Может ли рост налогов в России толкнуть бизнес в крипту

cryptonews.ruPublished on 2025-10-14Last updated on 2025-10-14

С 1 января 2026 года в России изменятся правила налогообложения для ИП и OOO. Налоговая нагрузка вырастет и для физических лиц. Например, рост НДС с 20 до 22% почувствует каждый россиянин, который хотя бы иногда заходит в магазины

На фоне ухудшения условий многие предприниматели могут попытаться найти решение проблем в серых схемах, которые включают криптовалюту. Редакция BeInCrypto выяснила, реалистичен ли такой сценарий и смогут ли власти контролировать интерес участников рынка к цифровым активам в условиях роста налогового бремени.

Что изменится в налогообложении

Среди всех утвержденных нововведений можно выделить ключевые:

  1. НДС вырастет с 20% до 22%. Это коснется всех компаний, включая ИП и ООО. Рост ставки станет главным фактором увеличения налоговой нагрузки.
  2. УСН и лимиты по НДС. Порог доходов, при превышении которого нужно платить НДС, снизят с 60 до 10 миллионов рублей. Рассматривается возможность отмены УСН в нынешнем виде.
  3. НДФЛ. Введут новую ставку. Сроки уплаты изменятся: налог нужно будет перечислять до выходного дня, а не после. Уведомления можно будет подавать авансом на несколько месяцев или год вперед.
  4. ЕНС (единый налоговый счет). Запретят переплачивать или пополнять чужой ЕНС без налоговой цели. Исправление ошибок прошлых периодов текущим периодом больше не допускается.
  5. Имущественные налоги с 2027 года. Уведомления отменят. Суммы транспортного, земельного и имущественного налогов налоговая будет рассчитывать сама по данным ГИБДД, Росреестра и других ведомств.
  6. Прочие изменения. Для букмекерских контор вводится налог на прибыль 25%.

С 2026 года для ИП и ООО налоговая нагрузка заметно вырастет из-за повышения НДС, новых правил по НДФЛ, ограничений на ЕНС и снижения лимитов по УСН. Эксперты советуют участникам рынка заранее начать подготовку к изменениям.

Толкнет ли налоговое бремя бизнес в крипту

На фоне повышения налоговой нагрузки на ИП и ООО многие начнут искать серые схемы, включая переход на крипту. Редакция BeInCrypto попросила основателя сервиса BitOK Дмитрия Мачихина прокомментировать, сможет ли правительство как-то контролировать бизнесменов, которые предпочтут крипту морально устаревшему фиату.

Такая политика, уверен наш собеседник увеличит оборот криптовалют, и поскольку он не урегулирован в РФ, вероятнее всего цифровой оборот будет носить теневой характер. Однако контролировать криптопоток не так просто. Средства с ИП счетов будут выводиться в наличной форме и только потом превращаться в цифровые валюты, поэтому выявить этот момент перехода, отследить его и как-то промониторить проблематично.

Эксперт отметил, что все было бы по другому, если бы переход осуществлялся посредством on-ramp — off-ramp механизма. Речь идет про прямой перевод валюты в ее цифровой аналог. В этом случае мониторинг был бы возможен.

Вывод традиционных финансов в крипту посредством обналичивания, уверен Дмитрий Мачихин, делает отслеживание средств практически невозможным, так как по сути мы имеем дело с обычным обналичиванием и методы его отслеживания особенно не усовершенствовались.

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