Free Download LangChain & OpenAI ChatGPT API for No-Code Python Developers
Published 10/2023
Created by Yahya Khawam
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 8 Lectures ( 44m ) | Size: 336 MB
Future of Coding: Let AI do your Python Projects with Zero Code
What you'll learn
Increase your productivity as programmer by letting AI do your programming work.
Learn LangChain to build AI apps.
Learn how to analyze your data in a safe way without uploading to any server or cloud provider
How to build a tool called PyGenX, which is designed to increase programmers' productivity through zero-code development.
Learn the capability of PyGenX to generate and execute Python code based on user prompts or commands.
The significance of data privacy considerations when using AI models like ChatGPT for various data-related tasks such as machine learning and data analysis
Learn data-agnostic techniques that perform tasks without letting LLMs access, storing, process, or utilize user-specific data.
Build Python software and data-centric applications just using prompts and commands.
Requirements
being comfortable with Python
Description
The goal of this course is to teach you how to build a tool that helps increasing programmers productivity by utilizing LLMs for zero-code development. This tool is called PyGenX which stands for Python Generator and Executor. This tool basically generates Python code and executes it based on a user's prompt or command. Now, there has been increasing concerns about data privacy and security when using AI models like ChatGPT for various purposes including data analysis, machine learning and and other data related tasks. Concerns often revolve around data storage and retention, data usage, data sharing with third-party, and other ethical considerations. With such concerns in mind, PyGenX can take care of data privacy when zero-code developing in Python. This is done through data-agnostic techniques which are designed to perform the same programmers' tasks without accessing, storing, processing, or utilizing user-specific data. In this way, LLMs vendors are not exposed to your data even if those LLMs run in the cloud such as GPT-4 or GPT-3.5-turbo. Running PyGenX locally-i.e., on your own hardware-offers several advantages, especially if you're concerned about privacy, latency, and data control. Here are the main benefits as a result of using PyGenX
Who this course is for
Data Analysts
Researchers
Software Developers
Python Programmers
AI Engineers
Anyone who wants to harness the power of zero-code programming in Python
Students from various fields
Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!