Responsible AI in India: Why Cultural Context Matters
Geetanjali Shrivastava
Mar 8, 2026 · 3 min read

Artificial intelligence is transforming how knowledge is created, accessed, and shared. As AI systems become more deeply embedded in everyday life, questions about responsibility, fairness, and cultural representation have become increasingly important.
Responsible AI is often discussed in terms of bias, transparency, and safety. While these issues are essential, they are only part of the picture, especially in societies as linguistically and culturally complex as India.
At Bhaskar, we believe that responsible AI must also include cultural intelligence.
The Limits of Universal AI Ethics
Many existing AI ethics frameworks have emerged from research communities in North America and Europe. These frameworks provide valuable principles, such as fairness, accountability, and transparency. But they often assume cultural contexts that do not fully reflect the diversity of societies like India.
In multilingual and multicultural environments, ethical AI must address additional questions:
How do AI systems interpret cultural knowledge?
Which languages and communities are represented in datasets?
How do models handle cultural nuance and historical context?
Without these considerations, AI systems risk reinforcing existing inequalities in knowledge access and representation.
Language as a Core Ethical Issue
Language is one of the most significant ethical challenges in AI development. When AI tools support only a small number of global languages, millions of people are effectively excluded from digital services and knowledge systems.
This exclusion is not simply a technical limitation it becomes a question of digital equity. Responsible AI development therefore requires:
strong support for Indic languages
better dataset diversity
evaluation frameworks that reflect real linguistic contexts
Ensuring language inclusion is one of the most practical ways to make AI systems more equitable.
Cultural Intelligence in AI Systems
Cultural intelligence refers to the ability of systems, and the people designing them, to understand cultural contexts, traditions, and values. For AI systems, cultural intelligence can involve:
recognising culturally specific references
preserving context in translation and interpretation
avoiding misrepresentation of cultural artifacts
supporting regional knowledge systems
These considerations are particularly important when AI interacts with historical archives, artistic traditions, and cultural narratives.
Bhaskar’s Responsible AI Approach
Bhaskar approaches responsible AI through a combination of research, cultural engagement, and technological development.
Our work connects several areas:
Indic language AI research
digital cultural preservation
multimodal knowledge systems
human-guided data annotation frameworks
Initiatives such as UTKARSHINI, which enables structured human review of scraped datasets, help ensure that the information used in AI systems is more reliable and culturally informed. By integrating human expertise with machine learning workflows, these systems aim to improve both accuracy and ethical oversight.
Toward AI That Reflects Society
AI systems should not exist outside the societies they serve. Instead, they should evolve with cultural awareness, linguistic inclusivity, and a commitment to public benefit. In India, where language, history, and cultural traditions are deeply intertwined, responsible AI requires more than technical safeguards. It requires ongoing dialogue between technologists, scholars, artists, and communities.
Bhaskar aims to support this dialogue through research, experimentation, and collaborative initiatives. If you are working on AI ethics, policy, cultural knowledge systems, or responsible AI research, we welcome opportunities to collaborate and contribute to building culturally informed AI systems.
Geetanjali Shrivastava
@geetanjalishrivastava


