seung-lab / cloud-volume

Read and write Neuroglancer datasets programmatically.
https://twitter.com/thundercloudvol
BSD 3-Clause "New" or "Revised" License
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big-data biomedical-image-processing chunked-image cloud connectomics electron-microscopy gcs large-image matrix mesh microscopy microscopy-images neuroglancer numpy python s3 serverless skeletons tensor volumetric-data

PyPI version SfN 2018 Poster codecov DOI

CloudVolume: IO for Neuroglancer Datasets

from cloudvolume import CloudVolume

vol = CloudVolume('gs://mylab/mouse/image', parallel=True, progress=True)
image = vol[:,:,:] # Download a whole image stack into a numpy array from the cloud
vol[:,:,:] = image # Upload an entire image stack from a numpy array to the cloud

label = 1
mesh = vol.mesh.get(label)
skel = vol.skeleton.get(label)

CloudVolume is a serverless Python client for random access reading and writing of Neuroglancer volumes in "Precomputed" format, a set of representations for arbitrarily large volumetric images, meshes, and skeletons. CloudVolume is typically paired with Igneous, a Kubernetes compatible system for generating image hierarchies, meshes, skeletons, and other dependency free jobs that can be applied to petavoxel scale images.

Precomputed volumes are typically stored on AWS S3, Google Storage, or locally. CloudVolume can read and write to these object storage providers given a service account token with appropriate permissions. However, these volumes can be stored on any service, including an ordinary webserver or local filesystem, that supports key-value access.

The combination of Neuroglancer, Igneous, and CloudVolume comprises a system for visualizing, processing, and sharing (via browser viewable URLs) petascale datasets within and between laboratories. A typical example usage would be to visualize raw electron microscope scans of mouse, fish, or fly brains up to a cubic millimeter in physical dimension. Neuroglancer and Igneous would enable you to visualize each step of the process of montaging the image, fine tuning alignment vector fields, creating segmentation layers, ROI masks, or performing other types of analysis. CloudVolume enables you to read from and write to each of these layers. Recently, we have introduced the ability to interact with the graph server ("PyChunkGraph") that backs proofreading automated segmentations via the graphene:// format.

You can find a collection of CloudVolume accessible and Neuroglancer viewable datasets at https://neurodata.io/project/ocp/, an open data project by some of our collaborators.

Highlights

Detailed Highlights

Setup

Cloud-volume is regularly tested on Ubuntu with 3.8, 3.9, 3.10, 3.11, and 3.12. We officially support Linux and Mac OS. Windows is community supported. After installation, you'll also need to set up your cloud credentials if you're planning on writing files or reading from a private dataset. Once you're finished setting up, you can try reading from a public dataset.

pip Binary Installation

pip install cloud-volume # standard installation

CloudVolume depends on several PyPI packages which are Cython bindings for C++. We have provided compiled binaries for many platforms and python versions, however if you are on an unsupported system, pip will attempt to install from source. In that case, follow the instructions below.

Windows Note: If you get errors related to a missing C++ compiler, this blog post might help you: https://www.scivision.dev/python-windows-visual-c-14-required/

Optional Dependencies

Tag Description Dependencies
boss boss:// format support intern, blosc
zarr zarr:// format support blosc
test Supports testing pytest
mesh_viewer mesh.viewer() GUI vtk
skeleton_viewer skeleton.viewer() GUI matplotlib
all_viewers All viewers now and in the future. vtk, matplotlib
dask Supports converting to/from dask arrays dask[array]
em_codecs Image codecs: JPEG, JPEG-XL, and PNG imagecodecs, simplejpeg, pyspng-seunglab
seg_codecs Segmentation: compressed-segmentation, compresso, crackle compressed-segmentation, compresso, crackle-codec
fp_codecs Floating point: fpzip, zfpc fpzip, zfpc
all_codecs Installs all optional compression codecs: em_codecs, seg_codecs, fp_codecs, blosc see above

Example:

pip install cloud-volume[all_codecs,test,all_viewers]

gzip, brotli, JPEG, and compressed-segmentation codecs are installed by default.

pip Source Installation

C++ compiler required.

sudo apt-get install g++ python3-dev
pip install numpy
pip install cloud-volume

Due to packaging problems endemic to Python, Cython packages that depend on numpy require numpy header files be installed before attempting to install the package you want. The numpy headers are not recognized unless numpy is installed in a seperate process that runs first. There are hacks for this issue, but I haven't gotten them to work. If you think binaries should be available for your platform, please let us know by opening an issue.

