<html><body> <style> body, h1, h2, h3, div, span, p, pre, a { margin: 0; padding: 0; border: 0; font-weight: inherit; font-style: inherit; font-size: 100%; font-family: inherit; vertical-align: baseline; } body { font-size: 13px; padding: 1em; } h1 { font-size: 26px; margin-bottom: 1em; } h2 { font-size: 24px; margin-bottom: 1em; } h3 { font-size: 20px; margin-bottom: 1em; margin-top: 1em; } pre, code { line-height: 1.5; font-family: Monaco, 'DejaVu Sans Mono', 'Bitstream Vera Sans Mono', 'Lucida Console', monospace; } pre { margin-top: 0.5em; } h1, h2, h3, p { font-family: Arial, sans serif; } h1, h2, h3 { border-bottom: solid #CCC 1px; } .toc_element { margin-top: 0.5em; } .firstline { margin-left: 2 em; } .method { margin-top: 1em; border: solid 1px #CCC; padding: 1em; background: #EEE; } .details { font-weight: bold; font-size: 14px; } </style> <h1><a href="analyticsreporting_v4.html">Google Analytics Reporting API</a> . <a href="analyticsreporting_v4.reports.html">reports</a></h1> <h2>Instance Methods</h2> <p class="toc_element"> <code><a href="#batchGet">batchGet(body, x__xgafv=None)</a></code></p> <p class="firstline">Returns the Analytics data.</p> <h3>Method Details</h3> <div class="method"> <code class="details" id="batchGet">batchGet(body, x__xgafv=None)</code> <pre>Returns the Analytics data. Args: body: object, The request body. (required) The object takes the form of: { # The batch request containing multiple report request. "reportRequests": [ # Requests, each request will have a separate response. # There can be a maximum of 5 requests. All requests should have the same # `dateRanges`, `viewId`, `segments`, `samplingLevel`, and `cohortGroup`. { # The main request class which specifies the Reporting API request. "pivots": [ # The pivot definitions. Requests can have a maximum of 2 pivots. { # The Pivot describes the pivot section in the request. # The Pivot helps rearrange the information in the table for certain reports # by pivoting your data on a second dimension. "metrics": [ # The pivot metrics. Pivot metrics are part of the # restriction on total number of metrics allowed in the request. { # [Metrics](https://support.google.com/analytics/answer/1033861) # are the quantitative measurements. For example, the metric `ga:users` # indicates the total number of users for the requested time period. "alias": "A String", # An alias for the metric expression is an alternate name for the # expression. The alias can be used for filtering and sorting. This field # is optional and is useful if the expression is not a single metric but # a complex expression which cannot be used in filtering and sorting. # The alias is also used in the response column header. "expression": "A String", # A metric expression in the request. An expression is constructed from one # or more metrics and numbers. Accepted operators include: Plus (+), Minus # (-), Negation (Unary -), Divided by (/), Multiplied by (*), Parenthesis, # Positive cardinal numbers (0-9), can include decimals and is limited to # 1024 characters. Example `ga:totalRefunds/ga:users`, in most cases the # metric expression is just a single metric name like `ga:users`. # Adding mixed `MetricType` (E.g., `CURRENCY` + `PERCENTAGE`) metrics # will result in unexpected results. "formattingType": "A String", # Specifies how the metric expression should be formatted, for example # `INTEGER`. }, ], "maxGroupCount": 42, # Specifies the maximum number of groups to return. # The default value is 10, also the maximum value is 1,000. "dimensions": [ # A list of dimensions to show as pivot columns. A Pivot can have a maximum # of 4 dimensions. Pivot dimensions are part of the restriction on the # total number of dimensions allowed in the request. { # [Dimensions](https://support.google.com/analytics/answer/1033861) # are attributes of your data. For example, the dimension `ga:city` # indicates the city, for example, "Paris" or "New York", from which # a session originates. "name": "A String", # Name of the dimension to fetch, for example `ga:browser`. "histogramBuckets": [ # If non-empty, we place dimension values into buckets after string to # int64. Dimension values that are not the string representation of an # integral value will be converted to zero. The bucket values have to be in # increasing order. Each bucket is closed on the lower end, and open on the # upper end. The "first" bucket includes all values less than the first # boundary, the "last" bucket includes all values up to infinity. Dimension # values that fall in a bucket get transformed to a new dimension value. For # example, if one gives a list of "0, 1, 3, 4, 7", then we return the # following buckets: # # - bucket #1: values < 0, dimension value "<0" # - bucket #2: values in [0,1), dimension value "0" # - bucket #3: values in [1,3), dimension value "1-2" # - bucket #4: values in [3,4), dimension value "3" # - bucket #5: values in [4,7), dimension value "4-6" # - bucket #6: values >= 7, dimension value "7+" # # NOTE: If you are applying histogram mutation on any dimension, and using # that dimension in sort, you