The post North Korean Hackers Target Wallets appeared on BitcoinEthereumNews.com. Security experts are warning that a rising Zoom scam is giving North Korean hackersThe post North Korean Hackers Target Wallets appeared on BitcoinEthereumNews.com. Security experts are warning that a rising Zoom scam is giving North Korean hackers

North Korean Hackers Target Wallets

Security experts are warning that a rising Zoom scam is giving North Korean hackers a new way to infiltrate users’ devices and empty crypto wallets.

North Korean hackers exploit fake Zoom meetings

Crypto users are facing a new wave of sophisticated attacks as North Korean hackers pose as legitimate contacts and invite victims to fake meetings on Zoom and similar platforms. According to Security Alliance, these operations use social engineering to gain trust before delivering malware that quietly compromises accounts.

The scam begins when a target receives a Zoom link that looks authentic, often shared in professional or community channels. However, once the victim clicks the link, malicious software is installed on the device.

This malware can log keystrokes, capture screenshots, and exfiltrate confidential data, including passwords and private keys for crypto wallets.

In many incidents, victims only discover the intrusion after funds have vanished from their accounts. Moreover, attackers often move assets quickly through multiple wallets, making recovery difficult.

Analysts describe these campaigns as both clever and dangerous because they blend technical exploits with psychological manipulation.

How the scam drains crypto wallets

Once the malware is active, it systematically hunts for crypto-related information stored on the infected device. That said, it does not only target browser-stored passwords. The software can search for wallet files, clipboard data, and authentication tokens, allowing attackers to break into exchanges and self-custodied wallets.

With stolen credentials and private keys, hackers can sign transactions, reset account access, and bypass many traditional safeguards.

Furthermore, they can use the same compromised machine to intercept future logins, extending the attack window. This makes a single successful fake Zoom meeting scam potentially devastating for long-term holdings.

Security researchers emphasize that the quiet nature of the compromise is what makes the threat so severe. There may be no obvious signs of infection, no pop-ups, and no immediate performance issues. As a result, the crypto Zoom scam can remain undetected until balances are checked or withdrawal alerts arrive.

Immediate steps to protect your crypto funds

For anyone who suspects they clicked a malicious Zoom link, Security Alliance has issued a clear response plan. First, users should disconnect device from internet access immediately to stop further data exfiltration. Cutting connectivity limits the malware’s ability to communicate with command-and-control servers.

Next, experts advise moving assets off any potentially compromised wallets. Users should transfer crypto to wallet addresses created on a clean, uncompromised device. Moreover, they should set up new seed phrases and avoid reusing old backups that may already be exposed to attackers.

All passwords linked to exchanges, email accounts, cloud backups, and password managers must be changed from a secure device. Additionally, where possible, users should enable two factor authentication to add a second barrier against unauthorized logins.

Finally, before returning the original device to regular use, specialists recommend performing a complete memory wipe or factory reset. This helps ensure that hidden malware components are removed rather than merely disabled. Although this step is disruptive, it significantly reduces the chance of reinfection or lingering backdoors.

Why this Zoom scam is growing to steal crypto

The surge in cryptocurrency adoption has expanded the potential victim pool, making crypto investors a high-value target. Zoom and other video platforms have become central to remote work and community engagement, which attackers exploit by mimicking trusted invitations. As a result, security analysts expect similar attack patterns to accelerate in 2025 and beyond.

North Korea-linked groups have a long history of blending technical malware development with deceptive outreach. They often pose as recruiters, investors, or project partners to persuade users to join calls. However, once the trust barrier is broken, the focus shifts quickly from conversation to compromise.

These campaigns are part of a broader strategy to generate foreign currency through cybercrime. Moreover, stolen cryptocurrencies are frequently laundered through mixers, decentralized exchanges, and cross-chain bridges, complicating tracing efforts by regulators and law enforcement.

Best practices to stay safe from crypto attacks

To reduce exposure to such threats, users should adopt strict hygiene around links and meeting invitations. Never join a call from an unknown sender, and verify meeting details through a separate communication channel when in doubt. Keeping operating systems, browsers, and wallet software up to date also closes known vulnerabilities that malware might exploit.

Using strong, unique passwords for each account remains essential. Password managers can help generate and store complex credentials securely. Furthermore, rotating passwords periodically lowers the impact if one set is compromised. Users should also consider hardware wallets for significant holdings, since they keep private keys offline and away from infected devices.

Security specialists stress that layered defenses work best. In addition to 2FA, enabling login alerts, withdrawal confirmations, and address whitelists on exchanges can provide early warning of suspicious activity. That said, no technical measure fully replaces cautious behavior when dealing with links, files, and unexpected meeting requests.

Strengthening defenses against future threats

This wave of attacks underscores how quickly tactics evolve in the digital asset ecosystem. As new tools and platforms emerge, cybercriminals will continue to test them for weaknesses.

However, informed users can significantly blunt these efforts by following structured response steps and maintaining strong operational security.

Ultimately, the latest Zoom-based campaigns are a reminder that human trust is often the weakest link.

By combining user education with robust security tools, the crypto community can better protect funds and sensitive data from advanced hacking groups. Vigilance, prompt action after any suspicious incident, and adherence to best practices remain the most effective way to safeguard digital wealth.

Source: https://en.cryptonomist.ch/2025/12/15/crypto-zoom-scam-north-korea/

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Turn lengthy earnings call transcripts into one-page insights using the Financial Modeling Prep APIPhoto by Bich Tran Earnings calls are packed with insights. They tell you how a company performed, what management expects in the future, and what analysts are worried about. The challenge is that these transcripts often stretch across dozens of pages, making it tough to separate the key takeaways from the noise. With the right tools, you don’t need to spend hours reading every line. By combining the Financial Modeling Prep (FMP) API with Groq’s lightning-fast LLMs, you can transform any earnings call into a concise summary in seconds. The FMP API provides reliable access to complete transcripts, while Groq handles the heavy lifting of distilling them into clear, actionable highlights. In this article, we’ll build a Python workflow that brings these two together. You’ll see how to fetch transcripts for any stock, prepare the text, and instantly generate a one-page summary. 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Summarize the following earnings call section for {symbol} ({quarter} {year}). Be factual and concise. 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