<?xml version='1.0' encoding='UTF-8'?><?xml-stylesheet href="http://www.blogger.com/styles/atom.css" type="text/css"?><feed xmlns='http://www.w3.org/2005/Atom' xmlns:openSearch='http://a9.com/-/spec/opensearchrss/1.0/' xmlns:blogger='http://schemas.google.com/blogger/2008' xmlns:georss='http://www.georss.org/georss' xmlns:gd="http://schemas.google.com/g/2005" xmlns:thr='http://purl.org/syndication/thread/1.0'><id>tag:blogger.com,1999:blog-3141177823663679221</id><updated>2024-11-08T07:32:32.489-08:00</updated><category term="Big Data"/><category term="Big Data Trend"/><category term="Latest Big Data News"/><category term="Big Data ROI"/><category term="Big Data Supply Chain"/><category term="Big Data myths"/><category term="Dark Data"/><category term="Gartner"/><title type='text'>Big Data Trend</title><subtitle type='html'>Data is the Next Intel Inside... - Tim O’Reilly</subtitle><link rel='http://schemas.google.com/g/2005#feed' type='application/atom+xml' href='http://bigdatatrend.blogspot.com/feeds/posts/default'/><link rel='self' type='application/atom+xml' href='http://www.blogger.com/feeds/3141177823663679221/posts/default'/><link rel='alternate' type='text/html' href='http://bigdatatrend.blogspot.com/'/><link rel='hub' href='http://pubsubhubbub.appspot.com/'/><author><name>Unknown</name><email>noreply@blogger.com</email><gd:image rel='http://schemas.google.com/g/2005#thumbnail' width='16' height='16' src='https://img1.blogblog.com/img/b16-rounded.gif'/></author><generator version='7.00' uri='http://www.blogger.com'>Blogger</generator><openSearch:totalResults>4</openSearch:totalResults><openSearch:startIndex>1</openSearch:startIndex><openSearch:itemsPerPage>25</openSearch:itemsPerPage><entry><id>tag:blogger.com,1999:blog-3141177823663679221.post-3788275317624582078</id><published>2014-10-10T21:58:00.002-07:00</published><updated>2014-10-10T22:02:27.443-07:00</updated><category scheme="http://www.blogger.com/atom/ns#" term="Big Data"/><category scheme="http://www.blogger.com/atom/ns#" term="Big Data ROI"/><category scheme="http://www.blogger.com/atom/ns#" term="Big Data Trend"/><category scheme="http://www.blogger.com/atom/ns#" term="Latest Big Data News"/><title type='text'>3 Roadblocks to Big Data ROI</title><content type='html'>&lt;div dir=&quot;ltr&quot; style=&quot;text-align: left;&quot; trbidi=&quot;on&quot;&gt;
Most organizations that implement big data platforms expect to derive significant value from their investment. But nearly half of these firms aren&#39;t achieving the level of value or return on investment (ROI) that they had expected. &lt;br /&gt;
&lt;br /&gt;
According to a new study by Wikibon, an open-source research firm that competes with Gartner and Forrester, the ROI of these big-data projects is proving to be a big letdown for most enterprises. &lt;br /&gt;
&lt;br /&gt;
&quot;In the long term, they expect USD 3 to USD 4 return on investment for every dollar. But based on our analysis, the average company right now is getting a return of about 55 cents on the dollar,&quot; said Jeffrey F. Kelly, Wikibon principal research contributor, in a phone interview with InformationWeek. &lt;br /&gt;
&lt;br /&gt;
Wikibon bases its findings on multiple information sources, including conversations with big data vendors and service providers, feedback from the Wikibon community, and results from a survey of nearly 100 &quot;big data practitioners,&quot; the firm said. &lt;br /&gt;
&lt;br /&gt;
Forty-six percent of survey respondents reported that they&#39;ve realized only &quot;partial value&quot; from their big data deployments, while 2% called their deployments &quot;total failures, with no value achieved,&quot; the report states. &lt;br /&gt;
&lt;br /&gt;
So what&#39;s the problem? Wikibon identified three key reasons for companies&#39; inability to achieve maximum ROI from big data. &lt;br /&gt;
&lt;b&gt;&lt;br /&gt;&lt;/b&gt;
&lt;b&gt;1. Lack of skilled Big-Data experts &lt;/b&gt;&lt;br /&gt;
&lt;br /&gt;
The data scientist shortage is a well-chronicled phenomenon and one that might persist for some time. &lt;br /&gt;
&lt;br /&gt;
&quot;In terms of the lack of skilled practitioners, I don&#39;t see that changing anytime soon,&quot; said Kelly. &lt;br /&gt;
&lt;br /&gt;
A company&#39;s existing staff, such as a database administrator (DBA) with years of Oracle experience, probably lacks the skills to manage big data technologies like Hadoop, he added. In the short term, this dilemma provides an opportunity for big-data services firms to fill the gap. &lt;br /&gt;
&lt;b&gt;&lt;br /&gt;&lt;/b&gt;
&lt;b&gt;2. Immature technology &lt;/b&gt;&lt;br /&gt;
&lt;br /&gt;
Big-data tools are in their infancy. They require refinement for use by a wider range of business workers -- not just highly trained data scientists -- a problem that many software developers are working to solve. &lt;br /&gt;
