How Can Someone Who Has No Coding Experience Learn Data Science?

Page 1

How Can Someone Who Has No Coding Experience Learn Data Science? You've already taken the first step by coming here, so let's talk about how you can learn data science without any coding experience! Among the current buzz surrounding AI and machine learning, Data Scientists are receiving a lot of attention. They are the new generation of blue-collar executives. Data Scientists must be a complete package, including a software and algorithm programmer, an analyst, a database manager, a Machine Learning expert, a statistical and operational mathematician, an NLP expert, and a cryptographer. Now, this may appear to be a lot of technical terms, but follow along, and you'll know where to begin.

1. Say No To Shortcuts, And Start From The Ground Up! To begin learning Data Science, begin with the fundamentals of statistics and mathematics. Develop an understanding of basic machine learning algorithms and try using them to solve a real-world problem. Another important consideration is to avoid 'phony' courses that promise to turn you into a data scientist in, say, 21 days! There is no substitute for hard work, especially in a technically sophisticated job. Enroll only with professional courses and institutes with a proven success track record like Learnbay’s data science certification course in Mumbai. ● ● ●

Take your time and be consistent with it. The basic idea here is to master the fundamentals gradually. You might want to start programming right away or take on a hands-on data modeling project in the hopes of learning as you go. Believe us!

2. Improve your programming Skills This is a critical skill to have if you want to be a successful professional in this field. C, C++, R/Python, and Java are common programming languages in this field. You can improve your programming skills by following these tips. Begin with the fundamentals of C, which serves as the foundation for many other programming languages. To improve your programming skills, try developing example algorithms into working programs.


Programming competitions are held on websites such as TopCoder, CoderByte, and Project Euler. You could try any of these to improve your programming skills. Once you've mastered the fundamentals, move on to R/Python. Following the tips above will get you one step closer to your dream job.

3. Begin Exploring And Appreciating Data. As a Data Scientist, you'll be dealing with data all hours of the day and night. Statistics, mathematical crunching, data organization, and segmentation would be routine aspects of your job. For a beginner, data modeling can be taxing and complicated. As a result, it is recommended that you begin working with data, statistics, and mathematics as soon as possible. This will be a fruitful job for you once you are comfortable with numbers and lots of data crunching, deriving relationships between seemingly unrelated data, seeing the big picture, and telling a story through numbers.

4. Do Assignments for yourself: Learn data science by doing. Assume that, at this point, you will be learning the technical skills required of a data-science professional from the ground up. Start taking on projects on your own once you're comfortable with data modeling and programming languages. Select a field in which you want to work, such as healthcare, sports, crime, or social justice, and obtain a relevant dataset about the field from the internet. Websites like KDnuggets.com have a plethora of datasets. ● Take a dataset and process it, then crunch it. Play around with your data however you want. Be consistent once more, and try to think beyond the obvious. ● You can use tools such as Microsoft Azure, Google Cloud, and others to create meaningful data-science projects. You will gradually build up a portfolio of such projects to boost your credibility. ● Once again, stick to your schedule. Maintain as much consistency as possible and continue to practice.

5. Improve Your Analytical Skills By Observing, Analyzing, Spotting, And Discovering Insights. Think unconventionally and try to develop insights about the data while practicing what you've learned from books and other sources on datasets. Why are you questioning the random world around you? What? And how so? It will be beneficial. Every aspect of human life has gaps, unmet needs, and demands. Hey! That is why, as a data scientist, you will assist them. Keep these suggestions in mind. ●

Concentrate on the story the data is telling, what it conveys, and whether this leads to another prediction.


● ●

Segment the data as many times as possible. Subject it to algorithms you understand and experiment with new ones. Maintain a high level of consistency and pay close attention to the results—complete summative reports. Participate in online data mining operations such as those hosted by KDnuggets.com. Examine your performance critically and, if necessary, resolve any issues. Keep track of these results and include them in your portfolio.

6. Make contact with the experts. Once you've collected a large number of your outputs, contact someone who is already a data scientist. We advise you to begin building a strong professional network in this field. Choose someone with at least two years of experience as a data scientist and who has been in the field for a long time. You can ask them to review your work and see how it reflects your abilities. In this manner: ● ●

You will receive professional feedback on how you are doing. Knowing where you stand in expertise allows you to improve yourself quickly. Discuss current trends, salary criteria, expertise expectations, real-life job impacts on personal lifestyle, and so on. You'll have a better understanding of what you're signing up for. Ask for a recommendation or referral if they like your work. If they have you meet someone, always carry your portfolio.

7. Begin with an entry-level position! Be sure to do something before you're the sole authority on Data Sciences. Remember how we talked about starting from scratch? Once you've mastered the fundamentals of data science, apply for an entry-level position. Send your resume to the HR departments of companies that deal with machine learning or artificial intelligence. Marketing behemoths also employ data scientists to crunch data and make relevant predictions. Before attending the interview, you can inquire about the pay packages and other standard practices with your professional contacts. Keep their suggestions and advice in mind as you proceed.

8. Keep Up With The Industry And Talk About It This makes sense, given that you are entering an entirely new field. Join Date Science-specific online forums, read blogs and articles about the latest developments, and keep a journal throughout your learning process. Each lesson is a brick in the wall you're constructing. And data science is the fort here. ● ●

Keep a pen and paper nearby when learning advanced concepts such as cognitive learning, deep learning, and neural networks, and take notes if necessary. EverNote and other note-taking applications are also helpful.


● ● ●

Make brief notes in class if you are taking a course from somewhere. Concentrate on comprehension rather than writing. Participate in as many mining competitions, coding competitions, and so on as possible. Competing sharpens your abilities and fosters strategic thinking. For recent developments in data sciences, AI, and machine learning, consult reputable journals such as IEEE, Springer, and Elsevier. These will assist you in keeping up with industry events and standards.

Hope you enjoyed reading this article. To become a certified data scientist, join the best data science course in Mumbai, designed in collaboration with IBM.


Turn static files into dynamic content formats.

Create a flipbook
Issuu converts static files into: digital portfolios, online yearbooks, online catalogs, digital photo albums and more. Sign up and create your flipbook.