Pular para o conteúdo principal

Preencha os detalhes para desbloquear o webinar

Ao continuar, você aceita nossos Termos de Uso, nossa Política de Privacidade e que seus dados serão armazenados nos EUA.

Palestrantes

Para Empresas

Treinar 2 ou mais pessoas?

Dê acesso à sua equipe à biblioteca completa do DataCamp, com relatórios centralizados, tarefas, projetos e muito mais.
Experimente o DataCamp para EmpresasPara uma solução sob medida , agende uma demonstração.

Accelerating Generative AI Journeys using Data Products

July 2025

Session Resources

Summary

Accelerating Generative AI Initiatives using Data Products is a session designed for data professionals and business leaders interested in utilizing data products to enhance AI capabilities. The discussion highlights the importance of high-quality data in the success of AI initiatives, emphasizing the concept of data products that ensure availability, freshness, and documentation. Sagar Paul and Vikram Sharma share insights on how data products are transforming enterprise data usage, with examples from Lenovo's use of telemetry data to improve device performance. The session also explores the roles and technical skills required to build and maintain data products, the importance of focusing on use cases, and the need for a shift from project to product thinking. Key challenges such as data quality, governance, and measuring success are addressed, offering a comprehensive understanding of how to effectively implement data products in organizations.

Key Takeaways:

  • Data products ensure high-quality data for AI, focusing on availability, freshness, and documentation.
  • Successful data products require a shift from project to product thinking, emphasizing continuous evolution and market fit.
  • Key roles in data product development include data engineers, ML engineers, platform engineers, and DevOps specialists.
  • Organizations should prioritize use cases over available data to drive business value and innovation.
  • Effective data governance aligns with business outcomes and includes feedback mechanisms for continuous improvement.

In-Depth Analysis

Understanding Data Products

Data produc ...
Ler Mais

ts are a transformative concept in the field of AI, emphasizing the need for high-quality data that is available, fresh, and well-documented. Sagar Paul describes data products as a shift from project thinking to product thinking, where data is treated as a product that drives productivity, is reusable, and provides faster time to value. This approach focuses on generating insights and driving AI and machine learning algorithms for actionable outcomes. Key components of a data product include data, metadata, code, and infrastructure, ensuring portability across environments. "Data products involve bringing product thinking to data applications," says Sagar, highlighting the importance of context and shareability in data usage.

Real-World Applications: Lenovo's Telemetry Data

Vikram Sharma shares Lenovo's experience with data products, particularly in using telemetry data from over 150 million devices to enhance predictive engineering models. By treating telemetry data as a data product, Lenovo can answer customer queries and improve device performance. This involves engineering real-time data on battery charges, thermal thresholds, and CPU utilization, among others. The data is fully governed, version-controlled, and served through APIs, enabling Lenovo's AI assistant to consume and utilize the data effectively. "Generative AI is only as powerful as the data it's built on," Vikram emphasizes, illustrating the critical role of data products in AI success.

Building and Maintaining Data Products

Creating data products at scale involves a complex framework of technical teams, including data engineers, ML engineers, platform engineers, and DevOps specialists. Vikram outlines the need for scalable data pipelines, strong infrastructure, and continuous data quality monitoring. The process requires collaboration across teams to ensure data is ML-ready and that the infrastructure supports real-time analytics. "It's a large project with a lot of dependencies," Vikram notes, highlighting the importance of a well-coordinated effort to manage the vast amounts of data and ensure reliable AI applications.

Data Governance and Measuring Success

Effective data governance is key for reliable data products, aligning governance principles with business outcomes and analytical workflows. Sagar stresses the importance of focusing on use cases and ensuring data governance supports business objectives. This includes managing access to data, ensuring data quality, and implementing feedback mechanisms to improve data sources. Measuring success involves evaluating return on investment, model accuracy, and system performance. Vikram highlights the need for reliable and efficient systems, especially in commercial environments where customers demand high-quality solutions. "It's about delivering value quickly and iterating fast," Sagar concludes, emphasizing the need for agile development and continuous improvement in data product initiatives.


Relacionado

webinar

Developing Data & AI Products

Sagar, SVP of Enterprise Sales and Solutions at The Modern Data Company, and Logan, Associate Director at Moody's Analytics teach you why, when, and how to create and manage data and AI products.

webinar

Developing Data & AI Products

Sagar, SVP of Enterprise Sales and Solutions at The Modern Data Company, and Logan, Associate Director at Moody's Analytics teach you why, when, and how to create and manage data and AI products.

webinar

Implementing A Culture To Create Data Products

Join Srujan Akula, the CEO of the Modern Data Company, and John Spens, the Managing Director of Data & AI Services at ThoughtWorks, as they discuss the people, process, and infrastructure initiatives to launch data products.

webinar

Implementing A Culture To Create Data Products

Join Srujan Akula, the CEO of the Modern Data Company, and John Spens, the Managing Director of Data & AI Services at ThoughtWorks, as they discuss the people, process, and infrastructure initiatives to launch data products.

webinar

Optimizing Sales Productivity with Data & AI

Sai, the Director of Sales Productivity Strategy & Analytics at MongoDB, teaches you how data and AI can be used to improve your sales productivity.

webinar

Increasing Your Organization's Data & AI Maturity

John Thompson, the Head of AI at EY, and Robin Sutara, a Field Chief Data Strategy Officer at Databricks, teach you how to assess your data and AI maturity, and how to improve it.