At DevSparks 2026 in Bengaluru, Zoho Labs unveiled its strategic pivot to inference engineering, a move necessitated by the rapid rise of open-weight models. These models, which make AI parameters publicly accessible, have significantly altered the landscape of AI development. For Zoho Labs, a division of Zoho Corp dedicated to solving recurring engineering challenges, this shift prompted a reevaluation of its AI strategy, leading to the adoption of inference engineering as its primary focus.
Zoho Labs: Evolution and Pivot
Founded to address repetitive engineering problems across Zoho’s extensive suite of over 100 products, Zoho Labs initially focused on advancing AI capabilities in machine learning, computer vision, and language processing. However, the advent of open-weight models in 2023, which offered extensive language support and were freely available, quickly outpaced the proprietary models Zoho had developed over years.
In response, Zoho Labs diversified its approach. It introduced Zoho AI Bridge to facilitate seamless integration with third-party AI services and open-weight models. Additionally, it maintained a smaller in-house model for routine tasks such as email and document summarization. However, the core of its new direction became inference engineering, aimed at maximizing the efficiency of existing AI systems.
Innovation in Inference Engineering
Inference engineering at Zoho Labs focuses on optimizing the performance of transformer models, which remain a cornerstone of AI applications despite new architectural innovations. The lab implemented several key techniques to enhance efficiency and reduce operational costs.
Quantization emerged as a crucial method, allowing the compression of less critical model components to boost speed without sacrificing accuracy. This nuanced approach ensured that essential weights remained untouched, preserving the model’s integrity. KV cache management was another innovation, functioning as a dynamic memory system that retained frequently accessed data while discarding rarely used information.
Furthermore, Zoho Labs employed continuous batching to process requests in groups rather than sequentially, improving throughput. Speculative decoding, a technique using smaller models to pre-emptively generate responses checked by larger models, allowed Zoho to deliver high-quality outputs efficiently. These innovations have enabled Zoho’s AI systems to handle approximately six billion API calls monthly within a constrained GPU budget.
Impact on India’s Startup Ecosystem
Zoho Labs’ pivot to inference engineering highlights a broader trend in the Indian startup ecosystem, where companies increasingly focus on optimizing existing technologies rather than solely developing new ones. This shift can provide a competitive edge in a market where resource constraints and cost efficiency are paramount.
As Indian startups navigate this evolving landscape, the emphasis on maximizing existing AI infrastructures could lead to more sustainable business models. This approach may also inspire smaller firms to explore similar strategies, fostering innovation and efficiency across the tech sector.
Looking ahead, Zoho Labs’ commitment to inference engineering could serve as a blueprint for other companies facing similar challenges in AI development. For founders and engineers, the focus will likely shift towards enhancing the efficiency of AI operations, making this an area to watch closely for future advancements. Investors may also find value in supporting startups that prioritize optimization and cost-effective solutions, aligning with the evolving demands of the industry.



