&lt;br /&gt;
&lt;b&gt;3. Lack of a compelling need &lt;/b&gt;&lt;br /&gt;
&lt;br /&gt;
Enterprises often invest in big-data projects without tying these efforts to specific and measurable business applications. &lt;br /&gt;
&lt;br /&gt;
&quot;In such cases, largely driven by IT departments, enterprises begin amassing large volumes of data in Hadoop, which is sometimes made available to data scientists and business analysts for exploratory analysis, but that otherwise sits underutilized,&quot; says the Wikibon report. &lt;br /&gt;
&lt;br /&gt;
&quot;A lot of these deployments are driven by IT departments, which sometimes are looking to offload some of the workload from their existing relational systems,&quot; said Kelly. &quot;Basically they load in a lot of data, and make it available to their data scientists and analysts to do some exploratory analysis. You&#39;ve got a lot of experimenting going on, but no real business application tied to it.&quot; &lt;br /&gt;
&lt;br /&gt;
To overcome these big-data obstacles, the Wikibon report advises businesses to consider professional services organizations, cloud services or both. It&#39;s also important to clearly define a project&#39;s goals before you begin. &lt;br /&gt;
&lt;br /&gt;
&quot;Generally we recommend that enterprises start with small, strategic [projects]. Pick a very discrete use case, something that&#39;s going to be fairly easy to measure,&quot; said Kelly. &quot;Do it in an area that&#39;s strategic to your business rather than a peripheral use case.&quot; &lt;br /&gt;
&lt;br /&gt;
He added: &quot;Most of the successful projects we&#39;ve seen are not initiated by IT, but are driven more by line of business departments, either marketing or finance.&quot; &lt;/div&gt;
</content><link rel='replies' type='application/atom+xml' href='http://bigdatatrend.blogspot.com/feeds/3788275317624582078/comments/default' title='Post Comments'/><link rel='replies' type='text/html' href='http://bigdatatrend.blogspot.com/2014/10/3-roadblocks-to-big-data-roi.html#comment-form' title='0 Comments'/><link rel='edit' type='application/atom+xml' href='http://www.blogger.com/feeds/3141177823663679221/posts/default/3788275317624582078'/><link rel='self' type='application/atom+xml' href='http://www.blogger.com/feeds/3141177823663679221/posts/default/3788275317624582078'/><link rel='alternate' type='text/html' href='http://bigdatatrend.blogspot.com/2014/10/3-roadblocks-to-big-data-roi.html' title='3 Roadblocks to Big Data ROI'/><author><name>Unknown</name><email>noreply@blogger.com</email><gd:image rel='http://schemas.google.com/g/2005#thumbnail' width='16' height='16' src='https://img1.blogblog.com/img/b16-rounded.gif'/></author><thr:total>0</thr:total></entry><entry><id>tag:blogger.com,1999:blog-3141177823663679221.post-5255864335181130230</id><published>2014-10-10T21:41:00.000-07:00</published><updated>2014-10-10T21:41:07.748-07:00</updated><category scheme="http://www.blogger.com/atom/ns#" term="Big Data"/><category scheme="http://www.blogger.com/atom/ns#" term="Big Data myths"/><category scheme="http://www.blogger.com/atom/ns#" term="Gartner"/><category scheme="http://www.blogger.com/atom/ns#" term="Latest Big Data News"/><title type='text'>Gartner debunks five Big Data myths</title><content type='html'>&lt;div dir=&quot;ltr&quot; style=&quot;text-align: left;&quot; trbidi=&quot;on&quot;&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;With so much hype about big data, it&#39;s hard for IT leaders to know how to exploit its potential. Gartner, Inc. dispels five myths to help IT leaders evolve their information infrastructure strategies.&amp;nbsp;&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;&quot;Big data offers big opportunities, but poses even bigger challenges. Its sheer volume doesn&#39;t solve the problems inherent in all data,&quot; said Alexander Linden, research director at Gartner. &quot;IT leaders need to cut through the hype and confusion, and base their actions on known facts and business-driven outcomes.&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;&lt;b&gt;&quot; Myth No. 1: Everyone Is Ahead of Us in Adopting Big Data&lt;/b&gt;&amp;nbsp;&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;Interest in big data technologies and services is at a record high, with 73 percent of the organizations Gartner surveyed in 2014 investing or planning to invest in them. But most organizations are still in the very early stages of adoption — only 13 percent of those we surveyed had actually deployed these solutions.