Choose 1 of this 6 subjects (examples) in the bottom write ethically please complete it all
This is a quantitative analysis focus these are the chapters we covered in class Chapter 1 Introduction to Quantitative Analysis
Chapter 2 Probability Concepts and Applications
Chapter 3 Decision Analysis
Chapter 4 Regression Models
Chapter 5 Forecasting
Chapter 6 Inventory Control Models
Chapter 7 Linear Programming Models: Graphical and Computer Methods
Chapter 8 Linear Programming Applications
Chapter 9 Transportation, Assignment, and Network Models
Chapter 10 Integer Programming, Goal Programming, and Nonlinear Programming
Chapter 11 Project Management
Chapter 12 Waiting Lines and Queuing Theory Models
Chapter 13 Simulation Modeling
Chapter 14 Markov Analysis
Chapter 15 Statistical Quality Control.
EXAMPLES:
1. WRITE A REPORT ABOUT A CONCEPT COVERED IN CLASS, OR ONE YOU WOULD LIKE TO LEARN MORE ABOUT THAT WE DID NOT COVER.
2. DEVELOP A PPT SLIDESHOW (PERHAPS 12 TO 15 CHARTS SHOULD SUFFICE WITH VOICE OVER THAT LASTS ABOUT 10 MINUTES OR SO) WHERE YOU CREATE VOICE-OVER AND PROVIDE A LECTURE ON A TOPIC WE LEARNED ABOUT, OR ABOUT ANOTHER QUANTITATIVE TOPIC YOU'D LIKE TO KNOW MORE ABOUT.
3. WRITE A REPORT DISCUSSING HOW YOUR COMPANY USES QUANTITATIVE TECHNIQUES TO MAKE DECISIONS, OR WHERE THEY COULD IMPLEMENT QUANTITATIVE TECHNIQUES TO BETTER MAKE BUSINESS DECISIONS.
4. WRITE A REPORT ABOUT THE CONCEPT OF BIG DATA. IT'S A NEW BUZZ-WORD THAT HAS TAKEN OVER LATELY IN BUSINESSES. PERHAPS, YOU COULD DISCUSS WHAT BIG DATA IS, WHY IT IS IMPORTANT, HOW IT RELATES TO STATISTICS, ETC. , ETC.
5. INTERVIEW SOMEONE WORKING IN A QUANTITATIVE JOB AND DISCUSS THE RESULTS. YOU CAN COME UP WITH THE QUESTIONS, BUT PROBABLY 8 TO 15 IS A GOOD RANGE. SOME GOOD QUESTIONS MIGHT BE....WHAT SKILLSETS DO YOU NEED TO BE GOOD AT IN YOUR JOB? HOW DO YOU SEE THE FIELD OF DATA SCIENCE CHANGING? WHAT SOFTWARE AND PC SKILLS DOES ONE NEED TO BE FAMILIAR WITH? ETC.
6. ANYTHING ELSE THAT IS RELEVANT TO THIS COURSE.
REGARDLESS OF THE OPTION YOU CHOOSE, IF YOU WRITE A REPORT, I THINK 5 TO 7 PAGES IS SUFFICIENT (DOUBLE-SPACED). YOU CAN IGNORE THE 2,000 WORD COUNT RULE. ALSO, I AM NOT TOO PICKY ON APA, ETC. - JUST MAKE YOUR PAPER HAVE A NICE AND PROFESSIONAL APPEARANCE. I HOPE THESE OTHER OPTIONS PROVIDE A LITTLE MORE VARIETY THAN JUST HAVING 1 definite CHOICE.
Please answer completely
Introduction
As per the standard definition accepted in wikipedia, Big data is
data sets that are so voluminous and complex that traditional data
processing application software are inadequate to deal with them.
Big data challenges include capturing data, data storage, data
analysis, search, sharing, transfer, visualization, querying,
updating and information privacy. There are three dimensions to big
data known as Volume, Variety and Velocity.
Big data usually includes data sets with sizes beyond the ability
of commonly used software tools to capture, curate, manage, and
process data within a tolerable elapsed time. Big Data philosophy
encompasses unstructured, semi-structured and structured data,
however the main focus is on unstructured data. Big data "size" is
a constantly moving target, as of 2012 ranging from a few dozen
terabytes to many petabytes of data. Big data requires a set of
techniques and technologies with new forms of integration to reveal
insights from datasets that are diverse, complex, and of a massive
scale.
Significance of Big Data
Recent years have seen a stamped increment in our ability to
gather, store and offer information. As per IBM, 90 % of the
information on the planet was produced over the most recent two
years (International Business Machines Corporation, 2011). These
information emerge from the Internet (looks, interpersonal
organizations, websites, pictures), cell phones, logical
examinations (genomics, cerebrum imaging, the study of disease
transmission, ecological research), organizations (client records,
exchanges, budgetary markers), governments (populace, social
insurance, climate, programmed sensors) and different
sources.
The key significance of Big Data lies not on the amount but rather
on the potential employments. For example, the portrayal of complex
illnesses at the atomic level joined with therapeutic and treatment
history, demonstrative or imaging tests offers remarkable open
doors for customized medication. The Large Hadron Collider records
information 40 million times each second to test hypotheses in
material science. Sites make a large number of suggestions
consistently and examine new items and their costs. Information can
help oversee urban areas or regular assets, think about
environmental change or help creating locales. Postings in websites
and informal organizations are utilized to devise political systems
and concentrate how thoughts spread. Because of this broad
potential, Big Data has been grasped by media, the scholarly
community and organizations in an energetic, some of the time even
dramatist, way. Terms, for example, information downpour or wave
are normal. The 2012 World Economic Forum pronounced information as
another class of financial resource, similar to money or gold
(World Economic Forum, 2012). Information related callings reliably
top generally rankings. I advance once more from the buildup and
survey both examples of overcoming adversity and restrictions,
calling attention to apparent lessons and pending difficulties.
