Check if a EReference exists on the instance (Acceleo) - dsl

I have two Eclasses(call them X and Y) in my metamodel and a containment(X contains Y) relation between them which lower bound is 0 and upper bound is 1.
I need to know in my .mtl file if the user has added this only instance of Y in order to add some code.
Tries like this have failed:
[if (X.relationname.oclIsUndefined() = false)]
[if (X.relationname <> null)]
Thanks in advance and let me know if you need any extra information.

This will depend on your containment relationship; whether it is multivalued (its "upperBound" is set to "-1" i.e. it can hold as many Y as you want) or monovalued (its "upperBound" is "1" or unchanged, it can only hold a single Y).
If multivalued, the reference will never be "null" (or "oclIsUndefined"). When it does not hold a single Y, it will be an empty list and you thus need to check for the size :
[if (not X.relationname.isEmpty())]
Otherwise, for monovalued references, you can check for null (what you have done in your answer seems to indicate that it is the case for you here) :
[if (not X.relationname.oclIsUndefined())]
On the contrary, what you have done in your answer is a little different :
[if((X.relationname.attributename->size()).oclIsUndefined() <> true)]
This will actually retrieve the Y associated with your X and access its attribute values. This will not be null if there is no "Y" : it will be "invalid" i.e. it will fail. Of course, "oclInvalid" (the "failure" object) is different from "true" so your "<>" works... even though it is clunky (you'd usually use the "not" operation instead of testing against a boolean value).

SOLUTION:
I finally solved by:
[if((X.relationname.attributename->size()).oclIsUndefined() <> true)]
It isn't the best solution but it did the trick. The attribute is an EString.

Related

how can I assert that a number goes or a list grows up in TLA+?

I have a TLA+ spec where I would like to assert that a list only ever grows in length (it's fine if it stays the same when stuttering.)
Right now I have something like this, but I'm certain that it's not right:
NoWorkIsLost == Len(samples) = Len(samples) ~> Len(samples) = Len(samples) + 1
I'm not even sure what to search for here, I'm sure I'm missing something super obvious!
It depends on what you mean by "the list only ever grows in length". The simplest way to do that would be to write
Op == [][Len(samples') > Len(samples)]_Len(samples)
But that's saying that if the length changes, the length must increase. That still allows for you to mutate the list without changing it! If you instead write
Op == [][Len(samples') > Len(samples)]_samples
Then you are saying that if samples changes, it must also increase in length. But this allows you to pop one element and push two in a single action. You probably want to express that the old sequence is a prefix of the new one. You can do that with
Op == [][SubSeq(samples', 1, Len(samples)) = samples]_samples

Why doesn't simple integer counterexample occur in Alloy?

I am trying to model a relationship between a numeric variable and a boolean variable, in which if the numeric variable is in a certain range then the boolean variable will change value. I'm new to Alloy, and am having trouble understanding how to constrain my scope sufficiently to yield the obvious counterexample. My code is as follows:
open util/boolean
one sig Object {
discrete : one Bool,
integer : one Int
}
fact { all o : Object | o.integer > 0 and o.integer < 10 }
fact { all o : Object | o.integer > 5 iff o.discrete = False }
assert discreteCondition { all o : Object | o.discrete = True }
check discreteCondition for 1000
Since o.integer is integer-values and ranges from 0 to 10, it could only be one of 10 different choices. And I specified that each Object should only have one integer and one discrete. So it seems reasonable to me that there are really only 10 cases to check here: one case for each value of integer. And yet even with 1000 cases, I get
No counterexample found.
If I remove the integer variable and related facts then it does find the counterexample almost immediately. I have also tried using other solvers and increasing various depth and memory values in the Options, but this did not help, so clearly my code is at fault.
How can I limit my scope to make Alloy find the counterexample (by iterating over possible values of the integer)? Thanks!
By default, the bitwidth used to represent integers is 4 so only integer in the range [-8,7] are considered during the instance generation, and so, due to integer overflows, your first fact is void (as 10 is outside this range).
To fix the problem, increase the bitwidth used to at least 5:
check discreteCondition for 10 but 5 Int.
Note that a scope of 1000 does not mean that you consider 1000 case in your analysis. The scope is the maximum number of atoms present in the generated instance, typed after a given signature. In your case you have only one signature with multiplicity one. So analyzing your model with a scope of 1 or 10000 doesn't change anything. There'll still be only one Object atom in the instance generated.
You might want to check this Q/A to learn more about scopes Specifying A Scope for Sig in Alloy

