Business Intelligence Trends for University of Western Australia

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Transcript of Business Intelligence Trends for University of Western Australia

University of Western Australia

Guest Lecture

SAP Business Intelligence

Joshua Fletcher

SAP Mentor

16th October 2013

Agenda

1. Introduction

2. SAP Overview

3. SAP's Analytics & IM Platform

4. Industry Trends

– Mobile Analytics

– In-memory Databases

– Predictive / Statistical Analysis

5. Questions & Answers

Introduction

• Twelve years experience with BI tools

• Recently spent seven years as a

Principal Consultant and Team Lead (up

to 10 consultants) including recruiting

graduates

• Now contracted to BHP Billiton Iron Ore

as a BI Architect in their new BICC

• Experienced across the lifecycle of

Business Intelligence and Enterprise

Information Management

SAP Mentor Initiative

SAP Mentor Initiative

• SAP Mentors are the top community

influencers of the SAP Ecosystem

• Most of the ~130 mentors work for

customers or partners of SAP

• All of them are hands-on experts of an SAP

product or service, as well as excellent

champions of community-driven projects

• Focus is on engagement, co-innovation and

advocacy

Channels

Unprofessional

journalism at its

finest

Recorded by a

bunch of guys in

the SAP BI

community

Podcasts on

product news,

technology usage

and interviews with

other BI people

@dslayered

dslayer.net

dslayered

Who is SAP? • SAP is the world leader in enterprise applications in

terms of software and software-related service

revenue

• More than 238,000 customers in 188 countries

• More than 65,500 employees – and locations in

more than 130 countries

• A 41-year history of innovation and growth as a true

industry leader

• Annual revenue (IFRS) of € 16,22 billion

• Listed under the symbol "SAP" on stock exchanges,

including the Frankfurt Exchange and NYSE

• SAP recently celebrated it’s 40th anniversary (video)

SAP’s Analytics Platform

Gartner Magic Quadrant 2013

Business Intelligence

Gartner Magic Quadrant 2013

Data Warehouse

Information Management

Trend 1 – Mobile Analytics • 1 in 3 Americans now own a tablet (Mashable Jun

2013)

• Australians have the most tables per capita in

study across 16 countries (SMH Dec 2012)

• What are the hot areas for mobile BI?

– Self-service report & dashboard consumption

– Spatial analysis

– Exploration of information

– Simple ad-hoc analysis

• Most vendors have mobile apps that are free to

download and use trial data with

Mobile BI Demonstration

Trend 2 – In-memory Databases • Gartner note 60 vendors who provide

forms of in-memory databases (IMDB)

• Major vendors who now support (or have

announced planned support) include:

– SAP with HANA

– Oracle with Oracle DB In-memory Option

– IBM with IBM DB2 Blu

– Microsoft with SQL Server 2012 Hekaton

• Some vendors are adding to existing

tech, others are building new

SAP HANA

• Natively in-memory with MPP architecture

• Designed to support OLTP & OLAP

workloads simultaneously (write

individuals record while querying billions)

• Unstructured & structured data storage

• High compression with column & row store

• On-premise or cloud deployment options

SAP HANA Capabilities

• Advanced calculation/semantic layer

• Unstructured text analytics

• Statistical algorithms

• Data quality algorithms

• Spatial querying supported

• Smart Data Access allows querying of

Hadoop, Sybase IQ and other databases

SAP HANA – More Than a DB

SAP HANA Performance

3 billion scans per second per core

12.5 million aggregates per second per core

1.5 million inserts per second

SAP HANA Performance

• 1 PB Performance Benchmark

– 100 Nodes, 100 TB in DRAM

– 10 Years of Sales & Distribution Data

– 1.2 trillion Rows (330 Million transactions / day)

– Ad-hoc Simple Queries (e.g. Month Report)

• 430ms – 647ms, Drill-down: 142ms, Complex Queries

(e.g. YoY report): 1.2s – 3.1s

– Query Throughput (Queries per Hour)

• 7,547 for 1 stream, 57,202 for 10 streams, 112,602 for

60 streams

SAP HANA Demonstration

Trend 3 - SAP Predictive Analytics

• Desktop analyst tool which provides data

acquisition, cleansing, statistical analysis and

visualisation capabilities

• Integrates with local R engine or pushes

analysis to HANA and Predictive Algorithm

Library (PAL)

• Able to handle big data by leveraging HANA’s

capabilities

• New possibilities such as McLaren F1 (video)

Predictive Needs & Examples

• Anomalies – what anomalies or groupings/clusters exist?

• Forecasting – how does historical information translate to future performance?

• Relationships – are there correlations in data, or opportunities to cross-sell or up-sell?

• Key Influencers – what are main influencers of customer satisfaction or customer churn?

• Trends – what are emerging trends or sudden step changes that will impact business?

Integration with R Library

• Open source statistical programming

language with over 3,500 packages and

ability to write your own functions

• Used by growing number of data analytics

in industry, government, consulting and

academia

• Free, comprehensive and many learn at

college or university

HANA Synergies

• Leverage complimentary capabilities of Predictive Analytics and HANA PAL

• Integrated and optimised for interoperability, enabling combination of real-time and operational analytics, access to big data, and predictive capabilities

• If it's available through HANA, it can be used for data mining and predictive analysis: gain real-time access to BPC, BW, ERP, Analytic Applications and more

Common Algorithms

• Association (Apriori)

– Find frequent item patterns in transactional

datasets ie market basket analysis

• Clustering (K-Means)

– Cluster observations into related groups

• Decision Trees (CNR Tree)

– Classify observations into groups and predict

discrete variables

Common Algorithms

• Neural Network (MONMLP Neural Network)

– Forecast, classify and undertake statistical

pattern recognition

• Outliers (Nearest Neighbour Outlier)

– Find patterns in data that aren’t expected

• Regression (Exponential Regression)

– Finds trends in data

• Time Series (Single Exponential Smoothing)

– Smooth (trend) or forecast time series data points

SAP Predictive Analysis Demonstration

Useful Links – Predictive

• SAP Predictive Analysis Trial

• Try R School

• Free book ‘Learning Statistics with R’

Useful Links – General

• SAP Mentor Initiative Introduction

• Diversified Semantic Layer

Any questions?

You can reach me on:

@josh_fletcher

josh@geek2live.net