SlideShare une entreprise Scribd logo
1  sur  24
Télécharger pour lire hors ligne
Internal
OEM Product Portfolio
Introduction to the DT & Analytics
Cengiz Akgun, MDS ap
April, 2018
Internal
Performance
Low Latency
Models
Governance
Freedom
TRANSACTIONAL
DIGITAL DATA
INTELLIGENT
ENGAGEMENTS
DATA
WAREHOUSING
Vora
EIM
IQ
ASE
SQLA
Middle
ware
SAP
HANA
BW/4
HANA
S/4
HANA
Streaming
Dynamic
Tiering
BigData
Service
SAP’s Modern Data Platform Approach
The completely optimized data foundation for “Universal Data”
DATABASE MANAGEMENT
Web Server JavaScript
Graphic
Modeler
Data Virtualization ELT & Replication
Columnar
OLTP+OLAP
Multi-Core &
Parallelization
Advanced
Compression
Multi-tenancy Multi-Tier
Storage
Graph Predictive Search
Data
Quality
Series
Data
Business
Functions
Hadoop &
Spark Integration
Streaming
Analytics
Application Lifecycle
Management
High Availability &
Disaster Recovery
OpennessData
Modeling
Admin &
Security
Remote
Data Sync
Spatial
Text
Analytics
Fiori UX
ALM
</>
APPLICATION DEVELOPMENT DATA INTEGRATION & QUALITYADVANCED ANALYTICAL PROCESSING
SAP HANA Platform
The data management and application platform for all applications
SAP, ISV and Custom Applications
All Devices
OLTP + OLAPONE Open Platform ONE Copy of the Data
S A P H A N A P L A T F O R M
SAP SQL Anywhere
Product description
SAP SQLAnywhere is a comprehensive data management and
synchronization technology targeting embedded, remote/satellite,
mobile, and Internet of Things (IoT) environments.
Zero-admin, full-featured RDBMS
▪ Able to dynamically adjust to installed environments, automatically tune
performance, automate common administration tasks while delivering
impressive performance “out of the box”
Fully embeddable in ISV systems
▪ Rich SQL language, support for broad range of industry standard interfaces,
zero admin capabilities, wide range of deployment options
▪ High availability, FIPS security, Unix, Linux, Windows and iOS support
Bidirectional synchronization with enterprise DBMS systems
▪ Secure sync with SAP HANA, SAPASE, and third-party DMBS systems
SAP Adaptive Server Enterprise (SAP ASE)
Product description
SAP ASE is a high-performance relational enterprise database management
system that is designed for mission-critical, transaction-intensive
environments for custom-developed and SAP Business Suite applications with
reduced TCO.
Mission-critical, transaction-intensive workloads
Database engine focusing on eXtreme Online Transaction Processing (XOLTP) – leveraging
in-memory processing techniques for linear scalability – scale up versus scale out
Fewer resources used to achieve best performance with easier management
Trusted legacy for performance and robustness
Used to manage many of Wall Street’s largest trading environments
Used to manage over 10,000 customer systems running SAP Business Suite
High secure system with LDAP, SSL and Encryption support
Reduced TCO
Enterprise & Edge Edition with Built-in DR solution
Semantic Partitioning and Compression
Database Memscale, Workload Analyzer and Always-On options
SAP IQ
Product description
SAP IQ is a disk-backed columnar database, designed for analytics and data warehousing.
Performance
▪ 10x – 1000x faster queries over traditional, row-based DBMS
▪ High performance data loading
Scalability
▪ Store and analyze terabytes to petabytes of structured and
unstructured data
▪ Supports heavy ad-hoc query workloads with 1000s of users
concurrently
TCO
▪ Offers many deployment options: supports all major hardware and
OS platforms, both on premise and in cloud
▪ Easy to administer with minimal tuning after initial set up
SAP IQ technology across the SAP product portfolio
SAP HANA dynamic tiering
IQ technology has been integrated with the HANA database as
an extended storage disk tier for large volume, infrequently
accessed data.
SAP BW NLS
IQ technology serves as a low TCO, archive store for
SAP BW. Historical data is managed on line, with
excellent query performance.
SAP IQ next to SAP HANA for petabyte scale analytics
IQ manages petabytes of raw, structured data.Aggregates are
moved into SAP HANA for real-time processing.
SAP HANA
SAP IQ
SAP BW system
SAP ERP
data
SAP IQ
NLS
Historical
data
tabletable
SAP HANA Database
In-memory-store Extended store
Column Multistore table Extended
Partition Partition Partition
SAP Adaptive Server Platform Edition
Perpetual Right To Deploy
SAP ESP Architecture
Application
Transactions
External Databases
Referenc
e
Data
Historical
Data
Analytic
Data
Reporting/
BI Tools
Spreadsheets/
Visualization
Operational
Applications
HANA
InputAdapters
OutputAdapters
ESP Engine
Market
Data Feeds
Message
Bus
IT & Network
Monitoring
Internal
Event Streams
Complex Event Processing: “When 3 negative comments or
suspicious transactions occur in any 5 seconds in Istanbul,
check the comment/transaction and execute the workflow”
SAP Data Services
Data virtualization, data replication, data integration, data quality, and data profiling
Key capabilities
Access and extract structured and
unstructured data, SAP and third-party
sources, in batch or real time (message
type)
Transform, cleanse, match, and
consolidate data
Scale from single to multiple servers for all
volumes of data
Support wide variety of SAP and third-
party targets, on premise and in the cloud
Single Web-based administration and
operations user interface
Self contained lifecycle management utility
with version control system
▪
▪
▪
▪
▪
▪
SAP Data Hub
Simplify, understand, and govern the flow of data at scale
SAP Data Hub is a data operations (DataOps) management solution that enables data orchestration, pipelining, and
governance, as well as agile sharing of all data across a connected data landscape.
Governance and operations
▪
▪
▪
▪
Unified data landscape view
Data access and security
Data quality profiling
Lineage and impact analysis
Data pipelines
▪
▪
▪
Metadata repository and catalog
Data pipeline modeling
Data model lifecycle management
Data sharing and orchestration
▪
▪
▪
▪
Connectivity management
Workflow definition
Scheduling and monitoring
Enterprise application integration
SAP Information Steward – Key Capabilities
Profile, Assess, Monitor, Manage and Analyze Data Quality
SAP Business
Suite
SAP BW
develop information policies.
Databases
validation rules and cleansing
rules using profiling results.
Hadoop
quality task ownership of data
BI systems
ETL tools
quality issues with pre-loaded
templates
Delimited Files
Data Modeling
tools
Sources Data Discovery & Stewardship
5
Analyze data quality using
business value analysis to
quantify financial impact.
4
Monitor and resolve data
quality issues with pre-loade
3
Enable workflow for data
quality task ownership of da
assets.
2
Define business terms,
SAP
HANA
SAP 1.Discover
Information
Steward
Analyze 2.Define
4.Monitor 3.Workflow
1
Discover business glossary
and metadata. Formally
SAP PowerDesigner
Usage with SAP Product Portfolio
SAP BusinessObjects Business Intelligence suite
Simple Workflow/Architecture
DATA Platform and End-User Tools Access
Mobile DevicesOLAPRDBMS
Business
Intelligence
Platform
BrowsersERP SAP BW & EDW
SAP HANA
Platform
Embedded Enterprise
Content Portals
Unstructured data
Hadoop MS OfficeMS Excel
Enterprise and Ad Hoc Reporting
Applications &
Dashboards
Agile
Visualization
Universe – Semantic Layer
Exposing business data under a single umbrella
SAP Crystal Reports
For Highly Formatted Operational and Enterprise Reports
▪ ANY data
Ideal for
▪ Customer statements, invoices, POs, bills
▪ Operational reporting
▪ Embedded reporting in applications
Use Cases include
▪ 1 to Many
Design and Deploy
Pixel-perfect Reporting
Powerful API to Embed Reports
Optimized for High-volume Reporting
SAP BusinessObjects Web Intelligence
For Self-service, Ad-hoc Query and Reporting
▪ Corporate data via Universe
▪ HANA data
Ideal for
▪ Self-service reporting and rapid report creation
(market-leading with 25,000+ customers)
▪ Interactive analysis and reporting with no coding required
Use Cases Include
▪ Self-Service
▪ 1 to Many
Design and Deploy
Ad-hoc Reporting & Queries
Simplicity via the Semantic Layer
Drill down, Slice & Dice, & Customize
SAP BusinessObjects Lumira
For Visual Discovery and Storytelling by Business People of All Skills
Agility for Business Analysts
Instant Insight for Decision Makers
HTML5 Based with Prebuilt
Components
▪ ANY data: Corporate, Personal, HANA, BW, 3rd part, custom
Ideal for
▪ Visual data discovery
▪ Need to perform analysis on mashed-up data from many disparate sources
Use Cases include
▪ Self-Service
▪ 1 to Many
Design and Deploy
SAP Business Objects Live Office
Product Description
SAP BusinessObjects BI Suite Mobile Solutions
SAP BusinessObjects Enterprise Editions
Predict
▪ Customers most likely to churn
▪ Propensity to buy
▪ What part is most likely to fail
▪ What activity is probably fraudulent
Forecast
▪ Future revenues
▪ Inventory demand
▪ Orders by segment
▪ Online ads and content demand
▪ Network performance
Optimize
▪ Recommended offers
▪ Marketing content
▪ Network or system infrastructure
SAP Predictive Analytics
Simple, Fast, and Accurate for Analysts and Data Scientists Alike
Data Preparation
Create 1000’s of derived
variables faster
Automated Modeling
Best performing model
automatically chosen
Breadth of Connectivity
Access departmental and
enterprise data
No Black Box
Support for R
Advanced PA
For the Data Scientist
directly
SAP Enable Now
Management Manager
The platform for cooperation, learning, and performance tracking
Role-based view and permission to the content production scenario, enabling collaboration in the creation of
content. It allows to role out content to end users and to access the content usage reports.
Content
Creation
Instant Producer
The intuituive process recorder
To create simulations for
informal knowledge transfer
and providing initial recordings
to content developers
Web Editor
Online editing of contents
Enables content editing
even without local
installation and
on mobile
Producer
The powerful authoring tool for
creating application training
to create, edit, maintain, localize,
organize and publish any SAP
Enable Now content.
Video
eCatt
SolmanDelivery Desktop Assistant/Web Assistant
The performance support assistant
in your live-system or web-interface
Both assistants are just player
components for EPSS content
Knowledge Portal
One direct access to all
information and links
Offer employees a
dedicated contact point
Scorm
Embed SAP
Enable Now
Contents in
an LMS
Internal© 2017 SAP SE or an SAP affiliate company. All rights reserved. ǀ
Thank you.
Cengiz Akgun
MDS ap Turkey

