New in version 2.4.
The decimal
module provides support for decimal floating point arithmetic. It offers several advantages over the float
datatype:
1.1
and 2.2
do not have exact representations in binary floating point. End users typically would not expect 1.1 + 2.2
to display as 3.3000000000000003
as it does with binary floating point.0.1
+ 0.1 + 0.1 - 0.3
is exactly equal to zero. In binary floating point, the result is 5.5511151231257827e-017
. While near to zero, the differences prevent reliable equality testing and differences can accumulate. For this reason, decimal is preferred in accounting applications which have strict equality invariants.1.30
+ 1.20
is 2.50
. The trailing zero is kept to indicate significance. This is the customary presentation for monetary applications. For multiplication, the “schoolbook” approach uses all the figures in the multiplicands. For instance, 1.3 * 1.2
gives 1.56
while 1.30 *
1.20
gives 1.5600
.Unlike hardware based binary floating point, the decimal module has a user alterable precision (defaulting to 28 places) which can be as large as needed for a given problem:
>>> from decimal import * >>> getcontext().prec = 6 >>> Decimal(1) / Decimal(7) Decimal('0.142857') >>> getcontext().prec = 28 >>> Decimal(1) / Decimal(7) Decimal('0.1428571428571428571428571429')
The module design is centered around three concepts: the decimal number, the context for arithmetic, and signals.
A decimal number is immutable. It has a sign, coefficient digits, and an exponent. To preserve significance, the coefficient digits do not truncate trailing zeros. Decimals also include special values such as Infinity
, -Infinity
, and NaN
. The standard also differentiates -0
from +0
.
The context for arithmetic is an environment specifying precision, rounding rules, limits on exponents, flags indicating the results of operations, and trap enablers which determine whether signals are treated as exceptions. Rounding options include ROUND_CEILING
, ROUND_DOWN
, ROUND_FLOOR
, ROUND_HALF_DOWN
, ROUND_HALF_EVEN
, ROUND_HALF_UP
, ROUND_UP
, and ROUND_05UP
.
Signals are groups of exceptional conditions arising during the course of computation. Depending on the needs of the application, signals may be ignored, considered as informational, or treated as exceptions. The signals in the decimal module are: Clamped
, InvalidOperation
, DivisionByZero
, Inexact
, Rounded
, Subnormal
, Overflow
, and Underflow
.
For each signal there is a flag and a trap enabler. When a signal is encountered, its flag is set to one, then, if the trap enabler is set to one, an exception is raised. Flags are sticky, so the user needs to reset them before monitoring a calculation.
See also
The usual start to using decimals is importing the module, viewing the current context with getcontext()
and, if necessary, setting new values for precision, rounding, or enabled traps:
>>> from decimal import * >>> getcontext() Context(prec=28, rounding=ROUND_HALF_EVEN, Emin=-999999999, Emax=999999999, capitals=1, flags=[], traps=[Overflow, DivisionByZero, InvalidOperation]) >>> getcontext().prec = 7 # Set a new precision
Decimal instances can be constructed from integers, strings, floats, or tuples. Construction from an integer or a float performs an exact conversion of the value of that integer or float. Decimal numbers include special values such as NaN
which stands for “Not a number”, positive and negative Infinity
, and -0
.
>>> getcontext().prec = 28 >>> Decimal(10) Decimal('10') >>> Decimal('3.14') Decimal('3.14') >>> Decimal(3.14) Decimal('3.140000000000000124344978758017532527446746826171875') >>> Decimal((0, (3, 1, 4), -2)) Decimal('3.14') >>> Decimal(str(2.0 ** 0.5)) Decimal('1.41421356237') >>> Decimal(2) ** Decimal('0.5') Decimal('1.414213562373095048801688724') >>> Decimal('NaN') Decimal('NaN') >>> Decimal('-Infinity') Decimal('-Infinity')
The significance of a new Decimal is determined solely by the number of digits input. Context precision and rounding only come into play during arithmetic operations.
>>> getcontext().prec = 6 >>> Decimal('3.0') Decimal('3.0') >>> Decimal('3.1415926535') Decimal('3.1415926535') >>> Decimal('3.1415926535') + Decimal('2.7182818285') Decimal('5.85987') >>> getcontext().rounding = ROUND_UP >>> Decimal('3.1415926535') + Decimal('2.7182818285') Decimal('5.85988')
Decimals interact well with much of the rest of Python. Here is a small decimal floating point flying circus:
>>> data = map(Decimal, '1.34 1.87 3.45 2.35 1.00 0.03 9.25'.split()) >>> max(data) Decimal('9.25') >>> min(data) Decimal('0.03') >>> sorted(data) [Decimal('0.03'), Decimal('1.00'), Decimal('1.34'), Decimal('1.87'), Decimal('2.35'), Decimal('3.45'), Decimal('9.25')] >>> sum(data) Decimal('19.29') >>> a,b,c = data[:3] >>> str(a) '1.34' >>> float(a) 1.34 >>> round(a, 1) # round() first converts to binary floating point 1.3 >>> int(a) 1 >>> a * 5 Decimal('6.70') >>> a * b Decimal('2.5058') >>> c % a Decimal('0.77')
And some mathematical functions are also available to Decimal:
>>> getcontext().prec = 28 >>> Decimal(2).sqrt() Decimal('1.414213562373095048801688724') >>> Decimal(1).exp() Decimal('2.718281828459045235360287471') >>> Decimal('10').ln() Decimal('2.302585092994045684017991455') >>> Decimal('10').log10() Decimal('1')
The quantize()
method rounds a number to a fixed exponent. This method is useful for monetary applications that often round results to a fixed number of places:
>>> Decimal('7.325').quantize(Decimal('.01'), rounding=ROUND_DOWN) Decimal('7.32') >>> Decimal('7.325').quantize(Decimal('1.'), rounding=ROUND_UP) Decimal('8')
As shown above, the getcontext()
function accesses the current context and allows the settings to be changed. This approach meets the needs of most applications.
For more advanced work, it may be useful to create alternate contexts using the Context() constructor. To make an alternate active, use the setcontext()
function.