will want to use the sort type # `HISTOGRAM_BUCKET` for that purpose. Without that the dimension values # will be sorted according to dictionary # (lexicographic) order. For example the ascending dictionary order is: # # "<50", "1001+", "121-1000", "50-120" # # And the ascending `HISTOGRAM_BUCKET` order is: # # "<50", "50-120", "121-1000", "1001+" # # The client has to explicitly request `"orderType": "HISTOGRAM_BUCKET"` # for a histogram-mutated dimension. "A String", ], }, ], "dimensionFilterClauses": [ # DimensionFilterClauses are logically combined with an `AND` operator: only # data that is included by all these DimensionFilterClauses contributes to # the values in this pivot region. Dimension filters can be used to restrict # the columns shown in the pivot region. For example if you have # `ga:browser` as the requested dimension in the pivot region, and you # specify key filters to restrict `ga:browser` to only "IE" or "Firefox", # then only those two browsers would show up as columns. { # A group of dimension filters. Set the operator value to specify how # the filters are logically combined. "operator": "A String", # The operator for combining multiple dimension filters. If unspecified, it # is treated as an `OR`. "filters": [ # The repeated set of filters. They are logically combined based on the # operator specified. { # Dimension filter specifies the filtering options on a dimension. "dimensionName": "A String", # The dimension to filter on. A DimensionFilter must contain a dimension. "operator": "A String", # How to match the dimension to the expression. The default is REGEXP. "expressions": [ # Strings or regular expression to match against. Only the first value of # the list is used for comparison unless the operator is `IN_LIST`. # If `IN_LIST` operator, then the entire list is used to filter the # dimensions as explained in the description of the `IN_LIST` operator. "A String", ], "not": True or False, # Logical `NOT` operator. If this boolean is set to true, then the matching # dimension values will be excluded in the report. The default is false. "caseSensitive": True or False, # Should the match be case sensitive? Default is false. }, ], }, ], "startGroup": 42, # If k metrics were requested, then the response will contain some # data-dependent multiple of k columns in the report. E.g., if you pivoted # on the dimension `ga:browser` then you'd get k columns for "Firefox", k # columns for "IE", k columns for "Chrome", etc. The ordering of the groups # of columns is determined by descending order of "total" for the first of # the k values. Ties are broken by lexicographic ordering of the first # pivot dimension, then lexicographic ordering of the second pivot # dimension, and so on. E.g., if the totals for the first value for # Firefox, IE, and Chrome were 8, 2, 8, respectively, the order of columns # would be Chrome, Firefox, IE. # # The following let you choose which of the groups of k columns are # included in the response. }, ], "hideTotals": True or False, # If set to true, hides the total of all metrics for all the matching rows, # for every date range. The default false and will return the totals. "metrics": [ # The metrics requested. # Requests must specify at least one metric. Requests can have a # total of 10 metrics. { # [Metrics](https://support.google.com/analytics/answer/1033861) # are the quantitative measurements. For example, the metric `ga:users` # indicates the total number of users for the requested time period. "alias": "A String", # An alias for the metric expression is an alternate name for the # expression. The alias can be used for filtering and sorting. This field # is optional and is useful if the expression is not a single metric but # a complex expression which cannot be used in filtering and sorting. # The alias is also used in the response column header. "expression": "A String", # A metric expression in the request. An expression is constructed from one # or more metrics and numbers. Accepted operators include: Plus (+), Minus # (-), Negation (Unary -), Divided by (/), Multiplied by (*), Parenthesis, # Positive cardinal numbers (0-9), can include decimals and is limited to # 1024 characters. Example `ga:totalRefunds/ga:users`, in most cases the # metric expression is just a single metric name like `ga:users`. # Adding mixed `MetricType` (E.g., `CURRENCY` + `PERCENTAGE`) metrics # will result in unexpected results. "formattingType": "A String", # Specifies how the metric expression should be formatted, for example # `INTEGER`. }, ], "dimensions": [ # The dimensions requested. # Requests can have a total of 7 dimensions. { # [Dimensions](https://support.google.com/analytics/answer/1033861) # are attributes of your data. For example, the dimension `ga:city` # indicates the city, for example, "Paris" or "New York", from which # a session originates. "name": "A String", # Name of the dimension to fetch, for example `ga:browser`. "histogramBuckets": [ # If non-empty, we place dimension values into buckets after string to # int64. Dimension values that are not the string representation