Manual Installation

This can be desirable if you want to hack on CloudVolume itself.

git clone git@github.com:seung-lab/cloud-volume.git
cd cloud-volume

# With virtualenvwrapper
mkvirtualenv cv
workon cv
# With only virtualenv
virtualenv venv
source venv/bin/activate

sudo apt-get install g++ python3-dev 
pip install numpy # additional step needed for accelerated compressed_segmentation and fpzip
pip install -e . # without optional dependencies
pip install -e .[all_viewers] # with e.g. the all_viewers optional dependency

Credentials

By default, CloudVolume's configuration and cache files are stored in $HOME/.cloudvolume (or in $HOME/.cloudfiles since we use CloudFiles for the backend). You can configure where CloudVolume looks for these files with the environment variable $CLOUD_VOLUME_DIR.

Credentials are stored in $CLOUD_VOLUME_DIR/secrets. You'll need credentials only for the services you'll use. If you plan to use the local filesystem, you won't need any. For Google Storage (setup instructions here), default account credentials will be used if available and no service account is provided.

If neither of those two conditions apply, you need a service account credential. If you have your credentials handy, you can provide them like so as a dict, JSON string, or a bare token if the service will accept that.

cv = CloudVolume(..., secrets=...)

However, it may be simpler to save your credential to disk so you don't have to always provide it. google-secret.json is a service account credential for Google Storage, aws-secret.json is a service account for S3, etc. You can support multiple projects at once by prefixing the bucket you are planning to access to the credential filename. google-secret.json will be your defaut service account, but if you also want to also access bucket ABC, you can provide ABC-google-secret.json and you'll have simultaneous access to your ordinary buckets and ABC. The secondary credentials are accessed on the basis of the bucket name, not the project name.

mkdir -p ~/.cloudvolume/secrets/
mv aws-secret.json ~/.cloudvolume/secrets/ # needed for Amazon
mv google-secret.json ~/.cloudvolume/secrets/ # needed for Google
mv boss-secret.json ~/.cloudvolume/secrets/ # needed for the BOSS
mv matrix-secret.json ~/.cloudvolume/secrets/ # needed for Matrix
mv tigerdata-secret.json ~/.cloudvolume/secrets/ # needed for Tigerdata

aws-secret.json and matrix-secret.json

Create an IAM user service account that can read, write, and delete objects from at least one bucket.

{
    "AWS_ACCESS_KEY_ID": "$MY_AWS_ACCESS_KEY_ID",
    "AWS_SECRET_ACCESS_KEY": "$MY_SECRET_ACCESS_TOKEN"
}

google-secret.json

You can create the google-secret.json file here. You don't need to manually fill in JSON by hand, the below example is provided to show you what the end result should look like. You should be able to read, write, and delete objects from at least one bucket.

{
  "type": "service_account",
  "project_id": "$YOUR_GOOGLE_PROJECT_ID",
  "private_key_id": "...",
  "private_key": "...",
  "client_email": "...",
  "client_id": "...",
  "auth_uri": "https://accounts.google.com/o/oauth2/auth",
  "token_uri": "https://accounts.google.com/o/oauth2/token",
  "auth_provider_x509_cert_url": "https://www.googleapis.com/oauth2/v1/certs",
  "client_x509_cert_url": ""
}

cave-secret.json

Note: used to be called chunkedgraph-secret.json. This is still supported but deprecated.

If you have a token from Graphene/Chunkedgraph server, create the cave-secret.json file as shown in the example below. You may also pass the token to CloudVolume(..., secrets=token).

{
  "token": "<your_token>"
}

Note that to take advantage of multiple credential files, prepend the fully qualified domain name (FQDN) of the server instead of the bucket for GCS and S3. For example, sudomain.domain.com-cave-secret.json.

Usage

CloudVolume supports reading and writing to Neuroglancer data layers on Amazon S3, Google Storage, The BOSS, and the local file system.

Supported URLs are of the forms:

$FORMAT://$PROTOCOL://$BUCKET/$DATASET/$LAYER

The format or protocol fields may be omitted where required. In the case of the precomputed format, the format specifier is optional.

