SlideShare a Scribd company logo
1 of 27
MONETIZING BIG DATA with 
STREAMING ANALYTICS! 
For Communications Service Providers and the 
Telecoms Industry 
Copyright 
© 
2014 
– 
Proprietary 
and 
Confiden7al 
Informa7on 
of 
SQLstream 
Inc.
SCOPE 
§ Explain real-time Big Data and streaming analytics 
§ Explore real-time applications in the Telecoms industry 
§ Share our thoughts, experience and use cases 
2Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc.
Today’s Presenter 
Ronnie 
Beggs 
Vice 
President 
Marke3ng 
& 
Product 
Management, 
SQLstream 
§ Over 
twenty 
years 
experience 
of 
product 
management, 
marke7ng 
and 
business 
development 
in 
the 
real-­‐7me 
soKware 
business. 
§ Worked 
for 
a 
number 
of 
successful 
start-­‐ups, 
from 
early 
stage 
through 
to 
acquisi7on, 
including 
Metrica 
(ADC) 
and 
Cramer 
Systems 
(Amdocs). 
3Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc.
About SQLstream 
Distributed 
stream 
processing 
plaYorm 
for 
opera7onal 
intelligence 
and 
the 
Internet 
of 
Things, 
delivering 
streaming 
analy7cs 
and 
real-­‐7me 
ac7ons 
facts 
§ Launched 
2009 
from 
log 
and 
sensor 
machine 
data. 
§ Worldwide 
customer 
base 
across 
mul7ple 
industries 
§ Strategic 
partnerships 
for 
opera7onal 
intelligence 
(logs) 
and 
Internet 
of 
Things 
(sensors) 
capabili7es 
§ Process 
unstructured 
and 
structured 
machine 
data 
§ Accelerate 
and 
extend 
Hadoop 
& 
RDBMS 
§ Open, 
standards-­‐based 
plaYorm 
based 
on 
SQL 
4Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
differen7ators 
§ Massively 
scalable 
streaming 
data 
plaYorm 
§ Only 
true 
standard 
SQL 
streaming 
engine 
§ Covered 
by 
7 
broad 
patents 
for 
stream 
processing
What’s happening with Big Data? 
§ Stored information doubling every 18-24 months 
§ “Internet of Things” is creating new data with no human 
interaction 
§ Business decisions need to happen faster based on real-time, 
actionable intelligence 
§ Streaming and predictive analytics are changing the way 
we interact with our operational systems and customers. 
5Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc.
Looking Forward with Streaming Analytics 
§ Enterprises have been managed based on prior history delivered at 
the end of the day, month or quarter. 
§ Streaming analytics enables 
enterprises to drive their 
business in real-time, reacting 
to changes and opportunities 
as they happen. 
6Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc.
Telecoms and Big Data 
$5.4B 
Communica7ons 
analy7cs 
market 
by 
2019. 
Market 
Research 
Report.biz 
AREAS OF NEEDS 
§ Customer Experience 
§ Fraud prevention 
§ IP Network & Service Performance 
§ Call Center Experience 
7Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
Streaming Value 
Improved 
opera7onal 
efficiency 
and 
customer 
sa7sfac7on, 
with 
a 
real-­‐7me 
360o 
customer 
view, 
and 
con7nuous 
data 
silo 
integra7on 
Call 
Centers| 
Telecommunica7ons 
| 
Data 
Centers 
ISSUES 
§ Untapped New (Big) Data 
§ Ease of churn 
§ Lacking a 360o customer view
Streaming Analytics as a Complement to Traditional Data 
Management 
Repeated 
Queries 
DATABASE 
Collect, 
translate, 
classify 
DATA 
8Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
ANALYSIS 
PATTERN 
DETECTION 
ACTION 
TIME 
STREAMING 
DATA 
ANALYTICS 
PLATFORM 
DATA 
Ac7on 
Ac7on 
C-­‐ETL 
Aggrega7on 
Classifica7on 
Profiling 
Deep 
analy7cs 
Trend 
detec7on 
Trend 
correla7on 
Extrapola7on 
Alerts 
Ac7ons 
Seconds 
Hours 
-­‐> 
Days 
DATA 
DATA
OPERATIONAL INTELLIGENCE 
Integrating Operations and Analytics in Real-time 
Real-time Operational Intelligence 
Business 
Intelligence 
As we move toward a real-time business environment, the capability to process data flows 
swiftly and flexibly will become increasingly important. SQLstream leads the industry in 
this kind of capability. ” Robin Bloor 
9Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
Chief Analyst for Bloor Group 
Operations 
Continuous monitoring and analytics 
Improve decision-making 
Automate operational processes 
Billing 
Rating 
QoE 
Network analysis 
Fraud Monitoring 
”
The Information Value Chain 
What is happening? 
10Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
What might happen? 
What just happened? 
Make stuff happen!
Telco Big Data! 
An Overview
Actionable insights - the ideal scenario 
SOURCESSYSTEMS & APPS 
12Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
Alerts 
ENTERPRISE 
§ Operations 
§ Customer Care 
§ Marketing 
§ Logistics 
MACHINE DATA 
§ Unstructured 
§ Semi-structured 
§ Structured 
§ Log, sensor & network 
QoE 
STREAMING 
ANALYTICS 
Actions 
Dashboards 
Continuous ETL
What’s possible from xDRs | APPLICATIONS 
NETWORK 
SERVICE 
CUSTOMER 
BUSINESS 
§ Op7miza7on 
of 
network 
u7liza7on 
§ Network 
Capacity 
planning 
§ Anomaly 
detec7on 
& 
troubleshoo7ng 
§ Monitoring 
and 
protec7on 
§ Self-­‐healing 
networks 
§ Partner 
rou7ng 
§ Subscriber 
profiling 
and 
informa7on 
§ New 
product 
rollout 
visibility 
§ Product 
development 
and 
tariff 
op7miza7on 
§ Yield 
management 
and 
dynamic 
pricing 
§ Service 
personaliza7on 
13Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
§ Customer 
loyalty 
management 
§ Churn 
preven7on 
§ Device 
analysis 
§ Campaign 
management 
and 
precision 
marke7ng 
§ Contact 
center 
alerts 
§ New 
customer 
experience 
monitoring 
§ Billing 
accuracy 
and 
revenue 
§ SLA 
management 
§ Interconnect 
billing 
analysis 
§ Real-­‐7me 
reports 
§ Fraud 
and 
suspicious 
traffic 
detec7on
TECHNICAL 
CHALLENGES
Data Analysis Today – far from Real Time 
Current architectures 
§ Multi-stage process 
§ Offline ETL 
§ Interim storage with no analytics capability 
ETL / RDBMS process challenges 
§ Volume and Velocity 
§ Variable, changing formats 
§ New types and formats 
IMPACT 
§ High Cost of Ownership 
§ Delays to process the billing information 
§ Delays in external distribution to partners 
15Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
BI 
Queries 
and 
Aggrega4on 
Scripts 
WAREHOUSES 
Near-­‐term 
data 
storage 
PLATFORMS 
Real-­‐4me 
ETL
STREAMING ANALYTICS 
ARCHITECTURES
Generating Operational Intelligence | Process 
Internet 
of 
Things 
& 
Sensors 
§ Smart 
City 
§ Transporta7on 
§ Industrial 
Internet 
§ Telema7cs 
§ Smart 
Energy 
Opera3onal 
Intelligence 
& 
Logs 
§ Security 
Intelligence 
§ Servers 
& 
Applica7ons 
§ Networks 
& 
Services 
Streaming 
Enterprise 
Hadoop 
