benchling-integration
정보
이 스킬은 Benchling 실험실 데이터 작업 자동화를 위한 Python SDK와 REST API 통합을 제공합니다. 개발자가 레지스트리 엔티티, 인벤토리, ELN 항목, 워크플로우, Data Warehouse 쿼리를 프로그래밍 방식으로 작업할 수 있게 합니다. benchling-sdk 또는 v2 API를 사용하여 Benchling 플랫폼과의 상호작용을 자동화해야 할 때 활용하세요.
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문서
Benchling Integration
Overview
Benchling is a cloud platform for life sciences R&D. Access registry entities (DNA, RNA, proteins), inventory, electronic lab notebooks, and workflows programmatically via the Python SDK and REST API.
Version note: Examples target benchling-sdk 1.25.0 (latest stable on PyPI). Docs: benchling.com/sdk-docs. Platform guide: docs.benchling.com.
When to Use This Skill
This skill should be used when:
- Working with Benchling's Python SDK or REST API
- Managing biological sequences (DNA, RNA, proteins) and registry entities
- Automating inventory operations (samples, containers, locations, transfers)
- Creating or querying electronic lab notebook entries
- Building workflow automations or Benchling Apps
- Syncing data between Benchling and external systems
- Querying the Benchling Data Warehouse for analytics
- Setting up event-driven integrations with AWS EventBridge
Core Capabilities
1. Authentication & Setup
Python SDK installation:
uv pip install "benchling-sdk==1.25.0"
Preview builds (alpha; not for production):
uv pip install "benchling-sdk" --prerelease allow
Environment variables (scoped reads only):
Read only the named keys you need — never dump or iterate over the full environment:
import os
tenant_url = os.environ.get("BENCHLING_TENANT_URL") # e.g. https://your-tenant.benchling.com
api_key = os.environ.get("BENCHLING_API_KEY")
if not tenant_url or not api_key:
raise ValueError("Set BENCHLING_TENANT_URL and BENCHLING_API_KEY")
Obtain an API key from Profile Settings in Benchling. For OAuth apps, use the Developer Console and store BENCHLING_CLIENT_ID / BENCHLING_CLIENT_SECRET separately.
Authentication methods:
API key (scripts and personal automation):
from benchling_sdk.benchling import Benchling
from benchling_sdk.auth.api_key_auth import ApiKeyAuth
benchling = Benchling(
url=tenant_url,
auth_method=ApiKeyAuth(api_key),
)
OAuth client credentials (multi-user apps and production integrations):
from benchling_sdk.benchling import Benchling
from benchling_sdk.auth.client_credentials_oauth2 import ClientCredentialsOAuth2
benchling = Benchling(
url=tenant_url,
auth_method=ClientCredentialsOAuth2(
client_id=os.environ["BENCHLING_CLIENT_ID"],
client_secret=os.environ["BENCHLING_CLIENT_SECRET"],
),
)
Key points:
- All API requests require HTTPS; network calls must target your tenant URL only
- Authentication permissions mirror UI permissions
- Verify credentials with
benchling.users.get_me()before bulk operations
For detailed authentication information including OIDC and security best practices, refer to references/authentication.md.
2. Registry & Entity Management
Registry entities include DNA sequences, RNA sequences, AA sequences, custom entities, and mixtures. The SDK provides typed classes for creating and managing these entities.
Creating DNA Sequences:
from benchling_sdk.models import DnaSequenceCreate
sequence = benchling.dna_sequences.create(
DnaSequenceCreate(
name="My Plasmid",
bases="ATCGATCG",
is_circular=True,
folder_id="fld_abc123",
schema_id="ts_abc123", # optional
fields=benchling.models.fields({"gene_name": "GFP"})
)
)
Registry Registration:
To register an entity directly upon creation:
sequence = benchling.dna_sequences.create(
DnaSequenceCreate(
name="My Plasmid",
bases="ATCGATCG",
is_circular=True,
folder_id="fld_abc123",
entity_registry_id="src_abc123", # Registry to register in
naming_strategy="NEW_IDS" # or "IDS_FROM_NAMES"
)
)
Important: Use either entity_registry_id OR naming_strategy, never both.
Updating Entities:
from benchling_sdk.models import DnaSequenceUpdate
updated = benchling.dna_sequences.update(
sequence_id="seq_abc123",
dna_sequence=DnaSequenceUpdate(
name="Updated Plasmid Name",
fields=benchling.models.fields({"gene_name": "mCherry"})
)
)
Unspecified fields remain unchanged, allowing partial updates.
