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5 Bad Reasons to Become a Data Scientist in 2023

Introduction

We live in a world where more than 2 quintillion bytes of estimated data are generated every day. This is due to the increased use of digital devices for texting, sending images, and emails, doing transactions, searching queries online, and so on. Everything we do is captured in the form of data. This data is going to increase in coming years. Hence, multiple businesses like fintech, ed-tech, service providers, etc., need data scientists so that they can process the data efficiently and thus interpret it.

Big data helps companies to collect a large amount of data on their products, customers, and operation. But only data collection is not enough. Companies need data scientists to analyze the data and derive useful insights from it. Data scientist helps companies in Decision making, optimizing their operational process and building new products/services which is profitable. Data scientists create models which is predictive in nature. These models can predict the outcomes based on old data. Hence, there is high demand for data scientists. This is one of the highest-paying jobs and the hottest topic among job seekers.

But, don’t join the wave of data science without knowing the required skills and the required commitment. This article will look into the 5 reasons you need to know before becoming a data scientist. This article will burst the misconception around this job and how this field is not for you if you follow certain myths.

Learning Objectives

  • To highlight 5 reasons why becoming a data scientist is not a piece of cake.
  • To burst misconceptions around this field and help future aspirants to make a correct decision.

If you are a little impatient and want a quick and summarized context, then watch the below video now.

If you are still here, then keep reading.

Let’s understand the

Table of Contents

1. Don’t Become a Data Scientist Because of Glamour

Data Scientist

Source: freepik.com

Data scientist is one of the sexiest designations in the market, offering very high salary packages. But don’t join this field due to its hype. This job is not the cup of tea for everyone and requires lots of commitment and time. Data scientists spend most of their day in data cleaning, which is very tedious. This work is repetitive and eats most of your daily time.

For example, imagine you are working as a Data Scientist with a Fintech Company and are tasked with building a Credit Scoring Model. For this task, you will need to refer to multiple data sources for extracting data. This will be Followed by aggregation and cleaning, which will surely consume more than half of your total project time.

2. If you Think That Data Scientist Works Independently on flexible hours

data scientist

Data scientists have expertise in the automation of tasks, but they can’t work in complete isolation. They need to collaborate with other professionals like SDE, data analysts, stakeholders, etc., for any project. For this, time management and prioritizing the work are essential. They need to rely on other departments/ professionals who help gather the data. After that, the data analyst must clean, pre-process and transform the data to be used in the model. Stakeholders help convert the business problem into a data science problem so that data scientists further work on them.

Let me retake the Credit Scoring example to explain this. For building this credit scoring model, functionally, you may have zero understanding of what credit scoring is. So, that’s where you shall engage with your stakeholders, who might give you crucial insights on Data Sources, Parameters, Thresholds, etc.

After this, they need to work with statisticians and SMEs who validate the model before putting it into production.

Hence, data scientists completely depend on other departments for processing a task.

3. Becoming a Data Scientist Just for a High Salary Package and Perks

Data Scientist

If you expect that you will earn high salary once after becoming a data scientist, then you are incorrect. Data scientists use numerous technologies in their day-to-day work, and the technologies keep upgrading. So once, after becoming a data scientist, you need to update your knowledge frequently. You have to keep up with new trends, technologies, and methods; otherwise, you have chance of getting replaced. There is much competition in the market you can’t settle for the thought that you can sit comfortably. Hence, you should know the pros and cons of every field.

Let’s retake our Credit Scoring example. Let’s say you trained your first model version using Traditional Machine Learning. Everybody liked it, and you took it to production. However, in due course, you learned that training a Deep Learning RNN Model would give increased model accuracy. And if you haven’t used RNN before, you might need to learn it on the fly and train a model thereafter. While it’s challenging, you are anyway expected to do it.

Hence, if you are not willing to learn after joining as a data scientist, this will be hard on you.

4. If you Think Coding Knowledge is not Required

Data Scientist

Some people prefer the data scientist role over the software developer, thinking it requires less or no coding at all. But, in reality, you need coding to perform your day-to-day task. You need coding to experiment with your machine-learning approaches too. Knowledge of programming languages such as Python, R, and SQL is required to perform tasks like cleaning, pre-processing, visualizing and building machine learning models. Writing clean, efficient, and maintainable code is important for building reproducible and scalable data pipelines.

Again going on our Credit Scoring Model for a Fintech business: You need to write code for Exploratory data analysis and Model building. So, you can’t escape from coding in this field.

5. If you Think Excel Knowledge is Enough

Excel

We all know that excel is a powerful tool for data visualization and analysis. But having alone knowledge of excel or google sheet is not enough. Excel cannot handle large datasets and can’t perform complex data modeling tasks. As a data scientist, you need to have deep knowledge and understanding of Statistics, Machine Learning, and Programming languages like Python and R. You should also have working knowledge of big data platforms like Hadoop and Spark. They regularly use data manipulation and visualization tools like SQL, Tableau, or Power BI.

We can also use excel for making interactive dashboards, but still, it has lots of limitations. A data scientist should have a broad knowledge of technical skills and be comfortable working with various tools. Then, they can extract insights from data useful for making data-driven decisions.

Conclusion

The demand for data scientists has increased due to large data production. It is also an appealing designation in the market which offers an amazing salary package. But, before becoming a data scientist, it is also necessary to know the other side of the coin. It’s not a desk job, and one can’t be settled after becoming a data scientist. You need to work with other departments, need to keep yourself updated with the latest technologies and should have coding knowledge. Understand all the above factors and then decide if this job is the right fit for you or not.

Key Takeaways

  • A data scientist job requires a lot of commitment and time, with most of your daily time spent on data cleaning, which is repetitive and tedious.
  • Data scientists can’t work independently and must collaborate with other professionals like data analysts, stakeholders, and SMEs for any project.
  • You need to update your knowledge of new trends, technologies, and methods on a regular basis to keep up with the competition.
  • Coding knowledge is required for a data scientist role, and you need to write clean, efficient, and maintainable code for building reproducible and scalable data pipelines.
  • Data scientists must work with large datasets requiring specialized tools and programming languages like Python, R, and SQL. Hence, alone knowledge of excel is not enough.
Shweta Rawat

14 Dec 2023

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