&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;The biggest challenges that organizations face are to determine how to obtain value from big data, and how to decide where to start. Many organizations get stuck at the pilot stage because they don&#39;t tie the technology to business processes or concrete use cases.&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;&lt;span style=&quot;font-size: small;&quot;&gt;&lt;b&gt;Myth No. 2: We Have So Much Data, We Don&#39;t Need to Worry About Every Little Data Flaw&amp;nbsp;&lt;/b&gt;&lt;/span&gt;&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;IT leaders believe that the huge volume of data that organizations now manage makes individual data quality flaws insignificant due to the &quot;law of large numbers.&quot; Their view is that individual data quality flaws don&#39;t influence the overall outcome when the data is analyzed because each flaw is only a tiny part of the mass of data in their organization.&amp;nbsp;&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;&quot;In reality, although each individual flaw has a much smaller impact on the whole dataset than it did when there was less data, there are more flaws than before because there is more data,&quot; said Ted Friedman, vice president and distinguished analyst at Gartner. &quot;Therefore, the overall impact of poor-quality data on the whole dataset remains the same. In addition, much of the data that organizations use in a big data context comes from outside, or is of unknown structure and origin. This means that the likelihood of data quality issues is even higher than before. So data quality is actually more important in the world of big data.&quot;&amp;nbsp;&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;&lt;b&gt;Myth No. 3: Big Data Technology Will Eliminate the Need for Data Integration&lt;/b&gt;&amp;nbsp;&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;The general view is that big data technology — specifically the potential to process information via a &quot;schema on read&quot; approach — will enable organizations to read the same sources using multiple data models. Many people believe this flexibility will enable end users to determine how to interpret any data asset on demand. It will also, they believe, provide data access tailored to individual users.&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;In reality, most information users rely significantly on &quot;schema on write&quot; scenarios in which data is described, content is prescribed, and there is agreement about the integrity of data and how it relates to the scenarios.&amp;nbsp;&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;&lt;b&gt;Myth No. 4: It&#39;s Pointless Using a Data Warehouse for Advanced Analytics&lt;/b&gt;&lt;/span&gt;&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;&lt;b&gt;&amp;nbsp;&lt;/b&gt;&amp;nbsp;&lt;/span&gt;&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;Many information management (IM) leaders consider building a data warehouse to be a time-consuming and pointless exercise when advanced analytics use new types of data beyond the data warehouse. The reality is that many advanced analytics projects use a data warehouse during the analysis. In other cases, IM leaders must refine new data types that are part of big data to make them suitable for analysis. They have to decide which data is relevant, how to aggregate it, and the level of data quality necessary — and this data refinement can happen in places other than the data warehouse.&amp;nbsp;&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;&lt;b&gt;Myth No. 5: Data Lakes Will Replace the Data Warehouse&lt;/b&gt;&amp;nbsp;&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;Vendors market data lakes as enterprisewide data management platforms for analyzing disparate sources of data in their native formats.&amp;nbsp;&lt;/span&gt;&lt;br /&gt;
&lt;br /&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;In reality, it&#39;s misleading for vendors to position data lakes as replacements for data warehouses or as critical elements of customers&#39; analytical infrastructure. A data lake&#39;s foundational technologies lack the maturity and breadth of the features found in established data warehouse technologies. &quot;Data warehouses already have the capabilities to support a broad variety of users throughout an organization. IM leaders don&#39;t have to wait for data lakes to catch up,&quot; said Nick Heudecker, research director at Gartner.&lt;/span&gt;&lt;br /&gt;
&lt;div style=&quot;left: -99999px; position: absolute;&quot;&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;With so much hype about
 big data, it&#39;s hard for IT leaders to know how to exploit its 
potential. Gartner, Inc. dispels five myths to help IT leaders evolve 
their information infrastructure strategies. 

&quot;Big data offers big opportunities, but poses even bigger challenges. 
Its sheer volume doesn&#39;t solve the problems inherent in all data,&quot; said 
Alexander Linden, research director at Gartner. &quot;IT leaders need to cut 
through the hype and confusion, and base their actions on known facts 
and business-driven outcomes.&quot; 

Myth No. 1: Everyone Is Ahead of Us in Adopting Big Data

Interest in big data technologies and services is at a record high, with
 73 percent of the organizations Gartner surveyed in 2014 investing or 
planning to invest in them. But most organizations are still in the very
 early stages of adoption — only 13 percent of those we surveyed had 
actually deployed these solutions

The biggest challenges that organizations face are to determine how to 
obtain value from big data, and how to decide where to start. Many 
organizations get stuck at the pilot stage because they don&#39;t tie the 
technology to business processes or concrete use cases. 

Myth No. 2: We Have So Much Data, We Don&#39;t Need to Worry About Every 
Little Data Flaw
IT leaders believe that the huge volume of data that organizations now 
manage makes individual data quality flaws insignificant due to the &quot;law
 of large numbers.&quot; Their view is that individual data quality flaws 
don&#39;t influence the overall outcome when the data is analyzed because 
each flaw is only a tiny part of the mass of data in their organization.

 

&quot;In reality, although each individual flaw has a much smaller impact on 
the whole dataset than it did when there was less data, there are more 
flaws than before because there is more data,&quot; said Ted Friedman, vice 
president and distinguished analyst at Gartner. &quot;Therefore, the overall 
impact of poor-quality data on the whole dataset remains the same. In 
addition, much of the data that organizations use in a big data context 
comes from outside, or is of unknown structure and origin. This means 
that the likelihood of data quality issues is even higher than before. 
So data quality is actually more important in the world of big data.&quot; 

Myth No. 3: Big Data Technology Will Eliminate the Need for Data 
Integration

The general view is that big data technology — specifically the 
potential to process information via a &quot;schema on read&quot; approach — will 
enable organizations to read the same sources using multiple data 
models. Many people believe this flexibility will enable end users to 
determine how to interpret any data asset on demand. It will also, they 
believe, provide data access tailored to individual users. 

In reality, most information users rely significantly on &quot;schema on 
write&quot; scenarios in which data is described, content is prescribed, and 
there is agreement about the integrity of data and how it relates to the
 scenarios. 

Myth No. 4: It&#39;s Pointless Using a Data Warehouse for Advanced Analytics

Many information management (IM) leaders consider building a data 
warehouse to be a time-consuming and pointless exercise when advanced 
analytics use new types of data beyond the data warehouse. 

The reality is that many advanced analytics projects use a data 
warehouse during the analysis. In other cases, IM leaders must refine 
new data types that are part of big data to make them suitable for 
analysis. They have to decide which data is relevant, how to aggregate 
it, and the level of data quality necessary — and this data refinement 
can happen in places other than the data warehouse. 

Myth No. 5: Data Lakes Will Replace the Data Warehouse

Vendors market data lakes as enterprisewide data management platforms 
for analyzing disparate sources of data in their native formats. 

In reality, it&#39;s misleading for vendors to position data lakes as 
replacements for data warehouses or as critical elements of customers&#39; 
analytical infrastructure. A data lake&#39;s foundational technologies lack 
the maturity and breadth of the features found in established data 
warehouse technologies. &quot;Data warehouses already have the capabilities 
to support a broad variety of users throughout an organization. IM 
leaders don&#39;t have to wait for data lakes to catch up,&quot; said Nick 
Heudecker, research director at Gartner.&lt;br /&gt;&lt;br /&gt; Read more at: &lt;a href=&quot;http://www.informationweek.in/informationweek/news-analysis/298061/gartner-debunks-myths?utm_source=referrence_article&quot;&gt;http://www.informationweek.in/informationweek/news-analysis/298061/gartner-debunks-myths?utm_source=referrence_article&lt;/a&gt;&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;left: -99999px; position: absolute;&quot;&gt;
&lt;span style=&quot;font-family: &amp;quot;Helvetica Neue&amp;quot;,Arial,Helvetica,sans-serif;&quot;&gt;With so much hype about
 big data, it&#39;s hard for IT leaders to know how to exploit its 
potential. Gartner, Inc. dispels five myths to help IT leaders evolve 
their information infrastructure strategies. 

&quot;Big data offers big opportunities, but poses even bigger challenges. 
Its sheer volume doesn&#39;t solve the problems inherent in all data,&quot; said 
Alexander Linden, research director at Gartner. &quot;IT leaders need to cut 
through the hype and confusion, and base their actions on known facts 
and business-driven outcomes.&quot; 

Myth No. 1: Everyone Is Ahead of Us in Adopting Big Data

Interest in big data technologies and services is at a record high, with
 73 percent of the organizations Gartner surveyed in 2014 investing or 
planning to invest in them. But most organizations are still in the very
 early stages of adoption — only 13 percent of those we surveyed had 
actually deployed these solutions

The biggest challenges that organizations face are to determine how to 
obtain value from big data, and how to decide where to start. Many 
organizations get stuck at the pilot stage because they don&#39;t tie the 
technology to business processes or concrete use cases. 

Myth No. 2: We Have So Much Data, We Don&#39;t Need to Worry About Every 
Little Data Flaw
IT leaders believe that the huge volume of data that organizations now 
manage makes individual data quality flaws insignificant due to the &quot;law
 of large numbers.&quot; Their view is that individual data quality flaws 
don&#39;t influence the overall outcome when the data is analyzed because 
each flaw is only a tiny part of the mass of data in their organization.

