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Business Analytics 
Paradigm Change 
Dmitry Anoshin
Target Market Trends 
• “Feeding transactional data into a traditional data warehouse no 
longer represents the extent of capabilities necessary for BI.” 
• “The simple idea of building a traditional data warehouse to 
support a BI platform is no longer sufficient.” 
• “….require new information management capabilities to integrate 
information from disparate, external and unstructured information 
sources.”
Traditional Analytics 
Types: 
• Business Intelligence 
• Data mining 
• OLAP 
• Plain Analytics 
Uses: 
• Get better sense of their operations 
• Cut costs 
• Improve decision making 
• Identify inefficient processes, which can 
lead to identify new business 
opportunities and reengineering their 
processes 
Challenges: 
• Raw information lives are usually 
decoupled or spread 
across distributed systems 
• Difficult to consolidate 
• Involves an effort going through the 
typical SDLC, which takes lots of time
Typical Process for Structured Data 
Application 
Application 
Data 
base 
ETL Data 
Application Connector 
Warehouse 
Analytics 
Tool 
Early Structure Binding 
• Decide what questions to ask 
• Design the data schema 
• Normalize the data 
• Write database insertion code 
• Create the queries 
• Feed the results into an analytics tool
Business Analytics –Before Splunk 
IT/Business Challenges 
• Most organizations only rely on structured data 
for business analytics – not sufficient today! 
• New data sources such as machine increasingly 
critical sources of insight – not leveraged by 
organizations 
• Inability to scale / handle data volume of new 
sources as data continues to grow Inability to 
deliver real-time insights to the business. 
• Most today rely on ETL causing latency in 
analytics Existing solutions unable to do data 
mash-up across structured and machine data 
Business Consequence 
• Inability to gain real-time business insights 
from new data sources 
• Business users across functions (sales ops, 
product managers, marketing, and 
customer support users cannot leverage 
new data sources for analytics 
• Competitive disadvantage as other 
companies increasingly leverage machine 
data for business insights 
• Unable to get insights from new data 
sources with their traditional structured 
analytics tools
Business Analytics – After Splunk 
IT/Business Vision 
• Deliver real-time business insight from machine 
data 
• Enrich machine data with structured data to 
provide business context 
• Complement existing BI technologies for insight 
into a new class of data 
• Leverage search, interactive dashboards in Splunk 
or other 3rd party visualization tools 
• Rapid time to value in gaining business insights 
from machine data 
Business Benefits 
• Application Analytics – to understand how customers 
are interacting with various online applications. 
• Content & Search Analytics – to understand how 
customers are accessing and searching for content 
served up over CDNs 
• Real-time Sales Analytics – to gain real-time visibility 
into products and services that customers are 
purchasing. 
• Service Cost Analytics – to gain insight (for example) 
into call detail records and cost associated with 
completing each call. 
• Online Monetization Analytics – an example of this is 
online gaming companies where they are introducing 
virtual goods and charging for them. 
• Marketing Analytics – understanding customer click-through 
for ads helps improve placement, pricing and 
click through rates.
Splunk Delivers Value Across IT and the 
Business 
Business 
Analytics 
Digital 
Intelligence 
Security 
and 
Compliance 
IT 
Operations 
App 
Manageme 
nt 
Industrial 
Data 
Developer Platform (REST API, SDKs) 
>SPLUNK 
Small Data. Big Data. Huge Data.
