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Create an Azure OpenAI, LangChain, ChromaDB, and Chainlit ChatGPT-like application in Azure Container Apps using Terraform |
This sample shows how to create two Azure Container Apps that use OpenAI, LangChain, ChromaDB, and Chainlit using Terraform. |
container-apps-openai |
Create an Azure OpenAI, LangChain, ChromaDB, and Chainlit ChatGPT-like application in Azure Container Apps using Terraform
In this sample, I demonstrate how to quickly build chat applications using Python and leveraging powerful technologies such as OpenAI ChatGPT models, Embedding models, LangChain framework, ChromaDB vector database, and Chainlit, an open-source Python package that is specifically designed to create user interfaces (UIs) for AI applications. These applications are hosted on Azure Container Apps, a fully managed environment that enables you to run microservices and containerized applications on a serverless platform.
- Simple Chat: This simple chat application utilizes OpenAI's language models to generate real-time completion responses.
- Documents QA Chat: This chat application goes beyond simple conversations. Users can upload up to 10
.pdf
and.docx
documents, which are then processed to create vector embeddings. These embeddings are stored in ChromaDB for efficient retrieval. Users can pose questions about the uploaded documents and view the Chain of Thought, enabling easy exploration of the reasoning process. The completion message contains links to the text chunks in the documents that were used as a source for the response.
Both applications use a user-defined managed identity to authenticate and authorize against Azure OpenAI Service (AOAI) and Azure Container Registry (ACR) and use Azure Private Endpoints to connect privately and securely to these services. The chat UIs are built using Chainlit, an open-source Python package designed explicitly for creating AI applications. Chainlit seamlessly integrates with LangChain, LlamaIndex, and LangFlow, making it a powerful tool for developing ChatGPT-like applications with ease.
By following our example, you can quickly create sophisticated chat applications that utilize cutting-edge technologies, empowering users with intelligent conversational capabilities.
- An active Azure subscription. If you don't have one, create a free Azure account before you begin.
- Visual Studio Code installed on one of the supported platforms along with the HashiCorp Terraform.
- Azure CLI version 2.49.0 or later installed. To install or upgrade, see Install Azure CLI.
aks-preview
Azure CLI extension of version 0.5.140 or later installed- Terraform v1.5.2 or later.
The following diagram shows the architecture and network topology of the sample:
This sample provides two sets of Terraform modules to deploy the infrastructure and the chat applications.
You can use the Terraform modules in the terraform/infra
folder to deploy the infrastructure used by the sample, including the Azure Container Apps Environment, Azure OpenAI Service (AOAI), and Azure Container Registry (ACR), but not the Azure Container Apps (ACA). The Terraform modules in the terraform/infra
folder deploy the following resources:
- azurerm_virtual_network: an Azure Virtual Network with two subnets:
ContainerApps
: this subnet hosts the Azure Container Apps Environment.PrivateEndpoints
: this subnet contains the Azure Private Endpoints to the Azure OpenAI Service (AOAI) and Azure Container Registry (ACR) resources.
- azurerm_container_app_environment: the Azure Container Apps Environment hosting the Azure Container Apps.
- azurerm_cognitive_account: an Azure OpenAI Service (AOAI) with a GPT-3.5 model used by the chatbot applications. Azure OpenAI Service gives customers advanced language AI with OpenAI GPT-4, GPT-3, Codex, and DALL-E models with Azure's security and enterprise promise. Azure OpenAI co-develops the APIs with OpenAI, ensuring compatibility and a smooth transition from one to the other. The Terraform modules create the following models:
- GPT-35: a
gpt-35-turbo-16k
model is used to generate human-like and engaging conversational responses. - Embeddings model: the
text-embedding-ada-002
model is to transform input documents into meaningful and compact numerical representations called embeddings. Embeddings capture the semantic or contextual information of the input data in a lower-dimensional space, making it easier for machine learning algorithms to process and analyze the data effectively. Embeddings can be stored in a vector database, such as ChromaDB or Facebook AI Similarity Search, explicitly designed for efficient storage, indexing, and retrieval of vector embeddings.
- GPT-35: a
- azurerm_user_assigned_identity: a user-defined managed identity used by the chatbot applications to acquire a security token to call the Chat Completion API of the ChatGPT model provided by the Azure OpenAI Service and to call the Embedding model.
- azurerm_container_registry: an Azure Container Registry (ACR) to build, store, and manage container images and artifacts in a private registry for all container deployments. In this sample, the registry stores the container images of the two chat applications.
