Skip to main content

ablate turns deep learning experiments into structured, human-readable reports.

Project description

ablate turns deep learning experiments into structured, human-readable reports.

ablate

ablate PyPI Version ablate Python Versions ablate GitHub License

ablate turns deep learning experiments into structured, human-readable reports. It is built around five principles:

  • composability: sources, queries, blocks, and exporters can be freely combined

  • immutability: query operations never mutate runs in-place, enabling safe reuse and functional-style chaining

  • extensibility: sources, blocks, and exporters are designed to be easily extended with custom implementations

  • readability: reports are generated with humans in mind: shareable, inspectable, and format-agnostic

  • minimal friction: no servers, no databases, no heavy integrations: just Python and your existing logs

Currently, ablate supports the following sources and exporters:

Installation

Install ablate using pip:

pip install ablate

The following optional dependencies can be installed to enable additional features:

  • ablate[clearml] to use ClearML as an experiment source

  • ablate[mlflow] to use MLflow as an experiment source

  • ablate[tensorboard] to use TensorBoard as an experiment source

  • ablate[wandb] to use WandB as an experiment source

  • ablate[jupyter] to use ablate in a Jupyter notebook

Quickstart

ablate is built around five composable modules:

Creating a Report

To create your first Report, define one or more experiment sources. For example, the built in Mock can be used to simulate runs:

from ablate.sources import Mock

source = Mock(
    grid={"model": ["vgg", "resnet"], "lr": [0.01, 0.001]},
    num_seeds=2,
)

Each run in the mock source has accuracy, f1, and loss metrics, along with a seed parameter as well as the manually defined parameters model and lr. Next, the runs can be loaded and processed using functional-style queries to e.g., sort by accuracy, group by seed, aggregate the results by mean, and finally collect all results into a single list:

from ablate.queries import Metric, Param, Query

runs = (
    Query(source.load())
    .sort(Metric("accuracy", direction="max"))
    .groupdiff(Param("seed"))
    .aggregate("mean")
    .all()
)

Now that the runs are loaded and processed, a Report comprising multiple blocks can be created to structure the content:

from ablate import Report
from ablate.blocks import H1, Table

report = Report(runs)
report.add(H1("Model Performance"))
report.add(
    Table(
        columns=[
            Param("model", label="Model"),
            Param("lr", label="Learning Rate"),
            Metric("accuracy", direction="max", label="Accuracy"),
            Metric("f1", direction="max", label="F1 Score"),
            Metric("loss", direction="min", label="Loss"),
        ]
    )
)

Finally, the report can be exported to a desired format such as Markdown:

from ablate.exporters import Markdown

Markdown().export(report)

This will produce a report.md file with the following content:

# Model Performance

| Model   |   Learning Rate |   Accuracy |   F1 Score |    Loss |
|:--------|----------------:|-----------:|-----------:|--------:|
| resnet  |           0.01  |    0.94285 |    0.90655 | 0.0847  |
| vgg     |           0.01  |    0.92435 |    0.8813  | 0.0895  |
| resnet  |           0.001 |    0.9262  |    0.8849  | 0.0743  |
| vgg     |           0.001 |    0.92745 |    0.90875 | 0.08115 |

Combining Sources

To compose multiple sources, they can be added together using the + operator as they represent lists of Run objects:

runs1 = Mock(...).load()
runs2 = Mock(...).load()

all_runs = runs1 + runs2 # combines both sources into a single list of runs

Selector Expressions

ablate selectors are lightweight expressions that access attributes of experiment runs, such as parameters, metrics, or IDs. They support standard Python comparison operators and can be composed using logical operators to define complex query logic:

accuracy = Metric("accuracy", direction="max")
loss = Metric("loss", direction="min")

runs = (
    Query(source.load())
    .filter((accuracy > 0.9) & (loss < 0.1))
    .all()
)

Selectors return callable predicates, so they can be used in any query operation that requires a condition. All standard comparisons are supported: ==, !=, <, <=, >, >=. Logical operators & (and), | (or), and ~ (not) can be used to combine expressions:

from ablate.queries import Id

select = (Param("model") == "resnet") | (Param("lr") < 0.001) # select resnet or LR below 0.001

exclude = ~(Id() == "run-42") # exclude a specific run by ID

runs = Query(source.load()).filter(select & exclude).all()

Functional Queries

ablate queries are functionally pure such that intermediate results are not modified and can be reused:

runs = Mock(...).load()

sorted_runs = Query(runs).sort(Metric("accuracy", direction="max"))

filtered_runs = sorted_runs.filter(Metric("accuracy", direction="max") > 0.9)

sorted_runs.all() # still contains all runs sorted by accuracy
filtered_runs.all() # only contains runs with accuracy > 0.9

Composing Reports

By default, ablate reports populate blocks based on the global list of runs passed to the report during initialization. To create more complex reports, blocks can be populated with a custom list of runs using the runs parameter:

report = Report(sorted_runs.all())
report.add(H1("Report with Sorted Runs and Filtered Runs"))
report.add(H2("Sorted Runs"))
report.add(
    Table(
        columns=[
            Param("model", label="Model"),
            Param("lr", label="Learning Rate"),
            Metric("accuracy", direction="max", label="Accuracy"),
        ]
    )
)
report.add(H2("Filtered Runs"))
report.add(
    Table(
        runs = filtered_runs.all(), # use filtered runs only for this block
        columns=[
            Param("model", label="Model"),
            Param("lr", label="Learning Rate"),
            Metric("accuracy", direction="max", label="Accuracy"),
        ]
    )
)

Extending ablate

ablate is designed to be extensible, allowing you to create custom sources, blocks, and exporters by implementing their respective abstract classes.

To contribute to ablate, please refer to the contribution guide.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

ablate-0.2.3.tar.gz (350.9 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

ablate-0.2.3-py3-none-any.whl (27.9 kB view details)

Uploaded Python 3

File details

Details for the file ablate-0.2.3.tar.gz.

File metadata

  • Download URL: ablate-0.2.3.tar.gz
  • Upload date:
  • Size: 350.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.8.18

File hashes

Hashes for ablate-0.2.3.tar.gz
Algorithm Hash digest
SHA256 6a0155f778f63a99fcd33ca865cb49dc1b946c2dae36e7c255ac3e37ddbfabd0
MD5 41f4dfd0922a6ea9c3eec8c3b0d18615
BLAKE2b-256 8ce76d1e4104086381c394e5c5a8123a1f56556dded5c3bd21d94c3cf6f362c4

See more details on using hashes here.

File details

Details for the file ablate-0.2.3-py3-none-any.whl.

File metadata

  • Download URL: ablate-0.2.3-py3-none-any.whl
  • Upload date:
  • Size: 27.9 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.8.18

File hashes

Hashes for ablate-0.2.3-py3-none-any.whl
Algorithm Hash digest
SHA256 66b4ad8537e9607e7fcd6e46532208697d2280d028fa6176ff0d8405495a5d4d
MD5 ff8fd3a146935f4cd4948f5006993927
BLAKE2b-256 a02583cced7b5e742f25163ceda21afb34d71185cd148c8c23e8c511cf8ed826

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page