In accordance with the standard, the decimal
module provides two ready to use standard contexts, BasicContext
and ExtendedContext
. The former is especially useful for debugging because many of the traps are enabled:
>>> myothercontext = Context(prec=60, rounding=ROUND_HALF_DOWN) >>> setcontext(myothercontext) >>> Decimal(1) / Decimal(7) Decimal('0.142857142857142857142857142857142857142857142857142857142857') >>> ExtendedContext Context(prec=9, rounding=ROUND_HALF_EVEN, Emin=-999999999, Emax=999999999, capitals=1, flags=[], traps=[]) >>> setcontext(ExtendedContext) >>> Decimal(1) / Decimal(7) Decimal('0.142857143') >>> Decimal(42) / Decimal(0) Decimal('Infinity') >>> setcontext(BasicContext) >>> Decimal(42) / Decimal(0) Traceback (most recent call last): File "<pyshell#143>", line 1, in -toplevel- Decimal(42) / Decimal(0) DivisionByZero: x / 0
Contexts also have signal flags for monitoring exceptional conditions encountered during computations. The flags remain set until explicitly cleared, so it is best to clear the flags before each set of monitored computations by using the clear_flags()
method.
>>> setcontext(ExtendedContext) >>> getcontext().clear_flags() >>> Decimal(355) / Decimal(113) Decimal('3.14159292') >>> getcontext() Context(prec=9, rounding=ROUND_HALF_EVEN, Emin=-999999999, Emax=999999999, capitals=1, flags=[Rounded, Inexact], traps=[])
The flags entry shows that the rational approximation to Pi
was rounded (digits beyond the context precision were thrown away) and that the result is inexact (some of the discarded digits were non-zero).
Individual traps are set using the dictionary in the traps
field of a context:
>>> setcontext(ExtendedContext) >>> Decimal(1) / Decimal(0) Decimal('Infinity') >>> getcontext().traps[DivisionByZero] = 1 >>> Decimal(1) / Decimal(0) Traceback (most recent call last): File "<pyshell#112>", line 1, in -toplevel- Decimal(1) / Decimal(0) DivisionByZero: x / 0
Most programs adjust the current context only once, at the beginning of the program. And, in many applications, data is converted to Decimal
with a single cast inside a loop. With context set and decimals created, the bulk of the program manipulates the data no differently than with other Python numeric types.
class decimal.Decimal([value[, context]])
Construct a new Decimal
object based from value.
value can be an integer, string, tuple, float
, or another Decimal
object. If no value is given, returns Decimal('0')
. If value is a string, it should conform to the decimal numeric string syntax after leading and trailing whitespace characters are removed:
sign ::= '+' | '-' digit ::= '0' | '1' | '2' | '3' | '4' | '5' | '6' | '7' | '8' | '9' indicator ::= 'e' | 'E' digits ::= digit [digit]... decimal-part ::= digits '.' [digits] | ['.'] digits exponent-part ::= indicator [sign] digits infinity ::= 'Infinity' | 'Inf' nan ::= 'NaN' [digits] | 'sNaN' [digits] numeric-value ::= decimal-part [exponent-part] | infinity numeric-string ::= [sign] numeric-value | [sign] nan
If value is a unicode string then other Unicode decimal digits are also permitted where digit
appears above. These include decimal digits from various other alphabets (for example, Arabic-Indic and Devanāgarī digits) along with the fullwidth digits u'\uff10'
through u'\uff19'
.
If value is a tuple
, it should have three components, a sign (0
for positive or 1
for negative), a tuple
of digits, and an integer exponent. For example, Decimal((0, (1, 4, 1, 4), -3))
returns Decimal('1.414')
.
If value is a float
, the binary floating point value is losslessly converted to its exact decimal equivalent. This conversion can often require 53 or more digits of precision. For example, Decimal(float('1.1'))
converts to Decimal('1.100000000000000088817841970012523233890533447265625')
.
The context precision does not affect how many digits are stored. That is determined exclusively by the number of digits in value. For example, Decimal('3.00000')
records all five zeros even if the context precision is only three.
The purpose of the context argument is determining what to do if value is a malformed string. If the context traps InvalidOperation
, an exception is raised; otherwise, the constructor returns a new Decimal with the value of NaN
.
Once constructed, Decimal
objects are immutable.
Changed in version 2.6: leading and trailing whitespace characters are permitted when creating a Decimal instance from a string.
Changed in version 2.7: The argument to the constructor is now permitted to be a float
instance.
Decimal floating point objects share many properties with the other built-in numeric types such as float
and int
. All of the usual math operations and special methods apply. Likewise, decimal objects can be copied, pickled, printed, used as dictionary keys, used as set elements, compared, sorted, and coerced to another type (such as float
or long
).
There are some small differences between arithmetic on Decimal objects and arithmetic on integers and floats. When the remainder operator %
is applied to Decimal objects, the sign of the result is the sign of the dividend rather than the sign of the divisor:
>>> (-7) % 4 1 >>> Decimal(-7) % Decimal(4) Decimal('-3')
The integer division operator //
behaves analogously, returning the integer part of the true quotient (truncating towards zero) rather than its floor, so as to preserve the usual identity x == (x // y) * y + x % y
:
>>> -7 // 4 -2 >>> Decimal(-7) // Decimal(4) Decimal('-1')
The %
and //
operators implement the remainder
and divide-integer
operations (respectively) as described in the specification.
Decimal objects cannot generally be combined with floats in arithmetic operations: an attempt to add a Decimal
to a float
, for example, will raise a TypeError
. There’s one exception to this rule: it’s possible to use Python’s comparison operators to compare a float
instance x
with a Decimal
instance y
. Without this exception, comparisons between Decimal
and float
instances would follow the general rules for comparing objects of different types described in the Expressions section of the reference manual, leading to confusing results.
Changed in version 2.7: A comparison between a float
instance x
and a Decimal
instance y
now returns a result based on the values of x
and y
. In earlier versions x < y
returned the same (arbitrary) result for any Decimal
instance x
and any float
instance y
.
In addition to the standard numeric properties, decimal floating point objects also have a number of specialized methods:
adjusted()
Return the adjusted exponent after shifting out the coefficient’s rightmost digits until only the lead digit remains: Decimal('321e+5').adjusted()
returns seven. Used for determining the position of the most significant digit with respect to the decimal point.
as_tuple()
Return a named tuple representation of the number: DecimalTuple(sign, digits, exponent)
.
Changed in version 2.6: Use a named tuple.
canonical()
Return the canonical encoding of the argument. Currently, the encoding of a Decimal
instance is always canonical, so this operation returns its argument unchanged.
