I load some (not so) big data into it. A compressed file at 9GB. It can't decompress because the disk space is not enough.

What's the current hardware spec? What's the disk size?


You can see the disk information using a command like !df -h. To see CPU specs, !cat /proc/cpuinfo. For memory, !cat /proc/meminfo.

Here's an example notebook: https://colab.research.google.com/notebook#fileId=1_x67fw9y5aBW72a8aGePFLlkPvKLpnBl

Edit: Colab now offers a Pro version which offers double the amount of disk available in the free version.


Here I run some test.


In short:

  • n1-highmem-2 instance
  • 2vCPU @ 2.2GHz
  • 13GB RAM
  • 100GB Free Space
  • idle cut-off 90 minutes
  • maximum 12 hours

2020 Update:

  • GPU instance downgraded to 64GB disk space.
  • what does idle cut-off and maximum time mean? – laltin Oct 15 '18 at 8:21
  • 1
    @laltin If you close the browser, it will stop in 90 minutes. If you open the browser, it will stop in 12 hours. – korakot Oct 15 '18 at 9:03
  • I can use it only 12 hours? – Mikhail_Sam Nov 13 '18 at 21:13
  • 3
    @Mikhail_Sam you can save the result (like every hour), then restart training from your last checkpoint. – korakot Nov 14 '18 at 4:40
  • 1
    "GPU instance upgraded to 350 GB" of free space? – SantoshGupta7 Apr 13 '19 at 22:17

I ran few tests and found ,

GPU: 1xTesla K80 , compute 3.7, having 2496 CUDA cores , 12GB GDDR5 VRAM

CPU: 1xsingle core hyper threaded Xeon Processors @2.3Ghz i.e(1 core, 2 threads)

RAM: ~12.6 GB Available

Disk: ~33 GB Available

you can see it here https://colab.research.google.com/drive/151805XTDg--dgHb3-AXJCpnWaqRhop_2

  • Thanks for the code. Is it possible to find the information about OS if the VM? – chikitin Nov 9 '19 at 23:51
  • Hi @Anirudh Chandupatla, when you say “2496 CUDA cores”, does that mean there are 2496 GPU cores? I have read somewhere that the free version of Google Colab only has a single (ie. 1) GPU core, though I am not sure how updated this is – Leockl May 3 at 3:22
  • @Leockl Single GPU has multiple CUDA cores. It's like single CPU has multiple cores (around 4). Also, using single CUDA core simply does not make sense, as that would make GPU slower than CPU. – minary Jun 28 at 2:26

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