Episodios

  • Data Rules: From interoperability to commensurability. Featuring "Data Rules" author Jannis Kallinikos
    Jul 1 2024

    "Data Rules" is a book about data, but not just about big data crunching. A book about the relationship of data with economic institutions and society, but also about the interplay with data technologies by which data are being generated and processed. A book that is critical, but not ideological.

    This is how Jannis Kallinikos describes "Data Rules: Reinventing the Market Economy", a book co-authored by himself and Cristina Alaimo and recently published by The MIT Press.

    Jannis Kallinikos is Full Professor of Organization Studies and the CISCO Chair in Digital Transformation and Data Driven Innovation at LUISS University, Rome.

    This is where we met to talk about the key concepts in "Data Rules":

    • Understanding data generation and use
    • How data is breaking boundaries
    • Platforms and choice
    • The illusion of objectivity
    • Algorithms, agency and surveillance
    • From market and design rules to data rules

    Article published on Orchestrate all the Things: https://linkeddataorchestration.com/2024/07/01/data-rules-from-interoperability-to-commensurability/

    Más Menos
    1 h
  • Universal semantic layer: Going meta on data, functionality, governance, and semantics. Featuring Cube Co-founder Artyom Keydunov
    May 16 2024

    What is a universal semantic layer, and how is it different from a semantic layer? Are there actual semantics involved? Who uses that, how, and what for?

    When Cube Co-founder Artyom Keydunov started hacking away a Slack chatbot back in 2017, he probably didn't have answers to those questions. All he wanted to do was find a way to access data using a text interface, and Slack seemed like a good place to do that.

    Keydunov had plenty of time to experiment, validate, and develop Cube, as well as get insights along the way. We caught up and talked about all of the above, as well as Cube's latest features and open source core.

    Article published on Orchestrate all the Things.

    Más Menos
    41 m
  • Neo4j partners with Microsoft, unfolds strategy to power Generative AI applications with cloud platforms and Graph RAG. Featuring Neo4j CPO Sudhir Hasbe
    Mar 27 2024

    From better together to full native integration, Neo4j is creating an ecosystem around all major cloud platforms to provide graph-powered features for Generative AI and beyond.

    As Neo4j just announced its partneship with Microsoft, we met with Chief Product Officer Sudhir Hasbe to talk about:

    • What this partnership means for users and how it works
    • How graph-powered generative AI aligns with cloud platform AI strategies
    • Similarities and differences across them
    • How Neo4j's strategy is shaping up, and when Databricks and Snowflake integration are coming.

    For additional analysis and a writeup of the conversation, you can read the article published on Orchestrate all the Things: https://linkeddataorchestration.com/2024/03/27/neo4j-partners-with-microsoft-unfolds-strategy-to-power-generative-ai-applications-with-cloud-platforms-and-graph-rag/

    Más Menos
    26 m
  • Evaluating and building applications on open source Large Language Models. Featuring Deci CEO / Co-founder Yonatan Geifman
    Mar 6 2024

    If we look at the current status quo in AI as a case of demand and supply, what can we do to close the gap between the exponentially growing demand on the side of AI models and the linearly growing supply on the side of AI hardware?

    This formulation was the premise on which Yonatan Geifman co-founded Deci in 2019.

    Today, with the generative AI explosion in full bloom, demand is growing faster than ever, and Deci is a part of this by contributing a number of open source models.

    Join us as we explore:

    • How AI models are different than traditional software and what open source means in AI
    • Choosing between GPT-4, Claude 3 and open source LLMs
    • Customizing LLMs and fine-tuning vs. RAG
    • Evaluating LLMs
    • Market outlook

    Article published on Orchestrate All the Things: https://linkeddataorchestration.com/2024/03/06/evaluating-and-building-applications-on-open-source-large-language-models/

    Más Menos
    51 m
  • The future of AI chips: Leaders, dark horses and rising stars. Featuring Tony Pialis, Alphawave CEO & Co-founder
    Feb 13 2024

    There’s more to AI chips than NVIDIA: AMD, Intel, chiplets, upstarts, analog AI, optical computing, and AI chips designed by AI.

    The interest and investment in AI is skyrocketing, and generative AI is fueling it. Over one-third of CxOs have reportedly already embraced GenAI in their operations, with nearly half preparing to invest in it.

    What’s powering it all - AI chips - used to receive less attention. Up to the moment OpenAI’s Sam Altman claimed he wants to raise up to $7 trillion for a “wildly-ambitious” tech project to boost the world’s chip capacity. Geopolitics and sensationalism aside, however, keeping an eye on AI chips means being aware of today’s blockers and tomorrow’s opportunities.

