best practices and Lessons Learned",  Igor Ivaniuk"Frontline Battles with DDoS: Best practices and Lessons Learned",  Igor Ivaniuk
"Frontline Battles with DDoS: Best practices and Lessons Learned", Igor Ivaniuk
 
Energy Efficient Video Encoding for Cloud and Edge Computing Instances
Energy Efficient Video Encoding for Cloud and Edge Computing InstancesEnergy Efficient Video Encoding for Cloud and Edge Computing Instances
Energy Efficient Video Encoding for Cloud and Edge Computing Instances
 

Building a Front End for a Sensor Data Cloud

  • 1. Building a Front End Interface for a Sensor Data Cloud Ian Rolewicz Semester Project, FALL 2010 Supervised by Hoyoung Jeung, Michele Catasta & Zoltán Miklós
  • 2. Introducing TimeCloud • Platform for massive time-series management and analysis • Currently developed at the LSIR
  • 5. The Front End • Web-based interface • Main Goals: – Display the Data – Be user-friendly (preferably) – Reduce the work performed at the Back End • Implemented in Python using the Django Framework and the YUI 2 library. • Visualizations implemented with Protovis
  • 7. Full Precision vs. Model-Based • Full Precision – Real Data – Whole Data taken from the Back End – Only display at the Front End • Model-Based Approximations – Reconstructed Data from Parameters – Less Data retrieved from the Back End – Reconstruction and display of the values at the Front End
  • 8. The Data Model • NULLs not stored in HBase → better for sparse data • Column families stored in separate files
  • 9. Performance Measures • Testbed on a cluster of 13 Amazon EC2 servers, each having: – 15 GB Memory – 8 EC2 Computing Units – 1.7 TB Storage – 64-bit platform • One of them: HBase Master + Front End • 12 others: HBase Region Servers
  • 10. Data Used for Measures • « Worst-case » for TimeCloud • Compress no more than 1/5 of original data when linearly approximated • Linear regression → in GSN, usually 99% of compression
  • 11. Random Reads • 1000 random reads in approximated dataset • Evenly spread • 22% improvement in query execution time • Less data retrieved → more cache hits
  • 12. Scan
  • 13. Network usage KB transferred KB transferred Graph # (original) (approximated) 1 112.3 23.3 2 124.5 28.0 3 126.6 25.9 4 120.2 25.1 5 119.9 26.8 6 124.4 27.7
  • 14. Conclusion • Goals achieved: – Display the Data – Keep it simple – Reduce the work performed at the Back End • Good Basis for future extensions • Future Work – User/Group-based managment and access – Completion of the model-based views – Design of additional visualizations