csv may not always be the easiest with which to work. Even though many editing tools are available on the market, not all offer a easy tool. We created DocHub to make editing straightforward, no matter the file format. With DocHub, you can quickly and easily bind header in csv. On top of that, DocHub gives an array of other functionality such as document creation, automation and management, sector-compliant eSignature solutions, and integrations.
DocHub also allows you to save effort by producing document templates from documents that you use frequently. On top of that, you can take advantage of our numerous integrations that enable you to connect our editor to your most utilized applications easily. Such a tool makes it quick and easy to deal with your files without any delays.
DocHub is a useful tool for individual and corporate use. Not only does it offer a all-purpose collection of tools for document creation and editing, and eSignature integration, but it also has an array of tools that prove useful for producing complex and simple workflows. Anything added to our editor is saved risk-free in accordance with major field criteria that shield users' data.
Make DocHub your go-to option and streamline your document-driven workflows easily!
hey guys uh in this video iamp;#39;m gonna show you how to merge a few csv files into one without taking their header row so here we got uh three csv files that iamp;#39;m gonna quickly show you how they look like file one thatamp;#39;s the first header row and then three other rows file two as well they got the same header row by the way file three as well so what i can do is i can copy the first file into new file for example letamp;#39;s call it end and then i can write a little for loop and take other files files file two and file three because we already got file one and then do uh do take the rows that they are larger than one because weamp;#39;re gonna skip the first row thatamp;#39;s it and then iamp;#39;m gonna append it to the file we already had ncsv and there we and we are done okay there you go you get the new file and that csv here as you can see we got the first um header row and then the others okay thank you for watching