Quote & Bookings Summary Dashboard 2: Difference between revisions
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!Description | !Description | ||
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|1 - Total Pre-quotes. || Total Prequotes = | |1 - Total Pre-quotes. || <pre>Total Prequotes = | ||
CALCULATE ( | CALCULATE ( | ||
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NOT (ISBLANK (quotations[pre_quoted_at])) | NOT (ISBLANK (quotations[pre_quoted_at])) | ||
) + 0 | ) + 0 </pre> | ||
|| This measure counts the total number of prequotes (draft quotations) created. It works by: | || This measure counts the total number of prequotes (draft quotations) created. It works by: | ||
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d. It ensures only valid prequotes with a date are included | d. It ensures only valid prequotes with a date are included | ||
|- | |- | ||
| 2- Total Quotes. ||Total Quotes = | | 2- Total Quotes. ||<pre>Total Quotes = | ||
CALCULATE ( | CALCULATE ( | ||
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COUNTROWS (quotations), | COUNTROWS (quotations), | ||
USERELATIONSHIP (DimDate [Date], quotations [quoted at]), NOT (ISBLANK (quotations[quoted_at]))) | USERELATIONSHIP (DimDate [Date], quotations [quoted at]), NOT (ISBLANK (quotations[quoted_at]))) </pre> | ||
|| This measure counts the total number of finalized quotes created. Here's how it works: | || This measure counts the total number of finalized quotes created. Here's how it works: | ||
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*This measure helps track how many official quotes were issued over a given period. | *This measure helps track how many official quotes were issued over a given period. | ||
|- | |- | ||
| 3 - Total Bookings || Total Bookings = | | 3 - Total Bookings || <pre>Total Bookings = | ||
CALCULATE ( | CALCULATE ( | ||
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USERELATIONSHIP (quotations [booked_at], DimDate [Date]) | USERELATIONSHIP (quotations [booked_at], DimDate [Date]) | ||
) | ) </pre> | ||
|| This measure counts the total number of bookings made. Here's how it works: | || This measure counts the total number of bookings made. Here's how it works: | ||
*Checks the booking date: It looks at the booked_at column in the quotations table to find rows where a booking date exists (i.e., the quote was successfully booked). | *Checks the booking date: It looks at the booked_at column in the quotations table to find rows where a booking date exists (i.e., the quote was successfully booked). | ||
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*Counts the rows: It counts all the rows where a valid booking date is present, giving the total number of bookings | *Counts the rows: It counts all the rows where a valid booking date is present, giving the total number of bookings | ||
|- | |- | ||
| 4 - Confirmed Bookings ||Confirmed Bookings = | | 4 - Confirmed Bookings ||<pre>Confirmed Bookings = | ||
CALCULATE ( | CALCULATE ( | ||
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USERELATIONSHIP (DimDate [Date], quotations [confirmed at]) | USERELATIONSHIP (DimDate [Date], quotations [confirmed at]) | ||
) | ) </pre> | ||
|| This measure counts the total number of bookings that have been confirmed. Here's how it works: | || This measure counts the total number of bookings that have been confirmed. Here's how it works: | ||
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*This measure helps track the number of bookings that have been officially finalized and confirmed. | *This measure helps track the number of bookings that have been officially finalized and confirmed. | ||
|- | |- | ||
| 5 - Converted Bookings ||Converted_Bookings = | | 5 - Converted Bookings ||<pre>Converted_Bookings = | ||
CALCULATE ( | CALCULATE ( | ||
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NOT (ISBLANK (quotations[booked_at])) | NOT (ISBLANK (quotations[booked_at])) | ||
) | ) </pre> | ||
|| The Converted Bookings formula calculates the total number of quotations that successfully converted into bookings: | || The Converted Bookings formula calculates the total number of quotations that successfully converted into bookings: | ||
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*The quotation was successfully converted into a booking (booked_at). | *The quotation was successfully converted into a booking (booked_at). | ||
|- | |- | ||
| 6 - Direct Booking || | | 6 - Direct Booking || <pre> Direct_Booking = | ||
CALCULATE ( | CALCULATE ( | ||
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NOT (ISBLANK (quotations[booked_at])) | NOT (ISBLANK (quotations[booked_at])) | ||
) | ) </pre> | ||
|| This measure counts the total number of bookings that were made without going through a quote or prequote process. Here's how it works: | || This measure counts the total number of bookings that were made without going through a quote or prequote process. Here's how it works: | ||
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*Counts the rows: After applying these conditions, it counts the rows that meet the criteria. | *Counts the rows: After applying these conditions, it counts the rows that meet the criteria. | ||
|- | |- | ||
| 7 - Conversion Rate|| Conversion Rate = DIVIDE([Converted_Bookings], [Total_Quotes],0) | | 7 - Conversion Rate|| <pre>Conversion Rate = DIVIDE([Converted_Bookings], [Total_Quotes],0)</pre> | ||
|| This measure calculates the conversion rate, which shows the percentage of quotes that were successfully converted into bookings. Here's how it works: | || This measure calculates the conversion rate, which shows the percentage of quotes that were successfully converted into bookings. Here's how it works: | ||
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This measure helps track how effectively quotes are being turned into actual bookings. A higher conversion rate indicates a better success rate in converting quotes into bookings. | This measure helps track how effectively quotes are being turned into actual bookings. A higher conversion rate indicates a better success rate in converting quotes into bookings. | ||
|- | |- | ||
| 8 | | 8 | ||
a. CW booking | ||a. CW booking | ||
<pre>CW_Booking = | |||
CALCULATE (SUM (quotations[chargeable_weight]), | CALCULATE (SUM (quotations[chargeable_weight]), | ||
NOT (ISBLANK (quotations[booked_at])), | NOT (ISBLANK (quotations[booked_at])), | ||
USERELATIONSHIP (DimDate [Date], quotations[booked_at]) ) | USERELATIONSHIP (DimDate [Date], quotations[booked_at]) )</pre> | ||
|| | || | ||
*Sum of chargeable weight: It sums the values from the chargeable_weight column in the quotations table, representing the total weight of items for bookings. | *Sum of chargeable weight: It sums the values from the chargeable_weight column in the quotations table, representing the total weight of items for bookings. | ||
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This measure helps you track the total chargeable weight for all bookings within a specific date range. | This measure helps you track the total chargeable weight for all bookings within a specific date range. | ||
|- | |- | ||
| b. GW | | ||b. GW Booking | ||
<pre> GW Booking = | |||
CALCULATE (SUM (quotations[gross_weight]), | CALCULATE (SUM (quotations[gross_weight]), | ||
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NOT (ISBLANK (quotations[booked_at])), | NOT (ISBLANK (quotations[booked_at])), | ||
USERELATIONSHIP (DimDate [Date], quotations[booked_at])) | USERELATIONSHIP (DimDate [Date], quotations[booked_at])) </pre> | ||
|| | || | ||
*Sum of gross weight: It sums the values from the gross_weight column in the quotations table, representing the total weight of items for bookings, including any packaging or additional weight. | *Sum of gross weight: It sums the values from the gross_weight column in the quotations table, representing the total weight of items for bookings, including any packaging or additional weight. | ||
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This measure helps track the total gross weight of all bookings within a specific date range. | This measure helps track the total gross weight of all bookings within a specific date range. | ||
|- | |- | ||
| c. CW | | || c. CW Quote | ||
CW_Quote = | <pre> CW_Quote = | ||
CALCULATE ( | CALCULATE ( | ||
SUM (quotations[chargeable_weight]), | SUM (quotations[chargeable_weight]), | ||
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NOT (ISBLANK (quotations[quoted_at])), | NOT (ISBLANK (quotations[quoted_at])), | ||
USERELATIONSHIP (DimDate [Date], quotations[quoted_at])) | USERELATIONSHIP (DimDate [Date], quotations[quoted_at])) </pre> | ||
|| | || | ||
*Sum of chargeable weight: It sums the values from the chargeable_weight column in the quotations table, representing the total chargeable weight for the items being quoted. | *Sum of chargeable weight: It sums the values from the chargeable_weight column in the quotations table, representing the total chargeable weight for the items being quoted. | ||
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This measure helps you track the total chargeable weight for all quotations within a specific date range. | This measure helps you track the total chargeable weight for all quotations within a specific date range. | ||
|- | |- | ||
| d. GW Quote | ||| d. GW Quote | ||
GW Quote = | <pre>GW Quote = | ||
CALCULATE ( | CALCULATE ( | ||
SUM (quotations[gross_weight]), | SUM (quotations[gross_weight]), | ||
NOT (ISBLANK (quotations[quoted_at])), | NOT (ISBLANK (quotations[quoted_at])), | ||
USERELATIONSHIP (DimDate [Date], quotations[quoted_at])) | USERELATIONSHIP (DimDate [Date], quotations[quoted_at])) </pre> | ||
|| | || | ||
*Sum of gross weight: It sums the values from the gross_weight column in the quotations table, representing the total weight of items in the quotations, including packaging and any additional weight. | *Sum of gross weight: It sums the values from the gross_weight column in the quotations table, representing the total weight of items in the quotations, including packaging and any additional weight. | ||
*Checks for a valid quote: It ensures that only rows where the quoted_at column is not blank are included. This means it only considers rows where a quotation has been provided | *Checks for a valid quote: It ensures that only rows where the quoted_at column is not blank are included. This means it only considers rows where a quotation has been provided | ||
|- | |- | ||
| 9 - Total ||Formula: | | 9 - Total ||Formula: | ||
Total = [Won] + [Lost] + [Pending] | <pre>Total = [Won] + [Lost] + [Pending] </pre> | ||
|| The Total measure calculates the total count of quotations based on the sum of Won, Lost, and Pending quotations. | || The Total measure calculates the total count of quotations based on the sum of Won, Lost, and Pending quotations. | ||
|- | |- | ||
| 10 - Won || | | 10 - Won || <pre> | ||
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quotations[spotrate] = 1 && quotations [Booking_categories] = "Direct Booking" | quotations[spotrate] = 1 && quotations [Booking_categories] = "Direct Booking" | ||
) | ) </pre> | ||
|| This measure counts the number of "Direct Bookings" where the SpotRate is 1, indicating a successful booking conversion. | || This measure counts the number of "Direct Bookings" where the SpotRate is 1, indicating a successful booking conversion. | ||
|- | |- | ||
| 11 - Conversion Rate. || | | 11 - Conversion Rate. ||<pre> | ||
Conversion Rate(spotrate) = DIVIDE([Won], [Total],0) | Conversion Rate(spotrate) = DIVIDE([Won], [Total],0)</pre> | ||
|| This measure calculates the conversion rate for SpotRate, which is the ratio of Won bookings to Total quotations. | || This measure calculates the conversion rate for SpotRate, which is the ratio of Won bookings to Total quotations. | ||
|- | |- | ||
| 12 || || The clustered bar chart breakdown total booking by Service | | 12 || || The clustered bar chart breakdown total booking by Service | ||
|- | |- | ||
| 13 || || This clustered bar chart provides a breakdown of key booking and quotation metrics by year and month. It helps track trends over time and analyze seasonal fluctuations in bookings and conversions. | | 13 || || This clustered bar chart provides a breakdown of key booking and quotation metrics by year and month. It helps track trends over time and analyze seasonal fluctuations in bookings and conversions. | ||
|- | |- | ||
| 14 || || This clustered column chart provides a detailed breakdown of total quotes categorized by loss reasons. Identify the most frequent reasons for losing potential bookings. | | 14 || || This clustered column chart provides a detailed breakdown of total quotes categorized by loss reasons. Identify the most frequent reasons for losing potential bookings. | ||
|- | |- | ||
| 15 || || The clustered bar chart provides a detailed breakdown of Total Bookings categorized by Customer. | | 15 || || The clustered bar chart provides a detailed breakdown of Total Bookings categorized by Customer. | ||
|} | |} | ||
Revision as of 13:24, 16 June 2025
Summary
This page provides a detailed overview of all pre-quotes, quotes, bookings, and direct bookings made within the specified date range. However, instead of focusing on weight breaks, this report breaks down these categories into monthly totals. It also includes a breakdown of customers associated with the bookings and the service types used, as well as insights into the reasons for lost bookings.
