retail
ADVANCED BETA
This module contains procedures to perform analysis to solve specific retail analytics use cases, such as revenue prediction.
BUILD_REVENUE_MODEL_DATA
BUILD_REVENUE_MODEL_DATA(stores_query, stores_variables, competitors_query, aoi_query, grid_type, grid_level, kring, decay, do_variables, do_source, custom_variables, custom_query, output_prefix)
Description
This procedure is the first step of the Revenue Prediction analysis workflow. It prepares the model data to be used in the training and prediction phases by performing the following steps:
Polyfill the geometry from the area of interest using the grid type and resolution level.
Enrich the grid cells with the revenue, stores, Data Observatory (DO) variables and custom variables.
Apply a k-ring decay function to the enriched DO variables and custom variables. This operation smooths the features for a given cell by taking into account the values of these features in the neighboring cells (defined as those within the specified k-ring size), applying a scaling factor determined by the decay function of choice.
Create the revenue
model_data
table (see the output description for more details).Create the revenue
model_data_stats
table (see the output description for more details).
Input parameters
stores_query
:STRING
query with variables related to the stores to be used in the model, including their revenue per store (required) and other variables (optional). It must contain the columnsrevenue
(revenue of the store),store
(store unique id) andgeom
(the geographical point of the store). The values of these columns cannot beNULL
.stores_variables
:ARRAY<STRUCT<variable STRING, aggregation STRING>>
list with the columns of thestores_query
and their corresponding aggregation method (sum
,avg
,max
,min
,count
) that will be used to enrich the grid cells. It can be set toNULL
.competitors_query
:STRING
query with the competitors information to be used in the model. It must contain the columnscompetitor
(competitor store unique id) andgeom
(the geographical point of the store).aoi_query
:STRING
query with the geography of the area of interest. It must contain a columngeom
with a single area (Polygon or MultiPolygon).grid_type
:STRING
type of the cell grid. Supported values areh3
, andquadbin
.grid_level
:INT64
level or resolution of the cell grid. Check the available H3 levels, and Quadbin levels.kring
:INT64
size of the kring where the decay function will be applied. This value can be 0, in which case no kring will be computed and the decay function won't be applied.decay
:STRING
decay function. Supported values areuniform
,inverse
,inverse_square
andexponential
. If set toNULL
or''
,uniform
is used by default.do_variables
:ARRAY<STRUCT<variable STRING, aggregation STRING>>
variables of the Data Observatory that will be used to enrich the grid cells and therefore train the revenue prediction model in the subsequent step of the Revenue Prediction workflow. For each variable, its slug and the aggregation method must be provided. Usedefault
to use the variable's default aggregation method. Valid aggregation methods are:sum
,avg
,max
,min
,count
. The catalog procedureDATAOBS_SUBSCRIPTION_VARIABLES
can be used to find available variables and their slugs and default aggregation. It can be set toNULL
.do_source
:STRING
name of the location where the Data Observatory subscriptions of the user are stored, in<my-dataobs-project>.<my-dataobs-dataset>
format. If only the<my-dataobs-dataset>
is included, it uses the projectcarto-data
by default. It can be set toNULL
or''
.custom_variables
:ARRAY<STRUCT<variable STRING, aggregation STRING>>
list with the columns of thecustom_query
and their corresponding aggregation method (sum
,avg
,max
,min
,count
) that will be used to enrich the grid cells. It can be set toNULL
.custom_query
:STRING
query that contains a geography columngeom
and the columns with the custom data that will be used to enrich the grid cells. It can be set toNULL
or''
.output_prefix
:STRING
destination prefix for the output tables. It must contain the project, dataset and a prefix which will be prepended to each output tabla name. For example<my-project>.<my-dataset>.<output-prefix>
.
Output
The procedure will output two tables:
Model data table: contains an
index
column with the cell ids and all the enriched columns:revenue_avg
,store_count
,competitor_count
,stores_variables
suffixed by aggregation method, DO variables and custom variables. The name of the table includes the suffix_model_data
, for example<my-project>.<my-dataset>.<output-prefix>_model_data
.Model data stats table: contains the
morans_i
value computed for therevenue_avg
column, computed with kring 1 and decayuniform
. The name of the table includes the suffix_model_data_stats
, for example<my-project>.<my-dataset>.<output-prefix>_model_data_stats
.
