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AI Agent Frameworks: CrewAI vs. AutoGen vs. OpenAI Swarm

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Demystifying AI Agent Frameworks: CrewAI, Microsoft AutoGen, and OpenAI Swarm

Artificial intelligence (AI) is revolutionizing how we interact with technology. AI agent frameworks like CrewAI, Microsoft AutoGen, and OpenAI Swarm empower developers to build intelligent systems that operate independently or collaborate. CrewAI excels in fostering teamwork among agents, while AutoGen integrates seamlessly with Microsoft products and leverages powerful language models. OpenAI Swarm shines in its research-oriented approach and ability to handle large-scale agent interactions. Choosing the right framework depends on your project’s needs. CrewAI is ideal for collaborative tasks, AutoGen for dynamic applications with rich conversations, and OpenAI Swarm for experimental projects. This exploration paves the way for a future of seamless human-AI collaboration. Dive deeper and explore the exciting world of AI frameworks!

Comparing CrewAI, Microsoft AutoGen, and OpenAI Swarm as AI Agent Frameworks: Pros and Cons

In today’s world, artificial intelligence (AI) is rapidly changing the way we interact with technology. One of the most exciting areas of AI development is the creation of AI agent frameworks, which assist in building intelligent systems capable of operating independently or collaborating with other agents. Three significant frameworks dominating this field are CrewAI, Microsoft AutoGen, and OpenAI Swarm. Each of these frameworks has its strengths and weaknesses, making it essential to compare them. This blog post breaks down these frameworks in a way that is engaging and easy to understand, so even a twelve-year-old can grasp the concepts.


What is an AI Agent Framework?

Before diving into the specifics of CrewAI, Microsoft AutoGen, and OpenAI Swarm, let’s clarify what an AI agent framework is. An AI agent framework is a software environment designed to develop and manage AI agents—programs that can autonomously make decisions, learn from data, and interact with other agents or humans. Imagine them as smart robots that can think and communicate! For more information, see NIST’s Definition of an AI Agent.


1. CrewAI

Overview

CrewAI is a framework designed to promote teamwork among agents. It focuses on collaboration, allowing multiple agents to communicate and make decisions collectively. This framework is aimed at creating applications where communication and teamwork are paramount.

Pros

  • Collaboration: CrewAI allows agents to share information and learn from each other, leading to improved performance on tasks.
  • User-Friendly: The design is straightforward, making it easier for developers—especially those who may not have extensive coding skills—to create multi-agent systems.
  • Customizability: Developers can easily tailor the agents to fit specific needs or business requirements, enhancing its applicability across various domains.

Cons

  • Scalability Issues: As the number of agents increases, CrewAI may encounter challenges related to efficient scaling, potentially struggling with larger systems.
  • Limited Community Support: CrewAI has a smaller user community compared to other frameworks, which can hinder the availability of resources and assistance when needed.

2. Microsoft AutoGen

Overview

Microsoft AutoGen is designed to facilitate the creation of applications using large language models (LLMs). It emphasizes dialogue between agents, enabling them to interact dynamically with users and each other, thereby enhancing the overall user experience.

Pros

  • Integration with Microsoft Ecosystem: If you frequently use Microsoft products (like Word or Excel), you’ll find that AutoGen integrates seamlessly with those, offering a unified user experience.
  • Powerful LLM Support: AutoGen supports sophisticated language models, enabling agents to effectively comprehend and process human language.
  • Versatile Applications: You can create a wide variety of applications—from simple chatbots to complex data analysis systems—using this framework.

Cons

  • Complexity: New developers may face a steep learning curve, as it requires time and effort to master AutoGen’s capabilities.
  • Resource-Intensive: Applications developed with AutoGen generally necessitate substantial computing power, which might be difficult for smaller developers or businesses to access.

3. OpenAI Swarm

Overview

OpenAI Swarm is focused on harnessing the collective intelligence of multiple agents to address complex problems. It offers a testing environment, or sandbox, where developers can simulate agent interactions without real-world risks.

