Update README.md
Browse filesExecutive Summary
ProcessVenue developed a high-consistency Hindi intent classification dataset to enable robust AI-assistant prompt routing. The project labelled 5,000 Hindi user prompts across six core assistant intents. Through dual independent annotation and structured verification, the dataset achieved 77.22% IAA, demonstrating dependable supervision quality and stable intent boundaries suitable for training production-grade intent routers.
Objective
Create a low-noise Hindi intent dataset aligned with real assistant traffic to improve routing reliability and supervised model learning for multi-intent and constraint-rich user prompts.
Key Challenges
Hindi prompts in assistant environments frequently contain overlapping or mixed intents, making classification non-trivial. Major complexity drivers included:
Multi-clause instructions combining tasks in one prompt
Constraint-heavy language (tone, format, tool usage, style requirements)
In-prompt domain switching (e.g., education → finance)
Code-switching between Hindi and English technical terms
Intent boundary overlap, especially: 1. Rewrite vs. Content Creation, 2. Explanation vs. Creative Writing
Maintaining labeling stability required strict guideline control and disciplined drift prevention.
Dataset Scope
The dataset reflects natural Hindi assistant usage patterns:
Conversational, instruction-style prompts
Broad domain distribution (education, healthcare, economics, environment, etc.)
High density of real routing constraints
Balanced mix of short commands and long multi-clause prompts
These attributes support training routers that generalize to real production behaviour.
Methodology: Double Blind
ProcessVenue employed a three-layer annotation workflow to reduce noise and ensure consistent intent boundaries.
Annotator1: primary label assignment
Annotator2: independent secondary label
Verifier: resolves conflicts, finalizes labels, logs edge cases
IAA computed post-reconciliation to confirm boundary stability
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license: apache-2.0
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license: apache-2.0
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task_categories:
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- text-classification
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language:
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- hi
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tags:
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- Intent_Classificaiton
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- Hindi
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- HITL
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- Annotation
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- Double
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- Double_Blind
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- assistant-routing
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- conversational-ai
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- prompt-routing
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pretty_name: IntentClassification_Dataset_for_AI_Assistant_Prompt_Routing_Hindi
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size_categories:
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- 1K<n<10K
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---
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