Cinevista Limited (CINEVISTA) Fair Value & Analysis
Communication Services · IN · Market cap ₹943M
Fair value as of: Jun 29, 2026
Analysis
Cinevista Limited (CINEVISTA) currently trades at ₹16.22, while our model-based Fair Value estimate is ₹19.94 — implying the stock looks roughly 22.9% undervalued today. We read business quality at 97/100 (high quality), in the Communication Services sector. Bull case: trading below our estimate, it may offer upside if the fundamentals hold. Bear case: a low price can be a value trap when quality is weak or the data is thin (evidence: high) — always confirm before acting.
About the company
Cinevista Limited engages in the production and distribution of television programmes, ad commercials, and feature films in India and internationally. It offers commercial television content in the areas of action, adventure, kids programming, drama, soap, and reality content. The company also produces and distributes movies; and produces advertising commercials for various clients and advertisers. In addition, the company provides postproduction services, as well as owns equipment rentals, sound studios, and shooting floors. The company was formerly known as Cinevistaas Limited and changed its name to Cinevista Limited in October 2012. Cinevista Limited was founded in 1982 and is based in Mumbai, India.
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How we calculate Fair Value
Each company is valued through a stack of independent intrinsic-value models (DCF variants, residual-income, multiples and more), blended into one family-balanced consensus and weighted by how much trustworthy data backs it. A separate quality layer scores the fundamentals. Every input is real reported data — nothing guessed.
Educational research only · not financial advice · no buy/sell recommendation. Model-based estimates are not certainties; their reliability depends on data quality and assumptions.