Metadata-Version: 2.4
Name: llama-index-llms-oci-data-science
Version: 1.1.0
Summary: llama-index llms OCI Data Science integration
Author-email: Dmitrii Cherkasov <dmitrii.cherkasov@oracle.com>
License-Expression: MIT
License-File: LICENSE
Requires-Python: <4.0,>=3.10
Requires-Dist: llama-index-core<0.15,>=0.13.0
Requires-Dist: oci>=2.150.2
Description-Content-Type: text/markdown

# LlamaIndex LLMs Integration: Oracle Cloud Infrastructure (OCI) Data Science Service

Oracle Cloud Infrastructure (OCI) [Data Science](https://www.oracle.com/artificial-intelligence/data-science) is a fully managed, serverless platform for data science teams to build, train, and manage machine learning models in Oracle Cloud Infrastructure.

It offers [AI Quick Actions](https://docs.oracle.com/en-us/iaas/data-science/using/ai-quick-actions.htm), which can be used to deploy, evaluate, and fine-tune foundation models in OCI Data Science. AI Quick Actions target users who want to quickly leverage the capabilities of AI. They aim to expand the reach of foundation models to a broader set of users by providing a streamlined, code-free, and efficient environment for working with foundation models. AI Quick Actions can be accessed from the Data Science Notebook.

Detailed documentation on how to deploy LLM models in OCI Data Science using AI Quick Actions is available [here](https://github.com/oracle-samples/oci-data-science-ai-samples/blob/main/ai-quick-actions/model-deployment-tips.md) and [here](https://docs.oracle.com/en-us/iaas/data-science/using/ai-quick-actions-model-deploy.htm).

## Installation

Install the required packages:

```bash
pip install oracle-ads llama-index llama-index-llms-oci-data-science

```

The [oracle-ads](https://accelerated-data-science.readthedocs.io/en/latest/index.html) is required to simplify the authentication within OCI Data Science.

## Authentication

The authentication methods supported for LlamaIndex are equivalent to those used with other OCI services and follow the standard SDK authentication methods, specifically API Key, session token, instance principal, and resource principal. More details can be found [here](https://accelerated-data-science.readthedocs.io/en/latest/user_guide/cli/authentication.html). Make sure to have the required [policies](https://docs.oracle.com/en-us/iaas/data-science/using/model-dep-policies-auth.htm) to access the OCI Data Science Model Deployment endpoint.

## Basic Usage

Using LLMs offered by OCI Data Science AI with LlamaIndex only requires you to initialize the OCIDataScience interface with your Data Science Model Deployment endpoint and model ID. By default the all deployed models in AI Quick Actions get `odsc-model` ID. However this ID can be changed during the deployment.

### Call `complete` with a prompt

```python
import ads
from llama_index.llms.oci_data_science import OCIDataScience

ads.set_auth(auth="security_token", profile="<replace-with-your-profile>")

llm = OCIDataScience(
    model="odsc-llm",
    endpoint="https://<MD_OCID>/predict",
)
response = llm.complete("Tell me a joke")

print(response)
```

### Call `chat` with a list of messages

```python
import ads
from llama_index.llms.oci_data_science import OCIDataScience
from llama_index.core.base.llms.types import ChatMessage

ads.set_auth(auth="security_token", profile="<replace-with-your-profile>")

llm = OCIDataScience(
    model="odsc-llm",
    endpoint="https://<MD_OCID>/predict",
)
response = llm.chat(
    [
        ChatMessage(role="user", content="Tell me a joke"),
        ChatMessage(
            role="assistant", content="Why did the chicken cross the road?"
        ),
        ChatMessage(role="user", content="I don't know, why?"),
    ]
)

print(response)
```

## Streaming

### Using `stream_complete` endpoint

```python
import ads
from llama_index.llms.oci_data_science import OCIDataScience

ads.set_auth(auth="security_token", profile="<replace-with-your-profile>")

llm = OCIDataScience(
    model="odsc-llm",
    endpoint="https://<MD_OCID>/predict",
)

for chunk in llm.stream_complete("Tell me a joke"):
    print(chunk.delta, end="")
```

### Using `stream_chat` endpoint

```python
import ads
from llama_index.llms.oci_data_science import OCIDataScience
from llama_index.core.base.llms.types import ChatMessage

ads.set_auth(auth="security_token", profile="<replace-with-your-profile>")

llm = OCIDataScience(
    model="odsc-llm",
    endpoint="https://<MD_OCID>/predict",
)
response = llm.stream_chat(
    [
        ChatMessage(role="user", content="Tell me a joke"),
        ChatMessage(
            role="assistant", content="Why did the chicken cross the road?"
        ),
        ChatMessage(role="user", content="I don't know, why?"),
    ]
)

for chunk in response:
    print(chunk.delta, end="")
```

## Async

### Call `acomplete` with a prompt

```python
import ads
from llama_index.llms.oci_data_science import OCIDataScience

ads.set_auth(auth="security_token", profile="<replace-with-your-profile>")

llm = OCIDataScience(
    model="odsc-llm",
    endpoint="https://<MD_OCID>/predict",
)
response = await llm.acomplete("Tell me a joke")

print(response)
```

### Call `achat` with a list of messages

```python
import ads
from llama_index.llms.oci_data_science import OCIDataScience
from llama_index.core.base.llms.types import ChatMessage

ads.set_auth(auth="security_token", profile="<replace-with-your-profile>")

llm = OCIDataScience(
    model="odsc-llm",
    endpoint="https://<MD_OCID>/predict",
)
response = await llm.achat(
    [
        ChatMessage(role="user", content="Tell me a joke"),
        ChatMessage(
            role="assistant", content="Why did the chicken cross the road?"
        ),
        ChatMessage(role="user", content="I don't know, why?"),
    ]
)

print(response)
```

