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URL: https://www.coursera.org/learn/packt-yolo-nas-v8-full-stack-computer-vision-course-3r5ko

⇱ YOLO-NAS + v8 Full-Stack Computer Vision Course | Coursera


YOLO-NAS + v8 Full-Stack Computer Vision Course

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YOLO-NAS + v8 Full-Stack Computer Vision Course

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Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Master YOLO-NAS + v8 for cutting-edge object detection and real-time applications.

  • Train custom models using unique datasets for personalized AI solutions.

  • Deploy YOLO-NAS + v8 across cloud, desktop, and mobile environments.

  • Integrate advanced multi-object tracking techniques into your computer vision projects.

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Assessments

13 assignments

Taught in English

There are 11 modules in this course

This course features Coursera Coach!

A smarter way to learn with interactive, real-time conversations that help you test your knowledge, challenge assumptions, and deepen your understanding as you progress through the course. This comprehensive course introduces you to the YOLO-NAS + v8 model and its integration into real-world applications. You’ll gain hands-on experience in using YOLO-NAS + v8 for object detection, training custom models, and deploying solutions across different platforms, from cloud services to mobile devices. Learn how to transition from YOLOv8 to YOLO-NAS, refine object detection capabilities, and integrate advanced tracking techniques with algorithms like DeepSORT and Bytetrack. The course takes you on a journey through every aspect of YOLO-NAS + v8, from setting up the environment on various platforms, fine-tuning models for specific needs, and exploring use cases such as waste sorting detection and safety compliance. You’ll also learn model conversion techniques and deploy solutions on Docker, Jetson NANO, and even mobile devices using Kivy. Whether you're looking to enhance your computer vision skills or integrate AI into mobile and web apps, this course caters to all levels of learners. If you're a developer, data scientist, or researcher, this course will provide you with the necessary tools to create sophisticated AI-driven applications across a wide range of industries.

In this module, we will introduce you to YOLO-NAS + v8, exploring its advancements and features over previous versions. You will learn how to set up and run YOLO-NAS + v8 across different platforms, including Google Colab. The module also covers essential use cases, hands-on applications, and techniques for fine-tuning pre-trained models for optimal performance.

What's included

9 videos1 assignment

9 videosTotal 69 minutes
  • How to Upgrade from YOLOv8 to YOLO-NAS11 minutes
  • Lecture 1: Introduction to YOLO-NAS + v84 minutes
  • Lecture 2: Architecture of YOLO-NAS + v8 and comparison to other models5 minutes
  • Lecture 3: Running YOLO-NAS + v8 on Ubuntu4 minutes
  • Lecture 4: Running YOLO-NAS + v8 on Windows9 minutes
  • Lecture 5: Running YOLO-NAS + v8 in Google Colab12 minutes
  • Lecture 6: YOLO-NAS + v8 Object Detection on Images, Video & WebCam in Google Colab14 minutes
  • Lecture 7: Common use cases for YOLO-NAS + v83 minutes
  • Lecture 8: Fine-tuning pre-trained YOLO-NAS + v8 models7 minutes
1 assignmentTotal 15 minutes
  • YOLO-NAS + v8 Introduction - Assessment15 minutes

In this module, we will guide you through the complete process of training YOLO-NAS + v8, from understanding the training workflow to working with custom datasets. You will learn key techniques like data pre-processing and augmentation, explore real-world applications like waste sorting detection, and master the use of Roboflow for streamlining model training, testing, and deployment. By the end of this module, you’ll be equipped to handle custom projects with greater ease and efficiency.

What's included

7 videos1 assignment

7 videosTotal 65 minutes
  • Lecture 1: Training Process of YOLOv84 minutes
  • Lecture 2: Training YOLO NAS on custom Dataset27 minutes
  • Lecture 3: Custom Dataset Waste Sorting Detection14 minutes
  • Lecture 4: Data Pre-processing4 minutes
  • Lecture 5: Data Augmentation3 minutes
  • Lecture 6: Training, Testing, and Deploying Model on Roboflow9 minutes
  • Lecture 7: Using Roboflow models for AI data annotation3 minutes
1 assignmentTotal 15 minutes
  • Training Custom YOLO-NAS + v8 - Assessment15 minutes

In this module, we will introduce you to Multi-Object Tracking (MOT) and how it can be enhanced by integrating YOLO-NAS + v8 with tracking algorithms like DeepSORT, Bytetrack, and FairMOT. You will also learn how to apply YOLO-NAS + v8 to track objects in challenging environments and create a real-time tracking and analytics dashboard using Streamlit. By the end of this module, you’ll have the skills to implement robust object tracking solutions in various real-world applications.

