boltz

Structure prediction using Boltz-1/Boltz-2, an open biomolecular structure predictor. Use this skill when: (1) Predicting protein complex structures, (2) Validating designed binders, (3) Need open-source alternative to AF2, (4) Predicting protein-ligand complexes, (5) Using local GPU resources. For QC thresholds, use protein-qc. For AlphaFold2 prediction, use alphafold. For Chai prediction, use chai.

Safety Notice

This listing is imported from skills.sh public index metadata. Review upstream SKILL.md and repository scripts before running.

Copy this and send it to your AI assistant to learn

Install skill "boltz" with this command: npx skills add adaptyvbio/protein-design-skills/adaptyvbio-protein-design-skills-boltz

Boltz Structure Prediction

Prerequisites

RequirementMinimumRecommended
Python3.10+3.11
CUDA12.0+12.1+
GPU VRAM24GB48GB (L40S)
RAM32GB64GB

How to run

First time? See Installation Guide to set up Modal and biomodals.

Option 1: Modal

cd biomodals
modal run modal_boltz.py \
  --input-faa complex.fasta \
  --out-dir predictions/

GPU: L40S (48GB) | Timeout: 1800s default

Option 2: Local installation

pip install boltz

boltz predict \
  --fasta complex.fasta \
  --output predictions/

Key parameters

ParameterDefaultRangeDescription
--recycling_steps31-10Recycling iterations
--sampling_steps20050-500Diffusion steps
--use_msa_servertrueboolUse MSA server

FASTA Format

>protein_A
MKTAYIAKQRQISFVK...
>protein_B
MVLSPADKTNVKAAWG...

Output format

predictions/
├── model_0.cif       # Best model (CIF format)
├── confidence.json   # pLDDT, pTM, ipTM
└── pae.npy          # PAE matrix

Note: Boltz outputs CIF format. Convert to PDB if needed:

from Bio.PDB import MMCIFParser, PDBIO
parser = MMCIFParser()
structure = parser.get_structure("model", "model_0.cif")
io = PDBIO()
io.set_structure(structure)
io.save("model_0.pdb")

Comparison

FeatureBoltz-1Boltz-2AF2-Multimer
MSA-free modeYesYesNo
DiffusionYesYesNo
SpeedFastFasterSlower
Open sourceYesYesYes

Sample output

Successful run

$ boltz predict --fasta complex.fasta --output predictions/
[INFO] Loading Boltz-1 weights...
[INFO] Predicting structure...
[INFO] Saved model to predictions/model_0.cif

predictions/confidence.json:
{
  "ptm": 0.78,
  "iptm": 0.65,
  "plddt": 0.81
}

What good output looks like:

  • pTM: > 0.7 (confident global structure)
  • ipTM: > 0.5 (confident interface)
  • pLDDT: > 0.7 (confident per-residue)
  • CIF file: ~100-500 KB for typical complex

Decision tree

Should I use Boltz?
│
├─ What are you predicting?
│  ├─ Protein-protein complex → Boltz ✓ or Chai or ColabFold
│  ├─ Protein + ligand → Boltz ✓ or Chai
│  └─ Single protein → Use ESMFold (faster)
│
├─ Need MSA?
│  ├─ No / want speed → Boltz ✓
│  └─ Yes / maximum accuracy → ColabFold
│
└─ Why Boltz over Chai?
   ├─ Open weights preference → Boltz ✓
   ├─ Boltz-2 speed → Boltz ✓
   └─ DNA/RNA support → Consider Chai

Typical performance

Campaign SizeTime (L40S)Cost (Modal)Notes
100 complexes30-45 min~$8Standard validation
500 complexes2-3h~$35Large campaign
1000 complexes4-6h~$70Comprehensive

Per-complex: ~15-30s for typical binder-target complex.


Verify

find predictions -name "*.cif" | wc -l  # Should match input count

Troubleshooting

Low confidence: Increase recycling_steps OOM errors: Use MSA-free mode or A100-80GB Slow prediction: Reduce sampling_steps

Error interpretation

ErrorCauseFix
RuntimeError: CUDA out of memoryComplex too largeUse --use_msa_server false or larger GPU
KeyError: 'iptm'Single chain onlyEnsure FASTA has 2+ chains
FileNotFoundError: weightsMissing modelRun boltz download first
ValueError: invalid residueNon-standard AACheck for modified residues in sequence

Boltz-1 vs Boltz-2

AspectBoltz-1Boltz-2
SpeedFast~2x faster
AccuracyGoodImproved
LigandsBasicBetter support
Release2024Late 2024

Next: protein-qc for filtering and ranking.

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

Related Skills

Related by shared tags or category signals.

General

cell-free-expression

No summary provided by upstream source.

Repository SourceNeeds Review
General

binding-characterization

No summary provided by upstream source.

Repository SourceNeeds Review
General

protein-qc

No summary provided by upstream source.

Repository SourceNeeds Review
General

ipsae

No summary provided by upstream source.

Repository SourceNeeds Review