We are currently seeking a highly motivated postdoctoral research scientist to develop and apply new methods to quantify greenhouse gas emissions from industrial facilities based on in-situ atmospheric measurements. The position is based at Le Laboratoire des Science du Climat et de l’Environnement (https://www.lsce.ipsl.fr) and the researcher will work within the TRACE project (http://trace.lsce.ipsl.fr), which is a collaboration between engineers and scientists working at the LSCE as well as partner companies SUEZ, TOTAL and Thales Alenia Space.

The full job description can be found attached or at the following link: https://sharebox.lsce.ipsl.fr/index.php/s/y5ECVAT3OSXnbzp.

Please forward this opportunity to your colleagues or anyone whom you think might be interested.

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Mendenhall Postdoctoral Fellowship, in Woods Hole, Massachusetts. A broad set of topics are of interest, related to carbon and sea level rise processes in coastal wetlands.
https://www.usgs.gov/centers/mendenhall/18-23-predicting-responses-sea-level-rise-and-restoration-diked-salt-marshes

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Canopy-scale fluxes and in-canopy processes of atmosphere-biosphere exchange of reactive nitrogen will be investigated using a combination of micrometeorological flux measurements and modeling. The candidate will work with advanced instruments for nitrogen trace gas and aerosol flux measurements and assist in the development of low-cost methods to better estimate dry deposition for routine monitoring.

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A postdoctoral research position in remote sensing is available in the Spatial Ecosystem Analytics Lab (SEAL, https://seal.wordpress.ncsu.edu PI: Dr. Josh Gray) at NC State University. The ideal candidate will have extensive experience with technical remote sensing (i.e., algorithm development), strong computational skills (R and/or Python preferred) and experience working with massive datasets in a distributed computing environment, hydrologic and or ecosystem modeling experience, and a fundamental interest in using remote sensing to understand large-scale Earth system changes.

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The NGEE-Tropics project in LBNL’s Climate and Ecosystem Sciences Division is seeking a NGEE-Tropics Data Postdoctoral Scholar to investigate processes associated with the large-scale forest-atmosphere exchange of carbon, water, and energy in Amazonia.

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Applications are now being accepted for a 2-year NICHD post-doctoral research fellowship in
Developmental Science at the University of Michigan. The Developmental Area within the
Department of Psychology will award one post-doctoral fellowship with an ideal start date
between August 1 and September 15. The successful applicant must complete all requirements
for the PhD before the post-doctoral fellowship can begin; however, it is not necessary that the
degree be conferred before the start date.
The objective of the fellowship is to train individuals on three pillars of knowledge: (1)
developmental science of social context; (2) human neurobiology, which may include brain
imaging, genetics, epigenetics, and endocrine function; and (3) advanced research methods
(e.g., quantitative statistics appropriate for combining and analyzing longitudinal data from
different levels of functioning). This cross-training will produce researchers well-positioned to
develop cutting-edge work that advances knowledge about how neurobiological factors interact
with environmental contexts to influence development across several domains and contexts.
The Developmental Area faculty has a broad range of research interests across the life-span
from infancy to late adulthood. See full description for details.

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The postdoctoral Research Associate will conduct regional modeling with the Community Land Model (CLM) to improve prediction of climate-related stress, forest die-back, and effects of future climate and land management options on carbon uptake across the western US. It requires a Ph.D. in earth system science, ecophysiology, or related discipline, and a working knowledge of FORTRAN90 and a land system model or similar complex models.

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