Project flow#
LaminDB allows tracking data lineage on the entire project level.
Here, we walk through exemplified app uploads, pipelines & notebooks following Schmidt et al., 2022.
A CRISPR screen reading out a phenotypic endpoint on T cells is paired with scRNA-seq to generate insights into IFN-γ production.
These insights get linked back to the original data through the steps taken in the project to provide context for interpretation & future decision making.
More specifically: Why should I care about data flow?
Data flow tracks data sources & transformations to trace biological insights, verify experimental outcomes, meet regulatory standards, increase the robustness of research and optimize the feedback loop of team-wide learning iterations.
While tracking data flow is easier when it’s governed by deterministic pipelines, it becomes hard when it’s governed by interactive human-driven analyses.
LaminDB interfaces workflow mangers for the former and embraces the latter.
Setup#
Init a test instance:
!lamin init --storage ./mydata
Show code cell output
✅ saved: User(uid='DzTjkKse', handle='testuser1', name='Test User1', updated_at=2024-01-12 06:15:57 UTC)
✅ saved: Storage(uid='TUeISU1t', root='/home/runner/work/lamin-usecases/lamin-usecases/docs/mydata', type='local', updated_at=2024-01-12 06:15:57 UTC, created_by_id=1)
💡 loaded instance: testuser1/mydata
💡 did not register local instance on hub
Import lamindb:
import lamindb as ln
from IPython.display import Image, display
💡 lamindb instance: testuser1/mydata
Steps#
In the following, we walk through exemplified steps covering different types of transforms (Transform
).
Note
The full notebooks are in this repository.
App upload of phenotypic data #
Register data through app upload from wetlab by testuser1
:
# This function mimics the upload of artifacts via the UI
# In reality, you simply drag and drop files into the UI
def run_upload_crispra_result_app():
ln.setup.login("testuser1")
transform = ln.Transform(name="Upload GWS CRISPRa result", type="app")
ln.track(transform)
output_path = ln.dev.datasets.schmidt22_crispra_gws_IFNG(ln.settings.storage)
output_file = ln.Artifact(
output_path, description="Raw data of schmidt22 crispra GWS"
)
output_file.save()
run_upload_crispra_result_app()
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💡 saved: Transform(uid='1AtqV34CJj2VZgWN', name='Upload GWS CRISPRa result', type='app', updated_at=2024-01-12 06:15:59 UTC, created_by_id=1)
💡 saved: Run(uid='qFDTMIG8UW2swA4Wo1Jj', run_at=2024-01-12 06:15:59 UTC, transform_id=1, created_by_id=1)
Hit identification in notebook #
Access, transform & register data in drylab by testuser2
:
def run_hit_identification_notebook():
# log in as another user
ln.setup.login("testuser2")
# create a new transform to mimic a new notebook (in reality you just run ln.track() in a notebook)
transform = ln.Transform(name="GWS CRIPSRa analysis", type="notebook")
ln.track(transform)
# access the upload artifact
input_file = ln.Artifact.filter(key="schmidt22-crispra-gws-IFNG.csv").one()
# identify hits
input_df = input_file.load().set_index("id")
output_df = input_df[input_df["pos|fdr"] < 0.01].copy()
# register hits in output artifact
ln.Artifact(output_df, description="hits from schmidt22 crispra GWS").save()
run_hit_identification_notebook()
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💡 saved: Transform(uid='qPjF23AMv6ZrWyDE', name='GWS CRIPSRa analysis', type='notebook', updated_at=2024-01-12 06:16:01 UTC, created_by_id=1)
💡 saved: Run(uid='2NVqgw9Cbz4mXhcOTL9w', run_at=2024-01-12 06:16:01 UTC, transform_id=2, created_by_id=1)
Inspect data flow:
artifact = ln.Artifact.filter(description="hits from schmidt22 crispra GWS").one()
artifact.view_lineage()
Sequencer upload #
Upload files from sequencer:
def run_upload_from_sequencer_pipeline():
ln.setup.login("testuser1")
# create a pipeline transform
ln.track(ln.Transform(name="Chromium 10x upload", type="pipeline"))