 

&quot;In reality, although each individual flaw has a much smaller impact on 
the whole dataset than it did when there was less data, there are more 
flaws than before because there is more data,&quot; said Ted Friedman, vice 
president and distinguished analyst at Gartner. &quot;Therefore, the overall 
impact of poor-quality data on the whole dataset remains the same. In 
addition, much of the data that organizations use in a big data context 
comes from outside, or is of unknown structure and origin. This means 
that the likelihood of data quality issues is even higher than before. 
So data quality is actually more important in the world of big data.&quot; 

Myth No. 3: Big Data Technology Will Eliminate the Need for Data 
Integration

The general view is that big data technology — specifically the 
potential to process information via a &quot;schema on read&quot; approach — will 
enable organizations to read the same sources using multiple data 
models. Many people believe this flexibility will enable end users to 
determine how to interpret any data asset on demand. It will also, they 
believe, provide data access tailored to individual users. 

In reality, most information users rely significantly on &quot;schema on 
write&quot; scenarios in which data is described, content is prescribed, and 
there is agreement about the integrity of data and how it relates to the
 scenarios. 

Myth No. 4: It&#39;s Pointless Using a Data Warehouse for Advanced Analytics

Many information management (IM) leaders consider building a data 
warehouse to be a time-consuming and pointless exercise when advanced 
analytics use new types of data beyond the data warehouse. 

The reality is that many advanced analytics projects use a data 
warehouse during the analysis. In other cases, IM leaders must refine 
new data types that are part of big data to make them suitable for 
analysis. They have to decide which data is relevant, how to aggregate 
it, and the level of data quality necessary — and this data refinement 
can happen in places other than the data warehouse. 

Myth No. 5: Data Lakes Will Replace the Data Warehouse

Vendors market data lakes as enterprisewide data management platforms 
for analyzing disparate sources of data in their native formats. 

