SlideShare a Scribd company logo
What Does Artificial Intelligence
Have to Do with IT Operations?
Ed Hallock
Housekeeping
Webcast Audio
• Today’s webcast audio is streamed through your computer speakers.
• If you need technical assistance with the web interface or audio,
please reach out to us using the chat window.
Questions Welcome
• Submit your questions at any time during the presentation
using the chat window.
• We will answer them during our Q&A session following the
presentation.
Recording and slides
• This webcast is being recorded. You will receive an
email following the webcast with a link to download
both the recording and the slides.
Ed Hallock, President & CEO of ZERC Consulting Inc.
Ed Hallock is President & CEO of ZERC Consulting Inc., a software product
management and marketing consultancy. He is a highly experienced Information
Technology Professional with a broad experience base in software product
development, support, product management, marketing, and business development.
Prior to establishing ZERC Consulting, Ed benefited from working for some of the
largest independent software vendors, in a variety of roles, providing enterprise
solutions to Global 1000 corporations.
Ed has extensive experience in performance and availability management for systems
and applications. He holds a bachelor’s degree in Computer Science from Montclair
State University in Upper Montclair, New Jersey. In addition to published articles, Ed
has presented at numerous industry events as well as corporate related conferences
and seminars.
Today’s Presenter
• Question: How well is the IT infrastructure performing in
support of the business?
• Plethora of tools to detect, manage, and resolve problems
that are causing disruption of services:
• Domain-based performance monitors
• Network monitors
• Application monitors
• End-user response time measurement facilities
• The challenge remains: How to correlate information so that
business services can be accurately monitored and managed.
• And it’s not like we haven’t tried…
Why Are We Here?
The promise:
• Map IT components to the business services they supported
• Show how well those business services were running
• Cross-platform visibility and correlation
The failure:
• Complex in its make-up, and suffered from deficient underlying technologies
• Hard to create and update service definitions
• Rigid in how service data was collected and managed
• Relied on too few data sources for actionable business insight
• Weak integration between metrics from distributed platforms with mainframes
The Unfulfilled Promise of BSM
• Driven by the emergence of analytics platforms like Splunk and Elastic
• Organizations looking to change the approach to managing IT infrastructure
• Need to move away from platform specific tools requiring extensive domain expertise
• Analytics provide a multi-platform, cross-discipline, integrated view across the IT infrastructure
The Emergence of ITOA & Big Data Analytics
IT Operations Analytics (ITOA): ITOA is a market for solutions that bring advanced analytical
techniques to IT operations management use cases and data. ITOA solutions collect, store,
analyze, and visualize IT operations data from other applications and IT operations
management (ITOM) tools, enabling IT operations teams to perform faster root cause
analysis, triage, and problem resolution.
3 Key Properties of AIOps:
• Ingest infrastructure and application availability, performance, and event data of different types across all IT platforms and components
• Analyze the data collected using statistics methods and provide visualization through reports and dashboards
• Apply machine learning algorithms to collected data to discover patterns, detect anomalies, understand relationships, and predict
future behavior
Ingest, Analyze, Learn!
Gartner Group predicts that by 2023, 30% of large enterprises will be using artificial intelligence for IT operations (AIOps)
Deliver Cross-Domain Analysis and Visibility With AIOps and Digital Experience Monitoring, Published 5 July 2018 (ID: G00352799)
What is Artificial Intelligence Ops (AIOps)?
Artificial Intelligence for IT Operations: Platforms that combine big data and machine learning
functionality to enhance and potentially replace a broad range of IT Operations processes and
tasks, including monitoring, event correlation and analysis, service management, and automation.
• Provide the capability to capture data from a variety of platforms and sources
• Normalize the data so it can be effectively correlated and easily visualized
• Include advanced search capabilities and extensive analysis
• In-depth visualization: basic reporting, event monitoring, and comprehensive dashboards
• Address the requirements IT organizations have dealt with in the past using different platform tools
Analytics Platform – A Critical Component of AIOps
 Network performance monitoring
 IT infrastructure monitoring
 Application performance monitoring
 Digital Experience Monitoring (DEM)
 Service Level Management (SLA) monitoring
Machine learning has come to be known as a discipline within computer science that uses
statistical techniques to give computer systems the ability to "learn" with data, without being
explicitly programmed.
Machine Learning – Completing the AIOps Solution
• Learning about, and from, the data to make data-driven decisions
• Used to quickly create, deploy and continuously monitor a high volume of analytic models
• Make better use of data and drive better outcomes
• The “artificial intelligence” that when combined with ITOA provides an AIOps platform
• Get a deep understanding of the impact that service degradation has on the components in the service stack
• Proactively organize and correlate relevant metrics and events according to the business services they support
• Detect anomalies and understand patterns in the behavior of the IT components and applications
• Predict future behavior with self-learning capabilities
• Simplify operations, prioritize problem resolution, and align IT with the business
Benefits of AIOps
Gartner Group predicts that by 2023, AIOps platforms will become the
prime tool for analysis of monitoring data and today's domain-specific
monitoring tools will feed their important data into AIOps for
consolidated, higher-level analysis.
Deliver Cross-Domain Analysis and Visibility With AIOps and Digital Experience Monitoring,
Published 5 July 2018 (ID: G00352799)
IBM z and IBM i
are critical to many
organizations
91%of executives predict long-term
viability of the mainframe as the
platform continues evolving to
meet digital business demands
>100kcompanies today use IBM i
technology to run significant
workloads & power critical
business applications
BMC 12th Annual Mainframe Research Results – Nov. 2017 Syncsort 2018 State of Resilience: The New IT Landscape for Executives:
Threats, Opportunities and Best Practices.” Jan. 2018
that’s 2,500,000,000 -- business
transactions per mainframe per day
2000+ organizations overall
2.5 B
92 of the World’s Largest
Banks, 10 of the world’s
largest insurers, and 23 of 25
of the largest U.S. retailers…
Depend on IBM
mainframes!
• IBM System Z® and IBM i® are a valuable source of intelligence
• Mission-critical platforms for many organizations
• System Z is the back-end for many web and mobile applications
• Provides high-volume transaction processing and database services
Addressing the IBM Gap
• Analytics platforms have for the most part ignored these systems
• Inability to include these platforms, became one of the primary
short-comings that killed BSM solutions
• Responsibility of gathering IBM system data sources pushed onto
other vendors to supply
• Require special technology from partner vendors
• Must understand the IBM system data sources
• Map, normalize, and transform the data into a format easily
ingested and understood by analytics platforms
Addressing the IBM Gap
Big Iron to Big
Data Analytics
Challenges
So many data sources
Mainframe:
Systems Management Facility (SMF),
Syslog, Log4j web and application logs,
RMF, RACF, USS files and standard
datasets
IBM i:
QAUD Journal, QHIST, Message Queues,
Operational Logs
Format of data
Mainframe:
• Complex data structures (SMF) with
headers, product sections, data
sections, variable length and self-
describing
• EBCDIC not recognized outside of
the mainframe world
• Binary flags and fields
IBM i:
• Complex data structures with
unique journal entry types, headers,
product sections, data sections,
variable length and self-describing
• IBM i journals in DB2
• Collection Services
• IBM i information needs to be
converted to workable formats such
as Syslog, CEF, JSON, etc.
Volume of data
Millions of records generated daily
Difficulty to get the
information in a timely
manner
• Not real-time, typically have to wait
overnight for an offload
• Typical daily FTP upload/downloads
can’t get granular
• Leading automatic forwarder of IBM z/OS® mainframe and IBM i log data to analytics platforms
• Enables organizations to analyze and visualize IBM system information in Splunk, Elastic, and other analytics platforms
• Gathers all the required data sources needed to fill the IBM systems gap in the IT analytics strategy
Syncsort Ironstream®
• AIOps is nothing to fear
• Just different (better?) technology to address long-standing
requirements
• It can help to…
• Effectively set Service Level Agreements (SLAs)
• Identify when potential problems might occur
• Help to plan for needed changes in the IT capacity or environment
• Machine learning and AI might seem scary… but it is what IT has
been asking for a long time
• The best way to understand how the infrastructure will perform is
to analyze past performance and learn from it
Summary
Thank You!
Ed Hallock
President & CEO, ZERC Consulting, Inc.
p 727-385-8115
ehallock@syncsort.com

