Sentiment Analysis using Pytorch on AWS SageMaker
Why We’re Here
In this project, we’ll construct a complete end to end project on SageMaker. Our goal will be to have a simple web page which a user can use to enter a movie review. The web page will then send the review off to our deployed model which will predict the sentiment of the entered review.
General Outline
Following is the general outline for SageMaker projects using a notebook instance.
- a. Download or otherwise retrieve the data.
- b. Process / Prepare the data.
- c. Upload the processed data to S3.
- d. Train a chosen model.
- e. Test the trained model (typically using a batch transform job).
- f. Deploy the trained model.
- g. Use the deployed model.
For this project, we’ll be following the steps in the general outline with some modifications.
First, we will not be testing the model in its own step. We will still be testing the model, however, we will do it by deploying our model and then using the deployed model by sending the test data to it. One of the reasons for doing this is so that we can make sure that our deployed model is working correctly before moving forward.
In addition, we will deploy and use the trained model a second time. In the second iteration we will customize the way that trained model is deployed by including some of our own code. In addition, our newly deployed model will be used in the sentiment analysis web app.
Step 1: Downloading the data
We will be using the IMDb dataset.
%mkdir ../data !wget -O ../data/aclImdb_v1.tar.gz http://ai.stanford.edu/~amaas/data/sentiment/aclImdb_v1.tar.gz !tar -zxf ../data/aclImdb_v1.tar.gz -C ../data
Output:
Connecting to ai.stanford.edu (ai.stanford.edu)|171.64.68.10|:80... connected.
HTTP request sent, awaiting response... 200 OK
Length: 84125825 (80M) [application/x-gzip]
Saving to: ‘../data/aclImdb_v1.tar.gz’
../data/aclImdb_v1. 100%[===================>] 80.23M 7.37MB/s in 31s
2020-06-23 13:30:16 (2.58 MB/s) - ‘../data/aclImdb_v1.tar.gz’ saved [84125825/84125825]
Step 2: Preparing and Processing the data
We’ll start with some initial data processing. To begin with, we will read in each of the reviews and combine them into a single input structure. Then, we will split the dataset into a training set and a testing set.
import os import glob def read_imdb_data(data_dir='../data/aclImdb'): data = {} labels = {} for data_type in ['train', 'test']: data[data_type] = {} labels[data_type] = {} for sentiment in ['pos', 'neg']: data[data_type][sentiment] = [] labels[data_type][sentiment] = [] path = os.path.join(data_dir, data_type, sentiment, '*.txt') files = glob.glob(path) for f in files: with open(f) as review: data[data_type][sentiment].append(review.read()) # Here we represent a positive review by '1' and a negative review by '0' labels[data_type][sentiment].append(1 if sentiment == 'pos' else 0) assert len(data[data_type][sentiment]) == len(labels[data_type][sentiment]), \ "{}/{} data size does not match labels size".format(data_type, sentiment) return data, labels data, labels = read_imdb_data() print("IMDB reviews: train = {} pos / {} neg, test = {} pos / {} neg".format( len(data['train']['pos']), len(data['train']['neg']), len(data['test']['pos']), len(data['test']['neg'])))
Output:
IMDB reviews: train = 12500 pos / 12500 neg, test = 12500 pos / 12500 neg
Now that we’ve read the raw training and testing data from the downloaded dataset, we will combine the positive and negative reviews and shuffle the resulting records.
from sklearn.utils import shuffle def prepare_imdb_data(data, labels): """Prepare training and test sets from IMDb movie reviews.""" #Combine positive and negative reviews and labels data_train = data['train']['pos'] + data['train']['neg'] data_test = data['test']['pos'] + data['test']['neg'] labels_train = labels['train']['pos'] + labels['train']['neg'] labels_test = labels['test']['pos'] + labels['test']['neg'] #Shuffle reviews and corresponding labels within training and test sets data_train, labels_train = shuffle(data_train, labels_train) data_test, labels_test = shuffle(data_test, labels_test) # Return a unified training data, test data, training labels, test labets return data_train, data_test, labels_train, labels_test train_X, test_X, train_y, test_y = prepare_imdb_data(data, labels) print("IMDb reviews (combined): train = {}, test = {}".format(len(train_X), len(test_X)))
Output:
IMDb reviews (combined): train = 25000, test = 25000
Now that we have our training and testing sets unified and prepared, we should do a quick check and see an example of the data our model will be trained on. This is generally a good idea as it allows you to see how each of the further processing steps affects the reviews and it also ensures that the data has been loaded correctly.