Dropping various string variables in a loop in Stata

I want to a drop a great number of string variables that contain the word "Other" in their observations. As such, I tried the following loop to drop all the variables:
foreach var of varlist v1-v240 {
drop `var' if `var'=="Other"
}
What I get in return is the answer "syntax error". I would like to know not only a way to perform the task of dropping all the variables that contain the word "Other", but also why the code that I've entered returns an error.
The short answer on why your syntax is illegal, which #Dimitriy Masterov doesn't quite spell out, is that drop supports just two syntaxes, which can't be mixed, dropping variables and dropping observations. This is documented: see e.g. http://www.stata.com/help.cgi?drop and the corresponding on-line help and manual entry within Stata.
In addition to other solutions, findname from the Stata Journal would allow this solution:
findname, any(# == "Other")
drop `r(varlist)'
Your interpretation of contain is evidently 'is equal to' judging by your use of == as an operator, echoed above. If contain really means 'includes as substring', then you need a syntax such as
any(strpos(#, "Other"))
or
any(regexm(#, "Other"))
as #Dimitriy also explains.
If they are actual strings, this should work:
sysuse auto, clear
ds, has(type string) // get a list of string variables
// loop over each string variable, count observations that contain Buick anywhere, and drop the variable if N>0
foreach var of varlist `r(varlist)' {
count if regexm(`var',"Buick")
if r(N)>0 {
drop `var'
}
}
If "contains" means only contains, then you need to use "^Buick$" instead or
count if `var'=="Buick"
Beware of leading/trailing spaces.
The if qualifier restricts the scope of a command to those observations for which the value of the expression is true. Your code errors because you are asking Stata to drop a variable (a column) if some observations (rows) satisfy a condition. You could use the if qualifier to drop those observations or you can drop a variable, but not both simultaneously. My code uses the if command (a different beast) to verify the condition, and then drops the variable if that condition is satisfied.
You might be tempted to do something like
if `var'=="Other" {
drop `var'
}
but that will usually not work as expected (it would drop the variable only if the first observation was "Other").

Haskell and Lambda-Calculus: Implementing Alpha-Congruence (Alpha-Equivalence)

I am implementing an impure untyped lambda-calculus interpreter in Haskell.
I'm presently stuck on implementing "alpha-congruence" (also called "alpha-equivalence" or "alpha-equality" in some textbooks). I want to be able to check whether two lambda-expressions are equal or not equal to each other. For example, if I enter the following expression into the interpreter it should yield True (\ is used to indicate the lambda symbol):
>\x.x == \y.y
True
The problem is understanding whether the following lambda-expressions are considered alpha-equivalent or not:
>\x.xy == \y.yx
???
>\x.yxy == \z.wzw
???
In the case of \x.xy == \y.yx I would guess that the answer is True. This is because \x.xy => \z.zy and \y.yx => \z.zy and the right-hand sides of both are equal (where the symbol => is used to denote alpha-reduction).
In the cae of \x.yxy == \z.wzw I would likewise guess that the answer is True. This is because \x.yxy => \a.yay and \z.wzw => \a.waw which (I think) are equal.
The trouble is that all of my textbooks' definitions state that only the names of the bound variables need to be changed for two lambda-expressions to be considered equal. It says nothing about the free variables in an expression needing to be renamed uniformly also. So even though y and w are both in their correct places in the lambda-expressions, how would the program "know" that the first y represents the first w and the second y represents the second w. I would need to be consistent about this in an implementation.
In short, how would I go about implementing an error-free version of a function isAlphaCongruent? What are the exact rules that I need to follow in order for this to work?
I would prefer to do this without using de Bruijn indices.
You are misunderstanding: different free variables are not alpha equivalent. So y /= x, and \w.wy /= \w.wx, and \x.xy /= \y.yx. Similarly, \x.yxy /= \z.wzw because y /= w.
Your book says nothing about free variables being allowed to be uniformly renamed because they are not allowed to be uniformly renamed.
(Think of it this way: if I haven't yet told you the definition of not and id, would you expect \x. not x and \x. id x to be equivalent? I sure hope not!)

