2024-04-27 07:56:41 -05:00 
										
									 
								 
							 
							
								
							 
							
								 
							
							
								{
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								 "cells": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "markdown",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "d95f841a-63c9-41d4-aea1-496b3d2024dd",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
									
										
										
										
											2024-05-24 07:20:37 -05:00 
										
									 
								 
							 
							
								
									
										 
								
							 
							
								 
							
							
								    "<table style=\"width:100%\">\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "<tr>\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "<td style=\"vertical-align:middle; text-align:left;\">\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "<font size=\"2\">\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "Supplementary code for the <a href=\"http://mng.bz/orYv\">Build a Large Language Model From Scratch</a> book by <a href=\"https://sebastianraschka.com\">Sebastian Raschka</a><br>\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "<br>Code repository: <a href=\"https://github.com/rasbt/LLMs-from-scratch\">https://github.com/rasbt/LLMs-from-scratch</a>\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "</font>\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "</td>\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "<td style=\"vertical-align:middle; text-align:left;\">\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "<a href=\"http://mng.bz/orYv\"><img src=\"https://sebastianraschka.com/images/LLMs-from-scratch-images/cover-small.webp\" width=\"100px\"></a>\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "</td>\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "</tr>\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "</table>"
							 
						 
					
						
							
								
									
										
										
										
											2024-04-27 07:56:41 -05:00 
										
									 
								 
