Comparable Company Valuation – Core Concepts & Methods

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Comparable Company Valuation – Core Concepts & Methods

Coursera · Advanced ·📊 Data Analytics & Business Intelligence ·1mo ago
This course equips learners with the knowledge and analytical skills to interpret, calculate, evaluate, and apply key concepts in comparable company valuation (COMPS). Beginning with the foundations of enterprise value and extending through debt and equity adjustments, share price insights, and balance sheet interpretation, participants will analyze profitability metrics, compute growth measures, assess sector-specific performance, and implement advanced valuation techniques such as LTM calculations, calendarization, and currency management. Across four structured modules, learners will apply industry-relevant methodologies to real-world financial data, compare operational and profitability measures across companies, and integrate adjustments for accurate, period-aligned, and currency-adjusted analysis. By the end of the course, participants will be able to evaluate company performance within a comparable framework and construct consistent, reliable valuation models for informed decision-making.
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