Best explanation for languages without null

Every so often when programmers are complaining about null errors/exceptions someone asks what we do without null.
I have some basic idea of the coolness of option types, but I don't have the knowledge or languages skill to best express it. What is a great explanation of the following written in a way approachable to the average programmer that we could point that person towards?
The undesirability of having references/pointers be nullable by default
How option types work including strategies to ease checking null cases such as
pattern matching and
monadic comprehensions
Alternative solution such as message eating nil
(other aspects I missed)
I think the succinct summary of why null is undesirable is that meaningless states should not be representable.
Suppose I'm modeling a door. It can be in one of three states: open, shut but unlocked, and shut and locked. Now I could model it along the lines of
class Door
private bool isShut
private bool isLocked
and it is clear how to map my three states into these two boolean variables. But this leaves a fourth, undesired state available: isShut==false && isLocked==true. Because the types I have selected as my representation admit this state, I must expend mental effort to ensure that the class never gets into this state (perhaps by explicitly coding an invariant). In contrast, if I were using a language with algebraic data types or checked enumerations that lets me define
type DoorState =
| Open | ShutAndUnlocked | ShutAndLocked
then I could define
class Door
private DoorState state
and there are no more worries. The type system will ensure that there are only three possible states for an instance of class Door to be in. This is what type systems are good at - explicitly ruling out a whole class of errors at compile-time.
The problem with null is that every reference type gets this extra state in its space that is typically undesired. A string variable could be any sequence of characters, or it could be this crazy extra null value that doesn't map into my problem domain. A Triangle object has three Points, which themselves have X and Y values, but unfortunately the Points or the Triangle itself might be this crazy null value that is meaningless to the graphing domain I'm working in. Etc.
When you do intend to model a possibly-non-existent value, then you should opt into it explicitly. If the way I intend to model people is that every Person has a FirstName and a LastName, but only some people have MiddleNames, then I would like to say something like
class Person
private string FirstName
private Option<string> MiddleName
private string LastName
where string here is assumed to be a non-nullable type. Then there are no tricky invariants to establish and no unexpected NullReferenceExceptions when trying to compute the length of someone's name. The type system ensures that any code dealing with the MiddleName accounts for the possibility of it being None, whereas any code dealing with the FirstName can safely assume there is a value there.
So for example, using the type above, we could author this silly function:
let TotalNumCharsInPersonsName(p:Person) =
let middleLen = match p.MiddleName with
| None -> 0
| Some(s) -> s.Length
p.FirstName.Length + middleLen + p.LastName.Length
with no worries. In contrast, in a language with nullable references for types like string, then assuming
class Person
private string FirstName
private string MiddleName
private string LastName
you end up authoring stuff like
let TotalNumCharsInPersonsName(p:Person) =
p.FirstName.Length + p.MiddleName.Length + p.LastName.Length
which blows up if the incoming Person object does not have the invariant of everything being non-null, or
let TotalNumCharsInPersonsName(p:Person) =
(if p.FirstName=null then 0 else p.FirstName.Length)
+ (if p.MiddleName=null then 0 else p.MiddleName.Length)
+ (if p.LastName=null then 0 else p.LastName.Length)
or maybe
let TotalNumCharsInPersonsName(p:Person) =
p.FirstName.Length
+ (if p.MiddleName=null then 0 else p.MiddleName.Length)
+ p.LastName.Length
assuming that p ensures first/last are there but middle can be null, or maybe you do checks that throw different types of exceptions, or who knows what. All these crazy implementation choices and things to think about crop up because there's this stupid representable-value that you don't want or need.
Null typically adds needless complexity. Complexity is the enemy of all software, and you should strive to reduce complexity whenever reasonable.
