How to become a Data Scientist in 2024?

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It is significant for businesses to make decisions that will help them grow. A Data Scientist helps the business to analyze data and make the best decisions to promote its growth. Digital transformation across industries has increased the need for Data Scientists in every business. The following blog will help you understand How to become a data scientist in 2024 and relevant information that will assist you in pursuing a career as a Data Scientist.

Who is a data scientist?

A data scientist is a specialist who gathers, examines, and interprets enormous amounts of data. After interpreting the findings, they process, model, and analyze data to produce actionable plans for businesses and other groups.  The function of a data scientist is a spinoff of a number of conventional technical roles, such as those of a scientist, statistician, or computer expert.

What does a data scientist do?

Data scientists use data to comprehend and explain processes in their environment and assist businesses in making better decisions.

The daily duties of a data scientist might look like the following;

  • Understanding patterns and trends in datasets to come up with useful insights for the business. 
  • Predicting/forecasting outcomes with the help of algorithms and data models. 
  • Improving the quality of data or the products offered using machine learning techniques.
  • Passing recommendations and suggestions to various teams and senior officials of the company. 
  • Data Analysis using various data tools such as SQL, R, SAS, and Python.
  • Constant look out for updates and innovations in the data science domain.

Prerequisites to become a Data Scientist

  • Qualification – A undergraduate or postgraduate degree in a relevant discipline such as mathematics, statistics, computer science, economics, information management, business information systems etc. The course eligibility varies at different levels. (Source – Naukri.com)

Technical skills

  • Statistics
  • Mathematics
  • Programming 
  • Data Visualisation 
  • Big Data
  • Machine Learning
  • Deep Learning

Non-technical skills

  • Strong business understanding
  • Solid communication skills
  • Strong Data instinct

Difference between Data Scientist and Data Analyst

  • Data Scientist – Data Scientist specializes in analyzing and interpreting data that will help their organization make better business decisions to promote their growth.  
  • Data Analyst – Data Analysts often use data visualization software, programming languages like Python, R, SQL and statistical analysis to work with structured data to address real-world business issues.
Data AnalystData Scientist 
Data Analyst focuses on helping people at an organization understand what the data showsData Scientist is responsible for collecting the data and cleaning it up so it’s more understandable and usable
Examining data sets to find patterns and trends that can be turned into actionable insightsBuilding data visualization tools, dashboards, and reports
Building algorithms that help the business create customer-centric approachesData scientists find ways to use unstructured data the business collects
Easy-to-understand findings presented to guide data-driven decision-makingWriting programs to automate data collection and processing
Working with data warehousesAnalyze new data sources
Acquiring data from primary and secondary sourcesUtilize machine learning algorithms and predictive models to mine large data sets
Identifying information needs in collaboration with organizational leadersCreating procedures and tools to track and evaluate data accuracy


The average salary for Data Scientists in India is shown below;

Note – It varies basis the experience levels.                                                                                   Source – Payscale

Step 1: Questions You Should Ask

A career in data science requires constant learning and upskilling and it cannot be an impulsive decision. If you are planning a long sprint in this direction, make sure you have a suitable background and aptitude. Start by asking yourself the following questions to find out if this path is for you.
– Do you have an educational background in computer science, information technology, mathematics, statistics or a similar branch of study?
– Do programming languages excite you?
– Are you a proactive learner who is willing to pick up the tricks of the trade ahead of the market?
– Do you enjoy handling complex data sets to understand patterns?
Data science might be a rewarding career choice but it requires concerted efforts. A course in data science can help you master the essentials and make you industry-ready. Check this Data Science Course with Gen AI.

Step 2: Maths and Stats

If you are from a non-technical background and still want to pursue a career in data science, fret not. You can up your chances of becoming a data scientist by developing skills in the field of applied mathematics and statistics. Market research shows that a considerable number of data scientists hail from a business or economics background. If you are an aspiring candidate with a similar educational background, brush up your skills in mathematics and statistics as a preparatory step.