and 
Data 
Warehouse 
integra7on 
for 
joining 
streaming 
and 
stored 
trend 
data 
Machine 
Data 
Social 
Media 
& 
TwiDer 
17Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
Real-­‐3me 
Ac3ons 
Real-­‐3me 
Dashboards 
Con3nuous 
Data 
Warehouse 
Updates 
Automated 
Ac3ons 
Con7nuous 
SQL 
queries 
over 
live 
data 
streams 
genera7ng 
streaming 
analy7cs 
and 
driving 
real-­‐7me 
ac7ons
CDR and IPDR Analysis! 
Where is the intelligence? 
Timestamp 
Transaction TRANS,2013-02-17-15:30:22,3458783,2347897953,128.56.0.253,STATUS:-15, DE69975, 4157588342 
Log Details 
Web Server 
Logs 
CDRs 
Device 
Locations 
Twitter 
Timestamp 
[Sun Feb 17 15:30:49 2013] [notice] srv-sfo-08 caught SIGTERM, shutting down 
[Sun Feb 17 15:30:49 2013] [notice] Apache/2.2.21 -- resuming normal operations 
TERMINATE,ctl09gsx,01299796304,GMT-08:00,02-17-13,15:21:00,9,387,64ms,02-17-13,15:30:55,0005, 
IP-TO-IP,4157588342,8775715775,1,0,4157588342,RD_AXY_NN0_001,SFR01AAG34,40.50.245.60, 
234.234.60.75,65678,411,399,SIP,SANFRANCISCO,0x4B1698,0x0005E,0x49768,4157588342,0198873465 
<id>1597831220</id><deviceid>0198873465</deviceid><lat>lat=47.643957</lat><lon>lon= 
-122.3269</lon><time>2013-02-17T15:37:26Z</time><bearing>223.4535</bearing> 
<id>1597865781</id><deviceid>0198873465</deviceid><lat>lat=47.645982</ 
lat><lon>lon=-122.327500</lon><time>2013-02-17T15:37:26Z</time><bearing>200.6138</bearing> 
<id>1597940125</id><deviceid>0198873465</deviceid><lat>lat=47.647381</ 
lat><lon>lon=-122.326501</lon><time>2013-02-17T15:37:26Z</time><bearing>87.4357</bearing> 
{"created_at:Thu Feb 17 15:30:55 +0000 2013,id:304612775055998976,id_str: 
304612775055998976,text:@MyServiceProvider today sucks, keeps dropped!,source:u006ca 
href=http:www.url.com rel=nofollow,followers_count:147,friends_count:10142, location: San Francisco, 
time_zone: Pacific, geo_enabled:true, location:u00dcT: -6.1987552,106.8661953, screen_name:APerson 
18Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
Timestamp 
Timestamp 
Timestamp 
Customer 
Mobile 
# 
Mobile 
# 
Term 
Reason 
Device 
ID 
Device 
ID 
Loca7on 
Loca7on 
Service 
Provider 
Fail 
Code 
Server
Enterprise-Class Real-time Data Hub 
Stream Processing for Operational Intelligence and the Internet of Things 
SQLstream 
Blaze 
19Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
s-Visualizer 
real-time dashboards for 
Enterprise Power Users 
s-Server 
StreamLab 
Intelligent guided data stream discovery, 
analytics and visualization without coding 
Distributed SQL Stream 
Processor 
s-Dashboard 
HTML5 real-time 
dashboards for Developers 
Storm 
Adapter 
s-Studio 
Developer & Admin
SQLstream Blaze – Core Platform Architecture 
Interac3ve 
Stream 
Discovery 
and 
Visualiza3on 
Web Sockets 
Stream Processing Engine 
Machine 
Data 
Agents 
Enterprise 
Systems 
Data Warehouse 
SQL Database 
Predictive Analytics 
20Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
Repor3ng 
Tools 
JDBC 
Control 
Systems 
SQL Optimizer 
Parallel Scheduler 
Real-time Indexing 
RT Memory Manager 
Dynamic Java Analytics (UDX) 
Streaming Data Protocol 
(HTML5)! 
Discovery 
API Connect 
Remote 
Systems 
Agents 
Enterprise 
Systems 
Devices 
& 
Apps 
Native 
Tables 
Web 
Agent 
REST 
(HTML5)! 
Dashboards 
(Flash)! 
Dashboards 
JDBC 
Adapters 
Devices 
& 
Apps 
JDBC 
Adapters 
Hadoop / HDFS 
HBase 
Storm & Kafka 
Enterprise 
BI 
Hadoop 
& 
NoSQL
StreamLab! 
Intelligent guided data stream discovery and visualization in minutes 
1. Connect to the data sources 
3. Streaming dashboards 
21Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
2. Structure, filter and format the streams 
Interactive Stream Browser 
Suggestions 
Tool 
User History
Case Studies
Case study: Real-time Call Fraud Prevention 
Customer call profile 
23Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
Alerts 
Triggers 
Reports 
STREAMING 
ANALYTICS 
• Call suspension 
• Acct. suspension 
Destination• Email Alerts 
Location 
IP spoofing alerts 
duration 
Mo Tue Wed Thu Fri Sat Sun 
① LA 
② Nairobi 
③ NY 
④ ….. 
① LA 
② SF 
③ NY 
④ …. 
① LA 
② Detroit 
① LA 
② LA1 
Dashboards
Real-time Call Rating & Fraud 
24Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
“SQLstream 
allows 
Veracity 
to 
provide 
vital 
real-­‐7me 
reports 
to 
our 
customers 
that 
previously 
took 
hours 
to 
create. 
SQLstream 
also 
provides 
real-­‐7me 
monitoring 
and 
insight 
into 
network 
concerns 
allowing 
Veracity 
to 
proac7vely 
address 
any 
such 
issues” 
Veracity Networks 
§ Internet 
provider 
§ Residen7al 
and 
business 
§ Range 
of 
IP-­‐based 
services 
OPPORTUNITIES 
§ CDR/IPDR 
real-­‐7me 
analy7cs 
§ Real-­‐7me 
ra7ng 
and 
QoE 
§ Fraud 
preven7on 
BENEFITS 
§ 
Improved 
customer 
sa7sfac7on 
§ 
Improved 
bandwidth 
u7liza7on 
§ 
Improved 
fraud 
detec7on 
7mes
Customer Benchmarked Performance! 
Large Network & Telecom Equipment Manufacturer 
25Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 
SQLstream 
Network Data 
Network Data 
Network Data 
Network Data 
Network Data 
ENRICH 
ANALYZE 
SHARE 
Remote 
Agent 
Remote 
Agent 
Remote 
Agent 
Remote 
Agent 
Remote 
Agent 
Data 
Warehouse 
External 
Systems 
External Data 
PERFORMANCE STATISTICS 
System Throughput: 
1.35M events / sec 
Server Configuration: 
1 x 4-core CPU 
Event Size: 
~1KB 
Data Sources: 
Many 
SYSTEM CHARACTERISTICS 
Collection: 
Intelligent Remote Agents (Distributed) 
Enrichment: 
Streaming data augmentation 
Analytics: 
Temporal & spatial pattern detection 
Output: 
Data warehouse + applications (JDBC)
Conclusions 
§ Drivers for Streaming Data Analytics 
§ Declining revenue streams 
§ Increasing data monetization gap 
§ A Big Data problem: Volume, Velocity and Variety 
§ Current technology and solutions are far from real-time 
§ SQLstream’s Real-time Advantage 
§ Low latency correlation, alerts and actions across all data sources 
§ Streaming enrichment 
§ Continuous integration with existing platforms 
§ Drives real-time rating, billing, QoE and QoS, and fraud 
26Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc.
Download SQLstream Blaze for free!! 
www.sqlstream.com/downloads 
Contact us: 
Email: inquiries@sqlstream.com 
Call: +1 877-571-5775 
Ronnie Beggs | ronnie.beggs@sqlstream.com | +1 415 758 8342 | @sqlstream 
Copyright 
© 
2014 
– 
Proprietary 
and 
Confiden7al 
Informa7on 
of 
SQLstream 
Inc. 
Twitter: @sqlstream 
Facebook: facebook.com/user/sqlstream 
LinkedIn: linkedin.com/company/sqlstream

