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://research.google/pubs/pub49232/

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Limited number of clients used in federated learning

I just started studying federated learning and want to apply it to a certain dataset, and there are some questions that have risen up. My data is containing records of 3 categories, each of which is ...
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TensorFlow Federated - Loading and preprocessing data on a remote client

Part of the simulation program that I am working on allows clients to load local data from their device without the server being able to access that data. Following the idea from this post, I have the ...
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TensorFlow Federated - How to work with SparseTensors

I am using TensorFlow Federated to simulate a scenario in which clients hosted on a remote server can work with our very sparse dataset in a federated setting. Presently, the code is capable of ...
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Is there any well structured and isolated client and server side code for TFF?

**Is there any GitHub link for the source of client and server communication where actual federated averaging is happening. Like if there 1 file server.py 2 files client.py and model training and ...
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TypeError: __init__() got an unexpected keyword argument 'intialize_fn'

I use TFF v:0.18 I would like to load a pretrained network in the inside of create_keras_model() So I write this : def create_keras_model(): baseModel = tf.keras.models.load_model(model_path, ...
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TypeError: Cannot capture a result of an unsupported type tensorflow.python.keras.engine.functional.Functional

I would like to load a pretrained network in the inside of create_keras_model() So I write this : def create_keras_model(): baseModel = tf.keras.models.load_model(model_path, compile=False) ...
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AttributeError: module 'tensorflow_federated.python.common_libs.structure' has no attribute 'update_struct'

I'm using TFF 0.18 When using : state = tff.structure.update_struct(state, model=tff.learning.ModelWeights.from_model(keras_model)) I find this error, So how can I solve this problem without changing ...
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how to apply custom encoders to multiple clients at once? how to use custom encoders in run_one_round?

So my goal is basically implementing global top-k subsampling. Gradient sparsification is quite simple and I have already done this building on stateful clients example, but now I would like to use ...
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Client level differential privacy in Tensorflow Federated (Local DP)

I want to implement local DP model using TFF, that is, each client trains it's own differentially private model and sends noisy gradients to the server, and the server just aggregates and distributes ...
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How implement differential privacy in federated learning

I'm beginner in federated learning. I try to add gaussian noise to gradient in client_updata. If anyone attempt to do , please teach me how to do. Thank you in advance. def client_update(model, ...
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Running Out of RAM using FilePerUserClientData

I have a problem with training using tff.simulation.FilePerUserClientData - I am quickly running out of RAM after 5-6 rounds with 10 clients per round. The RAM usage is steadily increasing with each ...
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TFF : change the code have no effect in changing test accuracy values

To improve this tutorial and test other things, I was pretrained the network with a centralized way in EMNIST database. Then I would like to Fine tune the pretrained network with a federated code ...
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TFF: finetune with pretrained network : Test accuracy still constant after all rounds

I would like to Fine-tune the pre-trained model with Federated Learning, So I do this: def create_keras_model(): baseModel = tf.keras.models.load_model(path\to\model) headModel = baseModel....
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Using CIFAR-100 datased with VGG19 model in simple_fedavg example

I'm using the Simple fedavg example from the github of tensorflow federated, i was trying to change the dataset and the model, but i can't get any positive feedback, the accuracy is always at 1%. This ...
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Running Tensorflow Federated on multiple machines

I am trying to create a small training network of 5 nodes (EC2 instances) that can participate in a TFF training round to jointly train a classier. However, I am getting mixed signals whether the ...
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TensorFLow Federated on Windows

Can TensorFlow Federated be installed on Windows? Documentation only describes Ubuntu and MacOS https://www.tensorflow.org/federated/install
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Local Model performance in Tensorflow Federated

I am implementing federated learning through tensorflow-federated. The tutorial and all other material available compared the accuracy of the federated (global) model after each communication round. ...
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custom aggregators with client_states as states