- azurerm_private_endpoint: an Azure Private Endpoint is created for each of the following resources:
- azurerm_private_dns_zone: an Azure Private DNS Zone is created for each of the following resources:
- azurerm_log_analytics_workspace: a centralized Azure Log Analytics workspace is used to collect the diagnostics logs and metrics from all the Azure resources:
You can use these Terraform modules in the terraform/apps
folder to deploy the Azure Container Apps (ACA) using the Docker container images stored in the Azure Container Registry that you deployed at the previous step.
- azurerm_container_app: this samples deploys the following applications:
- chatapp: this simple chat application utilizes OpenAI's language models to generate real-time completion responses.
- docapp: This chat application goes beyond conversations. Users can upload up to 10
.pdf
and.docx
documents, which are then processed to create vector embeddings. These embeddings are stored in ChromaDB for efficient retrieval. Users can pose questions about the uploaded documents and view the Chain of Thought, enabling easy exploration of the reasoning process. The completion message contains links to the text chunks in the documents that were used as a source for the response.
Azure Container Apps (ACA) is a serverless compute service provided by Microsoft Azure that allows developers to easily deploy and manage containerized applications without the need to manage the underlying infrastructure. It provides a simplified and scalable solution for running applications in containers, leveraging the power and flexibility of the Azure ecosystem.
With Azure Container Apps, developers can package their applications into containers using popular containerization technologies such as Docker. These containers encapsulate the application and its dependencies, ensuring consistent execution across different environments.
Powered by Kubernetes and open-source technologies like Dapr, KEDA, and envoy, the service abstracts away the complexities of managing the infrastructure, including provisioning, scaling, and monitoring, allowing developers to focus solely on building and deploying their applications. Azure Container Apps handles automatic scaling, and load balancing, and natively integrates with other Azure services, such as Azure Monitor and Azure Container Registry (ACR), to provide a comprehensive and secure application deployment experience.
Azure Container Apps offers benefits such as rapid deployment, easy scalability, cost-efficiency, and seamless integration with other Azure services, making it an attractive choice for modern application development and deployment scenarios.
The Azure OpenAI Service is a platform offered by Microsoft Azure that provides cognitive services powered by OpenAI models. One of the models available through this service is the ChatGPT model, which is designed for interactive conversational tasks. It allows developers to integrate natural language understanding and generation capabilities into their applications.
Azure OpenAI Service provides REST API access to OpenAI's powerful language models including the GPT-3, Codex and Embeddings model series. In addition, the new GPT-4 and ChatGPT model series have now reached general availability. These models can be easily adapted to your specific task, including but not limited to content generation, summarization, semantic search, and natural language-to-code translation. Users can access the service through REST APIs, Python SDK, or our web-based interface in the Azure OpenAI Studio.
You can use Embeddings model to transform raw data or inputs into meaningful and compact numerical representations called embeddings. Embeddings capture the semantic or contextual information of the input data in a lower-dimensional space, making it easier for machine learning algorithms to process and analyze the data effectively. Embeddings can be stored in a vector database, such as ChromaDB or Facebook AI Similarity Search (FAISS), designed specifically for efficient storage, indexing, and retrieval of vector embeddings.
The Chat Completion API, which is part of the Azure OpenAI Service, provides a dedicated interface for interacting with the ChatGPT and GPT-4 models. This API is currently in preview and is the preferred method for accessing these models. The GPT-4 models can only be accessed through this API.
GPT-3, GPT-3.5, and GPT-4 models from OpenAI are prompt-based. With prompt-based models, the user interacts with the model by entering a text prompt, to which the model responds with a text completion. This completion is the model’s continuation of the input text. While these models are extremely powerful, their behavior is also very sensitive to the prompt. This makes prompt construction an important skill to develop. For more information, see Introduction to prompt engineering.
Prompt construction can be difficult. In practice, the prompt acts to configure the model weights to complete the desired task, but it's more of an art than a science, often requiring experience and intuition to craft a successful prompt. The goal of this article is to help get you started with this learning process. It attempts to capture general concepts and patterns that apply to all GPT models. However, it's essential to understand that each model behaves differently, so the learnings may not apply equally to all models.
Prompt engineering refers to the process of creating instructions called prompts for Large Language Models (LLMs), such as OpenAI’s ChatGPT. With the immense potential of LLMs to solve a wide range of tasks, leveraging prompt engineering can empower us to save significant time and facilitate the development of impressive applications. It holds the key to unleashing the full capabilities of these huge models, transforming how we interact and benefit from them. For more information, see Prompt engineering techniques.
A vector database is a specialized database that goes beyond traditional storage by organizing information to simplify the search for similar items. Instead of merely storing words or numbers, it leverages vector embeddings - unique numerical representations of data. These embeddings capture meaning, context, and relationships. For instance, words are represented as vectors, whereas similar words have similar vector values.
The applications of vector databases are numerous and powerful. In language processing, they facilitate the discovery of related documents or sentences. By comparing the vector embeddings of different texts, finding similar or related information becomes faster and more efficient. This capability benefits search engines and recommendation systems, which can suggest relevant articles or products based on user interests.
In the realm of image analysis, vector databases excel in finding visually similar images. By representing images as vectors, a simple comparison of vector values can identify visually similar images. This capability is highly valuable for tasks like reverse image search or content-based image retrieval.
Additionally, vector databases find applications in fraud detection, anomaly detection, and clustering. By comparing vector embeddings of data points, unusual patterns can be detected, and similar items can be grouped together, aiding in effective data analysis and decision-making.
This is a list of Azure services that are suitable for use as a vector database in a retrieval-augmented generation (RAG) solution:
- Azure Cosmos DB for MongoDB vCore: vCore-based Azure Cosmos DB for MongoDB provides developers with a fully managed MongoDB-compatible database service for building modern applications with a familiar architecture. Developers can enjoy the benefits of native Azure integrations, low total cost of ownership (TCO), and the familiar vCore architecture when migrating existing applications or building new ones. Azure Cosmos DB for MongoDB features built-in vector database capabilities enabling your data and vectors to be stored together for efficient and accurate vector searches.
- Azure Cosmos DB for NoSQL: Azure Cosmos DB for NoSQL is a globally distributed database service designed for scalable and high performance applications. It offers an industry-leading 99.999% Service Level Agreement (SLA), ensuring high availability for your mission-critical applications. With sub-10ms point reads and instant autoscale, it provides lightning-fast data access and seamless scalability. Its flexible, schemaless data model allows for agile and adaptable application development. Moreover, Azure Cosmos DB’s built-in vector index using DiskANN enables fast, accurate, and cost-effective vector search at any scale, enhancing the efficiency and effectiveness of your data-driven applications.
- [Azure Cosmos DB for PostgreSQL](Azure Cosmos DB for PostgreSQL) You can use the natively integrated vector database in Azure Cosmos DB for PostgreSQL, which offers an efficient way to store, index, and search high-dimensional vector data directly alongside other application data. This approach removes the necessity of migrating your data to costlier alternative vector databases and provides a seamless integration of your AI-driven applications.
- Azure Cache for Redis Azure Cache for Redis can be used as a vector database by combining it models like Azure OpenAI for Retrieval-Augmented Generative AI and analysis scenarios.
Here is a list of the most popular vector databases:
- ChromaDB is a powerful database solution that stores and retrieves vector embeddings efficiently. It is commonly used in AI applications, including chatbots and document analysis systems. By storing embeddings in ChromaDB, users can easily search and retrieve similar vectors, enabling faster and more accurate matching or recommendation processes. ChromaDB offers excellent scalability high performance, and supports various indexing techniques to optimize search operations. It is a versatile tool that enhances the functionality and efficiency of AI applications that rely on vector embeddings.
- Facebook AI Similarity Search (FAISS) is another widely used vector database. Facebook AI Research develops it and offers highly optimized algorithms for similarity search and clustering of vector embeddings. FAISS is known for its speed and scalability, making it suitable for large-scale applications. It offers different indexing methods like flat, IVF (Inverted File System), and HNSW (Hierarchical Navigable Small World) to organize and search vector data efficiently.
- SingleStore: SingleStore aims to deliver the world’s fastest distributed SQL database for data-intensive applications: SingleStoreDB, which combines transactional + analytical workloads in a single platform.
- Astra DB: DataStax Astra DB is a cloud-native, multi-cloud, fully managed database-as-a-service based on Apache Cassandra, which aims to accelerate application development and reduce deployment time for applications from weeks to minutes.
- Milvus: Milvus is an open source vector database built to power embedding similarity search and AI applications. Milvus makes unstructured data search more accessible and provides a consistent user experience regardless of the deployment environment. Milvus 2.0 is a cloud-native vector database with storage and computation separated by design. All components in this refactored version of Milvus are stateless to enhance elasticity and flexibility.
- Qdrant: Qdrant is a vector similarity search engine and database for AI applications. Along with open-source, Qdrant is also available in the cloud. It provides a production-ready service with an API to store, search, and manage points—vectors with an additional payload. Qdrant is tailored to extended filtering support. It makes it useful for all sorts of neural-network or semantic-based matching, faceted search, and other applications.
