WHY NOW? Why Thayer School of Engineering at Dartmouth? The last few years have seen unprecedented growth in computational power, new users, new devices, new behaviors, new networks, platforms, and new data tools. The demand for data scientists — a 344 percent increase since 2013 alone — far outpaces the number of skilled applicants. 3X The Thayer School of Engineering at Dartmouth has a reputation for rigor, excellence, and cross-pollination across disciplines. What makes this program different? Data Science jobs are expected to grow almost three times as fast as other job categories in the coming years. One-to-one career coaching* Individual feedback Learning in real time Regular live webinars* Rigorous, graded assignments (Professional-level certificate) (SOURCE: BUREAU OF LABOR STATISTICS) Assistance with career planning Real-world application of knowledge Small group mentoring sessions Your Fast Track to a Job in Data Science World-class faculty and thought leadership Learn from and network with your colleagues through peer discussions Ivy League education Demand for data scientists crosses all industries as employers scramble to harness the power of data analytics to personalize their products, minimize risk, and expand into new markets. *Services provided by Emeritus, a learning partner for this program. The Professional Certificate in Applied Data Science online program from the Thayer School of Engineering at Dartmouth positions professionals to take full advantage of this trend. You will gain valuable career guidance on interview preparation, networking, crafting a strong LinkedIn profile, and increasing your visibility to potential employers. You will also be able to learn from and network with your colleagues through peer discussions. Start Date Duration Program Fees July 30, 2020 6 months online 10-15 hours per week $12,500 Full tuition $12,500 Financing options or starting at $98/Month Click here to learn more about financing options starting at $98/Month. 01 Professional Certificate in Applied Data Science LAUNCH, BUILD, SWITCH Who Is This Program For? Career Launchers, wanting to enter an exciting, evolving field with a foundation that assures flexibility as new platforms and technologies enter the field. Career Builders, ready to build upon existing skills, whether in a technical or non-technical capacity. PREREQUISITES: Skill requirement: A demonstrated knowledge of Calculus, Linear Algebra, Statistics, and Probabilities is required.* *Assessment: Students will be given an assessment to test their math skills prior to commencement of the program. You can view sample questions by clicking here. Career Switchers, looking for new ways to expand opportunities, engage in continuous learning, and increase earning potential. Upon completing this program, you will be ready to launch, build, or switch careers — to take advantage of new opportunities and be ready to face new challenges in the field of Data Science and Analytics. Whether it’s smart grids, predictive marketing, automated factories, algorithmic trading, automation using machine learning, sensor data that is analyzed to create the internet of things, or healthcare data that is being analyzed to create new therapies … practically every industry, every company, and every professional is now using data to make decisions. You will develop a data science portfolio that will help you join this growing community of data scientists, develop an online reputation and presence, and show prospective employers what you can do. Professional Certificate in Applied Data Science WANTED: DATA SCIENTIST In this role you will use data and your analytical ability to find and interpret rich data sources; manage large amounts of data; merge data sources; ensure consistency of datasets. You will create visualizations to aid in understanding data, build mathematical models using data, and produce and present data findings. 02 NOW IS THE TIME… …To learn the basic concepts required to become an entry-level data scientist or analyst, including data structuring, data visualization, basics of statistics, linear regression models, logistic regression, and machine learning applications. You will be able to apply these concepts using Python through coding demonstrations and hands-on assignments that reinforce the learning. High-level program takeaways include: Understand the basics and potential of Python coding through live coding sessions and application-based assignments. Create visualizations, build linear and logistic regression models, and apply common Machine Learning algorithms such as K-means clustering and random forest. Access the career guidance and 1-on-1 counseling you need — beyond resumes and LinkedIn profiles — to prepare for a future career in data science. Develop a data science portfolio to share with prospective employers seeking candidates for entry-level data science and related positions. 