Moozonian
Web Images Developer News Books Maps Shopping Moo-AI
Showing results for Structures Vector Recipe
GitHub Repo https://github.com/Aryia-Behroziuan/pandas

Aryia-Behroziuan/pandas

Tutorials This is a guide to many pandas tutorials, geared mainly for new users. Internal Guides pandas own 10 Minutes to pandas More complex recipes are in the Cookbook pandas Cookbook The goal of this cookbook (by Julia Evans) is to give you some concrete examples for getting started with pandas. These are examples with real-world data, and all the bugs and weirdness that that entails. Here are links to the v0.1 release. For an up-to-date table of contents, see the pandas-cookbook GitHub repository. To run the examples in this tutorial, you’ll need to clone the GitHub repository and get IPython Notebook running. See How to use this cookbook. A quick tour of the IPython Notebook: Shows off IPython’s awesome tab completion and magic functions. Chapter 1: Reading your data into pandas is pretty much the easiest thing. Even when the encoding is wrong! Chapter 2: It’s not totally obvious how to select data from a pandas dataframe. Here we explain the basics (how to take slices and get columns) Chapter 3: Here we get into serious slicing and dicing and learn how to filter dataframes in complicated ways, really fast. Chapter 4: Groupby/aggregate is seriously my favorite thing about pandas and I use it all the time. You should probably read this. Chapter 5: Here you get to find out if it’s cold in Montreal in the winter (spoiler: yes). Web scraping with pandas is fun! Here we combine dataframes. Chapter 6: Strings with pandas are great. It has all these vectorized string operations and they’re the best. We will turn a bunch of strings containing “Snow” into vectors of numbers in a trice. Chapter 7: Cleaning up messy data is never a joy, but with pandas it’s easier. Chapter 8: Parsing Unix timestamps is confusing at first but it turns out to be really easy. Lessons for New pandas Users For more resources, please visit the main repository. 01 - Lesson: - Importing libraries - Creating data sets - Creating data frames - Reading from CSV - Exporting to CSV - Finding maximums - Plotting data 02 - Lesson: - Reading from TXT - Exporting to TXT - Selecting top/bottom records - Descriptive statistics - Grouping/sorting data 03 - Lesson: - Creating functions - Reading from EXCEL - Exporting to EXCEL - Outliers - Lambda functions - Slice and dice data 04 - Lesson: - Adding/deleting columns - Index operations 05 - Lesson: - Stack/Unstack/Transpose functions 06 - Lesson: - GroupBy function 07 - Lesson: - Ways to calculate outliers 08 - Lesson: - Read from Microsoft SQL databases 09 - Lesson: - Export to CSV/EXCEL/TXT 10 - Lesson: - Converting between different kinds of formats 11 - Lesson: - Combining data from various sources Practical data analysis with Python This guide is a comprehensive introduction to the data analysis process using the Python data ecosystem and an interesting open dataset. There are four sections covering selected topics as follows: Munging Data Aggregating Data Visualizing Data Time Series Excel charts with pandas, vincent and xlsxwriter Using Pandas and XlsxWriter to create Excel charts Various Tutorials Wes McKinney’s (pandas BDFL) blog Statistical analysis made easy in Python with SciPy and pandas DataFrames, by Randal Olson Statistical Data Analysis in Python, tutorial videos, by Christopher Fonnesbeck from SciPy 2013 Financial analysis in python, by Thomas Wiecki Intro to pandas data structures, by Greg Reda Pandas and Python: Top 10, by Manish Amde Pandas Tutorial, by Mikhail Semeniuk indexmodules |next |previous |pandas 0.15.2 documentation » © Copyright 2008-2014, the pandas development team
GitHub Repo https://github.com/BartoszMietlicki/recipes-rag

BartoszMietlicki/recipes-rag

End-to-end RAG system for recipe Q&A and recommendations, built on a scraped recipe corpus with transformer embeddings and FAISS vector search. Generates structured answers (ingredients/steps) using an LLM.
GitHub Repo https://github.com/HarshPatel2035/AI-Powered-Recipe-Recommendation-Generation-System-RAG-

HarshPatel2035/AI-Powered-Recipe-Recommendation-Generation-System-RAG-

Indian Recipes RAG is an AI assistant that retrieves and generates authentic Indian recipes based on user queries. Built using Retrieval-Augmented Generation (RAG), it uses a vector search over 6000+ curated Indian recipes from Kaggle and responds with structured results including ingredients, variations, and step-by-step cooking instructions.
GitHub Repo https://github.com/danialo/recipe-brain

danialo/recipe-brain

An intelligent recipe aggregation and semantic search system. Monitors RSS feeds from popular food blogs, scrapes structured recipe data, and enables natural language search using OpenAI embeddings and Qdrant vector database. 85% scraping success rate with detailed ingredient and instruction extraction.
GitHub Repo https://github.com/ShreyaJamsandekar/Recipe-Generator

ShreyaJamsandekar/Recipe-Generator

Web-Crawler Based Recipe Generator that will introduce enough filters in a domain that it will help the user to find the exact recipe that they are looking for. The model will be fed recipes from different websites which it will be able to structure into a vector form.