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
    data analytics in ecommerce
    Analytics Technology Drives Conversions for Your eCommerce Site
    5 Min Read
    CRM Analytics
    CRM Analytics Helps Content Creators Develop an Edge in a Saturated Market
    5 Min Read
    data analytics and commerce media
    Leveraging Commerce Media & Data Analytics in Ecommerce
    8 Min Read
    big data in healthcare
    Leveraging Big Data and Analytics to Enhance Patient-Centered Care
    5 Min Read
    instagram visibility
    Data Analytics Plays a Key Role in Improving Instagram Visibility
    7 Min Read
  • Big Data
  • BI
  • Exclusive
  • IT
  • Marketing
  • Software
Search
© 2008-23 SmartData Collective. All Rights Reserved.
Reading: #10: Here’s a thought…
Share
Notification Show More
Font ResizerAa
SmartData CollectiveSmartData Collective
Font ResizerAa
Search
  • About
  • Help
  • Privacy
Follow US
© 2008-23 SmartData Collective. All Rights Reserved.
SmartData Collective > Analytics > Predictive Analytics > #10: Here’s a thought…
Predictive Analytics

#10: Here’s a thought…

brianfarnan1
Last updated: May 18, 2009 5:59 pm
brianfarnan1
8 Min Read
SHARE

An occasional series in which a review of recent posts on SmartData Collective reveals the following nuggets:

“Intelligent” decision-making
If a predictive analytic model turns uncertainty about how a particular customer (or supplier or partner) will behave in the future into a usable probability, then you can act based in part on that probability. In other words you can specify some rules that use the probability in deciding what action to take next. This kind of “intelligent” decision-making by systems is, I believe, the future. I think that many folks over-estimate the value of making more information available – even if that information is predictive. No matter how easy you make it to consume the information, you still assume that the person is able to put it in context and use it. I call this the “so what” problem:

—James Taylor: “Beyond Predictive BI”

Data gazers
All enterprise information initiatives are complex endeavors and data quality projects are certainly no exception. Success requires people taking on the challenge united by collaboration, guided by an effective methodology, and implementing a solution using powerful technology. But the complexity of the project can…


An occasional series in which a review of recent posts on SmartData Collective reveals the following nuggets:

More Read

India Trip

5 Applications of Predictive Analytics
Kickfire: Data Analytics for the Masses
Is Big Data the Silver Bullet for Advanced Supply Chain Analytics?
Business Analytics: Correlation is Not Causation

“Intelligent” decision-making
If a predictive analytic model turns uncertainty about how a particular customer (or supplier or partner) will behave in the future into a usable probability, then you can act based in part on that probability. In other words you can specify some rules that use the probability in deciding what action to take next. This kind of “intelligent” decision-making by systems is, I believe, the future. I think that many folks over-estimate the value of making more information available – even if that information is predictive. No matter how easy you make it to consume the information, you still assume that the person is able to put it in context and use it. I call this the “so what” problem:

—James Taylor: “Beyond Predictive BI”

Data gazers
All enterprise information initiatives are complex endeavors and data quality projects are certainly no exception. Success requires people taking on the challenge united by collaboration, guided by an effective methodology, and implementing a solution using powerful technology. But the complexity of the project can sometimes work against your best intentions. It is easy to get pulled into the mechanics of documenting the business requirements and functional specifications and then charging ahead on the common mantra: “We planned the work, now we work the plan.”

—Jim Harris: “Data Gazers”

More hurry, less progress
When executives try to move too fast, such as attempting in three months to define and cascade a scorecard of key performance indicators (KPIs) from the executive team down to the front line employees, the implementation is doomed to failure. The reason is organizations require a managed rate of learning and buy-in acceptance. The major impediments to implementing Performance Management methodologies are not technical, such as data availability or quality; they are social. For example, KPIs should be gradually and carefully defined and cascaded downward to KPIs of middle managers that influence their higher-level managers’ KPIs. Conflict and tension in organizations is natural, and it takes time to rationalize what to measure and how driver KPIs correlate – or not – with other influenced measures.

—Gary Cokins: “The Two Speeds To Implement Performance Management – Both Bad”

The 9th layer of hell
For many data quality analysts, I would imagine looking at the data from a call centre is like being sentenced to the 9th layer of Hell, it’s just not a fun place to be. Why? Because let’s face it: trying to correct bad data from the front-line can be a cumbersome task. You have multiple systems to work through, lineage to deal with, and when you want data corrected or to set up preventative safeguards, there’s no one to call.

—Daniel Gent: “Entry Point: The Call Center or the Death Star”

The beauty of clouds
Cloud-based services provide several advantages for analytics. Perhaps the most important is elastic capacity — if 25 processors are needed for one job for a single hour, then these can be used for just the single hour and no more. This ability of clouds to handle surge capacity is important for many groups that do analytics. With the appropriate surge capacity provided by clouds, modelers can be more productive, and this can be accomplished in many cases without requiring any capital expense.

—Robert Grossman: “Open Source Analytics Reaches Main Street (and Some Other Trends in Analytics)”

Is there a data-crunching career in your future?
Which brings up an interesting perspective of the analyst community. While there are certainly the math and stat majors along with masters and PhD candidates, many of today’s analysts in corporations are self taught and accidentally landed into a data crunching career. There aren’t many that went to college and said, “Gee, I’d like to be a statistician.” But, somehow, many analysts have found an affinity for analyzing data and putting it into context for gaining insight and making business decisions.

—Michele Goetz: “Analyst Skills Are Hot”

The medium, not the message
We’re bombarded with data all the time. Depending on the way that data flows to us, it often can be unmanageable and turn into noise. Part of the problem, in my opinion, is using the wrong vehicle for some types of information. Sure you can blast out everything in email newsletters or post on corporate Intranet sites — one a push method and the other a pull approach. I suggest there’s a much more effective way to share much of the same info. Why not use company blogs with RSS capabilities to allow employees to opt into the information that they find useful? Granted some compliance issues would drive certain types of information to be handled differently, but for the bulk of data the RSS feed / internal blog could work as a more effective channel.

—Michael Fauscette: “The Social Enterprise – the internal view”
TAGGED:data quality
Share This Article
Facebook Twitter Pinterest LinkedIn
Share

Follow us on Facebook

Latest News

trusted data management
The Future of Trusted Data Management: Striking a Balance between AI and Human Collaboration
Artificial Intelligence Big Data Data Management
data analytics in ecommerce
Analytics Technology Drives Conversions for Your eCommerce Site
Analytics Exclusive
data grids in big data apps
Best Practices for Integrating Data Grids into Data-Intensive Apps
Big Data Exclusive
AI helps create discord server bots
AI-Driven Discord Bots Can Track Server Stats
Artificial Intelligence Exclusive

Stay Connected

1.2kFollowersLike
33.7kFollowersFollow
222FollowersPin

You Might also Like

How to Measure the Business Impact of Data Quality

6 Min Read

Data Governance and Data Quality

7 Min Read

Business Intelligence and The Heisenberg Principle

3 Min Read

The Big Question In Big Data Is…What’s The Question?

7 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 in ecommerce
Artificial Intelligence for eCommerce: A Closer Look
Artificial Intelligence
ai chatbot
The Art of Conversation: Enhancing Chatbots with Advanced AI Prompts
Chatbots

Quick Link

  • About
  • Contact
  • Privacy
Follow US
© 2008-24 SmartData Collective. All Rights Reserved.
Go to mobile version
Welcome Back!

Sign in to your account

Username or Email Address
Password

Lost your password?