Summary
Building machine learning systems and other intelligent applications are a complex undertaking. This often requires retrieving data from a warehouse engine, adding an extra barrier to every workflow. The RelationalAI engine was built as a co-processor for your data warehouse that adds a greater degree of flexibility in the representation and analysis of the underlying information, simplifying the work involved. In this episode CEO Molham Aref explains how RelationalAI is designed, the capabilities that it adds to your data clouds, and how you can start using it to build more sophisticated applications on your data.
Announcements
Hello and welcome to the Machine Learning Podcast, the podcast about machine learning and how to bring it from idea to delivery.
Your host is Tobias Macey and today I'm interviewing Molham Aref about RelationalAI and the principles behind it for powering intelligent applications
Interview
Introduction
How did you get involved in machine learning?
Can you describe what RelationalAI is and the story behind it?
On your site you call your product an "AI Co-processor". Can you explain what you mean by that phrase?
What are the primary use cases that you address with the RelationalAI product?
What are the types of solutions that teams might build to address those problems in the absence of something like the RelationalAI engine?
Can you describe the system design of RelationalAI?
How have the design and goals of the platform changed since you first started working on it?
For someone who is using RelationalAI to address a business need, what does the onboarding and implementation workflow look like?
What is your design philosophy for identifying the balance between automating the implementation of certain categories of application (e.g. NER) vs. providing building blocks and letting teams assemble them on their own?
What are the data modeling paradigms that teams should be aware of to make the best use of the RKGS platform and Rel language?
What are the aspects of customer education that you find yourself spending the most time on?
What are some of the most under-utilized or misunderstood capabilities of the RelationalAI platform that you think deserve more attention?
What are the most interesting, innovative, or unexpected ways that you have seen the RelationalAI product used?
What are the most interesting, unexpected, or challenging lessons that you have learned while working on RelationalAI?
When is RelationalAI the wrong choice?
What do you have planned for the future of RelationalAI?
Contact Info
LinkedIn
Parting Question
From your perspective, what is the biggest barrier to adoption of machine learning today?
Closing Announcements
Thank you for listening! Don't forget to check out our other shows. The Data Engineering Podcast covers the latest on modern data management. Podcast.__init__ covers the Python language, its community, and the innovative ways it is being used.
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Links
RelationalAI
Snowflake
AI Winter
BigQuery
Gradient Descent
B-Tree
Navigational Database
Hadoop
Teradata
Worst Case Optimal Join
Semantic Query Optimization
Relational Algebra
HyperGraph
Linear Algebra
Vector Database
Pathway
Data Engineering Podcast Episode
Pinecone
Data Engineering Podcast Episode
The intro and outro music is from Hitman's Lovesong feat. Paola Graziano by The Freak Fandango Orchestra/CC BY-SA 3.0
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