About the Program
The Master of Information and Data Science (MIDS) is a part-time professional degree program that prepares students to work effectively with heterogeneous, real-world data (ranging from tweet streams and call records to mouse clicks and GPS coordinates) and to extract insights from the data using the latest tools and analytical methods. The program emphasizes the importance of asking good research or business questions as well as the ethical and legal requirements of data privacy and security.
The curriculum includes research design and applications for data and analysis, storing and retrieving data, exploring and analyzing data, identifying patterns in data, and effectively visualizing and communicating data. MIDS features a project-based approach to learning and encourages the pragmatic application of a variety of different tools and methods to solve complex problems.
Graduates of the program will be able to:
- Imagine new and valuable uses for large datasets;
- Retrieve, organize, combine, clean, and store data from multiple sources;
- Apply appropriate data mining, statistical analysis, and machine learning techniques to detect patterns and make predictions;
- Design visualizations and effectively communicate findings; and
- Understand the ethical and legal requirements of data privacy and security.
Admissions
Admission to the University
Minimum Requirements for Admission
The following minimum requirements apply to all graduate programs and will be verified by the Graduate Division:
- A bachelor’s degree or recognized equivalent from an accredited institution;
- A grade point average of B or better (3.0);
- If the applicant comes from a country or political entity (e.g., Quebec) where English is not the official language, adequate proficiency in English to do graduate work, as evidenced by a TOEFL score of at least 90 on the iBT test, 570 on the paper-and-pencil test, 230 on the computer-based test, or an IELTS Band score of at least 7 (note that individual programs may set higher levels for any of these); and
- Sufficient undergraduate training to do graduate work in the given field.
Applicants Who Already Hold a Graduate Degree
The Graduate Council views academic degrees not as vocational training certificates but as evidence of broad training in research methods, independent study, and articulation of learning. Therefore, applicants who already have academic graduate degrees should be able to pursue new subject matter at an advanced level without need to enroll in a related or similar graduate program.
Programs may consider students for an additional academic master’s or professional master’s degree only if the additional degree is in a distinctly different field.
Applicants admitted to a doctoral program that requires a master’s degree to be earned at Berkeley as a prerequisite (even though the applicant already has a master’s degree from another institution in the same or a closely allied field of study) will be permitted to undertake the second master’s degree, despite the overlap in field.
The Graduate Division will admit students for a second doctoral degree only if they meet the following guidelines:
- Applicants with doctoral degrees may be admitted for an additional doctoral degree only if that degree program is in a general area of knowledge distinctly different from the field in which they earned their original degree. For example, a physics PhD could be admitted to a doctoral degree program in music or history; however, a student with a doctoral degree in mathematics would not be permitted to add a PhD in statistics.
- Applicants who hold the PhD degree may be admitted to a professional doctorate or professional master’s degree program if there is no duplication of training involved.
Applicants may apply only to one single degree program or one concurrent degree program per admission cycle.
Any applicant who was previously registered at Berkeley as a graduate student, no matter how briefly, must apply for readmission, not admission, even if the new application is to a different program.
Required Documents for Applications
- Transcripts: Applicants may upload unofficial transcripts with your application for the departmental initial review. If the applicant is admitted, then official transcripts of all college-level work will be required. Admitted applicants must request a current transcript from every post-secondary school attended, including community colleges, summer sessions, and extension programs. Official transcripts must be in sealed envelopes as issued by the school(s) attended. If you have attended Berkeley, upload your unofficial transcript with your application for the departmental initial review. If you are admitted, an official transcript with evidence of degree conferral will not be required.
- Letters of recommendation: Applicants may request online letters of recommendation through the online application system. Hard copies of recommendation letters must be sent directly to the program, not the Graduate Division.
- Evidence of English language proficiency: All applicants from countries or political entities in which the official language is not English are required to submit official evidence of English language proficiency. This applies to applicants from Bangladesh, Burma, Nepal, India, Pakistan, Latin America, the Middle East, the People’s Republic of China, Taiwan, Japan, Korea, Southeast Asia, most European countries, and Quebec (Canada). However, applicants who, at the time of application, have already completed at least one year of full-time academic course work with grades of B or better at a US university may submit an official transcript from the US university to fulfill this requirement. The following courses will not fulfill this requirement: 1) courses in English as a Second Language, 2) courses conducted in a language other than English, 3) courses that will be completed after the application is submitted, and 4) courses of a non-academic nature. If applicants have previously been denied admission to Berkeley on the basis of their English language proficiency, they must submit new test scores that meet the current minimum from one of the standardized tests.
Where to Apply
Visit the Berkeley Graduate Division application page .
