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Datatrained.com

Datatrained.com

PG Program in Data Science, Machine
Learning & Neural Networks with IBM

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10 Months

Recommnded 20-22 hrs/week

25 September 2020

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Program Overview

Key Highlights

  • 6 Months Internship Part of the Program
  • Ideal for both Working and Fresh Graduates
  • One-on-One with Industry Mentors
  • 100% guaranteed Placement
  • 40+ Projects and Case Studies
  • Career Success Manager
  • 360 Degree Career Support
  • Unique Specialisations
  • Instant Doubt Resolution
  • Live Internship

Programming Languages and Tools Covered

10 Months PG Program in Data Science, Machine Learning & Artificial Intelligence in collaboration with IBM

Get eligible for 4 world-class certifications thus adding that extra edge to your resume.
  • Learning paths and certification from IBM
  • Course completion certificate from DataTrained Education
  • Project completion certificate from DataTrained Education
  • Internship Certificate from Partner Companies

Instructors

Learn from India’s leading Software Engineering faculty and Industry leaders

Dr. Deepika Sharma

Training Head, DataTrained

Research Scientist with a PhD in computer science and 10+ years of hands-on experience.

Shubham Sharma

Data Scientist, Reliance Industries

Shubham is a Senior Data Scientist at Reliance Industries and is an expert is Machine Learning complex structures and Natural Language Processing.

Sanket Maheshwari

Data Scientist, Faasos

Experienced Data Scientist with a demonstrated history of working in the information technology and services industry.

Polong Lin

Business Analyst, IBM

Polong Lin is a Data Scientist at IBM in Canada. Under the Emerging Technologies division, Polong is responsible for educating the next generation of data scientists through BDU.

Jay Rajasekharan

Data Scientist, IBM

Currently, he is driving several productivity programs - using data analytics to drive insights from business operations and implementing optimizations such as streamlining workflows, improving service levels, and ultimately reducing cost.

Mahdi Noorian

Data Scientist, IBM

Mahdi Noorian is a Postdoctoral Fellow at the Laboratory for Systems, Software and Semantics (LS3) of the Ryerson University. He holds a Ph.D degree in Computer Science from University of New Brunswick.

Specialization

Strong hand-holding with dedicated support to help you master Software Development

Machine Learning

  • Will cover all the Machine Learning Libraries.
  • Will be able to do projects from scratch till production.
  • Projects will be recognized in the industry after course completion.
  • Real-Time Projects will be assigned to you by our partner organisation to become an Expert from novice.
  • Will get experience certificate from the Organisation after internship.

Deep Learning

  • Will cover all the Deep Learning libraries like Tensor flow, Keras etc.
  • Will be able to do advance level projects.
  • Real-Time data will be shared with you during internship with partner organisation.
  • Will be part of any product development team.
  • Experience certificate will be provided to you as a team member of product development.

Artificial Intelligence

  • Advance libraries & new technologies will be introduced like computer vision, Neural Network etc.
  • Will develop product based on artificial Intelligence with partner Organisation.
  • Will be able to develop projects by own.

SYLLABUS

Best-in-class content by leading faculty and industry leaders in the form of videos, cases and projects, assignments and live sessions

Module1
. Introduction to Data Science
. Data Science Era
. Data Science involvement in Industries
. Business Intelligence vs. Data Science
. Data Science Life Cycle
. Tools of Data Science
. Introduction to Python
. Introduction to Machine Learning
Module 2
. Introduction to Python Programming
. Introduction to Python
. Basic Operations in Python
. Variable Assignment
. Functions: in-built functions, user defined functions
. Condition: if, if-else, nested if-else, else-if
Module 3
. Data Structure - Introduction
. List: Different Data Types in a List, List in a List
. Operations on a list: Slicing, Splicing, Sub-setting
. Condition (true/false) on a List
. Applying functions on a List
. Dictionary: Index, Value
. Operation on a Dictionary: Slicing, Splicing, Sub-setting
. Condition (true/false) on a Dictionary
. Applying functions on a Dictionary
. Modules and Packages
. Regex operations

Module1
. Introduction to SQL (Structured Query Language)
. Basic SQL statement
. Advanced SQL (Searching, sorting, grouping)
. Accessing databases using python

Module1
. Data Types in an Array, Dimensions of an Array
. Operations on Array: Indexing, Slicing, Splicing, Sub-setting
. Conditional (T/F) on an Array
. Loops: For, While
. Shorthand for For
. Conditions in shorthand for For
. Control statements
. Shape Manipulation
. Linear Algebra
Module2
. Python Pandas - Home
. Python Pandas - Introduction
. Python Pandas - Environment Setup
. Introduction to Data Structures
. Python Pandas - Series
. Python Pandas - DataFrame
. Python Pandas - Panel
. Python Pandas - Basic Functionality
. Function Application
. Python Pandas - Reindexing
. Python Pandas - Iteration
. Python Pandas - Sorting
. Working with Text Data
. Options & Customization
. Indexing & Selecting Data
. Python Pandas - Missing Data
. Python Pandas - GroupBy
. Python Pandas - Merging/Joining
. Python Pandas - Concatenation
. Python Pandas - Date Functionality
. Python Pandas - Categorical Data
. Python Pandas - Visualization