While Big Data requires a multidisciplinary approach, I receive a
measurable perspective. Insights is the field entirely committed to
gathering, dissecting and translating information. That is, to
conveying us from inquiries to information, from information to
data, and from data to learning and choices. It may appear to be
shocking then that analysts have been moderately wary in holding
onto Big Data as a god-like power. I trust that the clarification
is straightforward. Experience has instructed analysts that
information can be deluding and, much more dreadful, wrongly give
the similarity of objectivity. Alongside control, Big Data likewise
brings the open door for abundant misinterpretations. Due to the
assortment in applications (Big Data is frequently characterized
with 3V's: Volume, Velocity and Variety) an exhaustive survey is
miserable; henceforth I restrict talk to a portion of the primary
issues and illustrations.
Role of statistics in big data
Much in the way that pioneers, for example, Ronald Fisher, William
Gosset or Harold Jeffreys set the reason for information based
science, business and open strategy, the Big Data worldview is
powered by methodological commitments. The Pagerank calculation
utilized by Google's motor depends on Markov Chains. Netflix film
proposals utilize a model that midpoints 107 expectations. Choice
hypothesis can help survey the advantages of complex calculations
even with vulnerability and contending objectives, e.g. consumer
loyalty may likewise rely upon proposal assorted variety.
We have just talked about the need to inquire about new techniques
to unravel motion from commotion, catch dynamic procedures, outline
tries and incorporate heterogeneous information. Computational
techniques that consolidate handling power with sharp systems to
take care of complex issues are another focal issue, as animal
power approaches are probably not going to succeed. Additionally
challenges incorporate information recovery and outline. Programmed
techniques to output and organization unstructured information
(e.g. pictures, websites) may dispose of data or actuate
predispositions. Likewise, our current producing of a greater
number of information than we can store (Hilbert, 2012) forces the
need to condense information. Rundowns suggest a potential for loss
of data. For instance, we as of late detailed that the present
technique to compress RNA-sequencing information disposes of so
much data that one can't take in specific highlights, even as the
measure of information develops to interminability (Rossell et al.,
2014). A related issue is that of testing. Putting away a
sufficient example acquired from all information can profit speed
and cost for an immaterial misfortune in exactness. See Fan et al.
(2014) and Jordan (2013) for audits on measurable and calculation
issues for Big Data.
As a special mix of logical thinking, likelihood hypothesis and
arithmetic, measurements is an important segment for the Big Data
insurgency to achieve maximum capacity. In any case, measurements
can't exist in separation, but instead in joint effort, with
subject-of-matter aptitude, software engineering and related
orders. As a last idea, the primary snag to overcome may well be
the absence of experts with a satisfactory mix of aptitudes.
Enrollment and preparing of youthful personalities willing to
connect with this energizing endeavor ought to be a best
need.
Benefits and Risks of Big Data
Organizations have been breaking down information from their own
client collaborations on a littler scale for some a long time, yet
the time of enormous information is still in its infancy.
Therefore, mining huge informational indexes to discover helpful,
nonobvious designs is a generally new yet developing practice in
promoting, extortion aversion, HR, what's more, an assortment of
different fields. Organizations are as yet figuring out how to
manage enormous information and open its potential while keeping
away from unintended or unanticipated consequences. Properly
utilizing huge information calculations on information of adequate
quality can give various open doors for upgrades in the public eye.
Notwithstanding the all inclusive advantages of all the more
proficiently coordinating items and administrations to shoppers,
huge information can make open doors for low-wage and underserved
groups.
The benefits are namely
1) Increase educational attainment for individual students.
2) Provide access to credit using non-traditional methods.
3) Provide healthcare tailored to individual patients’
characteristics.
4)Provide specialized healthcare to underserved communities.
5)Increase equal access to employment.
The the risks are as follows:
1)Result in more individuals mistakenly being denied opportunities
based on the actions of others.
2)Create or reinforce existing disparities.
3)Expose sensitive information.
4)Assist in the targeting of vulnerable consumers for fraud.
5)Create new justifications for exclusion.
6)Result in higher-priced goods and services for lower income
communities.
7)Weaken the effectiveness of consumer choice.
Conclusion
Enormous information will keep on growing in significance, and it
is without a doubt enhancing the lives of underserved groups in
regions, for example, training, wellbeing, neighborhood and state
administrations, and work. Our aggregate test is to ensure that
huge information examination keep on providing advantages and
chances to customers while clinging to center shopper security
esteems and standards. As far as it matters for its, the Commission
will keep on monitoring zones where enormous information practices
could abuse existing laws, including the FTC Act, the FCRA, and
ECOA, and will bring implementation activities where suitable.
Moreover, the Commission will proceed to look at and bring issues
to light about enormous information rehearses that could
detrimentally affect low-wage and underserved populaces and advance
the utilization of huge information that positively affects such
populaces. Given that enormous information investigation can have
huge results, it is basic that we cooperate—government,
scholastics, customer supporters, and industry—to help guarantee
that we boost huge information's ability for good while
distinguishing and limiting the dangers it presents.
Choose 1 of this 6 subjects (examples) in the bottom write ethically please complete it all...
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you can get this Mining Big Data: Current Status, and Forecast
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