| name | evo2 |
| description | Score, embed, and generate DNA sequences with Evo 2, a long-context genomic foundation model. Use this skill when: (1) Computing per-nucleotide or per-sequence likelihoods for variant effect
scoring,
(2) Embedding genomic windows for downstream classification, (3) Generating DNA conditioned on a prefix, (4) Scoring regulatory or coding regions across species.
|
| license | Apache-2.0 |
| category | biomodels |
| requirements | ["gpu"] |
| metadata | {"display-name":"Evo 2","third_party":[{"kind":"weights","name":"Evo 2","provider":"Arc Institute","license":"Apache-2.0","terms_url":"https://github.com/ArcInstitute/evo2/blob/main/LICENSE"}]} |
Evo 2 — DNA Language Model
Prerequisites
| Requirement | Minimum | Recommended |
|---|
| Python | 3.11 | 3.12 (<3.13) |
| CUDA | 12.1+ | 12.4+ |
| GPU VRAM | 24 GB (7B bf16) | 80 GB (40B) |
| RAM | 32 GB | 128 GB |
How to run
Installation
pip install evo2
Loading and scoring
from evo2 import Evo2
model = Evo2("evo2_7b")
seqs = ["ATCG" * 50, "GGGCTTAA" * 25]
ll = model.score_sequences(seqs)
print(ll)
Generation
out = model.generate(
prompt_seqs=["ATGAAAGCT"],
n_tokens=256,
temperature=0.7,
)
print(out.sequences[0])
Models
| Name | Params | Context | VRAM (bf16) | Notes |
|---|
evo2_7b | 7 B | 1 M nt | ~22 GB | Default; fits on a single 24 GB+ GPU |
evo2_40b | 40 B | 1 M nt | ~78 GB | H100 80 GB or multi-GPU |
evo2_1b_base | 1 B | 8 K nt | ~6 GB | FP8 path requires sm_89+ (H100) |
Output format
score_sequences returns a list[float] (or np.ndarray) of mean log-likelihoods,
one per input sequence. More negative ⇒ less likely under the model. For variant
effect, compute Δll = ll_alt - ll_ref over a fixed window.
generate returns a GenerationOutput with .sequences (list[str]), .logits
(list[Tensor]), and .logprobs_mean (list[float]) — always populated, no flag required.
Decision tree
Need a DNA model?
│
├─ Per-base/per-sequence likelihood, generation → Evo 2 ✓
├─ Predict experimental tracks (expression, accessibility) → borzoi
└─ Protein, not DNA → fair-esm2 / esmfold2
Remote compute
7B/40B inference is GPU-bound (≥24 GB / 80 GB VRAM). Read
compute_details({provider, mode:'read'}) for an environment with evo2 +
flash-attn and a pre-cached HF weight mount, then submit:
c = host.compute.create(provider)
job = c.submit_job(
intent="Evo2-7B score 200bp variant window — 1×GPU, ~2 min",
inputs=[{"src": "score_evo2.py", "dst_filename": "score_evo2.py"}],
command="python3 score_evo2.py",
outputs=["scores.json"],
timeout_seconds=1800,
)
print(job.job_id)
Then call the wait_for_notification brain-tool. When the
compute_done notification arrives, act on its payload:
save_artifacts(payload["featured_files"])
For the full result dict (output_files, remote_workdir, …), re-enter the
kernel: c.attach_job(job_id).result() then c.close(). See the
remote-compute-ssh / remote-compute-modal skill for the orchestration
details.
Inside score_evo2.py, point HF_HOME at the provider's weight-cache mount
(path is in compute_details) and set HF_HUB_OFFLINE=1 so the loader
doesn't try to write refs/ into a read-only mount. Weight footprint:
~15 GB (7B), ~80 GB (40B).
Typical performance
| Task | 7B on H100 | Notes |
|---|
| Model load (cached) | ~5-7 min | First call hydrates weights |
score_sequences, 200×200bp | ~10-20 s | After load |
generate, 1×512 nt | ~15 s | |
Troubleshooting
| Symptom | Cause | Fix |
|---|
Transformer Engine not installed | No FP8 — falls back to bf16 | Informational only on non-H100; ignore |
| OOM on load | 40B on <80 GB GPU | Use evo2_7b or shard with device_map |
HF tries to write refs/main | HF_HOME points at RO mount | Set HF_HUB_OFFLINE=1 |
dtype mismatch in score_sequences | Passing tensors not strings | Pass list[str]; the API tokenises for you |
Next: pair with borzoi to predict track-level effects of the same
variants.