More Related Content

What's hot

Big data analytics for telecom operators final use cases 0712-2014_prof_m erdas
Big data analytics for telecom operators final use cases 0712-2014_prof_m erdasBig data analytics for telecom operators final use cases 0712-2014_prof_m erdas
Big data analytics for telecom operators final use cases 0712-2014_prof_m erdasProf Dr Mehmed ERDAS
 
Real-Time Analytics for Industries
Real-Time Analytics for IndustriesReal-Time Analytics for Industries
Real-Time Analytics for IndustriesAvadhoot Patwardhan
 
Ask Bigger Questions with Cloudera and Apache Hadoop - Big Data Day Paris 2013
Ask Bigger Questions with Cloudera and Apache Hadoop - Big Data Day Paris 2013Ask Bigger Questions with Cloudera and Apache Hadoop - Big Data Day Paris 2013
Ask Bigger Questions with Cloudera and Apache Hadoop - Big Data Day Paris 2013Publicis Sapient Engineering
 
Benefiting from Big Data - A New Approach for the Telecom Industry
Benefiting from Big Data - A New Approach for the Telecom Industry  Benefiting from Big Data - A New Approach for the Telecom Industry
Benefiting from Big Data - A New Approach for the Telecom Industry Persontyle
 
ParStream - Big Data for Business Users
ParStream - Big Data for Business UsersParStream - Big Data for Business Users
ParStream - Big Data for Business UsersParStream Inc.
 
Top 5 Strategies for Retail Data Analytics
Top 5 Strategies for Retail Data AnalyticsTop 5 Strategies for Retail Data Analytics
Top 5 Strategies for Retail Data AnalyticsHortonworks
 
For Developers : Real-Time Analytics on Data in Motion
For Developers : Real-Time Analytics on Data in MotionFor Developers : Real-Time Analytics on Data in Motion
For Developers : Real-Time Analytics on Data in MotionAvadhoot Patwardhan
 
Big Data Expo 2015 - Pentaho The Future of Analytics
Big Data Expo 2015 - Pentaho The Future of AnalyticsBig Data Expo 2015 - Pentaho The Future of Analytics
Big Data Expo 2015 - Pentaho The Future of AnalyticsBigDataExpo
 
Big Data and Analytics: The IBM Perspective
Big Data and Analytics: The IBM PerspectiveBig Data and Analytics: The IBM Perspective
Big Data and Analytics: The IBM PerspectiveThe_IPA
 
Hadoop: Revolutionizing Analytics AND Operations
Hadoop: Revolutionizing Analytics AND OperationsHadoop: Revolutionizing Analytics AND Operations
Hadoop: Revolutionizing Analytics AND OperationsMapR Technologies
 
Introduction: Real-Time Analytics on Data in Motion
Introduction: Real-Time Analytics on Data in MotionIntroduction: Real-Time Analytics on Data in Motion
Introduction: Real-Time Analytics on Data in MotionAvadhoot Patwardhan
 
Banalytics - Monetizing corporate big data | Instarea
Banalytics - Monetizing corporate big data | InstareaBanalytics - Monetizing corporate big data | Instarea
Banalytics - Monetizing corporate big data | InstareaMatej Misik
 
Customer insights from telecom data using deep learning
Customer insights from telecom data using deep learning Customer insights from telecom data using deep learning
Customer insights from telecom data using deep learning Armando Vieira
 
Building Scalable IoT Apps (QCon S-F)
Building Scalable IoT Apps (QCon S-F)Building Scalable IoT Apps (QCon S-F)
Building Scalable IoT Apps (QCon S-F)Pavel Hardak
 
Real-time Streaming Analytics for Enterprises based on Apache Storm - Impetus...
Real-time Streaming Analytics for Enterprises based on Apache Storm - Impetus...Real-time Streaming Analytics for Enterprises based on Apache Storm - Impetus...
Real-time Streaming Analytics for Enterprises based on Apache Storm - Impetus...Impetus Technologies
 
Understanding Big Data Analytics - solutions for growing businesses - Rafał M...
Understanding Big Data Analytics - solutions for growing businesses - Rafał M...Understanding Big Data Analytics - solutions for growing businesses - Rafał M...
Understanding Big Data Analytics - solutions for growing businesses - Rafał M...GetInData
 

What's hot (20)

Big Data use cases in telcos
Big Data use cases in telcosBig Data use cases in telcos
Big Data use cases in telcos
 
Big data analytics for telecom operators final use cases 0712-2014_prof_m erdas
Big data analytics for telecom operators final use cases 0712-2014_prof_m erdasBig data analytics for telecom operators final use cases 0712-2014_prof_m erdas
Big data analytics for telecom operators final use cases 0712-2014_prof_m erdas
 
Real-Time Analytics for Industries
Real-Time Analytics for IndustriesReal-Time Analytics for Industries
Real-Time Analytics for Industries
 
Ask Bigger Questions with Cloudera and Apache Hadoop - Big Data Day Paris 2013
Ask Bigger Questions with Cloudera and Apache Hadoop - Big Data Day Paris 2013Ask Bigger Questions with Cloudera and Apache Hadoop - Big Data Day Paris 2013
Ask Bigger Questions with Cloudera and Apache Hadoop - Big Data Day Paris 2013
 
Benefiting from Big Data - A New Approach for the Telecom Industry
Benefiting from Big Data - A New Approach for the Telecom Industry  Benefiting from Big Data - A New Approach for the Telecom Industry
Benefiting from Big Data - A New Approach for the Telecom Industry
 
Why Analytics is key for Telecoms - you snooze you lose!
Why Analytics is key for Telecoms - you snooze you lose!Why Analytics is key for Telecoms - you snooze you lose!
Why Analytics is key for Telecoms - you snooze you lose!
 