print(train_X[100]) print(train_y[100])
Output: I have never understood the appeal of this show. The acting is poor (Debra Jo Rupp being a notable exception), the plots of most episodes are trite and uninspiring, the dialogue is weak, the jokes unfunny and it is painful to try and sit through even half an episode. Furthermore the link between this show and the '70s' is extremely tenuous beyond the style of dress and the scenery and background used for the show -it seems to be nothing more than a modern sitcom with the same old unfunny, clichéd scripts that modern sitcoms have dressed up as depicting a show from twenty years ago in the hope that it will gain some nostalgic viewers or something like that. Both "Happy Days" and "The Wonder Years" employ the same technique much more effectively and are actually a pleasure to watch in contrast to this horrible, pathetic excuse for a show 0
The first step in processing the reviews is to make sure that any html tags that appear should be removed. In addition we wish to tokenize our input, that way words such as entertained and entertaining are considered the same with regard to sentiment analysis.
import nltk from nltk.corpus import stopwords from nltk.stem.porter import * import re from bs4 import BeautifulSoup def review_to_words(review): nltk.download("stopwords", quiet=True) stemmer = PorterStemmer() text = BeautifulSoup(review, "html.parser").get_text() # Remove HTML tags text = re.sub(r"[^a-zA-Z0-9]", " ", text.lower()) # Convert to lower case words = text.split() # Split string into words words = [w for w in words if w not in stopwords.words("english")] # Remove stopwords words = [PorterStemmer().stem(w) for w in words] # stem return words
The review_to_words
method defined above uses BeautifulSoup
to remove any html tags that appear and uses the nltk
package to tokenize the reviews. As a check to ensure we know how everything is working, try applying review_to_words
to one of the reviews in the training set.
# Apply review_to_words to a review (train_X[100] or any other review) review_to_words(train_X[100])
Output:
['never',
'understood',
'appeal',
'show',
..
..
'excus']
The method below applies the review_to_words
method to each of the reviews in the training and testing datasets. In addition it caches the results. This is because performing this processing step can take a long time. This way if we are unable to complete the notebook in the current session, we can come back without needing to process the data a second time.
import pickle cache_dir = os.path.join("../cache", "sentiment_analysis") # where to store cache files os.makedirs(cache_dir, exist_ok=True) # ensure cache directory exists def preprocess_data(data_train, data_test, labels_train, labels_test, cache_dir=cache_dir, cache_file="preprocessed_data.pkl"): """Convert each review to words; read from cache if available.""" # If cache_file is not None, try to read from it first cache_data = None if cache_file is not None: try: with open(os.path.join(cache_dir, cache_file), "rb") as f: cache_data = pickle.load(f) print("Read preprocessed data from cache file:", cache_file) except: pass # unable to read from cache, but that's okay # If cache is missing, then do the heavy lifting if cache_data is None: # Preprocess training and test data to obtain words for each review #words_train = list(map(review_to_words, data_train)) #words_test = list(map(review_to_words, data_test)) words_train = [review_to_words(review) for review in data_train] words_test = [review_to_words(review) for review in data_test] # Write to cache file for future runs if cache_file is not None: cache_data = dict(words_train=words_train, words_test=words_test, labels_train=labels_train, labels_test=labels_test) with open(os.path.join(cache_dir, cache_file), "wb") as f: pickle.dump(cache_data, f) print("Wrote preprocessed data to cache file:", cache_file) else: # Unpack data loaded from cache file words_train, words_test, labels_train, labels_test = (cache_data['words_train'], cache_data['words_test'], cache_data['labels_train'], cache_data['labels_test']) return words_train, words_test, labels_train, labels_test # Preprocess data train_X, test_X, train_y, test_y = preprocess_data(train_X, test_X, train_y, test_y)
Output:
Wrote preprocessed data to cache file: preprocessed_data.pkl
Transforming the data
For the model we are going to construct we’ll transform the data from its word representation to a bag-of-words feature representation. To start, we will represent each word as an integer. Of course, some of the words that appear in the reviews occur very infrequently and so likely don’t contain much information for the purposes of sentiment analysis. The way we will deal with this problem is that we will fix the size of our working vocabulary and we will only include the words that appear most frequently. We will then combine all of the infrequent words into a single category and, in our case, we will label it as 1
.
Since we will be using a recurrent neural network, it will be convenient if the length of each review is the same. To do this, we will fix a size for our reviews and then pad short reviews with the category ‘no word’ (which we will label 0
) and truncate long reviews.
Creating a word dictionary
To begin with, we need to construct a way to map words that appear in the reviews to integers. Here we fix the size of our vocabulary (including the ‘no word’ and ‘infrequent’ categories) to be 5000
but you may wish to change this to see how it affects the model.
