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5

Actually, you can easily deserialize data in a subprocess by using torch.utils.data.DataLoader. By setting num_workers argument to 1 or a bigger value, you can spawn subprocesses with their own python interpreters and GILs. loader = torch.utils.data.DataLoader(your_dataset, num_workers=n, **kwargs) for epoch in range(epochs): for batch_idx, data in ...


4

From their website Try this !pip install torch-scatter==latest+cu101 torch-sparse==latest+cu101 -f https://s3.eu-central-1.amazonaws.com/pytorch-geometric.com/whl/torch-1.4.0.html


3

Looking at main.py, you run a lot of code at the module level. On Windows, python's multiprocessing module will start a new python interpreter, import your modules, unpickle a snapshot of your parent context and then call your worker function. The problem is that all of that module level code executes merely by import and you essentially run a new copy of ...


3

The output in this case is a tuple of (last_hidden_state, pooler_output). You can find documentation about what the returns could be here.


2

The learning rate you define for optimizers like ADAM are upper bounds. You can see this in the paper in Section 2.1. The stepsize α in the paper is the learning rate. The effective magnitude of the steps taken in parameter space at each are approximately bounded by the stepsize setting α Also this stepsize α is directly used and multiplied with the ...


2

PyTorch supports "Advanced Indexing." It implements the ability to accept a tensor argument to the [] operator. The result of the == operator is a boolean mask. The [] operator is using that mask to select elements. This example below might help clarify: >>> x=torch.arange(0,10) >>> x tensor([0, 1, 2, 3, 4, 5, 6, 7, 8, 9]) >>> x &...


2

I spent a lot of time investigating a similar issue. Pytorch calls were stuck when running on a docker container with gunicorn. The solution that worked for me was removing the --preload flag from the Docker gunicorn command.


2

If I have to talk in general using an activation function helps you to include some non-linear property in your network. The purpose of an activation function is to add some kind of non-linear property to the function, which is a neural network. Without the activation functions, the neural network could perform only linear mappings from inputs x to the ...


2

Yes, in this case it acts just like torch.nn.MSELoss, and it is called Huber Loss all in all. Due to it's nature threshold doesn't make much sense, let's look at example why that is the case: How it works Let's compare errors being larger than 1.0 in case of MSELoss and SmoothL1Loss. Assume our absolute error (|f(x) - y|) is 10. MSELoss would give it ...


2

PyTorch is a high level software library with lots of python wrappers for highly optimized compiled code. A function or operator either supports batch data or not. There is no other way around it than writing your own C/C++/CUDA code and invoke it with python. Luckily, most functions support batch processing (including torch.svd() as pointed out by jodag) ...


2

DOESNT WORK PROPERLY cuz the named parameter modules get deleted. Seems this works: import torch import torch.nn as nn from torchviz import make_dot import copy from collections import OrderedDict # img = torch.randn([8,3,32,32]) # targets = torch.LongTensor([1, 2, 0, 6, 2, 9, 4, 9]) # img = torch.randn([1,3,32,32]) # targets = torch.LongTensor([1]) x =...


2

I had the same problem, the following worked for me: torch.cuda.empty_cache() # start training from here Even after this if you get the error, then you should decrease the batch_size


2

You are confusing element-wise multiplication (* operator) with matrix multiplication (@ operator). Try: net.fc2.weight @ (net.fc1.weight @ X[0])


2

_DataLoaderIter does not exist any more. This code is the latest one that contains _DataLoaderIter. You can use _SingleProcessDataLoaderIter or _MultiProcessingDataLoaderIter. I don't think the .pyi file you mentioned is in version 1.3.1.


1

Use torch.stack - All tensors need to be of the same size in the list. >>> torch.stack(tmp) Ex: >>> tmp = [torch.rand(2,2),torch.rand(2,2)] >>> tmp = torch.stack(tmp) >>> tmp tensor([[[0.0212, 0.1864], [0.0070, 0.3381]], [[0.1607, 0.9568], [0.9093, 0.1835]]]) >>> type(tmp) <class '...