New in version 2.6.
compare(other[, context])
Compare the values of two Decimal instances. This operation behaves in the same way as the usual comparison method __cmp__()
, except that compare()
returns a Decimal instance rather than an integer, and if either operand is a NaN then the result is a NaN:
a or b is a NaN ==> Decimal('NaN') a < b ==> Decimal('-1') a == b ==> Decimal('0') a > b ==> Decimal('1')
compare_signal(other[, context])
This operation is identical to the compare()
method, except that all NaNs signal. That is, if neither operand is a signaling NaN then any quiet NaN operand is treated as though it were a signaling NaN.
New in version 2.6.
compare_total(other)
Compare two operands using their abstract representation rather than their numerical value. Similar to the compare()
method, but the result gives a total ordering on Decimal
instances. Two Decimal
instances with the same numeric value but different representations compare unequal in this ordering:
>>> Decimal('12.0').compare_total(Decimal('12')) Decimal('-1')
Quiet and signaling NaNs are also included in the total ordering. The result of this function is Decimal('0')
if both operands have the same representation, Decimal('-1')
if the first operand is lower in the total order than the second, and Decimal('1')
if the first operand is higher in the total order than the second operand. See the specification for details of the total order.
New in version 2.6.
compare_total_mag(other)
Compare two operands using their abstract representation rather than their value as in compare_total()
, but ignoring the sign of each operand. x.compare_total_mag(y)
is equivalent to x.copy_abs().compare_total(y.copy_abs())
.
New in version 2.6.
conjugate()
Just returns self, this method is only to comply with the Decimal Specification.
New in version 2.6.
copy_abs()
Return the absolute value of the argument. This operation is unaffected by the context and is quiet: no flags are changed and no rounding is performed.
New in version 2.6.
copy_negate()
Return the negation of the argument. This operation is unaffected by the context and is quiet: no flags are changed and no rounding is performed.
New in version 2.6.
copy_sign(other)
Return a copy of the first operand with the sign set to be the same as the sign of the second operand. For example:
>>> Decimal('2.3').copy_sign(Decimal('-1.5')) Decimal('-2.3')
This operation is unaffected by the context and is quiet: no flags are changed and no rounding is performed.
New in version 2.6.
exp([context])
Return the value of the (natural) exponential function e**x
at the given number. The result is correctly rounded using the ROUND_HALF_EVEN
rounding mode.
>>> Decimal(1).exp() Decimal('2.718281828459045235360287471') >>> Decimal(321).exp() Decimal('2.561702493119680037517373933E+139')
New in version 2.6.
from_float(f)
Classmethod that converts a float to a decimal number, exactly.
Note Decimal.from_float(0.1)
is not the same as Decimal(‘0.1’)
. Since 0.1 is not exactly representable in binary floating point, the value is stored as the nearest representable value which is 0x1.999999999999ap-4
. That equivalent value in decimal is 0.1000000000000000055511151231257827021181583404541015625
.
>>> Decimal.from_float(0.1) Decimal('0.1000000000000000055511151231257827021181583404541015625') >>> Decimal.from_float(float('nan')) Decimal('NaN') >>> Decimal.from_float(float('inf')) Decimal('Infinity') >>> Decimal.from_float(float('-inf')) Decimal('-Infinity')
New in version 2.7.
fma(other, third[, context])
Fused multiply-add. Return self*other+third with no rounding of the intermediate product self*other.
>>> Decimal(2).fma(3, 5) Decimal('11')
New in version 2.6.
is_canonical()
Return True
if the argument is canonical and False
otherwise. Currently, a Decimal
instance is always canonical, so this operation always returns True
.
New in version 2.6.
is_finite()
Return True
if the argument is a finite number, and False
if the argument is an infinity or a NaN.
New in version 2.6.
is_infinite()
Return True
if the argument is either positive or negative infinity and False
otherwise.
New in version 2.6.
is_nan()
Return True
if the argument is a (quiet or signaling) NaN and False
otherwise.
New in version 2.6.
is_normal()
Return True
if the argument is a normal finite non-zero number with an adjusted exponent greater than or equal to Emin. Return False
if the argument is zero, subnormal, infinite or a NaN. Note, the term normal is used here in a different sense with the normalize()
method which is used to create canonical values.
New in version 2.6.
is_signed()
Return True
if the argument has a negative sign and False
otherwise. Note that zeros and NaNs can both carry signs.
New in version 2.6.
is_subnormal()
Return True
if the argument is subnormal, and False
otherwise. A number is subnormal is if it is nonzero, finite, and has an adjusted exponent less than Emin.
New in version 2.6.
is_zero()
Return True
if the argument is a (positive or negative) zero and False
otherwise.
New in version 2.6.
ln([context])
Return the natural (base e) logarithm of the operand. The result is correctly rounded using the ROUND_HALF_EVEN
rounding mode.
New in version 2.6.
log10([context])
Return the base ten logarithm of the operand. The result is correctly rounded using the ROUND_HALF_EVEN
rounding mode.
New in version 2.6.
logb([context])
For a nonzero number, return the adjusted exponent of its operand as a Decimal
instance. If the operand is a zero then Decimal('-Infinity')
is returned and the DivisionByZero
flag is raised. If the operand is an infinity then Decimal('Infinity')
is returned.
New in version 2.6.
logical_and(other[, context])
logical_and()
is a logical operation which takes two logical operands (see Logical operands). The result is the digit-wise and
of the two operands.
New in version 2.6.
logical_invert([context])
logical_invert()
is a logical operation. The result is the digit-wise inversion of the operand.
New in version 2.6.
logical_or(other[, context])
logical_or()
is a logical operation which takes two logical operands (see Logical operands). The result is the digit-wise or
of the two operands.
New in version 2.6.
logical_xor(other[, context])
logical_xor()
is a logical operation which takes two logical operands (see Logical operands). The result is the digit-wise exclusive or of the two operands.
New in version 2.6.
max(other[, context])
Like max(self, other)
except that the context rounding rule is applied before returning and that NaN
values are either signaled or ignored (depending on the context and whether they are signaling or quiet).
max_mag(other[, context])
Similar to the max()
method, but the comparison is done using the absolute values of the operands.
New in version 2.6.
min(other[, context])
Like min(self, other)
except that the context rounding rule is applied before returning and that NaN
values are either signaled or ignored (depending on the context and whether they are signaling or quiet).
min_mag(other[, context])
Similar to the min()
method, but the comparison is done using the absolute values of the operands.
New in version 2.6.
next_minus([context])
Return the largest number representable in the given context (or in the current thread’s context if no context is given) that is smaller than the given operand.
New in version 2.6.
next_plus([context])
Return the smallest number representable in the given context (or in the current thread’s context if no context is given) that is larger than the given operand.
