PEP 564 – Add new time functions with nanosecond resolution
- Author:
- Victor Stinner <vstinner at python.org>
- Status:
- Final
- Type:
- Standards Track
- Created:
- 16-Oct-2017
- Python-Version:
- 3.7
- Resolution:
- Python-Dev message
Abstract
Add six new “nanosecond” variants of existing functions to the time
module: clock_gettime_ns()
, clock_settime_ns()
,
monotonic_ns()
, perf_counter_ns()
, process_time_ns()
and
time_ns()
. While similar to the existing functions without the
_ns
suffix, they provide nanosecond resolution: they return a number of
nanoseconds as a Python int
.
The time.time_ns()
resolution is 3 times better than the time.time()
resolution on Linux and Windows.
Rationale
Float type limited to 104 days
The clocks resolution of desktop and laptop computers is getting closer to nanosecond resolution. More and more clocks have a frequency in MHz, up to GHz for the CPU TSC clock.
The Python time.time()
function returns the current time as a
floating-point number which is usually a 64-bit binary floating-point
number (in the IEEE 754 format).
The problem is that the float
type starts to lose nanoseconds after 104
days. Converting from nanoseconds (int
) to seconds (float
) and
then back to nanoseconds (int
) to check if conversions lose
precision:
# no precision loss
>>> x = 2 ** 52 + 1; int(float(x * 1e-9) * 1e9) - x
0
# precision loss! (1 nanosecond)
>>> x = 2 ** 53 + 1; int(float(x * 1e-9) * 1e9) - x
-1
>>> print(datetime.timedelta(seconds=2 ** 53 / 1e9))
104 days, 5:59:59.254741
time.time()
returns seconds elapsed since the UNIX epoch: January
1st, 1970. This function hasn’t had nanosecond precision since May 1970
(47 years ago):
>>> import datetime
>>> unix_epoch = datetime.datetime(1970, 1, 1)
>>> print(unix_epoch + datetime.timedelta(seconds=2**53 / 1e9))
1970-04-15 05:59:59.254741
Previous rejected PEP
Five years ago, the PEP 410 proposed a large and complex change in all
Python functions returning time to support nanosecond resolution using
the decimal.Decimal
type.
The PEP was rejected for different reasons:
- The idea of adding a new optional parameter to change the result type was rejected. It’s an uncommon (and bad?) programming practice in Python.
- It was not clear if hardware clocks really had a resolution of 1 nanosecond, or if that made sense at the Python level.
- The
decimal.Decimal
type is uncommon in Python and so requires to adapt code to handle it.
Issues caused by precision loss
Example 1: measure time delta in long-running process
A server is running for longer than 104 days. A clock is read before and after running a function to measure its performance to detect performance issues at runtime. Such benchmark only loses precision because of the float type used by clocks, not because of the clock resolution.
On Python microbenchmarks, it is common to see function calls taking less than 100 ns. A difference of a few nanoseconds might become significant.
Example 2: compare times with different resolution
Two programs “A” and “B” are running on the same system and use the system clock. The program A reads the system clock with nanosecond resolution and writes a timestamp with nanosecond resolution. The program B reads the timestamp with nanosecond resolution, but compares it to the system clock read with a worse resolution. To simplify the example, let’s say that B reads the clock with second resolution. If that case, there is a window of 1 second while the program B can see the timestamp written by A as “in the future”.
Nowadays, more and more databases and filesystems support storing times with nanosecond resolution.
备注
This issue was already fixed for file modification time by adding the
st_mtime_ns
field to the os.stat()
result, and by accepting
nanoseconds in os.utime()
. This PEP proposes to generalize the
fix.
CPython enhancements of the last 5 years
Since the PEP 410 was rejected:
- The
os.stat_result
structure got 3 new fields for timestamps as nanoseconds (Pythonint
):st_atime_ns
,st_ctime_ns
andst_mtime_ns
. - The PEP 418 was accepted, Python 3.3 got 3 new clocks:
time.monotonic()
,time.perf_counter()
andtime.process_time()
. - The CPython private “pytime” C API handling time now uses a new
_PyTime_t
type: simple 64-bit signed integer (Cint64_t
). The_PyTime_t
unit is an implementation detail and not part of the API. The unit is currently1 nanosecond
.
Existing Python APIs using nanoseconds as int
The os.stat_result
structure has 3 fields for timestamps as
nanoseconds (int
): st_atime_ns
, st_ctime_ns
and
st_mtime_ns
.
