skills/domains/chemistry/chemeagle-guide/SKILL.md
Multi-agent system for chemical literature information extraction
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ChemEagle is a multi-agent system for extracting structured chemical information from scientific literature. It uses specialized agents for recognizing chemical entities, extracting reaction conditions, identifying product yields, and building structured databases from unstructured chemistry papers. Particularly useful for building reaction databases and automating systematic reviews in chemistry.
Chemistry Paper (PDF/text)
↓
Document Parser Agent (section identification)
↓
Chemical NER Agent
├── Compound names → SMILES/InChI
├── Reagents and catalysts
├── Solvents and conditions
└── Product identification
↓
Reaction Extraction Agent
├── Reactants → Products mapping
├── Reaction conditions (T, P, time)
├── Yields and selectivity
└── Procedure steps
↓
Validation Agent (cross-check extracted data)
↓
Structured Output (JSON, CSV, database)
from chemeagle import ChemEagle
eagle = ChemEagle(llm_provider="anthropic")
# Extract from a chemistry paper
result = eagle.extract("paper.pdf")
# Extracted reactions
for rxn in result.reactions:
print(f"\nReaction {rxn.id}:")
print(f" Reactants: {rxn.reactants}")
print(f" Products: {rxn.products}")
print(f" Catalyst: {rxn.catalyst}")
print(f" Solvent: {rxn.solvent}")
print(f" Temperature: {rxn.temperature}")
print(f" Time: {rxn.time}")
print(f" Yield: {rxn.yield_percent}%")
print(f" SMILES: {rxn.product_smiles}")
# Extracted compounds
for compound in result.compounds:
print(f"{compound.name}: {compound.smiles}")
# Process multiple papers
results = eagle.extract_batch(
input_dir="chemistry_papers/",
output_format="csv",
output_file="reactions_database.csv",
)
print(f"Papers processed: {results.papers_processed}")
print(f"Reactions extracted: {results.total_reactions}")
print(f"Unique compounds: {results.unique_compounds}")
# Standalone NER
entities = eagle.recognize_entities(
"The Suzuki coupling of 4-bromoanisole with phenylboronic "
"acid using Pd(PPh3)4 catalyst in THF/water at 80°C "
"gave 4-methoxybiphenyl in 95% yield."
)
for entity in entities:
print(f" [{entity.type}] {entity.text}")
if entity.smiles:
print(f" SMILES: {entity.smiles}")
# Output:
# [REACTANT] 4-bromoanisole — SMILES: COc1ccc(Br)cc1
# [REACTANT] phenylboronic acid — SMILES: OB(O)c1ccccc1
# [CATALYST] Pd(PPh3)4
# [SOLVENT] THF/water
# [CONDITION] 80°C
# [PRODUCT] 4-methoxybiphenyl — SMILES: COc1ccc(-c2ccccc2)cc1
# [YIELD] 95%
# Build a searchable reaction database
from chemeagle import ReactionDatabase
db = ReactionDatabase("reactions.db")
# Add extracted reactions
db.add_from_extraction(result)
# Search by substrate
hits = db.search(reactant="bromoanisole", reaction_type="coupling")
for hit in hits:
print(f"{hit.reactants} → {hit.products} ({hit.yield_percent}%)")
print(f" Source: {hit.paper_doi}")
# Search by conditions
hits = db.search(catalyst="palladium", temperature_max=100)
# Export
db.export_csv("all_reactions.csv")
db.export_json("all_reactions.json")
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