Example
CALL `carto-un`.carto.BUILD_REVENUE_MODEL_DATA(
-- Stores: revenue, store, geom and optional store information
'''SELECT revenue, store, geom, store_area FROM `<project>.<dataset>.input_stores_data`''',
-- Stores information variables
[('store_area','sum')],
-- Competitors: competitor, geom
'''SELECT competitor, geom FROM `<project>.<dataset>.input_competitors_data`''',
-- Area of interest: geom
'''SELECT geom FROM `<project>.<dataset>.area_of_interest`''',
-- Grid params: grid type and level
'h3', 6,
-- Decay params: kring size and decay function
3, 'exponential',
-- Data Observatory enrichment
[('POPCY_4534fac4', 'sum'), ('INCCYPCAP_7c8377cf', 'avg')],
'<my-dataobs-project>.<my-dataobs-dataset>',
-- Custom data enrichment
[('var1', 'sum'), ('var2', 'avg')],
'''SELECT var1, var2, geom FROM `<project>.<dataset>.custom_data`''',
-- Output destination prefix
'<my-project>.<my-dataset>.<output-prefix>'
);
-- Table `<my-project>.<my-dataset>.<output-prefix>_model_data` will be created
-- with columns: index, revenue_avg, store_count, competitor_count, POPCY_4534fac4_sum, INCCYPCAP_7c8377cf_avg, var1_sum, var2_avg
-- Table `<my-project>.<my-dataset>.<output-prefix>_model_data_stats` will be created
-- with the column: morans_i
BUILD_REVENUE_MODEL
BUILD_REVENUE_MODEL(revenue_model_data, options, output_prefix)
Description
This procedure is the second step of the Revenue Prediction analysis workflow. It creates the model and its description tables from the input model data (output of the BUILD_REVENUE_MODEL_DATA
procedure). It performs the following steps:
Compute the model from the input query and options.
Compute the revenue
model_shap
,model_stats
tables (see the output description for more details).
Input parameters
revenue_model_data
:STRING
table with the revenue model data generated with theBUILD_REVENUE_MODEL_DATA
procedure.options
:STRING
JSON string to overwrite the model default options. If set to NULL or empty, it will use the default options. The following fixed options cannot be modified:ENABLE_GLOBAL_EXPLAIN: TRUE
INPUT_LABEL_COLS: ['revenue_avg']
The following default options can be modified:
MODEL_TYPE: 'BOOSTED_TREE_REGRESSOR'
BOOSTER_TYPE: 'GBTREE'
NUM_PARALLEL_TREE: 1
TREE_METHOD: 'AUTO'
COLSAMPLE_BYTREE: 1
MAX_TREE_DEPTH: 6
SUBSAMPLE: 0.85
L1_REG: 0
L2_REG: 1
EARLY_STOP: FALSE
MAX_ITERATIONS: 50
DATA_SPLIT_METHOD: 'NO_SPLIT'
This parameter allows using other options compatible with the model used. Models currently supported are LINEAR_REG and BOOSTED_TREE_REGRESSOR. Check the model documentation for more information.
output_prefix
:STRING
destination prefix for the output tables. It must contain the project, dataset and prefix. For example<my-project>.<my-dataset>.<output-prefix>
.
Output
The procedure will output the following:
Model: contains the trained model to be used for the revenue prediction. The name of the model includes the suffix
_model
, for example<my-project>.<my-dataset>.<output-prefix>_model
.Shap table: contains a list of the features and their attribution to the model, computed with
ML.GLOBAL_EXPLAIN
. The name of the table includes the suffix_model_shap
, for example<my-project>.<my-dataset>.<output-prefix>_model_shap
.Stats table: contains the model stats (mean_error, variance, etc.), computed with
ML.EVALUATE
. The name of the table includes the suffix_model_stats
, for example<my-project>.<my-dataset>.<output-prefix>_model_stats
.
To learn more about how to evaluate the results of your model through the concept of explainability, refer to this article (https://cloud.google.com/bigquery-ml/docs/reference/standard-sql/bigqueryml-syntax-xai-overview).
Example
CALL `carto-un`.carto.BUILD_REVENUE_MODEL(
-- Model data
'<my-project>.<my-dataset>.<output-prefix>_model_data',
-- Options
'{"MAX_ITERATIONS": 100}',
-- Output destination prefix
'<my-project>.<my-dataset>.<output-prefix>'
);
-- Model `<my-project>.<my-dataset>.<output-prefix>_model` will be created
-- Table `<my-project>.<my-dataset>.<output-prefix>_model_shap` will be created
-- Table `<my-project>.<my-dataset>.<output-prefix>_model_stats` will be created
PREDICT_REVENUE_AVERAGE
PREDICT_REVENUE_AVERAGE(index, revenue_model, revenue_model_data)
Description
This procedure is the third and final step of the Revenue Prediction analysis workflow. It predicts the average revenue of an additional store located in the specified grid cell. It requires as input the model data (output of the BUILD_REVENUE_MODEL_DATA
procedure) and the trained model (output of the BUILD_REVENUE_MODEL
procedure).
