* CLICKHOUSE-4063: less manual html @ index.md * CLICKHOUSE-4063: recommend markdown="1" in README.md * CLICKHOUSE-4003: manually purge custom.css for now * CLICKHOUSE-4064: expand <details> before any print (including to pdf) * CLICKHOUSE-3927: rearrange interfaces/formats.md a bit * CLICKHOUSE-3306: add few http headers * Remove copy-paste introduced in #3392 * Hopefully better chinese fonts #3392 * get rid of tabs @ custom.css * Apply comments and patch from #3384 * Add jdbc.md to ToC and some translation, though it still looks badly incomplete * minor punctuation * Add some backlinks to official website from mirrors that just blindly take markdown sources * Do not make fonts extra light * find . -name '*.md' -type f | xargs -I{} perl -pi -e 's//g' {} * find . -name '*.md' -type f | xargs -I{} perl -pi -e 's/ sql/g' {} * Remove outdated stuff from roadmap.md * Not so light font on front page too * Refactor Chinese formats.md to match recent changes in other languages * Update some links on front page * Remove some outdated comment * Add twitter link to front page * More front page links tuning * Add Amsterdam meetup link * Smaller font to avoid second line * Add Amsterdam link to README.md * Proper docs nav translation * Back to 300 font-weight except Chinese * fix docs build * Update Amsterdam link * remove symlinks * more zh punctuation * apply lost comment by @zhang2014 * Apply comments by @zhang2014 from #3417 * Remove Beijing link * rm incorrect symlink * restore content of docs/zh/operations/table_engines/index.md * CLICKHOUSE-3751: stem terms while searching docs * CLICKHOUSE-3751: use English stemmer in non-English docs too * CLICKHOUSE-4135 fix * Remove past meetup link * Add blog link to top nav * Add ContentSquare article link * Add form link to front page + refactor some texts * couple markup fixes * minor * Introduce basic ODBC driver page in docs * More verbose 3rd party libs disclaimer * Put third-party stuff into a separate folder * Separate third-party stuff in ToC too * Update links * Move stuff that is not really (only) a client library into a separate page * Add clickhouse-hdfs-loader link * Some introduction for "interfaces" section * Rewrite tcp.md * http_interface.md -> http.md * fix link * Remove unconvenient error for now * try to guess anchor instead of failing * remove symlink * Remove outdated info from introduction * remove ru roadmap.md * replace ru roadmap.md with symlink * Update roadmap.md * lost file * Title case in toc_en.yml * Sync "Functions" ToC section with en * Remove reference to pretty old ClickHouse release from docs * couple lost symlinks in fa * Close quote in proper place * Rewrite en/getting_started/index.md * Sync en<>ru getting_started/index.md * minor changes * Some gui.md refactoring * Translate DataGrip section to ru * Translate DataGrip section to zh * Translate DataGrip section to fa * Translate DBeaver section to fa * Translate DBeaver section to zh * Split third-party GUI to open-source and commercial * Mention some RDBMS integrations + ad-hoc translation fixes * Add rel="external nofollow" to outgoing links from docs * Lost blank lines * Fix class name * More rel="external nofollow" * Apply suggestions by @sundy-li * Mobile version of front page improvements * test * test 2 * test 3 * Update LICENSE * minor docs fix * Highlight current article as suggested by @sundy-li * fix link destination * Introduce backup.md (only "en" for now) * Mention INSERT+SELECT in backup.md * Some improvements for replication.md * Add backup.md to toc * Mention clickhouse-backup tool * Mention LightHouse in third-party GUI list * Introduce interfaces/third-party/proxy.md * Add clickhouse-bulk to proxy.md * Major extension of integrations.md contents * fix link target * remove unneeded file * better toc item name * fix markdown * better ru punctuation * Add yet another possible backup approach * Simplify copying permalinks to headers * Support non-eng link anchors in docs + update some deps * Generate anchors for single-page mode automatically * Remove anchors to top of pages * Remove anchors that nobody links to * build fixes * fix few links * restore css * fix some links * restore gifs * fix lost words * more docs fixes * docs fixes * NULL anchor * update urllib3 dependency * more fixes
18 KiB
Function reference
count()
Counts the number of rows. Accepts zero arguments and returns UInt64.
