SlideShare uma empresa Scribd logo
1 de 18
Baixar para ler offline
David Rice
IzODA Chief Iteration Manager & Technical Lead of Scale Adoption
drice@us.ibm.com
October 2018
IBM Open Data Analytics for z/OS: z Conference
© 2017 IBM Corporation
2
Trends in the industry: Increasing focus on Real Time
Ø Pervasiveness of Analytics
Ø Business growth
Ø Risk Mitigation
Ø Need for Real-Time
Ø Insight at point of impact
Source & Full Forrester paper: https://www-03.ibm.com/systems/z/solutions/real-time-analytics/data-analysis.html
© 2017 IBM Corporation
3
z/OS
• DB2, IMS, VSAM
• Transactional
Data from
Operational
Systems
• History Data
• Warehouses
Mobile
Chat
Call
Center
Social / Public
Data Scientist
Distributed
• Warehouses
• ODS
• Client Facing Apps
• Departmental
Datamarts
Ø Data / Analytic Currency
Ø Increased security,
governance, privacy risk
Ø Longer ROI for analytic
insights
Ø Added development costs
Ø Data coherency of the lake
Ø Ability to quickly adapt to
suit analytical needs (new
data sources, schemas,
freshness, etc.)
Today’s Typical Current State: migrate all endpoint data to a data ‘lake’, then analyze
• Using an ETL-only approach results in costly side-effects: risk, reduced efficiency and missed opportunity
Challenges
© 2017 IBM Corporation
4
Where do enterprise transactions & data originate?
Data Gravity: Co-locate analytics with data based on value,
volume, rate of change, security…
92 of world’s top 100
banks
10 out of the top 10
insurance organizations
87% of all credit card
transactions and nearly
$8 trillion payments a
year
More than 30 billion
transactions a day,
more than number of
Google searches
64% of Fortune 500 80% of world’s corporate
data
© 2017 IBM Corporation
5
Use Cases Well-Aligned with Analytics on IBM Z
Predominance of data
originates on IBM Z,
z/OS (transactions,
member info,…)
Data volume is large,
distilling data
provides operational
efficiencies
Real-time / near real-
time insights are
valuable
Performance matters
for variety of data on
and off IBM Z
Core transactional
systems of record ae
on IBM Z
Data Gravity
Security / data privacy
needs to be preserved
Podcast: http://www.ibmbigdatahub.com/podcast/making-data-simple-what-data-gravity
© 2017 IBM Corporation
6
Cross Industry Use Case: Modernization, Data Exploration, Hybrid Integration
DB2
z/OS
z/OS
Result Store:
• Frequent
Refresh
• Ease of
Integration
• TCO
advantage
VSAM IMS Hadoop
• Easily blend data from Z and non-Z
• Limit data movement
• Enrich reporting and ad-hoc queries
• Leverage modern, open technologies, skill
Warehouses
Optimized Data Layer
Dashboards, Spreadsheets
Examples: Cognos, Tableau
Ø More current data leveraged across entire infrastructure
Ø Reduced raw data movement costs
Ø Security & data privacy advantages
IBM Open Data Analytics for z/OS
Existing Data Lakes
Business Interfaces
Cloud Platforms
StandardInterfaces
© 2017 IBM Corporation
7
Insurance: Real-Time State of the Business Views
Real-Time Insights
Value: Real-time visualization of state of the business across clients, industries, geographies, products, etc. to determine
profitability, risk assessment, etc. Potential to have current view along with 15-30-60-90 day views for trend analysis
How: Leverage analytics of data in place across various systems, using both internal & external sources
Client 1:
• Life insurance coverage
• Accident coverage
Client 2:
• Vision Coverage
• Accident Risk
Client 3:
• Dental Coverage
• Home coverage
Client 4:
• Disability coverage
• Life Insurance covergae
ProfitabilityView
Activity View
weather
geopolitical
By Industry, product
© 2017 IBM Corporation
8
Use Case - Banking: Enhanced Card Fraud Detection
Existing Rules Engine
• Apply in-house rules for detect
• Invoke 3rd party scores (FICO)
• Apply custom scoring
• Determine Disposition
IBM z/OS
VSAMDB2 IMS
Core Card Process
• Verify, augment data
• Manage workload
• Ensure scale
• Likely: CICS, IMS
Today: Models refreshed periodically, deployment path requires custom coding
Challenge: Emerging fraud pattern detection delayed, model deployment & refresh not agile
Benefit: Current data for modeling, intra-day model refresh, flexibility to add new data via configuration
Point of
sale
systems
ETL
Warehouse
Warehouse
DB2 IMS VSAM
Real Time Analytics: leverage in-place current
access to variety of data sources
• Create Models
• Apply Data Science
• Refresh Models
• Schedule
Deployment
Coding
Deploy
IBM z/OS
© 2017 IBM Corporation
9
Example: Real-Time ACH Analytics for Banking Clients
ACH Processing:
• ACH Payment origination & receipt
• Interaction with Automated Clearing House
verification
• Implementation of NACHA rules
• Defined data formats for exchange of info
IBM z/OS
ACH format
ACH format
ACH format
“All Items”: ACH, POS,
WEB, etc
Batch
Posting
Process
Future:
Real Time
Process
Real-Time Insights
Real-Time Analytics
• Real-time payment and
ACH analytics on RT
payments
• Increased granularity of
compliance / risk / fraud
analytics
• Integration across ACH
and core banking systems
Today: Largely post processed, multi-day verification of ACH rejects, fraud / risk assessment, delay in insights
Challenge: Same-day payments creates requirement to address rejects, fraud immediately, in real-time scope
Benefit: In-place, real-time analytics of ACH data for compliance / fraud risk to address same-day payments, accessing
source data as well as off platform data via federation
1
Warehouse
© 2017 IBM Corporation
10
DB2 z/OS IMS VSAM
z/OS
Optimized
Analytics
Runtime
Enterprise Data
Environments
Ø Leverage most current data, in
place
Ø Flexible structure, rich analytics
runtime co-located data
Ø TCO advantages
Ø Leverage leading open source
technologies & skills
Ø Enable advanced solutions
from IBM and partners
Ø Integrate and differentiate
Apache Spark for
z/OS
Python / Anaconda
Open Source stack
Optimized Data Layer
z/OS
WarehousesHadoop
Distributed
IBM Machine
Learning for
z/OS
Solutions from
SIs & Business
Partners
Other IBM based
solutions &
Client Solutions
Solutions
Example: Federated Analytics, Access to Wide Variety of Data: Modernization, Exploration, Integration2
Optimized Data Layer: Integrated Access to DB2, IMS, IMS raw read , VSAM, PS, PDSE, ADABAS,
IDMS, CICS Queues, Virtual Tape, SMF, Syslog, Oracle Enterprise, Teradata, HDFS… etc
© 2017 IBM Corporation
11
Abstracted
access to z/OS
Data
} from VSAM
} from DB2
Modern Analytic Frameworks &
Tools
3
© 2017 IBM Corporation
12
Value: Reduce Risk à via Simplified Data Privacy via Configuration
Cust_ID Avg
Daily TX
Education Education
Group
Social Security
Number
Investment Avg TX
AMT
Churn Label Age
1009530860 3.9145 2 BS 123-84-9015 114368 2090.32 N 84
1009544000 4.28 2 BS 122-49-3821 90298 2095.04 N 44
1009534260 1.23 2 BS 931-29-0612 94881 1723.59 Y 23
1009574010 0.95 2 BS 491-19-2102 112099 1297.41 Y 24
1009578620 2.73 5 DR 813-90-4183 84638 1333.18 N 67
Features FeaturesNot Feature Not Feature, PII
Cust_ID Avg
Daily TX
Education Education
Group
Investment Avg TX
AMT
Churn Label Age
1009530860 3.9145 2 BS 114368 2090.32 N 84
1009544000 4.28 2 BS 90298 2095.04 N 44
1009534260 1.23 2 BS 94881 1723.59 Y 23
1009574010 0.95 2 BS 112099 1297.41 Y 24
1009578620 2.73 5 DR 84638 1333.18 N 67
View of Table Visible to Data Scientists
Original Table
Sensitive Data
– View presented to
data science
teams can be
different than
original
– Via UI
configuration,
obfuscate or
remove select
columns
– Configure for
varying levels of
access based on
PII designations
– Flexibility for data
protection
4
© 2017 IBM Corporation
13
Apache Spark z/OS: Cost Efficiency & Powerful Data-in-Place Analytics
§ Spark on z/OS joins multiple data types for fast,
complete analytics, without moving the data
§ Test of >350M rows read, parsed, analyzed, and
summarized (approx. 60gig)
§ Average Spark processing times – average of 3
minutes on a single z13 LPAR with 1 GP, 13 zIIPS
and 512Gb memory:
– DB2: 2.35 minutes (4.1 mins.
maximum)
– Flat File: 2.95 minutes (3.2 mins. Maximum)
– VSAM: 2.80 minutes (3.3 mins. Maximum)
DB2
z/OS
Flat file
VSAM
z/OS
JDBC
JDBC
JDBC
88% zIIP
offload
97% zIIP
offload
97% zIIP
offload
Use Case: Large Data Pull --- bring back all 350Million rows from each data
source, touch each data element and run Spark aggregation across all data
Source: IBM Competitive Project Office
5
© 2017 IBM Corporation
14
Apache Spark z/OS: Cost Efficiency & Powerful Data-in-Place Analytics
Trade
166GB
Brokerage aggregation query
workload across Trades tables
from 3 exchanges (over 5
Billion trades, 500GB)
* 3-Year TCA includes 3-year US prices for Hardware, Software, Maintenance and
Support as of 05/16/2016. Price and performance for x86 environment includes cost of
ETL and elapsed time to transfer the data. This is based on an IBM internal study
designed to replicate a typical IBM customer workload usage in the marketplace.
z13-606 + 11 zIIPs
z13-605 Competitor x86 System
Intel E5-2697 v2 2.7GHz 12co
lower TCA*For systems compared67%
$2,105,990
(3 yr. TCA)
$697,106
(3 yr. TCA)
Linux
Apache
Spark
Parquet
z/OS
CICS
DB2
z/OS
CICS
DB2
Apache
Spark
ETL
© 2017 IBM Corporation
15
Minimizing Impact to Production6
Ø Current Challenges:
q Current status quo ETL processes consume GP MIPS, often run during batch window cycles that causes potential
issues for client batch workloads
q Analytics off platform that accesses z/OS data often goes through standard subsystem interfaces for DB2 & IMS,
interfering with bufferpools and resulting in lower zIIP eligibility
Ø Analytics on z/OS has unique features to minimize impact to production workloads:
1. Limit Analytic Workloads’ Access to resources via capping zIIPs & memory; leverage WLM classifications
2. Leverage Unique “Raw-Read” Features – avoid impact to IMS & DB2 subsystems, high zIIP eligibility
3. Leverage Unique DataFrame Store – separate well-formed analytics, persist result, enable off platform
ad-hoc analytics to DataFrame store
4. Analytic workloads are all read-only (no locks held)
© 2017 IBM Corporation
16
Jupyter Demo
© 2017 IBM Corporation
17
Ø Machine Learning and z Systems:
Ø https://www.youtube.com/watch?v=T2HtyNX7aHc
Ø Machine Learning Launch Event interview:
Ø https://www.youtube.com/watch?v=WHenFAa6iPw&feature=youtu.be&list=PLenh213llmca-QogcjfSW9RHPtNye9N_p
Ø Gaining Agility with Spark Analytics on z Systems
Ø https://www.youtube.com/watch?v=Y7HQbKBR_l4
Ø Youtube of IBM Edge Analytics Segment featuring State of California and Jack Henry Associates
Ø https://www.youtube.com/watch?v=ws9rLnXyb3g&feature=youtu.be (Analytics segment starts 26:25 into the video)
Ø IBM z/OS Platform for Apache Spark
Ø https://www-03.ibm.com/systems/z/os/zos/apache-spark.html
Ø IBM Knowledge Center: z/OS Platform for Apache Spark
Ø https://www.ibm.com/support/knowledgecenter/SSLTBW_2.2.0/com.ibm.zos.v2r2.azk/azk.htm
Ø IBM Knowledge Center: IBM Machine Learning for z/OS
Ø https://www.ibm.com/support/knowledgecenter/SS9PF4_1.1.0/src/tpc/mlz_home.html
Ø Redbook: Apache Spark Implementation on IBM z/OS
Ø http://www.redbooks.ibm.com/redbooks/pdfs/sg248325.pdf
Ø IBM Machine Learning for z/OS Marketplace
Ø https://www.ibm.com/us-en/marketplace/machine-learning-for-zos
Useful Links
© 2017 IBM Corporation
18
Comments & Questions?

