Skip to content

Latest commit

 

History

History
71 lines (54 loc) · 3.65 KB

README.md

File metadata and controls

71 lines (54 loc) · 3.65 KB

Project Description

Implementing a scalable content team using AI involves creating a framework that blends the strengths of AI technologies with the creative and supervisory capabilities of human team members. This strategy aims to enhance efficiency, creativity, and content output quality.

This code is a high-level conceptualization and would require adaptation to fit the actual CrewAI framework and toolset specifics. It illustrates how different AI agents, equipped with specialized roles and tools, can collaborate within a content creation process. Each agent focuses on a key area—research, writing, and SEO—streamlining the content development workflow and enhancing output quality through specialized AI-driven tasks.

Objective

Implement a content generation workflow using the Crew AI framework. This workflow should autonomously process input topics, research, plan content, generate images, optimize for SEO, and perform final editorial checks.

Tools and Frameworks:

  • Crew AI framework
  • Streamlit - User Interface(UI)
  • Python for scripting
  • AI models or APIs (e.g., gemini-pro for content, stable-diffusion-xl-base for images)

Prerequisites

To complete this project, you should understand Python programming, data manipulation, visualization libraries such as Pandas and Matplotlib, and machine learning libraries such as Scikit-Learn. Additionally, some background knowledge of natural language processing (NLP) techniques and generating text-to-image and image-to-text methods would be helpful.

Resources


Notes: This step is crucial:

Click here to set four API_KEYs in the Environment Variable, and use this link as a reference.


Step 1: Clone the repository

$ git clone https://github.com/Bhavik-Jikadara/Content-Generation-Workflow.git
$ cd Content-Generation-Workflow/

Step 2: Create a virtualenv (windows user)

$ pip install virtualenv
$ virtualenv venv
$ source venv/Scripts/activate

Step 3: Rename the .env.example filename to the .env file and add API keys

$ OPENAI_API_KEY=""
$ GOOGLE_API_KEY=""
$ SERPER_API_KEY=""
$ HUGGINGFACE_API_KEY=""

Step 4: Install the requirements libraries using pip

$ pip install -r requirements.txt

Step 5: Type this command and run the project:

$ streamlit run Home.py

Follow

Subscribe

Donate & Support us