03 SAMPLE JOB POSTING FOR JUNIOR DATA SCIENTIST: We are seeking a Junior Data Scientist with an interest in predictive analytics and data modeling that will support our build out of the core algorithms powering our products. Your focus will be on coding and testing code in support of our core product algorithms. You will work with both internal as well as external data in order to form functioning revenue optimization models for our clients. You’ll work closely with our Data Scientists as you work to improve and expand our algorithms informing brands, owners, and developers in the hotel industry. Professional Certificate in Applied Data Science MEET YOUR PERSONAL CAREER SUCCESS TEAM Career Coaching + Mentorship from Industry Experts + Webinars = Job-Ready Confidence 1:1 Career Coaching Your team will help you to: Identify your abilities and preferences Craft a strong Linkedin profile Small Group Mentoring Sessions Live Webinars Where do you fit in the expanding universe of Data science? What is your unique skill set? One-to-one sessions with your Career Coach will help you develop your value proposition to employers. Mentors will help you navigate the challenges specific to data science careers in small group sessions. Regular Webinars will improve your networking and job search skills. You’ll use these Webinars to develop and practice delivering your elevator pitch for different audiences, identify interview goals, and practice developing a rapport with prospective employers. Pledge of Support and Disclaimer Our program support team includes data science mentors, career coaches, and course leaders to help you reach your goals. It is our primary goal to give you the skills needed to be prepared for a job in this field. We do not, however, guarantee you a job placement. Employment offers will depend on many factors, including your prior experience, education, and target job market. Professional Certificate in Applied Data Science Increase your visibility to prospective employers Prepare for job interviews in the field of data science Develop a portfolio to share with prospective employers that showcases your abilities and interests Network with peers, mentors, career coach, and the broader programming community Regular office hours, coaching sessions, and live instructor sessions ensure that you 'get it'. Graded assignments allow you to get the feedback you need to deepen your understanding of core concepts. Having a portfolio will allow you to hit the ground running. 04 PROGRAM HIGHLIGHTS This curriculum is based on portions of the Masters of Engineering Management Program taught at Dartmouth College by Professor Geoffrey Parker. It is organized around the skills that technology giants — such as Amazon, Google, Facebook, Apple, and McKinsey — value in data science professionals. Numerous participants in the on-campus version of the program have leveraged the skills acquired at Dartmouth to obtain positions in data analytics-oriented roles across a variety of industries. Target Job Functions Include: Data Visualization Program Learning Outcomes: Explore key concepts, tools, and techniques used in data science Explore examples of data science applications in the industry as a result of a dramatic growth in available data Machine Learning Learn or improve your coding in Python Apply the coding and data science knowledge acquired to real-world business challenges Risk Management Experiment with data science tools and techniques Gain valuable career guidance in data science 05 Predictive Capabilities Professional Certificate in Applied Data Science LEARNING JOURNEY Over the course of six months, you will develop a competency in data science fundamentals. By working directly with and recieving support from industry-expert mentors, you will be prepared for a shift into a career in data science. EARLY PROGRAM SESSION: 4-WEEK PYTHON CODING CAMP All students will participate in a four-week Python coding camp to prepare you to tackle the fundamentals of data science. Live office hours and moderated discussions boards offer personalized support. Module 1: Practical Applications of Analytics Module 6: Logistic Regression and Applying GLMs Module 2: Data Structures and Plotting Module 7: Data Visualization Strategies Module 8: Experimental Design, Causal Research, and Targeting Analysis Module 3: Introduction to Statistics and Probability Module 4: Linear Models – Ordinary Least Squares Module 9: Machine Learning Module 5: Linear Regression: Interactions and Transformations Module 10: Final Project to Your Job-Ready Portfolio Your Portfolio Professional Certificate in Applied Data Science 06 PROGRAM MODULES Modules and assignments focus on real-world application of concepts. You will have constant support from data science mentors in terms of learning to use and apply these concepts, as well as planning your career moves by helping to build a job-ready portfolio. Four Weeks: Python Coding Camp Before jumping into the fundamentals of data science techniques, you'll learn to code in Python over a four-week Python data coding camp. This is required for all participants. Module 1: Practical Applications of Analytics Examine use cases across industries of how organizations are leveraging data to identify new opportunities as well as the increasing significance of data analytics in capitalizing upon these opportunities. Engage with a problem-solving framework that can be leveraged in approaching data science problems. Module 2: Data Structures and Plotting Develop a fundamental understanding of data types, structures, and requirements for creating models. Module 3: Introduction to Statistics and Explore and apply concepts related to statistics, probabilities, means, and distributions. Probability • Learn to format data, work with data, and create simple plots in Python. • Explore sources, types, and requirements for data modeling • Assess ways of understanding data through exploratory data analysis • Explore plotting tools used to render easily comprehensible visualizations • Practice data cleaning and assembling complex datasets Utilize Python to create quantile-quantile plots and perform hypothesis tests. • 07 Explore the basics of statistics, including means