10 Key Subjects Covered in Business Analytics Courses

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10 Key Subjects Covered in Business Analytics Programs

Here's What We've Covered!

In a world that is driven by technology and data, there’s a sea that processes it all, let’s call it the sea of business analytics. This sea collects data, filters through it and produces substantial insights out of it. One can only imagine the large amounts of valuable data generated each day, and more so, the more resources needed to analyse the data.

That’s where business analysts come in the picture. They use their skills and expertise in understanding the data, process and develop actionable insights based on the assessed data. The insights are then reviewed by decision-makers who choose to implement the proposed suggestions in order to enhance their business processes and flourish.

Business analysts, thus, are one of the most significant contributors in fostering organisational growth. And to become a business analyst, you are required to have a strong foundation in various subjects of business analytics, and develop and polish the required skill set. For business analytics enthusiasts like yourself, there are many courses in business analytics that will catch your eye. Finding the right course can be difficult in this available pool of options. One of the ways you can filter your options is by evaluating business analytics courses from different institutions.

Most analytics institutes cover the basics of business analytics, a quick dive into statistics and probability, and a couple sessions on how to use data analytic tools like Advanced Excel. While these subjects are equally important, business analytics is not limited only to these few subjects. In reality, business analytics is a much more complex and intricate field, surrounded by many different topics and subjects. To excel in the field of business analytics, a good understanding of businesses, accounts, economics, as well as mathematics, data analysis, statistics, etc. is required.

Don’t worry, there are also institutes that cover a range of topics in business analytics. IMS Proschool, ranked among the top 10 analytics institutes in India, provides one such comprehensive program that equips you with all the knowledge and skills needed to be a successful business analyst.

Main Subjects Covered in Business Analytics Syllabus

Business analytics is a data-driven field that equips professionals to make data-informed decisions to help businesses grow. The programs cover many subjects that provide knowledge about business understanding, and how data can make a difference. Following are the key subjects covered in business analytics programs that make it the diverse and interesting field it is:

  1. Foundational Statistics

    In a field that leverages data, statistical and analytical tools are most crucial to the process of business analytics. Studying these subjects early on in your program is quite essential to get a proper understanding of business analytics. Statistics form the backbone of business analytics, and thus form a strong foundation during your introduction to the field. Following are the important subjects that you should cover under the large umbrella of statistics:

    • Descriptive analysis

On reviewing a dataset, descriptive analysis provides key characteristics and a summary of the data being analysed. It is useful in identifying patterns and trends, and understanding data distribution. There are different techniques used in descriptive analysis:

  • Measurement of central tendency, using mean, median, and mode to evaluate the centre point of a data set.
  • Measurement of dispersion, which understands the spreading of data points using standard deviation, variance, and range.
  • Measurement of frequency distributions using histograms, pie charts, and bar graphs to visualise the frequency of data values.

Also Read – 4 Types Of Business Analytics: It’s Time To Make Data Work

    • Probability

This method of statistics carefully outlines the likelihood of events that occur. Probability is fundamental to statistics because it provides a structured, data-backed framework in order to assess risks and make predictions. There are different concepts to understand probability in all its entirety. The probability distributions most commonly used to model different types of data are normal, binomial, uniform, and Poisson distributions.

    • Hypothesis testing

This statistical method brings colour to the predictions made. To determine whether a particular hypothesis can be proved or not, the sample data is evaluated on the parameter being tested. It involves drawing alternative and null hypotheses, gathering data, and calculating the test parameters and statistics to analyse the evidence. Some common examples include:

      • T-test, which compares the mean of two groups.
      • ANOVA test, which compares the mean of multiple groups.
      • Chi-square test, which studies the independence between categorical variables.
    • Regression analysis

In the case of one dependent variable and one or more independent variables, regression analysis is conducted to understand the relationship between them. It draws the value of the dependent variable based on the values of the independent variables. There are several types of regression, including:

      • Simple linear regression, used to model the relationship between one dependent and one independent variable.
      • Multiple linear regression, used to model the relationship between one dependent and multiple independent variables.
      • Logistic regression, used to predict categorical variables.
  1. Problem-solving

    One of the core competent skills required in business analytics is problem-solving. It involves the journey from challenge to solution, driven by a combination of critical thinking, technical skills, and a strategic mindset that innovates new, effective solutions.

