{"id":8350,"date":"2026-02-13T08:01:00","date_gmt":"2026-02-13T14:01:00","guid":{"rendered":"https:\/\/bluecatnetworks.com\/?p=289259"},"modified":"2026-02-13T08:01:00","modified_gmt":"2026-02-13T14:01:00","slug":"agentic-ai-adoption-in-network-observability-propels-netops-teams","status":"publish","type":"post","link":"https:\/\/ddi.mohflo.net\/index.php\/2026\/02\/13\/agentic-ai-adoption-in-network-observability-propels-netops-teams\/","title":{"rendered":"Agentic AI adoption in network observability propels NetOps teams"},"content":{"rendered":"<p class=\"v-from-wysiwyg\">As networks evolve and AI adoption becomes more widespread, network observability&nbsp;and intelligence&nbsp;have&nbsp;become crucial for keeping networks optimized and for&nbsp;identifying&nbsp;and resolving issues.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">Most network monitoring tools will generate alerts when something is amiss. But they stop there, leaving resource-strapped network operations teams to figure out how to fix it. Network observability tools, meanwhile,&nbsp;correlate&nbsp;metrics, context, and configuration data to proactively detect and isolate root causes.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">According to new research from&nbsp;<a aria-describedby=\"opens in a new tab\" href=\"https:\/\/omdia.tech.informa.com\/\" target=\"_blank\" rel=\"noreferrer noopener\">Omdia<\/a>,&nbsp;network observability tools are increasingly critical for modern networks. And vendors are rapidly adding AI to their toolsets, with significant promise for agentic AI.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">Omdia\u2019s&nbsp;2026 report,&nbsp;<em>Network Observability in the Agentic AI Era<\/em>, reveals that&nbsp;AI&nbsp;technologies&nbsp;are&nbsp;reaching&nbsp;mainstream&nbsp;status&nbsp;for network observability. Slightly more than half of&nbsp;survey&nbsp;respondents&nbsp;are&nbsp;actively using agentic AI&nbsp;to boost capabilities.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">In this post,&nbsp;we\u2019ll&nbsp;first explore&nbsp;Omdia\u2019s&nbsp;findings about why network observability\u2014and not just&nbsp;monitoring\u2014is critical for modern networks. Then&nbsp;we\u2019ll&nbsp;look at survey results that&nbsp;demonstrate&nbsp;AI\u2019s growing role in&nbsp;enhancing&nbsp;network observability&nbsp;for NetOps teams, particularly&nbsp;through&nbsp;agentic AI. And finally,&nbsp;we\u2019ll&nbsp;touch on how BlueCat\u2019s solutions can bring AI-powered observability to your network.&nbsp;<\/p>\n<figure class=\"wp-block-image size-large\"><a class=\"block\" href=\"https:\/\/bluecatnetworks.com\/resources\/omdia-report-network-observability-in-the-agentic-ai-era\/\"><img data-recalc-dims=\"1\" loading=\"lazy\" src=\"https:\/\/i0.wp.com\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams.jpg?resize=640%2C373&#038;ssl=1\" alt=\"Illustration depicting a man at his laptop and a cover of Omdia\" class=\"w-full wp-image-289307 has-media-category media-cat-blog-pics-and-headers img-fluid format-jpg v-media-processed\" data-image-id=\"289307\" data-image-id-verified=\"1\" width=\"640\" height=\"373\" decoding=\"async\" srcset=\"https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams.jpg 1200w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-5.jpg 584w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-6.jpg 790w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-7.jpg 1536w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-8.jpg 2048w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-9.jpg 276w\" data-context=\"content-main-post\" sizes=\"auto, (min-width: 1400px) 1360px, (min-width: 1200px) 1108px, (min-width: 992px) 928px, (min-width: 768px) 688px, (min-width: 576px) 508px, calc(100vw - 32px)\" data-custom-sizes=\"1\" loading=\"lazy\"><\/a><\/figure>\n<h2 class=\"wp-block-heading v-from-wysiwyg\">Network observability is essential for modern&nbsp;networks&nbsp;<\/h2>\n<p class=\"v-from-wysiwyg\">To see&nbsp;what\u2019s&nbsp;happening on their networks, network operations&nbsp;teams have&nbsp;traditionally&nbsp;relied on&nbsp;network&nbsp;monitoring&nbsp;tools. These tools&nbsp;collect telemetry, flows,&nbsp;and&nbsp;logs&nbsp;from as many devices and domains as possible. When something goes wrong, teams are flooded with alerts and dashboards&nbsp;that show&nbsp;something&nbsp;has&nbsp;happened.