Artificial Intelligence Certification Course

Artificial Intelligence Certification Course
Have queries? Ask us+1877 812 0905 (Toll Free)
14785 Learners4.7 5950 Ratings
Artificial Intelligence Certification Course course video previewPlay Edureka course Preview Video
View Course Preview Video
    Live Online Classes starting on 15th Jun 2024
    Why Choose Edureka?
    Edureka Google Review4.5
    Google Reviews
    Edureka Trustpilot Review4.7
    Trustpilot Reviews
    Edureka G2 Review4.5
    G2 Reviews
    Edureka SiteJabber Review4.4
    Sitejabber Reviews

    Instructor-led Advanced AI Course live online Training Schedule

    Flexible batches for you

    Starts at 6,665 / monthWith No Cost EMI Know more
    Secure TransactionSecure Transaction
    MasterCard Payment modeVISA Payment mode

    Why enroll for Artificial Intelligence Certification Course?

    pay scale by Edureka courseAI is shaping the future of humanity across every industry and will continue to act as a technological innovator for the foreseeable future.
    IndustriesThe global AI market size was valued at USD 136.55B in 2022 and is expected to hit USD 1,597.1B by 2030 at a CAGR of 37.3% from 2023 to 2030.
    Average Salary growth by Edureka courseAs per, the base salary for Lead AI Engineer ranges from USD 157,302 to USD 191,127 with the average base salary of USD 170,265.

    Artificial Intelligence Course Benefits

    Today, the amount of data that is generated, by both humans and machines, far outpaces humans' ability to absorb, interpret, and make complex decisions based on that data. Artificial intelligence forms the basis for all computer learning, allows organizations to improve core business processes and is the future of all complex decision making. The best way to land you a good job with a handsome salary in this domain is to get AI Certification.
    Annual Salary
    NLP Research Scientist average salary
    Hiring Companies
     Hiring Companies
    Want to become a NLP Research Scientist?
    Annual Salary
    Deep Learning Engineer average salary
    Hiring Companies
     Hiring Companies
    Want to become a NLP Research Scientist?
    Annual Salary
    ML Engineer average salary
    Hiring Companies
     Hiring Companies
    Want to become a NLP Research Scientist?
    Annual Salary
    AI Engineer average salary
    Hiring Companies
     Hiring Companies
    Want to become a NLP Research Scientist?

    Why Artificial Intelligence Certification Course from edureka

    Live Interactive Learning

    Live Interactive Learning

    • World-Class Instructors
    • Expert-Led Mentoring Sessions
    • Instant doubt clearing
    Lifetime Access

    Lifetime Access

    • Course Access Never Expires
    • Free Access to Future Updates
    • Unlimited Access to Course Content
    24x7 Support

    24x7 Support

    • One-On-One Learning Assistance
    • Help Desk Support
    • Resolve Doubts in Real-time
    Hands-On Project Based Learning

    Hands-On Project Based Learning

    • Industry-Relevant Projects
    • Course Demo Dataset & Files
    • Quizzes & Assignments
    Industry Recognised Certification

    Industry Recognised Certification

    • Edureka Training Certificate
    • Graded Performance Certificate
    • Certificate of Completion

    Like what you hear from our learners?

    Take the first step!

    About your Artificial Intelligence Certification Course

    Artificial Intelligence Skills Covered

    • skillImage Classification
    • skillImage Processing
    • skillText Processing
    • skillCollaborative Filtering
    • skillText Classification
    • skillComputer Vision

    Artificial Intelligence Tools Covered

    •  tools
    •  tools
    •  tools
    •  tools
    •  tools
    •  tools
    •  tools
    •  tools

    Artificial Intelligence Course Curriculum

    Curriculum Designed by Experts


    Introduction to Text Mining and NLP

    8 Topics


    • Overview of Text Mining
    • Need of Text Mining
    • Natural Language Processing (NLP) in Text Mining
    • Applications of Text Mining
    • OS Module
    • Reading, Writing to text and word files
    • Setting the NLTK Environment
    • Accessing the NLTK Corpora


    • Install NLTK Packages using NLTK Downloader
    • Accessing your operating system using the OS Module in Python
    • How to read json format, understand key-value pairs, and for that matter, understand uses of pkl files


    • Reading & Writing .txt Files from/to your Local
    • Reading & Writing .docx Files from/to your Local
    • Working with the NLTK Corpora