Splunk Turns Machine Data into 
Operational Intelligence 
Customer 
Facing Data 
Outside the 
Datacenter 
Applications 
Web logs 
Log4J, JMS, JMX 
.NET events 
Code and scripts 
Networking 
Configurations 
syslog 
SNMP 
netflow 
Databases 
Configurations 
Audit/query 
logs 
Tables 
Schemas 
Virtualization 
& Cloud 
Hypervisor 
Guest OS, Apps 
Cloud 
Linux/Unix 
Configuration 
s 
syslog 
File system 
ps, iostat, top 
Windows 
Registry 
Event logs 
File system 
sysinternals 
Logfiles Configs Messages Traps 
Alerts 
Metrics Scripts Changes Tickets 
Click-stream data 
Shopping cart data 
Online transaction data 
Manufacturing, 
logistics… 
CDRs & IPDRs 
Power consumption 
RFID data 
GPS data
Early vs. Late Binding Schema 
Early Structure Binding - Traditional 
SELECT customers.* FROM customers WHERE 
customers.customer_id NOT IN(SELECT customer_id FROM 
Orders WHERE year(orders.order_date) = 2004) 
Structure Data 
• Schema – created 
at design time 
• Homogeneous– 
must fit into tables 
or be converted to 
fit into tables 
• Queries – 
understood at 
design time for 
maximum 
performance 
• Must exactly match 
constraints
Early vs. Late Binding Schema 
Late Structure Binding - Splunk 
Structure Data 
• Schema-less • Heterogeneous– 
can come from any 
textual source 
• Created at search 
time 
• Constantly 
changing 
• Queries/searches 
can be ad-hoc 
• No conversion 
required, no 
constraints
Analytics 
Early Structure Binding Late Binding Schema 
Decide the question(s) 
you want to ask 
Design the Schema 
Normalize the data and 
write DB insertion code 
Create SQL & Feed into 
Analytics Tool 
Write data (or events) to 
log files 
Collect the log files 
Create searches, graphs, 
and reports using Splunk 
(Days, Weeks or 
Months & 
Destructive) 
(Minutes & Non- 
Destructive)
Example: Business Visibility From 
Machine Data 
Machine Data (from customer interaction) Product Information Geo location Data 
Customer interacts with service online or from 
any device 
User browser 
information 
Action Product 
User 
session 
66.57.19.112 ..[05/Dec/2011 07:05:22:152]”GET 
/card.do?action=addtocart&itemid=EST-17& product_id=K9-BD- 
01&JSESSIONID.SD7SLSFF8ADFF8HTTP 1.1” 200 3923 
AppleWebKit/535.2 (KHTML.like Gecko) Chrome/15.0.874.121 
Safari535.2 
Product_id=K9-BD-01 
Product Name=2 TB Portable Drive 
Manufacturer=iomega 
Real-Time Business Insights from Machine Data 
Geo location 
data 
Correlated with product 
information from database 
Location data based on where 
the customer purchased / 
interacted with service 
– What products are popular in what region? 
– Which product are customers leaving in cart? 
– What are interaction paths by devices? 
– How can we improve customer experience?
Getting Structured Data In Splunk 
Log 
files 
CSV lookup 
Splunk Connector 
• Access data at scale 
• In real-time 
• Easy set-up & maintenance 
Structured 
databases 
Applications 
Web Servers 
Other 
systems
DB Connect: Business Context to 
Machine Data 
Structured Data >Machine Data >Business Analytics 
Rate plans, customer 
profile, geo location 
Customer profile, 
Service subscription 
Product descriptions, 
Customer profile 
Device activation, 
Radius, application logs 
Application, server and 
network logs 
Application logs, 
authentication logs 
Sales Analytics 
Customer Analytics 
Product Analytics
Getting Business Insights from 
Splunk 
User Interface: Splunk 
User Interface: Third Party 
Dashboards Searches Pivot 
Schedule SDK/APIs ODBC
Positioning Splunk for Business 
Analytics 
>New class of data for business analytics 
>Enrich machine data with structured data 
>Real-time business insights 
>Complement traditional BI Tools
Splunk Complements Existing 
BI Tools 
Features Splunk Leading BI Tools 
Focus Platform for real-time operational 
intelligence 
Data visualization and business 
intelligence software 
Value Collect, index, search, monitor, report on, 
analyze massive streams of machine data 
Analyze, visualize and share 
structured data 
Users IT, Operations, Security, Developers, 
Analysts, Business Users (as consumers) 
Business Users and Analysts 
(already using data discovery 
tool) 
Use Cases IT Ops, App Management, Security, Digital 
Intelligence, Business Analytics from 
machine data, Internet of Things 
Marketing, HR, Sales Reporting, 
Supply Chain Analysis
Scales to TBs/day and Thousands of 
Users 
Automatic load balancing 
linearly scales indexing 
Distributed search and 
MapReduce linearly scales 
search and reporting
Summary 
> Real Time Architecture 
> Universal Machine Data Platform 
> Schema on the Fly 
> Agile Reporting and Analytics 
> Scales from Desktop to Enterprise 
> Fast Time to Value 
> Passionate and Vibrant Community

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Business Analytics Paradigm Shift with Real-Time Machine Data Insights

  • 1. Business Analytics Paradigm Change Dmitry Anoshin
  • 2. Target Market Trends • “Feeding transactional data into a traditional data warehouse no longer represents the extent of capabilities necessary for BI.” • “The simple idea of building a traditional data warehouse to support a BI platform is no longer sufficient.” • “….require new information management capabilities to integrate information from disparate, external and unstructured information sources.”
