AzureKusto is the R interface to Azure Data Explorer (internally codenamed “Kusto”), a fast, fully managed data analytics service from Microsoft.
AzureKusto provides an interface (including DBI compliant methods) for connecting to Kusto clusters and submitting Kusto Query Language (KQL) statements, as well as a dbplyr style backend that translates dplyr queries into KQL statements.
library(AzureKusto)
## The first time you import AzureKusto, you'll be asked if you'd like to create a directory to cache OAuth2 tokens.
## Connect to an AzureKusto database with (default) device code authentication:
Samples <- kusto_database_endpoint(server = "https://help.kusto.windows.net", database = "Samples")
# (New in 1.1.0) Some other ways to call this that also work:
# Samples <- kusto_database_endpoint(server="help", database="Samples")
# Samples <- kusto_database_endpoint(cluster="help", database="Samples")
# No app ID supplied; using KustoClient app
# Waiting for authentication in browser...
# Press Esc/Ctrl + C to abort
# VSCode WebView only supports showing local http content.
# Opening in external browser...
# Browsing https://login.microsoftonline.com/common/oauth2/v2.0/authorize...
# Authentication complete.Now you can issue KQL queries to the Kusto database with
run_query() and get the results back as a data.frame
object.
res <- run_query(Samples, "StormEvents | summarize EventCount = count() by State | order by State asc")
head(res)
##            State EventCount
## 1        ALABAMA       1315
## 2         ALASKA        257
## 3 AMERICAN SAMOA         16
## 4        ARIZONA        340
## 5       ARKANSAS       1028
## 6 ATLANTIC NORTH        188run_query() also supports query parameters, to allow you
to call parameterized Kusto functions. Simply pass your parameters as
additional keyword arguments and they will be escaped and interpolated
into the query string.
res <- run_query(Samples, "MyFunction(lim)", lim = 10L)
head(res)
##             StartTime             EndTime EpisodeId EventId          State
## 1 2007-09-29 08:11:00 2007-09-29 08:11:00     11091   61032 ATLANTIC SOUTH
## 2 2007-09-18 20:00:00 2007-09-19 18:00:00     11074   60904        FLORIDA
## 3 2007-09-20 21:57:00 2007-09-20 22:05:00     11078   60913        FLORIDA
## 4 2007-12-30 16:00:00 2007-12-30 16:05:00     11749   64588        GEORGIA
## 5 2007-12-20 07:50:00 2007-12-20 07:53:00     12554   68796    MISSISSIPPI
## 6 2007-12-20 10:32:00 2007-12-20 10:36:00     12554   68814    MISSISSIPPIrun_query() can also handle command statements, which
begin with a ‘.’ character. Command statements do not accept parameters
and cannot be combined together with query statements in the same
request.
Command statements return a list where the first element is the table returned by the command (if any) and the other elements contain command metadata.
The package also implements a dplyr-style interface for
building a query upon a tbl_kusto object and then running
it on the remote Kusto database and returning the result as a regular
tibble object with collect().
library(dplyr)
StormEvents <- tbl_kusto(Samples, "StormEvents")
q <- StormEvents %>%
  group_by(State) %>%
  summarize(EventCount = n()) %>%
  arrange(State)
show_query(q)
## <KQL> database('Samples').['StormEvents']
## | summarize ['EventCount'] = count() by ['State']
## | order by ['State'] asc
collect(q)
## # A tibble: 67 x 2
##    State          EventCount
##    <chr>               <dbl>
##  1 ALABAMA              1315
##  2 ALASKA                257
##  3 AMERICAN SAMOA         16
##  4 ARIZONA               340
##  5 ARKANSAS             1028
##  6 ATLANTIC NORTH        188
##  7 ATLANTIC SOUTH        193
##  8 CALIFORNIA            898
##  9 COLORADO             1654
## 10 CONNECTICUT           148
## # ... with 57 more rows(New in 1.1.0) The $ operator can be used to access
fields in dynamic columns:
q <- StormEvents %>%
  slice_sample(10) %>%
  mutate(Description = as.character(StormSummary$Details$Description)) %>%
  select(EventId, Description)
show_query(q)
# <KQL> cluster('https://help.kusto.windows.net').database('Samples').['StormEvents']
# | sample 10
# | extend ['Description'] = tostring(['StormSummary'] . ['Details'] . ['Description'])
# | project ['EventId'], ['Description']
# # A tibble: 10 × 2
#    EventId Description
#      <int> <chr>
#  1   61032 A waterspout formed in the Atlantic southeast of Melbourne Beach and briefly moved toward shore.
#  2   60904 As much as 9 inches of rain fell in a 24-hour period across parts of coastal Volusia County.
#  3   60913 A tornado touched down in the Town of Eustis at the northern end of West Crooked Lake. The tornado quickly intensified to EF1 strength as it moved north northwest through Eustis. The track was just under two miles long…
#  4   64588 The county dispatch reported several trees were blown down along Quincey Batten Loop near State Road 206. The cost of tree removal was estimated.
