SlideShare a Scribd company logo
1 of 10
Dynamic Dashboard Example
• Real Time Data – SSRS < SQL < Oracle
• Every cell is “clickable”
• Date Rage can be customized to any period of time and data recalculates for time comparisons
Dynamic Dashboard Example
• Real Time Data – SSRS < SQL < Oracle
• Each record is “clickable”
• Pulls date range from main dashboard and displays corresponding data
• Can change metrics on the fly (colored cells “clickable”)
Dynamic Dashboard Example
• Real Time Data – SSRS < SQL < Oracle
• Displays raw data
• Pulls date range from main dashboard and
displays corresponding data
General SSRS Report - with Filter
• Real Time Data – SSRS < SQL < Oracle
• Allows user to filter/search for Approvers for any given application
SSRS Report – 13 Rolling Month KPI Chart with regression line calculated in SQL
• Real Time Data – SSRS < SQL < Oracle
• PPT Ready
Grouped SSRS Report - with Sortable Columns
• Real Time Data – SSRS < SQL < Oracle
• Allows user to filter/search for deployments by timeframe/type/status
General SSRS Report - with Filter
• Manually Updated Data – SQL < Custom App < Oracle
• Maps SAP Code to PR Code
Monthly Reporting - Static Data calculated and stored in Data Mart
• Stored in tables/views < SQL < Oracle
• Clickable cells to drilldown reports used for slides
Monthly Reporting - Static Data calculated and stored in Data Mart
• Stored in tables/views < SQL < Oracle
• Clickable cells to drilldown reports used for slides
Monthly Reporting - Static
Data calculated and stored
in Data Mart
• Stored in tables/views <
SQL < Oracle
• Clickable cells to drilldown
reports used for slides

More Related Content

What's hot

Building Data Lakes with Apache Airflow
Building Data Lakes with Apache AirflowBuilding Data Lakes with Apache Airflow
Building Data Lakes with Apache AirflowGary Stafford
 
Converging Database Transactions and Analytics
Converging Database Transactions and Analytics Converging Database Transactions and Analytics
Converging Database Transactions and Analytics SingleStore
 
The State of the Data Warehouse in 2017 and Beyond
The State of the Data Warehouse in 2017 and BeyondThe State of the Data Warehouse in 2017 and Beyond
The State of the Data Warehouse in 2017 and BeyondSingleStore
 
Implementing a canonical IoT backend in Azure with Azure Stream Analytics
Implementing a canonical IoT backend in Azure with Azure Stream AnalyticsImplementing a canonical IoT backend in Azure with Azure Stream Analytics
Implementing a canonical IoT backend in Azure with Azure Stream AnalyticsMarco Parenzan
 
Migrating Big Data Workloads to the Cloud
Migrating Big Data Workloads to the CloudMigrating Big Data Workloads to the Cloud
Migrating Big Data Workloads to the CloudRobert Sanders
 
Efficient & effective data management for research projects : ILRI's Data Ma...
Efficient & effective  data management for research projects : ILRI's Data Ma...Efficient & effective  data management for research projects : ILRI's Data Ma...
Efficient & effective data management for research projects : ILRI's Data Ma...CIARD Movement
 
xGem Data Stream Processing
xGem Data Stream ProcessingxGem Data Stream Processing
xGem Data Stream ProcessingJorge Hirtz
 
Batch and Interactive Analytics: From Data to Insight
Batch and Interactive Analytics: From Data to InsightBatch and Interactive Analytics: From Data to Insight
Batch and Interactive Analytics: From Data to InsightWSO2
 
Building Data Pipelines with Spark and StreamSets
Building Data Pipelines with Spark and StreamSetsBuilding Data Pipelines with Spark and StreamSets
Building Data Pipelines with Spark and StreamSetsPat Patterson
 
TechDays NL 2016 - Building your scalable secure IoT Solution on Azure
TechDays NL 2016 - Building your scalable secure IoT Solution on AzureTechDays NL 2016 - Building your scalable secure IoT Solution on Azure
TechDays NL 2016 - Building your scalable secure IoT Solution on AzureTom Kerkhove
 
Spark Summit Keynote by Suren Nathan
Spark Summit Keynote by Suren NathanSpark Summit Keynote by Suren Nathan
Spark Summit Keynote by Suren NathanSpark Summit
 
The IoT and big data
The IoT and big dataThe IoT and big data
The IoT and big dataGal Ben-Haim
 
Introduction to basic data analytics tools
Introduction to basic data analytics toolsIntroduction to basic data analytics tools
Introduction to basic data analytics toolsNascenia IT
 
Spark with Delta Lake
Spark with Delta LakeSpark with Delta Lake
Spark with Delta LakeKnoldus Inc.
 