Big data for Telco: opportunity or threat?
Big data for Telco: opportunity or threat?Big data for Telco: opportunity or threat?
Big data for Telco: opportunity or threat?
 
ParStream - Big Data for Business Users
ParStream - Big Data for Business UsersParStream - Big Data for Business Users
ParStream - Big Data for Business Users
 
Big data in telecom
Big data in telecomBig data in telecom
Big data in telecom
 
Top 5 Strategies for Retail Data Analytics
Top 5 Strategies for Retail Data AnalyticsTop 5 Strategies for Retail Data Analytics
Top 5 Strategies for Retail Data Analytics
 
For Developers : Real-Time Analytics on Data in Motion
For Developers : Real-Time Analytics on Data in MotionFor Developers : Real-Time Analytics on Data in Motion
For Developers : Real-Time Analytics on Data in Motion
 
Big Data Expo 2015 - Pentaho The Future of Analytics
Big Data Expo 2015 - Pentaho The Future of AnalyticsBig Data Expo 2015 - Pentaho The Future of Analytics
Big Data Expo 2015 - Pentaho The Future of Analytics
 
Big Data and Analytics: The IBM Perspective
Big Data and Analytics: The IBM PerspectiveBig Data and Analytics: The IBM Perspective
Big Data and Analytics: The IBM Perspective
 
Hadoop: Revolutionizing Analytics AND Operations
Hadoop: Revolutionizing Analytics AND OperationsHadoop: Revolutionizing Analytics AND Operations
Hadoop: Revolutionizing Analytics AND Operations
 
Introduction: Real-Time Analytics on Data in Motion
Introduction: Real-Time Analytics on Data in MotionIntroduction: Real-Time Analytics on Data in Motion
Introduction: Real-Time Analytics on Data in Motion
 
Banalytics - Monetizing corporate big data | Instarea
Banalytics - Monetizing corporate big data | InstareaBanalytics - Monetizing corporate big data | Instarea
Banalytics - Monetizing corporate big data | Instarea
 
Customer insights from telecom data using deep learning
Customer insights from telecom data using deep learning Customer insights from telecom data using deep learning
Customer insights from telecom data using deep learning
 
Building Scalable IoT Apps (QCon S-F)
Building Scalable IoT Apps (QCon S-F)Building Scalable IoT Apps (QCon S-F)
Building Scalable IoT Apps (QCon S-F)
 
Real-time Streaming Analytics for Enterprises based on Apache Storm - Impetus...
Real-time Streaming Analytics for Enterprises based on Apache Storm - Impetus...Real-time Streaming Analytics for Enterprises based on Apache Storm - Impetus...
Real-time Streaming Analytics for Enterprises based on Apache Storm - Impetus...
 
Understanding Big Data Analytics - solutions for growing businesses - Rafał M...
Understanding Big Data Analytics - solutions for growing businesses - Rafał M...Understanding Big Data Analytics - solutions for growing businesses - Rafał M...
Understanding Big Data Analytics - solutions for growing businesses - Rafał M...
 

Viewers also liked

Uncovering Fraud Dilemmas - cVidya in London May 2012
Uncovering Fraud Dilemmas - cVidya in London May 2012Uncovering Fraud Dilemmas - cVidya in London May 2012
Uncovering Fraud Dilemmas - cVidya in London May 2012cVidya Networks
 
Fraud Avoidance
Fraud AvoidanceFraud Avoidance
Fraud Avoidanceepacey
 
Big Data - The power of data Analytics
Big Data - The power of data AnalyticsBig Data - The power of data Analytics
Big Data - The power of data AnalyticsMahindra Comviva
 
Web performance tools @ WebPerf.camp 2016
Web performance tools @ WebPerf.camp 2016Web performance tools @ WebPerf.camp 2016
Web performance tools @ WebPerf.camp 2016SergeyChernyshev
 
Keen IO Presents at Under the Radar 2013
Keen IO Presents at Under the Radar 2013Keen IO Presents at Under the Radar 2013
Keen IO Presents at Under the Radar 2013Dealmaker Media
 
Management Information Systems - MIS Lectures - Day 1 cio and mis - part 1
Management Information Systems - MIS Lectures - Day 1   cio and mis - part 1Management Information Systems - MIS Lectures - Day 1   cio and mis - part 1
Management Information Systems - MIS Lectures - Day 1 cio and mis - part 1Foreign Trade University - Hanoi
 
Management Information Systems - MIS Lectures - Day 1 cio and mis - part 3
Management Information Systems - MIS Lectures - Day 1   cio and mis - part 3Management Information Systems - MIS Lectures - Day 1   cio and mis - part 3
Management Information Systems - MIS Lectures - Day 1 cio and mis - part 3Foreign Trade University - Hanoi
 
Optimizing product marketing boston product camp 2016 - saeed khan
Optimizing product marketing   boston product camp 2016 - saeed khanOptimizing product marketing   boston product camp 2016 - saeed khan
Optimizing product marketing boston product camp 2016 - saeed khanSaeed Khan
 
Revenue Assurance, Fraud Reduction and Cost Managment in Telecoms Conference
Revenue Assurance, Fraud Reduction and Cost Managment in Telecoms ConferenceRevenue Assurance, Fraud Reduction and Cost Managment in Telecoms Conference
Revenue Assurance, Fraud Reduction and Cost Managment in Telecoms ConferenceArena International
 
H2O World - What you need before doing predictive analysis - Keen.io
H2O World - What you need before doing predictive analysis - Keen.ioH2O World - What you need before doing predictive analysis - Keen.io
H2O World - What you need before doing predictive analysis - Keen.ioSri Ambati
 
Retaining Employees Through Greater Freedom - CMX Summit West 2016
Retaining Employees Through Greater Freedom - CMX Summit West 2016Retaining Employees Through Greater Freedom - CMX Summit West 2016
Retaining Employees Through Greater Freedom - CMX Summit West 2016CMX
 
Digital Metrics: What to Measure, How, and Why
Digital Metrics: What to Measure, How, and WhyDigital Metrics: What to Measure, How, and Why
Digital Metrics: What to Measure, How, and WhySpring Media Strategies
 
Real-time user profiling based on Spark streaming and HBase by Arkadiusz Jach...
Real-time user profiling based on Spark streaming and HBase by Arkadiusz Jach...Real-time user profiling based on Spark streaming and HBase by Arkadiusz Jach...
Real-time user profiling based on Spark streaming and HBase by Arkadiusz Jach...Big Data Spain
 
10 Analytics Dashboards To Monitor Your Business
10 Analytics Dashboards To Monitor Your Business10 Analytics Dashboards To Monitor Your Business
10 Analytics Dashboards To Monitor Your BusinessBeeckon
 

Viewers also liked (20)

Uncovering Fraud Dilemmas - cVidya in London May 2012
Uncovering Fraud Dilemmas - cVidya in London May 2012Uncovering Fraud Dilemmas - cVidya in London May 2012
Uncovering Fraud Dilemmas - cVidya in London May 2012
 
