Arithmetic in the Android M Calculator

Most conventional calculators, both the specialized hardware and software varieties, represent numbers using fairly conventional machine floating point arithmetic. Each number is stored as an exponent, identifying the position of the decimal point, together with the first 10 to 20 significant digits of the number. For example, 1/300 might be stored as 0.333333333333x10-2, i.e. as an exponent of -2, together with the 12 most significant digits. This is similar, and sometimes identical to, computer arithmetic used to solve large scale scientific problems.

This kind of arithmetic works well most of the time, but can sometimes produce completely incorrect results. For example, the trigonometric tangent (tan) and arctangent (tan-1) functions are defined so that tan(tan-1(x)) should always be x. But on most calculators we have tried, tan(tan-1(1020)) is off by at least a factor of 1000. A value around 1016 or 1017 is quite popular, which unfortunately doesn't make it correct. The underlying problem is that tan-1(1017) and tan-1(1020) are so close that conventional representations don't distinguish them. (They're both 89.9999… degrees with at least fifteen 9s beyond the decimal point.) But the tiny difference between them results in a huge difference when the tangent function is applied to the result.

Similarly, it may be puzzling to a high school student that while the textbook claims that for any x, sin(x) + sin(x+π) = 0, their calculator says that sin(1015) + sin(1015+π) = -0.00839670971. (Thanks to floating point standardization, multiple on-line calculators agree on that entirely bogus value!)

We know that the instantaneous rate of change of a function f, its derivative, can be approximated at a point x by computing (f(x + h) - f(x)) / h, for very small h. Yet, if you try this in a conventional calculator with h = 10-20 or smaller, you are unlikely to get a useful answer.

In general these problems occur when computations amplify tiny errors, a problem referred to as numerical instability. This doesn't happen very often, but as in the above examples, it may require some insight to understand when it can and can't happen.

In large scale scientific computations, hardware floating point computations are essential since they are the only reasonable way modern computer hardware can produce answers with sufficient speed. Experts must be careful to structure computations to avoid such problems. But for "computing in the small" problems, like those solved on desk calculators, we can do much better!

Producing accurate answers

The Android M Calculator uses a different kind of computer arithmetic. Rather than computing a fixed number of digits for each intermediate result, the computation is much more goal directed. The user would like to see only correct digits on the display, which we take to mean that the displayed answer should always be off by less than one in the last displayed digit. The computation is thus performed to whatever precision is required to achieve that.

Let's say we want to compute π+⅓, and the calculator display has 10 digits. We'd compute both π and ⅓ to 11 digits each, add them, and round the result to 10 digits. Since π and ⅓ were accurate to within 1 in the 11th digit, and rounding adds an error of at most 5 in the 11th digit, the result is guaranteed accurate to less than 1 in the 10th digit, which was our goal.

This is of course an oversimplification of the real implementation. Operations other than addition do get appreciably more complicated. Multiplication, for example, requires that we approximate one argument in order to determine how much precision we need for the other argument. The tangent function requires very high precision for arguments near 90 degrees to produce meaningful answers. And so on. And we really use binary rather than decimal arithmetic. Nonetheless the above addition method is a good illustration of the approach.

Since we have to be able to produce answers to arbitrary precision, we can also let the user specify how much precision she wants, and use that as our goal. In the Android M Calculator, the user specifies the requested precision by scrolling the result. As the result is being scrolled, the calculator reevaluates it to the newly requested precision. In some cases, the algorithm for computing the new higher precision result takes advantage of the old, less accurate result. In other cases, it basically starts from scratch. Fortunately modern devices and the Android runtime are fast enough that the recomputation delay rarely becomes visible.

Design Decisions and challenges

This form of evaluate-on-demand arithmetic has occasionally been used before, and we use a refinement of a previously developed open source package in our implementation. However, the scrolling interface, together with the practicailities of a usable general purpose calculator, presented some new challenges. These drove a number of not-always-obvious design decisions which briefly describe here.

Indicating position

We would like the user to be able to see at a glance which part of the result is currently being displayed.

Conventional calculators solve the vaguely similar problem of displaying very large or very small numbers by using scientific notation: They display an exponent in addition to the most significant digits, analogously to the internal representation they use. We solve that problem in exactly the same way, in spite of our different internal representation. If the user enters "1÷3⨉10^20", computing ⅓ times 10 to the 20th power, the result may be displayed as 3.3333333333E19, indicating that the result is approximately 3.3333333333 times 1019. In this version of scientific notation, the decimal point is always displayed immediately to the right of the most significant digit, and the exponent indicates where it really belongs.

Once the decimal point is scrolled off the display, this style of scientific notation is not helpful; it essentially tells us where the decimal point is relative to the most significant digit, but the most significant digit is no longer visible. We address this by switching to a different variant of scientific notation, in which we interpret the displayed digits as a whole number, with an implied decimal point on the right. Instead of displaying 3.3333333333E19, we hypothetically could display 33333333333E9 or 33333333333 times 109. In fact, we use this format only when the normal scientific notation decimal point would not be visible. If we had scrolled the above result 2 digits to the left, we would in fact be seeing ...33333333333E7. This tells us that the displayed result is very close to a whole number ending in 33333333333 times 107. Effectively the E7 is telling us that the last displayed digit corresponds to the ten millions position. In this form, the exponent does tell us the current position in the result. The two forms are easily distinguishable by the presence or absence of a decimal point, and the ellipsis character at the beginning.