The syntax COUNT(DISTINCT x)
is not supported. The separate uniq
aggregate function exists for this purpose.
A SELECT count() FROM table
query is not optimized, because the number of entries in the table is not stored separately. It will select some small column from the table and count the number of values in it.
any(x)
Selects the first encountered value. The query can be executed in any order and even in a different order each time, so the result of this function is indeterminate. To get a determinate result, you can use the 'min' or 'max' function instead of 'any'.
In some cases, you can rely on the order of execution. This applies to cases when SELECT comes from a subquery that uses ORDER BY.
When a SELECT
query has the GROUP BY
clause or at least one aggregate function, ClickHouse (in contrast to MySQL) requires that all expressions in the SELECT
, HAVING
, and ORDER BY
clauses be calculated from keys or from aggregate functions. In other words, each column selected from the table must be used either in keys or inside aggregate functions. To get behavior like in MySQL, you can put the other columns in the any
aggregate function.
anyHeavy(x)
Selects a frequently occurring value using the heavy hitters algorithm. If there is a value that occurs more than in half the cases in each of the query's execution threads, this value is returned. Normally, the result is nondeterministic.
anyHeavy(column)
Arguments
column
– The column name.
Example
Take the OnTime data set and select any frequently occurring value in the AirlineID
column.
SELECT anyHeavy(AirlineID) AS res
FROM ontime
┌───res─┐
│ 19690 │
└───────┘
anyLast(x)
Selects the last value encountered.
The result is just as indeterminate as for the any
function.
##groupBitAnd
Applies bitwise AND
for series of numbers.
groupBitAnd(expr)
Parameters
expr
– An expression that results in UInt*
type.
Return value
Value of the UInt*
type.
Example
Test data:
binary decimal
00101100 = 44
00011100 = 28
00001101 = 13
01010101 = 85
Query:
SELECT groupBitAnd(num) FROM t
Where num
is the column with the test data.
Result:
binary decimal
00000100 = 4
##groupBitOr
Applies bitwise OR
for series of numbers.
groupBitOr(expr)
Parameters
expr
– An expression that results in UInt*
type.
Return value
Value of the UInt*
type.
Example
Test data:
binary decimal
00101100 = 44
00011100 = 28
00001101 = 13
01010101 = 85
Query:
SELECT groupBitOr(num) FROM t
Where num
is the column with the test data.
Result:
binary decimal
01111101 = 125
##groupBitXor
Applies bitwise XOR
for series of numbers.
groupBitXor(expr)
Parameters
expr
– An expression that results in UInt*
type.
Return value
Value of the UInt*
type.
Example
Test data:
binary decimal
00101100 = 44
00011100 = 28
00001101 = 13
01010101 = 85
Query:
SELECT groupBitXor(num) FROM t
Where num
is the column with the test data.
Result:
binary decimal
01101000 = 104
min(x)
Calculates the minimum.
max(x)
Calculates the maximum.
argMin(arg, val)
Calculates the 'arg' value for a minimal 'val' value. If there are several different values of 'arg' for minimal values of 'val', the first of these values encountered is output.
Example:
┌─user─────┬─salary─┐
│ director │ 5000 │
│ manager │ 3000 │
│ worker │ 1000 │
└──────────┴────────┘
SELECT argMin(user, salary) FROM salary
┌─argMin(user, salary)─┐
│ worker │
└──────────────────────┘
argMax(arg, val)
Calculates the 'arg' value for a maximum 'val' value. If there are several different values of 'arg' for maximum values of 'val', the first of these values encountered is output.
sum(x)
Calculates the sum. Only works for numbers.
sumWithOverflow(x)
Computes the sum of the numbers, using the same data type for the result as for the input parameters. If the sum exceeds the maximum value for this data type, the function returns an error.