# register output files of the sequencer
upload_dir = ln.dev.datasets.dir_scrnaseq_cellranger(
"perturbseq", basedir=ln.settings.storage, output_only=False
)
ln.Artifact(upload_dir.parent / "fastq/perturbseq_R1_001.fastq.gz").save()
ln.Artifact(upload_dir.parent / "fastq/perturbseq_R2_001.fastq.gz").save()
run_upload_from_sequencer_pipeline()
Show code cell output
💡 saved: Transform(uid='QXlhUxkBMstkgtBc', name='Chromium 10x upload', type='pipeline', updated_at=2024-01-12 06:16:03 UTC, created_by_id=1)
💡 saved: Run(uid='XCIb6yOShbdrXio9JaNH', run_at=2024-01-12 06:16:03 UTC, transform_id=3, created_by_id=1)
scRNA-seq bioinformatics pipeline #
Process uploaded files using a script or workflow manager: Pipelines and obtain 3 output files in a directory filtered_feature_bc_matrix/
:
def run_scrna_analysis_pipeline():
ln.setup.login("testuser2")
transform = ln.Transform(name="Cell Ranger", version="7.2.0", type="pipeline")
ln.track(transform)
# access uploaded files as inputs for the pipeline
input_artifacts = ln.Artifact.filter(key__startswith="fastq/perturbseq").all()
input_paths = [artifact.stage() for artifact in input_artifacts]
# register output files
output_artifacts = ln.Artifact.from_dir(
"./mydata/perturbseq/filtered_feature_bc_matrix/"
)
ln.save(output_artifacts)
# Post-process these 3 files
transform = ln.Transform(
name="Postprocess Cell Ranger", version="2.0", type="pipeline"
)
ln.track(transform)
input_artifacts = [f.stage() for f in output_artifacts]
output_path = ln.dev.datasets.schmidt22_perturbseq(basedir=ln.settings.storage)
output_file = ln.Artifact(output_path, description="perturbseq counts")
output_file.save()
run_scrna_analysis_pipeline()
Show code cell output
💡 saved: Transform(uid='XgjAZ49uCcxClTa0', name='Cell Ranger', version='7.2.0', type='pipeline', updated_at=2024-01-12 06:16:04 UTC, created_by_id=1)
💡 saved: Run(uid='bSRghNUUm2IM75W8x7Lq', run_at=2024-01-12 06:16:04 UTC, transform_id=4, created_by_id=1)
❗ this creates one artifact per file in the directory - you might simply call ln.Artifact(dir) to get one artifact for the entire directory
💡 saved: Transform(uid='wH5GKl8YbvIhAxGG', name='Postprocess Cell Ranger', version='2.0', type='pipeline', updated_at=2024-01-12 06:16:04 UTC, created_by_id=1)
💡 saved: Run(uid='E1xGCnTDtPIWCrqDjMI2', run_at=2024-01-12 06:16:04 UTC, transform_id=5, created_by_id=1)
Inspect data flow:
output_file = ln.Artifact.filter(description="perturbseq counts").one()
output_file.view_lineage()
Integrate scRNA-seq & phenotypic data #
Integrate data in a notebook:
def run_integrated_analysis_notebook():
import scanpy as sc
# create a new transform to mimic a new notebook (in reality you just run ln.track() in a notebook)
transform = ln.Transform(
name="Perform single cell analysis, integrate with CRISPRa screen",
type="notebook",
)
ln.track(transform)
# access the output files of bfx pipeline and previous analysis
file_ps = ln.Artifact.filter(description__icontains="perturbseq").one()
adata = file_ps.load()
file_hits = ln.Artifact.filter(description="hits from schmidt22 crispra GWS").one()
screen_hits = file_hits.load()
# perform analysis and register output plot files
sc.tl.score_genes(adata, adata.var_names.intersection(screen_hits.index).tolist())
filesuffix = "_fig1_score-wgs-hits.png"
sc.pl.umap(adata, color="score", show=False, save=filesuffix)
filepath = f"figures/umap{filesuffix}"
artifact = ln.Artifact(filepath, key=filepath)
artifact.save()
filesuffix = "fig2_score-wgs-hits-per-cluster.png"
sc.pl.matrixplot(
adata, groupby="cluster_name", var_names=["score"], show=False, save=filesuffix
)
filepath = f"figures/matrixplot_{filesuffix}"
artifact = ln.Artifact(filepath, key=filepath)
artifact.save()
run_integrated_analysis_notebook()
Show code cell output
💡 saved: Transform(uid='mEjuFn3AjquxTp0a', name='Perform single cell analysis, integrate with CRISPRa screen', type='notebook', updated_at=2024-01-12 06:16:07 UTC, created_by_id=1)
