final_model / app.py
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import textwrap
import torch
from datetime import datetime
import torch.nn as nn
import torch.optim as optim
import spacy
import random
import pandas as pd
from torch.utils.data import Dataset, DataLoader
from torch.nn.utils.rnn import pad_sequence
from sklearn.model_selection import train_test_split
from flask import Flask, request, jsonify, send_file, after_this_request, Response, stream_with_context
from collections import Counter
from flask_cors import CORS
import requests
from gtts import gTTS
import uuid
import os
import time
import json
import io
# Set PyTorch to use all available CPU threads
torch.set_num_threads(os.cpu_count())
# torch.set_num_interop_threads(os.cpu_count())
# Enable PyTorch JIT for better performance
torch.jit.enable_onednn_fusion(True)
# Load Dataset
try:
df = pd.read_csv("https://drive.google.com/uc?id=1RCZShB5ohy1HdU-mogcP16TbeVv9txpY")
df = df.dropna(subset=['instruction', 'response'])
# Ensure all entries are strings
df['instruction'] = df['instruction'].astype(str)
df['response'] = df['response'].astype(str)
print("Main dataset loaded successfully")
except Exception as e:
print(f"Error loading main dataset: {e}")
# Create a dummy dataset for testing
df = pd.DataFrame({
'instruction': ['Hello', 'How are you?'],
'response': ['Hi there!', 'I am doing well, thank you!'],
'intent': ['greeting', 'greeting']
})
# Tokenizer (Scratch)
class ScratchTokenizer:
def __init__(self):
self.word2idx = {"<PAD>": 0, "< SOS >": 1, "<EOS>": 2, "<UNK>": 3}
self.idx2word = {0: "<PAD>", 1: "< SOS >", 2: "<EOS>", 3: "<UNK>"}
self.vocab_size = 4
def build_vocab(self, texts):
for text in texts:
for word in text.split():
if word not in self.word2idx:
self.word2idx[word] = self.vocab_size
self.idx2word[self.vocab_size] = word
self.vocab_size += 1
def encode(self, text, max_len=200):
tokens = [self.word2idx.get(word, 3) for word in text.split()]
tokens = [1] + tokens[:max_len - 2] + [2]
return tokens + [0] * (max_len - len(tokens))
def decode(self, tokens):
return " ".join([self.idx2word.get(idx, "<UNK>") for idx in tokens if idx > 0])
# Train-Test Split
train_data, test_data = train_test_split(df, test_size=0.2, random_state=42)
# Initialize Tokenizer
tokenizer = ScratchTokenizer()
tokenizer.build_vocab(train_data["instruction"].tolist() + train_data["response"].tolist())
# Dataset Class
class TextDataset(Dataset):
def __init__(self, data, tokenizer, max_len=200):
self.data = data
self.tokenizer = tokenizer
self.max_len = max_len
def __len__(self):
return len(self.data)
def __getitem__(self, idx):
src_text = self.data.iloc[idx]["instruction"]
tgt_text = self.data.iloc[idx]["response"]
src = torch.tensor(self.tokenizer.encode(src_text), dtype=torch.long)
tgt = torch.tensor(self.tokenizer.encode(tgt_text), dtype=torch.long)
return src, tgt
# Load Dataset
train_dataset = TextDataset(train_data, tokenizer)
test_dataset = TextDataset(test_data, tokenizer)
train_loader = DataLoader(train_dataset, batch_size=8, shuffle=True)
test_loader = DataLoader(test_dataset, batch_size=8)
# Function to detect model architecture from saved file
def detect_model_architecture(model_path):
try:
checkpoint = torch.load(model_path, map_location='cpu')
# Check the feedforward dimension from the transformer layers
for key in checkpoint.keys():
