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AI Cybersecurity Solutions: Overview of Applied AI Security - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: AI Cybersecurity Solutions: Overview of Applied AI Security (/Thread-AI-Cybersecurity-Solutions-Overview-of-Applied-AI-Security) |
AI Cybersecurity Solutions: Overview of Applied AI Security - AD-TEAM - 11-19-2025 ![]() AI Cybersecurity Solutions: Overview of Applied AI Security Published 11/2025 Duration: 6h 8m | .MP4 1280x720 30fps® | AAC, 44100Hz, 2ch | 3.56 GB Genre: eLearning | Language: English Learn to identify, analyze, and mitigate GenAI threats using modern security playbooks What you'll learn - Understand the full GenAI threat landscape and how modern attacks target LLMs and RAG systems - Apply the AI Security Reference Architecture to design secure AI applications - Perform threat modeling for GenAI systems and map risks to concrete mitigations - Implement AI firewalls, filtering rules, and runtime protection controls - Build a secure AI SDLC with dataset security, evals, and red-teaming practices - Configure identity, access, and permission models for AI tools and endpoints - Apply data governance techniques for RAG pipelines, embeddings, and connectors - Use SPM platforms to monitor drift, violations, and AI asset inventory - Deploy observability and evaluation tooling to track model behavior and quality - Assemble an end-to-end AI security control stack and build a 30/60/90 day roadmap Requirements - Intro level understanding of how modern applications or cloud systems work - Optional familiarity with machine learning or LLM based tools - Some exposure to security fundamentals is useful but not mandatory - Comfort with technical documentation and architectural schematics - No background in AI security or specialized tooling required Description AI security is no longer optional.Modern LLMs, RAG pipelines, agents, vector databases, and AI powered tools introduce entirely new attack surfaces that traditional cybersecurity does not cover. Organizations face prompt injection, data leakage, model exploitation, unsafe tool calls, drift, misconfiguration, and unreliable governance. This course gives you acomplete, practical, architecture driven guideto securing real GenAI systems end to end. No fluff, no theory for theory's sake. Only actionable engineering practices, proven controls, and real world templates. What this course delivers A full AI security blueprint, including: AI Security Reference Architecture for model, prompt, data, tools, and monitoring layers The complete GenAI threat landscape and how attacks actually work AI firewalls, runtime guardrails, policy engines, and safe tool execution AI SDLC workflows: dataset security, red teaming, evals, versioning RAG data governance: ACLs, filtering, encryption, secure embeddings Access control and identity for AI endpoints and tool integrations AI SPM: asset inventory, drift detection, policy violations, risk scoring Observability and evaluation pipelines for behavior, quality, and safety What you gain You getpractical, ready to use artifacts, including: Reference architectures Threat modeling worksheets Security and governance templates RAG and AI SDLC checklists Firewall evaluation matrix End to end security control stack A 30, 60, 90 day implementation roadmap Why this course stands out Focused entirely onreal engineering and real security controls Covers thefull AI stack, not just prompts or firewalls Gives you tools used by enterprises adopting GenAI today Helps you build expertise that israre, in demand, and highly valued If you want a structured, practical, and complete guide to securing LLMs and RAG systems, this course gives you everything you need to design defenses, implement controls, and operate AI safely in production. This is the roadmap professionals use when they need to secure real AI systems the right way. Who this course is for: - Software developers building or integrating AI features - ML and AI engineers working with LLMs or RAG pipelines - Architects designing secure AI driven systems - Data engineers and data scientists handling AI datasets - Security engineers and DevSecOps teams supporting AI workloads - Technical leads and managers responsible for AI adoption and risk management More Info ![]() RapidGator NitroFlare DDownload |