Deserializing dictionaries in Python across multiple processes can be accomplished using the `multiprocessing` module, which allows data to be shared between processes. Below are the essential details regarding the process of deserialization and an example implementation.
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How do I provide stable iteration order with std::map in multithreaded code?
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