{
"$type": "site.standard.document",
"bskyPostRef": {
"cid": "bafyreiarmria2buvvwrqzo2m6eefydgkduhn3auc7k3ui2nn5e445r66mi",
"uri": "at://did:plc:gapzbf5nl5wxaqkqoecaeawh/app.bsky.feed.post/3mmzoskvejm42"
},
"coverImage": {
"$type": "blob",
"ref": {
"$link": "bafkreib4l7ws7sxkbiy4g6szi4xu3x4dogpfqpmyvccobv563hksxm562q"
},
"mimeType": "image/webp",
"size": 23724
},
"path": "/why-enterprise-ai-infrastructure-is-becoming-a-devops-problem/",
"publishedAt": "2026-05-29T18:56:09.000Z",
"site": "https://devops.com",
"tags": [
"Blogs",
"CloudOps",
"Contributed Content",
"Infrastructure/Networking",
"Social - Facebook",
"Social - LinkedIn",
"Social - X",
"AI Inference",
"AI infrastructure",
"Enterprise AI",
"GPUs",
"platform engineering"
],
"textContent": "Most enterprise AI projects start with retrieval. You connect Jira, Confluence, SharePoint, and Slack. Maybe a few internal databases nobody has touched in five years. You tune embeddings, optimize chunking, wire up a vector database, and convince yourself you’ve built an AI-powered knowledge system. Then the model server crashes. And suddenly, you discover the uncomfortable […]",
"title": "Why Enterprise AI Infrastructure Is Becoming a DevOps Problem"
}