More Related Content

What's hot (20)

PPTX
From Data Chaos to Data Culture
Matt Turner
 
PDF
JCSQE初級受けてみたの
ノグチ ノグチ
 
PDF
State of Data Governance in 2021
DATAVERSITY
 
PDF
アサヒのデータ活用基盤を支えるデータ仮想化技術
Denodo
 
PPTX
PowerApps に Power BI を埋め込んでみよう!
Teruchika Yamada
 
PPTX
Introducing ODC analysis for Redmine Osaka community
Yutaka KOGURE
 
PDF
Ibm 100 years of foresight
atelier t*h
 
PPT
Crystal Reports - The Power and Possibilities of SQL Expressions
Kurt Reinhardt
 
PPT
Business Intelligence
Hank Lin
 
PPTX
How to Structure the Data Organization
Robyn Bollhorst
 
PDF
Master Data Management - Aligning Data, Process, and Governance
DATAVERSITY
 
PPT
Ch09供應鏈管理
randall299
 
PDF
データファブリック実現のためのプロジェクトの進め方とは
Denodo
 
PDF
DAS Slides: Self-Service Reporting and Data Prep – Benefits & Risks
DATAVERSITY
 
PPTX
Data Factoryの勘所・大事なところ
Tsubasa Yoshino
 
PPTX
Microsoft: A Waking Giant In Healthcare Analytics and Big Data
Health Catalyst
 
PPTX
Optimisation vs prediction
Dr. Stylianos Kampakis
 
PDF
第ⅲ部:Clean architecture 設計の原則
tak
 
PDF
Data Architecture, Solution Architecture, Platform Architecture — What’s the ...
DATAVERSITY
 
PDF
Business Value Metrics for Data Governance
DATAVERSITY
 
From Data Chaos to Data Culture
Matt Turner
 
JCSQE初級受けてみたの
ノグチ ノグチ
 
State of Data Governance in 2021
DATAVERSITY
 
アサヒのデータ活用基盤を支えるデータ仮想化技術
Denodo
 
PowerApps に Power BI を埋め込んでみよう!
Teruchika Yamada
 
Introducing ODC analysis for Redmine Osaka community
Yutaka KOGURE
 
Ibm 100 years of foresight
atelier t*h
 
Crystal Reports - The Power and Possibilities of SQL Expressions
Kurt Reinhardt
 
Business Intelligence
Hank Lin
 
How to Structure the Data Organization
Robyn Bollhorst
 
Master Data Management - Aligning Data, Process, and Governance
DATAVERSITY
 
Ch09供應鏈管理
randall299
 
データファブリック実現のためのプロジェクトの進め方とは
Denodo
 
DAS Slides: Self-Service Reporting and Data Prep – Benefits & Risks
DATAVERSITY
 
Data Factoryの勘所・大事なところ
Tsubasa Yoshino
 
Microsoft: A Waking Giant In Healthcare Analytics and Big Data
Health Catalyst
 
Optimisation vs prediction
Dr. Stylianos Kampakis
 
第ⅲ部:Clean architecture 設計の原則
tak
 
Data Architecture, Solution Architecture, Platform Architecture — What’s the ...
DATAVERSITY
 
Business Value Metrics for Data Governance
DATAVERSITY
 

Similar to What Does Artificial Intelligence Have to Do with IT Operations? (20)

PDF
AIOps, IT Analytics, and Business Performance: What’s Needed and What Works
Enterprise Management Associates
 