(Note well that there is more complexity to even these simple examples. Even if a FirstName cannot be null, a string can represent "" (the empty string), which is probably also not a person name that we intend to model. As such, even with non-nullable strings, it still might be the case that we are "representing meaningless values". Again, you could choose to battle this either via invariants and conditional code at runtime, or by using the type system (e.g. to have a NonEmptyString type). The latter is perhaps ill-advised ("good" types are often "closed" over a set of common operations, and e.g. NonEmptyString is not closed over .SubString(0,0)), but it demonstrates more points in the design space. At the end of the day, in any given type system, there is some complexity it will be very good at getting rid of, and other complexity that is just intrinsically harder to get rid of. The key for this topic is that in nearly every type system, the change from "nullable references by default" to "non-nullable references by default" is nearly always a simple change that makes the type system a great deal better at battling complexity and ruling out certain types of errors and meaningless states. So it is pretty crazy that so many languages keep repeating this error again and again.)
The nice thing about option types isn't that they're optional. It is that all other types aren't.
Sometimes, we need to be able to represent a kind of "null" state. Sometimes we have to represent a "no value" option as well as the other possible values a variable may take. So a language that flat out disallows this is going to be a bit crippled.
But often, we don't need it, and allowing such a "null" state only leads to ambiguity and confusion: every time I access a reference type variable in .NET, I have to consider that it might be null.
Often, it will never actually be null, because the programmer structures the code so that it can never happen. But the compiler can't verify that, and every single time you see it, you have to ask yourself "can this be null? Do I need to check for null here?"
Ideally, in the many cases where null doesn't make sense, it shouldn't be allowed.
That's tricky to achieve in .NET, where nearly everything can be null. You have to rely on the author of the code you're calling to be 100% disciplined and consistent and have clearly documented what can and cannot be null, or you have to be paranoid and check everything.
However, if types aren't nullable by default, then you don't need to check whether or not they're null. You know they can never be null, because the compiler/type checker enforces that for you.
And then we just need a back door for the rare cases where we do need to handle a null state. Then an "option" type can be used. Then we allow null in the cases where we've made a conscious decision that we need to be able to represent the "no value" case, and in every other case, we know that the value will never be null.
As others have mentioned, in C# or Java for example, null can mean one of two things:
the variable is uninitialized. This should, ideally, never happen. A variable shouldn't exist unless it is initialized.
the variable contains some "optional" data: it needs to be able to represent the case where there is no data. This is sometimes necessary. Perhaps you're trying to find an object in a list, and you don't know in advance whether or not it's there. Then we need to be able to represent that "no object was found".
The second meaning has to be preserved, but the first one should be eliminated entirely. And even the second meaning should not be the default. It's something we can opt in to if and when we need it. But when we don't need something to be optional, we want the type checker to guarantee that it will never be null.
All of the answers so far focus on why null is a bad thing, and how it's kinda handy if a language can guarantee that certain values will never be null.
They then go on to suggest that it would be a pretty neat idea if you enforce non-nullability for all values, which can be done if you add a concept like Option or Maybe to represent types that may not always have a defined value. This is the approach taken by Haskell.
It's all good stuff! But it doesn't preclude the use of explicitly nullable / non-null types to achieve the same effect. Why, then, is Option still a good thing? After all, Scala supports nullable values (is has to, so it can work with Java libraries) but supports Options as well.
Q. So what are the benefits beyond being able to remove nulls from a language entirely?
A. Composition
If you make a naive translation from null-aware code
def fullNameLength(p:Person) = {
val middleLen =
if (null == p.middleName)
p.middleName.length
else
0
p.firstName.length + middleLen + p.lastName.length
