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9 reasons why you’ll never become a Data Scientist

Disclaimer: This story is not meant to discourage you. Rather, it should serve as a long hard look in the mirror.

So you’re enthusiastic about Data Science, you’ve read a couple dozen blog posts and completed a few online classes. Now you’re dreaming of making this your career. After all, it’s the sexiest job of the 21st century, according to Harvard Business Review.

But despite your enthusiasm, Data Science might not be for you. At this moment in time, you’re holding too many illusions and false stereotypes.

Now, your task is simple: Remove the things that hold you back! And you’ll be surprised at how fast you move forward.

1. You think your degree is enough

You have a master’s degree in a quantitative field, or maybe even a Ph.D. Now you want a head start in Data Science.

But have you ever used a shell before? Have you felt the intimidation that can come from command-line interfaces when you stumble upon errors? Have you ever worked with big databases — on the scale of Terabytes?

If you answer one of these questions with no, you’re not ready yet. You need some real-world experience and build some real projects. Only then will you encounter the type of problems that you’ll face every day as a Data Scientist. And only then will you develop the skills to solve them.

Congratulations on your degree. Now get cracking on the hard work.

2. You lack passion

Have you ever invested an entire weekend in a geeky project? Have you ever spent your nights browsing GitHub while your friends were out to party? Have you ever said no to doing your favorite hobby because you’d rather code?

If you could answer none of the above with yes, you’re not passionate enough. Data Science is about facing really hard problems and sticking at them until you found a solution. If you’re not passionate enough, you’ll shy away at the sight of the first difficulty.

Think about what attracts you to becoming a Data Scientist. Is it the glamorous job title? Or is it the prospect of plowing through tons of data on the search for insights? If it is the latter, you’re heading in the right direction.

3. You’re not crazy enough

Only crazy ideas are good ideas. And as a Data Scientist, you’ll need plenty of those. Not only will you need to be open to unexpected results — they occur a lot!

But you’ll also have to develop solutions to really hard problems. This requires a level of extraordinary that you can’t accomplish with normal ideas. If people constantly tell you that you’re off your rocker, you’re heading in the right direction. If not, you’ll need to work on your craziness.

This, of course, requires some boldness. Once you let out your eccentricity, some people will scratch their heads and turn their back on you. But it’s worth it. Because you’re being true to yourself. And you’re igniting the spark of awesomeness that you need as a Data Scientist.

4. You learn from textbooks and online classes

Don’t get me wrong. Textbooks and online classes are a great way to get started. But only to get started!
You need to work on real projects as soon as possible. Of course, there is no point in building a Python project without being able to code a single line in Python. But as soon as you’ve built a modest foundation, get active.

Learning by doing is key. Start building your GitHub portfolio. Take part in some Hackathons and Kaggle competitions. And blog about your experiences.

Everybody can do textbooks. To be a Data Scientist, you must do more.

5. You think you can stop learning at some point

You’ve subscribed to a couple of online courses on Data Science and are reading a few textbooks. Now you think that once you’ve mastered those, you have learned enough to break through in Data Science.
Wrong. This is yet the beginning. If you think you’re learning a lot now, think about how much you’ll be learning in three years.

If you end up as a Data Scientist, you’ll be learning ten times more than you are now. It’s an ever-changing field where new technologies are constantly needed. If you stop learning once you’ve landed your job, your trajectory is going to go from a beginner in Data Science to a Data Scientist that sucks.

If you want to excel in Data Science (and if you’re reading this, you do), you need to face the fact that your learning curve will get steeper over time. If you don’t enjoy learning Bigly, stop dreaming about being a Data Scientist.

6. You don’t have expertise in another domain

So you know a thing or two about Computer Science, and your math skills ain’t that bad. Will you be able to land a job in Data Science?

No, you won’t. Your skills in IT and math are essential, but not enough to set yourself aside from all the other Data Science enthusiasts. Data Scientists work in all kinds of companies and all kinds of industries. To deliver key insights for your clients, you need knowledge about their domain.

For example, Kate Marie Lewis from the story below landed a position in Data Science in six months. But what made the difference was that as a neuroscientist, she had domain knowledge in healthcare.

Which domain are you good at? In which fields do you have experience? Try to position yourself as a specialist in your domain, and less like a general Data Scientist. This is how you really land a job.

7. You’re lacking business skills

So you’re more the analytical type. You love numbers and quantitative analyses, and you hate soft skills and human interaction.

This doesn’t make you a good Data Scientist, my friend. Soft skills are important even in a quantitative job. Soft skills are what ultimately makes you rock that job interview.

Of all the soft skills that you could acquire, it’s your business skills that need a boost. Remember that your clients are business leaders. And as such, they need people who understand business. Only this way can you generate insights that add value to your client.

8. You don’t have meaningful connections

You want to land a job in the field but you don’t know any fellow Data Scientists? It’s time to get cracking, my friend.

Go to meetups. Join the relevant groups on LinkedIn. Get to know people on Hackathons. Follow the right people on Twitter. Meet your fellow contributors on that GitHub project. Do something exciting!
Like with any job search, 90% of your success isn’t determined by how vast your skills are. It’s determined by who can provide references for you, and who can give you an introduction.

If your LinkedIn connections are limited to your mom and your co-workers in that dead-end job, it’s about time to pimp your profile. If your follower count on Twitter is a single handful, get tweeting. If your blog has no readers, try SEOing and cross-platform marketing.

The connections will come. But you need to get cracking first.

9. You don’t love the dirty work

You’ve heard all the buzz about Machine Learning and Artificial Intelligence. You think that Data Science could open the door to working with cutting-edge technologies.

Maybe you will. But I guarantee you that you won’t do it more than 5% of your time.

Once you’ve landed your dream job, you’ll spend the largest part of your time cleaning data. Congratulations, you just found a new job as a janitor!

If you don’t love that, go home — you shouldn’t be reading this post. If you still want to be a Data Scientist after reading all this, it’s about time that you fall in love with the dirty work.

Data Science is not a career option. It’s a vocation

Data Scientists are highly sought-after individuals — which makes a lot of people dabble with it. But to get a position in the field, dabbling is not enough. You need to put in the hard work.

If you’re still convinced about becoming a Data Scientist after reading this story, congratulations. You might be on a very good path.

If at this point you’re unsure about becoming a Data Scientist, identify the biggest reasons for your doubts. Then start working on those points. You can do this!

This article was written by Rhea Moutafis and was originally published on Towards Data Science. You can read it here.

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