PDF
Old Dogs, New Tricks: Big Data from and for Mainframe IT
Precisely
 
PDF
Leveraging the Power of the ServiceNow® Platform with Mainframe and IBM i Sys...
Precisely
 
PPTX
Oi
Subbu Jois
 
PDF
AIOps Deployments in the Real World: Bringing Operations and Security Together
Enterprise Management Associates
 
PDF
Advanced IT Analytics: A Look at Real Adoptions in the Real World
Enterprise Management Associates
 
PDF
AIOps is Revolutionizing IT Operations Management.pdf
MobMaxime
 
PDF
Digital Transformation: How to Run Best-in-Class IT Operations in a World of ...
Precisely
 
PDF
Machine Data Analytics
Nicolas Morales
 
DOCX
Gartner market guide ai ops platforms
Rajeev Mohal
 
PDF
AIOps - The next 5 years
Moogsoft
 
PDF
AIOps and IT Analytics at the Crossroads: What’s Real Today and What’s Needed...
Enterprise Management Associates
 
PDF
Skill Up Splunk DevOps slides with AIOps MLOps
SmartBoyz3
 
PDF
Driving Digital Transformation through Service-Centric AIOps
OpsRamp
 
PDF
The AI Advantage: How IT Leaders are Redefining Operations in 2025
Enterprise Management Associates
 
PDF
Big Data Expo 2015 - Savision Optimizing IT Operations
BigDataExpo
 
PPTX
The future of AIOps
GAVS Technologies
 
PDF
Cloud Service Management: Why Machine Learning is Now Essential
DevOps.com
 
PPTX
Unleashing the power of machine learning for it ops management
Jason Bloomberg
 
DOCX
A Comprehensive Guide to AIOps Integration in Organizations
CloudZenix LLC
 
AIOps, IT Analytics, and Business Performance: What’s Needed and What Works
Enterprise Management Associates
 
Old Dogs, New Tricks: Big Data from and for Mainframe IT
Precisely
 
Leveraging the Power of the ServiceNow® Platform with Mainframe and IBM i Sys...
Precisely
 
AIOps Deployments in the Real World: Bringing Operations and Security Together
Enterprise Management Associates
 
Advanced IT Analytics: A Look at Real Adoptions in the Real World
Enterprise Management Associates
 
AIOps is Revolutionizing IT Operations Management.pdf
MobMaxime
 
Digital Transformation: How to Run Best-in-Class IT Operations in a World of ...
Precisely
 
Machine Data Analytics
Nicolas Morales
 
Gartner market guide ai ops platforms
Rajeev Mohal
 
AIOps - The next 5 years
Moogsoft
 
AIOps and IT Analytics at the Crossroads: What’s Real Today and What’s Needed...
Enterprise Management Associates
 
Skill Up Splunk DevOps slides with AIOps MLOps
SmartBoyz3
 
Driving Digital Transformation through Service-Centric AIOps
OpsRamp
 
The AI Advantage: How IT Leaders are Redefining Operations in 2025
Enterprise Management Associates
 
Big Data Expo 2015 - Savision Optimizing IT Operations
BigDataExpo
 
The future of AIOps
GAVS Technologies
 
Cloud Service Management: Why Machine Learning is Now Essential
DevOps.com
 
Unleashing the power of machine learning for it ops management
Jason Bloomberg
 
A Comprehensive Guide to AIOps Integration in Organizations
CloudZenix LLC
 
Ad

More from Precisely (20)

PDF
Solving the Data Disconnect: Why Success Hinges on Pre-Linked Data.pdf
Precisely
 
PDF
Cooking Up Clean Addresses - 3 Ways to Whip Messy Data into Shape.pdf
Precisely
 
PDF
Building Confidence in AI & Analytics with High-Integrity Location Data.pdf
Precisely
 
PDF
SAP Modernization Strategies for a Successful S/4HANA Journey.pdf
Precisely
 
PDF
Precisely Demo Showcase: Powering ServiceNow Discovery with Precisely Ironstr...
Precisely
 
