LEARN
Python Data Analysis for Financial Research and Historical Data Simulation using AI tools.
For educational purpose only
We are seeing a growing interest in data-driven research across various asset classes and financial datasets. While the availability of data is increasing, the ability to objectively analyze historical trends remains a specialized skill.
Python-based research tools allow you to model and simulate logic against historical data sets from major exchanges. This computational approach promotes a disciplined, evidence-based method for data analysis and strategy research.
Learn to build robust models for historical data simulation, transaction logic, and risk-adjusted performance metrics. Perfect for those looking to apply Python to high-frequency and multi-day financial datasets.
Python for Data Analytics
• Basic Python fundamentals
• Python Libraries for Financial Dataset Analysis
• Standard Python Syntax and Logic Snippets for Financial Research
Financial Analytics
• Systematic Logic & Decision Modeling
• Multi-factor Data Filtering & Technical Indicators
• Transaction Execution Logic & Risk Parameters
• Statistical Validation & Historical Performance Metrics
• High-Frequency & Multi-Day Timeframe Analysis
Prompt Engineering
• Structured prompts for quantitative scripting
• Debugging|refining AI-generated code
• Refining analytical models through iterative prompting
• Verifying logic and output consistency
Build practical skills. Test real ideas. Grow with clarity.
Click the link below to register for a free 1-hour introductory webinar, where we explain the learning framework, the core modules, and how Python and AI tools can be applied for financial research and historical data simulation.
The session will also demonstrate the basic environment setup required to simulate a sample logic model using Python in Visual Studio Code.
Participants will be provided with sample market data, Python code, and a step-by-step tutorial to understand the process validating a quantitative model using sample market datasets.