import numpy as np def build_dict(data, vocab_size = 5000): """Construct and return a dictionary mapping each of the most frequently appearing words to a unique integer.""" # Determine how often each word appears in `data`. Note that `data` is a list of sentences and that a # sentence is a list of words. word_count = {} # A dict storing the words that appear in the reviews along with how often they occur # Sort the words found in `data` so that sorted_words[0] is the most frequently appearing word and # sorted_words[-1] is the least frequently appearing word. for each_review in data: for each_word in each_review: if each_word in word_count: word_count[each_word] +=1 else: word_count[each_word] = 1 sorted_words = sorted(word_count, key=word_count.get, reverse=True) word_dict = {} # This is what we are building, a dictionary that translates words into integers for idx, word in enumerate(sorted_words[:vocab_size - 2]): # The -2 is so that we save room for the 'no word' word_dict[word] = idx + 2 # 'infrequent' labels return word_dict word_dict = build_dict(train_X) top_keywords = list(word_dict.keys()) print("Top 5 Keywords:",top_keywords[:5])
Output:
Top 5 Keywords: ['movi', 'film', 'one', 'like', 'time']
Saving the word_dict
Later on when we construct an endpoint which processes a submitted review we will need to make use of the word_dict
which we have created. As such, we will save it to a file now for future use.
data_dir = '../data/pytorch' # The folder we will use for storing data if not os.path.exists(data_dir): # Make sure that the folder exists os.makedirs(data_dir) with open(os.path.join(data_dir, 'word_dict.pkl'), "wb") as f: pickle.dump(word_dict, f)
Transforming the reviews
Now that we have our word dictionary which allows us to transform the words appearing in the reviews into integers, it is time to make use of it and convert our reviews to their integer sequence representation, making sure to pad or truncate to a fixed length, which in our case is 500
.
def convert_and_pad(word_dict, sentence, pad=500): NOWORD = 0 # We will use 0 to represent the 'no word' category INFREQ = 1 # and we use 1 to represent the infrequent words, i.e., words not appearing in word_dict working_sentence = [NOWORD] * pad for word_index, word in enumerate(sentence[:pad]): if word in word_dict: working_sentence[word_index] = word_dict[word] else: working_sentence[word_index] = INFREQ return working_sentence, min(len(sentence), pad) def convert_and_pad_data(word_dict, data, pad=500): result = [] lengths = [] for sentence in data: converted, leng = convert_and_pad(word_dict, sentence, pad) result.append(converted) lengths.append(leng) return np.array(result), np.array(lengths) train_X, train_X_len = convert_and_pad_data(word_dict, train_X) test_X, test_X_len = convert_and_pad_data(word_dict, test_X)
As a quick check to make sure that things are working as intended, check to see what one of the reviews in the training set looks like after having been processeed. Does this look reasonable? What is the length of a review in the training set?
# Use this cell to examine one of the processed reviews to make sure everything is working as intended. print("len of a review",len(train_X[55])) print(train_X[55])
Output:
len of a review 500
[4675 1 4680 162 424 2174 2211 75 614 1 561 3446 940 610
1512 1 1444 1 1492 55 1 2649 68 29 1482 1512 48 983
1057 349 1019 219 4675 2636 33 1885 1 334 1 1 1 1482
1 3820 1491 4914 1512 530 1459 530 1627 228 2522 2355 263 4675
178 2650 1243 4675 617 1512 54 564 1 354 19 1 1 551
1876 4675 349 1754 1 1 1 1031 489 1 2484 1 11 79
162 27 596 1194 1047 2031 108 283 680 305 35 10 1715 1512
468 1 133 4675 610 4444 768 2108 13 343 227 2035 1 850
244 965 183 75 80 690 1042 10 1 23 91 91 1 1
9 850 1 45 1064 169 412 13 4675 9 1 1627 489 37
456 475 1 1264 1933 162 4781 1868 3874 29 128 1427 898 1
4 3381 29 55 1495 228 970 3465 3014 4680 2425 81 8 315
4915 2351 1 850 354 126 1 768 645 3820 1491 1 1 272
991 4736 2602 1 1 1 1257 290 804 29 42 3875 169 1398
290 212 312 1612 4675 1 1 1243 738 18 840 29 1 714
3183 1049 2620 169 4734 1754 1 746 431 307 50 1 368 11
3709 1 1 1 1 646 105 644 2 807 27 126 2251 29
1175 714 1641 23 22 2379 708 370 319 1288 118 462 25 651
1 1715 1 1089 25 64 91 3382 4 2495 2 79 62 7
2 241 1 1 111 552 53 251 352 379 352 598 848 651
6 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0 0 0 0 0
0 0 0 0 0 0 0 0 0 0]
Step 3: Upload the data to S3
We will need to upload the training dataset to S3 in order for our training code to access it. For now we will save it locally and we will upload to S3 later on.
Save the processed training dataset locally
It is important to note the format of the data that we are saving as we will need to know it when we write the training code. In our case, each row of the dataset has the form label
, length
, review[500]
where review[500]
is a sequence of 500
integers representing the words in the review.
import pandas as pd pd.concat([pd.DataFrame(train_y), pd.DataFrame(train_X_len), pd.DataFrame(train_X)], axis=1) \ .to_csv(os.path.join(data_dir, 'train.csv'), header=False, index=False)
Uploading the training data
Next, we need to upload the training data to the SageMaker default S3 bucket so that we can provide access to it while training our model.
import sagemaker sagemaker_session = sagemaker.Session() bucket = sagemaker_session.default_bucket() prefix = 'sagemaker/sentiment_rnn' role = sagemaker.get_execution_role() input_data = sagemaker_session.upload_data(path=data_dir, bucket=bucket, key_prefix=prefix)
NOTE: The cell above uploads the entire contents of our data directory. This includes the word_dict.pkl
file. This is fortunate as we will need this later on when we create an endpoint that accepts an arbitrary review. For now, we will just take note of the fact that it resides in the data directory (and so also in the S3 training bucket) and that we will need to make sure it gets saved in the model directory.