Telecoms (Types of lines)
Telecoms (Types of lines)Telecoms (Types of lines)
Telecoms (Types of lines)
 
Fraud Avoidance
Fraud AvoidanceFraud Avoidance
Fraud Avoidance
 
Blog feed-search-seo
Blog feed-search-seoBlog feed-search-seo
Blog feed-search-seo
 
Day 1 cio and mis - part 1
Day 1   cio and mis - part 1Day 1   cio and mis - part 1
Day 1 cio and mis - part 1
 
Day 1 cio and mis - part 1
Day 1   cio and mis - part 1Day 1   cio and mis - part 1
Day 1 cio and mis - part 1
 
Big Data - The power of data Analytics
Big Data - The power of data AnalyticsBig Data - The power of data Analytics
Big Data - The power of data Analytics
 
Day 1 cio and mis - part 2
Day 1   cio and mis - part 2Day 1   cio and mis - part 2
Day 1 cio and mis - part 2
 
Web performance tools @ WebPerf.camp 2016
Web performance tools @ WebPerf.camp 2016Web performance tools @ WebPerf.camp 2016
Web performance tools @ WebPerf.camp 2016
 
Day 1 cio and mis - part 3
Day 1   cio and mis - part 3Day 1   cio and mis - part 3
Day 1 cio and mis - part 3
 
Keen IO Presents at Under the Radar 2013
Keen IO Presents at Under the Radar 2013Keen IO Presents at Under the Radar 2013
Keen IO Presents at Under the Radar 2013
 
Management Information Systems - MIS Lectures - Day 1 cio and mis - part 1
Management Information Systems - MIS Lectures - Day 1   cio and mis - part 1Management Information Systems - MIS Lectures - Day 1   cio and mis - part 1
Management Information Systems - MIS Lectures - Day 1 cio and mis - part 1
 
Management Information Systems - MIS Lectures - Day 1 cio and mis - part 3
Management Information Systems - MIS Lectures - Day 1   cio and mis - part 3Management Information Systems - MIS Lectures - Day 1   cio and mis - part 3
Management Information Systems - MIS Lectures - Day 1 cio and mis - part 3
 
Optimizing product marketing boston product camp 2016 - saeed khan
Optimizing product marketing   boston product camp 2016 - saeed khanOptimizing product marketing   boston product camp 2016 - saeed khan
Optimizing product marketing boston product camp 2016 - saeed khan
 
Revenue Assurance, Fraud Reduction and Cost Managment in Telecoms Conference
Revenue Assurance, Fraud Reduction and Cost Managment in Telecoms ConferenceRevenue Assurance, Fraud Reduction and Cost Managment in Telecoms Conference
Revenue Assurance, Fraud Reduction and Cost Managment in Telecoms Conference
 
H2O World - What you need before doing predictive analysis - Keen.io
H2O World - What you need before doing predictive analysis - Keen.ioH2O World - What you need before doing predictive analysis - Keen.io
H2O World - What you need before doing predictive analysis - Keen.io
 
Retaining Employees Through Greater Freedom - CMX Summit West 2016
Retaining Employees Through Greater Freedom - CMX Summit West 2016Retaining Employees Through Greater Freedom - CMX Summit West 2016
Retaining Employees Through Greater Freedom - CMX Summit West 2016
 
Digital Metrics: What to Measure, How, and Why
Digital Metrics: What to Measure, How, and WhyDigital Metrics: What to Measure, How, and Why
Digital Metrics: What to Measure, How, and Why
 
Real-time user profiling based on Spark streaming and HBase by Arkadiusz Jach...
Real-time user profiling based on Spark streaming and HBase by Arkadiusz Jach...Real-time user profiling based on Spark streaming and HBase by Arkadiusz Jach...
Real-time user profiling based on Spark streaming and HBase by Arkadiusz Jach...
 
10 Analytics Dashboards To Monitor Your Business
10 Analytics Dashboards To Monitor Your Business10 Analytics Dashboards To Monitor Your Business
10 Analytics Dashboards To Monitor Your Business
 

Similar to Monetizing Big Data with Streaming Analytics for Telecoms Service Providers

Splunk Webinar: IT Operations Demo für Troubleshooting & Dashboarding
Splunk Webinar: IT Operations Demo für Troubleshooting & DashboardingSplunk Webinar: IT Operations Demo für Troubleshooting & Dashboarding
Splunk Webinar: IT Operations Demo für Troubleshooting & DashboardingGeorg Knon
 
A New Approach to Continuous Monitoring in the Cloud
A New Approach to Continuous Monitoring in the CloudA New Approach to Continuous Monitoring in the Cloud
A New Approach to Continuous Monitoring in the CloudNETSCOUT
 
Splunk for IT Operations Breakout Session
Splunk for IT Operations Breakout SessionSplunk for IT Operations Breakout Session
Splunk for IT Operations Breakout SessionSplunk
 
SplunkLive! London - Splunk App for Stream & MINT Breakout
SplunkLive! London - Splunk App for Stream & MINT BreakoutSplunkLive! London - Splunk App for Stream & MINT Breakout
SplunkLive! London - Splunk App for Stream & MINT BreakoutSplunk
 
SplunkLive! Amsterdam 2015 - IT Ops breakout
SplunkLive! Amsterdam 2015 - IT Ops breakoutSplunkLive! Amsterdam 2015 - IT Ops breakout
SplunkLive! Amsterdam 2015 - IT Ops breakoutSplunk
 
Wie erkenne ich die Auswirkungen von IT Ausfallen auf meine Produktion?
Wie erkenne ich die Auswirkungen von IT Ausfallen auf meine Produktion?Wie erkenne ich die Auswirkungen von IT Ausfallen auf meine Produktion?
Wie erkenne ich die Auswirkungen von IT Ausfallen auf meine Produktion?Splunk
 
Splunk for Industrial Data and the Internet of Things
Splunk for Industrial Data and the Internet of ThingsSplunk for Industrial Data and the Internet of Things
Splunk for Industrial Data and the Internet of Thingsaliciasyc
 
Splunk - Splunk for Industrial Data and the Internet of Things
Splunk - Splunk for Industrial Data and the Internet of ThingsSplunk - Splunk for Industrial Data and the Internet of Things
Splunk - Splunk for Industrial Data and the Internet of ThingsAruj Thirawat
 
Delivering New Visibility and Analytics for IT Operations
Delivering New Visibility and Analytics for IT OperationsDelivering New Visibility and Analytics for IT Operations
Delivering New Visibility and Analytics for IT OperationsGabrielle Knowles
 
SplunkLive Auckland - Operational Intelligence
SplunkLive Auckland - Operational IntelligenceSplunkLive Auckland - Operational Intelligence
SplunkLive Auckland - Operational IntelligenceSplunk
 
SplunkLive Wellington 2015 - Operational Intelligence
SplunkLive Wellington 2015 - Operational IntelligenceSplunkLive Wellington 2015 - Operational Intelligence
SplunkLive Wellington 2015 - Operational IntelligenceSplunk
 