PDF
The 2025 Guide on What's Next for Automation.pdf
Precisely
 
PDF
Outdated Tech, Invisible Expenses – How Data Silos Undermine Operational Effi...
Precisely
 
PDF
Modernización de SAP: Maximizando el Valor de su Migración a SAP S/4HANA.pdf
Precisely
 
PDF
Outdated Tech, Invisible Expenses – The Hidden Cost of Disconnected Data Syst...
Precisely
 
PDF
Migration vers SAP S/4HANA: Un levier stratégique pour votre transformation d...
Precisely
 
PDF
Outdated Tech, Invisible Expenses: The Hidden Cost of Poor Data Integration o...
Precisely
 
PDF
The Changing Compliance Landscape in 2025.pdf
Precisely
 
PDF
AI You Can Trust: The Critical Role of Governance and Quality.pdf
Precisely
 
PDF
Automate Studio Training: Building Scripts for SAP Fiori and GUI for HTML.pdf
Precisely
 
PDF
Unlocking the Power of Trusted Data for AI, Analytics, and Business Growth.pdf
Precisely
 
PDF
SAP Modernization: Maximizing the Value of Your SAP S/4HANA Migration.pdf
Precisely
 
PDF
End-to-end process automation: Simplifying SAP master data with low-code/no-c...
Precisely
 
PDF
Optimizing Your IBM i Availability: Storage vs. Software Replication.pdf
Precisely
 
PDF
AI You Can Trust - The Role of Data Integrity in AI-Readiness.pdf
Precisely
 
PDF
Top Tips to Get Your Data AI-Ready‎ ‎ ‎‎ ‎
Precisely
 
Solving the Data Disconnect: Why Success Hinges on Pre-Linked Data.pdf
Precisely
 
Cooking Up Clean Addresses - 3 Ways to Whip Messy Data into Shape.pdf
Precisely
 
Building Confidence in AI & Analytics with High-Integrity Location Data.pdf
Precisely
 
SAP Modernization Strategies for a Successful S/4HANA Journey.pdf
Precisely
 
Precisely Demo Showcase: Powering ServiceNow Discovery with Precisely Ironstr...
Precisely
 
The 2025 Guide on What's Next for Automation.pdf
Precisely
 
Outdated Tech, Invisible Expenses – How Data Silos Undermine Operational Effi...
Precisely
 
Modernización de SAP: Maximizando el Valor de su Migración a SAP S/4HANA.pdf
Precisely
 
Outdated Tech, Invisible Expenses – The Hidden Cost of Disconnected Data Syst...
Precisely
 
Migration vers SAP S/4HANA: Un levier stratégique pour votre transformation d...
Precisely
 
Outdated Tech, Invisible Expenses: The Hidden Cost of Poor Data Integration o...
Precisely
 
The Changing Compliance Landscape in 2025.pdf
Precisely
 
AI You Can Trust: The Critical Role of Governance and Quality.pdf
Precisely
 
Automate Studio Training: Building Scripts for SAP Fiori and GUI for HTML.pdf
Precisely
 
Unlocking the Power of Trusted Data for AI, Analytics, and Business Growth.pdf
Precisely
 
SAP Modernization: Maximizing the Value of Your SAP S/4HANA Migration.pdf
Precisely
 
End-to-end process automation: Simplifying SAP master data with low-code/no-c...
Precisely
 
Optimizing Your IBM i Availability: Storage vs. Software Replication.pdf
Precisely
 
AI You Can Trust - The Role of Data Integrity in AI-Readiness.pdf
Precisely
 
Top Tips to Get Your Data AI-Ready‎ ‎ ‎‎ ‎
Precisely
 
Ad

Recently uploaded (20)

PDF
NewMind AI - Journal 100 Insights After The 100th Issue
NewMind AI
 
PPTX
OpenID AuthZEN - Analyst Briefing July 2025
David Brossard
 
PDF
Achieving Consistent and Reliable AI Code Generation - Medusa AI
medusaaico
 
PDF
"Beyond English: Navigating the Challenges of Building a Ukrainian-language R...
Fwdays
 