    Extracting, Cleaning and Preprocessing Text

    9 Topics


    • Tokenization
    • Frequency Distribution
    • Different Types of Tokenizers
    • Bigrams, Trigrams & Ngrams
    • Stemming
    • Lemmatization
    • Stopwords
    • POS Tagging
    • Named Entity Recognition


    • Regex, Word, Blankline, Sentence Tokenizers
    • Bigrams, Trigrams & Ngrams
    • Stopword Removal
    • UTF encoding, dealing with URLs, hashtags
    • POS Tagging
    • Named Entity Recognition (NER)


    • Tokenization
    • Stopword Removal
    • UTF encoding
    • POS Tagging
    • Named Entity Recognition (NER)

    Analyzing Sentence Structure

    5 Topics


    • Syntax Trees
    • Chunking
    • Chinking
    • Context Free Grammars (CFG)
    • Automating Text Paraphrasing


    • Parsing Syntax Trees
    • Chunking
    • Chinking
    • Automate Text Paraphrasing using CFG’s


    • Chunking
    • Chinking
    • Automate Text Paraphrasing

    Text Classification-I

    5 Topics


    • Machine Learning: Brush Up
    • Bag of Words
    • Count Vectorizer
    • Term Frequency (TF)
    • Inverse Document Frequency (IDF)


    • Demonstrate Bag of Words Approach
    • Working with CountVectorizer()
    • Using TF & IDF


    • Bag of Words
    • CountVectorizer()
    • TF-IDF

    Introduction to Deep Learning

    11 Topics


    • What is Deep Learning?
    • Curse of Dimensionality
    • Machine Learning vs. Deep Learning
    • Use cases of Deep Learning
    • Human Brain vs. Neural Network
    • What is Perceptron?
    • Learning Rate
    • Epoch
    • Batch Size
    • Activation Function
    • Single Layer Perceptron


    • Single Layer Perceptron


    • Curse of Dimensionality
    • Single Layer Perceptron

    Getting Started with TensorFlow 2.0

    14 Topics


    • Introduction to TensorFlow 2.x
    • Installing TensorFlow 2.x
    • Defining Sequence model layers
    • Activation Function
    • Layer Types
    • Model Compilation
    • Model Optimizer
    • Model Loss Function
    • Model Training
    • Digit Classification using Simple Neural Network in TensorFlow 2.x
    • Improving the model
    • Adding Hidden Layer
    • Adding Dropout
    • Using Adam Optimizer


    • Classifying handwritten digits using TensorFlow 2.0


    • Installing and Working with TensorFlow 2.0

    Convolution Neural Network

    12 Topics


    • Image Classification Example
    • What is Convolution
    • Convolutional Layer Network
    • Convolutional Layer
    • Filtering
    • ReLU Layer
    • Pooling
    • Data Flattening
    • Fully Connected Layer
    • Predicting a cat or a dog
    • Saving and Loading a Model
    • Face Detection using OpenCV


    • Saving and Loading a Model
    • Face Detection using OpenCV


    • Image Classification using CNN
    • Face Detection using OpenCV

    Regional CNN

    20 Topics


    • Regional-CNN
    • Selective Search Algorithm
    • Bounding Box Regression
    • SVM in RCNN
    • Pre-trained Model
    • Model Accuracy
    • Model Inference Time
    • Model Size Comparison
    • Transfer Learning
    • Object Detection – Evaluation
    • mAP
    • IoU
    • RCNN – Speed Bottleneck
    • Fast R-CNN
    • RoI Pooling
    • Fast R-CNN – Speed Bottleneck
    • Faster R-CNN
    • Feature Pyramid Network (FPN)
    • Regional Proposal Network (RPN)
    • Mask R-CNN


    • Transfer Learning
    • Object Detection


    • Transfer Learning
    • Object Detection
    • Mask R-CNN

    Boltzmann Machine & Autoencoder

    9 Topics


    • What is Boltzmann Machine (BM)?
    • Identify the issues with BM
    • Why did RBM come into the picture?
    • Step-by-step implementation of RBM
    • Distribution of Boltzmann Machine
    • Understanding Autoencoders
    • Architecture of Autoencoders
    • Brief on types of Autoencoders
    • Applications of Autoencoders


    • Implement RBM
    • Simple encoder


    • RBM
    • Autoencoders

    Generative Adversarial Network(GAN)

