Documentation Index
Fetch the complete documentation index at: https://www.adaline.ai/docs/llms.txt
Use this file to discover all available pages before exploring further.
DatasetColumnsClient
adaline.datasets.columns manages the column schema of a dataset — add, rename, or delete columns, and resolve dynamic columns whose values are produced by prompts, HTTP requests, or dynamic functions. Every method is async.
Access
from adaline.main import Adaline
adaline = Adaline()
columns = adaline.datasets.columns # DatasetColumnsClient
The class is also exported directly:
from adaline.clients import DatasetColumnsClient
Types from adaline_api:
from adaline_api.models.dataset_column import DatasetColumn
from adaline_api.models.add_dataset_columns_request_columns_inner import AddDatasetColumnsRequestColumnsInner
from adaline_api.models.add_dataset_columns_response import AddDatasetColumnsResponse
from adaline_api.models.update_dataset_column_request import UpdateDatasetColumnRequest
from adaline_api.models.fetch_dynamic_columns_request import FetchDynamicColumnsRequest
from adaline_api.models.fetch_dynamic_columns_response import FetchDynamicColumnsResponse
Column type can be input, output, metadata, or a dynamic type such as prompt, api, or dynamic-function.
create()
Append one or more column definitions to a dataset.
async def create(
*,
dataset_id: str,
columns: List[AddDatasetColumnsRequestColumnsInner],
) -> AddDatasetColumnsResponse
Parameters
| Name | Type | Required | Description |
|---|
dataset_id | str | Yes | Dataset identifier. |
columns | List[...] | Yes | Column definitions (name + type + optional settings). |
Example
response = await adaline.datasets.columns.create(
dataset_id="dataset_abc123",
columns=[
{"name": "category", "type": "input"},
{"name": "response", "type": "output"},
],
)
print(f"Added {len(response.columns)} columns")
update()
Change a column’s name, type, or settings.
async def update(
*,
dataset_id: str,
column_id: str,
column: UpdateDatasetColumnRequest,
) -> DatasetColumn
Example
from adaline_api.models.update_dataset_column_request import UpdateDatasetColumnRequest
await adaline.datasets.columns.update(
dataset_id="dataset_abc123",
column_id="column_xyz789",
column=UpdateDatasetColumnRequest(name="renamed_column"),
)
delete()
Delete a column from a dataset. All row values for this column are dropped.
async def delete(*, dataset_id: str, column_id: str) -> None
fetch_dynamic()
Trigger on-demand resolution for dynamic columns. Returns the resolved values without persisting them.
async def fetch_dynamic(
*,
dataset_id: str,
query: FetchDynamicColumnsRequest,
) -> FetchDynamicColumnsResponse
Parameters
| Name | Type | Required | Description |
|---|
dataset_id | str | Yes | Dataset identifier. |
query | FetchDynamicColumnsRequest | Yes | { column_ids: list[str]; row_ids: Optional[list[str]] }. |
Example
from adaline_api.models.fetch_dynamic_columns_request import FetchDynamicColumnsRequest
response = await adaline.datasets.columns.fetch_dynamic(
dataset_id="dataset_abc123",
query=FetchDynamicColumnsRequest(
column_ids=["column_api_response"],
row_ids=["row_def456", "row_ghi012"],
),
)
for r in response.results:
print(f"{r.row_id}/{r.column_id}: {r.value}")
See Also