Ai & Machine Learning

Guided Tour of Machine Learning in Finance

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Coursera

This introductory course examines machine learning applications in finance, culminating in a capstone project focused on predicting bank closures.

Key AI Functions:tensorflow, financial engineering, reinforcement learning, machine learning, predictive modelling, ai & machine learning

Description for Guided Tour of Machine Learning in Finance

  • Analysis of Machine Learning Applications in Finance: Acquire a fundamental understanding of the objectives and utilizations of machine learning across many financial scenarios.

  • Supervised Machine Learning Methods: Study supervised machine learning techniques and their applications in the financial sector.

  • Capstone Project On Bank Closures: Utilize machine learning expertise to forecast bank closures, acquiring hands-on experience with authentic financial situations.

  • Overview of Advanced Specialization Subjects: Introduces subjects that are examined comprehensively in later modules of the Machine Learning and Reinforcement Learning in Finance specialty.

Level: Intermediate

Certification Degree: Yes

Languages the Course is Available: 22

Offered by: On Coursera provided by New York University

Duration: 24 hours (approximately)

Schedule: Flexible

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