


How Can I Precisely Limit Floating-Point Numbers to Two Decimal Places in Python?
Limiting Floats to Two Decimal Points: Floating-Point Imprecision and Alternative Solutions
Encountering discrepancies between expected and displayed floating-point values is a common issue faced by developers. In Python, the code provided aims to round the value of 'a' to 13.95 but produces a slightly different result due to the limitations of floating-point representation.
Floating-point numbers are used to represent real numbers in a binary computer system. However, not all numbers can be represented with full precision, leading to rounding errors. In the case of 'a', the rounded value is the same as the original value because the computer stores it as a binary fraction that cannot exactly represent 13.95.
Python's double precision floating-point type uses 53 bits of precision, while regular floats have 24 bits. This means that the precision of floating-point numbers is limited to 16 decimal digits for double precision and 8 decimal digits for regular floats.
To address this issue, several approaches can be considered:
Display Formatting
To display 'a' with only two decimal places, use string formatting techniques such as:
print("%.2f" % a) # Output: 13.95 print("{:.2f}".format(a)) # Output: 13.95
Decimal Type
If exact precision is required, consider using the decimal type from the decimal module:
import decimal decimal.Decimal('13.95') # Output: Decimal('13.95')
Integer Representation
For currency values where accuracy is required only up to two decimal places, use integers to store values in cents and divide by 100 to convert to dollars:
value_in_cents = 1395 # Store value as an integer value_in_dollars = value_in_cents / 100 # Output: 13.95
The above is the detailed content of How Can I Precisely Limit Floating-Point Numbers to Two Decimal Places in Python?. For more information, please follow other related articles on the PHP Chinese website!

The reasons why Python scripts cannot run on Unix systems include: 1) Insufficient permissions, using chmod xyour_script.py to grant execution permissions; 2) Shebang line is incorrect or missing, you should use #!/usr/bin/envpython; 3) The environment variables are not set properly, and you can print os.environ debugging; 4) Using the wrong Python version, you can specify the version on the Shebang line or the command line; 5) Dependency problems, using virtual environment to isolate dependencies; 6) Syntax errors, using python-mpy_compileyour_script.py to detect.

Using Python arrays is more suitable for processing large amounts of numerical data than lists. 1) Arrays save more memory, 2) Arrays are faster to operate by numerical values, 3) Arrays force type consistency, 4) Arrays are compatible with C arrays, but are not as flexible and convenient as lists.

Listsare Better ForeflexibilityandMixdatatatypes, Whilearraysares Superior Sumerical Computation Sand Larged Datasets.1) Unselable List Xibility, MixedDatatypes, andfrequent elementchanges.2) Usarray's sensory -sensical operations, Largedatasets, AndwhenMemoryEfficiency

NumPymanagesmemoryforlargearraysefficientlyusingviews,copies,andmemory-mappedfiles.1)Viewsallowslicingwithoutcopying,directlymodifyingtheoriginalarray.2)Copiescanbecreatedwiththecopy()methodforpreservingdata.3)Memory-mappedfileshandlemassivedatasetsb

ListsinPythondonotrequireimportingamodule,whilearraysfromthearraymoduledoneedanimport.1)Listsarebuilt-in,versatile,andcanholdmixeddatatypes.2)Arraysaremorememory-efficientfornumericdatabutlessflexible,requiringallelementstobeofthesametype.

Pythonlistscanstoreanydatatype,arraymodulearraysstoreonetype,andNumPyarraysarefornumericalcomputations.1)Listsareversatilebutlessmemory-efficient.2)Arraymodulearraysarememory-efficientforhomogeneousdata.3)NumPyarraysareoptimizedforperformanceinscient

WhenyouattempttostoreavalueofthewrongdatatypeinaPythonarray,you'llencounteraTypeError.Thisisduetothearraymodule'sstricttypeenforcement,whichrequiresallelementstobeofthesametypeasspecifiedbythetypecode.Forperformancereasons,arraysaremoreefficientthanl

Pythonlistsarepartofthestandardlibrary,whilearraysarenot.Listsarebuilt-in,versatile,andusedforstoringcollections,whereasarraysareprovidedbythearraymoduleandlesscommonlyusedduetolimitedfunctionality.


Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

SublimeText3 English version
Recommended: Win version, supports code prompts!

ZendStudio 13.5.1 Mac
Powerful PHP integrated development environment

Safe Exam Browser
Safe Exam Browser is a secure browser environment for taking online exams securely. This software turns any computer into a secure workstation. It controls access to any utility and prevents students from using unauthorized resources.

SublimeText3 Chinese version
Chinese version, very easy to use

EditPlus Chinese cracked version
Small size, syntax highlighting, does not support code prompt function
