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Python For Finance And Data Science - BaDshaH - 06-19-2023 Published 6/2023 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 3.41 GB | Duration: 8h 50m Learn Python Programming and apply Financial Data Science to REAL data - from Beginner to Professional [b]What you'll learn[/b] Learn how to code in Python from scratch Be a PRO in Data Analysis in specific Financial Data Build and Backtest Trading Strategies with Python Understand and Optimize the Return and Risk profile of your Portfolio Compare stocks and Portfolio in terms of their Sharpe ratio Have an outstanding technical skillset to apply for a quant job in a financial institution or data based company Be able to perform in depth Investment Analysis Solve real-world problems using Python Visualize your data in interactive Dashboards Learn about best practices and relevant practice advice working with financial data Be able to compare stocks Understand the difference between Log returns and returns Optimize weights by using the concept of the Efficient Frontier Leverage Algebra concepts to do powerful calculations Learn to use the powerful intersection of Pandas & SQL to build, maintain and leverage Databases Understand how you can leverage Algebra to make powerful computations [b]Requirements[/b] No programming experience required. We are starting from Zero. It helps to have a basic understanding of the stock market but it isn't mandatory [b]Description[/b] Are you ready to revolutionize your understanding of Finance and Data Science? Dive into the world of Python for Finance and Data Science, where cutting-edge technology meets the dynamic field of financial analysis.In this comprehensive course, I will guide you through the essential principles and practical techniques that will supercharge your financial analysis skills. Whether you're an aspiring financial professional, data scientist, quant-oriented or simply eager to expand your knowledge, this course will empower you to extract valuable insights from financial data and make informed decisions.Harness the power of Python, the industry's leading programming language for data analysis and automation. Explore the intricacies of financial data retrieval, preprocessing, manipulation and gain the tools to transform raw data into compelling visualizations and intuitive dashboards.Discover how to implement Portfolio Analysis and Portfolio optimization techniques, all using Python. Uncover hidden patterns in the data, build and backtest trading strategies, and explore algorithmic trading possibilities.But it doesn't stop there! This course goes beyond finance by incorporating essential data science concepts. You'll master the art of Data manipulation, Portfolio Analysis, Applied Financial Analysis, Backtesting and uncover critical business insights.Get ready for hands-on exercises, real-world examples, and expert guidance from an actively working quant finance professionalMy engaging curriculum ensures a seamless learning experience as I am equipping you with the skills to excel in the fast-paced world of finance and Data Science.Don't miss this opportunity to transform your career and gain a competitive edge in the financial or data industry. Enroll now and unleash the full potential of Python for Finance and Data Science!What will YOU learn in specific?Fundamental Python ProgrammingAn Introduction to one of the most powerful Data Science and Financial Data Analysis Libraries: PandasA FULL guide into applied Financial Data AnalysisA FULL guide into Portfolio Analysis and Portfolio Management with Python on real stock dataYou will learn to quantitatively analyze you own portfolio and give it a reality check! :-)An Introduction to Backtesting Trading Strategies and VectorizationOptimizing a Portfolio using state of the art toolsAdvanced Trading Strategies using concepts of Optimization and Machine LearningBuilding state of the art and beautiful Interactive Finance DashboardLearn about the powerful Intersection of Pandas & SQL and use it to leverage your knowledgeWhy this course and no other one?I am actively working in the field of quant Finance covering Data Science and quantitive Finance topics since several years and wrote my Master Thesis in quantitative Finance - I know what's relevant in practice but also what is relevant to cover to level up!I have taught Python for Finance and Automated Trading topics to over 75.000 people on YouTube and countless people privately.You will get a lot of Quizzes, Exercises to apply what I taught and I will give you relevant tips and practical advise. I challenge you to solve all of the provided exercises! :-)There is no single time filler in this course. We are getting straight to the topics and I am being as brief as possible but also taking my time to be as specific as possibleOutstanding support: If you don't understand something, you feel you are stuck or you simply want to connect with me just write me a message and I am getting back to you as soon as possible!What are you waiting for? Click 'Enroll now' to get started! I am excited and looking forward to