Pros

  • Innovative Testing Environment: Developers can safely experiment with agent interactions, gaining valuable insights into teamwork among intelligent programs.
  • Scalability: OpenAI Swarm is designed to manage numerous agents effectively, making it appropriate for large-scale projects.
  • Research-Oriented: Positioned within OpenAI’s advanced research frameworks, it employs cutting-edge practices and methodologies. More about OpenAI’s initiatives can be found here: OpenAI Research.

Cons

  • Limited Practical Applications: Because it is largely experimental, there are fewer real-world applications compared to other frameworks.
  • Inaccessible to Non-Technical Users: Individuals without a programming or AI background may find it challenging to utilize the Swarm framework effectively.

A Closer Look: Understanding the Frameworks

Let’s examine each framework a bit more to understand their potential use cases better.

CrewAI in Action

Imagine playing a strategic team game on your gaming console, where each team member communicates and strategizes. CrewAI can enable AI characters in a game to collaborate and exchange strategies just like real team members would.

Microsoft AutoGen in Action

Picture having a virtual friend who can converse with you and assist with your homework. Using Microsoft AutoGen, developers can create chatbots that interact with users while comprehending complex language cues, making these bots feel more human-like.

OpenAI Swarm in Action

Suppose you’re a scientist wanting to understand how bees collaborate to find food. OpenAI Swarm allows researchers to simulate various scenarios, observing how different AI agents react to challenges, similar to how actual bees develop teamwork to achieve their goals.


Conclusion: Which Framework is Right for You?

Choosing between CrewAI, Microsoft AutoGen, and OpenAI Swarm often depends on specific needs and project objectives. Here’s a simple way to think about which framework might work best for you:

  • For Collaborative Tasks: If your goal is teamwork among AI agents, CrewAI excels in this area.
  • For Dynamic Applications: If you’re building applications that require robust conversations and interactions, Microsoft AutoGen is a strong contender.
  • For Experimental Projects: If you wish to research or explore agent behavior, OpenAI Swarm is your best option.

Remember, each framework has its pros and cons, and the right choice will depend on your specific goals.

AI is an exciting field with endless possibilities, and understanding these frameworks can unlock many creative ideas and applications in our growing digital world! Whether you’re a developer, a business owner, or simply an enthusiast, exploring one of these frameworks opens doors to new discoveries.


Final Thoughts

AI agent frameworks are at the forefront of technology, gradually transforming our interactions with machines. CrewAI, Microsoft AutoGen, and OpenAI Swarm each provide unique pathways for creating intelligent systems capable of operating independently or collaborating. By understanding their features, strengths, and limitations, users can better appreciate the potential of AI in everyday applications.

This exploration of AI agent frameworks sets the stage for a future where collaboration between technology and humans becomes increasingly seamless. So, whether you’re coding your first AI agent or are just curious about these systems, the world of AI is awaiting your exploration!


With a thorough examination of these frameworks, we can appreciate the diversity and innovation in artificial intelligence today. Exciting times are ahead as we continue to develop and harness AI’s potential!


This blog post is just the beginning, and there’s so much more to learn. Stay curious, keep exploring, and embrace the future of AI!


If you found this post informative, feel free to share it with others who might be interested in AI frameworks. Stay tuned for more insights into the world of artificial intelligence!


Disclaimer: The information provided in this post is based on current research as of October 2023. Always refer to up-to-date resources and official documentation when exploring AI frameworks.

References

  1. Are Multi-Agent Systems the Future of AI? A Look at OpenAI’s … While OpenAI’s Swarm offers a simplified, experimental sandbox…
  2. e2b-dev/awesome-ai-agents: A list of AI autonomous agents – GitHub Create a pull request or fill in this form. Please keep the alphabetic…
  3. A Guide to Choosing the Best AI Agent in 2024 – Fluid AI Overview: AutoGen is an AI agent framework that enables the development of LLM…
  4. AI agents: Capabilities, working, use cases, architecture, benefits … Key elements of an AI agent. AI agents are autonomous entities powered by arti…
  5. Azure OpenAI + LLMs (Large Language Models) – GitHub Open search can insert 16,000 dimensions as a vector st…
  6. SeqRAG: Agents for the Rest of Us – Towards Data Science AI agents have great potential to perform complex tasks on our behalf….
  7. AI agents for data analysis: Types, working mechanism, use cases … … agent swarms to tackle complex data analysis problems collaboratively. …
  8. Best AI Agents 2024: Almost Every AI Agent Listed! – PlayHT We look at the best AI agents you should discover for your business. F…
  9. Lloyd Watts – ai #llm #machinelearning – LinkedIn … CrewAI | Autogen | Agents | LLMs | Computer Vision | Yolo. 8mo…
  10. LLM Mastery: ChatGPT, Gemini, Claude, Llama3, OpenAI & APIs Basics to AI-Agents: OpenAI API, Gemini API, Open-source LLMs, GPT-4o,…