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">But&nbsp;flagging that an issue exists is&nbsp;where&nbsp;most&nbsp;monitoring tools&nbsp;stop. Troubleshooting&nbsp;to resolve the issue&nbsp;can be reactive, manual, and slow. Teams pivot between dashboards, export data, and&nbsp;experienced&nbsp;guesses.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">Network observability&nbsp;goes&nbsp;beyond traditional monitoring. It&nbsp;connects&nbsp;real-time metrics, network context, and configuration data to proactively detect and isolate the root causes&nbsp;of&nbsp;network&nbsp;issues. And it&nbsp;often&nbsp;resolves&nbsp;them before users even notice a problem.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">Network observability&nbsp;answers&nbsp;more&nbsp;powerful questions:&nbsp;<em>What is happening in the network, why is it happening, and what should we do next?<\/em>&nbsp;Observability is not just about collecting data; it is about enabling understanding.&nbsp;<\/p>\n<h3 class=\"wp-block-heading v-from-wysiwyg\">AI-powered applications make network observability more critical&nbsp;<\/h3>\n<p class=\"v-from-wysiwyg\">As AI-powered applications move into broader adoption, network observability is even more critical, according to&nbsp;Omdia. Indeed, 90% of survey respondents strongly agree or agree that network observability is increasingly critical with the arrival of AI.&nbsp;Furthermore, 88% strongly agree or agree that AI technologies are essential for network observability.&nbsp;<\/p>\n<figure class=\"wp-block-image size-large\"><img data-recalc-dims=\"1\" loading=\"lazy\" src=\"https:\/\/i0.wp.com\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-1.jpg?resize=640%2C542&#038;ssl=1\" alt=\"Pie charts depicting the level of agreement with statements related to network observability, with the first statement being that network observability is becoming more critical with the arrival of AI technologies, and the second statement being that AI technologies are essential for network observability\" class=\"w-full wp-image-289308 has-media-category media-cat-blog-pics-and-headers img-fluid format-jpg v-media-processed\" data-image-id=\"289308\" data-image-id-verified=\"1\" width=\"640\" height=\"542\" decoding=\"async\" srcset=\"https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-1.jpg 1200w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-10.jpg 584w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-11.jpg 790w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-12.jpg 1536w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-13.jpg 2048w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-14.jpg 276w\" data-context=\"content-main-post\" sizes=\"auto, (min-width: 1400px) 1360px, (min-width: 1200px) 1108px, (min-width: 992px) 928px, (min-width: 768px) 688px, (min-width: 576px) 508px, calc(100vw - 32px)\" data-custom-sizes=\"1\" loading=\"lazy\"><\/figure>\n<p class=\"v-from-wysiwyg\">Survey respondents also&nbsp;indicated&nbsp;that the scope of network observability coverage is broad. Well&nbsp;over half of survey respondents report that their network observability efforts fully&nbsp;cover&nbsp;cloud networking, cloud access, data centers, and WAN. A broad range of data sources&nbsp;is&nbsp;also important, including system logs, user IDs, cloud flow logs, and IP address assignments.&nbsp;<\/p>\n<h3 class=\"wp-block-heading v-from-wysiwyg\">Network observability&nbsp;has its&nbsp;challenges, too&nbsp;<\/h3>\n<p class=\"v-from-wysiwyg\">However,&nbsp;according to&nbsp;Omdia, network observability is not without challenges.&nbsp;Using fewer tools&nbsp;should lower costs and workloads. However,&nbsp;over 80%&nbsp;of respondents&nbsp;reported&nbsp;using&nbsp;three or more tools in their network observability stacks. Furthermore,&nbsp;integration is&nbsp;a major challenge for observability.&nbsp;Three-quarters&nbsp;of respondents&nbsp;identified&nbsp;integration between network tools or&nbsp;with observability frameworks as a top concern.