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Published 5/2025
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Language: English | Duration: 2h 4m | Size: 1.08 GB
Step-by-Step Guide to Spatial Data Analysis and Kriging
What you'll learn
Learn geostatistics to analyze spatial data, solve real-world problems, and stand out in mining, environment, and smart farming jobs.
Geostatistics is a rare skill. Companies want experts who can model spatial data and handle uncertainty.
Learn tools like R, and QGIS to analyze spatial data, predict trends, and create maps.
With geostatistics, you stand out in the job market and open doors to roles that require smart decision-making using location-based data.
Job oriented course
Requirements
Simple PC or Laptop and dedication to learn.
Description
This course is designed to help students, researchers, and professionals understand and apply geostatistical methods for groundwater modeling. It covers the entire workflow-from data preparation to final visualization-using simple, practical steps.Through this course, learners will gain essential skills in data analysis, spatial modeling, and geostatistics, which are important for groundwater assessment and environmental planning. Whether you're a beginner or someone with basic GIS knowledge, this course will guide you through each stage with clear explanations and examples.What You Will Learn:Groundwater Data Cleaning and Preparation:Learn how to clean, organize, and prepare groundwater datasets using R programming. You will also convert spatial coordinates to UTM format for accurate spatial analysis.Exploratory Data Analysis (EDA):Use plots and summary statistics in R (such as histograms, box plots, and scatter plots) to explore patterns, trends, and outliers in groundwater data.Normality Check and Data Transformation:Understand the importance of data normality in modeling. Learn how to test for normality and apply transformations (e.g., log or z-score) to make data suitable for analysis.Polynomial Trend Surface Analysis



Who this course is for
This course is made for anyone who wants to learn geostatistical modeling and build a successful career by solving real-world problems. Whether you are a student, graduate, or working professional, this course will help you gain valuable, job-ready skills. Students and Graduates (from Geology, Environmental Science, Geography, or Data Science backgrounds): You will learn key concepts like kriging, variograms, and spatial analysis to build strong foundations for a professional career. Working Professionals (in Mining, Oil and Gas, Agriculture, and Environmental sectors): You will learn to apply geostatistics to find natural resources, map pollution, improve urban planning, and practice smarter farming. Data Scientists and Analysts: You will expand your toolkit by adding spatial data skills and working with tools such as QGIS, ArcGIS, and R to analyze location-based data. Researchers and Academics: You will be able to use advanced geostatistical methods for publishing high-quality research, planning fieldwork, and modeling natural systems.
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