    7 Topics


    • Which Face is Fake?
    • Understanding GAN
    • What is Generative Adversarial Network?
    • How does GAN work?
    • Step by step Generative Adversarial Network implementation
    • Types of GAN
    • Recent Advances: GAN


    • Implement Generative Adversarial Network


    • Generative Adversarial Network

    Emotion and Gender Detection (Self-paced)

    5 Topics


    • Where do we use Emotion and Gender Detection?
    • How does it work?
    • Emotion Detection architecture
    • Face/Emotion detection using Haar Cascade
    • Implementation on Colab


    • Implement Emotion and Gender Detection


    • Emotion and Gender Detection

    Introduction to RNN and GRU (Self-paced)

    14 Topics


    • Issues with Feed Forward Network
    • Recurrent Neural Network (RNN)
    • Architecture of RNN
    • Calculation in RNN
    • Backpropagation and Loss calculation
    • Applications of RNN
    • Vanishing Gradient
    • Exploding Gradient
    • What is GRU?
    • Components of GRU
    • Update gate
    • Reset gate
    • Current memory content
    • Final memory at current time step


    • Implement COVID RNN GRU


    • RNN
    • GRU

    LSTM (Self-paced)

    18 Topics


    • What is LSTM?
    • Structure of LSTM
    • Forget Gate
    • Input Gate
    • Output Gate
    • LSTM architecture
    • Types of Sequence-Based Model
    • Sequence Prediction
    • Sequence Classification
    • Sequence Generation
    • Types of LSTM
    • Vanilla LSTM
    • Stacked LSTM
    • CNN LSTM
    • Bidirectional LSTM
    • How to increase the efficiency of the model?
    • Backpropagation through time
    • Workflow of BPTT


    • Intent Detection using LSTM


    • LSTM
    • Sequence Prediction
    • Sequence Generation

    Auto Image Captioning Using CNN LSTM (Self-paced)


    • Auto Image Captioning
    • COCO dataset
    • Pre-trained model
    • Inception V3 model
    • The architecture of Inception V3
    • Modify the last layer of a pre-trained model
    • Freeze model
    • CNN for image processing
    • LSTM or text processing


    • Auto Image Captioning


    • Auto Image Captioning
    • CNN for image processing
    • LSTM or text processing

    Developing a Criminal Identification and Detection Application Using OpenCV (Self-paced)

    4 Topics


    • Why is OpenCV used?
    • What is OpenCV
    • Applications
    • Demo: Build a Criminal Identification and Detection App


    • Build a Criminal Identification and Recognition app on Streamlit.


    • OpenCV
    • Project Implementation with OpenCV

    TensorFlow for Deployment (Self-paced)

    13 Topics


    • Use Case: Amazon’s Virtual Try-Out Room.
    • Why Deploy models?
    • Model Deployment: Intuit AI models
    • Model Deployment: Instagram’s Image Classification Models
    • What is Model Deployment
    • Types of Model Deployment Techniques
    • TensorFlow Serving
    • Browser-based Models
    • What is TensorFlow Serving?
    • What are Servables?
    • Demo: Deploy the Model in Practice using TensorFlow Serving
    • Introduction to Browser based Models
    • Demo: Deploy a Deep Learning Model in your Browser.


    • Learn and build a program that Detects Faces using your webcam using OpenCV.
    • Learn Hyper parameter tuning techniques in Keras on a Fashion Dataset.
    • Build and deploy a model using TensorFlow Serving.
    • Build a neural network model for Handwritten digits use activation function, batch size, Optimizer and learning rate for betterment of you model.
    • Build a Object detection model and detection is done by providing a video the model accurately identifies the objects that are depicted in the video.


    • Deploying model with Tensorflow

    Text Classification-II (Self-paced)

    17 Topics


    • Converting text to features and labels
    • Multinomial Naive Bayes Classifier
    • Leveraging Confusion Matrix


    • Converting text to features and labels
    • Demonstrate text classification using Multinomial NB Classifier
    • Leveraging Confusion Matri


    • Converting text to features and labels
    • Text classification
    • Confusion Matrix

    In Class Project (Self-paced)

    1 Topics


    • Sentiment Classification on Movie Rating Dataset


    • Implement all the text processing techniques starting with tokenization
    • Express your end to end work on Text Mining
    • Implement Machine Learning along with Text Processing


    • Sentiment Analysis

    Free Career Counselling

    We are happy to help you 24/7

    Please Note : By continuing and signing in, you agree to Edureka’s Terms & Conditions and Privacy Policy.
    Like the curriculum? Get started
    Edureka Certified learner

    Artificial Intelligence Course Description

    What is the Artificial Intelligence Course?

