Enhancing Selection of Climate Tech Startups with AI -- A Case Study on Integrating Human and AI Evaluations in the ClimaTech Great Global Innovation Challenge
Jennifer Turliuk, Alejandro Sevilla, Daniela Gorza, Tod Hynes

TL;DR
This case study demonstrates how integrating AI and human evaluations in a hybrid model can improve the selection process of climate tech startups, combining efficiency, objectivity, and expert judgment.
Contribution
It introduces a novel hybrid evaluation framework that combines AI and human assessments for startup selection in climate tech competitions.
Findings
AI outperformed humans in initial screening
Hybrid scoring improved selection accuracy
AI and human judgments showed moderate correlation
Abstract
This case study examines the ClimaTech Great Global Innovation Challenge's approach to selecting climate tech startups by integrating human and AI evaluations. The competition aimed to identify top startups and enhance the accuracy and efficiency of the selection process through a hybrid model. Research shows data-driven approaches help VC firms reduce bias and improve decision-making. Machine learning models have outperformed human investors in deal screening, helping identify high-potential startups. Incorporating AI aimed to ensure more equitable and objective evaluations. The methodology included three phases: initial AI review, semi-finals judged by humans, and finals using a hybrid weighting. In phase one, 57 applications were scored by an AI tool built with StackAI and OpenAI's GPT-4o, and the top 36 advanced. In the semi-finals, human judges, unaware of AI scores, evaluated…
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Taxonomy
TopicsAI in Service Interactions · Big Data and Business Intelligence · Innovation, Sustainability, Human-Machine Systems