Input parameters
index
:ANY TYPE
cell index where the new store will be located. It can be an H3 or a Quadbin index. For Quadbin, the value should beINT64
whereas for H3 the value should beSTRING
. It can also be'ALL'
, in which case the prediction for all the grid cells of the model data are returned.revenue_model
:STRING
the fully qualifiedmodel
name.revenue_model_data
:STRING
the fully qualifiedmodel_data
table name.candidate_data
:STRING
the fully qualifiedcandidate_data
table name. It can be set toNULL
.stores_variables
:ARRAY<STRUCT<variable STRING, aggregation STRING>>
list with the columns of thestores_query
and their corresponding aggregation method (sum
,avg
,max
,min
,count
) that will be used to enrich the grid cells. It can be set toNULL
.
Output
The procedure will output the index
, predicted_revenue_avg
value in the cell (in the same units of the revenue
column), and shap_values
, an array of key value pairs with the shap values of the features for each prediction. It also includes a baseline_prediction
, which is the expected revenue without considering the impact of any other features.
Example
CREATE TABLE '<my-project>.<my-dataset>.<output-prefix>_candidate_data' AS (SELECT 25 store_area);
CALL `carto-un`.carto.PREDICT_REVENUE_AVERAGE(
'862676d1fffffff',
'<my-project>.<my-dataset>.<output-prefix>_model',
'<my-project>.<my-dataset>.<output-prefix>_model_data',
'<my-project>.<my-dataset>.<output-prefix>_candidate_data',
[('store_area','sum')]
);
-- index, predicted_revenue_avg
FIND_WHITESPACE_AREAS
FIND_WHITESPACE_AREAS(revenue_model, revenue_model_data, generator_query, aoi_query, minimum_revenue, max_results, with_own_stores, with_competitors)
Description
This is a postprocessing step that may be used after completing a Revenue Prediction analysis workflow. It allows you to identify cells with the highest potential revenue (whitespaces), while satisfying a series of criteria (e.g. presence of competitors).
It requires as input the model data (output of the BUILD_REVENUE_MODEL_DATA
procedure) and the trained model (output of the BUILD_REVENUE_MODEL
procedure), as well as a query with points to use as generators for the area of applicability of the model, plus a series of optional filters.
A cell is eligible to be considered a whitespace if it complies with the filtering criteria (minimum revenue, presence of competitors, etc.) and is within the area of applicability of the revenue model provided.
Input parameters
revenue_model
:STRING
with the fully qualifiedmodel
name.revenue_model_data
:STRING
with the fully qualifiedmodel_data
table name.generator_query
:STRING
query with the location of a set of generator points as a geography column namedgeom
. The algorithm will look for whitespaces in the surroundings of these locations, therefore avoiding offering results in locations that are not of the interest of the user. Good options to use as generator locations are, for instance, the location of the stores and competitors, or a collection of POIs that are known to drive commercial activity to an area.aoi_query
:STRING
query with the geography of the area of interest in which to perform the search. May beNULL
, in which case no spatial filter will be applied.minimum_revenue
:FLOAT64
the minimum revenue to filter results by. May beNULL
, in which case no revenue threshold will be applied.max_results
:INT64
of the maximum number of results, ordered by decreasing predicted revenue. May beNULL
, in which case all eligible cells are returned.with_own_stores
:BOOL
specifying whether to consider cells that already have own stores in them. IfNULL
, defaults toTRUE
.with_competitors
:BOOL
specifying whether to consider cells that already have competitors in them. IfNULL
, defaults toTRUE
.
Output
The procedure will output a table of cells with the following columns:
index
: identifying the H3, or Quadbin cell.predicted_revenue_avg
: average revenue of an additional store located in the grid cell.store_count
: number of own stores present in the grid cell.competitor_count
: number of competitors present in the grid cell.
Example
CALL `carto-un`.carto.FIND_WHITESPACE_AREAS(
'<my-project>.<my-dataset>.<output-prefix>_model',
'<my-project>.<my-dataset>.<output-prefix>_model_data',
'SELECT geom FROM `<my-project>.<my-dataset>.<generator-table>`',
'SELECT geom FROM `<my-project>.<my-dataset>.<area_of_interest_table>`', -- Area of Interest filter
10000, -- Minimum predicted revenue filter
5, -- Maximum number of results
TRUE, -- Whether to include cells with own stores
FALSE -- Whether to include cells with competitors
);
FIND_TWIN_AREAS
FIND_TWIN_AREAS(origin_query, target_query, index_column, pca_explained_variance_ratio, max_results, output_prefix)
Description
Procedure to obtain the twin areas for a given origin location in a target area. The full description of the method, based on Principal Component Analysis (PCA), can be found here.