- Pinecone: Pinecone is a fully managed vector database that makes adding vector search to production applications accessible. It combines state-of-the-art vector search libraries, advanced features such as filtering, and distributed infrastructure to provide high performance and reliability at any scale.
- Vespa: Vespa is a platform for applications combining data and AI, online. By building such applications on Vespa helps users avoid integration work to get features, and it can scale to support any amount of traffic and data. To deliver that, Vespa provides a broad range of query capabilities, a computation engine with support for modern machine-learned models, hands-off operability, data management, and application development support. It is free and open source to use under the Apache 2.0 license.
- Zilliz: Milvus is an open-source vector database, with over 18,409 stars on GitHub and 3.4 million+ downloads. Milvus supports billion-scale vector search and has over 1,000 enterprise users. Zilliz Cloud provides a fully-managed Milvus service made by the creators of Milvus. This helps to simplify the process of deploying and scaling vector search applications by eliminating the need to create and maintain complex data infrastructure. As a DBaaS, Zilliz simplifies the process of deploying and scaling vector search applications by eliminating the need to create and maintain complex data infrastructure.
- Weaviate: Weaviate is an open-source vector database used to store data objects and vector embeddings from ML-models, and scale into billions of data objects from the same name company in Amsterdam. Users can index billions of data objects to search through and combine multiple search techniques, such as keyword-based and vector search, to provide search experiences.
This sample makes of ChromaDB vector database, but you can easily modify the code to use another vector database. You can even use Azure Cache for Redis Enterprise to store the vector embeddings and compute vector similarity with high performance and low latency. For more information, see Vector Similarity Search with Azure Cache for Redis Enterprise
LangChain is a software framework designed to streamline the development of applications using large language models (LLMs). It serves as a language model integration framework, facilitating various applications like document analysis and summarization, chatbots, and code analysis.
LangChain's integrations cover an extensive range of systems, tools, and services, making it a comprehensive solution for language model-based applications. LangChain integrates with the major cloud platforms such as Microsoft Azure, Amazon AWS, and Google, and with API wrappers for various purposes like news, movie information, and weather, as well as support for Bash, web scraping, and more. It also supports multiple language models, including those from OpenAI, Anthropic, and Hugging Face. Moreover, LangChain offers various functionalities for document handling, code generation, analysis, debugging, and interaction with databases and other data sources.
Chainlit is an open-source Python package that is specifically designed to create user interfaces (UIs) for AI applications. It simplifies the process of building interactive chats and interfaces, making developing AI-powered applications faster and more efficient. While Streamlit is a general-purpose UI library, Chainlit is purpose-built for AI applications and seamlessly integrates with other AI technologies such as LangChain, LlamaIndex, and LangFlow.
With Chainlit, developers can easily create intuitive UIs for their AI models, including ChatGPT-like applications. It provides a user-friendly interface for users to interact with AI models, enabling conversational experiences and information retrieval. Chainlit also offers unique features, such as the ability to display the Chain of Thought, which allows users to explore the reasoning process directly within the UI. This feature enhances transparency and enables users to understand how the AI arrives at its responses or recommendations.
For more information, see the following resources:
Before deploying the Terraform modules in the terraform/infra
folder, specify a value for the following variables in the terraform.tfvars variable definitions file.
name_prefix = "Blue"
location = "EastUS"
This is the definition of each variable:
prefix
: specifies a prefix for all the Azure resources.location
: specifies the region (e.g., EastUS) where deploying the Azure resources.
NOTE: Make sure to select a region where Azure OpenAI Service (AOAI) supports both GPT-3.5/GPT-4 models like gpt-35-turbo-16k
and Embeddings models like text-embedding-ada-002
.
The following table contains the code from the terraform/infra/modules/openai/main.tf
Terraform module used to deploy the Azure OpenAI Service.
