| name | scvi-tools |
| description | Probabilistic single-cell RNA-seq with scvi-tools — scVI for a batch-corrected latent space, scANVI for semi-supervised label transfer, and Bayesian differential expression. Reach for this skill to integrate scRNA-seq batches, embed cells for clustering, transfer annotations from a reference onto a query, or score differentially expressed genes per cluster. For spatial deconvolution / mapping use the cell2location, DestVI, or Tangram methods instead.
|
| license | Apache-2.0 |
| requirements | ["gpu"] |
| metadata | {"display-name":"scvi-tools"} |
scvi-tools — scVI / scANVI
scvi-tools (Gayoso et al. 2022, github.com/scverse/scvi-tools, BSD-3-Clause)
wraps a family
of deep generative models for single-cell omics. The scRNA-seq core is scVI
(unsupervised batch-corrected latent embedding) and scANVI (scVI + a
classifier head for semi-supervised cell-type label transfer). Both expect
raw integer UMI counts and emit a low-dimensional X_scVI / X_scANVI
that drops into the scanpy neighbors → leiden → umap pipeline.
How to run
scVI — batch-corrected latent space
import scanpy as sc
import scvi
adata = sc.read_h5ad("dataset.h5ad")
adata.layers["counts"] = adata.X.copy()
sc.pp.normalize_total(adata); sc.pp.log1p(adata)
sc.pp.highly_variable_genes(adata, n_top_genes=2000, batch_key="batch", subset=True)
scvi.model.SCVI.setup_anndata(adata, layer="counts", batch_key="batch")
model = scvi.model.SCVI(adata, n_latent=30)
model.train(max_epochs=200, early_stopping=True, accelerator="gpu", devices=1)
adata.obsm["X_scVI"] = model.get_latent_representation()
adata.layers["scvi_normalized"] = model.get_normalized_expression(library_size=1e4)
scANVI — label transfer from a partially-annotated reference
lvae = scvi.model.SCANVI.from_scvi_model(
model, labels_key="cell_type", unlabeled_category="Unknown",
)
lvae.train(max_epochs=20, n_samples_per_label=100, accelerator="gpu", devices=1)
adata.obsm["X_scANVI"] = lvae.get_latent_representation()
adata.obs["pred_cell_type"] = lvae.predict()
accelerator="gpu", devices=1 is the PyTorch-Lightning spelling; the legacy
use_gpu= kwarg was removed in scvi-tools 1.x and now raises TypeError.
Differential expression
de = model.differential_expression(
groupby="leiden", group1="3",
mode="change", delta=0.25,
)
top = de.sort_values("proba_de", ascending=False).head(50)
For one-vs-rest leave group2 out — "rest" is scanpy's
rank_genes_groups convention, not scvi-tools'; here group2 is a literal
category name and "rest" would match zero cells.
scvi-tools ≥1.4 defaults to mode="vanilla", whose result columns are
exactly:
['proba_m1', 'proba_m2', 'bayes_factor', 'scale1', 'scale2', 'raw_mean1',
'raw_mean2', 'non_zeros_proportion1', 'non_zeros_proportion2',
'raw_normalized_mean1', 'raw_normalized_mean2', 'comparison', 'group1',
'group2']
— no lfc_*, no proba_de, no is_de_fdr_*. Pass mode="change" to
get lfc_mean / lfc_median / proba_de / is_de_fdr_0.05. Sort on
proba_de (or on bayes_factor if you deliberately stayed in vanilla
mode).
