While psychology still remains to be a study that deals with a cluster of symptoms rather than a specific cause-related diseases; but researchers have long tried to pinpoint a standard causative agent that pushes patients to fall prey to the biggest causes of premature deaths other than cancer. Now it may be possible thanks to the technology related to predictive modeling.
Dexlab Analytics is the best institute to offer Big Data Hadoop training courses and training certification in Delhi and Gurgaon for a rewarding career.
Sunday, 8 May 2016
Friday, 15 April 2016
Are you in the age of Aristotle presently?
In Aristotle’s age everybody inquires about the cause behind
every happening and that is exactly what the data driven world does today. To
identify the cause behind low sales figures of your company or the low revenue
generation, get with the Aristotles of today’s world in the realm of data.
These books may help you through.
Wednesday, 13 April 2016
Ways to Overcome Barriers Associated With IoT Data
Things look bright for data scientists and big data analysts before the dawn of the IoT or the Internet of Things, which is expected to yield unforeseen amounts of data from networked devices and sensors that create real-time data that is unstructured. Data architecture is also set to undergo a sea change in order to deal with these developments and properly trained data scientists with the ability to properly leverage this data will be in great demand.
In order to overcome the obstacle of barriers related to data as in relation to the adoption of IoT we may contemplate the following measures:
• Rethinking Data and IT Infrastructures
The data analytics of IoT will rest ultimately on superior IT infrastructures like clusters of servers, computing based on the cloud, data centers amongst other things. Existing networks are already near the point of being exhausted and the vast amounts of increased data will only serve to put additional pressure on these networks and much more power will be needed in order to process the same properly.
Organization and aggregation of data is a pre-requisite for applying analytics.
Upgrades are an essential part of this new data architecture and technologies like Hadoop with its impressive combination of processing parallel and clusters of servers that are distributed will assume greater importance along with the people who have the technical expertise to set things up and negotiate with some of the more tricky aspects of the architecture.
Chances are that data centers will take the distributed approach path with mini-centers of tiered clusters that pull the data and subsequently send it to other clusters that process the data. This will undoubtedly affect storage of data in addition to backup and bandwidth.
• Data that is of Good Quality and Can Be Acted Upon
The key issue will be to find the information that is capable of being acted upon and can make a meaningful and real change and the situation will likely arise where a company will find itself capable of collecting data that they do not have any use for as not all of the new data will be useful. Management of such actionable data will be in the purview of business analysts and data scientists.
• NoSQL databases will in all likelihood replace RDBMSs
Much if not exactly most of the unstructured data available from the Internet of Things may not easily be sorted into a number of tables, a main feature of traditional relational database management systems and they likely to be replaced by NoSQL databases like MongoDV, Couchbase and the like as they provide the flexibility needed by IoT data scientists in order to organize data in a manner that makes it usable.
• A Software Stack is needed to be chosen in order to preprocess and analyze IoT Data
After the organization and collection of massive amounts of such data, businesses are in need to have the proper plan and the software stack necessary to analyze the data, in place. There is a dire need of choosing the correct software stack and the accompanying database which is able to deal with the type and scale of the data at hand.
A data professional needs to undergo suitable Big data training that will get him up and ready for all of the challenging and exciting tasks that await him in his Big Data adventure.
Monday, 6 April 2015
How is big data analytics a strategic part of business decisions today?
(Decode big data analytics and its relevance in today's
business scenario)
Businesses are getting
increasingly competitive and thanks to the connected community through multiple
devices, the way people are shopping or looking for products or solutions has
undergone a paradigm shift. We are living in a changed world in terms of the
way technology intersects almost all aspects of business, notwithstanding the
size and scale. Big data is driving businesses today and as per Gartner’s bid
data predications 20151, “By 2020, information will be used to
reinvent, digitalize or eliminate 80% of business processes and products from a
decade earlier.” Sifting
through this big data requires special skills, training and niche area of
expertise. The following are some key ways in which big data analytics and
professionals engaged in this area will play a pivotal role in innovation,
identifying new patterns, product strategy, and customer engagement and
remaining competitive by being agile and predictive.
1 Improve internal processes- Companies of all sizes have data being
generated through multiple sources by their employees through the BYOD culture,
internal chat groups, intranet, emails, customer service calls etc. All this
data is critical as it indicates the seamless functioning of a company and its
internal health. Companies can use all this analytics to gauge and predict the
behavior of employees; the onsite teams etc. and make changes if needed to fill
gaps or to raise awareness amongst its internal audience when needed.
2-Increase efficiency- There are sophisticated ways using predictive data
analysis and other models wherein huge cost inefficiencies and operational
flaws can be looked into. By looking into work flows and other indicators, as
well as the production information, analysts can derive at the problem areas
helping companies to bring about changes that improve overall productivity by
eliminating challenges.
3-Customer strategy-Social media
chatter, emails, voice calls etc. are potential gold mines when it comes to
understanding what customers are perceiving about a company or its brand, the
adoption trends, overall sentiment and of course when you wish to enter a new
geography. Even when customers have a bad or good experience-everything comes
down to how companies are planning on using this crucial data. Analysts sift
through such information and find triggers, patterns, potential and of course
crucial actionable insights that helps companies making a new customer
communication or engagement campaign.
The above are some of the ways big data can help companies turn around
their operations, remain relevant and profitable in the midst of sweeping
changes across the global economy. This is where a certified big data analyst
plays a leading role.
Subscribe to:
Posts (Atom)