Velocity Presentation - Unified Monitoring with AppDynamics
Velocity Presentation - Unified Monitoring with AppDynamicsVelocity Presentation - Unified Monitoring with AppDynamics
Velocity Presentation - Unified Monitoring with AppDynamicsAppDynamics
 
SAP AIN Asset Intelligence Network
SAP AIN Asset Intelligence NetworkSAP AIN Asset Intelligence Network
SAP AIN Asset Intelligence NetworkBranding Maintenance
 
Io t analytics panel
Io t   analytics panelIo t   analytics panel
Io t analytics panelMassTLC
 
Capgemini Leap Data Transformation Framework with Cloudera
Capgemini Leap Data Transformation Framework with ClouderaCapgemini Leap Data Transformation Framework with Cloudera
Capgemini Leap Data Transformation Framework with ClouderaCapgemini
 
Successful AI/ML Projects with End-to-End Cloud Data Engineering
Successful AI/ML Projects with End-to-End Cloud Data EngineeringSuccessful AI/ML Projects with End-to-End Cloud Data Engineering
Successful AI/ML Projects with End-to-End Cloud Data EngineeringDatabricks
 
SAAS, Cloud & The Supply Chain
SAAS, Cloud & The Supply ChainSAAS, Cloud & The Supply Chain
SAAS, Cloud & The Supply ChainNeel Sharma
 
Splunk company overview april. 2015
Splunk company overview   april. 2015Splunk company overview   april. 2015
Splunk company overview april. 2015Timur Bagirov
 
Lessons from an AWS outage and how to detect root cause of cloud service disr...
Lessons from an AWS outage and how to detect root cause of cloud service disr...Lessons from an AWS outage and how to detect root cause of cloud service disr...
Lessons from an AWS outage and how to detect root cause of cloud service disr...ThousandEyes
 

Similar to Monetizing Big Data with Streaming Analytics for Telecoms Service Providers (20)

Splunk Webinar: IT Operations Demo für Troubleshooting & Dashboarding
Splunk Webinar: IT Operations Demo für Troubleshooting & DashboardingSplunk Webinar: IT Operations Demo für Troubleshooting & Dashboarding
Splunk Webinar: IT Operations Demo für Troubleshooting & Dashboarding
 
A New Approach to Continuous Monitoring in the Cloud
A New Approach to Continuous Monitoring in the CloudA New Approach to Continuous Monitoring in the Cloud
A New Approach to Continuous Monitoring in the Cloud
 
Splunk for IT Operations Breakout Session
Splunk for IT Operations Breakout SessionSplunk for IT Operations Breakout Session
Splunk for IT Operations Breakout Session
 
SplunkLive! London - Splunk App for Stream & MINT Breakout
SplunkLive! London - Splunk App for Stream & MINT BreakoutSplunkLive! London - Splunk App for Stream & MINT Breakout
SplunkLive! London - Splunk App for Stream & MINT Breakout
 
SplunkLive! Amsterdam 2015 - IT Ops breakout
SplunkLive! Amsterdam 2015 - IT Ops breakoutSplunkLive! Amsterdam 2015 - IT Ops breakout
SplunkLive! Amsterdam 2015 - IT Ops breakout
 
Wie erkenne ich die Auswirkungen von IT Ausfallen auf meine Produktion?
Wie erkenne ich die Auswirkungen von IT Ausfallen auf meine Produktion?Wie erkenne ich die Auswirkungen von IT Ausfallen auf meine Produktion?
Wie erkenne ich die Auswirkungen von IT Ausfallen auf meine Produktion?
 
Splunk for Industrial Data and the Internet of Things
Splunk for Industrial Data and the Internet of ThingsSplunk for Industrial Data and the Internet of Things
Splunk for Industrial Data and the Internet of Things
 
Splunk - Splunk for Industrial Data and the Internet of Things
Splunk - Splunk for Industrial Data and the Internet of ThingsSplunk - Splunk for Industrial Data and the Internet of Things
Splunk - Splunk for Industrial Data and the Internet of Things
 
Delivering New Visibility and Analytics for IT Operations
Delivering New Visibility and Analytics for IT OperationsDelivering New Visibility and Analytics for IT Operations
Delivering New Visibility and Analytics for IT Operations
 
SplunkLive Auckland - Operational Intelligence
SplunkLive Auckland - Operational IntelligenceSplunkLive Auckland - Operational Intelligence
SplunkLive Auckland - Operational Intelligence
 
SplunkLive Wellington 2015 - Operational Intelligence
SplunkLive Wellington 2015 - Operational IntelligenceSplunkLive Wellington 2015 - Operational Intelligence
SplunkLive Wellington 2015 - Operational Intelligence
 
Velocity Presentation - Unified Monitoring with AppDynamics
Velocity Presentation - Unified Monitoring with AppDynamicsVelocity Presentation - Unified Monitoring with AppDynamics
Velocity Presentation - Unified Monitoring with AppDynamics
 
TIAD : Automation day by Jerôme Labat
TIAD : Automation day by Jerôme LabatTIAD : Automation day by Jerôme Labat
TIAD : Automation day by Jerôme Labat
 
SAP AIN Asset Intelligence Network
SAP AIN Asset Intelligence NetworkSAP AIN Asset Intelligence Network
SAP AIN Asset Intelligence Network
 
Io t analytics panel
Io t   analytics panelIo t   analytics panel
Io t analytics panel
 
Capgemini Leap Data Transformation Framework with Cloudera
Capgemini Leap Data Transformation Framework with ClouderaCapgemini Leap Data Transformation Framework with Cloudera
Capgemini Leap Data Transformation Framework with Cloudera
 
Successful AI/ML Projects with End-to-End Cloud Data Engineering
Successful AI/ML Projects with End-to-End Cloud Data EngineeringSuccessful AI/ML Projects with End-to-End Cloud Data Engineering
Successful AI/ML Projects with End-to-End Cloud Data Engineering
 
SAAS, Cloud & The Supply Chain
SAAS, Cloud & The Supply ChainSAAS, Cloud & The Supply Chain
SAAS, Cloud & The Supply Chain
 
Splunk company overview april. 2015
Splunk company overview   april. 2015Splunk company overview   april. 2015
Splunk company overview april. 2015
 
Lessons from an AWS outage and how to detect root cause of cloud service disr...
Lessons from an AWS outage and how to detect root cause of cloud service disr...Lessons from an AWS outage and how to detect root cause of cloud service disr...
Lessons from an AWS outage and how to detect root cause of cloud service disr...
 

Recently uploaded

TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024Lonnie McRorey
 
The State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptxThe State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptxLoriGlavin3
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsSergiu Bodiu
 
How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.Curtis Poe
 
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxThe Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxLoriGlavin3
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Strongerpanagenda
 
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024BookNet Canada
 
Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...
Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...
Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...Scott Andery
 
Data governance with Unity Catalog Presentation
Data governance with Unity Catalog PresentationData governance with Unity Catalog Presentation
Data governance with Unity Catalog PresentationKnoldus Inc.
 
TrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data PrivacyTrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data PrivacyTrustArc
 
The Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and ConsThe Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and ConsPixlogix Infotech
 
Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...
Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...
Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...Alkin Tezuysal
 
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxMerck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxLoriGlavin3
 
Decarbonising Buildings: Making a net-zero built environment a reality
Decarbonising Buildings: Making a net-zero built environment a realityDecarbonising Buildings: Making a net-zero built environment a reality
Decarbonising Buildings: Making a net-zero built environment a realityIES VE
 
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...Wes McKinney
 
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Mark Goldstein
 
Connecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfConnecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfNeo4j
 
Take control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteTake control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteDianaGray10
 
Scale your database traffic with Read & Write split using MySQL Router
Scale your database traffic with Read & Write split using MySQL RouterScale your database traffic with Read & Write split using MySQL Router
Scale your database traffic with Read & Write split using MySQL RouterMydbops
 
So einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdfSo einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdfpanagenda
 

Recently uploaded (20)

TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024
 
The State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptxThe State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptx
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platforms
 
How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.
 
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxThe Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
 
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
 
Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...
Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...
Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...
 
Data governance with Unity Catalog Presentation
Data governance with Unity Catalog PresentationData governance with Unity Catalog Presentation
Data governance with Unity Catalog Presentation
 
TrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data PrivacyTrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data Privacy
 
The Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and ConsThe Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and Cons
 
Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...
Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...
Unleashing Real-time Insights with ClickHouse_ Navigating the Landscape in 20...
 
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxMerck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
 
Decarbonising Buildings: Making a net-zero built environment a reality
Decarbonising Buildings: Making a net-zero built environment a realityDecarbonising Buildings: Making a net-zero built environment a reality
Decarbonising Buildings: Making a net-zero built environment a reality
 
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
 
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
 
Connecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfConnecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdf
 
Take control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteTake control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test Suite
 
Scale your database traffic with Read & Write split using MySQL Router
Scale your database traffic with Read & Write split using MySQL RouterScale your database traffic with Read & Write split using MySQL Router
Scale your database traffic with Read & Write split using MySQL Router
 
So einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdfSo einfach geht modernes Roaming fuer Notes und Nomad.pdf
So einfach geht modernes Roaming fuer Notes und Nomad.pdf
 