In reality, it&#39;s misleading for vendors to position data lakes as 
replacements for data warehouses or as critical elements of customers&#39; 
analytical infrastructure. A data lake&#39;s foundational technologies lack 
the maturity and breadth of the features found in established data 
warehouse technologies. &quot;Data warehouses already have the capabilities 
to support a broad variety of users throughout an organization. IM 
leaders don&#39;t have to wait for data lakes to catch up,&quot; said Nick 
Heudecker, research director at Gartner.&lt;br /&gt;&lt;br /&gt; Read more at: &lt;a href=&quot;http://www.informationweek.in/informationweek/news-analysis/298061/gartner-debunks-myths?utm_source=referrence_article&quot;&gt;http://www.informationweek.in/informationweek/news-analysis/298061/gartner-debunks-myths?utm_source=referrence_article&lt;/a&gt;&lt;/span&gt;&lt;/div&gt;
&lt;/div&gt;
</content><link rel='replies' type='application/atom+xml' href='http://bigdatatrend.blogspot.com/feeds/5255864335181130230/comments/default' title='Post Comments'/><link rel='replies' type='text/html' href='http://bigdatatrend.blogspot.com/2014/10/gartner-debunks-five-big-data-myths.html#comment-form' title='0 Comments'/><link rel='edit' type='application/atom+xml' href='http://www.blogger.com/feeds/3141177823663679221/posts/default/5255864335181130230'/><link rel='self' type='application/atom+xml' href='http://www.blogger.com/feeds/3141177823663679221/posts/default/5255864335181130230'/><link rel='alternate' type='text/html' href='http://bigdatatrend.blogspot.com/2014/10/gartner-debunks-five-big-data-myths.html' title='Gartner debunks five Big Data myths'/><author><name>Unknown</name><email>noreply@blogger.com</email><gd:image rel='http://schemas.google.com/g/2005#thumbnail' width='16' height='16' src='https://img1.blogblog.com/img/b16-rounded.gif'/></author><thr:total>0</thr:total></entry><entry><id>tag:blogger.com,1999:blog-3141177823663679221.post-7337037269076177997</id><published>2014-04-22T22:46:00.002-07:00</published><updated>2014-04-22T22:46:45.076-07:00</updated><category scheme="http://www.blogger.com/atom/ns#" term="Big Data"/><category scheme="http://www.blogger.com/atom/ns#" term="Big Data Trend"/><category scheme="http://www.blogger.com/atom/ns#" term="Dark Data"/><category scheme="http://www.blogger.com/atom/ns#" term="Latest Big Data News"/><title type='text'>Have you ever heard of &quot;Dark Data&quot; ?</title><content type='html'>&lt;div dir=&quot;ltr&quot; style=&quot;text-align: left;&quot; trbidi=&quot;on&quot;&gt;
&lt;div style=&quot;border: 0px; color: #444444; font-size: 14px; line-height: 23.799999237060547px; margin-bottom: 24px; padding: 0px; text-align: justify; vertical-align: baseline;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;I am sure that many of us are hearing this word &lt;b&gt;&quot;Dark Data&quot;&lt;/b&gt; for the first time !!!&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;border: 0px; color: #444444; font-size: 14px; line-height: 23.799999237060547px; margin-bottom: 24px; padding: 0px; text-align: justify; vertical-align: baseline;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;So what is this term is all about, let&#39;s find out..&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;border: 0px; color: #444444; font-size: 14px; line-height: 23.799999237060547px; margin-bottom: 24px; padding: 0px; text-align: justify; vertical-align: baseline;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;It sounds like an ominous plot by some evil mastermind intent on world domination.&amp;nbsp; But don’t worry, &quot;dark data&lt;em style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;&quot;&lt;/em&gt;&amp;nbsp;is more benign than the name suggests.&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;border: 0px; color: #444444; font-size: 14px; line-height: 23.799999237060547px; margin-bottom: 24px; padding: 0px; text-align: justify; vertical-align: baseline;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;Although is collects in unlit corners and neglected back rooms, dark data is not a serious threat to your business. In fact, it might be more properly termed “dusty data.”&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;border: 0px; color: #444444; font-size: 14px; line-height: 23.799999237060547px; margin-bottom: 24px; padding: 0px; text-align: justify; vertical-align: baseline;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;It’s that neglected data that accumulates in log files and archives that nobody knows what to do with. Although it never sees the light of day, no one feels comfortable destroying it because it might prove useful someday.&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;border: 0px; clear: both; color: #444444; font-size: 16px; line-height: 1.8; margin: 24px 0px; padding: 0px; text-align: left; vertical-align: baseline;&quot;&gt;
&lt;strong style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;Will It Be The “Someday” You have Been Waiting For?&lt;/span&gt;&lt;/strong&gt;&lt;/div&gt;
&lt;div style=&quot;border: 0px; color: #444444; font-size: 14px; line-height: 23.799999237060547px; margin-bottom: 24px; padding: 0px; vertical-align: baseline;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;With all the recent press about the&amp;nbsp;&lt;span style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;value of big data&lt;/span&gt;, you may be thinking that&amp;nbsp;&lt;em style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;now&lt;/em&gt;&amp;nbsp;is the time to dive into the secrets of the dark data hiding in your organization.&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;border: 0px; margin-bottom: 24px; padding: 0px; vertical-align: baseline;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;&lt;span style=&quot;color: #444444;&quot;&gt;&lt;span style=&quot;font-size: 14px; line-height: 23.799999237060547px;&quot;&gt;But before you invest in expanded storage capacity or sophisticated data&amp;nbsp;analytic&amp;nbsp;tools, take time to&amp;nbsp;&lt;/span&gt;&lt;/span&gt;&lt;span style=&quot;border: 0px; color: #444444; font-size: 14px; line-height: 23.799999237060547px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;ask the big questions&lt;/span&gt;&lt;span style=&quot;color: #444444;&quot;&gt;&lt;span style=&quot;font-size: 14px; line-height: 23.799999237060547px;&quot;&gt;&amp;nbsp;first – the ones that seek out the real value of the data for your business.&lt;/span&gt;&lt;/span&gt;&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;border: 0px; clear: both; color: #444444; font-size: 16px; line-height: 1.8; margin-bottom: 24px; margin-top: 24px; padding: 0px; vertical-align: baseline;&quot;&gt;