Step 4: Build and Train the PyTorch Model
In particular, a model comprises of three objects in SageMaker.
- a. Model Artifacts,
- b. Training Code, and
- c. Inference Code,
each of which interact with one another. Here we will be using containers provided by Amazon with the added benefit of being able to include our own custom code.
We will start by implementing our own neural network in PyTorch along with a training script.
!pygmentize train/model.py
Output:
import torch.nn as nn
class LSTMClassifier(nn.Module):
"""
This is the simple RNN model we will be using to perform Sentiment Analysis.
"""
def __init__(self, embedding_dim, hidden_dim, vocab_size):
"""
Initialize the model by settingg up the various layers.
"""
super(LSTMClassifier, self).__init__()
self.embedding = nn.Embedding(vocab_size, embedding_dim, padding_idx=0)
self.lstm = nn.LSTM(embedding_dim, hidden_dim)
self.dense = nn.Linear(in_features=hidden_dim, out_features=1)
self.sig = nn.Sigmoid()
self.word_dict = None
def forward(self, x):
"""
Perform a forward pass of our model on some input.
"""
x = x.t()
lengths = x[0,:]
reviews = x[1:,:]
embeds = self.embedding(reviews)
lstm_out, _ = self.lstm(embeds)
out = self.dense(lstm_out)
out = out[lengths - 1, range(len(lengths))]
return self.sig(out.squeeze())
The important takeaway from the implementation provided is that there are three parameters that we may wish to tweak to improve the performance of our model. These are the embedding dimension, the hidden dimension and the size of the vocabulary. We will likely want to make these parameters configurable in the training script so that if we wish to modify them we do not need to modify the script itself. We will see how to do this later on. To start we will write some of the training code in the notebook so that we can more easily diagnose any issues that arise.
First we will load a small portion of the training data set to use as a sample. It would be very time consuming to try and train the model completely in the notebook as we do not have access to a gpu and the compute instance that we are using is not particularly powerful. However, we can work on a small bit of the data to get a feel for how our training script is behaving.
import torch import torch.utils.data # Read in only the first 250 rows train_sample = pd.read_csv(os.path.join(data_dir, 'train.csv'), header=None, names=None, nrows=250) # Turn the input pandas dataframe into tensors train_sample_y = torch.from_numpy(train_sample[[0]].values).float().squeeze() train_sample_X = torch.from_numpy(train_sample.drop([0], axis=1).values).long() # Build the dataset train_sample_ds = torch.utils.data.TensorDataset(train_sample_X, train_sample_y) # Build the dataloader train_sample_dl = torch.utils.data.DataLoader(train_sample_ds, batch_size=50)
Writing the training method
Next we need to write the training code itself. This should be very similar to training methods that you have written before to train PyTorch models. We will leave any difficult aspects such as model saving / loading and parameter loading until a little later.
def train(model, train_loader, epochs, optimizer, loss_fn, device): for epoch in range(1, epochs + 1): model.train() total_loss = 0 for batch in train_loader: batch_X, batch_y = batch batch_X = batch_X.to(device) batch_y = batch_y.to(device) # TODO: Complete this train method to train the model provided. optimizer.zero_grad() # forward pass output = model.forward(batch_X) # calculate the batch loss loss = loss_fn(output, batch_y) # backpropagation loss.backward() #optimization optimizer.step() total_loss += loss.data.item() print("Epoch: {}, BCELoss: {}".format(epoch, total_loss / len(train_loader)))
Supposing we have the training method above, we will test that it is working by writing a bit of code in the notebook that executes our training method on the small sample training set that we loaded earlier. The reason for doing this in the notebook is so that we have an opportunity to fix any errors that arise early when they are easier to diagnose.
import torch.optim as optim from train.model import LSTMClassifier device = torch.device("cuda" if torch.cuda.is_available() else "cpu") model = LSTMClassifier(32, 100, 5000).to(device) optimizer = optim.Adam(model.parameters()) loss_fn = torch.nn.BCELoss() train(model, train_sample_dl, 5, optimizer, loss_fn, device)
Output:
Epoch: 1, BCELoss: 0.6932154417037963
Epoch: 2, BCELoss: 0.683722734451294
Epoch: 3, BCELoss: 0.675475811958313
Epoch: 4, BCELoss: 0.6661329388618469
Epoch: 5, BCELoss: 0.6543593883514405
In order to construct a PyTorch model using SageMaker we must provide SageMaker with a training script. We may optionally include a directory which will be copied to the container and from which our training code will be run. When the training container is executed it will check the uploaded directory (if there is one) for a requirements.txt
file and install any required Python libraries, after which the training script will be run.
