How I Boosted my Confidence in the Data Science Field

How I Boosted my Confidence in the Data Science Field

In this article, I will discuss some better ways to change your thinking towards data science. And how you can better imagine the world with data science techniques and use them effectively in your day to day life.

Knowing machine learning and deep learning algorithms are acceptable. But, Importing the algorithms and using those algorithms by feeding the data is not the right practice to better utilize data science techniques. We can find many people on Linkedin with bio as machine learning, artificial intelligence, and python. But to utilize them in your day to day task is challenging. There comes the need to get exposures and having a better understanding of the algorithms.

Our primary goal in the data science field is to use the algorithms developed by data scientists effectively. But, if we are not aware of the algorithms like what goes in, what comes out, and what happened inside the black box, we might not use them effectively.

In this article, I will discuss some better ways to change your thinking towards data science. And how you can better imagine the world with data science techniques and use them effectively in your day to day life.

Better Linkedin Connection

Linkedin is one of the efficient tools to enrich your knowledge and broaden your thinking towards data science. But, some people are using it like Facebook. While adding any connection, we should focus on adding quality connections. We should check their interests in their profile, then only we should add them to the connection list. And it is imperative because Linkedin algorithms show you the posts liked and shared by your connections.

The more similar mindset connection you will add, the more positive vibes you will receive from the platform. Social media directly impact our future actions, so we need to be more attentive in that area.

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