tensorflow_privacy/tutorials/mnist_lr_tutorial.py
Shuang Song 44dc40454b Minor fix to tutorials.
PiperOrigin-RevId: 463145196
2022-07-25 12:07:46 -07:00

244 lines
9.5 KiB
Python

# Copyright 2019, The TensorFlow Authors.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""DP Logistic Regression on MNIST.
DP Logistic Regression on MNIST with support for privacy-by-iteration analysis.
Vitaly Feldman, Ilya Mironov, Kunal Talwar, and Abhradeep Thakurta.
"Privacy amplification by iteration."
In 2018 IEEE 59th Annual Symposium on Foundations of Computer Science (FOCS),
pp. 521-532. IEEE, 2018.
https://arxiv.org/abs/1808.06651.
"""
import math
from absl import app
from absl import flags
from absl import logging
import dp_accounting
import numpy as np
import tensorflow as tf
from tensorflow import estimator as tf_estimator
from tensorflow.compat.v1 import estimator as tf_compat_v1_estimator
from tensorflow_privacy.privacy.optimizers import dp_optimizer
GradientDescentOptimizer = tf.compat.v1.train.GradientDescentOptimizer
FLAGS = flags.FLAGS
flags.DEFINE_boolean(
'dpsgd', True, 'If True, train with DP-SGD. If False, '
'train with vanilla SGD.')
flags.DEFINE_float('learning_rate', 0.001, 'Learning rate for training')
flags.DEFINE_float('noise_multiplier', 0.05,
'Ratio of the standard deviation to the clipping norm')
flags.DEFINE_integer('batch_size', 5, 'Batch size')
flags.DEFINE_integer('epochs', 5, 'Number of epochs')
flags.DEFINE_float('regularizer', 0, 'L2 regularizer coefficient')
flags.DEFINE_string('model_dir', None, 'Model directory')
flags.DEFINE_float('data_l2_norm', 8, 'Bound on the L2 norm of normalized data')
def lr_model_fn(features, labels, mode, nclasses, dim):
"""Model function for logistic regression."""
input_layer = tf.reshape(features['x'], tuple([-1]) + dim)
logits = tf.keras.layers.Dense(
units=nclasses,
kernel_regularizer=tf.keras.regularizers.L2(l2=FLAGS.regularizer),
bias_regularizer=tf.keras.regularizers.L2(l2=FLAGS.regularizer))(
input_layer)
# Calculate loss as a vector (to support microbatches in DP-SGD).
vector_loss = tf.nn.sparse_softmax_cross_entropy_with_logits(
labels, logits) + tf.compat.v1.losses.get_regularization_loss()
# Define mean of loss across minibatch (for reporting through tf.Estimator).
scalar_loss = tf.reduce_mean(vector_loss)
# Configure the training op (for TRAIN mode).
if mode == tf_estimator.ModeKeys.TRAIN:
if FLAGS.dpsgd:
# The loss function is L-Lipschitz with L = sqrt(2*(||x||^2 + 1)) where
# ||x|| is the norm of the data.
# We don't use microbatches (thus speeding up computation), since no
# clipping is necessary due to data normalization.
optimizer = dp_optimizer.DPGradientDescentGaussianOptimizer(
l2_norm_clip=math.sqrt(2 * (FLAGS.data_l2_norm**2 + 1)),
noise_multiplier=FLAGS.noise_multiplier,
num_microbatches=1,
learning_rate=FLAGS.learning_rate)
opt_loss = vector_loss
else:
optimizer = GradientDescentOptimizer(learning_rate=FLAGS.learning_rate)
opt_loss = scalar_loss
global_step = tf.compat.v1.train.get_global_step()
train_op = optimizer.minimize(loss=opt_loss, global_step=global_step)
# In the following, we pass the mean of the loss (scalar_loss) rather than
# the vector_loss because tf.estimator requires a scalar loss. This is only
# used for evaluation and debugging by tf.estimator. The actual loss being
# minimized is opt_loss defined above and passed to optimizer.minimize().
return tf_estimator.EstimatorSpec(
mode=mode, loss=scalar_loss, train_op=train_op)
# Add evaluation metrics (for EVAL mode).
elif mode == tf_estimator.ModeKeys.EVAL:
eval_metric_ops = {
'accuracy':
tf.compat.v1.metrics.accuracy(
labels=labels, predictions=tf.argmax(input=logits, axis=1))
}
return tf_estimator.EstimatorSpec(
mode=mode, loss=scalar_loss, eval_metric_ops=eval_metric_ops)
def normalize_data(data, data_l2_norm):
"""Normalizes data such that each samples has bounded L2 norm.
Args:
data: the dataset. Each row represents one samples.
data_l2_norm: the target upper bound on the L2 norm.
