{ "nbformat": 4, "nbformat_minor": 0, "metadata": { "colab": { "name": "keras-pretraind.ipynb", "provenance": [], "collapsed_sections": [], "include_colab_link": true }, "kernelspec": { "name": "python3", "display_name": "Python 3" } }, "cells": [ { "cell_type": "markdown", "metadata": { "id": "view-in-github", "colab_type": "text" }, "source": [ "\"Open" ] }, { "cell_type": "markdown", "metadata": { "id": "btGJnEieP4xB", "colab_type": "text" }, "source": [ "## ‘প্রি-ট্রেইনড’ মডেল এবং তার ব্যবহার" ] }, { "cell_type": "markdown", "metadata": { "id": "d96oHjcPPz1B", "colab_type": "text" }, "source": [ "ডিপ লার্নিং এর যে অংশটা পৃথিবী কাঁপাচ্ছে সেটা হচ্ছে ‘ট্রান্সফার লার্নিং’। তবে ‘ট্রান্সফার লার্নিং’ শেখার আগে আমাদের জানতে হবে ‘প্রি-ট্রেইনড’ মডেল কি? কেন ‘প্রি-ট্রেইনড’ মডেলের দরকার পড়লো? তার আগে একটা প্রশ্ন করি? আমরা যখন বিভিন্ন মডেলকে ট্রেইন করছিলাম, আপনি দেখছেন যে মডেলগুলো ট্রেইন করতে বেশ সময় লাগছে। বড় বড় মডেল ট্রেইন করতে পুরো দিন - অনেক সময় সপ্তাহ লেগে যায়। এখন যদি আমাদেরকে প্রতিবারই মডেলকে ট্রেইন করে নিতে হয় কাজের শুরুতে - তাহলে মডেল থেকে আউটপুট নিয়ে কাজ করবো কখন? এতে প্রচুর সময়ের অপচয় হবে। \n", "\n", "এর পাশাপাশি আমাদের কাছে সেই মডেলকে ‘ট্রেইন’ করার মত সে ধরনের রিসোর্স নাও থাকতে পারে। এই ধরনের কম্পিউটেশনাল হেভি কাজের জন্য ছোট ছোট মেশিন - যেমন মোবাইল ফোন এবং খুব অল্প প্রসেসর যুক্ত ডিভাইস যেমন ‘স্মার্ট-ওয়াচ’, ‘হিট সেন্সর’, গুগল কোরালের মতো ডিভাইস - সেখানে মেশিন লার্নিং ব্যবহার করা সম্ভব হতো না যদি আমাদের কাছে এই ধরনের ‘প্রি-ট্রেইনড’ মডেল প্রযুক্তি না আসতো। মডেল ট্রেইন হবে বিশাল বিশাল মেশিনে, কিন্তু দরকারের ইনফারেন্স চলবে এই ছোট্ট ছোট্ট ডিভাইসে। একটা ‘প্রি-ট্রেইনড’ মডেল হচ্ছে এমন একটা স্টোরকৃত, (মেমোরিতে ‘সেভ’ করা) নিউরাল নেটওয়ার্ক এর একটা কপি যা আগে ট্রেইন করা হয়েছে বিশাল ডাটাসেটের বিলিয়ন ফিচারের ওপর। \n", "\n", "এর অর্থ হচ্ছে কোটি কোটি ফিচার সমৃদ্ধ ডাটাসেটের উপর ট্রেইন করা মডেল চালানো যাবে আমাদের হাতের কাছের লো-কম্পিউটেশন সম্মৃদ্ধ ডিভাইসগুলোর উপর। যেহেতু এই মডেলগুলো আগে থেকে তাদের ফিচার ম্যাপগুলো শিখছে, সে কারণে এই প্রি-ট্রেইনড মডেলগুলোকে চালানো যাচ্ছে আগের ট্রেনিং এর অংশের পর থেকে। \n", "\n", "## ‘ট্রান্সফার লার্নিং’ কেন?\n", "\n", "এই ‘ট্রান্সফার লার্নিং’ (সামনে বলছি) এর জন্য যখন একটা মডেলকে ট্রেইন করা হয়েছিল একটা কাজের জন্য - এখন সেটাকে ব্যবহার করা যাচ্ছে অন্যান্য কাজে। ব্যাপারটা এরকম যে - একটা মডেল, যাকে নির্দিষ্ট একটা কাজের জন্য ট্রেইন করা হলেও সেটাকে নতুন করে অন্য কাজের জন্য তার প্যারামিটারগুলোকে ‘এডজাস্ট’ এবং ‘ফাইন টিউনিং’ করা যাচ্ছে একেবারে গোড়া থেকে নতুন মডেল ট্রেইন না করেও। এই যে একটা মডেলকে ট্রেইন করা হয়েছে একটা কাজের জন্য, সেটাকে এখন ব্যবহার করা যাচ্ছে অনান্য কাজের জন্য সেটাকে আমরা বলতে পারি ‘প্রি-ট্রেইনড’ মডেল। \n", "\n", "আমাদের ‘কেরাস’ এ এই ‘প্রি-ট্রেইনড’ মডেলগুলো আছে ‘অ্যাপ্লিকেশন’ হিসেবে। ধরা যাক একটা ‘ইমেজনেট’ ডাটাসেটে যে অ্যাপ্লিকেশন আছে - সে প্রায় ১০০০ ক্যাটাগরি বা ক্লাসে বিভিন্ন ইমেজকে ক্লাসিফাই করতে পারে। এই ‘প্রি-ট্রেইনড’ মডেলগুলো আছে দু'ভাগে, একটা মডেল আর্কিটেকচার হিসেবে, আরেকটা মডেল ওয়েট এ। মডেল আর্কিটেকচারগুলো সাধারণতঃ ডাউনলোড হয়ে থাকে কেরাস ইনস্টলেশনের সময়। এখন কেরাস কিন্তু টেন্সর-ফ্লো এর ইন্টেগ্রাল পার্ট। তবে মডেলের ওয়েটগুলো অনেক বড় বড় সাইজের ফাইল হওয়াতে সেটা ডাউনলোড হয় যখন আমরা একটা মডেলকে ইনস্ট্যান্সিয়েট করি।\n", "\n", " যেহেতু এই ‘প্রি-ট্রেইনড’ মডেলগুলো পাওয়া যায় তাদের ‘প্রি-ট্রেইনড’ ওয়েট সহ, এ কারণেই এই মডেলগুলোকে ব্যবহার করা যায় বিভিন্ন ‘আউট অফ দ্যা বক্স’ প্রেডিকশন অথবা ফিচার এক্সট্রাকশন এবং নতুন একটা মডেলের ফাইন টিউনিং এ। আবারো বলছি, আমরা এই মডেলগুলোকে যে কাজের জন্য ট্রেইন করা হয়েছিল সেটা না করে অন্য কাজে ব্যবহার করার ধারণাটাই হচ্ছে ট্রান্সফার লার্নিং। সেটা নিয়ে বিস্তারিত আলাপ করব সামনের চ্যাপ্টারে।\n" ] }, { "cell_type": "code", "metadata": { "id": "2zReyor5EJgz", "colab_type": "code", "colab": {} }, "source": [ "# যেহেতু কেরাস এখন টেন্সর-ফ্লো এর ইন্টিগ্রাল পার্ট, একে টেন্সর-ফ্লো থেকে নিয়ে আসছি\n", "\n", "from tensorflow.keras.applications.resnet50 import ResNet50\n", "from tensorflow.keras.preprocessing import image\n", "from tensorflow.keras.applications.resnet50 import preprocess_input\n", "import numpy as np" ], "execution_count": 0, "outputs": [] }, { "cell_type": "code", "metadata": { "id": "6ZsazC1ogv5l", "colab_type": "code", "outputId": "09aed4cc-b883-4813-81ac-bebe747682a8", "colab": { "base_uri": "https://localhost:8080/", "height": 128 } }, "source": [ "# আমরা ওয়েট সহ মডেলকে ইনস্ট্যান্সিয়েট করছি\n", "\n", "model = ResNet50(weights='imagenet')\n", "# যদি Inception_V3 মডেল লোড করতাম\n", "# from tensorflow.keras.applications import inception_v3\n", "# inception_model = inception_v3.InceptionV3(weights=’imagenet’)" ], "execution_count": 0, "outputs": [ { "output_type": "stream", "text": [ "WARNING:tensorflow:From /usr/local/lib/python3.6/dist-packages/tensorflow_core/python/ops/resource_variable_ops.py:1630: calling BaseResourceVariable.