## Streaming

### Using `astream_complete` endpoint

```python
import ads
from llama_index.llms.oci_data_science import OCIDataScience

ads.set_auth(auth="security_token", profile="<replace-with-your-profile>")

llm = OCIDataScience(
    model="odsc-llm",
    endpoint="https://<MD_OCID>/predict",
)

async for chunk in await llm.astream_complete("Tell me a joke"):
    print(chunk.delta, end="")
```

### Using `astream_chat` endpoint

```python
import ads
from llama_index.llms.oci_data_science import OCIDataScience
from llama_index.core.base.llms.types import ChatMessage

ads.set_auth(auth="security_token", profile="<replace-with-your-profile>")

llm = OCIDataScience(
    model="odsc-llm",
    endpoint="https://<MD_OCID>/predict",
)
response = await llm.stream_chat(
    [
        ChatMessage(role="user", content="Tell me a joke"),
        ChatMessage(
            role="assistant", content="Why did the chicken cross the road?"
        ),
        ChatMessage(role="user", content="I don't know, why?"),
    ]
)

async for chunk in response:
    print(chunk.delta, end="")
```

## Configure Model

```python
import ads
from llama_index.llms.oci_data_science import OCIDataScience

ads.set_auth(auth="security_token", profile="<replace-with-your-profile>")

llm = OCIDataScience(
    model="odsc-llm",
    endpoint="https://<MD_OCID>/predict",
    temperature=0.2,
    max_tokens=500,
    timeout=120,
    context_window=2500,
    additional_kwargs={
        "top_p": 0.75,
        "logprobs": True,
        "top_logprobs": 3,
    },
)
response = llm.chat(
    [
        ChatMessage(role="user", content="Tell me a joke"),
    ]
)
print(response)
```

## Function Calling

The [AI Quick Actions](https://docs.oracle.com/en-us/iaas/data-science/using/ai-quick-actions.htm) offers prebuilt service containers that make deploying and serving a large language model very easy. Either one of vLLM (a high-throughput and memory-efficient inference and serving engine for LLMs) or TGI (a high-performance text generation server for the popular open-source LLMs) is used in the service container to host the model, the end point created supports the OpenAI API protocol. This allows the model deployment to be used as a drop-in replacement for applications using OpenAI API. If the deployed model supports function calling, then integration with LlamaIndex tools, through the predict_and_call function on the llm allows to attach any tools and let the LLM decide which tools to call (if any).

```python
import ads
from llama_index.llms.oci_data_science import OCIDataScience
from llama_index.core.tools import FunctionTool

ads.set_auth(auth="security_token", profile="<replace-with-your-profile>")

llm = OCIDataScience(
    model="odsc-llm",
    endpoint="https://<MD_OCID>/predict",
    temperature=0.2,
    max_tokens=500,
    timeout=120,
    context_window=2500,
    additional_kwargs={
        "top_p": 0.75,
        "logprobs": True,
        "top_logprobs": 3,
    },
)


def multiply(a: float, b: float) -> float:
    print(f"---> {a} * {b}")
    return a * b


def add(a: float, b: float) -> float:
    print(f"---> {a} + {b}")
    return a + b


def subtract(a: float, b: float) -> float:
    print(f"---> {a} - {b}")
    return a - b


def divide(a: float, b: float) -> float:
    print(f"---> {a} / {b}")
    return a / b


multiply_tool = FunctionTool.from_defaults(fn=multiply)
add_tool = FunctionTool.from_defaults(fn=add)
sub_tool = FunctionTool.from_defaults(fn=subtract)
divide_tool = FunctionTool.from_defaults(fn=divide)

response = llm.predict_and_call(
    [multiply_tool, add_tool, sub_tool, divide_tool],
    user_msg="Calculate the result of `8 + 2 - 6`.",
    verbose=True,
)

print(response)
```

### Using `FunctionAgent`

```python
import ads
from llama_index.llms.oci_data_science import OCIDataScience
from llama_index.core.tools import FunctionTool
from llama_index.core.agent.workflow import FunctionAgent

ads.set_auth(auth="security_token", profile="<replace-with-your-profile>")

llm = OCIDataScience(
    model="odsc-llm",
    endpoint="https://<MD_OCID>/predict",
    temperature=0.2,
    max_tokens=500,
    timeout=120,
    context_window=2500,
    additional_kwargs={
        "top_p": 0.75,
        "logprobs": True,
        "top_logprobs": 3,
    },
)


def multiply(a: float, b: float) -> float:
    print(f"---> {a} * {b}")
    return a * b


def add(a: float, b: float) -> float:
    print(f"---> {a} + {b}")
    return a + b


def subtract(a: float, b: float) -> float:
    print(f"---> {a} - {b}")
    return a - b


def divide(a: float, b: float) -> float:
    print(f"---> {a} / {b}")
    return a / b


multiply_tool = FunctionTool.from_defaults(fn=multiply)
add_tool = FunctionTool.from_defaults(fn=add)
sub_tool = FunctionTool.from_defaults(fn=subtract)
divide_tool = FunctionTool.from_defaults(fn=divide)

agent = FunctionAgent(
    tools=[multiply_tool, add_tool, sub_tool, divide_tool],
    llm=llm,
)
response = await agent.run(
    "Calculate the result of `8 + 2 - 6`. Use tools. Return the calculated result."
)

print(response)
```

## LLM Implementation example

https://docs.llamaindex.ai/en/stable/examples/llm/oci_data_science/
