Online Quantitative Finance Graduate Certificate
Harness the power of finance and technology through this graduate certificate program.
Quantitative Finance Graduate Certificate Highlights
High Quality Education
The financial landscape is evolving rapidly, driven by groundbreaking technological advancements. As quantitative tools become more sophisticated, the industry is increasingly turning to technology to inform strategic decision-making.
Our certificate program equips you with the essential skills to bridge the gap between finance and technology. Through a carefully curated curriculum, you’ll learn to:
- Master quantitative tools: Gain proficiency in advanced analytical techniques.
- Leverage technological solutions: Explore cutting-edge applications that drive innovation in finance.
- Apply your knowledge in practice: Collaborate with peers in real-world scenarios to solidify your understanding.
Flexibility
- 100% online
- Only 12 credit hours
- Start in the fall, spring, or summer semester
Support from Application through Graduation
At UC, you’ll have a full support team behind you:
Enrollment Services Advisor: Your partner through the application process, getting enrolled, and starting your program
Student Success Coordinator: Helping you prepare for classes and stay on track
Access to Resources: Access to university resources that will support you through your program including online learning expectations and resources, health and wellness resources, and academic support
The online Quantitative Finance Certificate curriculum prepares professionals to improve their quantitative finance skills.
The program consists of 12 credits; 8 core hours and 4 elective hours.
| Course | Title/Description | Credit |
|---|---|---|
ECON7011C OR FIN7031 |
Econometrics for Finance This is an introductory masters level course in econometrics emphasizing econometrics foundations and financial data analysis. The course covers topics in time series analysis with an emphasis on applications rather than econometric theory. The course is designed to enable students to perform independently comprehensive financial data analysis using statistical software packages. OR Financial Econometrics Analysis of financial data is a core component of investment management. You need to be comfortable and adept at sampling, modeling, regression analysis, and hypothesis design and testing in order to be an effective financial analyst. In this course we will cover many of the basic statistical and probability concepts that are central to financial analysis. Along the way we will touch on various finance concepts and terms, so, in part, this course will provide you with a conceptual introduction to various investment topics. |
3 |
FIN7037 OR FIN7042 |
Fixed Income This course examines fixed-income markets, with an emphasis on the pricing and risk of fixed income securities, derivatives, and portfolios. Bond immunization and trading strategies will be discussed with an in-depth coverage of both Treasury and Corporate Debt Securities. We will explain how Federal Reserve uses monetary policy to influence the term structure of interest rates. This course helps students to establish a solid foundation in understanding fixed-income securities and furthermore to apply such knowledge to real-world investment decisions in bond markets. OR Options and Futures The principal objective of this course is to provide a detailed examination of options, futures, forwards, and swaps. By the end of the course students will have a good knowledge of how these contracts work, how they are traded, how they are used, and how they are priced. A major emphasis in the class will be on how derivative instruments are used by financial institutions in light of recent economic events. |
3 |
| FIN7032 | Quantitative Equity Investing This course introduces students to applied research and applications in quantitative equity investing. First, students will learn about the empirical evidence related to prominent equity factors including size, value, and momentum. Second, students will learn how to construct and backtest factor strategies using real data. Finally, students will be exposed to real-world applications of factor investing in quantitative asset management via case studies. The goal of the course is to equip students with necessary knowledge and skills for applied research in quantitative equity management. More broadly, this course can be a useful part of training for students who are interested in a career in financial data analytics. |
2 |
| Course | Title/Description | Credit |
|---|---|---|
| BANA7075 | Machine Learning Design for Business This course provides a framework for developing real-world machine learning systems that are deployable, reliable, and scalable. Designing machine learning systems is the process of defining the software architecture, infrastructure, algorithms, and data for a machine learning system to satisfy specified business requirements. Without deliberate design, machine learning systems can get outdated quickly because (1) the tools continue to evolve, (2) business requirements change, and (3) data distributions constantly shift. Students will learn about data management, data engineering, feature engineering, approaches to model selection, training, scaling, and how to continually monitor and deploy changes to ML systems for successful business applications. They will also be exposed to managing the human side of ML projects such as team structure and business metrics. |