&nbsp;<\/p>\n<figure class=\"wp-block-image size-large\"><img data-recalc-dims=\"1\" loading=\"lazy\" src=\"https:\/\/i0.wp.com\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-2.jpg?resize=640%2C373&#038;ssl=1\" alt=\"Bar chart depicting the number of tools (software products or programs, either licensed or self-developed) that are part of the network observability stack, with numbers ranging from one to seven or more\" class=\"w-full wp-image-289309 has-media-category media-cat-blog-pics-and-headers img-fluid format-jpg v-media-processed\" data-image-id=\"289309\" data-image-id-verified=\"1\" width=\"640\" height=\"373\" decoding=\"async\" srcset=\"https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-2.jpg 1200w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-15.jpg 584w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-16.jpg 790w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-17.jpg 1536w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-18.jpg 2048w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-19.jpg 276w\" data-context=\"content-main-post\" sizes=\"auto, (min-width: 1400px) 1360px, (min-width: 1200px) 1108px, (min-width: 992px) 928px, (min-width: 768px) 688px, (min-width: 576px) 508px, calc(100vw - 32px)\" data-custom-sizes=\"1\" loading=\"lazy\"><\/figure>\n<h2 class=\"wp-block-heading v-from-wysiwyg\">AI\u2019s role in network observability is growing&nbsp;<\/h2>\n<p class=\"v-from-wysiwyg\">The scale and complexity of modern networks&nbsp;make&nbsp;manual correlation&nbsp;for issue resolution&nbsp;no longer&nbsp;viable. No network engineer\u2014no matter how experienced\u2014can consistently connect the dots across performance telemetry, flow data, configuration state, and security signals in real time.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">To keep up,&nbsp;network observability&nbsp;products&nbsp;are&nbsp;rapidly&nbsp;adding&nbsp;AI technologies. As a result,&nbsp;well over half of&nbsp;respondents&nbsp;reported&nbsp;that&nbsp;generative&nbsp;AI,&nbsp;machine learning, and agentic AI technologies are already&nbsp;used within or alongside their network observability tools. Among remaining respondents,&nbsp;near-universal&nbsp;adoption&nbsp;is&nbsp;expected over the next two years.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">Accordingly, enterprises that are at the&nbsp;<a href=\"https:\/\/bluecatnetworks.com\/blog\/network-observability-maturity-stuck-learn-how-to-pull-ahead\/\" target=\"_blank\" rel=\"noreferrer noopener\">highest stage of network observability&nbsp;maturity<\/a>&nbsp;leverage&nbsp;AI for prediction and optimization. These enterprises, according to&nbsp;Enterprise Management Associates,&nbsp;use machine learning to forecast network behavior, capacity needs, and potential failures before they occur.&nbsp;<\/p>\n<h3 class=\"wp-block-heading v-from-wysiwyg\">AI delivers a multitude of benefits for network observability<\/h3>\n<p class=\"v-from-wysiwyg\">The potential drivers for using AI in network observability are&nbsp;numerous.&nbsp;According to&nbsp;Omdia, half or&nbsp;more&nbsp;than half&nbsp;of&nbsp;respondents see AI as enabling network performance optimization, security threat identification, or automated or enhanced troubleshooting. Other key uses&nbsp;identified&nbsp;include&nbsp;predictive maintenance, intelligent alerting notification, preventative issue recognition, and anomaly detection.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">Furthermore,&nbsp;Omdia\u2019s&nbsp;research found that&nbsp;AI&nbsp;is&nbsp;meeting or exceeding expectations&nbsp;among&nbsp;most organizations across all&nbsp;surveyed&nbsp;use cases. For example, AI\u2019s performance in security threat identification exceeded expectations for 64% of respondents and met expectations for another 28%.