&lt;strong style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;&lt;/strong&gt;&lt;/div&gt;
&lt;div style=&quot;border: 0px; color: #444444; font-size: 14px; line-height: 23.799999237060547px; margin-bottom: 24px; padding: 0px; vertical-align: baseline;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;The authors of the CIO.com ebook,&amp;nbsp;&lt;strong style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;Big Data Analysis: What Every CIO Should Know&lt;/strong&gt;, suggest that you start with such blue-sky questions as:&lt;/span&gt;&lt;/div&gt;
&lt;em style=&quot;border: 0px; color: #444444; font-size: 14px; line-height: 23.799999237060547px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;&lt;ul style=&quot;text-align: left;&quot;&gt;
&lt;li&gt;&lt;em style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;If only we knew . . . .&lt;/span&gt;&lt;/em&gt;&lt;/li&gt;
&lt;li&gt;&lt;em style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;If we could predict . . . .&lt;/span&gt;&lt;/em&gt;&lt;/li&gt;
&lt;li&gt;&lt;em style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;If we could measure . . . .&lt;/span&gt;&lt;/em&gt;&lt;/li&gt;
&lt;/ul&gt;
&lt;/em&gt;&lt;br /&gt;
&lt;div style=&quot;border: 0px; color: #444444; font-size: 14px; line-height: 23.799999237060547px; margin-bottom: 24px; padding: 0px; text-align: left; vertical-align: baseline;&quot;&gt;
&lt;span style=&quot;font-family: &#39;Helvetica Neue&#39;, Arial, Helvetica, sans-serif;&quot;&gt;Determine what information you need in order to answer those high-value questions and use that as the standard by which you &amp;nbsp;evaluate&amp;nbsp;&lt;/span&gt;&lt;em style=&quot;border: 0px; font-family: &#39;Helvetica Neue&#39;, Arial, Helvetica, sans-serif; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;all&amp;nbsp;&lt;/em&gt;&lt;span style=&quot;font-family: &#39;Helvetica Neue&#39;, Arial, Helvetica, sans-serif;&quot;&gt;the available data, including the dark data that has never been a part of your regular business operations.&lt;/span&gt;&lt;/div&gt;
&lt;h3 style=&quot;border: 0px; clear: both; color: #444444; font-family: Helvetica, Arial, sans-serif; font-size: 16px; line-height: 1.8; margin: 24px 0px; padding: 0px; vertical-align: baseline;&quot;&gt;
&lt;strong style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;Is Your Dark Data a Business Intelligence Gold Mine?&lt;/strong&gt;&lt;/h3&gt;
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By itself, some of that dark data may not have much value, but combine it with data you already collect or purchase and you may have a digital gold mine. Those web log files that were once just digital clutter could be the key to unlocking changing patterns in customer behavior that can put you ahead of your competition.&lt;/div&gt;
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By taking the time to assess the value to your business and&amp;nbsp;&lt;span style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;investing in the tools&lt;/span&gt;&amp;nbsp;you need to shine a light on dark data, you may be able to turn those digital “black holes” into real business intelligence that you can&amp;nbsp;&lt;span style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;put in the hands of your decision-makers&lt;/span&gt;.&lt;/div&gt;
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&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;Even if you determine that it has negligible value for business intelligence, you have accomplished something of merit. Now that you have established the business case for freeing up IT resources wasted on maintaining low-value data, you’re free –&amp;nbsp;&lt;em style=&quot;border: 0px; margin: 0px; padding: 0px; vertical-align: baseline;&quot;&gt;at last&amp;nbsp;-&lt;/em&gt;&amp;nbsp;to hit the delete key.&lt;/span&gt;&lt;/div&gt;
&lt;/div&gt;
</content><link rel='replies' type='application/atom+xml' href='http://bigdatatrend.blogspot.com/feeds/7337037269076177997/comments/default' title='Post Comments'/><link rel='replies' type='text/html' href='http://bigdatatrend.blogspot.com/2014/04/have-you-ever-heard-of-dark-data.html#comment-form' title='0 Comments'/><link rel='edit' type='application/atom+xml' href='http://www.blogger.com/feeds/3141177823663679221/posts/default/7337037269076177997'/><link rel='self' type='application/atom+xml' href='http://www.blogger.com/feeds/3141177823663679221/posts/default/7337037269076177997'/><link rel='alternate' type='text/html' href='http://bigdatatrend.blogspot.com/2014/04/have-you-ever-heard-of-dark-data.html' title='Have you ever heard of &quot;Dark Data&quot; ?'/><author><name>Unknown</name><email>noreply@blogger.com</email><gd:image rel='http://schemas.google.com/g/2005#thumbnail' width='16' height='16' src='https://img1.blogblog.com/img/b16-rounded.gif'/></author><thr:total>0</thr:total></entry><entry><id>tag:blogger.com,1999:blog-3141177823663679221.post-5354813605466666548</id><published>2014-04-17T00:49:00.001-07:00</published><updated>2014-04-17T01:17:17.748-07:00</updated><category scheme="http://www.blogger.com/atom/ns#" term="Big Data"/><category scheme="http://www.blogger.com/atom/ns#" term="Big Data Supply Chain"/><category scheme="http://www.blogger.com/atom/ns#" term="Big Data Trend"/><title type='text'>Points to remember for building a Big Data supply chain</title><content type='html'>&lt;div dir=&quot;ltr&quot; style=&quot;text-align: left;&quot; trbidi=&quot;on&quot;&gt;