Training the model
When a PyTorch model is constructed in SageMaker, an entry point must be specified. This is the Python file which will be executed when the model is trained. Inside of the train
directory is a file called train.py
which has been provided and which contains most of the necessary code to train our model.
The way that SageMaker passes hyperparameters to the training script is by way of arguments. These arguments can then be parsed and used in the training script. To see how this is done take a look at the provided train/train.py
file.
from sagemaker.pytorch import PyTorch estimator = PyTorch(entry_point="train.py", source_dir="train", role=role, framework_version='0.4.0', train_instance_count=1, train_instance_type='ml.p2.xlarge', hyperparameters={ 'epochs': 10, 'hidden_dim': 200, }) estimator.fit({'training': input_data})
Output:
'create_image_uri' will be deprecated in favor of 'ImageURIProvider' class in SageMaker Python SDK v2.
's3_input' class will be renamed to 'TrainingInput' in SageMaker Python SDK v2.
'create_image_uri' will be deprecated in favor of 'ImageURIProvider' class in SageMaker Python SDK v2.
2020-06-23 14:42:13 Starting - Starting the training job...
2020-06-23 14:42:15 Starting - Launching requested ML instances.........
2020-06-23 14:43:45 Starting - Preparing the instances for training......
2020-06-23 14:45:06 Downloading - Downloading input data......
2020-06-23 14:46:08 Training - Training image download completed. Training in progress.
..
..
2020-06-23 14:49:42 Uploading - Uploading generated training model
2020-06-23 14:49:42 Completed - Training job completed
Epoch: 10, BCELoss: 0.2970385502795784
2020-06-23 14:49:35,346 sagemaker-containers INFO Reporting training SUCCESS
Training seconds: 276
Billable seconds: 276
Step 5: Testing the model
As mentioned at the top of this notebook, we will be testing this model by first deploying it and then sending the testing data to the deployed endpoint. We will do this so that we can make sure that the deployed model is working correctly.
Step 6: Deploy the model for testing
Now that we have trained our model, we would like to test it to see how it performs. Currently our model takes input of the form review_length, review[500]
where review[500]
is a sequence of 500
integers which describe the words present in the review, encoded using word_dict
. Fortunately for us, SageMaker provides built-in inference code for models with simple inputs such as this.
There is one thing that we need to provide, however, and that is a function which loads the saved model. This function must be called model_fn()
and takes as its only parameter a path to the directory where the model artifacts are stored. This function must also be present in the python file which we specified as the entry point. In our case the model loading function has been provided and so no changes need to be made.
NOTE: When the built-in inference code is run it must import the model_fn()
method from the train.py
file. This is why the training code is wrapped in a main guard ( ie, if __name__ == '__main__':
)
Since we don’t need to change anything in the code that was uploaded during training, we can simply deploy the current model as-is.
NOTE: When deploying a model you are asking SageMaker to launch an compute instance that will wait for data to be sent to it. As a result, this compute instance will continue to run until you shut it down. This is important to know since the cost of a deployed endpoint depends on how long it has been running for.
In other words If you are no longer using a deployed endpoint, shut it down!
# Deploy the trained model predictor = estimator.deploy(initial_instance_count = 1, instance_type = 'ml.m4.xlarge')
Output:
Parameter image will be renamed to image_uri in SageMaker Python SDK v2.
'create_image_uri' will be deprecated in favor of 'ImageURIProvider' class in SageMaker Python SDK v2.
Using already existing model: sagemaker-pytorch-2020-06-23-14-42-13-201
---------------!
Step 7 - Use the model for testing
Once deployed, we can read in the test data and send it off to our deployed model to get some results. Once we collect all of the results we can determine how accurate our model is.
test_X = pd.concat([pd.DataFrame(test_X_len), pd.DataFrame(test_X)], axis=1) # We split the data into chunks and send each chunk seperately, accumulating the results. def predict(data, rows=512): split_array = np.array_split(data, int(data.shape[0] / float(rows) + 1)) predictions = np.array([]) for array in split_array: predictions = np.append(predictions, predictor.predict(array)) return predictions predictions = predict(test_X.values) predictions = [round(num) for num in predictions] from sklearn.metrics import accuracy_score accuracy_score(test_y, predictions)
Output:
0.84772
More testing
We now have a trained model which has been deployed and which we can send processed reviews to and which returns the predicted sentiment. However, ultimately we would like to be able to send our model an unprocessed review. That is, we would like to send the review itself as a string. For example, suppose we wish to send the following review to our model.
test_review = 'The simplest pleasures in life are the best, and this film is one of them. Combining a rather basic storyline >of love and adventure this movie transcends the usual weekend fair with wit and unmitigated charm.'
The question we now need to answer is, how do we send this review to our model?
