Capacity Model of an ETL system
Ashok Bhatla
Email – ASHOK.BHATLA.WRITER@GMAIL.COM
What is Business Intelligence?
Business Intelligence (BI) is a combination of tools, processes and
software which help a company to transform data into actionable
knowledge, thereby allowing them to take faster and informed decisions in
order to achieve their strategic goals.
It’s all about providing right information to the management at the right
time with the lowest possible cost.

As we are drowning in data, but
starving for knowledge,
Business Intelligence has
become the No. 1 priority for IT
Managers today.
What is ETL?
ETL stands for Extract, Transform and Load. A transactional system is meant
to be a high performance system so that users can get their work faster.
Running some reports from a Transactional system makes it slower. Therefore,
the concept of ETL gained popularity.

In computing, Extract, Transform, and Load
(ETL) refers to a process in database usage
which involves the following steps
Extracts data from outside sources.
Transforms it to fit operational needs,
which can include joining/reformatting
some tables.
Loads it into the end target (database,
more specifically, operational data
store, data mart, or data warehouse)
Example of ETL
OLTP Systems
Cost
Accounting
System

Payroll
Data
ETL – Joins,
Transforms,
Deletes etc.

Load Data

Sales
Data
Staged
Data
Purchasing
Data

EDW /
Reporting Data
What is Capacity Planning?
 Capacity Planning is the process of identifying the current
computing needs of a business application and to forecast the
future computing needs based on the business plans.
 In other words, it means what computing resources are needed to
meet an application’s service level objectives over a period of time.
 In today’s economic climate, business requirements can change
rapidly depending upon an organization’s strategy and goals.
 Therefore properly managed capacity plans should be able to take
unforeseen requirements into account.
 Capacity Planning can be either done in a very casual manner or
very organized and disciplined methodologies can be used.
 More data driven the capacity planning is, more accurate the
results.
Capacity Planning of an IT System
Capacity planning needs to
ensure that all Hardware (Disks,
Memory, CPU, and Network),
Software resources (User
Licenses) and facilities are
optimally used.

Software Licenses,
No. of Users
Servers, Storage,
Networking, CPU
Data Center Space,
Power, Cooling
Capacity Planning
We cannot manage
something which we
cannot measure.

Avoid
downtimes by
reducing no of
Incidents

Achieve
Performance
Objectives
established by
business

If no corrective action is
taken based on measured
data, then Capacity
Planning is of no use

Proactive
Capacity
Planning

Reduce TCO for
the ETL System

Achieve optimal
utilization of
computing
Resources
Capacity Planning Steps
Identify Service Level Objectives – know
the requirements in business terms

Analyze Current Capacity – Gather data
about resource consumption, ideal times
and peak usage
Know the future business needs and plan
for future capacity needs – How the IT
systems will be able to handle increased
load
Strike a Balance
As per Moore’s Law, IT is getting cheaper
and faster every 18 months. But
organizations cannot wait for next
generation of technology to be available –
as they need to take care of business.

Performance

Utilization
Supply

Demand
Cost
As per Parkinson’s Law, if you give
more resources to customers, they will
find ways to use more resources. IT
managers cannot keep on giving
unlimited resources to users.

Resources
Capacity Challenges for ETL Systems
ETL jobs are of different types
(Full Refresh and some Delta
Refresh), process varying
amounts of data and are
scheduled at different
frequencies. Therefore, there
are always spikes and valleys
of workload.

SQL queries are simple and do
not require parallelism. On
the other hand in an ETL
system, very large datasets
and processed and Workloads
are random in nature and not
easy to predict. This makes it
difficult to predict the
resource requirement.

