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Questions tagged [tensorflow-federated]

Federated Learning is a machine learning setting where the goal is to train a high-quality centralized model with training data distributed over a large number of clients each with unreliable and relatively slow network connections. https://ai.google/research/pubs/pub45648

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How to save model in tensorflow federated

How to save the model in the blow code if you want to run the code, please visit https://github.com/tensorflow/federated and download federated_learning_for_image_classification.ipynb. I will ...
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Tensor type error when federated learning

I tried to use tensorflow federated learning tool for my data. I have two datasets (dataset and dataset2) obtained from csv files where first 15 column are features and the last column is the label. I ...
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tensorflow federated learning checkpoint

I am studying a federated_learning_for_image_classification.ipynb with tensorflow federated API. In the example, I could check each simulated clients train Accuracy, Loss and Total accuracy, Total ...
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federated_learning_for_image_classification.ipynb code error

I use tensorflow-federated learning api. And recently, I update tensorflow-federated to 0.8.0 version. And then I run the federated_learning_for_image_classification.ipynb file. But It did not work on ...
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Is there a reasonable way to create tff clients datat sets?

I am wondering if there are any reasonable ways to generate clients data sets for federated learning simulation using tff core code? In the tutorial for the federated core, it uses the MNIST database ...
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In tensorflow federated, how to assign different training functions to different clients?

The low-level function tff.federated_mean(tff.federated_map(fn, data)) assigns the same training function to all of the clients. Is there any way to assign different training functions to the ...
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Are there any way to do federated learning with real multiple machines using tensorflow-federated API?

I am studying about tensorflow-federated API to make federated learning with real multiple machines. But I found the answer on this site that not support to make real multiple federated learning using ...
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change model in tensorflow-federated but not work

I try to change model(just and hidden layer) in the tutorial of Federated Learning for Image Classification. But the result shows that w1 and b1 don't change and retain the initial value 0 after ...
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Expected a callable, found non-callable tensorflow_federated.python.learning.model_utils.EnhancedTrainableModel

Unable to use TFF's build_federated_averaging_process(). Followed the tutorial from the TFF federated documentation. Here's my model code: X_train = <valuex> Y_train = <valuey> def ...
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Is Tensorflow Federated-Learning only for simulating federated learning on one machine?

I read multiple guides on https://www.tensorflow.org/federated/federated_learning e.g. the image classification or text generation example. From what I have read I can not see how to use tensorflow ...
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How to create your own federated dataset and do learning over multiple devices with TensorflowFederated?

I am trying to use TFF to implement federated learning. I have spun up 3 EC2 instances and set up the TFF in a conda environment. I am trying to figure out how to create a federated dataset with some ...
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48 views

How to realise a multi-tier architecture with subsets of clients in different size?

I have read the four tutorials given by the tensorflow-federated. However, it just simply mentioned that the tff_core can be used for implementing the multi-tier network without any detailed ...
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using reduce local_train in custom_federated_algorithms_2 tutorial

the custom_federated_algorithms_2 tutorial presents a local_train function using tff.federated_computation. There a comment saying "while we could have implemented this logic entirely in TensorFlow, ...
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writing tensorflow federated aggregation function (e.g., tff.federated_mean)

I was trying to write a custom aggregation function for federated averaging. replacing 'federated_mean' seems to be very complex and the code is very hard to decipher. Is there any documentation/...
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How to control validation data for Federated framework

I'm trying to specify the validation data that is passed through the federated framework to each client to train/validation on. I know that tensorflow-federated takes random sample of each client's ...
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KerasRegressor on Tensorflow-Federated

I'm trying to get my model of KerasRegressor working with TFF framework. But it seems that "tff.learning.from_compiled_keras_model" does not accept it, right?. My main aim is to differentiate/...
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tensorflow federated takes long time to start training

I'm facing a little bit annoying problem. The tensorflow-federated training (initialize and next) takes a long time to start (I'm not talking about time to finish, it's just starting time takes a ...
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63 views

Access Clients Loss while having keras tff NN models

I'm trying to obtain the losses of all clients in tensorflow model without luck. The answer to post how to print local outputs in tensorflow federated? suggests to create our NN model from scratch. ...
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How to customize different TensorFlow-Federated functions?

