Pre-quote Report: Difference between revisions
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| 1. || ||The Clustered bar chart breaks down the prequote by Month. | |||
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| 2.|| || The table breaks down Total pre quotes, Deleted Incorrect Pre quotes and Accuracy. | |||
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| 3.|| || The table breaks down pre quotes created over Time by Mailbox | |||
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| 4.|| || The table breaks down Delete Reasons by total deleted pre quotes | |||
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Total Pre quotes | |||
||Formula: | |||
Total Prequotes = CALCULATE( COUNTROWS(quotations), USERELATIONSHIP(DimDate[Date], quotations[pre_quoted_at]), NOT(ISBLANK(quotations[pre_quoted_at])) ) + 0 | |||
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*Counts the number of prequotes: It counts the rows in the quotations table where the pre_quoted_at column is not blank, indicating a valid prequote. | |||
*Uses the date relationship: It activates the relationship between the DimDate[Date] column and the quotations[pre_quoted_at] column, ensuring that the data is filtered by the selected time range. | |||
*Ensures the measure returns a numeric value: The + 0 ensures that the measure doesn't return a blank value when there are no matching records. | |||
Purpose | |||
This measure helps track the total number of prequotes within a specific date range, providing insights into the total number of prequotes made. | |||
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| 6. Lost Pre quotes||Formula: | |||
Total Lost Prequotes = CALCULATE( COUNTROWS(quotations), USERELATIONSHIP(DimDate[Date], quotations[pre_quoted_at]), NOT(ISBLANK(quotations[pre_quoted_at])), NOT(ISBLANK(quotations[lost_at])) ) + 0 | |||
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*Counts the number of lost prequotes: It counts the rows in the quotations table where the pre_quoted_at column is not blank (indicating a valid prequote), and the lost_at column is not blank, indicating that the prequote has been lost. | |||
*Uses the date relationship: It activates the relationship between the DimDate[Date] column and the quotations[pre_quoted_at] column, ensuring that the data is filtered by the selected time range. | |||
*Ensures the measure returns a numeric value: The + 0 ensures that the measure doesn't return a blank value when there are no matching records. | |||
Purpose | |||
This measure helps track the total number of lost prequotes within a specific date range. | |||
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| 7.Deleted pre quotes||Formula: | |||
Total Deleted Prequotes = CALCULATE( COUNTROWS(quotations), USERELATIONSHIP(DimDate[Date], quotations[pre_quoted_at]), NOT(ISBLANK(quotations[pre_quoted_at])), NOT(ISBLANK(quotations[deleted_at])) ) + 0 | |||
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*Counts the number of deleted prequotes: It counts the rows in the quotations table where the pre_quoted_at column is not blank (indicating a valid prequote), and the deleted_at column is not blank, indicating that the prequote has been deleted. | |||
*Uses the date relationship: It activates the relationship between the DimDate[Date] column and the quotations[pre_quoted_at] column, ensuring that the data is filtered by the selected time range. | |||
*Ensures the measure returns a numeric value: The + 0 ensures that the measure doesn't return a blank value when there are no matching records. | |||
Purpose | |||
This measure helps track the total number of deleted prequotes within a specific date range, providing insights into the volume of prequotes that were removed | |||
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| 8.Pre quote to bookings|| Total Pre-quote to Converted = | |||
CALCULATE( | |||
COUNTROWS(quotations), | |||
quotations[Booking_categories] = "Pre-quote to Booking" | |||
) + 0 | |||
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*Counts the number of prequotes converted to bookings: It counts the rows in the quotations table where the Booking_categories column equals "Pre-quote to Booking," indicating that the prequote has been successfully converted into a booking. | |||
*Ensures the measure returns a numeric value: The + 0 ensures that the measure doesn't return a blank value when there are no matching records. | |||
Purpose | |||