&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;Big data can have a large impact on the supply chain and that is exactly how the majority of supply chain executives think about it. Using the different sales data, product sensor data, market information, events and news happening in the world, competitor data and weather conditions can give insights in the expected demand of products used or required in the supply chain. Using predictive algorithms the inventory can be optimized for Just-in-Time delivery and inventory based on real-time demand forecasts. Collaboration with different players within the supply chain can help to shape demand for all organizations within the supply chain to deliver a better B2B and B2C experience.&lt;/span&gt;&lt;/div&gt;
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&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;Following are the few points to remember:&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;b&gt;&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;&lt;br /&gt;&lt;/span&gt;&lt;/b&gt;&lt;/div&gt;
&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;&lt;b&gt;1. Identify business goals&lt;/b&gt;&amp;nbsp;&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;No one should deploy big data without an overall vision for what will be gained. The foundation for developing these goals is your data science and analytics team working closely with subject matter experts. Data scientists, analysts, and developers must collaborate to prioritize business goals, generate insights, and validate hypotheses and analytic models.&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;&lt;br /&gt;&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;b&gt;&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;2. Make big data insights operational&lt;/span&gt;&lt;/b&gt;&lt;/div&gt;
&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;It&#39;s imperative that the data science team works in conjunction with the devops team. Both groups should ensure that insights and goals are operational, with repeatable processes and methods, and they communicate actionable information to stakeholders, customers, and partners.&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;&lt;br /&gt;&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;b&gt;&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;3. Build a big data pipeline&lt;/span&gt;&lt;/b&gt;&lt;/div&gt;
&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;The data management and analytics systems architecture must facilitate collaboration and eliminate manual steps. The big data supply chain consists of four key operations necessary for turning raw data into actionable information.&amp;nbsp;&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;These include:&lt;/span&gt;&lt;/div&gt;
&lt;div style=&quot;text-align: left;&quot;&gt;
&lt;/div&gt;
&lt;br /&gt;
&lt;ul style=&quot;text-align: left;&quot;&gt;
&lt;li&gt;&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;&lt;b&gt;Acquire and store:&lt;/b&gt; Access all types of data from any platform at any latency through adapters to operational and legacy systems, social media, and machine data, with the ability to collect and store data in batch, real-time and near-real-time modes.&lt;/span&gt;&lt;/li&gt;
&lt;/ul&gt;
&lt;ul style=&quot;text-align: left;&quot;&gt;
&lt;li&gt;&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;&lt;b&gt;Refine and enrich:&lt;/b&gt; Integrate, cleanse, and prepare data for analysis, while collecting both technical and operational metadata to tag and enrich data sets, making them easier to find and reuse.&lt;/span&gt;&lt;/li&gt;
&lt;/ul&gt;
&lt;ul style=&quot;text-align: left;&quot;&gt;
&lt;li&gt;&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;&lt;b&gt;Explore and curate:&lt;/b&gt; Browse data and visualize and discover patterns, trends, and insights with potential business impact; curate and govern those data sets that hold the most business value.&lt;/span&gt;&lt;/li&gt;
&lt;/ul&gt;
&lt;ul style=&quot;text-align: left;&quot;&gt;
&lt;li&gt;&lt;span style=&quot;font-family: Helvetica Neue, Arial, Helvetica, sans-serif;&quot;&gt;&lt;b&gt;Distribute and manage:&lt;/b&gt; Transform and distribute actionable information to end-users through mobile devices, enterprise applications, and other means. Manage and support service-level agreements with a flexible deployment architecture.&lt;/span&gt;&lt;/li&gt;
&lt;/ul&gt;
&lt;br /&gt;
&lt;br /&gt;
&lt;div&gt;
&lt;br /&gt;&lt;/div&gt;
&lt;/div&gt;
</content><link rel='replies' type='application/atom+xml' href='http://bigdatatrend.blogspot.com/feeds/5354813605466666548/comments/default' title='Post Comments'/><link rel='replies' type='text/html' href='http://bigdatatrend.blogspot.com/2014/04/points-to-remember-for-building-big.html#comment-form' title='0 Comments'/><link rel='edit' type='application/atom+xml' href='http://www.blogger.com/feeds/3141177823663679221/posts/default/5354813605466666548'/><link rel='self' type='application/atom+xml' href='http://www.blogger.com/feeds/3141177823663679221/posts/default/5354813605466666548'/><link rel='alternate' type='text/html' href='http://bigdatatrend.blogspot.com/2014/04/points-to-remember-for-building-big.html' title='Points to remember for building a Big Data supply chain'/><author><name>Unknown</name><email>noreply@blogger.com</email><gd:image rel='http://schemas.google.com/g/2005#thumbnail' width='16' height='16' src='https://img1.blogblog.com/img/b16-rounded.gif'/></author><media:thumbnail xmlns:media="http://search.yahoo.com/mrss/" url="https://blogger.googleusercontent.com/img/b/R29vZ2xl/AVvXsEhDtAiDBMvUlEzfsVj_yKdHDZAQMBn2nmhwmW8Cm_AfaMLX9wtCG-8nxIPq3ZB0-ZVUHor3-whiVbHpW8-SYOwx-JQfAAAwN8q51x_oPR9tnmYxvAFpuZCyM0WgVhtgfd3wdr_C1V79iShq/s72-c/BIG-DATA.jpg" height="72" width="72"/><thr:total>0</thr:total></entry></feed>