Formation

Mineral Resource Estimation by linear geostatistics – Module 1: univariate context

Build the foundation every resource geologist needs. In this hands-on module, you'll master the standard univariate workflow from data analysis and variography to block modeling, kriging, and validation and walk away able to produce reliable grade-tonnage curves for short-term resources. Join the training to estimate with confidence.
Prochaine session July 6-7, 2026
Durée 2 days
Prix EUR 1150

Objectives

This course provides a solid foundation in geostatistical methods for mineral resource estimation. The skills you will develop will assist you in:

  • Estimating long-term and short-term resources,
  • Producing resource models for mine design,
  • Conducting spatial analysis of drillhole data.

It comprises two modules that can be taken separately:

  • In Module 1, you will learn and practice the standard workflow for estimating resources in a univariate context. This module covers in-depth data analysis, detailed variographic analyses, block modeling, grade distribution interpolation using kriging, estimation validation, and unbiased grade-tonnage curves for short-term resources.
  • Module 2 allows you to progress into the multivariate context by exploring statistical tools such as Principal Component Analysis, applying kriging and co-kriging methods for estimating multi-element orebodies and obtaining multivariate models respecting the ratio between main metals, oxides, and elements.

 

Course content

  •  Understand the importance of geostatistics in mineral resource estimation: build a solid foundation for informed decision-making.
  • Explore and analyze your data effectively using Exploratory Data Analysis (EDA) and spatial data analysis techniques.
  • Assess data stationarity to ensure consistency and reliability in your estimates.
  • Prepare your data with confidence using regularization techniques such as compositing and declustering to reduce bias.
  • Master variographic analysis: variogram clouds, directional variograms, and interpretation of spatial structures.
  • Model variograms using automatic, semi-automatic, manual, or interactive tools tailored to your needs.
  • Apply the most relevant kriging methods: ordinary kriging, block kriging, and weight distribution analysis.
  • Build an optimal sample neighborhood with Kriging Neighbourhood Analysis (KNA) to enhance estimation accuracy.
  • Validate your models and estimations through cross-validation and robust validation techniques.
  • Generate grade-tonnage tables and curves to support your technical and economic modeling.

 

Outlines 

  • Balanced learning approach: The course combines theory with practical applications, ensuring concepts are understood and applied effectively.
  • Hands-on software training: Engage in computer-based exercises using Isatis.neo software, reinforcing learning through real-world data scenarios.
  • Personalized feedback: Receive individualized guidance and feedback from experienced trainers during online sessions to support your learning journey.
  • Comprehensive resources: Access detailed course materials, including documentation, journal files, and datasets, to reinforce learning and facilitate application post-training.

 

Who should attend 

Professionals seeking a sound theoretical and practical knowledge of mining geostatistics.

 

Prerequisites

  • A basic understanding of resource concepts such as gradetonnage, and cut-off is recommended.
  • To expand your knowledge, we recommend attending the complementary advanced short course Recoverable Resource Estimation.
  • If you want to expand your skills in estimation within a multivariate contextModule 2 of this course is recommended.

This course can also be followed by an “à la carte” workshop based on your data.

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