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rsalmei / Alive Progress

Licence: mit
A new kind of Progress Bar, with real-time throughput, ETA, and very cool animations!

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alive-progress logo

alive-progress :)

A new kind of Progress Bar, with real-time throughput, ETA, and very cool animations!

Maintenance PyPI version PyPI pyversions PyPI status Downloads

Ever wondered where your lengthy processing was in, and when would it finish? Ever found yourself hitting [RETURN] now and then to ensure it didn't hang, or if in a remote SSH session the connection was still working? Ever needed to pause some processing for a while, return to the Python prompt for a manual inspection or fixing an item, and then resume the process seamlessly? I did...

I've started this cool progress bar thinking about all that, the alive-progress! 😃

alive-progress demo

I like to think of it as a new kind of progress bar for Python since it has among other things:

  • a live spinner that is incredibly cool, and clearly shows your lengthy process did not hang, or your ssh connection did not drop;
  • a visual feedback of your current processing, as the live spinner runs faster or slower with it;
  • an efficient multi-threaded bar, which updates itself at a fraction of the actual processing speed (1,000,000 iterations per second equates to roughly 60 updates per second) to keep CPU usage low and avoid terminal spamming (you can also calibrate this to your liking);
  • nice monitoring of both position and throughput of your processing;
  • an ETA (expected time of arrival) with a smart exponential smoothing algorithm, that shows the time to completion;
  • automatic print and logging hooks, which allows print statements and logging messages to work effortlessly, right amid an animated bar, and even enriching them with the current bar position when they occurred;
  • a nice receipt is printed when your processing finishes, including the last bar rendition, the elapsed time, and the observed throughput;
  • it detects under and overflows, enabling you to track hits, misses, or any desired count, not necessarily the actual iterations;
  • it automatically detects if there's an allocated tty, and if there isn't (like in a shell pipeline), only the final receipt is printed (so you can safely include it in any code, and rest assured your log file won't get thousands of progress lines);
  • you can pause it! I think that's an unprecedented feature for progress bars ANYWHERE — in Python or any other language — no one has ever done it! It's incredible to be able to get back to the Python prompt during any running process! Then you can manually adjust an item or prepare something, and get back into that running process as if it had never stopped!! All alive_bar widgets are kept as they were, and the elapsed time nicely ignores the paused time!;
  • it is customizable, with a growing smorgasbord of bar and spinner styles, as well as several factories to easily generate yours! Now (📌 new in 2.0) we even have super powerful and cool .check() tools in both bars and spinners, to help you design your animations! You can see all the frames and cycles exploded on screen, with several verbosity levels, even including an alive rendition! 😜

📌 NEW 2.1 series!

YES! Now alive-progress has support for Jupyter Notebooks, and also includes a Disabled state! Both were highly sought after, and have finally landed!
And better, I've implemented an auto-detection mechanism for jupyter notebooks, so it just works, out of the box, without any changes in your code!!

See for yourself:

alive-progress demo

It seems to work very well, but at this moment it should be considered experimental.
There were instances in which some visual glitches have appeared, like two alive_bar refreshes being concatenated together instead of over one another... And it's something I think I can't possibly workaround: it seems Jupyter sometimes refresh the canvas at odd times, which makes it lose some data. Please let me know on the issues if something funnier arises.

📌 NEW 2.0 series!

This is a major achievement in alive-progress!
I took 1 year developing it, and I'm very proud of what I've accomplished \o/

  • now there's complete support for Emojis 🤩 and exotic Unicode chars in general, which required MAJOR refactoring deep within the project, giving rise to what I called "Cell Architecture" => now all internal components use and generate streams of cells instead of chars, and correctly interprets grapheme clusters — it has enabled to render complex multi-chars symbols as if they were one, thus making them work on any spinners, bars, texts, borders, backgrounds, everything!!! there's even support for wide chars, which are represented with any number of chars, including one, but take two spaces on screen!! pretty advanced stuff 🤓
  • new super cool spinner compiler and runner, which generates complete animations ahead of time, and plays these ready-to-go animations seamlessly, with no overhead at all! 🚀
  • the spinner compiler also includes advanced extra commands to generate and modify animations, like reshape, replace, transpose, or randomize the animation cycles!
  • new powerful and polished .check() tools, that compile and beautifully render all frames from all animation cycles of spinners and bars! they can even include complete frame data, internal codepoints, and even their animations! 👏
  • bars engine revamp, with invisible fills, advanced support for multi-char tips (which gradually enter and leave the bar), borders, tips and errors of any length, and underflow errors that can leap into the border if they can't fit!
  • spinners engine revamp, with standardized factory signatures, improved performance, new types, and new features: smoother bouncing spinners (with an additional frame at the edges), optimized scrolling of text messages (which go slower and pause for a moment at the edges), new alongside and sequential spinners, nicer effect in alongside spinners (which use weighted spreading over the available space), smoother animation in scrolling spinners (when the input is longer than the available space)
  • new builtin spinners, bars, and themes, which makes use of the new animation features
  • new showtime that displays themes and is dynamic => it does not scroll the screen when it can't fit either vertically or horizontally, and can even filter for patterns!
  • improved support for logging into files, which gets enriched as the print hook is!
  • several new configuration options for customizing appearance, including support for disabling any alive-progress widgets!
  • includes a new iterator adapter alive_it, that accepts an iterable and calls bar() for you!
  • requires Python 3.6+ (and officially supports Python 3.9 and 3.10)

Since this is a major version change, direct backward compatibility is not guaranteed. If something does not work at first, just check the new imports and functions' signatures, and you should be good to go. All previous features should still work here! 👍

This README was completely rewritten, so please take a full look to find great new details!!


Get it

Just install with pip:

❯ pip install alive-progress

Awake it

Want to see it gloriously running in your system before anything?

❯ python -m alive_progress.tools.demo

alive-progress demo-tool

Cool huh?? Now enter an ipython REPL and try it yourself:

from alive_progress import alive_bar
import time

for x in 1000, 1500, 700, 0:
   with alive_bar(x) as bar:
       for i in range(1000):
           time.sleep(.005)
           bar()

You'll see something like this, with cool animations throughout the process 😜:

|████████████████████████████████████████| 1000/1000 [100%] in 5.8s (171.62/s)
|██████████████████████████▋⚠︎            | (!) 1000/1500 [67%] in 5.8s (172.62/s)
|████████████████████████████████████████✗︎ (!) 1000/700 [143%] in 5.8s (172.06/s)
|████████████████████████████████████████| 1000 in 5.8s (172.45/s)

Nice huh? Loved it? I knew you would, thank you 😊.

To actually use it, just wrap your normal loop in an alive_bar context manager like this:

with alive_bar(total) as bar:  # declare your expected total
    for item in items:         # <<-- your original loop
        print(item)            # process each item
        bar()                  # call `bar()` at the end

And it's alive! 👏

So, in short: retrieve the items as always, enter the alive_bar context manager with the number of items, and then iterate/process those items, calling bar() at the end! It's that simple! :)

Master it

  • items can be any iterable, like for example a queryset;
  • the first argument of the alive_bar is the expected total, like qs.count() for querysets, len(items) for iterables with length, or even a static number;
  • the call bar() is what makes the bar go forward — you usually call it in every iteration, just after finishing an item;
  • if you call bar() too much (or too few at the end), the bar will graphically render that deviation from the expected total, making it very easy to notice overflows and underflows;
  • to retrieve the current bar count or percentage, call bar.current().

You can get creative! Since the bar only goes forward when you call bar(), it is independent of the loop! So you can use it to monitor anything you want, like pending transactions, broken items, etc, or even call it more than once in the same iteration! So, in the end, you'll get to know how many of those "special" events there were, including their percentage relative to the total!

Displaying messages

While inside an alive_bar context, you can effortlessly display messages with:

  • the usual Python print() statement, where alive_bar nicely cleans up the line, prints your message alongside the current bar position at the time, and continues the bar right below it;
  • the standard Python logging framework, including file outputs, are also enriched exactly like the previous one;
  • the cool bar.text('message'), which sets a situational message right within the bar, where you can display something about the current item, or the phase the processing is in;
  • and all of this works just the same in an actual terminal or a Jupyter notebook!

alive-progress printing messages

Auto-iterating (📌 new in 2.0)

You now have a quicker way to monitor anything! Here, the items are automatically tracked for you!
Behold the alive_it => the alive_bar iterator adapter!

Simply wrap your items with it, and loop over them as usual!
The bar will just work, it's that simple!

from alive_progress import alive_it

for item in alive_it(items):   # <<-- wrapped items
    print(item)                # process each item

HOW COOL IS THAT?! 😜

All alive_bar parameters apply but total, which is smarter (if not supplied it will be auto-inferred from your data using len or length_hint), and manual that does not make sense here.

Note there isn't any bar handle at all in there. But what if you do want it, e.g. to set text messages or retrieve the current progress?
You can interact with the internal alive_bar by just assigning alive_it to a variable, like this:

bar = alive_it(items):         # <<-- bar with wrapped items
for item in bar:               # <<-- iterate on bar
    print(item)                # process each item
    bar.text(f'ok: {item}')    # WOW, it works!

Note that this is a slightly special bar, which does not support bar(), since the iterator adapter tracks items automatically for you.

Please do mind their differences:

  • the full use is with alive_bar() as bar, where you iterate and call bar() whenever desired;
  • the basic adapter use is for item in alive_it(items), where items are automatically tracked;
  • the named adapter use is bar = alive_it(items), where, besides items being automatically tracked, you get a special iterable bar to customize.

Modes of operation

Definite/unknown: Counters

Actually, the total argument is optional. If you do provide it, the bar enters in definite mode, the one used for well-bounded tasks. This mode has all the widgets alive-progress has to offer: count, throughput, and ETA.

If you don't, the bar enters in unknown mode, the one used for unbounded tasks. In this mode, the whole progress bar is animated, as it's not possible to determine the percentage, and therefore the ETA. But you still get the count and throughput widgets as usual.
The cool spinner is still present here besides the progress bar, both running their animations concurrently and independently of each other, rendering a unique show in your terminal! 😜

So, definite and unknown modes both use internally a counter to maintain progress. This is the source value from which all widgets are derived.

Manual: Percentages

On the other hand, manual mode uses internally a percentage to maintain progress. This enables you to get complete control of the bar position! It's usually used to monitor processes that only feed you the percentage of completion, or to generate some kind of special effect.

To use it, just include a manual=True argument into alive_bar (or config_handler), and you get to send any percentage to the bar() handler! For example, to set it to 15%, just call bar(0.15) — which is 15 / 100.

You can also use total here! If you do provide it, the bar will infer an internal counter, and thus will be able to offer you the same count, throughput, and ETA widgets!
If you don't, you'll at least get rough versions of the throughput and ETA widgets! The throughput will use "%/s" (percent per second), and the ETA will be until 1 (100%). Both are very inaccurate but are better than nothing.

You can call bar in manual mode as frequently as you want! The refresh rate will still be asynchronously computed as usual, according to the current progress and the elapsed time, so you won't ever spam the terminal with more updates than it can handle.

The bar() handlers

The bar() handlers support either relative or absolute semantics, depending on the mode:

  • counter modes use relative positioning, so you can just call bar() to increment the counter by one, or send any other positive increment like bar(5) to increment by those at once;
  • manual mode use absolute positioning, so you can just call bar(0.35) to instantly put the bar in 35% position — this argument is mandatory here!

The manual mode enables you to get super creative! Since you can set the bar instantly to whatever position you want, you could:

  • make it go backward — perhaps to graphically display the timeout of something;
  • create special effects — perhaps to act as a real-time gauge of some sort.

In any case, to retrieve the current count/percentage, just call: bar.current():

  • in counter modes, this provides an integer — the actual internal counter;
  • in manual mode, this provides a float in the interval [0, 1] — the last percentage set.

Summary

When total is provided all is cool:

mode counter percentage throughput ETA over/underflow
definite (user tick) (inferred)
manual (inferred) (user set)

When it isn't, some compromises have to be made:

mode counter percentage throughput ETA over/underflow
unknown (user tick)
manual (user set) ⚠️ (simpler) ⚠️ (rough)

It's quite simple, you do not need to think about which mode you should use:
Just always send the total if you have it, and use manual if you need it!
It will just work the best it can! 👏 \o/


Maintaining an open source project is hard and time-consuming.
I've put much ❤️ and effort into this.
You can back me up with a donation if you've appreciated my work, thank you 😊 Donate with PayPal button


Customize it

Styles

Wondering what styles are builtin? It's showtime! ;)

from alive_progress.styles import showtime

showtime()

alive-progress spinners

I've made these styles just to try the factories I've created, but I think some of them ended up very very cool! Use them at will, mix them to your heart's content!

The showtime exhibit has an optional argument to choose which show to present, Show.SPINNERS (default), Show.BARS or Show.THEMES, do take a look at them! ;)

alive-progress bars

(📌 new in 2.0) And the themes one:

alive-progress themes

The showtime exhibit also accepts some customization options:

  • fps: the frames per second rate refresh rate, default is 15;
  • length: the length of the bars, default is 40;
  • pattern: a filter to choose which ones to display.

For example to get a marine show, you can showtime(pattern='boat|fish|crab'):

alive-progress filtered spinners

You can also access these shows with the shorthands show_bars(), show_spinners(), and show_themes()!

There's also a small utility called print_chars(), to help find that cool character to put in your customized spinners and bars, or to determine if your terminal does support Unicode characters.

Configurations

There are several options to customize both appearance and behavior!
All of them can be set both directly in the alive_bar or globally in the config_handler!

These are the options - default values in brackets:

  • title: an optional, always visible bar title
  • length: [40] the number of characters to render the animated progress bar
  • spinner: the spinner style to be rendered next to the bar
    ↳ accepts a predefined spinner name, a custom spinner factory, or None
  • bar: the bar style to be rendered in known modes
    ↳ accepts a predefined bar name, a custom bar factory, or None
  • unknown: the bar style to be rendered in the unknown mode
    ↳ accepts a predefined spinner name, or a custom spinner factory (cannot be None)
  • theme: ['smooth'] a set of matching spinner, bar, and unknown
    ↳ accepts a predefined theme name
  • force_tty: [None] forces animations to be on, off, or according to the tty (more details here)
  • disable: [False] if True, completely disables all output, do not install hooks
  • manual: [False] set to manually control the bar position
  • enrich_print: [True] enriches print() and logging messages with the bar position
  • receipt_text: [False] set to repeat the last text message in the final receipt
  • monitor: [True] set to display the monitor widget 123/100 [123%]
  • stats: [True] set to display the stats widget (123.4/s eta: 12s)
  • elapsed: [True] set to display the elapsed time widget in 12s
  • title_length: [0] fixes the length of titles, or 0 for unlimited
    ↳ title will be truncated if longer, and a cool ellipsis "…" will appear at the end
  • spinner_length: [0] forces the spinner length, or 0 for its natural one

And there's also one that can only be set locally in an alive_bar context:

  • calibrate: maximum theoretical throughput to calibrate animation speed (more details here)

To set them locally, just send them as keyword arguments to alive_bar:

with alive_bar(total, title='Processing', length=20, bar='halloween'):
    ...

To use them globally, send them to config_handler, and any alive_bar created after that will include those options! And you can mix and match them, local options always have precedence over global ones:

from alive_progress import config_handler

config_handler.set_global(length=20, spinner='wait')

with alive_bar(total, bar='blocks', spinner='twirls'):
    # the length is 20, the bar is 'blocks' and the spinner is 'twirls'.
    ...

Create your own animations

Yes, you can assemble your own spinners! And it's easy!
I've created a plethora of special effects, so you can just mix and match them any way you want! There are frames, scrolling, bouncing, sequential, alongside, and delayed spinners! Get creative! 😍

Intro: How do they work?

The spinners' animations are engineered by very advanced generator expressions, deep within several layers of meta factories, factories and generators 🤯!

  • the meta factory (public interface) receives the styling parameters from you, the user, and processes/stores them inside a closure to create the actual factory => this is the object you'll send to both alive_bar and config_handler;
  • internally it still receives other operating parameters (like for instance the rendition length), to assemble the actual generator expression of the animation cycles of some effect, within yet another closure;
  • this, for each cycle, assembles another generator expression for the animation frames of the same effect;
  • these generators together finally produce the streams of cycles and frames of the cool animations we see on the screen! Wow 😜👏

These generators are capable of multiple different animation cycles according to the spinner behavior, e.g. a bouncing spinner with a simple pattern argument runs one cycle to smoothly bring a subject into the scene, then repeatedly reposition it until the other side, then make it smoothly disappear off the scene => this is all only one cycle! Then it is followed by another cycle to make it all backward. But the same bouncing spinner accepts repeating patterns in both right and left directions, which generates the cartesian product of all combinations, thus capable of producing dozens of different cycles!! 🤯

And there's more! They only yield the next animation frame until the current cycle is exhausted, then halt! The next cycle does not start just yet! It creates natural breaks, in exactly the correct spots, where the animations would not be disrupted, and I can smoothly restart whatever generator I want!!
That has all kinds of cool implications: the cycles can have different frame counts, different screen lengths, they do not need to be synchronized, they can create long different sequences by themselves, they can cooperate to play cycles in sequence or alongside, and I can amaze you displaying several animations at the same time on the screen without any interferences!


It's almost like they were... alive! ==> Yes, that's where this project's name came from! 😉


(📌 new in 2.0) A Spinner Compiler, really?

Now, these generators of cycles and frames are fully consumed ahead of time by the Spinner Compiler! This is a very cool new processor that I made inside the Cell Architecture effort, to make all these animations work even in the presence of wide chars or complex grapheme clusters! It was very hard to make these clusters smoothly and gradually enter and exit frames without ever changing their lengths or breaking the Unicode encoding altogether! Yes, several chars in sequence can represent another completely different symbol, so they cannot ever be split! They have to enter and exit the scene always together, all at once, or the grapheme won't show up at all (an Emoji for instance)!! Enter the Spinner Compiler......

This has made possible some incredible things!! Since this Compiler generates the whole spinner frame data beforehand: the grapheme fixes can be applied only once, and the animations do not need to be calculated again!
So I can just collect all that ready to play animations and be done with it, so no runtime overhead at all!! 👏

Also, with the complete frame data compiled and persisted, I could create several commands to refactor that data, like changing shapes, replacing chars, adding visual pauses (frame repetitions), generating bouncing effects on-demand over any content, and even transposing cycles with frames!!

But how can you see these effects? Does the effect you created look good? Or is it not working as you thought? YES, now you can see all generated cycles and frames analytically, in a very beautiful rendition!!
I love what I've achieved here 😊, it's probably THE most beautiful tool I've ever created... Behold the check tool!!

alive-progress check tool

It's awesome if I say so myself, isn't it? And a very complex piece of software I'm proud of, take a look at its code if you'd like.

And the check tool is much more powerful! For instance, you can see the codepoints of the frames!!! And maybe have a glimpse of why this version was so so very hard and complex to make...

alive-progress check tool

In red, you see the grapheme clusters, that occupy one or two "logical positions", regardless of their actual sizes... These are the "Cells" of the new Cell Architecture...
Look how awesome an Emoji Flag is represented:

alive-progress check tool

The flag seems to move so smoothly because it uses "half-characters"! Since it is a wide char, alive-progress knows it will be rendered with "two visible chars", and the animations consider this, but compose with spaces, which occupy only one. When one uses mixed backgrounds, the situation is much more complex...

Factories

The types of factories I've created are:

  • frames: draws any sequence of characters at will, that will be played frame by frame in sequence;
  • scrolling: generates a smooth flow from one side to the other, hiding behind or wrapping upon invisible borders — allows using subjects one at a time, generating several cycles of distinct characters;
  • bouncing: similar to scrolling, but makes the animations bounce back to the start, hiding behind or immediately bouncing upon invisible borders;
  • sequential get a handful of factories and play them one after the other sequentially! allows to intermix them or not;
  • alongside get a handful of factories and play them alongside simultaneously, why choose when you can have them all?! allows to choose the pivot of the animation;
  • delayed: get any other factory and copy it multiple times, increasingly skipping some frames on each one! very cool effects are made here!

For more details please look at their docstrings, which are very complete.

Create your own bars

Customizing bars is nowhere near that involved. Let's say they are "immediate", passive objects. They do not support animations, i.e. they will always generate the same rendition given the same parameters. Remember spinners are infinite generators, capable of generating long and complex sequences.

Well, bars also have a meta factory, use closures to store the styling parameters, and receive additional operating parameters, but then the actual factory can't generate any content by itself. It still needs an extra parameter, a floating-point number between 0 and 1, which is the percentage to render itself.

alive_bar calculates this percentage automatically based on the counter and total, but you can send it yourself when in the manual mode!

Bars also do not have a Bar Compiler, but they do provide the check tool!! 🎉

alive-progress check tool

You can even mix and match wide chars and normal chars! Just like spinners do!

alive-progress check tool

Use and abuse the check tools!! They have more goodies waiting for you, there are even real-time animations!

Create the wildest and coolest animations you can, and send them to me!
I'm thinking about creating some kind of contrib package, with user-contributed spinners and bars!

Wow, if you read everything till here, you should now have a sound knowledge about using alive-progress! 👏
And if you want to know even more, exciting stuff lies ahead!


Maintaining an open source project is hard and time-consuming.
I've put much ❤️ and effort into this.
You can back me up with a donation if you've appreciated my work, thank you 😊 Donate with PayPal button


Advanced

Loop-less use

So, you need to monitor a fixed operation, without any loops?
It'll work for sure! Here is a naive example (we'll do better in a moment):

with alive_bar(4) as bar:
    corpus = read_file(file)
    bar()  # file was read, tokenizing
    tokens = tokenize(corpus)
    bar()  # tokens generated, processing
    data = process(tokens)
    bar()  # process finished, sending response
    resp = send(data)
    bar()  # we're done! four bar calls with `total=4`

It's naive because it assumes all steps take the same amount of time, but actually, each one may take a very different time to complete. Think read_file and tokenize may be extremely fast, which makes the percentage skyrocket to 50%, then stopping for a long time in the process step... You get the point, it can ruin the user experience and create a very misleading ETA.

To improve upon that you need to distribute the steps' percentages accordingly! Since you told alive_bar there were four steps, when the first one was completed it understood 1/4 or 25% of the whole processing was complete... Thus, you need to measure how long your steps actually take and use the manual mode to increase the bar percentage by the right amount at each step!

You can use my other open source project about-time to easily measure these durations! Just try to simulate with some representative inputs, to get better results. Something like:

from about_time import about_time

with about_time() as t_total:          # this about_time will measure the whole time of the block.
    with about_time() as t1            # the other four will get the relative timings within the whole.
        corpus = read_file(file)       # `about_time` supports several calling conventions, including one-liners.
    with about_time() as t2            # see its documentation for more details.
        tokens = tokenize(corpus)
    with about_time() as t3
        data = process(tokens)
    with about_time() as t4
        resp = send(data)

print(f'percentage1 = {t1.duration / t_total.duration}')
print(f'percentage2 = {t2.duration / t_total.duration}')
print(f'percentage3 = {t3.duration / t_total.duration}')
print(f'percentage4 = {t4.duration / t_total.duration}')

There you go! Now you know the relative timings of all the steps, and can use them to improve your original code! Just get the cumulative timings and put them within a manual mode alive_bar!

For example, if the timings you found were 10%, 30%, 20%, and 40%, you'd use 0.1, 0.4, 0.6, and 1.0 (the last one should always be 1.0):

with alive_bar(4, manual=True) as bar:
    corpus = read_big_file()
    bar(0.1)                           # 10%
    tokens = tokenize(corpus)
    bar(0.4)                           # 30% + 10% from previous steps
    data = process(tokens)
    bar(0.6)                           # 20% + 40% from previous steps
    resp = send(data)
    bar(1.)                            # always 1. in the last step

That's it! The user experience and ETA should be greatly improved now.

FPS Calibration

So, you want to calibrate the engine?

The alive-progress bars have cool visual feedback of the current throughput, so you can actually see how fast your processing is, as the spinner runs faster or slower with it.
For this to happen, I've put together and implemented a few fps curves to empirically find which one gave the best feel of speed:

alive-progress fps curves

(interactive version [here](https://www.desmos.com/calculator/ema05elsux))

The graph shows the logarithmic (red), parabolic (blue) and linear (green) curves, these are the ones I started with. It was not an easy task, I've made dozens of tests, and never found one that really inspired that feel of speed I was looking for. The best one seemed to be the logarithmic one, but it reacted poorly with small numbers. I know I could make it work with a few twists for those small numbers, so I experimented a lot and adjusted the logarithmic curve (dotted orange) until I finally found the behavior I expected! It is the one that seemed to provide the best all-around perceived speed changes throughout the whole spectrum from a few to billions... That is the curve I've settled with, and it's the one used in all modes and conditions. In the future and if someone would find it useful, that curve could be configurable.

Well, the default alive-progress calibration is 1,000,000 in bounded modes, i.e., it takes 1 million iterations per second for the bar to refresh itself at 60 frames per second. In the manual unbounded mode, it is 1.0 (100%). Both enable a vast operating range and generally work quite well.

For example, take a look at the effect these very different calibrations have, running the very same code at the very same speed! Notice the feel the spinner passes to the user, is this processing going slow or going fast? And remember that isn't only the spinner refreshing but the whole line, complete with the bar rendition and all widgets, so everything gets smoother or sluggish:

alive-progress calibration

So, if your processing hardly gets to 20 items per second, and you think alive-progress is rendering sluggish, you could increase that sense of speed by calibrating it to let's say 40, and it will be running waaaay faster... It is better to always leave some headroom and calibrate it to something between 50% and 100% more, and then tweak it from there to find the one you like the most! :)

The Pause Mechanism

Oh, you want to suspend it altogether!

Why would you want to pause it, I hear? To get to manually act on some items at will, I say!
Suppose you need to reconcile payment transactions (been there, done that). You need to iterate over thousands of them, detect somehow the faulty ones, and fix them. This fix is not simple nor deterministic, you need to study each one to understand what to do. They could be missing a recipient, or have the wrong amount, or not be synced with the server, etc, it's hard to even imagine all possibilities. Typically you would have to let the detection process run until completion, appending to a list each inconsistency it finds and waiting (potentially a long time) until you can finally start fixing them... You could of course mitigate that by processing in chunks or printing them and acting via another shell or something like that, but those have their own shortcomings... 😓

Now there's a better way! Simply pause the actual detection process for a while! Then you have to wait only until the next fault is found, and act in near real-time!

To use the pause mechanism you must be inside a function, to enable the code to yield the items you want to interact with. You most probably already use one in your code, but in the ipython shell, for example, you probably not. So just wrap your code in a function, then just enter a bar.pause() context!!

def reconcile_transactions():
    qs = Transaction.objects.filter()  # django example, or in sqlalchemy: session.query(Transaction).filter()
    with alive_bar(qs.count()) as bar:
        for transaction in qs:
            if not validate(transaction):
                with bar.pause():
                    yield transaction
            bar()

That's it! Now call this reconcile_transactions function to instantiate the generator and assign it to some variable, and whenever you want the next broken transaction, call next(gen, None)!
The alive-progress bar will start as usual, but as soon as any inconsistency is found, the bar will pause itself and you'll get the prompt back with the transaction! It's almost magic! 😃

In [11]: gen = reconcile_transactions()

In [12]: next(gen, None)
|█████████████████████                   | 105/200 [52%] in 5s (18.8/s, eta: 4s)
Out[12]: Transaction<#123>

You can then use the usual _ and _12 ipython's shortcuts or just assign it directly with trn = next(gen, None), and you're all set to fix that transaction!
When you're done, just reactivate the detection process with the same next as before!! The bar reappears and continues exactly from where it was!!

In [21]: next(gen, None)
|█████████████████████                   | ▁▃▅ 106/200 [52%] in 5s (18.8/s, eta: 4s)

Rinse and repeat, until there are no broken transactions anymore. Nice huh 😄

Forcing animations on non-interactive consoles

Do those astonishing animations refuse to display?

Some terminals occasionally do not report themselves as "interactive", like within shell pipeline commands "|" or background processes. And some never report themselves as interactive, like Pycharm's console and Jupyter notebooks.

When a terminal is not interactive, alive-progress disables all kinds of animations, only printing the final receipt. This is made to avoid spamming a log file or messing up a pipe output with thousands of progress bar updates.

So, when you know it's safe, you can force enable it and see alive-progress in all its glory! Just use the force_tty argument!

with alive_bar(1000, force_tty=True) as bar:
    for i in range(1000):
        time.sleep(.01)
        bar()

The values accepted are:

  • force_tty=True -> enables animations, and auto-detects Jupyter Notebooks!
  • force_tty=False -> disables animations, keeping only the final receipt
  • force_tty=None (default) -> auto select, according to the terminal's tty state

You can also set it system-wide using the config_handler, then you won't need to pass that manually in all alive_bar calls.

Do note that Pycharm's console and Jupyter notebooks are heavily instrumented and thus have more overhead, so the outcome may not be as fluid as you would expect; and on top of that Jupyter notebooks do not support ANSI Escape Codes, so I had to develop some workarounds, to emulate functions like "clear the line" and "clear from cursor".

To see alive_bar animations as I intended, always prefer a full-fledged terminal.

Interesting facts

  • This whole project was implemented in functional style;
  • It uses extensively (and very creatively) Python Closures and Generators, e.g. all spinners are made with cool Generator Expressions! Besides the spinners module, the exhibit module and the spinner_player function are cool examples 😜;
  • Until 2.0, alive-progress hadn't had any dependency. Now it has two: one is about-time (another very cool project of mine if I say so myself), to track the spinner compilation times and generate its human-friendly renditions. The other is grapheme, to detect grapheme cluster breaks (I've opened an issue there asking about the future and correctness of it, and the author guarantees he intends to update the project on every new Unicode version);
  • Also, until 2.0 alive-progress hadn't had a single Python class! Now it has two tiny ones, for very specific reasons (change callables and iterator adapter). I've used Closures extensively here, to create factories and persist parameters, and even alive_bar itself is a function, where I dynamically plug other ones (Python functions have a __dict__ just like classes do).

To do

  • enable multiple simultaneous bars, for nested or multiple activities (this is always requested!)
  • reset a running bar context, a quantifying mode is expected
  • dynamic bar width rendition, listening to changes in terminal size (the whole progress-bar line already truncates when needed, according to terminal size)
  • improve test coverage, currently at 77% branch coverage (but it's hard since it's multi-threaded and includes system hooks)
  • create a contrib system, to allow a simple way to share the coolest users' spinners and bars
  • support colors in spinners and bars (it's very hard, since color codes alter string sizes and it's a mess to synchronize animations then, besides correctly cutting, reversing, and iterating strings while also maintaining colors is very very complex)
  • any other ideas are welcome!
Already done 👍
  • jupyter notebook support (experimental at the moment but awesome, since it works the same as in the terminal, animations and everything 😉)
  • create an unknown mode for bars (without a known total and eta)
  • implement a pausing mechanism
  • change spinner styles
  • change bar styles
  • include a global configuration system
  • create customizable generators for scrolling, bouncing, delayed, and compound spinners
  • create an exhibition for spinners and bars, to see them all in motion
  • include theme support in configuration
  • soft wrapping support
  • hiding cursor support
  • Python logging support
  • exponential smoothing of ETA time series
  • create an exhibition for themes

Python versions End of Life notice

The alive_progress framework starting from version 2.0 does not support Python 2.7 and 3.5 anymore.
If you still need support for them, you can always use the versions 1.x, which are also full-featured and do work very well, just:

❯ pip install -U "alive_progress<2"

If you put this version as a dependency in a requirements.txt file, I strongly recommend putting alive_progress<2, as this will always fetch the latest release of the v1.x series. That way, if I ever release a bug fix for it, you will get it the next time you install it.

Changelog highlights (complete here):

  • 2.1.0: Jupyter notebook support (experimental), Jupyter auto-detection, disable feature and configuration
  • 2.0.0: new system-wide Cell Architecture with grapheme clusters support; super cool spinner compiler and runner; .check() tools in both spinners and bars; bars and spinners engines revamp; new animation modes in alongside and sequential spinners; new builtin spinners, bars, and themes; dynamic showtime with themes, scroll protection and filter patterns; improved logging for files; several new configuration options for customizing appearance; new iterator adapter alive_it; uses time.perf_counter() high-resolution clock; requires Python 3.6+ (and officially supports Python 3.9 and 3.10)
  • 1.6.2: new bar.current() method; newlines get printed on vanilla Python REPL; the bar is truncated to 80 chars on Windows.
  • 1.6.1: fix logging support for Python 3.6 and lower; support logging for file; support for wide Unicode chars, which use 2 columns but have length 1
  • 1.6.0: soft wrapping support; hiding cursor support; Python logging support; exponential smoothing of ETA time series; proper bar title, always visible; enhanced times representation; new bar.text() method, to set situational messages at any time, without incrementing position (deprecates 'text' parameter in bar()); performance optimizations
  • 1.5.1: fix compatibility with Python 2.7 (should be the last one, version 2 is in the works, with Python 3 support only)
  • 1.5.0: standard_bar accepts a background parameter instead of blank, which accepts arbitrarily sized strings and remains fixed in the background, simulating a bar going "over it"
  • 1.4.4: restructure internal packages; 100% branch coverage of all animations systems, i.e., bars and spinners
  • 1.4.3: protect configuration system against other errors (length='a' for example); first automated tests, 100% branch coverage of configuration system
  • 1.4.2: sanitize text input, keeping \n from entering and replicating bar on the screen
  • 1.4.1: include license file in the source distribution
  • 1.4.0: print() enrichment can now be disabled (locally and globally), exhibits now have a real-time fps indicator, new exhibit functions show_spinners and show_bars, new utility print_chars, show_bars gain some advanced demonstrations (try it again!)
  • 1.3.3: further improve stream compatibility with isatty
  • 1.3.2: beautifully finalize bar in case of unexpected errors
  • 1.3.1: fix a subtle race condition that could leave artifacts if ended very fast, flush print buffer when position changes or bar terminates, keep the total argument from unexpected types
  • 1.3.0: new fps calibration system, support force_tty and manual options in global configuration, multiple increment support in bar handler
  • 1.2.0: filled blanks bar styles, clean underflow representation of filled blanks
  • 1.1.1: optional percentage in manual mode
  • 1.1.0: new manual mode
  • 1.0.1: pycharm console support with force_tty, improve compatibility with Python stdio streams
  • 1.0.0: first public release, already very complete and mature

License

This software is licensed under the MIT License. See the LICENSE file in the top distribution directory for the full license text.


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