Contenu connexe

Tendances

SAP HANA Advanced Analytics
SAP HANA Advanced Analytics SAP HANA Advanced Analytics
SAP HANA Advanced Analytics SAP Technology
 
Leveraging SAP, Hadoop, and Big Data to Redefine Business
Leveraging SAP, Hadoop, and Big Data to Redefine BusinessLeveraging SAP, Hadoop, and Big Data to Redefine Business
Leveraging SAP, Hadoop, and Big Data to Redefine BusinessDataWorks Summit
 
SAP Helps Reduce Silos Between Business and Spatial Data
SAP Helps Reduce Silos Between Business and Spatial DataSAP Helps Reduce Silos Between Business and Spatial Data
SAP Helps Reduce Silos Between Business and Spatial DataSAP Technology
 
HANA SPS07 Geospatial Processing
HANA SPS07 Geospatial ProcessingHANA SPS07 Geospatial Processing
HANA SPS07 Geospatial ProcessingSAP Technology
 
Build and run an sql data warehouse on sap hana
Build and run an sql data warehouse on sap hanaBuild and run an sql data warehouse on sap hana
Build and run an sql data warehouse on sap hanaLuc Vanrobays
 
NRB - LUXEMBOURG MAINFRAME DAY 2017 - Data Spark and the Data Federation
NRB - LUXEMBOURG MAINFRAME DAY 2017 - Data Spark and the Data FederationNRB - LUXEMBOURG MAINFRAME DAY 2017 - Data Spark and the Data Federation
NRB - LUXEMBOURG MAINFRAME DAY 2017 - Data Spark and the Data FederationNRB
 
sap hana|sap hana database| Introduction to sap hana
sap hana|sap hana database| Introduction to sap hanasap hana|sap hana database| Introduction to sap hana
sap hana|sap hana database| Introduction to sap hanaJames L. Lee
 
Oracle BI Hybrid BI : Mode 1 + Mode 2, Cloud + On-Premise Business Analytics
Oracle BI Hybrid BI : Mode 1 + Mode 2, Cloud + On-Premise Business AnalyticsOracle BI Hybrid BI : Mode 1 + Mode 2, Cloud + On-Premise Business Analytics
Oracle BI Hybrid BI : Mode 1 + Mode 2, Cloud + On-Premise Business AnalyticsMark Rittman
 
Advanced analytics with sap hana and r
Advanced analytics with sap hana and rAdvanced analytics with sap hana and r
Advanced analytics with sap hana and rSAP Technology
 
What's Planned for SAP HANA SPS10
What's Planned for SAP HANA SPS10What's Planned for SAP HANA SPS10
What's Planned for SAP HANA SPS10SAP Technology
 
Hadoop World 2011: Big Data Architecture: Integrating Hadoop with Other Enter...
Hadoop World 2011: Big Data Architecture: Integrating Hadoop with Other Enter...Hadoop World 2011: Big Data Architecture: Integrating Hadoop with Other Enter...
Hadoop World 2011: Big Data Architecture: Integrating Hadoop with Other Enter...Cloudera, Inc.
 
