We use cookies. Find out more about it here. By continuing to browse this site you are agreeing to our use of cookies.
#alert
Back to search results

Post Doc Associate

Rutgers University
United States, New Jersey, New Brunswick
Nov 16, 2024
Position Details
Position Information


Recruitment/Posting Title Post Doc Associate
Department SEBS-Eco,Evol& Natrl Resources
Salary Commensurate With Experience
Posting Summary
The Chen Lab of Ecosystem Dynamics and Remote Sensing is seeking a highly motivated Postdoctoral Associate to lead research in modeling vegetation photosynthetic activities using space-borne LiDAR data.
The successful candidate will lead research on 1) Developing remote sensing products focusing on canopy vertical leaf area distributions; 2) Upscaling leaf-level processes to the canopy level; 3) Investigating seasonal and vertical structural changes in vegetation.
This role will involve using in situ measurements from eddy covariance flux towers and utilizing vertical mapping data from NASA's Global Ecosystem Dynamics Investigation ( GEDI) mission. Through GEDI, we aim to apply eco-evolutionary optimization theories to constrain vegetation carbon and water fluxes, as well as explore photosynthetic traits
.
The candidate will be responsible for drafting manuscripts for publication and participating in regional, national, and international conferences, including NASA GEDI science team meetings.
This is a three-year project, with an initial contract duration of 12 months, extendable based on the candidate's performance.
Position Status Full Time
Posting Number 24FA0050
Posting Open Date
Posting Close Date
Qualifications


Minimum Education and Experience
The candidate must have a Ph.D. by the time of appointment.
Certifications/Licenses
Required Knowledge, Skills, and Abilities
The candidate is expected to be a highly self-motivated, problem-solving researcher. Preference will be given to candidates with the following background:
- Experience in quantitative remote sensing, plant physiology/hydraulics, photosynthesis modeling, canopy radiative transfer modeling, land surface modeling, and flux tower data analysis.
- Proficient in scientific programming (e.g., Matlab, Python, R).
- Experience in high-performance computing in Unix based operating systems.
Equipment Utilized
Physical Demands and Work Environment
Rutgers, The State University of New Jersey, is one of America's leading public research universities, and is located in the New York metropolitan area. Rutgers University follows a policy to provide affirmative action and equal employment opportunity to all its employees and applicants for employment. As a university, it is committed to fostering and maintaining a diverse and welcoming workplace.
The PI will provide the successful candidate an office space, a computer workstation, access to high-performance computing clusters and storages (Rutgers Amarel HPC), and other supports related to the posted academic position. The successful candidate will access Rutgers university-wide resources and benefit from potential collaboration of team projects within Rutgers and other institutions. The Department of Ecology, Evolution, and Natural Resources is the home department of an active cluster of researchers at the Rutgers Center for Remote Sensing and Spatial Analysis.
Overview
Statement
Posting Details


Special Instructions to Applicants
Please attach your sample publication(s) to the application under other required documents.
The start date is negotiable and can be as early as Spring 2024. Rutgers University offers a competitive salary and benefits package. This is a three-year project. The initial contract duration is 12 months, with the possibility of extension depending on the candidate's performance. More information on Dr. Chen's research: https://sites.google.com/site/chenchichichen/.
Quick Link to Posting https://jobs.rutgers.edu/postings/219349
Campus Rutgers University-New Brunswick
Home Location Campus Cook (RU-New Brunswick)
City New Brunswick
State NJ
Location Details
Pre-employment Screenings
All offers of employment are contingent upon successful completion of all pre-employment screenings.


Immunization Requirements

Under Policy 100.3.1 Immunization Policy for Covered Individuals, if employment will commence during Flu Season, Rutgers University may require certain prospective employees to provide proof that they are vaccinated against Seasonal Influenza for the current Flu Season, unless the University has granted the individual a medical or religious exemption. Additional infection control and safety policies may apply. Prospective employees should speak with their hiring manager to determine which policies apply to the role or position for which they are applying. Failure to provide proof of vaccination for any required vaccines or obtain a medical or religious exemption from the University will result in rescission of a candidate's offer of employment or disciplinary action up to and including termination.



Affirmative Action/Equal Employment Opportunity Statement
It is university policy to provide equal employment opportunity to all its employees and applicants for employment regardless of their race, creed, color, national origin, age, ancestry, nationality, marital or domestic partnership or civil union status, sex, pregnancy, gender identity or expression, disability status, liability for military service, protected veteran status, affectional or sexual orientation, atypical cellular or blood trait, genetic information (including the refusal to submit to genetic testing), or any other category protected by law. As an institution, we value diversity of background and opinion, and prohibit discrimination or harassment on the basis of any legally protected class in the areas of hiring, recruitment, promotion, transfer, demotion, training, compensation, pay, fringe benefits, layoff, termination or any other terms and conditions of employment. For additional information please see the Non-Discrimination Statement at the following web address: http://uhr.rutgers.edu/non-discrimination-statement


Applied = 0

(web-69c66cf95d-glbfs)