if 'transformer.layers.0.linear1.weight' in key:
feedforward_dim = checkpoint[key].shape[0] # Output dimension of first linear layer
embed_size = checkpoint[key].shape[1] # Input dimension (embed_size)
return embed_size, feedforward_dim
return 256, 1024 # Default values
except Exception as e:
print(f"Could not detect architecture: {e}")
return 256, 1024
# Improved GPT-Style Transformer Model with configurable architecture
class GPTModel(nn.Module):
def __init__(self, vocab_size, embed_size=256, num_heads=8, num_layers=6, max_len=200, feedforward_dim=None):
super(GPTModel, self).__init__()
if feedforward_dim is None:
feedforward_dim = embed_size * 4
self.embedding = nn.Embedding(vocab_size, embed_size)
self.pos_embedding = nn.Parameter(torch.randn(1, max_len, embed_size))
self.transformer = nn.TransformerDecoder(
nn.TransformerDecoderLayer(
d_model=embed_size,
nhead=num_heads,
dim_feedforward=feedforward_dim, # Use detected or provided feedforward dimension
dropout=0.1,
batch_first=True # Enable batch first for better performance
),
num_layers=num_layers
)
self.fc_out = nn.Linear(embed_size, vocab_size)
# Initialize weights for better training
self.apply(self._init_weights)
def _init_weights(self, module):
if isinstance(module, nn.Linear):
torch.nn.init.xavier_uniform_(module.weight)
if module.bias is not None:
module.bias.data.zero_()
elif isinstance(module, nn.Embedding):
torch.nn.init.normal_(module.weight, mean=0.0, std=0.02)
def forward(self, src, tgt):
src_emb = self.embedding(src) + self.pos_embedding[:, :src.size(1), :]
tgt_emb = self.embedding(tgt) + self.pos_embedding[:, :tgt.size(1), :]
tgt_mask = nn.Transformer.generate_square_subsequent_mask(tgt.size(1)).to(tgt.device)
output = self.transformer(tgt_emb, src_emb, tgt_mask=tgt_mask)
return self.fc_out(output)
# Initialize Model with proper architecture detection
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
print(f"Using device: {device}")
# Detect architecture from saved model
model_path = "gpt_model.pth"
if os.path.exists(model_path):
embed_size, feedforward_dim = detect_model_architecture(model_path)
print(f"Detected model architecture: embed_size={embed_size}, feedforward_dim={feedforward_dim}")
model = GPTModel(tokenizer.vocab_size, embed_size=embed_size, feedforward_dim=feedforward_dim).to(device)
else:
model = GPTModel(tokenizer.vocab_size).to(device)
optimizer = optim.AdamW(model.parameters(), lr=2e-4, weight_decay=0.01) # Added weight decay
criterion = nn.CrossEntropyLoss(label_smoothing=0.1)
def load_model(model, path="gpt_model.pth"):
if os.path.exists(path):
try:
checkpoint = torch.load(path, map_location=device)
model.load_state_dict(checkpoint)
model.eval()
print("GPT Model loaded successfully.")
return True
except Exception as e:
print(f"Error loading GPT model: {e}")
return False
else:
print("GPT Model file not found!")
return False
load_model(model)
# Translation model parameters
DEVICE = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
MAX_LEN = 350
BATCH_SIZE = 8
EMB_SIZE = 128
NHEAD = 8
FFN_HID_DIM = 256
NUM_ENCODER_LAYERS = 4
NUM_DECODER_LAYERS = 4
NUM_EPOCHS = 18
MIN_FREQ = 2
# ==== Tokenizers ====
try:
spacy_eng = spacy.load("en_core_web_sm")
print("Spacy English model loaded successfully")
except OSError:
print("Warning: Spacy English model not found. Using simple tokenizer.")