Listing and Pagination:
# List all DNA sequences (returns a generator)
sequences = benchling.dna_sequences.list()
for page in sequences:
for seq in page:
print(f"{seq.name} ({seq.id})")
# Check total count
total = sequences.estimated_count()
Key Operations:
- Create:
benchling.<entity_type>.create() - Read:
benchling.<entity_type>.get_by_id(id)or.list() - Update:
benchling.<entity_type>.update(id, update_object) - Archive:
benchling.<entity_type>.archive(id)
Entity types: dna_sequences, rna_sequences, aa_sequences, custom_entities, mixtures
For comprehensive SDK reference and advanced patterns, refer to references/sdk_reference.md.
3. Inventory Management
Manage physical samples, containers, boxes, and locations within the Benchling inventory system.
Creating Containers:
from benchling_sdk.models import ContainerCreate
container = benchling.containers.create(
ContainerCreate(
name="Sample Tube 001",
schema_id="cont_schema_abc123",
parent_storage_id="box_abc123", # optional
fields=benchling.models.fields({"concentration": "100 ng/μL"})
)
)
Managing Boxes:
from benchling_sdk.models import BoxCreate
box = benchling.boxes.create(
BoxCreate(
name="Freezer Box A1",
schema_id="box_schema_abc123",
parent_storage_id="loc_abc123"
)
)
Transferring Items:
# Transfer a container to a new location
transfer = benchling.containers.transfer(
container_id="cont_abc123",
destination_id="box_xyz789"
)
Key Inventory Operations:
- Create containers, boxes, locations, plates
- Update inventory item properties
- Transfer items between locations
- Check in/out items
- Batch operations for bulk transfers
4. Notebook & Documentation
Interact with electronic lab notebook (ELN) entries, protocols, and templates.
Creating Notebook Entries:
from benchling_sdk.models import EntryCreate
entry = benchling.entries.create(
EntryCreate(
name="Experiment 2025-10-20",
folder_id="fld_abc123",
schema_id="entry_schema_abc123",
fields=benchling.models.fields({"objective": "Test gene expression"})
)
)
Linking Entities to Entries:
# Add references to entities in an entry
entry_link = benchling.entry_links.create(
entry_id="entry_abc123",
entity_id="seq_xyz789"
)
Key Notebook Operations:
- Create and update lab notebook entries
- Manage entry templates
- Link entities and results to entries
- Export entries for documentation
5. Workflows & Automation
Automate laboratory processes using Benchling's workflow system.
Creating Workflow Tasks:
from benchling_sdk.models import WorkflowTaskCreate
task = benchling.workflow_tasks.create(
WorkflowTaskCreate(
name="PCR Amplification",
workflow_id="wf_abc123",
assignee_id="user_abc123",
fields=benchling.models.fields({"template": "seq_abc123"})
)
)
Updating Task Status:
from benchling_sdk.models import WorkflowTaskUpdate
updated_task = benchling.workflow_tasks.update(
task_id="task_abc123",
workflow_task=WorkflowTaskUpdate(
status_id="status_complete_abc123"
)
)
Asynchronous Operations:
Some operations are asynchronous and return tasks. The SDK default max_wait_seconds for polling is 600 seconds (since SDK 1.11.0):
from benchling_sdk.helpers.tasks import wait_for_task
result = wait_for_task(
benchling,
task_id="task_abc123",
interval_wait_seconds=2,
max_wait_seconds=300, # override for long-running serverless handlers
)
Key Workflow Operations:
- Create and manage workflow tasks
- Update task statuses and assignments
- Execute bulk operations asynchronously
- Monitor task progress
6. Events & Integration
Subscribe to Benchling changes via AWS EventBridge (customer-owned bus) or Webhooks (recommended for new Benchling Apps). EventBridge delivers hydrated v2 API objects; webhooks use thinner payloads.
Common EventBridge detail-type values:
v2.dnaSequence.created,v2.dnaSequence.updatedv2.entity.registeredv2.entry.created,v2.entry.updatedv2.workflowTask.updated.statusv2.request.created
Minimal EventBridge rule (filter request creation by schema name):
{
"detail-type": ["v2.request.created"],
"detail": {
"schema": {
"name": ["Validated Request"]
}
}
}
Lambda handler skeleton:
def handler(event, context):
detail_type = event["detail-type"]
detail = event["detail"]
if detail.get("deprecated"):
# Alert — migrate before Benchling removes this event type
pass
if detail.get("excludedProperties"):
# Payload exceeded 256 KB; re-fetch via detail["request"]["apiURL"]
pass
if detail_type == "v2.request.created":
request_id = (detail.get("request") or {}).get("id")
# Re-fetch authoritative state — events can be late or out of order
# request = benchling.requests.get_by_id(request_id)
return {"request_id": request_id}
return {"status": "ignored", "detail_type": detail_type}
Setup flow:
- Tenant admin creates a subscription at
https://your-tenant.benchling.com/event-subscriptions - Associate the AWS partner event source with a dedicated event bus immediately (within ~12 days)
- Create rules + targets (Lambda, SQS, SNS) and grant invoke permissions
- Validate with a CloudWatch Logs rule, then trigger a matching Benchling action
Recovery: EventBridge deliveries are not replayed. Use the List Events API for events up to ~2 weeks old after outages.
