5 Benefits of writing Blogs that will definitely Boost your Data Science Profile. In this article, rather doing coding I would like to share some of the benefits of writing a blog/article/tutorial as a Data Science Enthusiast.
In this article, rather doing coding I would like to share some of the benefits of writing a blog/article/tutorial as a Data Science Enthusiast.
Trust me, if you want to go a long way in this field than it is unavoidable. Consider it as an advanced form or more detailed version of the readme file *that you make for your *GitHub projects that will allow your project (open source) to reach more audiences and get a better understanding of your project.
Yes!! I know writing concise and clear technical blogs takes practice but trust me the knowledge you share will help a lot of folks.
NOTE:- Most of the people will say to start your own blogging website, in some cases, this will be beneficial(earning money through ads) but if you really want to share your knowledge then go for renowned platforms like *Medium. *Tell me whowants to see those ads while learning something. That’s the reason for the success of Medium(no ads).
So, here are some of the benefits of writing blogs that will boost your data science portfolio.
Writing about what you have learned recently or explaining the working of the project and underlying maths of the algorithms will help you to remember it in the longer run. Also writing the learning in your words will help you to recall it quickly by just skimming through the article.
Sharing code with others is not enough. They must understand why you have used a certain algorithm and other technical stuff in order to understand the underlying working of your project. So, that they can implement that without any hurdle or even contribute and improve your existing project. This gap can be filled by writing an article.
Also, sharing your solution to a particular problem can be in the form of an answer to StackOverflow or Quora's question.
Data Science and Analytics market evolves to adapt to the constantly changing economic and business environments. Our latest survey report suggests that as the overall Data Science and Analytics market evolves to adapt to the constantly changing economic and business environments, data scientists and AI practitioners should be aware of the skills and tools that the broader community is working on. A good grip in these skills will further help data science enthusiasts to get the best jobs that various industries in their data science functions are offering.
Most popular Data Science and Machine Learning courses — August 2020. This list was last updated in August 2020 — and will be updated regularly so as to keep it relevant
Learning is a new fun in the field of Machine Learning and Data Science. In this article, we’ll be discussing 15 machine learning and data science projects.
This post will help you in finding different websites where you can easily get free Datasets to practice and develop projects in Data Science and Machine Learning.
Hint: it applies to other professions as well. Content creation can be scary at first. I know it was for me — sharing thoughts and opinions on subjects where there are more experienced people than me. Nevertheless, even as a beginner to intermediate data scientist (or software engineer), having a blog can kickstart your career. I started blogging in August of 2019, roughly 4 months after starting my first job as a data scientist. That might sound strange at first because there are a ton of people out there with more experience not blogging about what they do. And I can’t reason why.