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284 lines
11 KiB
Markdown
284 lines
11 KiB
Markdown
# Purpose
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If [pynwb](https://pynwb.readthedocs.io/en/stable/) already exists,
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why `nwb_linkml`?
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Two kinds of reasons:
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- using NWB as a test case for a larger infrastructure project, and
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- potentially improving the state of NWB itself.
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## A Stepping Stone...
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In the
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(word on how and why we are focusing on NWB as part of a larger project)
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## Interoperable Schema Language
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**We want to make NWB a seed format in an interoperable, peer-to-peer
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graph of research data**
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NWB is written with its own [{index}`schema language`](https://schema-language.readthedocs.io/en/latest/)
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(And see [the next section](nwb) for more information). It seems to have been created
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primarily because other schema languages at the time couldn't easily handle array
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specifications with fine-grained control of numerical format and shape.
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The schema language is now relatively stable and does what it's designed to do,
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but it being a domain-specific language rather than a general one makes it very
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difficult to use NWB data alongside other formats.
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`nwb_linkml` translates NWB to [linkml](https://linkml.io/), a schema language
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for declaring **{index}`Linked Data`** schema. Linked Data schema consist of
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semantic triplets, rather than an object hierarchy, and can make use of
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**controlled vocabularies** to reuse terms and classes from other
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schemas and ontologies.
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## Storage Format Flexibility
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**We want to use NWB in lots of different ways**
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NWB as a format is designed with the intention for use with multiple
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storage backends, but patterns and features of HDF5 have made their way
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into the schema and the schema language, making direct translation to
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other storage systems difficult. This is a problem for practical usage of
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NWB data, since HDF5 files don't lend themselves to querying across many
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files - eg. to find datasets that have some common piece of metadata, one
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would have to download them all in full first. Having a whole hierarchy of
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data in a single file is convenient in some ways, but this also makes them
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difficult to share or split between computers which is a common need
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when collecting data across multiple instruments and computers.
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NWB, currently, lends itself towards being an **archival** format --- where
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data is converted as a last step before publishing --- rather than a
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**experimental** or **computational** format that can be used as a convenient
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container of heterogeneous data during collection and analysis.
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The LinkML team has also made a large number of [generators](https://linkml.io/linkml/generators/index.html)
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to convert LinkML schema to different formats, including JSON Schema, GraphQL, SPARQL,
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SQL/SQLAlchemy, and {mod}`~nwb_linkml.generators.pydantic`.
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Since we have to use LinkML in a somewhat nonstandard way to accommodate
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NWB's arrays, references, and naming conventions, these generators won't be
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immediately available for use, but with some minor modification we should
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be able to get NWB out of HDF5 files and into other formats.
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## Zero-code Schema Extensions
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**We want every researcher and every tool to have their own schemas.**
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pynwb makes use of NWB Schema internally, but [schema extensions](https://pynwb.readthedocs.io/en/stable/tutorials/general/extensions.html#sphx-glr-tutorials-general-extensions-py)
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require a decent amount of adjoining code to use. The underlying hdmf library
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is relatively complex, and so to use a schema extension one must also
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program the python classes or mappings to python class attributes
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needed to use them, configuration for getter and setter methods,
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i/o routines, etc. Since schema extensions are relatively hard to make,
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to accommodate heterogeneous data NWB uses `DynamicTable`s, which can be
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given arbitrary new columns.
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The loose coupling between schema and code has a few impacts:
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- Many labs end up with their own independent software
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library for converting their data into NWB
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- Interoperability and meta-analysis suffer because terms are defined
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ad-hoc and with little discoverability.
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- Linking and versioning schema is hard, as the schema language doesn't
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support it, and the code needs to be kept in-sync with the schema
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- It's hard for tool-builders to implement direct export to NWB while
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maintaining flexibility in their libraries
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Instead by making all models directly generated from schema, and by
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making use of pydantic and other validation and metaprogramming tools,
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we want to make it possible for every experiment to have its own schema
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extension. We want to make experimental data part of the normal social
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process of sharing results --- translation: we want to be able to
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put our work in conversation with other related work!
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## Pythonic API
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**We want NWB to be as simple to use as a python dataclass.**
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We think there is room for improvement in NWB's API:
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`````{tab-set}
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````{tab-item} pynwb
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From the ndx-miniscope extension:
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The extension code is intended to be used like this:
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```python
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from pynwb import NWBFile, NWBHDF5IO
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from pynwb.image import ImageSeries
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from natsort import natsorted
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from ndx_miniscope.utils import (
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add_miniscope_device,
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get_starting_frames,
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get_timestamps,
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read_miniscope_config,
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read_notes,
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)
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nwbfile = NWBFile(...)