"""
for i in range(data.shape[0]):
norm = np.linalg.norm(data[i])
if norm > data_l2_norm:
data[i] = data[i] / norm * data_l2_norm
def load_mnist(data_l2_norm=float('inf')):
"""Loads MNIST and preprocesses to combine training and validation data."""
train, test = tf.keras.datasets.mnist.load_data()
train_data, train_labels = train
test_data, test_labels = test
train_data = np.array(train_data, dtype=np.float32) / 255
test_data = np.array(test_data, dtype=np.float32) / 255
train_data = train_data.reshape(train_data.shape[0], -1)
test_data = test_data.reshape(test_data.shape[0], -1)
idx = np.random.permutation(len(train_data)) # shuffle data once
train_data = train_data[idx]
train_labels = train_labels[idx]
normalize_data(train_data, data_l2_norm)
normalize_data(test_data, data_l2_norm)
train_labels = np.array(train_labels, dtype=np.int32)
test_labels = np.array(test_labels, dtype=np.int32)
return train_data, train_labels, test_data, test_labels
def print_privacy_guarantees(epochs, batch_size, samples, noise_multiplier):
"""Tabulating position-dependent privacy guarantees."""
if noise_multiplier == 0:
print('No differential privacy (additive noise is 0).')
return
print('In the conditions of Theorem 34 (https://arxiv.org/abs/1808.06651) '
'the training procedure results in the following privacy guarantees.')
print('Out of the total of {} samples:'.format(samples))
steps_per_epoch = samples // batch_size
orders = np.concatenate(
[np.linspace(2, 20, num=181),
np.linspace(20, 100, num=81)])
delta = 1e-5
for p in (.5, .9, .99):
steps = math.ceil(steps_per_epoch * p) # Steps in the last epoch.
coef = 2 * (noise_multiplier * batch_size)**-2 * (
# Accounting for privacy loss
(epochs - 1) / steps_per_epoch + # ... from all-but-last epochs
1 / (steps_per_epoch - steps + 1)) # ... due to the last epoch
# Using RDP accountant to compute eps. Doing computation analytically is
# an option.
rdp = [order * coef for order in orders]
eps, _ = dp_accounting.rdp.compute_epsilon(orders, rdp, delta)
print('\t{:g}% enjoy at least ({:.2f}, {})-DP'.format(p * 100, eps, delta))
accountant = dp_accounting.rdp.RdpAccountant(orders)
event = dp_accounting.SelfComposedDpEvent(
dp_accounting.PoissonSampledDpEvent(
batch_size / samples,
dp_accounting.GaussianDpEvent(noise_multiplier)),
epochs * steps_per_epoch)
accountant.compose(event)
eps_sgm = accountant.get_epsilon(target_delta=delta)
print('By comparison, DP-SGD analysis for training done with the same '
'parameters and random shuffling in each epoch guarantees '
'({:.2f}, {})-DP for all samples.'.format(eps_sgm, delta))
def main(unused_argv):
logging.set_verbosity(logging.INFO)
if FLAGS.data_l2_norm <= 0:
raise ValueError('data_l2_norm must be positive.')
if FLAGS.dpsgd and FLAGS.learning_rate > 8 / FLAGS.data_l2_norm**2:
raise ValueError('The amplification-by-iteration analysis requires'
'learning_rate <= 2 / beta, where beta is the smoothness'
'of the loss function and is upper bounded by ||x||^2 / 4'
'with ||x|| being the largest L2 norm of the samples.')
# Load training and test data.
# Smoothness = ||x||^2 / 4 where ||x|| is the largest L2 norm of the samples.
# To get bounded smoothness, we normalize the data such that each sample has a
# bounded L2 norm.
train_data, train_labels, test_data, test_labels = load_mnist(
data_l2_norm=FLAGS.data_l2_norm)
# Instantiate tf.Estimator.
# pylint: disable=g-long-lambda
model_fn = lambda features, labels, mode: lr_model_fn(
features, labels, mode, nclasses=10, dim=train_data.shape[1:])
mnist_classifier = tf_estimator.Estimator(
model_fn=model_fn, model_dir=FLAGS.model_dir)
# Create tf.Estimator input functions for the training and test data.
# To analyze the per-user privacy loss, we keep the same orders of samples in
# each epoch by setting shuffle=False.
train_input_fn = tf_compat_v1_estimator.inputs.numpy_input_fn(
x={'x': train_data},
y=train_labels,
batch_size=FLAGS.batch_size,
num_epochs=FLAGS.epochs,
shuffle=False)
eval_input_fn = tf_compat_v1_estimator.inputs.numpy_input_fn(
x={'x': test_data}, y=test_labels, num_epochs=1, shuffle=False)
# Train the model.
num_samples = train_data.shape[0]
steps_per_epoch = num_samples // FLAGS.batch_size
mnist_classifier.train(
input_fn=train_input_fn, steps=steps_per_epoch * FLAGS.epochs)
# Evaluate the model and print results.
eval_results = mnist_classifier.evaluate(input_fn=eval_input_fn)
print('Test accuracy after {} epochs is: {:.2f}'.format(
FLAGS.epochs, eval_results['accuracy']))
if FLAGS.dpsgd:
print_privacy_guarantees(
epochs=FLAGS.epochs,
batch_size=FLAGS.batch_size,
samples=num_samples,
noise_multiplier=FLAGS.noise_multiplier,
)
if __name__ == '__main__':
app.run(main)