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Time Series Analysis with AI Course

USD $59.00 USD $249.00Price range: USD $59.00 through USD $249.00

The Time Series Analysis with AI course is a 3-week program designed to teach you how to apply AI techniques to time series data for forecasting, trend analysis, and decision-making. Learn how to build predictive models that can analyze patterns in data over time.

 

Aim

AI time series forecasting is at the center of how modern teams predict what happens next—whether that’s demand, prices, sensor signals, or risk. This course is designed to teach participants how to apply artificial intelligence (AI) techniques to time series analysis. You will learn how to forecast, model, and analyze sequential data using advanced AI and machine learning algorithms. The course covers a range of applications including financial modeling, demand forecasting, signal processing, and more. By the end of the course, learners will have the skills to handle real-world time series data and deploy AI models for predictive analytics.

Program Objectives

  • Learn the basics of time series data, including its characteristics and challenges.
  • Understand how AI and machine learning can be applied to time series forecasting and anomaly detection.
  • Gain hands-on experience with advanced time series models, including ARIMA, LSTM networks, and Prophet models.
  • Explore tools and libraries such as TensorFlow, PyTorch, and scikit-learn for implementing time series models.
  • Develop practical skills to handle, preprocess, and visualize time series data effectively for predictive analytics.

Program Structure

Week 1: Introduction to Time Series Data

  • What is time series data? Learn the key features and characteristics of time series data.
  • Time series components: trend, seasonality, noise, and cyclical patterns.
  • Applications of time series analysis in finance, healthcare, manufacturing, and more.
  • Hands-on project: Import, preprocess, and visualize time series data using Python libraries like pandas and matplotlib.

Week 2: Time Series Decomposition and Trend Analysis

  • Understanding time series decomposition: separating trend, seasonal, and residual components.
  • Methods for trend analysis: moving averages and exponential smoothing.
  • Hands-on project: Apply time series decomposition on a dataset to analyze trends and seasonality.

Week 3: Time Series Forecasting with Classical Methods

  • Overview of classical forecasting methods: ARIMA and Exponential Smoothing.
  • How to select the best model based on data characteristics (stationarity, seasonality, etc.).
  • Hands-on project: Build an ARIMA model for time series forecasting and evaluate its performance.

Week 4: Machine Learning Approaches for Time Series

  • Introduction to machine learning techniques for time series analysis.
  • Applying supervised learning models such as Random Forests and Gradient Boosting Machines (GBM) for time series forecasting.
  • Hands-on project: Build a machine learning model using scikit-learn to forecast a time series dataset.

Week 5: Deep Learning for Time Series Forecasting

  • Introduction to deep learning for time series: LSTM networks and GRU models.
  • Building an LSTM model for long-term time series forecasting and anomaly detection.
  • Hands-on project: Implement an LSTM model using TensorFlow or PyTorch to forecast time series data.

Week 6: Anomaly Detection and Model Evaluation

  • Using AI to detect anomalies in time series data: understanding outliers and event detection.
  • Evaluation metrics for time series models: RMSE, MAE, and MAPE.
  • Hands-on project: Apply anomaly detection techniques to identify outliers in a time series dataset.

Week 7: Advanced Time Series Modeling with Facebook Prophet

  • Introduction to Facebook Prophet: a powerful open-source tool for forecasting time series data with seasonality.
  • How to model holidays and special events using Prophet for better predictions.
  • Hands-on project: Use Prophet to model and forecast time series data with seasonal and holiday effects.

Week 8: Model Deployment and Real-Time Forecasting

  • How to deploy time series models into production environments.
  • Real-time forecasting pipelines: integrating AI models with live data feeds for continuous predictions.
  • Hands-on project: Develop a real-time forecasting pipeline and deploy it to make predictions on streaming data.

Final Project

  • Design an end-to-end AI time series forecasting system for a real-world application (e.g., financial forecasting, sales prediction, energy consumption).
  • Integrate multiple forecasting techniques such as ARIMA, machine learning models, and deep learning models.
  • Example projects: Forecast product sales for the next quarter, predict stock prices, or predict energy demand for a smart grid system.

Participant Eligibility

  • Students and professionals with a background in data science, machine learning, statistics, or engineering.
  • Anyone interested in AI time series forecasting, anomaly detection, and predictive analytics.
  • Basic understanding of Python programming and machine learning is helpful but not mandatory.

Program Outcomes

  • Comprehensive understanding of time series analysis methods, including classical, machine learning, and deep learning approaches.
  • Hands-on experience with advanced time series forecasting techniques, including LSTM, ARIMA, and Prophet.
  • Ability to design and implement end-to-end AI time series forecasting solutions for various domains.
  • Practical experience in deploying time series models and building real-time forecasting systems.

Program Deliverables

  • Access to e-LMS: Full access to course materials, resources, and datasets.
  • Hands-on Projects: Build and implement time series forecasting models using real-world data.
  • Final Project: Complete a final project demonstrating your ability to forecast time series and integrate different models.
  • Certification: Certification awarded upon successful completion of the course and final project submission.
  • e-Certification and e-Marksheet: Digital credentials awarded upon course completion.

Future Career Prospects

  • Time Series Analyst
  • Data Scientist specializing in Forecasting
  • Machine Learning Engineer for Predictive Analytics
  • Financial Data Analyst
  • Supply Chain Analyst

Job Opportunities

  • Tech Companies: Building AI-powered forecasting systems for industries such as finance, e-commerce, and healthcare.
  • Consulting Firms: Providing predictive analytics services for clients in retail, energy, and logistics.
  • Research Institutions: Conducting advanced research in time series modeling, forecasting, and anomaly detection.
  • Finance and Investment Firms: Applying time series forecasting for stock market predictions, risk analysis, and portfolio optimization.
Category

E-LMS, E-LMS+Video, E-LMS+Video+Live Lectures

Certificate Image

What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

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Feedbacks

AI-Assisted Composite Materials Design

Excellent Presentation and Guidance in AI assisted design of composite materials by the mentor.


RAJKUMAR GUNTI rajkumar.gunti@gmail.com : 06/27/2025 at 6:02 pm

Bacterial Comparative Genomics

It would be more helpful if the prerequisites for this workshop were made available to the More participants atleast a day in advance so that all the installations are made by the participants and kept ready. That would allow the participants to work along side the instructions so that any issues can be resolved right away
Ekta Kamble : 04/01/2024 at 6:21 pm

Good


Sradha A S : 04/14/2025 at 8:04 pm

This was a good workshop some of the recommended apps are not compatible with MAC based computers. More would recommend to update the recommendations.
Shahid Karim : 10/09/2024 at 3:14 pm

Cancer Drug Discovery: Creating Cancer Therapies

Undoubtedly, the professor’s expertise was evident, and their ability to cover a vast amount of More material within the given timeframe was impressive. However, the pace at which the content was presented made it challenging for some attendees, including myself, to fully grasp and absorb the information.
Mario Rigo : 11/30/2023 at 5:18 pm

Green Synthesis of Nanoparticles and their Biomedical Applications

Precise delivery and had covered a range of topics.


Mathana Vetrivel P : 02/16/2024 at 10:23 pm

In Silico Molecular Modeling and Docking in Drug Development

thanks a ton sir for a wonderful webinar with your great delivering speech and lectures.


Akshada Mevada : 02/13/2024 at 8:29 am

Teaching was good. Lecture was delivered with well organized slides and frequent interactions with More the audience.
ISHA : 02/19/2025 at 10:49 am