• Home
  • /
  • Course
  • /
  • Machine Learning in Finance: Basics

Rated Excellent

250+ Courses

30,000+ Learners

95+ Countries

USD $0.00
Cart

No products in the cart.

Machine Learning in Finance: Basics

Introduction to ML in finance, financial data types, market trends, and the role of data in banking, investment, and decision-making.
Basic applications such as price prediction, credit scoring, fraud detection, risk analysis, model evaluation, and FinTech use cases.
Includes tools and concepts like machine learning, financial data, predictive analytics, risk analysis, and data trends.

Add to Wishlist
Add to Wishlist
Attribute
Detail
Format
Online, self-paced course
Level
Basic / Beginner
Duration
2–3 Weeks
Certification
e-Certification
Fee
Free Course
Tools
Machine Learning Concepts, Finance Basics
About the Course
The Machine Learning in Finance: Basics course is a free, beginner-friendly self-paced program designed to introduce learners to how machine learning is applied in the financial domain.
The course explains how data-driven models are used to analyze financial data, predict trends, manage risk, and support decision-making in areas like banking, investment, and financial services. Learners will explore basic concepts such as financial data, prediction models, and simple machine learning applications in finance. This course is ideal for beginners who want to understand the intersection of AI and finance.
Program Highlights
• Free beginner-level ML in finance course
• Online self-paced learning format
• Simple explanation of finance and ML concepts
• Covers prediction, risk analysis, and financial data basics
• Real-world examples from banking and investment
• Suitable for students and first-time learners
• e-Certification upon successful completion
Course Curriculum
Module 1: Introduction to Machine Learning in Finance
  • What is Machine Learning in Finance?
  • Role of Data in Financial Systems
  • Applications of ML in Banking and Investment
  • Overview of Financial Decision-Making
Module 2: Understanding Financial Data
  • Types of Financial Data: Market, Transactions, and Time Series
  • Introduction to Stock, Price, and Market Trends
  • Features and Variables in Financial Analysis
  • Importance of Data Quality
Module 3: Basic ML Applications in Finance
  • Predicting Prices and Trends
  • Credit Scoring and Risk Assessment
  • Fraud Detection Concepts
  • Customer Analytics in Financial Services
Module 4: Model Evaluation and Risk Basics
  • Understanding Prediction Accuracy
  • Risk and Uncertainty in Financial Models
  • Overfitting and Reliability Basics
  • Interpreting Model Results in Finance
Module 5: Applications and Future Scope
  • AI in Investment, Trading, and Banking
  • Role of ML in FinTech and Digital Finance
  • Career Opportunities in AI and Finance
  • Mini Learning Activity / Concept-Based Practice
Tools, Techniques, or Platforms Covered
Machine Learning
Financial Data
Predictive Analytics
Risk Analysis
Data Trends
Real-World Applications
  • Predicting stock price trends and market behavior
  • Detecting fraud in banking and financial transactions
  • Assessing credit risk and loan approvals
  • Analyzing customer behavior in financial services
  • Supporting decision-making in investment and trading
Who Should Attend & Prerequisites
  • This course is suitable for students, beginners, freshers, and professionals interested in understanding how machine learning is applied in finance.
  • It is also useful for learners from finance, commerce, management, economics, engineering, and data-related fields.

Prerequisites: No prior machine learning or finance knowledge is required. Basic understanding of numbers and interest in finance and technology are sufficient.

Frequently Asked Questions
1. Is this Machine Learning in Finance course free?
Yes. This is a free online self-paced course designed for beginners.
2. Do I need finance or coding knowledge?
No. The course focuses on basic concepts and is suitable for learners from non-technical and non-finance backgrounds.
3. What will I learn in this course?
You will learn how machine learning is used in finance, including prediction, risk analysis, fraud detection, and financial decision-making.
4. Who can join this course?
Students, beginners, and professionals from finance, business, engineering, and other fields can join.
5. Will I receive a certificate?
Yes. Learners receive an e-Certification after completing the course.
6. What is machine learning in finance?
Machine learning in finance refers to using data-driven models to analyze financial information, predict trends, manage risk, detect fraud, and support better financial decisions.
7. Is this course suitable for commerce and management students?
Yes. The course is suitable for learners from commerce, management, finance, economics, business, engineering, and other data-related backgrounds.
8. What is the duration of this course?
The Machine Learning in Finance: Basics course is designed as a 2–3 week online self-paced course.
9. Does this course cover fraud detection and risk analysis?
Yes. The course introduces fraud detection concepts, credit scoring, risk assessment, prediction, and reliability basics in financial models.
10. What makes this ML in Finance course beginner-friendly?
The course explains financial data, prediction models, risk analysis, fraud detection, and finance use cases in simple language without requiring prior coding, finance, or machine learning knowledge.
The Machine Learning in Finance: Basics course provides a simple and structured introduction to how AI and machine learning are transforming financial systems. It helps learners understand financial data, prediction models, and real-world applications, making it an ideal starting point for exploring fintech, analytics, and AI-driven finance.

Reviews

There are no reviews yet.

Be the first to review “Machine Learning in Finance: Basics”

Your email address will not be published. Required fields are marked *

Certification

  • Upon successful completion of the workshop, participants will be awarded a Certificate of Completion, validating their skills and knowledge in advanced AI ethics and regulatory frameworks. This certification can be added to your LinkedIn profile or shared with employers to demonstrate your commitment to ethical AI practices.

Achieve Excellence & Enter the Hall of Fame!

Elevate your research to the next level! Get your groundbreaking work considered for publication in  prestigious Open Access Journal (worth USD 1,000) and Opportunity to join esteemed Centre of Excellence. Network with industry leaders, access ongoing learning opportunities, and potentially earn a place in our coveted 

Hall of Fame.

Achieve excellence and solidify your reputation among the elite!

14 + years of experience

over 400000 customers

100% secure checkout

over 400000 customers

Well Researched Courses

verified sources