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Best Data Science Degrees to Get Hired - YouTube
Channel: 365 Data Science
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Hi and welcome to our new 365 Data Science
special!
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Today, to get into Data Science, you need
a degree that signals potential employers
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you are the qualified candidate theyâre
looking for. We here at 3-6-5 Data Science
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have conducted several studies on this topic
to determine what are the best degrees for
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an aspiring Data Scientist. So, in this video,
weâll go over the level, discipline and
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university rank you should be looking at when
deciding what degree is worth pursuing or
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if your current degree is suitable for the
field.
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But before we get down to the results, we
want to quickly disclose the methodology behind
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our approach. For the third consecutive year,
weâve used LinkedIn to gather background
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information of current data scientists. Weâve
used their education and prior experience
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to help us identify the credentials required
to enter the field. Whatâs more, weâve
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collected data from job-search websites to
determine the most important qualifications
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and skills employers are searching for in
a data scientist.
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Letâs start with the level of education.
Our results show that virtually all data scientists
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have graduated from an institution of higher
education. This includes Bachelors, Masters,
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MBAs, and Ph.Ds. However, some degrees seem
to be much more popular than others.
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In fact, only around 2% of all data scientists
in our sample owned an MBA, but thatâs not
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entirely surprising. If you decide to do an
MBA, chances are youâre not aiming at the
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hands-on technical data scientist role on
the team.
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Bachelors, Masters, and Ph.Ds round up roughly
95% of the data, with 75% being split among
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Masters and PhDs. This means that roughly
3 out of every 4 data scientists have at least
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a masterâs degree. So, yes, going for a
graduate program is highly recommended.
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Of course, if you think a B.A. is as high
as you want to go, there is no need to be
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discouraged. Nearly 20% of the data scientists
in our sample had only completed an undergraduate
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prior to entering the field. And while this
number is not high, the percentage of data
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scientists holding only a Bachelorâs degree
has been steadily growing over the last three
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years.
This is a refreshing indicator that shows
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employers are starting to value skills over
years of schooling. In other words, a qualified
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candidate today has a higher chance of breaking
into the field, compared to two years ago.
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And if we take a quick look at the job adverts
available online, weâll see that most of
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them list B.A. or M.S. degrees as the desired
educational level. So, itâs safe to say
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that a Ph.D. is not a requirement for the
job, but an added bonus. Well, thatâs partly
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because a vast majority of the PhDs have a
lifelong interest in doing research, so theyâre
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harder to lure away with some lucrative job
ads.
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Alright.
Another factor that plays a role is also the
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amount of time a candidate has already spent
in data science or a related field. On average,
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employers expect about 3 and a half years
of experience in the field for an undergraduate,
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compared to only 2 and a half for somebody
with a graduate degree.
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Therefore, having an M.S. compared to a B.A.
roughly equates to a yearâs difference in
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the field. Of course, this comes as a result
of the proficiency graduate students are expected
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to have, compared to undergraduates. All things
considered, itâs quicker to break into Data
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Science if youâve got a Masterâs degree,
so thatâs probably the safer route to success.
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However, it must be noted that itâs also
the more expensive approach.
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That said, what you want to do after graduation
plays a big role as well. For example, if
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you plan on breaking into Consulting, youâll
definitely need a graduate degree. But if
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you want to succeed in data-driven recruitment,
a B-A will work just fine. Different job roles
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and activities require different degrees,
so you should take this into account when
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making a choice.
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Okay! Weâve discussed the level of education
best-fitting for a Data Scientists, so letâs
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move on to the reason youâre all here: the
best disciplines.
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A major, a concentration or a discipline â no
matter how you call it, each degree has a
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field of expertise. Our research suggests
that 91% of data scientists come from a quantitative
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background. Whether itâs the B. A., or the
M. S., usually at least one of the degrees
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is quantitative.
Of course, natural sciences and math-heavy
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social studies degrees are considered quantitative
as well. The first, because they require conducting
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experiments and extracting insights, and the
second â because they help students develop
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an analytical way of thinking.
Over the last 3 years, we see a definitive
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trend that, with 22%, Computer Science is
the most well-represented degree among data
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scientists. Of course, this isnât a complete
shock, since good programming skills are essential
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for a successful career in the field.
Similarly, itâs not all that surprising
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that a degree in Statistics or Maths is among
the top of the list as well. After all, the
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ability to correctly interpret the results
is a huge part of Data Science. However, the
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16% recorded in 2019 mark a decrease from
previous years. The main reason behind this
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decline comes from the ongoing rebranding
of the discipline. What was once known as
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Statistics is being intertwined with other
majors and presented as Business Statistics,
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Econometrics or even Machine Learning. Thus,
Statisticsâ share of the pie is slowly being
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split among the other fields, which are benefiting
from this name change.
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With a decrease in the stats representation
comes an increase in another group â economics
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and the social sciences. This may seem rather
odd at first, but this is the second most-represented
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degree choice among data scientists. Why?