2 |
| FIN7047 | Fintech and Cryptocurrency The main objective of the course is to introduce students to fintech and cryptocurrency. The goal is to understand the fundamental concepts underlying financial technologies and their applications. Examples of these include artificial intelligence, machine learning, and blockchain in financial markets, such as business activities, financing, and investments. The course consists of four parts. The first part introduces the status quo and fundamentals of financial technologies (fintech) as well as their main applications, including artificial intelligence, payments, robo-advising, insure-tech, and blockchain. The second part covers the mechanisms and applications of artificial intelligence and machine learning by focusing on the use of natural language processing (NLP) and large language models (LLM). The third part focuses on blockchain and cryptocurrencies, discussing Bitcoin, Ethereum, stablecoin, and NFTs. The last part of the course focuses on cryptocurrency markets and portfolios. The cryptocurrency market comprises exchanges (both on-chain and off-chain) and spot and derivative contracts. Cryptocurrency portfolio analysis studies the risk and return tradeoff of such portfolios. The course combines lectures, class discussions, and case study analyses. |
2 |
| FIN7053 | Algorithmic Trading This course provides a comprehensive treatment of the fundamental principles required to design and implement algorithmic trading models in financial markets. The course will introduce the best practices and the formal process of generating trading ideas, the differences between low-frequency and high-frequency trading signals, back-testing and its associated biases, optimization techniques, and industry metrics for evaluating algorithmic trading models’ performance. Students will have the opportunity to implement basic algorithms in well-known paper-trading platforms. |
2 |
Your guide from application through admission is your Enrollment Services Advisor. Every student is assigned a dedicated Enrollment Services Advisor who can answer questions, provide guidance, and help navigate your educational needs.
Complete the online application and submit the application fee.
Standard Application Fees:
- $65.00 for domestic applicants to most degree programs
- $70.00 for international applicants to most degree programs
- $20.00 for domestic applicants to Graduate Certificates
- $25.00 for international applicants to Graduate Certificates
- Application fees are waived for Summer 2026 applications submitted by March 1st, 2026
- Application fees are waived for Fall 2026 applications submitted by July 1st, 2026
- Fee waivers are automatically applied for applicants who:
- are currently serving in the US armed forces
- are veterans of the US armed forces
All applicants are required to upload unofficial transcripts during the application process, showing all undergraduate and graduate course work completed, including degrees granted and dates of conferral.
Official transcripts are not required until the student has received and accepted an offer of admission from the university. Once the offer has been confirmed, the student must submit official transcripts.
Students who have received degrees from the University of Cincinnati do not need to submit official paper copies of their UC transcripts.
Transcripts can be submitted electronically or by mail. To see if your transcript(s) can be ordered electronically, visit the links below and search for your previous school(s).
- Parchment
- Please select “University of Cincinnati – Main Campus” as the recipient of your transcript.
- National Student Clearinghouse
- Please have your transcript sent directly to admissions@uc.edu.
If you do not see your past school(s) listed on either site, please contact the school(s) directly. Then, mail your sealed, unopened, official transcripts to:
Please mail sealed, unopened, official transcripts to:
University of Cincinnati
Office of Admissions
PO Box 210091
Cincinnati, Ohio 45221-0091
One letter of recommendation is needed for the graduate certificate program. Please provide the name, mailing address, and email address of your recommender.
Current resume or CV.
Statement of purpose essay, explaining in less than 500 words how the business analytics graduate certificate will further your career goals.
| Term | Application Deadline | Classes Start |
|---|---|---|
Summer 2026 Fall 2026 Spring 2027 |
April 1, 2026 July 1, 2026 November 15, 2026 |
May 11, 2026 August 24, 2026 January 11, 2027 |
The University of Cincinnati's online course fees differ depending on the program. On average, students will accrue fewer fees than students attending on-campus classes.
The one fee applied across all UC Online programs is the distance learning fee. Students living outside the state of Ohio must also pay an additional “non-resident” fee to enroll in courses at UC Online. This fee is lower than the out-of-state fee for traditional on-campus programs.
To view tuition information and program costs, visit the Online Program Fees page.
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We offer over 130 degrees from undergraduate to doctoral programs. Each program is supported by a team of Enrollment Services Advisors (ESAs) who are here to help answer any questions you have.