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Fractal manipulation with LLMs

Project description

tranZoom

Fractal manipulation with LLMs

  • Primary use case: Render ultra-deep Mandelbrot and Julia Set fractal images with arbitrary precision and use AI/LLMs to guide fractal zoom sequences
  • Works with: Local filesystem (PNG output), complex-plane coordinates, local LLM vision models (via LMStudio + transai)
  • Status: Early / experimental — core fractal engine is functional; AI-guided zoom is functional
  • License: Apache-2.0

tranZoom is a Python CLI tool for rendering the Mandelbrot set and Julia Sets at virtually unlimited zoom depth using arbitrary-precision arithmetic (gmpy2), and for navigating fractals using AI. The goal is to be able to zoom so deep that standard double-precision floating point becomes meaningless — tranZoom automatically computes the required precision and renders faithfully at any scale. The tranz zoom ai command uses local LLM vision models (via transai / LMStudio) to evaluate each rendered frame, score nine sectors for visual interest, and autonomously navigate toward the most promising region of the fractal.

Since version 1.0.0 it is a PyPI package: https://pypi.org/project/tranzoom/

Built with:

  • Python 3.12+ with Poetry for dependency management
  • gmpy2 for arbitrary-precision (mpq/mpfr) complex-plane arithmetic
  • Pillow for PNG image output
  • tqdm for progress bars during rendering
  • transai for AI/LLM integration (LMStudio vision models)
  • Typer + Rich for the CLI and terminal output
  • Transcrypto for CLI boilerplate, logging, hashing, and config management
  • Ruff, MyPy, Pyright, typeguard, pre-commit, GitHub Actions for quality and CI

Table of contents

License

Copyright 2026 Daniel Balparda balparda@github.com & Bella Keri BellaKeri@github.com

Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License here.

Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.

Third-party notices

This project includes or depends on third-party software (see requirements.txt and pyproject.toml). Key dependencies include:

Contributions and inbound licensing

Contributions are accepted under the Apache-2.0 license (same as project).

Installation

To install from PyPI:

pip3 install tranzoom

Or install from the repository for development (see Development Setup).

Supported platforms

  • OS: Linux, macOS
  • Architectures: x86_64, arm64
  • Python: 3.12, 3.13, 3.14

Known dependencies (Prerequisites)

Context / Problem Space

What this tool is

tranZoom is a command-line fractal renderer focused on extreme zoom depth. Standard double-precision (float64) floating point has only about 15–16 significant decimal digits, so any zoom below roughly 1e-14 of the full Mandelbrot set will produce incorrect images due to precision loss. tranZoom uses gmpy2.mpq (exact rational arithmetic) to represent frame coordinates and gmpy2.mpfr (arbitrary-precision floating point) for the escape-time computations, automatically determining how many bits of precision are needed for any given zoom level. Starting with version 1.3.0, tranZoom also renders Julia Sets — the same arbitrary-precision engine works for any complex-constant Julia iteration.

Starting with version 1.1.0, tranZoom can use local LLM vision models to autonomously guide the zoom — identifying visually interesting regions, scoring nine sectors of the current frame, and navigating toward the most promising sector at each step. A manual mode is also available for human-guided zoom sessions with the same iterative frame navigation. Both AI and manual zoom support Mandelbrot and Julia Sets.

What this tool is not

  • Not a real-time / interactive fractal explorer (rendering is intentionally CPU-intensive for correctness at depth)
  • Not limited to a fixed precision (unlike most other fractal tools, which cap at float64)
  • Not a cloud-based tool — AI zoom uses local LLM models via LMStudio; no external API calls

Key concepts and terminology

  • Frame: A rectangular region of the complex plane, defined by a center + width. Stored as gmpy2.mpq (exact rationals) to avoid any accumulation of rounding error in coordinates.
  • Precision: The number of bits of mpfr floating-point precision used for escape-time iteration. Computed automatically from the frame size; never needs to be set manually.
  • Magnification: Ratio of the default full-set frame area to the current frame area. 1× = full set; 1G× = zoomed in one billion times.
  • Escape-time iteration: The core Mandelbrot test; larger max_iter produces more detail at high zoom.
  • Interior tests: Fast algebraic checks (main cardioid, period-2 bulb) that skip the iterative test for points known to be inside the set, speeding up rendering significantly.
  • Color palette: Four built-in palettes color the exterior (escaped) pixels. The active palette is chosen with --palette. Positions in the palette are determined by histogram equalization of escape-iteration counts, cycling through the stops 3 times across the range, so the full color range is used regardless of zoom depth or iteration scale. Interior points (never escaped) are always rendered as pure black. Available palettes: blue-to-yellow-to-brown (classic 16-stop gradient, default), lava (16-stop volcanic gradient), electric-ocean (32-stop abyss-to-magenta-to-lavender gradient), sunset (32-stop indigo-to-amber-to-wine gradient).
  • AI zoom session: The tranz zoom ai command starts an iterative loop: render the current frame, draw a 3×3 thirds grid overlay with green sector labels, send the image to a local LLM vision model, parse the 9-sector scoring response, and move the frame center toward the highest-scoring sector. Supports both Mandelbrot (default) and Julia Set fractals via -f/--fractal. The optional --query flag enables targeted search, blending fractal-quality scores with target-match scores. The loop runs until Ctrl+C or --max-steps is reached.
  • Manual zoom session: The tranz zoom manual command runs the same iterative frame navigation but prompts the user for a direction at each step (1–9, numpad layout: 5=center, 8=N, 6=E, etc.) instead of querying an LLM. Supports both Mandelbrot and Julia Set fractals.
  • Sector scoring: Each sector is scored on a 0–100 scale for fractal_score (visual complexity / zoom promise). When targeted search is active, an additional target_match_score (also 0–100) is blended in with a configurable weight.
  • Image metadata: All tranZoom PNG images embed rich metadata (tranzoom:* PNG text chunks) including frame coordinates, magnification, palette, precision, and (for AI/manual sessions) the full LLM evaluation, model parameters, prompts, and zoom step count.

