As artificial intelligence (AI) continues to transform industries and drive innovation across the globe, the need for secure and trustworthy AI systems becomes increasingly urgent. Organizations are deploying machine learning (ML) models at an unprecedented rate, but many are doing so without properly addressing the numerous vulnerabilities these complex systems face. That’s where Protect AI comes in—an emerging leader in the burgeoning field of AI and ML security. Protect AI’s platform helps organizations secure their AI and ML assets throughout the entire machine learning lifecycle, providing protection against threats, vulnerabilities, and risks that many teams aren’t even aware exist.
What is Protect AI?
Protect AI is a cybersecurity company that specializes in securing machine learning systems. Founded by industry veterans, Protect AI addresses an often overlooked yet critical aspect of digital transformation—protecting AI-driven applications from potential exploits and data leaks. The company recognizes that AI systems, unlike traditional software, require a holistic and tailored security solution due to their unique architecture, data workflows, and dependence on continuously evolving models.
Their solution focuses on providing visibility, transparency, and security throughout the entire Machine Learning Operations (MLOps) process—from data collection and model training to deployment and monitoring. Protect AI is among the first companies to offer a dedicated platform to secure the AI supply chain and ensure compliance with emerging regulations and best practices.
Why AI Needs Specialized Security
Traditional security solutions are ill-equipped to deal with the complexities of modern AI systems. The rapid growth of MLOps pipelines has created numerous attack surfaces, most of which lack basic security controls. Among these are:
- Data poisoning: When malicious actors inject false data into training datasets to skew predictions.
- Model stealing: When adversaries duplicate a model’s behavior through repeated queries.
- Inference attacks: An attacker infers sensitive data used in training just by having access to model outputs.
- Software dependencies: Third-party libraries often contain vulnerabilities that can be exploited in ML toolchains.
Because ML systems process sensitive data and often inform critical decisions, the implications of an attack can be severe. Protect AI aims to safeguard these systems through tools that allow visibility, control, and risk management across the ML lifecycle.

Key Capabilities of Protect AI
Protect AI delivers security through a suite of products designed to integrate within existing MLOps environments. Their core features include:
1. Model Risk Management
Protect AI continuously scans models to detect vulnerabilities such as adversarial attack susceptibility, model drift, and performance degradation. It helps organizations assess the overall security posture of their models and ensure alignment with regulatory standards.
2. AI Supply Chain Protection
ML-based applications rely heavily on open-source libraries, data sources, and model artifacts. Protect AI maps and monitors every component to detect unauthorized changes, dependency risks, and library misconfigurations that can lead to compromise.
3. Auditability and Compliance
Protect AI’s platform includes tools that log and trace every action during model development and deployment. These logs serve as an immutable record, supporting compliance with AI ethics guidelines, organizational policies, and government regulations such as the EU AI Act and NIST AI Risk Management Framework.
4. Runtime Monitoring
The platform offers real-time monitoring of model behavior, looking for signs of tampering, unexpected output, or performance anomalies. This proactive detection helps mitigate damage before it spreads.
5. Vulnerability Scanner for ML (AI RED TEAM)
Protect AI also provides a tool known as AI RED TEAM, which simulates attacker behavior against ML systems. It helps security and data science teams identify weaknesses through safe yet realistic red teaming exercises.
Real-World Applications
Companies deploying AI in industries including finance, healthcare, retail, and manufacturing stand to benefit from Protect AI’s technology. For example:
- Healthcare: Ensuring that patient data used in ML remains private and compliant with HIPAA while securing diagnostic models from tampering.
- Finance: Preventing model inversion attacks that may expose sensitive financial data.
- Retail: Protecting recommendation engines from being manipulated through adversarial data inputs.
These use cases show how mission-critical systems can be compromised by subtle changes—many of which are only detectable with specialized security tools like those offered by Protect AI.

Partnerships and Open Source Contributions
Protect AI emphasizes transparency and community collaboration. The company actively contributes to open source by supporting tools such as MLSecOps—a framework that offers best practices and implementations for ML security. It also collaborates with other cybersecurity vendors, cloud service providers, and compliance authorities to create a more robust security ecosystem.
In addition, they run community education programs and offer security certifications for ML engineers and DevOps professionals, helping to spread knowledge about ML security practices globally.
Benefits of Using Protect AI
Organizations engaging with Protect AI can expect a wide range of benefits:
- Reduced Risk: Proactive identification of vulnerabilities reduces the chances of a high-impact event.
- Compliance: Helps meet AI-specific regulations that are becoming more common worldwide.
- Faster Incident Response: Real-time alerts and historical audits aid in quickly responding to emerging threats.
- Visibility: Full transparency into data pipelines, model usage, and software dependencies.
- Scalability: Can be deployed across various environments and scales with organizational needs.
Conclusion
As AI becomes inseparable from core business operations, the importance of ML and AI security cannot be overstated. Protect AI stands at the forefront of this growing need, offering a pioneering platform that brings visibility, control, and trust to AI and ML systems. Whether an organization is developing complex algorithms from scratch or leveraging pre-trained models, securing the full ML lifecycle is essential. With tools spanning model auditing, runtime monitoring, and red teaming, Protect AI is paving the way toward a more secure AI future.
Frequently Asked Questions (FAQs)
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What industries benefit most from Protect AI?
Industries such as healthcare, finance, retail, and manufacturing benefit significantly due to their use of sensitive data and reliance on predictive models. -
What is AI Red Teaming?
AI Red Teaming is an exercise that simulates attacks on ML systems to identify security weaknesses and prepare defenses accordingly. -
Does Protect AI integrate with existing MLOps platforms?
Yes, Protect AI is designed to integrate smoothly with common platforms like MLflow, Kubeflow, AWS SageMaker, and others. -
Is Protect AI focused only on enterprise customers?
While large enterprises are a primary market, Protect AI also supports medium-sized businesses and research institutions investing in AI security. -
Is Protect AI compliant with global regulations?
Yes, the platform is designed with compliance in mind and supports audits and documentation for frameworks such as GDPR, HIPAA, and the EU AI Act.