Cookies help us display personalized product recommendations and ensure you have great shopping experience.

By using this site, you agree to the Privacy Policy and Terms of Use.
Accept
SmartData CollectiveSmartData Collective
  • Analytics
    AnalyticsShow More
    unusual trading activity
    Signal Or Noise? A Decision Tree For Evaluating Unusual Trading Activity
    3 Min Read
    software developer using ai
    How Data Analytics Helps Developers Deliver Better Tech Services
    8 Min Read
    ai for stock trading
    Can Data Analytics Help Investors Outperform Warren Buffett
    9 Min Read
    media monitoring
    Signals In The Noise: Using Media Monitoring To Manage Negative Publicity
    5 Min Read
    data analytics
    How Data Analytics Can Help You Construct A Financial Weather Map
    4 Min Read
  • Big Data
  • BI
  • Exclusive
  • IT
  • Marketing
  • Software
Search
© 2008-25 SmartData Collective. All Rights Reserved.
Reading: Build vs. Buy? Things to Consider Before Building an In-House Analytics System
Share
Notification
Font ResizerAa
SmartData CollectiveSmartData Collective
Font ResizerAa
Search
  • About
  • Help
  • Privacy
Follow US
© 2008-23 SmartData Collective. All Rights Reserved.
SmartData Collective > Analytics > Build vs. Buy? Things to Consider Before Building an In-House Analytics System
Analytics

Build vs. Buy? Things to Consider Before Building an In-House Analytics System

Puneet Pandit
Puneet Pandit
4 Min Read
Image
SHARE

ImageMany analytics projects involving log files focus on operational event data. IT use cases around such projects typically focus on locating errors, warnings and critical event information within mountains of data. However, software applications and technology devices produce much more machine data than just log files, which can be incredibly complex.

ImageMany analytics projects involving log files focus on operational event data. IT use cases around such projects typically focus on locating errors, warnings and critical event information within mountains of data. However, software applications and technology devices produce much more machine data than just log files, which can be incredibly complex.

Organizations need to search and mine information contained in machine data and have two choices to execute this challenge: 1) obtain a purpose-built analytics system or 2) build one in-house. While the latter option may sound appealing at first, here are some things to consider before building an in-house machine analytics system:

1. Different users have different requirements

More Read

Image
Analytics for Emotional Examination?
Successful Sales Forecasting Requires Dedicated Technology
Peter Drucker Correctly Predicted Today’s Information Revolution and the Power of Big Data Variety
10 Greatest Challenges Preventing Businesses from Capitalizing on Big Data [INFOGRAPHIC]
5 Ways To Become Extinct as Big Data Evolves [INFOGRAPHIC]

A machine data analytics solution must satisfy the requirements of a wide range of internal consumers. A support engineer working a case needs to be able to see patterns of events and statistics over time grouped by specifics system components. An account manager, professional services engineer or sales rep has very different data analysis needs that involve being able to quickly spot reliability, performance and other issues involving an account, while a marketing or program manager needs spotting feature adoption and trends in product demand. This differentiation between jobs and teams highlights the complexity of an analytics system through machine data.

 2. Every product has a complex and unique representation for machine data

For a set of data to be useful, it needs to communicate detailed information about the configuration, events, and statistics of each product’s unique architecture. Applications, appliances, software companies always log events, counters and information about internal component states, down to the level of vendor-specific abstractions. Much of this data will be specific and will not conform to the common information model for interoperability or end use.

3. A useful data archive will be “Big Data

To be of maximal benefit to all consumers, a good set of machine data need to contain “everything.” Trending and field analysis require detailed parsing for all systems continuously, not just when problems are detected. A successful product may have thousands or even millions of devices and systems reporting data back regularly. The volume of data received and retained in such a case is likely to be in the range of hundreds of terabytes or petabytes over the course of a year.

4. Data formatting and semantics will change quickly and without notice

Machine data analytics require quick adaptation, edge-case coverage and continuous business leverage. A machine data analytics solution cannot expect schematized for specially formatted data, it needs to adapt quickly to changes in format of information from machine logs while maintaining semantic continuity with existing tools. 

In-house solution: The bottom line

While companies can choose to build such an analytical solution in house, it’s not worth the time and effort to do so. An in-house machine data analytics solution is a complex high-performance big data project associated BI tools that requires a variety of committed resources for an extended period of time. It’s inherently time-consuming and risky if not planned properly with appropriate resources needed to design and implement, but also to maintain and manage its life cycle on a continued basis.

Share This Article
Facebook Pinterest LinkedIn
Share

Follow us on Facebook

Latest News

0622cae5 f7d7 4f74 84b5 eabd1a823dca
How Data-Driven Grocery Recommendations Help Shoppers Eat Better With Less Effort
Big Data Exclusive
business recovering from data loss
How Data-Driven Businesses Protect MySQL Databases from Shutdown
Big Data Exclusive
ai driven task management
Reducing “Work About Work” with AI Task Managers
Artificial Intelligence Exclusive
data center uptime
Why Rodent-Resistant Conduits Are Critical for Data Center Uptime
Big Data Data Management Exclusive Risk Management

Stay Connected

1.2KFollowersLike
33.7KFollowersFollow
222FollowersPin

You Might also Like

Image
AnalyticsCloud ComputingCommentaryCulture/LeadershipData MiningExclusiveIT

The Dirty (Not so Secret) Secret of IT Budgets

4 Min Read

Analytics and the Next Best Activity Strategy

3 Min Read

So You Want to be a Data Analyst

7 Min Read
Image
AnalyticsBusiness IntelligenceCollaborative DataSocial Data

Five Data Preparation and Analytics Predictions for 2017

6 Min Read

SmartData Collective is one of the largest & trusted community covering technical content about Big Data, BI, Cloud, Analytics, Artificial Intelligence, IoT & more.

ai is improving the safety of cars
From Bolts to Bots: How AI Is Fortifying the Automotive Industry
Artificial Intelligence
AI chatbots
AI Chatbots Can Help Retailers Convert Live Broadcast Viewers into Sales!
Chatbots

Quick Link

  • About
  • Contact
  • Privacy
Follow US
© 2008-25 SmartData Collective. All Rights Reserved.
Welcome Back!

Sign in to your account

Username or Email Address
Password

Lost your password?