By completing this course, learners will be able to preprocess image and text datasets, build and evaluate a deep learning model, and deploy a fully functional image captioning application. They will gain hands-on experience in applying tokenization, feature extraction, CNN-RNN architectures, and BLEU score evaluation for accurate caption generation.
This course uniquely bridges computer vision and natural language processing, enabling learners to generate meaningful captions for social media images. Unlike traditional AI tutorials, it not only covers dataset preparation and neural network modeling but also demonstrates how to create an interactive Streamlit app and deploy it on AWS EC2 for real-world accessibility.
Learners benefit by acquiring both technical depth and practical deployment skills, preparing them for roles in AI development, machine learning engineering, and applied data science. By the end, they will confidently design, test, and launch their own automatic image captioning systems that integrate seamlessly into modern applications.
This module introduces learners to the foundations of automatic image captioning by preparing both text and image data. Learners will explore how to access datasets, clean and preprocess captions, and extract meaningful features from images. By the end of this module, they will be able to create structured datasets that combine textual and visual inputs, ensuring data readiness for deep learning models.
涵盖的内容
9个视频4个作业
显示有关单元内容的信息
9个视频•总计68分钟
Introduction to Course•5分钟
Import the Libraries•9分钟
Accessing the Caption Dataset for Training•5分钟
Accessing the Image DataSet for Training•2分钟
Preprocessing the Text Data•11分钟
Pre-Process and Load Captions Data•11分钟
Loading the Captions for Training and Test Data•4分钟
Preprocessing of Image Data•11分钟
Loading Features for Train and Test Dataset•9分钟
4个作业•总计60分钟
Introduction and Dataset Access•10分钟
Text Data Preprocessing•10分钟
Image Data Preparation•10分钟
Granded - Data Preparation and Preprocessing•30分钟
Model Development, Evaluation, and Deployment
第 2 单元•小时 后完成
单元详情
This module guides learners through the complete model-building lifecycle for automatic image captioning. They will design and train deep learning models, evaluate their performance, and integrate them into an interactive Streamlit application. Finally, learners will test and deploy their app on cloud infrastructure, making their captioning system accessible for real-world use.
涵盖的内容
9个视频4个作业
显示有关单元内容的信息
9个视频•总计68分钟
Text Tokenization and Sequence Text•11分钟
Data Generators•11分钟
Define the Model•3分钟
Evaluation of Model•9分钟
Test the Model•8分钟
Create Streamlit App•10分钟
Streamlit Prediction•6分钟
Test Streamlit App•3分钟
Deploy Streamlit on AWS EC2 Instance•9分钟
4个作业•总计60分钟
Text Processing and Data Generators•10分钟
Building and Evaluating the Model•10分钟
Streamlit Application and Deployment•10分钟
Graded - Model Development, Evaluation, and Deployment•30分钟
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