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DSPy-Chain-of-Thought-RAG
Building a Chain of Thought RAG Model with DSPy, Qdrant and OllamaHealthcare-AI-Assistant-Medical-Data-Qdrant-Dspy-Groq
Building Private Healthcare AI Assistant for Clinics Using Qdrant Hybrid Cloud, DSPy and Groq - Llama3DSPy-Multi-Hop-Chain-of-Thought-RAG
Discover advanced AI techniques in my repository combining Multi-Hop Chain of Thought (CoT) and Retrieval-Augmented Generation (RAG) using DSPy and Indexify. Enhance complex problem-solving with multi-step reasoning and external knowledge integration. Perfect for AI enthusiasts and researchers.LLM-Agent-Landing-Page-Generator-CrewAI-Qdrant-Langchain
LLM Agents: Landing Page Generation for an E-commerce Platform Using CrewAI, Groq-LangChain and Qdrantlegal-cases-search-using-self-query-qdrant-llama3-langchain
Building a Legal Case Search Engine Using Qdrant, Llama 3, LangChain and Exploring Different Filtering TechniquesSQL-Agents-Using-RAG-DSPy-Groq
Exploring advanced prompting tools to query SQL database with multiple tables in natural language usingย LLMsintelligentgallery
Intelligent Image Gallery with Uploads, Deduplication, and Text-Based Search Using Vector DB QdrantFinancial-RAG-GPU-less-Mistral-Langchain
All CPU efficient GPU-less Financial Analysis RAG Model with Qdrant, Langchain and GPT4All x Mistral-7B, run RAG without any GPU support!Finetuning-Mistral-7B-Chat-Doctor-Huggingface-LoRA-PEFT
Finetuning Mistral-7B into a Medical Chat Doctor using Huggingface ๐ค+ QLoRA + PEFT.Knowledge-graphs-RAG-DAGWorks-Hamilton-FalkorDB-OpenAI
Creating Knowledge Graphs and Productionalizing your RAG model with using Dagworks, FalkorDB, Langchain and OpenAIHuman-characters-detection-from-a-video-The-Office-S06E01-Computer-vision-and-Facenet
This is a self mini project that I undertook for my learning process. I have taken an episode from my favourite TV series called The Office (US) S06E01. Using this episode I have extracted images & using those images I have classified 17 characters using CV2 and Facenet Model.Forest-cover-type-using-deep-learning
Predicting forest cover type from cartographic variables only (no remotely sensed data). The actual forest cover type for a given observation (30 x 30 meter cell) was determined from US Forest Service (USFS) Region 2 Resource Information System (RIS) data. Independent variables were derived from data originally obtained from US Geological Survey (USGS) and USFS data. Data is in raw form (not scaled) and contains binary (0 or 1) columns of data for qualitative independent variables (wilderness areas and soil types). This study area includes four wilderness areas located in the Roosevelt National Forest of northern Colorado. These areas represent forests with minimal human-caused disturbances, so that existing forest cover types are more a result of ecological processes rather than forest management practices. Some background information for these four wilderness areas: Neota (area 2) probably has the highest mean elevational value of the 4 wilderness areas. Rawah (area 1) and Comanche Peak (area 3) would have a lower mean elevational value, while Cache la Poudre (area 4) would have the lowest mean elevational value. As for primary major tree species in these areas, Neota would have spruce/fir (type 1), while Rawah and Comanche Peak would probably have lodgepole pine (type 2) as their primary species, followed by spruce/fir and aspen (type 5). Cache la Poudre would tend to have Ponderosa pine (type 3), Douglas-fir (type 6), and cottonwood/willow (type 4). The Rawah and Comanche Peak areas would tend to be more typical of the overall dataset than either the Neota or Cache la Poudre, due to their assortment of tree species and range of predictive variable values (elevation, etc.) Cache la Poudre would probably be more unique than the others, due to its relatively low elevation range and species composition.Love Open Source and this site? Check out how you can help us