MediaWiki API result

This is the HTML representation of the JSON format. HTML is good for debugging, but is unsuitable for application use.

Specify the format parameter to change the output format. To see the non-HTML representation of the JSON format, set format=json.

See the complete documentation, or the API help for more information.

{
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            "281": {
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                "title": "Services",
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                        "*": "{{Seite\n|Titel=Professional services from DIQA\n|Image=DIQA_banner_x150.png\n|Keywords=SharePoint, Suche\n|Verlauf=\n|Pfad=[[Main Page]] > Services \n|Kategorie=Service\n|SEO-Description=Hier k\u00f6nnen Sie eine Lizenz f\u00fcr DIQA-Produkte erwerben.\n|en_link=\n}}\n<div class=\"row\">\n<div class=\"col-xs-12 col-md-8 col-lg-9 col-xl-10\">\n==SharePoint/Office 365==\nOur team works with the most recent SharePoint- and Microsoft Office-knowhow, in order to realize your requirements optimally - for a fixed price. Our offerings:\n*Sharepoint Apps and Add-ins\n*Sharepoint webparts\n*Custom development in SharePoint using the .NET Framework\n\n==Machine Learning==\nWe employ Machine Learning methods to analyse written text for aspects like:\n* Text classification: assigning tags to documents\n* Language: identification of the document language\n* Sentiment analysis: identify emotions\n* Topic analysis: identify what a sentence or text is talking about\n* Text extraction: identify important data in text like companies, products, keywords\n* Entity recognition: identify entities, like people, locations, in text.\n* Clustering: identify segments of similar documents in a vast corpus\n\nWe use open source tools, like TensorFlow, Keras, and Microsoft AI tools.\n\n==MediaWiki==\nThe DIQA team has profound expertise in customizing and deploying MediaWiki and Semantic MediaWiki in enterprises. Our offerings:\n*Strategic consultancy regarding employing MediaWiki, Semantic MediaWiki or DataWiki.\n*Installation, test and operation of portals (on premise or in the cloud)\n*Selection of suitable extensions (e.g. WYSIWYG extension, facetted search)\n*Integration of ontologies and taxonomies\nExample projects that we have done for our customers:\n*Access control for MediaWiki: introduced a content and action level access control system into a corporate wiki.\n*Reporting tool: provided a click and point reporting tool for end-users to generate reports on a highly customized MediaWiki installation that contains production process data.\n*WYSIWYG: introduced a WYSIWYG editor into a MediaWiki installation.\n*2nd Level Support: we provide various international customers with 2nd level support to operate their corporate MediaWiki installation.\n*Configuration and Setup: for various international customers we have installed MediaWiki and compatible extensions to operate a corporate knowledge base.\n\n== DIQA unlocks the power of Semantic Web technologies ==\n\nSemantic Web technologies provide new solutions for using and managing the abundance of documents and data in your organization, e.g. \n* to access heterogeneous data silos\n* to intelligently interlink the data\n* to allow for new insights\n* to enable better retrieval of documents (based on semantic data)\n\n<em class=\"seo\">Semantic Web technologies will bring strategic benefits to your business</em>. Together, we can identify and realize opportunities to increase your productivity and efficiency.  \n\nOur offerings:\n* <strong>strategic consultancy</strong> about applying semantic technologies in your organization (best practices, linked data, platforms)\n* <strong>ontology modeling</strong> for your use cases (best practices, incl. linked data principles, reuse of standard vocabularies, OWL, rules)\n* <strong>training</strong> in current semantic technologies ''(ontology languages - OWL, RDFS; standard ontologies - DC, schema.org, FOAF; tools - triple stores, editors, APIs; methodologies)''\n* <strong>We manage your semantic technologies project and</strong>\n** we <strong>select, configure and deploy</strong> of the best semantic tools to solve your problems <em>(vendor independent, incl. Jena, Virtuoso, Topbraid, Protege, Semantic MediaWiki, and more in Java or .Net)</em>\n** we <strong>develop</strong> custom components and solutions\n** we <strong>integrate</strong> the solution into your system landscape\n\nThe DIQA team knows all relevant semantic methods and tools and will compile the best possible solutions suited to your use cases.\n\n----\n\n==Request an offer==\n{{Emailformular\n|Text=Hi DIQA! We would like to learn more about your professional services, these are our requirements: ... Please come back to us to discuss an offer.\n|Placeholder=\n}}\n</div>\n<div class=\"hideSM col-md-4 col-lg-3 col-xl-2\">\n{{DienstleistungenLinkbox|Ansprechpartner=hansch}}\n</div>"
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            "288": {
                "pageid": 288,
                "ns": 0,
                "title": "Solutions",
                "revisions": [
                    {
                        "contentformat": "text/x-wiki",
                        "contentmodel": "wikitext",
                        "*": "{{Seite\n|Bereich=\n|Titel=Solutions\n|Image=DIQA_banner_x150.png\n|Pfad=[[Main Page]]&nbsp;&gt;&nbsp;[[Solutions]]\n|verlauf=\n|Description=Das DIQA L\u00f6sungs-Portfolio.\n|Keywords=diqa, L\u00f6sungen\n}}\n<div class=\"row\">\n<div class=\"col-xs-12 col-md-8 col-lg-9 col-xl-10\">\n\n== Stop Searching, Start Finding ==\nDIQA's SharePoint Findability-solution provides reliable products and a proven method to find documents quicker and more efficiently. We employ Machine Learning technologies to analyse your document libraries, extract tags, apply document tags automatically and guide users in the search process: [[Solutions/Stop_searching_start_finding|...mehr]]\n\n</div>\n<div class=\"hideSM col-md-4 col-lg-3 col-xl-2\">\n{{Linkbox\n|color=#a0b844 \n|heading=Information\n|links=\n* [[Solutions/Stop_searching_start_finding|Stop Searching, Start Finding]]\n}}\n</div>"
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}