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AIAT
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ผู้ที่ซื้อ Canon EOS เป็นผู้ดำเนินการตั๋วจำนวนเท่าใด
How many ticket ID were conducted by the person who purchased Canon EOS?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Product_Purchased'] == 'Canon EOS'].shape[0]
customer
บุคคลที่ซื้อ HP Pavilion เป็นผู้ดำเนินการตั๋วจำนวนเท่าใด
How many ticket ID were conducted by the person who purchased HP Pavilion?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
df[df['Product_Purchased'] == 'HP Pavilion'].shape[0]
customer
รหัสตั๋วมีลำดับความสำคัญปานกลางกี่รหัส
How many ticket ID were in Medium priority?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Ticket_Priority'] == 'Medium'].shape[0]
customer
มี Ticket ID กี่ใบที่อยู่ในลำดับความสำคัญวิกฤต
How many ticket ID were in Critical priority?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Ticket_Priority'] == 'Critical'].shape[0]
customer
รหัสตั๋วมีลำดับความสำคัญสูงจำนวนเท่าใด
How many ticket ID were in High priority?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Ticket_Priority'] == 'High'].shape[0]
customer
รหัสตั๋วที่มีลำดับความสำคัญต่ำมีกี่รหัส
How many ticket ID were in Low priority?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Ticket_Priority'] == 'Low'].shape[0]
customer
Ticket ID กี่ใบที่เป็นปัญหาทางเทคนิค
How many ticket ID that is Technical issue?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Ticket_Type'] == 'Technical issue'].shape[0]
customer
รหัสตั๋วกี่ใบที่สามารถขอคืนเงินได้?
How many ticket ID that is Refund request?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Ticket_Type'] == 'Refund request'].shape[0]
customer
รหัสตั๋วกี่ใบที่เป็นคำขอยกเลิก?
How many ticket ID that is Cancellation request?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Ticket_Type'] == 'Cancellation request'].shape[0]
customer
มี Ticket ID กี่ใบที่สอบถาม Billing?
How many ticket ID that is Billing inquiry?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Ticket_Type'] == 'Billing inquiry'].shape[0]
customer
รหัสตั๋วกี่ใบที่สอบถามผลิตภัณฑ์?
How many ticket ID that is Product inquiry?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Ticket_Type'] == 'Product inquiry'].shape[0]
customer
รหัสตั๋วที่มาจากลูกค้ารายอื่นมีกี่รหัส?
How many ticket ID that come from Other customer?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Customer_Gender'] == 'Other'].shape[0]
customer
รหัสตั๋วที่มาจากลูกค้าชายมีกี่ใบ?
How many ticket ID that come from Male customer?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Customer_Gender'] == 'Male'].shape[0]
customer
Ticket ID ที่มาจากลูกค้าผู้หญิงมีกี่ใบ?
How many ticket ID that come from Female customer?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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df[df['Customer_Gender'] == 'Female'].shape[0]
customer