Mais conteúdo relacionado

Mais procurados

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
 
Ux and IoT Agile by design - William Poos
Ux and IoT Agile by design - William PoosUx and IoT Agile by design - William Poos
Ux and IoT Agile by design - William PoosNRB
 
Data Virtualization Manager for z/OS
Data Virtualization Manager for z/OS Data Virtualization Manager for z/OS
Data Virtualization Manager for z/OS Gustav Lundström
 
Ibm db2 update2019 intro ending
Ibm db2 update2019   intro endingIbm db2 update2019   intro ending
Ibm db2 update2019 intro endingGustav Lundström
 
Hot Technologies of 2013: Investigative Analytics
Hot Technologies of 2013: Investigative AnalyticsHot Technologies of 2013: Investigative Analytics
Hot Technologies of 2013: Investigative AnalyticsInside Analysis
 
Modern Data Architecture
Modern Data Architecture Modern Data Architecture
Modern Data Architecture Mark Hewitt
 
Big data ibm keynote d advani presentation
Big data ibm keynote d advani presentationBig data ibm keynote d advani presentation
Big data ibm keynote d advani presentationMassTLC
 
How In Memory Computing Changes Everything
How In Memory Computing Changes EverythingHow In Memory Computing Changes Everything
How In Memory Computing Changes EverythingDebajit Banerjee
 
Cloud Economics
Cloud EconomicsCloud Economics
Cloud EconomicsRackspace
 
Big data trends challenges opportunities
Big data trends challenges opportunitiesBig data trends challenges opportunities
Big data trends challenges opportunitiesMohammed Guller
 