}
to option-aware code
def fullNameLength(p:Person) = {
val middleLen = p.middleName match {
case Some(x) => x.length
case _ => 0
}
p.firstName.length + middleLen + p.lastName.length
}
there's not much difference! But it's also a terrible way to use Options... This approach is much cleaner:
def fullNameLength(p:Person) = {
val middleLen = p.middleName map {_.length} getOrElse 0
p.firstName.length + middleLen + p.lastName.length
}
Or even:
def fullNameLength(p:Person) =
p.firstName.length +
p.middleName.map{length}.getOrElse(0) +
p.lastName.length
When you start dealing with List of Options, it gets even better. Imagine that the List people is itself optional:
people flatMap(_ find (_.firstName == "joe")) map (fullNameLength)
How does this work?
//convert an Option[List[Person]] to an Option[S]
//where the function f takes a List[Person] and returns an S
people map f
//find a person named "Joe" in a List[Person].
//returns Some[Person], or None if "Joe" isn't in the list
validPeopleList find (_.firstName == "joe")
//returns None if people is None
//Some(None) if people is valid but doesn't contain Joe
//Some[Some[Person]] if Joe is found
people map (_ find (_.firstName == "joe"))
//flatten it to return None if people is None or Joe isn't found
//Some[Person] if Joe is found
people flatMap (_ find (_.firstName == "joe"))
//return Some(length) if the list isn't None and Joe is found
//otherwise return None
people flatMap (_ find (_.firstName == "joe")) map (fullNameLength)
The corresponding code with null checks (or even elvis ?: operators) would be painfully long. The real trick here is the flatMap operation, which allows for the nested comprehension of Options and collections in a way that nullable values can never achieve.
Since people seem to be missing it: null is ambiguous.
Alice's date-of-birth is null. What does it mean?
Bob's date-of-death is null. What does that mean?
A "reasonable" interpretation might be that Alice's date-of-birth exists but is unknown, whereas Bob's date-of-death does not exist (Bob is still alive). But why did we get to different answers?
Another problem: null is an edge case.
Is null = null?
Is nan = nan?
Is inf = inf?
Is +0 = -0?
Is +0/0 = -0/0?
The answers are usually "yes", "no", "yes", "yes", "no", "yes" respectively. Crazy "mathematicians" call NaN "nullity" and say it compares equal to itself. SQL treats nulls as not equal to anything (so they behave like NaNs). One wonders what happens when you try to store ±∞, ±0, and NaNs into the same database column (there are 253 NaNs, half of which are "negative").
To make matters worse, databases differ in how they treat NULL, and most of them aren't consistent (see NULL Handling in SQLite for an overview). It's pretty horrible.
And now for the obligatory story:
I recently designed a (sqlite3) database table with five columns a NOT NULL, b, id_a, id_b NOT NULL, timestamp. Because it's a generic schema designed to solve a generic problem for fairly arbitrary apps, there are two uniqueness constraints:
UNIQUE(a, b, id_a)
UNIQUE(a, b, id_b)
id_a only exists for compatibility with an existing app design (partly because I haven't come up with a better solution), and is not used in the new app. Because of the way NULL works in SQL, I can insert (1, 2, NULL, 3, t) and (1, 2, NULL, 4, t) and not violate the first uniqueness constraint (because (1, 2, NULL) != (1, 2, NULL)).
This works specifically because of how NULL works in a uniqueness constraint on most databases (presumably so it's easier to model "real-world" situations, e.g. no two people can have the same Social Security Number, but not all people have one).
FWIW, without first invoking undefined behaviour, C++ references cannot "point to" null, and it's not possible to construct a class with uninitialized reference member variables (if an exception is thrown, construction fails).
Sidenote: Occasionally you might want mutually-exclusive pointers (i.e. only one of them can be non-NULL), e.g. in a hypothetical iOS type DialogState = NotShown | ShowingActionSheet UIActionSheet | ShowingAlertView UIAlertView | Dismissed. Instead, I'm forced to do stuff like assert((bool)actionSheet + (bool)alertView == 1).
The undesirability of having having references/pointers be nullable by default.
I don't think this is the main issue with nulls, the main issue with nulls is that they can mean two things:
The reference/pointer is uninitialized: the problem here is the same as mutability in general. For one, it makes it more difficult to analyze your code.
The variable being null actually means something: this is the case which Option types actually formalize.