The output twin areas are those of the target area considered to be the most similar to the origin location, based on the values of a set of variables. Only variables with numerical values are supported. Both origin and target areas should be provided in grid format (H3, or Quadbin) of the same resolution. We recommend using the GRIDIFY_ENRICH procedure to prepare the data in the format expected by this procedure.
Input
origin_query
:STRING
query to provide the origin cell (index
column) and its associated data columns. No NULL values should be contained in any of the data columns provided. The cell can be an H3, or a Quadbin index. For Quadbin, the value should be cast toSTRING
(CAST(index AS STRING)
). Example origin queries are:
-- When selecting the origin cell from a dataset of gridified data
SELECT * FROM `<project>.<dataset>.<origin_table>`
WHERE index_column = <cell_id>
-- When the input H3 cell ID is inferred from a (longitude, latitude) pair
SELECT * FROM `<project>.<dataset>.<origin_table>`
WHERE ST_INTERSECTS(`carto-un`.carto.H3_BOUNDARY(index_column), ST_GEOGPOINT(<longitude>, <latitude>))
-- When the input Quadbin cell ID is inferred from a (longitude, latitude) pair
SELECT * FROM `<project>.<dataset>.<origin_table>`
WHERE ST_INTERSECTS(`carto-un`.carto.QUADBIN_BOUNDARY(index_column), ST_GEOGPOINT(<longitude>, <latitude>))
-- When the cell ID is a Quadbin and requires to be cast
SELECT * EXCEPT(index_column), CAST(index_column AS STRING)
FROM `<project>.<dataset>.<origin_table>`
target_query
: STRING query to provide the target area grid cells (index
column) and their associated data columns, e.g.SELECT * FROM <project>.<dataset>.<target_table>
. The data columns should be similar to those provided in theorigin_query
, otherwise the procedure will fail. Grid cells with any NULL values will be excluded from the analysis.index_column
:STRING
name of the index column for both theorigin_query
and thetarget_query
.pca_explained_variance_ratio
:FLOAT64
of the explained variance retained in the PCA analysis. It defaults to 0.9 if set toNULL
.max_results
:INT64
of the maximum number of twin areas returned. If set toNULL
, all target cells are returned.output_prefix
:STRING
destination and prefix for the output tables. It must contain the project, dataset and prefix:<project>.<dataset>.<prefix>
.
Output
The procedure outputs the following:
Twin area model, named
<project>.<dataset>.<prefix>_model
. Please note that the model computation only depends on thetarget_query
and therefore the same model can be used if the procedure is re-run for a differentorigin_query
. To allow for this scenario in which the model is reused, if the output model already exists, it won't be recomputed. To avoid this behavior, simply choose a different<prefix>
in theoutput_prefix
parameter.Results table, named
<project>.<dataset>.<prefix>_<origin_index>_results
, containing in each row the index of the target cells (index_column
) and its associatedsimilarity_score
andsimilarity_skill_score
. Thesimilarity_score
corresponds to the distance between the origin and target cell in the Principal Component (PC) Scores space; thesimilarity_skill_score
for a given target cell*t*
is computed as1 - similarity_score(*t*) / similarity_score(<*t*>)
, where<*t*>
is the average target cell, computed by averaging each retained PC score for all the target cells. Thissimilarity_skill_score
represents a relative measure: the score will be positive if and only if the target cell is more similar to the origin than the mean vector data, with a score of 1 meaning perfect matching or zero distance. Therefore, a target cell with a larger score will be more similar to the origin under this scoring rule.
Example
CALL `carto-un`.carto.FIND_TWIN_AREAS(
-- Input queries
'''SELECT * FROM `cartobq.docs.twin_areas_origin_enriched_quadbin` LIMIT 1''',
'''SELECT * FROM `cartobq.docs.twin_areas_target_enriched_quadbin`''',
-- Twin areas model inputs
'quadbin',
0.90,
NULL,
'my-project.my-dataset.my-prefix'
);
-- Table `<my-project>.<my-dataset>.<output-prefix>_{ID}_results` will be created
-- with the column: quadbin, similarity_score, similarity_skill_score
FIND_TWIN_AREAS_WEIGHTED
FIND_TWIN_AREAS_WEIGHTED(origin_query, target_query, index_column, weights, max_results, output_prefix)
Description
Procedure to obtain the twin areas for a given origin location in a target area. The function is similar to the FIND_TWIN_AREAS
where the full description of the method, based on Principal Component Analysis (PCA), can be found here. Herein, no PCA is performed, but the user has the capability to specify weights for the features and check the similarities between origin and target area. The sum of weights must be less than or equal to 1. Not all them need to be defined. The undefined features are set to the remaining value divided by their number to reach 1. In the case where weights are provided, then no PCA takes place, and the features are standardized.