An enterprise ETL system
processes thousands of
batch jobs on a daily basis.
These Systems connect to
large no. of data sources
which reside on different
platforms and may be on
different networks across
the WAN

Different types of users have
different peak usage
requirements. They have
different needs for
Transaction times, Elapsed
Times and Response Times
Disks Capacity Issues – Engineers spending lots of time cleaning
old stale data
Over Capacity – Paid for extra compute Capacity, but not
utilizing it
Network Slowness Problems – Batch Jobs running slow
sometimes.
No. of User Licenses reaching limits.
Analyse the Complete Picture
User Needs
Transaction Time
Response Time
Elapsed Time
Throughput Time
Data Usage Patterns

Data Complexity

(Type of SQL Queries or ETL Transformations)
(Financial, Marketing or Factory Data)
Business Terms
Volume and Frequency of Data Loads

User Profile

(No. of Batch Jobs and GB of data processed)

(Simple User or Advanced Data Miner)

Storage
( SAN / NAS / Local Disks,)

Processing Power(CPU, No. of Cores )
Technical Terms

Network Bandwidth
(Transfer Rate, Bytes Tx/Rx)

Memory (Physical, Cache, Swap)
Capacity Planning Tools
Vectors of Measurement
Availability
Performance
Throughput
Utilization
Quality
Efficiency

Simulation
Accurate, but needs
lots of time for setup

Testing
Costly, as another
environment similar
to Production is
needed.

Trending
Can be done using
Excel. Simple, but
does not take non
linear behavior into
account

Analytical Modeling
More advanced,
Faster and Accurate
Data Collection
No. of Subject
Period ( WW or Month) Areas

No. of ETL
No. of Projects Batch Jobs

Storage
Consumption

CPU

Network

Disk I/O

Tx/Rx Bytes

How do we collect Performance / Capacity Data?
OS monitoring tools – even freeware like Nagios, kSar, SQLMon. PerfMon
Data collected in SQL tables
Data collected by Software used by the Storage Frames – gives Utilization, Capacity
and Performance Data
Capacity Model for ETL System ??
Examples of some metrics which can be developed
o Average Run time for a Batch job
o Average CPU for a Batch job
o CPU Utilization /Subject Areas /Week
o CPU Utilization / Project / Week
o No. of Batch Jobs / GB of Storage
o No. of Batch Jobs / X Amount of CPU
Dashboard / Indicators
Phase I
Develop a Trending Model in the beginning

Dashboards can be developed using Share Point BI if the Capacity Data is captured
in an Excel Pivot Table or SQL Databases

Phase II
Can we develop a Predictive Model???
Capacity management for ETL System

More Related Content

PPTX
Capacity Management of an ETL System
PPT
Bi Capacity Planning
PDF
Tuning data warehouse
PPTX
Data Warehouse Design on Cloud ,A Big Data approach Part_One
PPTX
Data warehouse
PPT
Migration services (DB2 to Teradata)
PDF
Struggling with data management
DOCX
Db2 migration -_tips,_tricks,_and_pitfalls
Capacity Management of an ETL System
Bi Capacity Planning
Tuning data warehouse
Data Warehouse Design on Cloud ,A Big Data approach Part_One
Data warehouse
Migration services (DB2 to Teradata)
Struggling with data management
Db2 migration -_tips,_tricks,_and_pitfalls

What's hot (20)

PPT
Lecture 04 - Granularity in the Data Warehouse
PPTX
Parallel processing in data warehousing and big data
PPT
DATASTAGE AND QUALITY STAGE 9.1 ONLINE TRAINING
PPT
Omaha RUG 2015 IMS DB solution pack 2015
PPS
Teradata Aggregate Join Indices And Dimensional Models
PPT
Why dba needed in dwh projects
PPTX
Data summit connect fall 2020 - rise of data ops
PPTX
Data warehouse design
PPTX
Business analysis in data warehousing
PDF
Building Data Warehouse in SQL Server
PPTX
Capacity Planning and Power Management of Data Centers.
PPTX
Database in banking industries
PPTX
Skillwise Big Data part 2
PPTX
Skilwise Big data
PPTX
From Traditional Data Warehouse To Real Time Data Warehouse
PPT
OLAP Cubes in Datawarehousing
PPTX
IN-MEMORY DATABASE SYSTEMS FOR BIG DATA MANAGEMENT.SAP HANA DATABASE.
PPT
Hand Coding ETL Scenarios and Challenges
PPTX
OLAP & Data Warehouse
Lecture 04 - Granularity in the Data Warehouse
Parallel processing in data warehousing and big data
DATASTAGE AND QUALITY STAGE 9.1 ONLINE TRAINING
Omaha RUG 2015 IMS DB solution pack 2015
Teradata Aggregate Join Indices And Dimensional Models
Why dba needed in dwh projects
Data summit connect fall 2020 - rise of data ops
Data warehouse design
Business analysis in data warehousing
Building Data Warehouse in SQL Server
Capacity Planning and Power Management of Data Centers.
Database in banking industries
Skillwise Big Data part 2
Skilwise Big data
From Traditional Data Warehouse To Real Time Data Warehouse
OLAP Cubes in Datawarehousing
IN-MEMORY DATABASE SYSTEMS FOR BIG DATA MANAGEMENT.SAP HANA DATABASE.
Hand Coding ETL Scenarios and Challenges
OLAP & Data Warehouse
Ad

