Remote Data Mining And Management Job In Data Science And Analytics

Need macro for Word .docx

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I need a macro for Word .docx files which populates reoccurring fields.
For example, I have 7 separate .docs files which all contain the clients name, address, and phone #.
I need a master template where I can type this info in ONCE. Then run (execute) a macro to populate this data in all corresponding fields in all 7 .docx files.

2 of the .docx files already have macros, which I have uploaded for your review. However, I need you to write the remaining macros. Also, I will need guidance on how to execute the macros. Obviously I dont know anything about macros, other than they are huge time saver, if designed correctly.

Overall, this should be a relatively simple project for someone who knows how to create macros within Word .docx files. Thanks in advance for your interest.
About the recuiter
Member since Mar 14, 2020
Rohit Limaye
from Paraiba, Brazil

Skills & Expertise Required

Data Science & Analytics Data Mining & Management 

Open for hiringApply before - Jun 9, 2024

Work from Anywhere

40 hrs / week

Fixed Type

Remote Job

$47.90

Cost

Offer to work on this project closes in 30 days!
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