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Rick Negrin, Director of Product Management, MemSQL
March 3, 2017
Enabling Real-Time Analytics for IoT
Building Real-Time Data Pipelines with Kafka and MemSQL
The Rise of Real-Time Analytics
On-demand economy Internet of Things New technologies
Retail
Delivery
Financial
Auto and Transportation
Energy
And more...
Industries that Need Real Time
Data Producers
(simulating
sensor activity)
User
Interface
Architecting for Real-Time Analytics
Database
...
Data
Transformation
Message
Queue
5
REAL-TIME
ANALYTICS
Sensor Data
PMML Predictive Model
Oil rig
sensor activity
Fortune 500 Oil Company
BUSINESS BENEFITS
▪ Streaming well drilling sensor data mitigates $1M per day of lost productivity and drill damage
▪ Met 20TB target environment TCO objective at a dramatically lower cost than SAP HANA
TECHNICAL BENEFITS
▪ Quickly moved existing processes from batch to real-time
▪ Enabled machine learning to score streaming data
▪ Repurposed existing SAS model using PMML
▪ Joined multiple data types and third-party sources including geospatial and weather data
Smart Grid
Enterprise
Service Bus
Persistence
Ad-hoc data
science
Smart Data Access
Fortune 500 Energy Utility
BUSINESS BENEFITS
▪ Using real-time and historical analytics of smart meters to improve energy efficiency
▪ Reduce grid outages for improved customer experience and maintain/extend service pricing
▪ Proactive maintenance reduces energy operating costs
▪ Lowers fossil fuel consumption
TECHNICAL BENEFITS
▪ Analyze 1.6M smart meters usage trends, proactively manage grid for outage reduction
▪ Data Warehouse for data scientists and grid analysis applications
MemEx
MemEx: IoT Showcase Application
- Combines Apache Kafka, Spark,
MemSQL, and OpenMaps for global
supply chain management
- Enables enterprises to predict
throughput of supply warehouses
- Processes 2 million data points, based
on 2,000 sensors across 1,000
warehouses
Live Demo
memex.memcompute.com
memex-ops.memcompute.com
Data Producers
(simulating
sensor activity)
MemEx UI
(OpenMaps)
MemEx Architecture
...
Data
Transformation
Apache Spark
Spark MLlib Predictive Model
Raw Sensor 1 + Predictive Score 1
S1 P1
1
Q&A
Thank You
Appendix
Classification
BLUE
Minor Damage
Type 1
BLACK
training data for
machine operating
normally
ORANGE
Major Damage
Type 2
15
Real-time drilling sensor data to manage the high stakes of
producing oil in a depressed market and maximizing productivity.
+ Top Energy Firm
15
TECHNICAL BENEFITS
- Enabled machine learning scoring of streaming data for real-time
Predictive Analytics
- Integrated SAS BI PMML for deep analytics
- Joined multiple data types and third party sources including
geospatial and weather data
16
17
Spark MLlib Predictive Model
REAL-TIME
INPUTS
Raw Sensor 1 + Predictive Score 1
S1 P1
1
BUSINESS
LOGIC
Continued Rise of IoT
18
Sensor Array
PoS Systems
Connected Fleets
Mobile Apps
Security
Reporting Systems
Log Systems
Data Lake
Data Warehouse
Databases
“By 2020, over 20 billion connected things will be in use across a
range of industries; the IoT will touch every role across the enterprise.”
Source: Gartner
19
“These are highly automated drones. They have what is
called sense-and-avoid technology. That means, basically,
seeing and then avoiding obstacles.”
Yahoo, January 2016: https://www.yahoo.com/tech/exclusive-amazon-reveals-details-about-1343951725436982.html
19
Amazon Invests in Drones for 30 Minute
Post-Order Deliveries
20
Fedex Breaks Record With 317 Million
Packages Shipped Over Christmas 2015
“FedEx Ground continues to advance the industry’s most
automated hub network with investments in package sortation
systems that enable flexible and reliable operations and
six-sided scanning tunnels that boost data and image capture.”
