Arcuate – Machine Learning Model Exchange With Delta Sharing and MLflow
Databricks » Machine Learning
by ritul.srivastava@databricks.com
1y ago
Stepping into this brave new digital world we are certain that data will be a central product for many organizations. The way to convey their knowledge and their assets will be through data and analytics. During the Data + AI Summit 2021, Databricks announced Delta Sharing, the world’s first open protocol for secure and scalable real-time data sharing. This simple REST secure data sharing protocol can become a differentiating factor for your data consumers and the ecosystem you are building around your data products. Since the preview launch, we have seen tremendous engagement from customers ..read more
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Model Evaluation in MLflow
Databricks » Machine Learning
by Anmol Sharma
1y ago
Many data scientists and ML engineers today use MLflow to manage their models. MLflow is an open-source platform that enables users to govern all aspects of the ML lifecycle, including but not limited to experimentation, reproducibility, deployment, and model registry. A critical step during the development of ML models is the evaluation of their performance on novel datasets. Motivation Why Do We Evaluate Models? Model evaluation is an integral part of the ML lifecycle. It enables data scientists to measure, interpret, and explain the performance of their models. It accelerates the model deve ..read more
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Building a Similarity-based Image Recommendation System for e-Commerce
Databricks » Machine Learning
by Anmol Sharma
1y ago
Why recommendation systems are important Online shopping has become the default experience for the average consumer – even established brick-and-mortar retailers have embraced e-commerce. To ensure a smooth user experience, multiple factors need to be considered for e-commerce. One core functionality that has proven to improve the user experience and, consequently revenue for online retailers, is a product recommendation system. In this day and age, it would be nearly impossible to go to a website for shoppers and not see product recommendations. But not all recommenders are created equal, nor ..read more
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Turning 2 Trillion Data Points of Traffic Intelligence into Critical Business Insights
Databricks » Machine Learning
by mehak.sethi@databricks.com
1y ago
This is a guest authored post by Stephanie Mak, Senior Data Engineer, formerly at Intelematics.   This blog post offers my experience of contributing to the open source community with Bricklayer, which I’d started during my time at Intelematics. Bricklayer is a utility for data engineers whose job is to farm jobs, build map layers and other structures with geospatial data, which was built using Databricks Lakehouse Platform. Having to deal with a copious amount of geospatial data, Bricklayer makes it easier to manipulate and visualize geospatial data and parallelize batch jobs programma ..read more
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Arcuate – Machine Learning Model Exchange With Delta Sharing and MLflow
Databricks » Machine Learning
by ritul.srivastava@databricks.com
2y ago
Stepping into this brave new digital world we are certain that data will be a central product for many organizations. The way to convey their knowledge and their assets will be through data and analytics. During the Data + AI Summit 2021, Databricks announced Delta Sharing, the world’s first open protocol for secure and scalable real-time data sharing. This simple REST secure data sharing protocol can become a differentiating factor for your data consumers and the ecosystem you are building around your data products. Since the preview launch, we have seen tremendous engagement from customers ..read more
Visit website
Model Evaluation in MLflow
Databricks » Machine Learning
by Anmol Sharma
2y ago
Many data scientists and ML engineers today use MLflow to manage their models. MLflow is an open-source platform that enables users to govern all aspects of the ML lifecycle, including but not limited to experimentation, reproducibility, deployment, and model registry. A critical step during the development of ML models is the evaluation of their performance on novel datasets. Motivation Why Do We Evaluate Models? Model evaluation is an integral part of the ML lifecycle. It enables data scientists to measure, interpret, and explain the performance of their models. It accelerates the model deve ..read more
Visit website
Building a Similarity-based Image Recommendation System for e-Commerce
Databricks » Machine Learning
by Anmol Sharma
2y ago
Why recommendation systems are important Online shopping has become the default experience for the average consumer – even established brick-and-mortar retailers have embraced e-commerce. To ensure a smooth user experience, multiple factors need to be considered for e-commerce. One core functionality that has proven to improve the user experience and, consequently revenue for online retailers, is a product recommendation system. In this day and age, it would be nearly impossible to go to a website for shoppers and not see product recommendations. But not all recommenders are created equal, nor ..read more
Visit website
Turning 2 Trillion Data Points of Traffic Intelligence into Critical Business Insights
Databricks » Machine Learning
by Stephanie Mak
2y ago
This is a guest authored post by Stephanie Mak, Senior Data Engineer, formerly at Intelematics.   This blog post offers my experience of contributing to the open source community with Bricklayer, which I’d started during my time at Intelematics. Bricklayer is a utility for data engineers whose job is to farm jobs, build map layers and other structures with geospatial data, which was built using Databricks Lakehouse Platform. Having to deal with a copious amount of geospatial data, Bricklayer makes it easier to manipulate and visualize geospatial data and parallelize batch jobs programma ..read more
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Announcing Databricks Autologging for Automated ML Experiment Tracking
Databricks » Machine Learning
by Corey Zumar and Kasey Uhlenhuth
2y ago
Machine learning teams require the ability to reproduce and explain their results–whether for regulatory, debugging or other purposes. This means every production model must have a record of its lineage and performance characteristics. While some ML practitioners diligently version their source code, hyperparameters and performance metrics, others find it cumbersome or distracting from their rapid prototyping. As a result, data teams encounter three primary challenges when recording this information: (1) standardizing machine learning artifacts tracked across ML teams, (2) ensuring reproducibi ..read more
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Improving On-Shelf Availability for Items with AI Out of Stock Modeling
Databricks » Machine Learning
by Rich Williams, Morgan Seybert, Rob Saker and Bryan Smith
2y ago
This post was written in collaboration with Databricks partner Tredence. We thank Rich Williams, Vice President Data Engineering, and Morgan Seybert, Chief Business Officer, of Tredence for their contributions.   Retailers are missing out on nearly $1 trillion in global sales because they don’t have on-hand what customers want to buy in their stores. Adding to the challenge, a  study of 600 households and several retailers by research firm IHL Group details that shoppers encounter out-of-stocks (OOS) as often as one in three shopping trips, according to the report. And a study by I ..read more
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