Learn from Home Offer

Learn from Home Offer
This TensorFlow Certification includes 16 Courses with 63+ hours of video tutorials and Lifetime access and several mock tests for practice. You get to learn TensorFlow for Deep Learning with Python. We will help you learn to build a neural network and how to train, evaluate and optimize it with TensorFlow.
Courses | You get access to all 16 courses, Projects bundle. You do not need to purchase each course separately. |
Hours | 63+ Video Hours |
Core Coverage | TensorFlow for Deep Learning with Python |
Course Validity | Lifetime Access |
Eligibility | Anyone serious about learning Machine Learning and wants to make a career in this Field |
Pre-Requisites | Basic knowledge about machine learning would be preferable |
What do you get? | Certificate of Completion for each of the 16 courses, Projects |
Certification Type | Course Completion Certificates |
Verifiable Certificates? | Yes, you get verifiable certificates for each course with a unique link. These link can be included in your resume/Linkedin profile to showcase your enhanced skills |
Type of Training | Video Course – Self Paced Learning |
In this section, each module of the TensorFlow Course is explained.
This TensorFlow Certification is from Edu-CBA Academy Courses which is a package of two online courses and many chapters with its topics included under each course. The TensorFlow Course and the relative chapters are also covered under each chapter with basics and advanced concepts on the latest TensorFlow library, tools and its several related frameworks that come under deep learning techniques and its applications. This TensorFlow training contains a total of 16 online courses including a course completion certification and also with lifetime access to all of its course contents.
To enable and provide the Edu CBA Academy learners with the greatest learning and development experience, this TensorFlow Course had been designed in a fine way that requires a minimum of 63+ hours to complete the courses under TensorFlow Certification successfully. The below table gives the list of courses with a complete overview of all the course contents, description, its links and the time is taken in several hours to complete each course–
Courses | No. of Hours | Certificates | Details |
---|---|---|---|
Machine Learning ZERO to HERO - Hands-on with Tensorflow | 13h 28m | ✔ | |
Project on Tensorflow - Implementing Linear Model with Python | 1h 46m | ✔ | |
Project on Tensorflow: Face Mask Detection Application | 32m | ✔ |
Courses | No. of Hours | Certificates | Details |
---|---|---|---|
Deep Learning: Neural Networks with TensorFlow | 3h 12m | ✔ | |
Deep Learning ZERO to HERO - Hands-on with Python | 10h 8m | ✔ | |
Deep Learning Tutorials | 1h 34m | ✔ | |
Pandas with Python Tutorial | 5h 47m | ✔ | |
NumPy and Pandas Python | 5h 01m | ✔ | |
Pandas Python Case Study - Data Management for Retail Dataset | 3h 25m | ✔ | |
Matplotlib for Python Data Visualization - Beginners | 4h 12m | ✔ | |
Matplotlib for Python Data Visualization - Intermediate | 2h 53m | ✔ | |
Matplotlib for Python Data Visualization - Advanced | 6h 37m | ✔ |
Courses | No. of Hours | Certificates | Details |
---|---|---|---|
Seaborn Python - Beginners | 2h 28m | ✔ | |
Seaborn Python - Intermediate | 1h 18m | ✔ | |
Seaborn Python - Advanced | 1h 56m | ✔ | |
Case Studies on Seaborn Python Basics | 1h 51m | ✔ |
Courses | No. of Hours | Certificates | Details |
---|---|---|---|
Test - TensorFlow Exam | |||
Test - Test Series TensorFlow |
The primary goal of this course is to assist all the trainees in mastering TensorFlow which is a python based library that is used to being the mathematical concepts to implement the features of machine learning. This training will be helping all the trainees to dive deep into all the concepts of TensorFlow which are anyhow associated with this concept. Right after finishing this course, you will be able to work thoroughly with this python-based library to introduce the mathematical functions.
The main objective of this course is to endorse the understanding of the trainees on TensorFlow and help them practice all of the concepts. This training is primarily focused on teaching everyone about the practical implementation of the concepts of TensorFlow. One of the important objectives is also to help the trainees become cognizant about working with this library and help them to add extra knowledge regarding python libraries in their knowledgebase.
This course contains twelve units where some of the units are training units while the other units have the projects.
Machine Learning with Tensorflow is the first unit in this course where we will be learning about all the concepts related to Machine learning. We will understand how Tensorflow helps to implement the concepts of ML in the applications. It will be a thirteen hours long video tutorial which will also be giving you a brief introduction about this library and the problems that could be solved using it.
Deep Learning Tutorials is the next unit and as the name suggests, we will be implementing the concepts of deep learning in this course. It will be around two hours long video tutorial where we have covered the maximum of the concepts that fall under the domain of Deep learning. You will get to learn about all the beginners, medium and advanced level concepts of Deep learning in this course.
Pandas with Python Tutorial is the next important topic that we got covered in this training. We will be diving deep into all the concepts of Pandas with the help of python. Almost all of the topics in this course have been detailed with the help of quick examples which are selected very carefully to make it easy for the trainees to understand the concepts.
NumPy and Pandas will be the other unit in this course and the educator will be detailing all the concepts of both of the topics with the help of precise demonstrations. You will get to learn about how various libraries could be leveraged to solve particular sorts of problems.
