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European Organizations Increasingly Ban Personal Messaging Apps at Work

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A growing number of European organizations have implemented bans on personal messaging apps in professional settings. The trend reflects mounting concerns over data security, privacy compliance, and regulatory requirements such as GDPR. Both public institutions and private companies are restricting tools like WhatsApp and Telegram in favor of approved enterprise communication platforms. The compiled list, published by Birdy Chat, highlights how widespread this policy shift has become across the continent.

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