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molclaw-chai1-predict
// Predict protein structures with Chai-1 from sequence or FASTA input and return model scoring summaries.
// Predict protein structures with Chai-1 from sequence or FASTA input and return model scoring summaries.
Predict the ADMET (absorption, distribution, metabolism, excretion, and toxicity) properties of the input molecules.
Predict binding affinity between target protein sequence and small molecule SMILES using Boltz-2.
Chroma toolkit skill covering chroma_monomer for single-chain generation, chroma_complex for multi-chain assembly generation, and chroma_symmetry for symmetry-constrained protein design.
Retrieve SMILES strings from PubChem database using compound names.
Generate new molecules de novo.
[CURRENTLY UNAVAILABLE] DiffDock protein-ligand docking. This tool is not deployed on the current MCP server. Use molclaw-quickvina-docking or molclaw-karmadock-tool as alternatives.
| name | molclaw-chai1-predict |
| description | Predict protein structures with Chai-1 from sequence or FASTA input and return model scoring summaries. |
| license | MIT license |
| metadata | {"skill-author":"PJLab"} |
Note:
molclaw-file-transfer before execution.molclaw-pdbfixer before execution.molclaw-scp-server to complete tool invocation.The description of tool chai1_predict.
Predict protein structures with Chai-1 from sequence or FASTA input, run inference (unless dry-run), and return per-model scoring summaries for downstream selection.
Args:
mode (str): One of 'sequence', 'fasta', or 'info'; API also accepts 'predict' as an alias of 'sequence'.
seq (str|None): Comma-separated protein sequence(s) for sequence mode, e.g., "MKFL...,AIQR...".
name (str|None): Comma-separated chain names corresponding to `seq`; defaults to chain_1, chain_2, ... if omitted.
fasta_path (str|None): Path to an input FASTA file for fasta mode.
samples (int): Number of models/samples to generate, must be >= 1. Default: 5.
dry_run (bool): If True, only prepare inputs and write `input.fasta` without running Chai-1 inference.
Return:
status (str): 'success' or 'error'.
msg (str): Human-readable summary or error message.
output_dir (str|None): Run artifact directory path.
model_scores (List[dict]|None): Per-model summaries with keys 'model_idx', 'cif_path', 'scores', and 'score_path'.
best_model (dict|None): Top model summary with keys 'model_idx', 'aggregate_score', and 'cif_path'.
How to use tool chai1_predict :
response = await client.session.call_tool(
"chai1_predict",
arguments={
"mode": "sequence",
"seq": "MKFLILLFNILCLFPVLAADNHGVS",
"name": "my_protein",
"samples": 5,
"dry_run": True
}
)
result = client.parse_result(response)
best_model = result["best_model"]
# 1) Sequence mode (README/tool_factory validated; main mode)
{
"mode": "predict", # alias of sequence
"seq": "MKFLILLFNILCLFPVLAADNHGVS",
"name": "my_protein",
"dry_run": True
}
# 2) FASTA mode (wrapper/API supported variant mode)
{
"mode": "fasta",
"fasta_path": "/abs/path/input.fasta",
"samples": 5,
"dry_run": True
}
# 3) Info mode (source code run_chai1 behavior)
{
"mode": "info"
}