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Predictive Data Analytics Course

Predictive Data Analytics Course
flexible workload from 4 to 360h
valid certificate in your country

What will I learn?

This Predictive Data Analytics Course teaches you how to transform retail time-series CSVs into precise forecasts for revenue and units. You will learn data loading, cleaning, and visualisation, then apply regression, feature-based models, and time series techniques like ARIMA and ETS. Develop reproducible pipelines, automate reports, integrate results into dashboards, and convert forecasts into straightforward, actionable recommendations and KPIs for decision-makers.

Elevify advantages

Develop skills

  • Retail time-series preparation: clean, validate, and organise BI-ready CSV data quickly.
  • Practical forecasting: construct and evaluate ARIMA, ETS, and baseline retail models.
  • Feature-based modelling: create lags, promotions, and marketing factors for revenue.
  • BI deployment: automate forecasts, manage model versions, and release clear dashboards.
  • Executive storytelling: transform forecasts into KPIs, risks, and ready-to-act plans.

Suggested summary

Before starting, you can change the chapters and workload. Choose which chapter to start with. Add or remove chapters. Increase or decrease the course workload.
Workload: between 4 and 360 hours

What our students say

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EmersonPolice Investigator
The course was essential to meet the expectations of my boss and the company where I work.
SilviaNurse
Very great course. Lots of valuable information.
WiltonCivil Firefighter

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