YOUR LEARNING BEGINS HERE

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Transcription:

YOUR LEARNING BEGINS HERE

Welcome to the world of GreyAtom GreyAtom s Data Science Masters - Remote is an intensive program with a 300+ hours curriculum designed around 6 data projects on real datasets. This self-paced program will help you learn advanced data science where you ll be interacting with mentors across the globe. At GreyAtom we are building a true blended learning experience where core learning happens on our AI based learning platform & assisted by "Mentors", "Peers" & "Subject Matter Experts". "We are here to ensure that your learning experience at GreyAtom is exceptional." Shweta Doshi Co-founder & Head of Academics at GreyAtom

TABLE OF CONTENTS The obvious question About us Why Data Science? 04 Why GreyAtom? 06 Our Ecosystem 07 DSM - R In numbers In-depth Mentors 08 09 10 Modules 11-18 Testimonials 19 Partners 20 Student Placement Stories Industry Partners Community Partner 21 22 03

WHY DATA SCIENCE? "'When I look at the next set of technologies that we have to build in Salesforce, it's all data-sciencebased technology. We don't need more cloud. We don't need more mobile. We don't need more social. We need more data science." - Marc Benioff, CEO of Salesforce "We know that 20 to 30 years ago, you educated yourself and that carried you through for the rest of your life. That is not going to be true for the generation which is being born now. They have to learn continuously over their lives. We know that. So we have to transform how we do education. It is important to understand that tomorrow, whether Google is there or not, artificial intelligence is going to progress. Technology has this nature. It is going to evolve," - Sundar Pichai, CEO of Google LLC 04

About us. GreyAtom is an education technology company that conducts Bootcamp style immersive learning program for Applied Sciences - currently, focusing on Data Sciences. At the heart of student learning is GreyAtom's online learning platform that ensures gaining practical knowledge while learning. The programs will enable a learner to apply problem-solving and creative thinking to real-world data sets, gaining experience across the entire data science stack. You will use your new skills to build projects while learning new technologies on the fly. Data Science Masters - Remote:By the end, you will be able to use Python for Data Science, summarize data for analysis, solve problems, implement, and evaluate data science problems by building appropriate machine learning models and algorithms. 05 25+ Guided Projects 300+ Practice Assignments 10,000+ Practice Hours clocked in 43 Empanelled Instructors

Why GreyAtom? In-house Adaptive Learning Platform Our Platform delivers an unparalleled 360-degree view of the curriculum, including Integrations with GitHub, Jupyter, AWS, Medium blogs. Complete content curriculum, and projects and building an online profile with every problem statement and challenges you solve. Leader-boards to test your overall competitiveness and readiness, based on all activities, interactions, challenges, quizzes, and projects, etc. in one repository, accessible from anywhere to make learning a seamless and effective. Self-sourced academic content Get the most out of the up-to-date curriculum designed by leading in-house academics team and industry professionals having expertise in practicing Data Science using real tools and workflows used by experts. Work on real industry data-sets, problems and live data sets to build and release real products. Globally developed and optimized ecosystem A co-learning ecosystem of Aspirants, Academia and Industry. Access to learning material by experts, videos of industrial panel discussions, and much more under one roof on the go. Learning outcomes optimized to not only meet industry standards but to also give you hands-on learning to showcase demonstrated skills with Peer-to-peer collaboration. Real-time customized feedback on overall competency development. 06

Industry Based Curriculum Real Datasets > Real Industry Problems > Expedited Learning. Hackathons on industry problem statements to build and showcase skills. Building models that are relevant to the industry. Item 5 20% Our Ecosystem Immersive learning Access to learning material, videos of panel discussions, and much more. Learning outcomes optimized to meet industry standards. Peer-to-peer collaboration. Hands-on learning. Customized feedback and real-time competency development. Item 1 20% 07 Social Profile Engineering Integration with GitHub, AWS, Medium Blogs, and more. Demonstrate skills and improve your chances of getting hired. Improve and optimize your digital footprint. Item 4 20% Qualitative performance assessment Competency across various modules. Comparing performance to that of industry benchmarks. Personalized learning. Item 3 20% Become Industry Ready Ensures implementation of best practices like Test Driven Development and Coding Standard. Item 2 20% Increased Industry Readiness. Real-time profile building.