    Edureka’s Artificial Intelligence Course is well researched amalgamation of Natural Language Processing and Deep Learning, specifically designed for professionals and beginners to meet the industry standards. This course gives you an in-depth understanding of Tokenization, Stemming, Lemmatization, POS tagging, Named Entity Recognition, Syntax Tree Parsing using Python’s NLTK package, CNN, RCNN, RNN, LSTM, RBM, and their implementation using TensorFlow 2.0 package. You will learn to build real-time projects on NLP and Deep Learning, to make you industry-ready and help you to kickstart your career in this domain.

      What are the prerequisites for this Artificial Intelligence Course?

      Prior knowledge of Python and Machine Learning will be helpful but not at all mandatory. To refresh your skills in Python and ML, we will provide self-paced videos absolutely free as prerequisites in your LMS.

        Why take up the Online Artificial Intelligence Course?

        The demand for AI engineers is increasing rapidly and is expected to continue growing in the future, driven by the increasing adoption of AI technologies in various industries and the growing importance of AI skills in the job market.

        There are many reasons why someone might want to take up an online artificial intelligence course. Here are a few:
        • Career advancement: Artificial intelligence is one of the fastest-growing fields in technology today, and there is a high demand for skilled professionals in this area. By taking an AI course, you can increase your skills and knowledge and make yourself more valuable to employers.
        • Stay up-to-date: The field of artificial intelligence is rapidly evolving, with new technologies and techniques being developed all the time. By taking an AI course, you can stay up-to-date with the latest trends and developments in the field.
        • Learn from experts: You will be taught by experts in the field, giving you access to their knowledge and experience. This can be invaluable in helping you understand complex topics and gain practical skills.

        How will Artificial Intelligence help your career?

        The field of artificial intelligence (AI) is rapidly growing and is expected to continue growing in the coming years. AI is being used in many industries such as healthcare, finance, education, and more. With the increasing adoption of AI, there is a high demand for professionals with the necessary skills and knowledge to work in this field.

        Here are some ways AI career growth is happening:
        • Increased job opportunities: There is a growing demand for AI professionals in both technical and non-technical roles. Technical roles include AI engineers, data scientists, machine learning engineers, and software developers, while non-technical roles include AI project managers, AI consultants, and AI analysts.
        • Advancements in technology: As AI technology advances, there are new opportunities for AI professionals to develop new applications and solutions that can solve complex problems.
        • Emerging subfields: There are emerging subfields within AI, such as explainable AI, AI ethics, and AI security, which provide new opportunities for AI professionals to specialize and grow their careers.
        • Continuous learning and development: AI is a constantly evolving field, and AI professionals must continuously learn and develop new skills to stay up-to-date with the latest advancements.

        Overall, the field of AI provides many opportunities for career growth and development, and there is a high demand for skilled professionals in this field. Enroll in this Artificial Intelligence Certification training today.

          What are the essential concepts covered in this Artificial Intelligence Course?

          This Artificial Intelligence Course provides in-depth knowledge of concepts such as Natural Language Processing, Text Classification, Text Processing, Image Processing, Object Detection, Deep Learning, TensorFlow, OpenCV, and many more.

            Who should take up this Artificial Intelligence Course?

            The Artificial Intelligence course is suitable for anyone who wants to stay up-to-date with the latest advances in AI and wants to build the skills needed to develop and deploy intelligent systems.

            This course will be ideal for the following professionals.
            • Freshers
            • Python Developers
            • Researchers
            • Data Scientists
            • Data Analysts
            • Machine Learning Engineers
            • NLP Engineers
            • Software Testers
            • Software Developers

            If you are one of the above, then do not hesitate to talk to our assistant team and enroll in our AI Course training today.

              What are the basic skills of a Artificial Intelligence Engineer?