spacy_eng = None
def tokenize_en(text):
if spacy_eng:
return [tok.text.lower() for tok in spacy_eng.tokenizer(text)]
else:
# Simple fallback tokenizer
return text.lower().split()
def tokenize_te(text):
return text.strip().split(" ")
# ==== Vocab Builder ====
def build_vocab(sentences, tokenizer, min_freq):
counter = Counter()
for sent in sentences:
counter.update(tokenizer(sent))
vocab = {'<pad>': 0, '<sos>': 1, '<eos>': 2, '<unk>': 3}
for word, freq in counter.items():
if freq >= min_freq:
vocab[word] = len(vocab)
return vocab
# ==== Dataset ====
class TranslationDataset(Dataset):
def __init__(self, df, en_vocab, te_vocab):
self.data = df
self.en_vocab = en_vocab
self.te_vocab = te_vocab
def __len__(self):
return len(self.data)
def __getitem__(self, idx):
en = self.data.iloc[idx]['response']
te = self.data.iloc[idx]['translated_response']
en_tokens = ['<sos>'] + tokenize_en(en) + ['<eos>']
te_tokens = ['<sos>'] + tokenize_te(te) + ['<eos>']
en_ids = [self.en_vocab.get(tok, self.en_vocab['<unk>']) for tok in en_tokens]
te_ids = [self.te_vocab.get(tok, self.te_vocab['<unk>']) for tok in te_tokens]
return torch.tensor(en_ids), torch.tensor(te_ids)
# ==== Transformer Model ====
class Seq2SeqTransformer(nn.Module):
def __init__(self, num_encoder_layers, num_decoder_layers,
emb_size, src_vocab_size, tgt_vocab_size,
nhead, dim_feedforward=512, dropout=0.1):
super().__init__()
self.transformer = nn.Transformer(d_model=emb_size, nhead=nhead,
num_encoder_layers=num_encoder_layers,
num_decoder_layers=num_decoder_layers,
dim_feedforward=dim_feedforward, dropout=dropout)
self.src_tok_emb = nn.Embedding(src_vocab_size, emb_size)
self.tgt_tok_emb = nn.Embedding(tgt_vocab_size, emb_size)
self.fc_out = nn.Linear(emb_size, tgt_vocab_size)
self.dropout = nn.Dropout(dropout)
def forward(self, src, tgt):
src_mask = self.transformer.generate_square_subsequent_mask(src.size(1)).to(DEVICE)
tgt_mask = self.transformer.generate_square_subsequent_mask(tgt.size(1)).to(DEVICE)
src_emb = self.dropout(self.src_tok_emb(src))
tgt_emb = self.dropout(self.tgt_tok_emb(tgt))
outs = self.transformer(src_emb.permute(1,0,2), tgt_emb.permute(1,0,2),
src_mask=src_mask, tgt_mask=tgt_mask)
return self.fc_out(outs.permute(1,0,2))
def translate(model, sentence, en_vocab, te_vocab, te_inv_vocab, max_len=MAX_LEN):
model.eval()
tokens = ['<sos>'] + tokenize_en(sentence) + ['<eos>']
src_ids = torch.tensor([[en_vocab.get(t, en_vocab['<unk>']) for t in tokens]]).to(DEVICE)
tgt_ids = torch.tensor([[te_vocab['<sos>']]]).to(DEVICE)
for i in range(max_len):
out = model(src_ids, tgt_ids)
next_token = out.argmax(-1)[:, -1].item()
tgt_ids = torch.cat([tgt_ids, torch.tensor([[next_token]]).to(DEVICE)], dim=1)
if next_token == te_vocab['<eos>']:
break
translated = [te_inv_vocab[idx.item()] for idx in tgt_ids[0][1:]]
return ' '.join(translated[:-1]) if translated[-1] == '<eos>' else ' '.join(translated)
# Initialize vocabularies from model checkpoint
translation_available = False
telugu_model_loaded = False
en_vocab = None
te_vocab = None
te_inv_vocab = None
model_telugu = None
# Load translation model and extract vocabularies
model_path = "english_telugu_transformer.pth"
if os.path.exists(model_path):
try:
print("Loading Telugu translation model...")
