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The following is an example of how you might write and read a pickle file The pickle module has an transparent optimizer (_pickle. Note that if you keep appending pickle data to the file, you will need to continue reading from the file until you find what you want or an exception is generated by reaching the end of the file.
Pickle is unsafe because it constructs arbitrary python objects by invoking arbitrary functions Pickler, unpickler = _pickler, _unpickler and from the pickle module documentation There used to be cpickle in python2.7
However, i don't see it anymore in python3 pickle
What ever happened to that module, did it get merged into the regular pickle module? However, there's a package called klepto that abstracts the saving of objects to a dictionary interface, so you can choose to pickle objects and save them to a file (as shown below), or pickle the objects and save them to a database, or instead of use pickle use json, or many other options. I have looked through the information that the python documentation for pickle gives, but i'm still a little confused What would be some sample code that would write a new file and then use pickle.
I'm in the same vote i have various serialized (100 to 300mb) pickle files that i would like to create/load into a single dictionary but it takes to much time to individually load would rather cache. Np.save/load is the usual pair for writing numpy arrays Resulting file sizes are similar Curiously in timings the pickle version is faster.
When you dump stuff in a pickle you should avoid pickling classes and functions declared in the main module
Your problem is (in part) because you only have one file in your program Pickle is lazy and does not serialize class definitions or function definitions Instead it saves a reference of how to find the class (the module it lives in and its name) When python runs a script/file directly.
The pickle module already imports _pickle if available From the pickle.py source code # use the faster _pickle if possible try From _pickle import * except importerror
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