Frame Representation

A Frame is an exact representation of a rectangular region of the complex plane, it is your view into a fractal, the viewport, the part of the plane to be computed and transformed into an image or visualization. It can be printed by the CLI like:

  1. [(-3/4, 0) ± 5/2] A square Frame, centered on $-3/4+0j$ and with width and height of $5/2$, [(center_re, center_im) ± square_side]; or
  2. [(-3/4, 0) ± (5/2, 5/3)] A rectangular Frame, centered on $-3/4+0j$ and with width of $5/2$ (on the real scale) and height of $5/3$ (on the imaginary scale), [(center_re, center_im) ± (width_re, height_im)].

Frames are stored as gmpy2.mpq (exact rationals) to avoid any accumulation of rounding error in coordinates. You can provide a mpq to the CLI as:

  • int or float: for example "23" or "23.98205483423723". If the float is given as a string like shown here it will be passed as-is to mpq and will be converted to arbitrary precision rational, i.e., whatever size fraction is needed to represent all decimal places you gave.
  • rational (recommended): for example " -3/4" or "7916615127197/29003906250000" (note the very important space before the -3/4 that allows the string to not be confused with a parameter by the CLI parser).

Here is an example with mixed use:

" -0.74303" "0.126433" "1611/100000" "0.0176"
will create the Frame:
[(-74303/100000, 126433/1000000) ± (1611/100000, 11/625)]

Here is one example with numbers that would usually NOT be representable with regular float:

" -929554858796448380940239382643467500000001/1250000000000000000000000000000000000000000" "0.13182590420531197049313205638514950000008" "0.00000000000001"
will create the Frame:
[(-929554858796448380940239382643467500000001/1250000000000000000000000000000000000000000,
1647823802566399631164150704814368750001/12500000000000000000000000000000000000000) ± 1/100000000000000]

Frame will keep these numbers exact always, no matter the precision.

For Julia and other uses the Frame can also receive an extra complex number, a point, determined by real and image parts. It will be represented as:

[(center_re, center_im) ± (width_re, height_im) @ (point_re, point_im)]

where the (point_re, point_im) part is added after an @. For example:

[(-3/4, 0) ± (5/2, 5/3) @ (13667/50000, 371/50000)]

Precision

Precision is the number of MPFR (arbitrary-precision floating-point) bits used during fractal iteration. Mandelbrot computation involves repeated complex-plane arithmetic starting from the frame's coordinates; insufficient floating-point precision causes visible artifacts — pixels classified as escaped or non-escaped incorrectly — especially at high magnification where neighboring pixels differ only in the final bits of their coordinates.

TransZoom computes the required precision automatically for every (frame, image size, max-iteration) combination via Frame.Precision() and Image.precision. You never need to set it manually. The estimate is conservative by design: it aims to keep numerical noise far below one output pixel.

The formula is:

$$\text{precision} = \max!\Big( P_{\min},; \lceil \log_2(M / h) \rceil + 2,\lceil \log_2(N+1) \rceil + G \Big)$$

where:

  • $h = \min!\left(\dfrac{\text{frame_width}}{\text{pixel_width}},; \dfrac{\text{frame_height}}{\text{pixel_height}}\right)$ — the smaller complex-plane distance that maps to one output pixel (the tighter precision constraint)
  • $M = \max!\left(|\text{top_re}|,, |\text{bottom_re}|,, |\text{top_im}|,, |\text{bottom_im}|,, 1\right)$ — the largest coordinate magnitude in the frame; because MPFR precision is relative (not absolute), frames far from the origin need more bits to represent fine detail at a given scale
  • $N$ — max_iter, the iteration ceiling for the render; the $2,\lceil\log_2(N+1)\rceil$ term is an iteration guard that grows logarithmically to account for accumulated rounding error over many iterations
  • $G = 88$ — _MPFR_MIN_GUARD_BITS, a fixed safety margin of 88 extra bits beyond the bare minimum to distinguish neighboring pixels
  • $P_{\min} = 140$ — _MPFR_MIN_PRECISION, the floor (≈42 decimal digits), active for low-magnification frames where the base term is small

The maximum allowed precision is _MPFR_MAX_PRECISION = 300 000 bits (≈90 000 decimal digits). Requesting a frame smaller than that limit raises an error. In practice, deep zooms at moderate image sizes stay well below a few thousand bits.

