Job Search and Career Advice Platform

Enable job alerts via email!

Post Doctoral Researcher in Remote Sensing

Polytechnicpositions

Doha

Hybrid

QAR 200,000 - 400,000

Full time

Today
Be an early applicant

Generate a tailored resume in minutes

Land an interview and earn more. Learn more

Job summary

An academic institution in Qatar is seeking a Post Doctoral Researcher in Remote Sensing. This role involves developing a dust and air quality forecasting system combining remote sensing and data science. Applicants should have a Ph.D. in a relevant field, strong programming skills in Python or R, and experience with GIS and satellite datasets. Join a multidisciplinary team to support public health resilience and climate adaptation in Qatar.

Qualifications

  • Ph.D. in Electrical Engineering, Environmental Engineering, Geospatial Data Science, Atmospheric Science, or Remote Sensing.
  • Expertise in remote sensing and predictive environmental modeling.
  • Strong programming proficiency in Python or R for data analysis.

Responsibilities

  • Design comprehensive data collection strategy using satellite imagery and sensors.
  • Develop predictive models for dust events and air quality.
  • Build a cloud-enabled predictive framework for data processing.

Skills

Remote sensing
Predictive environmental modeling
Python programming
Statistical modeling

Education

Ph.D. in a relevant field

Tools

GIS platforms (ArcGIS, QGIS)
Cloud-based environments (Google Earth Engine, AWS, Azure)
Satellite datasets (MODIS, Sentinel, Landsat)
Job description
Post Doctoral Researcher in Remote Sensing
University of Doha
Qatar

ID 2025-4250

Category Academic

Position Type Temporary

Expected Start Date 1/1/2026

University of Doha for Science and Technology (UDST) is the first national applied University in the State of Qatar, offering applied bachelor’s and master’s degrees in addition to certificates and diplomas in various fields. UDST has over 50 programs in the fields of Engineering Technology and Industrial Trades, Business Management, Computing and Information Technology, Health Sciences, Continuing and Professional Education and more. With more than 700 staff and over 8,000 students, UDST is the destination for top‑notch applied and experiential learning. The University is recognized for its student‑centered learning and state‑of‑the‑art facilities. Our faculty are committed to delivering pedagogically‑sound learning experiences with the incorporation of innovative technological interventions, to further enhance students’ skills and help develop talented graduates that can effectively contribute to a knowledge‑based economy and make Qatar’s National Vision 2030 a reality.

The Applied Research, Innovation and Economic Development Directorate invites applications for the position of Post Doctoral Researcher to work on the UDST Quantum Materials Project.

The Postdoctoral Researcher will contribute to developing an e arly warning system for dust and air quality prediction in Qatar. The project integrates remote sensing, geospatial data science, and predictive modeling to create real‑time forecasting tools supporting public health resilience and climate adaptation. The researcher will work within a multidisciplinary team at UDST and collaborate with national and international stakeholders, including government agencies, industry partners, and academic institutions.

Responsibilities
  • Design and implement a comprehensive data collection strategy integrating natural, built, and societal factors using satellite imagery, ground sensors, and urban datasets.
  • Develop predictive models for dust events, particulate matter (PM) concentrations, and air quality dynamics using geospatial regression, Getis‑Ord Gi*, and Copula‑based statistical techniques.
  • Build a cloud‑enabled predictive framework (Google Earth Engine, AWS, or Azure) automating data cleaning, processing, and forecasting.
  • Conduct hotspot and temporal trend analyses to assess relationships among soil moisture, wind, vegetation cover, and PM concentrations.
  • Generate high‑resolution environmental maps of dust susceptibility and vegetation‑sheltering efficiency.
  • Collaborate on extending Quantitative Microbial Risk Assessment (QMRA) models to evaluate health impacts associated with airborne fungal spores.
  • Support the design of interactive dashboards or decision‑support systems for stakeholder engagement.
Qualifications
  • Ph.D. in Electrical Engineering, Environmental Engineering, Geospatial Data Science, Atmospheric Science, Remote Sensing, or a closely related field.
  • Demonstrated expertise in remote sensing and predictive environmental modeling.
  • Strong programming proficiency in Python (NumPy, Pandas, Scikit‑learn, PyMC, GeoPandas) or R for spatiotemporal data analysis and machine learning.
  • Proven experience working with satellite datasets (e.g., MODIS, Sentinel, Landsat) and environmental datasets (e.g., soil, vegetation, meteorological, and PM data).
  • Experience with GIS platforms (ArcGIS, QGIS) and cloud‑based analytics environments (Google Earth Engine, AWS, or Azure).
  • Background in statistical modeling, regression analysis, and geospatial methods (e.g., Getis‑Ord Gi*, Moran’s I, Copula modeling).
  • Excellent written and verbal communication skills with a record of peer‑reviewed publications.
  • Demonstrated ability to work independently and collaboratively in multidisciplinary, multi‑institutional research teams.
Get your free, confidential resume review.
or drag and drop a PDF, DOC, DOCX, ODT, or PAGES file up to 5MB.