Lianhe Sowell International Group (LHSW) Fair Value & Analysis
Technology · US · Market cap $6.2M
Fair value as of: Jun 24, 2026
Analysis
Lianhe Sowell International Group (LHSW) currently trades at $1.95, while our model-based Fair Value estimate is $0.9900 — implying the stock looks roughly 49.2% overvalued today. We read business quality at 91/100 (high quality), in the Technology sector. Bear case: priced above our estimate, the market already discounts strong expectations. Bull case: above-average quality can justify a premium — the entry price still matters most (evidence: high).
About the company
Lianhe Sowell International Group Ltd, through its subsidiaries, engages in the provision of machine vision products and solutions in China. It offers industrial machine vision products; artificial intelligence products, such as face recognition and AI behavior analysis; intelligent weak current products, including building intelligence and intelligent transportation; and electronic customs clearance systems to manufacturing, transportation, security, and building management industries. The company also provides nine-axis linkage spray painting robots for vehicle repair and maintenance industries. In addition, it offers enterprise management services; develops software; and trades in electronic products. Lianhe Sowell International Group Ltd was founded in 2007 and is based in Shenzhen, China.
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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.