For payload schema, CloudFormation templates, SDK list/recovery examples, and validation steps, see references/eventbridge.md.
7. Data Warehouse & Analytics
Query historical Benchling data using SQL through the Data Warehouse.
Access Method: The Benchling Data Warehouse provides SQL access to Benchling data for analytics and reporting. Connect using standard SQL clients with provided credentials.
Common Queries:
- Aggregate experimental results
- Analyze inventory trends
- Generate compliance reports
- Export data for external analysis
Integration with Analysis Tools:
- Jupyter notebooks for interactive analysis
- BI tools (Tableau, Looker, PowerBI)
- Custom dashboards
Best Practices
Error Handling
The SDK automatically retries failed requests:
# Automatic retry for 429, 502, 503, 504 status codes
# Up to 5 retries with exponential backoff
# Customize retry behavior if needed
from benchling_sdk.retry import RetryStrategy
benchling = Benchling(
url=tenant_url,
auth_method=ApiKeyAuth(api_key),
retry_strategy=RetryStrategy(max_retries=3),
)
Pagination Efficiency
Use generators for memory-efficient pagination:
# Generator-based iteration
for page in benchling.dna_sequences.list():
for sequence in page:
process(sequence)
# Check estimated count without loading all pages
total = benchling.dna_sequences.list().estimated_count()
Schema Fields Helper
Use the fields() helper for custom schema fields:
# Convert dict to Fields object
custom_fields = benchling.models.fields({
"concentration": "100 ng/μL",
"date_prepared": "2025-10-20",
"notes": "High quality prep"
})
Forward Compatibility
The SDK handles unknown enum values and types gracefully:
- Unknown enum values are preserved
- Unrecognized polymorphic types return
UnknownType - Allows working with newer API versions
Security Considerations
- Never commit API keys or OAuth secrets to version control
- Read only named environment variables (
BENCHLING_TENANT_URL,BENCHLING_API_KEY, etc.) - Route network calls exclusively to your tenant URL
- Rotate keys if compromised; use OAuth for multi-user production apps
- Grant minimal necessary permissions for apps in the Developer Console
Resources
references/
Detailed reference documentation for in-depth information:
- authentication.md - Comprehensive authentication guide including OIDC, security best practices, and credential management
- sdk_reference.md - Detailed Python SDK reference with advanced patterns, examples, and all entity types
- api_endpoints.md - REST API endpoint reference for direct HTTP calls without the SDK
- eventbridge.md - EventBridge setup, event payload schema, rule examples, Lambda handler, validation, and recovery
Load these references as needed for specific integration requirements.
Common Use Cases
1. Bulk Entity Import:
# Import multiple sequences from FASTA file
from Bio import SeqIO
for record in SeqIO.parse("sequences.fasta", "fasta"):
benchling.dna_sequences.create(
DnaSequenceCreate(
name=record.id,
bases=str(record.seq),
is_circular=False,
folder_id="fld_abc123"
)
)
2. Inventory Audit:
# List all containers in a specific location
containers = benchling.containers.list(
parent_storage_id="box_abc123"
)
for page in containers:
for container in page:
print(f"{container.name}: {container.barcode}")
3. Workflow Automation:
# Update all pending tasks for a workflow
tasks = benchling.workflow_tasks.list(
workflow_id="wf_abc123",
status="pending"
)
for page in tasks:
for task in page:
# Perform automated checks
if auto_validate(task):
benchling.workflow_tasks.update(
task_id=task.id,
workflow_task=WorkflowTaskUpdate(
status_id="status_complete"
)
)
4. Data Export:
# Export all sequences with specific properties
sequences = benchling.dna_sequences.list()
export_data = []
for page in sequences:
for seq in page:
if seq.schema_id == "target_schema_id":
export_data.append({
"id": seq.id,
"name": seq.name,
"bases": seq.bases,
"length": len(seq.bases)
})
# Save to CSV or database
import csv
with open("sequences.csv", "w") as f:
writer = csv.DictWriter(f, fieldnames=export_data[0].keys())
writer.writeheader()
writer.writerows(export_data)
Additional Resources
- Official Documentation: https://docs.benchling.com
- Python SDK Reference: https://benchling.com/sdk-docs/
- API Reference: https://benchling.com/api/reference
- Support: [email protected]
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