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Excel Data Analytics: Automate with Perplexity AI & Python

Harnessing the Power of PerplexityAI for Financial Analysis in Excel

Financial analysts, rejoice! PerplexityAI is here to streamline your workflows and empower you to delve deeper into data analysis. This innovative AI tool translates your financial requirements into executable Python code, eliminating the need for extensive programming knowledge. Imagine effortlessly generating code to calculate complex moving averages or perform other computations directly within Excel. PerplexityAI fosters a seamless integration between the familiar environment of Excel and the power of Python for financial analysis.

This excerpt effectively captures the essence of PerplexityAI’s value proposition for financial analysts. It highlights the following key points:

PerplexityAI simplifies financial analysis by generating Python code.
Financial analysts can leverage PerplexityAI without needing to be programming experts.
PerplexityAI integrates seamlessly with Excel, a familiar tool for financial analysts.

Harnessing the Power of PerplexityAI for Financial Analysis in Excel

In today’s fast-paced digital world, the ability to analyze data efficiently and effectively is paramount—especially in the realm of finance. With the advent of powerful tools like PerplexityAI, financial analysts can streamline their workflows and dive deeper into data analysis without needing a heavy programming background. This blog post will explore the incredible capabilities of PerplexityAI, detail how to use it to perform financial analysis using Python, and provide code examples with easy-to-follow breakdowns.

Table of Contents

  1. Introduction to PerplexityAI
  2. Getting Started with Python for Financial Analysis
  3. Steps to Use PerplexityAI for Financial Analysis
  4. Example Code: Calculating Moving Averages
  5. Advantages of Using PerplexityAI
  6. Future Considerations in AI-Assisted Financial Analysis
  7. Conclusion

1. Introduction to PerplexityAI

PerplexityAI is an AI-powered search engine that stands out due to its unique blend of natural language processing and information retrieval. Imagine having a responsive assistant that can comprehend your inquiries and provide accurate code snippets and solutions almost instantly! This innovative technology can translate your practical needs into executable Python code, making it an invaluable tool for financial analysts and data scientists.

2. Getting Started with Python for Financial Analysis

Before we dive into using PerplexityAI, it’s essential to understand a little about Python and why it’s beneficial for financial analysis:

  • Python is Easy to Learn: Whether you’re 12 or 112, Python’s syntax is clean and straightforward, making it approachable for beginners. According to a study, Python is often recommended as the first programming language for novices.

  • Powerful Libraries: Python comes with numerous libraries built for data analysis, such as Pandas for data manipulation, Matplotlib for data visualization, and NumPy for numerical computations.

  • Integration with Excel: You can manipulate Excel files directly from Python using libraries like openpyxl and xlsxwriter.

By combining Python’s capabilities with PerplexityAI’s smart code generation, financial analysts can perform comprehensive analyses more efficiently.

3. Steps to Use PerplexityAI for Financial Analysis

Input Your Requirements

The first step in using PerplexityAI is to clearly convey your requirements. Natural language processing enables you to state what you need in a way that feels like having a conversation. For example:

  • "Generate Python code to calculate the 30-day moving average of stock prices in a DataFrame."

Code Generation

Once you input your requirements, PerplexityAI translates your request into Python code. For instance, if you want code to analyze stock data, you can ask it to create a function that calculates the moving averages.

Integration With Excel

To analyze and present your data, you can use libraries such as openpyxl or xlsxwriter that allow you to read and write Excel files. This means you can directly export your analysis into an Excel workbook for easy reporting.

Execute the Code

Once you’ve received your code from PerplexityAI, you need to run it in a local programming environment. Make sure you have Python and the necessary libraries installed on your computer. Popular IDEs for running Python include Jupyter Notebook, PyCharm, and Visual Studio Code.

