Official Python SDK for the LIGANDAI (TM) platform — peptide design, structure prediction, scoring, and discovery.
Project description
LIGANDAI Python SDK
Official Python SDK for the LIGANDAI platform — peptide design, structure prediction, scoring, and discovery.
License & Terms — By installing or using this SDK you agree to the LigandAI Terms of Service and End User License Agreement. API usage is logged for billing and abuse prevention. Submitted sequences and job artifacts may be retained under those terms. See
LICENSEfor the full agreement.
pip install ligandai
The SDK checks PyPI once per process when a client is created. If a newer valid
ligandal/ligandai-python-sdk release exists, it emits:
python -m pip install --upgrade ligandai
Set LIGANDAI_SKIP_VERSION_CHECK=1 in hermetic CI if network checks are not
allowed.
from ligandai import LigandAI, ResidueRange
client = LigandAI(api_key="lgai_pro_...")
print(f"Tier: {client.tier}, Credits: {client.credits}")
# Find tissue-specific surface markers
markers = client.discovery.tissue_markers(target_tissues=["Liver"], top_n=2000)
# Resolve a structure for the top marker
gene = markers.top[0].gene
structure = client.structures.get(gene)
analysis = client.structures.analyze(gene, analysis_depth="full")
# Generate peptides targeting the recommended pocket
pocket_ranges = []
if analysis.recommended_pocket:
pocket_ranges = [analysis.recommended_pocket]
job = client.peptides.generate(
gene=gene,
num_peptides=50,
target_residues=pocket_ranges,
targeting_strategy="pocket_targeted",
auto_fold=True,
top_n_fold=25,
)
# Wait for completion (generation + auto-fold)
result = job.wait(timeout=1800)
print(f"Got {len(result.peptides)} peptides, top iPSAE: {result.peptides[0].ipsae}")
Selected pockets can span one or more chains. The helper below compresses arbitrary selected residues into the continuous chain ranges expected by the generation API:
from ligandai import LigandAI, ResidueRange
client = LigandAI(api_key="lgai_basic_...")
target_residues = [
*ResidueRange.from_residues([34, 35, 36, 41, 42], chain="A", label="EC pocket 1"),
*ResidueRange.from_residues([102, 103, 104], chain="B", label="interface pocket"),
]
job = client.peptides.generate(
gene="EGFR",
num_peptides=25,
target_residues=target_residues,
targeting_strategy="pocket_targeted",
quality_guided=True,
auto_fold=True,
)
Authentication
# 1. Pass explicitly
client = LigandAI(api_key="lgai_basic_...")
# 2. Read from env var (preferred for prod)
# $ export LIGANDAI_API_KEY=lgai_basic_...
client = LigandAI()
# 3. Custom base URL (dev / on-prem / enterprise)
client = LigandAI(api_key="...", base_url="http://localhost:5050")
Any authenticated LIGANDAI account, including free accounts, can create API keys from account settings in the Developer/API Keys area. API keys identify the account; the API still gates feature access by tier, credits/tokens, and GPU limits.
API keys carry a tier prefix:
| Prefix | Tier | What it can do |
|---|---|---|
lgai_free_* |
free | quality-guided generation up to 10 peptides, 10 folds, 3 targets, 1 folding GPU |
lgai_basic_* |
basic | up to 100 peptides, paid folding allowance, 4 folding GPUs |
lgai_edu_* |
academia | up to 300 peptides, academia guidance modules, 16 folding GPUs |
lgai_pro_* |
pro | up to 300 peptides, transcriptomics analysis, bivalent, 25 folding GPUs |
lgai_ent_* |
enterprise | everything + batch operations + priority queue |
lgai_sa_* |
superadmin | all features (internal) |
The client detects the tier from the prefix at construction — no network call.
client.tier # "pro"
client.credits # int
client.feature_allowed("...") # bool
client.max_peptides_per_generation
client.max_folds_per_generation
client.max_targets_per_generation
client.max_concurrent_gpu_slots
client.rate_limit_per_minute
When a method requires a higher tier than the key carries, it raises
LigandAITierError client-side, before sending the request.
For agent-specific billing, token, API-key, and Claude Skill routing, see
docs/agents.md.
