Tags
Language
Tags
May 2025
Su Mo Tu We Th Fr Sa
27 28 29 30 1 2 3
4 5 6 7 8 9 10
11 12 13 14 15 16 17
18 19 20 21 22 23 24
25 26 27 28 29 30 31
    Attention❗ To save your time, in order to download anything on this site, you must be registered 👉 HERE. If you do not have a registration yet, it is better to do it right away. ✌

    ( • )( • ) ( ͡⚆ ͜ʖ ͡⚆ ) (‿ˠ‿)
    SpicyMags.xyz

    Ra- Deep Dive Into Forecasting - Excel And Python.

    Posted By: ELK1nG
    Ra- Deep Dive Into Forecasting - Excel And Python.

    Ra- Deep Dive Into Forecasting - Excel And Python.
    Published 5/2023
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 9.32 GB | Duration: 16h 42m

    Forecasting with Excel & Python. Machine learning and statistical forecasting for Supply Chain.

    What you'll learn

    Time Series Decomposition.

    Univariate analysis for time series.

    Bivariate analysis and auto-correlation.

    Smoothing the time series.

    seasonally adjusting the time series.

    Generating and Calibrating Forecasting in Excel.

    Learning Python and using it as everyday tool for forecasting.

    Using the sktime Package for advanced forecasting methods and aggregations.

    Time Series Forecasting.

    Different Applications of forecasting.

    Python

    Arima

    Machine learning forecasting

    hierarchal forecasting

    Excel

    Requirements

    Nop

    Description

    Hello :)Forecasting has been around for 1000s of years. it stems from our need to plan so we can have some direction for the future. We can consider forecasting as the stepping stone for planning. and that's why it is as important as ever to have good forecasters in institutions, supply chains,  companies, and businesses. With the ever-growing concerns of sustainability and Carbon-footprint. Would you believe it? a good forecast actually contributes to saving resources through the value chain and actually saving the planet. one forecaster at a time. needless to mention, forecasting is integral in marketing, operations, finance, and planning for supply chains…. pretty much everythingThis course is aimed to orient you to the latest statistical forecasting techniques and trends. but first, we need to understand how forecasting works and the reasoning behind statistical methods, and when each method is suitable to be used.  that's why we start first with excel and we scale with R. "Don't worry if you don't know Python, Crash fundamental sections are included!.the course is for all levels because we start from Zero to Hero in Forecasting.in this course we will learn and apply :1- Time Series Decomposition in Excel and Python.2- Univariate analysis for time series in Excel and Python..3- Bivariate analysis and auto-correlation in Excel and Python..4- Smoothing the time series and getting the Trend with Double and centered moving average.5- seasonally adjusting the time series.6- Simple and complex forecasts in Excel.7- Use transformations to reduce the variance while forecasting.8-Generating and Calibrating Forecasting in Excel.9- Learning Python  and using it as an everyday tool for forecasting.10- Using the Fable Package for advanced forecasting methods and aggregations.11- Using Forecast package for grid search on ARIMA.12- Applying a workflow of different models in two lines of code.13- Calibirating forecasting methods.14- Applying Hierarchical time series with Bottom-up, middle out, and Top-down Approaches.16-  Use the new R-Fable reconciliation method for aggregation.15- Using Fable to generate forecasts for 10000  time-series and much more !! *NOTE: Many of the concepts and analysis I explain first in excel as I find excel the best way to first explain a concept and then we scale up, improve and generalize with Python.. By the end of this course, you will have an exciting set of skills and a toolbox you can always rely on when tackling forecasting challenges. Happy Forecasting!HaythamRescale AnalyticsFeedback from Clients and Training:

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Lecture 2 Forecasting is the stepping stone of planning

    Lecture 3 Time Series

    Lecture 4 Difficulties in forecasting

    Lecture 5 Forecasting applications

    Lecture 6 Forecasting in inventory management

    Lecture 7 Different Forecasting Methods

    Lecture 8 2020 and COVID

    Lecture 9 Time Series analysis

    Lecture 10 Causal Methods

    Lecture 11 Stationarity of the data

    Lecture 12 Summary

    Section 2: Time Series and Pattern extraction

    Lecture 13 Introduction

    Lecture 14 Univariate Statistical analysis

    Lecture 15 Univariate Part2

    Lecture 16 Bivariate Statistics

    Lecture 17 Auto-Correlation

    Lecture 18 Assignment

    Lecture 19 Assignment Solution

    Lecture 20 Summary

    Section 3: Simple forecasting methods

    Lecture 21 Simple Forecasting methods

    Lecture 22 Naive and Seasonal Naive

    Lecture 23 Mean Percentage error

    Lecture 24 Seasonal average

    Lecture 25 Mean absolute scaled error

    Lecture 26 Simple exponential smoothing and log transformations

    Lecture 27 Simple forecasting Methods

    Lecture 28 Naive and Simple forecasting methods

    Lecture 29 linear Regression , Custom weighted moving average and SES

    Lecture 30 Optimizing the Parameters

    Lecture 31 Best Simple Forecasting Method

    Lecture 32 Simple Forecasting assignments

    Lecture 33 Solution

    Lecture 34 Summary

    Section 4: Double Moving average, Centered Moving average and Decomposition.