4. Example Code: Calculating Moving Averages

Let’s look at a complete example to calculate the 30-day moving average of stock prices, demonstrating how to use PerplexityAI’s code generation alongside Python libraries.

import pandas as pd
import openpyxl

# Example DataFrame with stock price data
data = {
    'date': pd.date_range(start='1/1/2023', periods=100),
    'close_price': [i + (i * 0.1) for i in range(100)]
}
df = pd.DataFrame(data)

# Calculate the 30-day Moving Average
df['30_MA'] = df['close_price'].rolling(window=30).mean()

# Save to Excel
excel_file = 'financial_analysis.xlsx'
df.to_excel(excel_file, index=False, sheet_name='Stock Prices')

print(f"Financial analysis saved to {excel_file} with 30-day moving average.")

Breakdown of Code:

  • Importing Libraries: We import pandas for data manipulation and openpyxl for handling Excel files.
  • Creating a DataFrame: We simulate stock prices over 100 days by creating a pandas DataFrame named df.
  • Calculating Moving Averages: The rolling method calculates the moving average over a specified window (30 days in this case).
  • Saving to Excel: We save our DataFrame (including the moving average) into an Excel file called financial_analysis.xlsx.
  • Confirmation Message: A print statement confirms the successful creation of the file.

5. Advantages of Using PerplexityAI

Using PerplexityAI can significantly improve your workflow in several ways:

  • Efficiency: The speed at which it can generate code from your queries saves time and effort compared to manual coding.

  • Accessibility: Even individuals with little programming experience can create complex analyses without extensive knowledge of code syntax.

  • Versatility: Beyond just financial analysis, it can assist in a variety of programming tasks ranging from data processing to machine learning.

6. Future Considerations in AI-Assisted Financial Analysis

As technology evolves, staying updated with the latest features offered by AI tools like PerplexityAI will be vital for financial analysts. Continuous learning will allow you to adapt to the fast-changing landscape of AI and data science, ensuring you’re equipped with the knowledge to utilize these tools effectively.

Integrating visualizations using libraries such as Matplotlib can further enhance your analysis, turning raw data into compelling graphical reports that communicate your findings more clearly.

7. Conclusion

Using PerplexityAI to generate Python code for financial analysis not only enhances efficiency but also simplifies the coding process. This tool empowers analysts to perform sophisticated financial computations and data manipulation seamlessly. With the ease of generating code, coupled with Python’s powerful data handling capabilities, financial analysts can focus more on deriving insights rather than getting bogged down by programming intricacies.

With continuous advancements in AI, the future of financial analysis holds immense potential. Leveraging tools like PerplexityAI will undoubtedly be a game-changer for analysts looking to elevate their work to new heights. The world of finance is rapidly evolving, and by embracing these technologies today, we are better preparing ourselves for the challenges of tomorrow.

By utilizing the resources available, such as PerplexityAI and Python, you’re poised to make data-driven decisions that can transform the financial landscape.

Begin your journey today!

References

  1. Use Perplexity Ai Search Engine to Write Code and Accomplish … Use Perplexity Ai Search Engine to Write Code and Accompli…
  2. Google Sheets AI Reports with App Script Create AI … – TikTok Learn how to generate Python code from text using … …
  3. AI in Action: Recreating an Excel Financial Model with ChatGPT and … In this video, I take ChatGPT’s Code Interpreter for a run. I use Code Interpret…
  4. The Top 10 ChatGPT Alternatives You Can Try Today – DataCamp Perplexity is essentially an AI-powered search eng…
  5. Are there any legitimate ways one can actually make decent money … In general, yes, using GPT you can write code, giv…
  6. Jeff Bezos and NVIDIA Help Perplexity AI Take On Google Search Perplexity AI, the AI-powered search engine is set to take on Google, …
  7. Perplexity AI Masterclass for Research & Writing – Udemy Learn how to set up and navigate Perplexity AI for optimal use. Discov…
  8. [PDF] AIWEBTOOLS.AI 900+ AI TOOLS WITH DESCRIPTIONS/LINKS Its capabilities encompass content creation, customer support chatbots, lan…
  9. Sakhi Aggrawal, ACSM®, CSPO®, ACSD® on LinkedIn: LinkedIn Calling All Business Analysts! Participate in Our …
  10. Perplexity AI in funding talks to more than double valuation to $8 … Perplexity has told investors it is looking to raise around $5…


