Metadata
Title
Master of Science in Intelligent Information Systems
Category
graduate
UUID
0302c972382d4bee919ed365e329b5b5
Source URL
https://lti.cmu.edu/academics/masters-programs/miis.html
Parent URL
https://ai.cmu.edu/curriculum
Crawl Time
2026-03-24T05:50:57+00:00
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Master of Science in Intelligent Information Systems

Source: https://lti.cmu.edu/academics/masters-programs/miis.html Parent: https://ai.cmu.edu/curriculum

The Master's in Intelligent Information Systems (MIIS) program focuses on recognizing and extracting meaning from text, spoken language, and video.

Overview

The Master's in Intelligent Information Systems degree focuses on recognizing and extracting meaning from text, spoken language and video. As an MIIS student, you’ll receive the department’s deepest exposure to content analysis and machine learning. In addition to completing the program’s coursework, you’ll work on directed study projects with your faculty advisor for two semesters; participate in a summer internship; and collaborate with your peers on a semester-long, group-oriented capstone project. This combination of classroom instruction, professional experience, and using new skills in significant projects with world-class colleagues will help prepare you for a successful career in industry or government. Our alumni have gone on to exciting careers at places like Apple, IBM and Google, and most have job offers within six weeks of graduation.

Requirements

The Intelligent Information Systems degree offers students the flexibility to create their own course of study in consultation with their advisor. \ \ MIIS students gain three types of practical experience: software development supervised by their advisor (24 units equivalent to two courses); a summer internship (which can be waived for students that have sufficient prior professional experience); and a capstone project executed in a group of peers (42 units equivalent to three 12-unit courses and one 6-unit course). This combination is proven to help IIS students to broaden their skills quickly. The MIIS degree is offered in two options:\ \ Option 1. Standard MIIS degree (MIIS-16) - A 16-month track that is completed in three academic semesters (fall, spring, fall) and a summer internship. \ \ Option 2. MIIS: Advanced Study degree (MIIS-21) - A 21-month track that is completed in four academic semesters (fall, spring, fall, spring) and a summer internship.\ \ MIIS: Advanced Study track offers an in-depth degree in one of the following areas of concentration:\ \

Part-time education option is available in some cases. \ \ MIIS-16 students must take at least 84 units (typically 7 courses) of qualifying and elective courses that satisfy human language, machine learning, and language technology applications breadth requirements. MIIS-21 students have to take at least two more courses from the selected concentration area to satisfy their degree requirements, making it total of 108 units (typically 9 courses) of qualifying and elective courses, that also satisfy breadth requirements.\ \ For a full list of requirements, read the MIIS Handbook.

Curriculum

MIIS-16

Example Course of Study #1

This schedule would satisfy course requirements for a student interested in text mining, text analytics and question-answering systems.

Fall 1 Spring Summer Fall 2
Machine Learning Search Engines Design and Engineering of Intelligent Systems\ Directed Study Language and Statistics Natural Language Processing Question Answering Directed Study MIIS Capstone Planning Seminar Internship Machine Learning for Text Mining MIIS Capstone Project

Example Course of Study #2

This schedule would satisfy course requirements for a student interested in voice-based computer applications.

Fall 1 Spring Summer Fall 2
Machine Learning Algorithms for NLP Speech Recognition and Understanding Directed Study Applied Machine Learning Competitive Engineering Design and Implementation of Speech Recognition Systems Directed Study MIIS Capstone Planning Seminar Internship Conversational Interfaces MIIS Capstone Project

Example Course of Study #3

This example would satisfy course requirements for a student interested in text mining, text analytics and question-answering systems who has petitioned to have the summer internship waived.

Fall 1 Spring Summer
Search Engines Analysis of Social Media Design and Engineering of Intelligent Systems Directed Study Machine Learning Natural Language Processing Question Answering Directed Study MIIS Capstone Planning Seminar Academic Research Practices and Scientific Communities MIIS Capstone Project

MIIS-21

Example Course of Study #1

This schedule would satisfy course requirements for a student interested in deepening their expertise in Machine Learning area of concentration.

Fall 1 Spring 1 Summer Fall 2 Spring 2
Search Engines Algorithms for NLP Intro to ML (MLD) MIIS Directed Study Question Answering Intro to Deep Learning MIIS Capstone Planning Seminar MIIS Directed Study Internship MIIS Capstone Project Applied ML ML for Text Mining ML for Signal Processing Elective

Example Course of Study #2

This schedule would satisfy course requirements for a student interested in deepening their expertise in Language Technology Applications area of concentration.

Fall 1 Spring 1 Summer Fall 2 Spring 2
Search Engines Algorithms for NLP Intro to ML (MLD) MIIS Directed Study Question Answering Intro to Deep Learning MIIS Capstone Planning Seminar MIIS Directed Study Internship MIIS Capstone Project Machine Translation Comp Semantics for NLP Neural Networks for NLP Elective

Example Course of Study #3

This example would satisfy course requirements for a student interested in deepening their expertise in Human Language area of concentration

Fall 1 Spring 1 Summer Fall 2 Spring 2
Natural Language Processing Algorithms for NLP Intro to ML (MLD) MIIS Directed Study Question Answering Intro to Deep Learning MIIS Capstone Planning Seminar MIIS Directed Study Internship MIIS Capstone Project Language and Statistics Comp Semantics for NLP ML for Signal Processing Elective

For a complete breakdown of curriculum and requirements, read the MIIS Handbook.

Admissions

Carnegie Mellon's School of Computer Science has a centralized online application process. Applications and all supporting documentation for fall admission to any of the LTI's graduate programs must be received by the application deadline. Incomplete applications will not be considered.

The application window for the Fall 2026 admissions cycle will open on September 3, 2025. Please see the SCS Graduate Admissions Page.

*Please note, we no longer require mailed, hard versions of transcripts or test scores at the time of application. Do not mail anything to the admissions office. If you are accepted to a program, you will be given instruction to then mail your materials.

Application Deadlines

Applications open on September 3, 2025

Early Deadline: Nov. 19, 2025 (3 p.m. EST) \ Final Deadline: Dec. 10, 2025 (3 p.m. EST)

Application Fees:$80 Early App Fee, $100 App Fee after Early Deadline

Fee Waivers

If the application fee presents financial hardship to the applicant, they may apply for a financial or participants of program fee waiver which is available within the application.

Requirements

The School of Computer Science requires the following for all Master's applications.

For more details on these requirements, please see the SCS Master's Admissions page.

In addition to the SCS guidelines, the MIIS requires:

\ No incomplete applications will be eligible for consideration.

For specific application/admissions questions, please contact lti-academics@andrew.cmu.edu

Program Contact

For more information about the MIIS program, contact Casey Walker.

Casey Walker

Academic Program Manager - MIIS

Office: 5414 Gates & Hillman Centers

Email: clwalker@andrew.cmu.edu