Languages which support Option types typically also forbid or discourage the use of uninitialized variables as well.
How option types work including strategies to ease checking null cases such as pattern matching.
In order to be effective, Option types need to be supported directly in the language. Otherwise it takes a lot of boiler-plate code to simulate them. Pattern-matching and type-inference are two keys language features making Option types easy to work with. For example:
In F#:
//first we create the option list, and then filter out all None Option types and
//map all Some Option types to their values. See how type-inference shines.
let optionList = [Some(1); Some(2); None; Some(3); None]
optionList |> List.choose id //evaluates to [1;2;3]
//here is a simple pattern-matching example
//which prints "1;2;None;3;None;".
//notice how value is extracted from op during the match
optionList
|> List.iter (function Some(value) -> printf "%i;" value | None -> printf "None;")
However, in a language like Java without direct support for Option types, we'd have something like:
//here we perform the same filter/map operation as in the F# example.
List<Option<Integer>> optionList = Arrays.asList(new Some<Integer>(1),new Some<Integer>(2),new None<Integer>(),new Some<Integer>(3),new None<Integer>());
List<Integer> filteredList = new ArrayList<Integer>();
for(Option<Integer> op : list)
if(op instanceof Some)
filteredList.add(((Some<Integer>)op).getValue());
Alternative solution such as message eating nil
Objective-C's "message eating nil" is not so much a solution as an attempt to lighten the head-ache of null checking. Basically, instead of throwing a runtime exception when trying to invoke a method on a null object, the expression instead evaluates to null itself. Suspending disbelief, it's as if each instance method begins with if (this == null) return null;. But then there is information loss: you don't know whether the method returned null because it is valid return value, or because the object is actually null. It's a lot like exception swallowing, and doesn't make any progress addressing the issues with null outlined before.
Assembly brought us addresses also known as untyped pointers. C mapped them directly as typed pointers but introduced Algol's null as a unique pointer value, compatible with all typed pointers. The big issue with null in C is that since every pointer can be null, one never can use a pointer safely without a manual check.
In higher-level languages, having null is awkward since it really conveys two distinct notions:
Telling that something is undefined.
Telling that something is optional.
Having undefined variables is pretty much useless, and yields to undefined behavior whenever they occur. I suppose everybody will agree that having things undefined should be avoided at all costs.
The second case is optionality and is best provided explicitly, for instance with an option type.
Let's say we're in a transport company and we need to create an application to help create a schedule for our drivers. For each driver, we store a few informations such as: the driving licences they have and the phone number to call in case of emergency.
In C we could have:
struct PhoneNumber { ... };
struct MotorbikeLicence { ... };
struct CarLicence { ... };
struct TruckLicence { ... };
struct Driver {
char name[32]; /* Null terminated */
struct PhoneNumber * emergency_phone_number;
struct MotorbikeLicence * motorbike_licence;
struct CarLicence * car_licence;
struct TruckLicence * truck_licence;
};
As you observe, in any processing over our list of drivers we'll have to check for null pointers. The compiler won't help you, the safety of the program relies on your shoulders.
In OCaml, the same code would look like this:
type phone_number = { ... }
type motorbike_licence = { ... }
type car_licence = { ... }
type truck_licence = { ... }
type driver = {
name: string;
emergency_phone_number: phone_number option;
motorbike_licence: motorbike_licence option;
car_licence: car_licence option;
truck_licence: truck_licence option;
}
Let's now say that we want to print the names of all the drivers along with their truck licence numbers.
In C:
#include <stdio.h>
void print_driver_with_truck_licence_number(struct Driver * driver) {
/* Check may be redundant but better be safe than sorry */
if (driver != NULL) {
printf("driver %s has ", driver->name);
if (driver->truck_licence != NULL) {
printf("truck licence %04d-%04d-%08d\n",
driver->truck_licence->area_code
driver->truck_licence->year
driver->truck_licence->num_in_year);
} else {
printf("no truck licence\n");
}
}
}
void print_drivers_with_truck_licence_numbers(struct Driver ** drivers, int nb) {
