Learn TensorRT, ONNX with Detection,Segmentation 12 PROJECTS
Learn TensorRT, ONNX with Detection,Segmentation 12 PROJECTS, available at $84.99, has an average rating of 3.75, with 174 lectures, 7 quizzes, based on 58 reviews, and has 639 subscribers.
You will learn about 1. What is Docker and How to use Docker & their practical usage 2. What is Kubernet and How to use with Docker & their practical usage 3. Nvidia SuperComputer and Cuda Programming Language & their practical usage 4. What are OpenCL and OpenGL and when to use & their practical usage 6.(LAB) Tensorflow/TF2 and Pytorch Installation, Configuration with DOCKER 7. (LAB)DockerFile, Docker Compile and Docker Compose Debug file configuration 8. (LAB)Different YOLO version, comparisons, and when to use which version of YOLO according to your problem 9. (LAB)Jupyter Notebook Editor as well as Visual Studio Coding Skills 10. (LAB) Visual Studio Code Setup and Docker Debugger with VS 11. (LAB) what is ONNX fframework and how to use apply onnx to your custom problems 11. (LAB) What is TensorRT Framework and how to use apply to your custom problems 12. (LAB) Custom Detection, Classification, Segmentation problems and inference on images and videos 13. (LAB) Python3 Object Oriented Programming 14.(LAB)Pycuda Language programming 15. (LAB) Deep Learning Problem Solving Skills on Edge Devices, and Cloud Computings 16. (LAB) How to generate High Performance Inference Models , in order to get high precision, FPS detection as well as less gpu memory consumption 17. (LAB) Visual Studio Code with Docker 18.(LAB Challenge) yolov4 onnx inference with opencv dnn 19.(LAB Challenge) yolov5 onnx inference with opencv dnn 20.(LAB Challenge) yolov5 onnx inference with Opencv DNN 21.(LAB Challenge) yolov5 onnx inference with TensorRT and Pycuda 22.(LAB) ResNet Image Classificiation with TensorRT and Pycuda 23.(LAB) yolov5 onnx inference on Video Frames with TensorRT and Pycuda 24. (LAB) Prepare Yourself for Python Object Oriented Programming Inference! 25. (LAB) Python OOP Inheritance Based on YOLOV7 Object Detection 26. Deep Theoretical Knowledge about Small Target Detection and Image Masking 27. Deep Insight on Yolov5/Yolov6/Yolov7/Yolov8 Architectures and Practical Use Cases 28. Deep Insight on YoloV5 P5 and P6 Models & Their Practical Usage 29. Key Differences:Explicit vs. Implicit Batch Size 30. (Theory) TenSorRT Optimization Profile Tutorial 31. (Theory) Boost TensorRT Knowledge for Beginner Level Quizzies 32. (Theory Challenge) Boost TensorRT Knowledge for Intermediate Level Quizzies 33. Theory Challenge) Boost TensorRT Knowledge for Advance Level Quizzies 34.(Theory Challenge) Boost Cuda Runtime for Beginner/Intermediate/Advance practical & theorytical Quizzies 35.(Theory Challenge) Boost your OpenCV-ONNX Knowledge by doing Mixed practical & theorytical Quizzies 36.(Deep Theoratical Knowledge) YoloV8 ONNX Model Input and Output Inference 37.(Deep Theoratical Knowledge) YoloV8 Model usage and applied sectors. 38.(Deep Practical Knowledge) YoloV8 ONNX Model for Detection and Segmentation 39. DeepLabV3 with Resnet 101 AND UNet Semantic Segmentation 40.(Bonus Lecture) Mastering Deep Reinforcement Learning with Advance Exercises This course is ideal for individuals who are new graduates or university students or AI experts or Embedded Software Engineer or Robotics Engineer It is particularly useful for new graduates or university students or AI experts or Embedded Software Engineer or Robotics Engineer.