I want to create a custom aggregator where the state is the unique client state of each client. To initialize I can define client states as usual, and then use federated_collect to place @SERVER ...
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Trraining submodel instead of full model Tensorflow Federated

I'm trying to modify TensorFlow Federated example. I want to create a submodel from the original model and use the newly created one for the training phase and then send the weights to the server so ...
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Load data in each client

everyone: I try to load the '/root/.tff/emnist_all.sqlite' in the federated processes. Into the example I can find, only see the local simulation. print('### CLIENT_DATA') database_path = '/...
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Access and modify weights sent from client on the server tensorflow federated

I'm using Tensorflow Federated, but i'm actually have some problem while trying to executes some operation on the server after reading the client update. This is the function @tff....
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113 views

Tensorflow Federated object is not subscriptable

I have this run_one_round function like this: def run_one_round(server_state, federated_dataset): """Orchestration logic for one round of computation. Args: server_state: ...
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How to implement custom encode Tensorflow Federated

I have created a custom encoder/decoder like so: import tensorflow as tf from tensorflow_model_optimization.python.core.internal import tensor_encoding as te # noinspection PyUnresolvedReferences ...
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How to change the update that the client send to the server Tensorflow Federated

I'm trying to understand how Tensorflow Federated Works, using the simple_fedavg as example. I still don't understand how to change what the client send to the server, for example. I don't want to ...
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When will TensorFlow Federated be ready for production?

Currently trying to use federated analytics (and eventually federated learning) at work. We are exploring PyTorch Federated and TensorFlow Federated. When I watched the TensorFlow Federated Tutorials ...
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"RuntimeError: No default context installed. " when using Tensorflow Federated

Currently I am working on a federated-learning project using TensorFlow Federated. I was making a request from a server to check if my code was working when I got this error: RuntimeError: No ...
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Does TFF support deployment across different devices and clouds?

I would like to deploy TFF in a way, where I have one central (aggregation) server on a VM in a cloud and two different VMs with nodes, that train the model. Is this possible with TFF? Does it have ...
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Federated Averaging (fedavg) with resnet 18 that has batch_normalization makes the same prediction after first round, but in no other rounds

I was trying to implement tensorflow-federated simple fedavg with cifar10 dataset and resnet18. Also this is the pytorch implementation. Just like trainable ones, I have aggregated non-trainable ...
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Federated Averaging and TensorFlow

I am a newbie in federated learning and just getting to know TensorFlow Federated TFF framework. I have some questions in my mind I would be really appreciated it if anybody can clarify them: Does ...
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how to create a federated model lstm for stock prediction in python

-i have column names ["Date","Open","High","Close","Volume","Group"] -i created a additional column name "Group" to represent ...
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What is the best way to create a custom federated image dataset for TFF in SQLite format?

I went through the source for the CIFAR-100 inbuilt dataset and decided to create a compatible version for the FairFace dataset in order to be able to leverage the other built-in functions without ...
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KeyError: 0, TFF strange error in multi-outputs model

I have a multi outputs FedAvg model that I implemented just like the Tutorial and a bit extends to reach the multi outputs version. My model function is like below, def model_fn(self): ...
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280 views

TFF RuntimeError: Attempting to capture an EagerTensor without building a function

I have a TFF model to run But I got an error. I provided the x and y and moved forward to implement it like the tutorial. TF version = 2.5.1 TFF version = 0.19.0 My snippet code is split = len(...
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How to change clipping and noise parameters during differentially private training with Tensorflow Federated

I'm using Tensorflow Federated (TFF) to train with differential privacy. Currently I am creating a Tensorflow Privacy NormalizedQuery and then passing it into a TFF DifferentiallyPrivateFactory to ...
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centralized vs. federated convergence

So I've got some data from 700-some smart meters. Data from each meter includes electricity usage taken in intervals of 15 mins, outside temperature, humidity, if it's a national holiday... The goal ...
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ValueError: Input 0 is incompatible with layer resnet50: expected shape=(None, 180, 180, 3), found shape=(180, 180, 3)

With TFF 0.18, I found this problem : images, labels = next(img_gen.flow_from_directory(path0,target_size=(180, 180), batch_size = 2,class_mode=None)) sample_batch = (images,labels) # assumes images ...
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How to initialize clients' states in stateful Federated Learning, using the TensorFlow Federated framework?