resource "azurerm_cognitive_account" "openai" {
name = var.name
location = var.location
resource_group_name = var.resource_group_name
kind = "OpenAI"
custom_subdomain_name = var.custom_subdomain_name
sku_name = var.sku_name
public_network_access_enabled = var.public_network_access_enabled
tags = var.tags
identity {
type = "SystemAssigned"
}
lifecycle {
ignore_changes = [
tags
]
}
}
resource "azurerm_cognitive_deployment" "deployment" {
for_each = {for deployment in var.deployments: deployment.name => deployment}
name = each.key
cognitive_account_id = azurerm_cognitive_account.openai.id
model {
format = "OpenAI"
name = each.value.model.name
version = each.value.model.version
}
scale {
type = "Standard"
}
}
resource "azurerm_monitor_diagnostic_setting" "settings" {
name = "DiagnosticsSettings"
target_resource_id = azurerm_cognitive_account.openai.id
log_analytics_workspace_id = var.log_analytics_workspace_id
enabled_log {
category = "Audit"
retention_policy {
enabled = true
days = var.log_analytics_retention_days
}
}
enabled_log {
category = "RequestResponse"
retention_policy {
enabled = true
days = var.log_analytics_retention_days
}
}
enabled_log {
category = "Trace"
retention_policy {
enabled = true
days = var.log_analytics_retention_days
}
}
metric {
category = "AllMetrics"
retention_policy {
enabled = true
days = var.log_analytics_retention_days
}
}
}
Azure Cognitive Services use custom subdomain names for each resource created through the Azure portal, Azure Cloud Shell, Azure CLI, Bicep, Azure Resource Manager (ARM), or Terraform. Unlike regional endpoints, which were common for all customers in a specific Azure region, custom subdomain names are unique to the resource. Custom subdomain names are required to enable features like Azure Active Directory (Azure AD) for authentication. In our case, we need to specify a custom subdomain for our Azure OpenAI Service as our chatbot applications will use an Azure AD security token to access it. By default, the terraform/infra/modules/openai/main.tf
module sets the value of the custom_subdomain_name
parameter to the lowercase name of the Azure OpenAI resource. For more information on custom subdomains, see Custom subdomain names for Cognitive Services.
This Terraform module allows you to pass an array containing the definition of one or more model deployments in the deployments
variable. For more information on model deployments, see Create a resource and deploy a model using Azure OpenAI. The openai_deployments
variable in the terraform/infra/variables.tf
file defines the structure and the default models deployed by the sample:
variable "openai_deployments" {
description = "(Optional) Specifies the deployments of the Azure OpenAI Service"
type = list(object({
name = string
model = object({
name = string
version = string
})
rai_policy_name = string
}))
default = [
{
name = "gpt-35-turbo-16k"
model = {
name = "gpt-35-turbo-16k"
version = "0613"
}
rai_policy_name = ""
},
{
name = "text-embedding-ada-002"
model = {
name = "text-embedding-ada-002"
version = "2"
}
rai_policy_name = ""
}
]
}
As an alternative, you can use the Terraform module for deploying Azure OpenAI Service. to deploy an Azure OpenAI Service.
The terraform/infra/main.tf
module creates Azure Private Endpoints and Azure Private DNDS Zones for each of the following resources:
In particular, it creates an Azure Private Endpoint and Azure Private DNDS Zone to the Azure OpenAI Service as shown in the following code snippet:
module "openai_private_dns_zone" {
source = "./modules/private_dns_zone"
name = "privatelink.openai.azure.com"
resource_group_name = azurerm_resource_group.rg.name
tags = var.tags
virtual_networks_to_link = {
(module.virtual_network.name) = {
subscription_id = data.azurerm_client_config.current.subscription_id
resource_group_name = azurerm_resource_group.rg.name
}
}
}
module "openai_private_endpoint" {
source = "./modules/private_endpoint"
name = "${module.openai.name}PrivateEndpoint"
location = var.location
resource_group_name = azurerm_resource_group.rg.name
subnet_id = module.virtual_network.subnet_ids[var.vm_subnet_name]
tags = var.tags
private_connection_resource_id = module.openai.id
is_manual_connection = false
subresource_name = "account"
private_dns_zone_group_name = "AcrPrivateDnsZoneGroup"
private_dns_zone_group_ids = [module.openai_private_dns_zone.id]
}
Below you can read the code of the terraform/infra/modules/private_endpoint/main.tf
module, which is used to create Azure Private Endpoints:
resource "azurerm_private_endpoint" "private_endpoint" {
name = var.name
location = var.location
resource_group_name = var.resource_group_name
subnet_id = var.subnet_id
tags = var.tags
private_service_connection {
name = "${var.name}Connection"
private_connection_resource_id = var.private_connection_resource_id
is_manual_connection = var.is_manual_connection
subresource_names = try([var.subresource_name], null)
request_message = try(var.request_message, null)
}
private_dns_zone_group {
name = var.private_dns_zone_group_name
private_dns_zone_ids = var.private_dns_zone_group_ids
}
lifecycle {
ignore_changes = [
tags
]
}
}
In the following box, you can read the code of the terraform/infra/modules/private_dns_zone/main.tf
module, which is utilized to create the Azure Private DNS Zones.