    • The first step, of course, is to define the problem. Collect data from various sources, primary and secondary, and identify the possible root causes in the problem. Prioritise issues by understanding which problem is most critical to business goals at the time.
    • Use data mining and statistical techniques to break down and analyse the data. While analysing the problem, you may also identify patterns and trends in data which can help provide insights that will help you in the next step.
    • With insights in hand, the next step is to generate a variety of potential solutions while also evaluating their risks and benefits. The secret to problem-solving is to be aware and prepared for all scenarios, better or worse, and navigate them tactfully.
    • Finally, implement the proposed solutions and wait for the results. Assess how effective the solution was and identify areas of improvement to do better the next time around.
  2. Data Analysis

The most crucial part in the process of business analytics is data analysis. Effective data analysis provides data-driven insights that drive informed decision-making in businesses. To accommodate large data sets and conduct data analysis carefully, there are different tools and techniques that are used. You can choose a tool based on the complexity of the data and the tasks at hand. Some widely used tools are:

    • Advanced Excel

From the most basic data sets to some of the more complex ones, Excel offers a variety of tools for data analysis, making it a widely used spreadsheet software worldwide. It is an excellent starting point for beginners to carry out common data analysis tasks.

      • Excel provides a huge library of functions to perform calculations and manipulate data, each with a formula of its own, such as SUM, AVERAGE, and COUNT.
      • A range of chart types is available, including bar graphs, pie charts, line graphs, and scatter plots, used to visualise data and identify trends.
      • For multiple data sets, Excel offers pivot tables, a powerful tool to summarise and analyse large data sets. Performing cross-calculations and generating pivot reports is a breeze with Excel.
    • Python and SQ

Python is a versatile programming language that has gained popularity in the field of data science. It offers a holistic ecosystem of resources, libraries, and packages specifically designed for data analytics.

  • Numpy and Pandas libraries offer efficient data operations and structures to work with numerical data.
  • Matplotlib and Seaborn libraries offer data visualisation tools to create custom graphs and plots.
  • Scikit-learn offers a range of machine learning algorithms to carry out tasks such as clustering, regression, and classification.

SQL, on the other hand, is essential for interacting with databases. It is used to extract, transform, and load (ETL) data from a variety of sources. Fundamental clauses in SQL allow retrieving data tables based on specific functions, combining data, aggregating data, and filtering results based on group-level conditions.

  1. Data Visualisation

A powerful tool in data analytics, data visualisation focuses on communicating complex information clearly, interactively, and engagingly. It is used to discover insights, identify trends, and make better decisions by transforming data into visual representations. Two popular tools are:

    • Power BI

Power BI provides a wide range of tools required to create clear dashboards that are easy to understand. With the right narrative, visualisations, and proper techniques, Power BI enables analysts to create compelling data stories.

    • Tableau

Tableau offers a user-friendly interface to create visually appealing dashboards. Its features include drag-and-drop functionality, data blending, and customisation options, making it a widely preferred tool for data visualisation.

    • Storytelling

Storytelling is a crucial skill in business analytics. It helps communicate data findings more effectively, engage the audience, and drive actionable decisions based on the insights derived.

These foundational subjects and skills prepare business analysts to navigate the complexities of their field. If you’re looking for a comprehensive program that covers all this and more, IMS Proschool’s Business Analytics course is an excellent option. It provides hands-on experience, practical tools, and a pathway to excel in this dynamic field.

3 Types Of Skills Required in Business Analytics

Like the field itself, the skills needed in business analytics are intricate and crucial to excelling as a business analyst. A combination of technical, analytical, and soft skills is essential to become an expert in the field. Here’s a glimpse into the key skills to develop or polish in business analytics:

1. Technical Skills

  • Proficiency in Data Analysis Techniques
    Master foundational techniques like hypothesis testing, descriptive analytics, and regression analysis.
  • Data Visualisation Expertise
    Communicating insights through tools like Power BI, Tableau, and storytelling methods enhances understanding and impact.
  • Familiarity with Programming Languages
    Skills in Python, SQL, and other languages streamline data handling and model building.

2. Analytical Skills

  • Critical Thinking
    Analyze information, assess arguments, and make informed decisions.
  • Problem-Solving
    Develop innovative and data-driven solutions to complex business problems.
  • Logical Reasoning
    Understand data nuances and apply logical processes to derive actionable insights.

3. Soft Skills

  • Domain Knowledge
    Awareness of specific industries aids in the contextual application of analytics.
  • Communication Skills
    Articulate findings and insights clearly to diverse stakeholders.
  • Collaboration
    Work cohesively with teams across departments to ensure data-driven strategies align with business objectives.

