Placeholder Image

字幕列表 影片播放

  • Hi everyone! Welcome to another 365 Data Science special!

  • In this video we will explore ifData Science really is a rising career”, and if it is

  • why and for how long. The answer to the first question is simple:

  • yes, data science is without a doubt a rising career.

  • According to Glassdoor, 2016 was the first year in whichdata scientistwas the

  • Best jobon the market. And after that? Well, it was in the lead in 2017, 2018, and

  • 2019 as well! With a mean base salary of more than $100,000, being a data scientist seems

  • like the dream job of this century.

  • But why is that? Of course, like any other business-related

  • phenomenon, it follows the basic laws of economicssupply and demand. The demand for data

  • science professionals is very high, while the supply is too low.

  • Think about computer science years ago. The internet was becoming a “thingand people

  • were making serious cash off it. Everybody wanted to become a programmer, a web-designer

  • or anything, really, that would allow them to be in the computer science industry. Salaries

  • were terrific and it was exceptional to be there. As time passed by, the salaries plateaued

  • as the supply of CS guys and girls started to catch up with the demand. That said, the

  • industry is still above average in terms of pay.

  • The same thing is happening to the data science industry right now. Demand is really high,

  • while supply is still low. And, as stated in an extensive joint research performed by

  • IBM, Burning Glass Technologies, and Business-Higher Education Forum, this tendency will continue

  • to be strong for the years to come. This, by itself, determines that salaries

  • will be outstanding. Consequently, people are very much willing to get into data science.

  • Of course, this supply-and-demand discussion is not all that informative without the proper

  • context. So, let’s explore this relationship further, and how it applies to data science

  • in particular. First, where does the demand come from?

  • That’s fairly straight-forward. Data-driven decision-making is increasing in popularity.

  • While in previous years, analysts would use software like Excel to analyze data, and only

  • academics would turn to SPSS, and Stata for their statistical needs, nowthe times

  • they are a-changin’, and almost anyone can have access to and use of a data-crunching

  • tool.

  • In fact, advancements in technology have brought about things like:

  • Cloud-based data services for your digital marketing efforts such as Google Analytics;

  • Complicated ERPs that breakdown information and create visualizations; examples here are

  • SAP and Microsoft Dynamics used heavily by business analysts, HR, supply chain management,

  • and so on;  Tableau and Microsoft Power BI for your

  • business intelligence needs; with these tools, analysts can visualize the data in unprecedented

  • ways and uncover unexpected insights;  And, of course, there are also outstanding

  • improvements in programming languages like R and Python, which let you perform very complicated

  • analyses with just a few lines of code. So, you have all these tools that are not

  • that hard to use. You can afford to employ some people to take advantage of them, and

  • you know that this will quadruple your business. Would you get a data science team? Absolutely.

  • So, what are some examples ofdata science fueledenterprises in the real world?

  • WellGoogle for instance. Google is the embodiment of data science.

  • Everything they do is data driven. From their search enginegoogle.com, through their

  • video streaming service, a.k.a. YouTube, to maximization of ad revenue with Google Ads,

  • and so on. Even their HR team is using the scientific method to evaluate strategies that

  • make the employees feel better at work, so they can be more productive. Not surprisingly,

  • Google has been rated number 1 employer for 3 years in a row, according to the renowned

  • Forbes ranking.

  • When talking about Google, it’s only right to also mention Amazon and Facebook. Let’s

  • start with Amazon. I believe you are well-acquainted with how

  • Amazon works. You go to Amazon.com for some item; you usually buy it and then... you somehow

  • end up buying tons of other stuff you didn’t even know you needed. Actually, each product

  • recommendation that you get comes from Amazon’s sophisticated data science algorithms. In

  • fact, Amazon has implemented an algo that can predict with great certainty if you are

  • going to buy a certain product. If the probability is high enough, they may move the item to

  • the storage unit closest to you. This way, when you actually purchase the product, it

  • is delivered the same day. Happy customers are loyal customers and Amazon knows that.

  • What about Facebook? Well, to begin with, it is very important

  • to note that Facebook is not just Facebook, but a bunch of websites and apps, most notably

  • Facebook, Messenger, WhatsApp, and Instagramfor now.

  • And Facebook is generating ad revenue like crazy, since it has all that intimate data

  • for all its users. Most of us interact with all their platforms all the time, which means

  • that Facebook knows if we prefer cat videos or dog videos; by extension, they now know

  • if we are cat people or dog people. They know what sports we are into, what food we prefer.

  • These facts may sound trivial, but if you interact with certain clothing brands, for

  • example, Facebook will also know your preferred price range, or in other wordsthe amount

  • of money that you are willing to spend online. This way, they can target, you, and all their

  • users, in extraordinary ways, securing unprecedented marketing success. It’s not a stretch to

  • imagine why companies just love to use Facebook as an advertising medium. And once they do,

  • do you know what that means? Facebook generates even more data about people and they even

  • get paid for it!

  • That being said, not only huge companies have data science departments. Small businesses,

  • blogs, local businessesall use Google Analytics for their needs and make huge gains

  • off it. This is also a part of data science. You don’t need to do machine learning to

  • monetize on data science. I understand that some of you may not be convinced

  • just yet. However, if your competitors are relying on data-driven decision-making and

  • you aren’t, they will surpass you and steal your market share. Therefore, you must either

  • adapt and employ data science tools and techniques, or you will simply be forced out of business.

  • That’s the reality of the demand for data science.

  • This brings us to the supply of data science professionals. As we already mentioned, the

  • supply is not as flourishing. Data science emerged thanks to technological

  • change. It was impossible for it to exist 20 years ago because of slow internet connection,

  • low computational power, and primitive programming languages.

  • However, when data science did come about, traditional education was simply not ready

  • to meet this need. Data science is still a relatively new field and there are still very,

  • very few programs that educate the aspiring data scientists. In fact, research suggests

  • that the people that get into the field, usually transition from some other field and gain

  • the necessary skills mainly through self-preparation. That includes books, research papers, and

  • online courses. You can find a link to that study in the description. But if youre

  • not into reading over the findings just now, the summary we can offer is that overall,

  • it seems there are still not enough people exploiting the opportunities in the data science

  • industry. Now that’s the issue weve been trying

  • to tackle for several years now. Weve createdThe 365 Data Science Programto help

  • people enter the field of data science, regardless of their background. We have trained more

  • than 350,000 people around the world and are committed to continue doing so. If you are

  • interested to learn more, you can find a link in the description that will also give you

  • 20% off all plans if youre looking to start learning from an all-around data science training.

  • Going back to Economics 101, if you have a low supply of labor, the salaries will maintain

  • high.

  • And, keeping in mind that the demand will continue to grow, we can expect that the result

  • would be something like the computer science fielddemand will continue to outgrow

  • the supply for a very long time, maintaining the data scientist as one of the most lucrative

  • career choices.

  • And, yes. Data science is on the rise, both from a company’s perspective and from the

  • perspective of a job candidate. So, this really IS the best time to break into data science!

  • If you liked this video, don’t forget to give it a like, or a share!

  • And if career insight about data science is what you’d like to learn more about, please

  • subscribe to our channel. Thanks for watching and good luck with your

  • data science studies!

Hi everyone! Welcome to another 365 Data Science special!

字幕與單字

單字即點即查 點擊單字可以查詢單字解釋

B1 中級

2020年,數據科學真的是一個新興的職業嗎(薪資10萬+)? (Is Data Science Really a Rising Career in 2020 ($100,000+ Salary))

  • 1 0
    林宜悉 發佈於 2021 年 01 月 14 日
影片單字