Output format
| Key | What |
|---|
adata.obsm["X_scVI"] | n_cells × n_latent batch-corrected embedding |
adata.obsm["X_scANVI"] | label-aware embedding (better separates known classes) |
adata.obs["pred_cell_type"] | scANVI predicted label per cell |
adata.layers["scvi_normalized"] | decoded expression, library-size normalized |
| DE dataframe | per-gene lfc_* / proba_de (with mode="change") |
Remote compute
A100-class GPU recommended for >50k cells. The prebuilt singlecell_gpu
Modal env ships scvi-tools 1.4.2 + scanpy 1.11.5 + anndata 0.11.4 — read
compute_details({provider: 'byoc:modal', mode: 'read'}) for the current
image ref, then:
c = host.compute.create('byoc:modal', provider_params={'modal': {
'image': '<image ref from compute_details>',
'gpu': 'A100',
'cpu': 8,
'memory': 32768,
'timeout': 3600,
}})
job = c.submit_job(
intent="scVI+scANVI on 80k cells — 1×A100, ~15 min",
inputs=[
{"src": "dataset.h5ad", "dst_filename": "dataset.h5ad"},
{"src": "pipeline.py", "dst_filename": "pipeline.py"},
],
command="python pipeline.py",
outputs=["out/**"],
timeout_seconds=2400,
)
print(job.job_id)
h5ad_safe_obs is auto-loaded into the local analysis kernel only — in
pipeline.py running on Modal, paste the helper at the top of the script
(or inline the pd.Index(np.asarray(..., dtype=object)) coercion) before
.write_h5ad().
Then call the wait_for_notification brain-tool. When compute_done
arrives, save_artifacts(payload["featured_files"]). For the full result
dict, re-enter the kernel and bind the compute handle (not the job)
separately — .close() lives on the handle, not on the job:
h = host.compute.create('byoc:modal')
res = h.attach_job(job_id).result()
h.close()
See the remote-compute-modal skill for orchestration details.
Gotchas
| Gotcha | What happens / fix |
|---|
differential_expression() defaults to mode="vanilla" (scvi-tools ≥1.4) | KeyError: 'lfc_mean' / 'proba_de' when sorting — pass mode="change" to get lfc_*/proba_de/is_de_fdr_*; in vanilla mode sort on bayes_factor. |
adata.obs index/columns are string[pyarrow] (ArrowStringArray) | .write_h5ad() dies with IORegistryError: No method registered for writing <class 'pandas.arrays.ArrowStringArray'> (anndata #2377). Coerce before writing: adata.obs = h5ad_safe_obs(adata.obs) (kernel helper — local kernel only; inline the coercion in remote pipeline.py). .astype(str) alone is not enough — on a pyarrow-backed Index/Series it returns another Arrow-backed array; round-trip through np.asarray(..., dtype=object). anndata.settings.allow_write_nullable_strings = True does not cover Arrow-backed strings. |
use_gpu= kwarg | Removed in 1.x → TypeError: train() got an unexpected keyword argument 'use_gpu'. Use accelerator="gpu", devices=1. |
Log-normalized data fed to setup_anndata | Silent garbage — scVI's NB likelihood needs raw integer counts. Stash counts in adata.layers["counts"] before normalize/log1p and pass layer="counts". |
Troubleshooting
| Symptom | Fix |
|---|
KeyError: 'lfc_mean' (or 'proba_de', 'is_de_fdr_0.05') on DE result | Add mode="change" to differential_expression(); the default vanilla mode has no LFC columns. |
IORegistryError: No method registered for writing <class 'pandas.arrays.ArrowStringArray'> on .write_h5ad() | adata.obs = h5ad_safe_obs(adata.obs) (and adata.var if needed) before writing. The allow_write_nullable_strings flag does not help here. |
TypeError: ... unexpected keyword argument 'use_gpu' | Replace with accelerator="gpu", devices=1. |
ValueError: ... non-negative integers / NB loss explodes | layer="counts" points at log/float data — restore raw counts. |
MisconfigurationException: No supported gpu backend found | No CUDA visible — drop accelerator/devices to fall back to CPU, or dispatch via Remote compute. |
UnicodeEncodeError: 'ascii' codec can't encode character ... writing a summary / printing | Container has no LANG so Python defaults to ASCII. Open files with encoding="utf-8" and/or sys.stdout.reconfigure(encoding="utf-8") at script top. The prebuilt singlecell_gpu env sets PYTHONIOENCODING=utf-8, so this only bites user-built images. |
AttributeError: ... object has no attribute 'close' on a job handle | You chained host.compute.create(...).attach_job(...) and called .close() on the job. Bind the compute handle separately and close that — see Remote compute above. |
Next: cluster on X_scVI with scanpy (sc.pp.neighbors(use_rep="X_scVI")
→ sc.tl.leiden → sc.tl.umap); for spatial deconvolution train
cell2location / DestVI / Tangram on the scRNA-seq reference.