4 Emerging Trends in Business Analytics

The dynamic nature of business analytics means new trends, tools, and techniques are always on the horizon. Here are some transformative trends shaping the field:

1. Artificial Intelligence and Machine Learning (AI & ML)

  • AI and ML are enhancing predictive analytics, automating routine tasks, and extracting insights from unstructured data through Natural Language Processing (NLP).
  • Machine learning models help optimize decision-making and drive innovation across industries.

2. Cloud Computing

  • Cloud platforms offer scalable, cost-effective solutions for managing large datasets.
  • The ease of access and integration with analytical tools makes cloud computing indispensable for modern businesses.

3. Internet of Things (IoT) and Big Data

  • IoT devices generate vast data sets that provide real-time insights into operations and consumer behavior.
  • Big data analytics leverages this information to improve efficiency and decision-making processes.

4. Ethical Artificial Intelligence

  • Emphasis is being placed on ensuring AI algorithms are fair, unbiased, and privacy-compliant.
  • Ethical AI practices enhance user trust and data authenticity.

Staying updated on these trends not only ensures relevance but also helps professionals capitalize on emerging opportunities.

4 Specialisations in Business Analytics

Business analytics offers various specialisations tailored to specific data requirements and industry needs. Here are some popular areas:

1. Financial Analytics

  • Risk Assessment: Evaluate credit, market, and operational risks.
  • Performance Analysis: Forecast financial outcomes and evaluate investments.
  • Financial Modelling: Build models for decision-making under various scenarios.

2. Marketing Analytics

  • Consumer Segmentation: Identify and group customer demographics and behaviors.
  • Campaign Analysis: Measure and optimize the effectiveness of marketing strategies.
  • Market Research: Understand customer preferences, trends, and competitor strategies.

3. Healthcare Analytics

  • Operational Efficiency: Optimize resource allocation and reduce costs.
  • Predictive Analytics: Forecast patient outcomes and improve clinical interventions.
  • Population Health: Analyze public health data to address widespread health concerns.

4. Other Specialisations

  • Sports Analytics: Evaluate team performance and strategize based on game data.
  • Supply Chain Analytics: Improve logistics, inventory management, and delivery timelines.
  • Social Media Analytics: Monitor engagement, sentiment, and brand perception on social platforms.

Selecting a specialisation aligned with your interests and career goals can make you a valuable asset to potential employers.

Begin Your Journey in Business Analytics with IMS Proschool

IMS Proschool offers a holistic Business Analytics program designed for aspirants looking to excel in this domain. Here’s why Proschool stands out:

  • Hands-on experience with 15+ case studies and projects.
  • Focus on problem-solving capabilities and practical applications.
  • Tools covered include Excel, Python, Tableau, Power BI, and SQL.
  • Option to specialize in domain-specific analytics (e.g., marketing, finance, HR).
  • Placement support with access to 800+ jobs in 30+ companies.

Frequently Asked Questions

What topics are covered in business analytics?

Business analytics covers foundational topics like statistics, data visualization, and problem-solving. It also delves into specialized areas such as predictive analytics, data mining, and business intelligence.

Is coding required for business analytics?

While coding isn’t mandatory, familiarity with programming languages like Python and SQL can greatly enhance data analysis and visualization capabilities.

What are the career prospects for a business analyst?

Career prospects include roles like Financial Analyst, Data Scientist, and Operations Manager. Salaries vary based on experience, industry, and specialization.

Is business analytics suitable for non-coders?

Absolutely. Many tools like Power BI and Tableau cater to non-coders, making it accessible for those with no prior programming experience.

Conclusion

Business analytics is a thriving field with immense potential for growth and innovation. By mastering the foundational topics, staying updated on emerging trends, and honing key skills, you can pave the way for a successful career. Whether you’re just starting out or looking to upskill, the journey begins with choosing the right course—like the comprehensive program at IMS Proschool.

Dwij K

Hi, I'm a seasoned digital marketer with a deep passion for writing about Digital Marketing and Finance. Leveraging my experience working with CFA Charterholders, MBAs from IIMs, and Certified Financial Planners (CFPs), I bring a wealth of knowledge to through my blogs. Currently, I craft insightful blogs for Proschool, an institute renowned for its finance courses. My expertise lies in breaking down complex financial concepts into easily digestible pieces, making me a trusted source for aspiring finance professionals.
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