EarTimeWrangler | Tabular Document Wrangler | Data Labeling library
kandi X-RAY | EarTimeWrangler Summary
kandi X-RAY | EarTimeWrangler Summary
Tabular Document Wrangler. The code parses data from several types of poorly formatted tabular data formats, including pdf and csv files – on ministerial meetings between ministers and lobbyists. It forms a central part of 'Ear-time with the Cabinet: Ministerial meetings as vehicles for lobbying', which is a joint collaboration between the department of Sociology, University of Oxford and Transparency International UK.
Support
Quality
Security
License
Reuse
Top functions reviewed by kandi - BETA
- Process csv file
- Insert a source file into the source table
- Add a file to the database
- Identify a csv file
- Runs the meet_data task
- Export a table to a CSV file
- Create meeting table
- Exports a csv file to a csv file
- Tries to parse a pdf file
- Return a list of layout layouts
- Extract characters from a pdfminer element
- Post data to the calais server
- Save daily requests count
- Compact rects intersect
- Returns a list of groups that intersect the given groups
- Exports a csv file to CSV
- Identify the table type
- Setup logging
- Get the next header in the csvfile
- Create the attendances table
- Return a list of entities that match the query string
- Commiteting teams
- Draw character groups
- Draw a set of groups
EarTimeWrangler Key Features
EarTimeWrangler Examples and Code Snippets
Community Discussions
Trending Discussions on Data Labeling
QUESTION
I'm trying to make a data labeling in a table, and I need to do it in such a way that, in each row, the index is repeated, however, that in each column there is another Enum class.
What I've done so far is make this representation with the same enumerator class.
A solution using the column separately as a list would also be possible. But what would be the best way to resolve this?
...ANSWER
Answered 2021-Dec-30 at 13:57Instead of using Enum
you can use a dict
mapping. You can avoid loops if you flatten your dataframe:
QUESTION
I have a dataframe that contains a column that includes strings separeted with semi-colons and it is followed by a space. But unfortunately in some of the strings there is a semi-colon that is not followed by a space.
In this case, This is what i'd like to do: If there is a space after the semi-colon we do not need a change. However if there are letters before and after the semi-colon, we should change semi-colon with space
i have this:
...ANSWER
Answered 2020-Nov-16 at 07:24Try something like:
QUESTION
Objective: Generate a down-sampled FileDataset using random sampling from a larger FileDataset to be used in a Data Labeling project.
Details: I have a large FileDataset containing millions of images. Each filename contains details about the 'section' it was taken from. A section may contain thousands of images. I want to randomly select a specific number of sections and all the images associated with those sections. Then register the sample as a new dataset.
Please note that the code below is not a direct copy and paste as there are elements such as filepaths and variables that have been renamed for confidentiality reasons.
...ANSWER
Answered 2020-Oct-27 at 22:39Is the data behind virtual network by any chance?
Community Discussions, Code Snippets contain sources that include Stack Exchange Network
Vulnerabilities
No vulnerabilities reported
Install EarTimeWrangler
You can use EarTimeWrangler like any standard Python library. You will need to make sure that you have a development environment consisting of a Python distribution including header files, a compiler, pip, and git installed. Make sure that your pip, setuptools, and wheel are up to date. When using pip it is generally recommended to install packages in a virtual environment to avoid changes to the system.
Support
Reuse Trending Solutions
Find, review, and download reusable Libraries, Code Snippets, Cloud APIs from over 650 million Knowledge Items
Find more librariesStay Updated
Subscribe to our newsletter for trending solutions and developer bootcamps
Share this Page