Module1
. Intro to Statistics
. Statistical Inference
. Terminologies of Statistics
. Descriptive statistics
. Statistical functions
. Measures of Centers
. Mean
. Median
. Mode
. Measures of Spread
. Variance
. Standard Deviation
. Histogram
. Probability
. Normal Distribution
. Binary Distribution
. Poisson distribution
. Skewness
. Bell curve
. Hypothesis Building and Testing
. Chi-Square Test
. Correlation Matrix

Module1
. SciPy and its Characteristics
. SciPy sub-packages
. SciPy sub-packages – Integration
. SciPy sub-packages – Optimize
. Linear Algebra
. SciPy sub-packages - Statistics

Module1
. Data Analysis Pipeline
. What is Data Extraction
. Types of Data
. Raw and Processed Data
. Data Wrangling
. Exploratory Data Analysis

Module1
.Introduction to Machine Learning
.Machine Learning Use-Cases
.Machine Learning Process Flow
.Machine Learning Categories
Module2
.Data Preprocessing
.Data preparation
.Intro to Scikit Learn
Module3
.Regression
.Types
.Algorithms
.Linear Regression
.RMSE
.R2 score
.Logistic Regression
.Introduction to Dimensionality
.Why Dimensionality Reduction
.PCA
.Factor Analysis
.Scaling dimensional model
.Encoding
.Intro to Kaggle and UCI repository
Module4
.K-nearest neighbours
.Metrics
.Confusion Matrix
.Classification report
.Support Vector Machines
.Kernel
.Working of SVM
.Naive Bayes
.Hyperparameter Optimization
.Decision Tree Classifier
.Random Forest Classifier
.Ensemble Techniques and SVM tuning
.Underfitting & Overfitting
.Entropy
.AUC-ROC Curve
.Cross –validation
Module5
.Unsupervised learning
.Clustering Algorithms
.K-Means Clustering
.Hierarchical Clustering
Module6
.Recommendation Engine
.Time Series

Module1
. MatplotLib
. Bar Plot
. Histogram Plot
. Box Plot
. Area Plot

. Scatter Plot
. Pie Plot
. Seaborn

Module1
. Computer Vision or
. Natural Language Processing (NLP)
Module2
.Live Projects in an Internship Company with access to Virtual Cloud based Linux System

8

Case Study and Projects

Industry Projects

Learn through real-life industry projects sponsored by top companies across industries
  • Engage in collaborative projects and learn from peers
  • Mentoring by industry experts to learn and apply better
  • Personalised subjective feedback on your submissions to facilitate improvement

Smartphone and Smartwatch Activity

The crude accelerometer and whirligig sensor information is gathered from the cell phone and smartwatch at a pace of 20Hz.

Learn More

Recommendation System

In the connected world, it is imperative that the organizations are using to Recommend their Products & Services to the People. Based on their Purchase History & Visiting the store , helps us in Recommendation.

Learn More

Sales prediction

Implementing various Algorithims to ensure about the revenue generation from the Sales team based on thie Customer base & Their past Purchase Order.

Learn More

Air Quality Study

Based on The Data Collected from the Meterological Department, Predicting The Air Quality Of Diffrent Parts of The country

Learn More

Why Join PGP - Data Science, ML & Neural Networks?

Internship

  • 6 Months internship ensures you graduate as an experienced data science professional rather than a fresher. You can go for an online internship along with your current job.

Resume Feedback

  • Partnered with Analytics Jobs wherein you get access to their paid resume preparation kit and personal feedback from the industry HR experts. An individual career profile is prepared by our experts so that it suits his/her experience and makes it relevant to a Data Scientist role.

Interview Preparation

  • Regular mock HR and Technical interviews by mentors with personal guidance and support. The industry mentor helps students to take projects on Kaggle and move on to the status bar so that their resume looks competitive to the recruiters.

Placements

  • We generate the Ability Score of every individual which is then sent to our more than 250 recruitment partner organizations. At last, we organize campus placements every three months in Noida, Gurgaon, Ahmedabad, Bangalore, and Chennai to place our students.

Career Impact

Over 500 Careers Transformed

Aruni Khare

Data Scientist, RBS

DataTrained has helped me with the vital knowledge and skills that are needed for a data scientist role. The trainer starts with an example to make us comprehend the concept and then help us build the algorithms with the real industry datasets.