I'm implementing the SCAFFOLD algorithm (https://arxiv.org/abs/1910.06378) in TensorFlow Federated, which needs stateful clients. I based my work on the answer to this Stackoverflow post, but I cannot ...
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TensorFlow Federated (TFF) TypeError in tff.templates.IterativeProcess.next() when clients_per_round exceed 99

I implemented a custom federated learning GAN training loop with TFF similar to this code by Google Research. The client data for a particular training round is found using the following code snippet: ...
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How do I convert my dataset to client format

I try to build a dataset with clients IDS to convert my dataset to federated model, following is my code : tmp = [] c = 0 for i in range(1,len(New_data_train)): tmp.append(c) if i %80000 == 0 : ...
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97 views

AttributeError: module 'tensorflow_privacy' has no attribute 'DPQuery'

I am new to machine learning and was trying out the "federated learning for image classification" code by Tensorflow (https://www.tensorflow.org/federated/tutorials/...
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Is there a way for TFF clients to have internal states without sending them to server? tf.function prevents updating internal states

Similar to this Is there a way for TFF clients to have internal states? question, but I dont want to send internal states to server. When I looked at the stateful clients example we can see we had ...
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176 views

AttributeError: module 'tensorflow_federated.python.simulation' has no attribute 'HDF5ClientData'

I have a dataset written to an h5 file, and I want to convert it totff.simulation.datasets.ClientData,That is, after pre-processing it becomes this form <tensorflow_federated.python.simulation....
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TensorFlow Fedetated TypeError (generator must be callable)

I'm attempting to train a character prediction model similar to the Tensorflow Federated tutorial. I'm preprocessing my data and setting up my model as specified in the Google Research GitHub ...
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Build Custom Federated learning ValueError: Input 0 of layer lstm is incompatible with the layer: expected ndim=3, found ndim=1

I manage to load a federated dataset from a given CSV file and I am trying to perform some federated learning on the available data. My question now is how to reproduce a working example to build an ...
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60 views

Clipping of clients' updates in DP-FedAvg

In the paper Learning differentially private recurrent language models that presents the algorithm DP-FedAvg, clipping of clients' updates seems to take place at the client side. Each client clips his ...
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How to get rid of placements(SERVER or CLIENTS) so that I can transform float32@SERVER to float32?

I am trying to do learning rate decay challange of Building Your Own Federated Learning Algorithm tutorial. I have used the following code import nest_asyncio nest_asyncio.apply() import collections ...
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Build Custom Federated averaging process with ValueError: Layer sequential expects 1 inputs, but it received 3 input tensors

i am trying to load a dataset from csv and perform some federated learning on the available data. i manage to load a federated dataset from a given csv file and load both the train and the test data. ...
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37 views

TFF : every client do a pretrain function instead of build_federated_averaging_process

I would like that every client train his model with a function pretrainthat I wrote below : def pretrain(model): resnet_output = model.output layer1 = tf.keras.layers.GlobalAveragePooling2D()...
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398 views

Installation errors in Tensorflow Federated tutorial in Google Colab

I am a new learner to Federated Learning. I tried to start with tutorial "Federated Learning for Image Classification" on Colab but met some problems. When I installed TensorFlow and ...
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Tensorflow federated (TFF) 0.19 performs significantly worse than TFF 0.17 when running "Building Your Own Federated Learning Algorithm" tutorial

At the very end the "Building Your Own Federated Learning Algorithm" tutorial it is stated ,after training our model for 15 rounds, we shall expect a sparse_categorical_accuracy around 0.25, ...

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