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Algebra 2 There are 4 modules: Polynomial, Rational, and Radical Relationships Functions Trigonometric Functions Inferences and Conclusions from Data Polynomial, Rational, and Radical Relationships Polynomial identities Polynomial multiplication and division Review all factoring techniques and extend beyond quadratic functions Derive the quadratic formula Solve linear systems in three variables and demonstrate real-life application Add, subtract, multiply & divide rational expressions including real-life applications Analyze all key features of polynomial function graphs Transform polynomial function graphs Explore the definition of a parabola Complex numbers: add, subtract, multiply. Solve polynomial functions algebraically and graphically with real and non-real solutions Functions Radical functions graphically and algebraically • Exponential functions graphically, algebraically and real life applications Logarithmic functions graphically, algebraically and real life applications Transformations of the graphs of these functions Inverse functions Identify types of functions to model a situation Arithmetic sequences and series Geometric sequences, series, and exponential decay/growth Trigonometric Functions Sine and cosine as functions for degree of rotation Special right triangles and trigonometric functions Co-terminal angles Reference angles Tangent, secant, and cosecant functions Reciprocal functions Analyze trigonometric graphs and all key features Conversion between degrees and radians Trigonometric graphs modeling cyclical real life situations Trigonometric identities Inferences and Conclusions from Data Sample space, chance, two or more events Conditional probability Venn diagrams Probability rules Data Distributions: center, shape, dispersion Modeling the normal curve Z-scores Types of statistical studies Estimating a population characteristic Sampling variability Standard deviation Margin of error Sampling variability in the mean Estimation of the population mean and margin of error Drawing conclusions from a sample Experiments Random assigned differences Ruling out chance Evaluating experiments