Format Protocols Default Example
precomputed gs, s3, http, https, file, matrix, tigerdata Yes gs://mybucket/dataset/layer
graphene gs, s3, http, https, file, matrix, tigerdata graphene://gs://mybucket/dataset/layer
boss N/A boss://collection/experiment/channel
n5 gs, s3, http, https, file, matrix, tigerdata n5://gs://mybucket/dataset/layer
zarr gs, s3, http, https, file, matrix, tigerdata zarr://gs://mybucket/dataset/layer

Supported Formats

Supported Protocols

CloudVolume also supports alternative s3 aliases via CloudFiles.

info Files - New Dataset

Neuroglancer relies on an info file located at the root of a dataset layer to tell it how to compute file locations and interpret the data in each file. CloudVolume piggy-backs on this functionality.

In the below example, assume you are creating a new segmentation volume from a 3d numpy array "rawdata". Note Precomputed stores data in Fortran (column major, aka CZYX) order. You should do a small test to see if the image is written transposed. You can fix this by uploading rawdata.T. A more detailed example for uploading a local volume is located here.

from cloudvolume import CloudVolume

info = CloudVolume.create_new_info(
    num_channels    = 1,
    layer_type      = 'segmentation',
    data_type       = 'uint64', # Channel images might be 'uint8'
    # raw, png, jpeg, compressed_segmentation, fpzip, kempressed, zfpc, compresso, crackle
    encoding        = 'raw', 
    resolution      = [4, 4, 40], # Voxel scaling, units are in nanometers
    voxel_offset    = [0, 0, 0], # x,y,z offset in voxels from the origin
    mesh            = 'mesh',
    # Pick a convenient size for your underlying chunk representation
    # Powers of two are recommended, doesn't need to cover image exactly
    chunk_size      = [ 512, 512, 16 ], # units are voxels
    volume_size     = [ 250000, 250000, 25000 ], # e.g. a cubic millimeter dataset
)
vol = CloudVolume(cfg.path, info=info)
vol.commit_info()
vol[cfg.x: cfg.x + cfg.length, cfg.y:cfg.y + cfg.length, cfg.z: cfg.z + cfg.length] = rawdata[:,:,:]
Encoding Image Type Lossless Neuroglancer Viewable Description
raw Any Y Y Serialized numpy arrays.
png Image Y Y Multiple slices stiched into a single PNG.
jpeg Image N Y Multiple slices stiched into a single JPEG.
jxl Image Optional Y* Multiple slices stiched into a single JPEG-XL.
compressed_segmentation Segmentation Y Y Renumbered numpy arrays to reduce data width. Also used by Neuroglancer internally.
compresso Segmentation Y Y Lossless high compression algorithm for connectomics segmentation.
crackle Segmentation Y Y* Lossless high compression algorithm for connectomics segmentation.
fpzip Floating Point Y Y* Takes advantage of IEEE 754 structure + L1 Lorenzo predictor to get higher compression.
kempressed Anisotropic Z Floating Point N** Y* Adds manipulations on top of fpzip to achieve higher compression.
zfpc Alignment Vector Fields N*** Y* zfp stream container.

* Not integrated into official Neuroglancer yet, but available on a fork which can be seen on Github here. ** Lossless if your data can handle adding and then subtracting 2. *** Lossless by default, but you probably want to use the lossy mode.

Note on compressed_segmentation: To use, make sure compressed_segmentation_block_size is specified (usually [8,8,8]. This field will appear in the info file in the relevant scale.

Note on zfpc: To configure, use the fields zfpc_rate, zfpc_precision, zfpc_tolerance, zfpc_correlated_dims in the relevant scale of the info file.

