Monthly Average

Change this Parameter to determine how many days in the past you'd like to use to calculate an average Credit Burn. Note: Today's information is included. For Example: If you select 7, then you will get an average of the previous 7 day's credit burn (including today). USAGE_DATE 7 [USAGE_DATE] [STORAGE_USAGE] USAGE_DATE 1 date Year true "SQL_TYPE_DATE" "SQL_C_TYPE_DATE" STORAGE_BYTES 131 [STORAGE_BYTES] [STORAGE_USAGE] STORAGE_BYTES 2 real Sum 39 6 true "SQL_DECIMAL" "SQL_C_NUMERIC" STAGE_BYTES 131 [STAGE_BYTES] [STORAGE_USAGE] STAGE_BYTES 3 real Sum 39 6 true "SQL_DECIMAL" "SQL_C_NUMERIC" FAILSAFE_BYTES 131 [FAILSAFE_BYTES] [STORAGE_USAGE] FAILSAFE_BYTES 4 real Sum 39 6 true "SQL_DECIMAL" "SQL_C_NUMERIC" "Actual" "Estimate" START_TIME 7 [START_TIME] [WAREHOUSE_METERING_HISTORY] START_TIME 1 datetime Year true "SQL_TYPE_TIMESTAMP" "SQL_C_TYPE_TIMESTAMP" END_TIME 7 [END_TIME] [WAREHOUSE_METERING_HISTORY] END_TIME 2 datetime Year true "SQL_TYPE_TIMESTAMP" "SQL_C_TYPE_TIMESTAMP" WAREHOUSE_ID 131 [WAREHOUSE_ID] [WAREHOUSE_METERING_HISTORY] WAREHOUSE_ID 3 integer Sum 39 0 true "SQL_DECIMAL" "SQL_C_NUMERIC" WAREHOUSE_NAME 129 [WAREHOUSE_NAME] [WAREHOUSE_METERING_HISTORY] WAREHOUSE_NAME 4 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" CREDITS_USED 131 [CREDITS_USED] [WAREHOUSE_METERING_HISTORY] CREDITS_USED 5 real Sum 39 2 true "SQL_DECIMAL" "SQL_C_NUMERIC"
-1
Change this Parameter to determine how many days in the past you'd like to use to calculate an average Credit Burn. Note: Today's information is included. For Example: If you select 7, then you will get an average of the previous 7 day's credit burn (including today).
QUERY_ID 129 [QUERY_ID] [QUERY_HISTORY] QUERY_ID 1 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" QUERY_TEXT 129 [QUERY_TEXT] [QUERY_HISTORY] QUERY_TEXT 2 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" DATABASE_ID 131 [DATABASE_ID] [QUERY_HISTORY] DATABASE_ID 3 integer Sum 39 0 true "SQL_DECIMAL" "SQL_C_NUMERIC" DATABASE_NAME 129 [DATABASE_NAME] [QUERY_HISTORY] DATABASE_NAME 4 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" SCHEMA_ID 131 [SCHEMA_ID] [QUERY_HISTORY] SCHEMA_ID 5 integer Sum 39 0 true "SQL_DECIMAL" "SQL_C_NUMERIC" SCHEMA_NAME 129 [SCHEMA_NAME] [QUERY_HISTORY] SCHEMA_NAME 6 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" QUERY_TYPE 129 [QUERY_TYPE] [QUERY_HISTORY] QUERY_TYPE 7 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" SESSION_ID 131 [SESSION_ID] [QUERY_HISTORY] SESSION_ID 8 integer Sum 38 0 true "SQL_DECIMAL" "SQL_C_NUMERIC" USER_NAME 129 [USER_NAME] [QUERY_HISTORY] USER_NAME 9 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" ROLE_NAME 129 [ROLE_NAME] [QUERY_HISTORY] ROLE_NAME 10 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" WAREHOUSE_ID 131 [WAREHOUSE_ID] [QUERY_HISTORY] WAREHOUSE_ID 11 integer Sum 39 0 true "SQL_DECIMAL" "SQL_C_NUMERIC" WAREHOUSE_NAME 129 [WAREHOUSE_NAME] [QUERY_HISTORY] WAREHOUSE_NAME 12 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" WAREHOUSE_SIZE 129 [WAREHOUSE_SIZE] [QUERY_HISTORY] WAREHOUSE_SIZE 13 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" WAREHOUSE_TYPE 129 [WAREHOUSE_TYPE] [QUERY_HISTORY] WAREHOUSE_TYPE 14 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" CLUSTER_NUMBER 131 [CLUSTER_NUMBER] [QUERY_HISTORY] CLUSTER_NUMBER 15 integer Sum 39 0 true "SQL_DECIMAL" "SQL_C_NUMERIC" QUERY_TAG 129 [QUERY_TAG] [QUERY_HISTORY] QUERY_TAG 16 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" EXECUTION_STATUS 129 [EXECUTION_STATUS] [QUERY_HISTORY] EXECUTION_STATUS 17 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" ERROR_CODE 129 [ERROR_CODE] [QUERY_HISTORY] ERROR_CODE 18 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" ERROR_MESSAGE 129 [ERROR_MESSAGE] [QUERY_HISTORY] ERROR_MESSAGE 19 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" START_TIME 7 [START_TIME] [QUERY_HISTORY] START_TIME 20 datetime Year true "SQL_TYPE_TIMESTAMP" "SQL_C_TYPE_TIMESTAMP" END_TIME 7 [END_TIME] [QUERY_HISTORY] END_TIME 21 datetime Year true "SQL_TYPE_TIMESTAMP" "SQL_C_TYPE_TIMESTAMP" TOTAL_ELAPSED_TIME 131 [TOTAL_ELAPSED_TIME] [QUERY_HISTORY] TOTAL_ELAPSED_TIME 22 integer Sum 39 0 true "SQL_DECIMAL" "SQL_C_NUMERIC" BYTES_SCANNED 131 [BYTES_SCANNED] [QUERY_HISTORY] BYTES_SCANNED 23 integer Sum 38 0 true "SQL_DECIMAL" "SQL_C_NUMERIC" ROWS_PRODUCED 131 [ROWS_PRODUCED] [QUERY_HISTORY] ROWS_PRODUCED 24 integer Sum 38 0 true "SQL_DECIMAL" "SQL_C_NUMERIC" COMPILATION_TIME 129 [COMPILATION_TIME] [QUERY_HISTORY] COMPILATION_TIME 25 string Count 16777216 false "SQL_VARCHAR" "SQL_C_CHAR" "true" EXECUTION_TIME 5 [EXECUTION_TIME] [QUERY_HISTORY] EXECUTION_TIME 26 real Sum 15 false "SQL_DOUBLE" "SQL_C_DOUBLE" QUEUED_PROVISIONING_TIME 129 [QUEUED_PROVISIONING_TIME] [QUERY_HISTORY] QUEUED_PROVISIONING_TIME 27 string Count 16777216 false "SQL_VARCHAR" "SQL_C_CHAR" "true" QUEUED_REPAIR_TIME 129 [QUEUED_REPAIR_TIME] [QUERY_HISTORY] QUEUED_REPAIR_TIME 28 string Count 16777216 false "SQL_VARCHAR" "SQL_C_CHAR" "true" QUEUED_OVERLOAD_TIME 129 [QUEUED_OVERLOAD_TIME] [QUERY_HISTORY] QUEUED_OVERLOAD_TIME 29 string Count 16777216 false "SQL_VARCHAR" "SQL_C_CHAR" "true" TRANSACTION_BLOCKED_TIME 129 [TRANSACTION_BLOCKED_TIME] [QUERY_HISTORY] TRANSACTION_BLOCKED_TIME 30 string Count 16777216 