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UMontrealX: Machine Learning Use Cases in Finance

In the last six years, the financial sector has seen an increase in the use of machine learning models in financial, banking and insurance contexts. Data science and advanced analytics teams in the financial and insurance community are implementing these models regularly and have found a place for them in their toolbox.

4 semanas
4–5 horas por semana
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Sobre este curso

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The success of machine learning, and in particular deep learning in image recognition and natural language processing applications, has created high expectations and their use has rapidly spread to many different areas. The financial sector is no exception and the last six years have seen an increase in these types of models in financial, banking and insurance contexts. Data science and advanced analytics teams in the financial and insurance community are implementing these models regularly and have found a place for them in their toolbox.

In this course, we will first present a review of some of the applications of machine learning and deep learning. We will then illustrate their use in financial applications through concrete examples that we have seen have sparked interest in the industry. Our examples will illustrate how we can add value through ad hoc construction of architectures rather than a simple exercise of replacing classical models with more complex ones, such as multi-layer networks.

We will see

  • Neural network architectures on graphs to integrate new information dimensions in financial markets and bitcoin transactions
  • Portfolio design using reinforcement learning and
  • Natural Language Processing and information extraction methods from financial disclosures in the in an ESG and sustainable finance context

This course was developed by IVADO and Fin-ML as part of a workshop that takes place yearly in Montréal, since 2018. You will be accompanied throughout and given concrete examples by six international experts from both Academia and Industry.

The course is primarily intended for industry professionals and academics with intermediate knowledge of mathematics and programming (ideally Python). Graduate students in data science and quantitative finance (mainly those who are not yet familiar with machine learning and deep learning) may find this content instructive and compelling. The content of this course will also be of great use to whomever uses or is interested in AI, in any other way. Previous experience in the financial industry is not necessary to follow this course.

This course is brought to you by IVADO, Fin-ML and Université de Montréal.

  • IVADO is a Québec-wide collaborative institute in the field of digital intelligence.

  • Fin-ML is a nationwide network of researchers working at the intersection of data science, quantitative finance, and business analytics.

  • Université de Montréal is one of the world’s leading research universities.

Curso creado con el apoyo de

IVADOFin-ML

De un vistazo

  • Language English
  • Video Transcript English
  • Associated skillsReinforcement Learning, Financial Market, Bitcoin, Machine Learning, Research, Basic Math, Information Extraction, Python (Programming Language), Mathematical Finance, Artificial Intelligence, Computer Vision, Financial Services, Natural Language Processing, Finance, Deep Learning, Data Science

Lo que aprenderás

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At the end of the MOOC, participants should be able to:

  • Recognize when and how to use machine learning models according to the business context.
  • Apply the best practices of machine learning and in particular of deep learning in a financial application context.
  • Identify some models and architectures of deep networks that can be used to solve problems in finance and insurance:
    • Graph neural networks in financial markets
    • Reinforcement learning in portfolio optimization
    • Information extraction and ESG metrics

Plan de estudios

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These are the topics of each module:

Module 1 - Introduction and Background

Module 2 - Reminder Machine Learning and Deep Learning

Module 3 - GNN in Finance

Module 4 - ESG Evaluation

Module 5 - Portfolio Design using Reinforcement Learning

Module 6 - Conclusion

Preguntas frecuentes

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What is the complete list of speakers for this course?
Manuel MORALES

Rheia KHALAF

Alexandre NGUYEN

Frederik WENKEL

Elham KHERADMAND

Marie-Ève MALETTE

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Lamentablemente, las personas residentes en uno o más de los siguientes países o regiones no podrán registrarse para este curso: Irán, Cuba y la región de Crimea en Ucrania. Si bien edX consiguió licencias de la Oficina de Control de Activos Extranjeros de los EE. UU. (U.S. Office of Foreign Assets Control, OFAC) para ofrecer nuestros cursos a personas en estos países y regiones, las licencias que hemos recibido no son lo suficientemente amplias como para permitirnos dictar este curso en todas las ubicaciones. edX lamenta profundamente que las sanciones estadounidenses impidan que ofrezcamos todos nuestros cursos a cualquier persona, sin importar dónde viva.

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