Cybersecurity leadership is undergoing a fundamental shift as artificial intelligence becomes embedded across telemetry analysis, threat hunting, incident response, compliance automation, and executive reporting. This book provides CISOs with a pragmatic blueprint for adopting AI responsibly and strategically, not as a collection of tools but as an operating model. It focuses on establishing clear governance and decision rights, integrating AI risks into enterprise risk management, augmenting SOC and incident response workflows, strengthening metrics and board communication, and designing a human AI teaming model that improves resilience without compromising accountability.
Five leadership priorities anchor this approach. First, AI governance and ethical oversight are aligned with recognized standards, including the NIST AI Risk Management Framework and ISO IEC 42001, to ensure transparency, accountability, and defensible decision making. Second, risk management is expanded to address AI specific threats such as model drift, data integrity, and adversarial manipulation, supported by measurable key risk indicators. Third, AI augmented operations enhance alert triage, indicator enrichment, and incident narrative development, allowing security teams to focus on judgment and coordination rather than manual processing. Fourth, compliance is scaled through automated evidence mapping and narrative generation tied to frameworks such as NIST SP 800 171 and ISO 27001, improving consistency and audit readiness. Fifth, workforce enablement is addressed through role based AI literacy, applied prompt engineering, and quality controls that reinforce human oversight.
The result is a cybersecurity function that operates with greater speed, clarity, and transparency. Organizations gain earlier visibility into weak signals, reduce analyst fatigue, and communicate risk more effectively to executive leadership and boards. Throughout the book, explainability, data provenance, and human in the loop controls remain central, ensuring AI strengthens trust and decision quality rather than introducing opaque or unmanaged risk.
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Paperback. Condition: new. Paperback. Cybersecurity leadership is undergoing a fundamental shift as artificial intelligence becomes embedded across telemetry analysis, threat hunting, incident response, compliance automation, and executive reporting. This book provides CISOs with a pragmatic blueprint for adopting AI responsibly and strategically, not as a collection of tools but as an operating model. It focuses on establishing clear governance and decision rights, integrating AI risks into enterprise risk management, augmenting SOC and incident response workflows, strengthening metrics and board communication, and designing a human AI teaming model that improves resilience without compromising accountability. Five leadership priorities anchor this approach. First, AI governance and ethical oversight are aligned with recognized standards, including the NIST AI Risk Management Framework and ISO IEC 42001, to ensure transparency, accountability, and defensible decision making. Second, risk management is expanded to address AI specific threats such as model drift, data integrity, and adversarial manipulation, supported by measurable key risk indicators. Third, AI augmented operations enhance alert triage, indicator enrichment, and incident narrative development, allowing security teams to focus on judgment and coordination rather than manual processing. Fourth, compliance is scaled through automated evidence mapping and narrative generation tied to frameworks such as NIST SP 800 171 and ISO 27001, improving consistency and audit readiness. Fifth, workforce enablement is addressed through role based AI literacy, applied prompt engineering, and quality controls that reinforce human oversight. The result is a cybersecurity function that operates with greater speed, clarity, and transparency. Organizations gain earlier visibility into weak signals, reduce analyst fatigue, and communicate risk more effectively to executive leadership and boards. Throughout the book, explainability, data provenance, and human in the loop controls remain central, ensuring AI strengthens trust and decision quality rather than introducing opaque or unmanaged risk. This item is printed on demand. Shipping may be from multiple locations in the US or from the UK, depending on stock availability. Seller Inventory # 9798993260860
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Paperback. Condition: new. Paperback. Cybersecurity leadership is undergoing a fundamental shift as artificial intelligence becomes embedded across telemetry analysis, threat hunting, incident response, compliance automation, and executive reporting. This book provides CISOs with a pragmatic blueprint for adopting AI responsibly and strategically, not as a collection of tools but as an operating model. It focuses on establishing clear governance and decision rights, integrating AI risks into enterprise risk management, augmenting SOC and incident response workflows, strengthening metrics and board communication, and designing a human AI teaming model that improves resilience without compromising accountability. Five leadership priorities anchor this approach. First, AI governance and ethical oversight are aligned with recognized standards, including the NIST AI Risk Management Framework and ISO IEC 42001, to ensure transparency, accountability, and defensible decision making. Second, risk management is expanded to address AI specific threats such as model drift, data integrity, and adversarial manipulation, supported by measurable key risk indicators. Third, AI augmented operations enhance alert triage, indicator enrichment, and incident narrative development, allowing security teams to focus on judgment and coordination rather than manual processing. Fourth, compliance is scaled through automated evidence mapping and narrative generation tied to frameworks such as NIST SP 800 171 and ISO 27001, improving consistency and audit readiness. Fifth, workforce enablement is addressed through role based AI literacy, applied prompt engineering, and quality controls that reinforce human oversight. The result is a cybersecurity function that operates with greater speed, clarity, and transparency. Organizations gain earlier visibility into weak signals, reduce analyst fatigue, and communicate risk more effectively to executive leadership and boards. Throughout the book, explainability, data provenance, and human in the loop controls remain central, ensuring AI strengthens trust and decision quality rather than introducing opaque or unmanaged risk. This item is printed on demand. Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability. Seller Inventory # 9798993260860
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