💡 saved: Run(uid='7gxKLh1iATektkSqdDmL', run_at=2024-01-12 06:16:07 UTC, transform_id=6, created_by_id=1)
WARNING: saving figure to file figures/umap_fig1_score-wgs-hits.png
WARNING: saving figure to file figures/matrixplot_fig2_score-wgs-hits-per-cluster.png
Review results#
Let’s load one of the plots:
# track the current notebook as transform
ln.track()
artifact = ln.Artifact.filter(key__contains="figures/matrixplot").one()
artifact.stage()
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💡 notebook imports: ipython==8.20.0 lamindb==0.67.0 scanpy==1.9.6
💡 saved: Transform(uid='1LCd8kco9lZU6K79', name='Project flow', short_name='project-flow', version='0', type=notebook, updated_at=2024-01-12 06:16:09 UTC, created_by_id=1)
💡 saved: Run(uid='q8BoiFJ17kG5MA3RicMC', run_at=2024-01-12 06:16:09 UTC, transform_id=7, created_by_id=1)
PosixUPath('/home/runner/work/lamin-usecases/lamin-usecases/docs/mydata/.lamindb/F7IaZoi9qPw9j5TsWkvo.png')
display(Image(filename=artifact.path))
We see that the image artifact is tracked as an input of the current notebook. The input is highlighted, the notebook follows at the bottom:
artifact.view_lineage()
Alternatively, we can also look at the sequence of transforms:
transform = ln.Transform.search("Bird's eye view", return_queryset=True).first()
transform.parents.df()
uid | name | short_name | version | type | latest_report_id | source_code_id | reference | reference_type | created_at | updated_at | created_by_id | |
---|---|---|---|---|---|---|---|---|---|---|---|---|
id | ||||||||||||
4 | XgjAZ49uCcxClTa0 | Cell Ranger | None | 7.2.0 | pipeline | None | None | None | None | 2024-01-12 06:16:04.476545+00:00 | 2024-01-12 06:16:04.476564+00:00 | 1 |
transform.view_parents()
Understand runs#
We tracked pipeline and notebook runs through run_context
, which stores a Transform
and a Run
record as a global context.
Artifact
objects are the inputs and outputs of runs.
What if I don’t want a global context?
Sometimes, we don’t want to create a global run context but manually pass a run when creating an artifact:
run = ln.Run(transform=transform)
ln.Artifact(filepath, run=run)
When does an artifact appear as a run input?
When accessing an artifact via stage()
, load()
or backed()
, two things happen:
The current run gets added to
artifact.input_of
The transform of that artifact gets added as a parent of the current transform
You can then switch off auto-tracking of run inputs if you set ln.settings.track_run_inputs = False
: Can I disable tracking run inputs?
You can also track run inputs on a case by case basis via is_run_input=True
, e.g., here:
artifact.load(is_run_input=True)
Query by provenance#
We can query or search for the notebook that created the artifact:
transform = ln.Transform.search("GWS CRIPSRa analysis", return_queryset=True).first()
And then find all the artifacts created by that notebook:
ln.Artifact.filter(transform=transform).df()
uid | storage_id | key | suffix | accessor | description | version | size | hash | hash_type | n_objects | n_observations | transform_id | run_id | visibility | key_is_virtual | created_at | updated_at | created_by_id | |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
id | |||||||||||||||||||
2 | 1CdKHd922AUHFGYMGPaM | 1 | None | .parquet | DataFrame | hits from schmidt22 crispra GWS | None | 18368 | q54ULUuKxw3LglyzMVYZ8Q | md5 | None | None | 2 | 2 | 1 | True | 2024-01-12 06:16:02.407328+00:00 | 2024-01-12 06:16:02.407354+00:00 | 1 |
Which transform ingested a given artifact?
artifact = ln.Artifact.filter().first()
artifact.transform
Transform(uid='1AtqV34CJj2VZgWN', name='Upload GWS CRISPRa result', type='app', updated_at=2024-01-12 06:15:59 UTC, created_by_id=1)
And which user?
artifact.created_by
User(uid='DzTjkKse', handle='testuser1', name='Test User1', updated_at=2024-01-12 06:16:03 UTC)
Which transforms were created by a given user?