Big Data Use Cases for Different Verticals and Adoption Patterns - Impetus We...
Big Data Use Cases for Different Verticals and Adoption Patterns - Impetus We...Big Data Use Cases for Different Verticals and Adoption Patterns - Impetus We...
Big Data Use Cases for Different Verticals and Adoption Patterns - Impetus We...Impetus Technologies
 
GigaOm-sector-roadmap-cloud-analytic-databases-2017
GigaOm-sector-roadmap-cloud-analytic-databases-2017GigaOm-sector-roadmap-cloud-analytic-databases-2017
GigaOm-sector-roadmap-cloud-analytic-databases-2017Jeremy Maranitch
 
IBM Big Data Analytics Concepts and Use Cases
IBM Big Data Analytics Concepts and Use CasesIBM Big Data Analytics Concepts and Use Cases
IBM Big Data Analytics Concepts and Use CasesTony Pearson
 
Why Infrastructure Matters for Big Data & Analytics
Why Infrastructure Matters for Big Data & AnalyticsWhy Infrastructure Matters for Big Data & Analytics
Why Infrastructure Matters for Big Data & AnalyticsRick Perret
 
Wp a-break-in-the-clouds
Wp a-break-in-the-cloudsWp a-break-in-the-clouds
Wp a-break-in-the-cloudsMohsen Tayefeh
 
IBM-Why Big Data?
IBM-Why Big Data?IBM-Why Big Data?
IBM-Why Big Data?Kun Le
 
MLUC 2011 XQuery Enigma
MLUC 2011 XQuery EnigmaMLUC 2011 XQuery Enigma
MLUC 2011 XQuery EnigmaPeter O'Kelly
 
Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)James Serra
 
Data Virtualization for Data Architects (New Zealand)
Data Virtualization for Data Architects (New Zealand)Data Virtualization for Data Architects (New Zealand)
Data Virtualization for Data Architects (New Zealand)Denodo
 
Big Data in Action : Operations, Analytics and more
Big Data in Action : Operations, Analytics and moreBig Data in Action : Operations, Analytics and more
Big Data in Action : Operations, Analytics and moreSoftweb Solutions
 

Mais procurados (20)

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
 
Ux and IoT Agile by design - William Poos
Ux and IoT Agile by design - William PoosUx and IoT Agile by design - William Poos
Ux and IoT Agile by design - William Poos
 
Data Virtualization Manager for z/OS
Data Virtualization Manager for z/OS Data Virtualization Manager for z/OS
Data Virtualization Manager for z/OS
 
Ibm db2 update2019 intro ending
Ibm db2 update2019   intro endingIbm db2 update2019   intro ending
Ibm db2 update2019 intro ending
 
Hot Technologies of 2013: Investigative Analytics
Hot Technologies of 2013: Investigative AnalyticsHot Technologies of 2013: Investigative Analytics
Hot Technologies of 2013: Investigative Analytics
 
Modern Data Architecture
Modern Data Architecture Modern Data Architecture
Modern Data Architecture
 
Big data ibm keynote d advani presentation
Big data ibm keynote d advani presentationBig data ibm keynote d advani presentation
Big data ibm keynote d advani presentation
 
How In Memory Computing Changes Everything
How In Memory Computing Changes EverythingHow In Memory Computing Changes Everything
How In Memory Computing Changes Everything
 
Cloud Economics
Cloud EconomicsCloud Economics
Cloud Economics
 
Big data trends challenges opportunities
Big data trends challenges opportunitiesBig data trends challenges opportunities
Big data trends challenges opportunities
 
Big Data Use Cases for Different Verticals and Adoption Patterns - Impetus We...
Big Data Use Cases for Different Verticals and Adoption Patterns - Impetus We...Big Data Use Cases for Different Verticals and Adoption Patterns - Impetus We...
Big Data Use Cases for Different Verticals and Adoption Patterns - Impetus We...
 
GigaOm-sector-roadmap-cloud-analytic-databases-2017
GigaOm-sector-roadmap-cloud-analytic-databases-2017GigaOm-sector-roadmap-cloud-analytic-databases-2017
GigaOm-sector-roadmap-cloud-analytic-databases-2017
 
IBM Big Data Analytics Concepts and Use Cases
IBM Big Data Analytics Concepts and Use CasesIBM Big Data Analytics Concepts and Use Cases
IBM Big Data Analytics Concepts and Use Cases
 
Why Infrastructure Matters for Big Data & Analytics
Why Infrastructure Matters for Big Data & AnalyticsWhy Infrastructure Matters for Big Data & Analytics
Why Infrastructure Matters for Big Data & Analytics
 
Wp a-break-in-the-clouds
Wp a-break-in-the-cloudsWp a-break-in-the-clouds
Wp a-break-in-the-clouds
 
IBM-Why Big Data?
IBM-Why Big Data?IBM-Why Big Data?
IBM-Why Big Data?
 
MLUC 2011 XQuery Enigma
MLUC 2011 XQuery EnigmaMLUC 2011 XQuery Enigma
MLUC 2011 XQuery Enigma
 
Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)
 
Data Virtualization for Data Architects (New Zealand)
Data Virtualization for Data Architects (New Zealand)Data Virtualization for Data Architects (New Zealand)
Data Virtualization for Data Architects (New Zealand)
 
Big Data in Action : Operations, Analytics and more
Big Data in Action : Operations, Analytics and moreBig Data in Action : Operations, Analytics and more
Big Data in Action : Operations, Analytics and more
 

Semelhante a IBM Z for the Digital Enterprise - IBM Z Open Data Analytics

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
 
NRB - BE MAINFRAME DAY 2017 - Data spark and the data federation
NRB - BE MAINFRAME DAY 2017 - Data spark and the data federation NRB - BE MAINFRAME DAY 2017 - Data spark and the data federation
NRB - BE MAINFRAME DAY 2017 - Data spark and the data federation NRB
 
Real-Time Analytics for Industries
Real-Time Analytics for IndustriesReal-Time Analytics for Industries
Real-Time Analytics for IndustriesAvadhoot Patwardhan
 
Machine Learning for z/OS
Machine Learning for z/OSMachine Learning for z/OS
Machine Learning for z/OSCuneyt Goksu
 
Analytics on z Systems Focus on Real Time - Hélène Lyon
Analytics on z Systems Focus on Real Time - Hélène LyonAnalytics on z Systems Focus on Real Time - Hélène Lyon
Analytics on z Systems Focus on Real Time - Hélène LyonNRB
 
Leveraging the Power of the ServiceNow® Platform with Mainframe and IBM i Sys...
Leveraging the Power of the ServiceNow® Platform with Mainframe and IBM i Sys...Leveraging the Power of the ServiceNow® Platform with Mainframe and IBM i Sys...
Leveraging the Power of the ServiceNow® Platform with Mainframe and IBM i Sys...Precisely
 
Private cloud with z enterprise
Private cloud with z enterprisePrivate cloud with z enterprise
Private cloud with z enterpriseJim Porell
 
Is your data paying you dividends?
Is your data paying you dividends? Is your data paying you dividends?
Is your data paying you dividends? Karan Sachdeva
 