Similar to Capacity management for ETL System (20)

PDF
5063 - IT Operations Analytics Bridging Business and IT
PPTX
Capacity Management - ROI Goes to the Bottom Line
PDF
Digital Transformation: How to Run Best-in-Class IT Operations in a World of ...
PDF
Enterprise Capacity Optimization - Capacity Management Over Everything
PPT
5701918.ppt
PDF
Dit yvol5iss21
PPTX
Empower customer success at LinkedIn with advanced analytics and great visual...
PDF
Dit yvol2iss25
PDF
Time to Come out of the Silo - The Impact of New Technologies on Mainframe Ca...
PDF
AI Enabling the Modern IT Operating Model
PPTX
Justifying Capacity Managment Webinar 4/10
PPT
Cp Repton
PPT
Airavaat Technologies October 2013
PDF
Justifying Capacity Management Efforts with Provable and Positive ROI
PDF
Dit yvol1iss3
PDF
go.datadriven.whitepaper
PDF
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
PDF
Enterprise Artificial Intelligence strategy
PDF
Data Trends for 2019: Extracting Value from Data
PDF
Accelerating Data Science and Real Time Analytics at Scale
5063 - IT Operations Analytics Bridging Business and IT
Capacity Management - ROI Goes to the Bottom Line
Digital Transformation: How to Run Best-in-Class IT Operations in a World of ...
Enterprise Capacity Optimization - Capacity Management Over Everything
5701918.ppt
Dit yvol5iss21
Empower customer success at LinkedIn with advanced analytics and great visual...
Dit yvol2iss25
Time to Come out of the Silo - The Impact of New Technologies on Mainframe Ca...
AI Enabling the Modern IT Operating Model
Justifying Capacity Managment Webinar 4/10
Cp Repton
Airavaat Technologies October 2013
Justifying Capacity Management Efforts with Provable and Positive ROI
Dit yvol1iss3
go.datadriven.whitepaper
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
Enterprise Artificial Intelligence strategy
Data Trends for 2019: Extracting Value from Data
Accelerating Data Science and Real Time Analytics at Scale
Ad

More from ASHOK BHATLA (8)

PPT
Smart Electric Meters - Role of Govt. in Technology Management
PPT
World innovation - Knowledge Competitiveness Index
PPT
R&d management trending between india, china and us
PPTX
Ashok career map
PPT
Data centers site selection mathematical model - may 2012
PPT
Dc energy efficiency presentation for psu lecture - ashok bhatla - final
PPT
Solar lantern technology adoption model for indian villages - final
PPT
Emerging Technology Products for Indian Villages
Smart Electric Meters - Role of Govt. in Technology Management
World innovation - Knowledge Competitiveness Index
R&d management trending between india, china and us
Ashok career map
Data centers site selection mathematical model - may 2012
Dc energy efficiency presentation for psu lecture - ashok bhatla - final
Solar lantern technology adoption model for indian villages - final
Emerging Technology Products for Indian Villages

Recently uploaded (20)