false "SQL_VARCHAR" "SQL_C_CHAR" "true" OUTBOUND_DATA_TRANSFER_CLOUD 129 [OUTBOUND_DATA_TRANSFER_CLOUD] [QUERY_HISTORY] OUTBOUND_DATA_TRANSFER_CLOUD 31 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" OUTBOUND_DATA_TRANSFER_REGION 129 [OUTBOUND_DATA_TRANSFER_REGION] [QUERY_HISTORY] OUTBOUND_DATA_TRANSFER_REGION 32 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" OUTBOUND_DATA_TRANSFER_BYTES 131 [OUTBOUND_DATA_TRANSFER_BYTES] [QUERY_HISTORY] OUTBOUND_DATA_TRANSFER_BYTES 33 integer Sum 38 0 false "SQL_DECIMAL" "SQL_C_NUMERIC" INBOUND_DATA_TRANSFER_CLOUD 129 [INBOUND_DATA_TRANSFER_CLOUD] [QUERY_HISTORY] INBOUND_DATA_TRANSFER_CLOUD 34 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" INBOUND_DATA_TRANSFER_REGION 129 [INBOUND_DATA_TRANSFER_REGION] [QUERY_HISTORY] INBOUND_DATA_TRANSFER_REGION 35 string Count 16777216 true "SQL_VARCHAR" "SQL_C_CHAR" "true" INBOUND_DATA_TRANSFER_BYTES 131 [INBOUND_DATA_TRANSFER_BYTES] [QUERY_HISTORY] INBOUND_DATA_TRANSFER_BYTES 36 integer Sum 38 0 false "SQL_DECIMAL" "SQL_C_NUMERIC" Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds
< [federated.1eo3pgj089pzx610s2t270pegzxf].[usr:% of Total Credit Burn (copy):qk] > of Credits Left ([federated.1eo3pgj089pzx610s2t270pegzxf].[usr:Calculation_1161084340561895433:qk] + [federated.1eo3pgj089pzx610s2t270pegzxf].[usr:Calculation_369858178163744772:qk])
< [federated.1eo3pgj089pzx610s2t270pegzxf].[usr:Calculation_369858178171822093:qk] > Remaining ([federated.1eo3pgj089pzx610s2t270pegzxf].[usr:Calculation_369858178166104075:qk] + [federated.1eo3pgj089pzx610s2t270pegzxf].[usr:Calculation_369858178170679308:qk])
< [federated.1eo3pgj089pzx610s2t270pegzxf].[usr:Calculation_1161084340559396871:qk] > Credits Remaining ([federated.1eo3pgj089pzx610s2t270pegzxf].[usr:Calculation_369858178164674568:qk] + [federated.1eo3pgj089pzx610s2t270pegzxf].[usr:Calculation_369858178163744772:qk])
Change this Parameter to determine how many days in the past you'd like to use to calculate an average Credit Burn. Note: Today's information is included. For Example: If you select 7, then you will get an average of the previous 7 day's credit burn (including today). The average number of credits used per day in the previous Æ <[Parameters].[Parameter 3]> Æ days. Æ Use the Æ Previous Days to Include Æ parameter to adjust your sample range. Avg Daily Credit Usage Æ <[federated.1eo3pgj089pzx610s2t270pegzxf].[avg:Calculation_580682935636238338:qk]>
<formatted-text> <run fontalignment="1">Monthly Average</run> </formatted-text> [federated.1eo3pgj089pzx610s2t270pegzxf].[none:WAREHOUSE_NAME:nk] [federated.1eo3pgj089pzx610s2t270pegzxf].[Action (Warehouse Name)] <[federated.1eo3pgj089pzx610s2t270pegzxf].[sum:Calculation_956452029273800704:qk]>
<formatted-text> <run fontalignment="1" fontcolor="#000000">Avg Monthly Spend</run> </formatted-text> <[federated.066l5z50rtgi1w1h4its118yqava].[min:Calculation_1155454844081913856:qk]>
Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk]
<formatted-text> <run>Avg. </run> <run fontcolor="#2bb5e9"><[Parameters].[Parameter 2 1]></run> <run> per Warehouse</run> </formatted-text> Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds "X-Large" "Large" "Medium" "Small" "X-Small" %null% %all% [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:Warehouse Size (copy):nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_SIZE:nk]> Warehouse - Avg. <[Parameters].[Parameter 2 1]> of <[federated.1fqdxye059g1g211bvmo01r9jg9h].[avg:Calculation_273030786889240582:qk]> ms [federated.1fqdxye059g1g211bvmo01r9jg9h].[avg:Calculation_273030786889240582:qk][federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_SIZE:nk]
<formatted-text> <run bold="true" fontcolor="#000000" fontsize="16">Storage</run> <run>Æ</run> <run fontcolor="#000000" fontsize="8">Æ </run> <run fontalignment="1">Æ</run> <run fontalignment="1" fontcolor="#8a999e" fontsize="14">Avg Monthly Spend</run> </formatted-text> <[federated.066l5z50rtgi1w1h4its118yqava].[min:Calculation_175077479051202563:qk]>
<formatted-text> <run bold="true" fontcolor="#000000" fontsize="16">Failsafe</run> <run>Æ</run> <run fontsize="8">Æ </run> <run fontalignment="1">Æ</run> <run fontalignment="1" fontcolor="#8a999e" fontsize="14">Avg Monthly Spend</run> </formatted-text> <[federated.066l5z50rtgi1w1h4its118yqava].[min:Ave Monthly Storage Cost (copy):qk]>
<formatted-text> <run bold="true" fontcolor="#000000" fontsize="16">Stage</run> <run>Æ</run> <run fontsize="8">Æ </run> <run fontalignment="1">Æ</run> <run fontalignment="1" fontcolor="#8a999e" fontsize="14">Avg Monthly Spend</run> </formatted-text> <[federated.066l5z50rtgi1w1h4its118yqava].[min:Ave Monthly Failsafe Cost (copy):qk]>
<formatted-text> <run fontalignment="1">Avg Performance</run> </formatted-text> Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[avg:Calculation_273030786889240582:qk]>
<formatted-text> <run>Avg. </run> <run fontcolor="#2bb5e9"><[Parameters].[Parameter 2 1]></run> <run> over Time</run> </formatted-text> Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] The Avg <[Parameters].[Parameter 2 1]> Æ in <[federated.1fqdxye059g1g211bvmo01r9jg9h].[tmn:START_TIME:qk]> Æ was <[federated.1fqdxye059g1g211bvmo01r9jg9h].[avg:Calculation_273030786889240582:qk]> ms [federated.1fqdxye059g1g211bvmo01r9jg9h].[avg:Calculation_273030786889240582:qk][federated.1fqdxye059g1g211bvmo01r9jg9h].[tmn:START_TIME:qk]
