How to Become a Data Scientist? Key Steps To Follow

Awaken Your Potential

By submitting this form, you agree to our Terms & Conditions.

In South Africa, data science is a promising field that offers abundant opportunities for skilled professionals. Today, as most businesses need experts to analyse large amounts of data and create predictive models, the demand for skilled data scientists is on the rise. As a result, data science aspirants will find exciting opportunities in areas like finance, healthcare, retail, and technology. 

If you are interested in how data can be used to solve problems and make a real impact, this article will guide you. You will gain insights into everything, from how to become a data scientist to career opportunities in the data science sector. 

What is a Data Scientist?

A data scientist is a professional who uses Mathematics, Statistics, and Computer Science skills to analyse and interpret large and complex data sets. Their job is to find patterns, identify trends, and extract valuable insights that can help organisations make informed decisions. Data scientists also use their knowledge of programming and statistical methods to solve complex problems and make data-based predictions. 

If you are interested in knowing how to become a data scientist, it is important to develop a strong foundation in these areas. That means you must have in-depth knowledge of programming languages, understand statistical techniques, and learn how to turn data into meaningful insights that can drive business decisions.

What Does a Data Scientist Do?

A data scientist plays a crucial role in transforming data into actionable insights that help businesses. They use advanced analytical techniques and tools to provide clear and strategic recommendations. Here is a closer look at what a data scientist does that will help you know how to become a data scientist:

  • Determines the critical questions that need answering and design data-driven approaches to address them.
  • Analyses data to discover insights and recognise significant patterns.
  • Creates algorithms and models to forecast outcomes and trends.
  • Uses machine learning techniques to improve data quality and product offerings.
  • Presents insights and recommendations to teams and senior management.
  • Deploys tools like Python, R, SAS, or SQL for data analysis.
  • Gathers and prepares data for analysis, ensuring its accuracy and relevance.
  • Develops dashboards, charts, and reports to communicate results effectively.
  • Defines and advocates for best data collection, preparation, and analysis practices.

Data Scientist vs. Data Analyst: What is the Difference?

Understanding the differences between data scientists and data analysts is essential for grasping the specific skills and expertise needed in each role.The table below highlights their distinct roles and responsibilities, guiding you on how to become a data scientist with the right skills:

AspectData ScientistsData Analysts 
FocusSolving complex problems using data-driven approaches.Analysing structured data to support decision-making.
TasksExploratory and predictive analysis, statistical modelling, machine learning, and developing algorithms.Descriptive analysis, creating reports and visualisations, and answering specific business questions.
Complexity of WorkHigh complexity, involving advanced programming and modelling techniques.Generally less complex, focusing on data manipulation and analysis.
Skills and TechniquesAdvanced statistical methods, machine learning, and algorithm development.Data visualisation, report creation, and basic statistical analysis.
Data HandlingWorks with both structured and unstructured data, often involving large datasets.Primarily works with structured data, often from existing datasets.
Typical ToolsPython, R, SAS, SQL, and machine learning frameworks.SQL, Excel, BI tools (e.g., Tableau, Power BI).

What are the Skills Needed to Become a Data Scientist?

Becoming a data scientist requires a diverse set of skills to analyse complex datasets and extract meaningful insights. It demands proficiency in both technical and analytical areas to tackle challenging problems and provide actionable recommendations that drive business success. If you are wondering how to become a data scientist, here are the key skills you need to develop: 

Statistics

Proficiency in statistics is crucial for analysing data scientifically. This includes understanding distributions, linear regression, probability theory, Bayesian statistics, and statistical tests. This knowledge will enable you to draw meaningful conclusions from data. 

Programming:

Programming skills are essential for data analysis and algorithm development. Python and R are the most common languages used, providing tools for manipulation and machine learning. SQL, SAS, C++, and Java are also valuable based on role requirements.

Data Visualisation

Creating clear, informative visual representations of data is crucial. Familiarity with tools like Tableau, PowerBI, and Excel will help you present your findings in a way that is easily understood and actionable for non-technical stakeholders. This will help you understand how to become a data scientist. 

Communication:

Strong communication skills are essential for translating complex data insights into clear, actionable recommendations. You will need to effectively convey your findings both verbally and in writing to ensure your insights drive meaningful decisions and actions.

Domain Knowledge:

Understanding your industry or business domain is key to applying data science effectively. This knowledge helps you contextualise data and make impactful recommendations. Moreover, experience in a specific field enhances your ability to address relevant challenges and opportunities.

Qualifications Required to Become a Data Scientist

When you are planning to begin a career in data science, you will need a strong foundation in education and specialised qualifications. These qualifications give you the technical skills needed for analysing and modelling data. They also help you handle complex data problems and make you more competitive in the job market. So, as you are learning how to become a data scientist from scratch, find out the educational requirements for data scientists:

Bachelor’s Degree:

Start with an undergraduate degree in fields like Computer Science, Information Technology, Statistics, Mathematics, Or Physics. Some universities offer specific degrees in data science. Consider internships during your studies to gain practical experience and network with professionals.