of an # integral value will be converted to zero. The bucket values have to be in # increasing order. Each bucket is closed on the lower end, and open on the # upper end. The "first" bucket includes all values less than the first # boundary, the "last" bucket includes all values up to infinity. Dimension # values that fall in a bucket get transformed to a new dimension value. For # example, if one gives a list of "0, 1, 3, 4, 7", then we return the # following buckets: # # - bucket #1: values < 0, dimension value "<0" # - bucket #2: values in [0,1), dimension value "0" # - bucket #3: values in [1,3), dimension value "1-2" # - bucket #4: values in [3,4), dimension value "3" # - bucket #5: values in [4,7), dimension value "4-6" # - bucket #6: values >= 7, dimension value "7+" # # NOTE: If you are applying histogram mutation on any dimension, and using # that dimension in sort, you will want to use the sort type # `HISTOGRAM_BUCKET` for that purpose. Without that the dimension values # will be sorted according to dictionary # (lexicographic) order. For example the ascending dictionary order is: # # "<50", "1001+", "121-1000", "50-120" # # And the ascending `HISTOGRAM_BUCKET` order is: # # "<50", "50-120", "121-1000", "1001+" # # The client has to explicitly request `"orderType": "HISTOGRAM_BUCKET"` # for a histogram-mutated dimension. "A String", ], }, ], "pageSize": 42, # Page size is for paging and specifies the maximum number of returned rows. # Page size should be >= 0. A query returns the default of 1,000 rows. # The Analytics Core Reporting API returns a maximum of 10,000 rows per # request, no matter how many you ask for. It can also return fewer rows # than requested, if there aren't as many dimension segments as you expect. # For instance, there are fewer than 300 possible values for `ga:country`, # so when segmenting only by country, you can't get more than 300 rows, # even if you set `pageSize` to a higher value. "includeEmptyRows": True or False, # If set to false, the response does not include rows if all the retrieved # metrics are equal to zero. The default is false which will exclude these # rows. "filtersExpression": "A String", # Dimension or metric filters that restrict the data returned for your # request. To use the `filtersExpression`, supply a dimension or metric on # which to filter, followed by the filter expression. For example, the # following expression selects `ga:browser` dimension which starts with # Firefox; `ga:browser=~^Firefox`. For more information on dimensions # and metric filters, see # [Filters reference](https://developers.google.com/analytics/devguides/reporting/core/v3/reference#filters). "viewId": "A String", # The Analytics # [view ID](https://support.google.com/analytics/answer/1009618) # from which to retrieve data. Every [ReportRequest](#ReportRequest) # within a `batchGet` method must contain the same `viewId`. "hideValueRanges": True or False, # If set to true, hides the minimum and maximum across all matching rows. # The default is false and the value ranges are returned. "orderBys": [ # Sort order on output rows. To compare two rows, the elements of the # following are applied in order until a difference is found. All date # ranges in the output get the same row order. { # Specifies the sorting options. "orderType": "A String", # The order type. The default orderType is `VALUE`. "fieldName": "A String", # The field which to sort by. The default sort order is ascending. Example: # `ga:browser`. # Note, that you can only specify one field for sort here. For example, # `ga:browser, ga:city` is not valid. "sortOrder": "A String", # The sorting order for the field. }, ], "cohortGroup": { # Defines a cohort group. # Cohort group associated with this request. If there is a cohort group # in the request the `ga:cohort` dimension must be present. # Every [ReportRequest](#ReportRequest) within a `batchGet` method must # contain the same `cohortGroup` definition. # For example: # # "cohortGroup": { # "cohorts": [{ # "name": "cohort 1", # "type": "FIRST_VISIT_DATE", # "dateRange": { "startDate": "2015-08-01", "endDate": "2015-08-01" } # },{ # "name": "cohort 2" # "type": "FIRST_VISIT_DATE" # "dateRange": { "startDate": "2015-07-01", "endDate": "2015-07-01" } # }] # } "cohorts": [ # The definition for the cohort. { # Defines a cohort. A cohort is a group of users who share a common # characteristic. For example, all users with the same acquisition date # belong to the same cohort. "dateRange": { # A contiguous set of days: startDate, startDate + 1 day, ..., endDate. # This is used for `FIRST_VISIT_DATE` cohort, the cohort selects users # whose first visit date is between start date and end date defined in the # DateRange. The date ranges should be aligned for cohort requests. If the # request contains `ga:cohortNthDay` it should be exactly one day long, # if `ga:cohortNthWeek` it should be aligned to the week boundary (starting # at Sunday and ending Saturday), and for `ga:cohortNthMonth` the date range # should be aligned to the month (starting at the first and ending on the # last day of the month). # For LTV requests there are no such restrictions. # You do not need to supply a date range for the # `reportsRequest.dateRanges` field. # The start and end dates are specified in # [ISO8601](https://en.wikipedia.org/wiki/ISO_8601) date format `YYYY-MM-DD`. "startDate": "A String", # The start date for the query in the format `YYYY-MM-DD`. "endDate": "A String", # The end date for the query in the format `YYYY-MM-DD`. }, "type": "A String", # Type of the cohort. The only supported type as of now is # `FIRST_VISIT_DATE`. If this field is unspecified the cohort is treated # as `FIRST_VISIT_DATE` type cohort. "name": "A String", # A unique name for the cohort. If not defined name will be auto-generated # with values cohort_[1234...]