What's included

5 videos1 assignment

5 videosTotal 66 minutes
  • Lecture 1: Introduction to Multi-Object Tracking (MOT)5 minutes
  • Lecture 2: YOLO-NAS + v8 with DeepSORT21 minutes
  • Lecture 3: YOLO-NAS + v8 with Bytetrack10 minutes
  • Lecture 4: YOLO-NAS + v8 with FairMOT9 minutes
  • Lecture 5: Integrating YOLO-NAS + v8+ tracking on Streamlit dashboard21 minutes
1 assignmentTotal 15 minutes
  • YOLO-NAS + v8 Object Tracking - Assessment15 minutes

In this module, we will guide you through the essential steps of converting PyTorch models to various formats, such as CoreML, OpenVino, TensorFlow, and TensorRT. You will learn how to prepare the environment for model conversion and understand the specific requirements for deploying models in different ecosystems. By the end of this module, you’ll be proficient in converting models for optimized performance across various hardware platforms.

What's included

6 videos1 assignment

6 videosTotal 14 minutes
  • Lecture 1: Overview of model conversion4 minutes
  • Lecture 2: Setting up the environment for model conversion2 minutes
  • Lecture 3: Converting PyTorch models to CoreML3 minutes
  • Lecture 4: Converting PyTorch models to OpenVino1 minute
  • Lecture 5: Converting PyTorch models to TensorFlow2 minutes
  • Lecture 6: Converting PyTorch models to TensorRT2 minutes
1 assignmentTotal 15 minutes
  • Model Conversion - Assessment15 minutes

In this module, we will take you through the process of setting up a Flask application and integrating the YOLO-NAS + v8 model to create web-based AI solutions. You will also learn how to design intuitive front-end interfaces that allow users to interact with your AI models seamlessly. By the end of this module, you'll be equipped to build full-stack AI applications using Flask.

What's included

3 videos1 assignment

3 videosTotal 38 minutes
  • Lecture 1: Setting up Flask Application3 minutes
  • Lecture 2: Integrate YOLO-NAS + v8 with Flask15 minutes
  • Lecture 3: Designing Front-End19 minutes
1 assignmentTotal 15 minutes
  • Flask Integration - Assessment15 minutes

In this module, we will explore various practical applications of YOLO-NAS + v8 within Flask apps. From generating retail heat maps to ensuring safety compliance in mining and detecting environmental hazards like plastic waste and smoke, you’ll learn how to leverage Flask to build real-time, AI-driven solutions. Additionally, you'll dive into the creative world of gaming by developing a CS-GO aimbot with YOLO-NAS + v8. By the end of this module, you’ll have a strong foundation in deploying YOLO-NAS + v8 in real-world applications across different industries.

What's included

5 videos1 assignment

5 videosTotal 92 minutes
  • Lecture 1: Retail Heat Maps14 minutes
  • Lecture 2: Mining Safety Check- Helmet/Glasses or vest.36 minutes
  • Lecture 3: Plastic Waste Detection using Security Cameras13 minutes
  • Lecture 4: Smoke Detection8 minutes
  • Lecture 5: CS-GO Gaming Aimbot with YOLOv8 | NAS22 minutes
1 assignmentTotal 15 minutes
  • YOLO-NAS + v8 Flask Apps - Assessment15 minutes

In this module, we will guide you through the complete process of mobile app development using Kivy, from the initial setup to deploying a fully functional app. You will learn how to integrate the YOLO-NAS + v8 model for mobile object detection, convert it to TensorFlow Lite for optimized performance, and create engaging user interfaces with widgets and buttons. Additionally, we’ll cover important deployment, testing, and debugging steps, ensuring your Kivy app runs smoothly across devices. By the end of this module, you’ll be equipped to build and deploy sophisticated mobile applications with advanced AI capabilities.

What's included

19 videos1 assignment

19 videosTotal 43 minutes
  • Lecture 1: Introduction to Mobile Development4 minutes
  • Lecture 2: Setting up Kivy Application (part 1)1 minute
  • Lecture 2: Setting up Kivy Application (part 2)1 minute
  • Lecture 3: Setting up a Dashboard5 minutes
  • Lecture 4: Integrating YOLO-NAS + v8 with Kivy3 minutes
  • Lecture 5: Conversion to TFlite1 minute
  • Lecture 6.1 Widgets and Buttons in Kivy2 minutes
  • Lecture 6.2: Widgets and Buttons in Kivy2 minutes
  • Lecture 6.3: Widgets and Buttons in Kivy3 minutes
  • Lecture 6.4: Widgets and Buttons in Kivy0 minutes
  • Lecture 7.1- Deployment and Testing1 minute
  • Lecture 7.2- Modify the User Interface5 minutes
  • Lecture 8.8.1: Configuring Buildozer2 minutes
  • Lecture 8.8.2: Debugging Application1 minute
  • Lecture 8.8.3 Run Application1 minute
  • Lecture 9.1: Updating the Search Bar3 minutes
  • Lecture 9.2: Updating the Slider3 minutes
  • Lecture 9.3: Adding a Navigation Drawer3 minutes
  • Lecture 9.4: Configuring & Running the App1 minute
1 assignmentTotal 15 minutes
  • Mobile Development Using Kivy - Assessment15 minutes