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# Load the miscroscope settings
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miniscope_folder_path = "C6-J588_Disc5/15_03_28/Miniscope/"
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miniscope_metadata = read_miniscope_config(folder_path=miniscope_folder_path)
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# Create the Miniscope device with the microscope metadata and add it to NWB
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add_miniscope_device(nwbfile=nwbfile, device_metadata=miniscope_metadata)
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# Load the behavioral camera settings
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behavcam_folder_path = "C6-J588_Disc5/15_03_28/BehavCam_2/"
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behavcam_metadata = read_miniscope_config(folder_path=behavcam_folder_path)
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# Create the Miniscope device with the behavioral camera metadata and add it to NWB
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add_miniscope_device(nwbfile=nwbfile, device_metadata=behavcam_metadata)
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save_path = os.path.join(folder_path, "test_out.nwb")
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with NWBHDF5IO(save_path, "w") as io:
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io.write(nwbfile)
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```
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That uses these underlying functions to handle validation,
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coercion, and add to the NWB file:
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```python
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def add_miniscope_device(nwbfile: NWBFile, device_metadata: dict) -> NWBFile:
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"""
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Adds a Miniscope device based on provided metadata.
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Can be used to add device for the microscope and the behavioral camera.
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Parameters
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----------
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nwbfile : NWBFile
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The nwbfile to add the Miniscope device to.
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device_metadata: dict
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The metadata for the device to be added.
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Returns
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-------
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NWBFile
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The NWBFile passed as an input with the Miniscope added.
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"""
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device_metadata_copy = deepcopy(device_metadata)
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assert "name" in device_metadata_copy, "'name' is missing from metadata."
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device_name = device_metadata_copy["name"]
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if device_name in nwbfile.devices:
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return nwbfile
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roi = device_metadata_copy.pop("ROI", None)
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if roi:
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device_metadata_copy.update(ROI=[roi["height"], roi["width"]])
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device = Miniscope(**device_metadata_copy)
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nwbfile.add_device(device)
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return nwbfile
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def add_miniscope_image_series(
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nwbfile: NWBFile,
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metadata: dict,
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timestamps: np.ndarray,
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image_series_index: int = 0,
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external_files: Optional[List[str]] = None,
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starting_frames: Optional[List[int]] = None,
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) -> NWBFile:
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"""
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Adds an ImageSeries with a linked Miniscope device based on provided metadata.
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The metadata for the device to be linked should be stored in metadata["Behavior]["Device"].
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Parameters
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----------
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nwbfile : NWBFile
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The nwbfile to add the image series to.
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metadata: DeepDict
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The metadata storing the necessary metadata for creating the image series and linking it to the appropriate device.
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timestamps : np.ndarray
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The timestamps for the behavior movie source.
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image_series_index : int, optional
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The metadata for ImageSeries is a list of the different image series to add.
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Specify which element of the list with this parameter.
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external_files : List[str], optional
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List of external files associated with the ImageSeries.
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starting_frames : List[int], optional
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List of starting frames for each external file.
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Returns
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-------
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NWBFile
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The NWBFile passed as an input with the ImageSeries added.
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"""
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assert "Behavior" in metadata, "The metadata for ImageSeries and Device should be stored in 'Behavior'."
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assert (
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"ImageSeries" in metadata["Behavior"]
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), "The metadata for ImageSeries should be stored in metadata['Behavior']['ImageSeries']."
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assert (
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"Device" in metadata["Behavior"]
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), "The metadata for Device should be stored in metadata['Behavior']['Device']."
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image_series_kwargs = deepcopy(metadata["Behavior"]["ImageSeries"][image_series_index])
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image_series_name = image_series_kwargs["name"]
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if image_series_name in nwbfile.acquisition:
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return nwbfile
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# Add linked device to ImageSeries
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device_metadata = metadata["Behavior"]["Device"][image_series_index]
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device_name = device_metadata["name"]
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if device_name not in nwbfile.devices:
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add_miniscope_device(nwbfile=nwbfile, device_metadata=device_metadata)
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device = nwbfile.get_device(name=device_name)
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image_series_kwargs.update(device=device)
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assert external_files, "'external_files' must be specified."
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if starting_frames is None and len(external_files) == 1:
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starting_frames = [0]
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assert len(starting_frames) == len(
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external_files
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), "The number of external files must match the length of 'starting_frame'."
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image_series_kwargs.update(
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format="external",
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external_file=external_files,
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starting_frame=starting_frames,
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timestamps=H5DataIO(timestamps, compression=True),
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)
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image_series = ImageSeries(**image_series_kwargs)
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nwbfile.add_acquisition(image_series)
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```
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````
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````{tab-item} nwb_linkml
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An example of how we want `nwb_linkml` to work.
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There are no additional underlying classes or functions to be written,
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since the pydantic models are directly generated from the schema extension,
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and `to` and `from` methods are generic for different types of
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input data (json files, videos). Tool developers can distribute
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NWB schema that map 1:1 to their output formats, decreasing the need
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for conversion code.
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```python
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from pathlib import Path
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from nwb_linkml.models.miniscope import Miniscope
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from nwb_linkml.models.core import ImageSeries, NWBFile
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# Load data for miniscope and videos
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miniscope = Miniscope.from_json('config.json')
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videos = []
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for video_path in Path('./my_data/').glob('*.avi'):
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video = ImageSeries.from_video(video_path)
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video.device = miniscope
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videos.append(video)
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# add to file
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file = NWBFile.from_hdf('my_data.nwb')
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file.devices['my_miniscope'] = miniscope
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file.acquisition['my_videos'] = videos
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file.save()
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```
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````
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`````
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