&nbsp;<\/p>\n<figure class=\"wp-block-image size-large\"><img data-recalc-dims=\"1\" loading=\"lazy\" src=\"https:\/\/i0.wp.com\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-3.jpg?resize=640%2C373&#038;ssl=1\" alt=\"Bar chart depicting drivers for the use of AI in network observability, with answers including network performance optimization, security threat identification, automated or enhanced troubleshooting, predictive maintenance, intelligent alerting and notification, preventative issue recognition, and anomaly detection\" class=\"w-full wp-image-289310 has-media-category media-cat-blog-pics-and-headers img-fluid format-jpg v-media-processed\" data-image-id=\"289310\" data-image-id-verified=\"1\" width=\"640\" height=\"373\" decoding=\"async\" srcset=\"https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-3.jpg 1200w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-20.jpg 584w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-21.jpg 790w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-22.jpg 1536w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-23.jpg 2048w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-24.jpg 276w\" data-context=\"content-main-post\" sizes=\"auto, (min-width: 1400px) 1360px, (min-width: 1200px) 1108px, (min-width: 992px) 928px, (min-width: 768px) 688px, (min-width: 576px) 508px, calc(100vw - 32px)\" data-custom-sizes=\"1\" loading=\"lazy\"><\/figure>\n<h3 class=\"wp-block-heading v-from-wysiwyg\">Agentic AI is gaining traction for network observability<\/h3>\n<p class=\"v-from-wysiwyg\">&nbsp;Among survey respondents using&nbsp;generative AI&nbsp;for network observability, well over half use it&nbsp;for knowledge capture and preservation, knowledge base access, and conversational network analysis.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">But agentic AI, which acts autonomously,&nbsp;using tools and reasoning to solve problems and execute multi-step tasks, is&nbsp;also beginning to directly&nbsp;impact&nbsp;network observability.&nbsp;&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">Agentic AI can conduct&nbsp;autonomous activities and&nbsp;take&nbsp;proactive measures. Much of this is&nbsp;beyond the practical reach of resource-strapped&nbsp;network operations&nbsp;and engineering teams.&nbsp;Indeed, 86%&nbsp;of respondents strongly agree or agree that agentic AI can help close network observability skill gaps.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">Just over&nbsp;half of respondents reported using autonomous monitoring and analysis. Another 42% reported that it is&nbsp;in&nbsp;the&nbsp;process&nbsp;of deployment. Another 48% are using agentic AI for support for autonomous workflows, while 36% intend to deploy it in the future.&nbsp;Other common agentic AI applications reported include continuous policy compliance assessment, continuous network discovery, and recommended action plans.&nbsp;<\/p>\n<figure class=\"wp-block-image size-large\"><img data-recalc-dims=\"1\" loading=\"lazy\" src=\"https:\/\/i0.wp.com\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-4.jpg?resize=640%2C373&#038;ssl=1\" alt=\"Bar chart depicting how agentic AI technologies are helping or are expected to help network observability initiatives, with answers including autonomous monitoring and analysis, support for autonomous workflows, continuous policy compliance assessment, continuous network discovery, and recommended action plans, and bars for each depicting either agentic AI in use or all other agentic AI deployment phases\" class=\"w-full wp-image-289311 has-media-category media-cat-blog-pics-and-headers img-fluid format-jpg v-media-processed\" data-image-id=\"289311\" data-image-id-verified=\"1\" width=\"640\" height=\"373\" decoding=\"async\" srcset=\"https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-4.jpg 1200w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-25.jpg 584w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-26.jpg 790w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-27.jpg 1536w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-28.jpg 2048w, https:\/\/ddi.mohflo.net\/wp-content\/uploads\/2026\/02\/agentic-ai-adoption-in-network-observability-propels-netops-teams-29.jpg 276w\" data-context=\"content-main-post\" sizes=\"auto, (min-width: 1400px) 1360px, (min-width: 1200px) 1108px, (min-width: 992px) 928px, (min-width: 768px) 688px, (min-width: 576px) 508px, calc(100vw - 32px)\" data-custom-sizes=\"1\" loading=\"lazy\"><\/figure>\n<h2 class=\"wp-block-heading v-from-wysiwyg\">AI-powered network observability solutions&nbsp;are here<\/h2>\n<p class=\"v-from-wysiwyg\">BlueCat\u2019s&nbsp;<a