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license: apache-2.0
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<div align="center">
<img src="https://i.ibb.co/CBHmTDn/136719a5-6d8a-4654-a618-46eabc788953.jpg" alt="Arcee-Agent" style="border-radius: 10px; box-shadow: 0 4px 8px 0 rgba(0, 0, 0, 0.2), 0 6px 20px 0 rgba(0, 0, 0, 0.19); max-width: 100%; height: auto;">
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Arcee Agent is a cutting-edge 7B parameter language model from arcee.ai specifically designed for function calling and tool use. Initialized from Qwen2-7B, it rivals the performance of much larger models while maintaining efficiency and speed. This model is particularly suited for developers, researchers, and businesses looking to implement sophisticated AI-driven solutions without the computational overhead of larger language models. Compute for training Arcee-Agent was provided by [CrusoeAI](https://huggingface.co/crusoeai). Arcee-Agent was trained using [Spectrum](https://arxiv.org/abs/2406.06623).
Full model is available here: [Arcee-Agent](https://huggingface.co/arcee-ai/Arcee-Agent).
### Key Features
1. **Advanced Function Calling:** Arcee Agent excels at interpreting, executing, and chaining function calls. This capability allows it to interact seamlessly with a wide range of external tools, APIs, and services.
2. **Multiple Format Support:** The model is compatible with various tool use formats, including:
- Glaive FC v2
- Salesforce
- Agent-FLAN
Arcee-Agent performs best when using the VLLM OpenAI FC format, but it also excels with prompt-based solutions. Agent-Spark can accommodate any specific use case or infrastructure needs you may have.
4. **Dual-Mode Functionality:**
- Tool Router: Arcee Agent can serve as intelligent middleware, analyzing requests and efficiently routing them to appropriate tools or larger language models for processing.
- Standalone Chat Agent: Despite its focus on function calling, Arcee Agent is capable of engaging in human-like conversations and completing a wide range of tasks independently.
5. **Unparalleled Speed and Efficiency:** With its 7B parameter architecture, Arcee Agent delivers rapid response times and efficient processing, making it suitable for real-time applications and resource-constrained environments.
6. **Competitive Performance:** In function calling and tool use tasks, Arcee Agent competes with the capabilities of models many times its size, offering a cost-effective solution for businesses and developers.
## Detailed Function Calling and Tool Use Capabilities
Arcee Agent's function calling and tool use capabilities open up a world of possibilities for AI-driven applications. Here's a deeper look at what you can achieve:
1. **API Integration:** Seamlessly interact with external APIs, allowing your applications to:
- Fetch real-time data (e.g., stock prices, weather information)
- Post updates to social media platforms
- Send emails or SMS messages
- Interact with IoT devices
2. **Database Operations:** Execute complex database queries and operations through natural language commands, enabling:
- Data retrieval and analysis
- Record updates and insertions
- Schema modifications
3. **Code Generation and Execution:** Generate and run code snippets in various programming languages, facilitating:
- Quick prototyping
- Automated code review
- Dynamic script generation for data processing
4. **Multi-step Task Execution:** Chain multiple functions together to complete complex tasks, such as:
- Booking travel arrangements (flights, hotels, car rentals)
- Generating comprehensive reports from multiple data sources
- Automating multi-stage business processes
## Business Use Cases
Arcee Agent's unique capabilities make it an invaluable asset for businesses across various industries. Here are some specific use cases:
1. **Customer Support Automation:**
- Implement AI-driven chatbots that handle complex customer inquiries and support tickets.
- Automate routine support tasks such as password resets, order tracking, and FAQ responses.
- Integrate with CRM systems to provide personalized customer interactions based on user history.
2. **Sales and Marketing Automation:**
- Automate lead qualification and follow-up using personalized outreach based on user behavior.
- Generate dynamic marketing content tailored to specific audiences and platforms.
- Analyze customer feedback from various sources to inform marketing strategies.
3. **Operational Efficiency:**
- Automate administrative tasks such as scheduling, data entry, and report generation.
- Implement intelligent assistants for real-time data retrieval and analysis from internal databases.
- Streamline project management with automated task assignment and progress tracking.
4. **Financial Services Automation:**
- Automate financial reporting and compliance checks.
- Implement AI-driven financial advisors for personalized investment recommendations.
- Integrate with financial APIs to provide real-time market analysis and alerts.
5. **Healthcare Solutions:**
- Automate patient record management and data retrieval for healthcare providers.
6. **E-commerce Enhancements:**
- Create intelligent product recommendation systems based on user preferences and behavior.
- Automate inventory management and supply chain logistics.
- Implement AI-driven pricing strategies and promotional campaigns.
7. **Human Resources Automation:**
- Automate candidate screening and ranking based on resume analysis and job requirements.
- Implement virtual onboarding assistants to guide new employees through the onboarding process.
- Analyze employee feedback and sentiment to inform HR policies and practices.
8. **Legal Services Automation:**
- Automate contract analysis and extraction of key legal terms and conditions.
- Implement AI-driven tools for legal research and case law summarization.
- Develop virtual legal assistants to provide preliminary legal advice and document drafting.
9. **Educational Tools:**
- Create personalized learning plans and content recommendations for students.
- Automate grading and feedback for assignments and assessments.
10. **Manufacturing and Supply Chain Automation:**
- Optimize production schedules and inventory levels using real-time data analysis.
- Implement predictive maintenance for machinery and equipment.
- Automate quality control processes through data-driven insights.
## Benchmarking
<div align="center">
<img src="https://i.ibb.co/xmgswP8/Screenshot-2024-07-02-at-1-49-04-PM.png" alt="Arcee-Agent-Evals" style="border-radius: 10px; box-shadow: 0 4px 8px 0 rgba(0, 0, 0, 0.2), 0 6px 20px 0 rgba(0, 0, 0, 0.19); max-width: 100%; height: auto;">
</div>
## Intended Uses
Arcee Agent is designed for a wide range of applications where efficient function calling and tool use are crucial. Some potential use cases include:
- Developing sophisticated chatbots and virtual assistants with advanced tool integration
- Creating efficient middleware for routing and preprocessing requests to larger language models
- Implementing AI-driven process automation in resource-constrained environments
- Prototyping and testing complex tool-use scenarios without the need for more computationally expensive models
- Building interactive documentation systems that can execute code examples in real-time
- Developing intelligent agents for IoT device management and home automation
- Creating AI-powered research assistants for various scientific disciplines
## Limitations
While Arcee Agent excels in its specialized areas, users should be aware of its limitations:
- The model's general knowledge and capabilities outside of function calling and tool use may be more limited compared to larger, general-purpose language models.
- Performance in tasks unrelated to its core functionalities may not match that of models with more diverse training.
- As with all language models, outputs should be validated and used responsibly, especially in critical applications.
- The model's knowledge cutoff date may limit its awareness of recent events or technological advancements. |