Invest in the world's largest AI community. Earn bonus shares before October 20, 2024.
Back

From Zero to AI Hero: Create Neural Networks with TensorFlow

Price
Paid
Tried by
37

About From Zero to AI Hero: Create Neural Networks with TensorFlow course

Get ready to build, train, and deploy intelligent systems that can revolutionize various industries and solve complex problems.

Are you fascinated by the world of artificial intelligence and machine learning?

Do you want to unlock the power of neural networks and learn how to build intelligent systems?

Look no further! Join our comprehensive course on building, training, and deploying neural networks with TensorFlow, the leading framework for deep learning in Python.

In this course, you will embark on an exciting journey that will take you from the fundamentals of TensorFlow to creating your very own neural networks. Whether you are a beginner in machine learning or an experienced developer looking to expand your skillset, this course is designed to cater to learners of all levels. No prior knowledge of TensorFlow or deep learning is required!

Why choose this course?

  • Practical approach: We believe in hands-on learning, and this course is packed with real-world examples and projects that will reinforce your understanding of TensorFlow and neural networks.
  • User-friendly structure: Our course is organized into ten engaging lessons, allowing you to progress step-by-step at your own pace. Each lesson builds upon the previous one, ensuring a seamless learning experience.
  • Python-powered: Python is the language of choice for machine learning, and this course leverages its simplicity and versatility to teach you the concepts and techniques required to build powerful neural networks.

What will you learn in comprehensive and user-friendly course?

  • Course Overview: Get acquainted with the course structure and objectives, setting the stage for your deep learning journey.
  • Why Learn TensorFlow: Discover the significance of TensorFlow in the world of AI and machine learning, and learn why it's the go-to framework for neural networks.
  • Setting up the TensorFlow Environment: Learn how to install and configure TensorFlow on your machine, ensuring a smooth development experience.
  • AI and Machine Learning Concepts: Build a strong foundation by exploring essential concepts in artificial intelligence and machine learning.
  • Applying the Machine Learning Workflow with TensorFlow and Python: Understand the end-to-end process of building machine learning models using TensorFlow and Python, from data preparation to model evaluation.
  • Understanding Neural Networks: Dive deep into the world of neural networks, understanding their structure, components, and functioning.
  • Building and Training Your First Neural Network: Roll up your sleeves and start building! Learn how to design and train your very own neural network using TensorFlow.
  • Monitoring and Improving Neural Network Performance: Discover techniques to monitor and evaluate the performance of your neural network, and explore strategies to enhance its accuracy and efficiency.
  • Deploying Your Neural Network: Learn how to deploy your trained neural network into production environments, making it available for real-world applications.
  • Final Words: Wrap up the course with a recap of the key concepts and insights gained, and explore avenues for further exploration and growth in the field of deep learning.

Example Projects:

  • House Price Prediction: Harness the power of neural networks to predict house prices based on their sizes, gaining insights into regression tasks.
  • Cloth Type Identification: Develop a neural network that can identify different types of clothing items from images, opening doors to image classification techniques.

Don't miss this golden opportunity to unlock the power of artificial intelligence and machine learning.

Enroll now and take your first step towards becoming a TensorFlow hero!

Company
Udemy
Resources

More gallery

Similar courses

Prep Tests: Azure AI Engineer Associate Exam AI-102
Candidates for the Azure AI Engineer Associate certification build, manage, and deploy AI solutions that leverage Azure Cognitive Services and Azure Applied AI services. Their responsibilities include participating in all phases of AI solutions development—from requirements definition and design to development, deployment, maintenance, performance tuning, and monitoring. They work with solution architects to translate their vision and with data scientists, data engineers, IoT specialists, and AI developers to build complete end-to-end AI solutions. Candidates for this certification should be proficient in C# or Python and should be able to use REST-based APIs and SDKs to build computer vision, natural language processing, knowledge mining, and conversational AI solutions on Azure. They should also understand the components that make up the Azure AI portfolio and the available data storage options. Plus, candidates need to understand and be able to apply responsible AI principles. Skills measured Plan and manage an Azure Cognitive Services solution Implement Computer Vision solutions Implement natural language processing solutions Implement knowledge mining solutions Implement conversational AI solutions The Exam consists of questions covering the following modules/topics: - Plan and Manage an Azure Cognitive Services Solution (15-20%) Select the appropriate Cognitive Services resource Plan and configure security for a Cognitive Services solution Create a Cognitive Services resource Plan and implement Cognitive Services containers - Implement Computer Vision Solutions (20-25%) Analyze images by using the Computer Vision API Extract text from images Extract facial information from images Implement image classification by using the Custom Vision service Portal Implement an object detection solution by using the Custom Vision service Analyze video by using Azure Video Analyzer for Media (formerly Video Indexer) - Implement Natural Language Processing Solutions (20-25%) Analyze text by using the Text Analytics service Manage speech by using the Speech service Translate language Build an initial language model by using Language Understanding Service (LUIS) Iterate on and optimize a language model by using LUIS Manage a LUIS model - Implement Knowledge Mining Solutions (15-20%) Implement a Cognitive Search solution Implement an enrichment pipeline Implement a knowledge store Manage a Cognitive Search solution Manage indexing - Implement Conversational AI Solutions (15-20%) Create a knowledge base by using QnA Maker Design and implement conversation flow Create a bot by using the Bot Framework SDK Create a bot by using the Bot Framework Composer Integrate Cognitive Services into a bot
by Genai Works

Last Reviews

Add review
Review *
Oops! It looks like you need to sign up
Before leaving a review you need to create an account. Don't worry, it only takes a moment and gives you access to exclusive content and updates. Ready to get started?
Menu
Join us on
All rights reserved © 2024 Genai Works