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22 KiB
Markdown
777 lines
22 KiB
Markdown
---
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language: kdb+
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contributors:
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- ["Matt Doherty", "https://github.com/picodoc"]
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- ["Jonny Press", "https://github.com/jonnypress"]
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filename: learnkdb.q
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---
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The q language and its database component kdb+ were developed by Arthur Whitney
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and released by Kx systems in 2003. q is a descendant of APL and as such is
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very terse and a little strange looking for anyone from a "C heritage" language
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background. Its expressiveness and vector oriented nature make it well suited
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to performing complex calculations on large amounts of data (while also
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encouraging some amount of [code
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golf](https://en.wikipedia.org/wiki/Code_golf)). The fundamental structure in
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the language is not the object but instead the list, and tables are built as
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collections of lists. This means - unlike most traditional RDBMS systems -
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tables are column oriented. The language has both an in-memory and on-disk
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database built in, giving a large amount of flexibility. kdb+ is most widely
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used in the world of finance to store, analyze, process and retrieve large
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time-series data sets.
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The terms *q* and *kdb+* are usually used interchangeably, as the two are not
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separable so this distinction is not really useful.
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All Feedback welcome! You can reach me at matt.doherty@aquaq.co.uk, or Jonny
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at jonny.press@aquaq.co.uk
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To learn more about kdb+ you can join the [Personal kdb+](https://groups.google.com/forum/#!forum/personal-kdbplus) or [TorQ kdb+](https://groups.google.com/forum/#!forum/kdbtorq) group.
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```
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/ Single line comments start with a forward-slash
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/ These can also be used in-line, so long as at least one whitespace character
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/ separates it from text to the left
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/
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A forward-slash on a line by itself starts a multiline comment
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and a backward-slash on a line by itself terminates it
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\
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/ Run this file in an empty directory
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////////////////////////////////////
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// Basic Operators and Datatypes //
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////////////////////////////////////
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/ We have integers, which are 8 byte by default
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3 / => 3
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/ And floats, also 8 byte as standard. Trailing f distinguishes from int
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3.0 / => 3f
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/ 4 byte numerical types can also be specified with trailing chars
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3i / => 3i
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3.0e / => 3e
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/ Math is mostly what you would expect
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1+1 / => 2
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8-1 / => 7
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10*2 / => 20
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/ Except division, which uses percent (%) instead of forward-slash (/)
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35%5 / => 7f (the result of division is always a float)
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/ For integer division we have the keyword div
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4 div 3 / => 1
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/ Modulo also uses a keyword, since percent (%) is taken
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4 mod 3 / => 1
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/ And exponentiation...
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2 xexp 4 / => 16
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/ ...and truncating...
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floor 3.14159 / => 3
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/ ...getting the absolute value...
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abs -3.14159 / => 3.14159
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/ ...and many other things
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/ see http://code.kx.com/q/ref/card/ for more
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/ q has no operator precedence, everything is evaluated right to left
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/ so results like this might take some getting used to
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2*1+1 / => 4 / (no operator precedence tables to remember!)
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/ Precedence can be modified with parentheses (restoring the 'normal' result)
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(2*1)+1 / => 3
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/ Assignment uses colon (:) instead of equals (=)
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/ No need to declare variables before assignment
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a:3
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a / => 3
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/ Variables can also be assigned in-line
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/ this does not affect the value passed on
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c:3+b:2+a:1 / (data "flows" from right to left)
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a / => 1
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b / => 3
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c / => 6
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/ In-place operations are also as you might expect
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a+:2
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a / => 3
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/ There are no "true" or "false" keywords in q
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/ boolean values are indicated by the bit value followed by b
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1b / => true value
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0b / => false value
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/ Equality comparisons use equals (=) (since we don't need it for assignment)
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1=1 / => 1b
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2=1 / => 0b
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/ Inequality uses <>
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1<>1 / => 0b
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2<>1 / => 1b
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/ The other comparisons are as you might expect
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1<2 / => 1b
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1>2 / => 0b
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2<=2 / => 1b
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2>=2 / => 1b
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/ Comparison is not strict with regard to types...
