paper
- AnyTool: Self-Reflective, Hierarchical Agents for Large-Scale API Calls
- Automatic Chain of Thought Prompting in Large Language Models
- Benchmarking and Improving Text-to-SQL Generation under Ambiguity
- Bridging Language and Data - Optimizing Text-to-SQL Generation in Large Language Models
- C3: Zero-shot Text-to-SQL with ChatGPT
- Chain-of-Thought Prompting Elicits Reasoning in Large Language Models
- Direct Preference Optimization: Your Language Model is Secretly a Reward Model
- Enhancing Text-to-SQL Capabilities of Large Language Models: A Study on Prompt Design Strategies
- DIN-SQL: Decomposed In-Context Learning of Text-to-SQL with Self-Correction
- DSPy: Compiling Declarative Language Model Calls into Self-Improving Pipelines
- Generative Agents: Interactive Simulacra of Human Behavior
- Judging llm-as-a-judge with mt-bench and chatbot arena
- LLaMA-Adapter: Efficient Fine-tuning of Language Models with Zero-init Attention
- LoRA: Low-Rank Adaptation of Large Language Models
- QLoRA: Efficient Finetuning of Quantized LLMs
- ReAct: Synergizing Reasoning and Acting in Language Models
- ReFT: Representation Finetuning for Language Models
- Retrieval-Augmented Generation for Knowledge-Intensive NLP Tasks
- Retrieval-Augmented Generation for Large Language Models - A Survey
- Retrieval-augmented GPT-3.5-based Text-to-SQL Framework with Sample-aware Prompting and Dynamic Revision Chain
- Text-to-SQL Empowered by Large Language Models - A Benchmark Evaluation
- Towards Robustness of Text-to-SQL Models against Synonym Substitution
- Synthetic Prompting: Generating Chain-of-Thought Demonstrations for Large Language Models
- Take a Step Back: Evoking Reasoning via Abstraction in Large Language Models
- VeRA: Vector-based Random Matrix Adaptation
benchmarks
- BIRD Text-to-SQL Benchmark
(link)
- Spider Text-to-SQL Benchmark
(link)
chunking
- New Chunking Method for RAG-Systems
(link)
- The Best Text Chunking Method?
(link)
divers
- Calculate : How much GPU Memory you need to serve any LLM ?
(link)
- A Tutorial on LLM
(link)
- unsloth
(link)
- Building an Agent for Data Visualization (Plotly)
(link)
- 6 Real-World Uses of Microsoft’s Newest Phi-3 Vision-Language Model
(link)
- What is Prompt Management for LLM Applications?
(link)
- Generative AI Agents Developer Contest by NVIDIA and LangChain
(link)
- How to fine-tune LLMs on custom datasets at Scale using Qwak and CometML
(link)
- LLM Fine Tuning Series - In Context Learning
(link)
- Large Language Model Course
(link)
- GPT-4o vs. GPT-4 vs. Gemini 1.5 ⭐ — Performance Analysis
(link)
- Tabular Data, RAG, & LLMs: Improve Results Through Data Table Prompting
(link)
- List of Different Ways to Run LLMs Locally
(link)
- Why Vector Search Didn’t Work for Your RAG Solution?
(link)
- 100x Faster — Scaling Your RAG App for Billions of Embeddings
(link)
- The 4 Advanced RAG Algorithms You Must Know to Implement
(link)
- Using DuckDB + Ibis for RAG
(link)
- DuckDB-NSQL: How to Quack in SQL
(link)
- Fine-Tuning Mistral 7B for Named Entity Recognition (NER)
(link)
- A Very Gentle Introduction to Large Language Models without the Hype
(link)
- RAG Vs VectorDB
(link)
- Advanced RAG Techniques: an Illustrated Overview
(link)
- Integrating Vector Databases with LLMs: A Hands-On Guide
(link)
- Core RAG Architecture with AlloyDB AI
(link)
- Forget RAG: Embrace agent design for a more intelligent grounded ChatGPT!