The ns
parameter of the os.utime()
function accepts a
(atime_ns: int, mtime_ns: int)
tuple: nanoseconds.
Changes
New functions
This PEP adds six new functions to the time
module:
time.clock_gettime_ns(clock_id)
time.clock_settime_ns(clock_id, time: int)
time.monotonic_ns()
time.perf_counter_ns()
time.process_time_ns()
time.time_ns()
These functions are similar to the version without the _ns
suffix,
but return a number of nanoseconds as a Python int
.
For example, time.monotonic_ns() == int(time.monotonic() * 1e9)
if
monotonic()
value is small enough to not lose precision.
These functions are needed because they may return “large” timestamps,
like time.time()
which uses the UNIX epoch as reference, and so their
float
-returning variants are likely to lose precision at the nanosecond
resolution.
Unchanged functions
Since the time.clock()
function was deprecated in Python 3.3, no
time.clock_ns()
is added.
Python has other time-returning functions. No nanosecond variant is
proposed for these other functions, either because their internal
resolution is greater or equal to 1 us, or because their maximum value
is small enough to not lose precision. For example, the maximum value of
time.clock_getres()
should be 1 second.
Examples of unchanged functions:
os
module:sched_rr_get_interval()
,times()
,wait3()
andwait4()
resource
module:ru_utime
andru_stime
fields ofgetrusage()
signal
module:getitimer()
,setitimer()
time
module:clock_getres()
See also the Annex: Clocks Resolution in Python.
A new nanosecond-returning flavor of these functions may be added later if an operating system exposes new functions providing better resolution.
Alternatives and discussion
Sub-nanosecond resolution
time.time_ns()
API is not theoretically future-proof: if clock
resolutions continue to increase below the nanosecond level, new Python
functions may be needed.
In practice, the 1 nanosecond resolution is currently enough for all structures returned by all common operating systems functions.
Hardware clocks with a resolution better than 1 nanosecond already exist. For example, the frequency of a CPU TSC clock is the CPU base frequency: the resolution is around 0.3 ns for a CPU running at 3 GHz. Users who have access to such hardware and really need sub-nanosecond resolution can however extend Python for their needs. Such a rare use case doesn’t justify to design the Python standard library to support sub-nanosecond resolution.
For the CPython implementation, nanosecond resolution is convenient: the
standard and well supported int64_t
type can be used to store a
nanosecond-precise timestamp. It supports a timespan of -292 years
to +292 years. Using the UNIX epoch as reference, it therefore supports
representing times since year 1677 to year 2262:
>>> 1970 - 2 ** 63 / (10 ** 9 * 3600 * 24 * 365.25)
1677.728976954687
>>> 1970 + 2 ** 63 / (10 ** 9 * 3600 * 24 * 365.25)
2262.271023045313
Modifying time.time() result type
It was proposed to modify time.time()
to return a different number
type with better precision.
The PEP 410 proposed to return decimal.Decimal
which already exists and
supports arbitrary precision, but it was rejected. Apart from
decimal.Decimal
, no portable real number type with better precision
is currently available in Python.
Changing the built-in Python float
type is out of the scope of this
PEP.
Moreover, changing existing functions to return a new type introduces a risk of breaking the backward compatibility even if the new type is designed carefully.
Different types
Many ideas of new types were proposed to support larger or arbitrary precision: fractions, structures or 2-tuple using integers, fixed-point number, etc.
See also the PEP 410 for a previous long discussion on other types.
Adding a new type requires more effort to support it, than reusing
the existing int
type. The standard library, third party code and
applications would have to be modified to support it.
The Python int
type is well known, well supported, easy to
manipulate, and supports all arithmetic operations such as
dt = t2 - t1
.
Moreover, taking/returning an integer number of nanoseconds is not a
new concept in Python, as witnessed by os.stat_result
and
os.utime(ns=(atime_ns, mtime_ns))
.
备注
If the Python float
type becomes larger (e.g. decimal128 or
float128), the time.time()
precision will increase as well.
Different API
The time.time(ns=False)
API was proposed to avoid adding new
functions. It’s an uncommon (and bad?) programming practice in Python to
change the result type depending on a parameter.
Different options were proposed to allow the user to choose the time
resolution. If each Python module uses a different resolution, it can
become difficult to handle different resolutions, instead of just
seconds (time.time()
returning float
) and nanoseconds
(time.time_ns()
returning int
). Moreover, as written above,
there is no need for resolution better than 1 nanosecond in practice in
the Python standard library.