. }, ], "lifetimeValue": True or False, # Enable Life Time Value (LTV). LTV measures lifetime value for users # acquired through different channels. # Please see: # [Cohort Analysis](https://support.google.com/analytics/answer/6074676) and # [Lifetime Value](https://support.google.com/analytics/answer/6182550) # If the value of lifetimeValue is false: # # - The metric values are similar to the values in the web interface cohort # report. # - The cohort definition date ranges must be aligned to the calendar week # and month. i.e. while requesting `ga:cohortNthWeek` the `startDate` in # the cohort definition should be a Sunday and the `endDate` should be the # following Saturday, and for `ga:cohortNthMonth`, the `startDate` # should be the 1st of the month and `endDate` should be the last day # of the month. # # When the lifetimeValue is true: # # - The metric values will correspond to the values in the web interface # LifeTime value report. # - The Lifetime Value report shows you how user value (Revenue) and # engagement (Appviews, Goal Completions, Sessions, and Session Duration) # grow during the 90 days after a user is acquired. # - The metrics are calculated as a cumulative average per user per the time # increment. # - The cohort definition date ranges need not be aligned to the calendar # week and month boundaries. # - The `viewId` must be an # [app view ID](https://support.google.com/analytics/answer/2649553#WebVersusAppViews) }, "dateRanges": [ # Date ranges in the request. The request can have a maximum of 2 date # ranges. The response will contain a set of metric values for each # combination of the dimensions for each date range in the request. So, if # there are two date ranges, there will be two set of metric values, one for # the original date range and one for the second date range. # The `reportRequest.dateRanges` field should not be specified for cohorts # or Lifetime value requests. # If a date range is not provided, the default date range is (startDate: # current date - 7 days, endDate: current date - 1 day). Every # [ReportRequest](#ReportRequest) within a `batchGet` method must # contain the same `dateRanges` definition. { # A contiguous set of days: startDate, startDate + 1 day, ..., endDate. # The start and end dates are specified in # [ISO8601](https://en.wikipedia.org/wiki/ISO_8601) date format `YYYY-MM-DD`. "startDate": "A String", # The start date for the query in the format `YYYY-MM-DD`. "endDate": "A String", # The end date for the query in the format `YYYY-MM-DD`. }, ], "pageToken": "A String", # A continuation token to get the next page of the results. Adding this to # the request will return the rows after the pageToken. The pageToken should # be the value returned in the nextPageToken parameter in the response to # the GetReports request. "samplingLevel": "A String", # The desired report # [sample](https://support.google.com/analytics/answer/2637192) size. # If the the `samplingLevel` field is unspecified the `DEFAULT` sampling # level is used. Every [ReportRequest](#ReportRequest) within a # `batchGet` method must contain the same `samplingLevel` definition. See # [developer guide](/analytics/devguides/reporting/core/v4/basics#sampling) # for details. "dimensionFilterClauses": [ # The dimension filter clauses for filtering Dimension Values. They are # logically combined with the `AND` operator. Note that filtering occurs # before any dimensions are aggregated, so that the returned metrics # represent the total for only the relevant dimensions. { # A group of dimension filters. Set the operator value to specify how # the filters are logically combined. "operator": "A String", # The operator for combining multiple dimension filters. If unspecified, it # is treated as an `OR`. "filters": [ # The repeated set of filters. They are logically combined based on the # operator specified. { # Dimension filter specifies the filtering options on a dimension. "dimensionName": "A String", # The dimension to filter on. A DimensionFilter must contain a dimension. "operator": "A String", # How to match the dimension to the expression. The default is REGEXP. "expressions": [ # Strings or regular expression to match against. Only the first value of # the list is used for comparison unless the operator is `IN_LIST`. # If `IN_LIST` operator, then the entire list