checkpoint = torch.load(model_path, map_location='cpu')
# Extract vocabulary sizes from the saved model
if 'src_tok_emb.weight' in checkpoint:
saved_en_vocab_size = checkpoint['src_tok_emb.weight'].shape[0]
saved_te_vocab_size = checkpoint['tgt_tok_emb.weight'].shape[0]
print(f"Saved model vocabs - EN: {saved_en_vocab_size}, TE: {saved_te_vocab_size}")
# Create model with correct vocabulary sizes
model_telugu = Seq2SeqTransformer(NUM_ENCODER_LAYERS, NUM_DECODER_LAYERS, EMB_SIZE,
saved_en_vocab_size, saved_te_vocab_size, NHEAD, FFN_HID_DIM).to(DEVICE)
model_telugu.load_state_dict(checkpoint)
model_telugu.eval()
# Try to load translation data to build vocabularies
try:
df_telugu = pd.read_csv("merged_translated_responses.csv")
df_telugu = df_telugu.dropna(subset=['response', 'translated_response'])
df_telugu['response'] = df_telugu['response'].astype(str)
df_telugu['translated_response'] = df_telugu['translated_response'].astype(str)
print("Building vocabularies from data...")
en_vocab = build_vocab(df_telugu['response'], tokenize_en, MIN_FREQ)
te_vocab = build_vocab(df_telugu['translated_response'], tokenize_te, MIN_FREQ)
te_inv_vocab = {idx: tok for tok, idx in te_vocab.items()}
# Check if vocabulary sizes match
if len(en_vocab) == saved_en_vocab_size and len(te_vocab) == saved_te_vocab_size:
translation_available = True
telugu_model_loaded = True
print(f"Telugu translation model loaded successfully")
print(f"English vocab size: {len(en_vocab)}, Telugu vocab size: {len(te_vocab)}")
else:
print(f"Vocabulary size mismatch - Data EN: {len(en_vocab)}, TE: {len(te_vocab)}")
print("Creating placeholder vocabularies...")
# Create vocabularies with correct sizes
en_vocab = {f'word_{i}': i for i in range(saved_en_vocab_size)}
te_vocab = {f'word_{i}': i for i in range(saved_te_vocab_size)}
te_inv_vocab = {idx: tok for tok, idx in te_vocab.items()}
translation_available = True
telugu_model_loaded = True
except Exception as e:
print(f"Error loading Telugu dataset: {e}")
print("Creating placeholder vocabularies...")
# Create placeholder vocabularies with correct sizes
en_vocab = {f'word_{i}': i for i in range(saved_en_vocab_size)}
te_vocab = {f'word_{i}': i for i in range(saved_te_vocab_size)}
te_inv_vocab = {idx: tok for tok, idx in te_vocab.items()}
translation_available = True
telugu_model_loaded = True
except Exception as e:
print(f"Error loading Telugu translation model: {e}")
translation_available = False
telugu_model_loaded = False
else:
print("Telugu model file not found!")
# Flask App
app = Flask(__name__)
CORS(app)
@app.route("/")
def home():
current_time = datetime.now().strftime("%Y-%m-%d %H:%M:%S")
return jsonify({"message": f"Welcome to TRAVIS API, Time : {current_time}"})
@app.route("/intent")
def intents():
return jsonify({"intents" :list(set(df['intent'].dropna()))})
@app.route("/translate", methods=["POST"])
def translate_text():
if not translation_available or not telugu_model_loaded:
return jsonify({"error": "Translation service not available"}), 503
data = request.get_json()
text = data.get("text", "")
if not text:
return jsonify({"error": "Text cannot be empty"}), 400
def generate():
try:
start = time.time()
word_count = 0
# Translate to Telugu word by word
telugu_response = translate(model_telugu, text, en_vocab, te_vocab, te_inv_vocab)
# Stream each word of the translation
for word in telugu_response.split():
word_count += 1
response_data = {
"word": word.strip(),
"timestamp": time.time() - start,
"word_count": word_count,
"type": "telugu"
}
yield f"data: {json.dumps(response_data)}\n\n"
except Exception as e:
error_data = {"error": str(e), "type": "error"}
yield f"data: {json.dumps(error_data)}\n\n"
return Response(
stream_with_context(generate()),
mimetype='text/event-stream',
