It is the end of summer. Han Hui, a university student, meets a mysterious young girl named He Jia in the mountains. After this chance meeting, the two embark on a delightful journey.
Shan Gui is a short, linear, kinetic visual-novel set in Nanjing's gorgeous Purple Mountain. It follows the adventure of two young girls as they tour the park, attempting to recount faded childhood memories. Han Hui is moody and depressed until she eventually becomes enraptured by He Jia's overwhelming warmth an…
It is the end of summer. Han Hui, a university student, meets a mysterious young girl named He Jia in the mountains. After this chance meeting, the two embark on a delightful journey.
Shan Gui is a short, linear, kinetic visual-novel set in Nanjing's gorgeous Purple Mountain. It follows the adventure of two young girls as they tour the park, attempting to recount faded childhood memories. Han Hui is moody and depressed until she eventually becomes enraptured by He Jia's overwhelming warmth and happiness. In He Jia, Han Hui finds respite from her sadness and a brand new friend... a friend who may be more than she suggests.
Visit here to learn more about Shan Gui 2:
https://store.steampowered.com/app/952420/
ZiX Solutions has developed this visual novel in collaboration with Magenta Factory and is licensed for distribution on Google Play. For any doubts or questions, please contact Magenta Factory via email: mf@zixs.team
Each forecast combines App Store rating, ratings count, monetisation model, pricing tier, IAP signals and ad-supported flag.
The base estimate is then multiplied by a per-category scaling factor learned from apps with founder-verified MRR.
Every number on this page comes from public APIs and bumetric's own snapshot history.
Full methodology covers input variables, accuracy bands per category and how we treat apps without comparable anchors.
See also the live data on Shan Gui's tracker page for current rating, reviews and snapshot timeline.
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