New in version 2.6.
next_toward(other[, context])
If the two operands are unequal, return the number closest to the first operand in the direction of the second operand. If both operands are numerically equal, return a copy of the first operand with the sign set to be the same as the sign of the second operand.
New in version 2.6.
normalize([context])
Normalize the number by stripping the rightmost trailing zeros and converting any result equal to Decimal('0')
to Decimal('0e0')
. Used for producing canonical values for attributes of an equivalence class. For example, Decimal('32.100')
and Decimal('0.321000e+2')
both normalize to the equivalent value Decimal('32.1')
.
number_class([context])
Return a string describing the class of the operand. The returned value is one of the following ten strings.
"-Infinity"
, indicating that the operand is negative infinity."-Normal"
, indicating that the operand is a negative normal number."-Subnormal"
, indicating that the operand is negative and subnormal."-Zero"
, indicating that the operand is a negative zero."+Zero"
, indicating that the operand is a positive zero."+Subnormal"
, indicating that the operand is positive and subnormal."+Normal"
, indicating that the operand is a positive normal number."+Infinity"
, indicating that the operand is positive infinity."NaN"
, indicating that the operand is a quiet NaN (Not a Number)."sNaN"
, indicating that the operand is a signaling NaN.New in version 2.6.
quantize(exp[, rounding[, context[, watchexp]]])
Return a value equal to the first operand after rounding and having the exponent of the second operand.
>>> Decimal('1.41421356').quantize(Decimal('1.000')) Decimal('1.414')
Unlike other operations, if the length of the coefficient after the quantize operation would be greater than precision, then an InvalidOperation
is signaled. This guarantees that, unless there is an error condition, the quantized exponent is always equal to that of the right-hand operand.
Also unlike other operations, quantize never signals Underflow, even if the result is subnormal and inexact.
If the exponent of the second operand is larger than that of the first then rounding may be necessary. In this case, the rounding mode is determined by the rounding
argument if given, else by the given context
argument; if neither argument is given the rounding mode of the current thread’s context is used.
If watchexp is set (default), then an error is returned whenever the resulting exponent is greater than Emax
or less than Etiny
.
radix()
Return Decimal(10)
, the radix (base) in which the Decimal
class does all its arithmetic. Included for compatibility with the specification.
New in version 2.6.
remainder_near(other[, context])
Return the remainder from dividing self by other. This differs from self % other
in that the sign of the remainder is chosen so as to minimize its absolute value. More precisely, the return value is self - n * other
where n
is the integer nearest to the exact value of self / other
, and if two integers are equally near then the even one is chosen.
If the result is zero then its sign will be the sign of self.
>>> Decimal(18).remainder_near(Decimal(10)) Decimal('-2') >>> Decimal(25).remainder_near(Decimal(10)) Decimal('5') >>> Decimal(35).remainder_near(Decimal(10)) Decimal('-5')
rotate(other[, context])
Return the result of rotating the digits of the first operand by an amount specified by the second operand. The second operand must be an integer in the range -precision through precision. The absolute value of the second operand gives the number of places to rotate. If the second operand is positive then rotation is to the left; otherwise rotation is to the right. The coefficient of the first operand is padded on the left with zeros to length precision if necessary. The sign and exponent of the first operand are unchanged.
New in version 2.6.
same_quantum(other[, context])
Test whether self and other have the same exponent or whether both are NaN
.
scaleb(other[, context])
Return the first operand with exponent adjusted by the second. Equivalently, return the first operand multiplied by 10**other
. The second operand must be an integer.
New in version 2.6.
shift(other[, context])
Return the result of shifting the digits of the first operand by an amount specified by the second operand. The second operand must be an integer in the range -precision through precision. The absolute value of the second operand gives the number of places to shift. If the second operand is positive then the shift is to the left; otherwise the shift is to the right. Digits shifted into the coefficient are zeros. The sign and exponent of the first operand are unchanged.
New in version 2.6.
sqrt([context])
Return the square root of the argument to full precision.
to_eng_string([context])
Convert to a string, using engineering notation if an exponent is needed.
Engineering notation has an exponent which is a multiple of 3. This can leave up to 3 digits to the left of the decimal place and may require the addition of either one or two trailing zeros.
For example, this converts Decimal('123E+1')
to Decimal('1.23E+3')
.
to_integral([rounding[, context]])
Identical to the to_integral_value()
method. The to_integral
name has been kept for compatibility with older versions.
to_integral_exact([rounding[, context]])
Round to the nearest integer, signaling Inexact
or Rounded
as appropriate if rounding occurs. The rounding mode is determined by the rounding
parameter if given, else by the given context
. If neither parameter is given then the rounding mode of the current context is used.
New in version 2.6.
to_integral_value([rounding[, context]])
Round to the nearest integer without signaling Inexact
or Rounded
. If given, applies rounding; otherwise, uses the rounding method in either the supplied context or the current context.
Changed in version 2.6: renamed from to_integral
to to_integral_value
. The old name remains valid for compatibility.
The logical_and()
, logical_invert()
, logical_or()
, and logical_xor()
methods expect their arguments to be logical operands. A logical operand is a Decimal
instance whose exponent and sign are both zero, and whose digits are all either 0
or 1
.
Contexts are environments for arithmetic operations. They govern precision, set rules for rounding, determine which signals are treated as exceptions, and limit the range for exponents.
Each thread has its own current context which is accessed or changed using the getcontext()
and setcontext()
functions:
decimal.getcontext()
Return the current context for the active thread.
decimal.setcontext(c)
Set the current context for the active thread to c.
Beginning with Python 2.5, you can also use the with
statement and the localcontext()
function to temporarily change the active context.
decimal.localcontext([c])
Return a context manager that will set the current context for the active thread to a copy of c on entry to the with-statement and restore the previous context when exiting the with-statement. If no context is specified, a copy of the current context is used.
New in version 2.5.
For example, the following code sets the current decimal precision to 42 places, performs a calculation, and then automatically restores the previous context:
from decimal import localcontext with localcontext() as ctx: ctx.prec = 42 # Perform a high precision calculation s = calculate_something() s = +s # Round the final result back to the default precision with localcontext(BasicContext): # temporarily use the BasicContext print Decimal(1) / Decimal(7) print Decimal(355) / Decimal(113)
New contexts can also be created using the Context
constructor described below. In addition, the module provides three pre-made contexts:
class decimal.BasicContext
This is a standard context defined by the General Decimal Arithmetic Specification. Precision is set to nine. Rounding is set to ROUND_HALF_UP
. All flags are cleared. All traps are enabled (treated as exceptions) except Inexact
, Rounded
, and Subnormal
.