Rakshit Jain

Data Scientist, Optum

I saw an ad from DataTrained on facebook and I contacted them straight away and inquired about their Data Science online course. Their counselor took me through the complete journey of what they offer and what is data science all about. After continuous conversation for a few weeks, I was pretty sure about the course and now I knew where I need to invest my money and hard work.

Rupam Kumar Chaurasia

Head Sales, Glenmark

The program is a well-balanced mix of pre-recorded classes, live sessions on weekends and printed reading materials they sent to my address. My mentor was Amit Kaushik and he helped me in getting that confidence and completing my assignments on time.I have almost completed the course and have been able to crack Glenmark interview.Thank you so much DataTrained.

Vanshika Rathi

Data Analyst, Ola

Once I Joined DataTrained my learning curve started to grow steeply and as per the mentors I followed the new approach to get Data Science job.If I am successfully placed with one of the biggest data science firm complete credit lies with DATATRAINED and their competent Faculty.

Surbhi Jain

Sr. Data Specialist, Bank of America

I did my research before deciding which course I should register myself for and of all the courses that I have found, the one offered by DataTrained was completely dedicated to analytics, after enrolling for Postgraduate Program for Data Science, I realized DataTrained Data Science course was ideal for me.

Saurabh Chauhan

Data Analyst, KPMG India

All faculty members in DataTrained are well known and they are available round the clock to discuss any course related query.After completing my course I was so confident and cracked my first Interview with Amazon and I have completed a successful 1 year with them. Big thanks to DataTrained to help me in selecting a perfect job for me.

Our Students Work At

Admission Process

There are 3 simple steps in the Admission Process which is detailed below

Step 1: Fill in a Query Form

Fill up the Query Form and one of our counselor will call you & understand your eligibility.

Step 2: Get Shortlisted & Receive a Call

Our Admissions Committee will review your profile. Upon qualifying, an Email will be sent to you confirming your admission to the Program.

Step 3: Block your Seat & Begin the Prep Course

Block your seat with a payment of INR 10,000 to enroll into the program. Begin with your Prep course and start your Data Science journey!

Program Fee

₹1,40,000 ($2,200) + 18% GST

No Cost EMI options are also available. *

What's Included in the Price

Features/Benefits
  • Industry recognized certificate from IBM
  • Access to real-life 40 industry projects
  • 6 Months online Internship part of the core curriculum

I’m interested in this program

Frequently Ask Questions

Amid our preparation, you will get a great deal of project work and an \"Ability Score\" (figured based on your execution all through different stages). We at that point forward your project work and ability Score to organizations, your projects fill in as a proof (portfolio) of your range of abilities which when joined with our ability Score gives them a far-reaching examination of your insight identified with your activity profile. Organizations don't get this sort of investigation or straightforwardness anywhere else, and subsequently, they get you hired. Additionally, they get a confirmation that they are not employing a new kid on the block but rather a trained professional who will be productive from day one.

Projects are adjusted to what is educated to you in different aptitude levels. The trouble level is simple, and activities are there to guarantee a greater amount of hands-on training. Just your last task can be tolerably troublesome, yet that shouldn't be an issue since you will get support at every level from your Data Scientist mentor. These projects are like what the Data Scientists undertake in there day to day work, so think about this as a replication of the same.

Yes. You will get two certificates - one for the training and another for your project work

Although we believe that skills are enough to get you hired, however, some companies hiring for DATA Scientist profile in the industry will expect following out of you.

FRESH GRAD OR A COLLEGE STUDENT
A degree in B.Tech/M.Tech (Any Trade), BCA, MCA or B.Sc (Statistics or Mathematics), BA (Maths or Economics or Stats), B.Com.

WORKING PROFESSIONAL
Professional experience of 1+ years in Python, R, SAS, Business intelligence, Data warehousing, SQL. If your professional experience is not related to data analytics, you can still make a switch to Data scientist provided that you hold any of the degrees specified above.

Employment/internship position meet shortlisting through datatrained.com is simply reliant on your Ability Score. You need to acquire an Ability Score above the required benchmark in order to be shortlisted by organizations. In case you don't get this Ability Score, we continue giving you projects until you achieve that optimum level of Ability Score. When you have scored on the benchmark in no less than 2 out of 3 projects, it is adequate proof alongside your task portfolio for a company to hire you. Keep in mind that we can just ensure to impart in you what it takes to be a Data Scientist, yet you need to ace your destinies yourself.

Please be assured, we were able to place our last 2 batches with a minimum package of 4.5 lakh, an average package of 5.2 lakh and the highest package of 14.5 lakh.

Although it will not likely to happen to see our past success rate. We will try every inch of our efforts to place you. However, in case if we fail to do so, we will refund the fee directly into your bank account within 6 months of your course completion date. No questions asked

Data science doesn’t need any previous technical or programming experience. We will teach you maths and stats at a very beginner level.