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| DataMiner | ||||||
Take Your Research to the Next Level
Converted data enables you to more easily sort, search, and group information, and perform mail-merges.
DataMiner® reduces time spent for researching or marketing by helping you refine text data into
records. DataMiner does this by parsing text to convert your text file into a tabular (row and column) format.
DataMiner is the ideal application for converting text style documents into a more workable tabular format. Any Text or RTF file that has repeating elements can be converted. DataMiner even has special features for converting multiple documents into one file. DataMiner is also an excellent tool for researchers or anyone wanting to consolidate text based documentation into a more workable tabular format. DataMiner is the industrial strength software utility for data mining and text parsing. DataMiner is designed to run on IBM based platforms using a 32-bit operating system (MS Windows95, 98, NT). Through a single form interface, DataMiner allows you to edit and identify elements of text from your Text or RTF file. These elements are used to recognize patterns which identify fields and records (row and column data). DataMiner extracts field and record data from raw text files by reading each line of text in your document. DataMiner then converts the data into a tabular format. DataMiner converts into the DataMiner following format(s) of your choice:
Once your file has been converted, you can sort data, find data, perform mail merges, create databases and much more. This saves you time and increases your productivity. Concise, easy to understand instructions will help you get your document converted fast. DataMiner is available as an Electronic Download only. Search HALLoGRAM || Request More Information CALL TOLL FREE 1-866-340-3404 |
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©2000 HALLoGRAM Publishing, Aurora CO. All Rights Reserved All products mentioned in this site are trademarks of their respective owners Prices are subject to change without notice dmcakegrim | ||||||