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Forecasting Sales With Time Series, Lightgbm & Random Forest - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Forecasting Sales With Time Series, Lightgbm & Random Forest (/Thread-Forecasting-Sales-With-Time-Series-Lightgbm-Random-Forest) |
Forecasting Sales With Time Series, Lightgbm & Random Forest - OneDDL - 02-21-2024 ![]() Free Download Forecasting Sales With Time Series, Lightgbm & Random Forest Published 2/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 1.52 GB | Duration: 3h 1m Learn how to build sales forecasting models using Time Series, ARIMA, SARIMA, LightGBM, Random Forest, and LSTM What you'll learn Learn how to build sales forecasting model using ARIMA, SARIMA, LightGBM, Random Forest, and LSTM Learn how to conduct customer segmentation analysis Learn how to analyze sales performance trend Learn how to evaluate forecasting model's accuracy and performance by calculating mean absolute error and conduct residual analysis Learn how time series forecasting model work. This section will cover data collection, preprocessing, train test split, model selection, and model training Learn about factors that can contribute to sales performance, such as seasonal trends, market saturation and supply chain efficiency Learn how to find and download datasets from Kaggle Learn how to clean dataset by removing missing rows and duplicate values Learn how to analyze order fulfilment efficiency Learn the basic fundamentals of sales forecasting Requirements No previous experience in sales forecasting is required Basic knowledge in Python and statistics Description Welcome to Forecasting Sales with Time Series, LightGBM & Random Forest course. This is a comprehensive project based course where you will learn step by step on how to build sales forecasting models. This course is a perfect combination between machine learning and sales analytics, making it an ideal opportunity to enhance your data science skills. This course will be mainly concentrating on three major aspects, the first one is data analysis where you will explore the sales report dataset from multiple angles, the second one is to conduct customer segmentation analysis, and the third one is to build sales forecasting models using time series, LightGBM, Random Forest, LSTM, and SARIMA (Seasonal Autoregressive Integrated Moving Average). In the introduction session, you will learn the basic fundamentals of sales forecasting, such as getting to know forecasting models that will be used and also learn how sales forecasting can help us to identify consumer behavior. Then, in the next session, we are going to learn about the full step by step process on how time series forecasting works. This section will cover data collection, preprocessing, splitting the data into training and testing sets, selecting model, training model, and forecasting. Afterward, you will also learn about several factors that contribute to sales performance, for example, product quality, marketing strategies, seasonal trends, market saturation, supply chain efficiency, and macro economic factors. Once you have learnt all necessary knowledge about the sales forecasting model, we will start the project. Firstly you will be guided step by step on how to set up Google Colab IDE. In addition to that, you will also learn to find and download sales report dataset from Kaggle, Once, everything is ready, we will enter the main section of the course which is the project section The project will be consisted of three main parts, the first part is the data analysis and visualization where you will explore the dataset from various angles, in the second part, you will learn step by step on how to conduct extensive customer segmentation analysis, meanwhile, in the third part, you will learn how to forecast sales using time series, LightGBM, Random Forest, LSTM, and Seasonal Autoregressive Integrated Moving Average. At the end of the course, you will also evaluate the sales forecasting model's accuracy and performance using Mean Absolute Error and residual analysis.First of all, before getting into the course, we need to ask ourselves this question: why should we learn to forecast sales? Well, here is my answer, Forecasting sales is a strategic imperative for businesses in today's dynamic market. By mastering the art of sales forecasting, we gain the power to anticipate market trends, understand consumer behavior, and optimize resource allocation. It's not just about predicting numbers, it's about staying ahead of the competition, adapting to changing demands, and making informed decisions that drive business success. In addition to that, by building this sales forecasting project, you will level up your data science and machine learning skills. Last but not least, even though forecasting sales can be very useful, however, you still need to be aware that no matter how advanced your forecasting model is, there is no such thing as 100% accuracy when it comes to forecasting.Below are things that you can expect to learn from this course:Learn the basic fundamentals of sales forecastingLearn how time series forecasting models work. This section will cover data collection, data exploration, preprocessing, train test split, model selection, model training, and forecastingLearn about factors that can contribute to sales performance, such as seasonal trends, market saturation and supply chain efficiencyLearn how to find and download datasets from KaggleLearn how to clean dataset by removing missing rows and duplicate valuesLearn how to conduct customer segmentation analysisLearn how to analyze order fulfillment efficiencyLearn how to analyze sales performance trendLearn how to build sales forecasting model using ARIMA, SARIMA, LightGBM, Random Forest, and LSTMLearn how to evaluate forecasting model's accuracy and performance by calculating mean absolute error and conduct residual analysis Overview Section 1: Introduction Lecture 1 Introduction to the Course Lecture 2 Table of Contents Lecture 3 Whom This Course is Intended for? Section 2: Tools, IDE, and Datasets Lecture 4 Tools, IDE, and Datasets Section 3: Introduction to Sales Forecasting Lecture 5 Introduction to Sales Forecasting Section 4: How Time Series Forecasting Model Works? Lecture 6 How Time Series Forecasting Model Works? Section 5: Factors That Can Contribute to Sales Performance Lecture 7 Factors That Can Contribute to Sales Performance Section 6: Setting Up Google Colab IDE Lecture 8 Setting Up Google Colab IDE Section 7: Finding & Downloading Sales Report Dataset From Kaggle Lecture 9 Finding & Downloading Sales Report Dataset From Kaggle Section 8: Project Preparation Lecture 10 Uploading Sales Report Dataset to Google Colab Lecture 11 Quick Overview of Sales Report Dataset Section 9: Cleaning Dataset by Removing Missing Values & Duplicates Lecture 12 Cleaning Dataset by Removing Missing Values & Duplicates Section 10: Customer Segmentation Analysis Lecture 13 Customer Segmentation Analysis Section 11: Analyzing Order Fulfilment Efficiency Lecture 14 Analyzing Order Fulfilment Efficiency Section 12: Analyzing Sales Performance Trend Lecture 15 Analyzing Sales Performance Trend Section 13: Forecasting Sales with ARIMA Lecture 16 Forecasting Sales with ARIMA Section 14: Forecasting Sales with SARIMA Lecture 17 Forecasting Sales with SARIMA Section 15: Forecasting Sales with LightGBM Lecture 18 Forecasting Sales with LightGBM Section 16: Forecasting Sales with Random Forest Lecture 19 Forecasting Sales with Random Forest Section 17: Forecasting Sales with LSTM Lecture 20 Forecasting Sales with LSTM Section 18: Calculating Mean Absolute Error & Conducting Residual Analysis Lecture 21 Calculating Mean Absolute Error & Conducting Residual Analysis Section 19: Conclusion & Summary Lecture 22 Conclusion & Summary People who are interested in forecasting sales using ARIMA, SARIMA, LightGBM, Random Forest, and LSTM,People who are interested in performing customer segmentation analysis Homepage Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |