330 likes | 346 Views
CS190/295 Programming in Python for Life Sciences: Lecture 6. Instructor: Xiaohui Xie University of California, Irvine. Announcement. Homework #4 will be out this week (will send out emails). Due on Feb 16 (next Thur) Lab session next Tuesday. Control Structures.
E N D
CS190/295 Programming in Python for Life Sciences: Lecture 6 Instructor: Xiaohui Xie University of California, Irvine
Announcement • Homework #4 will be out this week (will send out emails). Due on Feb 16 (next Thur) • Lab session next Tuesday.
Control Structures Part I: Decision structures
Multi-way decisions: if-elif-else • Python will evaluate each condition in turn looking for the first one that is true. If a true condition is found, the statements indented under that condition are executed, and control passes to the next statement after the entire if-elif-else. • If none of the conditions are true, the statements under the else are performed. • The else clause is optional; if omitted, it is possible that no indented statement block will be executed.
Control Structures Part 2: Loop Structures
For Loops • It allows us to iterate through a sequence of values • The loop index variable var takes on each successive value in the sequence, and the statements in the body of the loop are executed once for each value.
Indefinite Loops: while-statement • An indefinite loop keeps iterating until certain conditions are met. • Here condition is a Boolean expression, just like in if statements. The body is, as usual, a sequence of one or more statements. • The body of the loop executes repeatedly as long as the condition remains true. When the condition is false, the loop terminates
Nested Loops • Again in the number averaging example, suppose instead of one-per-line we allow any number of values on a line, separated by comma.
Post-Test Loop • Suppose you are writing an input algorithm that is supposed to get a nonnegative number from the user. If the user types an incorrect input, the program asks for another value. It continues to reprompt until the user enters • a valid value. This process is called input validation. • Here is a simple algorithm: • repeat • get a number from the user • until number is >= 0
Post-Test Loop • Python does not have a statement that directly implements a post-test loop. However you can implemented with a while statement using the trick of “seeding”: • Or use the break statement:
Most real-world programs deal with large collections of data • A few examples: • Words in a document. • Students in a course. • Data from an experiment. • Customers of a business. • Graphics objects drawn on the screen. • Cards in a deck.
Example problem: simple statistics Extend this program so that it computes not only the mean, but also the median and standard deviation of the data
Lists • Lists are ordered sequences of items, a collection of values denoted by the enclosing square brackets • Lists can be created by listing items inside square brackets
Lists vs. Strings • In Python strings and lists are both sequences that can be indexed. In fact, all of the built-in string operations that we discussed previously are sequence operations and can also be applied to lists:
Lists vs. Strings: differences • The items in a list can be any data type, including instances of programmer-defined classes. Strings, obviously, are always sequences of characters. • Second, lists are mutable. That means that the contents of a list can be modified. Strings cannot be changed “in place.”
Tuples • A tuple is a sequence of immutable Python objects. Just like lists. The only difference is that types cannot be changed. • Tuples are defined using parentheses while lists use square brackets. • Examples: Tup1 = (1,2,3,4) Tup2 = (‘UCI’, ‘UCLA,’UCSD’)
List operations • Python lists are dynamic. They can grow and shrink on demand. They are also heterogeneous. You can mix arbitrary data types in a single list. In a nutshell, Python lists are mutable sequences of arbitrary objects. This is very different from arrays in other programming languages. • A list of identical items can be created using the repetition operator. • Typically, lists are built up one piece at a time using the append method.
Using lists is easy if you keep these basic principles in mind • A list is a sequence of items stored as a single object. • Items in a list can be accessed by indexing, and sublists can be accessed by slicing. • Lists are mutable; individual items or entire slices can be replaced through assignment statements. • Lists will grow and shrink as needed.
Statistics with Lists # get a list of numbers and store in a list
Non-sequential collections • Dictionary is a build-in data type for non-sequential collections in Python. • Python dictionaries are mappings: Keys -> values • A dictionary can be created by listing key-value pairs inside a curly braces. • We can access the value associated with a particular key using: • Dictionaries are mutable:
Dictionary Operations • You can also extend a dictionary by adding new entries • In fact, a common method for building dictionaries is to start with an empty collection and add the key-value pairs one at a time
References and Objects • Consider the following example: x = [1,2,3,4] y = x y[1] = ‘hello’ >>> y [1,’hello’,3,4] >>> x [1,’hello’,3,4] Note that items in x are also changed after y assignment.
Call by reference in functions • Consider the following example: >>> def my_func(x): x.append(’hello’) >>> x = [1,2,3,4] >>> my_func(x) >>> x [1,2,3,4,’hello’]