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admin-Python-Learner

Python-Learner repository, to learn explore things in Python, DataStructures and Algorithms

Setup

Installing pre-req software for the course

Instructions for Installation and setting up of your development environments:

Installing Python :

Install Python 3.6.5(32 Bit) on your machines. If you have any older versions please uninstall and install this particular version of python.

https://www.python.org/ftp/python/3.6.5/python-3.6.5.exe

Installation video: https://youtu.be/CO5YLsZ8Bwk

Installing and Configuring PyCharm Community Edition (IDE) :

Download the Pycharm Community Edition from the following link :

https://download.jetbrains.com/python/pycharm-community-2017.2.4.exe

Note: Please download the file from the link we provided above (PyCharm 2017 Version),

Make sure you select shortcut (32-bit or 64-bit) based on your processor/OS type (i.e, Select 32-bit Launcher Shortcut if you have a 32-bit Processor/OS or else select 64-bit Launcher)

We recommend that you watch this video once in full and then try to start your installation on your second viewing:

Part 1: https://youtu.be/qRtVucXKXc4

Part 2: https://youtu.be/UPsDwdCnlkM

The above installation video shows you how to:

  • How to install pycharm community edition
  • How to create and configure your "pythoncourse" project
  • How to install dependency packages - pytest
  • How to configure a shortcut for your python console.
  • How to configure the comments color. Download this file for this step: ppcourse.icls

Changing the default coloring scheme of pycharm

The default coloring scheme in pycharm (for comments, docstrings and strings) makes it easy to skip over the lesson notes and helpful comments/hints and we see questions that will not come up if you read the notes carefully. So be sure to do step 5 above.

Installation Issues

For any issues during installation, please post a clear description of your problem with screenshots (taken using Jing! and annotated appropriately) on the forum and try to help each other resolve these issues.


Configure and run your first lesson

This task assumes that you have installed all the pre-req software in post @17. So finish your installations before you do this.

This post contains instructions to configure pycharm and verify that your machines are ready for course use!

Each of the lessons in this course are given in the form of 'coding lessons'. In particular, each concept in python is given as a module, for e.g. unit1_lesson2_understanding_strings.py. The module file contains many test cases which explore the concept (of strings) from many angles (for e.g. mutability, slicing, indexing, operations on string...).

The tests are run using a python testing framework called pytest, which you have already installed. You must configure your project to use it so that you can run the tests. The instructions to set it up and run your first lesson are given below.

Configuring your project (one time process):

Once you do this, copy the lesson folder in this repo into your c:\pythoncourse folder: first_lesson. DO NOT CREATE SUB FOLDERS. Just copy the lesson folder itself into the c:\pythoncourse folder.

Doing your first lesson:

Your project now has a sample lesson on assert and a placeholders file which you must not modify (it just defines a few constants). I want you to finish this lesson to ensure that the end to end flow is working for you.

  1. See this image to run a single test running_a_test.png . Initially every test will fail. You have to replace the blanks (** and _**) in the file so that the tests pass. For example assert ** == 2 + 5 will pass if ** is replaced by 7 :).

  2. Get familiar with all the pytest window commands. Once you have worked through each test, run all tests once and ensure that they pass before you submit any lesson (instructions will for submission via google drive follow in a week): run_all_tests.png

Once these tests pass, you can be sure that you have configured everything properly to start the course.

Next steps:

  1. Unit1 lessons will be posted. So make sure all your installs are done and your pycharm is configured properly to start doing the lessons!

Lessons

  1. Unit 1 lessons (lessons 02 to 06)

    You can find unit1 lessons at the end of this post. Before you get started:

    Ensure that you have done these:

    Your computers are setup correctly (py.test, sources root etc.) and the end to end flow is working properly as described in @28 Read on how to do these lessons effectively - it is not just getting the lessons to pass, it is about building your personal skill: @27 and @28

    Unit 1 Goals:

    At the end of this unit, you should have met the following goals.

    • Learn builtin data types like numbers and strings
    • Learn how to use builtin data structures in python - lists, dicts(hashtables), tuples and sets. When do you use which data structure?
    • Learn to use some of the builtin functions in python using online and console help
    • Learn to use the Pycharm console (Alt + P)
    • Learn to use the Python visualizer
    • Learn to ask and answer questions in the forums. Will post some guidance on this shortly.
    • Python comes with a very powerful set of features and libraries which makes it easy to get a lot of work done very fast. This is at the heart of rapid application development - using available features, frameworks and libraries to get your work done without reinventing things like lists, sets and hashtables.

    Your job is to learn how to use all of them to solve problems efficiently (both in terms of runtime performance and in terms of how much time it takes to write the code :) ).

    Once you finish the lessons, review this post and ensure that you have met the direct and incidental goals (tools, asking questions) mentioned above.

    Unit1 lessons:

    This folder contains all the unit1 lessons. Download it and copy into your c:\pythoncourse folder (DON'T CREATE SUB FOLDERS) and work through the lessons as described.