Recall in the first section of this notebook we did a bunch of data processing to the IMDb dataset. In particular, we did two specific things to the provided reviews.
- Removed any html tags and stemmed the input
- Encoded the review as a sequence of integers using
word_dict
In order process the review we will need to repeat these two steps.
# Convert test_review into a form usable by the model and save the results in test_data test_review_data, test_review_len = convert_and_pad(word_dict, review_to_words(test_review)) # combine review length and data in one numpy array test_data = np.array(test_review_data) test_data = np.insert(test_data, 0, test_review_len) # add empty batch dimension test_data = test_data[None, :]
Now that we have processed the review, we can send the resulting array to our model to predict the sentiment of the review.
predictor.predict(test_data)
Output:
array(0.871142, dtype=float32)
Since the return value of our model is close to 1
, we can be certain that the review we submitted is positive.
Delete the endpoint
Of course, just like in the XGBoost notebook, once we’ve deployed an endpoint it continues to run until we tell it to shut down. Since we are done using our endpoint for now, we can delete it.
estimator.delete_endpoint()
Step 6 (again) - Deploy the model for the web app
Now that we know that our model is working, it’s time to create some custom inference code so that we can send the model a review which has not been processed and have it determine the sentiment of the review.
As we saw above, by default the estimator which we created, when deployed, will use the entry script and directory which we provided when creating the model. However, since we now wish to accept a string as input and our model expects a processed review, we need to write some custom inference code.
We will store the code that we write in the serve
directory. Provided in this directory is the model.py
file that we used to construct our model, a utils.py
file which contains the review_to_words
and convert_and_pad
pre-processing functions which we used during the initial data processing, and predict.py
, the file which will contain our custom inference code. Note also that requirements.txt
is present which will tell SageMaker what Python libraries are required by our custom inference code.
When deploying a PyTorch model in SageMaker, you are expected to provide four functions which the SageMaker inference container will use.
model_fn
: This function is the same function that we used in the training script and it tells SageMaker how to load our model.input_fn
: This function receives the raw serialized input that has been sent to the model’s endpoint and its job is to de-serialize and make the input available for the inference code.output_fn
: This function takes the output of the inference code and its job is to serialize this output and return it to the caller of the model’s endpoint.predict_fn
: The heart of the inference script, this is where the actual prediction is done and is the function which you will need to complete.
For the simple website that we are constructing during this project, the input_fn
and output_fn
methods are relatively straightforward. We only require being able to accept a string as input and we expect to return a single value as output. You might imagine though that in a more complex application the input or output may be image data or some other binary data which would require some effort to serialize.
Writing inference code
Before writing our custom inference code, we will begin by taking a look at the code which has been provided.
!pygmentize serve/predict.py
Output:
import argparse
import json
import os
import pickle
import sys
import sagemaker_containers
import pandas as pd
import numpy as np
import torch
import torch.nn as nn
import torch.optim as optim
import torch.utils.data
from model import LSTMClassifier
from utils import review_to_words, convert_and_pad
def model_fn(model_dir):
"""Load the PyTorch model from the `model_dir` directory."""
print("Loading model.")
# First, load the parameters used to create the model.
model_info = {}
model_info_path = os.path.join(model_dir, 'model_info.pth')
with open(model_info_path, 'rb') as f:
model_info = torch.load(f)
print("model_info: {}".format(model_info))
# Determine the device and construct the model.
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
model = LSTMClassifier(model_info['embedding_dim'], model_info['hidden_dim'], model_info['vocab_size'])
# Load the store model parameters.
model_path = os.path.join(model_dir, 'model.pth')
with open(model_path, 'rb') as f:
model.load_state_dict(torch.load(f))
# Load the saved word_dict.
word_dict_path = os.path.join(model_dir, 'word_dict.pkl')
with open(word_dict_path, 'rb') as f:
model.word_dict = pickle.load(f)
model.to(device).eval()
print("Done loading model.")
return model
def input_fn(serialized_input_data, content_type):
print('Deserializing the input data.')
if content_type == 'text/plain':
data = serialized_input_data.decode('utf-8')
return data
raise Exception('Requested unsupported ContentType in content_type: ' + content_type)
def output_fn(prediction_output, accept):
print('Serializing the generated output.')
return str(prediction_output)
def predict_fn(input_data, model):
print('Inferring sentiment of input data.')
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
if model.word_dict is None:
raise Exception('Model has not been loaded properly, no word_dict.')
# Process input_data so that it is ready to be sent to our model.
# You should produce two variables:
# data_X - A sequence of length 500 which represents the converted review
# data_len - The length of the review
data_X = None
data_len = None
# Using data_X and data_len we construct an appropriate input tensor. Remember
# that our model expects input data of the form 'len, review[500]'.
data_pack = np.hstack((data_len, data_X))
data_pack = data_pack.reshape(1, -1)
data = torch.from_numpy(data_pack)
data = data.to(device)
# Make sure to put the model into evaluation mode
model.eval()
# Compute the result of applying the model to the input data. The variable `result` should
# be a numpy array which contains a single integer which is either 1 or 0
result = None
return result
As mentioned earlier, the model_fn
method is the same as the one provided in the training code and the input_fn
and output_fn
methods are very simple and your task will be to complete the predict_fn
method. Make sure that you save the completed file as predict.py
in the serve
directory.