__init__ (from tensorflow.python.ops.resource_variable_ops) with constraint is deprecated and will be removed in a future version.\n", "Instructions for updating:\n", "If using Keras pass *_constraint arguments to layers.\n", "Downloading data from https://github.com/keras-team/keras-applications/releases/download/resnet/resnet50_weights_tf_dim_ordering_tf_kernels.h5\n", "102973440/102967424 [==============================] - 3s 0us/step\n" ], "name": "stdout" } ] }, { "cell_type": "code", "metadata": { "id": "dUFAxm4xThWa", "colab_type": "code", "outputId": "8f2d522f-a8c2-4153-c394-bbd0552f5bd4", "colab": { "base_uri": "https://localhost:8080/", "height": 1000 } }, "source": [ "# বিশাল বড় মডেল, দেখুন প্যারামিটারের সংখ্যা ২ কোটি ৫৬ লাখের ওপর\n", "\n", "model.summary()" ], "execution_count": 0, "outputs": [ { "output_type": "stream", "text": [ "Model: \"resnet50\"\n", "__________________________________________________________________________________________________\n", "Layer (type) Output Shape Param # Connected to \n", "==================================================================================================\n", "input_1 (InputLayer) [(None, 224, 224, 3) 0 \n", "__________________________________________________________________________________________________\n", "conv1_pad (ZeroPadding2D) (None, 230, 230, 3) 0 input_1[0][0] \n", "__________________________________________________________________________________________________\n", "conv1_conv (Conv2D) (None, 112, 112, 64) 9472 conv1_pad[0][0] \n", "__________________________________________________________________________________________________\n", "conv1_bn (BatchNormalization) (None, 112, 112, 64) 256 conv1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv1_relu (Activation) (None, 112, 112, 64) 0 conv1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "pool1_pad (ZeroPadding2D) (None, 114, 114, 64) 0 conv1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "pool1_pool (MaxPooling2D) (None, 56, 56, 64) 0 pool1_pad[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block1_1_conv (Conv2D) (None, 56, 56, 64) 4160 pool1_pool[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block1_1_bn (BatchNormali (None, 56, 56, 64) 256 conv2_block1_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block1_1_relu (Activation (None, 56, 56, 64) 0 conv2_block1_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block1_2_conv (Conv2D) (None, 56, 56, 64) 36928 conv2_block1_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block1_2_bn (BatchNormali (None, 56, 56, 64) 256 conv2_block1_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block1_2_relu (Activation (None, 56, 56, 64) 0 conv2_block1_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block1_0_conv (Conv2D) (None, 56, 56, 256) 16640 pool1_pool[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block1_3_conv (Conv2D) (None, 56, 56, 256) 16640 conv2_block1_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block1_0_bn (BatchNormali (None, 56, 56, 256) 1024 conv2_block1_0_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block1_3_bn (BatchNormali (None, 56, 56, 256) 1024 conv2_block1_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block1_add (Add) (None, 56, 56, 256) 0 conv2_block1_0_bn[0][0] \n", " conv2_block1_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block1_out (Activation) (None, 56, 56, 256) 0 conv2_block1_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block2_1_conv (Conv2D) (None, 56, 56, 64) 16448 conv2_block1_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block2_1_bn (BatchNormali (None, 56, 56, 64) 256 conv2_block2_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block2_1_relu (Activation (None, 56, 56, 64) 0 conv2_block2_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block2_2_conv (Conv2D) (None, 56, 56, 64) 36928 conv2_block2_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block2_2_bn (BatchNormali (None, 56, 56, 64) 256 conv2_block2_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block2_2_relu (Activation (None, 56, 56, 64) 0 conv2_block2_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block2_3_conv (Conv2D) (None, 56, 56, 256) 16640 conv2_block2_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block2_3_bn (BatchNormali (None, 56, 56, 256) 1024 conv2_block2_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block2_add (Add) (None, 56, 56, 256) 0 conv2_block1_out[0][0] \n", " conv2_block2_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block2_out (Activation) (None, 56, 56, 256) 0 conv2_block2_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block3_1_conv (Conv2D) (None, 56, 56, 64) 16448 conv2_block2_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block3_1_bn (BatchNormali (None, 56, 56, 64) 256 conv2_block3_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block3_1_relu (Activation (None, 56, 56, 64) 0 conv2_block3_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block3_2_conv (Conv2D) (None, 56, 56, 64) 36928 conv2_block3_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block3_2_bn (BatchNormali (None, 56, 56, 64) 256 conv2_block3_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block3_2_relu (Activation (None, 56, 56, 64) 0 conv2_block3_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block3_3_conv (Conv2D) (None, 56, 56, 256) 16640 conv2_block3_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block3_3_bn (BatchNormali (None, 56, 56, 256) 1024 conv2_block3_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block3_add (Add) (None, 56, 56, 256) 0 conv2_block2_out[0][0] \n", " conv2_block3_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv2_block3_out (Activation) (None, 56, 56, 256) 0 conv2_block3_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block1_1_conv (Conv2D) (None, 28, 28, 128) 32896 conv2_block3_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block1_1_bn (BatchNormali (None, 28, 28, 128) 512 conv3_block1_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block1_1_relu (Activation (None, 28, 28, 128) 0 conv3_block1_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block1_2_conv (Conv2D) (None, 28, 28, 128) 147584 conv3_block1_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block1_2_bn (BatchNormali (None, 28, 28, 128) 512 conv3_block1_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block1_2_relu (Activation (None, 28, 28, 128) 0 conv3_block1_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block1_0_conv (Conv2D) (None, 28, 28, 512) 131584 conv2_block3_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block1_3_conv (Conv2D) (None, 28, 28, 512) 66048 conv3_block1_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block1_0_bn (BatchNormali (None, 28, 28, 512) 2048 conv3_block1_0_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block1_3_bn (BatchNormali (None, 28, 28, 512) 2048 conv3_block1_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block1_add (Add) (None, 28, 28, 512) 0 conv3_block1_0_bn[0][0] \n", " conv3_block1_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block1_out (Activation) (None, 28, 28, 512) 0 conv3_block1_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block2_1_conv (Conv2D) (None, 28, 28, 128) 65664 conv3_block1_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block2_1_bn (BatchNormali (None, 28, 28, 128) 512 conv3_block2_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block2_1_relu (Activation (None, 28, 28, 128) 0 conv3_block2_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block2_2_conv (Conv2D) (None, 28, 28, 128) 147584 conv3_block2_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block2_2_bn (BatchNormali (None, 28, 28, 128) 512 conv3_block2_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block2_2_relu (Activation (None, 28, 28, 128) 0 conv3_block2_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block2_3_conv (Conv2D) (None, 28, 28, 512) 66048 conv3_block2_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block2_3_bn (BatchNormali (None, 28, 28, 512) 2048 conv3_block2_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block2_add (Add) (None, 28, 28, 512) 0 conv3_block1_out[0][0] \n", " conv3_block2_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block2_out (Activation) (None, 28, 28, 512) 0 conv3_block2_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block3_1_conv (Conv2D) (None, 28, 28, 128) 65664 conv3_block2_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block3_1_bn (BatchNormali (None, 28, 28, 128) 512 