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42=42.0 / => 1b
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/ ...unless we use the match operator (~)
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/ which only returns true if entities are identical
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42~42.0 / => 0b
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/ The not operator returns true if the underlying value is zero
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not 0b / => 1b
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not 1b / => 0b
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not 42 / => 0b
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not 0.0 / => 1b
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/ The max operator (|) reduces to logical "or" for bools
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42|2.0 / => 42f
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1b|0b / => 1b
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/ The min operator (&) reduces to logical "and" for bools
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42&2.0 / => 2f
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1b&0b / => 0b
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/ q provides two ways to store character data
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/ Chars in q are stored in a single byte and use double-quotes (")
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ch:"a"
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/ Strings are simply lists of char (more on lists later)
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str:"This is a string"
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/ Escape characters work as normal
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str:"This is a string with \"quotes\""
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/ Char data can also be stored as symbols using backtick (`)
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symbol:`sym
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/ Symbols are NOT LISTS, they are an enumeration
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/ the q process stores internally a vector of strings
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/ symbols are enumerated against this vector
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/ this can be more space and speed efficient as these are constant width
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/ The string function converts to strings
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string `symbol / => "symbol"
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string 1.2345 / => "1.2345"
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/ q has a time type...
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t:01:00:00.000
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/ date type...
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d:2015.12.25
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/ and a datetime type (among other time types)
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dt:2015.12.25D12:00:00.000000000
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/ These support some arithmetic for easy manipulation
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dt + t / => 2015.12.25D13:00:00.000000000
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t - 00:10:00.000 / => 00:50:00.000
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/ and can be decomposed using dot notation
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d.year / => 2015i
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d.mm / => 12i
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d.dd / => 25i
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/ see http://code.kx.com/q4m3/2_Basic_Data_Types_Atoms/#25-temporal-data for more
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/ q also has an infinity value so div by zero will not throw an error
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1%0 / => 0w
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-1%0 / => -0w
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/ And null types for representing missing values
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0N / => null int
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0n / => null float
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/ see http://code.kx.com/q4m3/2_Basic_Data_Types_Atoms/#27-nulls for more
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/ q has standard control structures
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/ if is as you might expect (; separates the condition and instructions)
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if[1=1;a:"hi"]
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a / => "hi"
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/ if-else uses $ (and unlike if, returns a value)
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$[1=0;a:"hi";a:"bye"] / => "bye"
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a / => "bye"
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/ if-else can be extended to multiple clauses by adding args separated by ;
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$[1=0;a:"hi";0=1;a:"bye";a:"hello again"]
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a / => "hello again"
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////////////////////////////////////
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//// Data Structures ////
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////////////////////////////////////
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/ q is not an object oriented language
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/ instead complexity is built through ordered lists
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/ and mapping them into higher order structures: dictionaries and tables
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/ Lists (or arrays if you prefer) are simple ordered collections
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/ they are defined using parentheses () and semi-colons (;)
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(1;2;3) / => 1 2 3
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(-10.0;3.14159e;1b;`abc;"c")
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/ => -10f
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/ => 3.14159e
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/ => 1b
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/ => `abc
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/ => "c" (mixed type lists are displayed on multiple lines)
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((1;2;3);(4;5;6);(7;8;9))
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/ => 1 2 3
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/ => 4 5 6
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/ => 7 8 9
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/ Lists of uniform type can also be defined more concisely
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1 2 3 / => 1 2 3
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`list`of`syms / => `list`of`syms
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`list`of`syms ~ (`list;`of;`syms) / => 1b
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/ List length
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count (1;2;3) / => 3
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count "I am a string" / => 13 (string are lists of char)
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/ Empty lists are defined with parentheses
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l:()
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count l / => 0
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/ Simple variables and single item lists are not equivalent
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/ parentheses syntax cannot create a single item list (they indicate precedence)
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(1)~1 / => 1b
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/ single item lists can be created using enlist
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singleton:enlist 1
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/ or appending to an empty list
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singleton:(),1
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1~(),1 / => 0b
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/ Speaking of appending, comma (,) is used for this, not plus (+)
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1 2 3,4 5 6 / => 1 2 3 4 5 6
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"hello ","there" / => "hello there"
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/ Indexing uses square brackets []
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l:1 2 3 4
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l[0] / => 1
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l[1] / => 2
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/ indexing out of bounds returns a null value rather than an error
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l[5] / => 0N
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/ and indexed assignment
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l[0]:5
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l / => 5 2 3 4
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/ Lists can also be used for indexing and indexed assignment
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l[1 3] / => 2 4