1

In init you need to create multiple hidden layers, currently you're only making one. One possibility to do this with little overhead is using a torch.nn.ModuleDict that will give you named layers: class Net3(torch.nn.Module): def __init__(self, n_feature, n_hidden, n_output, depth, init): super(Net3, self).__init__() self.layers = nn....


1

The problem with your code seems to be data normalization, or, the lack of it. I edited your code to add data normalization ((x - mean) / std), set epochs to 50 and switched the optimiser to Adam so it converges faster. import sklearn from sklearn.datasets import load_boston import torch import numpy as np import torch.nn as nn def normalize(X): mean ...


1

As discussed in the comments, the problem was applying transform on label as well. The label should instead simply be written as tensor: return self.transform(img), torch.tensor(label)


1

You can simply return the encoded output in the forward function as follows: class Autoencoder(nn.Module): ... def forward(self, x): x = self.encoder(x) encoded_x = x x = self.decoder(x) return x, encoded_x Modify the training function a little bit: output, encoded_output = model(img) OR you can simply call encoder: ...


1

To check the size and parameters of each layer you can use the torch summary. To compute time the execution time of each layer, you can use the torchprof. I don't know any project that merges both libs. Maybe it's your opportunity (lol)


1

This is because the product of your spatial & channel dimensions is not equivalent to 23104 but rather is equal to 2876416. To flatten your tensor, you can try out = out.view(out.size(0), -1) instead, which should work fine.


1

As the error message explains, c is a tensor. To use torch.cat() you must pass a group of tensors or a list. To solve your problem you may use: temp = list() for key, b in reader: temp.append(torch.from_numpy(b)) labels = torch.cat(temp) For more, you can check the manual here Cheers


1

Converting the tensor to a float seemed to fix it self.conv1(x.float())


1

As I met lot of hurdles to install torch and torchvison ,I'm not reluctant to reinstall the enviroment.Running 'conda list' the version of torch and torchvison ,I found they are not incompitable,the versions of two packages installed are: torchvision-0.5.0+cu92-cp37-cp37m-win_amd64.whl torch-1.4.0+cpu-cp37-cp37m-win_amd64.whl I change the version of ...


1

Okay, turns out the transformers installer pulls an older version (0.0.11). So... pip uninstall tokenizers pip install tokenizers==0.4.2 ...fixes it. It does issues a warning: ERROR: transformers 2.4.1 has requirement tokenizers==0.0.11, but you'll have tokenizers 0.4.2 which is incompatible., but this can safely be ignored (this answer came from @julien-c ...


1

Can I store somewhere "warm-uped" model to avoid warming-up in every request? Yes, just instantiate your model outside of the test_scripted_model function and refer to it from within the function.


1

Thanks to Joe Davison for providing the answer on Twitter: from transformers import pipeline qa = pipeline('question-answering') response = qa(context='I like to eat apples, but hate bananas.', question='What do I like?') print(response) gives a response of: {'score': 0.282511100858045, 'start': 31, 'end': 38, 'answer': 'bananas.'} Not ...


1

When performing cholesky decomposition PyTorch relies on LAPACK for CPU tensors and MAGMA for CUDA tensors. In the PyTorch code used to call LAPACK the batch is just iterated over, invoking LAPACK's zpotrs_ function on each matrix separately. In the PyTorch code used to call MAGMA the entire batch is processed using MAGMA's magma_dpotrs_batched which is ...


1

After hours of good old trial errors, I came to the same conclusion as @kyamagu, "install_requires try to fetch PyPI hosted torch package which is a huge GPU built wheel and that is exceeding the deployment quota." However, his solution did not work for me. So after many more hours of trial errors (thanks to lacking documentation and wrong ones) I came up ...


1

You're absolutely correct. torchvision 0.5 has a bug in RandomRotation() in the fill argument probably due to incompatible Pillow version. This issue has now been fixed (PR#1760) and will be resolved in the next release. Temporarily, you add fill=(0,) to RandomRotation transform to fix it. transforms.RandomRotation(degrees=(90, -90), fill=(0,))


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