users = ln.User.lookup()
ln.Transform.filter(created_by=users.testuser2).df()
uid | name | short_name | version | type | reference | reference_type | created_at | updated_at | latest_report_id | source_code_id | created_by_id | |
---|---|---|---|---|---|---|---|---|---|---|---|---|
id |
Which notebooks were created by a given user?
ln.Transform.filter(created_by=users.testuser2, type="notebook").df()
uid | name | short_name | version | type | reference | reference_type | created_at | updated_at | latest_report_id | source_code_id | created_by_id | |
---|---|---|---|---|---|---|---|---|---|---|---|---|
id |
We can also view all recent additions to the entire database:
ln.view()
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Artifact
uid | storage_id | key | suffix | accessor | description | version | size | hash | hash_type | n_objects | n_observations | transform_id | run_id | visibility | key_is_virtual | created_at | updated_at | created_by_id | |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
id | |||||||||||||||||||
10 | F7IaZoi9qPw9j5TsWkvo | 1 | figures/matrixplot_fig2_score-wgs-hits-per-clu... | .png | None | None | None | 28814 | ijpft7zAYShlKDXYYAD4hw | md5 | None | None | 6 | 6 | 1 | True | 2024-01-12 06:16:08.668261+00:00 | 2024-01-12 06:16:08.668284+00:00 | 1 |
9 | EbaRdL2zJhBI5iSL09h8 | 1 | figures/umap_fig1_score-wgs-hits.png | .png | None | None | None | 118999 | 74WuaFnZeoMTvSpY--lbrA | md5 | None | None | 6 | 6 | 1 | True | 2024-01-12 06:16:08.452903+00:00 | 2024-01-12 06:16:08.452927+00:00 | 1 |
8 | ftDicIQvkzF8hOR2RKyr | 1 | schmidt22_perturbseq.h5ad | .h5ad | AnnData | perturbseq counts | None | 20659936 | la7EvqEUMDlug9-rpw-udA | md5 | None | None | 5 | 5 | 1 | False | 2024-01-12 06:16:06.755669+00:00 | 2024-01-12 06:16:06.755700+00:00 | 1 |
7 | 80krkEiZYUf816HNZW2d | 1 | perturbseq/filtered_feature_bc_matrix/barcodes... | .tsv.gz | None | None | None | 6 | W8NqHYe8keLidh8sWdPs9A | md5 | None | None | 4 | 4 | 1 | False | 2024-01-12 06:16:04.916381+00:00 | 2024-01-12 06:16:04.916398+00:00 | 1 |
6 | 4wUmNWEmKzswIvkE7oGg | 1 | perturbseq/filtered_feature_bc_matrix/matrix.m... | .mtx.gz | None | None | None | 6 | NPOv0PAqdKbnesFTxTPPtA | md5 | None | None | 4 | 4 | 1 | False | 2024-01-12 06:16:04.915797+00:00 | 2024-01-12 06:16:04.915815+00:00 | 1 |
5 | yaxrQppSefQkHZIKBSE2 | 1 | perturbseq/filtered_feature_bc_matrix/features... | .tsv.gz | None | None | None | 6 | M19MiyhEgoz-pt09_NCQ7A | md5 | None | None | 4 | 4 | 1 | False | 2024-01-12 06:16:04.915052+00:00 | 2024-01-12 06:16:04.915071+00:00 | 1 |
4 | BPQtA5zpxYJBqDEq7uFn | 1 | fastq/perturbseq_R2_001.fastq.gz | .fastq.gz | None | None | None | 6 | Cdu__hWKIV8ZYS4RvlbuWQ | md5 | None | None | 3 | 3 | 1 | False | 2024-01-12 06:16:03.797613+00:00 | 2024-01-12 06:16:03.797631+00:00 | 1 |
Run
uid | transform_id | run_at | created_by_id | report_id | environment_id | is_consecutive | reference | reference_type | created_at | |
---|---|---|---|---|---|---|---|---|---|---|
id | ||||||||||
1 | qFDTMIG8UW2swA4Wo1Jj | 1 | 2024-01-12 06:15:59.749912+00:00 | 1 | None | None | None | None | None | 2024-01-12 06:15:59.749999+00:00 |
2 | 2NVqgw9Cbz4mXhcOTL9w | 2 | 2024-01-12 06:16:01.946902+00:00 | 1 | None | None | None | None | None | 2024-01-12 06:16:01.946992+00:00 |
