Rudina Seseri, founder and managing director of Glasswing Ventures, believes AI-focused startups face unique challenges apart from typical Software as a Service (SaaS) businesses. These concerns spring from the inherent complexities of designing, developing, and deploying AI-based solutions.
Unlike SaaS businesses, where software is the product and can be easily upgraded or repackaged, AI startups have to initiate continuous innovation, ensuring their technologies are always at the forefront. Furthermore, AI technology is intricate and requires substantial amounts of data to train the models, creating niche difficulties for these startups.
Another difference is in customer expectations. While SaaS users look for features and usability, AI customers expect impactful, often customized results. Therefore, an AI startup’s success depends on mastering technology and understanding the demanding market nature.
Seseri emphasizes that for a company to be an actual AI enterprise, its main offering must be founded on algorithms and data, not just integrating AI Application Programming Interfaces. The core product or service should be about artificial intelligence rather than merely incorporating AI components into an existing framework.
AI products, unlike SaaS products, require more time to develop a trustworthy reputation before introduction to consumers.
Addressing AI startups’ distinctive hurdles
Startups should strike a balance between the learning trajectory and the algorithm-training loop for customer acceptance and engagement. This balance could involve closely monitoring feedback and adjusting algorithms, which could positively contribute to product development and end-user satisfaction.
For AI startups, it’s essential to define a compelling value proposition to potential clients, comprehend key problems, and make business-driven decisions affecting their algorithm structure. Also, they should monitor the latest tech developments to continually improve their products. Primary and secondary data collection leads to insights guiding the development of AI solutions.
AI startups must also establish a sturdy risk management strategy to mitigate potential fallbacks and seize opportunities in the dynamic AI market. Collaborations and partnerships could also aid AI startups in enhancing product functionality and extending their client range.
Despite significant challenges, including the large market share of major organizations, Seseri sees growth potential in application layer-based business models on top of infrastructure giants like OpenAI and Anthropic. She suggests prioritizing user needs and utility over infrastructure size.
Lastly, Seseri, an AI investor, leans towards application and intermediate layer businesses and emphasizes both exclusive and open-source algorithms’ importance. She believes that the blend of unique proprietary algorithms and versatile open-source codes could fuel the growth of flourishing enterprises.