(link)
- Exploring Data Modelling with ChatGPT
(link)
- What Are ChatGPT Plugins? The Next Phase of Conversational AI Is Here
(link)
- Anomaly Detection in Time Series using ChatGPT
(link)
dspy
- DSPy
(link)
- DSPy - git
(link)
- Prompt Like a Pro Using DSPy: A guide to build a better local RAG model using DSPy, Qdrant and Ollama
(link)
finetuning
- LoRA: Low-Rank Adaptation of Large Language Models
(link)
- State-of-the-art Parameter-Efficient Fine-Tuning (PEFT) methods
(link)
llama
- Building LLaMA 3 From Scratch with Python
(link)
- Crazy Challenge: Run Llama 405B on a 8GB VRAM GPU
(link)
- How to Run Llama 3.1 405B on Home Devices? Build AI Cluster!
(link)
- Fine-Tuning CodeLlama for Advanced Text-to-SQL Queries with PEFT and Accelerate
(link)
- The Llama 3 Herd of Models
(link)
langchain
nvidia
- Nemotron-4 15B: NVIDIA’s Powerful New Language Model
(link)
ollama
phi3
- Bridging the Gap: Fine-Tuning Phi-3 for SQL Query Generation with Natural Language Queries
(link)
- Exploring the Microsoft Phi3 Vision Language model as OCR for document data extraction
(link)
loring the Microsoft Phi3 Vision Language model as OCR for document data extraction-part 2
(link)
- Exploring the Microsoft Phi3 Vision Language model as OCR for document data extraction
(link)
rag case studies
- Build an Agentic RAG using HuggingFace Transformers Agent
(link)
- Using RAG Architecture to query databases, export to Google Sheets, and visualize in Looker Studio.
(link)
- How to Build a Generative Search Engine for Your Local Files Using Llama 3
(link)
- Building Vector Databases with FastAPI and ChromaDB
(link)
- Adding Context to Retrieval-Augmented Generation with Gemini Function Calling and MongoDB Atlas
(link)
- A Complete Guide to RAG and LlamaIndex
(link)
- Build RAG Application Using a LLM Running on Local Computer with Ollama and Langchain
(link)
- Advance RAG- Improve RAG performance
(link)
- RAG Detective: Retrieval Augmented Generation with website data
(link)
- Implementing Agentic RAG using Langchain
(link)
- RAG on Complex PDF using LlamaParse, Langchain and Groq
(link)
- Building an Observable arXiv RAG Chatbot with LangChain, Chainlit, and Literal AI
(link)
- Local RAG From Scratch
(link)
- LangChain SQL Agent for Massive Documents Interaction
(link)
- Implementing RAG architecture using Llama 2, Vector Store and LangChain
(link)
- How to Chat With Your Data Using OpenAI, Pinecone, Airbyte and Langchain: A Guide
(link)
- Neo4j x LangChain: Deep dive into the new Vector index implementation
(link)
- Explore OpenAI vector embedding with Neo4j, LangChain, and Wikipedia
(link)
- Build your own RAG with Mistral-7B and LangChain
(link)
- PG Phriday: Papa’s Got a Brand New RAG
(link)
- Build an Advanced Reranking-RAG System Using Llama-Index, Llama 3 and Qdrant
(link)
- Improved RAG with Llama3 and Ollama
(link)
- Build End-to-End RAG Pipeline with Monitoring and Evaluation using Langchain, Azure AI Search, OpenAI, Langfuse, Nemo-gaurdrails, ragas
(link)
- Detecting fraud in real time using Redpanda and Pinecone
(link)
- Analyze Structured Data (extracted from Unstructured Text) using LLM Agents
(link)
- Transforming Text Classification with Semantic Search Techniques — Faiss
(link)
- Extract Structured Data from Unstructured Text using LLMs
(link)
- Code Generation using Retrieval Augmented Generation + LangChain
(link)
- Open-DocLLM
(link)
- Geospatial Vector Search: Building an AI-Powered Geo-Aware News Search
(link)
- AI-Enabled Search Engine using LLM Embeddings, Django, and pgvector
(link)
- Multimodal RAG pipeline with LlamaIndex and Neo4j
(link)
rag pgvector
- How To Improve Your LLM Accuracy and Performance With PGVector and PostgreSQL: Introduction to Embeddings and the Role of PGVector
(link)
- SQL queries + pgvector: Retrieval Augmented Generation in PostgreSQL
(link)
- PostgreSQL as Vector database: Create LLM Apps with pgvector
(link)
- Simplifying RAG with PostgreSQL and PGVector
(link)
- Build a question-answer bot natively using Postgres extensions
(link)
- Use pgvector and Hugging Face to Build an Optimized FAQ Search with Sentence Similarity
(link)
text to cypher
- Use ChatGPT to Query Your Neo4j Database
(link)
- Generating Cypher Queries With ChatGPT 4 on Any Graph Schema
(link)
text to sql
- Create a SQL Agent using CrewAI and Groq
(link)
- Building a SQL Agent Using CrewAI and Ollama: A Comprehensive Guide
(link)
- Ollama with MySQL+PostgreSQL on AnythingLLM
(link)
- Hermes: A Text-to-SQL solution at Swiggy
(link)
- High accuracy text-to-SQL with Langchain
(link)
- How to use OpenAI GPT-4o to query your database?