Enroll now: Learn TensorRT, ONNX with Detection,Segmentation 12 PROJECTS
Summary
Title: Learn TensorRT, ONNX with Detection,Segmentation 12 PROJECTS
Price: $84.99
Average Rating: 3.75
Number of Lectures: 174
Number of Quizzes: 7
Number of Published Lectures: 172
Number of Published Quizzes: 7
Number of Curriculum Items: 182
Number of Published Curriculum Objects: 180
Original Price: €54.99
Quality Status: approved
Status: Live
What You Will Learn
- 1. What is Docker and How to use Docker & their practical usage
- 2. What is Kubernet and How to use with Docker & their practical usage
- 3. Nvidia SuperComputer and Cuda Programming Language & their practical usage
- 4. What are OpenCL and OpenGL and when to use & their practical usage
- 6.(LAB) Tensorflow/TF2 and Pytorch Installation, Configuration with DOCKER
- 7. (LAB)DockerFile, Docker Compile and Docker Compose Debug file configuration
- 8. (LAB)Different YOLO version, comparisons, and when to use which version of YOLO according to your problem
- 9. (LAB)Jupyter Notebook Editor as well as Visual Studio Coding Skills
- 10. (LAB) Visual Studio Code Setup and Docker Debugger with VS
- 11. (LAB) what is ONNX fframework and how to use apply onnx to your custom problems
- 11. (LAB) What is TensorRT Framework and how to use apply to your custom problems
- 12. (LAB) Custom Detection, Classification, Segmentation problems and inference on images and videos
- 13. (LAB) Python3 Object Oriented Programming
- 14.(LAB)Pycuda Language programming
- 15. (LAB) Deep Learning Problem Solving Skills on Edge Devices, and Cloud Computings
- 16. (LAB) How to generate High Performance Inference Models , in order to get high precision, FPS detection as well as less gpu memory consumption
- 17. (LAB) Visual Studio Code with Docker
- 18.(LAB Challenge) yolov4 onnx inference with opencv dnn
- 19.(LAB Challenge) yolov5 onnx inference with opencv dnn
- 20.(LAB Challenge) yolov5 onnx inference with Opencv DNN
- 21.(LAB Challenge) yolov5 onnx inference with TensorRT and Pycuda
- 22.(LAB) ResNet Image Classificiation with TensorRT and Pycuda
- 23.(LAB) yolov5 onnx inference on Video Frames with TensorRT and Pycuda
- 24. (LAB) Prepare Yourself for Python Object Oriented Programming Inference!
- 25. (LAB) Python OOP Inheritance Based on YOLOV7 Object Detection
- 26. Deep Theoretical Knowledge about Small Target Detection and Image Masking
- 27. Deep Insight on Yolov5/Yolov6/Yolov7/Yolov8 Architectures and Practical Use Cases
- 28. Deep Insight on YoloV5 P5 and P6 Models & Their Practical Usage
- 29. Key Differences:Explicit vs. Implicit Batch Size
- 30. (Theory) TenSorRT Optimization Profile Tutorial
- 31. (Theory) Boost TensorRT Knowledge for Beginner Level Quizzies
- 32. (Theory Challenge) Boost TensorRT Knowledge for Intermediate Level Quizzies
- 33. Theory Challenge) Boost TensorRT Knowledge for Advance Level Quizzies
- 34.(Theory Challenge) Boost Cuda Runtime for Beginner/Intermediate/Advance practical & theorytical Quizzies
- 35.(Theory Challenge) Boost your OpenCV-ONNX Knowledge by doing Mixed practical & theorytical Quizzies
- 36.(Deep Theoratical Knowledge) YoloV8 ONNX Model Input and Output Inference
- 37.(Deep Theoratical Knowledge) YoloV8 Model usage and applied sectors.
- 38.(Deep Practical Knowledge) YoloV8 ONNX Model for Detection and Segmentation
- 39. DeepLabV3 with Resnet 101 AND UNet Semantic Segmentation
- 40.(Bonus Lecture) Mastering Deep Reinforcement Learning with Advance Exercises
Who Should Attend
- new graduates
- university students
- AI experts
- Embedded Software Engineer
- Robotics Engineer
Target Audiences
- new graduates
- university students
- AI experts
- Embedded Software Engineer
- Robotics Engineer
For WHOM , THIS COURSE is HIGHLY ADVISABLE:
This course is mainly considered for any candidates(students, engineers,experts)that havegreat motivation to learn deep learning model training and deeployment. Candidates will have deep knowledge of docker, usage of TENSORFLOW ,PYTORCH, KERAS models with DOCKER. In addition,they will be able to OPTIMIZE , QUANTIZE deeplearning models with ONNX and TensorRT frameworks for deployment in variety of sectors such as on edge devices(nvidia jetson nano, tx2, agx, xavier, qualcomm rb5, rasperry pi, particle photon/photon2), AUTOMATIVE, ROBOTICS as well as cloud computing via AWS, AZURE DEVOPS, GOOGLE CLOUD, VALOHAI, SNOWFLAKES.
Usage of TensorRT and ONNX in Edge Devices:
Edge Devices are built-in hardware accelerator with nvidia gpu that allows to acccelare real time inference 20x Faster to achieve fast and accurate performance.