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AI Agents vs. AI Pipelines : A practical guide

Explore the transformative potential of AI agents and pipelines in coding large language model (LLM) applications. This guide breaks down their key differences, use cases, and implementation strategies using the CrewAI platform, providing practical coding examples for both architectures. Whether you’re building interactive AI-powered chatbots or complex data pipelines, this guide will help you understand how to best apply each approach to your projects. Suitable for developers of all skill levels, this accessible guide empowers you to leverage LLMs in creating dynamic, intelligent applications. Get started today with practical, hands-on coding examples!

AI Agents vs. AI Pipelines: A Practical Guide to Coding Your LLM Application

In today’s world, large language models (LLMs) are transforming how we interact with technology. With applications ranging from intelligent chatbots to automated content creators, understanding the underlying architectures of these systems is crucial for developers. This guide delves into the distinctions between AI agents and AI pipelines, exploring their use cases, implementation methods, and providing examples using the CrewAI platform. This guide is crafted to be accessible for readers as young as 12.

Introduction to AI Agents and AI Pipelines

Large language models have become the backbone of many innovative applications. Understanding whether to use an AI agent or an AI pipeline significantly influences the functionality and performance of your applications. This blog post provides clear explanations of both architectures, along with a practical coding approach that even beginners can follow.

Key Concepts

AI Agents

AI agents are semi-autonomous or autonomous entities designed to perform specific tasks. They analyze user inputs and generate appropriate responses based on context, allowing for dynamic interactions. Common applications include:

  • Chatbots that assist customers
  • Virtual research assistants that help gather information
  • Automated writing tools that help produce text content

Example of an AI Agent: Think of a helpful robot that answers your questions about homework or gives you book recommendations based on your interests.

AI Pipelines

AI pipelines refer to a structured flow of data that moves through multiple stages, with each stage performing a specific processing task. This approach is particularly useful for:

  • Cleaning and processing large datasets
  • Combining results from different models into a cohesive output
  • Orchestrating complex workflows that require multiple steps

Example of an AI Pipeline: Imagine a factory assembly line where raw materials pass through various stations, getting transformed into a final product—similar to how data is transformed through the different stages of a pipeline.

Choosing the Right Architecture

The decision to use an AI agent or an AI pipeline largely depends on the specific requirements of your application.

Use Cases for AI Agents

  1. Personalized Interactions: For applications needing tailored responses (like customer service).
  2. Adaptability: In environments that constantly change, allowing the agent to learn and adjust over time.
  3. Contextual Tasks: Useful in scenarios requiring in-depth understanding, such as helping with research or generating creative content.

Use Cases for AI Pipelines

  1. Batch Processing: When handling large amounts of data that need consistent processing.
  2. Hierarchical Workflows: For tasks like data cleaning followed by enrichment and final output generation.
  3. Multi-Step Processes: Where the output of one model serves as input for another.

Coding Your LLM Application with CrewAI

CrewAI offers a robust platform to simplify the process of developing LLM applications. Below, we provide code samples to demonstrate how easily you can create both an AI agent and an AI pipeline using CrewAI.

Example of Creating an AI Agent

# Import the necessary libraries
from crewai import Agent
from langchain.agents import load_tools

# Human Tools
human_tools = load_tools(["human"])

class YoutubeAutomationAgents():
    def youtube_manager(self):
        return Agent(
            role="YouTube Manager",
            goal="""Oversee the YouTube prepration process including market research, title ideation, 
                description, and email announcement creation reqired to make a YouTube video.
                """,
            backstory="""As a methodical and detailed oriented managar, you are responsible for overseeing the preperation of YouTube videos.
                When creating YouTube videos, you follow the following process to create a video that has a high chance of success:
                1. Search YouTube to find a minimum of 15 other videos on the same topic and analyze their titles and descriptions.
                2. Create a list of 10 potential titles that are less than 70 characters and should have a high click-through-rate.
                    -  Make sure you pass the list of 1 videos to the title creator 
                        so that they can use the information to create the titles.
                3. Write a description for the YouTube video.
                4. Write an email that can be sent to all subscribers to promote the new video.
                """,
            allow_delegation=True,
            verbose=True,
        )