conv3_block3_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block3_1_relu (Activation (None, 28, 28, 128) 0 conv3_block3_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block3_2_conv (Conv2D) (None, 28, 28, 128) 147584 conv3_block3_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block3_2_bn (BatchNormali (None, 28, 28, 128) 512 conv3_block3_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block3_2_relu (Activation (None, 28, 28, 128) 0 conv3_block3_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block3_3_conv (Conv2D) (None, 28, 28, 512) 66048 conv3_block3_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block3_3_bn (BatchNormali (None, 28, 28, 512) 2048 conv3_block3_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block3_add (Add) (None, 28, 28, 512) 0 conv3_block2_out[0][0] \n", " conv3_block3_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block3_out (Activation) (None, 28, 28, 512) 0 conv3_block3_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block4_1_conv (Conv2D) (None, 28, 28, 128) 65664 conv3_block3_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block4_1_bn (BatchNormali (None, 28, 28, 128) 512 conv3_block4_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block4_1_relu (Activation (None, 28, 28, 128) 0 conv3_block4_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block4_2_conv (Conv2D) (None, 28, 28, 128) 147584 conv3_block4_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block4_2_bn (BatchNormali (None, 28, 28, 128) 512 conv3_block4_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block4_2_relu (Activation (None, 28, 28, 128) 0 conv3_block4_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block4_3_conv (Conv2D) (None, 28, 28, 512) 66048 conv3_block4_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block4_3_bn (BatchNormali (None, 28, 28, 512) 2048 conv3_block4_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block4_add (Add) (None, 28, 28, 512) 0 conv3_block3_out[0][0] \n", " conv3_block4_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv3_block4_out (Activation) (None, 28, 28, 512) 0 conv3_block4_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block1_1_conv (Conv2D) (None, 14, 14, 256) 131328 conv3_block4_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block1_1_bn (BatchNormali (None, 14, 14, 256) 1024 conv4_block1_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block1_1_relu (Activation (None, 14, 14, 256) 0 conv4_block1_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block1_2_conv (Conv2D) (None, 14, 14, 256) 590080 conv4_block1_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block1_2_bn (BatchNormali (None, 14, 14, 256) 1024 conv4_block1_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block1_2_relu (Activation (None, 14, 14, 256) 0 conv4_block1_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block1_0_conv (Conv2D) (None, 14, 14, 1024) 525312 conv3_block4_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block1_3_conv (Conv2D) (None, 14, 14, 1024) 263168 conv4_block1_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block1_0_bn (BatchNormali (None, 14, 14, 1024) 4096 conv4_block1_0_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block1_3_bn (BatchNormali (None, 14, 14, 1024) 4096 conv4_block1_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block1_add (Add) (None, 14, 14, 1024) 0 conv4_block1_0_bn[0][0] \n", " conv4_block1_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block1_out (Activation) (None, 14, 14, 1024) 0 conv4_block1_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block2_1_conv (Conv2D) (None, 14, 14, 256) 262400 conv4_block1_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block2_1_bn (BatchNormali (None, 14, 14, 256) 1024 conv4_block2_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block2_1_relu (Activation (None, 14, 14, 256) 0 conv4_block2_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block2_2_conv (Conv2D) (None, 14, 14, 256) 590080 conv4_block2_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block2_2_bn (BatchNormali (None, 14, 14, 256) 1024 conv4_block2_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block2_2_relu (Activation (None, 14, 14, 256) 0 conv4_block2_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block2_3_conv (Conv2D) (None, 14, 14, 1024) 263168 conv4_block2_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block2_3_bn (BatchNormali (None, 14, 14, 