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l[1 3]: 1 3
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l / => 5 1 3 3
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/ Lists can be untyped/mixed type
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l:(1;2;`hi)
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/ but once they are uniformly typed, q will enforce this
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l[2]:3
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l / => 1 2 3
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l[2]:`hi / throws a type error
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/ this makes sense in the context of lists as table columns (more later)
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/ For a nested list we can index at depth
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l:((1;2;3);(4;5;6);(7;8;9))
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l[1;1] / => 5
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/ We can elide the indexes to return entire rows or columns
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l[;1] / => 2 5 8
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l[1;] / => 4 5 6
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/ All the functions mentioned in the previous section work on lists natively
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1+(1;2;3) / => 2 3 4 (single variable and list)
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(1;2;3) - (3;2;1) / => -2 0 2 (list and list)
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/ And there are many more that are designed specifically for lists
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avg 1 2 3 / => 2f
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sum 1 2 3 / => 6
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sums 1 2 3 / => 1 3 6 (running sum)
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last 1 2 3 / => 3
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1 rotate 1 2 3 / => 2 3 1
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/ etc.
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/ Using and combining these functions to manipulate lists is where much of the
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/ power and expressiveness of the language comes from
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/ Take (#), drop (_) and find (?) are also useful working with lists
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l:1 2 3 4 5 6 7 8 9
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l:1+til 9 / til is a useful shortcut for generating ranges
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/ take the first 5 elements
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5#l / => 1 2 3 4 5
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/ drop the first 5
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5_l / => 6 7 8 9
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/ take the last 5
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-5#l / => 5 6 7 8 9
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/ drop the last 5
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-5_l / => 1 2 3 4
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/ find the first occurrence of 4
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l?4 / => 3
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l[3] / => 4
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/ Dictionaries in q are a generalization of lists
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/ they map a list to another list (of equal length)
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/ the bang (!) symbol is used for defining a dictionary
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d:(`a;`b;`c)!(1;2;3)
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/ or more simply with concise list syntax
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d:`a`b`c!1 2 3
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/ the keyword key returns the first list
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key d / => `a`b`c
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/ and value the second
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value d / => 1 2 3
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/ Indexing is identical to lists
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/ with the first list as a key instead of the position
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d[`a] / => 1
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d[`b] / => 2
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/ As is assignment
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d[`c]:4
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d
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/ => a| 1
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/ => b| 2
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/ => c| 4
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/ Arithmetic and comparison work natively, just like lists
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e:(`a;`b;`c)!(2;3;4)
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d+e
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/ => a| 3
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/ => b| 5
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/ => c| 8
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d-2
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/ => a| -1
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/ => b| 0
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/ => c| 2
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d > (1;1;1)
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/ => a| 0
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/ => b| 1
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/ => c| 1
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/ And the take, drop and find operators are remarkably similar too
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`a`b#d
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/ => a| 1
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/ => b| 2
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`a`b _ d
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/ => c| 4
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d?2
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/ => `b
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/ Tables in q are basically a subset of dictionaries
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/ a table is a dictionary where all values must be lists of the same length
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/ as such tables in q are column oriented (unlike most RDBMS)
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/ the flip keyword is used to convert a dictionary to a table
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/ i.e. flip the indices
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flip `c1`c2`c3!(1 2 3;4 5 6;7 8 9)
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/ => c1 c2 c3
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/ => --------
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/ => 1 4 7
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/ => 2 5 8
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/ => 3 6 9
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/ we can also define tables using this syntax
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t:([]c1:1 2 3;c2:4 5 6;c3:7 8 9)
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t
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/ => c1 c2 c3
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/ => --------
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/ => 1 4 7
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/ => 2 5 8
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/ => 3 6 9
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/ Tables can be indexed and manipulated in a similar way to dicts and lists
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t[`c1]
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/ => 1 2 3
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/ table rows are returned as dictionaries
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t[1]
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/ => c1| 2
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/ => c2| 5
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/ => c3| 8
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/ meta returns table type information
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meta t
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/ => c | t f a
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/ => --| -----
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/ => c1| j
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/ => c2| j
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/ => c3| j
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/ now we see why type is enforced in lists (to protect column types)
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t[1;`c1]:3
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t[1;`c1]:3.0 / throws a type error
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/ Most traditional databases have primary key columns
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/ in q we have keyed tables, where one table containing key columns
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/ is mapped to another table using bang (!)