see you inside the course :-) Overview Section 1: Introduction Lecture 1 What does this course cover? Lecture 2 Disclaimer[MUST WATCH!] Lecture 3 How to get the most of this course? Lecture 4 Any questions or problems? Reach out! Section 2: Installation and Jupyter Notebook Basics Lecture 5 Download Anaconda & Set Up Jupyter Notebook Lecture 6 Jupyter Notebook Basics Section 3: Python Fundamentals Lecture 7 Variables & Single Datatypes Lecture 8 What you should NEVER do Lecture 9 Typecasting & User Input Lecture 10 Practice Time :-) Lecture 11 Arithmetic Operators Lecture 12 Comparison Operators / Logical Operators Lecture 13 Indentations & If-Statements Lecture 14 Practice Time :-) Lecture 15 Lists as objects with methods in Python Lecture 16 List Slicing & Indexing Lecture 17 Difference between lists & tuples Lecture 18 Dictionaries Lecture 19 For loops Lecture 20 Combining lists & loops: List comprehension Lecture 21 While loop Lecture 22 Practice Time :-) Lecture 23 Practice your knowledge with a common Interview question! Lecture 24 Functions Section 4: Fundamentals of Pandas Lecture 25 Setting up a DataFrame and DataFrame properties Lecture 26 Adding columns and using dictionaries for DataFrame initialization Lecture 27 New columns based on calculations Lecture 28 Data Selection with iloc Lecture 29 Data Selection with loc Lecture 30 Data Filtering with Boolean Masks and Boolean Indexing Section 5: Applied Financial Data Analysis Lecture 31 Pulling stock prices and OHLC data Lecture 32 Quick Recap on what we did in the last chapter Lecture 33 Return calculation with shift and pct_change Lecture 34 Important functions: diff, dropna, rolling Lecture 35 Very important argument: axis=0 or axis=1 Lecture 36 nlargest and nsmallest Lecture 37 Bringing together Dataframes: Concat Lecture 38 Combining Time Series and OHLC in general Lecture 39 Resampling Data Lecture 40 Resampling OHLC Data Lecture 41 Plotting in Pandas Lecture 42 Iterating over a dataframe: Iterrows Lecture 43 Performance Comparison: Iterrows vs. Vectorization Lecture 44 Return calculation deep dive Lecture 45 Practice Task: Plot the yearly returns of the S&P500 Lecture 46 Solution to the Practice Task: Plot yearly returns of the S&P500 Section 6: Portfolio Analysis and Portfolio Management with Python Lecture 47 Portfolio Analysis Introduction Lecture 48 Variance, Standarddeviation, Covariance and Correlation Lecture 49 Portfolio Return and Risk Lecture 50 Portfolio Expected Return and Portfolio Risk using Python Lecture 51 Use the Dot Product to calculate Portfolio Return and Portfolio Risk Lecture 52 Application to real data: Portfolio of Microsoft, Coca Cola and Tesla Lecture 53 Efficient Frontier, Minimum Variance Portfolio and dominant Portfolios Section 7: Introduction to Backtesting Trading Strategies Lecture 54 Introduction and the Strategy Lecture 55 Coding the Trading Strategy (iterative approach) Lecture 56 Vectorizing the Backtest Section 8: Project I: Momentum Trading Strategies Lecture 57 Cross-sectional Momentum Part I: Survivorship Bias Handling Lecture 58 Cross-sectional Momentum Part II: Constructing and Backtesting Lecture 59 Time-Series Momentum Section 9: Project II: Backtesting JPMorgans Volatility Index (VIX) based Strategy Lecture 60 Backtesting JPMorgans Volatility Index (VIX) based Strategy Section 10: Project III: Stock Market Analysis Interactive Dashboards with Streamlit Lecture 61 Brief Intro to Streamlit Lecture 62 Streamlit Portfolio Analysis Dashboard Lecture 63 Streamlit Dashboard showing the Top and Worst S&P500 Index performers Section 11: Project IV: Machine Learning applied on Stock Data Lecture 64 A Machine Learning Model which (potentially) outperformed the S&P500 Lecture 65 Least Squares Moving Average Trading Strategy Section 12: Project V: An advanced guide to Backtesting and Optimization on over 500 Stocks Lecture 66 Iterative Approach Lecture 67 Vectorized Approach Lecture 68 Results Analysis Section 13: Project VI: Optimizing a Portfolio based on the Sharpe Ratio Lecture 69 Recap on Matrix Operations (Expected return and Portfolio Risk) Lecture 70 Optimization of Portfolio weights Section 14: Extra Chapter: Pandas & SQL Lecture 71 The mighty Intersection between Pandas and SQL Lecture 72 How to update an SQL Database with Pandas and SQL Lecture 73 Build your own Finance DB using Pandas & SQL! Lecture 74 Build a simple Stock recommendation System with your Finance DB Lecture 75 Build an Intraday Stock Price Database with Python and SQL Section 15: What I would like to give you on your way! Thank you :-) Lecture 76 Thank you and something to take along! Business and Finance students who look for an opportunity to attain a high in demand skillset,People who are interested in applied Financial Analysis,People who want to get a better understanding of there own portfolio,People who are interested in Finance, Data Science and Analytics,Hands-on oriented people,People who want to build a highly valuable skillset,People who want to understand the statistics and Algebra behind Portfolio Analysis Homepage Download From Rapidgator Download From Nitroflare |