talk-data.com
People (188 results)
See all 188 →Activities & events
| Title & Speakers | Event |
|---|---|
|
Lightning Talks
2025-11-20 · 09:00
Fast-paced lightning talks packed with fresh ideas and use cases. |
|
|
Presentations and Panels
2025-11-20 · 09:00
Presentations and panels featuring Tara Raafat, Tony Seale, Ora Lassila, Brad Rees, Juan Sequeda, Jessica Talisman and other speakers. |
|
|
Keynote: AI’s defining moment
2025-11-20 · 09:00
Evangelos Simoudis
– Co-Founder
@ Synapse Partners
Keynote on AI’s defining moment by Evangelos Simoudis, Synapse Partners Co-Founder. |
|
|
Masterclasses
2025-11-20 · 09:00
Amy Hodler
– Founder | Consultant | Graph Evangelist
@ GraphGeeks.org
Masterclasses led by Ben Gardner, Martin O’Hanlon, Paco Nathan and Amy Hodler covering ontology-based data management, multimodal GraphRAG and building high-quality knowledge graphs. |
|
|
Paco Nathan - Hacker Culture, Cyberpunk, AI, and More
2024-09-19 · 13:19
Paco Nathan
– guest
,
Joe Reis
– founder
@ Ternary Data
Paco Nathan is a national treasure. He's not only an OG in the field of AI, but he's also instrumental in early hacker and cyberpunk culture. When I first met Paco, it suddenly clicked that I'd seen his name in various cyberpunk and alternative zines back in the 1990s. We have a chat all sorts of crazy stuff, and I feel like we only got to 5% of the stories.. |
|
|
Paco Nathan
– guest
,
Joe Reis
– founder
@ Ternary Data
Paco Nathan and I chat about early chatbots, and all things AI, especially since the 1980s. We also riff on how we intersected in the early days of the Internet. Paco is one of my faves, so expect him back for another interview soon. X: https://twitter.com/pacoid LinkedIn: https://www.linkedin.com/in/ceteri/ |
|
|
Fifty Years of Data Management and Beyond
2019-04-26
Paco Nathan
– author
Every decade since the 1960s, researchers at companies like IBM, Amazon, and many others have introduced major new frameworks and techniques to handle rising data management problems. This concise ebook explains how these new systems helped data science evolve quickly—from hierarchical and relational databases to big data and cloud computing to streaming and graph data. Computer scientist Paco Nathan shows members of your data science team how major companies created each of these data management systems not just to deal with new data types but also to take full advantage of the opportunities the data presented. Their efforts over the years have propelled an entire industry. This report covers the historical progression of data management topics including: Hierarchical databases—1960s mainframe batch systems are still used in finance, healthcare, manufacturing, energy, and other industries. Relational databases—these enabled faster transactions, mathematical optimization, and budgeting guarantees for many businesses. Big data—this includes relatively cheap horizontal scale-out systems for collecting huge amounts of customer data. Cloud computing—large companies began managing reliable, scalable, cost-effective data centers; Amazon turned the concept into a business. Cluster schedulers—managing horizontal clusters was difficult before schedulers such as Apache Mesos appeared. Streaming data—data continuously generated by different sources requires responses in "real time"—generally milliseconds. |
O'Reilly Data Engineering Books
|