The output twin areas are those of the target area considered to be the most similar to the origin location, based on the values of a set of variables. Only variables with numerical values are supported. Both origin and target areas should be provided in grid format (h3, or quadbin) of the same resolution. We recommend using the GRIDIFY_ENRICH procedure to prepare the data in the format expected by this procedure.
Input
origin_query
:STRING
query to provide the origin cell (index
column) and its associated data columns. No NULL values should be contained in any of the data columns provided. The cell can be an h3, or a quadbin index. For quadbin, the value should be cast toSTRING
(CAST(index AS STRING)
). Example origin queries are:
-- When selecting the origin cell from a dataset of gridified data
SELECT * FROM `<project>.<dataset>.<origin_table>`
WHERE index_column = <cell_id>
-- When the input H3 cell ID is inferred from a (longitude, latitude) pair
SELECT * FROM `<project>.<dataset>.<origin_table>`
WHERE ST_INTERSECTS(`carto-un`.carto.H3_BOUNDARY(index_column), ST_GEOGPOINT(<longitude>, <latitude>))
-- When the input quadbin cell ID is inferred from a (longitude, latitude) pair
SELECT * FROM `<project>.<dataset>.<origin_table>`
WHERE ST_INTERSECTS(`carto-un`.carto.QUADBIN_BOUNDARY(index_column), ST_GEOGPOINT(<longitude>, <latitude>))
-- When the cell ID is a quadbin and requires to be cast
SELECT * EXCEPT(index_column), CAST(index_column AS STRING)
FROM `<project>.<dataset>.<origin_table>`
target_query
: STRING query to provide the target area grid cells (index
column) and their associated data columns, e.g.SELECT * FROM <project>.<dataset>.<target_table>
. The data columns should be similar to those provided in theorigin_query
, otherwise the procedure will fail. Grid cells with any NULL values will be excluded from the analysis.index_column
:STRING
name of the index column for both theorigin_query
and thetarget_query
.weights
:ARRAY<STRUCT<name STRING, value FLOAT64>>
the weights on the features. If set toNULL
, then all features are treated equally. This parameter is considered only if the length of weights is greater or equal than one. The sum of weights must be less than or equal to 1. If less weights than the number of features are provided, then for the undefined features, the remaining 1 - sum(weights) is distributed evenly.max_results
:INT64
of the maximum number of twin areas returned. If set toNULL
, all target cells are returned.output_prefix
:STRING
destination and prefix for the output tables. It must contain the project, dataset and prefix:<project>.<dataset>.<prefix>
.
Output
The procedure outputs the following:
Twin area model, named
<project>.<dataset>.<prefix>_model
. Please note that the model computation only depends on thetarget_query
and therefore the same model can be used if the procedure is re-run for a differentorigin_query
. To allow for this scenario in which the model is reused, if the output model already exists, it won't be recomputed. To avoid this behavior, simply choose a different<prefix>
in theoutput_prefix
parameter.Results table, named
<project>.<dataset>.<prefix>_<origin_index>_results
, containing in each row the index of the target cells (index_column
) and its associatedsimilarity_score
andsimilarity_skill_score
. Thesimilarity_score
corresponds to the distance between the origin and target cell taking into account the user defined weights; thesimilarity_skill_score
for a given target cell*t*
is computed as1 - similarity_score(*t*) / similarity_score(<*t*>)
, where<*t*>
is the average target cell, computed by averaging each feature for all the target cells. Thissimilarity_skill_score
represents a relative measure: the score will be positive if and only if the target cell is more similar to the origin than the mean vector data, with a score of 1 meaning perfect matching or zero distance. Therefore, a target cell with a larger score will be more similar to the origin under this scoring rule.