Because many of the traps are enabled, this context is useful for debugging.
class decimal.ExtendedContext
This is a standard context defined by the General Decimal Arithmetic Specification. Precision is set to nine. Rounding is set to ROUND_HALF_EVEN
. All flags are cleared. No traps are enabled (so that exceptions are not raised during computations).
Because the traps are disabled, this context is useful for applications that prefer to have result value of NaN
or Infinity
instead of raising exceptions. This allows an application to complete a run in the presence of conditions that would otherwise halt the program.
class decimal.DefaultContext
This context is used by the Context
constructor as a prototype for new contexts. Changing a field (such a precision) has the effect of changing the default for new contexts created by the Context
constructor.
This context is most useful in multi-threaded environments. Changing one of the fields before threads are started has the effect of setting system-wide defaults. Changing the fields after threads have started is not recommended as it would require thread synchronization to prevent race conditions.
In single threaded environments, it is preferable to not use this context at all. Instead, simply create contexts explicitly as described below.
The default values are precision=28, rounding=ROUND_HALF_EVEN, and enabled traps for Overflow, InvalidOperation, and DivisionByZero.
In addition to the three supplied contexts, new contexts can be created with the Context
constructor.
class decimal.Context(prec=None, rounding=None, traps=None, flags=None, Emin=None, Emax=None, capitals=1)
Creates a new context. If a field is not specified or is None
, the default values are copied from the DefaultContext
. If the flags field is not specified or is None
, all flags are cleared.
The prec field is a positive integer that sets the precision for arithmetic operations in the context.
The rounding option is one of:
ROUND_CEILING
(towards Infinity
),ROUND_DOWN
(towards zero),ROUND_FLOOR
(towards -Infinity
),ROUND_HALF_DOWN
(to nearest with ties going towards zero),ROUND_HALF_EVEN
(to nearest with ties going to nearest even integer),ROUND_HALF_UP
(to nearest with ties going away from zero), orROUND_UP
(away from zero).ROUND_05UP
(away from zero if last digit after rounding towards zero would have been 0 or 5; otherwise towards zero)The traps and flags fields list any signals to be set. Generally, new contexts should only set traps and leave the flags clear.
The Emin and Emax fields are integers specifying the outer limits allowable for exponents.
The capitals field is either 0
or 1
(the default). If set to 1
, exponents are printed with a capital E
; otherwise, a lowercase e
is used: Decimal('6.02e+23')
.
Changed in version 2.6: The ROUND_05UP
rounding mode was added.
The Context
class defines several general purpose methods as well as a large number of methods for doing arithmetic directly in a given context. In addition, for each of the Decimal
methods described above (with the exception of the adjusted()
and as_tuple()
methods) there is a corresponding Context
method. For example, for a Context
instance C
and Decimal
instance x
, C.exp(x)
is equivalent to x.exp(context=C)
. Each Context
method accepts a Python integer (an instance of int
or long
) anywhere that a Decimal instance is accepted.
clear_flags()
Resets all of the flags to 0
.
copy()
Return a duplicate of the context.
copy_decimal(num)
Return a copy of the Decimal instance num.
create_decimal(num)
Creates a new Decimal instance from num but using self as context. Unlike the Decimal
constructor, the context precision, rounding method, flags, and traps are applied to the conversion.
This is useful because constants are often given to a greater precision than is needed by the application. Another benefit is that rounding immediately eliminates unintended effects from digits beyond the current precision. In the following example, using unrounded inputs means that adding zero to a sum can change the result:
>>> getcontext().prec = 3 >>> Decimal('3.4445') + Decimal('1.0023') Decimal('4.45') >>> Decimal('3.4445') + Decimal(0) + Decimal('1.0023') Decimal('4.44')
This method implements the to-number operation of the IBM specification. If the argument is a string, no leading or trailing whitespace is permitted.
create_decimal_from_float(f)
Creates a new Decimal instance from a float f but rounding using self as the context. Unlike the Decimal.from_float()
class method, the context precision, rounding method, flags, and traps are applied to the conversion.
>>> context = Context(prec=5, rounding=ROUND_DOWN) >>> context.create_decimal_from_float(math.pi) Decimal('3.1415') >>> context = Context(prec=5, traps=[Inexact]) >>> context.create_decimal_from_float(math.pi) Traceback (most recent call last): ... Inexact: None
New in version 2.7.
Etiny()
Returns a value equal to Emin - prec + 1
which is the minimum exponent value for subnormal results. When underflow occurs, the exponent is set to Etiny
.
Etop()
Returns a value equal to Emax - prec + 1
.
The usual approach to working with decimals is to create Decimal
instances and then apply arithmetic operations which take place within the current context for the active thread. An alternative approach is to use context methods for calculating within a specific context. The methods are similar to those for the Decimal
class and are only briefly recounted here.
abs(x)
Returns the absolute value of x.
add(x, y)
Return the sum of x and y.
canonical(x)
Returns the same Decimal object x.
compare(x, y)
Compares x and y numerically.
compare_signal(x, y)
Compares the values of the two operands numerically.
compare_total(x, y)
Compares two operands using their abstract representation.
compare_total_mag(x, y)
Compares two operands using their abstract representation, ignoring sign.
copy_abs(x)
Returns a copy of x with the sign set to 0.
copy_negate(x)
Returns a copy of x with the sign inverted.
copy_sign(x, y)
Copies the sign from y to x.
divide(x, y)
Return x divided by y.
divide_int(x, y)
Return x divided by y, truncated to an integer.
divmod(x, y)
Divides two numbers and returns the integer part of the result.
exp(x)
Returns e ** x
.
fma(x, y, z)
Returns x multiplied by y, plus z.
is_canonical(x)
Returns True
if x is canonical; otherwise returns False
.
is_finite(x)
Returns True
if x is finite; otherwise returns False
.
is_infinite(x)
Returns True
if x is infinite; otherwise returns False
.
is_nan(x)
Returns True
if x is a qNaN or sNaN; otherwise returns False
.
is_normal(x)
Returns True
if x is a normal number; otherwise returns False
.
is_qnan(x)
Returns True
if x is a quiet NaN; otherwise returns False
.
is_signed(x)
Returns True
if x is negative; otherwise returns False
.
is_snan(x)
Returns True
if x is a signaling NaN; otherwise returns False
.
is_subnormal(x)
Returns True
if x is subnormal; otherwise returns False
.