Admission to the Program
Applications are evaluated holistically on a combination of prior academic performance, GRE/GMAT score, work experience, statement of purpose, and letters of recommendation.
The UC Berkeley School of Information seeks students with the academic abilities to meet the demands of a rigorous graduate program.
To be eligible to apply to the Master of Information and Data Science program, applicants must meet the following requirements:
- A bachelor’s degree or its recognized equivalent from an accredited institution.
- Superior scholastic record, normally well above a 3.0 GPA.
- Official Graduate Record Examination (GRE) General Test or Graduate Management Admission Test (GMAT) scores.
- A high level of quantitative ability as demonstrated by scores in the top 15 percent in the Quantitative section of either the GRE or GMAT, five years of technical work experience, or significant work experience that demonstrates your quantitative abilities.
- A high level of analytical reasoning ability and a problem-solving mindset as demonstrated in academic and/or professional performance.
- A working knowledge of fundamental concepts including: data structures, algorithms and analysis of algorithms, and linear algebra.
- Programming proficiency as demonstrated by prior work experience or advanced coursework. (For example: Python, Java, or R.)
- The ability to communicate effectively, as demonstrated by strong scores in the Verbal and Writing sections of either the GRE or GMAT, academic performance, or professional experience.
- A Statement of Purpose that clearly indicates professional career goals and reasons for seeking the degree.
- Official Test of English as a Foreign Language (TOEFL) scores for applicants whose academic work has been in a country other than the US, UK, Australia, or English-speaking Canada.
For more information and application instructions, please visit the datascience@berkeley Admissions Overview .
Master's Degree Requirements
Unit Requirements
The Master of Information and Data Science is designed to be completed in 20 months, but other options are available to complete the program. You will complete 27 units of course work over an average of five terms, taking a maximum of 9 units each term. Courses are divided into foundation courses (15 units), advanced courses (9 units), and a synthetic capstone (3 units). You will also complete an immersion at the UC Berkeley campus.
Curriculum
Foundation Courses | ||
DATASCI W201 | Research Design and Applications for Data and Analysis | 3 |
DATASCI W203 | Statistics for Data Science | 3 |
DATASCI W205 | Storing and Retrieving Data | 3 |
DATASCI W207 | Applied Machine Learning | 3 |
DATASCI W209 | Data Visualization and Communication | 3 |
Advanced Courses | ||
DATASCI W231 | Behind the Data: Humans and Values | 3 |
DATASCI W241 | Experiments and Causal Inference | 3 |
DATASCI W251 | Scaling Up! Really Big Data | 3 |
DATASCI W261 | Machine Learning at Scale | 3 |
DATASCI W271 | Statistical Methods for Discrete Response, Time Series, and Panel Data | 3 |
Capstone Course | ||
DATASCI W210 | Capstone | 3 |
Immersion
As a Master of Information and Data Science (MIDS) student, the immersion is your opportunity to meet faculty and peers in person on the UC Berkeley campus. You will have the opportunity to gain on-the-ground perspectives from faculty and industry leaders, meet with data science professionals, and soak up more of the School of Information (I School) culture. Offered twice a year, each four- to five-day immersion will be custom crafted to deliver additional learning, networking, and community-building opportunities.
Please refer to the datascience@berkeley website for more information.
Courses
Information and Data Science
DATASCI W201 Research Design and Applications for Data and Analysis 3 Units
Offered through: Information
Terms offered: Fall 2017, Summer 2017, Spring 2017
Introduces the data sciences landscape, with a particular focus on learning data science techniques to uncover and answer the questions students will encounter in industry. Lectures, readings, discussions, and assignments will teach how to apply disciplined, creative methods to ask better questions, gather data, interpret results, and convey findings to various audiences. The emphasis throughout is on making practical contributions to real decisions that organizations will and should make. Course must be taken for a letter grade to fulfill degree requirements.
Rules & Requirements
Prerequisites: Master of Information and Data Science students only
Hours & Format
Online: This is an online course.
Additional Details
Subject/Course Level: Data Science/Graduate
Grading: Letter grade.
Instructor: Weber
DATASCI W203 Statistics for Data Science 3 Units
Offered through: Information
Terms offered: Fall 2017, Summer 2017, Spring 2017
An introduction to many different types of quantitative research methods and statistical techniques for analyzing data. We begin with a focus on measurement, inferential statistics and causal inference using the open-source statistics language, R. Topics in quantitative techniques include: descriptive and inferential statistics, sampling, experimental design, tests of difference, ordinary least squares regression, general linear models. Course must be taken for a letter grade to fulfill degree requirements.