Use cases for Hadoop and Big Data Analytics - InfoSphere BigInsights
Use cases for Hadoop and Big Data Analytics - InfoSphere BigInsightsUse cases for Hadoop and Big Data Analytics - InfoSphere BigInsights
Use cases for Hadoop and Big Data Analytics - InfoSphere BigInsightsGord Sissons
 
MongoDB in a Mainframe World
MongoDB in a Mainframe WorldMongoDB in a Mainframe World
MongoDB in a Mainframe WorldMongoDB
 
IBM Storage at Fiserv Forum 2018
IBM Storage at Fiserv Forum 2018IBM Storage at Fiserv Forum 2018
IBM Storage at Fiserv Forum 2018Paula Koziol
 
Z Enterprise.Optimization And Security
Z Enterprise.Optimization And SecurityZ Enterprise.Optimization And Security
Z Enterprise.Optimization And SecurityJim Porell
 
ICP for Data- Enterprise platform for AI, ML and Data Science
ICP for Data- Enterprise platform for AI, ML and Data ScienceICP for Data- Enterprise platform for AI, ML and Data Science
ICP for Data- Enterprise platform for AI, ML and Data ScienceKaran Sachdeva
 
Big Data Paris - A Modern Enterprise Architecture
Big Data Paris - A Modern Enterprise ArchitectureBig Data Paris - A Modern Enterprise Architecture
Big Data Paris - A Modern Enterprise ArchitectureMongoDB
 
Digital Transformation: How to Run Best-in-Class IT Operations in a World of ...
Digital Transformation: How to Run Best-in-Class IT Operations in a World of ...Digital Transformation: How to Run Best-in-Class IT Operations in a World of ...
Digital Transformation: How to Run Best-in-Class IT Operations in a World of ...Precisely
 
Building Data Science Ecosystems for Smart Cities and Smart Commerce
Building Data Science Ecosystems for Smart Cities and Smart CommerceBuilding Data Science Ecosystems for Smart Cities and Smart Commerce
Building Data Science Ecosystems for Smart Cities and Smart CommerceAlex Liu
 
Big Data: It’s all about the Use Cases
Big Data: It’s all about the Use CasesBig Data: It’s all about the Use Cases
Big Data: It’s all about the Use CasesJames Serra
 
The new dominant companies are running on data
The new dominant companies are running on data The new dominant companies are running on data
The new dominant companies are running on data SnapLogic
 
Excellent slides on the new z13s announced on 16th Feb 2016
Excellent slides on the new z13s announced on 16th Feb 2016Excellent slides on the new z13s announced on 16th Feb 2016
Excellent slides on the new z13s announced on 16th Feb 2016Luigi Tommaseo
 

Semelhante a IBM Z for the Digital Enterprise - IBM Z Open Data Analytics (20)

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
 
NRB - BE MAINFRAME DAY 2017 - Data spark and the data federation
NRB - BE MAINFRAME DAY 2017 - Data spark and the data federation NRB - BE MAINFRAME DAY 2017 - Data spark and the data federation
NRB - BE MAINFRAME DAY 2017 - Data spark and the data federation
 
Real-Time Analytics for Industries
Real-Time Analytics for IndustriesReal-Time Analytics for Industries
Real-Time Analytics for Industries
 
Machine Learning for z/OS
Machine Learning for z/OSMachine Learning for z/OS
Machine Learning for z/OS
 
Analytics on z Systems Focus on Real Time - Hélène Lyon
Analytics on z Systems Focus on Real Time - Hélène LyonAnalytics on z Systems Focus on Real Time - Hélène Lyon
Analytics on z Systems Focus on Real Time - Hélène Lyon
 
Leveraging the Power of the ServiceNow® Platform with Mainframe and IBM i Sys...
Leveraging the Power of the ServiceNow® Platform with Mainframe and IBM i Sys...Leveraging the Power of the ServiceNow® Platform with Mainframe and IBM i Sys...
Leveraging the Power of the ServiceNow® Platform with Mainframe and IBM i Sys...
 
Private cloud with z enterprise
Private cloud with z enterprisePrivate cloud with z enterprise
Private cloud with z enterprise
 
Is your data paying you dividends?
Is your data paying you dividends? Is your data paying you dividends?
Is your data paying you dividends?
 
Use cases for Hadoop and Big Data Analytics - InfoSphere BigInsights
Use cases for Hadoop and Big Data Analytics - InfoSphere BigInsightsUse cases for Hadoop and Big Data Analytics - InfoSphere BigInsights
Use cases for Hadoop and Big Data Analytics - InfoSphere BigInsights
 
MongoDB in a Mainframe World
MongoDB in a Mainframe WorldMongoDB in a Mainframe World
MongoDB in a Mainframe World
 
IBM Storage at Fiserv Forum 2018
IBM Storage at Fiserv Forum 2018IBM Storage at Fiserv Forum 2018
IBM Storage at Fiserv Forum 2018
 
Z Enterprise.Optimization And Security
Z Enterprise.Optimization And SecurityZ Enterprise.Optimization And Security
Z Enterprise.Optimization And Security
 
ICP for Data- Enterprise platform for AI, ML and Data Science
ICP for Data- Enterprise platform for AI, ML and Data ScienceICP for Data- Enterprise platform for AI, ML and Data Science
ICP for Data- Enterprise platform for AI, ML and Data Science
 
Big Data Paris - A Modern Enterprise Architecture
Big Data Paris - A Modern Enterprise ArchitectureBig Data Paris - A Modern Enterprise Architecture
Big Data Paris - A Modern Enterprise Architecture
 
Digital Transformation: How to Run Best-in-Class IT Operations in a World of ...
Digital Transformation: How to Run Best-in-Class IT Operations in a World of ...Digital Transformation: How to Run Best-in-Class IT Operations in a World of ...
Digital Transformation: How to Run Best-in-Class IT Operations in a World of ...
 
NZS-4532 - Bringing Historical Data to Life with IBMs SMF Data Engine
NZS-4532 - Bringing Historical Data to Life with IBMs SMF Data EngineNZS-4532 - Bringing Historical Data to Life with IBMs SMF Data Engine
NZS-4532 - Bringing Historical Data to Life with IBMs SMF Data Engine
 
Building Data Science Ecosystems for Smart Cities and Smart Commerce
Building Data Science Ecosystems for Smart Cities and Smart CommerceBuilding Data Science Ecosystems for Smart Cities and Smart Commerce
Building Data Science Ecosystems for Smart Cities and Smart Commerce
 
Big Data: It’s all about the Use Cases
Big Data: It’s all about the Use CasesBig Data: It’s all about the Use Cases
Big Data: It’s all about the Use Cases
 
The new dominant companies are running on data
The new dominant companies are running on data The new dominant companies are running on data
The new dominant companies are running on data
 
Excellent slides on the new z13s announced on 16th Feb 2016
Excellent slides on the new z13s announced on 16th Feb 2016Excellent slides on the new z13s announced on 16th Feb 2016
Excellent slides on the new z13s announced on 16th Feb 2016
 

