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Add ch5-1
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{
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"cells": [
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{
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"cell_type": "markdown",
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"id": "e63ef76e",
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"metadata": {},
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"source": [
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"# 5.2 训练一个LLM"
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]
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},
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{
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"cell_type": "markdown",
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"id": "c1d79d88",
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"metadata": {},
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"source": [
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"\t\t在本节中,我们最终实现了用于预训练 LLM 的代码,即我们的 GPTModel。为此,我们专注于一个简单的训练循环,如图 5.11 所示,以保持代码简洁易读。但是,有兴趣的读者可以在附录 D,向训练循环添加花里胡哨中了解更高级的技术,包括学习速率预热、余弦退火和梯度削波。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "16882c7e",
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"metadata": {},
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"source": [
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"图 5.11 在 PyTorch 中训练深度神经网络的典型训练循环由几个步骤组成,在训练集中的批次上迭代多个时期。在每个循环中,我们计算每个训练集批次的损失以确定损失梯度,我们用它来更新模型权重,以便将训练集损失降至最低。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "9791e0ca",
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"metadata": {},
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"source": [
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""
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]
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},
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{
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"cell_type": "markdown",
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"id": "becf954d",
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"metadata": {},
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"source": [
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"\t\t图 5.11 中的流程图描述了一个典型的 PyTorch 神经网络训练工作流程,我们用它来训练 LLM。它概述了八个步骤,从迭代每个时期开始,处理批处理,重置和计算梯度,更新权重,最后是监控步骤,如打印损失和生成文本样本。如果您对使用 PyTorch 训练深度神经网络比较陌生,并且不熟悉其中任何一个步骤,请考虑阅读附录 A,PyTorch 简介中的 A.5 至 A.8 部分。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "a5e6748c",
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"metadata": {},
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"source": [
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"\t\t在代码中,我们可以通过以下train_model_simple函数实现此训练流程:"
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]
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},
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{
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"cell_type": "markdown",
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"id": "c29235aa",
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"metadata": {},
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"source": [
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"**Listing 5.3 预训练 LLM 的主要功能**"
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]
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},
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{
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"cell_type": "code",
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"execution_count": null,
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"id": "ee1deba6",
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"metadata": {},
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"outputs": [],
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"source": [
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"def train_model_simple(model, train_loader, val_loader, optimizer, device, num_epochs,\n",
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"eval_freq, eval_iter, start_context):\n",
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" \n",
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"\ttrain_losses, val_losses, track_tokens_seen = [], [], [] #A\n",
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"\ttokens_seen, global_step = 0, -1\n",
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"\tfor epoch in range(num_epochs): #B\n",
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" model.train()\n",
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" for input_batch, target_batch in train_loader:\n",
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" optimizer.zero_grad() #C\n",
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" loss = calc_loss_batch(input_batch, target_batch, model, device)\n",
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" loss.backward() #D\n",
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" optimizer.step() #E\n",
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" tokens_seen += input_batch.numel()\n",
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" global_step += 1\n",
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" if global_step % eval_freq == 0: #F\n",
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" train_loss, val_loss = evaluate_model(\n",
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" model, train_loader, val_loader, device, eval_iter)\n",
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" train_losses.append(train_loss)\n",
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" val_losses.append(val_loss)\n",
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" track_tokens_seen.append(tokens_seen)\n",
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" print(f\"Ep {epoch+1} (Step {global_step:06d}): \"\n",
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" f\"Train loss {train_loss:.3f}, Val loss {val_loss:.3f}\")\n",
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" generate_and_print_sample( #G\n",
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" \tmodel, train_loader.dataset.tokenizer, device, start_context\n",
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" )\n",
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"\treturn train_losses, val_losses, track_tokens_seen"
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]
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},
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{
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"cell_type": "markdown",
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"id": "1a5cf34a",
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"metadata": {},
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"source": [
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"\t\t请注意,我们刚刚创建的 train_model_simple 函数使用了两个尚未定义的函数:evaluate_model 和 generate_and_print_sample。\n",
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"\n",
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"\t\tevaluate_model 函数对应于图 5.11 中的步骤 7。它会在每次模型更新后打印训练和验证集损失,以便我们可以评估训练是否改进了模型。\n",
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"\n",
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"\t\t更具体地说,evaluate_model函数计算训练和验证集的损失,同时确保模型处于评估模式,在计算训练和验证集的损失时禁用梯度跟踪和辍学:"
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]
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},
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{
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"cell_type": "code",
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"execution_count": null,
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"id": "42a2623b",
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"metadata": {},
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"outputs": [],
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"source": [
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"def evaluate_model(model, train_loader, val_loader, device, eval_iter):\n",
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" model.eval() #A\n",
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" with torch.no_grad(): #B\n",