Matplotlib for Python Developers – Beginners are the next unit where we will be learning about Matplotlib from a beginner’s point of view. We have included some of the sample questions in this course which will be used as demonstrations to help the trainees dive deep into the concepts.
Matplotlib for Python Developers – Intermediate, Matplotlib for Python Developers – Advanced, Seaborn (3 Courses) are some of the units that we got covered in this course. Once you finish all the units, you will be able to work effectively with all the concepts of TensorFlow.
There are a total of four projects in this course where all the topics of the project will be different or unique.
Project on Tensorflow – Implementing Linear Model with Python is the first project in this course where we will be working to develop a linear model with the help of python programming language. In this project, we will be using all of the concepts that we would have walked through in the earlier units.
Hands-on Deep Learning Training will be the next project and this project has been included to reinforce your understanding of deep learning. It will be almost a seven and a half hours long video where the educator will be explaining all the topics to you that will be used in this project.
Project on Pandas – Data Management for Retail Dataset is another project in this course. It will help you to understand all the advanced level concepts of Tensorflow. You will be developing the model on data management and will also be learning about error handling. Errors are something that usually comes up when we try to implement the concepts to design solutions for complicated problems.
Case Studies on Seaborn Basics will be the last project in this course which is moreover a case study. The purpose of including this project in the course is to help the trainees get a holistic view of how this library could be used to solve the actual problems.
The TensorFlow is an open-source library for machine learning and deep learning applications. It is a freeware and does not require a license. TensorFlow was developed by Google Brain Team. TensorFlow was initially released in the year 2015. It was purely written in Python, C++ and CUDA languages. It supports multiple cross platforms such as macOS, Windows, Linux, Android, etc. It is mainly used in the form of a Math library. It was licensed under Apache License 2.0. The usage of Machine Learning contains the classification of basic elements and text, overfitting and underfitting, saving and restoration models. The production scale levels of Machine Learning include linear model, wide and deep learning, boosted trees, estimators based on CNN. The different generative models under TensorFlow are the translation, image captioning, DCGAN and VAE techniques. The different data representation ways in TensorFlow are a vector representation of words, kernel methods, large scale linear models and Unicode.
This TensorFlow is a machine learning platform that is under open source licensing. TensorFlow library can be used for both production and research applications. The different applications that can be carried out under TensorFlow are Research and experimentation, production scale Machine Learning, generative models, Images, Sequences, Load data, data representation, Non-Machine Learning applications.
Yes, Any Machine Learning Engineer or Data Architect or Analytics Engineer or Hadoop Developer or prospective Technical Data Processing Engineer who is interested and keen on learning the latest data related technologies can choose this TensorFlow course which is a worthy considerable one.
YES, this TensorFlow course is a good choice for your profession to switch your career mainstream area. This TensorFlow course can easily be learned and the basic core concepts can be grasped easily which does not need any pre-requisites in the area of computer science basics or advanced technical areas. Anyone learner who is interested in learning the latest data processing or deep learning or machine learning tools and IDEs can opt for this course.
Yes. this TensorFlow course is an advantageous and beneficial course for your career in many terms which provides a greater value to your profession in terms of the deep learning or machine learning core concepts and to the profession that includes an extra verifiable certification from the Edu CBA Academy which is a benefit in the professional arena to obtain further responsible roles in the profession.
Yes, this TensorFlow course is a good course to learn the latest Deep learning techniques or Machine Learning tools or techniques to prepare for a job interview. Any knowledge of statistics or mathematics or any programming language is also recommended which is highly beneficial to master the contents of this course. This TensorFlow course needs a minimum of 63+ hours to complete.
The TensorFlow course is the very good one, to begin with, Machine Learning concept and Deep Learning concepts with the coverage of both basic and advanced core concepts such as Linear Regression, Data Analysis, Data processing, which are very well designed in the way of hands-on with good course contents. The number of courses related to Deep Learning and its core concepts is well explained in a good way.
The tools in this TensorFlow course are very comprehensive and contain complex mathematical or statistical or neural or deep learning subjects in a crisp manner. Deep learning topics are well articulated that makes the life of learner easy to understand the complex subjects.
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Courses | No. of Hours | |
---|---|---|
Machine Learning ZERO to HERO - Hands-on with Tensorflow | 13h 28m | |
Project on Tensorflow - Implementing Linear Model with Python | 1h 46m | |
Project on Tensorflow: Face Mask Detection Application | 0h 55m | |
Deep Learning: Neural Networks with TensorFlow | 3h 12m | |
Deep Learning ZERO to HERO - Hands-on with Python | 10h 8m | |
Deep Learning Tutorials | 1h 34m | |
Pandas with Python Tutorial | 5h 47m | |
NumPy and Pandas Python | 5h 01m | |
Pandas Python Case Study - Data Management for Retail Dataset | 3h 25m | |
Matplotlib for Python Data Visualization - Beginners | 4h 12m | |
Matplotlib for Python Data Visualization - Intermediate | 2h 53m | |
Matplotlib for Python Data Visualization - Advanced | 6h 37m | |
Seaborn Python - Beginners | 2h 28m | |
Seaborn Python - Intermediate | 1h 18m | |
Seaborn Python - Advanced | 1h 56m | |
Case Studies on Seaborn Python Basics | 1h 51m |
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