#1 Research backed training provider for Data Analytics, AI and Machine Learning. #1 Industry tailored training provider for VLSI Design, IoT and Embedded Systems. #1 Product Design and Product Management program for new Managers and Startups. #1 Research backed training provider for Data Analytics, AI and Machine Learning. #1 Industry tailored training provider for VLSI Design, IoT and Embedded Systems. #1 Product Design and Product Management program for new Managers and Startups.

MACHINE LEARNING

Superior Training Methodology

100% Placement Support

Industry Standard Tools

4.7/5 Rating

Expert Trainers

ABOUT THE COURSE

Machine learning is a method of data analysis that automates analytical model building. It is a branch of artificial intelligence based on the idea that systems can learn from data, identify patterns and make decisions with minimal human intervention

Artificial intelligence (AI) deals with creation of intelligent machines that work and respond like humans. Few AI based activities include Speech Recognition. Learning. Planning. Popular AI products include Virtual assistants like Alexa, Siri, Autonomous cars and Chatbots.

Machine Learning, program is specifically designed with an objective to provide a sound platform and prepare attendees for a successful career in the field of ML and Artificial Intelligence. The course content, the advanced lab, 1:5 classroom strength allows special focus on individual performance

QUALIFICATIONS

Aggregate 50% marks or above in a Graduate degree (BE/B.Tech. or M.Sc) in Electronics Engineering & Telecommunication/ Electrical engineering/ Computer Science & Engineering/Instrumentation or Master of Computer Applications (MCA). (Students of 4th year engineering are also eligibile).

TRAINERS

Trainer, has deep research and development experience into AI and Machine Learning, along with a M.S in Computer Engineering (USA). He worked with top companies including Amazon, at USA and has extensive experience designing and implementing AI technologies. He managed technical teams, which delivered top class web products.

SELECTION

The course consists theory and practical classes spread over a period of about 15 weeks. The course will have about 100 contact hours and also hands-on practical lab sessions. Design project will be done in the time allotted for lab sessions. In addition, there will be guest lectures by experts from industry and academic institutions. Each course batch is limited to first 15 participants. Participants have to appear for a test of duration 30 min in Digital Design and general aptitude, Followed by Interview. The batch size is kept to minimum, this enables us to focus more on each student so, that we help them understand the concepts in depth.

INTERNSHIP

Machine Learning internships are designed for final year electronics / electrical engineering students of B.Tech/M.Tech/Phd (INDIA) and M.S/Phd (USA) and it starts with learning of concepts on Supervised & Unsupervised Machine Learning, Natural Language Processing, Advanced Analytics and Reinforcement Learning which will be highly required to start an industry standard project. Doing these research projects will make you a hands-on Machine Learning Expert.

RESEARCH

Machine Learning research projects are designed for final year electronics / electrical engineering students of B.Tech/M.Tech/Phd (INDIA) and M.S/Phd (USA) and it starts with learning of concepts on Supervised & Unsupervised Machine Learning, Natural Language Processing, Advanced Analytics and Reinforcement Learning which will be highly required to start an industry standard project. Doing this internship will make you a hands-on Machine Learning & Analytics experience suitable for industry and MS/Phd studies.

KEY FEATURES

Good web design

1. 24×7 Support on exercises.


2. Case studies


3. 4.7/5 rating


4. Industry standard tools


5. Two decade of experience


6. World class course structure

7. Expert mentorship on Machine Learning career


8. 100% Placement Support


9. Lifelong membership

Scholarship will be provided based on online test and technical interview performance.

1. Scholarship will be provided based on online test and technical interview performance.


2. Candidates with score 80% in Engineering and 90% above in online test will be selected.


3. Candidates with good GATE score can avail additional scholarship.T&C Apply

COURSE CURRICULUM

In machine learning, computers apply statistical learning techniques to automatically identify patterns in data. This module on Machine Learning is a deep dive to Supervised, Unsupervised learning and Gaussian / Naive-Bayes methods. Also you will be exposed to different classification, clustering and regression methods.

Introduction to Machine Learning

Applications of Machine Learning

Supervised Machine Learning

Classification

Regression

Unsupervised Machine Learning

Reinforcement Learning

Latest advances in Machine Learning

Model Representation

Model Evaluation

Hyper Parameter tuning of Machine Learning Models.

Evaluation of ML Models.

Estimating and Prediction of Machine Learning Models

Deployment strategy of ML Models.