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nvidia jetson nano, tx2, agx, xavier : jetpack 4.5/4.6 cuda accelerative libraries
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Qualcomm rb5 together with Monoculare and Stereo Vision Camera(CSI/MPI , USB camera )
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Particle photon/photon2 IoT in order to achieve Web API, through speech recognition systems , for Smart House
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Robotics: Robot Operations Systems packages for monocular and Stereo Vision Camera, in order to 3D Tranquilation ,for Human Tracking and Following, Anomaly Target and Noise Detection such as (gun noise, extremely high background noise)
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Rasperry Pi 3A/3B/4B gpu OpenGL compiler based
Usage of TensorRT and ONNX in Robotics Devices:
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Overview of Nvidia Devices and Cuda compiler language
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Overview Knowledge of OpenCL and OpenGL
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Learning and Installation of Docker from scratch
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Preparation of DockerFiles, Docker Compose as well as Docker Compose Debug file
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Implementing and Python codes via both Jupyter notebook as well as Visual studio code
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Configuration and Installation of Plugin packages in Visual Studio Code
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Learning, Installation and Confguration of frameworks such as Tensorflow, Pytorch, Kears with docker images from scratch
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Preprocessing and Preparation of Deep learning datasets for training and testing
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OpenCV DNN
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Training, Testing and Validation of Deep Learning frameworks
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Conversion of prebuilt models to Onnx and Onnx Inference on images
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Conversion of onnx model to TensorRT engine
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TensorRT engine Inference on images and videos
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Comparison of achieved metrices and result between TensorRT and Onnx Inference
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Prepare Yourself for Python Object Oriented Programming Inference!
-
Deep Knowledge on Yolov5 P5 and P6 Large Models
-
Deep Knowledge on Yolov5/YoloV6 Architecture and Their Use Cases
-
Deep Theoretical and Practical Coding Skill on Research Paper of Yolov7/Yolov8 Small and Large Models
-
Boost TensorRT Knowledge for Beginner Level Quizzies
-
Boost TensorRT Knowledge for Intermediate Level Quizzies
-
Boost TensorRT Knowledge for Advance Level Quizzies
-
Boost Nvidia-Drivers for Beginner/Intermediate/Advance practical & theorytical Quizzies
-
Boost Cuda Runtime for Beginner/Intermediate/Advance practical & theorytical Quizzies
-
Boost your OpenCV-ONNX Knowledge by doing Mixed practical & theorytical Quizzies
-
ONNX beginner and Advance Pythons coding Skills for auto-tuning Yolov8 ONNX model hyperparameters and Input (Fast Image or Video Pre-Post processing) for Detection and Semantic Segmentation
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Deep Reinforcement learning with practical example and deep python programming such as Game of Frozen Lake, Drone of Lunar Lader etc
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Beginner, Intermediate Vs Advance Transfer Learning Custom Models
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Beginner, Intermediate Vs Advance Object Classification
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Beginner, Intermediate Vs Advance Object Localization and Detection
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Beginner, Intermediate Vs Advance Image Segmentation
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AI For Medical Treatment
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Implement yourseld Advance Object detection and Segmentation Metrics
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction
Lecture 2: who can take this course
Lecture 3: course description and why this course is higly flexible for your needs
Lecture 4: Detection and Tracking
Lecture 5: YOLOP Model for Detect and Segment ONNX Inference
Lecture 6: Practice, Practice And Again Practice
Lecture 7: Course Github Projects
Lecture 8: YoloV7 Fast Video Inference Detect and Track