Filters
| Filter | Description |
|---|---|
| Database | If you have access to multiple entity databases, you can filter and select specific ones. |
| Hide Lost/Deleted | Hides lost or deleted jobs from the report. |
| Site | Allows you to filter and focus on specific sites within your entity access. |
| Carrier | Enables filtering by carriers associated with the sites you have access to. |
| Users | Filters quotes/bookings by specific users. Users will be listed if they have access to the sites you can access. |
| Origin | Filters jobs based on their origin location. |
| Destination | Filters jobs based on their destination location. |
| Date Filter | Displays only jobs created within the specified date range. |
Calculations

| Reference | Calculation | Description |
|---|---|---|
| 1 - Total Pre-quotes. | Total Prequotes = CALCULATE ( COUNTROWS (quotations), USERELATIONSHIP (DimDate [Date], quotations[pre_quoted_at]), NOT (ISBLANK (quotations[pre_quoted_at])) ) + 0 |
This measure counts the total number of prequotes (draft quotations) created. It works by:
a. Checking if a date exists in the pre_quoted_at column (i.e., the quote was created). b. Using the relationship between the DimDate table and the pre_quoted_at column to filter data for the selected time. c. Counting the rows that meet these conditions. d. It ensures only valid prequotes with a date are included |
| 2- Total Quotes. | Total Quotes = CALCULATE ( COUNTROWS (quotations), USERELATIONSHIP (DimDate [Date], quotations [quoted at]), NOT (ISBLANK (quotations[quoted_at]))) |
This measure counts the total number of finalized quotes created. Here's how it works:
|
| 3 - Total Bookings | Total Bookings = CALCULATE ( COUNTROWS (quotations), NOT (ISBLANK (quotations [booked_at])), USERELATIONSHIP (quotations [booked_at], DimDate [Date]) ) |
This measure counts the total number of bookings made. Here's how it works:
|
| 4 - Confirmed Bookings | Confirmed Bookings = CALCULATE ( COUNTROWS (quotations), NOT (ISBLANK (quotations [confirmed at])), USERELATIONSHIP (DimDate [Date], quotations [confirmed at]) ) |
This measure counts the total number of bookings that have been confirmed. Here's how it works:
|
| 5 - Converted Bookings | Converted_Bookings = CALCULATE ( COUNTROWS (quotations), USERELATIONSHIP (DimDate [Date], quotations[booked_at]), // Temporarily activate the relationship with booked_at (NOT (ISBLANK (quotations[quoted_at])) || NOT (ISBLANK (quotations[pre_quoted_at]))) && NOT (ISBLANK (quotations[booked_at])) ) |
The Converted Bookings formula calculates the total number of quotations that successfully converted into bookings:
|
| 6 - Direct Booking | Direct_Booking = CALCULATE ( COUNTROWS (quotations), USERELATIONSHIP (DimDate [Date], quotations[booked_at]), ISBLANK (quotations[quoted_at]), ISBLANK (quotations[pre_quoted_at]), NOT (ISBLANK (quotations[booked_at])) ) |
This measure counts the total number of bookings that were made without going through a quote or prequote process. Here's how it works:
|
| 7 - Conversion Rate | Conversion Rate = DIVIDE([Converted_Bookings], [Total_Quotes],0) |
This measure calculates the conversion rate, which shows the percentage of quotes that were successfully converted into bookings. Here's how it works:
Purpose This measure helps track how effectively quotes are being turned into actual bookings. A higher conversion rate indicates a better success rate in converting quotes into bookings. |
| 8 | a. CW booking
CW_Booking = CALCULATE (SUM (quotations[chargeable_weight]), NOT (ISBLANK (quotations[booked_at])), USERELATIONSHIP (DimDate [Date], quotations[booked_at]) ) |
Purpose This measure helps you track the total chargeable weight for all bookings within a specific date range. |
b. GW Booking
GW Booking =
CALCULATE (SUM (quotations[gross_weight]),
NOT (ISBLANK (quotations[booked_at])),
USERELATIONSHIP (DimDate [Date], quotations[booked_at]))
|
Purpose This measure helps track the total gross weight of all bookings within a specific date range. | |
c. CW Quote
CW_Quote = CALCULATE ( SUM (quotations[chargeable_weight]), NOT (ISBLANK (quotations[quoted_at])), USERELATIONSHIP (DimDate [Date], quotations[quoted_at])) |
Purpose This measure helps you track the total chargeable weight for all quotations within a specific date range. | |
| d. GW Quote
GW Quote = CALCULATE ( SUM (quotations[gross_weight]), NOT (ISBLANK (quotations[quoted_at])), USERELATIONSHIP (DimDate [Date], quotations[quoted_at])) |
| |
| 9 - Total | Formula:
Total = [Won] + [Lost] + [Pending] |
The Total measure calculates the total count of quotations based on the sum of Won, Lost, and Pending quotations. |
| 10 - Won | Won = CALCULATE ( COUNTROWS (quotations), quotations[spotrate] = 1 && quotations [Booking_categories] = "Direct Booking" ) |
This measure counts the number of "Direct Bookings" where the SpotRate is 1, indicating a successful booking conversion. |
| 11 - Conversion Rate. | Conversion Rate(spotrate) = DIVIDE([Won], [Total],0) |
This measure calculates the conversion rate for SpotRate, which is the ratio of Won bookings to Total quotations. |
| 12 | The clustered bar chart breakdown total booking by Service | |
| 13 | This clustered bar chart provides a breakdown of key booking and quotation metrics by year and month. It helps track trends over time and analyze seasonal fluctuations in bookings and conversions. | |
| 14 | This clustered column chart provides a detailed breakdown of total quotes categorized by loss reasons. Identify the most frequent reasons for losing potential bookings. | |
| 15 | The clustered bar chart provides a detailed breakdown of Total Bookings categorized by Customer. |