Rainbow Query Language
Project description
RBQL is a technology for (not only) CSV files processing. It provides SQL-like language that supports SELECT queries with Python expressions.
RBQL core module is very generic and can process all kind of objects and record formats, but most popular RBQL implementation works with CSV files.
Using RBQL as Python library
If you want to use rbql module as a python library for your own app - please read API Documentation
Using RBQL as CLI App
Installation:
$ pip install rbql
Usage example (non-interactive mode):
$ rbql-py --query "select a1, a2 order by a1" --delim , < input.csv
Usage example (interactive mode):
In interactive mode rbql-py will show input table preview so it is easier to type SQL-like query.
$ rbql-py --input input.csv --output result.csv
Main Features
- Use Python expressions inside SELECT, UPDATE, WHERE and ORDER BY statements
- Result set of any query immediately becomes a first-class table on it's own
- Supports input tables with inconsistent number of fields per record
- Output records appear in the same order as in input unless ORDER BY is provided
- Each record has a unique NR (record number) identifier
- Supports all main SQL keywords
- Supports aggregate functions and GROUP BY queries
- Provides some new useful query modes which traditional SQL engines do not have
- Supports both TOP and LIMIT keywords
- Supports user-defined functions (UDF)
- Works out of the box, no external dependencies
Limitations:
- RBQL doesn't support nested queries, but they can be emulated with consecutive queries
- Number of tables in all JOIN queries is always 2 (input table and join table), use consecutive queries to join 3 or more tables
Supported SQL Keywords (Keywords are case insensitive)
- SELECT
- UPDATE
- WHERE
- ORDER BY ... [ DESC | ASC ]
- [ LEFT | INNER ] JOIN
- DISTINCT
- GROUP BY
- TOP N
- LIMIT N
All keywords have the same meaning as in SQL queries. You can check them online
RBQL variables
RBQL for CSV files provides the following variables which you can use in your queries:
- a1, a2,..., a{N}
Variable type: string
Description: value of i-th field in the current record in input table - b1, b2,..., b{N}
Variable type: string
Description: value of i-th field in the current record in join table B - NR
Variable type: integer
Description: Record number (1-based) - NF
Variable type: integer
Description: Number of fields in the current record - a.name, b.Person_age, ... a.{Good_alphanumeric_column_name}
Variable type: string
Description: Value of the field referenced by it's "name". You can use this notation if the field in the first (header) CSV line has a "good" alphanumeric name - a["object id"], a['9.12341234'], b["%$ !! 10 20"] ... a["Arbitrary column name!"]
Variable type: string
Description: Value of the field referenced by it's "name". You can use this notation to reference fields by arbitrary values in the first (header) CSV line, even when there is no header at all
Notes:
- You can mix all variable types in a single query, example:
select a1, b2 JOIN /path/to/b.csv ON a['Item Id'] == b.Identifier WHERE NR > 1 and int(a.Weight) * 100 > int(b["weight of the item"])
- Referencing fields by header names does not automatically skip the header line (you can use
where NR > 1
trick to skip it) - If you want to use RBQL as a library for your own app you can define your own custom variables and do not have to support the above mentioned CSV-related variables.
UPDATE statement
UPDATE query produces a new table where original values are replaced according to the UPDATE expression, so it can also be considered a special type of SELECT query. This prevents accidental data loss from poorly written queries.
UPDATE SET is synonym to UPDATE, because in RBQL there is no need to specify the source table.
Aggregate functions and queries
RBQL supports the following aggregate functions, which can also be used with GROUP BY keyword:
COUNT, ARRAY_AGG, MIN, MAX, SUM, AVG, VARIANCE, MEDIAN
Limitation: aggregate functions inside Python expressions are not supported. Although you can use expressions inside aggregate functions.
E.g. MAX(float(a1) / 1000)
- valid; MAX(a1) / 1000
- invalid.
There is a workaround for the limitation above for ARRAY_AGG function which supports an optional parameter - a callback function that can do something with the aggregated array. Example:
select a2, ARRAY_AGG(a1, lambda v: sorted(v)[:5]) group by a2
JOIN statements
Join table B can be referenced either by it's file path or by it's name - an arbitary string which user should provide before executing the JOIN query.
RBQL supports STRICT LEFT JOIN which is like LEFT JOIN, but generates an error if any key in left table "A" doesn't have exactly one matching key in the right table "B".
Limitation: JOIN statements can't contain Python expressions and must have the following form: <JOIN_KEYWORD> (/path/to/table.tsv | table_name ) ON a... == b... [AND a... == b... [AND ... ]]
SELECT EXCEPT statement
SELECT EXCEPT can be used to select everything except specific columns. E.g. to select everything but columns 2 and 4, run: SELECT * EXCEPT a2, a4
Traditional SQL engines do not support this query mode.
UNNEST() operator
UNNEST(list) takes a list/array as an argument and repeats the output record multiple times - one time for each value from the list argument.
Example: SELECT a1, UNNEST(a2.split(';'))
LIKE() function
RBQL does not support LIKE operator, instead it provides "like()" function which can be used like this:
SELECT * where like(a1, 'foo%bar')
User Defined Functions (UDF)
RBQL supports User Defined Functions
You can define custom functions and/or import libraries in a special file:
~/.rbql_init_source.py
- for Python
Examples of RBQL queries
With Python expressions
select top 100 a1, int(a2) * 10, len(a4) where a1 == "Buy" order by int(a2) desc
select * order by random.random() where NR > 1
- skip header record and random sortselect len(a.vehicle_price) / 10, a2 where NR > 1 and a['Vehicle type'] in ["car", "plane", "boat"] limit 20
- referencing columns by names from header record, skipping the header and using Python's "in" to emulate SQL's "in"update set a3 = 'NPC' where a3.find('Non-playable character') != -1
select NR, *
- enumerate records, NR is 1-basedselect * where re.match(".*ab.*", a1) is not None
- select entries where first column has "ab" patternselect a1, b1, b2 inner join ./countries.txt on a2 == b1 order by a1, a3
- example of join queryselect MAX(a1), MIN(a1) where a.Name != 'John' group by a2, a3
- example of aggregate queryselect *a1.split(':')
- Using Python3 unpack operator to split one column into many. Do not try this with other SQL engines!
FAQ
How do I skip header record in CSV files?
You can use the following trick: add ... where NR > 1 ...
to your query
And if you are doing math operation you can modify your query like this, example:
select int(a3) * 1000, a2
-> select int(a3) * 1000 if NR > 1 else a3, a2
How does RBQL work?
RBQL parses SQL-like user query, generates new Python code and executes it.
Explanation of simplified Python version of RBQL algorithm by example.
- User enters the following query, which is stored as a string Q:
SELECT a3, int(a4) + 100, len(a2) WHERE a1 != 'SELL'
- RBQL replaces all
a{i}
substrings in the query string Q witha[{i - 1}]
substrings. The result is the following string:
Q = "SELECT a[2], int(a[3]) + 100, len(a[1]) WHERE a[0] != 'SELL'"
- RBQL searches for "SELECT" and "WHERE" keywords in the query string Q, throws the keywords away, and puts everything after these keywords into two variables S - select part and W - where part, so we will get:
S = "a[2], int(a[3]) + 100, len(a[1])"
W = "a[0] != 'SELL'"
- RBQL has static template script which looks like this:
for line in sys.stdin:
a = line.rstrip('\n').split(',')
if %%%W_Expression%%%:
out_fields = [%%%S_Expression%%%]
print ','.join([str(v) for v in out_fields])
- RBQL replaces
%%%W_Expression%%%
with W and%%%S_Expression%%%
with S so we get the following script:
for line in sys.stdin:
a = line.rstrip('\n').split(',')
if a[0] != 'SELL':
out_fields = [a[2], int(a[3]) + 100, len(a[1])]
print ','.join([str(v) for v in out_fields])
- RBQL runs the patched script against user's data file (real RBQL implementation calls "exec" in Python):
./tmp_script.py < data.tsv > result.tsv
Result set of the original query (SELECT a3, int(a4) + 100, len(a2) WHERE a1 != 'SELL'
) is in the "result.tsv" file.
Adding support of TOP/LIMIT keywords is trivial and to support "ORDER BY" we can introduce an intermediate array.
References
- RBQL: Official Site
- rbql-js library and CLI App for Node.js - npm
- Rainbow CSV extension with integrated RBQL in Visual Studio Code
- Rainbow CSV extension with integrated RBQL in Vim
- Rainbow CSV extension with integrated RBQL in Sublime Text 3
- Rainbow CSV extension with integrated RBQL in Atom
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.