DB-GPT-Hub
zillion
DB-GPT-Hub | zillion | |
---|---|---|
1 | 11 | |
1,044 | 156 | |
9.1% | - | |
9.3 | 7.2 | |
24 days ago | 3 months ago | |
Python | Python | |
MIT License | MIT License |
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DB-GPT-Hub
zillion
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Let's Talk about Joins
I've also been frustrated when testing out tools that kinda keep you locked into one predetermined view, table, or set of tables at a time. I made a semantic data modeling library that puts together queries (and of course joins) for you as it uses a drill-across querying technique, and can also join data across different data sources in a secondary execution layer.
https://github.com/totalhack/zillion
Disclaimer: this project is currently a one man show, though I use it in production at my own company.
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Ask HN: Show me your half baked project
https://github.com/totalhack/zillion
Semantic data warehousing and analytics tool written in python. It has experimental/half-baked NLP features to query your warehouse by interacting with the semantic layer with AI, instead of the normal approach of having an LLM write SQL and needing to know your entire schema.
- So I watched a few videos about Fabric, and started to cry a little...
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Zillion - Semantic data modeling and analytics with a sprinkle of AI
Hey All, I wanted to share Zillion -- an open source Python data modeling and analytics library with experimental natural language features powered by OpenAI, LangChain, and Qdrant. Zillion acts as a semantic layer on top of your data, writes SQL so you don't have to, and easily bolts onto existing database infrastructure via SQLAlchemy Core.
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Ask HN: Most interesting tech you built for just yourself?
Built it for me, but available to all -- Zillion: a python data modeling and analytics library.
https://github.com/totalhack/zillion
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Zillion - Data modeling and analytics with a sprinkle of AI
More details/docs can be found in the GitHub repo: https://github.com/totalhack/zillion
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🍼🔬 BabyDS: An AI powered Data Analysis pipeline
Nice work. I had considered implementing something similar in https://github.com/totalhack/zillion down the road, probably as a layer on top.
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Ask HN: Those making $0/month or less on side projects – Show and tell
Zillion: https://github.com/totalhack/zillion
A python data warehousing / modeling / analytics library that can unify multiple datasources and writes SQL for you. It's alpha level at the moment and I just slowly chip away when time allows, though I'm using it in production in another project (which does make money).
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Replacing a SQL analyst with 26 recursive GPT prompts
This seems fun, but certainly unnecessary. All of those questions could be answered in seconds using a warehouse tool like Looker or Metabase or https://github.com/totalhack/zillion (disclaimer: I'm the author and this is alpha-level stuff, though I use it regularly).
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PRQL a simple, powerful, pipelined SQL replacement
At first glance this seems more confusing, particularly the grouping/aggregation syntax, though I suppose that's something I'd just get used to. Some of the syntactic sugar is nice, but some things are also unlike SQL for no apparent reason which just makes adoption harder than necessary (join syntax for example).
IMO the main selling point would be the "database agnostic" part, but I already achieve that through SQLAlchemy Core and/or a warehouse layer like https://github.com/totalhack/zillion (disclaimer: I'm the author and this is alpha-level stuff, though I use it regularly). It seems like many newer DB technologies/services I'd want to use either speak PostgreSQL or MySQL wire protocol anyway.
The roadmap is worth a read, as it notes some limitations and expected challenges supporting the wide variety of DBMS features and syntax. That said, I can see where this might be useful in the cases where I do have to jump into direct SQL, but want the flexibility to easily switch the back end DB for that code -- that's assuming it can cover the use cases that forced me to write direct SQL in the first place though.
What are some alternatives?
Awesome-Text2SQL - Curated tutorials and resources for Large Language Models, Text2SQL, Text2DSL、Text2API、Text2Vis and more.
sqlglot - Python SQL Parser and Transpiler
llm-toys - Small(7B and below) finetuned LLMs for a diverse set of useful tasks
endoflife.date - Informative site with EoL dates of everything
griptape - Modular Python framework for AI agents and workflows with chain-of-thought reasoning, tools, and memory.
scikit-learn-intelex - Intel(R) Extension for Scikit-learn is a seamless way to speed up your Scikit-learn application
INSIGHT - INSIGHT is an autonomous AI that can do medical research!
objectiv-analytics - Open-source product analytics infrastructure for data teams that want full control. Built for high quality data collection and ready to use for advanced analytics & ML.
autogpt4all - 🛠️ User-friendly bash script for setting up and configuring your LocalAI server with the GPT4All for free! 💸
nature - 🍀 The Nature Programming Language, may you be able to experience the joy of programming.
HeimdaLLM - Constrain LLM output
Skytrax-Data-Warehouse - A full data warehouse infrastructure with ETL pipelines running inside docker on Apache Airflow for data orchestration, AWS Redshift for cloud data warehouse and Metabase to serve the needs of data visualizations such as analytical dashboards.