  • 3. Traditional Analytics Types: • Business Intelligence • Data mining • OLAP • Plain Analytics Uses: • Get better sense of their operations • Cut costs • Improve decision making • Identify inefficient processes, which can lead to identify new business opportunities and reengineering their processes Challenges: • Raw information lives are usually decoupled or spread across distributed systems • Difficult to consolidate • Involves an effort going through the typical SDLC, which takes lots of time
  • 4. Typical Process for Structured Data Application Application Data base ETL Data Application Connector Warehouse Analytics Tool Early Structure Binding • Decide what questions to ask • Design the data schema • Normalize the data • Write database insertion code • Create the queries • Feed the results into an analytics tool
  • 5. Business Analytics –Before Splunk IT/Business Challenges • Most organizations only rely on structured data for business analytics – not sufficient today! • New data sources such as machine increasingly critical sources of insight – not leveraged by organizations • Inability to scale / handle data volume of new sources as data continues to grow Inability to deliver real-time insights to the business. • Most today rely on ETL causing latency in analytics Existing solutions unable to do data mash-up across structured and machine data Business Consequence • Inability to gain real-time business insights from new data sources • Business users across functions (sales ops, product managers, marketing, and customer support users cannot leverage new data sources for analytics • Competitive disadvantage as other companies increasingly leverage machine data for business insights • Unable to get insights from new data sources with their traditional structured analytics tools
  • 6. Business Analytics – After Splunk IT/Business Vision • Deliver real-time business insight from machine data • Enrich machine data with structured data to provide business context • Complement existing BI technologies for insight into a new class of data • Leverage search, interactive dashboards in Splunk or other 3rd party visualization tools • Rapid time to value in gaining business insights from machine data Business Benefits • Application Analytics – to understand how customers are interacting with various online applications. • Content & Search Analytics – to understand how customers are accessing and searching for content served up over CDNs • Real-time Sales Analytics – to gain real-time visibility into products and services that customers are purchasing. • Service Cost Analytics – to gain insight (for example) into call detail records and cost associated with completing each call. • Online Monetization Analytics – an example of this is online gaming companies where they are introducing virtual goods and charging for them. • Marketing Analytics – understanding customer click-through for ads helps improve placement, pricing and click through rates.
  • 7. Splunk Delivers Value Across IT and the Business Business Analytics Digital Intelligence Security and Compliance IT Operations App Manageme nt Industrial Data Developer Platform (REST API, SDKs) >SPLUNK Small Data. Big Data. Huge Data.
