×
Ex-Google DeepMind researchers launch $130M AI startup to build autonomous coding tools
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

Former Google DeepMind researchers have launched a new superintelligence venture with substantial backing from top-tier investors. Reflection AI’s $130 million funding and ambitious focus on autonomous programming tools positions it alongside other AI labs developing agent-based automation systems. The startup’s focus on practical programming tools represents an initial step toward their long-term vision of creating advanced AI capable of performing most computer-based work.

The big picture: Reflection AI has secured $130 million across two funding rounds, achieving a $555 million valuation led by prominent investors including Sequoia Capital, CRV, and Lightspeed Venture Partners.

  • The startup raised an initial $25 million seed round led by Sequoia and CRV, followed by a $105 million Series A co-led by CRV and Lightspeed.
  • Additional high-profile backers include Nvidia‘s venture capital arm, LinkedIn co-founder Reid Hoffman, and Scale AI CEO Alexandr Wang.

Key players: The company is helmed by two former Google DeepMind researchers with experience developing Google’s Gemini large language model series.

  • CEO Misha Laskin previously helped develop the training workflow for Google’s Gemini language models.
  • Co-founder Ioannis Antonoglou worked on Gemini’s post-training systems, which optimize language models after initial training to improve output quality.

Strategic focus: Reflection AI aims to develop autonomous programming tools as its initial step toward creating what it defines as superintelligence.

  • The company will first build AI agents that automate specific programming tasks like scanning code for vulnerabilities, optimizing memory usage, and testing application reliability.
  • Future plans include generating documentation for code snippets and helping manage customer application infrastructure.

Technical approach: According to job postings, Reflection AI’s technology strategy involves large-scale computing resources and multiple AI techniques.

  • The company plans to power its software using large language models and reinforcement learning.
  • Their development roadmap includes exploring novel AI system architectures.
  • Training operations will utilize up to tens of thousands of graphics cards, indicating substantial computational requirements.
Superintelligence startup Reflection AI launches with $130M in funding

Recent News

AI boosts SkinCeuticals sales with Appier’s marketing tech

Data-driven AI marketing tools helped L'Oréal achieve a 152% increase in ad spending returns and 48% revenue growth for SkinCeuticals' online store.

Two-way street: AI etiquette emerges as machines learn from human manners

Users increasingly rely on social niceties with AI assistants, reflecting our tendency to humanize technology despite knowing it lacks consciousness.

AI-driven FOMO stalls purchase decisions for smartphone consumers

Current AI smartphone features provide limited practical value for many users, especially retirees and those outside tech-focused professions, leaving consumers uncertain whether to upgrade functioning older devices.