Example
CALL `carto-un`.carto.FIND_TWIN_AREAS_WEIGHTED(
-- Input queries
'''SELECT * FROM `cartobq.docs.twin_areas_origin_enriched_quadbin` LIMIT 1''',
'''SELECT * FROM `cartobq.docs.twin_areas_target_enriched_quadbin`''',
-- Twin areas model inputs
'quadbin',
NULL,
NULL,
'my-project.my-dataset.my-prefix'
);
-- Table `<my-project>.<my-dataset>.<output-prefix>_{ID}_results` will be created
-- with the column: quadbin, similarity_score, similarity_skill_score
COMMERCIAL_HOTSPOTS
COMMERCIAL_HOTSPOTS(input, output, index_column, index_type, variable_columns, variable_weights, kring, pvalue_thresh)
Description
This procedure is used to locate hotspot areas by calculating a combined Getis-Ord Gi* statistic using a uniform kernel over several variables. The input data should be in either an H3 or Quadbin grid. Variables can be optionally weighted using the variable_weights
parameter, uniform weights will be considered otherwise. The combined Gi* statistic for each cell will be computed by taking into account the neighboring cells within the k-ring of size kring
.
Only those cells where the Gi* statistics is significant are returned, i.e., those above the p-value threshold (pvalue_thresh
) set by the user. Hotspots can be identified as those cells with the highest Gi* values.
Input parameters
input
:STRING
name of the table containing the input data. It should include project and dataset, i.e., follow the format<project-id>.<dataset-id>.<table-name>
.output
:STRING
name of the table where the output data will be stored. It should include project and dataset, i.e., follow the format<project-id>.<dataset-id>.<table-name>
. If NULL, the procedure will return the output but it will not be persisted.index_column
:STRING
name of the column containing the H3 or Quadbin indexes.index_type
:STRING
type of the input cell indexes. Supported values are 'h3', or 'quadbin'.variable_columns
:ARRAY<STRING>
names of the columns containing the variables to take into account when computing the combined Gi* statistic.variable_weights
:ARRAY<FLOAT64>
containing the weights associated with each of the variables. These weights can take any value but will be normalized to sum up to 1. If NULL, uniform weights will be consideredkring
:INT64
size of the k-ring (distance from the origin). This defines the area around each cell that will be taken into account to compute its Gi* statistic. If NULL, uniform weights will be considered.pvalue_thresh
: Threshold for the Gi* value significance, ranging from 0 (most significant) to 1 (least significant). It defaults to 0.05. Cells with a p-value above this threshold won't be returned.
Output The output will contain the following columns:
index
:STRING
containing the cell index.combined_gi
:FLOAT64
with the resulting combined Gi*.p_value
:FLOAT64
with the p-value associated with the combined Gi* statistic.
If the output table is not specified when calling the procedure, the result will be returned but it won't be persisted.
Examples
CALL `carto-un`.carto.COMMERCIAL_HOTSPOTS(
'project_id.dataset_id.my_input_table',
'project_id.dataset_id.my_output_table',
'index',
'h3',
['feature_0', 'feature_1'],
[0.7, 0.3],
3,
0.01
)
-- Table project_id.dataset_id.my_output_table will be created.
-- with columns: index, combined_gi, p_value
CALL `carto-un`.carto.COMMERCIAL_HOTSPOTS(
'project_id.dataset_id.my_input_table',
'project_id.dataset_id.my_output_table',
'index',
'quadbin',
['feature_0', 'feature_1'],
[0.5, 0.5],
1,
0.05
);
-- Table project_id.dataset_id.my_output_table will be created.
-- with columns: index, combined_gi, p_value
BUILD_CANNIBALIZATION_DATA
BUILD_CANNIBALIZATION_DATA(grid_type, store_query, resolution, method, do_variables, do_urbanity_index, do_source, output_destination, output_prefix, options)
Description
This procedure is the first of two from the Cannibalization analysis workflow. It builds the dataset for the existing locations to be used by the procedure CANNIBALIZATION_OVERLAP
to estimate the overlap between existing stores and the potentially new ones.
For each store location, the urbanity level based on CARTO Spatial Features dataset is retrieved.
For each store location, given the radius specified, the cells of the influence area are found.
All cells are enriched with the specified features from Data Observatory subscriptions (e.g. population, footfall, etc.).
A table with store_id, cell_id, and features values are created.