Only works for numbers.
sumMap(key, value)
Totals the 'value' array according to the keys specified in the 'key' array. The number of elements in 'key' and 'value' must be the same for each row that is totaled. Returns a tuple of two arrays: keys in sorted order, and values summed for the corresponding keys.
Example:
CREATE TABLE sum_map(
date Date,
timeslot DateTime,
statusMap Nested(
status UInt16,
requests UInt64
)
) ENGINE = Log;
INSERT INTO sum_map VALUES
('2000-01-01', '2000-01-01 00:00:00', [1, 2, 3], [10, 10, 10]),
('2000-01-01', '2000-01-01 00:00:00', [3, 4, 5], [10, 10, 10]),
('2000-01-01', '2000-01-01 00:01:00', [4, 5, 6], [10, 10, 10]),
('2000-01-01', '2000-01-01 00:01:00', [6, 7, 8], [10, 10, 10]);
SELECT
timeslot,
sumMap(statusMap.status, statusMap.requests)
FROM sum_map
GROUP BY timeslot
┌────────────timeslot─┬─sumMap(statusMap.status, statusMap.requests)─┐
│ 2000-01-01 00:00:00 │ ([1,2,3,4,5],[10,10,20,10,10]) │
│ 2000-01-01 00:01:00 │ ([4,5,6,7,8],[10,10,20,10,10]) │
└─────────────────────┴──────────────────────────────────────────────┘
avg(x)
Calculates the average. Only works for numbers. The result is always Float64.
uniq(x)
Calculates the approximate number of different values of the argument. Works for numbers, strings, dates, date-with-time, and for multiple arguments and tuple arguments.
Uses an adaptive sampling algorithm: for the calculation state, it uses a sample of element hash values with a size up to 65536.
This algorithm is also very accurate for data sets with low cardinality (up to 65536) and very efficient on CPU (when computing not too many of these functions, using uniq
is almost as fast as using other aggregate functions).
The result is determinate (it doesn't depend on the order of query processing).
This function provides excellent accuracy even for data sets with extremely high cardinality (over 10 billion elements). It is recommended for default use.
uniqCombined(HLL_precision)(x)
Calculates the approximate number of different values of the argument. Works for numbers, strings, dates, date-with-time, and for multiple arguments and tuple arguments.
A combination of three algorithms is used: array, hash table and HyperLogLog with an error correction table. For small number of distinct elements, the array is used. When the set size becomes larger the hash table is used, while it is smaller than HyperLogLog data structure. For larger number of elements, the HyperLogLog is used, and it will occupy fixed amount of memory.
The parameter "HLL_precision" is the base-2 logarithm of the number of cells in HyperLogLog. You can omit the parameter (omit first parens). The default value is 17, that is effectively 96 KiB of space (2^17 cells of 6 bits each). The memory consumption is several times smaller than for the uniq
function, and the accuracy is several times higher. Performance is slightly lower than for the uniq
function, but sometimes it can be even higher than it, such as with distributed queries that transmit a large number of aggregation states over the network.
The result is deterministic (it doesn't depend on the order of query processing).
The uniqCombined
function is a good default choice for calculating the number of different values, but keep in mind that the estimation error for large sets (200 million elements and more) will become larger than theoretical value due to poor choice of hash function.
uniqHLL12(x)
Uses the HyperLogLog algorithm to approximate the number of different values of the argument. 212 5-bit cells are used. The size of the state is slightly more than 2.5 KB. The result is not very accurate (up to ~10% error) for small data sets (<10K elements). However, the result is fairly accurate for high-cardinality data sets (10K-100M), with a maximum error of ~1.6%. Starting from 100M, the estimation error increases, and the function will return very inaccurate results for data sets with extremely high cardinality (1B+ elements).
