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environmental_data_week2

NB: the /data folder was too big to pose on githup. You can access the data using the following Dropbox link: https://www.dropbox.com/sh/fxcmtbz4o3tacz1/AABjQbeyg27zDh1chZxRDFcpa?dl=0

Learning outcomes:

On successful completion of this module, students will be able to:

  1. Understand common data format and database structures specific to representative fields of environmental science
  2. Demonstrate technical competency in handling common data types routinely encountered in the environmental sciences and identify relevant open-source data repositories
  3. Identify and design suitable data analysis strategies that consider data types, data distribution constraints, strength, benefits and limitations of statistical and modelling tools and environmental dynamics.
  4. Understand the limitation of available data and data analysis products. Understand sources of errors and demonstrate ability to comprehensively characterize uncertainties and interpret results in the context of these uncertainties, including measurement errors, environmental uncertainties as well as errors stemming from the analytical procedure itself (e.g. calibration of analysis using synthetic data/models).

Description of contents:

This module will deliver the core knowledge and skills required for processing and analysing data in the context of climate science. This week, we will focus on:

  1. understanding climate modelling, and learn how and where to access climate data
  2. learn about time-series analysis
  3. learn about geostatistics

We won't be able to go through these topics in detail, but it is hoped that the material covered will help you develop your own skills.

The key objective of the course is to equip the students with the information and technical skills needed to design comprehensive data analysis strategies and deliver thorough analytical results that best exploit the data available considering differences in data types, spatio-temporal coverage and associated uncertainties and errors.

Supplementary/recommended reading and useful resources:

Lecture schedule

Date Lecture Instructor Moderator
2021-11-22 9:00-12:00 Mon Intro to climate data Y Plancherel GTA-Arianna
2021-11-23 9:00-12:00 Tue Intro to time series Y Plancherel GTA-Arianna
2021-11-24 9:00-12:00 Wed Intro to geostatistics Y Plancherel GTA-Arianna
2021-11-25 9:00-12:00 Thu Presentations and Google Earth Engine Y Plancherel Shuaib Rasheed
2021-11-26 9:00-12:00 Fri Drop-in session (optional)

Assessment exercises

Assessment will be 100% by coursework. It is all open book. Exercises will be distributed and submitted via GitHub Classroom on Friday.

Release Date Due Date Topic
2021-11-26 Fri 13:00 2021-11-26 17:00 Fri Climate data

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