3- Intended Learning Outcome :-
a- Knowledge and Understanding :-
a1- Understand theories, fundamentals, and current state-of-the-art in information technology domain and their related domains.
a2- Outline the application areas of detection and estimation theories in various sub-disciplines of electrical engineering.
a3- Understand Scientific developments in information technology.
a4- Categorize the estimation approaches based on the characteristics of the parameters of interest.
a5- Quality principles for professional practice in information technology.
a6- Use hypothesis testing and Bayesian approaches to formulate and solve problems for signal detection from noisy signals.
a7- Use classical and Bayesian approaches to formulate and solve problems for parameter estimation from noisy signals.
b-Intellectual Skills :-
b1- Analyze and evaluate the information in the domain of information technology.
b2- Evaluate the estimator performance through the derivation of Cramer-Rao bound.
b3- Solve specialized problems based on the available inputs.
b4- Identify the nature of hypothesis testing, i.e., simple versus composite.
b5- Apply the above tests to derive the optimum detection rule based on a given set of observation
b6- Derive and apply linear filtering methods for parameter estimation and signal smoothing
c-Professional Skills :-
c1- produce work which is at the forefront of the study domain, including critical evaluation of the domain's aspects.
c2- Design deterministic parameter estimators to minimize the estimator variance.
c3- Design random parameter estimators based on the Bayesian approach.
d-General Skills :-
d1- Describe a self-assessment and determine its education and personal requirements.
d2- present students with applications of detection and estimation theories in various sub-disciplines of electrical engineering.
d3- Be capable of applying both traditional and new concepts and skills.