You can leverage the storage capacity of GoogleDrive. Colab allows you to have this data stored on your Drive and access it from colab notbook as follows:
from google.colab import drive
import matplotlib.image as mpimg
import matplotlib.pyplot as plt
import pandas as pd
img = mpimg.imread(r'/content/gdrive/My Drive/top.bmp') # Reading image files
df = pd.read_csv('/content/gdrive/My Drive/myData.csv') # Loading CSV
When it mounts, it would ask you to visit a particular url to grant permission for accessing drive. Just paste the token returned. Needs to be done only once.
The best thing about colab is you can also run shell cmds from code, all you need to do is to prefix the commands with a
! (bang). Useful when you need to unzip etc.
os.chdir('gdrive/My Drive/data') #change dir
!unzip -q iris_data.zip
df3 = pd.read_csv('/content/gdrive/My Drive/data/iris_data.csv')
Note: Since you have specified that the data is about 30GB, this may not be useful if you are on the free tier provided by Google (as it gives only 15GB per account) you may have to look elsewhere.
You can also visit this particular question for more solutions on Kaggle integration with Google Colab.