SAP HANA SPS10- Enterprise Information Management
SAP HANA SPS10- Enterprise Information ManagementSAP HANA SPS10- Enterprise Information Management
SAP HANA SPS10- Enterprise Information ManagementSAP Technology
 
SAP Lambda Architecture Point of View
SAP Lambda Architecture Point of ViewSAP Lambda Architecture Point of View
SAP Lambda Architecture Point of ViewSnehanshu Shah
 
Sap hana studio_overview
Sap hana studio_overviewSap hana studio_overview
Sap hana studio_overviewArun Singhania
 
Dmm302 - Sap Hana Data Warehousing: Models for Sap Bw and SQL DW on SAP HANA
Dmm302 - Sap Hana Data Warehousing: Models for Sap Bw and SQL DW on SAP HANA Dmm302 - Sap Hana Data Warehousing: Models for Sap Bw and SQL DW on SAP HANA
Dmm302 - Sap Hana Data Warehousing: Models for Sap Bw and SQL DW on SAP HANA Luc Vanrobays
 
Dmm212 – Sap Hana Graph Processing
Dmm212 – Sap Hana  Graph ProcessingDmm212 – Sap Hana  Graph Processing
Dmm212 – Sap Hana Graph ProcessingLuc Vanrobays
 

Tendances (20)

SAP HANA Advanced Analytics
SAP HANA Advanced Analytics SAP HANA Advanced Analytics
SAP HANA Advanced Analytics
 
Leveraging SAP, Hadoop, and Big Data to Redefine Business
Leveraging SAP, Hadoop, and Big Data to Redefine BusinessLeveraging SAP, Hadoop, and Big Data to Redefine Business
Leveraging SAP, Hadoop, and Big Data to Redefine Business
 
SAP Helps Reduce Silos Between Business and Spatial Data
SAP Helps Reduce Silos Between Business and Spatial DataSAP Helps Reduce Silos Between Business and Spatial Data
SAP Helps Reduce Silos Between Business and Spatial Data
 
HANA SPS07 Geospatial Processing
HANA SPS07 Geospatial ProcessingHANA SPS07 Geospatial Processing
HANA SPS07 Geospatial Processing
 
Build and run an sql data warehouse on sap hana
Build and run an sql data warehouse on sap hanaBuild and run an sql data warehouse on sap hana
Build and run an sql data warehouse on sap hana
 
SAP HANA Database
SAP HANA DatabaseSAP HANA Database
SAP HANA Database
 
NRB - LUXEMBOURG MAINFRAME DAY 2017 - Data Spark and the Data Federation
NRB - LUXEMBOURG MAINFRAME DAY 2017 - Data Spark and the Data FederationNRB - LUXEMBOURG MAINFRAME DAY 2017 - Data Spark and the Data Federation
NRB - LUXEMBOURG MAINFRAME DAY 2017 - Data Spark and the Data Federation
 
sap hana|sap hana database| Introduction to sap hana
sap hana|sap hana database| Introduction to sap hanasap hana|sap hana database| Introduction to sap hana
sap hana|sap hana database| Introduction to sap hana
 
Oracle BI Hybrid BI : Mode 1 + Mode 2, Cloud + On-Premise Business Analytics
Oracle BI Hybrid BI : Mode 1 + Mode 2, Cloud + On-Premise Business AnalyticsOracle BI Hybrid BI : Mode 1 + Mode 2, Cloud + On-Premise Business Analytics
Oracle BI Hybrid BI : Mode 1 + Mode 2, Cloud + On-Premise Business Analytics
 
Advanced analytics with sap hana and r
Advanced analytics with sap hana and rAdvanced analytics with sap hana and r
Advanced analytics with sap hana and r
 
What's Planned for SAP HANA SPS10
What's Planned for SAP HANA SPS10What's Planned for SAP HANA SPS10
What's Planned for SAP HANA SPS10
 
SAP Hana Overview
SAP Hana OverviewSAP Hana Overview
SAP Hana Overview
 
Hadoop World 2011: Big Data Architecture: Integrating Hadoop with Other Enter...
Hadoop World 2011: Big Data Architecture: Integrating Hadoop with Other Enter...Hadoop World 2011: Big Data Architecture: Integrating Hadoop with Other Enter...
Hadoop World 2011: Big Data Architecture: Integrating Hadoop with Other Enter...
 
SAP_HANA_FAQ
SAP_HANA_FAQSAP_HANA_FAQ
SAP_HANA_FAQ
 
SAP HANA SPS10- Enterprise Information Management
SAP HANA SPS10- Enterprise Information ManagementSAP HANA SPS10- Enterprise Information Management
SAP HANA SPS10- Enterprise Information Management
 
SAP Lambda Architecture Point of View
SAP Lambda Architecture Point of ViewSAP Lambda Architecture Point of View
SAP Lambda Architecture Point of View
 
Sap hana studio_overview
Sap hana studio_overviewSap hana studio_overview
Sap hana studio_overview
 
Dmm302 - Sap Hana Data Warehousing: Models for Sap Bw and SQL DW on SAP HANA
Dmm302 - Sap Hana Data Warehousing: Models for Sap Bw and SQL DW on SAP HANA Dmm302 - Sap Hana Data Warehousing: Models for Sap Bw and SQL DW on SAP HANA
Dmm302 - Sap Hana Data Warehousing: Models for Sap Bw and SQL DW on SAP HANA
 
SAP HANA and SAP Vora
SAP HANA and SAP VoraSAP HANA and SAP Vora
SAP HANA and SAP Vora
 
Dmm212 – Sap Hana Graph Processing
Dmm212 – Sap Hana  Graph ProcessingDmm212 – Sap Hana  Graph Processing
Dmm212 – Sap Hana Graph Processing
 

Similaire à MDS ap_OEM Product Portfolio Intorduction to the DT & Analytics

HIF Paris 2014 - SAP - SAP HANA : bien plus qu’une base de données en mémoire
HIF Paris 2014 - SAP - SAP HANA : bien plus qu’une base de données en mémoireHIF Paris 2014 - SAP - SAP HANA : bien plus qu’une base de données en mémoire
HIF Paris 2014 - SAP - SAP HANA : bien plus qu’une base de données en mémoireHitachi Data Systems France
 
