10

Using PyYAML, if I read in a file with blank values in a dict:

test_str = '''
attrs:
  first:
  second: value2
'''

This returns None for the key first:

>>> data = yaml.load(test_str)
>>> data
{'attrs': {'second': 'value2', 'first': None}}

But when writing, the None value is replaced with null:

>>> print(yaml.dump(data, default_flow_style=False))
attrs:
  first: null
  second: value2

Is there a way to format the dump output to print a blank scalar rather than null?

2
  • Is there a specific reason you need null (None) to be blank lines in dumped yaml?
    – Alik
    May 13 '16 at 2:16
  • 2
    We're creating a data entry system for non-technical users so want the interface to be super simple. We decided on blanks rather than null for the input, and it would be great to have the output replicate the input as much as possible. May 14 '16 at 20:30
17

Based on @Anthon's excellent answer, I was able to craft this solution:

def represent_none(self, _):
    return self.represent_scalar('tag:yaml.org,2002:null', '')

yaml.add_representer(type(None), represent_none)

Based on my understanding of the PyYAML code, adding a representer for an existing type should simply replace the existing representer.

This is a global change and that means that all following dumps use a blank. If some unrelated other piece of code in your program relies on None to be represented in the "normal" way, e.g. a library that you import and that uses PyYAML as well, that library will no longer work in the exepected way/correctly, in that case subclassing is the correct way to go.

1
  • Wow. Mad skills. This totally works! Thanks Jace, and @Anthon as well Jan 23 '17 at 2:37
14

You get null because dump() uses the Representer() which subclasses SafeRepresenter() and to represent None, the following method is called:

def represent_none(self, data):
    return self.represent_scalar(u'tag:yaml.org,2002:null',
                                 u'null')

As the string null is hardcoded, there is no option to dump() to change that.

The proper way to solve this in PyYAML is to make your own Dumper subclass which has the Emitter, Serializer, and Resolver from the standard Dumper that dump() uses, but with subclass of Representer that represents None the way you want it:

import sys
import yaml

from yaml.representer import Representer
from yaml.dumper import Dumper
from yaml.emitter import Emitter
from yaml.serializer import Serializer
from yaml.resolver import Resolver


yaml_str = """\
attrs:
  first:
  second: value2
"""

class MyRepresenter(Representer):
    def represent_none(self, data):
        return self.represent_scalar(u'tag:yaml.org,2002:null',
                                 u'')

class MyDumper(Emitter, Serializer, MyRepresenter, Resolver):
    def __init__(self, stream,
            default_style=None, default_flow_style=None,
            canonical=None, indent=None, width=None,
            allow_unicode=None, line_break=None,
            encoding=None, explicit_start=None, explicit_end=None,
            version=None, tags=None):
        Emitter.__init__(self, stream, canonical=canonical,
                indent=indent, width=width,
                allow_unicode=allow_unicode, line_break=line_break)
        Serializer.__init__(self, encoding=encoding,
                explicit_start=explicit_start, explicit_end=explicit_end,
                version=version, tags=tags)
        MyRepresenter.__init__(self, default_style=default_style,
                default_flow_style=default_flow_style)
        Resolver.__init__(self)

MyRepresenter.add_representer(type(None),
                              MyRepresenter.represent_none)

data = yaml.load(yaml_str)
yaml.dump(data, stream=sys.stdout, Dumper=MyDumper, default_flow_style=False)

gives you:

attrs:
  first:
  second: value2

If that sounds like a lot of overhead just to get rid of null, it is. There are some shortcuts you can take and you can even try to graft the alternate function onto the existing Representer, but since the actual function taken is referenced in a lookup table ( populated by add_representer ) you need to handle at least that reference as well.

The far more easy solution is replace PyYAML with ruamel.yaml and use its round_trip functionality (disclaimer: I am the author of that package):

import ruamel.yaml

yaml_str = """\
# trying to round-trip preserve empty scalar
attrs:
  first:
  second: value2
"""

data = ruamel.yaml.round_trip_load(yaml_str)
assert ruamel.yaml.round_trip_dump(data) == yaml_str

apart from emitting None as the empty scalar, it also preserves order in mapping keys, comments and tag names, none of which PyYAML does. ruamel.yaml also follows the YAML 1.2 specification (from 2009), where PyYAML uses the older YAML 1.1.


The ruamel.yaml package can be installed with pip from PyPI, or with modern Debian based distributions, also with apt-get python-ruamel.yaml

2

Extending @Jace Browning's answer while addressing @Anthon's concern, we can use a context manager which remembers the prior implementation of None:

class BlankNone(Representer):
    """Print None as blank when used as context manager"""
    def represent_none(self, *_):
        return self.represent_scalar(u'tag:yaml.org,2002:null', u'')

def __enter__(self):
    self.prior = Dumper.yaml_representers[type(None)]
    yaml.add_representer(type(None), self.represent_none)

def __exit__(self, exc_type, exc_val, exc_tb):
    Dumper.yaml_representers[type(None)] = self.prior

which can be used thus:

 with BlankNone(), open(file, 'wt') as f:
        yaml.dump(hosts, f)
-6

just use string replace

print(yaml.dump(data).replace("null", ""))
1
  • 5
    Welcome to Stack Overflow. This is really bad advice: first of all there is no guarantee that the four characters null are not part of a larger scalar (e.g. "annulling: 42"), thereby changing data or even crashing loading if those four are part of a tag. Second: you add an extra newline. Third: PyYAML has a stream interface. If you don't specify a stream (as you do), a buffer is made into which is streamed, then the buffer content retrieved. On that you run replace and then stream it out again. That is slow, memory inefficient. If you post-processing do so using something behaves like a stream.
    – Anthon
    Aug 8 '18 at 9:48

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