I have read and studied the TFF guide and APIs pages precisely. But I am confused about the usage of the functions and how to control them. For example, in tutorials, there is a function that is ...
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90 views

How to use TFF api's for custom usage?

I have read and studied the TFF guide and APIs pages precisely. But I am confused in some detail parts. For example, when I want to wrap/decorate a TF/python function, use these two below APIs: 1. ...
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115 views

Why the tensorflow-federated performance is worse than single Keras model

I'm evaluating keras and tensorflow-federated model performance for a regression problem. The performance is basically the MSE for both. The only difference is: 1. the way of splitting the dataset. 2. ...
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56 views

Whether the current Tensorflow Federated can be deployed across multiple physical machines?

I am wondering whether there is a way to run tff across multiple distributed physical devices (e.g., virtual machines). I haven’t figured out how to deploy this so far, and the tutorial shows this ...
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88 views

how to print local outputs in tensorflow federated?

I want to print local outputs of clients in the tensorflow federated tutorial https://www.tensorflow.org/federated/tutorials/federated_learning_for_image_classification. What should I do?
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Can I aggregate over gradients in tensorflow-federated?

Currently, the tensorflow's federated_learn seem to only include things like federated_averaging that work on the model's trainable variables. How would I go about implementing algorithms that require ...
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Have anyone compiled Tensorflow_federated on Jetson TX2?

Please find the logs here: pip install --requirement "requirements.txt" This is all okay but still the source is not getting compiled https://devtalk.nvidia.com/default/topic/1052076/jetson-tx2/...
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75 views

Adapting an existing keras model with multiple inputs to tensorflow federated

I'm trying to apply federated learning to an existing keras model that takes two inputs. When I call tff.learning.from_compiled_keras_model and include a dummy batch, I get this error: ValueError: ...
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Operations performed on the communications between the server and clients

Part of federated learning research is based on operations performed on the communications between the server and clients such as dropping part of the updates (drop some gradients describing a model) ...
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190 views

Cannot serialize protocol buffer when using MobileNet with Tensorflow Federated

I'm using the pre-trained MobileNet from Keras and want to train it using TensorFlows federated learning, but I'm always getting an error that the protocol buffer cannot be serialized since the 2GB ...
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69 views

TensorFlow Federated - Adapting existing keras model

I'm having trouble adapting an existing Keras model to work with TenforFlow Federated. The existing model is a 1D convolutional autoencoder (details shown below) Existing Model: input_window = ...
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2answers
366 views

Problem with evaluation function in tensorflow federated

I was trying to reimplement the github tutorial with my own CNN-based model with Keras. But I got an error when evaluating. from __future__ import absolute_import, division, print_function import ...
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388 views

Create a custom federated data set in TensorFlow Federated

I'd like to adapt the recurrent autoencoder from this blog post to work in a federated environment. I've modified the model slightly to conform with the example shown in the TFF image classification ...
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138 views

Does Tensorflow Federated Support Reinforcement Learning

I am trying to train a deep reinforcement learning model in a federated learning scenario. Does Tensorflow Federated (TFF) support reinforcement learning (RL) as an ML model? I understand that ...
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Large dataset processing for Tensorflow Federated

What is the efficient way to prepare ImageNet (or other big datasets) for Tensorflow federated simulations? Particularly with applying custom map function on tf.Dataset object? I looked into the ...
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135 views

What is the recommended way to mix TensorFlow and TensorFlow Federated code?

TensorFlow (TF) and TensorFlow Federated (TFF) are different layers of functionality that are designed to play well together (as the names implie). Still, they are different things designed to solve ...