  • Machine Learning
  • Statistical Modelling
  • Exploratory Data Analysis
  • Clustering
  • Regression Analysis

Step 3: Machine Learning

Master the basics of machine learning as it is one of the most crucial components of data science. It is used for a number of data science applications, ranging from reporting forecasts to identifying data modelling patterns. Familiarity with machine learning tools and techniques will help you to master other data science tools with ease. Once you pick up the basic machine learning tools and functionalities, designing and using algorithms for data modelling will become easier. 

Step 4: Programming

Programming is one of the main requirements in a data science profile. Learn to code so that you can read and analyse data sets. Pick up programming languages like Python, R, SAS and more. Python remains one of the most widely used programming languages owing to its flexibility. Among the querying languages, SQL is prominent, so learning both these programming languages will help you launch your data science careers successfully.

Step 5: Communication and Visualization

  • Storytelling skills
  • Convert data-based insights into decisions
  • Matplotlib, Tableau, Qlik Sense, Power BI

Step 6: Data Munging

The next step to become a data scientist should be learning data munging. It is a process of looking through messy data sets to identify and discard redundant data. This cleanup process is a preparatory step towards data analysis. Data munging helps data scientists to analyse and present data in a readable format.

Step 7: Reporting

For a data scientist, if data analysis is half of the job, the other half is reporting. Business decision-makers refer to data reports to drive business and generate revenue. But for the data to make sense, it must be put into data visualisation tools like charts, Tableau, d3.js, Raw and more. Data scientists must familiarise themselves with the principles of data communication systems and visual encoding to present data in an easy and readable format.

Step 8: Practice

The best way to fine-tune your skills in data science is by applying that knowledge to practice. Once you have mastered all the theoretical knowledge, start working on projects that replicate real-world data complexities faced by companies. Alternatively, you can also intern at leading data science companies or join bootcamps to get hands-on experience on real data science applications.

Stay updated on the recent developments in the field of data science. The amount of data generated by the world is increasing each day and in keeping with this exponential growth, data science is also evolving. Data scientists must learn ways of enhancing data tracking and analysing applications to ensure resource optimisation. Constant learning is crucial for data scientists to stay on top of their game. Look for educational and professional development opportunities that will advance your career in data science. 

Contributed by: Debashis Gogoi
LinkedIn Profile: https://www.linkedin.com/in/debashis-gogoi/

One will need at least a bachelor’s degree in data science, mathematics, statistics, computer science to get an opportunity as an entry level data scientist. Degrees also add structure, internships, networking and recognized academic qualifications for one’s resume. However, if one has already received a bachelor’s degree in a different field, you may need to focus on developing skills needed for the job through online short courses or bootcamps.

Gain the required skills to become a data scientist.

  1. Statistical Analysis and Math
  2. Programming (Python, R)
  3. SQL (MySQL)
  4. Machine Learning Techniques
  5. Data Visualization
  6. Communication Skills
  7. Data Mining, Cleaning and Munging
  8. Research
  9. Data Warehousing and Structures

Step 11: Consider a specialization

In demand data scientists typically specialize in a particular industry or develop strong skills in areas such as artificial intelligence, machine learning, research or database management and then with significant experience and expertise their designation changes in the same way as for example Machine Learning Engineer, Artificial Intelligence Engineer, Computer Vision Engineer, Data Analyst, Senior Data Analyst, Data Scientist, Senior Data Scientist, Data Engineer etc. Specialization is a good way to increase one’s earning potential and do work that is meaningful to the industry and the domain. 

Step 12: Create Your Resume

Once you have completed your education in data science and gathered experience working on projects and as interns, it’s time to create a portfolio showcasing the same. Update your resume, highlighting your data science skills adequately and start applying for relevant openings. You can prepare for interviews by referring to the most popular data science questions and answers

Step 13: Get the first entry-level data science job or an internship

Once one has acquired the right skills and/or specialization, one should be ready for the first data science role! It may be useful to create an online portfolio to display a few projects and showcase the accomplishments to potential employers. One also may want to consider a company where there’s room for growth since the first data science job may not have the title data scientist, but could be more of an analytical role. One will quickly learn how to work on a team and best practices that will prepare for more senior positions. 