The computed precision is exposed as:

  • Frame.Precision(pixel_width, pixel_height, max_iter=...)int bits
  • Frame.Context(pixel_width, pixel_height, max_iter=...) → ready-to-use gmpy2.context
  • Image.precisionint bits (uses the image's own dimensions and current depth)
  • Image.context → ready-to-use gmpy2.context (same)

Inputs and outputs

Inputs

  • stdin: not used (except the tranz zoom manual direction prompt, which reads from stdin)
  • CLI arguments: center coordinates (real + imaginary parts as strings, for exact mpq conversion), frame width/height, output image dimensions
  • Config file: stored in the OS-native location via transcrypto.utils.config

Outputs

  • stdout: progress info and saved filename
  • stderr: warnings/errors/logs (controlled by --verbose)
  • Output images are saved as <prefix>[-<YYYYMMDDhhmmss>][-<SHA256-20>].png; the prefix defaults to mandel for Mandelbrot and julia for Julia and is set via --prefix; date inclusion is controlled by --date/--no-date; hash (first 20 chars of SHA256, 80 bits) inclusion is controlled by --hash/--no-hash; output directory is set via -o/--out (defaults to the current working directory)

CLI Interface

Quick start

Full / Default

Render the full Mandelbrot set (default, 1024×1024):

$ poetry run tranz --no-date image mandel

1024x1024 Mandelbrot in frame [(-3/4, 0) ± 5/2], precision 80 bits, 1 magnification, AUTO iterations...

Pre: 100%|█████████████████████████████████████████████| 256/256 [00:00<00:00, 1011.19px/s]
Picked depth 1000, histogram [(1, 24), (2, 26), (3, 58), ('...', 86), (57, 2), (222, 2), (100000, 58)]
Img: 100%|█████████████████████████████████████████████| 1048576/1048576 [00:13<00:00, 78912.96px/s]

Generated image 'bd77ee8874aa425422a9ea92867c53937f28534898d49a56b9e4d1dca7b5dd54' in 14.120 s, escape range (1, 1000)
Saved to "mandel-bd77ee8874aa425422a9.png"

As can be seen, the Frame is stored as rational numbers with arbitrary precision, [(-3/4, 0) ± 5/2], so it is guaranteed to be exact (centered in $-0.75+0j$ and with width of $2.5$). It will pick a precision, in bits, which is the internal float representation (mantissa), and will pick the (max) number of iterations for the generation. The magnification here is 1 because it is the full Mandelbrot set. There will be a progress bar, counting the horizontal lines being produced. The generated image data will be hashed and then saved to a PNG on disk.

Render a well-known zoom ("Seahorse", ~155× magnification) at the default 1024×1024:

poetry run tranz image mandel " -0.74303" "0.126433" "0.01611"

Seahorse

See many more examples in Comprehensive example images and zooms.

Palettes

With the --palette flag you can pick your color scheme. We provide the following out of the box:

Flag Value Example
blue-to-yellow-to-brown" (DEFAULT) Seahorse Tail
"lava" Seahorse Tail
"electric-ocean" Seahorse Tail
"sunset" Seahorse Tail

Command structure

tranz [global flags] <subgroup> <command> [args]

tranz global flags

Flag Description Default
--help Show help off
--version Show version and exit off
-v, -vv, -vvv, --verbose Verbosity (nothing=ERROR, -v=WARNING, -vv=INFO, -vvv=DEBUG) ERROR
--color/--no-color Force enable/disable colored output (respects NO_COLOR env var if not provided) --color
--threads Number of worker processes for rendering (1–N, default: all available cores) all cores
-o/--out Output directory path current directory
--prefix Filename prefix None = mandel/julia
--date/--no-date Include date-time (YYYYMMDDhhmmss) in filename --date
--hash/--no-hash Include 20-char SHA256 hash in filename --hash
--iterm/--no-iterm Print image inline in iTerm2 (macOS + iTerm2 only) off
-m/--model LMStudio vision model identifier to load qwen3-vl-32b-instruct@q8_0
--spec-tokens Speculative decoding tokens model default
--seed Random seed for the model random
-c/--context Context window size in tokens model default
-x/--temperature Sampling temperature 0.15
--gpu GPU usage ratio (0.01.0) 0.80
--gpu-layers Number of model layers to offload to GPU -1 (as many as possible)
--fp16 Use FP16 precision off
--mmap/--no-mmap Use memory-mapped model files on
--flash/--no-flash Use flash attention on
--kv-cache Key-value cache size model default
--timeout Model operation timeout in seconds 300.0

tranz image subgroup flags

These flags apply to all tranz image commands and must be placed between image and the sub-command name:

tranz [global flags] image [-w W] [-h H] [-s S] [--iter N] [--palette NAME] [--mark COORD] <mandel|julia|read> [args]
Flag Description Default
-w/--width Output image width in pixels (16–16384) 1024
-h/--height Output image height in pixels (16–16384) 1024
-s/--size Max pixel side; overrides -w/-h and scales the other dimension proportionally to match the frame aspect ratio None (use -w/-h)
-i/--iter Override max iterations (depth); 1000–4294967295 automatic adaptive search
--palette Color palette name blue-to-yellow-to-brown
--mark Draw a crosshair at this complex coordinate, formatted as "(re, im)" None
--mark-color Color of the crosshair; one of black, white, red, green, blue, yellow, cyan, magenta red
--mark-width Line width of the crosshair (1–50) 1

tranz zoom subgroup flags

These flags apply to all tranz zoom commands and must be placed between zoom and the sub-command name:

tranz [global flags] zoom [-w W] [-h H] [-s S] [-f FRACTAL] [-n STEPS] [--julia-re RE] [--julia-im IM] <ai|manual> [args]
Flag Description Default
-w/--width Output image width in pixels (16–16384) 512
-h/--height Output image height in pixels (16–16384) 512
-s/--size Max pixel side; overrides -w/-h and scales proportionally None (use -w/-h)
-f/--fractal Fractal type: mandelbrot or julia mandelbrot
--julia-re Real part of the Julia Set constant c '0.27334'
--julia-im Imaginary part of the Julia Set constant c '0.00742'
-n/--max-steps Max zoom steps; 0 = unlimited (Ctrl+C to stop) 0

CLI Commands Documentation

Auto-generated CLI reference:

tranz image mandel — Render a Mandelbrot image

poetry run tranz [global flags] image [-w WIDTH] [-h HEIGHT] [--iter N] [--palette NAME] mandel [CENTER_RE] [CENTER_IM] [F_WIDTH] [F_HEIGHT]

Positional arguments (all optional; defaults show the full Mandelbrot set):

Argument Description Default
CENTER_RE Real part of the center point (string, for exact precision); or a path to an existing tranZoom PNG — the frame is then read from that image's metadata, and the remaining frame arguments are ignored '-0.75'
CENTER_IM Imaginary part of the center point (string, for exact precision) '0'
F_WIDTH Width of the frame in the real plane '2.5'
F_HEIGHT Height of the frame in the imaginary plane same as F_WIDTH

Image size and render options are set at the tranz image subgroup level (see above).

Tip — re-render from a saved image: pass a tranZoom PNG path as CENTER_RE to pick up exactly the same frame:

poetry run tranz image mandel "/path/to/saved.png"

The command:

  1. Constructs a Frame from the given coordinates using gmpy2.mpq exact arithmetic
  2. Calculates the required mpfr precision automatically based on zoom depth
  3. When --iter is not given, runs an adaptive pre-pass on a tiny 16×16 render to estimate the optimal max_iter for the frame (with a 1.5× safety margin); otherwise uses the value supplied
  4. Renders all pixels in parallel using ProcessPoolExecutor (one process per available CPU core, up to 16), each writing an interleaved subset of rows; results are merged into the final image
  5. Each process uses the escape-time algorithm with cardioid/period-2 bulb interior shortcuts and histogram-equalized color palette
  6. Saves the PNG to <prefix>[-<YYYYMMDDhhmmss>][-<SHA256-20>].png in the working directory (or the path given by -o/--out)

See below for many example outputs.

tranz image julia — Render a Julia Set image

poetry run tranz [global flags] image [-w WIDTH] [-h HEIGHT] [-s SIZE] [--iter N] [--palette NAME] [--mark COORD] julia [POINT_RE] [POINT_IM] [CENTER_RE] [CENTER_IM] [F_WIDTH] [F_HEIGHT]

Positional arguments (all optional; defaults show the "Julia Suzana" set):

Argument Description Default
POINT_RE Real part of the Julia constant c; or a path to an existing tranZoom PNG — the Julia constant is then read from that image's tranzoom:frame:julia_re metadata '0.27334'
POINT_IM Imaginary part of the Julia constant c '0.00742'
CENTER_RE Real part of the frame center '0'
CENTER_IM Imaginary part of the frame center '0'
F_WIDTH Width of the frame in the real plane '1.8'
F_HEIGHT Height of the frame in the imaginary plane '2.2'

Image size and render options are set at the tranz image subgroup level (see above).

Tip — proportional sizing: use -s instead of -w/-h so the output image always matches the frame's aspect ratio:

poetry run tranz image -s 1024 --palette electric-ocean julia

Tip — re-render from a saved image: pass a tranZoom PNG path as POINT_RE to pick up the same Julia constant:

poetry run tranz image julia "/path/to/saved.png"

tranz image read — Read a tranZoom image

poetry run tranz [--iterm] image read <IMAGE_PATH>

Reads an existing tranZoom PNG and pretty-prints all embedded metadata:

$ poetry run tranz image read mandel-38824cdaa58b64496ebf.png

'/path/to/mandel-38824cdaa58b64496ebf.png'
1024x1024 (wxh) / 38824cdaa58b64496ebfd86facf4d4ba4596ab18db95ac97afd643a7a892ff83

{
  "tranzoom:version": "1.3.0",
  "tranzoom:frame:fractal": "mandelbrot",
  "tranzoom:frame:top_re": "-7436499/10000000",
  ...
}

Use --iterm (global flag) to also display the image inline (macOS + iTerm2 only).

tranz zoom ai — AI-guided fractal zoom search

poetry run tranz [global flags] zoom [-w WIDTH] [-h HEIGHT] [-n STEPS] ai \
  [CENTER_RE] [CENTER_IM] [F_WIDTH] [F_HEIGHT] [-q QUERY] [--reason] [--memory N]

Starts an AI-guided iterative zoom session:

  1. Renders the current frame (default: 512×512, configurable via tranz zoom -w/-h)
  2. Draws a 3×3 thirds grid with green sector numbers on top
  3. Sends the image to the LLM vision model with a fractal-scoring prompt
  4. Parses the structured response (9 sector scores)
  5. Navigates the frame toward the highest-scoring sector (by ~1/3 of the frame size)
  6. Saves the image with full LLM evaluation embedded in PNG metadata
  7. Repeats until Ctrl+C or --max-steps is reached

Supports both Mandelbrot (default) and Julia Set fractals: use -f julia (and optionally --julia-re/--julia-im) on the tranz zoom subgroup callback.

Positional frame arguments:

Argument Description Default
CENTER_RE Real part of the starting frame center; or a path to an existing tranZoom PNG (frame is read from image metadata; other frame arguments ignored) '-0.75' (full set)
CENTER_IM Imaginary part of the starting frame center '0'
F_WIDTH Starting frame width '2.5'
F_HEIGHT Starting frame height same as F_WIDTH

Command-level options (on tranz zoom ai only):

Option Description Default
-q/--query Targeted search query added to the scoring prompt None
--reason/--no-reason Include LLM reasoning text per sector off
--memory Number of previous steps in LLM chat history 5

Image size and step count are set at the tranz zoom subgroup level (see above); --iterm is a global flag.

Example — start from the full set, zoom using default model at default 512×512:

poetry run tranz zoom ai

Example — start from the Seahorse Tail, targeted search, 10 steps, show images, custom model:

poetry run tranz --iterm -m "qwen3-vl-32b-instruct@q8_0" -x 0.7 zoom -n 10 ai \
  " -0.7436499" "0.13188204" "0.00073801" \
  -q "spiral"

Example — resume a previous session from a saved tranZoom PNG (frame read from image metadata):

poetry run tranz zoom ai "/path/to/saved.png"

tranz zoom manual — Manually-guided fractal zoom

poetry run tranz [--iterm] zoom [-w WIDTH] [-h HEIGHT] [-n STEPS] manual \
  [CENTER_RE] [CENTER_IM] [F_WIDTH] [F_HEIGHT]

Same iterative rendering loop as tranz zoom ai, but at each step the user types a direction (1–9, numpad layout: 5=center/zoom-in, 8=N, 2=S, 4=W, 6=E, 7=NW, 9=NE, 1=SW, 3=SE) instead of querying an LLM. The evaluation is stored in PNG metadata labeled as HUMAN.

Positional frame arguments work the same way as tranz zoom ai: pass a tranZoom PNG path as CENTER_RE to start the session from the frame stored in that image's metadata.

Supports both Mandelbrot (default) and Julia Set fractals via -f/--fractal on the tranz zoom subgroup callback.

Note: tranz zoom manual does not require the AI model flags; it does not load an LLM.

Comprehensive example images and zooms

You can run all these at once by executing scripts/make_examples.sh.

Full / Default (×1)

Full / Default

Render the full Mandelbrot set with all the default values (image size 1024×1024, centered in $-0.75+0j$ and with width of $2.5$, a good frame that contains the whole set):

$ poetry run tranz --no-date image mandel

1024x1024 Mandelbrot in frame [(-3/4, 0) ± 5/2], precision 140 bits, 1 magnification, AUTO iterations...

Pre: 100%|█████████████████████████████████████████████| 256/256 [00:00<00:00, 962134.25px/s]
Picked depth 1000, histogram [(1, 24), (2, 26), (3, 58), ('...', 86), (57, 2), (222, 2), (100000, 58)]
Img: 100%|█████████████████████████████████████████████| 1048576/1048576 [00:01<00:00, 593762.44px/s]

Generated image 'b934ff27c4e6dede0ecdea8c746ab8f626553ba40e1a402506935e2fd0354f1b' in 3.135 s, escape range (1, 1000)
Saved to "mandel-b934ff27c4e6dede0ecd.png"

This is what tranZoom considers "1 magnification", and will measure other magnifications against this size.

Seahorse (×155)

Seahorse

Render a well-known zoom ("Seahorse") to a 1024×1024 image (default size):

$ poetry run tranz --no-date image mandel " -0.74303" "0.126433" "0.01611"

1024x1024 Mandelbrot in frame [(-74303/100000, 126433/1000000) ± 1611/100000], precision 140 bits, 155.183 magnification, AUTO iterations...

Pre: 100%|█████████████████████████████████████████████| 256/256 [00:00<00:00, 2575.92px/s]
Picked depth 9276, histogram [(24, 7), (25, 14), (26, 14), ('...', 153), (3215, 1), (6184, 1), (100000, 66)]
Img: 100%|█████████████████████████████████████████████| 1048576/1048576 [00:36<00:00, 28721.25px/s]

Generated image 'e70bc149bc2fd3aff8ce4d8aed79c878f373bb5f5ee82fb866584e0cf9858793' in 38.291 s, escape range (24, 9276)
Saved to "mandel-e70bc149bc2fd3aff8ce.png"

Seahorse Tail (×3k)

Seahorse Tail

Render a "Seahorse Tail" at default 1024×1024:

$ poetry run tranz --no-date image mandel " -0.7436499" "0.13188204" "0.00073801"

1024x1024 Mandelbrot in frame [(-7436499/10000000, 3297051/25000000) ± 73801/100000000], precision 140 bits, 3.387 k magnification, AUTO iterations...

Pre: 100%|█████████████████████████████████████████████| 256/256 [00:00<00:00, 101834.39px/s]
Picked depth 1000, histogram [(36, 5), (37, 9), (38, 15), ('...', 224), (415, 1), (464, 1), (649, 1)]
Img: 100%|█████████████████████████████████████████████| 1048576/1048576 [00:05<00:00, 199725.00px/s]

Generated image '9191d8e0946361b47e25dbe4cb21246d3e21b27a2d7dec800b4e25fd699d6814' in 6.797 s, escape range (36, 1000)
Saved to "mandel-9191d8e0946361b47e25.png"

This image is relatively fast to generate (despite the zoom level, it has very little interior regions), so we use it in the unit and integration tests to make sure we are operating consistently. If the hash of this image changes, remember to change it in src/tranzoom/cli/base.py.

Julia Suzana (×1)

Julia Suzana

Render a "Julia Suzana" at -s/--size 1024:

$ poetry run tranz --no-date image -s 1024 --palette electric-ocean julia

838x1024 Julia in frame [(0, 0) ± (9/5, 11/5) @ (13667/50000, 371/50000)], precision ± 140 bits, 1 magnification, AUTO iterations...

Pre: 100%|█████████████████████████████████████████████| 256/256 [00:01<00:00, 175.98px/s]
Picked depth 1000, histogram [(2, 20), (3, 32), (4, 18), ('...', 58), (44, 2), (45, 2), (100000, 124)]
Img: 100%|█████████████████████████████████████████████| 858112/858112 [00:23<00:00, 36878.43px/s]
Julia image '28f147dcfc6190d94bbbfece396c56ae074bb3cae14be5040446dc5fb40984f8' in 25.542 s, escape range (2, 1000)
Saved to "julia-28f147dcfc6190d94bbb.png"

Julia Suzana Wave (×427)

Julia Suzana

Render a "Julia Suzana Wave" at -s/--size 1024:

$ poetry run tranz --no-date -s 1024 image --palette electric-ocean julia "13667/50000" "371/50000" " -313420497/429687500" "0.6567" "0.00544" "0.004"

1024x1024 Julia in frame [(-313420497/429687500, 6567/10000) ± (17/3125, 1/250) @ (13667/50000, 371/50000)], precision ± 140 bits, 426.597 magnification,
AUTO iterations...

Pre: 100%|█████████████████████████████████████████████| 256/256 [00:02<00:00, 121.00px/s]
Picked depth 1819, histogram [(43, 8), (44, 14), (45, 14), ('...', 93), (208, 1), (1213, 1), (100000, 125)]
Img: 100%|█████████████████████████████████████████████| 1048576/1048576 [01:31<00:00, 11424.17px/s]
Julia image '6319af0cc04f56bc974f041cdd68e1fde58ec8f24c9b2aee06bba2b5b60f09ef' in 1.588 min, escape range (43, 1819)
Saved to "julia-6319af0cc04f56bc974f.png"

Powers of 1000

Centering on exactly:

$-0.7436438870371587047521915061147740000000008 + 0.13182590420531197049313205638514950000008j$

or, if you want to use as parameters:

"(-0.7436438870371587047521915061147740000000008, 0.13182590420531197049313205638514950000008)"

We have, for fun, generated a sequence of powers of 1000, demonstrating the amazing power of the infinite. The view size of each image is always $2.5$ times some power of 1000.

Image Bits Depth Size $2.5\times$ Equivalent real-world size / Landmark examples
Zoom 1 $80$ $1$ - $1000$ $1$ $\sim 10^{11}$ light-years = Observable-universe scale, about $93$ billion light-years across.
Zoom 10^-3 $86$ $32$ - $1000$ $10^{-3}$ $\sim 10^{8}$ light-years = Cosmic-web / supercluster scale: galaxy walls, voids.
Zoom 10^-6 $96$ $219$ - $7348$ $10^{-6}$ $\sim 10^{5}$ light-years = Galaxy scale: the Milky Way is about $100{,}000$ light-years across.
Zoom 10^-9 $106$ $1006$ - $2664$ $10^{-9}$ $\sim 100$ light-years = Local stellar-neighborhood scale: nearby star groups, nebulae, and star-forming regions.
Zoom 10^-12 $116$ $1974$ - $3901$ $10^{-12}$ $\sim 0.1$ light-year = Outer-solar-system scale: comparable to the distant Oort-cloud region.
Zoom 10^-15 $126$ $4132$ - $93051$ $10^{-15}$ $\sim 10^{9},\mathrm{km}$ = Inner-to-middle solar-system scale: comparable to giant-planet orbital distances.
Zoom 10^-18 $136$ $8035$ - $11740$ $10^{-18}$ $\sim 10^{6},\mathrm{km}$ = Star / giant-planet scale: the Sun’s diameter is about $1.39 \times 10^{6},\mathrm{km}$.
Zoom 10^-21 $146$ $9033$ - $15673$ $10^{-21}$ $\sim 10^{3},\mathrm{km}$ = Planetary-geography scale: large countries, small moons, continent-scale weather systems.
Zoom 10^-24 $156$ $13074$ - $33133$ $10^{-24}$ $\sim 1,\mathrm{km}$ = Human landscape scale: mountains, city districts, bridges, runways.
Zoom 10^-27 $166$ $17130$ - $32103$ $10^{-27}$ $\sim 1,\mathrm{m}$ = Human/body scale: a person, table, doorway, musical instrument.
Zoom 10^-30 $176$ $26939$ - $61788$ $10^{-30}$ $\sim 1,\mathrm{mm}$ = Small visible-object scale: sand grains, seeds, insect parts, raindrops.
Zoom 10^-33 $186$ $58119$ - $205876$ $10^{-33}$ $\sim 1,\mu\mathrm{m}$ = Cell/microbe scale: bacteria, organelles, and wavelengths near visible/infrared light.
Zoom 10^-36 $196$ $65240$ - $67722$ $10^{-36}$ $\sim 1,\mathrm{nm}$ = Molecule scale: DNA width, proteins, small molecular machines.
Zoom 10^-39 $206$ $65327$ - $67968$ $10^{-39}$ $\sim 1,\mathrm{pm}$ = Deep atomic/electron-cloud scale: smaller than typical atomic diameters, which are around $10^{-10},\mathrm{m}$.
Zoom 10^-42 $216$ $65524$ - $70198$ $10^{-42}$ $\sim 1,\mathrm{fm}$ = Atomic nucleus / proton scale: the proton rms charge radius is about $8.4075 \times 10^{-16},\mathrm{m}$.
Zoom 10^-45 $226$ $65799$ - $69258$ $10^{-45}$ $\sim 1,\mathrm{am}$ = Quarks and leptons: elementary particles in the Standard Model

Configuration

Config files are stored in OS-native locations via transcrypto.utils.config:

  • macOS: ~/Library/Application Support/tranzoom/config.bin
  • Linux: ~/.config/tranzoom/config.bin
  • Windows: %APPDATA%\tranzoom\config.bin

Color and formatting

The CLI respects the NO_COLOR environment variable and the --no-color / --color flag. Rich markup is used for console output — see Rich markup conventions.

Exit codes

Code Meaning
0 Success
1 Generic failure
2 CLI usage error (bad arguments)

Project Design

Modules / packages

Component Responsibility
tranz.py tranz CLI entry point — global options, tranz markdown
cli/base.py Shared CLI options, defaults, DEFAULT_MANDELBROT_FRAME
cli/imagecommand.py tranz image mandel, tranz image julia, and tranz image read command implementations
cli/zoomcommand.py tranz zoom ai and tranz zoom manual command implementations
core/fractal.py Mandelbrot() and Julia() renderers — fractal math
core/frame.py Frame class, Fractal enum, and base coordinate math
core/image.py Image class; image utilities, overlays, iTerm2 printing, metadata helpers
core/palette.py Palette definitions and color mapping
core/queries.py AI prompt templates and Pydantic models for structured LLM responses
core/ai.py ZoomLoop() and ManualLoop() — iterative AI and manual zoom session logic
utils/template.py Template for new utility modules

Performance characteristics

Rendering is CPU-bound. Time scales roughly with width × height × max_iter × precision_overhead. For deep zooms, higher precision means slower mpfr arithmetic (roughly linear in the number of bits). For very deep zooms (>100 bits precision), rendering a 256×256 image at 50k iterations can take minutes to hours. The tqdm progress bar shows per-row speed.

The Mandelbrot() function pre-computes all X-axis mpfr values once per image and reuses them across rows, which is an important optimization since mpfr construction is expensive at high precision.

Development Instructions

File structure

.
├── CHANGELOG.md                  ⟸ latest changes/releases
├── LICENSE
├── Makefile
├── tranz.md                      ⟸ auto-generated CLI doc (by `make docs` or `make ci`)
├── poetry.lock                   ⟸ maintained by Poetry; do not manually edit
├── pyproject.toml                ⟸ most important configurations live here
├── README.md                     ⟸ this documentation
├── SECURITY.md                   ⟸ security policy
├── requirements.txt
├── .editorconfig
├── .gitignore
├── .pre-commit-config.yaml       ⟸ pre-submit configs
├── .github/
│   ├── copilot-instructions.md
│   ├── dependabot.yaml
│   └── workflows/
│       ├── ci.yaml
│       └── codeql.yaml
├── .vscode/
│   ├── extensions.json
│   └── settings.json
├── scripts/
│   ├── make_examples.sh          ⟸ renders example images at all zoom levels to test/data/images
│   └── template.py               ⟸ template for standalone executable scripts
├── src/
│   └── tranzoom/
│       ├── __init__.py           ⟸ version lives here
|       ├── tranz.py              ⟸ TranZoom `tranz` CLI entry point
│       ├── py.typed
│       ├── cli/
│       │   ├── __init__.py
│       │   ├── base.py           ⟸ shared CLI options, frame defaults, config dataclasses
│       │   ├── imagecommand.py   ⟸ `tranz image mandel` and `tranz image read` implementations
│       │   └── zoomcommand.py    ⟸ `tranz zoom ai` and `tranz zoom manual` implementations
│       ├── core/
│       │   ├── __init__.py
│       │   ├── ai.py             ⟸ ZoomLoop() and ManualLoop() — zoom session logic
│       │   ├── fractal.py        ⟸ Mandelbrot() renderer
│       │   ├── frame.py          ⟸ Frame class, Fractal enum; base for computation
│       │   ├── image.py          ⟸ Image class, overlays, iTerm2, metadata helpers
│       │   ├── palette.py        ⟸ Palette definitions
│       │   └── queries.py        ⟸ AI prompt templates and Pydantic response models
│       └── utils/
│           ├── __init__.py
│           └── template.py       ⟸ template for new utility modules
├── tests/
│   ├── tranz_test.py
│   ├── cli/
│   │   ├── base_test.py          ⟸ seahorse tail hash regression test
│   │   └── imagecommand_test.py
│   └── data/
│       └── images/               ⟸ example renders at 7 zoom levels and powers of 1000
└── tests_integration/
    └── test_installed_cli.py

Development Setup

Install Python

On Linux:

sudo apt-get update && sudo apt-get upgrade
sudo apt-get install git python3 python3-dev python3-venv build-essential software-properties-common
sudo add-apt-repository ppa:deadsnakes/ppa && sudo apt-get update
sudo apt-get install python3.12  # or python3.13 or python3.14

On macOS:

brew update && brew upgrade && brew cleanup -s
brew install git python@3.12  # or python3.13 or python3.14

Note: gmpy2 requires the GMP, MPFR, and MPC C libraries. On macOS: brew install gmp mpfr mpc. On Linux: sudo apt-get install libgmp-dev libmpfr-dev libmpc-dev.

