Skillquality 0.51

bindcraft

End-to-end binder design using BindCraft hallucination. Use this skill when: (1) Designing protein binders with built-in AF2 validation, (2) Running production-quality binder campaigns, (3) Using different design protocols (fast, default, slow), (4) Need joint backbone and sequen

Price
free
Protocol
skill
Verified
no

What it does

BindCraft Binder Design

Prerequisites

RequirementMinimumRecommended
Python3.9+3.10
CUDA11.7+12.0+
GPU VRAM32GB48GB (L40S)
RAM32GB64GB

How to run

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

Option 1: Modal (recommended)

cd biomodals
modal run modal_bindcraft.py \
  --target-pdb target.pdb \
  --target-chain A \
  --binder-lengths 70-100 \
  --hotspots "A45,A67,A89" \
  --num-designs 50

GPU: L40S (48GB) | Timeout: 3600s default

Option 2: Local installation

git clone https://github.com/martinpacesa/BindCraft.git
cd BindCraft
pip install -r requirements.txt

python bindcraft.py \
  --target target.pdb \
  --target_chains A \
  --binder_lengths 70-100 \
  --hotspots A45,A67,A89 \
  --num_designs 50

Key parameters

ParameterDefaultRangeDescription
--target-pdbrequiredpathTarget structure
--target-chainrequiredA-ZTarget chain(s)
--binder-lengths70-10040-150Length range
--hotspotsNoneresiduesTarget hotspots
--num-designs501-500Number of designs
--protocoldefaultfast/default/slowQuality vs speed

Protocols

ProtocolSpeedQualityUse Case
fastFastLowerInitial screening
defaultMediumGoodStandard campaigns
slowSlowHighFinal production

Output format

output/
├── design_0/
│   ├── binder.pdb         # Final design
│   ├── complex.pdb        # Binder + target
│   ├── metrics.json       # QC scores
│   └── trajectory/        # Optimization trajectory
├── design_1/
│   └── ...
└── summary.csv            # All metrics

Metrics Output

{
  "plddt": 0.89,
  "ptm": 0.78,
  "iptm": 0.62,
  "pae": 8.5,
  "rmsd": 1.2,
  "sequence": "MKTAYIAK..."
}

Sample output

Successful run

$ modal run modal_bindcraft.py --target-pdb target.pdb --num-designs 50
[INFO] Loading BindCraft model...
[INFO] Target: target.pdb (chain A)
[INFO] Hotspots: A45, A67, A89
[INFO] Protocol: default
[INFO] Generating 50 designs...

Design 1/50:
  Length: 78 AA
  pLDDT: 0.89, ipTM: 0.62
  Saved: output/design_0/

Design 50/50:
  Length: 85 AA
  pLDDT: 0.86, ipTM: 0.58
  Saved: output/design_49/

[INFO] Campaign complete. Summary: output/summary.csv
Pass rate: 32/50 (64%) with ipTM > 0.5

What good output looks like:

  • pLDDT: > 0.85 for most designs
  • ipTM: > 0.5 for passing designs
  • Pass rate: 30-70% depending on target
  • Diverse sequences across designs

Decision tree

Should I use BindCraft?
│
├─ What type of design?
│  ├─ Production-quality binders → BindCraft ✓
│  ├─ High diversity exploration → RFdiffusion
│  └─ All-atom precision → BoltzGen
│
├─ What matters most?
│  ├─ Experimental success rate → BindCraft ✓
│  ├─ Speed / diversity → RFdiffusion + ProteinMPNN
│  ├─ AF2 gradient optimization → ColabDesign
│  └─ All-atom control → BoltzGen
│
└─ Compute resources?
   ├─ Have L40S/A100 → BindCraft ✓
   └─ Only A10G → RFdiffusion + ProteinMPNN

Typical performance

Campaign SizeTime (L40S)Cost (Modal)Notes
50 designs2-4h~$15Quick campaign
100 designs4-8h~$30Standard
200 designs8-16h~$60Large campaign

Expected pass rate: 30-70% with ipTM > 0.5 (target-dependent).


Verify

find output -name "binder.pdb" | wc -l  # Should match num_designs

Troubleshooting

Low ipTM scores: Check hotspot selection, increase designs Slow convergence: Use fast protocol for screening OOM errors: Reduce num_models, use L40S GPU Poor diversity: Lower sampling_temp, run multiple seeds

Error interpretation

ErrorCauseFix
RuntimeError: CUDA out of memoryLarge target or long binderUse L40S/A100, reduce binder length
ValueError: no hotspotsHotspots not foundCheck residue numbering
TimeoutErrorDesign taking too longUse fast protocol

Next: Rank by ipsae → experimental validation.

Capabilities

skillsource-adaptyvbioskill-bindcrafttopic-agent-skillstopic-claude-codetopic-protein-designtopic-protein-engineering

Install

Installnpx skills add adaptyvbio/protein-design-skills
Transportskills-sh
Protocolskill

Quality

0.51/ 1.00

deterministic score 0.51 from registry signals: · indexed on github topic:agent-skills · 126 github stars · SKILL.md body (4,318 chars)

Provenance

Indexed fromgithub
Enriched2026-05-02 12:54:48Z · deterministic:skill-github:v1 · v1
First seen2026-04-18
Last seen2026-05-02

Agent access