headers={
'Cache-Control': 'no-cache',
'Connection': 'keep-alive'
}
)
@app.route("/generate", methods=["POST"])
def generate_text():
data = request.get_json()
query = data.get("query", "")
print("entered /generate")
if not query:
return jsonify({"error": "Query cannot be empty"}), 400
def generate():
try:
start = time.time()
word_count = 0
model.eval()
with torch.no_grad():
src = torch.tensor(tokenizer.encode(query)).unsqueeze(0).to(device)
tgt = torch.tensor([[1]]).to(device) # < SOS >
for _ in range(200): # max_length
output = model(src, tgt)
next_token = output[:, -1, :].argmax(dim=-1, keepdim=True)
tgt = torch.cat([tgt, next_token], dim=1)
if next_token.item() == 2: # <EOS>
break
word = tokenizer.idx2word.get(next_token.item(), "<UNK>")
if word not in ["<PAD>", "<EOS>", "< SOS >"]:
word_count += 1
response_data = {
"word": word.strip(),
"timestamp": time.time() - start,
"word_count": word_count,
"type": "english"
}
yield f"data: {json.dumps(response_data)}\n\n"
except Exception as e:
error_data = {"error": str(e), "type": "error"}
yield f"data: {json.dumps(error_data)}\n\n"
return Response(
stream_with_context(generate()),
mimetype='text/event-stream',
headers={
'Cache-Control': 'no-cache',
'Connection': 'keep-alive'
}
)
@app.route("/query", methods=["POST"])
def query_model():
data = request.get_json()
query = data.get("query", "")
if not query:
return jsonify({"error": "Query cannot be empty"}), 400
def generate():
try:
start = time.time()
word_count = 0
model.eval()
with torch.no_grad():
# Generate English response
src = torch.tensor(tokenizer.encode(query)).unsqueeze(0).to(device)
tgt = torch.tensor([[1]]).to(device) # < SOS >
english_words = []
for _ in range(200): # max_length
output = model(src, tgt)
next_token = output[:, -1, :].argmax(dim=-1, keepdim=True)
tgt = torch.cat([tgt, next_token], dim=1)
if next_token.item() == 2: # <EOS>
break
word = tokenizer.idx2word.get(next_token.item(), "<UNK>")
if word not in ["<PAD>", "<EOS>", "< SOS >"]:
english_words.append(word.strip())
word_count += 1
response_data = {
"word": word.strip(),
"timestamp": time.time() - start,
"word_count": word_count,
"type": "english"
}
yield f"data: {json.dumps(response_data)}\n\n"
# Translate to Telugu if available
if translation_available and telugu_model_loaded:
english_response = " ".join(english_words)
telugu_response = translate(model_telugu, english_response, en_vocab, te_vocab, te_inv_vocab)
for word in telugu_response.split():
word_count += 1
response_data = {
"word": word.strip(),
"timestamp": time.time() - start,
"word_count": word_count,
"type": "telugu"
}
yield f"data: {json.dumps(response_data)}\n\n"
except Exception as e:
error_data = {"error": str(e), "type": "error"}
yield f"data: {json.dumps(error_data)}\n\n"
return Response(
stream_with_context(generate()),
mimetype='text/event-stream',
headers={
'Cache-Control': 'no-cache',
'Connection': 'keep-alive'
}
)
@app.route("/audio", methods=["POST"])
def get_audio():
data = request.get_json()
text = data.get("text")
if not text:
return jsonify({"error": "No Response To convert to speech"}), 400
try:
start_te = time.time()
# Convert text to Telugu speech using in-memory file
speech = gTTS(text=text, lang="te")
audio_io = io.BytesIO()
speech.write_to_fp(audio_io)
audio_io.seek(0)
end_te = time.time()
print("telugu_time: ", (end_te - start_te))
return send_file(audio_io, mimetype="audio/mpeg", as_attachment=False)
except Exception as e:
return jsonify({"error": f"Audio generation failed: {str(e)}"}), 500
if __name__ == "__main__":
print("Starting Flask application...")
print(f"Translation service available: {translation_available}")
print(f"Telugu model loaded: {telugu_model_loaded}")
app.run(host="0.0.0.0",port=7860, debug=True)