Master’s Degree:

For leadership roles and a competitive edge, a master’s degree in Data Science, Engineering, Computer Science, Or Business Administration is beneficial. This advanced education covers areas like machine learning, advanced statistics, data engineering, and more.

Diploma Degree: 

For those seeking a more time-efficient pathway than a master’s degree, considering a Postgraduate Diploma In Data Science is a good option. This programme provides a focused education in data science, equipping you with essential skills required for the field in just one year.

Professional Certifications:

Certifications can enhance your skills and resume. Earning these professional certifications for data science can help you demonstrate your expertise to potential employers. Here are the top certifications for data science:

  • Certified Analytics Professional (CAP)
  • SAS Certified Data Scientist
  • IBM Data Scientist Professional Certificate
  • Google Professional Data Analytics Certification

What are the Steps to Become a Data Scientist?

Becoming a data scientist involves a series of strategic steps to build the necessary skills and qualifications. Here is a clear path to guide you on how to become a data scientist in South Africa and excel in this evolving field. By following these steps, you can develop a robust foundation in data science and prepare yourself for a rewarding career.

Step 1: Pursue Relevant Education and Certifications

Begin by earning an undergraduate degree in fields like Computer Science, Mathematics, Or Data Science. Afterwards, consider obtaining a data science certification to validate your skills. For those aiming for advanced roles, pursuing a Postgraduate Diploma In Data Science or a master’s degree in data science or a related field can further enhance your qualifications.

Step 2: Enhance Your Data Science Skills

Develop proficiency in programming languages such as Python and R. Moreover, improve your skills in data analysis and visualisation tools like Tableau and Power BI. Through practical experience and continuous learning, you can also build transferable skills such as problem-solving and communication.

Step 3: Excel in Data Science Tools

Get proficient with essential tools and software used in data science, including web scraping tools, machine learning platforms, and data visualisation software. As you learn how to become a data scientist, you must familiarise yourself with big data technologies like Hadoop and Spark to handle diverse data challenges effectively.

Step 4: Start Your Data Science Career

Prepare for your job search by polishing your resume and building an online portfolio. Network with industry professionals and tailor your job applications to specific roles. Prepare for interviews by demonstrating your technical skills and problem-solving abilities.

Careers in Data Science

Data science is an exciting and fast-changing field with many career opportunities for people who can analyse and understand complex data. Since most businesses rely on data to make smart decisions, the need for skilled data professionals is growing. 

Hence, as you learn how to become a data scientist, you must also know different data science jobs in various industries like technology, finance, healthcare, and retail. Here are some of the career opportunities you will find in data science:

  • Machine Learning Engineer
  • Applications Architect
  • Enterprise Architect
  • Data Architect
  • Infrastructure Architect
  • Data Engineer
  • Business Intelligence (BI) Developer

Conclusion

A career in data science is full of exciting opportunities for those who have the right mix of technical skills, analytical thinking, and industry knowledge. As businesses rely more on data to make decisions, the need for skilled data professionals is growing rapidly. However, to succeed in this field, you should follow steps like getting a relevant education, building your data science skills and starting your career. As a result, for the question, ‘How to become a data scientist?’, we have provided the answer in the article. We hope you have gained everything you want to know about becoming a data scientist.

Advance your career with Regenesys School of Technology‘s Postgraduate Diploma in Data Science. Enrol today and explore new opportunities!

How to Become a Data Scientist? – FAQs

What does a data scientist do?

A data scientist transforms data into actionable insights by analysing data, creating models, and forecasting trends. They use tools like Python, R, and SQL and present findings to help organisations make informed decisions.

What skills are needed to become a data scientist?

Key skills include proficiency in statistics, programming (Python, R), data visualisation (Tableau, Power BI), communication, and domain knowledge. These skills help in analysing data, creating models, and presenting insights effectively.

What qualifications are required to become a data scientist?

The data science requirements include a bachelor’s degree in computer science or a related field, a master’s degree for advanced roles, and relevant certifications like CAP or IBM Data Scientist Professional Certificate to enhance your qualifications.

How long does it take to become a data scientist?

Becoming a data scientist typically takes around 4-6 years, including a bachelor’s degree (3-4 years), a master’s degree (1-2 years), and additional time for certifications and gaining experience.

How to become a data scientist in South Africa?

In South Africa, start by earning a degree in computer science or related fields. Enhance your skills with certifications, gain practical experience, build a portfolio, and network with industry professionals to find job opportunities.

Please rate this article

0 / 5. 0

Author

Rena has been writing SEO-based content for Edtech platforms, IT sector and other niches. MA in Journalism and Mass Communication, B.A in Journalism, Mass Communication and Video Production. Work Experience: Before joining Regenesys Business School, Ms Rena wrote articles and blogs for the IT and marketing platform websites and did freelancing content work.

Write A Comment