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PhD Position in Sampling Theory for Forest Growth

Deadline:
Employer:
PhD Student
Job Field:
Forestry
Job Type:
Experienced Professional
Location:
International
Location Detail:
Vancouver, British Columbia
Job Description:

PhD Position in Sampling Theory for Forest Growth

For many forest ecosystems, growth models and growth data are vital to plan adaptation strategies under climate change. To support development of growth models under uncertain future climates, forest monitoring systems are important to gather the necessary information. The systems ideally consist of measurement methods and sampling strategies that are adaptive, efficient, and targeted to individual growth components. 

Moreover, the monitoring systems must be cost-effective so that they can be deployed over large areas. This feature is particularly important for forest ecosystems that are lacking growth models and long-term monitoring programs. Lastly, uncertainties from the inventory systems must be integrated into growth models to assess risks of adaptation strategies and management decisions. 

We are looking for a highly motivated, enthusiastic, and independent person for a four-year funded PhD position. The overall aims of the position are to develop efficient forest monitoring systems for assessing forest growth. 

The specific objectives of the project are to: 

  1. Design innovative technologies to measure tree growth, 
  2. Develop cost-effective and efficient sampling strategies to assess forest growth components 
  3. Assess and integrate sources of uncertainty.
Qualifications:

Qualifications

Candidates for this PhD position should have:

  • A MSc degree in forest science, forest management, or a related field with strong quantitative skills and training in statistics or a MSc degree in statistics, mathematics, or a related field with a strong interest in forest applications, 
  • Knowledge in statistics, probability sampling, forest inventory, forest management, growth and yield modeling, and forest stand dynamics, 
  • Experience in R programming, 
  • Experience in writing and publishing peer-reviewed articles, 
  • Fluency in verbal and written English, 
  • Willingness to participate in fieldwork, 
  • Ability to work independently and in a team, 
  • Ability to contribute to a positive environment in an inclusive and diverse team.
Miscellaneous:

Start date is flexible but expected to be 01 September 2025. This position will be based at the Department of Forest Resources Management, Faculty of Forestry, the University of British Columbia, Vancouver campus, which is located on the traditional, ancestral, and unceded Musqueam Territory. 

We strive to create a respectful, positive, and safe working environment for people of all backgrounds. We believe that inclusiveness and diversity are essential to academic excellence. We encourage members of underrepresented groups to apply.

Salary:
CAD$27,000 - CAD$30,000/year
How to Apply:

To apply, please prepare: 

  1. A one-page letter of intent describing your interests and motivation on this research topic and your career goals
  2. A current curriculum vitae
  3. Copies of your academic transcripts
  4. Contact information for three academic references. 

Please email all the documents to Tzeng Yih Lam, Assistant Professor in Forest Measurements, tzengyih.lam@ubc.ca

Please use “PhD Application: Sampling Theory for Forest Growth” as the email subject. Please also feel free to send inquiries about the position. 

We thank all candidates for applying, but only shortlisted candidates will be contacted for interviews.

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