Resource Namespaces
| Namespace | Endpoints | What it does |
|---|---|---|
client.account |
/api/auth/user, /api/user-credits, ... |
profile, credits, tier limits |
client.receptors |
/api/receptordb/* |
search, browse, download PDBs |
client.structures |
/api/structure/*, /api/gene-resolver/* |
gene → PDB / AlphaFold |
client.proteins |
/api/protein-info/*, /api/protein-variants/* |
UniProt info, variants, custom PDBs |
client.discovery |
/api/transcriptomics/*, /api/scrna/*, /api/geo-import/* |
tissue markers, scRNA, GEO import |
client.diseases |
/api/disease-viewer/* |
disease search, mutations |
client.goals |
/api/autoresearch/* |
persistent goal-directed AutoResearch runs |
client.peptides |
/api/ptf/parallel/*, /api/folding/*, /api/binder-scoring/*, /api/v1/deltaforge/score-pdb |
generate, fold, score |
client.bivalent |
/api/ligandforge/bivalent/* |
bispecific design (pro+) |
client.synthesis |
/api/synthesis-checkout/*, /api/adaptyv/* |
quote, cart, order |
client.memory |
/api/episodic-memory/* |
memory search & save |
client.programs |
/api/ptf/programs/*, /api/ptf/sessions/* |
programs, projects, sessions |
client.charts |
/api/charts/* |
matplotlib chart generation |
client.reports |
/api/reports/* |
PDF report generation |
client.jobs |
/api/jobs/* |
list, cancel, stream |
Billing & Account Management (v0.3.0+)
# Check balance and runway
bal = client.account.get_balance()
print(f"{bal.credits} credits, {bal.days_remaining:.1f} days runway")
# Auto top-up when low
if bal.credits < 10000:
client.account.top_up(amount_usd=200)
# Estimate cost before running a big job
est = client.peptides.estimate_cost(num_peptides=1000, auto_fold=True, fold_top_n=100)
print(f"This run will cost ~{est.credits} credits (${est.cost_usd:.2f})")
# Configure automatic top-ups
client.account.configure_auto_topup(
enabled=True,
threshold_credits=5000,
amount_usd=200,
)
# Inspect recent transactions
txns = client.account.billing_usage(period="30d")
for t in txns[:5]:
print(f"[{t.type}] {t.amount:+d} credits — {t.description}")
Track credits for a local agent or notebook run
Pass a stable client_session_id to tag every API request from a Claude Code,
Codex, notebook, or pipeline run. The dashboard exposes the same run ID under
Account Billing -> API Activity.
client = LigandAI(client_session_id="codex-il31-screen-20260505")
with client.session("codex-il31-screen-20260505") as run:
job = client.peptides.generate(gene="IL31", num_peptides=25, auto_fold=True)
result = job.wait()
print(run.credits_used)
usage = client.account.session_usage("codex-il31-screen-20260505")
print(usage.summary.total_calls, usage.summary.credits_used)
Persistent Goal Runs (v0.3.2+)
Goal runs are Automatic Mode jobs: they can keep running on the server and
spending credits after your Python process exits until stopped or capped. The
SDK requires automatic_mode=True as an explicit acknowledgement. This server
capability is currently limited to internal pilot accounts.
run = client.goals.start(
"Generate and fold IL31 peptides until at least five candidates exceed the iPSAE threshold",
automatic_mode=True,
budget_cap_credits=5000,
max_iterations=3,
conversation_id="optional-conversation-id",
program_id="optional-ptf-program-id",
)
status = client.goals.get(run.run_id)
print(status.status, status.credits_consumed, status.budget_cap_credits)
print(status.automatic_mode_acknowledged, status.automatic_mode_acknowledged_at)
print(status.satisfaction_status, status.acceptance_criteria, status.evaluation_history[-1:])
graph = client.goals.graph(run.run_id)
print(graph.progress.percent, graph.next_actions[:1], graph.blockers)
for item in graph.checklist:
print(item.status, item.type, item.label)
for event in client.goals.stream(run.run_id):
print(event.type, event.run_id)
if event.type in {"completed", "failed"}:
break
client.goals.pause(run.run_id)
client.goals.resume(run.run_id)
client.goals.stop(run.run_id)