    According to a recent study by IMARC, the global AI chip market is expected to reach $89.6 Billion by 2029. The demand for AI chips has increased substantially over time. Growth in AI technology, rising demand for AI chips in consumer electronics and AI chip innovation all contribute to this forecast.

    Few people have more insights to share on AI hardware than Tony Pialis, CEO and co-founder of Alphawave. In an extensive conversation, Pialis shared his insider’s perspective on the AI chip landscape, the transformative rise of chiplets, specialized hardware for training and inference, emerging directions like analog and optical computing, and much more.

    Article published on Orchestrate All the Things: https://linkeddataorchestration.com/2024/02/13/the-future-of-ai-chips-leaders-dark-horses-and-rising-stars/

    Más Menos
    56 m
  • Data management in 2024. Featuring Peter Corless, Director of Product Marketing at StarTree, and Alex Merced, Developer Advocate at Dremio
    Jan 11 2024

    For many organizations today, data management comes down to handing over their data to one of the "Big 5" data vendors: Amazon, Microsoft Azure and Google, plus Snowflake and Databricks. 

    But analysts David Vellante and George Gilbert believe that the needs of modern data applications coupled with the evolution of open storage management may lead to the emergence of a "sixth data platform".

    The sixth data platform hypothesis is that open data formats may enable interoperability, leading the transition away from vertically integrated vendor-controlled platforms towards independent management of data storage and permissions.

    It's an interesting scenario, and one that would benefit users by forcing vendors to compete for every workload based on the business value delivered, irrespective of lock-in. But how close are we to realizing this?

    To answer this question, we have to examine open data formats and their interoperability potential across clouds and formats, as well as on the semantics and governance layer.

    We caught up with Peter Corless and Alex Merced to talk about all of that.

    Article published on Orchestrate all the Things: https://linkeddataorchestration.com/2024/01/11/data-management-in-2024-open-data-formats-and-a-common-language-for-a-sixth-data-platform/

    Más Menos
    54 m
  • How LinkedIn is moving towards a skills-based economy with the Skills Graph. Featuring LinkedIn Director of Engineering Sofus Macskássy
    Dec 13 2023

    What is a skills-based economy and how is LinkedIn moving from vision to implementation?

    As LinkedIn Director of Engineering Sofus Macskássy shares, there's AI, taxonomy, and ontology involved in building the Skills Graph that powers the transition.

    We discuss the process of extracting skills from text, building a skills graph, and leveraging it for various product lines within LinkedIn.

    We cover aspects related to explicit and implicit skill provenance, credibility, depth and interoperability.

    Article published on Orchestrate all the Things: https://linkeddataorchestration.com/2023/12/13/how-linkedin-is-moving-towards-a-skills-based-economy-with-the-skills-graph

    Más Menos
    29 m
  • Amazon Neptune introduces a new Analytics engine and the One Graph vision. Featuring Brad Beebe & Denise Gosnell, Amazon Neptune General Manager & Principal Product Manager
    Nov 29 2023

    Amazon Neptune, the managed graph database service by AWS, makes analytics faster and more agile while introducing a vision aiming to simplify graph databases.

    It's not every day that you hear product leads questioning the utility of their own products. Brad Beebe, the general manager of Amazon Neptune, was all serious when he said that most customers don't actually want a graph database. However, that statement needs contextualization.

    If Bebee had meant that in the literal sense, the team himself and Amazon Neptune Principal Product Manager Denise Gosnell lead would not have bothered developing and releasing a brand new analytics engine for their customers. We caught up with Bebee and Gosnell to discuss Amazon Neptune new features and the broader vision. 

    We cover where Amazon Neptune fits in the AWS vision of data management, and how the new analytics engine provides a single service for graph workloads, high performance for graph analytic queries and graph algorithms, and vector store and search capabilities for Generative AI applications. We also share insights on the One Graph vision, the road from serverless to One Graph via HPC, as well as vectors and Graph AI.

    Article published on Orchestrate all the Things: https://linkeddataorchestration.com/2023/11/29/amazon-neptune-introduces-a-new-analytics-engine-and-the-one-graph-vision/

    00:00:00 Introduction

    00:01:44 Amazon Neptune & AWS vision of data management

    00:05:35 The Importance of Graph Databases  

    00:08:55 Amazon Neptune Use Cases

    00:13:13 Introduction to Amazon Neptune Analytics  

    00:15:20 Key Features of Neptune Analytics  

    00:17:40 Use Cases for Neptune Analytics 

    00:21:10 Preparing Data for Generative AI Applications

    00:23:37 Neptune Analytics Use Cases and Deployment

    00:26:43 Pricing and Roadmap Q&A

    00:48:46 Conclusion

    Más Menos
    50 m