PPTX
2 - Self & Personality 587689213yiuedhwejbmansbeakjrk
PDF
#1 Safe and Secure Verified Cash App Accounts for Purchase.pdf
PPTX
basic introduction to research chapter 1.pptx
PDF
1911 Gold Corporate Presentation Aug 2025.pdf
PPTX
Project Management_ SMART Projects Class.pptx
PDF
Keppel_Proposed Divestment of M1 Limited
PDF
Kishore Vora - Best CFO in India to watch in 2025.pdf
DOCX
Hand book of Entrepreneurship 4 Chapters.docx
PPTX
BUSINESS CYCLE_INFLATION AND UNEMPLOYMENT.pptx
PDF
Daniels 2024 Inclusive, Sustainable Development
PPTX
interschool scomp.pptxzdkjhdjvdjvdjdhjhieij
PPTX
chapter 2 entrepreneurship full lecture ppt
PDF
Booking.com The Global AI Sentiment Report 2025
PDF
Family Law: The Role of Communication in Mediation (www.kiu.ac.ug)
PDF
Environmental Law Communication: Strategies for Advocacy (www.kiu.ac.ug)
DOCX
80 DE ÔN VÀO 10 NĂM 2023vhkkkjjhhhhjjjj
PPT
Lecture 3344;;,,(,(((((((((((((((((((((((
PDF
ICv2 White Paper - Gen Con Trade Day 2025
PPTX
Slide gioi thieu VietinBank Quy 2 - 2025
PDF
Ron Thomas - Top Influential Business Leaders Shaping the Modern Industry – 2025
2 - Self & Personality 587689213yiuedhwejbmansbeakjrk
#1 Safe and Secure Verified Cash App Accounts for Purchase.pdf
basic introduction to research chapter 1.pptx
1911 Gold Corporate Presentation Aug 2025.pdf
Project Management_ SMART Projects Class.pptx
Keppel_Proposed Divestment of M1 Limited
Kishore Vora - Best CFO in India to watch in 2025.pdf
Hand book of Entrepreneurship 4 Chapters.docx
BUSINESS CYCLE_INFLATION AND UNEMPLOYMENT.pptx
Daniels 2024 Inclusive, Sustainable Development
interschool scomp.pptxzdkjhdjvdjvdjdhjhieij
chapter 2 entrepreneurship full lecture ppt
Booking.com The Global AI Sentiment Report 2025
Family Law: The Role of Communication in Mediation (www.kiu.ac.ug)
Environmental Law Communication: Strategies for Advocacy (www.kiu.ac.ug)
80 DE ÔN VÀO 10 NĂM 2023vhkkkjjhhhhjjjj
Lecture 3344;;,,(,(((((((((((((((((((((((
ICv2 White Paper - Gen Con Trade Day 2025
Slide gioi thieu VietinBank Quy 2 - 2025
Ron Thomas - Top Influential Business Leaders Shaping the Modern Industry – 2025