Rules & Requirements
Prerequisites: Master of Information and Data Science students only.<BR/>College-level statistics course or equivalent
Hours & Format
Fall and/or spring: 15 weeks - 3 hours of web-based lecture per week
Summer: 15 weeks - 3 hours of web-based lecture per week
Online: This is an online course.
Additional Details
Subject/Course Level: Data Science/Graduate
Grading: Letter grade.
Instructor: Cheshire
DATASCI W205 Storing and Retrieving Data 3 Units
Offered through: Information
Terms offered: Fall 2017, Summer 2017, Spring 2017
Data Science depends on data, and a core competency mandated by this reliance on data is knowing effective and efficient ways to manage, search and compute over that data. This course is focused on how data can be stored, managed and retrieved as needed for use in analysis or operations. The goal of this course is provide students with both theoretical knowledge and practical experience leading to mastery of data management, storage and retrieval with very large-scale data sets. Course must be taken for a letter grade to fulfill degree requirements.
Rules & Requirements
Prerequisites: Master of Information and Data Science students only. Intermediate competency in Python, C, or Java, and competency in Linux, GitHub, and relevant Python libraries; or permission of instructor. Knowledge of database management including SQL is recommended but not required
Hours & Format
Online: This is an online course.
Additional Details
Subject/Course Level: Data Science/Graduate
Grading: Letter grade.
Instructor: Larson
DATASCI W207 Applied Machine Learning 3 Units
Offered through: Information
Terms offered: Fall 2017, Summer 2017, Spring 2017
Machine learning is a rapidly growing field at the intersection of computer science and statistics concerned with finding patterns in data. It is responsible for tremendous advances in technology, from personalized product recommendations to speech recognition in cell phones. This course provides a broad introduction to the key ideas in machine learning. The emphasis will be on intuition and practical examples rather than theoretical results, though some experience with probability, statistics, and linear algebra will be important. Course must be taken for a letter grade to fulfill degree requirements.
Rules & Requirements
Prerequisites: Master of Information and Data Science students only. Data Science W201, W203. Intermediate competency in Python, C, or Java, and competency in Linux, GitHub, and relevant Python libraries; or permission of instructor. Linear algebra is recommended
Hours & Format
Online: This is an online course.
Additional Details
Subject/Course Level: Data Science/Graduate
Grading: Letter grade.
Instructor: Hearst
DATASCI W209 Data Visualization and Communication 3 Units
Offered through: Information
Terms offered: Fall 2017, Summer 2017, Spring 2017
Communicating clearly and effectively about the patterns we find in data is a key skill for a successful data scientist. This course focuses on the design and implementation of complementary visual and verbal representations of patterns and analyses in order to convey findings, answer questions, drive decisions, and provide persuasive evidence supported by data. Assignments will give hands-on experience designing data graphics and visualizations, and reporting findings in prose. Course must be taken for a letter grade to fulfill degree requirements.
Rules & Requirements
Prerequisites: Master of Information and Data Science students only. DATASCI W203. Students must take DATASCI W205 concurrently or prior to DATASCI W209. If taken concurrently, students may not drop W205 and remain in W209
Hours & Format
Online: This is an online course.
Additional Details
Subject/Course Level: Data Science/Graduate
Grading: Letter grade.
Instructor: Ryokai
Offered through: Information
Terms offered: Fall 2017, Summer 2017, Spring 2017
The capstone course will cement skills learned throughout the MIDS program – both core data science skills and “soft skills” like problem-solving, communication, influencing, and management – preparing students for success in the field. The centerpiece is a semester-long group project in which teams of students propose and select project ideas, conduct and communicate their work, receive and provide feedback (in informal group discussions as well as formal class presentations), and deliver compelling presentations along with a Web-based final deliverable. Includes relevant readings, case discussions, and real-world examples and perspectives from panel discussions with leading data science experts and industry practitioners.
Rules & Requirements
Prerequisites: Master of Information and Data Science Students only.<BR/>Students must have completed (or are completing during the same semester) all core courses (Data Science W201, W203, W205, W207 and W209)
Hours & Format
Online: This is an online course.
Additional Details
Subject/Course Level: Data Science/Graduate
Grading: Letter grade.
DATASCI W231 Behind the Data: Humans and Values 3 Units
Offered through: Information
Terms offered: Fall 2017, Summer 2017, Spring 2017
Intro to the legal, policy, and ethical implications of data, including privacy, surveillance, security, classification, discrimination, decisional-autonomy, and duties to warn or act. Examines legal, policy, and ethical issues throughout the full data-science life cycle — collection, storage, processing, analysis, and use — with case studies from criminal justice, national security, health, marketing, politics, education, employment, athletics, and development. Includes legal and policy constraints and considerations for specific domains and data-types, collection methods, and institutions; technical, legal, and market approaches to mitigating and managing concerns; and the strengths and benefits of competing and complementary approaches.
