AIML (AIML) Fair Value & Analysis
IN · Market cap ₹964M
Fair value as of: Jul 5, 2026
From 10 valuation models · updated today
Share price +49.7% over the past month.
Price vs Fair Value (12 months)
12‑month range ₹1.33 – ₹3.45 · fair‑value band ₹2.37 – ₹4.60 · the ₹2.44 price screens below the ₹3.41 fair value. As of Jul 5, 2026.
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AIML (AIML) currently trades at ₹2.44, while our model-based Fair Value estimate is ₹3.41 — implying the stock looks roughly 39.8% undervalued today. We read business quality at 47/100 (below-average quality). 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: medium) — always confirm before acting.
Trailing-twelve-month revenue stands at ₹772M. Revenue declined 11.1% year over year. Net debt stands at ₹2.3B. Fundamentals as of Jul 5, 2026
Key figures & financial health
More key figures
Figures from reported company fundamentals (EODHD) · as of Jul 5, 2026. TTM = trailing twelve months.
Revenue & earnings trend
FY2022 – FY2026 · reported fiscal years
AIML reported revenue of ₹755M in FY2026 versus ₹649M in FY2022, a compound +3.9%/yr. Reported net income was −₹954M in FY2026.
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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.