A very important point to note here, one should also accept an internship rather than only looking for full time jobs. The objective here is to get exposure to the industry and working in real life projects on real life data. So, one should accept every opportunity one gets to prove himself/herself and to showcase one’s skills y contributing towards the industry.

Step 14: Look for additional data science certifications and post-graduate learning

There are numerous institutes having N number of courses and training on data science skills and tools. As it is said ‘Never Stop Learning because Life Never Stops Teaching’, one should always keep on learning new skills and tools for one’s own development and then later using the same for the betterment of mankind and the world.

Josh Wills said – “A data scientist is someone who is better at statistics than any software engineer and better at software engineering than any statistician”.

A data scientist’s responsibilities on any given day may include:

  • Solving business problems through undirected research.
  • Extract huge volumes of structured and unstructured data. They query structured data from relational databases using programming languages such as SQL. They gather unstructured data through web scraping, APIs, and surveys.
  • Employ sophisticated analytical methods, machine learning and statistical methods to prepare data for use in predictive and prescriptive modeling.
  • Thoroughly clean data to discard irrelevant information and prepare the data for preprocessing and modeling.
  • Perform exploratory data analysis (EDA) to determine how to handle missing data and to look for trends and/or opportunities.
  • Discovering new algorithms to solve problems and build programs to automate repetitive work.
  • Communicate predictions and findings to management and IT departments through effective data visualizations and reports.
  • Recommend cost-effective changes to existing procedures and strategies.

Summing Up

Data Science is now seen as a valuable asset in the modern business world, and the demand for Data Scientists is snowballing. Data Scientists are the unsung heroes of the technological revolution, and the rewards for their work are proving to be incredible. There are multiple resources out there to help you get started, whether you’re looking to get into Data Science professionally or expand your current skill set.

Ultimately, becoming a Data Scientist without experience requires dedication, hard work, and an eagerness to learn. By developing essential skills, gaining experience, and building a professional network, you can become a data scientist with no experience. Although it may be a daunting task, the rewards are worth it. 

So take the first step and start working towards your goal of becoming a Data Scientist! Good Luck!

Different companies will have a different take on the work a data scientist does. Some treat their data scientists as data analysts or combine their duties with data engineers, others need top level analytics experts skilled in intense machine learning and data visualizations.

As data scientists achieve new levels of experience or change jobs, their responsibilities invariably change. For example, a person working alone in a mid-size company may spend a good portion of the day in data cleaning and munging. A high-level employee in a business that offers data-based services may be asked to structure big data projects or create new products. Based on the company, the industry and the domain, the work done by a data science professional may vary on a daily basis. 

After you have followed these aforementioned steps, your data science career will be all set to take off. With an arsenal full of data science skills, landing a relevant role won’t be difficult, especially if you have worked on projects and have industry-relevant experience. However, in order to keep growing in the field, you must constantly seek challenges and keep learning. Start viewing all kinds of business circumstances as scopes for studying data – start thinking like a data scientist. Courses and certifications will help you stay updated about the latest technologies in the field and give you an edge over your competitions. Great Learning, one of India’s premier education institutes offers courses that cover all the essentials of data science and make professionals industry-ready. Check out this data science course with Gen AI to get a better understanding of the curriculum.


If you found our steps to become a data scientist helpful and enlightening, check out the online course, PG program in Data Science and Business Analytics, to learn seamlessly with the comfort of your own place and time.  

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Marina Chatterjee
Marina is a content marketer who takes keen interest in the scopes of innovation in today's digital economy. She has formerly worked with Amazon and a Facebook marketing partner to help them find their brand language. In a past life, she was an academic who taught wide-eyed undergrad Eng-lit students and made Barthes roll in his grave.

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