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Serialize JAX, Flax, Haiku, or Objax model params with `safetensors`

Project description

🔐 Serialize JAX, Flax, Haiku, or Objax model params with safetensors

safejax is a Python package to serialize JAX, Flax, Haiku, or Objax model params using safetensors as the tensor storage format, instead of relying on pickle. For more details on why safetensors is safer than pickle please check huggingface/safetensors.

Note that safejax supports the serialization of jax, flax, dm-haiku, and objax model parameters and has been tested with all those frameworks, but there may be some cases where it does not work as expected, as this is still in an early development phase, so please if you have any feedback or bug reports, open an issue at safejax/issues.

🛠️ Requirements & Installation

safejax requires Python 3.7 or above

pip install safejax --upgrade

💻 Usage

flax

  • Convert params to bytes in memory

    from safejax.flax import serialize, deserialize
    
    params = model.init(...)
    
    encoded_bytes = serialize(params)
    decoded_params = deserialize(encoded_bytes)
    
    model.apply(decoded_params, ...)
    
  • Convert params to bytes in params.safetensors file

    from safejax.flax import serialize, deserialize
    
    params = model.init(...)
    
    encoded_bytes = serialize(params, filename="./params.safetensors")
    decoded_params = deserialize("./params.safetensors")
    
    model.apply(decoded_params, ...)
    

dm-haiku

  • Just contains params

    from safejax.haiku import serialize, deserialize
    
    params = model.init(...)
    
    encoded_bytes = serialize(params)
    decoded_params = deserialize(encoded_bytes)
    
    model.apply(decoded_params, ...)
    
  • If it contains params and state e.g. ExponentialMovingAverage in BatchNorm

    from safejax.haiku import serialize, deserialize
    
    params, state = model.init(...)
    params_state = {"params": params, "state": state}
    
    encoded_bytes = serialize(params_state)
    decoded_params_state = deserialize(encoded_bytes) # .keys() contains `params` and `state`
    
    model.apply(decoded_params_state["params"], decoded_params_state["state"], ...)
    
  • If it contains params and state, but we want to serialize those individually

    from safejax.haiku import serialize, deserialize
    
    params, state = model.init(...)
    
    encoded_bytes = serialize(params)
    decoded_params = deserialize(encoded_bytes)
    
    encoded_bytes = serialize(state)
    decoded_state = deserialize(encoded_bytes)
    
    model.apply(decoded_params, decoded_state, ...)
    

objax

  • Convert params to bytes in memory, and convert back to VarCollection

    from safejax.objax import serialize, deserialize
    
    params = model.vars()
    
    encoded_bytes = serialize(params=params)
    decoded_params = deserialize(encoded_bytes)
    
    for key, value in decoded_params.items():
      if key in model.vars():
        model.vars()[key].assign(value.value)
    
    model(...)
    
  • Convert params to bytes in params.safetensors file

    from safejax.objax import serialize, deserialize
    
    params = model.vars()
    
    encoded_bytes = serialize(params=params, filename="./params.safetensors")
    decoded_params = deserialize("./params.safetensors")
    
    for key, value in decoded_params.items():
      if key in model.vars():
        model.vars()[key].assign(value.value)
    
    model(...)
    
  • Convert params to bytes in params.safetensors and assign during deserialization

    from safejax.objax import serialize, deserialize_with_assignment
    
    params = model.vars()
    
    encoded_bytes = serialize(params=params, filename="./params.safetensors")
    deserialize_with_assignment(filename="./params.safetensors", model_vars=params)
    
    model(...)
    

More in-detail examples can be found at examples/ for flax, dm-haiku, and objax.

🤔 Why safejax?

safetensors defines an easy and fast (zero-copy) format to store tensors, while pickle has some known weaknesses and security issues. safetensors is also a storage format that is intended to be trivial to the framework used to load the tensors. More in-depth information can be found at huggingface/safetensors.

jax uses pytrees to store the model parameters in memory, so it's a dictionary-like class containing nested jnp.DeviceArray tensors.

dm-haiku uses a custom dictionary formatted as <level_1>/~/<level_2>, where the levels are the ones that define the tree structure and /~/ is the separator between those e.g. res_net50/~/intial_conv, and that key does not contain a jnp.DeviceArray, but a dictionary with key value pairs e.g. for both weights as w and biases as b.

objax defines a custom dictionary-like class named VarCollection that contains some variables inheriting from BaseVar which is another custom objax type.

flax defines a dictionary-like class named FrozenDict that is used to store the tensors in memory, it can be dumped either into bytes in MessagePack format or as a state_dict.

Of all those, flax is the only framework that defines its custom functions to serialize and deserialize the model params under flax.serialization.But flax still uses pickle as the format for storing the tensors, and there are no plans from HuggingFace to extend safetensors to support anything more than tensors e.g. FrozenDicts, see their response at huggingface/safetensors/discussions/138.

So the motivation to create safejax is to easily provide a way to serialize FrozenDicts using safetensors as the tensor storage format instead of pickle, as well as to provide a common and easy way to serialize and deserialize any JAX model params (Flax, Haiku, or Objax) using safetensors format.

📄 Main differences with flax.serialization

  • flax.serialization.to_bytes uses pickle as the tensor storage format, while safejax.serialize uses safetensors
  • flax.serialization.from_bytes requires the target to be instantiated, while safejax.deserialize just needs the encoded bytes

🏋🏼 Benchmark

Benchmarks are no longer running with hyperfine, as most of the elapsed time is not during the actual serialization but in the imports and the model parameter initialization. So we've refactored those to run with pure Python code using time.perf_counter to measure the elapsed time in seconds.

$ python benchmarks/resnet50.py
safejax (100 runs): 2.0974 s
flax (100 runs): 4.8734 s

This means that for ResNet50, safejax is x2.3 times faster than flax.serialization when it comes to serialization, also to restate the fact that safejax stores the tensors with safetensors while flax saves those with pickle.

But if we use hyperfine as mentioned above, it needs to be installed first, and the hatch/pyenv environment needs to be activated first (or just install the requirements). But, due to the overhead of the script, the elapsed time during the serialization will be minimal compared to the rest, so the overall result won't reflect well enough the efficiency diff between both approaches, as above.

$ hyperfine --warmup 2 "python benchmarks/hyperfine/resnet50.py serialization_safejax" "python benchmarks/hyperfine/resnet50.py serialization_flax"
Benchmark 1: python benchmarks/hyperfine/resnet50.py serialization_safejax
  Time (mean ± σ):      1.778 s ±  0.038 s    [User: 3.345 s, System: 0.511 s]
  Range (min  max):    1.741 s   1.877 s    10 runs
 
Benchmark 2: python benchmarks/hyperfine/resnet50.py serialization_flax
  Time (mean ± σ):      1.790 s ±  0.011 s    [User: 3.371 s, System: 0.478 s]
  Range (min  max):    1.771 s   1.810 s    10 runs
 
Summary
  'python benchmarks/hyperfine/resnet50.py serialization_safejax' ran
    1.01 ± 0.02 times faster than 'python benchmarks/hyperfine/resnet50.py serialization_flax'

As we can see the difference is almost not noticeable, since the benchmark is using a 2-tensor dictionary, which should be faster using any method. The main difference is on the safetensors usage for the tensor storage instead of pickle.

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