resource "azurerm_private_dns_zone" "private_dns_zone" {
name = var.name
resource_group_name = var.resource_group_name
tags = var.tags
lifecycle {
ignore_changes = [
tags
]
}
}
resource "azurerm_private_dns_zone_virtual_network_link" "link" {
for_each = var.virtual_networks_to_link
name = "link_to_${lower(basename(each.key))}"
resource_group_name = var.resource_group_name
private_dns_zone_name = azurerm_private_dns_zone.private_dns_zone.name
virtual_network_id = "/subscriptions/${each.value.subscription_id}/resourceGroups/${each.value.resource_group_name}/providers/Microsoft.Network/virtualNetworks/${each.key}"
lifecycle {
ignore_changes = [
tags
]
}
}
Below you can read the code of the terraform/infra/modules/managed_identity/main.tf
module, which is used to create the Azure Managed Identity used by the Azure Container Apps to pull container images from the Azure Container Registry, and by the chat applications to connect to the Azure OpenAI Service. You can use a system-assigned or user-assigned managed identity from Azure Active Directory (Azure AD) to let Azure Container Apps access any Azure AD-protected resource. For more information, see Managed identities in Azure Container Apps. You can pull container images from private repositories in an Azure Container Registry using user-assigned or user-assigned managed identities for authentication to avoid the use of administrative credentials. For more information, see Azure Container Apps image pull with managed identity. This user-defined managed identity is assigned the Cognitive Services User role on the Azure OpenAI Service namespace and ACRPull role on the Azure Container Registry (ACR). By assigning the above roles, you grant the user-defined managed identity access to these resources.
resource "azurerm_user_assigned_identity" "workload_user_assigned_identity" {
name = var.name
resource_group_name = var.resource_group_name
location = var.location
tags = var.tags
lifecycle {
ignore_changes = [
tags
]
}
}
resource "azurerm_role_assignment" "cognitive_services_user_assignment" {
scope = var.openai_id
role_definition_name = "Cognitive Services User"
principal_id = azurerm_user_assigned_identity.workload_user_assigned_identity.principal_id
skip_service_principal_aad_check = true
}
resource "azurerm_role_assignment" "acr_pull_assignment" {
scope = var.acr_id
role_definition_name = "AcrPull"
principal_id = azurerm_user_assigned_identity.workload_user_assigned_identity.principal_id
skip_service_principal_aad_check = true
}
After deploying the infrastructure, it's essential to build and push Docker images to the Azure Container Registry (ACR). This ensures that the container apps which are deployed by the Terraform applicaton module have the necessary images available in ACR for deployment.
Before you begin using any scripts in the src folder, first customize the variables in the the 00-variables.sh
file. This file, found in the same folder, sets up variables used by all subsequent scripts, including:
# Variables
# Azure Container Registry
prefix="Blue"
acrName="${prefix}Registry"
acrResourceGrougName="${prefix}RG"
location="EastUS"
# Python Files
docAppFile="doc.py"
chatAppFile="chat.py"
# Docker Images
docImageName="doc"
chatImageName="chat"
tag="v1"
port="8000"
# Arrays
images=($docImageName $chatImageName)
filenames=($docAppFile $chatAppFile)
After customizing the variables, start the Docker image building process with the src/01-build-docker-images.sh
Bash script. This script automatically creates the Docker container image for both applications. Then, use the src/03-push-docker-image.sh
script to upload your images to the Azure Container Registry.
Before deploying the Terraform modules in the terraform/apps
folder, specify a value for the following variables in the terraform.tfvars variable definitions file.
resource_group_name = "BlueRG"
container_app_environment_name = "BlueEnvironment"
container_registry_name = "BlueRegistry"
workload_managed_identity_name = "BlueWorkloadIdentity"
container_apps = [
{
name = "chatapp"
revision_mode = "Single"
ingress = {
allow_insecure_connections = true
external_enabled = true
target_port = 8000
transport = "http"
traffic_weight = {
label = "default"
latest_revision = true
revision_suffix = "default"
percentage = 100
}
}
template = {
containers = [
{
name = "chat"
image = "chat:v1"
cpu = 0.5
memory = "1Gi"
env = [
{
name = "TEMPERATURE"
value = 0.9
},
{
name = "AZURE_OPENAI_BASE"
value = "https://blueopenai.openai.azure.com/"
},
{
name = "AZURE_OPENAI_KEY"
value = ""
},
{
name = "AZURE_OPENAI_TYPE"
value = "azure_ad"
},
{
name = "AZURE_OPENAI_VERSION"
value = "2023-06-01-preview"
},
{
name = "AZURE_OPENAI_DEPLOYMENT"
value = "gpt-35-turbo-16k"
},
{
name = "AZURE_OPENAI_MODEL"
value = "gpt-35-turbo-16k"
},
{
name = "AZURE_OPENAI_SYSTEM_MESSAGE"
value = "You are a helpful assistant."
