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CENO-P-300M

CENO-P-300M is the multi-species alignment (MSA) post-trained variant of the 300M CENO DNA foundation model, for variant effect prediction (VEP). It carries intra_encoding_pattern in its config and ships the MSA scoring path (modeling_ceno_p.py), which consumes a per-token seq_idx to score packed MSA inputs.

It is part of the CENO DNA foundation model family. Model code, the VEP pipeline, and a generation demo live in the companion CENO code repository. Run VEP via the TraitGym example there. This checkpoint is standalone-loadable with trust_remote_code=True — the model code is bundled here.

Model details

Family CENO-P (MSA post-trained)
Training stage MSA post-training (VEP)
Parameters 307.5M
Precision float32
model_type ceno
Architecture class CENOPForCausalLM
Auto-map (model) modeling_ceno_p.CENOPForCausalLM
Auto-map (tokenizer) ceno_tokenizer.CENOCharLevelTokenizer

Architecture

Property Value
Hidden layers 9
Hidden size 1024
Attention heads 8
Intermediate size 4096
Experts (MoE) 8 (top-2 per token)
Vocabulary 512 (byte / character-level)

The backbone is a Mamba / Attention / Mixture-of-Experts hybrid (Nemotron-H architecture). The tokenizer is character-level, mapping DNA bases to their ASCII byte codes.

Usage

from transformers import AutoModelForCausalLM, AutoTokenizer

ckpt = "CladeTeam/CENO-P-300M"
model = AutoModelForCausalLM.from_pretrained(ckpt, trust_remote_code=True)
tokenizer = AutoTokenizer.from_pretrained(ckpt, trust_remote_code=True)

ids = tokenizer.encode("ATCGATCG", return_tensors="pt")
# out = model.generate(ids, max_new_tokens=128)   # needs a CUDA GPU (Mamba kernels)

The Mamba layers require CUDA kernels, so forward passes and generation need a GPU. Config, tokenizer, and weight loading are CPU-safe.

Intended use

  • Base checkpoints (CENO-*) — genomic-sequence generation and embedding extraction; downstream adaptation (fine-tuning, probing) for genomics tasks.
  • MSA checkpoints (CENO-P-*) — variant effect prediction (VEP) by scoring wild-type vs. variant sequences with delta log-likelihood. See the TraitGym VEP example in the CENO code repository.

License

Apache-2.0. The bundled model code is derived from NVIDIA's Nemotron-H Hugging Face implementation (Apache-2.0); the tokenizer is derived from the Arc Institute Evo2 CharLevelTokenizer (Apache-2.0). See the LICENSE and NOTICE files in this repository for full attribution.

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