The result is determinate (it doesn't depend on the order of query processing).
We don't recommend using this function. In most cases, use the uniq
or uniqCombined
function.
uniqExact(x)
Calculates the number of different values of the argument, exactly.
There is no reason to fear approximations. It's better to use the uniq
function.
Use the uniqExact
function if you definitely need an exact result.
The uniqExact
function uses more memory than the uniq
function, because the size of the state has unbounded growth as the number of different values increases.
groupArray(x), groupArray(max_size)(x)
Creates an array of argument values. Values can be added to the array in any (indeterminate) order.
The second version (with the max_size
parameter) limits the size of the resulting array to max_size
elements.
For example, groupArray (1) (x)
is equivalent to [any (x)]
.
In some cases, you can still rely on the order of execution. This applies to cases when SELECT
comes from a subquery that uses ORDER BY
.
groupArrayInsertAt(x)
Inserts a value into the array in the specified position.
Accepts the value and position as input. If several values are inserted into the same position, any of them might end up in the resulting array (the first one will be used in the case of single-threaded execution). If no value is inserted into a position, the position is assigned the default value.
Optional parameters:
- The default value for substituting in empty positions.
- The length of the resulting array. This allows you to receive arrays of the same size for all the aggregate keys. When using this parameter, the default value must be specified.
groupUniqArray(x)
Creates an array from different argument values. Memory consumption is the same as for the uniqExact
function.
quantile(level)(x)
Approximates the level
quantile. level
is a constant, a floating-point number from 0 to 1.
We recommend using a level
value in the range of [0.01, 0.99]
Don't use a level
value equal to 0 or 1 – use the min
and max
functions for these cases.
In this function, as well as in all functions for calculating quantiles, the level
parameter can be omitted. In this case, it is assumed to be equal to 0.5 (in other words, the function will calculate the median).
Works for numbers, dates, and dates with times.
Returns: for numbers – Float64
; for dates – a date; for dates with times – a date with time.
Uses reservoir sampling with a reservoir size up to 8192.
If necessary, the result is output with linear approximation from the two neighboring values.
This algorithm provides very low accuracy. See also: quantileTiming
, quantileTDigest
, quantileExact
.
The result depends on the order of running the query, and is nondeterministic.
When using multiple quantile
(and similar) functions with different levels in a query, the internal states are not combined (that is, the query works less efficiently than it could). In this case, use the quantiles
(and similar) functions.
quantileDeterministic(level)(x, determinator)
Works the same way as the quantile
function, but the result is deterministic and does not depend on the order of query execution.
To achieve this, the function takes a second argument – the "determinator". This is a number whose hash is used instead of a random number generator in the reservoir sampling algorithm. For the function to work correctly, the same determinator value should not occur too often. For the determinator, you can use an event ID, user ID, and so on.
Don't use this function for calculating timings. There is a more suitable function for this purpose: quantileTiming
.
quantileTiming(level)(x)
Computes the quantile of 'level' with a fixed precision. Works for numbers. Intended for calculating quantiles of page loading time in milliseconds.
If the value is greater than 30,000 (a page loading time of more than 30 seconds), the result is equated to 30,000.
If the total value is not more than about 5670, then the calculation is accurate.
Otherwise:
- if the time is less than 1024 ms, then the calculation is accurate.
- otherwise the calculation is rounded to a multiple of 16 ms.
When passing negative values to the function, the behavior is undefined.
The returned value has the Float32 type. If no values were passed to the function (when using quantileTimingIf
), 'nan' is returned. The purpose of this is to differentiate these instances from zeros. See the note on sorting NaNs in "ORDER BY clause".
The result is determinate (it doesn't depend on the order of query processing).
