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  1. A look ahead, final review, other statistics courses, regression example, sampling from a finite population example.

  2. This course uses the theory and application of atomistic computer simulations to model, understand, and predict the properties of real materials. Specific topics include: energy models from classical potentials to first-principles approaches; density functional theory and the total-energy pseudopotential method; errors and accuracy of quantitative predictions: thermodynamic ensembles, Monte Carlo sampling and molecular dynamics simulations...more

  3. Introduction to the central limit theorem and the sampling distribution of the mean.

  4. Discrete-time fourier transforms and sampling theorem

  5. This course serves as an introduction to the theory and practice behind many of today's communications systems. 6.450 forms the first of a two-course sequence on digital communication. The second class, 6.451, is offered in the spring. Topics covered include: digital communications at the block diagram level, data compression, Lempel-Ziv algorithm, scalar and vector quantization, sampling and aliasing, the Nyquist criterion, PAM and QAM...more

  6. Sample spaces, naive definition of probability, counting, sampling.

  7. Figuring out the probability of running out of water on a camping trip.

  8. The central limit theorem and the sampling distribution of the sample mean.

  9. More on the Central Limit Theorem and the Sampling Distribution of the Sample Mean.

  10. Standard Error of the Mean (a.k.a. the standard deviation of the sampling distribution of the sample mean.

  11. Note: This course is being offered this summer by Stanford as an online course for credit. It can be taken individually, or as part of a master’s degree or graduate certificate earned online through the Stanford Center for Professional Development. The goals for the course are to gain a facility with using the Fourier transform, both specific techniques and general principles, and learning to recognize when, why, and how it is used. To...more