esm
About
This skill provides a comprehensive toolkit for EvolutionaryScale protein language models, enabling protein sequence, structure, and function tasks like generation, inverse folding, and embeddings. It supports both local execution with open weights via the `esm` PyPI package and cloud APIs via Biohub/Forge. Use it for generative protein design with ESM3, efficient embeddings with ESM C, or structure prediction with ESMFold2.
Quick Install
Claude Code
Recommendednpx skills add K-Dense-AI/claude-scientific-skills -a claude-code/plugin add https://github.com/K-Dense-AI/claude-scientific-skillsgit clone https://github.com/K-Dense-AI/claude-scientific-skills.git ~/.claude/skills/esmCopy and paste this command in Claude Code to install this skill
Documentation
ESM: Evolutionary Scale Modeling
Overview
ESM provides state-of-the-art protein language models for understanding, generating, and designing proteins. This skill enables working with two model families: ESM3 for generative protein design across sequence, structure, and function, and ESM C for efficient protein representation learning and embeddings.
Core Capabilities
1. Protein Sequence Generation with ESM3
Generate novel protein sequences with desired properties using multimodal generative modeling.
When to use:
- Designing proteins with specific functional properties
- Completing partial protein sequences
- Generating variants of existing proteins
- Creating proteins with desired structural characteristics
Basic usage:
from esm.models.esm3 import ESM3
from esm.sdk.api import ESM3InferenceClient, ESMProtein, GenerationConfig
# Load model locally
model: ESM3InferenceClient = ESM3.from_pretrained("esm3-sm-open-v1").to("cuda")
# Create protein prompt
protein = ESMProtein(sequence="MPRT___KEND") # '_' represents masked positions
# Generate completion
protein = model.generate(protein, GenerationConfig(track="sequence", num_steps=8))
print(protein.sequence)
For remote/cloud usage via Forge API:
import os
import esm
from esm.sdk.api import ESMProtein, GenerationConfig
# Same interface as local ESM3 — token from ESM_API_KEY (see Authentication)
model = esm.sdk.client("esm3-medium-2024-08", token=os.environ["ESM_API_KEY"])
# Generate
protein = model.generate(protein, GenerationConfig(track="sequence", num_steps=8))
See references/esm3-api.md for detailed ESM3 model specifications, advanced generation configurations, and multimodal prompting examples.
2. Structure Prediction and Inverse Folding
Use ESM3's structure track for structure prediction from sequence or inverse folding (sequence design from structure).
Structure prediction:
from esm.sdk.api import ESM3InferenceClient, ESMProtein, GenerationConfig
# Predict structure from sequence
protein = ESMProtein(sequence="MPRTKEINDAGLIVHSP...")
protein_with_structure = model.generate(
protein,
GenerationConfig(track="structure", num_steps=protein.sequence.count("_"))
)
# Access predicted structure
coordinates = protein_with_structure.coordinates # 3D coordinates
pdb_string = protein_with_structure.to_pdb()
Inverse folding (sequence from structure):
# Design sequence for a target structure
protein_with_structure = ESMProtein.from_pdb("target_structure.pdb")
protein_with_structure.sequence = None # Remove sequence
# Generate sequence that folds to this structure
designed_protein = model.generate(
protein_with_structure,
GenerationConfig(track="sequence", num_steps=50, temperature=0.7)
)
3. Protein Embeddings with ESM C
Generate high-quality embeddings for downstream tasks like function prediction, classification, or similarity analysis.
When to use:
- Extracting protein representations for machine learning
- Computing sequence similarities
- Feature extraction for protein classification
- Transfer learning for protein-related tasks
Basic usage:
from esm.models.esmc import ESMC
from esm.sdk.api import ESMProtein
# Load ESM C model
model = ESMC.from_pretrained("esmc-300m").to("cuda")
# Get embeddings
protein = ESMProtein(sequence="MPRTKEINDAGLIVHSP...")
protein_tensor = model.encode(protein)
# Generate embeddings
embeddings = model.forward(protein_tensor)
Batch processing:
# Encode multiple proteins
proteins = [
ESMProtein(sequence="MPRTKEIND..."),
ESMProtein(sequence="AGLIVHSPQ..."),
ESMProtein(sequence="KTEFLNDGR...")
]
embeddings_list = [model.logits(model.forward(model.encode(p))) for p in proteins]
See references/esm-c-api.md for ESM C model details, efficiency comparisons, and advanced embedding strategies.
4. Function Conditioning and Annotation
Use ESM3's function track to generate proteins with specific functional annotations or predict function from sequence.
Function-conditioned generation:
from esm.sdk.api import ESMProtein, FunctionAnnotation, GenerationConfig
# Create protein with desired function
protein = ESMProtein(
sequence="_" * 200, # Generate 200 residue protein
function_annotations=[
FunctionAnnotation(label="fluorescent_protein", start=50, end=150)
]
)
# Generate sequence with specified function
functional_protein = model.generate(
protein,
GenerationConfig(track="sequence", num_steps=200)
)
5. Chain-of-Thought Generation
Iteratively refine protein designs using ESM3's chain-of-thought generation approach.
from esm.sdk.api import GenerationConfig
# Multi-step refinement
protein = ESMProtein(sequence="MPRT" + "_" * 100 + "KEND")
# Step 1: Generate initial structure
config = GenerationConfig(track="structure", num_steps=50)
protein = model.generate(protein, config)
# Step 2: Refine sequence based on structure
config = GenerationConfig(track="sequence", num_steps=50, temperature=0.5)
protein = model.generate(protein, config)
# Step 3: Predict function
config = GenerationConfig(track="function", num_steps=20)
protein = model.generate(protein, config)
6. Batch Processing with Forge API
Process multiple proteins efficiently using Forge's async executor.
import os
import asyncio
import esm
client = esm.sdk.client("esm3-medium-2024-08", token=os.environ["ESM_API_KEY"])
# Async batch processing
async def batch_generate(proteins_list):
tasks = [
client.async_generate(protein, GenerationConfig(track="sequence"))
for protein in proteins_list
]
return await asyncio.gather(*tasks)
# Execute
proteins = [ESMProtein(sequence=f"MPRT{'_' * 50}KEND") for _ in range(10)]
results = asyncio.run(batch_generate(proteins))
See references/forge-api.md for detailed Forge API documentation, authentication, rate limits, and batch processing patterns.
Model Selection Guide
ESM3 Models (Generative):
esm3-sm-open-v1(1.4B) - Open weights, local usage, good for experimentationesm3-medium-2024-08(7B) - Best balance of quality and speed (Forge only)esm3-large-2024-03(98B) - Highest quality, slower (Forge only)
ESM C Models (Embeddings):
esmc-300m(30 layers) - Lightweight, fast inference (open weights, local)esmc-600m(36 layers) - Balanced performance (open weights, local)esmc-6b-2024-12(80 layers) - Maximum quality (Forge API; local 6B weights require Forge or SageMaker)
Selection criteria:
- Local development/testing: Use
esm3-sm-open-v1oresmc-300m - Production quality: Use
esm3-medium-2024-08via Forge - Maximum accuracy: Use
esm3-large-2024-03oresmc-6b-2024-12via Forge - High throughput: Use Forge API with batch executor
- Cost optimization: Use smaller models, implement caching strategies
Installation
Install from PyPI (esm on PyPI by EvolutionaryScale). Requires Python 3.12 (>=3.12,<3.13 for current releases).
Basic installation:
uv pip install "esm==3.2.3"
With Flash Attention (recommended for faster inference on NVIDIA GPUs):
uv pip install "esm==3.2.3"
uv pip install flash-attn --no-build-isolation
The Forge client ships with the esm package — no extra install for cloud inference.
Authentication
Forge API access requires an API key. Never hardcode tokens in scripts or commit them to version control.
- Check whether
ESM_API_KEYis already set in the environment. - If not, check a local
.envforESM_API_KEYonly (do not load unrelated secrets). - If still missing, create a key at Forge (or Biohub developer console for newer ESMFold2 endpoints).
import os
token = os.environ["ESM_API_KEY"] # raises KeyError if unset
esm.sdk.client() reads ESM_API_KEY automatically when token is omitted.
Biohub platform: EvolutionaryScale is migrating some services (including ESMFold2 structure prediction) to biohub.ai. SDK class names may still reference "Forge". See references/biohub-platform.md for ESMFold2 and Biohub-specific setup.
Common Workflows
For detailed examples and complete workflows, see references/workflows.md which includes:
- Novel GFP design with chain-of-thought
- Protein variant generation and screening
- Structure-based sequence optimization
- Function prediction pipelines
- Embedding-based clustering and analysis
References
This skill includes comprehensive reference documentation:
references/esm3-api.md- ESM3 model architecture, API reference, generation parameters, and multimodal promptingreferences/esm-c-api.md- ESM C model details, embedding strategies, and performance optimizationreferences/forge-api.md- Forge platform documentation, authentication, batch processing, and deploymentreferences/biohub-platform.md- Biohub API migration, ESMFold2 structure prediction, and developer-console authreferences/workflows.md- Complete examples and common workflow patterns
These references contain detailed API specifications, parameter descriptions, and advanced usage patterns. Load them as needed for specific tasks.
Best Practices
For generation tasks:
- Start with smaller models for prototyping (
esm3-sm-open-v1) - Use temperature parameter to control diversity (0.0 = deterministic, 1.0 = diverse)
- Implement iterative refinement with chain-of-thought for complex designs
- Validate generated sequences with structure prediction or wet-lab experiments
For embedding tasks:
- Batch process sequences when possible for efficiency
- Cache embeddings for repeated analyses
- Normalize embeddings when computing similarities
- Use appropriate model size based on downstream task requirements
For production deployment:
- Use Forge API for scalability and latest models
- Implement error handling and retry logic for API calls
- Monitor token usage and implement rate limiting
- Consider AWS SageMaker deployment for dedicated infrastructure
Resources and Documentation
- GitHub Repository: https://github.com/evolutionaryscale/esm (releases through v3.2.x; see also Biohub/esm for ESMFold2)
- Forge Platform: https://forge.evolutionaryscale.ai
- Biohub Platform: https://biohub.ai
- Scientific Paper: Hayes et al., Science (2025) - https://www.science.org/doi/10.1126/science.ads0018
- Blog Posts:
- ESM3 Release: https://www.evolutionaryscale.ai/blog/esm3-release
- ESM C Launch: https://www.evolutionaryscale.ai/blog/esm-cambrian
- Community: Slack community at https://bit.ly/3FKwcWd
- Model Weights: HuggingFace EvolutionaryScale organization
Responsible Use
ESM is designed for beneficial applications in protein engineering, drug discovery, and scientific research. Follow the Responsible Biodesign Framework (https://responsiblebiodesign.ai/) when designing novel proteins. Consider biosafety and ethical implications of protein designs before experimental validation.
GitHub Repository
Related Skills
content-collections
MetaThis skill provides a production-tested setup for Content Collections, a TypeScript-first tool that transforms Markdown/MDX files into type-safe data collections with Zod validation. Use it when building blogs, documentation sites, or content-heavy Vite + React applications to ensure type safety and automatic content validation. It covers everything from Vite plugin configuration and MDX compilation to deployment optimization and schema validation.
polymarket
MetaThis skill enables developers to build applications with the Polymarket prediction markets platform, including API integration for trading and market data. It also provides real-time data streaming via WebSocket to monitor live trades and market activity. Use it for implementing trading strategies or creating tools that process live market updates.
creating-opencode-plugins
MetaThis skill helps developers create OpenCode plugins that hook into 25+ event types like commands, files, and LSP operations. It provides the plugin structure, event API specifications, and implementation patterns for JavaScript/TypeScript modules. Use it when you need to intercept, monitor, or extend the OpenCode AI assistant's lifecycle with custom event-driven logic.
sglang
MetaSGLang is a high-performance LLM serving framework that specializes in fast, structured generation for JSON, regex, and agentic workflows using its RadixAttention prefix caching. It delivers significantly faster inference, especially for tasks with repeated prefixes, making it ideal for complex, structured outputs and multi-turn conversations. Choose SGLang over alternatives like vLLM when you need constrained decoding or are building applications with extensive prefix sharing.
