Posting Title
Post-Master's Research Associate in Quantitative Ecologist
Reference Code
ORNL14-11-ESD
Eligibility Requirements

 *   Degree: Currently pursuing a Master's Degree or have received this Degree 
within 60 months.
 *   Affirmation: I certify that I have completed coursework towards a degree 
in science, technology, engineering, mathematics, or a related field.
Description
ORNL has long history of leadership in ecological modeling research, including 
agent-based modeling to support science-based fisheries conservation efforts.  
This project will use an individual-based demographic and genetic population 
model (IBM+G) for white sturgeon in the Snake River, Idaho to conduct a 
risk-benefit analysis of two conservation alternatives:  1) operating a 
conservation hatchery and 2) repatriating larval sturgeon.  Repatriation is a 
progressive new strategy that may have significant advantages over providing 
hatchery support in terms of protecting genetic diversity and avoiding removal 
of broodstock.
This is a unique opportunity to make a real difference in the conservation of 
fish species at risk and in the evaluation of a new conservation practice.  The 
successful candidate for this position will 1) modify an existing population 
viability analysis model to represent aquaculture and repatriation scenarios, 
2) build linkages with reservoir water quality modeling scenarios for Brownlee 
Reservoir, 3) perform simulations to compare conservation measures under 
different future water-quality scenarios, and 4) document and analyze results.  
Because use of the existing IBM+G model is required to be used to satisfy a 
Conservation Plan, no major changes in the model can be made other than those 
required to address the research question.  Although this position will 
primarily focus on completing the Snake River white sturgeon project, there 
will also be opportunities to contribute to an ongoing project to model the 
viability of the threatened Snake River fall Chinook salmon ESU and to interact 
with fisheries scientists, ecologists, engineers and economists that support 
DOE Renewable Energy research.  Publication of results in the peer-reviewed 
scientific literature is possible and funding will be made available to attend 
one scientific meeting to present results during the second year of this two 
year position.
Qualifications
The successful candidate must have a Master's degree in the biological, 
mathematical, or computer sciences (or related field) with course work in 
statistics and population genetics.  A detail-oriented work focus and strong 
organizational skills are required.  Experience with C and R languages is 
required.  In addition, candidates with other quantitative skills (statistics, 
Python, high-performance computing, GIS, version control software) are 
encouraged to apply. Applicants cannot have received the most recent degree 
more than five years prior to the date of application and must complete all 
degree requirements before starting their appointment.
https://www3.orau.gov/ORNL_TOppS/Mentor/PostingApplications?PostingId=510

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