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k:([]id:1 2 3)
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k!t
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/ => id| c1 c2 c3
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/ => --| --------
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/ => 1 | 1 4 7
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/ => 2 | 3 5 8
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/ => 3 | 3 6 9
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/ We can also use this shortcut for defining keyed tables
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kt:([id:1 2 3]c1:1 2 3;c2:4 5 6;c3:7 8 9)
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/ Records can then be retrieved based on this key
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kt[1]
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/ => c1| 1
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/ => c2| 4
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/ => c3| 7
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kt[`id!1]
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/ => c1| 1
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/ => c2| 4
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/ => c3| 7
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////////////////////////////////////
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//////// Functions ////////
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////////////////////////////////////
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/ In q the function is similar to a mathematical map, mapping inputs to outputs
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/ curly braces {} are used for function definition
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/ and square brackets [] for calling functions (just like list indexing)
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/ a very minimal function
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f:{x+x}
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f[2] / => 4
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/ Functions can be anonymous and called at point of definition
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{x+x}[2] / => 4
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/ By default the last expression is returned
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/ colon (:) can be used to specify return
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{x+x}[2] / => 4
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{:x+x}[2] / => 4
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/ semi-colon (;) separates expressions
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{r:x+x;:r}[2] / => 4
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/ Function arguments can be specified explicitly (separated by ;)
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{[arg1;arg2] arg1+arg2}[1;2] / => 3
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/ or if omitted will default to x, y and z
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{x+y+z}[1;2;3] / => 6
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/ Built in functions are no different, and can be called the same way (with [])
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+[1;2] / => 3
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<[1;2] / => 1b
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/ Functions are first class in q, so can be returned, stored in lists etc.
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{:{x+y}}[] / => {x+y}
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(1;"hi";{x+y})
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/ => 1
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/ => "hi"
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/ => {x+y}
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/ There is no overloading and no keyword arguments for custom q functions
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/ however using a dictionary as a single argument can overcome this
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/ allows for optional arguments or differing functionality
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d:`arg1`arg2`arg3!(1.0;2;"my function argument")
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{x[`arg1]+x[`arg2]}[d] / => 3f
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/ Functions in q see the global scope
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a:1
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{:a}[] / => 1
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/ However local scope obscures this
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a:1
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{a:2;:a}[] / => 2
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a / => 1
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/ Functions cannot see nested scopes (only local and global)
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{local:1;{:local}[]}[] / throws error as local is not defined in inner function
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/ A function can have one or more of its arguments fixed (projection)
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f:+[4]
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f[4] / => 8
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f[5] / => 9
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f[6] / => 10
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////////////////////////////////////
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////////// q-sql //////////
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////////////////////////////////////
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/ q has its own syntax for manipulating tables, similar to standard SQL
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/ This contains the usual suspects of select, insert, update etc.
