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This code can be used to generate simulated NIRCam, NIRISS, or FGS data

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kjbrooks/mirage

 
 

MIRaGe = Multi Instrument Ramp Generator

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This repository contains code that can be used to generate simulated NIRCam, NIRISS, or FGS data. These data can be in one of two formats:

raw - No calibrations applied. Detector level effects such as non-linearity, superbias, etc are still present.

linearized - Detector level effects have been removed, and data have been linearized, but are still in ramp format, where multiple non-destructive reads of the detector are present.

Installation and Documentation

The main documentation for Mirage is located on ReadTheDocs. Detailed installation instructions can be found there.

Examples

See the notebooks in the examples subdirectory. There are notebooks for imaging simulations, WFSS simulations, moving target (non-sidereal) simulations, and simulations of OTE commissioning.

Citation

If you find this package useful, please consider citing the Zenodo record using the DOI badge above. Please find additional citation instructions in CITATION.

Contributing

Prior to contributing to the mirage development, please review our style guide.

Contibutors should use a "forking workflow" when making contributions to the project.

Code of Conduct

Users and contributors to the mirage repository should adhere to the Code of Conduct. Any issues or violations pertaining to the Code of Conduct should be brought to the attention of a mirage team member or to conduct@stsci.edu.

Questions

For any questions about the mirage project or its software or documentation, please open an Issue.

Current Development Team

Acknowledgments:

Mirage is based on a NIRISS data simulator originally written by Kevin Volk.

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This code can be used to generate simulated NIRCam, NIRISS, or FGS data

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