is used to filter the # dimensions as explained in the description of the `IN_LIST` operator. "A String", ], "not": True or False, # Logical `NOT` operator. If this boolean is set to true, then the matching # dimension values will be excluded in the report. The default is false. "caseSensitive": True or False, # Should the match be case sensitive? Default is false. }, ], }, ], "metricFilterClauses": [ # The metric filter clauses. They are logically combined with the `AND` # operator. Metric filters look at only the first date range and not the # comparing date range. Note that filtering on metrics occurs after the # metrics are aggregated. { # Represents a group of metric filters. # Set the operator value to specify how the filters are logically combined. "operator": "A String", # The operator for combining multiple metric filters. If unspecified, it is # treated as an `OR`. "filters": [ # The repeated set of filters. They are logically combined based on the # operator specified. { # MetricFilter specifies the filter on a metric. "operator": "A String", # Is the metric `EQUAL`, `LESS_THAN` or `GREATER_THAN` the # comparisonValue, the default is `EQUAL`. If the operator is # `IS_MISSING`, checks if the metric is missing and would ignore the # comparisonValue. "not": True or False, # Logical `NOT` operator. If this boolean is set to true, then the matching # metric values will be excluded in the report. The default is false. "comparisonValue": "A String", # The value to compare against. "metricName": "A String", # The metric that will be filtered on. A metricFilter must contain a metric # name. A metric name can be an alias earlier defined as a metric or it can # also be a metric expression. }, ], }, ], "segments": [ # Segment the data returned for the request. A segment definition helps look # at a subset of the segment request. A request can contain up to four # segments. Every [ReportRequest](#ReportRequest) within a # `batchGet` method must contain the same `segments` definition. Requests # with segments must have the `ga:segment` dimension. { # The segment definition, if the report needs to be segmented. # A Segment is a subset of the Analytics data. For example, of the entire # set of users, one Segment might be users from a particular country or city. "dynamicSegment": { # Dynamic segment definition for defining the segment within the request. # A dynamic segment definition in the request. # A segment can select users, sessions or both. "sessionSegment": { # SegmentDefinition defines the segment to be a set of SegmentFilters which # Session Segment to select sessions to include in the segment. # are combined together with a logical `AND` operation. "segmentFilters": [ # A segment is defined by a set of segment filters which are combined # together with a logical `AND` operation. { # SegmentFilter defines the segment to be either a simple or a sequence # segment. A simple segment condition contains dimension and metric conditions # to select the sessions or users. A sequence segment condition can be used to # select users or sessions based on sequential conditions. "not": True or False, # If true, match the complement of simple or sequence segment. # For example, to match all visits not from "New York", we can define the # segment as follows: # # "sessionSegment": { # "segmentFilters": [{ # "simpleSegment" :{ # "orFiltersForSegment": [{ # "segmentFilterClauses":[{ # "dimensionFilter": { # "dimensionName": "ga:city", # "expressions": ["New York"] # } # }] # }] # }, # "not": "True" # }] # }, "simpleSegment": { # A Simple segment conditions consist of one or more dimension/metric # A Simple segment conditions consist of one or more dimension/metric # conditions that can be combined # conditions that can be combined. "orFiltersForSegment": [ # A list of segment filters groups which are combined with logical `AND` # operator. { # A list of segment filters in the `OR` group are combined with the logical OR # operator. "segmentFilterClauses": [ # List of segment filters to be combined with a `OR` operator. { # Filter Clause to be used in a segment definition, can be wither a metric or # a dimension filter. "not": True or False, # Matches the complement (`!`) of the filter. "dimensionFilter": { # Dimension filter specifies the filtering options on a dimension. # Dimension Filter for the segment definition. "minComparisonValue": "A String", # Minimum comparison values for `BETWEEN` match type. "maxComparisonValue": "A String", # Maximum comparison values for `BETWEEN` match type. "dimensionName": "A String", # Name of the dimension for which the filter is being applied. "caseSensitive": True or False, # Should the match be case sensitive, ignored for `IN_LIST` operator. "operator": "A String", # The operator to use to match the dimension with the expressions. "expressions": [ # The list of expressions, only the first element is used for all operators "A String", ], }, "metricFilter": { # Metric filter to be used in a segment filter clause. # Metric Filter for the segment definition. "operator": "A String", # Specifies is the