Rounding vs. scrolling

Normally we expect calculators to try to round to the nearest displayable result. If the actual computed result were 0.66666666666667, and we could only display 10 digits, we would expect a result display of, for example 0.666666667, rather than 0.666666666. For us, this would have the disadvantage that when we scrolled the result left to see more digits, the "7" on the right would change to a "6". That would be mildly unfortunate. It would be somewhat worse that if the actual result were exactly 0.99999999999, and we could only display 10 characters at a time, we would see an initial display of 1.00000000. As we scroll to see more digits, we would successively see ...000000E-6, then ...000000E-7, and so on until we get to ...00000E-10, but then suddenly ...99999E-11. If we scroll back, the screen would again show zeroes. We decided this would be excessively confusing, and thus do not round.

It is still possible for previously displayed digits to change as we're scrolling. But we always compute a number of digits more than we actually need, so this is exceedingly unlikely.

Since our goal is an error of strictly less than one in the last displayed digit, we will never, for example, display an answer of exactly 2 as 1.9999999999. That would involve an error of exactly one in the last place, which is too much for us.

It turns out that there is exactly one case in which the display switches between 9s and 0s: A long but finite sequence of 9s (more than 20) in the true result can initially be displayed as a larger number ending in 0s. As we scroll, the 0s turn into 9s. When we immediately scroll back, the number remains displayed as 9s, since the calculator caches the best known result (though not currently across restarts or screen rotations).

We prevent 9s from turning into 0s during scrolling. If we generate a result ending in 9s, our error bound implies that the true result is strictly less (in absolute value) than the value (ending in 0s) we would get by incrementing the last displayed digit. Thus we can never be forced back to generating zeros and will always continue to generate 9s.

Coping with mathematical limits

Internally the calculator essentially represents a number as a program for computing however many digits we happen to need. This representation has many nice properties, like never resulting in the display of incorrect results. It has one inherent weakness: We provably cannot compute precisely whether two numbers are equal. We can compute more and more digits of both numbers, and if they ever differ by more than one in the last computed digit, we know they are not equal. But if the two numbers were in fact the same, this process will go on forever.

This is still better than machine floating point arithmetic, though machine floating point better obscures the problem. With machine floating point arithmetic, two computations that should mathematically have given the same answer, may give us substantially different answers, and two computations that should have given us different answers may easily produce the same one. We can indeed determine whether the floating representations are equal, but this tells us little about equality of the true mathematical answers.

The undecidability of equality creates some interesting issues. If we divide a number by x, the calculator will compute more and more digits of x until it finds some nonzero ones. If x was in fact exactly zero, this process will continue forever.

We deal with this problem using two complementary techniques:

  1. We always run numeric computations in the background, where they won't interfere with user interactions, just in case they take a long time. If they do take a really long time, we time them out and inform the user that the computation has been aborted. This is unlikely to happen by accident, unless the user entered an ill-defined mathematical expression, like a division by zero.
  2. As we will see below, in many cases we use an additional number representation that does allow us to determine that a number is exactly zero. Although this easily handles most cases, it is not foolproof. If the user enters "1÷0" we immediately detect the division by zero. If the user enters "1÷(π−π)" we time out. (We might choose to explicitly recognize such simple cases in the future. But this would always remain a heuristic.)

Zeros further than the eye can see

Prototypes of the M calculator, like mathematicians, treated all real numbers as infinite objects, with infinitely many digits to scroll through. If the actual computation happened to be 2−1, the result was initially displayed as 1.00000000, and the user could keep scrolling through as many thousands of zeroes to the right of that as he desired. Although mathematically sound, this proved unpopular for several good reasons, the first one probably more serious than the others:

  1. If we computed $1.23 + $7.89, the result would show up as 9.1200000000 or the like, which is unexpected and harder to read quickly than 9.12.
  2. Many users consider the result of 2-1 to be a finite number, and find it confusing to be able to scroll through lots of zeros on the right.
  3. Since the calculator couldn't ever tell that a number wasn't going to be scrolled, it couldn't treat any result as short enough to allow the use of a larger font.

As a result, the calculator now also tries to compute the result as an exact fraction whenever that is easily possible. It is then easy to tell from the fraction whether a number has a finite decimal expansion. If it does, we prevent scrolling past that point, and may use the fact that the result has a short representation to increase the font size. Results displayed in a larger font are not scrollable. We no longer display any zeros for non-zero results unless there is either a nonzero or a displayed decimal point to the right. The fact that a result is not scrollable tells the user that the result, as displayed, is exact. This is fallible in the other direction. For example, we do not compute a rational representation for π−π, and hence it is still possible to scroll through as many zeros of that result as you like.

This underlying fractional representation of the result is also used to detect, for example, division by zero without a timeout.

Since we calculate the fractional result when we can in any case, it is also now available to the user through the overflow menu.

More details

The underlying evaluate-on-demand arithmetic package is described in H. Boehm, "The Constructive Reals as a Java Library'', Special issue on practical development of exact real number computation, Journal of Logic and Algebraic Programming 64, 1, July 2005, pp. 3-11. (Also at http://www.hpl.hp.com/techreports/2004/HPL-2004-70.html)

Our version has been slightly refined. Notably it calculates inverse trigonometric functions directly instead of using a generic "inverse" function. This is less elegant, but significantly improves performance.