PDF
Bitcoin for Millennials podcast with Bram, Power Laws of Bitcoin
Stephen Perrenod
 
PDF
Blockchain Transactions Explained For Everyone
CIFDAQ
 
PDF
Presentation - Vibe Coding The Future of Tech
yanuarsinggih1
 
PPTX
✨Unleashing Collaboration: Salesforce Channels & Community Power in Patna!✨
SanjeetMishra29
 
PDF
HubSpot Main Hub: A Unified Growth Platform
Jaswinder Singh
 
PDF
Python basic programing language for automation
DanialHabibi2
 
PDF
CIFDAQ Token Spotlight for 9th July 2025
CIFDAQ
 
PDF
The Builder’s Playbook - 2025 State of AI Report.pdf
jeroen339954
 
PDF
How Startups Are Growing Faster with App Developers in Australia.pdf
India App Developer
 
PDF
Newgen Beyond Frankenstein_Build vs Buy_Digital_version.pdf
darshakparmar
 
PDF
Exolore The Essential AI Tools in 2025.pdf
Srinivasan M
 
PDF
Timothy Rottach - Ramp up on AI Use Cases, from Vector Search to AI Agents wi...
AWS Chicago
 
PDF
Jak MŚP w Europie Środkowo-Wschodniej odnajdują się w świecie AI
dominikamizerska1
 
PDF
SFWelly Summer 25 Release Highlights July 2025
Anna Loughnan Colquhoun
 
PDF
CIFDAQ Market Insights for July 7th 2025
CIFDAQ
 
PDF
Chris Elwell Woburn, MA - Passionate About IT Innovation
Chris Elwell Woburn, MA
 
NewMind AI - Journal 100 Insights After The 100th Issue
NewMind AI
 
OpenID AuthZEN - Analyst Briefing July 2025
David Brossard
 
Achieving Consistent and Reliable AI Code Generation - Medusa AI
medusaaico
 
"Beyond English: Navigating the Challenges of Building a Ukrainian-language R...
Fwdays
 
Bitcoin for Millennials podcast with Bram, Power Laws of Bitcoin
Stephen Perrenod
 
Blockchain Transactions Explained For Everyone
CIFDAQ
 
Presentation - Vibe Coding The Future of Tech
yanuarsinggih1
 
✨Unleashing Collaboration: Salesforce Channels & Community Power in Patna!✨
SanjeetMishra29
 
HubSpot Main Hub: A Unified Growth Platform
Jaswinder Singh
 
Python basic programing language for automation
DanialHabibi2
 
CIFDAQ Token Spotlight for 9th July 2025
CIFDAQ
 
The Builder’s Playbook - 2025 State of AI Report.pdf
jeroen339954
 
How Startups Are Growing Faster with App Developers in Australia.pdf
India App Developer
 
Newgen Beyond Frankenstein_Build vs Buy_Digital_version.pdf
darshakparmar
 
Exolore The Essential AI Tools in 2025.pdf
Srinivasan M
 
Timothy Rottach - Ramp up on AI Use Cases, from Vector Search to AI Agents wi...
AWS Chicago
 
Jak MŚP w Europie Środkowo-Wschodniej odnajdują się w świecie AI
dominikamizerska1
 
SFWelly Summer 25 Release Highlights July 2025
Anna Loughnan Colquhoun
 
CIFDAQ Market Insights for July 7th 2025
CIFDAQ
 
Chris Elwell Woburn, MA - Passionate About IT Innovation
Chris Elwell Woburn, MA
 

What Does Artificial Intelligence Have to Do with IT Operations?