Capacity management for ETL System

  • 1. Capacity Model of an ETL system Ashok Bhatla Email – ASHOK.BHATLA.WRITER@GMAIL.COM
  • 2. What is Business Intelligence? Business Intelligence (BI) is a combination of tools, processes and software which help a company to transform data into actionable knowledge, thereby allowing them to take faster and informed decisions in order to achieve their strategic goals. It’s all about providing right information to the management at the right time with the lowest possible cost. As we are drowning in data, but starving for knowledge, Business Intelligence has become the No. 1 priority for IT Managers today.
  • 3. What is ETL? ETL stands for Extract, Transform and Load. A transactional system is meant to be a high performance system so that users can get their work faster. Running some reports from a Transactional system makes it slower. Therefore, the concept of ETL gained popularity. In computing, Extract, Transform, and Load (ETL) refers to a process in database usage which involves the following steps Extracts data from outside sources. Transforms it to fit operational needs, which can include joining/reformatting some tables. Loads it into the end target (database, more specifically, operational data store, data mart, or data warehouse)
  • 4. Example of ETL OLTP Systems Cost Accounting System Payroll Data ETL – Joins, Transforms, Deletes etc. Load Data Sales Data Staged Data Purchasing Data EDW / Reporting Data
  • 5. What is Capacity Planning?  Capacity Planning is the process of identifying the current computing needs of a business application and to forecast the future computing needs based on the business plans.  In other words, it means what computing resources are needed to meet an application’s service level objectives over a period of time.  In today’s economic climate, business requirements can change rapidly depending upon an organization’s strategy and goals.  Therefore properly managed capacity plans should be able to take unforeseen requirements into account.  Capacity Planning can be either done in a very casual manner or very organized and disciplined methodologies can be used.  More data driven the capacity planning is, more accurate the results.
  • 6. Capacity Planning of an IT System Capacity planning needs to ensure that all Hardware (Disks, Memory, CPU, and Network), Software resources (User Licenses) and facilities are optimally used. Software Licenses, No. of Users Servers, Storage, Networking, CPU Data Center Space, Power, Cooling
  • 7. Capacity Planning We cannot manage something which we cannot measure. Avoid downtimes by reducing no of Incidents Achieve Performance Objectives established by business If no corrective action is taken based on measured data, then Capacity Planning is of no use Proactive Capacity Planning Reduce TCO for the ETL System Achieve optimal utilization of computing Resources
  • 8. Capacity Planning Steps Identify Service Level Objectives – know the requirements in business terms Analyze Current Capacity – Gather data about resource consumption, ideal times and peak usage Know the future business needs and plan for future capacity needs – How the IT systems will be able to handle increased load
  • 9. Strike a Balance As per Moore’s Law, IT is getting cheaper and faster every 18 months. But organizations cannot wait for next generation of technology to be available – as they need to take care of business. Performance Utilization Supply Demand Cost As per Parkinson’s Law, if you give more resources to customers, they will find ways to use more resources. IT managers cannot keep on giving unlimited resources to users. Resources
  • 10. Capacity Challenges for ETL Systems ETL jobs are of different types (Full Refresh and some Delta Refresh), process varying amounts of data and are scheduled at different frequencies. Therefore, there are always spikes and valleys of workload. SQL queries are simple and do not require parallelism. On the other hand in an ETL system, very large datasets and processed and Workloads are random in nature and not easy to predict. This makes it difficult to predict the resource requirement. An enterprise ETL system processes thousands of batch jobs on a daily basis. These Systems connect to large no. of data sources which reside on different platforms and may be on different networks across the WAN Different types of users have different peak usage requirements. They have different needs for Transaction times, Elapsed Times and Response Times
  • 11. Disks Capacity Issues – Engineers spending lots of time cleaning old stale data Over Capacity – Paid for extra compute Capacity, but not utilizing it Network Slowness Problems – Batch Jobs running slow sometimes. No. of User Licenses reaching limits.
  • 12. Analyse the Complete Picture User Needs Transaction Time Response Time Elapsed Time Throughput Time Data Usage Patterns Data Complexity (Type of SQL Queries or ETL Transformations) (Financial, Marketing or Factory Data) Business Terms Volume and Frequency of Data Loads User Profile (No. of Batch Jobs and GB of data processed) (Simple User or Advanced Data Miner) Storage ( SAN / NAS / Local Disks,) Processing Power(CPU, No. of Cores ) Technical Terms Network Bandwidth (Transfer Rate, Bytes Tx/Rx) Memory (Physical, Cache, Swap)
  • 13. Capacity Planning Tools Vectors of Measurement Availability Performance Throughput Utilization Quality Efficiency Simulation Accurate, but needs lots of time for setup Testing Costly, as another environment similar to Production is needed. Trending Can be done using Excel. Simple, but does not take non linear behavior into account Analytical Modeling More advanced, Faster and Accurate
  • 14. Data Collection No. of Subject Period ( WW or Month) Areas No. of ETL No. of Projects Batch Jobs Storage Consumption CPU Network Disk I/O Tx/Rx Bytes How do we collect Performance / Capacity Data? OS monitoring tools – even freeware like Nagios, kSar, SQLMon. PerfMon Data collected in SQL tables Data collected by Software used by the Storage Frames – gives Utilization, Capacity and Performance Data
  • 15. Capacity Model for ETL System ?? Examples of some metrics which can be developed o Average Run time for a Batch job o Average CPU for a Batch job o CPU Utilization /Subject Areas /Week o CPU Utilization / Project / Week o No. of Batch Jobs / GB of Storage o No. of Batch Jobs / X Amount of CPU
  • 16. Dashboard / Indicators Phase I Develop a Trending Model in the beginning Dashboards can be developed using Share Point BI if the Capacity Data is captured in an Excel Pivot Table or SQL Databases Phase II Can we develop a Predictive Model???