Whether you are already used to working with DITA or handling this format for the first time, editing it should not seem like a challenge. Different formats may require specific apps to open and modify them properly. Yet, if you have to swiftly clean data in DITA as a part of your usual process, it is advisable to find a document multitool that allows for all types of such operations without additional effort.
Try DocHub for efficient editing of DITA and other file formats. Our platform provides straightforward papers processing no matter how much or little previous experience you have. With instruments you need to work in any format, you won’t need to switch between editing windows when working with each of your files. Effortlessly create, edit, annotate and share your documents to save time on minor editing tasks. You will just need to register a new DocHub account, and then you can begin your work immediately.
See an improvement in document processing efficiency with DocHub’s straightforward feature set. Edit any file quickly and easily, irrespective of its format. Enjoy all the advantages that come from our platform’s efficiency and convenience.
TONY: This video is part of the Google Data Analytics certificate, providing you with job ready skills to start or advance your career in data analytics. Get access to practice exercises, quizzes, discussion forums, job search help, and more on Coursera and you can earn your official certificate. Visit grow.google/datacert to enroll in the full learning experience today. [MUSIC PLAYING] SPEAKER: Can you guess what inaccurate or bad data costs businesses every year? Thousands of dollars, millions, billions? Well, according to IBM, the yearly cost of poor quality data is $3.1 trillion in the US alone. Thats a lot of zeros. Now can you guess the number one cause of poor quality data? Its not a new system implementation or a computer technical glitch. The most common factor is actually human error. Heres a spreadsheet from a law office. It shows customers, the legal services they bought, the service order number, how much they paid, and the payment method. Dirty data can be the result