is_zero(x)
Returns True
if x is a zero; otherwise returns False
.
ln(x)
Returns the natural (base e) logarithm of x.
log10(x)
Returns the base 10 logarithm of x.
logb(x)
Returns the exponent of the magnitude of the operand’s MSD.
logical_and(x, y)
Applies the logical operation and between each operand’s digits.
logical_invert(x)
Invert all the digits in x.
logical_or(x, y)
Applies the logical operation or between each operand’s digits.
logical_xor(x, y)
Applies the logical operation xor between each operand’s digits.
max(x, y)
Compares two values numerically and returns the maximum.
max_mag(x, y)
Compares the values numerically with their sign ignored.
min(x, y)
Compares two values numerically and returns the minimum.
min_mag(x, y)
Compares the values numerically with their sign ignored.
minus(x)
Minus corresponds to the unary prefix minus operator in Python.
multiply(x, y)
Return the product of x and y.
next_minus(x)
Returns the largest representable number smaller than x.
next_plus(x)
Returns the smallest representable number larger than x.
next_toward(x, y)
Returns the number closest to x, in direction towards y.
normalize(x)
Reduces x to its simplest form.
number_class(x)
Returns an indication of the class of x.
plus(x)
Plus corresponds to the unary prefix plus operator in Python. This operation applies the context precision and rounding, so it is not an identity operation.
power(x, y[, modulo])
Return x
to the power of y
, reduced modulo modulo
if given.
With two arguments, compute x**y
. If x
is negative then y
must be integral. The result will be inexact unless y
is integral and the result is finite and can be expressed exactly in ‘precision’ digits. The result should always be correctly rounded, using the rounding mode of the current thread’s context.
With three arguments, compute (x**y) % modulo
. For the three argument form, the following restrictions on the arguments hold:
y
must be nonnegativex
or y
must be nonzeromodulo
must be nonzero and have at most ‘precision’ digitsThe value resulting from Context.power(x, y, modulo)
is equal to the value that would be obtained by computing (x**y)
% modulo
with unbounded precision, but is computed more efficiently. The exponent of the result is zero, regardless of the exponents of x
, y
and modulo
. The result is always exact.
Changed in version 2.6: y
may now be nonintegral in x**y
. Stricter requirements for the three-argument version.
quantize(x, y)
Returns a value equal to x (rounded), having the exponent of y.
radix()
Just returns 10, as this is Decimal, :)
remainder(x, y)
Returns the remainder from integer division.
The sign of the result, if non-zero, is the same as that of the original dividend.
remainder_near(x, y)
Returns x - y * n
, where n is the integer nearest the exact value of x / y
(if the result is 0 then its sign will be the sign of x).
rotate(x, y)
Returns a rotated copy of x, y times.
same_quantum(x, y)
Returns True
if the two operands have the same exponent.
scaleb(x, y)
Returns the first operand after adding the second value its exp.
shift(x, y)
Returns a shifted copy of x, y times.
sqrt(x)
Square root of a non-negative number to context precision.
subtract(x, y)
Return the difference between x and y.
to_eng_string(x)
Convert to a string, using engineering notation if an exponent is needed.
Engineering notation has an exponent which is a multiple of 3. This can leave up to 3 digits to the left of the decimal place and may require the addition of either one or two trailing zeros.
to_integral_exact(x)
Rounds to an integer.
to_sci_string(x)
Converts a number to a string using scientific notation.
Signals represent conditions that arise during computation. Each corresponds to one context flag and one context trap enabler.
The context flag is set whenever the condition is encountered. After the computation, flags may be checked for informational purposes (for instance, to determine whether a computation was exact). After checking the flags, be sure to clear all flags before starting the next computation.
If the context’s trap enabler is set for the signal, then the condition causes a Python exception to be raised. For example, if the DivisionByZero
trap is set, then a DivisionByZero
exception is raised upon encountering the condition.
class decimal.Clamped
Altered an exponent to fit representation constraints.
Typically, clamping occurs when an exponent falls outside the context’s Emin
and Emax
limits. If possible, the exponent is reduced to fit by adding zeros to the coefficient.
class decimal.DecimalException
Base class for other signals and a subclass of ArithmeticError
.
class decimal.DivisionByZero
Signals the division of a non-infinite number by zero.
Can occur with division, modulo division, or when raising a number to a negative power. If this signal is not trapped, returns Infinity
or -Infinity
with the sign determined by the inputs to the calculation.
class decimal.Inexact
Indicates that rounding occurred and the result is not exact.
Signals when non-zero digits were discarded during rounding. The rounded result is returned. The signal flag or trap is used to detect when results are inexact.
class decimal.InvalidOperation
An invalid operation was performed.
Indicates that an operation was requested that does not make sense. If not trapped, returns NaN
. Possible causes include:
Infinity - Infinity 0 * Infinity Infinity / Infinity x % 0 Infinity % x x._rescale( non-integer ) sqrt(-x) and x > 0 0 ** 0 x ** (non-integer) x ** Infinity
class decimal.Overflow
Numerical overflow.
Indicates the exponent is larger than Emax
after rounding has occurred. If not trapped, the result depends on the rounding mode, either pulling inward to the largest representable finite number or rounding outward to Infinity
. In either case, Inexact
and Rounded
are also signaled.
class decimal.Rounded
Rounding occurred though possibly no information was lost.
Signaled whenever rounding discards digits; even if those digits are zero (such as rounding 5.00
to 5.0
). If not trapped, returns the result unchanged. This signal is used to detect loss of significant digits.
class decimal.Subnormal
Exponent was lower than Emin
prior to rounding.
Occurs when an operation result is subnormal (the exponent is too small). If not trapped, returns the result unchanged.
class decimal.Underflow
Numerical underflow with result rounded to zero.
Occurs when a subnormal result is pushed to zero by rounding. Inexact
and Subnormal
are also signaled.
The following table summarizes the hierarchy of signals:
exceptions.ArithmeticError(exceptions.StandardError) DecimalException Clamped DivisionByZero(DecimalException, exceptions.ZeroDivisionError) Inexact Overflow(Inexact, Rounded) Underflow(Inexact, Rounded, Subnormal) InvalidOperation Rounded Subnormal
The use of decimal floating point eliminates decimal representation error (making it possible to represent 0.1
exactly); however, some operations can still incur round-off error when non-zero digits exceed the fixed precision.
