Understanding advanced analytics

Part 1 of 6

Advanced analytics goes beyond reporting and dashboards: it uses algorithms and models to predict, segment, recommend, or explain what's going on in your data. This guide explains, in plain language, what kinds of algorithms exist, what tasks are involved in building and using them, and how agentic analytics differs from traditional (human-led) analytics.

The guide is in five parts:

  1. What is "advanced analytics"? — Descriptive, diagnostic, and advanced; what algorithms are and why they matter.
  2. Kinds of algorithms (in plain language) — Regression, classification, clustering, time series, NLP, and optimisation.
  3. The main tasks in building advanced analytics — From defining the problem to deployment and maintenance.
  4. Agentic vs traditional analytics — Who does the work, speed, scale, and where people focus.
  5. Analytics patterns — How different types of questions map to analytics approaches, with worked examples.

Where to go from here