In this module, we will guide you through the development of mobile applications with a focus on practical AI-based solutions. You’ll learn how to use real-time video streams for people counting, build a document scanner with Easy-OCR, and explore sign language recognition for enhancing communication. Additionally, we’ll teach you how to integrate bar graph widgets for dynamic data visualization in your apps. By the end of this module, you’ll be equipped to develop powerful mobile applications that leverage computer vision and data visualization for various use cases.

What's included

5 videos1 assignment

5 videosTotal 49 minutes
  • Lecture 1: Introduction to Mobile Apps2 minutes
  • Lecture 2: People Counting over Time18 minutes
  • Lecture 3: Document Scanner (using Easy-OCR)7 minutes
  • Lecture 4: Sign Language Recognition13 minutes
  • Lecture 5: Bar Graph Widget Visualization9 minutes
1 assignmentTotal 15 minutes
  • Mobile Apps - Assessment15 minutes

In this module, we will dive into the essentials of object segmentation, teaching you how to set up and optimize models for high performance. You'll explore effective data collection, annotation, and augmentation techniques, along with specialized applications like crack detection. Additionally, you’ll learn how to train segmentation models on GPUs, deploy them for real-time use, and enhance them by integrating YOLO-NAS with SAM segmentation for superior accuracy. By the end of this module, you’ll be equipped to tackle complex segmentation tasks in a variety of industries.

What's included

7 videos1 assignment

7 videosTotal 20 minutes
  • Lecture 1: Introduction to Object Segmentation3 minutes
  • Lecture 2: Setting up Object Segmentation model2 minutes
  • Lecture 3: Data Collection, Annotation and Health checker1 minute
  • Lecture 4: Data Pre-processing and Augmentation2 minutes
  • Lecture 5: Training on GPU and deployment3 minutes
  • Lecture 6: Crack detection and measuring the pixel size6 minutes
  • Lecture 7: YOLO-NAS + SAM Segmentation4 minutes
1 assignmentTotal 15 minutes
  • Object Segmentation - Assessment15 minutes

In this module, we will guide you through deploying YOLO-NAS in Docker, ensuring that your AI models run efficiently in isolated and scalable environments. Additionally, you’ll learn how to deploy YOLO-NAS on the Jetson NANO platform, focusing on optimizing performance for edge computing scenarios. By the end of this module, you'll be proficient in setting up and deploying YOLO-NAS across different platforms for real-world AI applications.

What's included

2 videos1 assignment

2 videosTotal 28 minutes
  • YOLO-NAS Deployment for Docker7 minutes
  • YOLO-NAS Deployment for Jetson NANO21 minutes
1 assignmentTotal 15 minutes
  • YOLO-NAS Deployment for Docker - Assessment15 minutes

In this module, we will showcase exciting bonus content that expands your AI knowledge. You’ll dive into the VegGPT project, exploring the use of GPT models in agriculture, and stay updated on the latest enhancements in YOLOv8, particularly regarding improvements in object bounding box accuracy. This content will equip you with cutting-edge insights to enhance your computer vision applications.

What's included

2 videos3 assignments

2 videosTotal 15 minutes
  • VegGPT9 minutes
  • Ultralytics Update: YOLOv8 Object Bounding Boxes6 minutes
3 assignmentsTotal 90 minutes
  • Bonus Content - Assessment15 minutes
  • Full Course Resources60 minutes
  • Full Course Practice Assessment15 minutes

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Frequently asked questions

Yes, you can preview the first video and view the syllabus before you enroll. You must purchase the course to access content not included in the preview.

If you decide to enroll in the course before the session start date, you will have access to all of the lecture videos and readings for the course. You’ll be able to submit assignments once the session starts.

Once you enroll and your session begins, you will have access to all videos and other resources, including reading items and the course discussion forum. You’ll be able to view and submit practice assessments, and complete required graded assignments to earn a grade and a Course Certificate.

If you complete the course successfully, your electronic Course Certificate will be added to your Accomplishments page - from there, you can print your Course Certificate or add it to your LinkedIn profile.

This course is currently available only to learners who have paid or received financial aid, when available.

Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.

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