Mais de DevOps for Enterprise Systems

Webcast : Uncover buried treasure code with business-rule mining and ADDI
Webcast : Uncover buried treasure code with business-rule mining and ADDIWebcast : Uncover buried treasure code with business-rule mining and ADDI
Webcast : Uncover buried treasure code with business-rule mining and ADDIDevOps for Enterprise Systems
 
Webinar [Nov 15, 1 PM EST]: Release Orchestration and the Future of Continuou...
Webinar [Nov 15, 1 PM EST]: Release Orchestration and the Future of Continuou...Webinar [Nov 15, 1 PM EST]: Release Orchestration and the Future of Continuou...
Webinar [Nov 15, 1 PM EST]: Release Orchestration and the Future of Continuou...DevOps for Enterprise Systems
 
Webcast : Develop Mainframe Software with Open Source SCMs and IBM Dependency...
Webcast : Develop Mainframe Software with Open Source SCMs and IBM Dependency...Webcast : Develop Mainframe Software with Open Source SCMs and IBM Dependency...
Webcast : Develop Mainframe Software with Open Source SCMs and IBM Dependency...DevOps for Enterprise Systems
 
IBM Z for the Digital Enterprise - Microservices, APIs
IBM Z for the Digital Enterprise - Microservices, APIsIBM Z for the Digital Enterprise - Microservices, APIs
IBM Z for the Digital Enterprise - Microservices, APIsDevOps for Enterprise Systems
 
IBM Z for the Digital Enterprise - IBM Z Software Keynote
IBM Z for the Digital Enterprise - IBM Z Software KeynoteIBM Z for the Digital Enterprise - IBM Z Software Keynote
IBM Z for the Digital Enterprise - IBM Z Software KeynoteDevOps for Enterprise Systems
 
Webinar : Modernize and Simplify IT Operations Management for DevOps Success
Webinar : Modernize and Simplify IT Operations Management for DevOps Success Webinar : Modernize and Simplify IT Operations Management for DevOps Success
Webinar : Modernize and Simplify IT Operations Management for DevOps Success DevOps for Enterprise Systems
 
Webinar : So you want to provision a test environment...
Webinar : So you want to provision a test environment...  Webinar : So you want to provision a test environment...
Webinar : So you want to provision a test environment... DevOps for Enterprise Systems
 
Webinar : Don't Fumble the Data! Integrate Database Automation into your DevO...
Webinar : Don't Fumble the Data! Integrate Database Automation into your DevO...Webinar : Don't Fumble the Data! Integrate Database Automation into your DevO...
Webinar : Don't Fumble the Data! Integrate Database Automation into your DevO...DevOps for Enterprise Systems
 
Replace Outdated DevOps Tools with Innovative & Modern Pipelines
Replace Outdated DevOps Tools with Innovative & Modern PipelinesReplace Outdated DevOps Tools with Innovative & Modern Pipelines
Replace Outdated DevOps Tools with Innovative & Modern PipelinesDevOps for Enterprise Systems
 
Beyond Build Pipelines - Continuous Delivery's Messy Reality
Beyond Build Pipelines - Continuous Delivery's Messy RealityBeyond Build Pipelines - Continuous Delivery's Messy Reality
Beyond Build Pipelines - Continuous Delivery's Messy RealityDevOps for Enterprise Systems
 
IBM Z for the Digital Enterprise 2018 - API Discovery & Debugging
IBM Z for the Digital Enterprise 2018 - API Discovery & DebuggingIBM Z for the Digital Enterprise 2018 - API Discovery & Debugging
IBM Z for the Digital Enterprise 2018 - API Discovery & DebuggingDevOps for Enterprise Systems
 
IBM Z for the Digital Enterprise 2018 - Offering API channel to application a...
IBM Z for the Digital Enterprise 2018 - Offering API channel to application a...IBM Z for the Digital Enterprise 2018 - Offering API channel to application a...
IBM Z for the Digital Enterprise 2018 - Offering API channel to application a...DevOps for Enterprise Systems
 
IBM Z for the Digital Enterprise 2018 - Leverage best language for Transforma...
IBM Z for the Digital Enterprise 2018 - Leverage best language for Transforma...IBM Z for the Digital Enterprise 2018 - Leverage best language for Transforma...
IBM Z for the Digital Enterprise 2018 - Leverage best language for Transforma...DevOps for Enterprise Systems
 
IBM Z for the Digital Enterprise 2018 - IBM ADDI as an Enabler for Digital Tr...
IBM Z for the Digital Enterprise 2018 - IBM ADDI as an Enabler for Digital Tr...IBM Z for the Digital Enterprise 2018 - IBM ADDI as an Enabler for Digital Tr...
IBM Z for the Digital Enterprise 2018 - IBM ADDI as an Enabler for Digital Tr...DevOps for Enterprise Systems
 
IBM Z for the Digital Enterprise 2018 - Automate Delivery Pipeline
IBM Z for the Digital Enterprise 2018 - Automate Delivery PipelineIBM Z for the Digital Enterprise 2018 - Automate Delivery Pipeline
IBM Z for the Digital Enterprise 2018 - Automate Delivery PipelineDevOps for Enterprise Systems
 

Mais de DevOps for Enterprise Systems (20)

Webcast : Uncover buried treasure code with business-rule mining and ADDI
Webcast : Uncover buried treasure code with business-rule mining and ADDIWebcast : Uncover buried treasure code with business-rule mining and ADDI
Webcast : Uncover buried treasure code with business-rule mining and ADDI
 
Webinar [Nov 15, 1 PM EST]: Release Orchestration and the Future of Continuou...
Webinar [Nov 15, 1 PM EST]: Release Orchestration and the Future of Continuou...Webinar [Nov 15, 1 PM EST]: Release Orchestration and the Future of Continuou...
Webinar [Nov 15, 1 PM EST]: Release Orchestration and the Future of Continuou...
 
Webcast : Develop Mainframe Software with Open Source SCMs and IBM Dependency...
Webcast : Develop Mainframe Software with Open Source SCMs and IBM Dependency...Webcast : Develop Mainframe Software with Open Source SCMs and IBM Dependency...
Webcast : Develop Mainframe Software with Open Source SCMs and IBM Dependency...
 
IBM Z for the Digital Enterprise - Microservices, APIs
IBM Z for the Digital Enterprise - Microservices, APIsIBM Z for the Digital Enterprise - Microservices, APIs
IBM Z for the Digital Enterprise - Microservices, APIs
 
IBM Z for the Digital Enterprise - IBM Z Software Keynote
IBM Z for the Digital Enterprise - IBM Z Software KeynoteIBM Z for the Digital Enterprise - IBM Z Software Keynote
IBM Z for the Digital Enterprise - IBM Z Software Keynote
 
IBM Z for the Digital Enterprise - DevOps for Z
IBM Z for the Digital Enterprise - DevOps for Z IBM Z for the Digital Enterprise - DevOps for Z
IBM Z for the Digital Enterprise - DevOps for Z
 
IBM Z for the Digital Enterprise - Java performance
IBM Z for the Digital Enterprise  - Java performanceIBM Z for the Digital Enterprise  - Java performance
IBM Z for the Digital Enterprise - Java performance
 
IBM Z for the Digital Enterprise - Zowe overview
IBM Z for the Digital Enterprise - Zowe overviewIBM Z for the Digital Enterprise - Zowe overview
IBM Z for the Digital Enterprise - Zowe overview
 
IBM Z for the Digital Enterprise 2018 - Z Keynote
IBM Z for the Digital Enterprise 2018 - Z KeynoteIBM Z for the Digital Enterprise 2018 - Z Keynote
IBM Z for the Digital Enterprise 2018 - Z Keynote
 
Webinar : Modernize and Simplify IT Operations Management for DevOps Success
Webinar : Modernize and Simplify IT Operations Management for DevOps Success Webinar : Modernize and Simplify IT Operations Management for DevOps Success
Webinar : Modernize and Simplify IT Operations Management for DevOps Success
 
Webinar : So you want to provision a test environment...
Webinar : So you want to provision a test environment...  Webinar : So you want to provision a test environment...
Webinar : So you want to provision a test environment...
 
