Democratizing AI Development: Local LLM Deployment for India's Developer Ecosystem in the Era of Tokenized APIs
By: Vikranth Udandarao, Nipun Misra
Potential Business Impact:
Lets Indian coders build AI cheaper and faster.
India's developer community faces significant barriers to sustained experimentation and learning with commercial Large Language Model (LLM) APIs, primarily due to economic and infrastructural constraints. This study empirically evaluates local LLM deployment using Ollama as an alternative to commercial cloud-based services for developer-focused applications. Through a mixed-methods analysis involving 180 Indian developers, students, and AI enthusiasts, we find that local deployment enables substantially greater hands-on development and experimentation, while reducing costs by 33% compared to commercial solutions. Developers using local LLMs completed over twice as many experimental iterations and reported deeper understanding of advanced AI architectures. Our results highlight local deployment as a critical enabler for inclusive and accessible AI development, demonstrating how technological accessibility can enhance learning outcomes and innovation capacity in resource-constrained environments.
Similar Papers
Beyond the Cloud: Assessing the Benefits and Drawbacks of Local LLM Deployment for Translators
Computation and Language
Lets translators use AI without sending data online.
LLMs in Mobile Apps: Practices, Challenges, and Opportunities
Software Engineering
Helps make phone apps smarter with AI.
A Cartography of Open Collaboration in Open Source AI: Mapping Practices, Motivations, and Governance in 14 Open Large Language Model Projects
Software Engineering
Helps build better AI together, openly.