Власти штата Вашингтон расследуют криптомошенничество клона биржи Nasdaq

cryptonews.ruPubblicato 2022-06-29Pubblicato ultima volta 2024-08-30

Департамент финансовых учреждений штата Вашингтон (DFI) объявил, что его отдел по ценным бумагам расследует дело о мошенничестве криптовалютной платформы Nasdaq, которая выглядит как аффилированная с крупной американской фондовой биржей Nasdaq.

В департамент поступила жалоба от некоего инвестора, который узнал криптоплощадки Nasdaq из сообщения неизвестного лица на Facebook. Незадачливый инвестор связался с этим лицом через Whatsapp и по итогам переговоров перевел $200 000. После перевода размер фиктивного «инвестиционного криптосчета» на стайте фейковой Nasdaq вырос примерно до $659 000. Инвестор попытался вывести часть средств, но столкнулся с требованием заплатить комиссию за вывод средств и налоги. Инвестор не смог заплатить.

В DFI объяснили, что потерпевший стал жертвой «мошенничества с предоплатой», — когда преступники используют группы в социальных сетях для привлечения и консультирования потенциальных жертв. Фондовая биржа Nasdaq не связана с фейковой площадкой и не предлагает торговлю криптовалютами на своей платформе, отметили в DFI.

Накануне участник команды Dogecoin под псевдонимом Inevitable360 рассказал о мошеннической рекламе бесплатной раздачи криптовалюты DOGE. Он заверил, что на самом деле никаких раздач Dogecoin не планируется, а аккаунт Doge2014token принадлежит злоумышленникам.

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A Threefold Performance Leap! NEAR Achieves 200ms Physical Block Time Limit with SPICE

NEAR's core development team, Near One, has announced its next major protocol evolution: SPICE (Separation of Consensus and Execution). Currently in development, SPICE represents the most significant upgrade before the full implementation of Nightshade 3.0. Its core innovation is decoupling the consensus layer, responsible for ordering transactions, from the execution layer, which processes them. This allows the consensus layer to run at full speed without waiting for transaction execution to complete. Once deployed, SPICE is projected to triple NEAR's block production speed, achieving a 200ms block time, which is considered the physical limit due to the speed of light and network latency. This leap will dramatically reduce transaction latency and finality, with transactions confirming in roughly 0.4 seconds—faster than a typical card payment. The upgrade also enables more complex, long-running transactions and significantly improves user experience for applications like NEAR Intents and near.com. Beyond raw speed, SPICE enhances network scalability and security. It enables deeper parallelism, efficiently distributing workload across shards and improving resource utilization. The simpler block structure and lighter contracts also facilitate formal verification and security auditing. Furthermore, SPICE lays the critical groundwork for future Nightshade 3.0 features, most notably atomic cross-shard transactions, which would simplify complex contract logic and eliminate development hurdles caused by asynchronous execution. The Near One team is actively developing SPICE, targeting deployment in the coming months.

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