Editing NEIS is fast and straightforward using DocHub. Skip installing software to your computer and make adjustments with our drag and drop document editor in a few fast steps. DocHub is more than just a PDF editor. Users praise it for its ease of use and robust features that you can use on desktop and mobile devices. You can annotate documents, generate fillable forms, use eSignatures, and send documents for completion to other people. All of this, combined with a competitive price, makes DocHub the perfect option to clean up address in NEIS files effortlessly.
Make your next tasks even easier by turning your documents into reusable web templates. Don't worry about the protection of your data, as we securely keep them in the DocHub cloud.
so weamp;#39;re going to look at basically using FME for purely attribute data here and in the first case weamp;#39;re going to look at address clean up so the problem that Andrew had is that he was working for campaign electoral campaign in France and the data came in and he had to put it into the nation builder program and it is a very defined schema and he have to have everything in the right order and the attributes were all over the place and they were kind of mixed up so the problem was how do you define how do you relate a specific data value to a schema column or name and and associate that so what we did here is we just used a few simple transformers we just used a string search or attribute splitter an attribute manager and based upon those things and using a regular expression we were able to first find a key pattern within the data within the strings themselves so what we did is found the postal code pattern in there and then what we did is applied that pattern to a patte