-
-
Save ogrisel/a2cc9f12edbf34172f51 to your computer and use it in GitHub Desktop.
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
PS C:\Users\Administrator> conda remove mkl | |
Package plan for package removal in environment C:\Anaconda: | |
The following packages will be UN-linked: | |
package | build | |
---------------------------|----------------- | |
mkl-11.1 | np18py27_p3 | |
WARNING: the process C:\Anaconda\Scripts\conda.exe remove mkl (3664) is running | |
WARNING: Continuing installation while the above processes are running is | |
not recommended. Please, close all Anaconda programs before installing or | |
updating things with conda. | |
Continue (yes/no/force) (y/[n]/f)? y | |
WARNING: the process C:\Anaconda\Scripts\conda.exe remove mkl (3664) is running | |
WARNING: Continuing installation while the above processes are running is | |
not recommended. Please, close all Anaconda programs before installing or | |
updating things with conda. | |
Continue (yes/no/force) (y/[n]/f)? f | |
Unlinking packages ... | |
[ COMPLETE ] |#################################################| 100% | |
PS C:\Users\Administrator> conda update scikit-learn | |
Fetching package metadata: .. | |
Solving package specifications: . | |
Package plan for installation in environment C:\Anaconda: | |
The following packages will be downloaded: | |
package | build | |
---------------------------|----------------- | |
scikit-learn-0.15.0b2 | np18py27_p0 2.9 MB | |
The following packages will be UN-linked: | |
package | build | |
---------------------------|----------------- | |
scikit-learn-0.15.0b1 | np18py27_p0 | |
The following packages will be linked: | |
package | build | |
---------------------------|----------------- | |
scikit-learn-0.15.0b2 | np18py27_p0 hard-link | |
WARNING: the process C:\Anaconda\Scripts\conda.exe update scikit-learn (3464) is running | |
WARNING: Continuing installation while the above processes are running is | |
not recommended. Please, close all Anaconda programs before installing or | |
updating things with conda. | |
Continue (yes/no/force) (y/[n]/f)? f | |
Fetching packages ... | |
scikit-learn-0 100% |###############################| Time: 0:00:03 778.78 kB/s | |
Extracting packages ... | |
[ COMPLETE ] |#################################################| 100% | |
Unlinking packages ... | |
[ COMPLETE ] |#################################################| 100% | |
Linking packages ... | |
[ COMPLETE ] |#################################################| 100% | |
PS C:\Users\Administrator> python .\parallel_mmap.py | |
Vendor: Continuum Analytics, Inc. | |
Package: mkl | |
Message: trial mode expires in 30 days | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to new file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl | |
Vendor: Continuum Analytics, Inc. | |
Package: mkl | |
Message: trial mode expires in 30 days | |
Vendor: Continuum Analytics, Inc. | |
Package: mkl | |
Message: trial mode expires in 30 days | |
Vendor: Continuum Analytics, Inc. | |
Package: mkl | |
Message: trial mode expires in 30 days | |
Vendor: Continuum Analytics, Inc. | |
Package: mkl | |
Message: trial mode expires in 30 days | |
Vendor: Continuum Analytics, Inc. | |
Package: mkl | |
Message: trial mode expires in 30 days | |
Vendor: Continuum Analytics, Inc. | |
Vendor: Continuum Analytics, Inc. | |
PPackage: mkl | |
ackage: mkl | |
Message: trial mode expires in 30 days | |
Message: trial mode expires in 30 days | |
Vendor: Continuum Analytics, Inc. | |
Package: mkl | |
Message: trial mode expires in 30 days | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl[Parallel(n_jobs=8)]: Done 1 out of 16 | elapsed: 43.2s remaining: 10.8 | |
min | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl[Parallel(n_jobs=8)]: Done 2 out of 16 | elapsed: 43.2s remaining: 5.1 | |
min | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl[Parallel(n_jobs=8)]: Done 3 out of 16 | elapsed: 43.2s remaining: 3.1 | |
min | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl | |
[Parallel(n_jobs=8)]: Done 4 out of 16 | elapsed: 43.2s remaining: 2.2min | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl | |
[Parallel(n_jobs=8)]: Done 5 out of 16 | elapsed: 43.2s remaining: 1.6min | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl[Parallel(n_jobs=8)]: Done 6 out of 16 | elapsed: 43.2s remaining: 1.2 | |
min | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl | |
[Parallel(n_jobs=8)]: Done 7 out of 16 | elapsed: 43.2s remaining: 55.6s | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl | |
[Parallel(n_jobs=8)]: Done 8 out of 16 | elapsed: 43.2s remaining: 43.2s | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl | |
[Parallel(n_jobs=8)]: Done 9 out of 16 | elapsed: 43.2s remaining: 33.6s | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl[Parallel(n_jobs=8)]: Done 10 out of 16 | elapsed: 43.2s remaining: 25 | |
.9s | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl | |
[Parallel(n_jobs=8)]: Done 11 out of 16 | elapsed: 43.2s remaining: 19.6s | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl | |
[Parallel(n_jobs=8)]: Done 12 out of 16 | elapsed: 43.2s remaining: 14.3s | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl | |
[Parallel(n_jobs=8)]: Done 13 out of 16 | elapsed: 43.2s remaining: 9.9s | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl | |
[Parallel(n_jobs=8)]: Done 14 out of 16 | elapsed: 43.2s remaining: 6.1s | |
Memmaping (shape=(1000000L, 1000L), dtype=int64) to old file c:\users\admini~1\appdata\local\temp\2\joblib_memmaping_poo | |
l_2544_52311208\2544-53141912-50480960-0.pkl[Parallel(n_jobs=8)]: Done 15 out of 16 | elapsed: 43.3s remaining: 2 | |
.8s | |
[Parallel(n_jobs=8)]: Done 16 out of 16 | elapsed: 43.3s finished | |
[<class 'numpy.core.memmap.memmap'>, <class 'numpy.core.memmap.memmap'>, <class 'numpy.core.memmap.memmap'>, <class 'num | |
py.core.memmap.memmap'>, <class 'numpy.core.memmap.memmap'>, <class 'numpy.core.memmap.memmap'>, <class 'numpy.core.memm | |
ap.memmap'>, <class 'numpy.core.memmap.memmap'>, <class 'numpy.core.memmap.memmap'>, <class 'numpy.core.memmap.memmap'>, | |
<class 'numpy.core.memmap.memmap'>, <class 'numpy.core.memmap.memmap'>, <class 'numpy.core.memmap.memmap'>, <class 'num | |
py.core.memmap.memmap'>, <class 'numpy.core.memmap.memmap'>, <class 'numpy.core.memmap.memmap'>] | |
PS C:\Users\Administrator> |
Sign up for free
to join this conversation on GitHub.
Already have an account?
Sign in to comment