Easily run Python at the shell! Magical, but never mysterious.
Project description
pyp
Easily run Python at the shell! Magical, but never mysterious.
Installation
Run pip install pypyp
(note the extra "yp"!)
pyp requires Python 3.6 or above.
How it works
pyp will statically analyse the input code to detect undefined variables. Based on what it finds,
it will proceed to transform the AST of the input code as needed. We then compile and execute the
result, or if using --explain
, unparse the AST back to source code.
Examples
This section will walk you through the details of using pyp, and hopefully replace your needs
for many common shell utilities. For a cheatsheet / tldr, run pyp --help
.
pyp can easily be used to apply Python code to each line in the input.
Just use one of the magic variables x
, l
, s
or line
to refer to the current line.
# pyp like cut
ls | pyp 'x[:3]'
ps x | pyp 'line.split()[4]'
pyp can be used to easily apply Python code to the entire input as well.
Use the magic variable lines
for a list of rstripped lines or stdin
for sys.stdin
.
# pyp like wc -c
cat /usr/share/dict/words | pyp 'len(stdin.read())'
# pyp like awk
seq 1 5 | pyp 'sum(map(int, lines))'
pyp will automatically import modules you use.
# pyp like sh
echo echo echo | pyp 'subprocess.run(lines[0], shell=True); pass'
# pyp like jq
curl -s 'https://api.github.com/repos/hauntsaninja/pyp/commits?per_page=1' | pyp 'json.load(stdin)[0]["commit"]["author"]'
# pyp like egrep
cat /usr/share/dict/words | pyp 'x if re.search("(p|m)yth", x) else None'
For collections
, math
, itertools
, pathlib.Path
, pprint.pp
, pyp will figure it out even
if you don't use the qualified name.
# pyp like bc
pyp 'sqrt(5)'
# pyp like ${x##*.}
ls | pyp 'Path(x).suffix'
pyp can give you access to loop indices using the magic variables i
, idx
or index
.
# pyp like line numbers
cat setup.py | pyp 'f"{idx+1: >3} {x}"'
Note so far you haven't had to call print
!
By default, pyp will print the last expression in your code — except if it evaluates to None
.
And you can always explicitly call print
yourself, in which case pyp will stay out of your way.
# pyp like grep
cat /usr/share/dict/words | pyp 'x if "python" in x else None'
cat /usr/share/dict/words | pyp 'if "python" in x: print(x); "this will not be printed"'
pyp will attempt to intelligently print dicts and iterables.
This makes the output of pyp easier to compose with shell tools.
Again, explicit printing will stop this magic, but pyp makes the function pypprint
available if
you do want to explicitly opt back in.
# pyp like tail
ls | pyp 'lines[-10:]'
# pyp like sort
ls | pyp 'sorted(lines)'
ls | pyp 'print(f"Sorting {len(lines)} lines"); pypprint(sorted(lines))'
# pyp like sort | uniq
ls | pyp 'sorted(set(lines))'
pyp lets you run snippets of Python before and after processing input.
Note if you run into trouble with semicolons and want a new line (without using a multiline string in your shell), you can just pass another string to pyp. You can also always pipe pyp to pyp!
# pyp like anything!
ps aux | pyp -b 'd = defaultdict(list)' 'user, pid, *_ = x.split()' 'd[user].append(pid)' -a 'del d["root"]' -a 'd'
pyp can be magical, but it doesn't have to be mysterious!
Use --explain
or --script
and pyp will output a script equivalent to what it would run. This can also serve as a
useful starting point for more complex scripts.
pyp --explain -b 'd = defaultdict(list)' 'user, pid, *_ = x.split()' 'd[user].append(pid)' -a 'del d["root"]' -a 'd'
#!/usr/bin/env python3
from collections import defaultdict
from pyp import pypprint
import sys
d = defaultdict(list)
for x in sys.stdin:
x = x.rstrip('\n')
(user, pid, *_) = x.split()
d[user].append(pid)
del d['root']
if d is not None:
pypprint(d)
And if your command hits an exception, pyp will reconstruct a traceback into the generated code.
pyp is configurable.
Point the environment variable PYP_CONFIG_PATH
to a file containing, for example:
import numpy as np
import tensorflow as tf
from pipetools import *
def p95(data):
return np.percentile(data, 95)
class PotentiallyUsefulClass: ...
When attempting to define undefined names, pyp will statically* analyse this file as a source of
possible definitions. This means that if you don't use tf
, we won't import tensorflow
! And of
course, --explain
will show you exactly what gets run (and hence what doesn't!):
pyp --explain 'print(p95(list(map(float, stdin))))'
#!/usr/bin/env python3
import sys
import numpy as np
def p95(data):
return np.percentile(data, 95)
stdin = sys.stdin
print(p95(list(map(float, stdin))))
Note, importing things from libraries like pipetools in your configuration can allow you to achieve high levels of syntax sugar:
seq 1 110 | pyp 'lines > foreach(int) | where(X > 100) | group_by(X % 3) | sort_by(X[0])'
*If you use wildcard imports, we will need to import those modules if there remain undefined
names, though we skip this in the happy path. If this matters to you, definitely don't
from tensorflow import *
in your config!
