Upgrading to v1.8 (latest)
Resources
What to know before upgrading
dbt Labs is committed to providing backward compatibility for all versions 1.x, except for any changes explicitly mentioned on this page. If you encounter an error upon upgrading, please let us know by opening an issue.
Release tracks
Starting in 2024, dbt Cloud provides the functionality from new versions of dbt Core via release tracks with automatic upgrades. Select a release track in your development, staging, and production environments to access everything in dbt Core v1.8+ and more. To upgrade an environment in the dbt Cloud Admin API or Terraform, set dbt_version
to the string latest
.
New and changed features and functionality
Features and functionality new in dbt v1.8.
New dbt Core adapter installation procedure
Before dbt Core v1.8, whenever you would pip install
a data warehouse adapter for dbt, pip
would automatically install dbt-core
alongside it. The dbt adapter directly depended on components of dbt-core
, and dbt-core
depended on the adapter for execution. This bidirectional dependency made it difficult to develop adapters independent of dbt-core
.
Beginning in v1.8, dbt-core
and adapters are decoupled. Going forward, your installations should explicitly include both dbt-core
and the desired adapter. The new pip
installation command should look like this:
pip install dbt-core dbt-ADAPTER_NAME
For example, you would use the following command if you use Snowflake:
pip install dbt-core dbt-snowflake
For the time being, we have maintained install-time dependencies to avoid breaking existing scripts in surprising ways; pip install dbt-snowflake
will continue to install the latest versions of both dbt-core
and dbt-snowflake
. Given that we may remove this implicit dependency in future versions, we strongly encourage you to update install scripts now.
Unit Tests
Historically, dbt's test coverage was confined to “data” tests, assessing the quality of input data or resulting datasets' structure.
In v1.8, we're introducing native support for unit testing. Unit tests validate your SQL modeling logic on a small set of static inputs before you materialize your full model in production. They support a test-driven development approach, improving both the efficiency of developers and the reliability of code.
Starting from v1.8, when you execute the dbt test
command, it will run both unit and data tests. Use the test_type
method to run only unit or data tests:
dbt test --select "test_type:unit" # run all unit tests
dbt test --select "test_type:data" # run all data tests
Unit tests are defined in YML files in your models/
directory and are currently only supported on SQL models. To distinguish between the two, the tests:
config has been renamed to data_tests:
. Both are currently supported for backward compatibility.
New data_tests:
syntax
The tests:
syntax is changing to reflect the addition of unit tests. Start migrating your data test YML to use data_tests:
after you upgrade to v1.8 to prevent issues in the future.
models:
- name: orders
columns:
- name: order_id
data_tests:
- unique
- not_null
The --empty
flag
The run
and build
commands now support the --empty
flag for building schema-only dry runs. The --empty
flag limits the refs and sources to zero rows. dbt will still execute the model SQL against the target data warehouse but will avoid expensive reads of input data. This validates dependencies and ensures your models will build properly.
Deprecated functionality
The ability for installed packages to override built-in materializations without explicit opt-in from the user is being deprecated.
-
Overriding a built-in materialization from an installed package raises a deprecation warning.
-
Using a custom materialization from an installed package does not raise a deprecation warning.
-
Using a built-in materialization package override from the root project via a wrapping materialization is still supported. For example:
{% materialization view, default %}
{{ return(my_cool_package.materialization_view_default()) }}
{% endmaterialization %}
Managing changes to legacy behaviors
dbt Core v1.8 has introduced flags for managing changes to legacy behaviors. You may opt into recently introduced changes (disabled by default), or opt out of mature changes (enabled by default), by setting True
/ False
values, respectively, for flags
in dbt_project.yml
.
You can read more about each of these behavior changes in the following links:
- (Mature, enabled by default) Require explicit package overrides for builtin materializations
- (Introduced, disabled by default) Require resource names without spaces
- (Introduced, disabled by default) Run project hooks (
on-run-*
) in thedbt source freshness
command
Quick hits
- Custom defaults of global config flags should be set in the
flags
dictionary indbt_project.yml
, instead of inprofiles.yml
. Support forprofiles.yml
has been deprecated. - New CLI flag
--resource-type
/--exclude-resource-type
for including/excluding resources from dbtbuild
,run
, andclone
. - To improve performance, dbt now issues a single (batch) query when calculating
source freshness
through metadata, instead of executing a query per source. - Syntax for
DBT_ENV_SECRET_
has changed toDBT_ENV_SECRET
and no longer requires the closing underscore.