![]() |
|
Complete Time Series Forecasting Bootcamp In Python (2025) - 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: Complete Time Series Forecasting Bootcamp In Python (2025) (/Thread-Complete-Time-Series-Forecasting-Bootcamp-In-Python-2025) |
Complete Time Series Forecasting Bootcamp In Python (2025) - AD-TEAM - 11-18-2025 ![]() Complete Time Series Forecasting Bootcamp In Python (2025) Published 1/2025 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 4.57 GB | Duration: 11h 57m Master time series forecasting from statistical to state-of-the-art deep learning models in 100% Python code What you'll learn The basics of time series forecasting using baseline models Apply statistical models like ARIMA, ETS, TBATS and more Apply deep learning architectures for time series forecasting Use state-of-the-art deep learning models like NHITS, TSMixer, iTransformer, TimeGPT, and more! Requirements Basic knowledge of Python Description Master Time Series Forecasting: From Fundamentals to Deep LearningUnlock the power of predictive analytics in this comprehensive 12-hour course designed specifically for aspiring data scientists. Whether you're looking to forecast market trends, optimize supply chains, or predict weather patterns, this course will equip you with the essential skills to tackle real-world forecasting challenges.What You'll LearnTransform from a beginner to a confident practitioner through our carefully structured curriculum. Starting with fundamental statistical models, you'll progress to implementing cutting-edge deep learning architectures. Along the way, you'll master:Classical forecasting methods (ARIMA, SARIMA, SARIMAX)Advanced techniques like exponential smoothing, TBATS, and the Theta modelDeep learning architectures for time seriesFacebook's Prophet frameworkState-of-the-art models for complex forecasting challengesSpecialized approaches for intermittent time seriesWhy This Course Stands Out14+ hands-on projects that reinforce your learning100% Python-based curriculum with complete code implementationsReal-world applications across finance, economics, retail, and supply chainProgressive learning path from basics to advanced conceptsExclusive content on state-of-the-art forecasting modelsPerfect For You If.You're new to time series forecasting but have basic Python programming skills. No prior forecasting experience needed - we'll guide you through every step, from understanding the fundamentals to implementing advanced predictive models.Course StructureThe curriculum flows naturally from foundational concepts to advanced applications:Core statistical methods and their practical implementationMultivariate forecasting techniques for complex datasetsDeep learning approaches built from the ground upModern frameworks and state-of-the-art architecturesSpecial topics in intermittent demand forecastingAbout Your InstructorLearn from an industry expert at the forefront of time series innovation. I am a contributor at Nixtla, a leader in open-source forecasting technology, and an active developer of NeuralForecast, the Python package renowned for its lightning-fast deep learning implementations. This isn't just theoretical knowledge - it's practical insight from someone who shapes the tools that industry leaders use today.By the end of this course, you'll have the skills and confidence to tackle diverse forecasting challenges across any industry. Join us to master one of the most valuable skills in data science, backed by extensive hands-on practice and real-world applications.Ready to predict the future? Enroll now and transform your data science journey. Overview Section 1: Introduction Lecture 1 Welcome Lecture 2 Defining time series Lecture 3 Baseline models Lecture 4 Code - Baseline models Section 2: The random walk model Lecture 5 Introducing the random walk Lecture 6 Code - Simulate a random walk Lecture 7 Stationarity and differencing Lecture 8 Code - Stationarity and differencing Lecture 9 Autocorrelation Lecture 10 Code - Autocorrelation Lecture 11 Forecasting a random walk Lecture 12 Code - Forecasting a random walk Section 3: Forecasting with the ARIMA model Lecture 13 The moving average model Lecture 14 Code - Forecasting with MA(q) Lecture 15 The autoregressive model Lecture 16 Code - Forecasting with AR(p) Lecture 17 The ARMA model Lecture 18 Designing a general modeling procedure Lecture 19 Code - Forecasting with ARMA(p,q) Lecture 20 The ARIMA model Lecture 21 Code - Forecasting with ARIMA(p,d,q) Lecture 22 Modeling seasonality Lecture 23 Code - Forecasting with SARIMA Lecture 24 Adding external variables to our model Lecture 25 Code - Forecasting with SARIMAX Section 4: Multivariate forecasting Lecture 26 Multivariate forecasting Lecture 27 Code - Forecasting with VAR Lecture 28 Code - Forecasting with VARMA Lecture 29 Code - Forecasting with VARMAX Section 5: Exponential smoothing Lecture 30 Simple exponential smoothing Lecture 31 Code - Forecasting with simple exponential smoothing Lecture 32 Double exponential smoothing Lecture 33 Code - Forecasting with double exponential smoothing Lecture 34 Triple exponential smoothing Lecture 35 Code - Forecasting with triple exponential smoothing Section 6: Forecasting multiple seasonal periods Lecture 36 BATS and TBATS Lecture 37 Code - Forecasting with BATS and TBATS Section 7: Forecasting using decomposition Lecture 38 The Theta model Lecture 39 Code - Forecasting with the Theta model Lecture 40 Code - Comparing Theta to SARIMA Section 8: Deep learning for time series forecasting Lecture 41 Introducing deep learning for time series forecasting Lecture 42 Code - Preprocessing data for deep learning Lecture 43 Linear models Lecture 44 Code - Linear models Lecture 45 Deep neural networks Lecture 46 Code - Deep neural networks Lecture 47 LSTM Lecture 48 Code - LSTM Lecture 49 Code - CNN Lecture 50 CNN Section 9: EXTRA - Prophet Lecture 51 Understanding Prophet Lecture 52 Code - Get started with Prophet Lecture 53 Advanced features of Prophet Lecture 54 Code - Advanced features of Prophet Lecture 55 Hyperparameter tuning with Prophet Lecture 56 Code - Hyperparameter tuning with Prophet Lecture 57 Code - Forecasing with Prophet Section 10: EXTRA - State-of-the-art forecasting Lecture 58 N-BEATS Lecture 59 Code - NBEATS Lecture 60 NHITS Lecture 61 Code - NHITS Lecture 62 PatchTST Lecture 63 Code - PatchTST Lecture 64 TimesNet Lecture 65 Code - TimesNet Lecture 66 TiDE Lecture 67 Code - TiDE Lecture 68 TSMixer Lecture 69 Code - TSMixer Lecture 70 iTransformer Lecture 71 Code - iTransformer Lecture 72 SOFTS Lecture 73 Code - SOFTS Lecture 74 RMoK Lecture 75 Code - RMoK Section 11: EXTRA - Forecasting intermittent time series Lecture 76 Introduction to intermittent time series forecasting Lecture 77 Croston's method Lecture 78 Code -Croston's method Lecture 79 ADIDA and IMAPA Lecture 80 Code - ADIDA and IMAPA Lecture 81 TSB Lecture 82 Code - TSB Lecture 83 Error metrics for intermittent time series forecasting Lecture 84 Code - Error metrics for intermittent time series forecasting Lecture 85 Code - Forecast the monthly sales of car parts Beginners eager to learn about time series forecasting,Practitioners looking to perfect their forecasting skills,Anyone serious about mastering time series forecasting using state-of-the-art models ![]() RapidGator NitroFlare DDownload |