<formatted-text> <run>Avg. <[Parameters].[Parameter 2 1]> per Byte Scanned</run> <run fontcolor="#2bb5e9" fontsize="12" italic="true">Hover over a mark to see average performance by Warehouse Size or select it to drill down</run> </formatted-text> Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk]> Æ Avg. Bytes Scanned: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[avg:BYTES_SCANNED:qk]> Æ | Avg. Æ <[Parameters].[Parameter 2 1]> : <[federated.1fqdxye059g1g211bvmo01r9jg9h].[avg:Calculation_273030786889240582:qk]> ms Æ Æ <Sheet name="Viz in Tooltip" maxwidth="300" maxheight="300" filter="<All Fields>"> Æ [federated.1fqdxye059g1g211bvmo01r9jg9h].[avg:BYTES_SCANNED:qk][federated.1fqdxye059g1g211bvmo01r9jg9h].[avg:Calculation_273030786889240582:qk]
<formatted-text> <run fontalignment="1"><Sheet Name></run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Warehouse Name)] How frequently your queries are serviced by the Cloud Services Layer < [federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_383368977363828737:qk] >
<formatted-text> <run fontalignment="1"><Sheet Name></run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Warehouse Name)] These are the queries that hit the Cloud Services Layer and did not have any associated Compute Cost. Use to identify opportunities to optimize Compute Costs. (Includes <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Cloud Services Queries (copy):qk]>
<formatted-text> <run><Sheet Name></run> <run fontcolor="#e15759" fontsize="12" italic="true">Select to filter by Error Code</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ERROR_CODE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:USER_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Calculation_1300132976550195201:qk]> Errors Æ Error Code: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ERROR_CODE:nk]> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ERROR_CODE:nk][federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Calculation_1300132976550195201:qk]
<formatted-text> <run><Sheet Name></run> <run fontcolor="#e15759" fontsize="12" italic="true">Make a selection to generate the SQL query below</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ERROR_MESSAGE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:USER_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Calculation_1300132976550195201:qk]> Errors Æ Error Message: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ERROR_MESSAGE:nk]> Æ [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ERROR_MESSAGE:nk][federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Calculation_1300132976550195201:qk]
[federated.1eo3pgj089pzx610s2t270pegzxf].[none:WAREHOUSE_NAME:nk] [federated.1eo3pgj089pzx610s2t270pegzxf].[Action (Warehouse Name)] <[federated.1eo3pgj089pzx610s2t270pegzxf].[tmn:START_TIME:qk]> Æ Compute Cost: <[federated.1eo3pgj089pzx610s2t270pegzxf].[sum:Calculation_956452029274128386:qk]> Æ Æ Æ <[federated.1eo3pgj089pzx610s2t270pegzxf].[usr:Calculation1:qk]> change [federated.1eo3pgj089pzx610s2t270pegzxf].[sum:Calculation_956452029274128386:qk][federated.1eo3pgj089pzx610s2t270pegzxf].[tmn:START_TIME:qk]
<formatted-text> <run fontalignment="1">Last Month</run> </formatted-text> [federated.1eo3pgj089pzx610s2t270pegzxf].[none:WAREHOUSE_NAME:nk] [federated.1eo3pgj089pzx610s2t270pegzxf].[none:START_TIME:qk] [federated.1eo3pgj089pzx610s2t270pegzxf].[Action (Warehouse Name)] < [federated.1eo3pgj089pzx610s2t270pegzxf].[sum:Calculation_956452029274128386:qk] >
<formatted-text> <run fontalignment="1">This Month</run> </formatted-text> [federated.1eo3pgj089pzx610s2t270pegzxf].[none:WAREHOUSE_NAME:nk] [federated.1eo3pgj089pzx610s2t270pegzxf].[none:START_TIME:qk] [federated.1eo3pgj089pzx610s2t270pegzxf].[Action (Warehouse Name)] < [federated.1eo3pgj089pzx610s2t270pegzxf].[sum:Calculation_956452029274128386:qk] > Æ
<formatted-text> <run><Sheet Name></run> <run fontcolor="#2bb5e9" fontname="Tableau Regular" fontsize="12" italic="true">Check for days/times when resources are used infrequently and limit Compute Nodes during "slow times"</run> </formatted-text> 2 3 4 5 6 7 1 %all% [federated.1eo3pgj089pzx610s2t270pegzxf].[Action (MONTH(Start Time))] [federated.1eo3pgj089pzx610s2t270pegzxf].[Action (Warehouse Name)] [federated.1eo3pgj089pzx610s2t270pegzxf].[none:WAREHOUSE_NAME:nk] Day: <[federated.1eo3pgj089pzx610s2t270pegzxf].[wd:START_TIME:ok]> - Time: <[federated.1eo3pgj089pzx610s2t270pegzxf].[hr:START_TIME:ok]>:00 Æ Total Compute Cost: <[federated.1eo3pgj089pzx610s2t270pegzxf].[sum:Calculation_956452029274128386:qk]> Æ Avg Warehouses on during this hour: Æ <[federated.1eo3pgj089pzx610s2t270pegzxf].[min:Calculation_256142288660570120:qk]> [federated.1eo3pgj089pzx610s2t270pegzxf].[hr:START_TIME:ok][federated.1eo3pgj089pzx610s2t270pegzxf].[wd:START_TIME:ok]
<formatted-text> <run><Sheet Name></run> <run fontcolor="#2bb5e9" fontsize="12" italic="true">Select a Warehouse to drill down</run> </formatted-text> [federated.1eo3pgj089pzx610s2t270pegzxf].[none:WAREHOUSE_NAME:nk] [federated.1eo3pgj089pzx610s2t270pegzxf].[Action (MONTH(Start Time))] <[federated.1eo3pgj089pzx610s2t270pegzxf].[none:WAREHOUSE_NAME:nk]> Æ Compute Cost: Æ <[federated.1eo3pgj089pzx610s2t270pegzxf].[sum:Calculation_956452029274128386:qk]>