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "markdown",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "abbd7c0d-70f8-4386-a114-907e96c950b0",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "## Data sampling with a sliding window with number data"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "code",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "execution_count": null,
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "0ed23175-41be-4a7e-8c45-1f100b35a1a6",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "outputs": [],
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "from importlib.metadata import version\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "import torch\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "print(\"torch version:\", version(\"torch\"))"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "markdown",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "92ac652d-7b38-4843-9fbd-494cdc8ec12c",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "To understand the dataloader, which using a sliding window approach, more intuitive, we can consider a dataset that consists of digits only:\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "```\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 ... 1000\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "```"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "code",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "execution_count": 64,
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "0e3f5d3c-95fe-42b2-8051-205f7803675a",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "outputs": [],
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "with open(\"number-data.txt\", \"w\", encoding=\"utf-8\") as f:\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    for number in range(1001):\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        f.write(f\"{number} \")"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "markdown",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "7becae19-a5a0-4236-87d5-f5eb9b6eb045",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "Next, we make a small modification to the `token_ids`: instead of using a tokenizer, we parse the integers directly from the text file:"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "code",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "execution_count": 65,
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "74b41073-4c9f-46e2-a1bd-d38e4122b375",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "outputs": [],
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "from torch.utils.data import Dataset, DataLoader\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "class GPTDatasetV1(Dataset):\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    def __init__(self, txt, tokenizer, max_length, stride):\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        self.input_ids = []\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        self.target_ids = []\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        # Modification\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        # token_ids = tokenizer.encode(txt, allowed_special={\"<|endoftext|>\"})\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        token_ids = [int(i) for i in txt.strip().split()]\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        # Use a sliding window to chunk the book into overlapping sequences of max_length\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        for i in range(0, len(token_ids) - max_length, stride):\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "            input_chunk = token_ids[i:i + max_length]\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "            target_chunk = token_ids[i + 1: i + max_length + 1]\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "            self.input_ids.append(torch.tensor(input_chunk))\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "            self.target_ids.append(torch.tensor(target_chunk))\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    def __len__(self):\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        return len(self.input_ids)\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    def __getitem__(self, idx):\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        return self.input_ids[idx], self.target_ids[idx]"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "code",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "execution_count": 66,
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "5eb30ebe-97b3-43c5-9ff1-a97d621b3c4e",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "outputs": [],
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "def create_dataloader_v1(txt, batch_size=4, max_length=256, stride=128, shuffle=True, drop_last=True, num_workers=0):\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    # Initialize the tokenizer\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    # tokenizer = tiktoken.get_encoding(\"gpt2\")\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    tokenizer = None\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    # Create dataset\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    dataset = GPTDatasetV1(txt, tokenizer, max_length, stride)\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    # Create dataloader\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    dataloader = DataLoader(\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        dataset,\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        batch_size=batch_size,\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        shuffle=shuffle,\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        drop_last=drop_last,\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "        num_workers=0\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    )\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    return dataloader"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "markdown",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "42dd68ef-59f7-45ff-ba44-e311c899ddcd",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "Let's test the dataloader with a batch size of 1 for an LLM with a context size of 4:"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "code",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "execution_count": 67,
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "df31d96c-6bfd-4564-a956-6192242d7579",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "outputs": [],
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "with open(\"number-data.txt\", \"r\", encoding=\"utf-8\") as f:\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    raw_text = f.read()"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "code",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "execution_count": 68,
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "9226d00c-ad9a-4949-a6e4-9afccfc7214f",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "outputs": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "name": "stdout",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "output_type": "stream",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "text": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "[tensor([[0, 1, 2, 3]]), tensor([[1, 2, 3, 4]])]\n"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    }
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ],
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "dataloader = create_dataloader_v1(raw_text, batch_size=1, max_length=4, stride=1, shuffle=False)\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "data_iter = iter(dataloader)\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "first_batch = next(data_iter)\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "print(first_batch)"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "code",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "execution_count": 69,
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "10deb4bc-4de1-4d20-921e-4b1c7a0e1a6d",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "outputs": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "name": "stdout",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "output_type": "stream",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "text": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "[tensor([[1, 2, 3, 4]]), tensor([[2, 3, 4, 5]])]\n"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    }
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ],
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "second_batch = next(data_iter)\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "print(second_batch)"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "code",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "execution_count": 70,
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "85a6c312-0144-4128-8d2c-06a4dc223ff7",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "outputs": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "name": "stdout",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "output_type": "stream",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "text": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "[tensor([[2, 3, 4, 5]]), tensor([[3, 4, 5, 6]])]\n"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    }
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ],
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "third_batch = next(data_iter)\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "print(third_batch)"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "code",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "execution_count": 71,
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "14b7ec67-083a-4b28-bcb9-f4c8e97e250e",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "outputs": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "name": "stdout",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "output_type": "stream",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "text": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "[tensor([[996, 997, 998, 999]]), tensor([[ 997,  998,  999, 1000]])]\n"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    }
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ],
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "for batch in dataloader:\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    pass\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "last_batch = batch\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "print(last_batch)"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "markdown",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "b1ae6d45-f26e-4b83-9c7b-cff55ffa7d16",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "Now, let's look at the batched inputs:"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "code",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "execution_count": 75,
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "1916e7a6-f03d-4f09-91a6-d0bdbac5a58c",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "outputs": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "name": "stdout",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "output_type": "stream",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "text": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "Inputs:\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      " tensor([[992, 993, 994, 995],\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "        [996, 997, 998, 999]])\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "Targets:\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      " tensor([[ 993,  994,  995,  996],\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "        [ 997,  998,  999, 1000]])\n"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    }
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ],
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "dataloader = create_dataloader_v1(raw_text, batch_size=2, max_length=4, stride=4, shuffle=False)\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "for inputs, targets in dataloader:\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    pass\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "print(\"Inputs:\\n\", inputs)\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "print(\"\\nTargets:\\n\", targets)"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "markdown",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "cdd66560-25d5-4800-acc1-432735dfc7d6",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "Finally, a data loader with shuffling:"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "cell_type": "code",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "execution_count": 76,
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "id": "39dd4952-5333-45f0-9032-f93007d742b2",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "metadata": {},
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "outputs": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "name": "stdout",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "output_type": "stream",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     "text": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "Inputs:\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      " tensor([[880, 881, 882, 883],\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "        [112, 113, 114, 115]])\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "Targets:\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      " tensor([[881, 882, 883, 884],\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								      "        [113, 114, 115, 116]])\n"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								     ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    }
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ],
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "source": [
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "torch.manual_seed(123)\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "dataloader = create_dataloader_v1(raw_text, batch_size=2, max_length=4, stride=4, shuffle=True)\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "for inputs, targets in dataloader:\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "    pass\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "print(\"Inputs:\\n\", inputs)\n",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "print(\"\\nTargets:\\n\", targets)"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   ]
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  }
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								 ],
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								 "metadata": {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  "kernelspec": {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "display_name": "Python 3 (ipykernel)",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "language": "python",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "name": "python3"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  "language_info": {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "codemirror_mode": {
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "name": "ipython",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								    "version": 3
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "file_extension": ".py",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "mimetype": "text/x-python",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "name": "python",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "nbconvert_exporter": "python",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "pygments_lexer": "ipython3",
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								   "version": "3.11.4"
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								  }
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								 },
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								 "nbformat": 4,
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								 "nbformat_minor": 5
							 
						 
					
						
							
								
							 
							
								
							 
							
								 
							
							
								}