FedEx, October 2015: http://about.van.fedex.com/newsroom/global-english/fedex-forecasts-record-volume-this-holiday-season/
20
The Evolution of Data Analytics
21
Descriptive Analytics Predictive AnalyticsReal-Time Analytics

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Enabling Real-Time Analytics for IoT

  • 1. Rick Negrin, Director of Product Management, MemSQL March 3, 2017 Enabling Real-Time Analytics for IoT Building Real-Time Data Pipelines with Kafka and MemSQL
  • 2. The Rise of Real-Time Analytics On-demand economy Internet of Things New technologies
  • 3. Retail Delivery Financial Auto and Transportation Energy And more... Industries that Need Real Time
  • 4. Data Producers (simulating sensor activity) User Interface Architecting for Real-Time Analytics Database ... Data Transformation Message Queue
  • 5. 5 REAL-TIME ANALYTICS Sensor Data PMML Predictive Model Oil rig sensor activity Fortune 500 Oil Company BUSINESS BENEFITS ▪ Streaming well drilling sensor data mitigates $1M per day of lost productivity and drill damage ▪ Met 20TB target environment TCO objective at a dramatically lower cost than SAP HANA TECHNICAL BENEFITS ▪ Quickly moved existing processes from batch to real-time ▪ Enabled machine learning to score streaming data ▪ Repurposed existing SAS model using PMML ▪ Joined multiple data types and third-party sources including geospatial and weather data
  • 6. Smart Grid Enterprise Service Bus Persistence Ad-hoc data science Smart Data Access Fortune 500 Energy Utility BUSINESS BENEFITS ▪ Using real-time and historical analytics of smart meters to improve energy efficiency ▪ Reduce grid outages for improved customer experience and maintain/extend service pricing ▪ Proactive maintenance reduces energy operating costs ▪ Lowers fossil fuel consumption TECHNICAL BENEFITS ▪ Analyze 1.6M smart meters usage trends, proactively manage grid for outage reduction ▪ Data Warehouse for data scientists and grid analysis applications
  • 8. MemEx: IoT Showcase Application - Combines Apache Kafka, Spark, MemSQL, and OpenMaps for global supply chain management - Enables enterprises to predict throughput of supply warehouses - Processes 2 million data points, based on 2,000 sensors across 1,000 warehouses
  • 10. Data Producers (simulating sensor activity) MemEx UI (OpenMaps) MemEx Architecture ... Data Transformation Apache Spark Spark MLlib Predictive Model Raw Sensor 1 + Predictive Score 1 S1 P1 1
  • 11. Q&A
  • 14. Classification BLUE Minor Damage Type 1 BLACK training data for machine operating normally ORANGE Major Damage Type 2
  • 15. 15 Real-time drilling sensor data to manage the high stakes of producing oil in a depressed market and maximizing productivity. + Top Energy Firm 15
  • 16. TECHNICAL BENEFITS - Enabled machine learning scoring of streaming data for real-time Predictive Analytics - Integrated SAS BI PMML for deep analytics - Joined multiple data types and third party sources including geospatial and weather data 16
  • 17. 17 Spark MLlib Predictive Model REAL-TIME INPUTS Raw Sensor 1 + Predictive Score 1 S1 P1 1 BUSINESS LOGIC
  • 18. Continued Rise of IoT 18 Sensor Array PoS Systems Connected Fleets Mobile Apps Security Reporting Systems Log Systems Data Lake Data Warehouse Databases “By 2020, over 20 billion connected things will be in use across a range of industries; the IoT will touch every role across the enterprise.” Source: Gartner
  • 19. 19 “These are highly automated drones. They have what is called sense-and-avoid technology. That means, basically, seeing and then avoiding obstacles.” Yahoo, January 2016: https://www.yahoo.com/tech/exclusive-amazon-reveals-details-about-1343951725436982.html 19 Amazon Invests in Drones for 30 Minute Post-Order Deliveries
  • 20. 20 Fedex Breaks Record With 317 Million Packages Shipped Over Christmas 2015 “FedEx Ground continues to advance the industry’s most automated hub network with investments in package sortation systems that enable flexible and reliable operations and six-sided scanning tunnels that boost data and image capture.” FedEx, October 2015: http://about.van.fedex.com/newsroom/global-english/fedex-forecasts-record-volume-this-holiday-season/ 20
  • 21. The Evolution of Data Analytics 21 Descriptive Analytics Predictive AnalyticsReal-Time Analytics