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LH-Tech AI
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LH-Tech-AI
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Small AI and ML models. Trained by myself. Completely OpenSource. For you. | Reddit: https://www.reddit.com/user/LH-Tech_AI/
Recent Activity
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24 minutes ago
Banaxi-Larp/supralarps-50m-base:
Report
reacted
to
pankajpandey-dev
's
post
with š
27 minutes ago
š®š³ New in my Hindi LLM Series: Gemma-4 E4B, fine-tuned for Hindi ā and it runs on your laptop's CPU. I fine-tuned Google's new Gemma-4 E4B on ~10k Hindi instruction pairs (AI4Bharat: anudesh + dolly) using Unsloth + LoRA, on a single L4 GPU. Then I ran an honest side-by-side eval: base Gemma-4 vs my fine-tune, across 25 Hindi prompts. The results were interesting š ā My fine-tune is more concise ā ask for "3 tips" and it gives exactly 3. Base writes a 1,200-character essay. ā Pure native Hindi ā base keeps slipping into English ("ą¤øą¤ą¤¤ą„लित ą¤ą¤¹ą¤¾ą¤° (Eat a Balanced Diet)", "तारा (Star)"). My fine-tune stays in clean Hindi. ā Tighter instruction-following ā ask for a "short message" and it gives one, not a menu of options. āļø And to be honest: base Gemma-4 is more detailed and comprehensive. I didn't build a "smarter" model ā I built a focused, Hindi-native, edge-friendly one that runs as a 5GB GGUF (Q4) on CPU. š Try it: Live demo (CPU): https://huggingface.co/spaces/pankajpandey-dev/gemma-4-e4b-hindi-demo GGUF (Ollama/llama.cpp): https://huggingface.co/pankajpandey-dev/gemma-4-e4b-hindi-instruct-GGUF 16-bit model: https://huggingface.co/pankajpandey-dev/gemma-4-e4b-hindi-instruct Built with @unsloth Ā· Data by @ai4bharat š #Hindi #LLM #Gemma #Unsloth #IndicNLP #GGUF
reacted
to
pankajpandey-dev
's
post
with ā¤ļø
27 minutes ago
š®š³ New in my Hindi LLM Series: Gemma-4 E4B, fine-tuned for Hindi ā and it runs on your laptop's CPU. I fine-tuned Google's new Gemma-4 E4B on ~10k Hindi instruction pairs (AI4Bharat: anudesh + dolly) using Unsloth + LoRA, on a single L4 GPU. Then I ran an honest side-by-side eval: base Gemma-4 vs my fine-tune, across 25 Hindi prompts. The results were interesting š ā My fine-tune is more concise ā ask for "3 tips" and it gives exactly 3. Base writes a 1,200-character essay. ā Pure native Hindi ā base keeps slipping into English ("ą¤øą¤ą¤¤ą„लित ą¤ą¤¹ą¤¾ą¤° (Eat a Balanced Diet)", "तारा (Star)"). My fine-tune stays in clean Hindi. ā Tighter instruction-following ā ask for a "short message" and it gives one, not a menu of options. āļø And to be honest: base Gemma-4 is more detailed and comprehensive. I didn't build a "smarter" model ā I built a focused, Hindi-native, edge-friendly one that runs as a 5GB GGUF (Q4) on CPU. š Try it: Live demo (CPU): https://huggingface.co/spaces/pankajpandey-dev/gemma-4-e4b-hindi-demo GGUF (Ollama/llama.cpp): https://huggingface.co/pankajpandey-dev/gemma-4-e4b-hindi-instruct-GGUF 16-bit model: https://huggingface.co/pankajpandey-dev/gemma-4-e4b-hindi-instruct Built with @unsloth Ā· Data by @ai4bharat š #Hindi #LLM #Gemma #Unsloth #IndicNLP #GGUF
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LH-Tech-AI/Qwen-3-1.7B-with-Reasoning-x500
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ā¢
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Apr 15
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500
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21
LH-Tech-AI/Qwen-3-1.7B-with-Reasoning-x100
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Updated
Apr 15
ā¢
100
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17