},
{
name = "MAX_RETRIES"
value = 5
},
{
name = "BACKOFF_IN_SECONDS"
value = "1"
},
{
name = "TOKEN_REFRESH_INTERVAL"
value = 2700
}
]
liveness_probe = {
failure_count_threshold = 3
initial_delay = 30
interval_seconds = 60
path = "/"
port = 8000
timeout = 30
transport = "HTTP"
}
readiness_probe = {
failure_count_threshold = 3
interval_seconds = 60
path = "/"
port = 8000
success_count_threshold = 3
timeout = 30
transport = "HTTP"
}
startup_probe = {
failure_count_threshold = 3
interval_seconds = 60
path = "/"
port = 8000
timeout = 30
transport = "HTTP"
}
}
]
min_replicas = 1
max_replicas = 3
}
},
{
name = "docapp"
revision_mode = "Single"
ingress = {
allow_insecure_connections = true
external_enabled = true
target_port = 8000
transport = "http"
traffic_weight = {
label = "default"
latest_revision = true
revision_suffix = "default"
percentage = 100
}
}
template = {
containers = [
{
name = "doc"
image = "doc:v1"
cpu = 0.5
memory = "1Gi"
env = [
{
name = "TEMPERATURE"
value = 0.9
},
{
name = "AZURE_OPENAI_BASE"
value = "https://blueopenai.openai.azure.com/"
},
{
name = "AZURE_OPENAI_KEY"
value = ""
},
{
name = "AZURE_OPENAI_TYPE"
value = "azure_ad"
},
{
name = "AZURE_OPENAI_VERSION"
value = "2023-06-01-preview"
},
{
name = "AZURE_OPENAI_DEPLOYMENT"
value = "gpt-35-turbo-16k"
},
{
name = "AZURE_OPENAI_MODEL"
value = "gpt-35-turbo-16k"
},
{
name = "AZURE_OPENAI_ADA_DEPLOYMENT"
value = "text-embedding-ada-002"
},
{
name = "AZURE_OPENAI_SYSTEM_MESSAGE"
value = "You are a helpful assistant."
},
{
name = "MAX_RETRIES"
value = 5
},
{
name = "CHAINLIT_MAX_FILES"
value = 10
},
{
name = "TEXT_SPLITTER_CHUNK_SIZE"
value = 1000
},
{
name = "TEXT_SPLITTER_CHUNK_OVERLAP"
value = 10
},
{
name = "EMBEDDINGS_CHUNK_SIZE"
value = 16
},
{
name = "BACKOFF_IN_SECONDS"
value = "1"
},
{
name = "CHAINLIT_MAX_SIZE_MB"
value = 100
},
{
name = "TOKEN_REFRESH_INTERVAL"
value = 2700
}
]
liveness_probe = {
failure_count_threshold = 3
initial_delay = 30
interval_seconds = 60
path = "/"
port = 8000
timeout = 30
transport = "HTTP"
}
readiness_probe = {
failure_count_threshold = 3
interval_seconds = 60
path = "/"
port = 8000
success_count_threshold = 3
timeout = 30
transport = "HTTP"
}
startup_probe = {
failure_count_threshold = 3
interval_seconds = 60
path = "/"
port = 8000
timeout = 30
transport = "HTTP"
}
}
]
min_replicas = 1
max_replicas = 3
}
}]
This is the definition of each variable:
resource_group_name
: specifies the name of the resource group which contains the infrastructure resources: Azure OpenAI Service, Azure Container Registry, Azure Container Apps Environment, Azure Log Analytics, and user-defined managed identity.container_app_environment_name
: the name of the Azure Container Apps Environment in which to deploy the chat applications.container_registry_name
: the name of Azure Container Registry used to hold the container images of the chat applications.workload_managed_identity_name
: the name of the user-defined managed identity used by the chat applications to authenticate with Azure OpenAI Service and Azure Container Registry.container_apps
: the definition of the two chat applications. The application configuration does not specify the following data because thecontainer_app
module later defines this information:image
: This field contains the name and tag of the container image but not the login server of the Azure Container Registry.identity
: The identity of the container app.registry
: The registry hosting the container image for the application.AZURE_CLIENT_ID
: The client id of the user-defined managed identity used by the application to authenticate with Azure OpenAI Service and Azure Container Registry.AZURE_OPENAI_TYPE
: This environment variable specifies the authentication type with Azure OpenAI Service: if you set the value of theAZURE_OPENAI_TYPE
environment variable toazure,
you need to specify the OpenAI key as a value for theAZURE_OPENAI_KEY
environment variable. Instead, if you set the value toazure_ad
in the application code, assign an Azure AD security token to theopenai_api_key
property. For more information, see How to switch between OpenAI and Azure OpenAI endpoints with Python.