For its purpose (calculating quantiles of page loading times), using this function is more effective and the result is more accurate than for the quantile
function.
quantileTimingWeighted(level)(x, weight)
Differs from the quantileTiming
function in that it has a second argument, "weights". Weight is a non-negative integer.
The result is calculated as if the x
value were passed weight
number of times to the quantileTiming
function.
quantileExact(level)(x)
Computes the quantile of 'level' exactly. To do this, all the passed values are combined into an array, which is then partially sorted. Therefore, the function consumes O(n) memory, where 'n' is the number of values that were passed. However, for a small number of values, the function is very effective.
quantileExactWeighted(level)(x, weight)
Computes the quantile of 'level' exactly. In addition, each value is counted with its weight, as if it is present 'weight' times. The arguments of the function can be considered as histograms, where the value 'x' corresponds to a histogram "column" of the height 'weight', and the function itself can be considered as a summation of histograms.
A hash table is used as the algorithm. Because of this, if the passed values are frequently repeated, the function consumes less RAM than quantileExact
. You can use this function instead of quantileExact
and specify the weight as 1.
quantileTDigest(level)(x)
Approximates the quantile level using the t-digest algorithm. The maximum error is 1%. Memory consumption by State is proportional to the logarithm of the number of passed values.
The performance of the function is lower than for quantile
or quantileTiming
. In terms of the ratio of State size to precision, this function is much better than quantile
.
The result depends on the order of running the query, and is nondeterministic.
median(x)
All the quantile functions have corresponding median functions: median
, medianDeterministic
, medianTiming
, medianTimingWeighted
, medianExact
, medianExactWeighted
, medianTDigest
. They are synonyms and their behavior is identical.
quantiles(level1, level2, ...)(x)
All the quantile functions also have corresponding quantiles functions: quantiles
, quantilesDeterministic
, quantilesTiming
, quantilesTimingWeighted
, quantilesExact
, quantilesExactWeighted
, quantilesTDigest
. These functions calculate all the quantiles of the listed levels in one pass, and return an array of the resulting values.
varSamp(x)
Calculates the amount Σ((x - x̅)^2) / (n - 1)
, where n
is the sample size and x̅
is the average value of x
.
It represents an unbiased estimate of the variance of a random variable, if the values passed to the function are a sample of this random amount.
Returns Float64
. When n <= 1
, returns +∞
.
varPop(x)
Calculates the amount Σ((x - x̅)^2) / (n - 1)
, where n
is the sample size and x̅
is the average value of x
.
In other words, dispersion for a set of values. Returns Float64
.
stddevSamp(x)
The result is equal to the square root of varSamp(x)
.
stddevPop(x)
The result is equal to the square root of varPop(x)
.
topK(N)(column)
Returns an array of the most frequent values in the specified column. The resulting array is sorted in descending order of frequency of values (not by the values themselves).
Implements the Filtered Space-Saving algorithm for analyzing TopK, based on the reduce-and-combine algorithm from Parallel Space Saving.
topK(N)(column)
This function doesn't provide a guaranteed result. In certain situations, errors might occur and it might return frequent values that aren't the most frequent values.
We recommend using the N < 10
value; performance is reduced with large N
values. Maximum value of N = 65536
.
Arguments
- 'N' is the number of values.
- ' x ' – The column.
Example
Take the OnTime data set and select the three most frequently occurring values in the AirlineID
column.
SELECT topK(3)(AirlineID) AS res
FROM ontime
┌─res─────────────────┐
│ [19393,19790,19805] │
└─────────────────────┘
covarSamp(x, y)
Calculates the value of Σ((x - x̅)(y - y̅)) / (n - 1)
.
Returns Float64. When n <= 1
, returns +∞.
covarPop(x, y)
Calculates the value of Σ((x - x̅)(y - y̅)) / n
.
corr(x, y)
Calculates the Pearson correlation coefficient: Σ((x - x̅)(y - y̅)) / sqrt(Σ((x - x̅)^2) * Σ((y - y̅)^2))
.