operation to perform to compare the metric. The default # is `EQUAL`. "scope": "A String", # Scope for a metric defines the level at which that metric is defined. The # specified metric scope must be equal to or greater than its primary scope # as defined in the data model. The primary scope is defined by if the # segment is selecting users or sessions. "comparisonValue": "A String", # The value to compare against. If the operator is `BETWEEN`, this value is # treated as minimum comparison value. "maxComparisonValue": "A String", # Max comparison value is only used for `BETWEEN` operator. "metricName": "A String", # The metric that will be filtered on. A `metricFilter` must contain a # metric name. }, }, ], }, ], }, "sequenceSegment": { # Sequence conditions consist of one or more steps, where each step is defined # Sequence conditions consist of one or more steps, where each step is # defined by one or more dimension/metric conditions. Multiple steps can # be combined with special sequence operators. # by one or more dimension/metric conditions. Multiple steps can be combined # with special sequence operators. "segmentSequenceSteps": [ # The list of steps in the sequence. { # A segment sequence definition. "matchType": "A String", # Specifies if the step immediately precedes or can be any time before the # next step. "orFiltersForSegment": [ # A sequence is specified with a list of Or grouped filters which are # combined with `AND` operator. { # A list of segment filters in the `OR` group are combined with the logical OR # operator. "segmentFilterClauses": [ # List of segment filters to be combined with a `OR` operator. { # Filter Clause to be used in a segment definition, can be wither a metric or # a dimension filter. "not": True or False, # Matches the complement (`!`) of the filter. "dimensionFilter": { # Dimension filter specifies the filtering options on a dimension. # Dimension Filter for the segment definition. "minComparisonValue": "A String", # Minimum comparison values for `BETWEEN` match type. "maxComparisonValue": "A String", # Maximum comparison values for `BETWEEN` match type. "dimensionName": "A String", # Name of the dimension for which the filter is being applied. "caseSensitive": True or False, # Should the match be case sensitive, ignored for `IN_LIST` operator. "operator": "A String", # The operator to use to match the dimension with the expressions. "expressions": [ # The list of expressions, only the first element is used for all operators "A String", ], }, "metricFilter": { # Metric filter to be used in a segment filter clause. # Metric Filter for the segment definition. "operator": "A String", # Specifies is the operation to perform to compare the metric. The default # is `EQUAL`. "scope": "A String", # Scope for a metric defines the level at which that metric is defined. The # specified metric scope must be equal to or greater than its primary scope # as defined in the data model. The primary scope is defined by if the # segment is selecting users or sessions. "comparisonValue": "A String", # The value to compare against. If the operator is `BETWEEN`, this value is # treated as minimum comparison value. "maxComparisonValue": "A String", # Max comparison value is only used for `BETWEEN` operator. "metricName": "A String", # The metric that will be filtered on. A `metricFilter` must contain a # metric name. }, }, ], }, ], }, ], "firstStepShouldMatchFirstHit": True or False, # If set, first step condition must match the first hit of the visitor (in # the date range). }, }, ], }, "name": "A String", # The name of the dynamic segment. "userSegment": { # SegmentDefinition defines the segment to be a set of SegmentFilters which # User Segment to select users to include in the segment. # are combined together with a logical `AND` operation. "segmentFilters": [ # A segment is defined by a set of segment filters which are combined # together with a logical `AND` operation. { # SegmentFilter defines the segment to be either a simple or a sequence # segment. A simple segment condition contains dimension and metric conditions # to select the sessions or users. A sequence segment condition can be used to # select users or sessions based on sequential conditions. "not": True or False, # If true, match the complement of simple or sequence segment. # For example, to match all visits not from "New York", we can define the # segment as follows: # # "sessionSegment": { # "segmentFilters": [{ # "simpleSegment" :{ # "orFiltersForSegment": [{ # "segmentFilterClauses":[{ # "dimensionFilter": { # "dimensionName": "ga:city", # "expressions": ["New York"] # } # }] # }] # }, # "not": "True" # }] # }, "simpleSegment": { # A Simple segment conditions consist of one or more dimension/metric # A Simple segment conditions consist of one or more dimension/metric # conditions that can be combined # conditions that can be combined. "orFiltersForSegment": [ # A list of segment filters groups which are combined with logical `AND` # operator. { # A list of segment filters in the `OR` group are combined with the logical OR # operator. "segmentFilterClauses": [ # List of segment filters to be combined with a `OR` operator. { # Filter Clause to be used in a segment definition, can be wither a metric or # a dimension filter. "not": True or False, # Matches the complement (`!