DeltaForge V10 Scoring
# Fold a target/binder pair, then score with DeltaForge auto mode.
job = client.peptides.score_complex(
binder_sequence="ACDEFGHIK",
target_sequence="MNPQRSTVWY",
scorer="auto", # auto | current | v10
)
score = job.wait().results
print(score.dg, score.kd_nm, score.scorer_version)
# Score your own PDB directly, with multivalent per-chain decomposition.
score = client.peptides.score_pdb(
pdb_file="complex.pdb",
receptor_chains=["A", "C"],
peptide_chain="B",
scorer="v10",
)
for pair in score.pair_scores or []:
print(pair.receptor_chain, pair.peptide_chain, pair.dg, pair.contacts)
Folding Controls and Peptide Viewing (v0.3.3+)
Direct SDK folds default to one diffusion sample. Increase
num_trajectories, sampling_steps, recycling_steps, or step_scale only
when you need ensemble-validation depth. On eligible direct human receptor or
receptor-complex folds, set contribute_to_receptordb=True to request
ReceptorDB contribution and the documented discount.
job = client.peptides.generate(
gene="IL31",
num_peptides=25,
auto_fold=True,
top_n_fold=5,
num_trajectories=4,
folding_mode="parallel",
fold_strategy="top_ranked",
sampling_steps=50,
)
fold_job = client.peptides.fold(
["ACDEFGHIK", "MNPQRSTVWY"],
sampling_steps=1000,
recycling_steps=5,
num_trajectories=10,
step_scale=1.2,
contribute_to_receptordb=True,
)
from ligandai import (
align_candidates_to_receptor,
load_peptide_results,
rank_peptides,
serve_dashboard,
write_dashboard,
)
candidates = load_peptide_results(["fold_results.jsonl"])
ranked = rank_peptides(candidates, score="ipsae", limit=10)
aligned = align_candidates_to_receptor(ranked, "base_receptor.pdb", "aligned")
handle = write_dashboard(aligned, "peptide_dashboard")
serve_dashboard(handle, open_browser=True)
Terminal rendering can also launch ProteinView by Tristan Farmer / 001TMF, MIT License: https://github.com/001TMF/ProteinView.
Guidance Modules (v0.2.0+)
Quality-guided generation is available to all authenticated tiers, including free. Academia, pro, and enterprise keys unlock immunogenicity guidance, serum stability guidance, and logits-style advanced outputs:
# Immunogenicity guidance — reduce MHC-I/II epitopes and improve humanness
job = client.peptides.generate(
gene="EGFR",
num_peptides=200,
immunogenicity=True,
immuno_strength=2.5,
immuno_modules={"mhc_i": True, "mhc_ii": True, "humanness": True},
)
# Serum stability — resist trypsin/DPP-IV/chymotrypsin cleavage
job = client.peptides.generate(
gene="EGFR",
num_peptides=200,
serum_stability=True,
stability_strength=2.0,
stability_mode="resist",
stability_modules={"trypsin": True, "chymotrypsin": True, "dppiv": True},
)
# Extended plasma half-life
job = client.peptides.generate(
gene="EGFR",
num_peptides=200,
halflife="extended",
halflife_strength=2.5,
)
# Charge / solubility filtering (server-tier gated)
# Keep only peptides with net charge < -1.0
job = client.peptides.generate(
gene="EGFR",
num_peptides=200,
charge_mode="lt",
charge_value=-1.0,
)
