Metadata-Version: 2.1
Name: swarm-models
Version: 0.2.5
Summary: Swarm Models - TGSC
Home-page: https://github.com/The-Swarm-Corporation/swarm-models
License: MIT
Keywords: artificial intelligence,deep learning,optimizers,Prompt Engineering,natural language processing,machine learning,pytorch,transformers
Author: Kye Gomez
Author-email: kye@apac.ai
Requires-Python: >=3.10,<4.0
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.10
Classifier: Programming Language :: Python :: 3.11
Classifier: Programming Language :: Python :: 3.12
Classifier: Programming Language :: Python :: 3.9
Classifier: Topic :: Scientific/Engineering :: Artificial Intelligence
Classifier: Topic :: Scientific/Engineering :: Machine Learning
Classifier: Topic :: Scientific/Engineering :: Natural Language Processing
Requires-Dist: langchain-community (==0.0.29)
Requires-Dist: litellm
Requires-Dist: loguru
Requires-Dist: pydantic
Requires-Dist: python-dotenv
Requires-Dist: tiktoken
Requires-Dist: torch
Requires-Dist: transformers
Project-URL: Documentation, https://github.com/The-Swarm-Corporation/swarm-models
Project-URL: Repository, https://github.com/The-Swarm-Corporation/swarm-models
Description-Content-Type: text/markdown


# Swarm Models

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Swarm Models provides a unified, secure, and highly scalable interface for interacting with multiple LLM and multi-modal APIs across different providers. It is built to streamline your API integrations, ensuring production-grade reliability and robust performance.

## **Key Features**:

- **Multi-Provider Support**: Integrate seamlessly with APIs from OpenAI, Anthropic, Azure, and more.
  
- **Enterprise-Grade Security**: Built-in security protocols to protect your API keys and sensitive data, ensuring compliance with industry standards.

- **Lightning-Fast Performance**: Optimized for low-latency and high-throughput, Swarm Models delivers blazing-fast API responses, suitable for real-time applications.

- **Ease of Use**: Simplified API interaction with intuitive `.run(task)` and `__call__` methods, making integration effortless.

- **Scalability for All Use Cases**: Whether it's a small script or a massive enterprise-scale application, Swarm Models scales effortlessly.

- **Production-Grade Reliability**: Tested and proven in enterprise environments, ensuring consistent uptime and failover capabilities.

---


## **Onboarding**

Swarm Models simplifies the way you interact with different APIs by providing a unified interface for all models.

### **1. Install Swarm Models**

```bash
$ pip3 install -U swarm-models
```

### **2. Set Your Keys**

```bash
OPENAI_API_KEY="your_openai_api_key"
GROQ_API_KEY="your_groq_api_key"
ANTHROPIC_API_KEY="your_anthropic_api_key"
AZURE_OPENAI_API_KEY="your_azure_openai_api_key"
```

### **3. Initialize a Model**

Import the desired model from the package and initialize it with your API key or necessary configuration.

```python
from swarm_models import YourDesiredModel

model = YourDesiredModel(api_key='your_api_key', *args, **kwargs)
```

### **4. Run Your Task**

Use the `.run(task)` method or simply call the model like `model(task)` with your task.

```python
task = "Define your task here"
result = model.run(task)

# Or equivalently
#result = model(task)
```

### **5. Enjoy the Results**

```python
print(result)
```

---

## **Full Code Example**

```python
from swarm_models import OpenAIChat
import os

# Get the OpenAI API key from the environment variable
api_key = os.getenv("OPENAI_API_KEY")

# Create an instance of the OpenAIChat class
model = OpenAIChat(openai_api_key=api_key, model_name="gpt-4o-mini")

# Query the model with a question
out = model(
   "What is the best state to register a business in the US for the least amount of taxes?"
)

# Print the model's response
print(out)
```

---

## `TogetherLLM` Documentation

The `TogetherLLM` class is designed to simplify the interaction with Together's LLM models. It provides a straightforward way to run tasks on these models, including support for concurrent and batch processing.

### Initialization

To use `TogetherLLM`, you need to initialize it with your API key, the name of the model you want to use, and optionally, a system prompt. The system prompt is used to provide context to the model for the tasks you will run.

Here's an example of how to initialize `TogetherLLM`:
```python
import os
from swarm_models import TogetherLLM

model_runner = TogetherLLM(
    api_key=os.environ.get("TOGETHER_API_KEY"),
    model_name="meta-llama/Meta-Llama-3.1-70B-Instruct-Turbo",
    system_prompt="You're Larry fink",
)
```
### Running Tasks

Once initialized, you can run tasks on the model using the `run` method. This method takes a task string as an argument and returns the response from the model.