Examples

# Basic Examples
vol = CloudVolume('gs://mybucket/retina/image')
vol = CloudVolume('gs://mybucket/retina/image', secrets=token, dict or json)
vol = CloudVolume('gs://bucket/dataset/channel', mip=0, bounded=True, fill_missing=False)
vol = CloudVolume('gs://bucket/dataset/channel', mip=[ 8, 8, 40 ], bounded=True, fill_missing=False) # set mip at this resolution
vol = CloudVolume('gs://bucket/datasset/channel', info=info) # New info file from scratch
image = vol[:,:,:] # Download the entire image stack into a numpy array
image = vol.download(bbox, mip=2, renumber=True) # download w/ smaller dtype
image = vol.download(bbox, mip=2, label=777) # download binary image for label
uniq = vol.unique(bbox, mip=0) # efficient extraction of unique labels
listing = vol.exists( np.s_[0:64, 0:128, 0:64] ) # get a report on which chunks actually exist
exists = vol.image.has_data(mip=0) # boolean check to see if any data is there
listing = vol.delete( np.s_[0:64, 0:128, 0:64] ) # delete this region (bbox must be chunk aligned)
vol[64:128, 64:128, 64:128] = image # Write a 64^3 image to the volume
img = vol.download_point( (x,y,z), size=256, mip=3 ) # download region around (mip 0) x,y,z at mip 3
pts = vol.scattered_points([ (x1,y1,z1), (x2,y2,z2) ]) # download voxel labels located at indicated points
# download image files without decompressing or rendering them. Good for caching!
files = vol.download_files(bbox, mip, decompress=False)

# creates an anonymous in-memory CloudVolume that 
# will self-clean when the reference count drops to zero. 
# Store compressed images in memory for quick access!
mem_vol = vol.image.memory_cutout(bbox, mip=1, encoding="compresso")

# Server
vol.viewer() # launches neuroglancer compatible web server on http://localhost:1337

# Microviewer (outdated, see https://github.com/seung-lab/microviewer/)
img = vol[64:1028, 64:1028, 64:128]
img.viewer() # launches web viewer on http://localhost:8080

# Meshes
vol.mesh.save(12345) # save 12345 as ./12345.ply on disk
vol.mesh.save([12345, 12346, 12347]) # merge three segments into one file
vol.mesh.save(12345, file_format='obj') # 'ply' and 'obj' are both supported
vol.mesh.get(12345) # return the mesh as vertices and faces instead of writing to disk
vol.mesh.get([ 12345, 12346 ]) # return these two segids fused into a single mesh
vol.mesh.get([ 12345, 12346 ], fuse=False) # return { 12345: mesh, 12346: mesh }
vol.mesh.put(meshes) # works for unsharded legacy only
vol.mesh.delete(segids) # works for unsharded meshes only

mesh.viewer() # Opens GUI. Requires vtk.

# Skeletons
skel = vol.skeleton.get(12345)
vol.skeleton.upload_raw(segid, skel.vertices, skel.edges, skel.radii, skel.vertex_types)
vol.skeleton.upload(skel)

# specified in nm, only available for datasets with a generated index
skels = vol.skeleton.get_by_bbox( Bbox( (0,0,0), (500, 500, 500) ) )
vol.skeleton.spatial_index # None if not available

skel.empty() # boolean

bytes = skel.encode() # encode to Precomputed format (bytes)
skel = Skeleton.decode(bytes) # decode from PrecomputedFormat

skel = skel.crop(slices or bbox) # eliminate vertices and edges outside bbox
skel = skel.consolidate() # eliminate duplicate vertices and edges
skel3 = skel.merge(skel2) # merge two skeletons into one
skel = skel.clone() # create copy
skel = Skeleton.from_swc(swcstr) # decode an SWC file
skel_str = skel.to_swc() # convert to SWC file in string representation
skel.viewer() # Opens GUI. Requires matplotlib

skel.cable_length() # sum of all edge lengths
skel = skel.downsample(2) # reduce size of skeleton by factor of 2
skel = skel.average_smoothing(3) # rolling average, n=3 

skel1 == skel2 # check if contents of internal arrays match
Skeleton.equivalent(skel1, skel2) # ...even if there are differences like differently numbered edges

# Parallel Operation
vol = CloudVolume('gs://mybucket/retina/image', parallel=True) # Use all cores
vol.parallel = 4 # e.g. any number > 1, use this many cores
data = vol[:] # uses shared memory to coordinate processes under the hood

# Shared Memory Output (can be used by other processes)
vol = CloudVolume(...)
# data backed by a shared memory buffer
# location is optional (defaults to vol.shared_memory_id)
data = vol.download_to_shared_memory(np.s_[:], location='some-example')
vol.unlink_shared_memory() # delete the shared memory associated with this cloudvolume
vol.shared_memory_id # get/set the default shared memory location for this instance

# Shared Memory Upload
vol = CloudVolume(...)
vol.upload_from_shared_memory('my-shared-memory-id', # do not prefix with /dev/shm
    bbox=Bbox( (0,0,0), (10000, 7500, 64) ))