Apache Spark – The New Enterprise Backbone for ETL, Batch Processing and Real...
Apache Spark – The New Enterprise Backbone for ETL, Batch Processing and Real...Apache Spark – The New Enterprise Backbone for ETL, Batch Processing and Real...
Apache Spark – The New Enterprise Backbone for ETL, Batch Processing and Real...Impetus Technologies
 
Bring Your SAP and Enterprise Data to Hadoop, Kafka, and the Cloud
Bring Your SAP and Enterprise Data to Hadoop, Kafka, and the CloudBring Your SAP and Enterprise Data to Hadoop, Kafka, and the Cloud
Bring Your SAP and Enterprise Data to Hadoop, Kafka, and the CloudDataWorks Summit
 
Comment rendre votre architecture BI plus flexible avec HANA?
Comment rendre votre architecture BI plus flexible avec HANA?Comment rendre votre architecture BI plus flexible avec HANA?
Comment rendre votre architecture BI plus flexible avec HANA?agileDSS
 
Development to Deployment with SAP HANA
Development to Deployment with SAP HANADevelopment to Deployment with SAP HANA
Development to Deployment with SAP HANACraig Cmehil
 
What's New in SPS11 Overview
What's New in SPS11 OverviewWhat's New in SPS11 Overview
What's New in SPS11 OverviewSAP Technology
 
Modernizing Business Processes with Big Data: Real-World Use Cases for Produc...
Modernizing Business Processes with Big Data: Real-World Use Cases for Produc...Modernizing Business Processes with Big Data: Real-World Use Cases for Produc...
Modernizing Business Processes with Big Data: Real-World Use Cases for Produc...DataWorks Summit/Hadoop Summit
 
Business objects data services in an sap landscape
Business objects data services in an sap landscapeBusiness objects data services in an sap landscape
Business objects data services in an sap landscapePradeep Ketoli
 
Extend SAP S/4HANA to deliver real-time intelligent processes
Extend SAP S/4HANA to deliver real-time intelligent processesExtend SAP S/4HANA to deliver real-time intelligent processes
Extend SAP S/4HANA to deliver real-time intelligent processesSAP Technology
 
5507832a c074-4013-9d49-6e58befa9c3e-161121113026
5507832a c074-4013-9d49-6e58befa9c3e-1611211130265507832a c074-4013-9d49-6e58befa9c3e-161121113026
5507832a c074-4013-9d49-6e58befa9c3e-161121113026Krishna Kiran
 
Business intelligence in the era of big data
Business intelligence in the era of big dataBusiness intelligence in the era of big data
Business intelligence in the era of big dataJC Raveneau
 
97. SAP HANA como plataforma de desarrollo, combinando el mundo OLTP + OLAP
97. SAP HANA como plataforma de desarrollo, combinando el mundo OLTP + OLAP97. SAP HANA como plataforma de desarrollo, combinando el mundo OLTP + OLAP
97. SAP HANA como plataforma de desarrollo, combinando el mundo OLTP + OLAPGeneXus
 
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...Hortonworks
 
Hana To Go Presentation Final With Demo Screen Shots Nov8
Hana To Go Presentation Final With Demo Screen Shots Nov8Hana To Go Presentation Final With Demo Screen Shots Nov8
Hana To Go Presentation Final With Demo Screen Shots Nov8Doug Berry
 
Oracle BI 11g Insync presentation
Oracle BI 11g Insync presentationOracle BI 11g Insync presentation
Oracle BI 11g Insync presentationInSync Conference
 
Accelerate your journey to SAP S/4HANA with SAP’s Business Technology Platform
Accelerate your journey to SAP S/4HANA with SAP’s Business Technology PlatformAccelerate your journey to SAP S/4HANA with SAP’s Business Technology Platform
Accelerate your journey to SAP S/4HANA with SAP’s Business Technology PlatformSAP Technology
 
Track B-1 建構新世代的智慧數據平台
Track B-1 建構新世代的智慧數據平台Track B-1 建構新世代的智慧數據平台
Track B-1 建構新世代的智慧數據平台Etu Solution
 

Similaire à MDS ap_OEM Product Portfolio Intorduction to the DT & Analytics (20)

HIF Paris 2014 - SAP - SAP HANA : bien plus qu’une base de données en mémoire
HIF Paris 2014 - SAP - SAP HANA : bien plus qu’une base de données en mémoireHIF Paris 2014 - SAP - SAP HANA : bien plus qu’une base de données en mémoire
HIF Paris 2014 - SAP - SAP HANA : bien plus qu’une base de données en mémoire
 
Apache Spark – The New Enterprise Backbone for ETL, Batch Processing and Real...
Apache Spark – The New Enterprise Backbone for ETL, Batch Processing and Real...Apache Spark – The New Enterprise Backbone for ETL, Batch Processing and Real...
Apache Spark – The New Enterprise Backbone for ETL, Batch Processing and Real...
 
Bring Your SAP and Enterprise Data to Hadoop, Kafka, and the Cloud
Bring Your SAP and Enterprise Data to Hadoop, Kafka, and the CloudBring Your SAP and Enterprise Data to Hadoop, Kafka, and the Cloud
Bring Your SAP and Enterprise Data to Hadoop, Kafka, and the Cloud
 
Comment rendre votre architecture BI plus flexible avec HANA?
Comment rendre votre architecture BI plus flexible avec HANA?Comment rendre votre architecture BI plus flexible avec HANA?
Comment rendre votre architecture BI plus flexible avec HANA?
 
Development to Deployment with SAP HANA
Development to Deployment with SAP HANADevelopment to Deployment with SAP HANA
Development to Deployment with SAP HANA
 
What's New in SPS11 Overview
What's New in SPS11 OverviewWhat's New in SPS11 Overview
What's New in SPS11 Overview
 
Modernizing Business Processes with Big Data: Real-World Use Cases for Produc...
Modernizing Business Processes with Big Data: Real-World Use Cases for Produc...Modernizing Business Processes with Big Data: Real-World Use Cases for Produc...
Modernizing Business Processes with Big Data: Real-World Use Cases for Produc...
 