if (drivers != NULL && nb >= 0) {
int i;
for (i = 0; i < nb; ++i) {
struct Driver * driver = drivers[i];
if (driver) {
print_driver_with_truck_licence_number(driver);
} else {
/* Huh ? We got a null inside the array, meaning it probably got
corrupt somehow, what do we do ? Ignore ? Assert ? */
}
}
} else {
/* Caller provided us with erroneous input, what do we do ?
Ignore ? Assert ? */
}
}
In OCaml that would be:
open Printf
(* Here we are guaranteed to have a driver instance *)
let print_driver_with_truck_licence_number driver =
printf "driver %s has " driver.name;
match driver.truck_licence with
| None ->
printf "no truck licence\n"
| Some licence ->
(* Here we are guaranteed to have a licence *)
printf "truck licence %04d-%04d-%08d\n"
licence.area_code
licence.year
licence.num_in_year
(* Here we are guaranteed to have a valid list of drivers *)
let print_drivers_with_truck_licence_numbers drivers =
List.iter print_driver_with_truck_licence_number drivers
As you can see in this trivial example, there is nothing complicated in the safe version:
It's terser.
You get much better guarantees and no null check is required at all.
The compiler ensured that you correctly dealt with the option
Whereas in C, you could just have forgotten a null check and boom...
Note : these code samples where not compiled, but I hope you got the ideas.
Microsoft Research has a intersting project called
Spec#
It is a C# extension with not-null type and some mechanism to check your objects against not being null, although, IMHO, applying the design by contract principle may be more appropriate and more helpful for many troublesome situations caused by null references.
Robert Nystrom offers a nice article here:
http://journal.stuffwithstuff.com/2010/08/23/void-null-maybe-and-nothing/
describing his thought process when adding support for absence and failure to his Magpie programming language.
Coming from .NET background, I always thought null had a point, its useful. Until I came to know of structs and how easy it was working with them avoiding a lot of boilerplate code. Tony Hoare speaking at QCon London in 2009, apologized for inventing the null reference. To quote him:
I call it my billion-dollar mistake. It was the invention of the null
reference in 1965. At that time, I was designing the first
comprehensive type system for references in an object oriented
language (ALGOL W). My goal was to ensure that all use of references
should be absolutely safe, with checking performed automatically by
the compiler. But I couldn't resist the temptation to put in a null
reference, simply because it was so easy to implement. This has led to
innumerable errors, vulnerabilities, and system crashes, which have
probably caused a billion dollars of pain and damage in the last forty
years. In recent years, a number of program analysers like PREfix and
PREfast in Microsoft have been used to check references, and give
warnings if there is a risk they may be non-null. More recent
programming languages like Spec# have introduced declarations for
non-null references. This is the solution, which I rejected in 1965.
See this question too at programmers
I've always looked at Null (or nil) as being the absence of a value.
Sometimes you want this, sometimes you don't. It depends on the domain you are working with. If the absence is meaningful: no middle name, then your application can act accordingly. On the other hand if the null value should not be there: The first name is null, then the developer gets the proverbial 2 a.m. phone call.
I've also seen code overloaded and over-complicated with checks for null. To me this means one of two things:
a) a bug higher up in the application tree
b) bad/incomplete design
On the positive side - Null is probably one of the more useful notions for checking if something is absent, and languages without the concept of null will endup over-complicating things when it's time to do data validation. In this case, if a new variable is not initialized, said languagues will usually set variables to an empty string, 0, or an empty collection. However, if an empty string or 0 or empty collection are valid values for your application -- then you have a problem.
Sometimes this circumvented by inventing special/weird values for fields to represent an uninitialized state. But then what happens when the special value is entered by a well-intentioned user? And let's not get into the mess this will make of data validation routines.
If the language supported the null concept all the concerns would vanish.
Vector languages can sometimes get away with not having a null.
The empty vector serves as a typed null in this case.

Resources