Deploying the model
Now that the custom inference code has been written, we will create and deploy our model. To begin with, we need to construct a new PyTorchModel object which points to the model artifacts created during training and also points to the inference code that we wish to use. Then we can call the deploy method to launch the deployment container.
NOTE: The default behaviour for a deployed PyTorch model is to assume that any input passed to the predictor is a numpy
array. In our case we want to send a string so we need to construct a simple wrapper around the RealTimePredictor
class to accomodate simple strings. In a more complicated situation you may want to provide a serialization object, for example if you wanted to sent image data.
from sagemaker.predictor import RealTimePredictor from sagemaker.pytorch import PyTorchModel class StringPredictor(RealTimePredictor): def __init__(self, endpoint_name, sagemaker_session): super(StringPredictor, self).__init__(endpoint_name, sagemaker_session, content_type='text/plain') model = PyTorchModel(model_data=estimator.model_data, role = role, framework_version='0.4.0', entry_point='predict.py', source_dir='serve', predictor_cls=StringPredictor) predictor = model.deploy(initial_instance_count=1, instance_type='ml.m4.xlarge')
Output:
Parameter image will be renamed to image_uri in SageMaker Python SDK v2.
'create_image_uri' will be deprecated in favor of 'ImageURIProvider' class in SageMaker Python SDK v2.
---------------!
Testing the model
Now that we have deployed our model with the custom inference code, we should test to see if everything is working. Here we test our model by loading the first 250
positive and negative reviews and send them to the endpoint, then collect the results. The reason for only sending some of the data is that the amount of time it takes for our model to process the input and then perform inference is quite long and so testing the entire data set would be prohibitive.
import glob def test_reviews(data_dir='../data/aclImdb', stop=250): results = [] ground = [] # We make sure to test both positive and negative reviews for sentiment in ['pos', 'neg']: path = os.path.join(data_dir, 'test', sentiment, '*.txt') files = glob.glob(path) files_read = 0 print('Starting ', sentiment, ' files') # Iterate through the files and send them to the predictor for f in files: with open(f) as review: # First, we store the ground truth (was the review positive or negative) if sentiment == 'pos': ground.append(1) else: ground.append(0) # Read in the review and convert to 'utf-8' for transmission via HTTP review_input = review.read().encode('utf-8') # Send the review to the predictor and store the results results.append(int(predictor.predict(review_input))) # Sending reviews to our endpoint one at a time takes a while so we # only send a small number of reviews files_read += 1 if files_read == stop: break return ground, results ground, results = test_reviews()
Output:
Starting pos files
Starting neg files
from sklearn.metrics import accuracy_score accuracy_score(ground, results)
Output:
0.858
As an additional test, we can try sending the test_review
that we looked at earlier.
predictor.predict(test_review)
Output:
b'1'
Now that we know our endpoint is working as expected, we can set up the web page that will interact with it.
Step 7 (again): Use the model for the web app
So far we have been accessing our model endpoint by constructing a predictor object which uses the endpoint and then just using the predictor object to perform inference. What if we wanted to create a web app which accessed our model? The way things are set up currently makes that not possible since in order to access a SageMaker endpoint the app would first have to authenticate with AWS using an IAM role which included access to SageMaker endpoints. However, there is an easier way! We just need to use some additional AWS services.
The diagram above gives an overview of how the various services will work together. On the far right is the model which we trained above and which is deployed using SageMaker. On the far left is our web app that collects a user’s movie review, sends it off and expects a positive or negative sentiment in return.
In the middle is where some of the magic happens. We will construct a Lambda function, which you can think of as a straightforward Python function that can be executed whenever a specified event occurs. We will give this function permission to send and recieve data from a SageMaker endpoint.
Lastly, the method we will use to execute the Lambda function is a new endpoint that we will create using API Gateway. This endpoint will be a url that listens for data to be sent to it. Once it gets some data it will pass that data on to the Lambda function and then return whatever the Lambda function returns. Essentially it will act as an interface that lets our web app communicate with the Lambda function.
Setting up a Lambda function
The first thing we are going to do is set up a Lambda function. This Lambda function will be executed whenever our public API has data sent to it. When it is executed it will receive the data, perform any sort of processing that is required, send the data (the review) to the SageMaker endpoint we’ve created and then return the result.
Part A: Create an IAM Role for the Lambda function
Since we want the Lambda function to call a SageMaker endpoint, we need to make sure that it has permission to do so. To do this, we will construct a role that we can later give the Lambda function.
