NLWeb
{{Short description|Python project for creating natural language interfaces}} {{Sources exist|date=May 2025}} '''Natural Language Web or NLWeb''' was introduced by [[Microsoft]] in 2025. It is an open [[Python (programming language)|Python]] project designed to simplify the creation of natural language interfaces for websites.{{Cite web |date=2025-05-19 |title=Introducing NLWeb: Bringing conversational interfaces directly to the web |url=https://news.microsoft.com/source/features/company-news/introducing-nlweb-bringing-conversational-interfaces-directly-to-the-web/ |access-date=2025-05-27 |website=Microsoft}} It enables users to query website contents using natural language, similar to interacting with an [[Virtual assistant|AI assistant]]. Every instance functions as a [[Model Context Protocol]] (MCP) server allowing websites to make their content discoverable and accessible to AI agents and other participants.{{Cite web |date=2025-04-28 |title=NLWeb |url=https://github.com/microsoft/NLWeb |access-date=2025-05-27 |website=Github}}
NLWeb leverages existing web standards like [[Schema.org]]{{Cite web|url=https://schema.org/|title=Schema.org|website=schema.org}} and [[RSS]] to build conversational capabilities of processing user queries through language models, performing semantic searches against website content and generating natural responses. It is platform-agnostic, running on all major systems and connecting to any vector database. Content to be indexed by NLWeb works best when it is organized in an AI friendly way. This means short, interlinked and semantically annotated articles work best.{{Cite web |date=2025-05-27 |title=Guide: How to Use NLWeb to Unleash AI-Powered Websites |url=https://www.iunera.com/kraken/machine-learning-ai/nlweb-enables-ai-powered-websites/ |access-date=2025-05-30 |website=iunera}}
Initial adopters of NLWeb include [[TripAdvisor]], [[Shopify]], [[Eventbrite]], and [[Hearst Communications|Hearst]].
== References == {{Reflist}}
== External links ==
- {{GitHub|microsoft/NLWeb}}
[[Category:Microsoft software]] [[Category:Computer-related introductions in 2025]]
{{Microsoft-stub}} {{AI-stub}}
From MOAI Insights

로봇은 왜 볼트를 떨어뜨리는가 — Physical AI가 공장에 필요한 진짜 이유
AI가 데이터 패턴만 외우는 시대는 끝나고 있다. 물리 법칙을 이해하는 Physical AI가 제조 현장에 왜 필요한지, KAIST 교수와 자동차 부품 공장 팀장이 볼트 하나를 놓고 이야기한다.

디지털 트윈, 당신 공장엔 이미 있다 — 엑셀과 MES 사이 어딘가에
디지털 트윈은 10억짜리 3D 시뮬레이션이 아니다. 지금 쓰고 있는 엑셀에 좋은 질문 하나를 더하는 것 — 두 전문가가 중소 제조기업이 이미 가진 데이터로 예측하는 공장을 만드는 현실적 로드맵을 제시한다.

공장의 뇌는 어떻게 생겼는가 — 제조운영 AI 아키텍처 해부
지식관리, 업무자동화, 의사결정지원 — 따로 보면 다 있던 것들입니다. 제조 AI의 진짜 차이는 이 셋이 순환하면서 '우리 공장만의 지능'을 만든다는 데 있습니다.
Want to apply this in your factory?
MOAI helps manufacturing companies adopt AI tailored to their operations.
Talk to us →