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Last updated on Mar 16, 2025
  1. All
  2. Engineering
  3. Artificial Intelligence (AI)

You're training and deploying AI models with sensitive data. How do you ensure its security?

How do you navigate AI data security? Share your strategies and experiences.

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Artificial Intelligence

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Last updated on Mar 16, 2025
  1. All
  2. Engineering
  3. Artificial Intelligence (AI)

You're training and deploying AI models with sensitive data. How do you ensure its security?

How do you navigate AI data security? Share your strategies and experiences.

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Help others by sharing more (125 characters min.)
75 answers
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    Giovanni Sisinna

    🔹Portfolio-Program-Project Management, Technological Innovation, Management Consulting, Generative AI, Artificial Intelligence🔹AI Advisor | Director Program Management | Partner @YOURgroup

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    💡In my opinion, AI data security starts long before model deployment, it begins with intent and design. 🔹Privacy-first mindset Design models with minimum data exposure. If the model doesn’t need it, don’t use it. 🔹Strict data controls Limit access to training data with role-based permissions and strong audit logs. 🔹Ongoing validation Regular testing uncovers weak spots. Security isn’t one-and-done, it’s a habit. 📌Security isn’t a feature you add later. Build it into your AI workflows from the start, your future self (and users) will thank you.

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    Nebojsha Antic 🌟

    Senior Data Analyst & TL @Valtech | Instructor @SMX Academy 🌐Certified Google Professional Cloud Architect & Data Engineer | Microsoft AI Engineer, Fabric Data & Analytics Engineer, Azure Administrator, Data Scientist

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    🔒Use end-to-end encryption for data storage and transmission. 🛑Implement role-based access control (RBAC) to limit data exposure. 📊Apply differential privacy to prevent data leakage while training models. 🔍Regularly audit AI models and datasets for security vulnerabilities. 🛠Use federated learning to train models without centralizing sensitive data. 🚀Deploy AI models in isolated environments to prevent unauthorized access. 🔄Continuously update security protocols to address emerging threats.

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    Shankar Ramaswami

    Global Delivery Head | AI & Cloud Expert | Transforming Business with Innovation and Delivery Excellence | Certified AI and ML Professional

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    Securing sensitive data in AI training and deployment requires robust encryption, differential privacy, and strict access controls. Use secure environments, anonymized datasets, and compliance frameworks to prevent exposure. Continuous monitoring and audits reinforce protection, ensuring responsible use. Security is the foundation of trust. #AI #DataSecurity #SR360

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    Karyna Naminas

    CEO of Label Your Data. Helping AI teams deploy their ML models faster.

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    When training AI with sensitive data, security is essential. At Label Your Data, we: 📌 Encrypt data end-to-end during training and deployment 📌 Conduct frequent security audits to spot and fix vulnerabilities 📌 Ensure labeling happens only in secure, restricted offices 📌 Limit data access to essential personnel only By implementing strong data security measures, we ensure clients can confidently train and deploy AI models using sensitive data.

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    Vivek Gupta

    Top AI Voice | Patent Filed: AI Grant Assistant | Founder & CEO | Digital transformation expert | Author and keynote speaker

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    Protecting sensitive information in AI involves a layered approach. We use end-to-end encryption, role-based access controls, and periodic security audits to block unauthorized access. Techniques such as differential privacy and secure model training also reduce risk without compromising performance. Ongoing monitoring detects threats and mitigates them in real time. Above all, we emphasize transparency, offering clients full visibility into how their data is being protected. How do you maintain data security in AI deployments?

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