Install Poetry (recommended: pipx)

Poetry reference.

python3 -m pip install --user pipx
python3 -m pipx ensurepath
pipx install poetry
poetry --version

If you will use PyPI to publish:

poetry config pypi-token.pypi <TOKEN>

Make sure .venv is local

poetry config virtualenvs.in-project true

Get the repository

git clone https://github.com/balparda/tranzoom.git
cd tranzoom

Create environment and install dependencies

poetry env use python3.12    # creates the .venv with the correct Python version
poetry sync                  # install all dependencies from poetry.lock
poetry env info              # verify environment
poetry run tranz --help      # smoke test
make ci                      # should pass on clean repo

To activate the environment:

source .venv/bin/activate
# ... work ...
deactivate

Optional: VSCode setup

This repo ships a .vscode/settings.json configured to use ./.venv/bin/python, run pytest, format with Ruff, and use Google-style docstrings. Recommended extensions:

  • Python (ms-python.python)
  • Python Environments (ms-python.vscode-python-envs)
  • Python Debugger (ms-python.debugpy)
  • Pylance (ms-python.vscode-pylance)
  • Mypy Type Checker (ms-python.mypy-type-checker)
  • Ruff (charliermarsh.ruff)
  • autoDocstring (njpwerner.autodocstring)
  • Code Spell Checker (streetsidesoftware.code-spell-checker)
  • markdownlint (davidanson.vscode-markdownlint)
  • Markdown All in One (yzhang.markdown-all-in-one)
  • GitHub Copilot (github.copilot)

Build

poetry build   # builds wheel + sdist in dist/

Run locally

poetry run tranz --help
poetry run tranz image mandel    # full set, 1024×1024

Testing

Unit tests / Coverage

make test               # plain test run (no integration tests)
make integration        # run the integration tests
poetry run pytest -vvv  # verbose

make cov  # coverage: poetry run pytest --cov=src --cov-report=term-missing

Test tags defined in pyproject.toml:

Tag Meaning
slow test takes > 1s
flaky known flaky test — avoid
stochastic may fail with very low probability

Filter by tag:

poetry run pytest -vvv -m slow

Find slow tests:

poetry run pytest -vvv -q --durations=20

Find flaky tests:

make flakes  # runs all tests 100 times

Instrumenting your code

source .venv/bin/activate
pyinstrument -r html -o profile.html -- $(which mandel) gen " -0.74303" "0.126433" "0.01611"
deactivate

Integration / e2e tests

Integration tests build a wheel, install it into a fresh temporary virtualenv, and run the console scripts. Run with:

make integration
# or:
poetry run pytest -m integration -q

Linting / formatting / static analysis

make lint  # poetry run ruff check .
make fmt   # poetry run ruff format .

poetry run ruff format --check --diff .  # check formatting without rewriting

Type checking

make type  # poetry run mypy src tests tests_integration

Documentation updates

CLI reference is auto-generated from the CLI source code:

make docs  # regenerates tranz.md
# or:
poetry run tranz markdown > tranz.md

Always run make ci before committing — it runs linting, type checking, tests, and regenerates docs and requirements.txt.

Versioning and releases

Versioning scheme

  • Patch: bug fixes / docs / small improvements.
  • Minor: new features or non-breaking changes.
  • Major: breaking changes (command renames, incompatible output formats).

See: CHANGELOG.md

Updating versions

Bump project version (patch/minor/major)
poetry version minor   # 1.0.0 → 1.1.0
poetry version patch   # 1.0.0 → 1.0.1
poetry version 1.2.3   # explicit version

Also update src/tranzoom/__init__.py to match!

Update dependency versions
poetry update                      # update poetry.lock to latest compatible versions
poetry cache clear PyPI --all      # if cache issues
poetry add "pkg>=1.2.3"            # add prod dependency
poetry add -G dev "pkg>=1.2.3"     # add dev dependency
Exporting the requirements.txt file
make req  # poetry export --format requirements.txt --without-hashes --output requirements.txt
CI and docs
make ci  # runs lint, type check, tests, docs, requirements — do this before every commit
Git tag and commit
git commit -a -m "release version 1.0.0"
git tag 1.0.0
git push && git push --tags
Publish to PyPI
poetry config pypi-token.pypi <TOKEN>  # once, if not already configured
poetry build
poetry publish

Security

Please refer to the security policy in SECURITY.md for supported versions and how to report vulnerabilities.

The project uses CodeQL (weekly + on every push) and dependabot (weekly dependency updates) to keep the codebase secure and up-to-date.

Troubleshooting

Enable debug output

poetry run tranz -vvv image mandel ...   # DEBUG level logging

gmpy2 installation issues

On macOS, gmpy2 requires the GMP, MPFR, and MPC C libraries. Install them first:

brew install gmp mpfr mpc
poetry sync

On Linux:

sudo apt-get install libgmp-dev libmpfr-dev libmpc-dev
poetry sync

Rendering is very slow

  • Reduce image size: tranz -w 256 -h 256 image mandel ...
  • max_iter is auto-scaled with zoom depth; very deep zooms are inherently slow
  • Very high precision (> 1000 bits, i.e., zoom > ~10^300) will always be slow — this is expected

Thanks! Daniel Balparda & Bella Keri

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