
Sign up to save your podcasts
Or
In this episode, I sit down with Jordan Dahl, a Product Manager on the Entra Conditional Access team, to discuss the newly GA'd Conditional Access Optimization Agent. Jordan shares the origin story of the agent, explaining how customer feedback about the difficulties of managing CA policies at scale led to its creation. We delve into how this AI-powered "digital colleague" works to identify and remediate security gaps, its future roadmap including Service Now integration and phased rollouts, and how you can get started with it in your own tenant.
Subscribe with your favorite podcast player or watch on YouTube π
About Jordan
Jordan is a Product Manager on the Entra Conditional Access team at Microsoft. Her current focus is on the Conditional Access Optimization Agent. Previously, she was a PM for per-policy reporting in Conditional Access and for Groups within Entra.
LinkedIn - https://www.linkedin.com/in/jordan-dahl-840182127/
π Related Links
* Conditional Access optimization agent in Microsoft Entra
π Chapters
00:00 Intro
01:31 The Origin of the CA Optimization Agent
05:08 How the Agent Works
07:40 Autonomous Policy Changes?
12:39 How to Deploy the Agent
16:12 Customizing the Agent's Behavior
23:59 Upcoming Agent Features: Phased Rollouts & ServiceNow
29:45 The Future: A "Digital Colleague"
35:08 How to Give Feedback
41:09 Getting Started: Your Action Items
Podcast Apps
ποΈ Entra.Chat - https://entra.chat
π§ Apple Podcast β https://entra.chat/apple
πΊ YouTube β https://entra.chat/youtube
πΊ Spotify β https://entra.chat/spotify
π§ Overcast β https://entra.chat/overcast
π§ Pocketcast β https://entra.chat/pocketcast
π§ Others β https://entra.chat/rss
Merill's socials
πΊ YouTube β youtube.com/@merillx
π LinkedIn β linkedin.com/in/merill
π€ Twitter β twitter.com/merill
πΊ TikTok β tiktok.com/@merillf
π¦ Bluesky β bsky.app/profile/merill.net
π Mastodon β infosec.exchange/@merill
π§΅ Threads β threads.net/@merillf
π€ GitHub β github.com/merill
5
44 ratings
In this episode, I sit down with Jordan Dahl, a Product Manager on the Entra Conditional Access team, to discuss the newly GA'd Conditional Access Optimization Agent. Jordan shares the origin story of the agent, explaining how customer feedback about the difficulties of managing CA policies at scale led to its creation. We delve into how this AI-powered "digital colleague" works to identify and remediate security gaps, its future roadmap including Service Now integration and phased rollouts, and how you can get started with it in your own tenant.
Subscribe with your favorite podcast player or watch on YouTube π
About Jordan
Jordan is a Product Manager on the Entra Conditional Access team at Microsoft. Her current focus is on the Conditional Access Optimization Agent. Previously, she was a PM for per-policy reporting in Conditional Access and for Groups within Entra.
LinkedIn - https://www.linkedin.com/in/jordan-dahl-840182127/
π Related Links
* Conditional Access optimization agent in Microsoft Entra
π Chapters
00:00 Intro
01:31 The Origin of the CA Optimization Agent
05:08 How the Agent Works
07:40 Autonomous Policy Changes?
12:39 How to Deploy the Agent
16:12 Customizing the Agent's Behavior
23:59 Upcoming Agent Features: Phased Rollouts & ServiceNow
29:45 The Future: A "Digital Colleague"
35:08 How to Give Feedback
41:09 Getting Started: Your Action Items
Podcast Apps
ποΈ Entra.Chat - https://entra.chat
π§ Apple Podcast β https://entra.chat/apple
πΊ YouTube β https://entra.chat/youtube
πΊ Spotify β https://entra.chat/spotify
π§ Overcast β https://entra.chat/overcast
π§ Pocketcast β https://entra.chat/pocketcast
π§ Others β https://entra.chat/rss
Merill's socials
πΊ YouTube β youtube.com/@merillx
π LinkedIn β linkedin.com/in/merill
π€ Twitter β twitter.com/merill
πΊ TikTok β tiktok.com/@merillf
π¦ Bluesky β bsky.app/profile/merill.net
π Mastodon β infosec.exchange/@merill
π§΅ Threads β threads.net/@merillf
π€ GitHub β github.com/merill
1,983 Listeners
365 Listeners
636 Listeners
366 Listeners
183 Listeners
1,009 Listeners
312 Listeners
415 Listeners
7,913 Listeners
166 Listeners
189 Listeners
314 Listeners
74 Listeners
127 Listeners
43 Listeners