Change this Parameter to determine how many days in the past you'd like to use to calculate an average Credit Burn. Note: Today's information is included. For Example: If you select 7, then you will get an average of the previous 7 day's credit burn (including today). <[federated.1eo3pgj089pzx610s2t270pegzxf].[tdy:START_TIME:qk]> Æ Cumulative Credits: <[federated.1eo3pgj089pzx610s2t270pegzxf].[cum:sum:CREDITS_USED:qk]> Æ This Day's Usage: <[federated.1eo3pgj089pzx610s2t270pegzxf].[sum:CREDITS_USED:qk]> Æ <[federated.1eo3pgj089pzx610s2t270pegzxf].[tdy:START_TIME:qk]> Æ Cumulative Credits: <[federated.1eo3pgj089pzx610s2t270pegzxf].[cum:sum:CREDITS_USED:qk]> Æ This Day's Usage: <[federated.1eo3pgj089pzx610s2t270pegzxf].[sum:CREDITS_USED:qk]> Æ <[federated.1eo3pgj089pzx610s2t270pegzxf].[tdy:START_TIME:qk]> Æ Cumulative Credits: <[federated.1eo3pgj089pzx610s2t270pegzxf].[cum:sum:CREDITS_USED:qk]> Æ This Day's Usage: <[federated.1eo3pgj089pzx610s2t270pegzxf].[sum:CREDITS_USED:qk]> Æ ([federated.1eo3pgj089pzx610s2t270pegzxf].[cum:sum:CREDITS_USED:qk] + [federated.1eo3pgj089pzx610s2t270pegzxf].[sum:CREDITS_USED:qk])[federated.1eo3pgj089pzx610s2t270pegzxf].[tdy:START_TIME:qk]
<formatted-text> <run fontalignment="1"><Sheet Name></run> </formatted-text> Æ <[federated.1eo3pgj089pzx610s2t270pegzxf].[sum:CREDITS_USED:qk]> Æ Credits Used
<formatted-text> <run fontalignment="1"><Sheet Name></run> </formatted-text> Change this Parameter to determine how many days in the past you'd like to use to calculate an average Credit Burn. Note: Today's information is included. For Example: If you select 7, then you will get an average of the previous 7 day's credit burn (including today). Æ <[federated.1eo3pgj089pzx610s2t270pegzxf].[usr:Calculation_580682935635193856:qk]> Æ Days to Renewal
<formatted-text> <run fontalignment="1"><Sheet Name></run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TAG:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (MONTH(Start Time))] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_1300132976550277122:qk]>
[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:USER_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_1300132976550277122:qk]> Æ Error Rate
<formatted-text> <run fontcolor="#ff0000">Errors</run> <run> Over Time</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:USER_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Calculation_1300132976550195201:qk]> Errors in Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[tmn:START_TIME:qk]> [federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Calculation_1300132976550195201:qk][federated.1fqdxye059g1g211bvmo01r9jg9h].[tmn:START_TIME:qk]
<[federated.066l5z50rtgi1w1h4its118yqava].[tmn:USAGE_DATE:qk]> (<[federated.066l5z50rtgi1w1h4its118yqava].[none:Forecast Indicator:nk]>) Æ Failsafe Bytes Cost: <[federated.066l5z50rtgi1w1h4its118yqava].[fVal:avg:Stage Bytes Cost (copy):qk]> [federated.066l5z50rtgi1w1h4its118yqava].[fVal:avg:Stage Bytes Cost (copy):qk][federated.066l5z50rtgi1w1h4its118yqava].[tmn:USAGE_DATE:qk]
<formatted-text> <run fontcolor="#ff9f36" fontsize="12"><Sheet Name></run> </formatted-text> Change this Parameter to determine how many days in the past you'd like to use to calculate an average Credit Burn. Note: Today's information is included. For Example: If you select 7, then you will get an average of the previous 7 day's credit burn (including today). This value is calculated by dividing your Remaining Credits by your Average Daily Credit Usage . Forecasted End Date Æ <[federated.1eo3pgj089pzx610s2t270pegzxf].[usr:Calculation_580682935639404548:ok]>
<formatted-text> <run>Select an </run> <run fontcolor="#e15759">Error Message </run> <run>to see the SQL that was sent to Snowflake</run> <run fontcolor="#ff0000" fontsize="12" italic="true">Æ </run> <run fontcolor="#e15759" fontsize="12" italic="true">(If an Error Message was sent multiple times, you will see each unique SQL statement)</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Error Message)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:USER_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] < [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TEXT:nk] > [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TEXT:nk]
Last Updated: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[max:START_TIME:qk]>
Last Updated: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[max:START_TIME:qk]>
Last Updated: Æ <[federated.1eo3pgj089pzx610s2t270pegzxf].[max:START_TIME:qk]>
Last Updated: Æ <[federated.1eo3pgj089pzx610s2t270pegzxf].[max:START_TIME:qk]>
Time recorded in milliseconds [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:USER_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_273030786912989192:qk]> Æ Minutes Wasted on Errors
<formatted-text> <run><Sheet Name></run> <run fontcolor="#898989"> - </run> <run fontcolor="#898989" fontsize="12" italic="true">Select to drill down</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Warehouse Name)] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk]> Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Number of Records:qk]> Queries [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk][federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Number of Records:qk]
<formatted-text> <run><Sheet Name></run> <run fontcolor="#898989"> - </run> <run fontcolor="#898989" fontsize="12" italic="true">Select to drill down</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Warehouse Name)] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk]> Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Number of Records:qk]> Queries [federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Number of Records:qk][federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk]
<formatted-text> <run><Sheet Name></run> <run fontcolor="#898989"> - </run> <run fontcolor="#898989" fontsize="12" italic="true">Select to drill down</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk]> Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Number of Records:qk]> Queries [federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Number of Records:qk][federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk]
[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Warehouse Name)] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Number of Records:qk]> Æ queries during the week of Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[twk:START_TIME:qk]> [federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Number of Records:qk][federated.1fqdxye059g1g211bvmo01r9jg9h].[twk:START_TIME:qk]
<formatted-text> <run fontalignment="1"><Sheet Name></run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Warehouse Name)] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_383368977363603456:qk]>
<formatted-text> <run fontalignment="1">Queries Per User</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TAG:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (MONTH(Start Time))] The average number of queries issued by a user <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_383368977363603456:qk]>
<formatted-text> <run fontalignment="1">Queries Using CSL</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] CSL = Cloud Services Layer Æ Queries serviced by CSL are not billable queries. No compute is required. <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Cloud Services Queries (copy):qk]>
<formatted-text> <run fontalignment="1">CSL Util. Rate</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] CSL = Cloud Services Layer Æ Queries serviced by CSL are not billable queries. No compute is required. <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_383368977363828737:qk]>
%null% "X-Small" "Small" "Medium" "Large" "X-Large" %all% [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Warehouse Name)] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[pcto:sum:Number of Records:qk]> Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:Warehouse Name Label (copy):nk]> <[federated.1fqdxye059g1g211bvmo01r9jg9h].[pcto:sum:Number of Records:qk]> Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:Warehouse Name Label (copy):nk]> [federated.1fqdxye059g1g211bvmo01r9jg9h].[pcto:sum:Number of Records:qk]
%null% "X-Small" "Small" "Medium" "Large" "X-Large" %all% [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TAG:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (MONTH(Start Time))] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[pcto:sum:Number of Records:qk]> Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:Warehouse Name Label (copy):nk]> <[federated.1fqdxye059g1g211bvmo01r9jg9h].[pcto:sum:Number of Records:qk]> Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:Warehouse Name Label (copy):nk]> [federated.1fqdxye059g1g211bvmo01r9jg9h].[pcto:sum:Number of Records:qk]
<formatted-text> <run><Sheet Name></run> </formatted-text> Time recorded in milliseconds [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_SIZE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Query Id)] ([federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_SIZE:nk] / ([federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] / ([federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] / ([federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk] / ([federated.1fqdxye059g1g211bvmo01r9jg9h].[none:USER_NAME:nk] / [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:EXECUTION_STATUS:nk])))))
[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] Showing Previous < [federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_256142288641191942:qk] > Days
[federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Query Id)] < [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TEXT:nk] >
<formatted-text> <run bold="true" fontalignment="1" fontcolor="#666666">Select A Query To See Details Below</run> </formatted-text> Time recorded in milliseconds [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_SIZE:nk] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_ID:nk]> Æ Æ Total Elapsed Time (ms): <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:TOTAL_ELAPSED_TIME:qk]> Æ Bytes Scanned: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:BYTES_SCANNED:qk]> Æ Start Time: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[tmi:START_TIME:qk]> Æ Warehouse Size: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:WAREHOUSE_SIZE:nk]> Æ Warehouse Name: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:WAREHOUSE_NAME:nk]> Æ Schema Name: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:SCHEMA_NAME:nk]> Æ Database Name: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:DATABASE_NAME:nk]> Æ User: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:USER_NAME:nk]> Æ Execution Status: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:EXECUTION_STATUS:nk]> Æ Query Type: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:QUERY_TYPE:nk]> Æ [federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:TOTAL_ELAPSED_TIME:qk][federated.1fqdxye059g1g211bvmo01r9jg9h].[tmi:START_TIME:qk]
