Esempio n. 1
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class FedAvg5Trainer(BaseTrainer):
    """
    Original Scheme
    """
    def __init__(self, options, dataset):
        model = choose_model(options)
        self.move_model_to_gpu(model, options)

        self.optimizer = GD(model.parameters(),
                            lr=options['lr'],
                            weight_decay=options['wd'])
        self.num_epoch = options['num_epoch']
        worker = LrdWorker(model, self.optimizer, options)
        super(FedAvg5Trainer, self).__init__(options, dataset, worker=worker)

    def train(self):
        print('>>> Select {} clients per round \n'.format(
            self.clients_per_round))

        # Fetch latest flat model parameter
        self.latest_model_params = self.worker.get_flat_model_params().detach()

        for round_i in range(self.num_round):

            # Test latest model on train data
            self.test_latest_model_on_traindata(round_i)
            self.test_latest_model_on_evaldata(round_i)

            # Choose K clients prop to data size
            selected_clients = self.select_clients(seed=round_i)

            # Solve minimization locally
            solns, stats = self.local_train(round_i, selected_clients)

            # Track communication cost
            self.metrics.extend_commu_stats(round_i, stats)

            # Update latest model
            self.latest_model_params = self.aggregate(solns)
            self.optimizer.inverse_prop_decay_learning_rate(round_i)

        # Test final model on train data
        self.test_latest_model_on_traindata(self.num_round)
        self.test_latest_model_on_evaldata(self.num_round)

        # Save tracked information
        self.metrics.write()

    def aggregate(self, solns):
        averaged_solution = torch.zeros_like(self.latest_model_params)
        accum_sample_num = 0
        for num_sample, local_solution in solns:
            accum_sample_num += num_sample
            averaged_solution += num_sample * local_solution
        averaged_solution /= self.all_train_data_num
        averaged_solution += (1 - accum_sample_num / self.all_train_data_num
                              ) * self.latest_model_params
        return averaged_solution.detach()
Esempio n. 2
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class FedAvgTrainer(BaseTrainer):
    def __init__(self, options, dataset):
        model = choose_model(options)
        self.move_model_to_gpu(model, options)

        self.optimizer = GD(model.parameters(),
                            lr=options['lr'],
                            weight_decay=options['wd'])
        super(FedAvgTrainer, self).__init__(options, dataset, model,
                                            self.optimizer)

    def train(self):
        print('>>> Select {} clients per round \n'.format(
            self.clients_per_round))

        # Fetch latest flat model parameter
        self.latest_model = self.worker.get_flat_model_params().detach()

        for round_i in range(self.num_round):

            # Test latest model on train data
            self.test_latest_model_on_traindata(round_i)
            self.test_latest_model_on_evaldata(round_i)

            # Choose K clients prop to data size
            selected_clients = self.select_clients(seed=round_i)

            # Solve minimization locally
            solns, stats = self.local_train(round_i, selected_clients)

            # Track communication cost
            self.metrics.extend_commu_stats(round_i, stats)

            # Update latest model
            self.latest_model = self.aggregate(solns)
            self.optimizer.inverse_prop_decay_learning_rate(round_i)

        # Test final model on train data
        self.test_latest_model_on_traindata(self.num_round)
        self.test_latest_model_on_evaldata(self.num_round)

        # Save tracked information
        self.metrics.write()
Esempio n. 3
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class FedAvg9Trainer(BaseTrainer):
    """
    Only Transformed II
    """
    def __init__(self, options, dataset):
        model = choose_model(options)
        self.move_model_to_gpu(model, options)

        self.optimizer = GD(model.parameters(),
                            lr=options['lr'],
                            weight_decay=options['wd'])
        self.num_epoch = options['num_epoch']
        worker = LrAdjustWorker(model, self.optimizer, options)
        super(FedAvg9Trainer, self).__init__(options, dataset, worker=worker)

    def train(self):
        print('>>> Select {} clients per round \n'.format(
            self.clients_per_round))

        # Fetch latest flat model parameter
        self.latest_model = self.worker.get_flat_model_params().detach()

        for round_i in range(self.num_round):

            # Test latest model on train data
            self.test_latest_model_on_traindata(round_i)
            self.test_latest_model_on_evaldata(round_i)

            # Choose K clients prop to data size
            selected_clients = self.select_clients(seed=round_i)

            # Solve minimization locally
            solns, stats = self.local_train(round_i, selected_clients)

            # Track communication cost
            self.metrics.extend_commu_stats(round_i, stats)

            # Update latest model
            self.latest_model = self.aggregate(solns)
            self.optimizer.inverse_prop_decay_learning_rate(round_i)

        # Test final model on train data
        self.test_latest_model_on_traindata(self.num_round)
        self.test_latest_model_on_evaldata(self.num_round)