  2. Instructions to get started:

    • Download and copy the files into your pythoncourse folder (DONT CREATE SUBFOLDERS)
    • Read the notes and documentation carefully
    • Follow the constraints for each problem. This is important even if you know python already. The assignments are given to develop a certain style of thinking, so write code according to constraints.
    • Once you finish your assignments, review the goals for unit1 and see if you have met them! If not, do additional tasks on your own to meet them.
  3. This unit will explore cool stuff like control flow, truth, functions and exceptions. Do these after finishing unit1 assignments.

    Before you start:

    • Review unit1 goals in @32 and see if you have met them, if not, do spend time on filling up the gaps.
    • Don't panic and rush through unit1 if you started late.
    • If you started late, go through all the posts starting with the welcome post in order and do them in order. DON'T DO THINGS OUT OF ORDER OR YOU WILL FACE UNNECESSARY PROBLEMS.

    Goals for unit2:

    • Learn how to use control flow statements in python (if, for, while, ..)
    • Learn to define and use python functions.
    • Understand various forms of parameters and arguments.
    • Learn notions of equality and identity in python
    • Learn notions of truth equivalence in python
    • Learn exceptions in python
    • Understand scopes of variables in python
    • Increase proficiency in use of the shell, python tutor and the forums
    • Get better at researching information on the web.

    Unit 2 lessons

    copy these into your pythoncourse folder unit2_lessons. Do not create sub folders. Spend sufficient time and dig deep into these lessons. Assignments will follow.

    If you find any issues in the lessons, do feel free to bring them up in the #forum channel.

    Happy coding and learning :).

  4. unit 3 - debugging

    Initially we used to give this unit on debugging pretty late in the course. However, I pushed it up as it can really help you progress better if you pick up this skill.

    In Units 1 - 2 we have have covered some of the basic aspects of python programming. A good understanding of those units is essential to write good code. However, there are few orthogonal skills without which you will not go far.

    These skills deal with mindsets and knowledge of tools to make you a productive programmer. One of these topics is debugging and this unit deals with that. Debugging is probably the MOST IMPORTANT TOPIC in this whole course.

    I recommend you to start this unit even if you are stuck on previous assignments as what you learn here can help you debug your previous units problems faster.

    While it is never discussed as a first class concept in most classes, for a new developer proficiency in debugging can make all the difference in how fast you grow in your job. This is because:

    • As a new programmer you will make a lot of mistakes
    • If you cannot debug fast, you will get blocked and block your team because your work is not ready
    • If you repeatedly ask for help for many issues, you will lose reputation as a developer
    • The more time you spend debugging, the less time you have to learn other things on the job like design, tools, product space, customer behavior etc. which are important for your growth.
    • So a vicious cycle develops and it is frustrating to come out of it.

    In contrast, good troubleshooters/debuggers who can debug all kinds of problems like installation errors, ide errors, customer problems, their own code, other programmers code etc. are highly respected and shine through in the early stages of their career.

    In many companies, it is not uncommon to start new developers on "outstanding bugs/customer issues" as a way to bring them up to speed on the teams application/product. If you are weak in this area, you are off to a bad start!

    So take this unit seriously and do it well.

    Once you learn how to use the debugger and start developing a debugging mindset, you are just a breakpoint away from solving most of your infinite loops and other problems :-)

    There are many useful ways of debugging and each lesson introduces one method/tool. You are expected to read the comments and try to fix the buggy code using the method described. Try to use these tools on all issues that you hit everyday and overtime you will become good debuggers.

    There are no separate assignments, the lessons themselves are the assignments.

    Enjoy and master this unit!

  5. unit 4 - packages, modules, iterators, comprehensions and classes

    This unit will explore important python features like modules, packages, iterators, comprehensions and classes. A good understanding of these concepts is essential as their use is pervasive in the python frameworks and projects

    I expect that you will find these lessons easier as you have already spent so much time on units 1-3.

    Goals for unit4:

    • Understand the modularization/packaging features of python - modules and packages
    • Understand python iterators
    • Understand python comprehensions - lists, dicts and sets.
    • Understand lambdas in python
    • Understand how to write user defined types using classes
    • Understand basic python inheritance
  6. unit 4 - assignments

    Do these after you finish unit 4 lessons: @61

    Just like the previous assignments, these bring together all the concepts you have learnt to date. These set of assignments involve a little more complexity - defining your own classes and modules and thinking through the logic and structure.

    It is a very good practice to look into the source code for python modules. They can given you insight into how core python developers code, use the language features, structure their code, name their variables etc. etc.

    You can learn a lot by looking at how good developers write code and looking at good open source code is the easiest way to get that experience.

    assignment 3 in this unit asks you to explore this angle.

  7. unit 5 - testing

    This unit deals with developing a testing mindset. IMO, this along with the debugging mindset are the key skills of any entry level developer.

    As you might have realized it is very easy to write wrong code and a very casual approach to testing with 1 or 2 random inputs is not enough to verify its correctness.