`) of the filter. "dimensionFilter": { # Dimension filter specifies the filtering options on a dimension. # Dimension Filter for the segment definition. "minComparisonValue": "A String", # Minimum comparison values for `BETWEEN` match type. "maxComparisonValue": "A String", # Maximum comparison values for `BETWEEN` match type. "dimensionName": "A String", # Name of the dimension for which the filter is being applied. "caseSensitive": True or False, # Should the match be case sensitive, ignored for `IN_LIST` operator. "operator": "A String", # The operator to use to match the dimension with the expressions. "expressions": [ # The list of expressions, only the first element is used for all operators "A String", ], }, "metricFilter": { # Metric filter to be used in a segment filter clause. # Metric Filter for the segment definition. "operator": "A String", # Specifies is the operation to perform to compare the metric. The default # is `EQUAL`. "scope": "A String", # Scope for a metric defines the level at which that metric is defined. The # specified metric scope must be equal to or greater than its primary scope # as defined in the data model. The primary scope is defined by if the # segment is selecting users or sessions. "comparisonValue": "A String", # The value to compare against. If the operator is `BETWEEN`, this value is # treated as minimum comparison value. "maxComparisonValue": "A String", # Max comparison value is only used for `BETWEEN` operator. "metricName": "A String", # The metric that will be filtered on. A `metricFilter` must contain a # metric name. }, }, ], }, ], }, "sequenceSegment": { # Sequence conditions consist of one or more steps, where each step is defined # Sequence conditions consist of one or more steps, where each step is # defined by one or more dimension/metric conditions. Multiple steps can # be combined with special sequence operators. # by one or more dimension/metric conditions. Multiple steps can be combined # with special sequence operators. "segmentSequenceSteps": [ # The list of steps in the sequence. { # A segment sequence definition. "matchType": "A String", # Specifies if the step immediately precedes or can be any time before the # next step. "orFiltersForSegment": [ # A sequence is specified with a list of Or grouped filters which are # combined with `AND` operator. { # A list of segment filters in the `OR` group are combined with the logical OR # operator. "segmentFilterClauses": [ # List of segment filters to be combined with a `OR` operator. { # Filter Clause to be used in a segment definition, can be wither a metric or # a dimension filter. "not": True or False, # Matches the complement (`!`) of the filter. "dimensionFilter": { # Dimension filter specifies the filtering options on a dimension. # Dimension Filter for the segment definition. "minComparisonValue": "A String", # Minimum comparison values for `BETWEEN` match type. "maxComparisonValue": "A String", # Maximum comparison values for `BETWEEN` match type. "dimensionName": "A String", # Name of the dimension for which the filter is being applied. "caseSensitive": True or False, # Should the match be case sensitive, ignored for `IN_LIST` operator. "operator": "A String", # The operator to use to match the dimension with the expressions. "expressions": [ # The list of expressions, only the first element is used for all operators "A String", ], }, "metricFilter": { # Metric filter to be used in a segment filter clause. # Metric Filter for the segment definition. "operator": "A String", # Specifies is the operation to perform to compare the metric. The default # is `EQUAL`. "scope": "A String", # Scope for a metric defines the level at which that metric is defined. The # specified metric scope must be equal to or greater than its primary scope # as defined in the data model. The primary scope is defined by if the # segment is selecting users or sessions. "comparisonValue": "A String", # The value to compare against. If the operator is `BETWEEN`, this value is # treated as minimum comparison value. "maxComparisonValue": "A String", # Max comparison value is only used for `BETWEEN` operator. "metricName": "A String", # The metric that will be filtered on. A `metricFilter` must contain a # metric name. }, }, ], }, ], }, ], "firstStepShouldMatchFirstHit": True or False, # If set, first step condition must match the first hit of the visitor (in # the date range). }, }, ], }, }, "segmentId": "A String", # The segment ID of a built-in or custom segment, for example `gaid::-3`. }, ], }, ], } x__xgafv: string, V1 error format. Allowed values 1 - v1 error format 2 - v2 error format Returns: An object of the form: { # The main response class which holds the reports from the Reporting API # `batchGet` call. "reports": [ # Responses corresponding to each of the request. { # The data response