This measure helps track the total number of prequotes that have successfully been converted into bookings, providing insights into the conversion rate of prequotes to actual bookings. | |||
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| 9. Incorrect prequote||Formula: | |||
Total Prequotes with IQ = CALCULATE( COUNTROWS(quotations), USERELATIONSHIP(DimDate[Date], quotations[pre_quoted_at]), NOT(ISBLANK(quotations[pre_quoted_at])), quotations[delete_reasons] = "IQ" ) | |||
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*counts prequotes with "IQ" delete reason: It counts the rows in the quotations table where the pre_quoted_at column is not blank (indicating a valid prequote), and the delete_reasons column equals "IQ," indicating that the prequote was deleted due to an incorrect quotation. | |||
*Uses the date relationship: It activates the relationship between the DimDate[Date] column and the quotations[pre_quoted_at] column, ensuring that the data is filtered by the selected time range. | |||
Purpose | |||
This measure helps track the total number of prequotes with the "IQ" delete reason, providing insights into the volume of prequotes that were deleted due to IQ-related issues. | |||
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| 10.Prequote conversion | |||
|| Formula: | |||
Prequote Conversion = | |||
DIVIDE([Total Pre-quote to Converted], [Total Prequotes]) | |||
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*Total Pre-quote to Converted: This represents the number of prequotes that were converted to bookings. | |||
*Total Prequotes: This is the total number of prequotes made. | |||
*DIVIDE function: It divides the number of converted prequotes by the total prequotes to calculate the conversion rate. The DIVIDE function ensures that any division by zero returns a blank result instead of an error. | |||
Purpose | |||
This measure helps track the conversion rate of prequotes to bookings, providing insights into how many prequotes are successfully turned into actual bookings. | |||
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Revision as of 13:26, 29 May 2025
Summary
TBC
Filters
| Filter | Description |
|---|---|
| TBC | TBC |
Calculations

| Reference | Calculation | Description |
|---|---|---|
| 1. | The Clustered bar chart breaks down the prequote by Month. | |
| 2. | The table breaks down Total pre quotes, Deleted Incorrect Pre quotes and Accuracy. | |
| 3. | The table breaks down pre quotes created over Time by Mailbox | |
| 4. | The table breaks down Delete Reasons by total deleted pre quotes | |
| 5.
Total Pre quotes |
Formula:
Total Prequotes = CALCULATE( COUNTROWS(quotations), USERELATIONSHIP(DimDate[Date], quotations[pre_quoted_at]), NOT(ISBLANK(quotations[pre_quoted_at])) ) + 0 |
Purpose This measure helps track the total number of prequotes within a specific date range, providing insights into the total number of prequotes made. |
| 6. Lost Pre quotes | Formula:
Total Lost Prequotes = CALCULATE( COUNTROWS(quotations), USERELATIONSHIP(DimDate[Date], quotations[pre_quoted_at]), NOT(ISBLANK(quotations[pre_quoted_at])), NOT(ISBLANK(quotations[lost_at])) ) + 0 |
Purpose This measure helps track the total number of lost prequotes within a specific date range. |
| 7.Deleted pre quotes | Formula:
Total Deleted Prequotes = CALCULATE( COUNTROWS(quotations), USERELATIONSHIP(DimDate[Date], quotations[pre_quoted_at]), NOT(ISBLANK(quotations[pre_quoted_at])), NOT(ISBLANK(quotations[deleted_at])) ) + 0 |
Purpose This measure helps track the total number of deleted prequotes within a specific date range, providing insights into the volume of prequotes that were removed |
| 8.Pre quote to bookings | Total Pre-quote to Converted =
CALCULATE( COUNTROWS(quotations), quotations[Booking_categories] = "Pre-quote to Booking" ) + 0 |
This measure helps track the total number of prequotes that have successfully been converted into bookings, providing insights into the conversion rate of prequotes to actual bookings. |
| 9. Incorrect prequote | Formula:
Total Prequotes with IQ = CALCULATE( COUNTROWS(quotations), USERELATIONSHIP(DimDate[Date], quotations[pre_quoted_at]), NOT(ISBLANK(quotations[pre_quoted_at])), quotations[delete_reasons] = "IQ" ) |
Purpose
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| 10.Prequote conversion | Formula:
Prequote Conversion = DIVIDE([Total Pre-quote to Converted], [Total Prequotes]) |
Purpose This measure helps track the conversion rate of prequotes to bookings, providing insights into how many prequotes are successfully turned into actual bookings.
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