Supervised learning is one of the most popular techniques in machine learning. In this module, you will learn about more complicated supervised learning models and how to use them to solve problems.

Classification methods & respective evaluation

K Nearest Neighbors

Decision Trees

Naive Bayes

Stochastic Gradient Descent

SVM –

Linear

Non linear

Radial Basis Function

Random Forest

Gradient Boosting Machines

XGboost

Logistic regression

Ensemble methods

Combining models

Bagging

Boosting

Voting

Choosing best classification method

Model Tuning

Train Test Splitting

K-fold cross validation

Variance bias tradeoff

L1 and L2 norm

Overfit, underfit along with learning curves variance bias sensibility using graphs

Hyper Parameter Tuning using Grid Search CV

Respective Performance measures

Different Errors (MAE, MSE, RMSE)

Accuracy, Confusion Matrix, Precision, Recall

Regression is a type of predictive modelling technique which is heavily used to derive the relationship between variables (the dependent and independent variables). This technique finds its usage mostly in forecasting, time series modelling and finding the causal effect relationship between the variables. The module discusses in detail about regression and types of regression and its usage & applicability

Regression

Linear Regression

Variants of Regression

Lasso

Ridge

Multi Linear Regression

Logistic Regression (effectively, classification only)

Regression Model Improvement

Polynomial Regression

Random Forest Regression

Support Vector Regression

Respective Performance measures

Different Errors (MAE, MSE, RMSE)

Mean Absolute Error

Mean Square Error

Root Mean Square Error

Unsupervised learning can provide powerful insights on data without the need to annotate examples. In this module, you will learn several different techniques in unsupervised machine learning.

Clustering

K means

Hierarchical Clustering

DBSCAN

Association Rule Mining

Association Rule Mining.

Market Basket Analysis using Apriori Algorithm

Dimensionality reduction using Principal Component analysis (PCA)

Natural language is essential to human communication, which makes the ability to process it an important one for computers. In this module, you will be introduced to natural language processing and some of the basic tasks.

Text Analytics

Stemming, Lemmatization and Stop word removal.

POS tagging and Named Entity Recognition

Bigrams, Ngrams and colocations

Term Document Matrix

Count Vectorizer

Term Frequency and TF-IDF

Advanced Analytics covers various areas like Time series Analysis, ARIMA models, Recommender systems etc.

Time series

Time series Analysis.

ARIMA example

Recommender Systems

Content Based Recommendation

Collaborative Filtering

Reinforcement learning is an area of Machine Learning which takes suitable action to maximize reward in a particular situation. It is employed by various software and machines to find the best possible behavior or path it should take in a specific situation.

Basic concepts of Reinforcement Learning

Action

Reward

Penalty Mechanism

Feedback loop

Deep Q Learning

Frequently Asked Questions

Most frequent questions and answers

Can I get a job into Machine Learning Industry, as I am fresh college graduate?

Yes, industry is hiring trained fresh college graduates for entry level jobs. Many of our students have got placed in top product and services companies. Along, startups are relying on new college grads for fresh ideas and out of box thinking.

Do you have a free demo session, to get a feel of the trainer and understand my choice of field better, before payment?

Yes. You are always welcome! Send us a query or call us. We will arrange a 1 to 1 meeting with the trainer and counselor. They explain you course content, job opportunities and prerequisites.

Can I get an internship, after the coursework? What do I need to ensure?

We are connected with companies focused on IT, Analytics, IoT, VLSI and Embedded. After every training session, we send our candidate profiles to these companies based on their interest. Companies interview and select the candidates of their choice. However, we try our level best to get you an entry into your dream job.

I am not from electronics, neither do I have a engineering degree. Can I join?

At industry, degree is no constrain, but Skill is. At design nation, qualification is not prerequisite, but passion is. If you are passionate to shine in the area of interest, come and talk to us. We are here to help you!

Do you provide a certificate after completion of the course?

Yes. We provide a certificate after the course completion. You can add it to LinkedIn profile, resume and mention during the interviews. Companies prefer trained resources than untrained candidates.

Can I avail the scholarship at Design Nation?

Yes, our scholarships are for people like you, with great talent and financial needs. We are more than happy to help you, with the process. Please check the cutoffs for scholarships in above section. We helped many, and still counting!!

TESTIMONIALS

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LOCATION

CIE,Vindya-C4, Gachibowli, 
IIIT, Hyderabad,Telangana,
India-500032
Phone: +91-8106294689 Email:contact@designnation.in

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