and distributions, Q-Q plots, probability, and hypothesis testing Examine the different types of models Professional Certificate in Applied Data Science Module 4: Linear Models – Ordinary Least Squares Apply the problem-solving framework to the creation of univariate and multivariate linear regression models that minimize error and explain variation in your data. Interpret the output of models in ways that are understandable for general audiences. Apply metrics to regression models. • Explore robust models in linear regression • Assess how to interpret the outcomes of these models Module 5: Linear Regression: Interactions and Transformations Perform Shapiro-Wilks test to assess normality and execute transformations when necessary. Create multivariate models with interaction variables. Compare and select models based upon factors, such as goodness of fit and model complexity. Communicate results to a general audience. • Examine model diagnostics, model fitting, and selection criteria • Explore strategies for interpreting models and presenting results Module 6: Logistic Regression and Applying GLMs Apply the problem solving framework to the creation of logistic regression models that determine the odds and probabilities of a given outcome. Interpret the output of models in ways that can be communicated to a general audience. Apply metrics to classification models. • Explore logistic functions, plots, and density functions • Explore the concept of logit link function Module 7: Data Visualization Strategies Explore and apply knowledge of key strategies for effective data visualization. Plot different types of data using Seaborn in Python. Create a Dash interactive app in Python. • Examine data visualization strategies • Explore examples of effective and ineffective visualizations Professional Certificate in Applied Data Science 08 Module 8: Experimental Design, Causal Research, and Targeting Analysis Explore techniques in experimental design, A/B testing, and Targeting Analysis. Module 9: Machine Learning Apply ML techniques, such as K-means clustering, Random Forest, Classification and Regression Trees, and Resampling through K-Fold Cross-Validation. Perform an A/B test in Python. • Explore causal attribution through difference-in-difference estimates and A/B testing • Assess the key factors to be considered while performing experiments and research Engage with applications of machine learning in industry. • Explore the relevance of machine learning in the industry • Explore algorithms that are likely to be encountered in practice, such as k-means clustering and random forest Module 10: Final Project to Your Job-Ready Portfolio Develop a project and presentation to demonstrate the knowledge of the various tools and techniques explored in the program. Sample Assignments: Explore and apply five common Machine Learning algorithms Perform RFM analysis to identify your most profitable customers Apply what you have learned throughout the program to a final project and presentation that will become the first part of your data science portfolio 09 Professional Certificate in Applied Data Science YOUR PORTFOLIO A final capstone project allows you to pull together everything you have learned in the program and compose a portfolio. Examples of previous student projects include: The Power of Social Media Quality in U.S. Healthcare Wine Uncorked Super Bowl Analysis Trends and Patterns in U.S. Electricity Retail Prices Flight Search Engine with Delay Prediction The Brooklyn Real Estate Market What Influences the Price of Airbnb? Featured Student Projects Wine Uncorked By Avantika Agarwal, Dan Grande, Brad Martin, Jess Nunez, Vamshi Venkatesh, Julia Winder Airbnb: A Data Analytics Report By Adam Re, Deeksha Maggoo, Mayuresh Vaidya, Neerja Bakshi and Tayla Ma The study explores the wonderful world of wine through predictive modeling and data visualization. The study shares the case of Airbnb as a primary focal company which uses a platform as their primary business model. Flight Delayed By Theodore Gordon, Andrew Hennesy, Sagar Rastogi, Kam Yan The Brooklyn Real Estate Market By Saranya Bhattacharya, Matt Capotosto, Gibs Donohue, Kening Peng, Mengou Yang The study determines what factors most influence the probability of flights being delayed at Boston Logan Airport. In addition to prediction, users will be provided an easy visualization of the data via Tableau. Professional Certificate in Applied Data Science The study presents the business case and initial hypothesis; data interpretation using descriptive statistics; building a model to predict home prices; and packaging the model into a home seller pricing tool. 10 PROGRAM FACULTY Geoffrey Parker Professor of Engineering at Dartmouth College Director of the Master of Engineering Management Program at Thayer School of Engineering Geoffrey Parker is Professor of Engineering at Dartmouth College, where he also serves as Director of the Master of Engineering Management Program. Parker also teaches regularly in the Dartmouth Tuck School of Business executive education program. In addition, he is a research fellow at MIT’s Initiative for the Digital Economy where he leads platform industry research studies and co-chairs the annual MIT Platform Strategy Summit. Prior to joining the Dartmouth faculty, he was Professor of Management Science at the Tulane University A. B. Freeman School of Business. He received a B.S.E. from Princeton and M.S. and Ph.D. from MIT. Parker has made significant contributions to the field of network economics and strategy as co-developer of the