Webinar : Don't Fumble the Data! Integrate Database Automation into your DevO...
Webinar : Don't Fumble the Data! Integrate Database Automation into your DevO...Webinar : Don't Fumble the Data! Integrate Database Automation into your DevO...
Webinar : Don't Fumble the Data! Integrate Database Automation into your DevO...
 
Replace Outdated DevOps Tools with Innovative & Modern Pipelines
Replace Outdated DevOps Tools with Innovative & Modern PipelinesReplace Outdated DevOps Tools with Innovative & Modern Pipelines
Replace Outdated DevOps Tools with Innovative & Modern Pipelines
 
Beyond Build Pipelines - Continuous Delivery's Messy Reality
Beyond Build Pipelines - Continuous Delivery's Messy RealityBeyond Build Pipelines - Continuous Delivery's Messy Reality
Beyond Build Pipelines - Continuous Delivery's Messy Reality
 
Webcast : Are Your Cloud Applications Performing?
Webcast : Are Your Cloud Applications Performing?Webcast : Are Your Cloud Applications Performing?
Webcast : Are Your Cloud Applications Performing?
 
IBM Z for the Digital Enterprise 2018 - API Discovery & Debugging
IBM Z for the Digital Enterprise 2018 - API Discovery & DebuggingIBM Z for the Digital Enterprise 2018 - API Discovery & Debugging
IBM Z for the Digital Enterprise 2018 - API Discovery & Debugging
 
IBM Z for the Digital Enterprise 2018 - Offering API channel to application a...
IBM Z for the Digital Enterprise 2018 - Offering API channel to application a...IBM Z for the Digital Enterprise 2018 - Offering API channel to application a...
IBM Z for the Digital Enterprise 2018 - Offering API channel to application a...
 
IBM Z for the Digital Enterprise 2018 - Leverage best language for Transforma...
IBM Z for the Digital Enterprise 2018 - Leverage best language for Transforma...IBM Z for the Digital Enterprise 2018 - Leverage best language for Transforma...
IBM Z for the Digital Enterprise 2018 - Leverage best language for Transforma...
 
IBM Z for the Digital Enterprise 2018 - IBM ADDI as an Enabler for Digital Tr...
IBM Z for the Digital Enterprise 2018 - IBM ADDI as an Enabler for Digital Tr...IBM Z for the Digital Enterprise 2018 - IBM ADDI as an Enabler for Digital Tr...
IBM Z for the Digital Enterprise 2018 - IBM ADDI as an Enabler for Digital Tr...
 
IBM Z for the Digital Enterprise 2018 - Automate Delivery Pipeline
IBM Z for the Digital Enterprise 2018 - Automate Delivery PipelineIBM Z for the Digital Enterprise 2018 - Automate Delivery Pipeline
IBM Z for the Digital Enterprise 2018 - Automate Delivery Pipeline
 

Último

%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain
%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain
%in Bahrain+277-882-255-28 abortion pills for sale in Bahrainmasabamasaba
 
A Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docxA Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docxComplianceQuest1
 
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...kalichargn70th171
 
The Top App Development Trends Shaping the Industry in 2024-25 .pdf
The Top App Development Trends Shaping the Industry in 2024-25 .pdfThe Top App Development Trends Shaping the Industry in 2024-25 .pdf
The Top App Development Trends Shaping the Industry in 2024-25 .pdfayushiqss
 
Chinsurah Escorts ☎️8617697112 Starting From 5K to 15K High Profile Escorts ...
Chinsurah Escorts ☎️8617697112  Starting From 5K to 15K High Profile Escorts ...Chinsurah Escorts ☎️8617697112  Starting From 5K to 15K High Profile Escorts ...
Chinsurah Escorts ☎️8617697112 Starting From 5K to 15K High Profile Escorts ...Nitya salvi
 
Exploring the Best Video Editing App.pdf
Exploring the Best Video Editing App.pdfExploring the Best Video Editing App.pdf
Exploring the Best Video Editing App.pdfproinshot.com
 
Unlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language ModelsUnlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language Modelsaagamshah0812
 
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...panagenda
 
%in ivory park+277-882-255-28 abortion pills for sale in ivory park
%in ivory park+277-882-255-28 abortion pills for sale in ivory park %in ivory park+277-882-255-28 abortion pills for sale in ivory park
%in ivory park+277-882-255-28 abortion pills for sale in ivory park masabamasaba
 
Software Quality Assurance Interview Questions
Software Quality Assurance Interview QuestionsSoftware Quality Assurance Interview Questions
Software Quality Assurance Interview QuestionsArshad QA
 
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdfintroduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdfVishalKumarJha10
 
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️Delhi Call girls
 
ManageIQ - Sprint 236 Review - Slide Deck
ManageIQ - Sprint 236 Review - Slide DeckManageIQ - Sprint 236 Review - Slide Deck
ManageIQ - Sprint 236 Review - Slide DeckManageIQ
 
8257 interfacing 2 in microprocessor for btech students
8257 interfacing 2 in microprocessor for btech students8257 interfacing 2 in microprocessor for btech students
8257 interfacing 2 in microprocessor for btech studentsHimanshiGarg82
 
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Steffen Staab
 
10 Trends Likely to Shape Enterprise Technology in 2024
10 Trends Likely to Shape Enterprise Technology in 202410 Trends Likely to Shape Enterprise Technology in 2024
10 Trends Likely to Shape Enterprise Technology in 2024Mind IT Systems
 
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...ICS
 
%in tembisa+277-882-255-28 abortion pills for sale in tembisa
%in tembisa+277-882-255-28 abortion pills for sale in tembisa%in tembisa+277-882-255-28 abortion pills for sale in tembisa
%in tembisa+277-882-255-28 abortion pills for sale in tembisamasabamasaba
 
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...Health
 
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfonteinmasabamasaba
 

Último (20)

%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain
%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain
%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain
 
A Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docxA Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docx
 
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
 
The Top App Development Trends Shaping the Industry in 2024-25 .pdf
The Top App Development Trends Shaping the Industry in 2024-25 .pdfThe Top App Development Trends Shaping the Industry in 2024-25 .pdf
The Top App Development Trends Shaping the Industry in 2024-25 .pdf
 
Chinsurah Escorts ☎️8617697112 Starting From 5K to 15K High Profile Escorts ...
Chinsurah Escorts ☎️8617697112  Starting From 5K to 15K High Profile Escorts ...Chinsurah Escorts ☎️8617697112  Starting From 5K to 15K High Profile Escorts ...
Chinsurah Escorts ☎️8617697112 Starting From 5K to 15K High Profile Escorts ...
 
