Most enterprise #AI projects don't stall because the model is wrong. They stall because the database can't meet producti...

Most enterprise #AI projects don't stall because the model is wrong. They stall because the database can't meet production requirements.pgEdge CEO David Mitchell explains why agentic systems make this harder: they're not just answering questions. They retrieve live data, initiate actions & reason across systems in real time. Most enterprise data environments weren't built for that.His RTInsights piece: 📖 https://www.rtinsights.com/how-todays-agentic-ai-changes-the-requirements-for-enterprise-data-environments/#PostgreSQL #AgenticAI #Database #DataInfrastructure

Read Original

Related

Mastodon discussion 18m ago

📝 「AIレビュアー同士の競争」がコード品質を上げる——ComfyUIが示す、複数モデル並行評価の可能性と限界ComfyUIが4つの異なるAIモデルでプルリクエストを同時レビューする「Cursor Review」を公開。複数のAI視点から検...

📝 「AIレビュアー同士の競争」がコード品質を上げる——ComfyUIが示す、複数モデル並行評価の可能性と限界ComfyUIが4つの異なるAIモデルでプルリクエストを同時レビューする「Cursor Review」を公開。複数のAI視点から検証することで、単一モデルの盲点を補う新しい品質保証アプローチが注目を集めています。🔗 https://techscope...