Business objects data services in an sap landscape
Business objects data services in an sap landscapeBusiness objects data services in an sap landscape
Business objects data services in an sap landscape
 
SAP HORTONWORKS
SAP HORTONWORKSSAP HORTONWORKS
SAP HORTONWORKS
 
Extend SAP S/4HANA to deliver real-time intelligent processes
Extend SAP S/4HANA to deliver real-time intelligent processesExtend SAP S/4HANA to deliver real-time intelligent processes
Extend SAP S/4HANA to deliver real-time intelligent processes
 
5507832a c074-4013-9d49-6e58befa9c3e-161121113026
5507832a c074-4013-9d49-6e58befa9c3e-1611211130265507832a c074-4013-9d49-6e58befa9c3e-161121113026
5507832a c074-4013-9d49-6e58befa9c3e-161121113026
 
HANA
HANAHANA
HANA
 
Business intelligence in the era of big data
Business intelligence in the era of big dataBusiness intelligence in the era of big data
Business intelligence in the era of big data
 
97. SAP HANA como plataforma de desarrollo, combinando el mundo OLTP + OLAP
97. SAP HANA como plataforma de desarrollo, combinando el mundo OLTP + OLAP97. SAP HANA como plataforma de desarrollo, combinando el mundo OLTP + OLAP
97. SAP HANA como plataforma de desarrollo, combinando el mundo OLTP + OLAP
 
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
 
Hana To Go Presentation Final With Demo Screen Shots Nov8
Hana To Go Presentation Final With Demo Screen Shots Nov8Hana To Go Presentation Final With Demo Screen Shots Nov8
Hana To Go Presentation Final With Demo Screen Shots Nov8
 
Oracle BI 11g Insync presentation
Oracle BI 11g Insync presentationOracle BI 11g Insync presentation
Oracle BI 11g Insync presentation
 
Accelerate your journey to SAP S/4HANA with SAP’s Business Technology Platform
Accelerate your journey to SAP S/4HANA with SAP’s Business Technology PlatformAccelerate your journey to SAP S/4HANA with SAP’s Business Technology Platform
Accelerate your journey to SAP S/4HANA with SAP’s Business Technology Platform
 
Sap Bw 3.5 Overview
Sap Bw 3.5 OverviewSap Bw 3.5 Overview
Sap Bw 3.5 Overview
 
Track B-1 建構新世代的智慧數據平台
Track B-1 建構新世代的智慧數據平台Track B-1 建構新世代的智慧數據平台
Track B-1 建構新世代的智慧數據平台
 

Plus de MDS ap

Porzadek danych w procesach transformacji cyfrowej
Porzadek danych w procesach transformacji cyfrowejPorzadek danych w procesach transformacji cyfrowej
Porzadek danych w procesach transformacji cyfrowejMDS ap
 
A Hitchhiker’s Guide to the Digital Economy for Banks by Ilker Tasdemir
A Hitchhiker’s Guide to the Digital Economy for Banks by Ilker TasdemirA Hitchhiker’s Guide to the Digital Economy for Banks by Ilker Tasdemir
A Hitchhiker’s Guide to the Digital Economy for Banks by Ilker TasdemirMDS ap
 
Gdzie jest Jan K. PESEL, dlaczego przetwarzamy jego dane osobowe?
Gdzie jest Jan K. PESEL, dlaczego przetwarzamy jego dane osobowe?Gdzie jest Jan K. PESEL, dlaczego przetwarzamy jego dane osobowe?
Gdzie jest Jan K. PESEL, dlaczego przetwarzamy jego dane osobowe?MDS ap
 
Kişisel Verilerin Korunması Kanununun Kurumlar için Önemi, Prof. Dr. Faruk Bi...
Kişisel Verilerin Korunması Kanununun Kurumlar için Önemi, Prof. Dr. Faruk Bi...Kişisel Verilerin Korunması Kanununun Kurumlar için Önemi, Prof. Dr. Faruk Bi...
Kişisel Verilerin Korunması Kanununun Kurumlar için Önemi, Prof. Dr. Faruk Bi...MDS ap
 
Analityka predykcyjna Mds ap April 2018
Analityka predykcyjna Mds ap April 2018Analityka predykcyjna Mds ap April 2018
Analityka predykcyjna Mds ap April 2018MDS ap
 
Digital Innovations in Banking
Digital Innovations in BankingDigital Innovations in Banking
Digital Innovations in BankingMDS ap
 
(cesky) MDS ap a Sybase jak pokracujeme a co nabizime?
(cesky) MDS ap a Sybase jak pokracujeme a co nabizime?(cesky) MDS ap a Sybase jak pokracujeme a co nabizime?
(cesky) MDS ap a Sybase jak pokracujeme a co nabizime?MDS ap
 
SAP Forum Ankara 2018 - IETT RITIM Başarı Hikayesi
SAP Forum Ankara 2018 - IETT RITIM Başarı HikayesiSAP Forum Ankara 2018 - IETT RITIM Başarı Hikayesi
SAP Forum Ankara 2018 - IETT RITIM Başarı HikayesiMDS ap
 
Innovation Through Digital Is Now
Innovation Through Digital Is NowInnovation Through Digital Is Now
Innovation Through Digital Is NowMDS ap
 
BI Journey of Rotana Hotel Management Corporation
BI Journey of Rotana Hotel Management Corporation BI Journey of Rotana Hotel Management Corporation
BI Journey of Rotana Hotel Management Corporation MDS ap
 
(Polish) Integracja i wizualizacja w lumira 2.0 pga
(Polish) Integracja i wizualizacja w lumira 2.0 pga(Polish) Integracja i wizualizacja w lumira 2.0 pga
(Polish) Integracja i wizualizacja w lumira 2.0 pgaMDS ap
 
(Turkish) SAP Forum 2017: ING Bank Başarı Hikayesi Sunumu - Kurumsal Bilgi Yö...
(Turkish) SAP Forum 2017: ING Bank Başarı Hikayesi Sunumu - Kurumsal Bilgi Yö...(Turkish) SAP Forum 2017: ING Bank Başarı Hikayesi Sunumu - Kurumsal Bilgi Yö...
(Turkish) SAP Forum 2017: ING Bank Başarı Hikayesi Sunumu - Kurumsal Bilgi Yö...MDS ap
 
MEBIS 2017: Next Generation Banking Analytics
MEBIS 2017: Next Generation Banking AnalyticsMEBIS 2017: Next Generation Banking Analytics
MEBIS 2017: Next Generation Banking AnalyticsMDS ap
 
(Turkish) Gerçek Zamanlı Pazarlama Stratejilerini SAP Hybris İle Hayata Geçirme
(Turkish) Gerçek Zamanlı Pazarlama Stratejilerini SAP Hybris İle Hayata Geçirme(Turkish) Gerçek Zamanlı Pazarlama Stratejilerini SAP Hybris İle Hayata Geçirme
(Turkish) Gerçek Zamanlı Pazarlama Stratejilerini SAP Hybris İle Hayata GeçirmeMDS ap
 
MEFTECH 2017: Next Generation Banking Analytics presentation
MEFTECH 2017: Next Generation Banking Analytics presentationMEFTECH 2017: Next Generation Banking Analytics presentation
MEFTECH 2017: Next Generation Banking Analytics presentationMDS ap
 
SAP Forum Ankara 2017 - "Kisisel Veri Yasasi Hepimizi İlgilendiriyor"
SAP Forum Ankara 2017 - "Kisisel Veri Yasasi Hepimizi İlgilendiriyor"SAP Forum Ankara 2017 - "Kisisel Veri Yasasi Hepimizi İlgilendiriyor"
SAP Forum Ankara 2017 - "Kisisel Veri Yasasi Hepimizi İlgilendiriyor"MDS ap
 
SAP Forum Ankara 2017 - "Verinin Merkezine Seyahat"
SAP Forum Ankara 2017 - "Verinin Merkezine Seyahat"SAP Forum Ankara 2017 - "Verinin Merkezine Seyahat"
SAP Forum Ankara 2017 - "Verinin Merkezine Seyahat"MDS ap
 

Plus de MDS ap (17)

Porzadek danych w procesach transformacji cyfrowej
Porzadek danych w procesach transformacji cyfrowejPorzadek danych w procesach transformacji cyfrowej
Porzadek danych w procesach transformacji cyfrowej
 
A Hitchhiker’s Guide to the Digital Economy for Banks by Ilker Tasdemir
A Hitchhiker’s Guide to the Digital Economy for Banks by Ilker TasdemirA Hitchhiker’s Guide to the Digital Economy for Banks by Ilker Tasdemir
A Hitchhiker’s Guide to the Digital Economy for Banks by Ilker Tasdemir
 
Gdzie jest Jan K. PESEL, dlaczego przetwarzamy jego dane osobowe?
Gdzie jest Jan K. PESEL, dlaczego przetwarzamy jego dane osobowe?Gdzie jest Jan K. PESEL, dlaczego przetwarzamy jego dane osobowe?
Gdzie jest Jan K. PESEL, dlaczego przetwarzamy jego dane osobowe?
 
Kişisel Verilerin Korunması Kanununun Kurumlar için Önemi, Prof. Dr. Faruk Bi...
Kişisel Verilerin Korunması Kanununun Kurumlar için Önemi, Prof. Dr. Faruk Bi...Kişisel Verilerin Korunması Kanununun Kurumlar için Önemi, Prof. Dr. Faruk Bi...
Kişisel Verilerin Korunması Kanununun Kurumlar için Önemi, Prof. Dr. Faruk Bi...
 
Analityka predykcyjna Mds ap April 2018
Analityka predykcyjna Mds ap April 2018Analityka predykcyjna Mds ap April 2018
Analityka predykcyjna Mds ap April 2018
 
Digital Innovations in Banking
Digital Innovations in BankingDigital Innovations in Banking
Digital Innovations in Banking
 
(cesky) MDS ap a Sybase jak pokracujeme a co nabizime?
(cesky) MDS ap a Sybase jak pokracujeme a co nabizime?(cesky) MDS ap a Sybase jak pokracujeme a co nabizime?
(cesky) MDS ap a Sybase jak pokracujeme a co nabizime?
 
SAP Forum Ankara 2018 - IETT RITIM Başarı Hikayesi
SAP Forum Ankara 2018 - IETT RITIM Başarı HikayesiSAP Forum Ankara 2018 - IETT RITIM Başarı Hikayesi
SAP Forum Ankara 2018 - IETT RITIM Başarı Hikayesi
 
Innovation Through Digital Is Now
Innovation Through Digital Is NowInnovation Through Digital Is Now
Innovation Through Digital Is Now
 
BI Journey of Rotana Hotel Management Corporation
BI Journey of Rotana Hotel Management Corporation BI Journey of Rotana Hotel Management Corporation
BI Journey of Rotana Hotel Management Corporation
 
(Polish) Integracja i wizualizacja w lumira 2.0 pga
(Polish) Integracja i wizualizacja w lumira 2.0 pga(Polish) Integracja i wizualizacja w lumira 2.0 pga
(Polish) Integracja i wizualizacja w lumira 2.0 pga
 
(Turkish) SAP Forum 2017: ING Bank Başarı Hikayesi Sunumu - Kurumsal Bilgi Yö...
(Turkish) SAP Forum 2017: ING Bank Başarı Hikayesi Sunumu - Kurumsal Bilgi Yö...(Turkish) SAP Forum 2017: ING Bank Başarı Hikayesi Sunumu - Kurumsal Bilgi Yö...
(Turkish) SAP Forum 2017: ING Bank Başarı Hikayesi Sunumu - Kurumsal Bilgi Yö...
 
MEBIS 2017: Next Generation Banking Analytics
MEBIS 2017: Next Generation Banking AnalyticsMEBIS 2017: Next Generation Banking Analytics
MEBIS 2017: Next Generation Banking Analytics
 
(Turkish) Gerçek Zamanlı Pazarlama Stratejilerini SAP Hybris İle Hayata Geçirme
(Turkish) Gerçek Zamanlı Pazarlama Stratejilerini SAP Hybris İle Hayata Geçirme(Turkish) Gerçek Zamanlı Pazarlama Stratejilerini SAP Hybris İle Hayata Geçirme
(Turkish) Gerçek Zamanlı Pazarlama Stratejilerini SAP Hybris İle Hayata Geçirme
 
MEFTECH 2017: Next Generation Banking Analytics presentation
MEFTECH 2017: Next Generation Banking Analytics presentationMEFTECH 2017: Next Generation Banking Analytics presentation
MEFTECH 2017: Next Generation Banking Analytics presentation
 
SAP Forum Ankara 2017 - "Kisisel Veri Yasasi Hepimizi İlgilendiriyor"
SAP Forum Ankara 2017 - "Kisisel Veri Yasasi Hepimizi İlgilendiriyor"SAP Forum Ankara 2017 - "Kisisel Veri Yasasi Hepimizi İlgilendiriyor"
SAP Forum Ankara 2017 - "Kisisel Veri Yasasi Hepimizi İlgilendiriyor"
 
SAP Forum Ankara 2017 - "Verinin Merkezine Seyahat"
SAP Forum Ankara 2017 - "Verinin Merkezine Seyahat"SAP Forum Ankara 2017 - "Verinin Merkezine Seyahat"
SAP Forum Ankara 2017 - "Verinin Merkezine Seyahat"
 

Dernier

Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)jennyeacort
 
办理学位证纽约大学毕业证(NYU毕业证书)原版一比一
办理学位证纽约大学毕业证(NYU毕业证书)原版一比一办理学位证纽约大学毕业证(NYU毕业证书)原版一比一
办理学位证纽约大学毕业证(NYU毕业证书)原版一比一fhwihughh
 
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSINGmarianagonzalez07
 
DBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfDBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfJohn Sterrett
 
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...GQ Research
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdfHuman37
 
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDINTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDRafezzaman
 
Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 217djon017
 
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一F sss
 
Predicting Salary Using Data Science: A Comprehensive Analysis.pdf
Predicting Salary Using Data Science: A Comprehensive Analysis.pdfPredicting Salary Using Data Science: A Comprehensive Analysis.pdf
Predicting Salary Using Data Science: A Comprehensive Analysis.pdfBoston Institute of Analytics
 
Effects of Smartphone Addiction on the Academic Performances of Grades 9 to 1...
Effects of Smartphone Addiction on the Academic Performances of Grades 9 to 1...Effects of Smartphone Addiction on the Academic Performances of Grades 9 to 1...
Effects of Smartphone Addiction on the Academic Performances of Grades 9 to 1...limedy534
 
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...dajasot375
 
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样vhwb25kk
 
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default  Presentation : Data Analysis Project PPTPredictive Analysis for Loan Default  Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPTBoston Institute of Analytics
 
Heart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis ProjectHeart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis ProjectBoston Institute of Analytics
 
NLP Project PPT: Flipkart Product Reviews through NLP Data Science.pptx
NLP Project PPT: Flipkart Product Reviews through NLP Data Science.pptxNLP Project PPT: Flipkart Product Reviews through NLP Data Science.pptx
NLP Project PPT: Flipkart Product Reviews through NLP Data Science.pptxBoston Institute of Analytics
 
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改yuu sss
 
RadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfRadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfgstagge
 
Machine learning classification ppt.ppt
Machine learning classification  ppt.pptMachine learning classification  ppt.ppt
Machine learning classification ppt.pptamreenkhanum0307
 

Dernier (20)

Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
 
办理学位证纽约大学毕业证(NYU毕业证书)原版一比一
办理学位证纽约大学毕业证(NYU毕业证书)原版一比一办理学位证纽约大学毕业证(NYU毕业证书)原版一比一
办理学位证纽约大学毕业证(NYU毕业证书)原版一比一
 
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
 
DBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfDBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdf
 
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf
 
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDINTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
 
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
 
Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2
 
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
 
Predicting Salary Using Data Science: A Comprehensive Analysis.pdf
Predicting Salary Using Data Science: A Comprehensive Analysis.pdfPredicting Salary Using Data Science: A Comprehensive Analysis.pdf
Predicting Salary Using Data Science: A Comprehensive Analysis.pdf
 
Effects of Smartphone Addiction on the Academic Performances of Grades 9 to 1...
Effects of Smartphone Addiction on the Academic Performances of Grades 9 to 1...Effects of Smartphone Addiction on the Academic Performances of Grades 9 to 1...
Effects of Smartphone Addiction on the Academic Performances of Grades 9 to 1...
 
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
 
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
 
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default  Presentation : Data Analysis Project PPTPredictive Analysis for Loan Default  Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPT
 
Heart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis ProjectHeart Disease Classification Report: A Data Analysis Project
Heart Disease Classification Report: A Data Analysis Project
 
NLP Project PPT: Flipkart Product Reviews through NLP Data Science.pptx
NLP Project PPT: Flipkart Product Reviews through NLP Data Science.pptxNLP Project PPT: Flipkart Product Reviews through NLP Data Science.pptx
NLP Project PPT: Flipkart Product Reviews through NLP Data Science.pptx
 
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
 
RadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdfRadioAdProWritingCinderellabyButleri.pdf
RadioAdProWritingCinderellabyButleri.pdf
 
Machine learning classification ppt.ppt
Machine learning classification  ppt.pptMachine learning classification  ppt.ppt
Machine learning classification ppt.ppt
 