  • 1. What Does Artificial Intelligence Have to Do with IT Operations? Ed Hallock
  • 2. Housekeeping Webcast Audio • Today’s webcast audio is streamed through your computer speakers. • If you need technical assistance with the web interface or audio, please reach out to us using the chat window. Questions Welcome • Submit your questions at any time during the presentation using the chat window. • We will answer them during our Q&A session following the presentation. Recording and slides • This webcast is being recorded. You will receive an email following the webcast with a link to download both the recording and the slides.
  • 3. Ed Hallock, President & CEO of ZERC Consulting Inc. Ed Hallock is President & CEO of ZERC Consulting Inc., a software product management and marketing consultancy. He is a highly experienced Information Technology Professional with a broad experience base in software product development, support, product management, marketing, and business development. Prior to establishing ZERC Consulting, Ed benefited from working for some of the largest independent software vendors, in a variety of roles, providing enterprise solutions to Global 1000 corporations. Ed has extensive experience in performance and availability management for systems and applications. He holds a bachelor’s degree in Computer Science from Montclair State University in Upper Montclair, New Jersey. In addition to published articles, Ed has presented at numerous industry events as well as corporate related conferences and seminars. Today’s Presenter
  • 4. • Question: How well is the IT infrastructure performing in support of the business? • Plethora of tools to detect, manage, and resolve problems that are causing disruption of services: • Domain-based performance monitors • Network monitors • Application monitors • End-user response time measurement facilities • The challenge remains: How to correlate information so that business services can be accurately monitored and managed. • And it’s not like we haven’t tried… Why Are We Here?
  • 5. The promise: • Map IT components to the business services they supported • Show how well those business services were running • Cross-platform visibility and correlation The failure: • Complex in its make-up, and suffered from deficient underlying technologies • Hard to create and update service definitions • Rigid in how service data was collected and managed • Relied on too few data sources for actionable business insight • Weak integration between metrics from distributed platforms with mainframes The Unfulfilled Promise of BSM
  • 6. • Driven by the emergence of analytics platforms like Splunk and Elastic • Organizations looking to change the approach to managing IT infrastructure • Need to move away from platform specific tools requiring extensive domain expertise • Analytics provide a multi-platform, cross-discipline, integrated view across the IT infrastructure The Emergence of ITOA & Big Data Analytics IT Operations Analytics (ITOA): ITOA is a market for solutions that bring advanced analytical techniques to IT operations management use cases and data. ITOA solutions collect, store, analyze, and visualize IT operations data from other applications and IT operations management (ITOM) tools, enabling IT operations teams to perform faster root cause analysis, triage, and problem resolution.
  • 7. 3 Key Properties of AIOps: • Ingest infrastructure and application availability, performance, and event data of different types across all IT platforms and components • Analyze the data collected using statistics methods and provide visualization through reports and dashboards • Apply machine learning algorithms to collected data to discover patterns, detect anomalies, understand relationships, and predict future behavior Ingest, Analyze, Learn! Gartner Group predicts that by 2023, 30% of large enterprises will be using artificial intelligence for IT operations (AIOps) Deliver Cross-Domain Analysis and Visibility With AIOps and Digital Experience Monitoring, Published 5 July 2018 (ID: G00352799) What is Artificial Intelligence Ops (AIOps)? Artificial Intelligence for IT Operations: Platforms that combine big data and machine learning functionality to enhance and potentially replace a broad range of IT Operations processes and tasks, including monitoring, event correlation and analysis, service management, and automation.
  • 8. • Provide the capability to capture data from a variety of platforms and sources • Normalize the data so it can be effectively correlated and easily visualized • Include advanced search capabilities and extensive analysis • In-depth visualization: basic reporting, event monitoring, and comprehensive dashboards • Address the requirements IT organizations have dealt with in the past using different platform tools Analytics Platform – A Critical Component of AIOps  Network performance monitoring  IT infrastructure monitoring  Application performance monitoring  Digital Experience Monitoring (DEM)  Service Level Management (SLA) monitoring