# Cyclic peptides — terminal Cys-Cys disulfide (primary Adaptyv synthesis route)
# Requires academia/pro/enterprise tier.
job = client.peptides.generate(
gene="EGFR",
num_peptides=100,
length_range=(12, 22), # cyclic-friendly length range
cyclic_mode="disulfide",
strict_recombinant=True, # forbid internal Cys (required for Adaptyv path)
)
result = job.wait(timeout=1800)
for p in result.peptides:
if p.stability_scores:
print(f"{p.sequence}: grade={p.stability_scores.stability_grade}, "
f"halflife={p.stability_scores.predicted_halflife_hours:.1f}h")
if p.immuno_scores:
print(f" immuno_grade={p.immuno_scores.immuno_grade}, "
f"pop_coverage={p.immuno_scores.population_coverage_pct:.0f}%")
if p.cyclic_mode and p.cyclic_mode != "none":
print(f" cyclic={p.cyclic_mode}")
Long-Running Jobs
Generation, folding, and scoring submit GPU work and return a Job:
job = client.peptides.generate(gene="EGFR", num_peptides=10)
job.id # str
job.status # "queued" | "running" | "complete" | "failed"
job.progress # 0-100 or None
job.estimated_credits
# Block until done
result = job.wait(timeout=1800, poll_interval=2.0)
# Or stream live progress events (SSE)
for event in job.stream():
print(f"{event.stage}: {event.message} ({event.progress})")
# Cancel
job.cancel()
Async equivalents:
import asyncio
from ligandai import AsyncLigandAI
async def design_for_genes(genes):
async with AsyncLigandAI() as client:
jobs = await asyncio.gather(*[
client.peptides.generate(gene=g, num_peptides=10) for g in genes
])
results = await asyncio.gather(*[j.wait() for j in jobs])
return results
results = asyncio.run(design_for_genes(["EGFR", "HER2", "KIT"]))
Errors
from ligandai import (
LigandAIError, # base
LigandAIAuthError, # 401 — invalid/expired/revoked key
LigandAITierError, # 403 — feature requires higher tier
LigandAIRateLimitError, # 429 — rate limit
LigandAICreditError, # 402 — insufficient credits
LigandAINotFoundError, # 404
LigandAIServerError, # 5xx (auto-retried)
LigandAIValidationError, # 400/422
)
try:
job = client.peptides.generate(gene="EGFR", num_peptides=10000)
except LigandAITierError as e:
print(f"Need {e.required_tier}, you have {e.current_tier}")
except LigandAICreditError as e:
print(f"Need {e.required} credits, have {e.available}")
Retry & Rate Limiting
The SDK automatically retries on 429, 5xx, and transient network errors
with exponential backoff (configurable via max_retries=). It also respects
Retry-After and X-RateLimit-Reset headers.
Per-tier rate limits:
| Tier | req/min |
|---|---|
| free | 10 |
| basic | 20 |
| academia | 30 |
| pro | 60 |
| enterprise | 300 |
ReceptorDB-restricted Client
For receptordb.com users, a thinner client exposes only browse / search / download (no API key required for read endpoints):
from ligandai import ReceptorDBClient
client = ReceptorDBClient()
hits = client.search("EGFR")
client.download_pdb(hits[0].complex_id, "egfr.pdb")
# With API key — fold/generate
client = ReceptorDBClient(api_key="lgai_basic_...")
job = client.fold(sequences=["MAEEPQSD..."], target_gene="EGFR")
Typed Models
All request/response shapes are pydantic models. IDE autocompletion works out of the box, including for nested fields:
from ligandai import BivalentTarget, LinkerConfig
session = client.bivalent.start(
target1=BivalentTarget(gene="PDCD1", chain="A"),
target2=BivalentTarget(gene="CD274", chain="A"),
linker=LinkerConfig(position="C", length_min=8, length_max=20),
binder_length_min=15,
binder_length_max=40,
num_designs=200,
)
print(session.id, session.status)
Examples
See examples/ for complete worked demos:
examples/01_quickstart.py— auth, tier check, simple searchexamples/02_end_to_end.py— discovery → structure → generate → fold → score → cartexamples/03_bivalent.py— PD-1 / PD-L1 bispecific designexamples/04_async_parallel.py— design for many genes concurrentlyexamples/05_custom_variant.py— fold a mutation, save as variant, regenerateexamples/06_streaming.py— live SSE progress
Development
git clone https://github.com/ligandal/ligandai-python-sdk
cd ligandai-python-sdk
pip install -e ".[dev]"
pytest
mypy ligandai/
ruff check ligandai/
License
Proprietary. By installing or using this SDK you agree to the LigandAI Terms of Service, the LigandAI End User License Agreement, and the license terms in LICENSE.
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