        # Save tracked information
        self.metrics.write()

    def aggregate(self, solns, **kwargs):
        averaged_solution = torch.zeros_like(self.latest_model)
        # averaged_solution = np.zeros(self.latest_model.shape)
        assert self.simple_average

        for num_sample, local_solution in solns:
            averaged_solution += local_solution
        averaged_solution /= self.clients_per_round

        # averaged_solution = from_numpy(averaged_solution, self.gpu)
        return averaged_solution.detach()

    def local_train(self, round_i, selected_clients, **kwargs):
        solns = []  # Buffer for receiving client solutions
        stats = []  # Buffer for receiving client communication costs
        for i, c in enumerate(selected_clients, start=1):
            # Communicate the latest model
            c.set_flat_model_params(self.latest_model)

            # Solve minimization locally
            m = len(c.train_data) / self.all_train_data_num * 100
            soln, stat = c.local_train(multiplier=m)
            if self.print_result:
                print("Round: {:>2d} | CID: {: >3d} ({:>2d}/{:>2d})| "
                      "Param: norm {:>.4f} ({:>.4f}->{:>.4f})| "
                      "Loss {:>.4f} | Acc {:>5.2f}% | Time: {:>.2f}s".format(
                          round_i, c.cid, i, self.clients_per_round,
                          stat['norm'], stat['min'], stat['max'], stat['loss'],
                          stat['acc'] * 100, stat['time']))

            # Add solutions and stats
            solns.append(soln)
            stats.append(stat)

        return solns, stats
Esempio n. 4
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class FedAvg4Trainer(BaseTrainer):
    """
    Scheme I and Scheme II, based on the flag of self.simple_average
    """
    def __init__(self, options, dataset):
        model = choose_model(options)
        self.move_model_to_gpu(model, options)

        self.optimizer = GD(model.parameters(),
                            lr=options['lr'],
                            weight_decay=options['wd'])
        self.num_epoch = options['num_epoch']
        worker = LrdWorker(model, self.optimizer, options)
        super(FedAvg4Trainer, self).__init__(options, dataset, worker=worker)
        self.prob = self.compute_prob()

    def train(self):
        print('>>> Select {} clients per round \n'.format(
            self.clients_per_round))

        # Fetch latest flat model parameter
        self.latest_model = self.worker.get_flat_model_params().detach()

        for round_i in range(self.num_round):

            # Test latest model on train data
            self.test_latest_model_on_traindata(round_i)
            self.test_latest_model_on_evaldata(round_i)

            # Choose K clients prop to data size
            if self.simple_average:
                selected_clients, repeated_times = self.select_clients_with_prob(
                    seed=round_i)
            else:
                selected_clients = self.select_clients(seed=round_i)
                repeated_times = None

            # Solve minimization locally
            solns, stats = self.local_train(round_i, selected_clients)

            # Track communication cost
            self.metrics.extend_commu_stats(round_i, stats)

            # Update latest model
            self.latest_model = self.aggregate(solns,
                                               repeated_times=repeated_times)
            self.optimizer.inverse_prop_decay_learning_rate(round_i)

        # Test final model on train data
        self.test_latest_model_on_traindata(self.num_round)
        self.test_latest_model_on_evaldata(self.num_round)

        # Save tracked information
        self.metrics.write()

    def compute_prob(self):
        probs = []
        for c in self.clients:
            probs.append(len(c.train_data))
        return np.array(probs) / sum(probs)

    def select_clients_with_prob(self, seed=1):
        num_clients = min(self.clients_per_round, len(self.clients))
        np.random.seed(seed)
        index = np.random.choice(len(self.clients), num_clients, p=self.prob)
        index = sorted(index.tolist())

        select_clients = []
        select_index = []
        repeated_times = []
        for i in index:
            if i not in select_index:
                select_clients.append(self.clients[i])
                select_index.append(i)
                repeated_times.append(1)
            else:
                repeated_times[-1] += 1
        return select_clients, repeated_times

    def aggregate(self, solns, **kwargs):
        averaged_solution = torch.zeros_like(self.latest_model)
        # averaged_solution = np.zeros(self.latest_model.shape)
        if self.simple_average:
            repeated_times = kwargs['repeated_times']
            assert len(solns) == len(repeated_times)
            for i, (num_sample, local_solution) in enumerate(solns):
                averaged_solution += local_solution * repeated_times[i]
            averaged_solution /= self.clients_per_round
        else:
            for num_sample, local_solution in solns:
                averaged_solution += num_sample * local_solution
            averaged_solution /= self.all_train_data_num
            averaged_solution *= (100 / self.clients_per_round)

        # averaged_solution = from_numpy(averaged_solution, self.gpu)
        return averaged_solution.detach()