Time recorded in milliseconds [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_ID:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_ID:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_SIZE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_ID:nk]> Æ Æ Total Elapsed Time (ms): Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:TOTAL_ELAPSED_TIME:qk]> Æ Bytes Scanned: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:BYTES_SCANNED:qk]> Æ Warehouse Size: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:WAREHOUSE_SIZE:nk]> Æ Warehouse Label: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:WAREHOUSE_NAME:nk]> Æ Schema Name: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:SCHEMA_NAME:nk]> Æ Database Name: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:DATABASE_NAME:nk]> Æ User: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:USER_NAME:nk]> Æ Execution Status: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:EXECUTION_STATUS:nk]> Æ Query Type: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:QUERY_TYPE:nk]> <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_ID:nk]> Æ Æ Total Elapsed Time (ms): Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:TOTAL_ELAPSED_TIME:qk]> Æ Bytes Scanned: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:BYTES_SCANNED:qk]> Æ Warehouse Size: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:WAREHOUSE_SIZE:nk]> Æ Warehouse Label: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:WAREHOUSE_NAME:nk]> Æ Schema Name: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:SCHEMA_NAME:nk]> Æ Database Name: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:DATABASE_NAME:nk]> Æ User: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:USER_NAME:nk]> Æ Execution Status: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:EXECUTION_STATUS:nk]> Æ Query Type: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:QUERY_TYPE:nk]> <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_ID:nk]> Æ Æ Total Elapsed Time (ms): Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:TOTAL_ELAPSED_TIME:qk]> Æ Bytes Scanned: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:BYTES_SCANNED:qk]> Æ Warehouse Size: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:WAREHOUSE_SIZE:nk]> Æ Warehouse Label: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:WAREHOUSE_NAME:nk]> Æ Schema Name: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:SCHEMA_NAME:nk]> Æ Database Name: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:DATABASE_NAME:nk]> Æ User: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:USER_NAME:nk]> Æ Execution Status: <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:EXECUTION_STATUS:nk]> Æ Query Type: Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[attr:QUERY_TYPE:nk]> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_ID:nk]([federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:TOTAL_ELAPSED_TIME:qk] + [federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:TOTAL_ELAPSED_TIME:qk])
<formatted-text> <run fontalignment="1"><Sheet Name></run> </formatted-text> Æ <[federated.1eo3pgj089pzx610s2t270pegzxf].[sum:Calculation_956452029274128386:qk]> Æ Spent
<[federated.066l5z50rtgi1w1h4its118yqava].[tmn:USAGE_DATE:qk]> (<[federated.066l5z50rtgi1w1h4its118yqava].[none:Forecast Indicator:nk]>) Æ Stage Bytes Cost: Æ <[federated.066l5z50rtgi1w1h4its118yqava].[fVal:avg:Failsafe Bytes Cost (copy) (copy):qk]> [federated.066l5z50rtgi1w1h4its118yqava].[fVal:avg:Failsafe Bytes Cost (copy) (copy):qk][federated.066l5z50rtgi1w1h4its118yqava].[tmn:USAGE_DATE:qk]
<formatted-text> <run fontalignment="1">Last Month</run> </formatted-text> [federated.066l5z50rtgi1w1h4its118yqava].[none:USAGE_DATE:qk] <[federated.066l5z50rtgi1w1h4its118yqava].[avg:Calculation_175077479050121218:qk]>
<[federated.066l5z50rtgi1w1h4its118yqava].[tmn:USAGE_DATE:qk]> (<[federated.066l5z50rtgi1w1h4its118yqava].[none:Forecast Indicator:nk]>) Æ Storage Bytes Cost: <[federated.066l5z50rtgi1w1h4its118yqava].[fVal:avg:Failsafe Bytes Cost (copy):qk]> [federated.066l5z50rtgi1w1h4its118yqava].[fVal:avg:Failsafe Bytes Cost (copy):qk][federated.066l5z50rtgi1w1h4its118yqava].[tmn:USAGE_DATE:qk]
<formatted-text> <run fontalignment="1">Cost This Month</run> </formatted-text> [federated.066l5z50rtgi1w1h4its118yqava].[none:USAGE_DATE:qk] <[federated.066l5z50rtgi1w1h4its118yqava].[avg:Calculation_175077479050121218:qk]>
<formatted-text> <run fontalignment="1"><Sheet Name> (ms)</run> </formatted-text> Time recorded in milliseconds [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TAG:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (MONTH(Start Time))] The average amount of time (in ms) it takes for a query to compute <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_1300132976549703680:qk]>
