251 subscribers
התחל במצב לא מקוון עם האפליקציה Player FM !
What data scientists and data engineers can do with current generation serverless technologies
Manage episode 248276926 series 1652310
In this episode of the Data Show, I spoke with Avner Braverman, co-founder and CEO of Binaris, a startup that aims to bring serverless to web-scale and enterprise applications. This conversation took place shortly after the release of a seminal paper from UC Berkeley (“Cloud Programming Simplified: A Berkeley View on Serverless Computing”), and this paper seeded a lot of our conversation during this episode.
Serverless is clearly on the radar of data engineers and architects. In a recent survey, we found 85% of respondents already had parts of their data infrastructure in one of the public clouds, and 38% were already using at least one of the serverless offerings we listed. As more serverless offerings get rolled out—e.g., things like PyWren that target scientists—I expect these numbers to rise.
We had a great conversation spanning many topics, including:
- A short history of cloud computing.
- The fundamental differences between serverless and conventional cloud computing.
- The reasons serverless—specifically AWS Lambda—took off so quickly.
- What can data scientists and data engineers do with the current generation serverless offerings.
- What is missing from serverless today and what should users expect in the near future.
Related resources:
- “The evolution and expanding utility of Ray”
- Results of a new survey: “Evolving Data Infrastructure: Tools and Best Practices for Advanced Analytics and AI”
- Eric Jonas on “Building accessible tools for large-scale computation and machine learning”
- “7 data trends on our radar”
- “Handling real-time data operations in the enterprise”
- “Progress for big data in Kubernetes”
133 פרקים
Manage episode 248276926 series 1652310
In this episode of the Data Show, I spoke with Avner Braverman, co-founder and CEO of Binaris, a startup that aims to bring serverless to web-scale and enterprise applications. This conversation took place shortly after the release of a seminal paper from UC Berkeley (“Cloud Programming Simplified: A Berkeley View on Serverless Computing”), and this paper seeded a lot of our conversation during this episode.
Serverless is clearly on the radar of data engineers and architects. In a recent survey, we found 85% of respondents already had parts of their data infrastructure in one of the public clouds, and 38% were already using at least one of the serverless offerings we listed. As more serverless offerings get rolled out—e.g., things like PyWren that target scientists—I expect these numbers to rise.
We had a great conversation spanning many topics, including:
- A short history of cloud computing.
- The fundamental differences between serverless and conventional cloud computing.
- The reasons serverless—specifically AWS Lambda—took off so quickly.
- What can data scientists and data engineers do with the current generation serverless offerings.
- What is missing from serverless today and what should users expect in the near future.
Related resources:
- “The evolution and expanding utility of Ray”
- Results of a new survey: “Evolving Data Infrastructure: Tools and Best Practices for Advanced Analytics and AI”
- Eric Jonas on “Building accessible tools for large-scale computation and machine learning”
- “7 data trends on our radar”
- “Handling real-time data operations in the enterprise”
- “Progress for big data in Kubernetes”
133 פרקים
כל הפרקים
×
1 Machine learning for operational analytics and business intelligence 51:38

1 Machine learning and analytics for time series data 40:31

1 Understanding deep neural networks 39:31

1 Becoming a machine learning practitioner 33:22

1 Labeling, transforming, and structuring training data sets for machine learning 40:51

1 Acquiring and sharing high-quality data 39:20

1 Tools for machine learning development 39:24

1 Enabling end-to-end machine learning pipelines in real-world applications 42:53

1 Bringing scalable real-time analytics to the enterprise 37:12

1 Applications of data science and machine learning in financial services 42:32

1 Real-time entity resolution made accessible 27:09

1 Why companies are in need of data lineage solutions 34:29

1 What data scientists and data engineers can do with current generation serverless technologies 36:32

1 It’s time for data scientists to collaborate with researchers in other disciplines 36:08
ברוכים הבאים אל Player FM!
Player FM סורק את האינטרנט עבור פודקאסטים באיכות גבוהה בשבילכם כדי שתהנו מהם כרגע. זה יישום הפודקאסט הטוב ביותר והוא עובד על אנדרואיד, iPhone ואינטרנט. הירשמו לסנכרון מנויים במכשירים שונים.