Using the AWS Console, navigate to the IAM page and click on Roles. Then, click on Create role. Make sure that the AWS service is the type of trusted entity selected and choose Lambda as the service that will use this role, then click Next: Permissions.
In the search box type sagemaker
and select the check box next to the AmazonSageMakerFullAccess policy. Then, click on Next: Review.
Lastly, give this role a name. Make sure you use a name that you will remember later on, for example LambdaSageMakerRole
. Then, click on Create role.
Part B: Create a Lambda function
Now it is time to actually create the Lambda function.
Using the AWS Console, navigate to the AWS Lambda page and click on Create a function. When you get to the next page, make sure that Author from scratch is selected. Now, name your Lambda function, using a name that you will remember later on, for example sentiment_analysis_func
. Make sure that the Python 3.6 runtime is selected and then choose the role that you created in the previous part. Then, click on Create Function.
On the next page you will see some information about the Lambda function you’ve just created. If you scroll down you should see an editor in which you can write the code that will be executed when your Lambda function is triggered. In our example, we will use the code below.
# We need to use the low-level library to interact with SageMaker since the SageMaker API # is not available natively through Lambda. import boto3 def lambda_handler(event, context): # The SageMaker runtime is what allows us to invoke the endpoint that we've created. runtime = boto3.Session().client('sagemaker-runtime') # Now we use the SageMaker runtime to invoke our endpoint, sending the review we were given response = runtime.invoke_endpoint(EndpointName = '**ENDPOINT NAME HERE**', # The name of the endpoint we created ContentType = 'text/plain', # The data format that is expected Body = event['body']) # The actual review # The response is an HTTP response whose body contains the result of our inference result = response['Body'].read().decode('utf-8') return { 'statusCode' : 200, 'headers' : { 'Content-Type' : 'text/plain', 'Access-Control-Allow-Origin' : '*' }, 'body' : result }
Once you have copy and pasted the code above into the Lambda code editor, replace the **ENDPOINT NAME HERE**
portion with the name of the endpoint that we deployed earlier. You can determine the name of the endpoint using the code cell below.
predictor.endpoint
Output:
'sagemaker-pytorch-2020-06-23-15-40-30-967'
Once you have added the endpoint name to the Lambda function, click on Save. Your Lambda function is now up and running. Next we need to create a way for our web app to execute the Lambda function.
Setting up API Gateway
Now that our Lambda function is set up, it is time to create a new API using API Gateway that will trigger the Lambda function we have just created.
Using AWS Console, navigate to Amazon API Gateway and then click on Get started.
On the next page, make sure that New API is selected and give the new api a name, for example, sentiment_analysis_api
. Then, click on Create API.
Now we have created an API, however it doesn’t currently do anything. What we want it to do is to trigger the Lambda function that we created earlier.
Select the Actions dropdown menu and click Create Method. A new blank method will be created, select its dropdown menu and select POST, then click on the check mark beside it.
For the integration point, make sure that Lambda Function is selected and click on the Use Lambda Proxy integration. This option makes sure that the data that is sent to the API is then sent directly to the Lambda function with no processing. It also means that the return value must be a proper response object as it will also not be processed by API Gateway.
Type the name of the Lambda function you created earlier into the Lambda Function text entry box and then click on Save. Click on OK in the pop-up box that then appears, giving permission to API Gateway to invoke the Lambda function you created.
The last step in creating the API Gateway is to select the Actions dropdown and click on Deploy API. You will need to create a new Deployment stage and name it anything you like, for example prod
.
You have now successfully set up a public API to access your SageMaker model. Make sure to copy or write down the URL provided to invoke your newly created public API as this will be needed in the next step. This URL can be found at the top of the page, highlighted in blue next to the text Invoke URL.
Step 4: Deploying our web app
Now that we have a publicly available API, we can start using it in a web app. For our purposes, we have provided a simple static html file which can make use of the public api you created earlier.
In the website
folder there should be a file called index.html
. Download the file to your computer and open that file up in a text editor of your choice. There should be a line which contains **REPLACE WITH PUBLIC API URL**. Replace this string with the url that you wrote down in the last step and then save the file.
Now, if you open index.html
on your local computer, your browser will behave as a local web server and you can use the provided site to interact with your SageMaker model.
If you’d like to go further, you can host this html file anywhere you’d like, for example using github or hosting a static site on Amazon’s S3. Once you have done this you can share the link with anyone you’d like and have them play with it too!
Important Note In order for the web app to communicate with the SageMaker endpoint, the endpoint has to actually be deployed and running. This means that you are paying for it. Make sure that the endpoint is running when you want to use the web app but that you shut it down when you don’t need it, otherwise you will end up with a surprisingly large AWS bill.
Now that your web app is working, trying playing around with it and see how well it works.
Delete the endpoint
Remember to always shut down your endpoint if you are no longer using it. We are charged for the length of time that the endpoint is running so if we forget and leave it on we could end up with an unexpectedly large bill.
predictor.delete_endpoint()