1024) 4096 conv4_block2_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block2_add (Add) (None, 14, 14, 1024) 0 conv4_block1_out[0][0] \n", " conv4_block2_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block2_out (Activation) (None, 14, 14, 1024) 0 conv4_block2_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block3_1_conv (Conv2D) (None, 14, 14, 256) 262400 conv4_block2_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block3_1_bn (BatchNormali (None, 14, 14, 256) 1024 conv4_block3_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block3_1_relu (Activation (None, 14, 14, 256) 0 conv4_block3_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block3_2_conv (Conv2D) (None, 14, 14, 256) 590080 conv4_block3_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block3_2_bn (BatchNormali (None, 14, 14, 256) 1024 conv4_block3_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block3_2_relu (Activation (None, 14, 14, 256) 0 conv4_block3_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block3_3_conv (Conv2D) (None, 14, 14, 1024) 263168 conv4_block3_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block3_3_bn (BatchNormali (None, 14, 14, 1024) 4096 conv4_block3_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block3_add (Add) (None, 14, 14, 1024) 0 conv4_block2_out[0][0] \n", " conv4_block3_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block3_out (Activation) (None, 14, 14, 1024) 0 conv4_block3_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block4_1_conv (Conv2D) (None, 14, 14, 256) 262400 conv4_block3_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block4_1_bn (BatchNormali (None, 14, 14, 256) 1024 conv4_block4_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block4_1_relu (Activation (None, 14, 14, 256) 0 conv4_block4_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block4_2_conv (Conv2D) (None, 14, 14, 256) 590080 conv4_block4_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block4_2_bn (BatchNormali (None, 14, 14, 256) 1024 conv4_block4_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block4_2_relu (Activation (None, 14, 14, 256) 0 conv4_block4_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block4_3_conv (Conv2D) (None, 14, 14, 1024) 263168 conv4_block4_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block4_3_bn (BatchNormali (None, 14, 14, 1024) 4096 conv4_block4_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block4_add (Add) (None, 14, 14, 1024) 0 conv4_block3_out[0][0] \n", " conv4_block4_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block4_out (Activation) (None, 14, 14, 1024) 0 conv4_block4_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block5_1_conv (Conv2D) (None, 14, 14, 256) 262400 conv4_block4_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block5_1_bn (BatchNormali (None, 14, 14, 256) 1024 conv4_block5_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block5_1_relu (Activation (None, 14, 14, 256) 0 conv4_block5_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block5_2_conv (Conv2D) (None, 14, 14, 256) 590080 conv4_block5_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block5_2_bn (BatchNormali (None, 14, 14, 256) 1024 conv4_block5_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block5_2_relu (Activation (None, 14, 14, 256) 0 conv4_block5_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block5_3_conv (Conv2D) (None, 14, 14, 1024) 263168 conv4_block5_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block5_3_bn (BatchNormali (None, 14, 14, 1024) 4096 conv4_block5_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block5_add (Add) (None, 14, 14, 1024) 0 conv4_block4_out[0][0] \n", " conv4_block5_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block5_out (Activation) (None, 14, 14, 1024) 0 conv4_block5_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block6_1_conv (Conv2D) (None, 14, 14, 256) 262400 conv4_block5_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block6_1_bn (BatchNormali (None, 14, 14, 256) 1024 conv4_block6_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block6_1_relu (Activation (None, 14, 14, 256) 0 conv4_block6_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block6_2_conv (Conv2D) (None, 14, 14, 256) 590080 conv4_block6_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block6_2_bn (BatchNormali (None, 14, 14, 256) 1024 conv4_block6_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block6_2_relu (Activation (None, 14, 14, 256) 0 conv4_block6_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block6_3_conv (Conv2D) (None, 14, 14, 1024) 263168 conv4_block6_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block6_3_bn (BatchNormali (None, 14, 14, 1024) 4096 conv4_block6_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block6_add (Add) (None, 14, 14, 1024) 0 conv4_block5_out[0][0] \n", " conv4_block6_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv4_block6_out (Activation) (None, 14, 14, 1024) 0 conv4_block6_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block1_1_conv (Conv2D) (None, 7, 7, 512) 524800 conv4_block6_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block1_1_bn (BatchNormali (None, 7, 7, 512) 2048 conv5_block1_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block1_1_relu (Activation (None, 7, 7, 512) 0 conv5_block1_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block1_2_conv (Conv2D) (None, 7, 7, 512) 2359808 conv5_block1_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block1_2_bn (BatchNormali (None, 7, 7, 512) 2048 conv5_block1_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block1_2_relu (Activation (None, 7, 7, 512) 0 conv5_block1_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block1_0_conv (Conv2D) (None, 7, 7, 2048) 2099200 conv4_block6_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block1_3_conv (Conv2D) (None, 7, 7, 2048) 1050624 conv5_block1_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block1_0_bn (BatchNormali (None, 7, 7, 2048) 8192 conv5_block1_0_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block1_3_bn (BatchNormali (None, 7, 7, 2048) 8192 conv5_block1_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block1_add (Add) (None, 7, 7, 2048) 0 conv5_block1_0_bn[0][0] \n", " conv5_block1_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block1_out (Activation) (None, 7, 7, 2048) 0 conv5_block1_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block2_1_conv (Conv2D) (None, 7, 7, 512) 1049088 conv5_block1_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block2_1_bn (BatchNormali (None, 7, 7, 512) 2048 conv5_block2_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block2_1_relu (Activation (None, 7, 7, 512) 0 conv5_block2_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block2_2_conv (Conv2D) (None, 7, 7, 512) 2359808 conv5_block2_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block2_2_bn (BatchNormali (None, 7, 7, 512) 2048 conv5_block2_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block2_2_relu (Activation (None, 7, 7, 512) 0 conv5_block2_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block2_3_conv (Conv2D) (None, 7, 7, 2048) 1050624 conv5_block2_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block2_3_bn (BatchNormali (None, 7, 7, 2048) 8192 conv5_block2_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block2_add (Add) (None, 7, 7, 2048) 0 conv5_block1_out[0][0] \n", " conv5_block2_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block2_out (Activation) (None, 7, 7, 2048) 0 conv5_block2_add[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block3_1_conv (Conv2D) (None, 7, 7, 512) 1049088 conv5_block2_out[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block3_1_bn (BatchNormali (None, 7, 7, 512) 2048 conv5_block3_1_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block3_1_relu (Activation (None, 7, 7, 512) 0 conv5_block3_1_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block3_2_conv (Conv2D) (None, 7, 7, 512) 2359808 conv5_block3_1_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block3_2_bn (BatchNormali (None, 7, 7, 512) 2048 conv5_block3_2_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block3_2_relu (Activation (None, 7, 7, 512) 0 conv5_block3_2_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block3_3_conv (Conv2D) (None, 7, 7, 2048) 1050624 conv5_block3_2_relu[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block3_3_bn (BatchNormali (None, 7, 7, 2048) 8192 conv5_block3_3_conv[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block3_add (Add) (None, 7, 7, 2048) 0 conv5_block2_out[0][0] \n", " conv5_block3_3_bn[0][0] \n", "__________________________________________________________________________________________________\n", "conv5_block3_out (Activation) (None, 7, 7, 2048) 0 conv5_block3_add[0][0] \n", "__________________________________________________________________________________________________\n", "avg_pool (GlobalAveragePooling2 (None, 2048) 0 conv5_block3_out[0][0] \n", "__________________________________________________________________________________________________\n", "probs (Dense) (None, 1000) 2049000 avg_pool[0][0] \n", "==================================================================================================\n", "Total params: 25,636,712\n", "Trainable params: 25,583,592\n", "Non-trainable params: 53,120\n", "__________________________________________________________________________________________________\n" ], "name": "stdout" } ] }, { "cell_type": "code", "metadata": { "id": "PxWnzVQbQnYG", "colab_type": "code", "colab": {} }, "source": [ "# ইন্টারনেট থেকে যেকোন একটা ছবি খুঁজে বের করে\n", "# আপলোড করুন গুগল কোলাব অথবা জুপিটার নোটবুকে\n", "# আমার প্রিয় হাতি আমার সাথী\n", "\n", "img_path = 'elephant.jpeg'" ], "execution_count": 0, "outputs": [] }, { "cell_type": "code", "metadata": { "id": "Ya9SNMjbQnkl", "colab_type": "code", "colab": {} }, "source": [ "# load_img() ফাংশন দিয়ে একটা স্পেসিফিক পিক্সেল বলে দিচ্ছি\n", "# কারণ, ইন্টারনেটের ছবির রেজল্যুশন নিয়ে মাথা ঘামাতে চাই না \n", "\n", "img = image.load_img(img_path, target_size=(224, 224))" ], "execution_count": 0, "outputs": [] }, { "cell_type": "code", "metadata": { "id": "AqKV-lMpRkAf", "colab_type": "code", "outputId": "ae4545d3-7bc7-43f4-8f40-bae9da9e2d40", "colab": { "base_uri": "https://localhost:8080/", "height": 241 } }, "source": [ "img" ], "execution_count": 0, "outputs": [ { "output_type": "execute_result", "data": { "image/png": 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6cu18uHx2jRIxbqwXkoitNkl7x/peFoXQ8nK72Q8nqZQ1I17Nr663wDAXUinyMXq5Wq3e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"text/plain": [ "" ] }, "metadata": { "tags": [] }, "execution_count": 6 } ] }, { "cell_type": "code", "metadata": { "id": "P3o9BNRgR6mK", "colab_type": "code", "colab": {} }, "source": [ "# আমরা এই ছবিটাকে image_to_array() ফাংশন দিয়ে \n", "# নামপাই ফরম্যাট (উচ্চতা, দৈর্ঘ্য়, কালার চ্যানেল ৩)এ পাল্টে নিচ্ছি\n", "\n", "img_array = image.img_to_array(img)" ], "execution_count": 0, "outputs": [] }, { "cell_type": "code", "metadata": { "id": "QuAGEuoQR9nb", "colab_type": "code", "outputId": "336e9f56-bf5d-4c49-9f96-03d4eeb9d265", "colab": { "base_uri": "https://localhost:8080/", "height": 35 } }, "source": [ "img_array.shape" ], "execution_count": 0, "outputs": [ { "output_type": "execute_result", "data": { "text/plain": [ "(224, 224, 3)" ] }, "metadata": { "tags": [] }, "execution_count": 8 } ] }, { "cell_type": "code", "metadata": { "id": "ZcwSnv3nQ5Mr", "colab_type": "code", "colab": {} }, "source": [ "# ইনপুট ইমেজকে ৪ ডাইমেনশন টেন্সরে পাল্টে নিচ্ছি \n", "# (ব্যাচসাইজ, উচ্চতা, দৈর্ঘ্য়, কালার চ্যানেল)\n", "\n", "img_tensor = np.expand_dims(img_array, axis=0)" ], "execution_count": 0, "outputs": [] }, { "cell_type": "code", "metadata": { "id": "DI3AKhpthvfw", "colab_type": "code", "outputId": "0cc917c5-f4b4-4a62-b407-f6b3d634ea33", "colab": { "base_uri": "https://localhost:8080/", "height": 287 } }, "source": [ "# প্রি-প্রসেস ছবিটা দেখি\n", "import matplotlib.pyplot as plt\n", "plt.imshow(np.uint8(img_tensor[0]))" ], "execution_count": 0, "outputs": [ { "output_type": "execute_result", "data": { "text/plain": [ "" ] }, "metadata": { "tags": [] }, "execution_count": 13 }, { "output_type": "display_data", "data": { "image/png": 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qSyEtKQX645FROnKE0/U5wzAQUmQ47NFRoqVABIg+oLUiikWQIwuFbmu00Mzz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\nYII=\n", 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" ] }, "metadata": { "tags": [] } } ] }, { "cell_type": "code", "metadata": { "id": "I2mBchAbVGcC", "colab_type": "code", "colab": {} }, "source": [ "# আমরা ইমেজটাকে নরমালাইজ করি, কিছু কিছু ইমেজের \n", "# ভ্যালু ০ থেকে ১ অথবা -১ থেকে +১ বা ক্যাফে স্টাইলে থাকে,\n", "# ইমেজনেট ডেটা থেকে গড় বিয়োগ দিয়ে নরমালাইজ করা যায়\n", "\n", "x = preprocess_input(img_tensor)" ], "execution_count": 0, "outputs": [] }, { "cell_type": "code", "metadata": { "id": "BZDVcr-4Q6CO", "colab_type": "code", "colab": {} }, "source": [ "preds = model.predict(x)" ], "execution_count": 0, "outputs": [] }, { "cell_type": "code", "metadata": { "id": "ENOSSXifWqHq", "colab_type": "code", "outputId": "9d076a45-8ec4-4db2-9076-a777670d6333", "colab": { "base_uri": "https://localhost:8080/", "height": 