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/ and some new functionality not typically available
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/ q-sql has two significant differences (other than syntax) to normal SQL:
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/ - q tables have well defined record orders
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/ - tables are stored as a collection of columns
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/ (so vectorized column operations are fast)
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/ a full description of q-sql is a little beyond the scope of this intro
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/ so we will just cover enough of the basics to get you going
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/ First define ourselves a table
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t:([]name:`Arthur`Thomas`Polly;age:35 32 52;height:180 175 160;sex:`m`m`f)
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/ equivalent of SELECT * FROM t
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select from t / (must be lower case, and the wildcard is not necessary)
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/ => name age height sex
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/ => ---------------------
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/ => Arthur 35 180 m
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/ => Thomas 32 175 m
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/ => Polly 52 160 f
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/ Select specific columns
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select name,age from t
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/ => name age
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/ => ----------
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/ => Arthur 35
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/ => Thomas 32
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/ => Polly 52
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/ And name them (equivalent of using AS in standard SQL)
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select charactername:name, currentage:age from t
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/ => charactername currentage
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/ => ------------------------
|
|
/ => Arthur 35
|
|
/ => Thomas 32
|
|
/ => Polly 52
|
|
|
|
/ This SQL syntax is integrated with the q language
|
|
/ so q can be used seamlessly in SQL statements
|
|
select name, feet:floor height*0.032, inches:12*(height*0.032) mod 1 from t
|
|
/ => name feet inches
|
|
/ => ------------------
|
|
/ => Arthur 5 9.12
|
|
/ => Thomas 5 7.2
|
|
/ => Polly 5 1.44
|
|
|
|
/ Including custom functions
|
|
select name, growth:{[h;a]h%a}[height;age] from t
|
|
/ => name growth
|
|
/ => ---------------
|
|
/ => Arthur 5.142857
|
|
/ => Thomas 5.46875
|
|
/ => Polly 3.076923
|
|
|
|
/ The where clause can contain multiple statements separated by commas
|
|
select from t where age>33,height>175
|
|
/ => name age height sex
|
|
/ => ---------------------
|
|
/ => Arthur 35 180 m
|
|
|
|
/ The where statements are executed sequentially (not the same as logical AND)
|
|
select from t where age<40,height=min height
|
|
/ => name age height sex
|
|
/ => ---------------------
|
|
/ => Thomas 32 175 m
|
|
select from t where (age<40)&(height=min height)
|
|
/ => name age height sex
|
|
/ => -------------------
|
|
|
|
/ The by clause falls between select and from
|
|
/ and is equivalent to SQL's GROUP BY
|
|
select avg height by sex from t
|
|
/ => sex| height
|
|
/ => ---| ------
|
|
/ => f | 160
|
|
/ => m | 177.5
|
|
|
|