Here's an example of running a single task:
```python
task = "How do we allocate capital efficiently in your opinion Larry?"
response = model_runner.run(task)
print(response)
```
### Running Multiple Tasks Concurrently

`TogetherLLM` also supports running multiple tasks concurrently using the `run_concurrently` method. This method takes a list of task strings and returns a list of responses from the model.

Here's an example of running multiple tasks concurrently:
```python
tasks = [
    "What are the top-performing mutual funds in the last quarter?",
    "How do I evaluate the risk of a mutual fund?",
    "What are the fees associated with investing in a mutual fund?",
    "Can you recommend a mutual fund for a beginner investor?",
    "How do I diversify my portfolio with mutual funds?",
]
responses = model_runner.run_concurrently(tasks)
for response in responses:
    print(response)
```


## **Enterprise-Grade Features**

1. **Security**: API keys and user data are handled with utmost care, utilizing encryption and best security practices to protect your sensitive information.
   
2. **Production Reliability**: Swarm Models has undergone rigorous testing to ensure that it can handle high traffic and remains resilient in enterprise-grade environments.

3. **Fail-Safe Mechanisms**: Built-in failover handling to ensure uninterrupted service even under heavy load or network issues.

4. **Unified API**: No more dealing with multiple SDKs or libraries. Swarm Models standardizes your interactions across providers like OpenAI, Anthropic, Azure, and more, so you can focus on what matters.

---

## **Available Models**

| Model Name                | Import Path                                           |
|---------------------------|------------------------------------------------------|
| BaseLLM                   | `from swarm_models.base_llm import BaseLLM`         |
| BaseMultiModalModel       | `from swarm_models.base_multimodal_model import BaseMultiModalModel` |
| GPT4VisionAPI             | `from swarm_models.gpt4_vision_api import GPT4VisionAPI` |
| HuggingfaceLLM            | `from swarm_models.huggingface import HuggingfaceLLM` |
| LayoutLMDocumentQA        | `from swarm_models.layoutlm_document_qa import LayoutLMDocumentQA` |
| llama3Hosted              | `from swarm_models.llama3_hosted import llama3Hosted` |
| LavaMultiModal            | `from swarm_models.llava import LavaMultiModal`     |
| Nougat                    | `from swarm_models.nougat import Nougat`            |
| OpenAIEmbeddings          | `from swarm_models.openai_embeddings import OpenAIEmbeddings` |
| OpenAITTS                 | `from swarm_models.openai_tts import OpenAITTS`     |
| GooglePalm                | `from swarm_models.palm import GooglePalm as Palm`  |
| Anthropic                 | `from swarm_models.popular_llms import Anthropic as Anthropic` |
| AzureOpenAI               | `from swarm_models.popular_llms import AzureOpenAILLM as AzureOpenAI` |
| Cohere                    | `from swarm_models.popular_llms import CohereChat as Cohere` |
| OctoAIChat                | `from swarm_models.popular_llms import OctoAIChat`  |
| OpenAIChat                | `from swarm_models.popular_llms import OpenAIChatLLM as OpenAIChat` |
| OpenAILLM                 | `from swarm_models.popular_llms import OpenAILLM as OpenAI` |
| Replicate                 | `from swarm_models.popular_llms import ReplicateChat as Replicate` |
| QwenVLMultiModal          | `from swarm_models.qwen import QwenVLMultiModal`    |
| FireWorksAI               | `from swarm_models.popular_llms import FireWorksAI`  |
| Vilt                      | `from swarm_models.vilt import Vilt`                  |
| TogetherLLM               | `from swarm_models.together_llm import TogetherLLM`  |
| LiteLLM              | `from swarm_models.lite_llm_model import LiteLLM` |
| OpenAIFunctionCaller      | `from swarm_models.openai_function_caller import OpenAIFunctionCaller` |
| OllamaModel               | `from swarm_models.ollama_model import OllamaModel`   |
| GroundedSAMTwo            | `from swarm_models.sam_two import GroundedSAMTwo`     |


---

## **Support & Contributions**

- **Documentation**: Comprehensive guides, API references, and best practices are available in our official [Documentation](https://docs.swarms.world).
- **GitHub**: Explore the code, report issues, and contribute to the project via our [GitHub repository](https://github.com/The-Swarm-Corporation/swarm-models).

---

## **License**

Swarm Models is released under the [MIT License](https://github.com/The-Swarm-Corporation/swarm-models/LICENSE).

---


# Todo

- [ ] Add cohere models command r
- [ ] Add gemini and google ai studio
- [ ] Integrate ollama extensively