DATA SCIENCE MASTERS - REMOTE 0VS'MBHTIJQDMBTTSPPNQSPHSBNMFWFSBHFTUIFQPXFSPGJNNFSTJWF MFBSOJOHUPHJWFZPVBOJOEFQUIVOEFSTUBOEJOHPG.-"* 6 8 26 MONTHS LEARNERS PER GROUP MENTOR-LED SESSIONS 6 PROJECTS & HACKATHONS 300+ DIY ASSIGNMENTS 08

Learning with a tribe DSM-R In-depth You will be learning with a small group of 8 equally motivated learners like you. We strike the right balance between large group instructions and give people smaller chambers of interaction for on-boarding applied sciences. Each group will be assigned a Data Science mentor. Plus, you also get exclusive solo sessions with the mentor. How do interventions work? You will meet your mentor once a week to review your progress and resolve any queries you may have during you are learning. Types of interventions Career related intervention Concept on-boarding intervention Mentored hackathons & Capstone projects Mock Interviews Industry use cases and applications Code-along sessions Ask me anything sessions Guidance on how to learn a particular concept, query resolution 09

Balaraman Ravindran Professor at IIT-Madras Mentors From the industry Paul Meinshausen Data Scientist at Montane Ventures Axel Oehmichen Research Associate at Imperial College London Why Mentorship is the key? Manas Ranjan Kar Associate Vice President - Data Science & NLP at Episource LLC Our mentors are data science practitioners who will guide you to achieve your learning goals, help you grow & share practical knowledge that they have gained over the years of practice. 10 ** Mentors will be assigned based on their availability

CURRICULUM 1. PYTHON DATA SCIENCE TOOLKIT 2. FOUNDATIONAL ML 3. SUPERVISED TECHNIQUES 4. MORE SUPERVISED, UNSUPERVISED ML TECHNIQUES 5. WORKING WITH TEXT DATA 6. CAPSTONE PROJECT 11

DSM-R At a glance Week 1-3 01 PYTHON DATA SCIENCE TOOLKIT 1. Data wrangling with Pandas 2. Data Visualization with Matplotlib 3. Solo Project # 01 Week 4-9 02 FOUNDATIONAL MACHINE LEARNING 1. Summarizing Data with Statistics 2. Introduction to Probability 3. Making inference from Data 4. Hands on Linear Algebra 5. Make your first prediction with Linear Regression 6. Regularization 7. Solo Project #2 Week 10-14 03 SUPERVISED TECHNIQUES 1. EDA and Data Pre-processing 2. Machine Learning: Logistics Regression 3. Improving your model with Feature 4. Selection (Challenges in ML) 5. Machine Learning: Decision Tree 6. Solo Project #3 Week 14-16 04 OTHER ML TECHNIQUES 1. Machine Learning: Ensembling and Random Forest, GBM 2. Machine Learning: Clustering/ k-means 3. Hackathon #01 Week 17-20 05 WORKING WITH TEXT DATA 1. Foundations of Text Analytics 2. Topic Modelling on Text 3. Sentiment Analysis using NLP 4. NLP Project Week 21-24 06 CAPSTONE PROJECT Choose your Capstone from multiple business problems with real impact 12

PYTHON DATA SCIENCE TOOLKIT If Data Science is a skill, the language through which it is picked up is Python. Python is a very beginner-friendly and versatile language with great community support. Companies all over the world use python to develop data science solutions that make a business impact. And shortly, it will be your turn, once you become a data scientist! In this module, you'll learn python in an elaborate manner by performing tasks while learning the concept by solving real industry problems Week 1-3 01. Data wrangling with Pandas Data Visualization with Matplotlib Solo Project # 01 - Analyse performance of different countries in Olympics from Wikipedia 1SPKFDUBOE-FBSOJOH 0VUDPNFT Learn to manipulate large data sets. You will be analysing performance of different countries in Olympics from Wikipedia to get insightful information and present visualizations using Python. This will help you build a strong foundation on statistical concepts and perform analysis with real world data sets using Python and its associated libraries. 13 ** Topics of the projects are subject to change depending on the then available industry data sets

02. FOUNDATIONAL MACHINE LEARNING Every great building needs a solid foundation. While working towards a career in Data Science, it is a no-brainer that a strong foundation is needed. In this module, we will brush up the mathematical building blocks - probability, statistics, linear algebra as well as get introduced to the first ML algorithm - Linear Regression. The math is onboarded in a gentle manner with intuition taking the front seat over jargon. Week 4-9 Summarizing Data with Statistics Introduction to Probability Making inference from Data Hands on Linear Algebra Make your first prediction with Linear Regression Regularization Solo Project #2 - Predict the customer's next recharge amount for Indus 1SPKFDUT-FBSOJOH 0VUDPNFT In this project, you will get a taste of your first industry data-set provided by Indus OS. In this project, you will build a model to predict the next mobile recharge by a user and the amount of recharge he is likely to do. 14 ** Topics of the projects are subject to change depending on the then available industry data sets

