Empowers Databricks users to explore 10x more data and discover 100x more features to deliver greater ML models
dotData, a leader in full-cycle enterprise AI automation solutions, announced that its award-winning Automated Feature Engineering (AutoFE)Â technology is now fully integrated with and available on the Databricks Platform. This integration of dotData’s AutoFE with the Databricks Platform allows Databricks users to explore 100x more features and boost model accuracy quickly, augmenting domain features with hundreds of AI features.
dotData’s AutoFE is fully integrated with the Python data science workflow and explores millions of features from relational, transactional, temporal, geo-locational, and text data. It deals with multi-relational tables with billions of records and builds a ML-ready feature table just in hours.
Recommended ITech News: EMPEQ Unveils New FastSiteSurvey Data Capture & Reporting App to Transform
Benefits of dotData’s AutoFE integration with the Databricks platform include:
- All features and functionality of dotData’s award-winning automated feature engineering and AutoML
- Leverages Databricks runtime to maximize the speed of feature engineering
- Compatibility with Databricks tool ecosystem, e.g. manage dotData’s AI-features by Databricks’ Feature Store
- Installed as a library, requiring no changes on the existing Databricks Python workbench
“Developing better ML models requires great features. The combination of dotData’s AutoFE with the Databricks platform empowers data scientists to deliver higher quality models faster,” said Ryohei Fujimaki, Ph.D., founder and CEO of dotData. “We have been seeing increasing interest and demand for our AutoFE solutions from the Databricks community. We are very excited to be working together with Databricks users to build greater ML applications.”
Recommended ITech News: Global Growth Executive joins Headspring as Chief Commercial Officer
dotData automates feature engineering, the most manual and time-consuming step in AI and ML projects. dotData’s proprietary AI technology automatically discovers hidden patterns behind hundreds of tables with complex relationships and billions of rows and AI-features for your AI and ML algorithms. Until now, feature engineering has 100 percent relied on intuition and experience of domain experts and data scientists. With dotData, you can leverage AI to discover unknown-unknowns and build greater AI and ML models.
Experienced data science teams can leverage dotData’s AI features to augment in-house developed features. Automated feature engineering provides a fast and automated means to rapidly prototype use cases, explore new datasets to find important patterns, and improve accuracy of AI and ML models. It is available as a Python library seamlessly integrated with your existing Python workflow, and cuts 80 percent of time to develop features for your AI and ML models.
Recommended ITech News: CAES Receives Contract from Vinnova to Advance High Performance RISC-V Space Computing