AtScale announced at the Semantic Layer Summit an
expanded set of product capabilities for organizations working to
accelerate the deployment and adoption of enterprise artificial
intelligence (AI). These new capabilities leverage AtScale's unique
position within the data stack with support for common cloud data
warehouse and lakehouse platforms including Google BigQuery, Microsoft
Azure Synapse, Amazon Redshift, Snowflake, and Databricks.
Organizations
across every industry are racing to realize the true potential of their
data science and enterprise AI investments. IDC predicts spending on AI/ML solutions will grow 19.6% with over $500B spent in 2023. Despite this investment, Gartner reports that
only 54% of AI models built will make it into production, with
organizations struggling to generate business outcomes that justify
investment to operationalize models. This disconnect creates an enormous
opportunity for solutions that can simplify and accelerate the path to
business impact for AI/ML initiatives.
The AtScale Enterprise semantic layer platform now incorporates two new capabilities available to all customers leveraging AtScale AI-Link:
- Semantic Predictions - Predictions
generated by deployed AI/ML models can be written back to cloud data
platforms through AtScale. These model-generated predictive statistics
inherit semantic model intelligence, including dimensional consistency
and discoverability. Predictions are immediately available for
exploration by business users using common BI tools (AtScale supports
connectivity to Looker, PowerBI, Tableau, and Excel) and can be
incorporated into augmented analytics resources for a wider range of
business users. Semantic predictions accelerate the business outcomes of
AI investments by making it easier and more timely to work with, share,
and use AI-generated predictions.
- Managed Features - AtScale
creates a hub of centrally governed metrics and dimensional hierarchies
that can be used to create a set of managed features for AI/ML models.
Managed features can be sourced from the existing library of models
maintained by data stewards or by individual work groups. Furthermore,
new features created by AutoML or AI platforms can also become managed
features. AtScale managed features inherit semantic context, making them
more discoverable and easier to work with, consistently, at any stage
in ML model development. Managed features can now be served directly
from AtScale, or through a feature store like FEAST, to train models in AutoML or other AI platforms.
"Despite
rising investments, greater adoption of AI/ML within the modern
enterprise is still hindered by complexity," said Gaurav Rao, Executive
Vice President and General Manager of AI/ML at AtScale. "The need for AI
is huge, exploration is on the rise, but many businesses are still not
able to use the predictive insights AI models can generate. Here at
AtScale we can leverage our unique position in the data stack to
streamline and simplify how the business can consume and use AI
immediately, generating faster time to value from their enterprise AI
investments."
These new capabilities are immediately available as part of AtScale Enterprise and AtScale AI-Link.