  • 9. Machine learning has come to be known as a discipline within computer science that uses statistical techniques to give computer systems the ability to "learn" with data, without being explicitly programmed. Machine Learning – Completing the AIOps Solution • Learning about, and from, the data to make data-driven decisions • Used to quickly create, deploy and continuously monitor a high volume of analytic models • Make better use of data and drive better outcomes • The “artificial intelligence” that when combined with ITOA provides an AIOps platform
  • 10. • Get a deep understanding of the impact that service degradation has on the components in the service stack • Proactively organize and correlate relevant metrics and events according to the business services they support • Detect anomalies and understand patterns in the behavior of the IT components and applications • Predict future behavior with self-learning capabilities • Simplify operations, prioritize problem resolution, and align IT with the business Benefits of AIOps Gartner Group predicts that by 2023, AIOps platforms will become the prime tool for analysis of monitoring data and today's domain-specific monitoring tools will feed their important data into AIOps for consolidated, higher-level analysis. Deliver Cross-Domain Analysis and Visibility With AIOps and Digital Experience Monitoring, Published 5 July 2018 (ID: G00352799)
  • 11. IBM z and IBM i are critical to many organizations 91%of executives predict long-term viability of the mainframe as the platform continues evolving to meet digital business demands >100kcompanies today use IBM i technology to run significant workloads & power critical business applications BMC 12th Annual Mainframe Research Results – Nov. 2017 Syncsort 2018 State of Resilience: The New IT Landscape for Executives: Threats, Opportunities and Best Practices.” Jan. 2018 that’s 2,500,000,000 -- business transactions per mainframe per day 2000+ organizations overall 2.5 B 92 of the World’s Largest Banks, 10 of the world’s largest insurers, and 23 of 25 of the largest U.S. retailers… Depend on IBM mainframes!
  • 12. • IBM System Z® and IBM i® are a valuable source of intelligence • Mission-critical platforms for many organizations • System Z is the back-end for many web and mobile applications • Provides high-volume transaction processing and database services Addressing the IBM Gap
  • 13. • Analytics platforms have for the most part ignored these systems • Inability to include these platforms, became one of the primary short-comings that killed BSM solutions • Responsibility of gathering IBM system data sources pushed onto other vendors to supply • Require special technology from partner vendors • Must understand the IBM system data sources • Map, normalize, and transform the data into a format easily ingested and understood by analytics platforms Addressing the IBM Gap
  • 14. Big Iron to Big Data Analytics Challenges So many data sources Mainframe: Systems Management Facility (SMF), Syslog, Log4j web and application logs, RMF, RACF, USS files and standard datasets IBM i: QAUD Journal, QHIST, Message Queues, Operational Logs Format of data Mainframe: • Complex data structures (SMF) with headers, product sections, data sections, variable length and self- describing • EBCDIC not recognized outside of the mainframe world • Binary flags and fields IBM i: • Complex data structures with unique journal entry types, headers, product sections, data sections, variable length and self-describing • IBM i journals in DB2 • Collection Services • IBM i information needs to be converted to workable formats such as Syslog, CEF, JSON, etc. Volume of data Millions of records generated daily Difficulty to get the information in a timely manner • Not real-time, typically have to wait overnight for an offload • Typical daily FTP upload/downloads can’t get granular
  • 15. • Leading automatic forwarder of IBM z/OS® mainframe and IBM i log data to analytics platforms • Enables organizations to analyze and visualize IBM system information in Splunk, Elastic, and other analytics platforms • Gathers all the required data sources needed to fill the IBM systems gap in the IT analytics strategy Syncsort Ironstream®
  • 16. • AIOps is nothing to fear • Just different (better?) technology to address long-standing requirements • It can help to… • Effectively set Service Level Agreements (SLAs) • Identify when potential problems might occur • Help to plan for needed changes in the IT capacity or environment • Machine learning and AI might seem scary… but it is what IT has been asking for a long time • The best way to understand how the infrastructure will perform is to analyze past performance and learn from it Summary
  • 17. Thank You! Ed Hallock President & CEO, ZERC Consulting, Inc. p 727-385-8115 [email protected]