Because people who graduate these disciplines
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can simultaneously analyse the data properly
and build a story around the insights they
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find. Yep, simply stating a change in X resulted
in a change in Y is often not good enough.
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We also need to construct sets of rules to
take advantage of this knowledge.
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Another reason for the influx of economics
majors is that many of them start off as analysts
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and gain valuable knowledge and experience
in the field as they go. Overall, the analyst
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role has become a catalyst for many social
studies graduates who want to transition into
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data science eventually.
In addition, a lot of the work in data science
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is related to optimizing financial decisions
and policies, so a business or financial mindset
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is always welcome.
What about data science as a degree?
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Data science as a degree itself is not really
that hot, with a mere 12% of current data
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scientists owning a concentration in the field.
The main reason is that D.S. is still very
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new as a discipline and is not that widely
offered in universities across the globe.
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The limited availability leads many students
to pick one of the other related options,
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like computer science or statistics. So, the
most obvious choice, isnât particularly
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the correct one, when it comes to picking
a degree.
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Of course, the trend might shift within the
next decade, but for now â data science
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as a degree is still playing catch up to the
more popular options.
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Now, if we have a look towards the current
job market, weâll see some slightly different
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trends. Checking the most-commonly sought-after
concentrations in the field, one sees Math
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and Statistics as the clear leader. This is
especially true for companies looking for
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graduate-level employees. In those cases,
roughly 86% of all Data Science ads listed
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Mathematics, Statistics, or both among the
desired concentrations for the job.
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The shift in the trend comes from Consulting
firms not looking for Computer Science majors.
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This may come as a shock, but under 30% of
those firms listed Computer Science as the
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desired concentration for potential candidates.
Of course, that can be attributed once again
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to the preference for great storytellers,
high demand for understanding data analytics
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and economics, and maybe a bit of a prejudice
against CS graduates.
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So, we see that, in general, computer science
is the leader among current data scientists,
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but stats and mathematics are what employers
are looking for at the moment. Of course,
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this can also be attributed to the emergence
of high-level languages such as Python and
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R.
Either way, it is known that different aspects
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of data science desire candidates from specific
fields. Therefore, knowing exactly which domain
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of data science you want to make a career
into should play a crucial role in your choice
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of discipline. And vice versa â if you have
already graduated in a certain field, your
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transfer into data science may be already
predetermined.
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But hereâs the thing - many up-and-coming
students apply for college and university
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without having a fixed career path in mind
and thatâs an issue weâve been trying
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to tackle for several years now. Weâve created
âThe 365 Data Science Programâ to help
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people enter the field of data science, regardless
of their background. We have trained more
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than 350,000 people around the world and are
committed to continue doing so. Apart from
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basic training, we offer Portfolio Advice
and Resume feedback to help you achieve your
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goals. If you are interested to learn more,
you can find a link in the description that
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will also give you 20% off all plans if youâre
looking to start learning from an all-around
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data science training.
Okay.
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We still have one more important aspect we
havenât discussed - the rank of the university
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youâre considering.
Even though your major is important, so is
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how well-renowned the institution you got
it from is. Our researched showed that roughly
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31% of current data scientists hold a degree
from one of the top 50 universities listed
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by Forbes magazine. This is really significant
because it essentially states that roughly
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1 in every 3 data scientists graduated from
one of these 50 institutions.
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In comparison, 9%, or 1 in every 11, graduated
from a university outside the top 50, but
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inside the top 100 in the rankings. Going
further down the rankings, we see that 1 in
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10 data scientists holds a degree from a school
ranked between 101st and 200th place. This
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trickling down might not sound very shocking
but consider the following: 100 universities
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make up 10% of the sample, whilst 50 make
up 31%. This means that you are about 6 times
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more likely to become a data scientist if
you went to a high-ranking school.
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Moreover, if we add these numbers together,
we see that the top 200 schools are responsible
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for producing 50% of all data scientists in
the field. So, having a degree from an elite
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institution is a bigger signal to employers
that you are a worthy candidate than what
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discipline you majored in.
However, donât be quick to despair - there
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is a silver lining.
Around one-fourth of all data scientists within
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our sample either have a degree from a school
ranked outside the top 1,000 or one not even
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present in the rankings. That suggests that
sufficient experience and skills can actually
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outweigh a university degree!
That said, if you canât get into an elite
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institution, make sure to sharpen your coding
and statistics skills enough to stand out!
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So, what conclusion can we arrive at?
Well, to summarize, a graduate degree from
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a prestigious school is your best bet of becoming
a data scientist. However, the best concentration
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varies, depending on what you want to work
afterwards. Computer Science is the safest
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option, as it gives you a lot of freedom and
is highly sought-after. But if you intend
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to go into Consulting, Math or Statistics
are a better choice. Alternatively, if you
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plan on becoming a data analyst first, you
can look for a degree in Economics, since
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the progression-line is much more straight-forward
there.
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Alright. Now you know how to start your journey
into data science.
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If you liked this video, donât forget to
hit the âlikeâ or âshareâ button!
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