theory of “two-sided” markets. He is co-author of the book Platform Revolution. His current research includes studies of platform business strategy and economics, data governance and regulation with application in areas “My goal is to demystify data analytics and help you unlock your potential as a data scientist. Together we will explore this landscape and develop your toolkit so that, using data science, you can provide valuable solutions to your future organization. My hope is that you will learn the key concepts to accelerate your journey of becoming a successful data scientist, whatever your industry or field of work may be.” –Geoffrey Parker Professor of Engineering at Dartmouth College Director of the Master of Engineering Management Program at Thayer School of Engineering such as finance, logistics, energy, and healthcare. Parker is a frequent keynote speaker and advises senior leaders on their organizations’ platform strategies. Before attending MIT, he held positions in engineering and finance at GE Semiconductor and GE Healthcare. Accolades Top 10 Harvard Business Review Must Reads for 2017; Top 10 Harvard Business Review Must Reads for Business Models 2019 (Pipelines, platforms, and the new rules of strategy, 2016) Top Ten Course, Tuck School of Business, 2018 (Platforms) Best Paper Award, MIS Quarterly, 2017 (Platform Ecosystems: How Developers Invert the Firm) Golden Book Award Best Business Book, 2016 (Platform Revolution, Mandarin edition) All Time Top 50 Harvard Business Review article (Strategies for Two-Sided Markets) 11 Professional Certificate in Applied Data Science PROFESSIONAL CERTIFICATE This is a rigorous, fully graded, skill-based program. The Professional Certificate in Applied Data Science from Thayer School of Engineering at Dartmouth shows prospective employers that you are ready to take on a challenging role in data science, from concept to code. This is to certify that John Smith has completed the studies and satisfied the requirements for the online Professional Certificate in Applied Data Science February 18, 2021 Geoffrey G. Parker Professor of Engineering Alexis Abramson Dean, Thayer School of Engineering Powered by About the Thayer School of Engineering at Dartmouth Located in Hanover, New Hampshire, Dartmouth has one of the oldest professional schools of engineering in the country offering an engineering sciences education unencumbered by departmental divisions that fosters cross-disciplinary innovation in research and teaching. Graduate programs at Thayer School of Engineering at Dartmouth include the Master of Engineering Management (MEM), MS, PhD, dual degrees with The Geisel School of Medicine at Dartmouth, and the nation's first PhD Innovation Program. Dartmouth undergraduates study engineering as part of a liberal arts education leading to the Bachelor of Arts (AB) degree; most majors take additional courses leading to the professional Bachelor of Engineering (BE) degree. Professional Certificate in Applied Data Science About Emeritus The Thayer School of Engineering at Dartmouth is collaborating with online education provider EMERITUS to deliver its Professional Certificate programs through a dynamic, interactive, digital learning platform. By working with EMERITUS, the Thayer Engineering School brings its growing portfolio of courses online to address the evolving demands of individuals entering the growing field of Data Science. EMERITUS’ approach to learning is based on a cohort-based design to maximize peer to peer sharing and includes live teaching with world-class faculty and hands-on project-based learning. In the last year, more than 30,000 students from over 150 countries have benefited professionally from EMERITUS’ programs. 12 A COMMUNITY OF LEARNERS Using the ‘flipped classroom’ format, Professor Parker's lecture videos will offer a high-level overview of the key concepts. Students are encouraged to participate in assignments with the guidance of subject matter experts. You will engage in these assignments through live web chats with the guidance of Course Leaders (CLs). You will be able to share your screens while working on these assignments and will have opportunities to benefit both from peer learning and CL guidance. Live Coding Sessions are one assignment type for this program. There are also coding exercises using platforms such as Vocareum and Atomic Assessments. Small group sessions allow for high-touch mentoring and hands-on learning. Synchronous learning — when learning occurs at the same time, but not in the same place — replicates a classroom learning environment, so you learn from your peers, course leaders and 13 mentors, brainstorm, share assignments, experience team learning and community/network-building in real-time group chats. Assignments are built around real-world tasks that prepare students to contribute creative input in data science. The program is fully graded — allowing you to not only measure your own progress but to provide prospective employers with concrete evidence of the skills you have mastered. Program videos are of two types: (1) Main concept videos and (2) coding demos. The main concept videos are filmed with Professor Parker. These include core frameworks of data science that won’t get outdated and are scaffolded with demo videos (screen captures) for Python. Professional Certificate in Applied Data Science Easily schedule a call with a program advisor to learn more SCHEDULE A CALL You can apply for the program here APPLY CONNECT WITH A PROGRAM ADVISOR Email: dartmouth@emeritus.org Phone: +1 315-982-5094