| 1 | Introduction | 
| 2 | The Condition Number | 
| 3 | The Largest Singular Value of a Matrix | 
| 4 | Gaussian Elimination without Pivoting | 
| 5 | Smoothed Analysis of Gaussian Elimination without Pivoting | 
| 6 | Growth Factors of Partial and Complete Pivoting 
 Speeding up GE of Graphs with Low Bandwidth or Small Separators
 | 
| 7 | Spectral Partitioning Introduced | 
| 8 | Spectral Partitioning of Planar Graphs | 
| 9 | Spectral Paritioning of Well-Shaped Meshes and Nearest Neighbor Graphs 
 Turner's Theorem for Bandwidth of Semi-Random Graphs
 | 
| 10 | Smoothed Analysis and Monotone Adversaries for Bandwidth and Graph Bisection 
 McSherry's Spectral Bisection Algorithm
 | 
| 11 | Introduction to Linear Programming 
 von Neumann's Algorithm, Primal and Dual Simplex Methods
 
 Duality
 | 
| 12 | Strong Duality Theorem of Linear Programming 
 Renegar's Condition Numbers
 | 
| 13 | Analysis of von Neumann's Algorithm | 
| 14 | Worst-Case Complexity of the Simplex Method | 
| 15 | The Expected Number of Facets of the Convex Hull of Gaussian Random Points in the Plane | 
| 16 | The Expected Number of Facets of the Convex Hull of Gaussian Random Points in the Plane (cont.) | 
| 17 | The Expected Number of Facets of the Shadow of a Polytope given by Gaussian Random Constraints | 
| 18 | The Expected Number of Facets of the Shadow of a Polytope given by Gaussian Random Constraints: Distance Bound | 
| 19 | The Expected Number of Facets of the Shadow of a Polytope given by Gaussian Random Constraints: Angle Bound and Overview of Phase 1 |