
LLM-PlayLab
This playlab encompasses a multitude of projects crafted through the utilization of Large Language Models, showcasing the versatility and impact of these models across various applications.
Stars: 102

LLM-PlayLab is a repository containing various projects related to LLM (Large Language Models) fine-tuning, generative AI, time-series forecasting, and crash courses. It includes projects for text generation, sentiment analysis, data analysis, chat assistants, image captioning, and more. The repository offers a wide range of tools and resources for exploring and implementing advanced AI techniques.
README:
LLM Projects | Respository Link |
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data_analysis_agent | link |
gemma-3 | link |
Query_on_structure_data | link |
Llama 3.1 | link |
RAG Using Llama 3 | link |
CSVQConnect | link |
AI_VIRTUAL_ASSISTANT | link |
DocuBotMultiPDFConversationalAssistant | link |
autogpt | link |
meta_llama_2finetuned_text_generation_summarization | link |
text_generation_using_Llama | link |
llm_using_petals | link |
llm_using_petals | link |
Salesforce-xgen | link |
text_summarization_using_open_llama_7b | link |
Text_summarization_using_GPT-J | link |
codllama | link |
Image_to_text_using_LLaVA | link |
Tabular_data_using_llamaindex | link |
nextword_sentence_prediction | link |
Text-Generation-using-DeciLM-7B-instruct | link |
Gemini-blog-creation | link |
Prepare_holiday_cards_with_Gemini_and_Sheets | link |
Code-Generattion_using_phi2_llm | link |
RAG-USING-GEMINI | link |
Resturant-Recommendation-Multi-Modal-RAG-using-Gemini | link |
slim-sentiment-tool | link |
Synthetic-Data-Generation-Using-LLM | link |
Architecture-for-building-a-Chat-Assistant | link |
LLM-CHAT-ASSISTANT-WITH-DYNAMIC-CONTEXT-BASED-ON-QUERY | link |
Text Classifier using LLM | link |
Multiclass sentiment Analysis | link |
Text-Generation-Using-GROQ | link |
DataAgents | link |
PandasQuery_tabular_data | link |
Exploratory_Data_Analysis_using_LLM | link |
Text_generation_using_gemma_instruct | link |
Invoice-Extractor_using_gemini1.5pro | link |
Unveiling-Insights-from-Audio_using_gemini1.5pro | link |
Llama3 | link |
Image Captioning Using paligemma | link |
Hugging-Face-x-LangChain | link |
Text_Generation_using_Mistral-7B-Instruct-v0.3 | link |
Text_generation_neo_7b | link |
LLM Projects | Respository Link |
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Llama2_Model_finetuning | link |
LLM Projects | Respository Link |
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RAG_with_TLM | link |
RAG_Using_llama2_llamaindex | link |
RAG_Using_Mistral_7b_llamaindex | link |
RAG_zephyr_7b_llamaindex | link |
llm-evaluation | link |
Parse Selected Pages | link |
LLM Projects | Respository Link |
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Advanced_RAG-Re-ranking_implementation | link |
LLM Projects | Respository Link |
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Artilcle-Generation-Using-Bedrock and AWS Lambda | link |
LLM Projects | Respository Link |
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Gold Price Forecasting by using timesfm-1.0-200m | link |
forecasting-using-TimeGPT | link |
LLM Projects | Respository Link |
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Inferencing_with_Nvidia_NIM | link |
LLM Projects | Respository Link |
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Generative AI Crash Course_Session 02 | link |
LLM Projects | Respository Link |
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Multi-Agent System for Iftari Party Planning | link |
chatbot_using_LangGraph | link |
RAG_using_LangGraph | link |
Write-Social-Media-Content-with-Agents | link |
City Temperature Agent | link |
Content-Generator | link |
LLM Projects | Respository Link |
---|---|
Study Scout Agent | link |
automotive_research_analyst | link |
movie-recommender_using_LLM | link |
LLM Projects | Respository Link |
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Github Model | link |
LLM Projects | Respository Link |
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Crawl4aiforWebscrapping | link |
LLM Projects | Respository Link |
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LLM EVALUATION | link |
LLM-as-a-Judge-evaluating-text-summarization-performance | link |
Feel free to explore the repository and show your appreciation by giving it a star⭐! Your support means a lot! 😉
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