MDS ap_OEM Product Portfolio Intorduction to the DT & Analytics

  • 1. Internal OEM Product Portfolio Introduction to the DT & Analytics Cengiz Akgun, MDS ap April, 2018 Internal
  • 3. DATABASE MANAGEMENT Web Server JavaScript Graphic Modeler Data Virtualization ELT & Replication Columnar OLTP+OLAP Multi-Core & Parallelization Advanced Compression Multi-tenancy Multi-Tier Storage Graph Predictive Search Data Quality Series Data Business Functions Hadoop & Spark Integration Streaming Analytics Application Lifecycle Management High Availability & Disaster Recovery OpennessData Modeling Admin & Security Remote Data Sync Spatial Text Analytics Fiori UX ALM </> APPLICATION DEVELOPMENT DATA INTEGRATION & QUALITYADVANCED ANALYTICAL PROCESSING SAP HANA Platform The data management and application platform for all applications SAP, ISV and Custom Applications All Devices OLTP + OLAPONE Open Platform ONE Copy of the Data S A P H A N A P L A T F O R M
  • 4. SAP SQL Anywhere Product description SAP SQLAnywhere is a comprehensive data management and synchronization technology targeting embedded, remote/satellite, mobile, and Internet of Things (IoT) environments. Zero-admin, full-featured RDBMS ▪ Able to dynamically adjust to installed environments, automatically tune performance, automate common administration tasks while delivering impressive performance “out of the box” Fully embeddable in ISV systems ▪ Rich SQL language, support for broad range of industry standard interfaces, zero admin capabilities, wide range of deployment options ▪ High availability, FIPS security, Unix, Linux, Windows and iOS support Bidirectional synchronization with enterprise DBMS systems ▪ Secure sync with SAP HANA, SAPASE, and third-party DMBS systems
  • 5. SAP Adaptive Server Enterprise (SAP ASE) Product description SAP ASE is a high-performance relational enterprise database management system that is designed for mission-critical, transaction-intensive environments for custom-developed and SAP Business Suite applications with reduced TCO. Mission-critical, transaction-intensive workloads Database engine focusing on eXtreme Online Transaction Processing (XOLTP) – leveraging in-memory processing techniques for linear scalability – scale up versus scale out Fewer resources used to achieve best performance with easier management Trusted legacy for performance and robustness Used to manage many of Wall Street’s largest trading environments Used to manage over 10,000 customer systems running SAP Business Suite High secure system with LDAP, SSL and Encryption support Reduced TCO Enterprise & Edge Edition with Built-in DR solution Semantic Partitioning and Compression Database Memscale, Workload Analyzer and Always-On options
  • 6. SAP IQ Product description SAP IQ is a disk-backed columnar database, designed for analytics and data warehousing. Performance ▪ 10x – 1000x faster queries over traditional, row-based DBMS ▪ High performance data loading Scalability ▪ Store and analyze terabytes to petabytes of structured and unstructured data ▪ Supports heavy ad-hoc query workloads with 1000s of users concurrently TCO ▪ Offers many deployment options: supports all major hardware and OS platforms, both on premise and in cloud ▪ Easy to administer with minimal tuning after initial set up
  • 7. SAP IQ technology across the SAP product portfolio SAP HANA dynamic tiering IQ technology has been integrated with the HANA database as an extended storage disk tier for large volume, infrequently accessed data. SAP BW NLS IQ technology serves as a low TCO, archive store for SAP BW. Historical data is managed on line, with excellent query performance. SAP IQ next to SAP HANA for petabyte scale analytics IQ manages petabytes of raw, structured data.Aggregates are moved into SAP HANA for real-time processing. SAP HANA SAP IQ SAP BW system SAP ERP data SAP IQ NLS Historical data tabletable SAP HANA Database In-memory-store Extended store Column Multistore table Extended Partition Partition Partition
  • 8. SAP Adaptive Server Platform Edition Perpetual Right To Deploy
  • 9. SAP ESP Architecture Application Transactions External Databases Referenc e Data Historical Data Analytic Data Reporting/ BI Tools Spreadsheets/ Visualization Operational Applications HANA InputAdapters OutputAdapters ESP Engine Market Data Feeds Message Bus IT & Network Monitoring Internal Event Streams Complex Event Processing: “When 3 negative comments or suspicious transactions occur in any 5 seconds in Istanbul, check the comment/transaction and execute the workflow”
  • 10. SAP Data Services Data virtualization, data replication, data integration, data quality, and data profiling Key capabilities Access and extract structured and unstructured data, SAP and third-party sources, in batch or real time (message type) Transform, cleanse, match, and consolidate data Scale from single to multiple servers for all volumes of data Support wide variety of SAP and third- party targets, on premise and in the cloud Single Web-based administration and operations user interface Self contained lifecycle management utility with version control system ▪ ▪ ▪ ▪ ▪ ▪
  • 11. SAP Data Hub Simplify, understand, and govern the flow of data at scale SAP Data Hub is a data operations (DataOps) management solution that enables data orchestration, pipelining, and governance, as well as agile sharing of all data across a connected data landscape. Governance and operations ▪ ▪ ▪ ▪ Unified data landscape view Data access and security Data quality profiling Lineage and impact analysis Data pipelines ▪ ▪ ▪ Metadata repository and catalog Data pipeline modeling Data model lifecycle management Data sharing and orchestration ▪ ▪ ▪ ▪ Connectivity management Workflow definition Scheduling and monitoring Enterprise application integration
  • 12. SAP Information Steward – Key Capabilities Profile, Assess, Monitor, Manage and Analyze Data Quality SAP Business Suite SAP BW develop information policies. Databases validation rules and cleansing rules using profiling results. Hadoop quality task ownership of data BI systems ETL tools quality issues with pre-loaded templates Delimited Files Data Modeling tools Sources Data Discovery & Stewardship 5 Analyze data quality using business value analysis to quantify financial impact. 4 Monitor and resolve data quality issues with pre-loade 3 Enable workflow for data quality task ownership of da assets. 2 Define business terms, SAP HANA SAP 1.Discover Information Steward Analyze 2.Define 4.Monitor 3.Workflow 1 Discover business glossary and metadata. Formally
  • 13. SAP PowerDesigner Usage with SAP Product Portfolio
  • 14. SAP BusinessObjects Business Intelligence suite Simple Workflow/Architecture DATA Platform and End-User Tools Access Mobile DevicesOLAPRDBMS Business Intelligence Platform BrowsersERP SAP BW & EDW SAP HANA Platform Embedded Enterprise Content Portals Unstructured data Hadoop MS OfficeMS Excel Enterprise and Ad Hoc Reporting Applications & Dashboards Agile Visualization
  • 15. Universe – Semantic Layer Exposing business data under a single umbrella
  • 16. SAP Crystal Reports For Highly Formatted Operational and Enterprise Reports ▪ ANY data Ideal for ▪ Customer statements, invoices, POs, bills ▪ Operational reporting ▪ Embedded reporting in applications Use Cases include ▪ 1 to Many Design and Deploy Pixel-perfect Reporting Powerful API to Embed Reports Optimized for High-volume Reporting
  • 17. SAP BusinessObjects Web Intelligence For Self-service, Ad-hoc Query and Reporting ▪ Corporate data via Universe ▪ HANA data Ideal for ▪ Self-service reporting and rapid report creation (market-leading with 25,000+ customers) ▪ Interactive analysis and reporting with no coding required Use Cases Include ▪ Self-Service ▪ 1 to Many Design and Deploy Ad-hoc Reporting & Queries Simplicity via the Semantic Layer Drill down, Slice & Dice, & Customize
  • 18. SAP BusinessObjects Lumira For Visual Discovery and Storytelling by Business People of All Skills Agility for Business Analysts Instant Insight for Decision Makers HTML5 Based with Prebuilt Components ▪ ANY data: Corporate, Personal, HANA, BW, 3rd part, custom Ideal for ▪ Visual data discovery ▪ Need to perform analysis on mashed-up data from many disparate sources Use Cases include ▪ Self-Service ▪ 1 to Many Design and Deploy
  • 19. SAP Business Objects Live Office Product Description
  • 20. SAP BusinessObjects BI Suite Mobile Solutions
  • 22. Predict ▪ Customers most likely to churn ▪ Propensity to buy ▪ What part is most likely to fail ▪ What activity is probably fraudulent Forecast ▪ Future revenues ▪ Inventory demand ▪ Orders by segment ▪ Online ads and content demand ▪ Network performance Optimize ▪ Recommended offers ▪ Marketing content ▪ Network or system infrastructure SAP Predictive Analytics Simple, Fast, and Accurate for Analysts and Data Scientists Alike Data Preparation Create 1000’s of derived variables faster Automated Modeling Best performing model automatically chosen Breadth of Connectivity Access departmental and enterprise data No Black Box Support for R Advanced PA For the Data Scientist
  • 23. directly SAP Enable Now Management Manager The platform for cooperation, learning, and performance tracking Role-based view and permission to the content production scenario, enabling collaboration in the creation of content. It allows to role out content to end users and to access the content usage reports. Content Creation Instant Producer The intuituive process recorder To create simulations for informal knowledge transfer and providing initial recordings to content developers Web Editor Online editing of contents Enables content editing even without local installation and on mobile Producer The powerful authoring tool for creating application training to create, edit, maintain, localize, organize and publish any SAP Enable Now content. Video eCatt SolmanDelivery Desktop Assistant/Web Assistant The performance support assistant in your live-system or web-interface Both assistants are just player components for EPSS content Knowledge Portal One direct access to all information and links Offer employees a dedicated contact point Scorm Embed SAP Enable Now Contents in an LMS
  • 24. Internal© 2017 SAP SE or an SAP affiliate company. All rights reserved. ǀ Thank you. Cengiz Akgun MDS ap Turkey