Exploring the Best Video Editing App.pdf
Exploring the Best Video Editing App.pdfExploring the Best Video Editing App.pdf
Exploring the Best Video Editing App.pdf
 
Unlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language ModelsUnlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language Models
 
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
 
%in ivory park+277-882-255-28 abortion pills for sale in ivory park
%in ivory park+277-882-255-28 abortion pills for sale in ivory park %in ivory park+277-882-255-28 abortion pills for sale in ivory park
%in ivory park+277-882-255-28 abortion pills for sale in ivory park
 
Software Quality Assurance Interview Questions
Software Quality Assurance Interview QuestionsSoftware Quality Assurance Interview Questions
Software Quality Assurance Interview Questions
 
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdfintroduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
 
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
 
ManageIQ - Sprint 236 Review - Slide Deck
ManageIQ - Sprint 236 Review - Slide DeckManageIQ - Sprint 236 Review - Slide Deck
ManageIQ - Sprint 236 Review - Slide Deck
 
8257 interfacing 2 in microprocessor for btech students
8257 interfacing 2 in microprocessor for btech students8257 interfacing 2 in microprocessor for btech students
8257 interfacing 2 in microprocessor for btech students
 
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
 
10 Trends Likely to Shape Enterprise Technology in 2024
10 Trends Likely to Shape Enterprise Technology in 202410 Trends Likely to Shape Enterprise Technology in 2024
10 Trends Likely to Shape Enterprise Technology in 2024
 
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
 
%in tembisa+277-882-255-28 abortion pills for sale in tembisa
%in tembisa+277-882-255-28 abortion pills for sale in tembisa%in tembisa+277-882-255-28 abortion pills for sale in tembisa
%in tembisa+277-882-255-28 abortion pills for sale in tembisa
 
