What you'll get
  • 63+ Hours
  • 16 Courses
  • Mock Tests
  • Course Completion Certificates

Synopsis

  • This course provides comprehensive training on TensorFlow for Deep Learning using Python.
  • Learners receive one year of full access to all course materials.
  • It is designed for anyone committed to learning Machine Learning and aiming to build a career in this field.
  • A basic understanding of Machine Learning concepts is recommended to get the most from the course.
  • Participants receive a Certificate of Completion for each course along with hands-on project experience.
  • Each certificate is verifiable and comes with a unique link that can be added to resumes or LinkedIn profiles to showcase skills.
  • The course is delivered through self-paced video lessons, allowing learners to study at their own convenience.

Content

Courses No. of Hours Certificates Details
Machine Learning with Tensorflow for Beginners13h 39mView Curriculum
Tensorflow With Python1h 46mView Curriculum
Project on Tensorflow: Face Mask Detection Application33mView Curriculum
Courses No. of Hours Certificates Details
Deep Learning with TensorFlow3h 11mView Curriculum
Comprehensive Deep Learning Training11h 17mView Curriculum
Deep Learning Tutorials1h 34mView Curriculum
Pandas with Python Tutorial5h 42mView Curriculum
Numpy and Pandas5h 9mView Curriculum
Pandas Project3h 14mView Curriculum
Matplotlib Basic4h 2mView Curriculum
Matplotlib Intermediate2h 53mView Curriculum
Matplotlib Advance6h 37mView Curriculum
Courses No. of Hours Certificates Details
Seaborn2h 28mView Curriculum
Seaborn Intermediate1h 18mView Curriculum
Seaborn Advance1h 56mView Curriculum
Seaborn Tutorial1h 51mView Curriculum
Courses No. of Hours Certificates Details
No courses found in this category.

Description

This TensorFlow training equips learners with a wide range of skills, including Data Analysis, Deep Learning applications, the TensorFlow framework, and essential Python libraries such as NumPy, Pandas, Matplotlib, and Seaborn. Participants also gain expertise in data visualization, data processing, and Conda environment management.

The course is structured into multiple comprehensive modules covering key topics such as TensorFlow installation, introduction to TensorFlow, understanding different data types, and setting up the PyCharm IDE environment. Learners also acquire practical skills in building TensorFlow models, designing neural networks, using the TensorFlow Eager API, and implementing linear and logistic regression techniques.

Beyond foundational skills, the course emphasizes advanced capabilities, including Deep Learning applications, statistical analysis, and the application of mathematical models for predictive analytics.

This TensorFlow certification is particularly valuable for aspiring Machine Learning Developers, Machine Learning Engineers, Software Developers, Python Developers, and Web Development professionals seeking to enhance their expertise and career prospects.

Sample Certificate

Course Certification

Requirements

  • Learners should have a strong interest in building a career as a Machine Learning Engineer, Analytics Engineer, Hadoop Developer, or in any related data-focused role.
  • The course has no mandatory prerequisites and is suitable for anyone aiming to understand the fundamentals of Machine Learning, Deep Learning, data analytics tools, and data processing techniques using the PyCharm IDE.
  • It is ideal for individuals who want to learn TensorFlow concepts, including installation, environment setup, and building deep learning models using Python.
  • A basic understanding of mathematics, computer science, programming, or data analytics tools is helpful but not required.
  • Prior exposure to Data Analytics, Big Data technologies, or Hadoop can provide an additional advantage in grasping advanced concepts more quickly.
  • Familiarity with data handling, managing large datasets, or performing parallel operations can further enhance the learning experience in this course.

Target Audience

  • Suitable for students and graduates in mathematics, statistics, computer science, or engineering who want to build skills in Deep Learning and data technologies.
  • Ideal for individuals interested in learning TensorFlow, data processing, Big Data analytics, or Hadoop frameworks.
  • Beneficial for both beginners and professionals aiming to strengthen their expertise in modern Data Analysis and Machine Learning tools.
  • A great fit for roles such as Data Scientist, Machine Learning Engineer, Analytics Engineer, Hadoop Developer, Software Developer, and AI/ML Specialist.
  • Recommended for learners with a Bachelor's or Master's degree in technology looking to advance their careers in Machine Learning or Big Data domains.