    Lecture 35 Introduction

    Lecture 36 Moving Averages

    Lecture 37 De-trending series

    Lecture 38 Time-series Decomposition

    Lecture 39 Additive Decomposition

    Lecture 40 Multiplicative Decomposition

    Lecture 41 Assignment

    Lecture 42 Decomposition Solved

    Lecture 43 Summary

    Section 5: Exponential Smoothing

    Lecture 44 Introduction

    Lecture 45 Simple Exponential Smoothing

    Lecture 46 Holt Exponential Smoothing

    Lecture 47 Initialization of alpha and Beta

    Lecture 48 Holt Model in Excel

    Lecture 49 Holt-winters Explanation

    Lecture 50 Additive Holt Winters Model

    Lecture 51 12 month Forecast with Holt Winters

    Lecture 52 Multiplicative Holt-Winters

    Lecture 53 12 Month ahead with multiplicative exponential smoothing

    Lecture 54 Assignment Holt

    Lecture 55 Assignment Solution

    Section 6: Multiple linear Regression

    Lecture 56 introduction

    Lecture 57 Intro to linear regression

    Lecture 58 Multiple linear regression in excel

    Lecture 59 Fitting the model

    Lecture 60 Shifting to Python

    Section 7: Welcome to Python

    Lecture 61 Python!

    Lecture 62 downloading Anaconda

    Lecture 63 Installing Anaconda

    Lecture 64 Spyder overview

    Lecture 65 Jupiter Notebook overview

    Lecture 66 Python Libraries

    Lecture 67 Summary

    Section 8: Python Programming fundmentals

    Lecture 68 Intro

    Lecture 69 Dataframes

    Lecture 70 Arithmetic Calculations with Python

    Lecture 71 Lists

    Lecture 72 Dictionaries

    Lecture 73 Arrays

    Lecture 74 Importing data in Python

    Lecture 75 Subsetting Data Frames

    Lecture 76 Conditions

    Lecture 77 Writing functions

    Lecture 78 mapping

    Lecture 79 for loops

    Lecture 80 for looping a function

    Lecture 81 Mapping On a data frame

    Lecture 82 for looping on a data frame

    Lecture 83 Summary

    Lecture 84 Assignment

    Lecture 85 Assignment answer 1

    Lecture 86 Assignment answer 2

    Section 9: working with dates in Python

    Lecture 87 Dates intro

    Lecture 88 datetime

    Lecture 89 Last purchase date and recency

    Lecture 90 recency histogram

    Lecture 91 Modeling inter-arrival time

    Lecture 92 Modeling inter-arrival time 2

    Lecture 93 Modeling inter-arrival time 3

    Lecture 94 Resampling

    Lecture 95 rolling time series

    Lecture 96 rolling Time series 2

    Lecture 97 Summary

    Lecture 98 Assignment

    Lecture 99 Assignment answer

    Section 10: Statistical Forecasting in Python

    Lecture 100 Introduction

    Lecture 101 Time Series Intro

    Lecture 102 Accuracy Measures

    Lecture 103 Preparing the data for time-series

    Lecture 104 Getting the time series components: Lecture

    Lecture 105 Getting the time series components

    Lecture 106 components uses

    Lecture 107 Arima Models

    Lecture 108 Stationarity test in python

    Lecture 109 Arima in python

    Lecture 110 ARIMA diagnostics

    Lecture 111 Grid search

    Lecture 112 For looping ARIMA

    Lecture 113 error handling

    Lecture 114 fitting the best model

    Lecture 115 Mean absolute error

    Lecture 116 Arima Comparison

    Lecture 117 Exponential smoothing

    Lecture 118 Exponential smoothing in python

    Lecture 119 Comparing exponential smoothing models

    Lecture 120 Time series summary

    Lecture 121 Assignment.

    Lecture 122 Assignment Explanation 1

    Lecture 123 assignment explanation 2

    Lecture 124 Assignment explanation 3

    Lecture 125 Assignment Explanation 4

    Section 11: Machine learning forecasting with sktime

    Lecture 126 Installing sktime

    Lecture 127 Why Forecasting is different from normal machine learning sklearn?

    Lecture 128 Different Fitting strategies with sktime

    Lecture 129 Different estimators in sktime

    Lecture 130 Libraries

    Lecture 131 Transforming from weekly to monthly timeseries

    Lecture 132 Changing from a normal date to a period date

    Lecture 133 Splitting timeseries

    Lecture 134 Knearestneighbor

    Lecture 135 Deriving the future

    Lecture 136 updating the time series with extra 2 years

    Lecture 137 Defining a forecast function

    Lecture 138 Transformed target Regressor

    Lecture 139 Testing the function

    Lecture 140 Plotting the results

    Lecture 141 Measuring acccuracy

    Lecture 142 Cross Validation

    Lecture 143 Conclusion

    Lecture 144 Assignment

    Lecture 145 Assignment Explanation part 1

    Lecture 146 assignment explanation part 2

    Lecture 147 Assignment explanation part 3

    Lecture 148 Assignment part 4

    Lecture 149 Assignment part 5

    Lecture 150 Assignment Part 6

    Lecture 151 Assignment last part

    Lecture 152 Summary

    Section 12: Hierarchal forecasting

    Lecture 153 Introduction

    Lecture 154 Levels of a Hierarchy

    Lecture 155 Middle-out approach

    Lecture 156 Top Down approach

    Lecture 157 Forecasting level Usage

    Lecture 158 Reconciliation

    Lecture 159 Tourism Data

    Lecture 160 Making Quarterly series

    Lecture 161 Indexing as a Hierarchy

    Lecture 162 Fitting Multiple models at once

    Lecture 163 Aggregations

    Lecture 164 Bottom up Forecasting

    Lecture 165 Top Down forecasting

    Lecture 166 Comparing Forecasts

    Lecture 167 Level 0 Comparison

    Lecture 168 Level 0 part 2

    Lecture 169 Topdown and weighted least squares

    Lecture 170 Final note

    Planners,Strategists,Retail merchandise,Financiers,Supply chain,Economists,Operation managers,Budgeters