              Artificial Intelligence (AI) is a broad field with many subfields, and the skills required for an AI engineer can vary depending on the specific area of expertise. However, there are some basic skills that most AI engineers should possess:
              • Strong Programming Skills: AI engineers need to have a strong foundation in programming languages such as Python, C++, Java, or R. This includes knowledge of data structures, algorithms, and object-oriented programming.
              • Machine Learning: AI engineers must have a solid understanding of the concepts and algorithms of machine learning. This includes knowledge of supervised and unsupervised learning, deep learning, and natural language processing (NLP).
              • Data Structures and Algorithms: A deep understanding of data structures and algorithms is essential for designing and implementing efficient algorithms for large data sets. This also includes knowledge of big data technologies and distributed computing.
              • Statistics and Probability: Knowledge of statistics and probability is essential for understanding and designing machine learning algorithms. AI engineers need to know concepts like hypothesis testing, regression analysis, and Bayesian networks.
              • Problem Solving: AI engineers must have strong problem-solving skills to design and implement complex AI systems. They must be able to identify problems, break them down into smaller components, and develop solutions.
              • Creativity: AI engineers must be creative thinkers to develop novel solutions to complex problems. They should be able to think outside the box and come up with innovative ideas.
              • Ethics and Accountability: AI engineers must understand the ethical implications of their work and the impact it has on society. They must ensure their AI systems are transparent, explainable, and accountable.

              What is the main focus of Edureka’s Artificial Intelligence Course?

              Edureka’s Artificial Intelligence Course enables you to move ahead in your career by helping you get skilled with the fundamentals of AI. The AI course focuses on providing hands-on experience to make you ready for any AI related opportunity.

                What will I learn from this Artificial Intelligence Course?

                Learn the fundamentals of Natural Language Processing (NLP), sentiment analysis, language translation, text summarization, deep learning, convolutional neural networks, recurrent neural networks, and autoencoders. Additionally, you will be working with the OpenCV library, object detection, image segmentation, and image classification along with various real-life projects.

                  What are the system requirements for this Artificial Intelligence Course?

                  The system requirements for this AI Course
                  • A system with an Intel i3 processor or above
                  • A minimum of 4GB RAM (8GB or above is recommended for faster processing)
                  • 50 GB HDD Storage
                  • Operating system: 32-bit or 64-bit

                  What is the syllabus of the artificial intelligence course?

                  The syllabus of the artificial intelligence course covers

                  • Introduction to Text Mining and NLP
                  • Extracting, Cleaning, and Preprocessing Text
                  • Analyzing Sentence Structure
                  • Text Classification-I
                  • Introduction to Deep Learning
                  • Getting Started with TensorFlow 2.0
                  • Convolution Neural Network
                  • Regional CNN
                  • Boltzmann Machine & Autoencoder
                  • Generative Adversarial Network(GAN)

                    How will I execute the practicals in this Artificial Intelligence Course?

                    You will execute your Assignments/Case Studies using Python Jupyter Notebook/Google Colab. Detailed step-by-step installation guides are available on the LMS. In case you come across any doubt, the 24*7 support team will promptly assist you.

                      How much does an AI course cost?

                      The cost of an AI course is INR 19,995, but you can get it at a discounted price of INR 17,995 and Save INR 2000. This offer is limited. You can also avail of No-Cost EMI, which starts at 5,999 / month.

                        Artificial Intelligence Course Projects

                         certification projects

                        Airline Sentiment Analysis

                        In this project, you will be provided with a dataset having tweets about 6 US Airlines along with their sentiments: positive, negative and neutral. You have to perform Sentiment ....
                         certification projects

                        Face Mask Detection

                        The goal of the project is to create a Deep Learning model to detect in real time whether a person is wearing a face mask or not.

                        Artificial Intelligence Certification

                        To unlock Edureka’s Artificial Intelligence course completion certificate, you must ensure the following:
                        • Completely participate in this Artificial Intelligence course.
                        • Evaluation and completion of the quizzes and projects listed.
                        Yes, Artificial Intelligence (AI) is a rapidly growing field with many opportunities for career growth and development. AI has the potential to transform industries such as healthcare, finance, transportation, and more, and as a result, there is a high demand for skilled professionals in this field.

                        There are many career paths available in AI, including machine learning engineer, data scientist, AI researcher, AI consultant, and more. These roles often require a combination of technical skills, such as programming and data analysis, as well as soft skills like communication and problem-solving.