    def research_manager(self, youtube_video_search_tool, youtube_video_details_tool):
        return Agent(
            role="YouTube Research Manager",
            goal="""For a given topic and description for a new YouTube video, find a minimum of 15 high-performing videos 
                on the same topic with the ultimate goal of populating the research table which will be used by 
                other agents to help them generate titles  and other aspects of the new YouTube video 
                that we are planning to create.""",
            backstory="""As a methodical and detailed research managar, you are responsible for overseeing researchers who 
                actively search YouTube to find high-performing YouTube videos on the same topic.""",
            verbose=True,
            allow_delegation=True,
            tools=[youtube_video_search_tool, youtube_video_details_tool]
        )

    def title_creator(self):
        return Agent(
            role="Title Creator",
            goal="""Create 10 potential titles for a given YouTube video topic and description. 
                You should also use previous research to help you generate the titles.
                The titles should be less than 70 characters and should have a high click-through-rate.""",
            backstory="""As a Title Creator, you are responsible for creating 10 potential titles for a given 
                YouTube video topic and description.""",
            verbose=True
        )

    def description_creator(self):
        return Agent(
            role="Description Creator",
            goal="""Create a description for a given YouTube video topic and description.""",
            backstory="""As a Description Creator, you are responsible for creating a description for a given 
                YouTube video topic and description.""",
            verbose=True
        )

    def email_creator(self):
        return Agent(
            role="Email Creator",
            goal="""Create an email to send to the marketing team to promote the new YouTube video.""",
            backstory="""As an Email Creator, you are responsible for creating an email to send to the marketing team 
                to promote the new YouTube video.

                It is vital that you ONLY ask for human feedback after you've created the email.
                Do NOT ask the human to create the email for you.
                """,
            verbose=True,
            tools=human_tools
        )

Step-by-step Breakdown:

  1. Import Libraries: Import the CrewAI library to access its features.
  2. Initialize Environment: Create a Crew object linked to your API Key.
  3. Create an Agent: We define an AI Agent called "ResearchAssistant" that utilizes the GPT-3 model.
  4. Function: The generate_response function takes a user’s question and returns the AI’s reply.
  5. Test Query: We test our agent by providing it with a sample query about AI advancements, printing the AI’s response.

Example of Setting Up an AI Pipeline

# Setting up AI Pipeline using CrewAI
pipeline = crew.create_pipeline(name="DataProcessingPipeline")

# Adding models to the pipeline with processing steps
pipeline.add_model("DataCleaner")
pipeline.add_model("ModelInference", model=LLMModel.GPT_3)

# Run the pipeline with input data
pipeline_output = pipeline.run(input_data="Raw data that needs processing.")
print("Pipeline Output:", pipeline_output)

Step-by-Step Breakdown

Step 1: Import Necessary Libraries

from crewai import Agent
from langchain.agents import load_tools
  • Import the Agent Class: Import the Agent class from crewai, which allows the creation of agents that can perform specific roles.
  • Import load_tools: Import load_tools from langchain.agents to access tools that the agents might use. Here, it is used to load tools that require human input.

Step 2: Load Human Tools

# Human Tools
human_tools = load_tools(["human"])
  • Load Human Interaction Tools: Load a set of tools that allow the AI agents to ask for feedback or interact with a human. These tools enable agents to involve humans in certain tasks (e.g., providing feedback).

Step 3: Define the YoutubeAutomationAgents Class

class YoutubeAutomationAgents():
    ...
  • Class for YouTube Automation Agents: Create a class called YoutubeAutomationAgents to encapsulate all the agents related to the YouTube video preparation process.