35 } }, "source": [ "preds.shape" ], "execution_count": 0, "outputs": [ { "output_type": "execute_result", "data": { "text/plain": [ "(1, 1000)" ] }, "metadata": { "tags": [] }, "execution_count": 16 } ] }, { "cell_type": "code", "metadata": { "id": "30n9fEkbZlWe", "colab_type": "code", "colab": {} }, "source": [ "from tensorflow.keras.applications.resnet50 import decode_predictions as dpred" ], "execution_count": 0, "outputs": [] }, { "cell_type": "code", "metadata": { "id": "PFOKx-dhXW7U", "colab_type": "code", "outputId": "d59623a5-1452-432c-9b39-bb7b0898ae8f", "colab": { "base_uri": "https://localhost:8080/", "height": 108 } }, "source": [ "dpred(preds, top=3)[0]" ], "execution_count": 0, "outputs": [ { "output_type": "stream", "text": [ "Downloading data from https://storage.googleapis.com/download.tensorflow.org/data/imagenet_class_index.json\n", "40960/35363 [==================================] - 0s 0us/step\n" ], "name": "stdout" }, { "output_type": "execute_result", "data": { "text/plain": [ "[('n02504458', 'African_elephant', 0.6746441),\n", " ('n01871265', 'tusker', 0.1713463),\n", " ('n02504013', 'Indian_elephant', 0.1536747)]" ] }, "metadata": { "tags": [] }, "execution_count": 18 } ] }, { "cell_type": "markdown", "metadata": { "id": "gugSfGie5jN0", "colab_type": "text" }, "source": [ "দেখুন, ঠিকই বের করে ফেলেছে যে এটা হাতি। তিনটাই বিভিন্ন জাতের হাতি। এখন আপনি গাড়ি, ঘোড়া ইত্যাদি আপলোড করে দেখুন মডেল চিনতে পারে কিনা?" ] }, { "cell_type": "markdown", "metadata": { "id": "-QmDt8A4WlFI", "colab_type": "text" }, "source": [ "## ‘প্রি-ট্রেইনড’ মডেল থেকে ফিচার এক্সট্রাকশন\n", "\n", "আরেকটা উদাহরন দেখি, কেরাস এর মূল সাইটে এরকম অনেকগুলো উদাহরণ আছে। যদিও কেরাস এখন টেন্সর-ফ্লো এর সাথে চলে এসেছে, তবে কেরাসের মূল সাইটে অসাধারণ অনেক ডকুমেন্টেশন আছে, যা দরকার হবে সামনে।" ] }, { "cell_type": "code", "metadata": { "id": "4HCVdLgJgHE0", "colab_type": "code", "colab": {} }, "source": [ "from tensorflow.keras.applications.vgg16 import VGG16\n", "from tensorflow.keras.preprocessing import image\n", "from tensorflow.keras.applications.vgg16 import preprocess_input\n", "import numpy as np\n", "\n", "model = VGG16(weights='imagenet', include_top=False)\n", "\n", "img_path = 'elephant.jpeg'\n", "img = image.load_img(img_path, target_size=(224, 224))\n", "x = image.img_to_array(img)\n", "x = np.expand_dims(x, axis=0)\n", "x = preprocess_input(x)\n", "\n", "features = model.predict(x)" ], "execution_count": 0, "outputs": [] }, { "cell_type": "code", "metadata": { "id": "6Qvpg4vPgnXE", "colab_type": "code", "outputId": "0c8a6e9d-ccb4-49c9-c294-07028ff5f36d", "colab": { "base_uri": "https://localhost:8080/", "height": 1000 } }, "source": [ "print(features)" ], "execution_count": 0, "outputs": [ { "output_type": "stream", "text": [ "[[[[ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " ...\n", " [ 0. 0. 38.153477 ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 29.606695 ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]]\n", "\n", " [[ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 19.337175 ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 16.544449 ... 0. 0.\n", " 0. ]\n", " ...\n", " [ 0. 0. 45.221672 ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 33.91113 ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]]\n", "\n", " [[ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 51.222126 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 86.699104 0.\n", " 18.912678 ]\n", " ...\n", " [ 0. 0. 3.1303995 ... 0. 0.\n", " 4.8743305]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]]\n", "\n", " ...\n", "\n", " [[ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 24.347176 0.\n", " 0. ]\n", " [ 0. 0. 2.2259388 ... 40.89634 0.\n", " 0. ]\n", " ...\n", " [ 0. 0. 7.121018 ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 4.351259 ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]]\n", "\n", " [[ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " ...\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]]\n", "\n", " [[ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " ...\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]\n", " [ 0. 0. 0. ... 0. 0.\n", " 0. ]]]]\n" ], "name": "stdout" } ] }, { "cell_type": "markdown", "metadata": { "id": "ioTsV8ReM6YH", "colab_type": "text" }, "source": [ "সামনের চ্যাপ্টারে আমরা আলাপ করবো ট্রান্সফার লার্নিং নিয়ে। " ] } ] }