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
 
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
 

IBM Z for the Digital Enterprise - IBM Z Open Data Analytics

  • 1. David Rice IzODA Chief Iteration Manager & Technical Lead of Scale Adoption drice@us.ibm.com October 2018 IBM Open Data Analytics for z/OS: z Conference
  • 2. © 2017 IBM Corporation 2 Trends in the industry: Increasing focus on Real Time Ø Pervasiveness of Analytics Ø Business growth Ø Risk Mitigation Ø Need for Real-Time Ø Insight at point of impact Source & Full Forrester paper: https://www-03.ibm.com/systems/z/solutions/real-time-analytics/data-analysis.html
  • 3. © 2017 IBM Corporation 3 z/OS • DB2, IMS, VSAM • Transactional Data from Operational Systems • History Data • Warehouses Mobile Chat Call Center Social / Public Data Scientist Distributed • Warehouses • ODS • Client Facing Apps • Departmental Datamarts Ø Data / Analytic Currency Ø Increased security, governance, privacy risk Ø Longer ROI for analytic insights Ø Added development costs Ø Data coherency of the lake Ø Ability to quickly adapt to suit analytical needs (new data sources, schemas, freshness, etc.) Today’s Typical Current State: migrate all endpoint data to a data ‘lake’, then analyze • Using an ETL-only approach results in costly side-effects: risk, reduced efficiency and missed opportunity Challenges
  • 4. © 2017 IBM Corporation 4 Where do enterprise transactions & data originate? Data Gravity: Co-locate analytics with data based on value, volume, rate of change, security… 92 of world’s top 100 banks 10 out of the top 10 insurance organizations 87% of all credit card transactions and nearly $8 trillion payments a year More than 30 billion transactions a day, more than number of Google searches 64% of Fortune 500 80% of world’s corporate data
  • 5. © 2017 IBM Corporation 5 Use Cases Well-Aligned with Analytics on IBM Z Predominance of data originates on IBM Z, z/OS (transactions, member info,…) Data volume is large, distilling data provides operational efficiencies Real-time / near real- time insights are valuable Performance matters for variety of data on and off IBM Z Core transactional systems of record ae on IBM Z Data Gravity Security / data privacy needs to be preserved Podcast: http://www.ibmbigdatahub.com/podcast/making-data-simple-what-data-gravity
  • 6. © 2017 IBM Corporation 6 Cross Industry Use Case: Modernization, Data Exploration, Hybrid Integration DB2 z/OS z/OS Result Store: • Frequent Refresh • Ease of Integration • TCO advantage VSAM IMS Hadoop • Easily blend data from Z and non-Z • Limit data movement • Enrich reporting and ad-hoc queries • Leverage modern, open technologies, skill Warehouses Optimized Data Layer Dashboards, Spreadsheets Examples: Cognos, Tableau Ø More current data leveraged across entire infrastructure Ø Reduced raw data movement costs Ø Security & data privacy advantages IBM Open Data Analytics for z/OS Existing Data Lakes Business Interfaces Cloud Platforms StandardInterfaces
  • 7. © 2017 IBM Corporation 7 Insurance: Real-Time State of the Business Views Real-Time Insights Value: Real-time visualization of state of the business across clients, industries, geographies, products, etc. to determine profitability, risk assessment, etc. Potential to have current view along with 15-30-60-90 day views for trend analysis How: Leverage analytics of data in place across various systems, using both internal & external sources Client 1: • Life insurance coverage • Accident coverage Client 2: • Vision Coverage • Accident Risk Client 3: • Dental Coverage • Home coverage Client 4: • Disability coverage • Life Insurance covergae ProfitabilityView Activity View weather geopolitical By Industry, product
  • 8. © 2017 IBM Corporation 8 Use Case - Banking: Enhanced Card Fraud Detection Existing Rules Engine • Apply in-house rules for detect • Invoke 3rd party scores (FICO) • Apply custom scoring • Determine Disposition IBM z/OS VSAMDB2 IMS Core Card Process • Verify, augment data • Manage workload • Ensure scale • Likely: CICS, IMS Today: Models refreshed periodically, deployment path requires custom coding Challenge: Emerging fraud pattern detection delayed, model deployment & refresh not agile Benefit: Current data for modeling, intra-day model refresh, flexibility to add new data via configuration Point of sale systems ETL Warehouse Warehouse DB2 IMS VSAM Real Time Analytics: leverage in-place current access to variety of data sources • Create Models • Apply Data Science • Refresh Models • Schedule Deployment Coding Deploy IBM z/OS
  • 9. © 2017 IBM Corporation 9 Example: Real-Time ACH Analytics for Banking Clients ACH Processing: • ACH Payment origination & receipt • Interaction with Automated Clearing House verification • Implementation of NACHA rules • Defined data formats for exchange of info IBM z/OS ACH format ACH format ACH format “All Items”: ACH, POS, WEB, etc Batch Posting Process Future: Real Time Process Real-Time Insights Real-Time Analytics • Real-time payment and ACH analytics on RT payments • Increased granularity of compliance / risk / fraud analytics • Integration across ACH and core banking systems Today: Largely post processed, multi-day verification of ACH rejects, fraud / risk assessment, delay in insights Challenge: Same-day payments creates requirement to address rejects, fraud immediately, in real-time scope Benefit: In-place, real-time analytics of ACH data for compliance / fraud risk to address same-day payments, accessing source data as well as off platform data via federation 1 Warehouse
  • 10. © 2017 IBM Corporation 10 DB2 z/OS IMS VSAM z/OS Optimized Analytics Runtime Enterprise Data Environments Ø Leverage most current data, in place Ø Flexible structure, rich analytics runtime co-located data Ø TCO advantages Ø Leverage leading open source technologies & skills Ø Enable advanced solutions from IBM and partners Ø Integrate and differentiate Apache Spark for z/OS Python / Anaconda Open Source stack Optimized Data Layer z/OS WarehousesHadoop Distributed IBM Machine Learning for z/OS Solutions from SIs & Business Partners Other IBM based solutions & Client Solutions Solutions Example: Federated Analytics, Access to Wide Variety of Data: Modernization, Exploration, Integration2 Optimized Data Layer: Integrated Access to DB2, IMS, IMS raw read , VSAM, PS, PDSE, ADABAS, IDMS, CICS Queues, Virtual Tape, SMF, Syslog, Oracle Enterprise, Teradata, HDFS… etc
  • 11. © 2017 IBM Corporation 11 Abstracted access to z/OS Data } from VSAM } from DB2 Modern Analytic Frameworks & Tools 3
  • 12. © 2017 IBM Corporation 12 Value: Reduce Risk à via Simplified Data Privacy via Configuration Cust_ID Avg Daily TX Education Education Group Social Security Number Investment Avg TX AMT Churn Label Age 1009530860 3.9145 2 BS 123-84-9015 114368 2090.32 N 84 1009544000 4.28 2 BS 122-49-3821 90298 2095.04 N 44 1009534260 1.23 2 BS 931-29-0612 94881 1723.59 Y 23 1009574010 0.95 2 BS 491-19-2102 112099 1297.41 Y 24 1009578620 2.73 5 DR 813-90-4183 84638 1333.18 N 67 Features FeaturesNot Feature Not Feature, PII Cust_ID Avg Daily TX Education Education Group Investment Avg TX AMT Churn Label Age 1009530860 3.9145 2 BS 114368 2090.32 N 84 1009544000 4.28 2 BS 90298 2095.04 N 44 1009534260 1.23 2 BS 94881 1723.59 Y 23 1009574010 0.95 2 BS 112099 1297.41 Y 24 1009578620 2.73 5 DR 84638 1333.18 N 67 View of Table Visible to Data Scientists Original Table Sensitive Data – View presented to data science teams can be different than original – Via UI configuration, obfuscate or remove select columns – Configure for varying levels of access based on PII designations – Flexibility for data protection 4
  • 13. © 2017 IBM Corporation 13 Apache Spark z/OS: Cost Efficiency & Powerful Data-in-Place Analytics § Spark on z/OS joins multiple data types for fast, complete analytics, without moving the data § Test of >350M rows read, parsed, analyzed, and summarized (approx. 60gig) § Average Spark processing times – average of 3 minutes on a single z13 LPAR with 1 GP, 13 zIIPS and 512Gb memory: – DB2: 2.35 minutes (4.1 mins. maximum) – Flat File: 2.95 minutes (3.2 mins. Maximum) – VSAM: 2.80 minutes (3.3 mins. Maximum) DB2 z/OS Flat file VSAM z/OS JDBC JDBC JDBC 88% zIIP offload 97% zIIP offload 97% zIIP offload Use Case: Large Data Pull --- bring back all 350Million rows from each data source, touch each data element and run Spark aggregation across all data Source: IBM Competitive Project Office 5
  • 14. © 2017 IBM Corporation 14 Apache Spark z/OS: Cost Efficiency & Powerful Data-in-Place Analytics Trade 166GB Brokerage aggregation query workload across Trades tables from 3 exchanges (over 5 Billion trades, 500GB) * 3-Year TCA includes 3-year US prices for Hardware, Software, Maintenance and Support as of 05/16/2016. Price and performance for x86 environment includes cost of ETL and elapsed time to transfer the data. This is based on an IBM internal study designed to replicate a typical IBM customer workload usage in the marketplace. z13-606 + 11 zIIPs z13-605 Competitor x86 System Intel E5-2697 v2 2.7GHz 12co lower TCA*For systems compared67% $2,105,990 (3 yr. TCA) $697,106 (3 yr. TCA) Linux Apache Spark Parquet z/OS CICS DB2 z/OS CICS DB2 Apache Spark ETL
  • 15. © 2017 IBM Corporation 15 Minimizing Impact to Production6 Ø Current Challenges: q Current status quo ETL processes consume GP MIPS, often run during batch window cycles that causes potential issues for client batch workloads q Analytics off platform that accesses z/OS data often goes through standard subsystem interfaces for DB2 & IMS, interfering with bufferpools and resulting in lower zIIP eligibility Ø Analytics on z/OS has unique features to minimize impact to production workloads: 1. Limit Analytic Workloads’ Access to resources via capping zIIPs & memory; leverage WLM classifications 2. Leverage Unique “Raw-Read” Features – avoid impact to IMS & DB2 subsystems, high zIIP eligibility 3. Leverage Unique DataFrame Store – separate well-formed analytics, persist result, enable off platform ad-hoc analytics to DataFrame store 4. Analytic workloads are all read-only (no locks held)
  • 16. © 2017 IBM Corporation 16 Jupyter Demo
  • 17. © 2017 IBM Corporation 17 Ø Machine Learning and z Systems: Ø https://www.youtube.com/watch?v=T2HtyNX7aHc Ø Machine Learning Launch Event interview: Ø https://www.youtube.com/watch?v=WHenFAa6iPw&feature=youtu.be&list=PLenh213llmca-QogcjfSW9RHPtNye9N_p Ø Gaining Agility with Spark Analytics on z Systems Ø https://www.youtube.com/watch?v=Y7HQbKBR_l4 Ø Youtube of IBM Edge Analytics Segment featuring State of California and Jack Henry Associates Ø https://www.youtube.com/watch?v=ws9rLnXyb3g&feature=youtu.be (Analytics segment starts 26:25 into the video) Ø IBM z/OS Platform for Apache Spark Ø https://www-03.ibm.com/systems/z/os/zos/apache-spark.html Ø IBM Knowledge Center: z/OS Platform for Apache Spark Ø https://www.ibm.com/support/knowledgecenter/SSLTBW_2.2.0/com.ibm.zos.v2r2.azk/azk.htm Ø IBM Knowledge Center: IBM Machine Learning for z/OS Ø https://www.ibm.com/support/knowledgecenter/SS9PF4_1.1.0/src/tpc/mlz_home.html Ø Redbook: Apache Spark Implementation on IBM z/OS Ø http://www.redbooks.ibm.com/redbooks/pdfs/sg248325.pdf Ø IBM Machine Learning for z/OS Marketplace Ø https://www.ibm.com/us-en/marketplace/machine-learning-for-zos Useful Links
  • 18. © 2017 IBM Corporation 18 Comments & Questions?