src/external/xgboost/doc/external_memory.md
There is no big difference between using external memory version and in-memory version. The only difference is the filename format.
The external memory version takes in the following filename format
filename#cacheprefix
The filename is the normal path to libsvm file you want to load in, cacheprefix is a
path to a cache file that xgboost will use for external memory cache.
The following code was extracted from ../demo/guide-python/external_memory.py
dtrain = xgb.DMatrix('../data/agaricus.txt.train#dtrain.cache')
You can find that there is additional #dtrain.cache following the libsvm file, this is the name of cache file.
For CLI version, simply use "../data/agaricus.txt.train#dtrain.cache" in filename.
nthread should be set to number of real cores
The external memory mode naturally works on distributed version, you can simply set path like
data = "hdfs:///path-to-data/#dtrain.cache"
xgboost will cache the data to the local position. When you run on YARN, the current folder is temporal
so that you can directly use dtrain.cache to cache to current folder.