The effects of round-off error can be amplified by the addition or subtraction of nearly offsetting quantities resulting in loss of significance. Knuth provides two instructive examples where rounded floating point arithmetic with insufficient precision causes the breakdown of the associative and distributive properties of addition:
# Examples from Seminumerical Algorithms, Section 4.2.2. >>> from decimal import Decimal, getcontext >>> getcontext().prec = 8 >>> u, v, w = Decimal(11111113), Decimal(-11111111), Decimal('7.51111111') >>> (u + v) + w Decimal('9.5111111') >>> u + (v + w) Decimal('10') >>> u, v, w = Decimal(20000), Decimal(-6), Decimal('6.0000003') >>> (u*v) + (u*w) Decimal('0.01') >>> u * (v+w) Decimal('0.0060000')
The decimal
module makes it possible to restore the identities by expanding the precision sufficiently to avoid loss of significance:
>>> getcontext().prec = 20 >>> u, v, w = Decimal(11111113), Decimal(-11111111), Decimal('7.51111111') >>> (u + v) + w Decimal('9.51111111') >>> u + (v + w) Decimal('9.51111111') >>> >>> u, v, w = Decimal(20000), Decimal(-6), Decimal('6.0000003') >>> (u*v) + (u*w) Decimal('0.0060000') >>> u * (v+w) Decimal('0.0060000')
The number system for the decimal
module provides special values including NaN
, sNaN
, -Infinity
, Infinity
, and two zeros, +0
and -0
.
Infinities can be constructed directly with: Decimal('Infinity')
. Also, they can arise from dividing by zero when the DivisionByZero
signal is not trapped. Likewise, when the Overflow
signal is not trapped, infinity can result from rounding beyond the limits of the largest representable number.
The infinities are signed (affine) and can be used in arithmetic operations where they get treated as very large, indeterminate numbers. For instance, adding a constant to infinity gives another infinite result.
Some operations are indeterminate and return NaN
, or if the InvalidOperation
signal is trapped, raise an exception. For example, 0/0
returns NaN
which means “not a number”. This variety of NaN
is quiet and, once created, will flow through other computations always resulting in another NaN
. This behavior can be useful for a series of computations that occasionally have missing inputs — it allows the calculation to proceed while flagging specific results as invalid.
A variant is sNaN
which signals rather than remaining quiet after every operation. This is a useful return value when an invalid result needs to interrupt a calculation for special handling.
The behavior of Python’s comparison operators can be a little surprising where a NaN
is involved. A test for equality where one of the operands is a quiet or signaling NaN
always returns False
(even when doing Decimal('NaN')==Decimal('NaN')
), while a test for inequality always returns True
. An attempt to compare two Decimals using any of the <
, <=
, >
or >=
operators will raise the InvalidOperation
signal if either operand is a NaN
, and return False
if this signal is not trapped. Note that the General Decimal Arithmetic specification does not specify the behavior of direct comparisons; these rules for comparisons involving a NaN
were taken from the IEEE 854 standard (see Table 3 in section 5.7). To ensure strict standards-compliance, use the compare()
and compare-signal()
methods instead.
The signed zeros can result from calculations that underflow. They keep the sign that would have resulted if the calculation had been carried out to greater precision. Since their magnitude is zero, both positive and negative zeros are treated as equal and their sign is informational.
In addition to the two signed zeros which are distinct yet equal, there are various representations of zero with differing precisions yet equivalent in value. This takes a bit of getting used to. For an eye accustomed to normalized floating point representations, it is not immediately obvious that the following calculation returns a value equal to zero:
>>> 1 / Decimal('Infinity') Decimal('0E-1000000026')
The getcontext()
function accesses a different Context
object for each thread. Having separate thread contexts means that threads may make changes (such as getcontext.prec=10
) without interfering with other threads.
Likewise, the setcontext()
function automatically assigns its target to the current thread.
If setcontext()
has not been called before getcontext()
, then getcontext()
will automatically create a new context for use in the current thread.
The new context is copied from a prototype context called DefaultContext. To control the defaults so that each thread will use the same values throughout the application, directly modify the DefaultContext object. This should be done before any threads are started so that there won’t be a race condition between threads calling getcontext()
. For example:
# Set applicationwide defaults for all threads about to be launched DefaultContext.prec = 12 DefaultContext.rounding = ROUND_DOWN DefaultContext.traps = ExtendedContext.traps.copy() DefaultContext.traps[InvalidOperation] = 1 setcontext(DefaultContext) # Afterwards, the threads can be started t1.start() t2.start() t3.start() . . .
Here are a few recipes that serve as utility functions and that demonstrate ways to work with the Decimal
class:
def moneyfmt(value, places=2, curr='', sep=',', dp='.', pos='', neg='-', trailneg=''): """Convert Decimal to a money formatted string. places: required number of places after the decimal point curr: optional currency symbol before the sign (may be blank) sep: optional grouping separator (comma, period, space, or blank) dp: decimal point indicator (comma or period) only specify as blank when places is zero pos: optional sign for positive numbers: '+', space or blank neg: optional sign for negative numbers: '-', '(', space or blank trailneg:optional trailing minus indicator: '-', ')', space or blank >>> d = Decimal('-1234567.8901') >>> moneyfmt(d, curr='$') '-$1,234,567.89' >>> moneyfmt(d, places=0, sep='.', dp='', neg='', trailneg='-') '1.234.568-' >>> moneyfmt(d, curr='$', neg='(', trailneg=')') '($1,234,567.89)' >>> moneyfmt(Decimal(123456789), sep=' ') '123 456 789.00' >>> moneyfmt(Decimal('-0.02'), neg='<', trailneg='>') '<0.02>' """ q = Decimal(10) ** -places # 2 places --> '0.01' sign, digits, exp = value.quantize(q).as_tuple() result = [] digits = map(str, digits) build, next = result.append, digits.pop if sign: build(trailneg) for i in range(places): build(next() if digits else '0') build(dp) if not digits: build('0') i = 0 while digits: build(next()) i += 1 if i == 3 and digits: i = 0 build(sep) build(curr) build(neg if sign else pos) return ''.join(reversed(result)) def pi(): """Compute Pi to the current precision. >>> print pi() 3.141592653589793238462643383 """ getcontext().prec += 2 # extra digits for intermediate steps three = Decimal(3) # substitute "three=3.0" for regular floats lasts, t, s, n, na, d, da = 0, three, 3, 1, 0, 0, 24 while s != lasts: lasts = s n, na = n+na, na+8 d, da = d+da, da+32 t = (t * n) / d s += t getcontext().prec -= 2 return +s # unary plus applies the new precision def exp(x): """Return e raised to the power of x. Result type matches input type. >>> print exp(Decimal(1)) 2.718281828459045235360287471 >>> print exp(Decimal(2)) 7.389056098930650227230427461 >>> print exp(2.0) 7.38905609893 >>> print exp(2+0j) (7.38905609893+0j) """ getcontext().prec += 2 i, lasts, s, fact, num = 0, 0, 1, 1, 1 while s != lasts: lasts = s i += 1 fact *= i num *= x s += num / fact getcontext().prec -= 2 return +s def cos(x): """Return the cosine of x as measured in radians. >>> print cos(Decimal('0.5')) 0.8775825618903727161162815826 >>> print cos(0.5) 0.87758256189 >>> print cos(0.5+0j) (0.87758256189+0j) """ getcontext().prec += 2 i, lasts, s, fact, num, sign = 0, 0, 1, 1, 1, 1 while s != lasts: lasts = s i += 2 fact *= i * (i-1) num *= x * x sign *= -1 s += num / fact * sign getcontext().prec -= 2 return +s def sin(x): """Return the sine of x as measured in radians. >>> print sin(Decimal('0.5')) 0.4794255386042030002732879352 >>> print sin(0.5) 0.479425538604 >>> print sin(0.5+0j) (0.479425538604+0j) """ getcontext().prec += 2 i, lasts, s, fact, num, sign = 1, 0, x, 1, x, 1 while s != lasts: lasts = s i += 2 fact *= i * (i-1) num *= x * x sign *= -1 s += num / fact * sign getcontext().prec -= 2 return +s
Q. It is cumbersome to type decimal.Decimal('1234.5')
. Is there a way to minimize typing when using the interactive interpreter?
A. Some users abbreviate the constructor to just a single letter:
>>> D = decimal.Decimal >>> D('1.23') + D('3.45') Decimal('4.68')
Q. In a fixed-point application with two decimal places, some inputs have many places and need to be rounded. Others are not supposed to have excess digits and need to be validated. What methods should be used?
A. The quantize()
method rounds to a fixed number of decimal places. If the Inexact
trap is set, it is also useful for validation:
>>> TWOPLACES = Decimal(10) ** -2 # same as Decimal('0.01')
>>> # Round to two places >>> Decimal('3.214').quantize(TWOPLACES) Decimal('3.21')
>>> # Validate that a number does not exceed two places >>> Decimal('3.21').quantize(TWOPLACES, context=Context(traps=[Inexact])) Decimal('3.21')
>>> Decimal('3.214').quantize(TWOPLACES, context=Context(traps=[Inexact])) Traceback (most recent call last): ... Inexact: None
Q. Once I have valid two place inputs, how do I maintain that invariant throughout an application?
A. Some operations like addition, subtraction, and multiplication by an integer will automatically preserve fixed point. Others operations, like division and non-integer multiplication, will change the number of decimal places and need to be followed-up with a quantize()
step:
>>> a = Decimal('102.72') # Initial fixed-point values >>> b = Decimal('3.17') >>> a + b # Addition preserves fixed-point Decimal('105.89') >>> a - b Decimal('99.55') >>> a * 42 # So does integer multiplication Decimal('4314.24') >>> (a * b).quantize(TWOPLACES) # Must quantize non-integer multiplication Decimal('325.62') >>> (b / a).quantize(TWOPLACES) # And quantize division Decimal('0.03')
In developing fixed-point applications, it is convenient to define functions to handle the quantize()
step:
>>> def mul(x, y, fp=TWOPLACES): ... return (x * y).quantize(fp) >>> def div(x, y, fp=TWOPLACES): ... return (x / y).quantize(fp)
>>> mul(a, b) # Automatically preserve fixed-point Decimal('325.62') >>> div(b, a) Decimal('0.03')
Q. There are many ways to express the same value. The numbers 200
, 200.000
, 2E2
, and 02E+4
all have the same value at various precisions. Is there a way to transform them to a single recognizable canonical value?
A. The normalize()
method maps all equivalent values to a single representative:
>>> values = map(Decimal, '200 200.000 2E2 .02E+4'.split()) >>> [v.normalize() for v in values] [Decimal('2E+2'), Decimal('2E+2'), Decimal('2E+2'), Decimal('2E+2')]
Q. Some decimal values always print with exponential notation. Is there a way to get a non-exponential representation?
A. For some values, exponential notation is the only way to express the number of significant places in the coefficient. For example, expressing 5.0E+3
as 5000
keeps the value constant but cannot show the original’s two-place significance.
If an application does not care about tracking significance, it is easy to remove the exponent and trailing zeros, losing significance, but keeping the value unchanged:
def remove_exponent(d): '''Remove exponent and trailing zeros. >>> remove_exponent(Decimal('5E+3')) Decimal('5000') ''' return d.quantize(Decimal(1)) if d == d.to_integral() else d.normalize()
Q. Is there a way to convert a regular float to a Decimal
?
A. Yes, any binary floating point number can be exactly expressed as a Decimal though an exact conversion may take more precision than intuition would suggest:
>>> Decimal(math.pi) Decimal('3.141592653589793115997963468544185161590576171875')
Q. Within a complex calculation, how can I make sure that I haven’t gotten a spurious result because of insufficient precision or rounding anomalies.
A. The decimal module makes it easy to test results. A best practice is to re-run calculations using greater precision and with various rounding modes. Widely differing results indicate insufficient precision, rounding mode issues, ill-conditioned inputs, or a numerically unstable algorithm.
Q. I noticed that context precision is applied to the results of operations but not to the inputs. Is there anything to watch out for when mixing values of different precisions?
A. Yes. The principle is that all values are considered to be exact and so is the arithmetic on those values. Only the results are rounded. The advantage for inputs is that “what you type is what you get”. A disadvantage is that the results can look odd if you forget that the inputs haven’t been rounded:
>>> getcontext().prec = 3 >>> Decimal('3.104') + Decimal('2.104') Decimal('5.21') >>> Decimal('3.104') + Decimal('0.000') + Decimal('2.104') Decimal('5.20')
The solution is either to increase precision or to force rounding of inputs using the unary plus operation:
>>> getcontext().prec = 3 >>> +Decimal('1.23456789') # unary plus triggers rounding Decimal('1.23')
Alternatively, inputs can be rounded upon creation using the Context.create_decimal()
method:
>>> Context(prec=5, rounding=ROUND_DOWN).create_decimal('1.2345678') Decimal('1.2345')
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Licensed under the PSF License.
https://docs.python.org/2.7/library/decimal.html