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活化資產+聚焦AI 鴻海處分美Lordstown廠區

活化資產+聚焦AI 鴻海處分美Lordstown廠區

Yahoo15 hours ago
鴻海4日公告處分旗下子公司位於美國俄亥俄州南部的Lordstown廠區資產。該廠被視為鴻海在美部署電動車的重要生產據點,7月底時,鴻海甫公告增資在美子公司之一Foxconn EV System,市場亦解讀為其擴大在美電動車之布局,如今大舉出售逾六百萬平方英尺的廠區與土地,引發市場關注。
鴻海公告,其子公司Foxconn EV Property Development LLC、Foxconn EV Asset Management LLC及Foxconn EV System LLC,將分別處分手上在Lordstown廠區之土地、廠房與機器設備等資產,其中包括近599.6英畝土地、逾604萬平方英尺廠房,將售予CRESCENT DUNE LLC。總交易額約達3.75億美元,處分利益估達1.7億美元。
鴻海指出,此為活化資產並優化該廠區產品組合與營運績效。而在處分該廠後,鴻海先前規畫於今年底前,在北美市場推出的MODEL C電動車計畫進程,據悉進度未受影響。
知情人士指出,鴻海此回處分Lordstown廠區,不僅為了活化該廠區資產,更是延續日前宣布與東元集團策略聯盟、進一步聚焦AI資料中心,同時因應美國強勁AI需求,加速其在AI伺服器與資料中心建置的部署,期望將原有廠房優勢快速轉化為AI營收。
不過,整個Lordstown廠的廠房面積比鴻海正在德州休士頓興建的AI伺服器產線新廠,大了至少6倍,而2021年10月時,鴻海與Lordstown Motors達成資產購買協議、以2.3億美元購得該廠時,主要是為Lordstown生產其Endurance皮卡車款,並合作進行未來其電動車發展計畫。
惟隨著2023年間、Lordstown宣告破產,雙方甚至在美對薄公堂後,鴻海Lordstown廠區的運作幾乎停擺。此回鴻海決議停損並出售後,市場解讀,將有助其減輕折舊、攤提的負擔,有助提升資產周轉效率。
此外,其中仍保留逾15萬平方英尺的廠區空間,後續隨著川普政府欲大力推展的美國AI行動計畫、帶動美國在地的AI基建需求升溫,亦可望為鴻海在美國保有轉作高附加價值業務的彈性,未來可投入AI伺服器、AI資料中心應用場域等利多。
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