Input parameters
grid_type
:STRING
type of the cell grid. Supported values areh3
andquadbin
.store_query
:STRING
query with variables related to the stores to be used in the model, including their id and location. It must contain the columnsstore_id
(store unique id) andgeom
(the geographical point of the store). The values of these columns cannot beNULL
.resolution
:INT64
level or resolution of the cell grid. Check the available H3 levels and Quadbin levels.method
:STRING
indicates the method of trade area generation. Three options available:buffer
,kring
andisoline
. This method applies to all locations provided.do_variables
:ARRAY<STRUCT<variable STRING, aggregation STRING>>
variables of the Data Observatory that will be used to enrich the grid cells and therefore compute the overlap between store locations in the subsequent step of the Cannibalization workflow. For each variable, its slug and the aggregation method must be provided. Usedefault
to use the variable's default aggregation method. Valid aggregation methods are:sum
,avg
,max
,min
,count
. The catalog procedureDATAOBS_SUBSCRIPTION_VARIABLES
can be used to find available variables and their slugs and default aggregation. It can be set to NULL.do_urbanity_index
:STRING
|NULL
urbanity index variable slug_id in a CARTO Spatial Features subscription from the Data Observatory. If set toNULL
then the urbanity is not considered and only onedistance
, the first one from the options arguments is being taken into account.do_source
:STRING
name of the location where the Data Observatory subscriptions of the user are stored, in<my-dataobs-project>.<my-dataobs-dataset>
format. If only the<my-dataobs-dataset>
is included, it uses the projectcarto-data
by default. It can be set to NULL or ''.output_destination
:STRING
destination dataset the output tables. It must contain the project and dataset. For example<my-project>.<my-dataset>
.output_prefix
:STRING
prefix for the output table.options
:JSON
A JSON string containing the required parameters for the specified method. Forbuffer
: {distances
: [radius km for Remote/Rural/Low_density_urban, radius km for Medium_density_urban, radius km for High/Very_High_density_urban locations] -ARRAY<FLOT64>
},kring
:{distances
: [number of layers for Remote/Rural/Low_density_urban, number of layers for Medium_density_urban, number of layers for High/Very_High_density_urban locations] -INT64
} -ARRAY<INT64>
},isoline
: {mode
: type of transport. Supported: 'walk', 'car' - [type for Remote/Rural/Low_density_urban, type for Medium_density_urban, type for High/Very_High_density_urban locations]ARRAY<STRING>
,time
: range of the isoline in seconds - [seconds for Remote/Rural/Low_density_urban, seconds for Medium_density_urban, seconds for High/Very_High_density_urban locations]ARRAY<INT64>
,api_base_url
: url of the API where the customer account is stored -STRING
,lds_token
: customer's token for accessing the different API services -STRING
}.
Output
This procedure will output one table:
Table containing the store_id, cell_id, distance from store_id (integer), the values for each Data Observatory feature, method type and parameters for each method. The output table can be found at the output destination with name
<output-prefix>_output
. Overall path<my-project>.<my-dataset>.<output-prefix>_output
.
Examples
CALL `carto-un`.carto.BUILD_CANNIBALIZATION_DATA(
--grid_type
'h3',
--store_query
'''SELECT store_id, geom, FROM `<project>.<dataset>.<table_name_with_stores>`''',
--resolution
8,
--method,
'buffer',
--do_variables
[('population_f5b8d177','sum')],
--do_urbanity_index
'urbanity_e1a58891',
--do_source
'<my-dataobs-project>.<my-dataobs-dataset>',
--output_destination
'<my-project>.<my-dataset>',
--output_prefix
'test_cannib',
--options
'{"distances":[5., 3., 1.]}'
);
CALL `carto-un`.carto.BUILD_CANNIBALIZATION_DATA(
--grid_type
'h3',
--store_query
'''SELECT store_id, geom, FROM `<project>.<dataset>.<table_name_with_stores>`''',
--resolution
8,
--method,
'kring',
--do_variables
[('population_f5b8d177','sum')],
--do_urbanity_index
'urbanity_e1a58891',
--do_source
'<my-dataobs-project>.<my-dataobs-dataset>',
--output_destination
'<my-project>.<my-dataset>',
--output_prefix
'test_cannib',
--options
'{"distances":[10, 5, 3]}',
);
CALL `carto-un`.carto.BUILD_CANNIBALIZATION_DATA(
--grid_type
'h3',
--store_query
'''SELECT store_id, geom, FROM `<project>.<dataset>.<table_name_with_stores>`''',
--resolution
8,
--method,
'isoline',
--do_variables
[('population_f5b8d177','sum')],
--do_urbanity_index
'urbanity_e1a58891',
--do_source
'<my-dataobs-project>.<my-dataobs-dataset>',
--output_destination
'<my-project>.<my-dataset>',
--output_prefix
'test_cannib',
--options
'{"modes":[car, car, walk], "distances":[600, 600, 300], "api_base_url":"your url", "lds_token":"your token"}'
);
CANNIBALIZATION_OVERLAP
CANNIBALIZATION_OVERLAP(data_table, new_locations_query, method, do_urbanity_index, do_source, output_destination, output_prefix, options)
Description
This procedure is the second step of the Cannibalization analysis workflow. It takes as input the generated table from BUILD_CANNIBALIZATION_DATA
and the location of the new store, and estimates the overlap of areas and spatial features that the new store would have with the existing stores included into the generated table.
