CSE 322: Software Reliability Engineering Topics covered: Software Reliability Models.

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Presentation transcript:

CSE 322: Software Reliability Engineering Topics covered: Software Reliability Models

Introduction

Duane model  Overview:

Duane model (contd..)  Overview

Duane model (contd..)  Assumptions:

Duane model (contd..)  Data requirements:

Duane model (contd..)  Model form:

Duane model (contd..)  Model form:

Duane model (contd..)  Model estimation and reliability prediction:

Musa-Okumoto Logarithmic Poisson model  Overview

Musa-Okumoto Log-Poisson model (contd..)  Assumptions:

Musa-Okumoto Log-Poisson model (contd..)  Data requirements:

Musa-Okumoto Log Poisson model (contd..)  Model form:

Musa-Okumoto Log-Poisson model (contd..)  Model estimation and reliability prediction: