ML Use Cases in Finance
Learn to apply advanced machine learning and deep learning models to real-world challenges by immersing yourself in the cutting-edge world of AI-powered finance and insurance.
Description for ML Use Cases in Finance
Application of Machine Learning in Business: Acquire the ability to identify the appropriate time and method for utilizing machine learning models in various business contexts, with a particular emphasis on finance.
Machine Learning and Deep Learning Best Practices: Implement the most effective machine learning practices, with a particular emphasis on deep learning, in financial applications.
Deep Learning Architectures in Finance: Comprehend a variety of deep learning models and architectures, including reinforcement learning and graph neural networks, to address financial and insurance issues.
Researching ESG Metrics and Information Extraction: Acquire a deeper understanding of the financial sector's utilization of ESG (Environmental, Social, Governance) metrics and information extraction techniques.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On edX provided by UMontrealX
Duration: 4�5 hours per week approx 4 weeks
Schedule: Flexible
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