Monetizing Big Data with Streaming Analytics for Telecoms Service Providers

  • 1. MONETIZING BIG DATA with STREAMING ANALYTICS! For Communications Service Providers and the Telecoms Industry Copyright © 2014 – Proprietary and Confiden7al Informa7on of SQLstream Inc.
  • 2. SCOPE § Explain real-time Big Data and streaming analytics § Explore real-time applications in the Telecoms industry § Share our thoughts, experience and use cases 2Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc.
  • 3. Today’s Presenter Ronnie Beggs Vice President Marke3ng & Product Management, SQLstream § Over twenty years experience of product management, marke7ng and business development in the real-­‐7me soKware business. § Worked for a number of successful start-­‐ups, from early stage through to acquisi7on, including Metrica (ADC) and Cramer Systems (Amdocs). 3Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc.
  • 4. About SQLstream Distributed stream processing plaYorm for opera7onal intelligence and the Internet of Things, delivering streaming analy7cs and real-­‐7me ac7ons facts § Launched 2009 from log and sensor machine data. § Worldwide customer base across mul7ple industries § Strategic partnerships for opera7onal intelligence (logs) and Internet of Things (sensors) capabili7es § Process unstructured and structured machine data § Accelerate and extend Hadoop & RDBMS § Open, standards-­‐based plaYorm based on SQL 4Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. differen7ators § Massively scalable streaming data plaYorm § Only true standard SQL streaming engine § Covered by 7 broad patents for stream processing
  • 5. What’s happening with Big Data? § Stored information doubling every 18-24 months § “Internet of Things” is creating new data with no human interaction § Business decisions need to happen faster based on real-time, actionable intelligence § Streaming and predictive analytics are changing the way we interact with our operational systems and customers. 5Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc.
  • 6. Looking Forward with Streaming Analytics § Enterprises have been managed based on prior history delivered at the end of the day, month or quarter. § Streaming analytics enables enterprises to drive their business in real-time, reacting to changes and opportunities as they happen. 6Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc.
  • 7. Telecoms and Big Data $5.4B Communica7ons analy7cs market by 2019. Market Research Report.biz AREAS OF NEEDS § Customer Experience § Fraud prevention § IP Network & Service Performance § Call Center Experience 7Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. Streaming Value Improved opera7onal efficiency and customer sa7sfac7on, with a real-­‐7me 360o customer view, and con7nuous data silo integra7on Call Centers| Telecommunica7ons | Data Centers ISSUES § Untapped New (Big) Data § Ease of churn § Lacking a 360o customer view
  • 8. Streaming Analytics as a Complement to Traditional Data Management Repeated Queries DATABASE Collect, translate, classify DATA 8Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. ANALYSIS PATTERN DETECTION ACTION TIME STREAMING DATA ANALYTICS PLATFORM DATA Ac7on Ac7on C-­‐ETL Aggrega7on Classifica7on Profiling Deep analy7cs Trend detec7on Trend correla7on Extrapola7on Alerts Ac7ons Seconds Hours -­‐> Days DATA DATA
  • 9. OPERATIONAL INTELLIGENCE Integrating Operations and Analytics in Real-time Real-time Operational Intelligence Business Intelligence As we move toward a real-time business environment, the capability to process data flows swiftly and flexibly will become increasingly important. SQLstream leads the industry in this kind of capability. ” Robin Bloor 9Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. Chief Analyst for Bloor Group Operations Continuous monitoring and analytics Improve decision-making Automate operational processes Billing Rating QoE Network analysis Fraud Monitoring ”
  • 10. The Information Value Chain What is happening? 10Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. What might happen? What just happened? Make stuff happen!
  • 11. Telco Big Data! An Overview
  • 12. Actionable insights - the ideal scenario SOURCESSYSTEMS & APPS 12Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. Alerts ENTERPRISE § Operations § Customer Care § Marketing § Logistics MACHINE DATA § Unstructured § Semi-structured § Structured § Log, sensor & network QoE STREAMING ANALYTICS Actions Dashboards Continuous ETL
  • 13. What’s possible from xDRs | APPLICATIONS NETWORK SERVICE CUSTOMER BUSINESS § Op7miza7on of network u7liza7on § Network Capacity planning § Anomaly detec7on & troubleshoo7ng § Monitoring and protec7on § Self-­‐healing networks § Partner rou7ng § Subscriber profiling and informa7on § New product rollout visibility § Product development and tariff op7miza7on § Yield management and dynamic pricing § Service personaliza7on 13Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. § Customer loyalty management § Churn preven7on § Device analysis § Campaign management and precision marke7ng § Contact center alerts § New customer experience monitoring § Billing accuracy and revenue § SLA management § Interconnect billing analysis § Real-­‐7me reports § Fraud and suspicious traffic detec7on
  • 15. Data Analysis Today – far from Real Time Current architectures § Multi-stage process § Offline ETL § Interim storage with no analytics capability ETL / RDBMS process challenges § Volume and Velocity § Variable, changing formats § New types and formats IMPACT § High Cost of Ownership § Delays to process the billing information § Delays in external distribution to partners 15Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. BI Queries and Aggrega4on Scripts WAREHOUSES Near-­‐term data storage PLATFORMS Real-­‐4me ETL
  • 17. Generating Operational Intelligence | Process Internet of Things & Sensors § Smart City § Transporta7on § Industrial Internet § Telema7cs § Smart Energy Opera3onal Intelligence & Logs § Security Intelligence § Servers & Applica7ons § Networks & Services Streaming Enterprise Hadoop and Data Warehouse integra7on for joining streaming and stored trend data Machine Data Social Media & TwiDer 17Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. Real-­‐3me Ac3ons Real-­‐3me Dashboards Con3nuous Data Warehouse Updates Automated Ac3ons Con7nuous SQL queries over live data streams genera7ng streaming analy7cs and driving real-­‐7me ac7ons
  • 18. CDR and IPDR Analysis! Where is the intelligence? Timestamp Transaction TRANS,2013-02-17-15:30:22,3458783,2347897953,128.56.0.253,STATUS:-15, DE69975, 4157588342 Log Details Web Server Logs CDRs Device Locations Twitter Timestamp [Sun Feb 17 15:30:49 2013] [notice] srv-sfo-08 caught SIGTERM, shutting down [Sun Feb 17 15:30:49 2013] [notice] Apache/2.2.21 -- resuming normal operations TERMINATE,ctl09gsx,01299796304,GMT-08:00,02-17-13,15:21:00,9,387,64ms,02-17-13,15:30:55,0005, IP-TO-IP,4157588342,8775715775,1,0,4157588342,RD_AXY_NN0_001,SFR01AAG34,40.50.245.60, 234.234.60.75,65678,411,399,SIP,SANFRANCISCO,0x4B1698,0x0005E,0x49768,4157588342,0198873465 <id>1597831220</id><deviceid>0198873465</deviceid><lat>lat=47.643957</lat><lon>lon= -122.3269</lon><time>2013-02-17T15:37:26Z</time><bearing>223.4535</bearing> <id>1597865781</id><deviceid>0198873465</deviceid><lat>lat=47.645982</ lat><lon>lon=-122.327500</lon><time>2013-02-17T15:37:26Z</time><bearing>200.6138</bearing> <id>1597940125</id><deviceid>0198873465</deviceid><lat>lat=47.647381</ lat><lon>lon=-122.326501</lon><time>2013-02-17T15:37:26Z</time><bearing>87.4357</bearing> {"created_at:Thu Feb 17 15:30:55 +0000 2013,id:304612775055998976,id_str: 304612775055998976,text:@MyServiceProvider today sucks, keeps dropped!,source:u006ca href=http:www.url.com rel=nofollow,followers_count:147,friends_count:10142, location: San Francisco, time_zone: Pacific, geo_enabled:true, location:u00dcT: -6.1987552,106.8661953, screen_name:APerson 18Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. Timestamp Timestamp Timestamp Customer Mobile # Mobile # Term Reason Device ID Device ID Loca7on Loca7on Service Provider Fail Code Server
  • 19. Enterprise-Class Real-time Data Hub Stream Processing for Operational Intelligence and the Internet of Things SQLstream Blaze 19Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. s-Visualizer real-time dashboards for Enterprise Power Users s-Server StreamLab Intelligent guided data stream discovery, analytics and visualization without coding Distributed SQL Stream Processor s-Dashboard HTML5 real-time dashboards for Developers Storm Adapter s-Studio Developer & Admin
  • 20. SQLstream Blaze – Core Platform Architecture Interac3ve Stream Discovery and Visualiza3on Web Sockets Stream Processing Engine Machine Data Agents Enterprise Systems Data Warehouse SQL Database Predictive Analytics 20Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. Repor3ng Tools JDBC Control Systems SQL Optimizer Parallel Scheduler Real-time Indexing RT Memory Manager Dynamic Java Analytics (UDX) Streaming Data Protocol (HTML5)! Discovery API Connect Remote Systems Agents Enterprise Systems Devices & Apps Native Tables Web Agent REST (HTML5)! Dashboards (Flash)! Dashboards JDBC Adapters Devices & Apps JDBC Adapters Hadoop / HDFS HBase Storm & Kafka Enterprise BI Hadoop & NoSQL
  • 21. StreamLab! Intelligent guided data stream discovery and visualization in minutes 1. Connect to the data sources 3. Streaming dashboards 21Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. 2. Structure, filter and format the streams Interactive Stream Browser Suggestions Tool User History
  • 23. Case study: Real-time Call Fraud Prevention Customer call profile 23Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. Alerts Triggers Reports STREAMING ANALYTICS • Call suspension • Acct. suspension Destination• Email Alerts Location IP spoofing alerts duration Mo Tue Wed Thu Fri Sat Sun ① LA ② Nairobi ③ NY ④ ….. ① LA ② SF ③ NY ④ …. ① LA ② Detroit ① LA ② LA1 Dashboards
  • 24. Real-time Call Rating & Fraud 24Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. “SQLstream allows Veracity to provide vital real-­‐7me reports to our customers that previously took hours to create. SQLstream also provides real-­‐7me monitoring and insight into network concerns allowing Veracity to proac7vely address any such issues” Veracity Networks § Internet provider § Residen7al and business § Range of IP-­‐based services OPPORTUNITIES § CDR/IPDR real-­‐7me analy7cs § Real-­‐7me ra7ng and QoE § Fraud preven7on BENEFITS § Improved customer sa7sfac7on § Improved bandwidth u7liza7on § Improved fraud detec7on 7mes
  • 25. Customer Benchmarked Performance! Large Network & Telecom Equipment Manufacturer 25Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc. SQLstream Network Data Network Data Network Data Network Data Network Data ENRICH ANALYZE SHARE Remote Agent Remote Agent Remote Agent Remote Agent Remote Agent Data Warehouse External Systems External Data PERFORMANCE STATISTICS System Throughput: 1.35M events / sec Server Configuration: 1 x 4-core CPU Event Size: ~1KB Data Sources: Many SYSTEM CHARACTERISTICS Collection: Intelligent Remote Agents (Distributed) Enrichment: Streaming data augmentation Analytics: Temporal & spatial pattern detection Output: Data warehouse + applications (JDBC)
  • 26. Conclusions § Drivers for Streaming Data Analytics § Declining revenue streams § Increasing data monetization gap § A Big Data problem: Volume, Velocity and Variety § Current technology and solutions are far from real-time § SQLstream’s Real-time Advantage § Low latency correlation, alerts and actions across all data sources § Streaming enrichment § Continuous integration with existing platforms § Drives real-time rating, billing, QoE and QoS, and fraud 26Copyright © 2014 – Proprietary and Confidential Information of SQLstream Inc.
  • 27. Download SQLstream Blaze for free!! www.sqlstream.com/downloads Contact us: Email: inquiries@sqlstream.com Call: +1 877-571-5775 Ronnie Beggs | ronnie.beggs@sqlstream.com | +1 415 758 8342 | @sqlstream Copyright © 2014 – Proprietary and Confiden7al Informa7on of SQLstream Inc. Twitter: @sqlstream Facebook: facebook.com/user/sqlstream LinkedIn: linkedin.com/company/sqlstream