#  5   68796 Numerous large trees were blown down with some down on power lines. Damage occurred in eastern Adams county.
#  6   68814 This tornado began as a small, narrow path of minor damage, including a porch being blown off a house. It reached its maximum intensity as it crossed highway 29. Here, a brick home had all of its roof structure blown o…
#  7   68834 Several trees and power lines were blown down along Zetus Road in the Zetus Community. A few of those trees were down on a mobile home which caused significant damage.
#  8   68846 A swath of penny to quarter sized hail fell from just east of French Camp to about 6 miles north of Weir.
#  9   73241 The heavy rain from an active monsoonal trough that had been nearly stationary just to the south of the islands caused widespread flooding across Tutuila.  Flash Flooding was reported from the Malaeimi Valley to the Ba…
# 10   64725 State Route 8 and Rock Run Road were flooded and impassabletbl_kusto also accepts query parameters, in case the
Kusto source table is a parameterized function:
MyFunctionDate <- tbl_kusto(Samples, "MyFunctionDate(dt)", dt = as.Date("2019-01-01"))
MyFunctionDate %>%
  select(StartTime, EndTime, EpisodeId, EventId, State) %>%
  head() %>%
  collect()
## # A tibble: 6 x 5
##   StartTime           EndTime             EpisodeId EventId State
##   <dttm>              <dttm>                  <int>   <int> <chr>
## 1 2007-09-29 08:11:00 2007-09-29 08:11:00     11091   61032 ATLANTIC SOUTH
## 2 2007-09-18 20:00:00 2007-09-19 18:00:00     11074   60904 FLORIDA
## 3 2007-09-20 21:57:00 2007-09-20 22:05:00     11078   60913 FLORIDA
## 4 2007-12-30 16:00:00 2007-12-30 16:05:00     11749   64588 GEORGIA
## 5 2007-12-20 07:50:00 2007-12-20 07:53:00     12554   68796 MISSISSIPPI
## 6 2007-12-20 10:32:00 2007-12-20 10:36:00     12554   68814 MISSISSIPPI(New in 1.1.0) The function export() enables you to
export a query result to Azure Storage in one step.
export(
  database = Samples,
  storage_uri = "https://mystorage.blob.core.windows.net/StormEvents",
  query = "StormEvents | summarize EventCount = count() by State | order by State",
  name_prefix = "events",
  format = "parquet"
)
#                                                                                 Path NumRecords SizeInBytes
# 1 https://mystorage.blob.core.windows.net/StormEvents/events/events_1.snappy.parquet         67        1511
library(dplyr)
StormEvents <- tbl_kusto(Samples, "StormEvents")
q <- StormEvents %>%
  group_by(State) %>%
  summarize(EventCount = n()) %>%
  arrange(State) %>%
  export("https://mystorage.blob.core.windows.net/StormEvents")
# # A tibble: 1 × 3
#   Path                                                                              NumRecords SizeInBytes
#   <chr>                                                                                  <dbl>       <dbl>
# 1 https://mystorage.blob.core.windows.net/StormEvents/export/export_1.snappy.parquet        50       59284AzureKusto implements a subset of the DBI specification for interfacing with databases in R.
The following methods are supported:
dbConnect, dbDisconnect,
dbCanConnectdbExistsTable,
dbCreateTable, dbRemoveTable,
dbReadTable, dbWriteTabledbGetQuery, dbSendQuery,
dbFetch, dbSendStatement,
dbExecute, dbListFields,
dbColumnInfoAzure Data Explorer is quite different to the SQL databases that DBI targets, which affects the behaviour of certain DBI methods and renders other moot.
dbConnect simply wraps a database
endpoint object, created with [kusto_database_endpoint]. Similarly,
dbDisconnect always returns TRUE. dbCanConnect
attempts to check if querying the database will succeed, but this may
not be accurate.dbCreateTable(*, temporary=TRUE) will throw an error.dbSendQuery and dbSendStatement will
wait for the query to execute, rather than returning immediately. The
object returned contains the full result of the query, which
dbFetch extracts.library(DBI)
Samples <- dbConnect(AzureKusto(),
  server = "https://help.kusto.windows.net",
  database = "Samples"
)
dbListTables(Samples)
## [1] "StormEvents"       "demo_make_series1" "demo_series2"
## [4] "demo_series3"      "demo_many_series1"
dbExistsTable(Samples, "StormEvents")
## [1] TRUE
dbGetQuery(Samples, "StormEvents | summarize ct = count()")
##      ct
## 1 59066