corresponding to the request. "nextPageToken": "A String", # Page token to retrieve the next page of results in the list. "data": { # The data part of the report. # Response data. "rows": [ # There's one ReportRow for every unique combination of dimensions. { # A row in the report. "metrics": [ # List of metrics for each requested DateRange. { # Used to return a list of metrics for a single DateRange / dimension # combination "values": [ # Each value corresponds to each Metric in the request. "A String", ], "pivotValueRegions": [ # The values of each pivot region. { # The metric values in the pivot region. "values": [ # The values of the metrics in each of the pivot regions. "A String", ], }, ], }, ], "dimensions": [ # List of requested dimensions. "A String", ], }, ], "maximums": [ # Minimum and maximum values seen over all matching rows. These are both # empty when `hideValueRanges` in the request is false, or when # rowCount is zero. { # Used to return a list of metrics for a single DateRange / dimension # combination "values": [ # Each value corresponds to each Metric in the request. "A String", ], "pivotValueRegions": [ # The values of each pivot region. { # The metric values in the pivot region. "values": [ # The values of the metrics in each of the pivot regions. "A String", ], }, ], }, ], "minimums": [ # Minimum and maximum values seen over all matching rows. These are both # empty when `hideValueRanges` in the request is false, or when # rowCount is zero. { # Used to return a list of metrics for a single DateRange / dimension # combination "values": [ # Each value corresponds to each Metric in the request. "A String", ], "pivotValueRegions": [ # The values of each pivot region. { # The metric values in the pivot region. "values": [ # The values of the metrics in each of the pivot regions. "A String", ], }, ], }, ], "isDataGolden": True or False, # Indicates if response to this request is golden or not. Data is # golden when the exact same request will not produce any new results if # asked at a later point in time. "samplingSpaceSizes": [ # If the results are # [sampled](https://support.google.com/analytics/answer/2637192), # this returns the total number of # samples present, one entry per date range. If the results are not sampled # this field will not be defined. See # [developer guide](/analytics/devguides/reporting/core/v4/basics#sampling) # for details. "A String", ], "totals": [ # For each requested date range, for the set of all rows that match # the query, every requested value format gets a total. The total # for a value format is computed by first totaling the metrics # mentioned in the value format and then evaluating the value # format as a scalar expression. E.g., The "totals" for # `3 / (ga:sessions + 2)` we compute # `3 / ((sum of all relevant ga:sessions) + 2)`. # Totals are computed before pagination. { # Used to return a list of metrics for a single DateRange / dimension # combination "values": [ # Each value corresponds to each Metric in the request. "A String", ], "pivotValueRegions": [ # The values of each pivot region. { # The metric values in the pivot region. "values": [ # The values of the metrics in each of the pivot regions. "A String", ], }, ], }, ], "rowCount": 42, # Total number of matching rows for this query. "dataLastRefreshed": "A String", # The last time the data in the report was refreshed. All the hits received # before this timestamp are included in the calculation of the report. "samplesReadCounts": [ # If the results are # [sampled](https://support.google.com/analytics/answer/2637192), # this returns the total number of samples read, one entry per date range. # If the results are not sampled this field will not be defined. See # [developer guide](/analytics/devguides/reporting/core/v4/basics#sampling) # for details. "A String", ], }, "columnHeader": { # Column headers. # The column headers. "dimensions": [ # The dimension names in the response. "A String", ], "metricHeader": { # The headers for the metrics. # Metric headers for the metrics in the response. "metricHeaderEntries": [ # Headers for the metrics in the response. { # Header for the metrics. "type": "A String", # The type of the metric, for example `INTEGER`. "name": "A String", # The name of the header. }, ], "pivotHeaders": [ # Headers for the pivots in the response. { # The headers for each of the pivot sections defined in the request. "totalPivotGroupsCount": 42, # The total number of groups for this pivot. "pivotHeaderEntries": [ # A single pivot section header. { # The headers for the each of the metric column corresponding to the metrics # requested in the pivots section of the response. "dimensionValues": [ # The values for the dimensions in the pivot. "A String", ], "dimensionNames": [ # The name of the dimensions in the pivot response. "A String", ], "metric": { # Header for the metrics. # The metric header for the metric in the pivot. "type": "A String", # The type of the metric, for example `INTEGER`. "name": "A String", # The name of the header. }, }, ], }, ], }, }, }, ], }</pre> </div> </body></html>