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" train_loss = calc_loss_loader(train_loader, model, device, num_batches=eval_iter)\n",
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" val_loss = calc_loss_loader(val_loader, model, device, num_batches=eval_iter)\n",
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" model.train()\n",
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" return train_loss, val_loss"
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]
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},
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{
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"cell_type": "markdown",
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"id": "dc84e85a",
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"metadata": {},
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"source": [
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"\t\t与 evaluate_model 类似,generate_and_print_sample 函数是一个方便函数,我们用它来跟踪模型在训练过程中是否改进。具体而言,generate_and_print_sample 函数将文本片段 (start_context) 作为输入,将其转换为令牌 ID,并将其提供给 LLM,以使用我们之前使用的 generate_text_simple 函数生成文本示例:"
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]
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},
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{
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"cell_type": "code",
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"execution_count": null,
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"id": "599d2e5a",
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"metadata": {},
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"outputs": [],
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"source": [
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"def generate_and_print_sample(model, tokenizer, device, start_context):\n",
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" model.eval()\n",
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" context_size = model.pos_emb.weight.shape[0]\n",
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" encoded = text_to_token_ids(start_context, tokenizer).to(device)\n",
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" with torch.no_grad():\n",
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" token_ids = generate_text_simple(\n",
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" model=model, idx=encoded,\n",
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" max_new_tokens=50, context_size=context_size\n",
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" )\n",
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" decoded_text = token_ids_to_text(token_ids, tokenizer)\n",
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" print(decoded_text.replace(\"\\n\", \" \")) # Compact print format\n",
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" model.train()"
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]
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},
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{
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"cell_type": "markdown",
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"id": "5122ad4c",
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"metadata": {},
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"source": [
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"\t\t虽然 evaluate_model 函数为我们提供了模型训练进度的数字估计,但这个generate_and_print_sample文本函数提供了模型生成的具体文本示例,用于判断其在训练期间的能力。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "2feb5ef2",
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"metadata": {},
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"source": [
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"**AdamW**"
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]
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},
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{
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"cell_type": "markdown",
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"id": "3e324e55",
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"metadata": {},
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"source": [
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"\t\tAdam 优化器是训练深度神经网络的热门选择。但是,在我们的训练循环中,我们选择了 AdamW 优化器。AdamW 是 Adam 的一个变体,它改进了权重衰减方法,旨在通过惩罚更大的权重来最大限度地降低模型复杂性并防止过度拟合。这种调整使 AdamW 能够实现更有效的正则化和更好的泛化,因此经常用于 LLM 的训练。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "cfea4934",
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"metadata": {},
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"source": [
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"\t\t让我们通过使用 AdamW 优化器和我们之前定义的 train_model_simple 函数训练 10 个 epoch 的 GPTModel 实例来了解这一切。"
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]
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},
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{
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"cell_type": "code",
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"execution_count": null,
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"id": "57ca345c",
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"metadata": {},
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"outputs": [],
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"source": [
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"torch.manual_seed(123)\n",
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"model = GPTModel(GPT_CONFIG_124M)\n",
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"model.to(device)\n",
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"optimizer = torch.optim.AdamW(model.parameters(), lr=0.0004, weight_decay=0.1) #A\n",
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"num_epochs = 10\n",
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"train_losses, val_losses, tokens_seen = train_model_simple(\n",
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" model, train_loader, val_loader, optimizer, device,\n",
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" num_epochs=num_epochs, eval_freq=5, eval_iter=1,\n",
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" start_context=\"Every effort moves you\"\n",
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")"
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]
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},
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{
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"cell_type": "markdown",
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"id": "1b89adb6",
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"metadata": {},
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"source": [
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"\t\t执行 training_model_simple 功能将启动训练过程,在 MacBook Air 或类似笔记本电脑上大约需要 5 分钟才能完成。在此执行过程中打印的输出如下:"
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]
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},
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{
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"cell_type": "code",
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"execution_count": null,
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"id": "35a1d65a",
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"metadata": {},
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"outputs": [],
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"source": [
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"Ep 1 (Step 000000): Train loss 9.781, Val loss 9.933\n",
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"Ep 1 (Step 000005): Train loss 8.111, Val loss 8.339\n",
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"Every effort moves you,,,,,,,,,,,,.\n",
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"Ep 2 (Step 000010): Train loss 6.661, Val loss 7.048\n",
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"Ep 2 (Step 000015): Train loss 5.961, Val loss 6.616\n",
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"Every effort moves you, and, and, and, and, and, and, and, and, and, and, and, and, and, and, and, and, and, and, and, and, and, and,, and, and,\n",
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"[...] #A\n",