Lecture 9: My Second Course – Generative AI
Chapter 2: Course Rating Evalutions
Lecture 1: How to rate this course?
Chapter 3: Onnx, TensorRT, Docker Overview
Lecture 1: Onnx, TensorRT, Docker Tutorial (part 1)
Lecture 2: Onnx, TensorRT, Docker Tutorial (part 2)
Lecture 3: Onnx, TensorRT, Docker Tutorial (part 3)
Lecture 4: Onnx, TensorRT, Docker Tutorial (part 4)
Chapter 4: NVIDIA Drivers
Lecture 1: how to install nvidia drivers and set up
Lecture 2: Download Nvidia Driver (Part two)
Lecture 3: Verify Installation of Nvdia Driver and Nouveau Driver
Lecture 4: Verify Installation of Nvidia Driver (Part two)
Chapter 5: Learn Nvidia Drivers deeply, by doing quizzies
Chapter 6: Nvidia Hardware and Software, Cuda programming API Levels
Lecture 1: Docker and Nvidia Stack (Part One)
Lecture 2: Docker and Nvidia Gpu Stack (Part two)
Lecture 3: Docker and Nvidia Gpu Stack (Part three)
Chapter 7: Learn Cuda Runtime by doing Quizzies
Chapter 8: Docker Installation and Configuration
Lecture 1: Docker Images Installation and Configuration
Lecture 2: Docker SetUp and Configuration with Sudo on Local Machine
Lecture 3: Setup Docker Successfuly on your local Machine
Chapter 9: Learn-Repeat OpenCV-ONNX mixed features with Quizzies
Chapter 10: Installation of Docker Cuda Toolkit & Setup DockerFile with required packages
Lecture 1: Installing Docker Cuda Toolkit-Nvidia GPU
Lecture 2: Install, Configure,Validate Tensorflow-GPU Docker Image
Lecture 3: What is Docker? and why we need to use Docker Server-Docker Commands Tutorial
Lecture 4: Configuration of Docker Working Directories and DockerFiles
Lecture 5: Organization of Docker files with required packages installations (Part One)
Lecture 6: Organization of Docker files with required packages installations (Part Two)
Chapter 11: TensorRT & Onnx AI frameworks
Lecture 1: Driver , Kernel and Device Communication
Lecture 2: Deep Learning Frameworks
Lecture 3: Open Neural Network Exchange
Lecture 4: TensorRT – NVIDIA Inference
Lecture 5: TensorRT – NVIDIA Inference Floating Point Precision and AI Sectors
Lecture 6: Nvidia Software and Hardware Logic
Chapter 12: Resnet 18 with ONNX-TENSORRT
Lecture 1: Docker Configuration for Resnet 18
Lecture 2: Docker Configuration for Resnet 18 (Part 2)
Lecture 3: SetUp Visual Studio Code with Docker Container
Lecture 4: Resnet 18 with ONNX
Lecture 5: Resnet 18 Conversion from Onnx to TensorRT (Part 1)
Lecture 6: Resnet 18 Conversion from Onnx to TensorRT (Part 2)
Lecture 7: Resnet 18 Conversion from Onnx to TensorRT (Part 3)
Lecture 8: Resnet 18 Conversion from Onnx to TensorRT (Part 4)
Chapter 13: Resnet 18 TensorRT Inference
Lecture 1: TensorrT Inference (Part 1)
Lecture 2: TensorrT Inference 2
Lecture 3: TensorrT Inference 3
Lecture 4: TensorrT Inference 4
Lecture 5: TensorrT Inference 5
Lecture 6: TensorrT Inference 6
Lecture 7: TensorrT Inference 7
Lecture 8: TensorrT Inference-TtrtExec API 8
Chapter 14: YOLOV4 ONNX DNN
Lecture 1: YOLOV4 ONNX DNN Inference (Part One)
Lecture 2: YOLOV4 ONNX DNN Inference (Part Two)
Lecture 3: YOLOV4 ONNX DNN Inference (Part Three)
Lecture 4: YOLOV4 ONNX DNN Inference (Part Four)
Lecture 5: YOLOV4 ONNX DNN Inference (Part Fifth)
Lecture 6: YOLOV4 ONNX DNN Inference (Part Six)
Lecture 7: YOLOV4 ONNX DNN Inference (Part Seven)
Lecture 8: YOLOV4 ONNX DNN Inference (Part Eight)
Chapter 15: YOLOV4 ONNX DNN Video
Lecture 1: Yolov4 Video Inference part 1
Lecture 2: Yolov4 Video Inference part 2
Lecture 3: Yolov4 Video Inference part 3
Lecture 4: Yolov4 Video Inference part 4
Chapter 16: YOLOv5 Onnx Inference – OpenCV
Lecture 1: SetUp Workign Directory of yolov5 (2)
Lecture 2: YOLOV4 ONNX DNN Inference (Part Nine)
Lecture 3: YOLOv5 Onnx Inference – OpenCV (Part 3)
Lecture 4: YOLOv5 Onnx Inference – OpenCV (Part 4)
Lecture 5: YOLOv5 Onnx Inference – OpenCV (Part 5)
Lecture 6: YOLOv5 Onnx Inference – OpenCV (Part 6)
Lecture 7: YOLOv5 Onnx Inference – OpenCV (Part 7)
Lecture 8: YOLOv5 Onnx Inference – OpenCV (Part 8)
Lecture 9: Yolov5 Onnx Inference (Part 9)
Lecture 10: Prepare Yolov5 For Inference ( Part 1)
Chapter 17: Yolov5 TensorRT Inference on Images
Lecture 1: TensorRT-yoloV5 Inference (Part 1) && what is OpenCL and OpenGL(their usage)
Lecture 2: TensorRT-yoloV5 Inference (Part 2)
Lecture 3: TensorRT-yoloV5 Inference (Part 3)
Lecture 4: TensorRT-yoloV5 Inference (Part 4)
Lecture 5: TensorRT-yoloV5 Inference (Part 5)
Instructors
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PhD Researcher AI & Robotics Scientist Fikrat Gasimov
Senior PhD AI & Robotics Scientist & Embedded Software
Rating Distribution
- 1 stars: 3 votes
- 2 stars: 6 votes
- 3 stars: 6 votes
- 4 stars: 6 votes
- 5 stars: 37 votes
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