Applied Statistics for Data Science – Data-Driven Decision Making
Master the statistical concepts and techniques essential for data science. This course equips you with the ability to analyze, interpret, and present data effectively to drive evidence-based business decisions.
Cohort Info
- Program Duration: 2 Months
- Next Cohort Launch: 1st October 2025
- Application Deadline: 15th September 2025
Key Highlights
- Mode of Learning: 100% Online ILT
- Total Hours: 32 Hours (24 ILT + Self-paced Assignments)
- Language of Instruction: English
- Mapped to NASSCOM SSC/Q8104 NOS for Data Analyst roles.
- Covers descriptive and inferential statistics with hands-on applications.
- Real-world examples for data interpretation and decision-making.
- Suitable for aspiring data analysts and business professionals.
- Industry-aligned curriculum ensuring job-ready skills.
Course Highlights
- Program Duration: 10 Months
- Number of Projects: 6 Applied Projects + 1 Capstone
- Live Sessions: 160 Hours (Instructor-Led)
- Self-Paced Learning: 80 Hours of structured assignments
- Credit Load: 18 Academic Credits
- Mode of Learning: Online ILT + Virtual Labs (Hybrid Optional)
- Language of Instruction: English
About Program
Course Curriculum
Modules designed to meet current industry standards.
01
Applied Statistics for Data Science
02
Data types, descriptive statistics, measures of central tendency and variability.
03
Probability concepts, distributions, and sampling.
04
Hypothesis testing and confidence intervals.
05
Correlation and regression analysis.
06
Case studies in data-driven decision-making.
What You’ll Learn
Essential Skills & Tools for Leading Projects in the Digital Age







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Get to know the course in depth by downloading the course brochure
What Our Learners Say: Read Real Outcomes, Real Voices
Real People. Real Results
Real stories of career growth, skill mastery, and success after MSM Grad programs.
Aparna S.
Product Owner (NBFC, Digital Payments)
I joined in order to transform buzzwords into delivery.” The Banking Sandbox was the difference; I mapped the stakeholder handoffs and prototyped a tokenized refund flow with simple smart-contract logic. The executive hybrid format worked for my release schedule. We were honest about controls and audit trails—not just demos—during the 144 hours of live instruction. Although we’re still improving, our incident and chargeback playbooks are now more transparent.
Raghav M.
Risk & Compliance Analyst (BFSI)
Tech and regulation were linked in the curriculum. I was able to create rule sets that we could actually uphold with the aid of risk-modeling labs and case work on KYC/AML scenarios. I created a workflow for gathering evidence and a small dashboard for alerts, which our reviewers used. I’m not a developer because of the blockchain projects, but I can assess vendors more critically and schedule changes to comply with regulations.
Zoya K.
CS final-year student
I wasn’t content with theory. I completed three small projects in the Blockchain Lab: a dashboard for transaction metrics, a simple smart contract with unit tests, and a payments mock on a testnet. In addition to code, the mentors pushed for documentation and threat assumptions. I’ve been shortlisted for two product/engineering internships because I can explain design trade-offs, and my GitHub now displays end-to-end work.
Naveen T.
FinTech Analyst, MBA in Finance
Since I’m not a programmer, I relied on the business-first framing and executive hybrid schedule. I was able to create a strong business case for a lending workflow by using the six implemented FinTech use cases, which covered costs, risks, and the areas where blockchain adds value (and where it doesn’t). While I was in charge of compliance and metrics, my classmate, who worked on the contract code, co-authored our capstone. Interviews were easier because I could display results rather than just slides.
Real People. Real Results
Real stories of career growth, skill mastery, and success after MSM Grad programs.
Aparna S.
Product Owner (NBFC, Digital Payments)
I joined in order to transform buzzwords into delivery.” The Banking Sandbox was the difference; I mapped the stakeholder handoffs and prototyped a tokenized refund flow with simple smart-contract logic. The executive hybrid format worked for my release schedule. We were honest about controls and audit trails—not just demos—during the 144 hours of live instruction. Although we’re still improving, our incident and chargeback playbooks are now more transparent.
Raghav M.
Risk & Compliance Analyst (BFSI)
Tech and regulation were linked in the curriculum. I was able to create rule sets that we could actually uphold with the aid of risk-modeling labs and case work on KYC/AML scenarios. I created a workflow for gathering evidence and a small dashboard for alerts, which our reviewers used. I’m not a developer because of the blockchain projects, but I can assess vendors more critically and schedule changes to comply with regulations.
Zoya K.
CS final-year student
I wasn’t content with theory. I completed three small projects in the Blockchain Lab: a dashboard for transaction metrics, a simple smart contract with unit tests, and a payments mock on a testnet. In addition to code, the mentors pushed for documentation and threat assumptions. I’ve been shortlisted for two product/engineering internships because I can explain design trade-offs, and my GitHub now displays end-to-end work.
Naveen T.
FinTech Analyst, MBA in Finance
Since I’m not a programmer, I relied on the business-first framing and executive hybrid schedule. I was able to create a strong business case for a lending workflow by using the six implemented FinTech use cases, which covered costs, risks, and the areas where blockchain adds value (and where it doesn’t). While I was in charge of compliance and metrics, my classmate, who worked on the contract code, co-authored our capstone. Interviews were easier because I could display results rather than just slides.
Designed for Ambitious Professionals
- Data Analyst
- Business Analyst
- Research Analyst
- Quantitative Analyst
Statistics is a top skill for over 70% of data science job postings (LinkedIn 2024 Report).

₹3.5 – ₹6 LPA for data analysis roles in India.
Designed for Ambitious Professionals
- Data Analyst
- Business Analyst
- Research Analyst
- Quantitative Analyst
Statistics is a top skill for over 70% of data science job postings (LinkedIn 2024 Report).