href=\"https:\/\/bluecatnetworks.com\/solutions\/network-observability-intelligence\/\" target=\"_blank\" rel=\"noreferrer noopener\">network observability and intelligence solutions<\/a>&nbsp;continuously capture and visualize a broad range of telemetry across the whole network&nbsp;for more actionable insights, including:&nbsp;<\/p>\n<ul class=\"wp-block-list v-from-wysiwyg\">\n<li>Flow data, API, SNMP, and cloud telemetry&nbsp;for performance monitoring&nbsp;<\/li>\n<li>Packet data&nbsp;for enterprise-wide network forensics&nbsp;<\/li>\n<li>Configuration data&nbsp;to detect and remediate issues across DNS, DHCP, and IP address management&nbsp;(together known as&nbsp;<a href=\"https:\/\/bluecatnetworks.com\/glossary\/what-is-ddi\/\" target=\"_blank\" rel=\"noreferrer noopener\">DDI<\/a>)&nbsp;services, firewalls, and load balancers&nbsp;<\/li>\n<\/ul>\n<p class=\"v-from-wysiwyg\">Furthermore,&nbsp;<a href=\"https:\/\/bluecatnetworks.com\/products\/livenx\/liveassist\/\" target=\"_blank\" rel=\"noreferrer noopener\">LiveAssist<\/a>, an AI-powered add-on to&nbsp;<a href=\"https:\/\/bluecatnetworks.com\/products\/livenx\/\" target=\"_blank\" rel=\"noreferrer noopener\">LiveNX<\/a>, BlueCat\u2019s network observability&nbsp;solution,&nbsp;helps NetOps teams&nbsp;gain&nbsp;real-time network insights&nbsp;and guided issue remediation.&nbsp;With&nbsp;agentic AI&nbsp;capabilities,&nbsp;LiveAssist&nbsp;doesn\u2019t&nbsp;just summarize&nbsp;data;&nbsp;it thinks and acts like an experienced network engineer. It understands multi-vendor telemetry from flows, SNMP, APIs, and packets, and automatically correlates symptoms to causes. And it recommends next steps, all through a natural language interface.&nbsp;<\/p>\n<p class=\"v-from-wysiwyg\">Ready to learn more about network observability and how agentic AI is transforming it? Download&nbsp;<a href=\"https:\/\/bluecatnetworks.com\/resources\/omdia-report-network-observability-in-the-agentic-ai-era\/\" target=\"_blank\" rel=\"noreferrer noopener\">Omdia\u2019s full&nbsp;<em>Network Observability in the Agentic AI Era<\/em>&nbsp;report<\/a>&nbsp;today.<\/p>\n<p><a href=\"https:\/\/bluecatnetworks.com\/blog\/agentic-ai-adoption-in-network-observability-propels-netops-teams\/\">BlueCat Source<\/a><\/p>\n","protected":false},"excerpt":{"rendered":"<p>As networks evolve and AI adoption becomes more widespread, network<\/p>\n","protected":false},"author":3,"featured_media":0,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"_jetpack_memberships_contains_paid_content":false,"footnotes":""},"categories":[94],"tags":[95],"class_list":["post-8350","post","type-post","status-publish","format-standard","hentry","category-blog","tag-blog"],"featured_image_urls":{"full":"","thumbnail":"","medium":"","medium_large":"","large":"","1536x1536":"","2048x2048":"","chromenews-featured":"","chromenews-large":"","chromenews-medium":""},"author_info":{"display_name":"Blue Cat","author_link":"https:\/\/ddi.mohflo.net\/index.php\/author\/bluecat\/"},"category_info":"<a href=\"https:\/\/ddi.mohflo.net\/index.php\/category\/blog\/\" rel=\"category tag\">Blog<\/a>","tag_info":"Blog","comment_count":"0","jetpack_featured_media_url":"","jetpack_sharing_enabled":true,"_links":{"self":[{"href":"https:\/\/ddi.mohflo.net\/index.php\/wp-json\/wp\/v2\/posts\/8350","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/ddi.mohflo.net\/index.php\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/ddi.mohflo.net\/index.php\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/ddi.mohflo.net\/index.php\/wp-json\/wp\/v2\/users\/3"}],"replies":[{"embeddable":true,"href":"https:\/\/ddi.mohflo.net\/index.php\/wp-json\/wp\/v2\/comments?post=8350"}],"version-history":[{"count":0,"href":"https:\/\/ddi.mohflo.net\/index.php\/wp-json\/wp\/v2\/posts\/8350\/revisions"}],"wp:attachment":[{"href":"https:\/\/ddi.mohflo.net\/index.php\/wp-json\/wp\/v2\/media?parent=8350"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/ddi.mohflo.net\/index.php\/wp-json\/wp\/v2\/categories?post=8350"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/ddi.mohflo.net\/index.php\/wp-json\/wp\/v2\/tags?post=8350"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}