- Introduce execution context
- Define the term "record"
- Define the term "record-oriented programming"
Let's take a moment to appreciate where we are. We've reviewed the basic use and
creation of functions. We've applied these skills in the context of
collection-processing methods like map
, reduce
, and forEach
. We're now
ready to face one of the (infamously) most-challenging parts of JavaScript:
working with execution context.
When JavaScript code runs, the JavaScript engine sets aside a place in memory to store references to the variables and functions that are defined at the global level. This is referred to as the global execution context. In addition, any time a function is invoked, a separate space in memory known as the function execution context is created, with references to any variables or functions defined within that function.
Logically enough, when code is executed at the global level, the execution context is the global execution context. Similarly, when a function is invoked, the execution context is the execution context defined for that function. However, in addition to their function execution context, functions also have access to the execution contexts of their parents — the global context plus any functions they are enclosed in. In general, execution context refers to the full set of variables and methods available, either locally or via the scope chain, at the time that code is executed.
This concept will become clearer as you see it in action in upcoming lessons, but for now just know that the execution context is how JavaScript knows things like what variables are in scope, what methods are available, etc.
We're going to start this sequence of lessons off by defining five key terms. Each will be addressed in depth in upcoming lessons, but we want to introduce them now so you can say "Oh, this is important" when you see them later.
- Execution Context: the space set aside in the JavaScript engine's memory containing references to the variables and methods that are currently in scope. At the global level, this is the global execution context; inside a function, it is the function execution context plus the execution contexts available to it via the scope chain.
this
: refers to a special object that is part of the current execution context. The value ofthis
is determined based on how and where the function is invoked. In future lessons, we'll explain how JavaScript determines whatthis
is when a function is invoked.call
: This is a method on a function that calls the function, just like()
. The first argument, traditionally calledthisArg
, is the object that should be used as the value ofthis
when the function is invoked. You then list any other arguments you want to send to the function after thethisArg
. An invocation ofcall
looks like this:Calculator.sum.call(multilingualMessages, 1, 2)
.apply
: This is a method on a function that calls the function, just like()
. The first argument, traditionally calledthisArg
, is the object that should be used as the value ofthis
when the function is invoked. You then pass additional arguments you want to send to the function as anArray
after thethisArg
. An invocation ofapply
looks like this:Calculator.sum.apply(multilingualMessages, [1, 2])
.bind
: This method returns a copy of the function it's called on, but with the execution context "set" to the argument that's passed tobind
. It looks like this:sayHello.bind(greenFrog)("Hello") //=> "Mr. GreenFrog says *Hello* to you all."
.
Don't worry if this isn't making a lot of sense just yet — we will cover these
concepts in depth soon. Before we do that, however, in this lab we'll create
some context by practicing what we've already learned about JavaScript to build
a time card application. This application is an example of a "record-oriented"
application, which is quite simply an application that is used to process
records. For this lab, the records are the time cards for each employee. Once
we have a working application, we'll show how execution context, this
, call
,
apply
and bind
can DRY up our code.
Back in the old days (the 1960s and earlier) computers didn't have much memory. Records were stored on, if you can even believe this, small paper cards called punch-cards. They looked like this:
These cards, or "records," often had information on them in "fields." In the
first_name
field, you'd find a first name, etc... An employee's card would
also include a record of how many hours they worked on each day. So when a
business needed to figure out how much to pay each person for a week's work,
something like the following would happen:
- Load up all the employees' cards into a tray
- Feed the tray of cards into the computer
- The computer would read in each card and calculate the hours worked for the week per card
- The computer would emit a new card with all the old data but this card would
have a new field added called something like
wagesPaidInWeek33OfYear: 550
- The computer would also print out a table containing the employees' names and how much each of them was owed
ASIDE: Come to think of it, iterating over a collection, performing a transformation and emitting a new collection where every element has been transformed sounds an awful lot like
map
to us.
Then, the emitted pay ledger could be taken to the payroll department and the appropriate person could write (Write! With their hands! Using a pen and ink!) out paychecks to the employees.
Here's another use. If the executive team needed to know how much payroll cost the company in a given week, they'd (you guessed it!) load up all those punch cards in a tray and run them through a different program that calculated a total.
ASIDE: Come to think of it, iterating over a collection, performing an evaluation on each element and emitting a new value based on those elements sounds an awful lot like
reduce
to us.
Ultimately, the "punch card" was an intermediate step between paper records and digital records. But it was during the punch-card era that computing really got big, so a lot of our ways of thinking about programming started by thinking about "records."
Record-oriented programming is a style of programming based on accessing
records and processing them so that they're updated (map
-like) or so that
their information is aggregated (reduce
-like). "Record-oriented" isn't a
buzzword that we hear used very much, but for these next few lessons, we'll use
it. Ask any programmer who's worked in large scale billing (at phone companies,
insurers, etc.) or at a university (50,000 grade point averages), and you can
bet they'll understand what the term means, though.
The amazing thing is that in the 21st century this style of programming is back in vogue! We're not using punch cards, but the ability to spin up hundreds of little computers in a cloud, hand them each a bundle of records, and get answers back is cutting-edge!