# Download or Upload directly with Files
# The files must be in Precomputed raw format.
vol.download_to_file('/path/to/file', bbox=Bbox(...), mip=0) # bbox is the download region
vol.upload_from_file('/path/to/file', bbox=Bbox(...), mip=0) # bbox is the region it represents

# Transfer w/o Excess Memory Allocation
vol = CloudVolume(...)
# single core, send all of vol to destination, no painting memory
# you can also transcode the image encoding and compression type
vol.transfer_to('gs://bucket/dataset/layer', vol.bounds)

# Caching, default located at $HOME/.cloudvolume/cache/$PROTOCOL/$BUCKET/$DATASET/$LAYER/$RESOLUTION
# You can also set the cache location using
# cache=str or with environment variable CLOUD_VOLUME_CACHE_DIR
vol = CloudVolume('gs://mybucket/retina/image', cache=True) # Basic Example
image = vol[0:10,0:10,0:10] # Download partial image and cache
vol[0:10,0:10,0:10] = image # Upload partial image and cache

# Resizing and clearing the LRU in-memory cache
vol = CloudVolume(..., lru_bytes=num_bytes) # >= 0, 0 means disabled
vol.image.lru.resize(num_bytes) # same
vol.image.lru.clear()
len(vol.image.lru) # number of items in lru
vol.image.lru.nbytes # size in bytes (not counting LRU structures, nor recursive)
vol.image.lru.items() # etc, also functions as a dict

# Evaluating the on-disk Cache
vol.cache.list() # list files in cache at this mip level
vol.cache.list(mip=1) # list files in cache at mip 1
vol.cache.list_meshes()
vol.cache.list_skeletons()
vol.cache.num_files() # number of files at this mip level
vol.cache.num_bytes(all_mips=True) # Return num files for each mip level in a list
vol.cache.num_bytes() # number of bytes taken up by files, size on disk can be bigger
vol.cache.num_bytes(all_mips=True) # Return num bytes for each mip level in a list

vol.cache.enabled = True/False # Turn the cache on/off
vol.cache.path = Str # set the cache location
vol.cache.compress = None/True/False # None: Link to cloud setting, Boolean: Force cache to compressed (True) or uncompressed (False)

# Deleting Cache
vol.cache.flush() # Delete local cache for this layer at this mip level
vol.cache.flush(preserve=Bbox(...)) # Same, but preserve cache in a region of space
vol.cache.flush_region(region=Bbox(...), mips=[...]) # Delete the cached files in this region at these mip levels (default all mips)
vol.cache.flush_info()
vol.cache.flush_provenance()

# Using Green Threads
import gevent.monkey
gevent.monkey.patch_all(thread=False)

cv = CloudVolume(..., green_threads=True)
img = cv[...] # now green threads will be used

# Dask Interface (requires dask installation)
arr = cv.to_dask()
arr = cloudvolume.dask.from_cloudvolume(cloudpath) # same as to_dask
res = cloudvolume.dask.to_cloudvolume(arr, cloudpath, compute=bool, return_store=bool)

CloudVolume Constructor

CloudVolume(
    cloudpath:str, mip:int=0, bounded:bool=True, 
    autocrop:bool=False, fill_missing:bool=False, cache:CacheType=False, 
    compress_cache:CompressType=None, cdn_cache:bool=True, 
    progress:bool=INTERACTIVE, info:dict=None, provenance:dict=None,
    compress:CompressType=None, compress_level:Optional[int]=None, 
    non_aligned_writes:bool=False, parallel:ParallelType=1, delete_black_uploads:bool=False, 
    background_color:int=0, green_threads:bool=False, use_https:bool=False,
    max_redirects:int=10, mesh_dir:Optional[str]=None, skel_dir:Optional[str]=None, 
    agglomerate:bool=False, secrets:SecretsType=None, 
    spatial_index_db:Optional[str]=None, lru_bytes:int = 0,
    cache_locking:bool = True
)

CloudVolume Methods

Better documentation coming later, but for now, here's a summary of the most useful method calls. Use help(cloudvolume.CloudVolume.$method) for more info.

CloudVolume Properties

Accessed as vol.$PROPERTY like vol.mip. Parens next to each property mean (data type:default, writability). (r) means read only, (w) means write only, (rw) means read/write.

