Reflection AI raised $2 billion to position the firm as an alternative to OpenAI

Source Cryptopolitan

Reflection AI on Friday raised $2 billion at an $8 billion valuation, surpassing its previous valuation just seven months ago by 15x from $545 million. The initiative aims to position the firm as both an open-source alternative to closed-frontier labs like OpenAI and Anthropic, and a Western equivalent to Chinese AI firms like DeepSeek.

The startup was founded in March 2024 by two former Google DeepMind researchers, Misha Laskin, who led reward modeling for DeepMind’s Gemini project, and Ioannis Antonoglou, who co-created the AlphaGo AI system. The background of the two former Google DeepMind Researchers developing AI systems led to their pitch, which is that the right AI talent can build frontier models outside established tech companies.

Reflection AI’s latest initiative also changes its trajectory, which originally focused on autonomous coding agents, to now being an open source alternative to closed frontier AI labs.

Reflection AI recruits a team of top talent from DeepMind and OpenAI

Reflection AI has announced that it has onboarded a team of top talent from DeepMind and OpenAI to work on its new initiative. The firm stated that it has developed an advanced AI training stack, which it promises will be open to all. The AI startup added that it has also identified a scalable commercial model that aligns with the company’s open intelligence strategy.

Reflection AI’s CEO, Misha Laskin, revealed that the firm’s team includes 60 members, including AI researchers and engineers across infrastructure, data training, and algorithm development. He also acknowledged that the firm has secured a compute cluster and plans to release a frontier language model in 2026 that’s trained on tens of trillions of tokens.

The AI firm stated that it has developed a large-scale LLM and reinforcement learning platform capable of training massive Mixture-of-Experts (MoE) models at the frontier scale, a feat it claims was once thought possible only within the world’s top labs. Reflection AI claimed it saw the effectiveness of its approach first-hand when the team applied it to the critical domain of autonomous coding. The firm admitted that the unlocked milestone allows it to bring such methods to general agentic reasoning now.

MoEs are specific architectures that power frontier LLMs, which, previously, were only capable of being trained at scale by large, closed AI labs. DeepSeek was the first to figure out how to train such models at scale and in an open way, followed by Qwen, Kimi, and other models in China.

“DeepSeek and Qwen and all these models are our wake-up call because if we don’t do anything about it, then effectively, the global standard of intelligence will be built by someone else. It won’t be built by America.”

-Misha Laskin, CEO of Reflection AI

Laskin also argued that the initiative puts the U.S. and its allies at a disadvantage since enterprises and sovereign states avoid using Chinese models due to potential legal repercussions. He added that companies and sovereign countries can either choose to live at a competitive disadvantage or rise to the occasion.

Reflection AI aims to continue building and releasing frontier models sustainably

Reflection AI revealed that it raised significant capital and identified a scalable commercial model that aligns with its open intelligence strategy, which it said ensures the firm can continue building and releasing frontier models sustainably. The AI company said it’s scaling up to build open models that bring together large-scale pretraining and advanced reinforcement learning from the ground up.

David Sacks, the White House AI and Crypto Czar, celebrated Reflection AI’s new mission, saying it’s great to see more American open-source AI models. He believes a significant segment of the global market will prefer the cost, customizability, and control that open source offers. 

Co-founder and CEO of Hugging Face, Clem Delangue, believes that the challenge now will be to show high velocity of sharing open AI models and datasets. Laskin revealed that the Reflection AI would release model weights for public use while largely keeping datasets and full training pipelines proprietary. Model weights are core parameters that determine how an AI system works, and Laskin said only a select handful of companies can actually use the infrastructure stack.

Claim your free seat in an exclusive crypto trading community - limited to 1,000 members.

Disclaimer: For information purposes only. Past performance is not indicative of future results.
placeholder
Finding The Best Japan Stocks to Buy? These are Top Japanese Companies to Watch Discover the best Japanese stocks to buy, including AI semiconductor leaders, Buffett-backed trading houses, and undervalued Japan stocks benefiting from corporate reforms and yen trends.
Author  Mitrade
May 29, Fri
Discover the best Japanese stocks to buy, including AI semiconductor leaders, Buffett-backed trading houses, and undervalued Japan stocks benefiting from corporate reforms and yen trends.
placeholder
WTI rises to near $93.00 as Iran launches missiles toward Kuwait, BahrainWest Texas Intermediate (WTI) gains ground for the third successive day, trading around $92.90 per barrel during the Asian hours on Wednesday.
Author  FXStreet
Jun 03, Wed
West Texas Intermediate (WTI) gains ground for the third successive day, trading around $92.90 per barrel during the Asian hours on Wednesday.
placeholder
Forex Today: US Dollar stays resilient ahead of key US dataHere is what you need to know on Wednesday, June 3:
Author  FXStreet
Jun 03, Wed
Here is what you need to know on Wednesday, June 3:
placeholder
Bitcoin drops below $65K amid reinforced bear market signalsBitcoin (BTC) dipped further below $65,000 on Wednesday, with onchain data from Glassnode signaling a market firmly in a bear phase. The decline has pushed prices back into a key valuation range between the Realized Price and the True Market Mean.
Author  FXStreet
Jun 04, Thu
Bitcoin (BTC) dipped further below $65,000 on Wednesday, with onchain data from Glassnode signaling a market firmly in a bear phase. The decline has pushed prices back into a key valuation range between the Realized Price and the True Market Mean.
placeholder
Gold declines below $4,500 on stalled US-Iran ceasefire talks, US NFP data loomsGold price (XAU/USD) edges lower to near $4,470 during the early Asian session on Friday. The precious metal remains volatile amid ongoing geopolitical turmoil. Traders will closely monitor the developments surrounding the US-Iran peace deal and the US May employment report later on Friday. 
Author  FXStreet
Yesterday 01: 25
Gold price (XAU/USD) edges lower to near $4,470 during the early Asian session on Friday. The precious metal remains volatile amid ongoing geopolitical turmoil. Traders will closely monitor the developments surrounding the US-Iran peace deal and the US May employment report later on Friday. 
goTop
quote