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"Ep 9 (Step 000080): Train loss 0.541, Val loss 6.393\n",
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"Every effort moves you?\" \"Yes--quite insensible to the irony. She wanted him vindicated--and by me!\" He laughed again, and threw back the window-curtains, I had the donkey. \"There were days when I\n",
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"Ep 10 (Step 000085): Train loss 0.391, Val loss 6.452\n",
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"Every effort moves you know,\" was one of the axioms he laid down"
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]
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},
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{
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"cell_type": "markdown",
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"id": "3fd848ba",
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"metadata": {},
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"source": [
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"\t\t正如我们所看到的,根据训练期间打印的结果,训练损失急剧改善,从值 9.558 开始,收敛到 0.762。该模型的语言技能有了很大的提高。在开始时,模型只能将逗号附加到开始上下文中(“Every effort moves you,,,,,,,,,,,,”)或重复单词“and”。在训练结束时,它可以生成语法正确的文本。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "3264949e",
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"metadata": {},
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"source": [
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"\t\t与训练集损失类似,我们可以看到验证损失从高处开始 (9.856),并在训练期间减少。但是,它永远不会变得像训练集损失那么小,并且在第 10 个纪元之后保持在 6.372。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "24d42eaa",
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"metadata": {},
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"source": [
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"\t\t在更详细地讨论验证损失之前,让我们创建一个简单的图,并排显示训练集和验证集损失:"
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]
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},
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{
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"cell_type": "code",
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"execution_count": null,
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"id": "1380f03f",
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"metadata": {},
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"outputs": [],
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"source": [
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"import matplotlib.pyplot as plt\n",
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"def plot_losses(epochs_seen, tokens_seen, train_losses, val_losses):\n",
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" fig, ax1 = plt.subplots(figsize=(5, 3))\n",
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" ax1.plot(epochs_seen, train_losses, label=\"Training loss\")\n",
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" ax1.plot(epochs_seen, val_losses, linestyle=\"-.\", label=\"Validation loss\")\n",
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" ax1.set_xlabel(\"Epochs\")\n",
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" ax1.set_ylabel(\"Loss\")\n",
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" ax1.legend(loc=\"upper right\")\n",
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" ax2 = ax1.twiny() #A\n",
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" ax2.plot(tokens_seen, train_losses, alpha=0) #B\n",
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" ax2.set_xlabel(\"Tokens seen\")\n",
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" fig.tight_layout()\n",
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" plt.show()\n",
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"epochs_tensor = torch.linspace(0, num_epochs, len(train_losses))\n",
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"plot_losses(epochs_tensor, tokens_seen, train_losses, val_losses)"
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]
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},
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{
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"cell_type": "markdown",
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"id": "c7aa2922",
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"metadata": {},
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"source": [
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"\t\t得到的训练和验证损失图如图 5.12 所示。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "8840557b",
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"metadata": {},
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"source": [
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"图 5.12 在训练开始时,我们观察到训练集和验证集的损失都急剧减少,这表明模型正在学习。但是,训练集损失在第二个时期之后继续减少,而验证损失停滞不前。这表明模型仍在学习,但它与第 2 期之后的训练集过度拟合。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "06408771",
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"metadata": {},
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"source": [
|
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""
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]
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},
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{
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"cell_type": "markdown",
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"id": "7a6cf1c9",
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"metadata": {},
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"source": [
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"\t\t如图 5.12 所示,在第一个时期,训练和验证损失都开始改善。然而,损失开始分化超过第二个时代。这种背离以及验证损失远大于训练损失的事实表明模型对训练数据过度拟合。我们可以通过搜索生成的文本片段来确认模型逐字记住了训练数据,例如“The Verdict”文本文件中的“对讽刺非常不敏感”。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "1ac40e02",
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"metadata": {},
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"source": [
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"\t\t这种记忆是意料之中的,因为我们正在使用一个非常非常小的训练数据集,并为多个时期训练模型。通常,通常只针对一个时期在更大的数据集上训练模型。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "157c5d36",
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"metadata": {},
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"source": [
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"\t\t如前所述,感兴趣的读者可以尝试在古腾堡计划的 60,000 本公共领域书籍上训练模型,其中不会发生这种过度拟合;详见附录B。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "3e4a2943",
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"metadata": {},
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"source": [
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"\t\t在下一节中,如图 5.13 所示,我们将探讨 LLM 采用的采样方法来减轻记忆效应,从而生成更新颖的文本。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "a9604871",
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"metadata": {},
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"source": [
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"图 5.13 我们的模型在实现训练函数后可以生成连贯的文本。但是,它经常逐字记住训练集中的段落。以下部分介绍生成更多样化输出文本的策略。"
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]
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},
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{
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"cell_type": "markdown",
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"id": "6937bae6",
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"metadata": {},
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"source": [
|
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""
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]
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},
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{
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"cell_type": "markdown",
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"id": "d963ca66",
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"metadata": {},
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"source": [
|
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"\t\t如图 5.13 所示,下一节将介绍 LLM 的文本生成策略,以减少训练数据记忆并提高 LLM 生成文本的原创性,然后我们介绍权重加载以及保存和加载来自 OpenAI 的 GPT 模型的预训练权重。"
|
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]
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Reference in New Issue
Block a user