Data Files
TSG suggested file format for experiment data
The TSG suggests a common file format for storing experimental data. Adhering to this format whenever practical makes it easier to re-use files and tools. The file is plain text for easy inspection and manipulation. The file format is a tab-separated values (tsv) file with the following specifications:
File
- File encoding is ASCII or UTF-8.
- The file contains no byte order mark (BOM) or other magic number. This makes it ASCII compatible.
Lines
- Lines are separated by the \r\n line delimiter for better compatibility between operating systems.
- The line delimiter should also be added after the last line. This simplifies stream reading since all records (lines) are terminated. This allows for the use of a readline() function for acquiring a line.
- The first line contains a header with column/field names.
Fields
- Fields are separated by the tab field delimiter, because they rarely occur in texts. This allows for the use of comma's and semicolons in sentences without using an escape character.
- The field delimiter should not be added after each line's last field. This allows for the use of a split() function for parsing a line.
- The last field in a line must not be empty, because it will show to parsers that the previous rule was obeyed.
- Fields are never surrounded by a quoting character.
- White space before or after field delimiters are considered part of a field.
- There is no defined escape character. If your data can contain tabs or newlines, use a different field delimiter or file format.
Data
- For numbers the decimal separator is a dot, not a comma. There is no thousands separator.
Example
An example of what a file in this format may look like:
User ID Hair color Response time 1 brown 1.4 2 blond 1230.434 3 brown 0.399
An example file can be downloaded here File:Example.zip (sorry, it is zipped).
Parsing
Importing such files can be done in many languages:
Python Standard Library
import csv with open('example.tsv', 'rb') as csvfile: reader = csv.reader(csvfile, delimiter='\t', quoting=csv.QUOTE_NONE) for row in reader: print(', '.join(row))
or with header extraction
import csv with open('example.tsv', 'rb') as csvfile: reader = csv.DictReader(csvfile, delimiter='\t', quoting=csv.QUOTE_NONE) print(', '.join(reader.fieldnames)) # print header for row in reader: print(', '.join([row[key] for key in reader.fieldnames]))
Note that when using Python 2 the field content will remain UTF-8 encoded (type=str). In Python3 strings will unicode (type=string).
Python Pandas
Pandas can interpret column type. You will have to store it separately or hardcode it.
import pandas as pd d = pd.read_csv('example.tsv', delimiter='\t', skip_blank_lines=False, quoting=csv.QUOTE_NONE)
GNU R
d <- read.csv("example.tsv", head=TRUE, sep = "\t")
Alternatives
Data can be saved in a lot of file formats. If there is no reason to do otherwise, we prefer delimited files with the options shown in bold. Alternative options are also shown.
file extension | tsv | csv | dat | txt | |
file encoding | ascii | UTF-8 | UTF-16BE | UTF-16LE | UCS-4/UTF-32 |
magic number | None | <BOM> | |||
line delimiter | \n | \r | \r\n | ||
line delimiter after last line | no | yes | |||
field delimiter | <tab> | , | ; | ||
field delimiter after last field | no | yes | |||
quoting character | None | " | ' | ||
escape qc by doubling | no | yes | |||
escape character | none | \ | |||
first line | contains header | contains data | |||
last field in line | must not be empty | may be empty | |||
whitespace following delimiter | part of field | not part of field | |||
decimal separator | . | , | |||
thousands separator | none | . | ␣ | U+2009 |
Note that tab characters and newlines cannot be present in field content.