Input parameters
data_table
:STRING
Table with columnsstore_id
,cell_id
,distance
fromstore_id
(integer) and the values for each Data Observatory features.new_locations_query
:STRING
query with store_id and location of new stores.method
:STRING
indicates the method of trade area generation. Three options available:buffer
,kring
andisoline
. This method applies to all locations provided.do_urbanity_index
:STRING
|NULL
urbanity index variable name from the Data Observatory subscriptions. If set toNULL
then the urbanity is not considered and only onedistance
, the first one from the options arguments is being taken into account.do_source
:STRING
name of the location where the Data Observatory subscriptions of the user are stored, in<my-dataobs-project>.<my-dataobs-dataset>
format. If only the<my-dataobs-dataset>
is included, it uses the projectcarto-data
by default. It can be set toNULL
or''
.output_destination
:STRING
destination dataset for the output tables. It must contain the project, dataset and prefix. For example<my-project>.<my-dataset>
.output_prefix
:STRING
The prefix for each table in the output destination.options
:JSON
A JSON string containing the required parameters for the specified method. Forbuffer
: {distances
: [radius km for Remote/Rural/Low_density_urban, radius km for Medium_density_urban, radius km for High/Very_High_density_urban locations] -ARRAY<FLOT64>
},kring
:{distances
: [number of layers for Remote/Rural/Low_density_urban, number of layers for Medium_density_urban, number of layers for High/Very_High_density_urban locations] -ARRAY<INT64>
},isoline
: {mode
: type of transport. Supported: 'walk', 'car' - [type for Remote/Rural/Low_density_urban, type for Medium_density_urban, type for High/Very_High_density_urban locations]ARRAY<STRING>
,time
: range of the isoline in seconds - [seconds for Remote/Rural/Low_density_urban, seconds for Medium_density_urban, seconds for High/Very_High_density_urban locations]ARRAY<INT64>
,api_base_url
: url of the API where the customer account is stored -STRING
,lds_token
: customer's token for accessing the different API services -STRING
}.
Output
This procedure will output one table:
Output overlap table which contains the store_id that receives the "cannibalization", store_id that causes the cannibalization, area overlap and features overlap for each Data Observatory features included in the analysis. The output table can be found at the output destination with the name
<output-prefix>_output_overlap
. Overall path<my-project>.<my-dataset>.<output-prefix>_output_overlap
.
Examples
CALL `carto-un`.carto.CANNIBALIZATION_OVERLAP(
--data_table
'<my-project>.<my-dataset>.output_<suffix from step1>',
--new_locations_query
'''SELECT store_id, geom, FROM `<project>.<dataset>.<table_name_with_new_stores>`''',
--method,
'buffer',
--do_urbanity_index
'urbanity_e1a58891',
--do_source
'<my-dataobs-project>.<my-dataobs-dataset>',
--output_destination
'<my-project>.<my-dataset>',
--output_prefix
'test_cannib',
--options
'{"distances":[5.0, 3.0, 1.0]}'
);
CALL `carto-un`.carto.CANNIBALIZATION_OVERLAP(
--data_table
'<my-project>.<my-dataset>.output_<suffix from step1>',
--new_locations_query
'''SELECT store_id, geom, FROM `<project>.<dataset>.<table_name_with_new_stores>`''',
--method,
'kring',
--do_urbanity_index
'urbanity_e1a58891',
--do_source
'<my-dataobs-project>.<my-dataobs-dataset>',
--output_destination
'<my-project>.<my-dataset>',
--output_prefix
'test_cannib',
--options
'{"distances":[10, 5, 3]}'
);
CALL `carto-un`.carto.CANNIBALIZATION_OVERLAP(
--data_table
'<my-project>.<my-dataset>.output_<suffix from step1>',
--new_locations_query
'''SELECT store_id, geom, FROM `<project>.<dataset>.<table_name_with_new_stores>`''',
--method,
'isoline',
--do_urbanity_index
'urbanity_e1a58891',
--do_source
'<my-dataobs-project>.<my-dataobs-dataset>',
--output_destination
'<my-project>.<my-dataset>',
--output_prefix
'test_cannib',
--options
'{"modes":[car, car, walk], "distances":[600, 600, 300], "api_base_url":"your url", "lds_token":"your token"}'
);
This project has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement No 960401.
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