MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + srt | Duration: 31 lectures (3h 27m) | Size: 1.86 GB
We will work on real world data science and machine learning case studies of finance industry with python
What you'll learn:Build Classification Models
Build Regression Models
Data Science Application in Finance Industry
Have a great intuition of many Machine Learning models
Make robust Machine Learning models
Know which Machine Learning model to choose for each type of problem
RequirementsKnowledge of machine learning
DescriptionMachine learning in finance is now considered a key aspect of several financial services and applications, including managing assets, evaluating levels of risk, calculating credit scores, and even approving loans. Machine learning is a subset of data science that provides the ability to learn and improve from experience without being programmed.
As an application of artificial intelligence, machine learning focuses on developing systems that can access pools of data, and the system automatically adjusts its parameters to improve experiences. Computer systems run operations in the background and produce outcomes automatically according to how it is trained.
Machine learning tends to be more accurate in drawing insights and making predictions when large volumes of data are fed into the system. The financial services industry tends to encounter enormous volumes of data relating to daily transactions, bills, payments, vendors, and customers, which are perfect for machine learning.
Nowadays, many leading fintech and financial services companies are incorporating machine learning into their operations, resulting in a better-streamlined process, reduced risks, and better-optimized portfolios.
Machine learning is a branch of artificial intelligence that uses statistical models to make predictions.
In finance, machine learning algorithms are used to detect fraud, automate trading activities, and provide financial advisory services to investors.
Machine learning can analyze millions of data sets within a short time to improve the outcomes without being explicitly programmed.
Project-1 NYSE Stock Price Prediction
Project-2 RBI Resources Data Analysis
Project-3 E-signing of a loan based on financial history
Project-4 Prediction Of Default Of Credit Card
Project-5 Hybrid Mutual Fund Analysis
Who this course is forBegginers in machine learning
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https://rapidgator.net/file/3219fcbf67ac88157f334b04fb04f4cb/5vhwm.Practical.Machine.Learning.Real.World.Projects.In.Finance.part1.rar.html
https://rapidgator.net/file/f7d608bc009a8a9f1f24dfb502d6bb19/5vhwm.Practical.Machine.Learning.Real.World.Projects.In.Finance.part2.rar.html
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