03. SUPERVISED TECHNIQUES After the successful completion of this module, one is expected to be proficient in various predictive models and handling dirty data. With this module, you will become proficient in taking an unclean and real dataset and transform it into a clean dataset on which any predictive model could be applied to derive insights. Week 10-14 EDA and Data Pre-processing Machine Learning: Logistic Regression Improving your model with Feature Selection (Challenges in ML) Machine Learning: Decision Tree Solo Project #3 : Predict the value of a future prospective football player to be purchased for the club. 1SPKFDUT-FBSOJOH 0VUDPNFT In this project, you don the hat of a football club manager. You will be building a model to predict the value of a future prospective player, you are planning to buy. 15 ** Topics of the projects are subject to change depending on the then available industry data sets

04. MORE SUPERVISED, UNSUPERVISED ML TECHNIQUES Boost your machine learning arsenal with more tools with advanced techniques like random forests and gradient boosting. Learn how to derive insights from even unlabelled data using unsupervised learning methods. These will take your machine learning mastery to the next level. Week 14-16 Machine Learning: Ensembling and Random Forest, GBM Machine Learning: Clustering/ k-means Hackathon #01 -Predict if a customer will perform a purchase or not. Projects & Learning Outcomes In this project, CleverTap wants you to predict the behaviour of customers - such as purchasing the product before they actually do it. This information is vital for online businesses which you will provide through data science. 16 ** Topics of the projects are subject to change depending on the then available industry data sets

05. WORKING WITH TEXT DATA Test the waters of Text analytics with a deep dive into advanced techniques like topic modelling and sentiment analysis. At the end of this module, you will be able to apply any machine learning model on text data. Week 17-20 Foundations of Text Analytics Topic Modelling on Text Sentiment Analysis using NLP NLP Project - Haptik - Classify a customer chat to guide him/her to the right business vertical. Projects & Learning Outcomes In this project, you would get access to Haptik's user chat conversations. You need to classify it into the right business vertical and assist the user with the requested services 17 ** Topics of the projects are subject to change depending on the then available industry data sets

06. CAPSTONE PROJECT A capstone project will allow the learners to create a usable/public data product and be used to test your data science learnt so far and showcase the same to potential employers. Projects are drawn from actual business use cases faced by companies. Week 21-24 Choose your Capstone from multiple business problems with real impact Projects & Learning Outcomes Our industry partner provides access to real data for you, which can then be mined for actionable insights in a time-bound industrial setting. 18 ** Topics of the projects are subject to change depending on the then available industry data sets

Testimonials Don t just take our word for it. Vishnu Kamath Manish Nemanna Kembral System Engineer at Infosys Vice-President at HDFC The instructors were amazing and the active involvement of founders was helpful. What I loved the most were guest speaker sessions. We got a great insight to what the industry needs which helped us learn the correct skills. Wonderful Experience!!! Data Science can be mastered only by working on real-life data sets which Greyatom provides in its curriculum.highly recommend to all the data science enthusiasts out there. Darshin Doshi Nitika Goel Data Scientist at Flexiloans Love their program. Awesome learning platform and very helpful interview prep. 19 Bhavesh Bhatt Data Scientist at Flexiloans Programmer at Cognizant GreyAtom has a unique and effective approach where the faculty breakdowns complicated concepts to easier milestones with practical executions that leave no room for not understanding concepts theoretically and practically.the curriculum is so comprehensive and industry-focused with real workflows and tools that will make you fall in love with learning and Data Science. I would recommend it to everyone who wants to learn Data Science. Multiple capstone projects at GreyAtom have helped me develop my skills on Big Data and all other elements of Data Science.

20 Students Placement Stories

21 Industry partners

Community partner 0VSDPNNVOJUZQBSUOFS%BUB(JSJJTUIFMBSHFTUEBUBTDJFODFDPNNVOJUZJO.VNCBJ*UJTXJEFMZTQSFBE BDSPTT`UIFHMPCFDPWFSJOH`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ct 28, 2017, 2.30 p.m. ISME, Mumbai 542 %BUB(JSJXJUI.PSHBO 4UBOMFZ Feb 24, 2018, 2:30 p.m. Morgan Stanley, Mumbai Attendees 396 Attendees %BUB!6#&35FDI5BML *O"TTPDJBUJPO8JUI %BUB(JSJ Mar 8, 2018 2:30 p.m. 91Springboard, Bengaluru 652 Attendees 22 +PJOVT

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