Securing LLMs: Navigating Data Privacy, Security, and Compliance



Concern Description
Data Privacy
LLMs (Landlord and Tenant Management Systems) store a significant amount of personal data. This includes tenant information, payment details, and property details. If this data is mishandled, it could lead to serious breaches of privacy.
Data Security
LLMs are often targets for cyber attacks. Hackers can exploit vulnerabilities in the system to gain unauthorized access to sensitive data. LLMs need to have robust security measures in place to protect against such attacks.
Compliance with Laws and Regulations
LLMs must comply with all relevant data protection laws and regulations. This includes GDPR in Europe, CCPA in California, and others. Non-compliance can result in hefty fines and damage to the company's reputation.
Third-party Risks
LLMs often rely on third-party service providers for various functions. These third parties may not have the same level of data security practices, potentially putting the data at risk.



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