What you'll get
- 13+ Hours
- 1 Courses
- Course Completion Certificates
- Self-paced Courses
- Technical Support
- Case Studies
Synopsis
- Machine learning fundamentals and TensorFlow applications
- Setting up Python and TensorFlow for development
- Data handling and visualization with NumPy, Pandas, Matplotlib, and Seaborn
- Building, training, and deploying TensorFlow models and neural networks
- Supervised, unsupervised, and deep learning with practical examples
- Reinforcement learning basics with hands-on implementation
- Applying TensorFlow effectively in real-world projects
Content
| Courses | No. of Hours | Certificates | Details |
|---|---|---|---|
| Machine Learning with Tensorflow for Beginners | 13h 39m | ✔ | View Curriculum |
Description
This comprehensive course provides a complete introduction to machine learning using TensorFlow, Google's powerful open-source machine learning library. Designed for beginners and intermediate learners, the course covers fundamental concepts, practical implementation, and hands-on exercises to help participants gain real-world skills.
The curriculum is divided into multiple sections, including:
- Introduction to Machine Learning: Learn the fundamentals of machine learning, how machines learn, and explore practical applications using TensorFlow.
- Setting Up Your Workstation: Install Python, TensorFlow, and essential libraries to create an efficient development environment.
- Python Libraries: Gain proficiency in NumPy for numerical computing, Pandas for data manipulation, and Matplotlib and Seaborn for advanced data visualization.
- Conda Environments: Create and manage isolated Python environments for different projects.
- Data Preprocessing: Master techniques such as data cleaning, feature scaling, and handling missing values to prepare datasets for modeling.
- TensorFlow Basics: Understand tensors, operations, variables, and sessions, and learn to build and execute TensorFlow programs.
- Building TensorFlow Models: Develop models for regression, classification, clustering, and other machine learning tasks.
- Neural Networks: Explore neural network architectures, training methods, and evaluation techniques to solve complex problems.
Throughout the course, participants engage in theoretical lessons, practical demonstrations, and hands-on projects. By the end of the course, learners will be able to use TensorFlow to create, train, and deploy machine learning models for tasks like data analysis and prediction.
Requirements
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A computer (compatible with Mac, Windows, and Linux)
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No prior TensorFlow knowledge required
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Basic understanding of machine learning is helpful.
Target Audience
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Those aiming to pass the TensorFlow Developer exam
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Students, developers, and data scientists seeking hands-on ML experience
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Anyone looking to expand skills in AI, machine learning, and deep learning
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Learners wanting to master building ML models with TensorFlow.