Reputation: 5837
To update a range of cells, you use the following command.
## Select a range
cell_list = worksheet.range('A1:A7')
for cell in cell_list:
cell.value = 'O_o'
## Update in batch
worksheet.update_cells(cell_list)
For my application, I would like it to update an entire range, but I am trying to set a different value for each individual cell. The problem with this example is that every cell ends up with the same value. Updating each cell individually is inefficient and takes way too long. How can I do this efficiently?
Upvotes: 15
Views: 43243
Reputation: 3097
import gspread
from gspread.cell import Cell
from oauth2client.service_account import ServiceAccountCredentials
import string as string
import random
cells = []
cells.append(Cell(row=1, col=1, value='Row-1 -- Col-1'))
cells.append(Cell(row=1, col=2, value='Row-1 -- Col-2'))
cells.append(Cell(row=9, col=20, value='Row-9 -- Col-20'))
# use creds to create a client to interact with the Google Drive API
scope = ['https://spreadsheets.google.com/feeds', 'https://www.googleapis.com/auth/drive']
creds = ServiceAccountCredentials.from_json_keyfile_name('Sheet-Update-Secret.json', scope)
client = gspread.authorize(creds)
sheet.update_cells(cells)
You could refer to my blog post for more details.
Upvotes: 15
Reputation: 161
You can use batch_update() or update(). https://github.com/burnash/gspread
worksheet.batch_update([
{
'range': 'A1:J1', # head
'values': [['a', 'b', 'c']],
},
{
'range': 'A2', # values
'values': df_array
}
])
Upvotes: 3
Reputation: 162
Here's my solution if you want to export a pandas data frame to a google sheet with gspread:
def getListIndex(nrow, ncol,row_pos, col_pos):
list_pos = row_pos*ncol + col_pos
return(list_pos)
We can use this function to update the correct element in the list, cell_list, with the respective value in the dataframe, df.
count_row = df.shape[0]
count_col = df.shape[1]
# note this outputs data from the 1st row
cell_list = worksheet.range(1,1,count_row,count_col)
for row in range(0,count_row):
for col in range(0,count_col):
list_index = getListIndex(count_row, count_col, row, col)
cell_list[list_index].value = df.iloc[row,col]
We can output the results of the list, cell_list, to our worksheet.
worksheet.update_cells(cell_list)
Upvotes: 1
Reputation: 69
Assuming a table with a header row, as follows:
Name | Weight
------+-------
Apple | 56
Pear | 23
Leaf | 88
Then, the following should be self explanatory
cell_list = []
# get the headers from row #1
headers = worksheet.row_values(1)
# find the column "Weight", we will remember this column #
colToUpdate = headers.index('Weight')
# task 1 of 2
cellLookup = worksheet.find('Leaf')
# get the cell to be updated
cellToUpdate = worksheet.cell(cellLookup.row, colToUpdate)
# update the cell's value
cellToUpdate.value = 77
# put it in the queue
cell_list.append(cellToUpdate)
# task 2 of 2
cellLookup = worksheet.find('Pear')
# get the cell to be updated
cellToUpdate = worksheet.cell(cellLookup.row, colToUpdate)
# update the cell's value
cellToUpdate.value = 28
# put it in the queue
cell_list.append(cellToUpdate)
# now, do it
worksheet.update_cells(cell_list)
Upvotes: 4
Reputation: 896
You can use enumerate on a separate list containing the different values you want in the cells and use the index part of the tuple to match to the appropriate cells in cell_list.
cell_list = worksheet.range('A1:A7')
cell_values = [1,2,3,4,5,6,7]
for i, val in enumerate(cell_values): #gives us a tuple of an index and value
cell_list[i].value = val #use the index on cell_list and the val from cell_values
worksheet.update_cells(cell_list)
Upvotes: 28