🧪 Indica-1.7B: An Experimental Research Model 🇮🇳

NOTICE: This is an experimental model released strictly for research and development purposes.
It serves as a proof-of-concept for a four-stage post-training pipeline applied to Small Language Models (SLMs).

Indica-1.7B is a lightweight language model developed by Prashant to explore the limits of persona injection, cultural alignment, and reasoning behavior in ultra-small parameter architectures (1.7B).

Built on Qwen3-1.7B, the model was subjected to a rigorous post-training regime including Supervised Fine-Tuning (SFT), GRPO-based reasoning alignment, and Direct Preference Optimization (DPO).


🔬 Research Objective

This project investigates whether a 1.7B-parameter model can balance three traditionally competing objectives:

  1. Domain Expertise
    Knowledge of Indian Law (IPC/BNS) and Agriculture.

  2. Linguistic Persona
    Natural Hinglish/Hindi code-switching with colloquial Indian tone.

  3. Logic & Reasoning
    Utilization of an explicit internal reasoning trace via native <think> tags.


🛠️ Post-Training Pipeline

The model underwent a specialized four-stage alignment strategy:

  • Stage 1: SFT (Knowledge)
    Supervised fine-tuning on Indian Law and Agriculture datasets.

  • Stage 2: GRPO (Reasoning)
    Reinforcement learning to reward structured reasoning using <think> tags.

  • Stage 3: DPO (Persona Alignment)
    Preference optimization to shape a friendly, culturally grounded “Indian AI Assistant” identity.

  • Stage 4: Optimization & Export
    Exported using Unsloth for efficient GGUF-based local inference.


📉 Known Limitations & Experimental Findings

(The “Alignment Tax”)

As an experimental 1.7B-parameter model, Indica exhibits several important alignment-related trade-offs:

  • Factual Regression
    Due to limited parameter capacity, the final DPO stage introduces loss in precision for mathematical reasoning and exact legal section numbering.

  • Persona Drift
    The model may prioritize its creative or conversational persona over strict technical accuracy, occasionally identifying itself as entities such as an “AI Zindagi Manager.”

  • Logic Bypassing
    In some cases, the model may skip the internal <think> reasoning trace and respond directly, leading to incomplete or incorrect answers.

  • Repetition Loops
    Occasional repetition or gibberish outputs may occur, particularly in long Hinglish conversations.

These behaviors are considered expected outcomes when aggressively aligning small models beyond their parameter limits.


📦 Deployment (For Testing & Research)

This model is best suited for:

  • Studying Hinglish conversational behavior
  • Exploring persona-alignment trade-offs
  • Serving as a base for further fine-tuning experiments

Local Inference with Ollama

ollama run hf.co/prash616/Indica-1.7B-GGUF

🤝 Credits & Acknowledgements

  • Developer: Prashant (prash616)
  • Base Model: Alibaba Qwen Team
  • Training Framework & Optimization: Unsloth AI

Disclaimer

This model is released strictly for educational and research purposes.
It should not be used for real-world legal, agricultural, or mathematical decision-making.

Indica-1.7B is an experimental exploration of how far cultural alignment and persona shaping can be pushed in small-scale language models—highlighting both their promise and their structural limits.

Downloads last month
10
Safetensors
Model size
2B params
Tensor type
BF16
·
Inference Providers NEW
This model isn't deployed by any Inference Provider. 🙋 Ask for provider support

Model tree for prash616/Indica-1.7B

Finetuned
Qwen/Qwen3-1.7B
Finetuned
(184)
this model
Quantizations
2 models