                        Furthermore, the field of AI is constantly evolving, with new technologies and techniques emerging regularly. This means that AI professionals need to stay up-to-date with the latest developments and continue learning throughout their careers, which can make for an exciting and challenging work environment. Overall, if you have a strong interest in technology and a passion for problem-solving, a career in AI could be a great choice.
                        Artificial Intelligence (AI) is a complex and rapidly evolving field, learning its capabilities and functionality requires appropriate direction and a well-structured training path. Beginners interested in a career in Artificial Intelligence using Python can sign up for our training and earn certificates to demonstrate their expertise in this domain.
                        Artificial intelligence (AI) certification is becoming increasingly valuable in today's job market, as businesses across all industries are seeking to integrate AI technology into their operations. Obtaining an AI certification can demonstrate to potential employers that you possess the skills and knowledge necessary to work with AI and can help you stand out from other candidates. 

                        Here are some potential benefits of obtaining an AI certification: 
                        • Demonstrates expertise: An AI certification can help demonstrate your proficiency in a specific area of AI technology, such as machine learning or natural language processing. 
                        • Increased job opportunities: Having an AI certification can help open doors to job opportunities that require knowledge of AI technology. This can include jobs in data analysis, software development, and other technical roles. 
                        • Higher salary potential: In general, individuals with specialized technical skills, such as AI, can command higher salaries than those without such skills. An AI certification can help increase your earning potential. 
                        • Competitive advantage: An AI certification can help you stand out from other candidates when applying for jobs or pursuing business opportunities. 
                        • Professional development: Pursuing an AI certification can help you continue to learn and grow in your field, keeping you up-to-date with the latest technology and trends. 
                        Overall, obtaining an AI certification can be a valuable investment in your career and can help you stay competitive in the rapidly evolving job market.
                        Our Artificial Intelligence course is designed to develop skills and evaluate candidates' knowledge. Following the completion of this certification, you will have access to a wide range of job possibilities. Some of the most important employment roles include AI Engineer, Data Scientist, NLP Engineer, Deep Learning Engineer, Machine Learning Engineer, and others.
                        Please visit the page which will guide you through the top Artificial Intelligence Interview Questions.
                        Edureka Certification
                        Your Name
                        with Grade X
                        Sample IDNASignature
                        The Certificate ID can be verified at to check the authenticity of this certificate


                        Read learner testimonials

                        Piyush Mahiskey
                        The teacher taught the basic concepts very well even to those who were new to Python. A very crystal-clear, concise course with advanced topics like G...
                        Saivikram Gali
                        I have gone through the Artificial Intelligence Certification Training course with edureka, it was fabulous and also now I'm very much aware of the A...
                        Venkat Ramana
                        Thanks for the quick reply and solving the issue. I was really impressed by your 24/7 support even during the festive period. I appreciate your servic...
                        Rahul Kushwah
                        Edureka is BEST in provide e-learning courses for all software programs including latest technologies. I have attended Devops Course and i leant alot...
                        Michael Harkins
                        The courses are top rate. The best part is live instruction, with playback. You get all the presentations and labs. Great instructions. But my favorit...
                        Karunakar Reddy
                        Edureka has very good instructors and technical support team, I have completed the course BIG DATA & AWS through web training, and it was very good tr...

                        Hear from our learners

                        Sriram GopalAgile Coach
                        Sriram speaks about his learning experience with Edureka and how our Hadoop training helped him execute his Big Data project efficiently.
                        Vinayak TalikotSenior Software Engineer
                        Vinayak shares his Edureka learning experience and how our Big Data training helped him achieve his dream career path.
                        Balasubramaniam MuthuswamyTechnical Program Manager
                        Our learner Balasubramaniam shares his Edureka learning experience and how our training helped him stay updated with evolving technologies.
                        Like what you hear from our learners?
                        Take the first step!

                        Artificial Intelligence Course FAQs

                        What is Artificial Intelligence?

                        Artificial Intelligence (AI) refers to the simulation of human intelligence processes by machines, particularly computer systems. It involves the development of algorithms and systems that enable machines to perform tasks that typically require human intelligence. These tasks can include reasoning, problem-solving, learning, perception, language understanding, and decision-making.

                        What is Deep Learning?

                        Deep Learning is a subset of machine learning that focuses on artificial neural networks and their ability to learn and make decisions in a manner similar to the human brain. It involves training deep neural networks with multiple layers to process and learn from large amounts of data, enabling these networks to perform complex tasks such as image and speech recognition, natural language processing, and more.

                        Can I attend a demo Artificial Intelligence session before enrollment?

                        We have limited number of participants in a live session to maintain the Quality Standards. So, unfortunately participation in a live class without enrollment is not possible. However, you can go through the sample class recording and it would give you a clear insight about how are the classes conducted, quality of instructors and the level of interaction in a class.

