esm
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Comprehensive toolkit for protein language models including ESM3 (generative multimodal protein design across sequence, structure, and function) and ESM C (efficient protein embeddings and representations). Use this skill when working with protein sequences, structures, or function prediction; designing novel proteins; generating protein embeddings; performing inverse folding; or conducting protein engineering tasks. Supports both local model usage and cloud-based Forge API for scalable inference.
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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:
python
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:
python
from esm.sdk.forge import ESM3ForgeInferenceClient
from esm.sdk.api import ESMProtein, GenerationConfig
# Connect to Forge
model = ESM3ForgeInferenceClient(model="esm3-medium-2024-08", url="https://forge.evolutionaryscale.ai", token="<token>")
# Generate
protein = model.generate(protein, GenerationConfig(track="sequence", num_steps=8))See for detailed ESM3 model specifications, advanced generation configurations, and multimodal prompting examples.
references/esm3-api.md2. Structure Prediction and Inverse Folding
Use ESM3's structure track for structure prediction from sequence or inverse folding (sequence design from structure).
Structure prediction:
python
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):
python
# 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:
python
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:
python
# 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 for ESM C model details, efficiency comparisons, and advanced embedding strategies.
references/esm-c-api.md4. Function Conditioning and Annotation
Use ESM3's function track to generate proteins with specific functional annotations or predict function from sequence.
Function-conditioned generation:
python
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.
python
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.
python
from esm.sdk.forge import ESM3ForgeInferenceClient
import asyncio
client = ESM3ForgeInferenceClient(model="esm3-medium-2024-08", token="<token>")
# 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 for detailed Forge API documentation, authentication, rate limits, and batch processing patterns.
references/forge-api.mdModel Selection Guide
ESM3 Models (Generative):
- (1.4B) - Open weights, local usage, good for experimentation
esm3-sm-open-v1 - (7B) - Best balance of quality and speed (Forge only)
esm3-medium-2024-08 - (98B) - Highest quality, slower (Forge only)
esm3-large-2024-03
ESM C Models (Embeddings):
- (30 layers) - Lightweight, fast inference
esmc-300m - (36 layers) - Balanced performance
esmc-600m - (80 layers) - Maximum representation quality
esmc-6b
Selection criteria:
- Local development/testing: Use or
esm3-sm-open-v1esmc-300m - Production quality: Use via Forge
esm3-medium-2024-08 - Maximum accuracy: Use or
esm3-large-2024-03esmc-6b - High throughput: Use Forge API with batch executor
- Cost optimization: Use smaller models, implement caching strategies
Installation
Basic installation:
bash
pip install esmWith Flash Attention (recommended for faster inference):
bash
pip install esm
pip install flash-attn --no-build-isolationFor Forge API access:
bash
pip install esm # SDK includes Forge clientNo additional dependencies needed. Obtain Forge API token at https://forge.evolutionaryscale.ai
Common Workflows
For detailed examples and complete workflows, see which includes:
references/workflows.md- 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:
- - ESM3 model architecture, API reference, generation parameters, and multimodal prompting
references/esm3-api.md - - ESM C model details, embedding strategies, and performance optimization
references/esm-c-api.md - - Forge platform documentation, authentication, batch processing, and deployment
references/forge-api.md - - Complete examples and common workflow patterns
references/workflows.md
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
- Forge Platform: https://forge.evolutionaryscale.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.