Presto: Fast SQL on Everything
Presto: Fast SQL on EverythingPresto: Fast SQL on Everything
Presto: Fast SQL on EverythingDavid Phillips
 
Spark - Migration Story
Spark - Migration Story Spark - Migration Story
Spark - Migration Story Roman Chukh
 
Power Your Delta Lake with Streaming Transactional Changes
 Power Your Delta Lake with Streaming Transactional Changes Power Your Delta Lake with Streaming Transactional Changes
Power Your Delta Lake with Streaming Transactional ChangesDatabricks
 
Real-Time Forecasting at Scale using Delta Lake and Delta Caching
Real-Time Forecasting at Scale using Delta Lake and Delta CachingReal-Time Forecasting at Scale using Delta Lake and Delta Caching
Real-Time Forecasting at Scale using Delta Lake and Delta CachingDatabricks
 
Getting to 1.5M Ads/sec: How DataXu manages Big Data
Getting to 1.5M Ads/sec: How DataXu manages Big DataGetting to 1.5M Ads/sec: How DataXu manages Big Data
Getting to 1.5M Ads/sec: How DataXu manages Big DataQubole
 
Real time big data stream processing
Real time big data stream processing Real time big data stream processing
Real time big data stream processing Luay AL-Assadi
 

What's hot (20)

Building Data Lakes with Apache Airflow
Building Data Lakes with Apache AirflowBuilding Data Lakes with Apache Airflow
Building Data Lakes with Apache Airflow
 
Converging Database Transactions and Analytics
Converging Database Transactions and Analytics Converging Database Transactions and Analytics
Converging Database Transactions and Analytics
 
The State of the Data Warehouse in 2017 and Beyond
The State of the Data Warehouse in 2017 and BeyondThe State of the Data Warehouse in 2017 and Beyond
The State of the Data Warehouse in 2017 and Beyond
 
Implementing a canonical IoT backend in Azure with Azure Stream Analytics
Implementing a canonical IoT backend in Azure with Azure Stream AnalyticsImplementing a canonical IoT backend in Azure with Azure Stream Analytics
Implementing a canonical IoT backend in Azure with Azure Stream Analytics
 
Migrating Big Data Workloads to the Cloud
Migrating Big Data Workloads to the CloudMigrating Big Data Workloads to the Cloud
Migrating Big Data Workloads to the Cloud
 
Efficient & effective data management for research projects : ILRI's Data Ma...
Efficient & effective  data management for research projects : ILRI's Data Ma...Efficient & effective  data management for research projects : ILRI's Data Ma...
Efficient & effective data management for research projects : ILRI's Data Ma...
 
xGem Data Stream Processing
xGem Data Stream ProcessingxGem Data Stream Processing
xGem Data Stream Processing
 
Batch and Interactive Analytics: From Data to Insight
Batch and Interactive Analytics: From Data to InsightBatch and Interactive Analytics: From Data to Insight
Batch and Interactive Analytics: From Data to Insight
 
Building Data Pipelines with Spark and StreamSets
Building Data Pipelines with Spark and StreamSetsBuilding Data Pipelines with Spark and StreamSets
Building Data Pipelines with Spark and StreamSets
 
TechDays NL 2016 - Building your scalable secure IoT Solution on Azure
TechDays NL 2016 - Building your scalable secure IoT Solution on AzureTechDays NL 2016 - Building your scalable secure IoT Solution on Azure
TechDays NL 2016 - Building your scalable secure IoT Solution on Azure
 
Spark Summit Keynote by Suren Nathan
Spark Summit Keynote by Suren NathanSpark Summit Keynote by Suren Nathan
Spark Summit Keynote by Suren Nathan
 
The IoT and big data
The IoT and big dataThe IoT and big data
The IoT and big data
 