                        Who are the instructors for this Artificial Intelligence Course?

                        All the instructors at edureka are practitioners from the Industry with minimum 10-12 yrs of relevant IT experience. They are subject matter experts and are trained by edureka for providing an awesome learning experience to the participants.

                        How can I become an AI Engineer?

                        To become an AI engineer, you can follow these steps:

                        Learn programming: Start with languages like Python, Java, or C++, and gain proficiency in data structures and algorithms.

                        Understand mathematics and statistics: Study linear algebra, calculus, probability, and statistics to grasp the foundations of AI.

                        Master machine learning: Learn about various ML algorithms, techniques, and frameworks such as TensorFlow or PyTorch.

                        Gain practical experience: Work on real-world projects, participate in Kaggle competitions and build a portfolio to showcase your skills.

                        Specialize in AI subfields: Explore areas like natural language processing, computer vision, or reinforcement learning.

                        Continuous learning: Stay updated with the latest advancements and research in AI through online courses, tutorials, and academic papers.

                        What if I have more queries after this AI Course?

                        Just give us a CALL at +91 98702 76459/1844 230 6365 (US Tollfree Number) OR email at

                        What if I miss a Artificial Intelligence Training class?

                        You will never miss a lecture at Edureka! You can choose either of the two options: 

                         View the recorded session of the class available in your LMS. You can attend the missed session, in any other live batch.

                        Will I get placement assistance after this AI Course?

                        To help you in this endeavor, we have added a resume builder tool in your LMS. Now, you will be able to create a winning resume in just 3 easy steps. You will have unlimited access to use these templates across different roles and designations. All you need to do is, log in to your LMS and click on the "create your resume" option.

                        Which is the best AI Course for beginners?

                        The Edureka Artificial Intelligence Course is highly recommended for beginners. It provides a comprehensive learning experience, covering basic to advanced concepts of artificial intelligence. The course includes a focus on Python, a widely used programming language in AI.

                        Where can I learn artificial intelligence?

                        Edureka is the best place to learn artificial intelligence. It focuses on Specific topics within AI, such as NLP, deep learning, or TensorFlow.

                        What is the course duration of the AI Course?

                        The duration of the AI Course is 36 hours.  The online class batches are scheduled on weekends.

                        What online courses that are available on Edureka will help me to learn about Artificial Intelligence?

                        Some of the top courses are 

                        What is the Artificial Intelligence course fees?

                        The Artificial Intelligence Course fee in India is INR 17995, and US is $449.

                        What is the Salary of an AI Engineer in India?

                        The salary of an AI engineer in India can vary depending on factors such as experience, skillset, location, industry, and the organization's size. On average, AI engineers in India can expect to earn a salary ranging from INR 5 lakh to INR 20 lakh per year. However, it's important to note that these figures are approximate and can vary significantly based on the factors mentioned earlier. Highly skilled and experienced AI engineers working in top tech companies or specialized fields may command higher salaries, potentially exceeding INR 20 lakh per year. Additionally, AI engineers with advanced degrees or certifications and those with expertise in specific subfields of AI, such as natural language processing or computer vision, may have better salary prospects. It's essential to refer to up-to-date salary surveys and resources for the most accurate and recent information on AI engineer salaries in India.

                        What kind of projects are included as part of the AI Course?

                        As part of AI Courseto become an AI engineer, you may work on various projects focusing on different aspects of AI. Some common project areas include:

                        Machine Learning: Projects involving training models for classification, regression, or recommendation systems. Examples could include building a spam email classifier or predicting house prices.

                        Natural Language Processing (NLP): Projects related to language understanding and generation, such as sentiment analysis, chatbots, or language translation systems.

                        Computer Vision: Projects that deal with image or video analysis, such as object detection, facial recognition, or autonomous driving systems.

                        Reinforcement Learning: Projects centred around training agents to make decisions in dynamic environments, like teaching a robot to navigate a maze or playing complex games.

                        Data Analysis: Projects involving exploratory data analysis, data preprocessing, and feature engineering, often using statistical techniques and visualizations.

                        These projects aim to provide hands-on experience in applying AI techniques to solve real-world problems and help you develop practical skills and understanding in the field of AI engineering.

                        Be future ready, start learning
                        Have more questions?
                        Course counsellors are available 24x7
                        For Career Assistance :