Quantitative Risk Modeling
Interdisciplinary Instructional Training
6th β 8th February, 2017: Kwame Nkrumah University of Science and Technology
Sponsored by
Safe Water for Food (SaWaFo) Project
Participant of Quantitative Risk Modeling Interdisciplinary Instructional Training will learn the underlying concepts how to use scientific data to perform risk modeling and other quantitative modeling techniques. The Instructional Training is design for graduate students, doctoral and post-doctoral fellows and early βcareer professionals/Scientist. Participants will gain hands-on experience with host of quantitative risk modeling software options and other tools while they participate in realistic case studies.
Participants will:
- Participate in discussion forum and instructional lectures
- Engage in specific hands on exercises
We assume no prior knowledge in quantitative modeling experience on the part of participants; therefore we will include tutorial models and applications for quantitative risk modeling.
No registration fee is required. However, only limited seats are available.
Accepting applications until January 31st, 2017, acceptance notification will be released by February 2nd, 2017
Registration Information
Name
Institution
Discipline
Motivation (Max: 150 words)
Rank e.g PG Student, PG Doctoral student, early career professional/scientist
Should be sent to the following email:
Edjowusu-ansah.cos@knust.edu.gh
degraftt@gmail.com
Program Contact
Dr. Emmanuel de-Graft Johnson Owusu-Ansah or Rejoice Ametepeh
0244378150
Training Includes:
Microbial Hazards Identification
Chemical Hazards Identification
Quantification and Fitting of probabilistic distributions on Data
Quantitative Modeling Techniques
Understanding and Selection of Probabilistic Distributions
Expert Judgment Elicitation
Modeling with Hardly any Data
Chemical Risk Assessment and Hazard Quotient
Microbial Risk Assessment
Uncertainty Quantification in Risk Models and Sensitivity Analysis.
NB: Participants with physical science and engineering backgrounds can also apply because the quantitative modeling approach can be applied in all other fields of science.Β
Comments