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eazyml-image-xai provides APIs for explainable AI (XAI)

Project description

EazyML Responsible-AI: Image XAI

Python PyPI package Code Style

EazyML

This package focuses on segmentation prediction, explainability, active learning and online learning for image dataset.

Features

  • Active learning focuses on reducing the amount of labeled data required to train the model while maximizing performance, making it particularly useful when labeling data is expensive or time-consuming. By prioritizing uncertain or diverse examples, active learning accelerates model improvement and enhances efficiency.
  • Online learning is a machine learning approach where models are trained incrementally as data becomes available, rather than using a fixed, pre-existing dataset. This method is well-suited for dynamic environments, enabling real-time updates and adaptability to new patterns or changes in data streams.

Installation

User installation

The easiest way to install augmented intelligence is using pip:

pip install -U eazyml-xai-image

Dependencies

Eazyml Augmented Intelligence requires :

  • tensorflow
  • segmentation-models==1.0.1
  • lime
  • opencv-python
  • flask
  • pyyaml

Usage

It provides following apis :

  1. ez_image_active_learning : This API sorts test images based on explainability scores for the model’s predictions. If a “query count” is specified in the options, it returns the indices and corresponding scores for that number of inputs.

    ez_image_active_learning(
            filenames=['..', '..'],
            model_path='path_of_model',
            predicted_filenames=['path_of_model_prediction_file_names'],
            options={
                "query_count": 10,
                "training_data_path": "path/to/training/data.csv",
                "score_strategy": "weighted-moments",
                "al_strategy": "pool-based",
                "xai_strategy": "gradcam",
                "gradcam_layer": "layer_name",
                "model_num": "1"
            }
        )
    
  2. ez_image_model_evaluate : This API validates a model using provided data and returns the model evaluation.

    ez_image_model_evaluate(
            validation_data_path='path_of_new_data_for_validation',
            model_path='path_of_model',
            options={
                "required_functions": {
                    "loss_fn": '...',
                    "metric_fns": '...',
                    "input_preprocess_fn": '',
                    "label_preprocess_fn": '',
                    "output_process_fn": ''
                    },
                "batch_size": 32,
                "log_file": "path/to/log/file"
            })
    
  3. ez_image_online_learning : This API updates a given model using new training data and saves the updated model. The update process adapts based on the Online Learning strategy or optimizes performance on provided validation data.

    ez_image_online_learning(
            validation_data_path='path_of_new_data_for_validation',
            model_path='path_of_model',
            options={
                "required_functions": {
                    "loss_fn": '...',
                    "metric_fns": '...',
                    "input_preprocess_fn": '',
                    "label_preprocess_fn": '',
                    "output_process_fn": ''
                },
                "batch_size": 32,
                "log_file": "path/to/log/file"
            }
        )
    
  4. ez_xai_image_explain : This API provides confidence scores and image explanations for model predictions. It can process a single image or multiple images, returning explanations for all predictions.

    ez_xai_image_explain(
            filenames=['..', '..'],
            model_path='path_of_model',
            predicted_filenames=['path_of_model_prediction_file_names'],
            options={
                "training_data_path": "...",
                "score_strategy": "weighted-moments",
                "xai_strategy": "gradcam",
                "xai_image_path": "...",
                "gradcam_layer": "layer_name",
                "model_num": "1",
                "required_functions": {...}
            }
        )
    

You can find more information in the documentation.

Useful links, other packages from EazyML family

  • Documentation

  • Homepage

  • If you have questions or would like to discuss a use case, please contact us here

  • Here are the other packages from EazyML suite:

    • eazyml-automl: eazyml-automl provides a suite of APIs for training, optimizing and validating machine learning models with built-in AutoML capabilities, hyperparameter tuning, and cross-validation.
    • eazyml-data-quality: eazyml-data-quality provides APIs for comprehensive data quality assessment, including bias detection, outlier identification, and drift analysis for both data and models.
    • eazyml-counterfactual: eazyml-counterfactual provides APIs for optimal prescriptive analytics, counterfactual explanations, and actionable insights to optimize predictive outcomes to align with your objectives.
    • eazyml-insight: eazyml-insight provides APIs to discover patterns, generate insights, and mine rules from your datasets.
    • eazyml-xai: eazyml-xai provides APIs for explainable AI (XAI), offering human-readable explanations, feature importance, and predictive reasoning.
    • eazyml-xai-image: eazyml-xai-image provides APIs for image explainable AI (XAI).

License

This project is licensed under the Proprietary License.


Maintained by EazyML
© 2025 EazyML. All rights reserved.

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