| name | databricks-zerobus-ingest |
| description | Build Zerobus Ingest clients for near real-time data ingestion into Databricks Delta tables via gRPC. Use when creating producers that write directly to Unity Catalog tables without a message bus, working with the Zerobus Ingest SDK in Python/Java/Go/TypeScript/Rust, generating Protobuf schemas from UC tables, or implementing stream-based ingestion with ACK handling and retry logic. |
Zerobus Ingest
Build clients that ingest data directly into Databricks Delta tables via the Zerobus gRPC API.
Status: GA (Generally Available since February 2026; billed under Lakeflow Jobs Serverless SKU)
Documentation:
What Is Zerobus Ingest?
Zerobus Ingest is a serverless connector that enables direct, record-by-record data ingestion into Delta tables via gRPC. It eliminates the need for message bus infrastructure (Kafka, Kinesis, Event Hub) for lakehouse-bound data. The service validates schemas, materializes data to target tables, and sends durability acknowledgments back to the client.
Core pattern: SDK init -> create stream -> ingest records -> handle ACKs -> flush -> close
Quick Decision: What Are You Building?
If not specified, default to python.
Common Libraries
These libraries are essential for ZeroBus data ingestion:
- databricks-sdk>=0.85.0: Databricks workspace client for authentication and metadata
- databricks-zerobus-ingest-sdk>=1.0.0: ZeroBus SDK for high-performance streaming ingestion
- grpcio-tools
These are typically NOT pre-installed on Databricks. Install them using
execute_code tool:
code: "%pip install databricks-sdk>=VERSION databricks-zerobus-ingest-sdk>=VERSION"
Save the returned cluster_id and context_id for subsequent calls.
Smart Installation Approach
Check protobuf version first, then install compatible
grpcio-tools
import google.protobuf
runtime_version = google.protobuf.version
print(f"Runtime protobuf version: {runtime_version}")
if runtime_version.startswith("5.26") or
runtime_version.startswith("5.29"):
%pip install grpcio-tools==1.62.0
else:
%pip install grpcio-tools # Use latest for newer protobuf
versions
Prerequisites
You must never execute the skill without confirming the below objects are valid:
- A Unity Catalog managed Delta table to ingest into
- A service principal id and secret with
MODIFY and SELECT on the target table
- The Zerobus server endpoint for your workspace region
- The Zerobus Ingest SDK installed for your target language
See 1-setup-and-authentication.md for complete setup instructions.
Minimal Python Example (JSON)
import json
from zerobus.sdk.sync import ZerobusSdk
from zerobus.sdk.shared import RecordType, StreamConfigurationOptions, TableProperties
sdk = ZerobusSdk(server_endpoint, workspace_url)
options = StreamConfigurationOptions(record_type=RecordType.JSON)
table_props = TableProperties(table_name)
stream = sdk.create_stream(client_id, client_secret, table_props, options)
try:
record = {"device_name": "sensor-1", "temp": 22, "humidity": 55}
stream.ingest_record(json.dumps(record))
stream.flush()
finally:
stream.close()
Detailed guides
| Topic | File | When to Read |
|---|
| Setup & Auth | 1-setup-and-authentication.md | Endpoint formats, service principals, SDK install |
| Python Client | 2-python-client.md | Sync/async Python, JSON and Protobuf flows, reusable client class |
| Multi-Language | 3-multilanguage-clients.md | Java, Go, TypeScript, Rust SDK examples |
| Protobuf Schema | 4-protobuf-schema.md | Generate .proto from UC table, compile, type mappings |
| Operations & Limits | 5-operations-and-limits.md | ACK handling, retries, reconnection, throughput limits, constraints |
You must always follow all the steps in the Workflow
Workflow
- Display the plan of your execution
- Determinate the type of client
- Get schema Always use 4-protobuf-schema.md. Execute using the
execute_code MCP tool
- Write Python code to a local file follow the instructions in the relevant guide to ingest with zerobus in the project (e.g.,
scripts/zerobus_ingest.py).
