Confidential guide on numerology and astrology, based of GG33 Public information

mcp-hub
MCP Hub is a comprehensive framework for building, managing, and deploying Model Context Protocol (MCP) clients and servers. It provides tools and configurations to enable seamless integration and execution of end-to-end MCP workflows.
3 years
Works with Finder
1
Github Watches
0
Github Forks
2
Github Stars
MCP Hub Documentation
Overview
MCP Hub is a framework for creating and managing Model Context Protocol (MCP) servers and clients. It leverages the uv
tool for fast package installation and configuration management.
Why Use UV?
UV simplifies package management and configuration with blazing-fast commands. Learn a few commands to get started, and you're good to go:
- Initialize a project:
uv init
- Sync Python version and dependencies:
uv sync
For more details, visit the UV GitHub repository.
Motivation
To understand the basics of MCP and get started with creating MCP servers, refer to the MCP Quickstart Server Guide.
Getting Started
How to Create a Sample MCP Server
-
Create a New Project Directory
uv init XYZ cd XYZ
-
Set Up a Virtual Environment
uv venv source .venv/bin/activate
-
Install Dependencies
uv add "mcp[cli]" httpx
-
Create the Server File
touch XYZ.py
How to Run the MCP Server
To run the server, use the following command:
uv run XYZ.py
Example: Creating a New XYZ Server
Follow the steps outlined above to create and run a new XYZ server. Replace XYZ
with your desired project name.
Recent Updates
Notebooks Directory
The notebooks/
directory has been added to the project. It includes configuration files and scripts for setting up and running JupyterHub. Key files include:
-
jupyterhub_config.py
: Configuration for JupyterHub. -
start_jupyterhub.sh
: Script to start the JupyterHub server.
CIFAR-10 Dataset Downloader
A new script has been added under ai/computer-vision/09_datasets/
to download the CIFAR-10 dataset using TensorFlow/Keras. To use it, run:
python ai/computer-vision/09_datasets/download_cifar10.py
This script downloads the dataset and prints a confirmation message.
AI Folder
The ai/
folder contains various subdirectories and scripts related to computer vision and artificial intelligence. Below is an overview of its structure and contents:
Subdirectories and Files
01_image_handling
-
basic_manipulations.py
: Basic image manipulation techniques. -
blue_image.png
: Sample image for testing. -
hello_cv.py
: A simple script to demonstrate computer vision basics. -
image_representation.py
: Explains image representation in computer vision. -
read_display_save.py
: Script to read, display, and save images. -
README.md
: Documentation for this subdirectory.
02_image_preprocessing
-
augmentation.py
: Image augmentation techniques. -
normalization.py
: Image normalization methods.
03_feature_extraction
-
hog_extraction.py
: Extracts Histogram of Oriented Gradients (HOG) features. -
sift_surf_extraction.py
: Demonstrates SIFT and SURF feature extraction.
04_basic_ml_concepts
-
hog_svm_classifier.py
: Implements a classifier using HOG features and SVM.
05_deep_learning_cnn
-
cnn_architecture.py
: Defines a Convolutional Neural Network (CNN) architecture.
06_image_classification
-
train_classifier.py
: Script to train an image classifier.
07_object_detection
-
basic_object_detection.py
: Demonstrates basic object detection techniques.
08_image_segmentation
-
basic_segmentation.py
: Explains basic image segmentation methods.
09_datasets
-
download_cifar10.py
: Script to download the CIFAR-10 dataset.
10_utils
-
image_utils.py
: Utility functions for image processing.
Additional Files
-
main.py
: Entry point for AI-related scripts. -
pyproject.toml
: Configuration file for the project. -
README.md
: Documentation for theai/
folder. -
run.sh
: Shell script to execute AI-related tasks. -
uv.lock
: Lock file for dependencies.
相关推荐
Converts Figma frames into front-end code for various mobile frameworks.
Advanced software engineer GPT that excels through nailing the basics.
Take an adjectivised noun, and create images making it progressively more adjective!
Siri Shortcut Finder – your go-to place for discovering amazing Siri Shortcuts with ease
I find academic articles and books for research and literature reviews.
Discover the most comprehensive and up-to-date collection of MCP servers in the market. This repository serves as a centralized hub, offering an extensive catalog of open-source and proprietary MCP servers, complete with features, documentation links, and contributors.
Micropython I2C-based manipulation of the MCP series GPIO expander, derived from Adafruit_MCP230xx
Bridge between Ollama and MCP servers, enabling local LLMs to use Model Context Protocol tools
🧑🚀 全世界最好的LLM资料总结(Agent框架、辅助编程、数据处理、模型训练、模型推理、o1 模型、MCP、小语言模型、视觉语言模型) | Summary of the world's best LLM resources.
The all-in-one Desktop & Docker AI application with built-in RAG, AI agents, No-code agent builder, MCP compatibility, and more.
Reviews

user_xToihejl
As a dedicated user of the mcp-hub by reddy-sh, I am genuinely impressed by its functionality and seamless integration. The comprehensive documentation and user-friendly interface have significantly boosted my productivity. It's a must-have tool for any developer looking to streamline their workflow. Highly recommended!