I have questions!
There's additional documentation and examples at FAQ. If that doesn't answer your question, please open an issue!
Related projects
Pyed Piper aka Python Power at the Prompt
pyp takes inspiration (and the command name!) from here. However, Pyed Piper appears to be unmaintained, Python 2 only, and further away from Python syntax than pyp aims to be. Github mirror here.
Pyped
I discovered Pyped while making this project! It's actually very similar, probably similar enough that I wouldn't have written this had I known. However, Pyped doesn't do the AST introspection and manipulation that we do. This means:
- It's less magical! It relies on you to pass in flags to tell it what to do, when intention can be inferred from the input.
- It doesn't provide easy automatic printing, or smart printing of iterables and dicts.
- It hardcodes a list of imports and installs some libraries on your system. This project's automatic import will work for any library you use.
- It doesn't have anything like
--explain
/--script
.
However,
- It has some conveniences, like regex splitting of input, that you'd have to do for yourself here.
- It supports Python 2 and early versions of Python 3.
- It's been around for much longer.
piep / spy / pyfil / pythonpy / oneliner
Since writing pyp, it turns out there are more alternatives out there than I thought :-) Some quick notes:
- Most of them rely on the user passing in flags, like Pyped.
- Most of them have limitations around automatic printing, like only being able to automatically print single expressions or not handling iterables and dicts well.
- Some of them have custom syntax for in-process command chaining, which can be convenient.
- Some of them have specialised support for things like JSON input or running shell commands.
- Some of them expose the input in interesting ways with custom line / file / stream objects.
- Some of them have more advanced options for error handling.
- None of them have anything like
--explain
.
For whatever it's worth, I've listed these projects in approximate order of my personal preference.
mario
mario
is a featureful take on shell processing with Python. It doesn't use undefined name
detection, instead relying on a pluggable subcommand system. While the subcommands can be more
verbose than pyp, mario
makes up some ground by automatic application of functions and a custom
command chaining syntax. The result can feel a little DSL-like, while pyp tries to feel very close
to writing Python.
Consider using mario
if:
- You find yourself stringing together long sequences of pyp commands and want to be able to command chain within a single process out of the box.
- You find yourself often needing to reuse complex pyp commands or doing a lot of domain specific shell processing that you wish you could reuse with a single command.
- You want more builtin support for things like processing CSV or TOML.
- You want to easily be able to use async functions to process your input concurrently.
Consider pyp if:
- You want to minimise keystrokes for things that should be quick and easy.
- You want something minimal and lightweight that feels very close to Python. You don't want to have to remember commands.
- You're happy using Python libraries to do domain specific heavy lifting, for easy command chaining
or syntax sugar. You don't mind (or want to be able to) fall back to a script via
--script
to deal with complexity.
xonsh
xonsh
is a shell whose language is a superset of Python; this is more ambitious and pretty
different from pyp. pyp is easier to use for the one-liner piping use case, but if you need
more Python in your shell, check out xonsh
.
awk
If awk
works for you, how did you end up here?
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
File details
Details for the file pypyp-0.3.2.tar.gz
.
File metadata
- Download URL: pypyp-0.3.2.tar.gz
- Upload date:
- Size: 18.5 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/3.1.1 pkginfo/1.5.0.1 requests/2.23.0 setuptools/46.1.3 requests-toolbelt/0.9.1 tqdm/4.45.0 CPython/3.8.2
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 5e4d8eef36c123cb46ddd19bcdc279c606e8358f3ace5d611d000b3a6f6a4ed9 |
|
MD5 | 988d06f51b6d5ada27396e28198832a0 |
|
BLAKE2b-256 | 9a4a1c7614dcde7e28d9a6f6b53faa84db73e355ab2208b100bec1bc95e592b4 |
Provenance
File details
Details for the file pypyp-0.3.2-py3-none-any.whl
.
File metadata
- Download URL: pypyp-0.3.2-py3-none-any.whl
- Upload date:
- Size: 14.7 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/3.1.1 pkginfo/1.5.0.1 requests/2.23.0 setuptools/46.1.3 requests-toolbelt/0.9.1 tqdm/4.45.0 CPython/3.8.2
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 5ceb30bd24be3384ee78f6fcc9328b8f313b6c5b14b93ad38fd0d1bcc256e345 |
|
MD5 | 91fac747fde064c78d8f9e627a5b367b |
|
BLAKE2b-256 | 6b3cdb4f9141b33c21355e5ed9c28e66338e7125bdeea793ea0767c24c6509d2 |