(link)
- Chat with your databases using LangChain
(link)
- Introducing NSQL: Open-source SQL Copilot Foundation Models
(link)
- Introducing DataLang — Ask questions to your Database in Natural Language
(link)
- GPT-4’s SQL Mastery
(link)
- The Future of SQL: Crafting Queries with Large Language Models
(link)
- Text2SQL OpenSource : duckdb-nsql-7B with Ollama and LlamaIndex on local setup
(link)
- How we built Text-to-SQL at Pinterest
(link)
- What we learned from Pinterest’s Text-to-SQL solution?
(link)
- gptsql
(link)
- Retrieval Augmented Generation(RAG) — Chatbot for database with LlamaIndex (Text2SQL)
(link)
- LLMs Meet SQL: Revolutionizing Data Querying with Natural Language Processing
(link)
- An AI application that can chat with with very large SQL databases.
(link)
- Cheshire-Cat plugin SQL
(link)
- Can LLMs Replace Data Analysts? Building An LLM-Powered Analyst
(link)
- Can LLMs Replace Data Analysts? Getting Answers Using SQL
(link)
- Generative AI with SQL — First Impressions
(link)
- Chat with your SQL database using Claude 3
(link)
- Open-sourcing SQLCoder-70B, the state of the art in text to SQL generation
(link)
- How to use Mixtral -8x7B for Text-to-SQL
(link)
- SQLCoder-70B
(link)
- Building Your Own Text-to-SQL: Steps And Requirements
(link)
- Making a Production LLM Prompt for Text-to-SQL Translation
(link)
- SQLCoder-2–7b: How to Reliably Query Data in Natural Language, on Consumer Hardware
(link)
- Top 4 Challenges using RAG with LLMs to Query Database (Text-to-SQL) and how to solve it.
(link)
- How do you use LangChain to build a Text-to-SQL solution? What are the challenges? How to solve it?
(link)
- Architectural Patterns for Text-to-SQL: Leveraging LLMs for Enhanced BigQuery Interactions
(link)
- ChatGPT vs Claude 3 — Which is better for text-to-SQL
(link)
- SQL Assistant: Text-to-SQL Application in Streamlit
(link)
- Introducing NSQL: Open-source SQL Copilot Foundation Models
(link)
- NSQL git
(link)
- AI-Powered Text-to-SQL Translation in
(link)
(link)
Vanna
- Vanna git
(link)
- Text-to-SQL for DuckDB database using Vanna, in 25 lines of code
(link)
- Chat with your SQL database using GPT 4o via Vanna.ai
(link)
- Vanna: The Supercharged Text-to-SQL Tool All Data Analyst Were Looking For
(link)
- Build a Chatbot for your SQL database in 20 lines of Python using Streamlit and Vanna
(link)
- Chat with your SQL Database using Llama 3
(link)
WrenAI
- How we design our semantic engine for LLMs
(link)
- How Snowflake building the most powerful SQL LLM in the world
(link)
- The new wave of Composable Data Systems and the Interface to LLM agents
(link)
- Wren AI Text-to-SQL: API — the good stuff
(link)
- How to use Meta Llama 3 to query MySQL database using Ollama and Wren AI
(link)