Sakana AI lands $135M on $2.635B valuation to accelerate frontier research and applied AI in Japan - SiliconANGLE
<a href="https://news.google.com/rss/articles/CBMivAFBVV95cUxPNWdxeHJoX1BmRkk4cmczRUNqX083S2NOdTg3ZDVJSU9KVjlmZ0FHSDVRTjUyck9qYklJNHB1azhDc1RjT20xSWlZYlNGc0Z5OF9NVzJUS1VlVXo3S3pTTXZaNlhJdlp5X3NxYUxtLTVDVWExREJZZlRqbmdSeGJaeG85djhpdGluWVJGcm1mN2swWndxMTBwTzFrRlBzdlFJTG92V2RieWFxbDZzV21HNHNGWHZLVW1qMVp6Xw?oc=5" target="_blank">Sakana AI lands $135M on $2.635B valuation to accelerate frontier research and applied AI in Japan</a> <font color="#6f6f6f">SiliconANGLE</font>
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