Predicting sales with multivariate time series forecasting - Qlik Cloud
Learn how to generate, deploy, and visualize machine learning predictions in Qlik Cloud using the built-in ML experiment and prediction workflow.
This step-by-step tutorial walks through the complete process — from uploading your data to building a multivariate time series forecasting model, deploying it, generating predictions, and visualizing the results in an analytics app.
You will learn how to:
- Upload and prepare training datasets
- Build an ML experiment for time series forecasting
- Configure grouping fields, future features, and forecast settings
- Train and compare models using Qlik AutoML
- Deploy the best model and activate it
- Prepare & transform apply data using scripting
- Generate prediction datasets and monitor progress
- Visualize forecasted values inside a Qlik Sense app
Perfect for users exploring predictive analytics, data science workflows, and automated forecasting within Qlik Cloud.
🚀 00:00 – Intro
📂 00:06 – Uploading data & creating the experiment
⚙️ 00:37 – Configuring the model
🤖 01:32 – Training & evaluating models
📤 02:15 – Deploying the model
🛠️ 02:47 – Preparing apply data (script)
📈 03:33 – Generating predictions
📊 04:03 – Visualizing prediction results
🏁 04:40 – Conclusion