A new module
It was proposed to add a new time_ns
module containing the following
functions:
time_ns.clock_gettime(clock_id)
time_ns.clock_settime(clock_id, time: int)
time_ns.monotonic()
time_ns.perf_counter()
time_ns.process_time()
time_ns.time()
The first question is whether the time_ns
module should expose exactly
the same API (constants, functions, etc.) as the time
module. It can be
painful to maintain two flavors of the time
module. How are users use
supposed to make a choice between these two modules?
If tomorrow, other nanosecond variants are needed in the os
module,
will we have to add a new os_ns
module as well? There are functions
related to time in many modules: time
, os
, signal
,
resource
, select
, etc.
Another idea is to add a time.ns
submodule or a nested-namespace to
get the time.ns.time()
syntax, but it suffers from the same issues.
Annex: Clocks Resolution in Python
This annex contains the resolution of clocks as measured in Python, and not the resolution announced by the operating system or the resolution of the internal structure used by the operating system.
Script
Example of script to measure the smallest difference between two
time.time()
and time.time_ns()
reads ignoring differences of zero:
import math
import time
LOOPS = 10 ** 6
print("time.time_ns(): %s" % time.time_ns())
print("time.time(): %s" % time.time())
min_dt = [abs(time.time_ns() - time.time_ns())
for _ in range(LOOPS)]
min_dt = min(filter(bool, min_dt))
print("min time_ns() delta: %s ns" % min_dt)
min_dt = [abs(time.time() - time.time())
for _ in range(LOOPS)]
min_dt = min(filter(bool, min_dt))
print("min time() delta: %s ns" % math.ceil(min_dt * 1e9))
Linux
Clocks resolution measured in Python on Fedora 26 (kernel 4.12):
Function | Resolution |
---|---|
clock() | 1 us |
monotonic() | 81 ns |
monotonic_ns() | 84 ns |
perf_counter() | 82 ns |
perf_counter_ns() | 84 ns |
process_time() | 2 ns |
process_time_ns() | 1 ns |
resource.getrusage() | 1 us |
time() | 239 ns |
time_ns() | 84 ns |
times().elapsed | 10 ms |
times().user | 10 ms |
Notes on resolutions:
clock()
frequency isCLOCKS_PER_SECOND
which is 1,000,000 Hz (1 MHz): resolution of 1 us.times()
frequency isos.sysconf("SC_CLK_TCK")
(or theHZ
constant) which is equal to 100 Hz: resolution of 10 ms.resource.getrusage()
,os.wait3()
andos.wait4()
use theru_usage
structure. The type of theru_usage.ru_utime
andru_usage.ru_stime
fields is thetimeval
structure which has a resolution of 1 us.
Windows
Clocks resolution measured in Python on Windows 8.1:
Function | Resolution |
---|---|
monotonic() | 15 ms |
monotonic_ns() | 15 ms |
perf_counter() | 100 ns |
perf_counter_ns() | 100 ns |
process_time() | 15.6 ms |
process_time_ns() | 15.6 ms |
time() | 894.1 us |
time_ns() | 318 us |
The frequency of perf_counter()
and perf_counter_ns()
comes from
QueryPerformanceFrequency()
. The frequency is usually 10 MHz: resolution of
100 ns. In old Windows versions, the frequency was sometimes 3,579,545 Hz (3.6
MHz): resolution of 279 ns.
Analysis
The resolution of time.time_ns()
is much better than
time.time()
: 84 ns (2.8x better) vs 239 ns on Linux and 318 us
(2.8x better) vs 894 us on Windows. The time.time()
resolution will
only become larger (worse) as years pass since every day adds
86,400,000,000,000 nanoseconds to the system clock, which increases the
precision loss.
The difference between time.perf_counter()
, time.monotonic()
,
time.process_time()
and their respective nanosecond variants is
not visible in this quick script since the script runs for less than 1
minute, and the uptime of the computer used to run the script was
smaller than 1 week. A significant difference may be seen if uptime
reaches 104 days or more.
resource.getrusage()
and times()
have a resolution greater or
equal to 1 microsecond, and so don’t need a variant with nanosecond
resolution.
备注
Internally, Python starts monotonic()
and perf_counter()
clocks at zero on some platforms which indirectly reduce the
precision loss.
Links
Copyright
This document has been placed in the public domain.
Source: https://github.com/python/peps/blob/main/pep-0564.rst
Last modified: 2022-01-21 11:03:51 GMT