3 | XCIb6yOShbdrXio9JaNH | 3 | 2024-01-12 06:16:03.371255+00:00 | 1 | None | None | None | None | None | 2024-01-12 06:16:03.371329+00:00 |
4 | bSRghNUUm2IM75W8x7Lq | 4 | 2024-01-12 06:16:04.479257+00:00 | 1 | None | None | None | None | None | 2024-01-12 06:16:04.479377+00:00 |
5 | E1xGCnTDtPIWCrqDjMI2 | 5 | 2024-01-12 06:16:04.927209+00:00 | 1 | None | None | None | None | None | 2024-01-12 06:16:04.927280+00:00 |
6 | 7gxKLh1iATektkSqdDmL | 6 | 2024-01-12 06:16:07.803386+00:00 | 1 | None | None | None | None | None | 2024-01-12 06:16:07.803508+00:00 |
7 | q8BoiFJ17kG5MA3RicMC | 7 | 2024-01-12 06:16:09.043604+00:00 | 1 | None | None | None | None | None | 2024-01-12 06:16:09.043731+00:00 |
Storage
uid | root | description | type | region | created_at | updated_at | created_by_id | |
---|---|---|---|---|---|---|---|---|
id | ||||||||
1 | TUeISU1t | /home/runner/work/lamin-usecases/lamin-usecase... | None | local | None | 2024-01-12 06:15:57.662247+00:00 | 2024-01-12 06:15:57.662267+00:00 | 1 |
Transform
uid | name | short_name | version | type | latest_report_id | source_code_id | reference | reference_type | created_at | updated_at | created_by_id | |
---|---|---|---|---|---|---|---|---|---|---|---|---|
id | ||||||||||||
7 | 1LCd8kco9lZU6K79 | Project flow | project-flow | 0 | notebook | None | None | None | None | 2024-01-12 06:16:09.040895+00:00 | 2024-01-12 06:16:09.040920+00:00 | 1 |
6 | mEjuFn3AjquxTp0a | Perform single cell analysis, integrate with C... | None | None | notebook | None | None | None | None | 2024-01-12 06:16:07.798504+00:00 | 2024-01-12 06:16:07.798535+00:00 | 1 |
5 | wH5GKl8YbvIhAxGG | Postprocess Cell Ranger | None | 2.0 | pipeline | None | None | None | None | 2024-01-12 06:16:04.924909+00:00 | 2024-01-12 06:16:04.924928+00:00 | 1 |
4 | XgjAZ49uCcxClTa0 | Cell Ranger | None | 7.2.0 | pipeline | None | None | None | None | 2024-01-12 06:16:04.476545+00:00 | 2024-01-12 06:16:04.476564+00:00 | 1 |
3 | QXlhUxkBMstkgtBc | Chromium 10x upload | None | None | pipeline | None | None | None | None | 2024-01-12 06:16:03.368538+00:00 | 2024-01-12 06:16:03.368558+00:00 | 1 |
2 | qPjF23AMv6ZrWyDE | GWS CRIPSRa analysis | None | None | notebook | None | None | None | None | 2024-01-12 06:16:01.942739+00:00 | 2024-01-12 06:16:01.942758+00:00 | 1 |
1 | 1AtqV34CJj2VZgWN | Upload GWS CRISPRa result | None | None | app | None | None | None | None | 2024-01-12 06:15:59.746578+00:00 | 2024-01-12 06:15:59.746597+00:00 | 1 |
User
uid | handle | name | created_at | updated_at | |
---|---|---|---|---|---|
id | |||||
2 | bKeW4T6E | testuser2 | Test User2 | 2024-01-12 06:16:01.935476+00:00 | 2024-01-12 06:16:04.468703+00:00 |
1 | DzTjkKse | testuser1 | Test User1 | 2024-01-12 06:15:57.658927+00:00 | 2024-01-12 06:16:03.360547+00:00 |
Show code cell content
!lamin login testuser1
!lamin delete --force mydata
!rm -r ./mydata
✅ logged in with email testuser1@lamin.ai (uid: DzTjkKse)
💡 deleting instance testuser1/mydata
✅ deleted instance settings file: /home/runner/.lamin/instance--testuser1--mydata.env
✅ instance cache deleted
✅ deleted '.lndb' sqlite file
❗ consider manually deleting your stored data: /home/runner/work/lamin-usecases/lamin-usecases/docs/mydata