* These properties can also be accessed with a function named like vol.mip_$PROPERTY($MIP). By default they return the current mip level assigned to the CloudVolume, but any mip level can be accessed via the corresponding mip_ function. Example: vol.mip_resolution(2) would return the resolution of mip 2.

VolumeCutout Functions

When you download an image using CloudVolume it gives you a VolumeCutout. These are numpy.ndarray subclasses that support a few extra properties to help make book keeping easier. The major advantage is save_images() which can help you view your dataset as PNG slices.

Viewing a Precomputed Volume on Disk

If you have Precomputed volume onto local disk and would like to point neuroglancer to it:

vol = CloudVolume(...)
vol.viewer()

You can then point any version of neuroglancer at it using precomputed://http://localhost:1337/NAME_OF_LAYER.

Microviewer

CloudVolume includes a built-in dependency free viewer for 3D volumetric datasets smaller than about 2GB uncompressed. It supports bool, uint8, uint16, uint32, float32, and float64 numpy data types for both images and segmentation and can render a composite overlay of image and segmentation.

You can launch a viewer using the .viewer() method of a VolumeCutout object or by using the view(...) or hyperview(...) functions that come with the cloudvolume module. This launches a web server on http://localhost:8080. You can read more on the wiki.

from cloudvolume import CloudVolume, view, hyperview

channel_vol = CloudVolume(...)
seg_vol = CloudVolume(...)
img = vol[...]
seg = vol[...]

img.viewer() # works on VolumeCutouts
seg.viewer() # segmentation type derived from info
view(img) # alternative for arbitrary numpy arrays
view(seg, segmentation=True)
hyperview(img, seg) # img and seg shape must match

>>> Viewer server listening to http://localhost:8080

There are also seperate viewers for skeleton and mesh objects that can be invoked by calling .viewer() on either object. However, skeletons depend on matplotlib and meshes depend on vtk and OpenGL to function.

pip install vtk matplotlib

Python 2.7 End of Life

Python 2.7 is no longer supported by CloudVolume. Updated versions of pip will download the last supported release 1.21.1. You can read more on the policy page: https://github.com/seung-lab/cloud-volume/wiki/Policy#python-27-end-of-life

Related Projects

  1. Igneous: Computational pipeline for visualizing neuroglancer volumes.
  2. CloudVolume.jl: CloudVolume in Julia
  3. fpzip: A Python Package for the C++ code by Lindstrom et al.
  4. compressed_segmentation: A Python Package wrapping the code for the compressed_segmentation format developed by Jeremy Maitin-Shepard and Stephen Plaza.
  5. Kimimaro: High performance skeletonization of densely labeled 3D volumes.
  6. compresso: High lossless compression of connectomics segmentation. Algorithm by and code derived from Matejek et al.
  7. zfpc: Optimized zfp multi-stream container for alignment vector fields (and similar floating point data).
  8. crackle: Lossless high compression of connectomics segmentation. (BETA)

Acknowledgments

Thank you to everyone that has contributed past or current to CloudVolume or the ecosystem it serves. We love you!

Jeremy Maitin-Shepard created Neuroglancer and defined the Precomputed format. Yann Leprince provided a pure Python codec for the compressed_segmentation format. Jeremy Maitin-Shepard and Stephen Plaza created C++ code defining the compression and decompression (respectively) protocol for compressed_segmentation. Peter Lindstrom et al. created the fpzip algorithm, and contributed a C++ implementation and advice. Nico Kemnitz adapted our data to fpzip using the "Kempression" protocol (we named it, not him). Dan Bumbarger contributed code and information helpful for getting CloudVolume working on Windows. Fredrik Kihlander's pure python implementation of murmurhash3 and Austin Appleby developed murmurhash3 which is necessary for the sharded format. Ben Falk advocated for and did the bulk of the work on brotli compression. Some of the ideas in CloudVolume are based on work by Jingpeng Wu in BigArrays.jl. Sven Dorkenwald, Manuel Castro, and Akhilesh Halageri contributed advice and code towards implementing the graphene interface. Oluwaseun Ogedengbe contributed documentation for the sharded format. Eric Perlman wrote the reader for Neuroglancer Multi-LOD meshes. Ignacio Tartavull and William Silversmith wrote the initial version of CloudVolume.