/ If no aggreation function is specified, last is assumed
|
|
select by sex from t
|
|
/ => sex| name age height
|
|
/ => ---| -----------------
|
|
/ => f | Polly 52 160
|
|
/ => m | Thomas 32 175
|
|
|
|
/ Update has the same basic form as select
|
|
update sex:`male from t where sex=`m
|
|
/ => name age height sex
|
|
/ => ----------------------
|
|
/ => Arthur 35 180 male
|
|
/ => Thomas 32 175 male
|
|
/ => Polly 52 160 f
|
|
|
|
/ As does delete
|
|
delete from t where sex=`m
|
|
/ => name age height sex
|
|
/ => --------------------
|
|
/ => Polly 52 160 f
|
|
|
|
/ None of these sql operations are carried out in place
|
|
t
|
|
/ => name age height sex
|
|
/ => ---------------------
|
|
/ => Arthur 35 180 m
|
|
/ => Thomas 32 175 m
|
|
/ => Polly 52 160 f
|
|
|
|
/ Insert however is in place, it takes a table name, and new data
|
|
`t insert (`John;25;178;`m) / => ,3
|
|
t
|
|
/ => name age height sex
|
|
/ => ---------------------
|
|
/ => Arthur 35 180 m
|
|
/ => Thomas 32 175 m
|
|
/ => Polly 52 160 f
|
|
/ => John 25 178 m
|
|
|
|
/ Upsert is similar (but doesn't have to be in-place)
|
|
t upsert (`Chester;58;179;`m)
|
|
/ => name age height sex
|
|
/ => ----------------------
|
|
/ => Arthur 35 180 m
|
|
/ => Thomas 32 175 m
|
|
/ => Polly 52 160 f
|
|
/ => John 25 178 m
|
|
/ => Chester 58 179 m
|
|
|
|
/ it will also upsert dicts or tables
|
|
t upsert `name`age`height`sex!(`Chester;58;179;`m)
|
|
t upsert (`Chester;58;179;`m)
|
|
/ => name age height sex
|
|
/ => ----------------------
|
|
/ => Arthur 35 180 m
|
|
/ => Thomas 32 175 m
|
|
/ => Polly 52 160 f
|
|
/ => John 25 178 m
|
|
/ => Chester 58 179 m
|
|
|
|
/ And if our table is keyed
|
|
kt:`name xkey t
|
|
/ upsert will replace records where required
|
|
kt upsert ([]name:`Thomas`Chester;age:33 58;height:175 179;sex:`f`m)
|
|
/ => name | age height sex
|
|
/ => -------| --------------
|
|
/ => Arthur | 35 180 m
|
|
/ => Thomas | 33 175 f
|
|
/ => Polly | 52 160 f
|
|
/ => John | 25 178 m
|
|
/ => Chester| 58 179 m
|
|
|
|
/ There is no ORDER BY clause in q-sql, instead use xasc/xdesc
|
|
`name xasc t
|
|
/ => name age height sex
|
|
/ => ---------------------
|
|
/ => Arthur 35 180 m
|
|
/ => John 25 178 m
|
|
/ => Polly 52 160 f
|
|
/ => Thomas 32 175 m
|
|
|
|
/ Most of the standard SQL joins are present in q-sql, plus a few new friends
|
|
/ see http://code.kx.com/q4m3/9_Queries_q-sql/#99-joins
|
|
/ the two most important (commonly used) are lj and aj
|
|
|
|
/ lj is basically the same as SQL LEFT JOIN
|
|
/ where the join is carried out on the key columns of the left table
|
|
le:([sex:`m`f]lifeexpectancy:78 85)
|
|
t lj le
|
|
/ => name age height sex lifeexpectancy
|
|
/ => ------------------------------------
|
|
/ => Arthur 35 180 m 78
|
|
/ => Thomas 32 175 m 78
|
|
/ => Polly 52 160 f 85
|
|
/ => John 25 178 m 78
|
|
|
|
/ aj is an asof join. This is not a standard SQL join, and can be very powerful
|
|
/ The canonical example of this is joining financial trades and quotes tables
|
|
trades:([]time:10:01:01 10:01:03 10:01:04;sym:`msft`ibm`ge;qty:100 200 150)
|
|
quotes:([]time:10:01:00 10:01:01 10:01:01 10:01:03;
|
|
sym:`ibm`msft`msft`ibm; px:100 99 101 98)
|
|
aj[`time`sym;trades;quotes]
|
|
/ => time sym qty px
|
|
/ => ---------------------
|
|
/ => 10:01:01 msft 100 101
|
|
/ => 10:01:03 ibm 200 98
|
|
/ => 10:01:04 ge 150
|
|
/ for each row in the trade table, the last (prevailing) quote (px) for that sym
|
|
/ is joined on.
|
|
/ see http://code.kx.com/q4m3/9_Queries_q-sql/#998-as-of-joins
|
|
|
|
////////////////////////////////////
|
|
///// Extra/Advanced //////
|
|
////////////////////////////////////
|
|
|
|
////// Adverbs //////
|
|
/ You may have noticed the total lack of loops to this point
|
|
/ This is not a mistake!
