Direct answer

What are the key red flags to watch for when evaluating an AI development company in India?

Key red flags include reluctance to share client references for completed projects, vague answers about model maintenance costs, lack of a dedicated MLOps or DevOps team, and contracts that are unclear about IP ownership for trained models and pipelines.

1 Apr 2026
ai_solutions

Short answer

Key red flags include reluctance to share client references for completed projects, vague answers about model maintenance costs, lack of a dedicated MLOps or DevOps team, and contracts that are unclear about IP ownership for trained models and pipelines.

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What are the key red flags to watch for when evaluating an AI development company in India?

Key red flags include reluctance to share client references for completed projects, vague answers about model maintenance costs, lack of a dedicated MLOps or DevOps team, and contracts that are unclear about IP ownership for trained models and pipelines.

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