In the era of digital transformation, startups' visions are increasingly communicated through AI-analyzed language and signals derived from various platforms. This study examines how textual characteristics within startup descriptions influence funding outcomes in the Blockchain Venture Capital market. By leveraging NLP and topic modeling techniques on a dataset of 2,176 early-stage companies, we extract AI-derived features such as linguistic distinctiveness, competition intensity, lexical diversity, topic entropy, and disruption orientation. Grounded in signaling theory and optimal distinctiveness theory, our results indicate that Blockchain startups that use overly disruptive, complex, or unique language are less likely to secure continued investment. In contrast, firms that align their descriptions with competitive linguistic norms are more successful in obtaining venture capital funding rounds. This research contributes to the literature on digital entrepreneurship, optimal distinctiveness, and language-as-strategy by demonstrating how AI can reveal the subtle textual cues that shape investors’ perceptions and legitimacy in competitive funding ecosystems.