Analyze and Build a Private Equity LBO Case Study

Coursera Courses ↗ · Coursera

Open Course on Coursera

Free to audit · Opens on Coursera

Analyze and Build a Private Equity LBO Case Study

Coursera · Intermediate ·🔍 RAG & Vector Search ·1mo ago
By the end of this course, learners will be able to analyze a private equity investment opportunity, build integrated financial statements, and evaluate leveraged buyout (LBO) returns using a real-world case study. Learners will develop the ability to assess leverage, model cash flows, structure debt and equity, and determine investor outcomes through exit analysis. This course guides learners step by step through the Big Series Media private equity case, translating theory into practical, job-relevant skills. Rather than focusing on isolated concepts, the course emphasizes end-to-end financial modeling, showing how income statements, cash flow statements, and balance sheets interconnect within a private equity framework. Learners gain hands-on experience with leverage mechanics, capital structure decisions, and LBO modeling techniques commonly used by private equity professionals. What makes this course unique is its case-driven, practitioner-focused approach. Learners do not simply observe models—they understand how assumptions drive returns and risk. This course is ideal for aspiring investment bankers, private equity analysts, corporate finance professionals, and anyone seeking to strengthen advanced financial modeling and investment analysis skills in a realistic private equity context.
Watch on Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related AI Lessons

When Should You Use Text2Cypher in a GraphRAG Pipeline
Learn when to use Text2Cypher in a GraphRAG pipeline to retrieve precise graph results from natural language questions
Dev.to AI
How to build a production RAG pipeline in Python (without a vector database)
Learn to build a production-ready RAG pipeline in Python without relying on a vector database, and understand the key considerations for a scalable and efficient implementation
Dev.to · Ayi NEDJIMI
Architecting Sub-150ms Hybrid RAG for Voice Agents: Combining pgvector, BM25, and Async FastAPI…
Learn how to architect a sub-150ms hybrid RAG for voice agents using pgvector, BM25, and Async FastAPI to serve large industrial catalogs
Medium · Python
Security Controls in Enterprise RAG: Keys, Audit Logs, and the Hierarchy That Prevents Role Elevation
Implement security controls in Enterprise RAG to prevent role elevation and ensure data integrity
Dev.to · Manjunath
Up next
Watch this before applying for jobs as a developer.
Tech With Tim
Watch →