Atomic Data Leadership Forum: AI on Offense and Defense in Minneapolis
On September 30 in downtown Minneapolis, Minnesota, leaders from finance, manufacturing, and technology joined Atomic Data to examine how to capture AI’s productivity upside while defending against AI-powered cyber threats. The discussion focused on practical steps that reduce risk while enabling teams to pilot, measure, and scale value.
Why AI Readiness Matters Now
AI adoption is accelerating and risk exposure rises with it. Treat AI as both offense for productivity, automation, and insight, and defense to counter attackers using the same tools. Start with small, governed pilots, set metrics, and build a roadmap that links investment to outcomes.
The AI-Driven Threat Landscape
What Is Changing
Translating Risk
Exposure increases as attack sophistication meets low-barrier tools. Expect faster attack cycles and broader surface areas. Map the top business processes, data repositories, and identities that matter most, then align controls to those assets.
AI-Powered Security Operations
Defense accelerates when AI analytics and human expertise work in tandem across endpoints, networks, cloud, and SaaS. Visibility, triage discipline, and rapid containment cut dwell time and blast radius.
Continuous Anomaly Analysis
Machine learning surfaces outliers and suspicious patterns in near real time. Analysts validate, prioritize, and enrich with context to drive action.
Containment With Context
24×7 analysts isolate users and devices, revoke tokens, and coordinate remediation to reduce dwell time. Playbooks turn lessons into faster future response.
Client Path to AI Readiness
Wanner Engineering: Why a Managed SOC
AI Beyond Security: Productivity and Data Strategy
Operational ROI
Automation for invoice data entry, meeting capture, and email triage creates measurable time savings and faster follow-through. Track reclaimed hours and error rates to quantify ROI.
Unified Data Foundation
Clean, consolidated data enables copilots and analytics to deliver accurate summaries, forecasts, and decisions. Invest in data quality and permissions before scaling use cases.
Governance and Shadow AI
Shadow AI occurs when employees use unapproved tools that may train on or expose sensitive data. Readiness requires policy, provisioning, and oversight with clear accountability.
Immediate Steps
Policy Accelerator
Use our editable template to set scope, data handling, and guardrails quickly. Align with legal, security, and HR to drive adoption.
Download AI Policy TemplateKey Takeaways
Join Us in Minneapolis · December 2
For the follow-up AI Leadership Forum – Part II with practical insights into corporate AI readiness, best-practice guardrails, and ensuring AI ROI.
Location: Minneapolis, Minnesota · Hosted by Atomic Data · Leadership Forum Series