News and Blog

Top Masters program in Data Science you can specialise

A master's degree in data science can help you change your professional path and enter the field, or it can help you advance in it. Through a master's programme, you can expect to increase your knowledge of data science techniques, sharpen your analytical and critical thinking abilities, and become qualified for higher-level positions in the industry. The growing reliance on data in various industries has increased demand for data scientists and data science experts. In fact, the US Bureau of Labor Statistics anticipates a far faster-than-average 36 percent increase in job vacancies for data scientists over the next ten years.

Fundamental Curriculum in Data Science

Data science is an interdisciplinary subject that employs systems, processes, algorithms, and methods from science to extract knowledge from organized and unstructured data and guide decision-making. A solid foundation in statistics, mathematics, and computer languages is necessary to become a data scientist.
Students can deepen their grasp of the principles and build their skill sets in data management, data cleansing, data analysis, and data visualizations through graduate-level data science programmes. Additionally, students pursuing higher degrees have the option to take elective data science courses that go deeper into certain aspects of the discipline, such as:
Data Visualization
Object Oriented Programming
Data Manipulation
Analytic Technique
Machine Learning
Probability and Statistics
Data Mining
Big Data

In general, these programmes give students the information and skills necessary to apply theoretical learning to real-world situations. Students in master's programmes broaden their knowledge of common programmes like Excel, R, and SAS, pick up cutting-edge analytics tools, and improve their programming abilities in Python and Java. AWS, GitHub, and other software platforms that are essential for working in industry are among the platforms that students gain professional instruction on.

Data Science Concentration:

Your programme can give you the opportunity to specialise in a particular area of interest in addition to doing core data science coursework. These are frequently regarded as electives or specialty courses that deepen your understanding of a particular field within data science.
Typical concentrations consist of:
Analytics and Modeling
Analytics and Management
Data engineering
Technology Entrepreneurship
Artificial Intelligence
Big Data and informatics
Business Analytics
Computational intelligence

Skills And Career Opportunities:

In all industries, data science and data scientists play a critical role in promoting informed decision-making. The skill you develop throughout the period of the course like, leadership development, problem solving skills works add on for you.
The Bureau of Labor Statistics (BLS) projects that over the next eight years, demand for computer and information technology professionals—including data scientists—will increase by 13%.
For data scientists, advanced degrees open up even more career and financial prospects. We provide some of the most typical job descriptions and starting pay scales for professionals with a master's in data science below:

Business intelligence Analyst:
Reports on financial and market intelligence are created by business intelligence analysts after they have reviewed data. These reports are utilised by businesses to make financial decisions in terms of pattern recognition and market trends. The average starting salary of a Business intelligence Analyst is $70,000.

Data Analyst:
A data analyst examines data to identify patterns and traits of a client base and to produce sets of data that are easily processed and analysed. They search for patterns that can be turned into answers for businesses and other organisations. A data analyst on an average can expect upto $62,000 starting salary.

Data Architect:
A data architect is responsible for creating the systems, technologies, models, and rules that will interact with the processed data. On average the starting salary of a data architect is $121,000.

Data Engineer:
A data engineer gets ready data for operational and analytical needs. To bring data sets that analysts and scientists will later process, these experts construct data pipelines. A data engineer's average starting salary is $93,000.

Data Scientist:
Data scientists gather information from engineers and data analysts in order to further analyse it with advanced software. To identify trends in data and generate predictions so that organisations may make wise decisions, they apply statistical and probability principles. The average salary a data scientist can Expect is up to $130,000.

Data Science and Analytics Manager:
For a larger data project, a data analytics manager unites numerous team members' activities into one cohesive effort. They investigate and develop techniques for gathering data, analysing information, and solving problems. A data science and analyst average starting salary is $149,167.

To identify trends and recognize patterns for use in decision-making and prioritisation by higher-ups, statisticians gather, analyse, and interpret data. On an average the starting salary of a statistician is around $93,000.

Machine Learning Engineer:
Engineers that specialise in machine learning provide software solutions and data filters. High-level programming and mathematical analysis abilities, as well as the capacity to create and manage machine learning software and systems, are required. A machine learning Engineer's average starting salary is $113,000. Is distance learning in Masters in Data Science worth it? Even though a master's in data science is not necessary to work in the industry, there are many advantages to obtaining one. Your graduate study may allow you to qualify for more prestigious positions or higher pay. Enrolling in a master's programme can also be a terrific way to get more in-depth information about a certain subject, differentiating you from competitors or peers who lack the same advanced degrees.

Valuable Skills:
In-demand technical skills are developed through data science master's programmes. Data science workers with advanced degrees may be eligible for positions with greater remuneration due to their training.

Growing Field:
The expertise of data science professionals is beneficial to almost every industry as more businesses digitise their operations. From 2021 to 2031, the BLS predicts faster-than-average growth for computer and IT employment.