[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:USER_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Calculation_1300132976550195201:qk]> Æ Total Errors
<formatted-text> <run fontalignment="1"><Sheet Name></run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Warehouse Name)] < [federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Number of Records:qk] >
<formatted-text> <run fontalignment="1">Total Queries</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TAG:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (MONTH(Start Time))] < [federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Number of Records:qk] >
<formatted-text> <run fontalignment="1">Total Queries</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] < [federated.1fqdxye059g1g211bvmo01r9jg9h].[sum:Number of Records:qk] >
<formatted-text> <run fontalignment="1"><Sheet Name></run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Warehouse Name)] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[ctd:USER_NAME:qk]>
<formatted-text> <run fontalignment="1">Total Users</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TAG:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (MONTH(Start Time))] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[ctd:USER_NAME:qk]>
<formatted-text> <run fontalignment="1">Avg Spend By Today</run> </formatted-text> [federated.1eo3pgj089pzx610s2t270pegzxf].[none:WAREHOUSE_NAME:nk] [federated.1eo3pgj089pzx610s2t270pegzxf].[Action (Warehouse Name)] The average spend by this day of the month <[federated.1eo3pgj089pzx610s2t270pegzxf].[sum:Calculation_956452029274714115:qk]>
<formatted-text> <run fontalignment="1">Avg Spend by Today</run> </formatted-text> The average spend by this day of the month <[federated.066l5z50rtgi1w1h4its118yqava].[min:Calculation_175077479051526148:qk]>
<formatted-text> <run bold="true" fontcolor="#2bb5e9">Users</run> <run> and </run> <run bold="true" fontcolor="#898989">Usage</run> <run> over Time</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TAG:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[tmn:START_TIME:qk]> Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[ctd:USER_NAME:qk]> Æ users averaging Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_383368977363603456:qk]> Æ queries per user <[federated.1fqdxye059g1g211bvmo01r9jg9h].[tmn:START_TIME:qk]> Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[ctd:USER_NAME:qk]> Æ users averaging Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_383368977363603456:qk]> Æ queries per user <[federated.1fqdxye059g1g211bvmo01r9jg9h].[tmn:START_TIME:qk]> Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[ctd:USER_NAME:qk]> Æ users averaging Æ <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_383368977363603456:qk]> Æ queries per user ([federated.1fqdxye059g1g211bvmo01r9jg9h].[ctd:USER_NAME:qk] + [federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_383368977363603456:qk])[federated.1fqdxye059g1g211bvmo01r9jg9h].[tmn:START_TIME:qk]
<formatted-text> <run><Sheet Name> </run> <run fontsize="10" italic="true">(Hover for list of users)</run> <run>Æ</run> <run fontcolor="#29b5e8" fontsize="12" italic="true">Select a Database to drill down</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TAG:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (MONTH(Start Time))] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk]> was accessed by <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_1300132976556027907:ok]> users (below) Æ <Sheet name="Viz In Toolip - Specific Users" maxwidth="300" maxheight="600" filter="<All Fields>"> Æ ([federated.1fqdxye059g1g211bvmo01r9jg9h].[none:DATABASE_NAME:nk] / [federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_1300132976556027907:ok])[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_1300132976556027907:qk]
<formatted-text> <run><Sheet Name> </run> <run fontsize="10" italic="true">(Hover for list of users)</run> <run>Æ</run> <run fontcolor="#29b5e8" fontsize="12" italic="true">Select a Warehouse to drill down</run> </formatted-text> [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TAG:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (MONTH(Start Time))] <[federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk]> was used by <[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_1300132976556027907:ok]> users (below) Æ <Sheet name="Viz In Toolip - Specific Users" maxwidth="300" maxheight="600" filter="<All Fields>"> Æ ([federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_NAME:nk] / [federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_1300132976556027907:ok])[federated.1fqdxye059g1g211bvmo01r9jg9h].[usr:Calculation_1300132976556027907:qk]
[federated.1fqdxye059g1g211bvmo01r9jg9h].[Tooltip (Warehouse Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Tooltip (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TYPE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:SCHEMA_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:ROLE_NAME:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:QUERY_TAG:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (MONTH(Start Time))] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:USER_NAME:nk]
Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds Time recorded in milliseconds [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_SIZE:nk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Tooltip (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[Action (Database Name)] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:START_TIME:qk] [federated.1fqdxye059g1g211bvmo01r9jg9h].[none:WAREHOUSE_SIZE:nk][federated.1fqdxye059g1g211bvmo01r9jg9h].[avg:Calculation_273030786889240582:qk]
Compute Cost Overview Æ Use this dashboard to identify trends in your compute habits. Æ Drill down on individual sheets to check for opportunities to limit costs. Input Compute Cost per Credit Change this Parameter to determine how many days in the past you'd like to use to calculate an average Credit Burn. Note: Today's information is included. For Example: If you select 7, then you will get an average of the previous 7 day's credit burn (including today). Contract Start Credits Purchased Cost per Credit Previous Days to Include 2 - The forecast is calculated using your average historic credit consumption. Input the number of Previous Days you'd like to include in calculating your Average Daily Credit Usage . Compute Credit Forecasting Æ This dashboard uses historic Credit usage to forecast remaining contract length. Instruction below. Æ 1 - Input your contract information Common Error Dashboard Æ Use this dashboard to check for any internal training opportunities Æ or identify any re-occuring errors that are diminishing your data community's experience. Dashboard Color Coding Æ Cost | Utilization | Performance | Errors Connecting to your Snowflake Data Æ Part One: Enable access in Snowflake Æ 1.       By default, only account administrators (users with the ACCOUNTADMIN role) can access this data . However privileges can be granted to other roles in your account to allow other users access. If you are not an account administrator, you will need to be granted access. Æ Part Two: Direct the workbook to your Snowflake Data Warehouse Æ 1.       Upon opening the workbook you will be prompted to Edit the Data Source Connection. Ignore that prompt and instead create a new Sheet. Æ 2.       Once on a new Sheet, establish 3 Data Source connections to your Snowflake instance. One Data Source for each of the tables identified below. If you have never connected to Snowflake from Tableau before, you can learn how here (Driver required). Æ a.            Database: SNOWFLAKE Schema: ACCOUNT_USAGE Table: QUERY_HISTORY Æ b.            Database: SNOWFLAKE Schema: ACCOUNT_USAGE Table: WAREHOSE_METERING_HISTORY Æ c.            Database: SNOWFLAKE Schema: ACCOUNT_USAGE Table: STORAGE_USAGE Æ Note: As of May, 2019 these tables do not contain any cost information pertaining to Materialized Views, Automatic Clustering or Snowpipe. That information is contained in separate tables. Æ 3.     It’s important to note that these dashboards are designed to give you complete insight into your Snowflake account usage history. The Account Usage tables contain up to 12 months of your account usage, and depending on the extent of your adoption, may contain a large amount of data. Please keep in mind that dashboard performance is proportional to the extent of your adoption. If you'd like to focus analysis on a specific period of time consider using a data source filter or extracting the data after connecting successfully. Æ 4.       Once you have connected to all three tables, replace those data sources with the respective tables in the workbook. Æ a.            This will need to be done for all three data sources. Æ b.            Right click and “Close” each of the old data sources. Æ 5.       That’s it! Your dashboards are now ready to be explored. Æ 6.       If you’d like to share with your team, publish these data sources and publish the dashboards to Tableau Online or Tableau Server so that you can collaborate with any other data stakeholders. Æ Æ  Datebase Name Avg. <[Parameters].[Parameter 2 1]> Avg. < [Parameters].[Parameter 2 1] > Avg. < [Parameters].[Parameter 2 1] > Avg. < [Parameters].[Parameter 2 1] > Select Time Metric Æ (all data updates) Performance Monitoring Æ Select the Time Metric you'd like to analyze. Then drill down to see which Databases are meeting your performance needs. Explore if their workloads justify a change in Warehouse size. All Data in Milliseconds Select a Slowest N Slowest <[Parameters].[Parameter 4]> Queries Drill down in the filters below to identify any outlying queries or see if any commonly running workloads could be optized with a different Warehouse. Slowest Running Queries Queries By Warehouse Size Æ Select to drill down Snowflake Utilization Æ Use this dashboard to understand where your data consumers are currently getting access to the data they need and where there may be opportunities to enable your data community. Input Storage Cost per TB Actual Costs and Forecasted Costs Storage Costs Æ Input your Storage Cost Per TB to see how much you are spending on Snowflake Storage. Queries per Warehouse Size User Adoption Æ Drill down into Databases, Schemas and Query Types to track adoption across your organization. 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