Not all formats, such as csv, are created to be quickly edited. Even though many features can help us modify all file formats, no one has yet created an actual all-size-fits-all tool.
DocHub provides a straightforward and efficient tool for editing, handling, and storing documents in the most widely used formats. You don't have to be a tech-savvy person to blot out detail in csv or make other tweaks. DocHub is robust enough to make the process easy for everyone.
Our feature enables you to modify and edit documents, send data back and forth, create interactive forms for data gathering, encrypt and shield paperwork, and set up eSignature workflows. Moreover, you can also generate templates from documents you utilize frequently.
You’ll find plenty of additional tools inside DocHub, including integrations that let you link your csv file to a wide array of business applications.
DocHub is a straightforward, cost-effective option to deal with documents and simplify workflows. It offers a wide array of features, from generation to editing, eSignature solutions, and web form building. The program can export your documents in multiple formats while maintaining maximum protection and following the highest data safety requirements.
Give DocHub a go and see just how easy your editing transaction can be.
DB in 60 seconds I wanted to ingest a bunch of CSV files directly from Jeff sackmanamp;#39;s awesome tennis data set on GitHub now duck DB supports Wild Card matching files but we canamp;#39;t use that here as itamp;#39;s not a file system so we just get back at 404. instead we need to create a list of all the file names and pass those to the read CSV function lucky for us the names are all in the format ADP underscore matches underscore yeah so if we can create a list of years then weamp;#39;ll be golden the generate series function lets us do this so you can see here we can pass in 1968 to 2023 and we get back a list of all those years we can then use the list transform function pass in the generate series and then we get a Lambda where we can map over that and construct some file names finally letamp;#39;s put all that together and create a table using the read CSV Auto function and then if we give it a few seconds we are done