Rules & Requirements
Prerequisites: MIDS and MPA students only
Hours & Format
Online: This is an online course.
Additional Details
Subject/Course Level: Data Science/Graduate
Grading: Letter grade.
Instructor: Mulligan
DATASCI W241 Experiments and Causal Inference 3 Units
Offered through: Information
Terms offered: Fall 2017, Summer 2017, Spring 2017
This course introduces students to experimentation in the social sciences. This topic has
increased considerably in importance since 1995, as researchers have learned to think
creatively about how to generate data in more scientific ways, and developments in information
technology have facilitated the development of better data gathering. Key to this area of inquiry is
the insight that correlation does not necessarily imply causality. In this course, we learn how to
use experiments to establish causal effects and how to be appropriately skeptical of findings
from observational data.
Rules & Requirements
Prerequisites: Data Science W201 and W203
Hours & Format
Online: This is an online course.
Additional Details
Subject/Course Level: Data Science/Graduate
Grading: Letter grade.
DATASCI W251 Scaling Up! Really Big Data 3 Units
Offered through: Information
Terms offered: Fall 2017, Summer 2017, Spring 2017
An overview of the contemporary toolkits for problems related to cloud computing and big data. Because the class is an advanced course, we generally assume familiarity with the concepts and spend more time on the implementation. Every lecture is followed by a hands-on assignment, where students get to experience some of the technologies covered in the lecture. By the time students complete the course, they should be able to name the big data problem they are facing, select proper tooling, and know enough to start applying it.
Rules & Requirements
Prerequisites: Master of Information and Data Science students only. Students must have completed Data Science W201, W203, and W205 before enrolling in this course. They should be able to program in C, Python, or Java and/or be able to pick up a new programming language quickly. A degree of fluency is expected with the basics of operating systems (e.g., Linux and the Internet Technologies
Hours & Format
Online: This is an online course.
Additional Details
Subject/Course Level: Data Science/Graduate
Grading: Letter grade.
DATASCI W261 Machine Learning at Scale 3 Units
Offered through: Information
Terms offered: Fall 2017, Summer 2017, Spring 2017
This course teaches the underlying principles required to develop scalable machine learning pipelines for structured and unstructured data at the petabyte scale. Students will gain hands-on experience in Apache Hadoop and Apache Spark.
Rules & Requirements
Prerequisites: Master of Information and Data Science students only. <BR/>Data Science W207. Intermediate programming skills in an object-oriented language (e.g., Python)
Hours & Format
Online: This is an online course.
Additional Details
Subject/Course Level: Data Science/Graduate
Grading: Letter grade.
DATASCI W266 Natural Language Processing 3 Units
Offered through: Information
Terms offered: Fall 2017, Spring 2017, Fall 2016
Understanding language is fundamental to human interaction. Our brains have evolved language-specific circuitry that helps us learn it very quickly; however, this also means that we have great difficulty explaining how exactly meaning arises from sounds and symbols. This course is a broad introduction to linguistic phenomena and our attempts to analyze them with machine learning. We will cover a wide range of concepts with a focus on practical applications such as information extraction, machine translation, sentiment analysis, and summarization.
Rules & Requirements
Prerequisites: Master of Information and Data Science students only. Data Science W207
Hours & Format
Fall and/or spring: 15 weeks - 3 hours of web-based lecture per week
Summer: 15 weeks - 3 hours of web-based lecture per week
Online: This is an online course.
Additional Details
Subject/Course Level: Data Science/Graduate
Grading: Letter grade.
Instructor: Daniel Gillick
DATASCI W271 Statistical Methods for Discrete Response, Time Series, and Panel Data 3 Units
Offered through: Information
Terms offered: Fall 2017, Summer 2017, Spring 2017
A continuation of Data Science W203 (Exploring and Analyzing Data), this course trains data science students to apply more advanced methods from regression analysis and time series models. Central topics include linear regression, causal inference, identification strategies, and a wide-range of time series models that are frequently used by industry professionals. Throughout the course, we emphasize choosing, applying, and implementing statistical techniques to capture key patterns and generate insight from data. Students who successfully complete this course will be able to distinguish between appropriate and inappropriate techniques given the problem under consideration, the data available, and the given timeframe.