    • So as you read code you have to make it a habit to "run it in your mind" with various potential inputs and see if it is correct or will fail for certain inputs. If required develop this habit by speaking out aloud any code that you are writing or analyzing. Something along the lines of :

      ...if x is 100, then we enter the else condition and then we add it to the primes list .. hmm but 100 is not prime, so I must change the condition etc.. :-)

      If you do this for 5-10 hours, then I am pretty sure you will automatically get into the habit of being able to run code in your mind.

    • The second thing you have to learn is to be able to write code tests that you run using pytest. This ensures that you think through all the corner cases and main cases systematically and they also help you when you try various approaches to the solution. If you have a good set of tests, you can be more confident about changing your code as they will catch errors for you (also called regression tests)

    • If you believe (you must!) that you are responsible for the correctness of your code, then naturally, every good software engineer must have good testing skills. Due to various reasons some companies have special testing or qa roles, don't let that confuse you into thinking that this is irrelevant.

    This skill has quite a few practical implications too:

    • Many large companies have dedicated roles and careers around testing (going the way to VP of testing :) ). So developing this skill can help you get into such a career

    • Many companies are moving to the online model where you are asked to code simple problems in the browser as a screening test. The code you write is run against tests that are NOT SHOWN TO YOU. This means you are responsible for the correctness of your code in the face of the problem statement/specification they give.

    • You are scored against hidden tests and that will determine whether you go to the face 2 face interviews.

      If you are not in the habit of writing your own tests/verifying your own code, then you will have a severe disadvantage getting past the online screening test or in interviews where they regularly ask you to verify your code.

This unit will give you some experience for both the points, writing tests that fail a given code and writing tests for code that you write on your own. When you submit these assignments we will run your code against our tests that are not shown to you initially.

Since you are learning we are going to show the failing test in the test summary so you can fix your code, but this wont happen in real screening tests (the real test cases are not shown to you, only some basic tests are shown to you). So try to do exhaustive testing on your own and not rely on the test runs :)

Do dig in and enjoy the unit :).

  1. Unit 6 lessons

    This unit deals with slightly more complex topics. Do a lot of side experimentation to make sure you can use them in practice (for eg: some competitive tests or an interview or a useful practical script) .

    These powerful features will open up non-trivial coding scenarios for you. So do dig in deep.

    Unit goals:

    • Understand nested functions
    • Understand function decorators
    • Understand generators
    • Understand file i/o
    • Learn to use technical references like PEPs to understand complex language features
    • Learn to figure things out better.
  2. unit 6 assignments

    These assignments are a little more complex than earlier assignments.

    These problems need you to put together everything you have learnt up to now to solve them. They can act as a good forcing function to review and master the earlier topics.

    If you can write correct, well structured, concise, elegant, efficient code using python features that we have covered in the lessons, then you can consider yourself having met the coding competency goals for this course.

    At first glance it will appear as if you cannot solve them. But if you spend time to:

    • break down each problem into sub-problems,
    • solve each of them separately and
    • then tie them together

    You will see that they are easier than you think and it will boost your confidence in your ability to handle complex problems!

  3. unit 7 lessons and assignments

    This unit deals with medium sized problems and decomposing them. It does not introduce new topics per se, it is more about style and structure of code.

    So far we have dealt primarily single function assignments with the occasional helper function thrown in. Any real world problem will be far bigger, so you have to learn some introductory concepts about approaching complex problems.

    In this unit we will take a crack at learning problem decomposition. The same ideas scale and developing this mindset will help you approach more complex systems later on.

    Read the included articles and information and take a crack at these problems. You might have already seen the problems, this is about structuring them well.

  4. unit 8 - performance and profiling

    This completes all the units in this course.

    This unit deals with the basic ideas of performance and profiling.

    This unit is mainly to familiarize you with the notion of measurement and analysis of the time performance of a program and a few methods that python provides you to measure how your program is doing.

    Hopefully this lesson will get you thinking about performance from a broader perspective - especially the importance of having the big picture in mind while optimizing your code and importance of being able to talk of local optimizations when required.

    When you are working on real applications, chasing micro optimizations is a sure fire way to waste time and mental bandwidth and increase code complexity [net effect of having such people on the team is not zero, it is negative :-)] .

    The antidote to this is:

    • To get into the habit of measurement in practical scenarios where you are solving a real problem. For e.g. thinking of which loop construct to use citing performance as a reason is almost always a red flag :).
    • Having a mental model of the relative costs of various operations (cpu, memory operators, file operations, database operations, network etc.). Note that 2 will naturally follow from 1.
    • Learn about how to measure correctly, it is not as easy or straight forward as you think :-).

    You need to know where your program spends time. You need to measure to find this out instead of relying on your gut feel. Trust me, your gut feel is going to be wrong or misleading in most practical situations till you get a lot of experience (say 10 years in industry :) ).

    As always, read the notes in overview lesson before you start.

    This is a fascinating topic, dig deep and enjoy this. We will use the python quizzes to explore this topic in due course.

    Good luck and happy learning :)

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