|
|
/ q is a vector language so explicit loops (for, while etc.) are not encouraged
|
|
/ where possible functionality should be vectorized (i.e. operations on lists)
|
|
/ adverbs supplement this, modifying the behaviour of functions
|
|
/ and providing loop type functionality when required
|
|
/ (in q functions are sometimes referred to as verbs, hence adverbs)
|
|
/ the "each" adverb modifies a function to treat a list as individual variables
|
|
first each (1 2 3;4 5 6;7 8 9)
|
|
/ => 1 4 7
|
|
|
|
/ each-left (\:) and each-right (/:) modify a two-argument function
|
|
/ to treat one of the arguments and individual variables instead of a list
|
|
1 2 3 +\: 11 22 33
|
|
/ => 12 23 34
|
|
/ => 13 24 35
|
|
/ => 14 25 36
|
|
1 2 3 +/: 11 22 33
|
|
/ => 12 13 14
|
|
/ => 23 24 25
|
|
/ => 34 35 36
|
|
|
|
/ The true alternatives to loops in q are the adverbs scan (\) and over (/)
|
|
/ their behaviour differs based on the number of arguments the function they
|
|
/ are modifying receives. Here I'll summarise some of the most useful cases
|
|
/ a single argument function modified by scan given 2 args behaves like "do"
|
|
{x * 2}\[5;1] / => 1 2 4 8 16 32 (i.e. multiply by 2, 5 times)
|
|
{x * 2}/[5;1] / => 32 (using over only the final result is shown)
|
|
|
|
/ If the first argument is a function, we have the equivalent of "while"
|
|
{x * 2}\[{x<100};1] / => 1 2 4 8 16 32 64 128 (iterates until returns 0b)
|
|
{x * 2}/[{x<100};1] / => 128 (again returns only the final result)
|
|
|
|
/ If the function takes two arguments, and we pass a list, we have "for"
|
|
/ where the result of the previous execution is passed back into the next loop
|
|
/ along with the next member of the list
|
|
{x + y}\[1 2 3 4 5] / => 1 3 6 10 15 (i.e. the running sum)
|
|
{x + y}/[1 2 3 4 5] / => 15 (only the final result)
|
|
|
|
/ There are other adverbs and uses, this is only intended as quick overview
|
|
/ http://code.kx.com/q4m3/6_Functions/#67-adverbs
|
|
|
|
////// Scripts //////
|
|
/ q scripts can be loaded from a q session using the "\l" command
|
|
/ for example "\l learnkdb.q" will load this script
|
|
/ or from the command prompt passing the script as an argument
|
|
/ for example "q learnkdb.q"
|
|
|
|
////// On-disk data //////
|
|
/ Tables can be persisted to disk in several formats
|
|
/ the two most fundamental are serialized and splayed
|
|
t:([]a:1 2 3;b:1 2 3f)
|
|
`:serialized set t / saves the table as a single serialized file
|
|
`:splayed/ set t / saves the table splayed into a directory
|
|
|
|
/ the dir structure will now look something like:
|
|
/ db/
|
|
/ ├── serialized
|
|
/ └── splayed
|
|
/ ├── a
|
|
/ └── b
|
|
|
|
/ Loading this directory (as if it was as script, see above)
|
|
/ loads these tables into the q session
|
|
\l .
|
|
/ the serialized table will be loaded into memory
|
|
/ however the splayed table will only be mapped, not loaded
|
|
/ both tables can be queried using q-sql
|
|
select from serialized
|
|
/ => a b
|
|
/ => ---
|
|
/ => 1 1
|
|
/ => 2 2
|
|
/ => 3 3
|
|
select from splayed / (the columns are read from disk on request)
|
|
/ => a b
|
|
/ => ---
|
|
/ => 1 1
|
|
/ => 2 2
|
|
/ => 3 3
|
|
/ see http://code.kx.com/q4m3/14_Introduction_to_Kdb+/ for more
|
|
|
|
////// Frameworks //////
|
|
/ kdb+ is typically used for data capture and analysis.
|
|
/ This involves using an architecture with multiple processes
|
|
/ working together. kdb+ frameworks are available to streamline the setup
|
|
/ and configuration of this architecture and add additional functionality
|
|
/ such as disaster recovery, logging, access, load balancing etc.
|
|
/ https://github.com/AquaQAnalytics/TorQ
|
|
```
|
|
|
|
## Want to know more?
|
|
|
|
* [*q for mortals* q language tutorial](http://code.kx.com/q4m3/)
|
|
* [*Introduction to Kdb+* on disk data tutorial](http://code.kx.com/q4m3/14_Introduction_to_Kdb+/)
|
|
* [q language reference](http://code.kx.com/q/ref/card/)
|
|
* [Online training courses](http://training.aquaq.co.uk/)
|
|
* [TorQ production framework](https://github.com/AquaQAnalytics/TorQ)
|