A Web-based Collaborative Document Reviewer
نویسندگان
چکیده
The Boeing Collaborative Document Reviewer is an enterprise web application supporting large scale asynchronous collaborative authoring through real-time shared commenting. The application is specifically targeted to supporting the review and critique of contractor draft product documents by United States government customers. The system supports an iterative In-Process Review (IPR) workflow with features that include project-oriented role-based security, document version control, in-context commenting, notification and comment search, comment life cycle, and full-text indexing and multiword term text mining with hyperlinked Key Word In Context (KWIC) search results. The application has been used successfully in production to review thousands of pages of HTML and PDF documents and CGM graphics by hundreds of reviewers distributed across the United States. Author
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