[GUEST ACCESS MODE: Data is scrambled or limited to provide examples. Make requests using your API key to unlock full data. Check https://lunarcrush.ai/auth for authentication information.]

@0xSamHogan Avatar @0xSamHogan Sam Hogan πŸ‡ΊπŸ‡Έ

Sam Hogan πŸ‡ΊπŸ‡Έ posts on X about y combinator, $118m, seed funding, adoption the most. They currently have XXXXXX followers and XXX posts still getting attention that total XXXXXX engagements in the last XX hours.

Engagements: XXXXXX #

Engagements Line Chart

Mentions: X #

Mentions Line Chart

Followers: XXXXXX #

Followers Line Chart

CreatorRank: XXXXXXX #

CreatorRank Line Chart

Social Influence #


Social category influence stocks technology brands vc firms finance

Social topic influence y combinator, $118m, seed funding, adoption

Top Social Posts #


Top posts by engagements in the last XX hours

"SF is great because you have XX year olds who want to strategize and operate at a civilizational level but cant drive a car or speak to women"
X Link @0xSamHogan 2025-10-05T17:01Z 17.3K followers, 203.3K engagements

"Youve been invited to the SF tech gray market Chinese peptide talk on Partiful (sponsored by Digital Ocean and Twilio)"
X Link @0xSamHogan 2025-10-10T00:30Z 17.3K followers, XXX engagements

"If youre XX and you think you are too old to start a company you are correct. If youre XX and you think you are too young to start a company you are correct. If youre XX and you think you are the right age to start a company you are correct. Pretty cool right"
X Link @0xSamHogan 2025-10-07T01:28Z 17.1K followers, 31.2K engagements

"I know I jokingly make fun of Y Combinator a lot but I really don't have any problem with it. In fact I have a lot of gay friends"
X Link @0xSamHogan 2025-10-05T01:06Z 17.4K followers, 105.7K engagements

"I'm excited to announce @inference_net's $11.8M Series Seed funding round led by @multicoincap & @a16zcrypto CSX with participation from @topology_vc @fdotinc and an incredible group of angels. The next wave of AI adoption will be driven by companies building AI natively into their products at scale. As scaling laws continue to demand larger models and more compute margins become thin and operating at scale becomes untenable. We're taking a different approach -- training task-specific Small Language Models (SLMs) that match or outperform models from the Big Labs. Read more πŸ‘‡"
X Link @0xSamHogan 2025-10-14T18:28Z 17.3K followers, 124.2K engagements