- Execute on Databricks using the
execute_code MCP tool (with file_path parameter)
- If execution fails: Edit the local file to fix the error, then re-execute
- Reuse the context for follow-up executions by passing the returned
cluster_id and context_id
Important
- Never install local packages
- Always validate MCP server requirement before execution
- Serverless limitation: The Zerobus SDK cannot pip-install on serverless compute. Use classic compute clusters, or use the Zerobus REST API (Beta) for notebook-based ingestion without the SDK.
- Explicit table grants: Service principals need explicit
MODIFY and SELECT grants on the target table. Schema-level inherited permissions may not be sufficient for the authorization_details OAuth flow.
Context Reuse Pattern
The first execution auto-selects a running cluster and creates an execution context. Reuse this context for follow-up calls - it's much faster (~1s vs ~15s) and shares variables/imports:
First execution - use execute_code tool:
file_path: "scripts/zerobus_ingest.py"
Returns: { success, output, error, cluster_id, context_id, ... }
Save cluster_id and context_id for follow-up calls.
If execution fails:
- Read the error from the result
- Edit the local Python file to fix the issue
- Re-execute with same context using
execute_code tool:
file_path: "scripts/zerobus_ingest.py"
cluster_id: "<saved_cluster_id>"
context_id: "<saved_context_id>"
Follow-up executions reuse the context (faster, shares state):
file_path: "scripts/validate_ingestion.py"
cluster_id: "<saved_cluster_id>"
context_id: "<saved_context_id>"
Handling Failures
When execution fails:
- Read the error from the result
- Edit the local Python file to fix the issue
- Re-execute using the same
cluster_id and context_id (faster, keeps installed libraries)
- If the context is corrupted, omit
context_id to create a fresh one
Installing Libraries
Databricks provides Spark, pandas, numpy, and common data libraries by default. Only install a library if you get an import error.
Use execute_code tool:
code: "%pip install databricks-zerobus-ingest-sdk>=1.0.0"
cluster_id: "<cluster_id>"
context_id: "<context_id>"
The library is immediately available in the same context.
Note: Keeping the same context_id means installed libraries persist across calls.
🚨 Critical Learning: Timestamp Format Fix
BREAKTHROUGH: ZeroBus requires timestamp fields as Unix integer timestamps, NOT string timestamps.
The timestamp generation must use microseconds for Databricks.
Key Concepts
- gRPC + Protobuf: Zerobus uses gRPC as its transport protocol. Any application that can communicate via gRPC and construct Protobuf messages can produce to Zerobus.
- JSON or Protobuf serialization: JSON for quick starts; Protobuf for type safety, forward compatibility, and performance.
- At-least-once delivery: The connector provides at-least-once guarantees. Design consumers to handle duplicates.
- Durability ACKs: Each ingested record returns a
RecordAcknowledgment. Use flush() to ensure all buffered records are durably written, or use wait_for_offset(offset) for offset-based tracking.
- No table management: Zerobus does not create or alter tables. You must pre-create your target table and manage schema evolution yourself.
- Single-AZ durability: The service runs in a single availability zone. Plan for potential zone outages.
Common Issues
| Issue | Solution |
|---|
| Connection refused | Verify server endpoint format matches your cloud (AWS vs Azure). Check firewall allowlists. |
| Authentication failed | Confirm service principal client_id/secret. Verify GRANT statements on the target table. |
| Schema mismatch | Ensure record fields match the target table schema exactly. Regenerate .proto if table changed. |
| Stream closed unexpectedly | Implement retry with exponential backoff and stream reinitialization. See 5-operations-and-limits.md. |
| Throughput limits hit | Max 100 MB/s and 15,000 rows/s per stream. Open multiple streams or contact Databricks. |
| Region not supported | Check supported regions in 5-operations-and-limits.md. |
| Table not found | Ensure table is a managed Delta table in a supported region with correct three-part name. |
| SDK install fails on serverless | The Zerobus SDK cannot be pip-installed on serverless compute. Use classic compute clusters or the REST API (Beta) from notebooks. |
| Error 4024 / authorization_details | Service principal lacks explicit table-level grants. Grant MODIFY and SELECT directly on the target table — schema-level inherited grants may be insufficient. |
Related Skills
Resources