Min Htet Myet (Mattral) (Mattral)

Mattral

Geek Repo

Company:PTT

Location:Poland

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Organizations
CareNet-AI
Y-Ai-C

Min Htet Myet (Mattral)'s repositories

NOTE-Best-Practices-for-Computer-Vision

Best Practices for Computer Vision

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ML-AI-Algorithms-from-scratch

ML+NeuralNetworks+RL Algorithms from scratch with only numpy and basic libs

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Art-GANs

Art work generation with generative adversarial networks

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mattral

my profile readme

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ActivityRecognition-ExerciseMannerPrediction

Using devices such as Jawbone Up, Nike FuelBand, and Fitbit it is now possible to collect a large amount of data about personal activity relatively inexpensively.our goal will be to use data from accelerometers on the belt, forearm, arm, and dumbell of 6 participants.

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AI-Road-Inspection

Omdena Mexico Project

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Using-the-Open-Source-GPT4All-Model-Locally

GPT4All is trained on top of Facebook’s LLaMA model. The main contribution of GPT4All models is the ability to run them on a CPU. Testing these models is practically free because the recent PCs have powerful Central Processing Units.

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CareNetAI

carenetai web ui

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CareNetDetect

Example Web application for CareNet Service

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Cpp-Web-Assembly-Credit-Card-Validator

C++ Web assembly project with Emscripten.

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LLM-Improving-Trained-Models-with-RLHF

Experimented with the three essential Reinforcement Learning with Human Feedback (RLHF) process stages. It starts by revisiting the Supervised Fine-Tuning (SFT) process, then proceeds with the training of a reward model, and finally concludes with the reinforcement learning phase. We explored and applied methods such as 4-bit quantization and LoRA

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Lung-Disease-Detection-from-Medical-Images

Deployed models. Takes X-Rays or CT scans for accurate disease detection, includes several architectures for each disease.

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Markdown-Notes

Notes for writing markdown format (for writing ReadMe.md files)

QA-Chatbot-over-Documents-with-Sources

building a Question Answering (QA) Chatbot that works over documents and provides sources of information for its answers. Our QA Chatbot uses a chain (specifically, the RetrievalQAWithSourcesChain), and leverages it to sift through a collection of documents, extracting relevant information to answer queries.

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Recreating-the-Bing-Chatbot

explore the idea of finding the best articles from the Internet as the context for a chatbot to find the correct answer. We will use LangChain’s integration with Google Search API and the Newspaper library to extract the stories from search results. This is followed by choosing and using the most relevant options in the prompt.

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YouTube-Video-Summarizer-Using-Whisper-and-LangChain

YouTube Video Summarizer Using Whisper and LangChain

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Assembly-Testing

Assembly Language for simple operations

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Fine-Tuning-using-LoRA-and-SFT

Lets dive deeper into the mechanics of LoRA, a powerful method for optimizing the fine-tuning process of Large Language Models, its practical uses in various fine-tuning tasks, and the open-source resources that simplify its implementation.

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Google-Gemma-Experiments

Gemma LLM experiments

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LLAMA2-with-Replicate

This chatbot is created using the open-source Llama 2 LLM model from Meta. Particularly, we're using the Llama2-7B model deployed by the Andreessen Horowitz (a16z) team and hosted on the Replicate platform. This app was refactored from a16z's implementation of their LLaMA2 Chatbot to be light-weight for deployment to the Streamlit Community Cloud

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HandWritten-Text-Recognizer

Streamlit Web Interface for Handwritten Text Recognition (HTR), Optical Character Recognition (OCR) implemented with TensorFlow and trained on the IAM off-line HTR dataset. The model takes images of single words or text lines (multiple words) as input and outputs the recognized text.

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Blockchain-and-IPFS-Video-Upload-Simulation

local demo simulation designed to mimic the process of uploading video files to IPFS and interacting with a smart contract for storing and retrieving IPFS hashes. This simulation is intended for demonstration purposes, to showcase the concept without requiring actual blockchain or IPFS network interactions.

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RoboticsAcademy

Learn Robotics with JdeRobot

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