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  • Hello everyone, and welcome!

  • It’s time for another 365 Data Science special, and this time well talk about an alternative

  • way of getting into data science.

  • That’s rightwell talk about becoming a data analyst.

  • More specifically, well look at who the data analyst is, what do they do, how they

  • fare in terms of salaries, and what skills and academic background you need to become

  • one.

  • But before we get started, we just want to remind you that there are several attention-worthy

  • career opportunities you can explore within the field of data science itselfand those

  • are: • data analyst;

  • BI analyst; • data engineer;

  • data architect; • and, of course, data scientist.

  • Well do a video just like this for each of the other career opportunities, so be sure

  • to check them out too!

  • Alright!

  • So, the data analyst.

  • Who is the data analyst exactly?

  • Data analysts are the real troopers of data science.

  • Theyre the ones who are involved in gathering data, structuring databases, creating and

  • running models, and preparing advanced types of analyses to explain the patterns in the

  • data that have already emerged.

  • A data analyst also overlooks the basic part of predictive analytics.

  • That’s theelevator pitch of the data analyst”.

  • But to really get an idea of what it means to be part of a team like that, we need to

  • look at what a data analyst does.

  • As it turns out, quite a lot.

  • A data analyst is both a thinker and a doer who doesn’t hesitate to roll up their sleeves

  • and dig into the numbers.

  • Data analysts extract and analyze data with a “can doapproach and then present data-driven

  • insights to underpin decision making.

  • They also develop and build analytics models and approaches as the basis for a company’s

  • strategy and vision.

  • On top of that, they are often responsible for identifying and extracting key business

  • performance, risk and compliance data, and converting it into easy-to-digest formats.

  • So, as you can see, agility to shift between strategic projects and operational activities

  • a must.

  • If you think that sounds a bit lonely

  • Think again!

  • Data analysts are great team players and work closely with various departments and leaders

  • within the organization.

  • That’s super important if they want to be effective in this role.

  • So, the ability to communicate well and influence is critical here.

  • So what does all this mean in terms of salary?

  • How much does a data analyst earn?

  • Glassdoor and PayScale were kind enough to share their insights.

  • If youre taking the first steps in your data analyst career, you can expect an average

  • pay of $57,000.

  • As you reach 4-6 years of experience, your compensation will also go higher ($68,000

  • median annual salary and an average bonus of $4,705).

  • Youre based in the UK?

  • The average compensation for data analysts with less than 1 year of experience (including

  • bonuses and overtime pay) is £23,870.

  • In terms of data analyst job growth, if you already have 1-4 years of experience as a

  • data analyst, you can expect annual earnings of £25,853.

  • That said, let’s address the elephant in the room and talk about how to become a data

  • analyst.

  • Are you now considering a career as a data analyst?

  • As we already mentioned, that’s certainly a great option to explore, both on its own

  • and as a gateway into data science.

  • However, there are a several points you should consider before you can determine with confidence

  • whether a career in data analytics is the best career path for you.

  • First on this listEducation.

  • What education do you need to become a data analyst?

  • Well, a Bachelor’s degree in IT, computer science or statistics will give you a strong

  • advantage.

  • However, equivalent experience in data and business analytics also fit the bill.

  • The good news is, even if you lack the background and the experience, you still have a good

  • chance of getting a job as a data analyst.

  • There are various ways to learn, such as taking qualification trainings or completing an online

  • course or two thatll give you the foundation you need to match your teammates’.

  • Both paths should increase your chances to land an internship at a high-profile company

  • and build your career from the ground up.

  • Some of you might be thinking right about now that an entry-level position just doesn’t

  • have a glamorous enough ring to it, and it isn’t how you imagined launching a successful

  • career as a data analyst.

  • But this just may be the best way to achieve your goal.

  • In most companies, youll be able to gain valuable experience and take advantage of

  • many in-house training opportunities.

  • Ultimately, pile up enough qualifications and skills, and you will become a highly competitive

  • work candidate.

  • Speaking of qualifications and skills, what data analyst qualifications you should acquire

  • to begin with?

  • Well, as a data analyst, youll have plenty of tasks to juggle on daily bases.

  • That means youll need a variety of skills, including technical, practical, and soft.

  • Well review them here, but if you want to see the definitive list, weve put a

  • link in the description to a massively helpful article about starting on the data science

  • career path.

  • Alrighttechnical skills.

  • Obviously, youll need some programming background in Python, R, or the likes.

  • Youll also need to have some expertise in SQL and a good understanding of how relational

  • database management systems work.

  • In that sense, it would be optimal if you know how to extract and analyze data from

  • diverse resources (meaning multiple data marts and file formats).

  • Knowledge of Tableau and how to work with large data sets is also a very big plus.

  • Have you heard of Microsoft Excel?

  • You won’t make it in the field of data analysis if you haven’t.

  • Make sure to familiarize yourself with some of the more advanced analytics and formulas

  • before you go into your next job interview.

  • Finally, even though some things are learned on the job, a good grasp of statistics and

  • an ability to work with some of the best statistical software packages is almost a prerequisite

  • here.

  • But know your way around quantitative methods, confidence intervals, sampling and test/control

  • cells, and predictive modeling, and youre well on your way to the realm of data analysts.

  • What about practical skills then?

  • Given everything weve discussed so far, it shouldn’t come as a surprise that there’s

  • a decent chunk of those too.

  • For example: • Strong attention to detail and ability

  • to quality check your own work to ensure data mistakes are caught prior to work delivery;

  • Advanced analytical and data interpretation skills;

  • Hands-on, problem-solving skills and a proactive approach to problem resolution in

  • general; • The ability to initiate and drive projects

  • to completion with minimal guidance; • Confidence to challenge thinking and offer

  • opinions, thoughts, and insight; • The ability to communicate the results

  • of analyses in a clear and effective manner; • And of course, quick learning skills!

  • In terms of soft skills, it’s a pretty standard package --

  • Youll need your excellent communication skillsboth verbal and written;

  • An ability to articulate complex concepts in a clear and concise manner;

  • Some level of flexibility so you can collaborate effectively in any work environment;

  • And

  • Good listening skills!

  • Alright!

  • Now youre aware of the most important aspects of the data analyst job and what skills to

  • focus on in order to become one.

  • Nevertheless, if you feel like you still need additional career advice and a more detailed

  • analysis of the career opportunities in data sciencewe wrote a very long article about

  • this, and the link is in the description, if you want to learn more.

  • In the meantime, thanks for watching and good luck on your data science journey!

Hello everyone, and welcome!

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