Introduction to basic data analytics tools
Introduction to basic data analytics toolsIntroduction to basic data analytics tools
Introduction to basic data analytics tools
 
Spark with Delta Lake
Spark with Delta LakeSpark with Delta Lake
Spark with Delta Lake
 
Presto: Fast SQL on Everything
Presto: Fast SQL on EverythingPresto: Fast SQL on Everything
Presto: Fast SQL on Everything
 
Spark - Migration Story
Spark - Migration Story Spark - Migration Story
Spark - Migration Story
 
Power Your Delta Lake with Streaming Transactional Changes
 Power Your Delta Lake with Streaming Transactional Changes Power Your Delta Lake with Streaming Transactional Changes
Power Your Delta Lake with Streaming Transactional Changes
 
Real-Time Forecasting at Scale using Delta Lake and Delta Caching
Real-Time Forecasting at Scale using Delta Lake and Delta CachingReal-Time Forecasting at Scale using Delta Lake and Delta Caching
Real-Time Forecasting at Scale using Delta Lake and Delta Caching
 
Getting to 1.5M Ads/sec: How DataXu manages Big Data
Getting to 1.5M Ads/sec: How DataXu manages Big DataGetting to 1.5M Ads/sec: How DataXu manages Big Data
Getting to 1.5M Ads/sec: How DataXu manages Big Data
 
Real time big data stream processing
Real time big data stream processing Real time big data stream processing
Real time big data stream processing
 

Viewers also liked (9)

Oracle EBS iBiz Dashboard (Business mobile app)
Oracle EBS iBiz Dashboard (Business mobile app)Oracle EBS iBiz Dashboard (Business mobile app)
Oracle EBS iBiz Dashboard (Business mobile app)
 
T-Mobile Service Transition Timesheet Tool
T-Mobile Service Transition Timesheet ToolT-Mobile Service Transition Timesheet Tool
T-Mobile Service Transition Timesheet Tool
 
DSR Test Case Doc
DSR Test Case DocDSR Test Case Doc
DSR Test Case Doc
 
Oracle data Visualization(Components)
Oracle data Visualization(Components)Oracle data Visualization(Components)
Oracle data Visualization(Components)
 
Analytics Dashboard
Analytics DashboardAnalytics Dashboard
Analytics Dashboard
 
Common Reporting Standards
Common Reporting StandardsCommon Reporting Standards
Common Reporting Standards
 
Common Reporting Standard (CRS)
Common Reporting Standard (CRS) Common Reporting Standard (CRS)
Common Reporting Standard (CRS)
 
Portfolio reporting: Meandering thoughts
Portfolio reporting: Meandering thoughtsPortfolio reporting: Meandering thoughts
Portfolio reporting: Meandering thoughts
 
Building Oracle BIEE (OBIEE) Reports, Dashboards
Building Oracle BIEE (OBIEE) Reports, DashboardsBuilding Oracle BIEE (OBIEE) Reports, Dashboards
Building Oracle BIEE (OBIEE) Reports, Dashboards
 

Similar to Dynamic Dashboard Examples for Real-Time Data Reporting

Pulsar - Real-time Analytics at Scale
Pulsar - Real-time Analytics at ScalePulsar - Real-time Analytics at Scale
Pulsar - Real-time Analytics at ScaleTony Ng
 
PAD: Performance Anomaly Detection in Multi-Server Distributed Systems
PAD: Performance Anomaly Detection in Multi-Server Distributed SystemsPAD: Performance Anomaly Detection in Multi-Server Distributed Systems
PAD: Performance Anomaly Detection in Multi-Server Distributed SystemsJames Hill
 
TCC14 tour hague optimising workbooks
TCC14 tour hague optimising workbooksTCC14 tour hague optimising workbooks
TCC14 tour hague optimising workbooksMrunal Shridhar
 
Sql Server Performance Tuning
Sql Server Performance TuningSql Server Performance Tuning
Sql Server Performance TuningBala Subra
 
AWS Redshift Introduction - Big Data Analytics
AWS Redshift Introduction - Big Data AnalyticsAWS Redshift Introduction - Big Data Analytics
AWS Redshift Introduction - Big Data AnalyticsKeeyong Han
 