Rules & Requirements
Prerequisites: Master of Information and Data Science students only. Data Science W203. Hands-on experience in R. Prior coursework in linear Algebra
Hours & Format
Fall and/or spring: 15 weeks - 3 hours of web-based lecture per week
Summer: 15 weeks - 3 hours of web-based lecture per week
Online: This is an online course.
Additional Details
Subject/Course Level: Data Science/Graduate
Grading: Letter grade.
Faculty and Instructors
Faculty
David Bamman, Assistant Professor.
Robert Berring, Professor. China, law, contracts, Chinese law.
Research Profile
Jenna Burrell, Associate Professor.
Coye Cheshire, Associate Professor. Sociology, trust, social media, social psychology, social networks, collective action, social exchange, information exchange, social incentives, reputation, internet research, online research, online dating, online behavior.
Research Profile
John Chuang, Professor. Computer networking, computer security, economic incentives, ICTD.
Research Profile
Paul Duguid, Adjunct Professor. Trademark, information, communities of practice.
Research Profile
Robert J. Glushko, Adjunct Professor.
Morten Hansen, Professor.
Marti A. Hearst, Professor. Information retrieval, human-computer interaction, user interfaces, information visualization, web search, search user interfaces, empirical computational linguistics, natural language processing, text mining, social media.
Research Profile
Ray Larson, Professor. Information Retrieval system design and evaluation, database management.
Research Profile
Deirdre Mulligan, Associate Professor.
Geoffrey D. Nunberg, Adjunct Professor.
Zach Pardos, Assistant Professor. Education Data Science, Learning Analytics, Big Data in Education, data mining, Data Privacy and Ethics, Computational Psychometrics, Digital Learning Environments, Cognitive Modeling, Bayesian Knowledge Tracing, Formative Assessment, Learning Maps, machine learning.
Research Profile
Tapan Parikh, Associate Professor.
David H. Reiley, Adjunct Professor.
Kimiko Ryokai, Associate Professor.
Pamela Samuelson, Professor. Public policy, intellectual property law, new information technologies, traditional legal regimes, information management, copyright, software protection and cyberlaw.
Research Profile
Annalee Saxenian, Professor. Innovation, information management, entrepreneurship, Silicon Valley, regional economic development, high skilled immigration, Asian development.
Research Profile
Doug Tygar, Professor. Privacy, technology policy, computer security, electronic commerce, software engineering, reliable systems, embedded systems, computer networks, cryptography, cryptology, authentication, ad hoc networks.
Research Profile
Steven Weber, Professor. Political science, international security, international political economy, information science.
Research Profile
Qiang Xiao, Adjunct Professor.
Lecturers
Brooks D. Ambrose, Lecturer.
Lefteris Anastasopoulos, Lecturer.
Olukayode Segun Ashaolu, Lecturer.
Kurt Beyer, Lecturer.
Dav Clark, Lecturer.
Steven Fadden, Lecturer.
Alexander Gilgur, Lecturer.
Benjamin T. Gimpert, Lecturer.
Nathaniel Stanley Good, Lecturer.
Annette Greiner, Lecturer.
Quentin R. Hardy, Lecturer.
Anna Lauren Hoffmann, Lecturer.
Todd Michael Holloway, Lecturer.
Douglas Alex Hughes, Lecturer.
Jez Humble, Lecturer.
Coco Krumme, Lecturer.
Arash Nourian, Lecturer.
Emmanouil Papangelis, Lecturer.
Daniel Percival, Lecturer.
Daniel Perry, Lecturer.
Elisabeth Prescott, Lecturer.
Dmitry Rekesh, Lecturer.
Blaine Gary Robbins, Lecturer.
Ali Sanaei, Lecturer.
Juanjie Joyce Shen, Lecturer.
David Steier, Lecturer.
Andreas Weigend, Lecturer.
Peter Frank Weis, Lecturer.
Jake Ryland Williams, Lecturer.
Scott Young, Lecturer.
Visiting Faculty
Ramakrishna Akella, Visiting Professor.
Paul Duguid, Visiting Professor. Trademark, information, communities of practice.
Research Profile
Paul Laskowski, Visiting Assistant Professor.
Emeritus Faculty
Michael Buckland, Professor Emeritus. Information management, information retrieval, metadata, library services.
Research Profile
Michael D. Cooper, Professor Emeritus. Analysis, design, database management systems, implementation and evaluation of information systems, computer performance monitoring and evaluation, and library automation.
Research Profile
William S. Cooper, Professor Emeritus.
M. E. Maron, Professor Emeritus.
Nancy A. Van House, Professor Emeritus. Digital libraries, science, information management, technology studies, knowledge communities, user needs, information tools, artifacts, participation of users.
Research Profile