Step 4: Create youtube_manager Method

def youtube_manager(self):
    return Agent(
        role="YouTube Manager",
        goal="""Oversee the YouTube preparation process including market research, title ideation, 
                description, and email announcement creation required to make a YouTube video.
                """,
        backstory="""As a methodical and detail-oriented manager, you are responsible for overseeing the preparation of YouTube videos.
                When creating YouTube videos, you follow the following process to create a video that has a high chance of success:
                1. Search YouTube to find a minimum of 15 other videos on the same topic and analyze their titles and descriptions.
                2. Create a list of 10 potential titles that are less than 70 characters and should have a high click-through-rate.
                    - Make sure you pass the list of videos to the title creator 
                      so that they can use the information to create the titles.
                3. Write a description for the YouTube video.
                4. Write an email that can be sent to all subscribers to promote the new video.
                """,
        allow_delegation=True,
        verbose=True,
    )
  • Agent Role: "YouTube Manager" – this agent is responsible for overseeing the entire YouTube video preparation process.
  • Goal: Manage and coordinate the processes required to create a successful YouTube video, including research, title ideation, and description writing.
  • Backstory: Provides a detailed description of the responsibilities, outlining the process to ensure the video has a high chance of success.
  • allow_delegation=True: This enables the agent to delegate tasks to other agents.
  • verbose=True: Enables detailed logging of the agent’s actions for better understanding and debugging.

Step 5: Create research_manager Method

def research_manager(self, youtube_video_search_tool, youtube_video_details_tool):
    return Agent(
        role="YouTube Research Manager",
        goal="""For a given topic and description for a new YouTube video, find a minimum of 15 high-performing videos 
                on the same topic with the ultimate goal of populating the research table which will be used by 
                other agents to help them generate titles and other aspects of the new YouTube video 
                that we are planning to create.""",
        backstory="""As a methodical and detailed research manager, you are responsible for overseeing researchers who 
                actively search YouTube to find high-performing YouTube videos on the same topic.""",
        verbose=True,
        allow_delegation=True,
        tools=[youtube_video_search_tool, youtube_video_details_tool]
    )
  • Agent Role: "YouTube Research Manager" – this agent focuses on finding relevant high-performing videos for a given topic.
  • Goal: Find at least 15 videos on the same topic, which will help in generating other video components like titles.
  • Backstory: Explains the agent’s focus on research and how this information will aid in creating successful video content.
  • Tools: Uses youtube_video_search_tool and youtube_video_details_tool to search and analyze YouTube videos.
  • allow_delegation=True: Allows the agent to delegate tasks to other agents as necessary.

Step 6: Create title_creator Method

def title_creator(self):
    return Agent(
        role="Title Creator",
        goal="""Create 10 potential titles for a given YouTube video topic and description. 
                You should also use previous research to help you generate the titles.
                The titles should be less than 70 characters and should have a high click-through-rate.""",
        backstory="""As a Title Creator, you are responsible for creating 10 potential titles for a given 
                YouTube video topic and description.""",
        verbose=True
    )
  • Agent Role: "Title Creator" – focuses on generating titles.
  • Goal: Create 10 potential titles for a given topic, using previous research to ensure they have high click-through rates.
  • Backstory: Describes the agent’s role in creating engaging and optimized titles.
  • verbose=True: For detailed output during the agent’s actions.

Step 7: Create description_creator Method

def description_creator(self):
    return Agent(
        role="Description Creator",
        goal="""Create a description for a given YouTube video topic and description.""",
        backstory="""As a Description Creator, you are responsible for creating a description for a given 
                YouTube video topic and description.""",
        verbose=True
    )
  • Agent Role: "Description Creator" – specializes in writing video descriptions.
  • Goal: Create a compelling description for the video.
  • Backstory: Provides context for the agent’s expertise in writing video descriptions.
  • verbose=True: Enables detailed output.

Step 8: Create email_creator Method

def email_creator(self):
    return Agent(
        role="Email Creator",
        goal="""Create an email to send to the marketing team to promote the new YouTube video.""",
        backstory="""As an Email Creator, you are responsible for creating an email to send to the marketing team 
                to promote the new YouTube video.

                It is vital that you ONLY ask for human feedback after you've created the email.
                Do NOT ask the human to create the email for you.
                """,
        verbose=True,
        tools=human_tools
    )
  • Agent Role: "Email Creator" – focuses on creating email content to promote the new video.
  • Goal: Write a marketing email for the new video.
  • Backstory: Emphasizes that the agent should complete the email itself and only seek human feedback once the draft is ready.
  • Tools: Uses human_tools to gather feedback after drafting the email.
  • verbose=True: Enables detailed logging for transparency during the process.

