• Skip to main content
  • Main Menu
  • Navigation for access to support pages
  • Navigation for access to legal pages
 Logo Viva Technology
  • Session Recordings
  • Speakers
  • Exhibitors
  • FAQ
  • General Public Day
  • confirmation_numberGet Your 2026 Pass
  • Become an Exhibitor
 Viva Technology

17-20 June 2026

Paris Expo Porte de Versailles

1 Place de la Porte de Versailles

F-75015 Paris France

More Infoarrow_right_alt

Event organizers

2025 ThemesConference ProgramOur Speakers

Exhibitors at VivaTech2025 Partners

Startups at VivaTechInvestors at VivaTech2025 Startup Challenges and Awards

JournalistsMedia Partners2025 PresskitPress Releases

About UsOur CommitmentsGeneral Public DayPractical Information

©Viva Technology 2016-2025 all rights reserved

Site MapSite noticeWebsite terms & conditionsB2B terms & conditionsData Privacy
  1.  Logo Viva Technology
  2. Speakers
  3. Clément Aglietta
 Photo Clément Aglietta

Clément Aglietta

CEO & Co-Founder

Edda

#
Artificial Intelligence
Fintech, Banking & Crypto

About Me

As the Co-founder and CEO of Edda, I combine my design expertise with advanced technologies to develop innovative tools for venture capital and private equity. I lead a talented team in creating an AI-driven platform that offers a seamless experience by integrating deal flow management, portfolio tracking, LP relations, and community engagement. Edda currently has $170 billion in assets under administration. We serve 150 clients across 40 countries, including notable names like Plug & Play, FJ Labs, 20VC, BPI France, General Motors Ventures, AI Fund, Founders Factory, SG Innovate, and Build Collective by Tony Fadell. Before founding Edda, I contributed to the creation of FJ Labs, one of the most active venture capital firms globally, with over 1,000 portfolio companies, including Airbnb, Alibaba, Uber, Stripe and Spotify. Earlier in my career, I worked on advanced technology projects at CERN in Geneva.

Hear My Insights

Frugal AI: Optimizing AI Infrastructure for Efficiency and Scale

As AI models grow in size and complexity, scaling infrastructure efficiently becomes a critical challenge. This panel will explore strategies for optimizing AI systems, focusing on reducing the high costs and energy consumption associated with training and running large language models (LLMs). The discussion will cover recent innovations that improve performance while optimizing cost and energy efficiency. The conversation will also address the future of AI infrastructure, examining how it can evolve to meet the growing demands of machine learning while prioritizing cost-effectiveness and sustainability.