Tableau Seattle BI Event How Tableau Changed My Life
Tableau Seattle BI Event How Tableau Changed My LifeTableau Seattle BI Event How Tableau Changed My Life
Tableau Seattle BI Event How Tableau Changed My LifeRussell Spangler
 
Crime Analysis & Prediction System
Crime Analysis & Prediction SystemCrime Analysis & Prediction System
Crime Analysis & Prediction SystemBigDataCloud
 
[WSO2Con USA 2018] The Rise of Streaming SQL
[WSO2Con USA 2018] The Rise of Streaming SQL[WSO2Con USA 2018] The Rise of Streaming SQL
[WSO2Con USA 2018] The Rise of Streaming SQLWSO2
 
Oracle OpenWorld 2016 Review - Focus on Data, BigData, Streaming Data, Machin...
Oracle OpenWorld 2016 Review - Focus on Data, BigData, Streaming Data, Machin...Oracle OpenWorld 2016 Review - Focus on Data, BigData, Streaming Data, Machin...
Oracle OpenWorld 2016 Review - Focus on Data, BigData, Streaming Data, Machin...Lucas Jellema
 
Self-serve analytics journey at Celtra: Snowflake, Spark, and Databricks
Self-serve analytics journey at Celtra: Snowflake, Spark, and DatabricksSelf-serve analytics journey at Celtra: Snowflake, Spark, and Databricks
Self-serve analytics journey at Celtra: Snowflake, Spark, and DatabricksGrega Kespret
 
Spark and Couchbase: Augmenting the Operational Database with Spark
Spark and Couchbase: Augmenting the Operational Database with SparkSpark and Couchbase: Augmenting the Operational Database with Spark
Spark and Couchbase: Augmenting the Operational Database with SparkSpark Summit
 
Building RightScale's Globally Distributed Datastore - RightScale Compute 2013
Building RightScale's Globally Distributed Datastore - RightScale Compute 2013Building RightScale's Globally Distributed Datastore - RightScale Compute 2013
Building RightScale's Globally Distributed Datastore - RightScale Compute 2013RightScale
 
SQL Explore 2012: P&T Part 1
SQL Explore 2012: P&T Part 1SQL Explore 2012: P&T Part 1
SQL Explore 2012: P&T Part 1sqlserver.co.il
 
Data Stream Processing for Beginners with Kafka and CDC
Data Stream Processing for Beginners with Kafka and CDCData Stream Processing for Beginners with Kafka and CDC
Data Stream Processing for Beginners with Kafka and CDCAbhijit Kumar
 

Similar to Dynamic Dashboard Examples for Real-Time Data Reporting (20)

Pulsar - Real-time Analytics at Scale
Pulsar - Real-time Analytics at ScalePulsar - Real-time Analytics at Scale
Pulsar - Real-time Analytics at Scale
 
PAD: Performance Anomaly Detection in Multi-Server Distributed Systems
PAD: Performance Anomaly Detection in Multi-Server Distributed SystemsPAD: Performance Anomaly Detection in Multi-Server Distributed Systems
PAD: Performance Anomaly Detection in Multi-Server Distributed Systems
 
TCC14 tour hague optimising workbooks
TCC14 tour hague optimising workbooksTCC14 tour hague optimising workbooks
TCC14 tour hague optimising workbooks
 
Sql Server Performance Tuning
Sql Server Performance TuningSql Server Performance Tuning
Sql Server Performance Tuning
 
AWS Redshift Introduction - Big Data Analytics
AWS Redshift Introduction - Big Data AnalyticsAWS Redshift Introduction - Big Data Analytics
AWS Redshift Introduction - Big Data Analytics
 
Tableau Seattle BI Event How Tableau Changed My Life
Tableau Seattle BI Event How Tableau Changed My LifeTableau Seattle BI Event How Tableau Changed My Life
Tableau Seattle BI Event How Tableau Changed My Life
 
Crime Analysis & Prediction System
Crime Analysis & Prediction SystemCrime Analysis & Prediction System
Crime Analysis & Prediction System
 
The Rise of Streaming SQL
The Rise of Streaming SQLThe Rise of Streaming SQL
The Rise of Streaming SQL
 