Summary

This class defines a set of agents, each with specific roles and goals, to handle different parts of the YouTube video preparation process:

  • YouTube Manager oversees the entire process.
  • Research Manager finds existing relevant videos.
  • Title Creator generates engaging titles.
  • Description Creator writes video descriptions.
  • Email Creator drafts marketing emails and seeks human feedback.

These agents, when combined, enable a structured approach to creating a successful YouTube video. Each agent can focus on its specialty, ensuring the video preparation process is efficient and effective.

Best Practices

  1. Understand Requirements: Clearly outline the goals of your application to guide architectural decisions.
  2. Iterative Development: Start with a minimal viable product that addresses core functionalities, expanding complexity over time.
  3. Monitoring and Observability: Implement tools to monitor performance and make necessary adjustments post-deployment.
  4. Experiment with Both Architectures: Utilize A/B testing to discover which option better meets your application’s needs.

Conclusion

Both AI agents and AI pipelines are vital tools for leveraging large language models effectively. By carefully choosing the right approach for your application’s requirements and utilizing platforms like CrewAI, developers can create high-performing and user-friendly applications. As technology advances, staying informed about these architectures will enable developers to keep pace with the evolving landscape of AI applications.

The world of AI is expansive and filled with opportunities. With the right knowledge and tools at your disposal, you can create remarkable applications that harness the power of language and data. Happy coding!

References

  1. Large Language Models for Code Generation | FabricHQ AI Pipelines: A Practical Guide to Coding Your LLM…
  2. Using Generative AI to Automatically Create a Video Talk from an … AI Pipelines: A Practical Guide to Coding Your LLM … create apps that dem…
  3. Data Labeling — How to Select a Data Labeling Company? | by … AI Pipelines: A Practical Guide to Coding Your LLM App…
  4. SonarQube With OpenAI Codex – Better Programming AI Pipelines: A Practical Guide to Coding Your LLM Application … create apps…
  5. Best AI Prompts for Brainboard AI | by Mike Tyson of the Cloud (MToC) … Guide to Coding Your LLM Application. We use CrewA…
  6. How to take help from AI Agents for Research and Writing: A project The Researcher agent’s role is to find relevant academic papers, while…
  7. Towards Data Science on LinkedIn: AI Agents vs. AI Pipelines Not sure how to choose the right architecture for your LLM application? Al…
  8. Inside Ferret-UI: Apple’s Multimodal LLM for Mobile … – Towards AI … Application. We use CrewAI to create apps that demonstra…
  9. The role of UX in AI-driven healthcare | by Roxanne Leitão | Sep, 2024 AI Pipelines: A Practical Guide to Coding Your LLM … create apps that de…
  10. Build Your Own Autonomous Agents using OpenAGI – AI Planet Imagine AI agents as your digital sidekicks, tirelessly working t…

Citations

  1. Multi-agent system’s architecture. | by Talib – Generative AI AI Pipelines: A Practical Guide to Coding Your LLM … create apps that dem…
  2. What is LLM Orchestration? – IBM As organizations adopt artificial intelligence to build these sorts of generativ…
  3. Amazon Bedrock: Building a solid foundation for Your AI Strategy … Application. We use CrewAI to create apps that demonstrate how to choo…
  4. Connect CrewAI to LLMs … set. You can easily configure your agents to use a differe…
  5. I trusted OpenAI to help me learn financial analysis. I’m now a (much … AI Pipelines: A Practical Guide to Coding Your LLM … creat…
  6. Prompt Engineering, Multi-Agency and Hallucinations are … AI Pipelines: A Practical Guide to Coding Your LLM … cre…
  7. Announcing the next Betaworks Camp program — AI Camp: Agents AI Agents vs. AI Pipelines: A Practical Guide to Coding…
  8. AI and LLM Observability With KloudMate and OpenLLMetry AI Pipelines: A Practical Guide to Coding Your LLM ……
  9. Get Started with PromptFlow — Microsoft High-Quality AI App … AI Pipelines: A Practical Guide to Coding Your LLM ……
  10. From Buzzword to Understanding: Demystifying Generative AI AI Pipelines: A Practical Guide to Coding Your LLM … create apps…


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