drugsda-mol-similarity

Compute the Tanimoto similarities between a target molecule and a list of candidate molecules using Morgan fingerprints.

157 stars

Best use case

drugsda-mol-similarity is best used when you need a repeatable AI agent workflow instead of a one-off prompt.

Compute the Tanimoto similarities between a target molecule and a list of candidate molecules using Morgan fingerprints.

Teams using drugsda-mol-similarity should expect a more consistent output, faster repeated execution, less prompt rewriting.

When to use this skill

  • You want a reusable workflow that can be run more than once with consistent structure.

When not to use this skill

  • You only need a quick one-off answer and do not need a reusable workflow.
  • You cannot install or maintain the underlying files, dependencies, or repository context.

Installation

Claude Code / Cursor / Codex

$curl -o ~/.claude/skills/drugsda-mol-similarity/SKILL.md --create-dirs "https://raw.githubusercontent.com/InternScience/DrClaw/main/drclaw/agent_hub/templates/pharmacy/skills/drugsda-mol-similarity/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/drugsda-mol-similarity/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How drugsda-mol-similarity Compares

Feature / Agentdrugsda-mol-similarityStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

Compute the Tanimoto similarities between a target molecule and a list of candidate molecules using Morgan fingerprints.

Where can I find the source code?

You can find the source code on GitHub using the link provided at the top of the page.

SKILL.md Source

# Molecule Similarity Calculation

## Usage

### 1. MCP Server Definition

```python
import json
from mcp.client.streamable_http import streamablehttp_client
from mcp import ClientSession

class DrugSDAClient:    
    def __init__(self, server_url: str):
        self.server_url = server_url
        self.session = None
        
    async def connect(self):
        print(f"server url: {self.server_url}")
        try:
            self.transport = streamablehttp_client(
                url=self.server_url,
                headers={"SCP-HUB-API-KEY": "sk-a0033dde-b3cd-413b-adbe-980bc78d6126"}
            )
            self.read, self.write, self.get_session_id = await self.transport.__aenter__()
            
            self.session_ctx = ClientSession(self.read, self.write)
            self.session = await self.session_ctx.__aenter__()

            await self.session.initialize()
            session_id = self.get_session_id()
            
            print(f"✓ connect success")
            return True
            
        except Exception as e:
            print(f"✗ connect failure: {e}")
            import traceback
            traceback.print_exc()
            return False
    
    async def disconnect(self):
        try:
            if self.session:
                await self.session_ctx.__aexit__(None, None, None)
            if hasattr(self, 'transport'):
                await self.transport.__aexit__(None, None, None)
            print("✓ already disconnect")
        except Exception as e:
            print(f"✗ disconnect error: {e}")
    
    def parse_result(self, result):
        try:
            if hasattr(result, 'content') and result.content:
                content = result.content[0]
                if hasattr(content, 'text'):
                    return json.loads(content.text)
            return str(result)
        except Exception as e:
            return {"error": f"parse error: {e}", "raw": str(result)}
```

### 2. Calculate SMILES similarity

The description of tool *calculate_smiles_similarity*.

```tex
Compute the Tanimoto similarities between a target molecule and a list of candidate molecules using Morgan fingerprints.
Args:
    target_smiles (str): SMILES string of the target molecule
    candidate_smiles_list (List[str]): List of candidate molecule SMILES strings
Return:
    status (str): success/error
    msg (str): message
    similarities (List[dict]): List of dict, each containing the keys 'smiles' and 'score'.
        --smiles (str): A SMILES string of candidate_smiles_list
        --score (float): Similarity value between the candidate SMILES and the target SMILES
```

How to use tool *calculate_smiles_similarity* :

```python
client = DrugSDAClient("https://scp.intern-ai.org.cn/api/v1/mcp/2/DrugSDA-Tool")
if not await client.connect():
    print("connection failed")
    return

response = await client.session.call_tool(
    "calculate_smiles_similarity",
    arguments={
        "target_smiles": target_smiles,
        "candidate_smiles_list": candidate_smiles_list
    }
)
result = client.parse_result(response)
similarities = result["similarities"]

await client.disconnect() 
```

Related Skills

protein_similarity_search

157
from InternScience/DrClaw

Protein Similarity Search - Search for similar proteins: extract sequence from PDB, search structures with FoldSeek, find homologs with STRING, and check UniProt. Use this skill for bioinformatics tasks involving extract pdb sequence foldseek search get best similarity hits between species search uniprotkb entries. Combines 4 tools from 3 SCP server(s).

drugsda-target-retrieve

157
from InternScience/DrClaw

Search the protein information from the input gene name and downloads the optimal PDB or AlphaFold structures.

drugsda-rgroup-sampling

157
from InternScience/DrClaw

Generate new molecules sampling from the input scaffold.

drugsda-prosst

157
from InternScience/DrClaw

Given a protein sequence and its structure, employ ProSST model to predict mutation effects and obtain the top-k mutated sequences.

drugsda-peptide-sampling

157
from InternScience/DrClaw

Generate new peptide molecules sampling from the input peptide sequence.

drugsda-p2rank

157
from InternScience/DrClaw

No description provided.

drugsda-mol2mol-sampling

157
from InternScience/DrClaw

Generate new molecules sampling from the input molecule.

drugsda-mol-properties

157
from InternScience/DrClaw

Calculate different types of molecular properties based on SMILES strings, covering basic physicochemical properties, hydrophobicity, hydrogen bonding capability, molecular complexity, topological structures, charge distribution, and custom complexity metrics, respectively.

drugsda-linker-sampling

157
from InternScience/DrClaw

Generate new molecules sampling from the input two warhead fragments.

drugsda-file-transfer

157
from InternScience/DrClaw

Implement data transmission between the local computer and the MCP Server using Base64 encoding

drugsda-esmfold

157
from InternScience/DrClaw

Use ESMFold model to predict 3D structure of the input protein sequence.

drugsda-drug-likeness

157
from InternScience/DrClaw

Compute the drug-likeness metrics (QED score and Number of violations of Lipinski's Rule of Five) of the input candidate molecules (SMILES format).