[WSO2Con USA 2018] The Rise of Streaming SQL
[WSO2Con USA 2018] The Rise of Streaming SQL[WSO2Con USA 2018] The Rise of Streaming SQL
[WSO2Con USA 2018] The Rise of Streaming SQL
 
Oow2016 review-db-dev-bigdata-BI
Oow2016 review-db-dev-bigdata-BIOow2016 review-db-dev-bigdata-BI
Oow2016 review-db-dev-bigdata-BI
 
Oracle OpenWorld 2016 Review - Focus on Data, BigData, Streaming Data, Machin...
Oracle OpenWorld 2016 Review - Focus on Data, BigData, Streaming Data, Machin...Oracle OpenWorld 2016 Review - Focus on Data, BigData, Streaming Data, Machin...
Oracle OpenWorld 2016 Review - Focus on Data, BigData, Streaming Data, Machin...
 
Self-serve analytics journey at Celtra: Snowflake, Spark, and Databricks
Self-serve analytics journey at Celtra: Snowflake, Spark, and DatabricksSelf-serve analytics journey at Celtra: Snowflake, Spark, and Databricks
Self-serve analytics journey at Celtra: Snowflake, Spark, and Databricks
 
Spark and Couchbase: Augmenting the Operational Database with Spark
Spark and Couchbase: Augmenting the Operational Database with SparkSpark and Couchbase: Augmenting the Operational Database with Spark
Spark and Couchbase: Augmenting the Operational Database with Spark
 
Building RightScale's Globally Distributed Datastore - RightScale Compute 2013
Building RightScale's Globally Distributed Datastore - RightScale Compute 2013Building RightScale's Globally Distributed Datastore - RightScale Compute 2013
Building RightScale's Globally Distributed Datastore - RightScale Compute 2013
 
SQL Explore 2012: P&T Part 1
SQL Explore 2012: P&T Part 1SQL Explore 2012: P&T Part 1
SQL Explore 2012: P&T Part 1
 
Data Warehouse
Data WarehouseData Warehouse
Data Warehouse
 
kalyani.ppt
kalyani.pptkalyani.ppt
kalyani.ppt
 
Data Warehouse
Data WarehouseData Warehouse
Data Warehouse
 
kalyani.ppt
kalyani.pptkalyani.ppt
kalyani.ppt
 
Data Stream Processing for Beginners with Kafka and CDC
Data Stream Processing for Beginners with Kafka and CDCData Stream Processing for Beginners with Kafka and CDC
Data Stream Processing for Beginners with Kafka and CDC
 

Dynamic Dashboard Examples for Real-Time Data Reporting

  • 1. Dynamic Dashboard Example • Real Time Data – SSRS < SQL < Oracle • Every cell is “clickable” • Date Rage can be customized to any period of time and data recalculates for time comparisons
  • 2. Dynamic Dashboard Example • Real Time Data – SSRS < SQL < Oracle • Each record is “clickable” • Pulls date range from main dashboard and displays corresponding data • Can change metrics on the fly (colored cells “clickable”)
  • 3. Dynamic Dashboard Example • Real Time Data – SSRS < SQL < Oracle • Displays raw data • Pulls date range from main dashboard and displays corresponding data
  • 4. General SSRS Report - with Filter • Real Time Data – SSRS < SQL < Oracle • Allows user to filter/search for Approvers for any given application
  • 5. SSRS Report – 13 Rolling Month KPI Chart with regression line calculated in SQL • Real Time Data – SSRS < SQL < Oracle • PPT Ready
  • 6. Grouped SSRS Report - with Sortable Columns • Real Time Data – SSRS < SQL < Oracle • Allows user to filter/search for deployments by timeframe/type/status
  • 7. General SSRS Report - with Filter • Manually Updated Data – SQL < Custom App < Oracle • Maps SAP Code to PR Code
  • 8. Monthly Reporting - Static Data calculated and stored in Data Mart • Stored in tables/views < SQL < Oracle • Clickable cells to drilldown reports used for slides
  • 9. Monthly Reporting - Static Data calculated and stored in Data Mart • Stored in tables/views < SQL < Oracle • Clickable cells to drilldown reports used for slides
  • 10. Monthly Reporting - Static Data calculated and stored in Data Mart • Stored in tables/views < SQL < Oracle • Clickable cells to drilldown reports used for slides