  • 8. Splunk Turns Machine Data into Operational Intelligence Customer Facing Data Outside the Datacenter Applications Web logs Log4J, JMS, JMX .NET events Code and scripts Networking Configurations syslog SNMP netflow Databases Configurations Audit/query logs Tables Schemas Virtualization & Cloud Hypervisor Guest OS, Apps Cloud Linux/Unix Configuration s syslog File system ps, iostat, top Windows Registry Event logs File system sysinternals Logfiles Configs Messages Traps Alerts Metrics Scripts Changes Tickets Click-stream data Shopping cart data Online transaction data Manufacturing, logistics… CDRs & IPDRs Power consumption RFID data GPS data
  • 9. Early vs. Late Binding Schema Early Structure Binding - Traditional SELECT customers.* FROM customers WHERE customers.customer_id NOT IN(SELECT customer_id FROM Orders WHERE year(orders.order_date) = 2004) Structure Data • Schema – created at design time • Homogeneous– must fit into tables or be converted to fit into tables • Queries – understood at design time for maximum performance • Must exactly match constraints
  • 10. Early vs. Late Binding Schema Late Structure Binding - Splunk Structure Data • Schema-less • Heterogeneous– can come from any textual source • Created at search time • Constantly changing • Queries/searches can be ad-hoc • No conversion required, no constraints
  • 11. Analytics Early Structure Binding Late Binding Schema Decide the question(s) you want to ask Design the Schema Normalize the data and write DB insertion code Create SQL & Feed into Analytics Tool Write data (or events) to log files Collect the log files Create searches, graphs, and reports using Splunk (Days, Weeks or Months & Destructive) (Minutes & Non- Destructive)
  • 12. Example: Business Visibility From Machine Data Machine Data (from customer interaction) Product Information Geo location Data Customer interacts with service online or from any device User browser information Action Product User session 66.57.19.112 ..[05/Dec/2011 07:05:22:152]”GET /card.do?action=addtocart&itemid=EST-17& product_id=K9-BD- 01&JSESSIONID.SD7SLSFF8ADFF8HTTP 1.1” 200 3923 AppleWebKit/535.2 (KHTML.like Gecko) Chrome/15.0.874.121 Safari535.2 Product_id=K9-BD-01 Product Name=2 TB Portable Drive Manufacturer=iomega Real-Time Business Insights from Machine Data Geo location data Correlated with product information from database Location data based on where the customer purchased / interacted with service – What products are popular in what region? – Which product are customers leaving in cart? – What are interaction paths by devices? – How can we improve customer experience?
  • 13. Getting Structured Data In Splunk Log files CSV lookup Splunk Connector • Access data at scale • In real-time • Easy set-up & maintenance Structured databases Applications Web Servers Other systems
  • 14. DB Connect: Business Context to Machine Data Structured Data >Machine Data >Business Analytics Rate plans, customer profile, geo location Customer profile, Service subscription Product descriptions, Customer profile Device activation, Radius, application logs Application, server and network logs Application logs, authentication logs Sales Analytics Customer Analytics Product Analytics
  • 15. Getting Business Insights from Splunk User Interface: Splunk User Interface: Third Party Dashboards Searches Pivot Schedule SDK/APIs ODBC
  • 16. Positioning Splunk for Business Analytics >New class of data for business analytics >Enrich machine data with structured data >Real-time business insights >Complement traditional BI Tools
  • 17. Splunk Complements Existing BI Tools Features Splunk Leading BI Tools Focus Platform for real-time operational intelligence Data visualization and business intelligence software Value Collect, index, search, monitor, report on, analyze massive streams of machine data Analyze, visualize and share structured data Users IT, Operations, Security, Developers, Analysts, Business Users (as consumers) Business Users and Analysts (already using data discovery tool) Use Cases IT Ops, App Management, Security, Digital Intelligence, Business Analytics from machine data, Internet of Things Marketing, HR, Sales Reporting, Supply Chain Analysis
  • 18. Scales to TBs/day and Thousands of Users Automatic load balancing linearly scales indexing Distributed search and MapReduce linearly scales search and reporting
  • 19. Summary > Real Time Architecture > Universal Machine Data Platform > Schema on the Fly > Agile Reporting and Analytics > Scales from Desktop to Enterprise > Fast Time to Value > Passionate and Vibrant Community

Notas do Editor

  1. Key Challenges Requires pre-defined schema – limits flexibility Difficult to handle data diversity in real time Adding new and changing data sources is hard Scaling for large volumes of data is difficult Time consuming with long deployments