In fact, a program to do map
and reduce
operations at scale on a cloud was
standardized in the 2000s. Guess what it's called? mapReduce
. It
was pioneered and advanced as part of the secret sauce that made a small little
company from Mountain View, California called Google become the giant it is
today. Today you can use it under the name of Apache Hadoop
The "Go" programming language is built around building and processing records at scale. Record-oriented programming is not likely to go away any time soon. Maybe it'll be the hot job posting buzzword any minute now!
In this lab, we're going to build a time card and payroll application using the record-oriented approach. When someone enters the company's state of the art technical office, the employee has to insert their card in a time clock which will record the time they came in. When it's time to leave, the employee will "punch out."
For simplicity's sake, we'll make these assumptions:
- Employees always check in and check out.
- Employees always check in and out on the hour.
- The time is represented on a 24-hour clock (1300 is 1:00 pm); this keeps the math easier and is the standard in most of the world.
- When timestamps are needed, they will be provided as
String
s in the form:"YYYY-MM-DD 800"
or"YYYY-MM-DD 1800"
e.g."2018-01-01 2300"
. - Employees will never work across days, e.g., in at
2200
and out at0400
the next day.
The lab tests will guide you toward a solution. When you encounter a failing test, look at how the test is calling the function that's missing or failing: how did it call the function, what arguments did it pass? What kind of thing did it expect back?
Take advantage of the collection-processing strengths you built up over the last few lessons.
If you have the time, you can learn more about JavaScript and remove the simplifying assumptions we wrote above. You can expand your learning by:
- Raising an exception if a
timeIn
is found without a matchingtimeOut
- Figuring out how to turn a time stamp into a construct that allows for you to handle cross-day times and start and end times that aren't on the hour
- Raising errors if the time stamp is in an invalid format
While the bar set by the tests is at one level, you can turn this into a robust application, if you so desire!
Do your coding in index.js
.
You should be guided by the tests as you work through the lab, but to help make the tests easier to read, we've also provided the signatures of the functions below. A function signature is the function name, the arguments it expects, and what the function returns. Pay close attention to the description of each function's expected behavior.
- Argument(s)
- A 4-element Array of a
String
,String
,String
, andNumber
corresponding to a first name, family name, title, and pay rate per hour
- A 4-element Array of a
- Returns
- JavaScript
Object
with keys:firstName
familyName
title
payPerHour
timeInEvents
timeOutEvents
- JavaScript
- Behavior
- Loads
Array
elements into correspondingObject
properties. Additionally, initialize emptyArray
s on the propertiestimeInEvents
andtimeOutEvents
.
- Loads
- Argument(s)
Array
ofArrays
- Returns
Array
ofObject
s
- Behavior
- Converts each nested
Array
into an employee record usingcreateEmployeeRecord
and accumulates it to a newArray
- Converts each nested
- Argument(s)
- An employee record
Object
- A date stamp (
"YYYY-MM-DD HHMM"
)
- An employee record
- Returns
- The employee record
- Behavior
- Add an
Object
with keys to thetimeInEvents
Array
on the recordObject
:type
: Set to"TimeIn"
hour
: Derived from the argumentdate
: Derived from the argument
- Add an
- Argument(s)
- An employee record
Object
- A date stamp (
"YYYY-MM-DD HHMM"
)
- An employee record
- Returns
- The employee record
- Behavior
- Add an
Object
with keys to thetimeOutEvents
Array
on the recordObject
:type
: Set to"TimeOut"
hour
: Derived from the argumentdate
: Derived from the argument
- Add an
- Argument(s)
- An employee record
Object
- A date of the form
"YYYY-MM-DD"
- An employee record
- Returns
- Hours worked, an
Integer
- Hours worked, an
- Behavior
- Given a date, find the number of hours elapsed between that date's timeInEvent and timeOutEvent
- Argument(s)
- An employee record
Object
- A date of the form
"YYYY-MM-DD"
- An employee record
- Returns
- Pay owed
- Behavior
- Using
hoursWorkedOnDate
, multiply the hours by the record's payRate to determine amount owed. Amount should be returned as a number.
- Using
- Argument(s)
- An employee record
Object
- An employee record
- Returns
- Pay owed for all dates
- Behavior
- Using
wagesEarnedOnDate
, accumulate the value of all dates worked by the employee in the record used as context. Amount should be returned as a number. HINT: You will need to find the available dates somehow...
- Using
- Argument(s)
Array
of employee records
- Returns
- Sum of pay owed to all employees for all dates, as a number
- Behavior
- Using
wagesEarnedOnDate
, accumulate the value of all dates worked by the employee in the record used as context. Amount should be returned as a number.
- Using
Congratulations! At the end of this lab, you should have built several
incredibly simple functions that leveraged map
and reduce
to transform and
aggregate data. Take a look at your code and see where you might be repeating
yourself. These repetitions will be where we can bring in the innovation of
execution context. We'll learn how we can DRY up our code using execution
contexts in the next lesson.
It's also worth your time to take a look at the tests in test/indexTest.js
.
Because of this application's design, it's easy to test the functions that drive
the application. Some programmers consider this style of programming to be
optimal for the ease of testing and simplicity of code.