Generic selectors
Exact matches only
Search in title
Search in content
Post Type Selectors
Filter by Categories
About Article
Analyze Data
Archive
Best Practices
Better Outputs
Blog
Code Optimization
Code Quality
Command Line
Daily tips
Dashboard
Data Analysis & Manipulation
Data Engineer
Data Visualization
DataFrame
Delta Lake
DevOps
DuckDB
Environment Management
Feature Engineer
Git
Jupyter Notebook
LLM
LLM Tools
Machine Learning
Machine Learning & AI
Machine Learning Tools
Manage Data
MLOps
Natural Language Processing
NumPy
Pandas
Polars
PySpark
Python Helpers
Python Tips
Python Utilities
Scrape Data
SQL
Testing
Time Series
Tools
Visualization
Visualization & Reporting
Workflow & Automation
Workflow Automation

Mirascope: Extract Structured Data Extraction from LLM Outputs

Table of Contents

Mirascope: Extract Structured Data Extraction from LLM Outputs

Large Language Models (LLMs) are powerful at producing human-like text, but their outputs lack structure, which can limit their usefulness in many practical applications that require organized data.

Mirascope offers a solution by enabling the extraction of structured information from LLM outputs reliably.

The following code uses Mirascope to extract meeting details such as topic, date, time, and participants.

Link to Mirascope.

Leave a Comment

Your email address will not be published. Required fields are marked *

0
    0
    Your Cart
    Your cart is empty
    Scroll to Top

    Work with Khuyen Tran

    Work with Khuyen Tran