The terraform/apps/modules/container_app/main.tf
module is utilized to create the Azure Container Apps. The module defines and uses the following data source for the Azure Container Registry, Azure Container Apps Environment, and user-defined managed identity created when deploying the infrastructure. These data sources are used to access the properties of these Azure resources.
data "azurerm_container_app_environment" "container_app_environment" {
name = var.container_app_environment_name
resource_group_name = var.resource_group_name
}
data "azurerm_container_registry" "container_registry" {
name = var.container_registry_name
resource_group_name = var.resource_group_name
}
data "azurerm_user_assigned_identity" "workload_user_assigned_identity" {
name = var.workload_managed_identity_name
resource_group_name = var.resource_group_name
}
The module creates and utilizes the following local variables:
locals {
identity = {
type = "UserAssigned"
identity_ids = [data.azurerm_user_assigned_identity.workload_user_assigned_identity.id]
}
identity_env = {
name = "AZURE_CLIENT_ID"
secret_name = null
value = data.azurerm_user_assigned_identity.workload_user_assigned_identity.client_id
}
registry = {
server = data.azurerm_container_registry.container_registry.login_server
identity = data.azurerm_user_assigned_identity.workload_user_assigned_identity.id
}
}
This is the explanation of each local variable:
identity
: uses the resource id of the user-defined managed identity to define theidentity
block for each container app deployed by the module.identity_env
: uses the client id of the user-defined managed identity to define the value of theAZURE_CLIENT_ID
environment variable that is appended to the list of environment variables of each container app deployed by the module.registry
: uses the login server of the Azure Container Registry to define theregistry
block for each container app deployed by the module.
Here is the full Terraform code of the module:
data "azurerm_container_app_environment" "container_app_environment" {
name = var.container_app_environment_name
resource_group_name = var.resource_group_name
}
data "azurerm_container_registry" "container_registry" {
name = var.container_registry_name
resource_group_name = var.resource_group_name
}
data "azurerm_user_assigned_identity" "workload_user_assigned_identity" {
name = var.workload_managed_identity_name
resource_group_name = var.resource_group_name
}
locals {
identity = {
type = "UserAssigned"
identity_ids = [data.azurerm_user_assigned_identity.workload_user_assigned_identity.id]
}
identity_env = {
name = "AZURE_CLIENT_ID"
secret_name = null
value = data.azurerm_user_assigned_identity.workload_user_assigned_identity.client_id
}
registry = {
server = data.azurerm_container_registry.container_registry.login_server
identity = data.azurerm_user_assigned_identity.workload_user_assigned_identity.id
}
}
resource "azurerm_container_app" "container_app" {
for_each = {for app in var.container_apps: app.name => app}
container_app_environment_id = data.azurerm_container_app_environment.container_app_environment.id
name = each.key
resource_group_name = var.resource_group_name
revision_mode = each.value.revision_mode
tags = each.value.tags
template {
max_replicas = each.value.template.max_replicas
min_replicas = each.value.template.min_replicas
revision_suffix = each.value.template.revision_suffix
dynamic "container" {
for_each = each.value.template.containers
content {
cpu = container.value.cpu
image = "${data.azurerm_container_registry.container_registry.login_server}/${container.value.image}"
memory = container.value.memory
name = container.value.name
args = container.value.args
command = container.value.command
dynamic "env" {
for_each = container.value.env == null ? [local.identity_env] : concat(container.value.env, [local.identity_env])
content {
name = env.value.name
secret_name = env.value.secret_name
value = env.value.value
}
}
dynamic "liveness_probe" {
for_each = container.value.liveness_probe == null ? [] : [container.value.liveness_probe]
content {
port = liveness_probe.value.port
transport = liveness_probe.value.transport
failure_count_threshold = liveness_probe.value.failure_count_threshold
host = liveness_probe.value.host
initial_delay = liveness_probe.value.initial_delay
interval_seconds = liveness_probe.value.interval_seconds
path = liveness_probe.value.path
timeout = liveness_probe.value.timeout
dynamic "header" {
for_each = liveness_probe.value.header == null ? [] : [liveness_probe.value.header]
content {
name = header.value.name
value = header.value.value
}
}
}
}
dynamic "readiness_probe" {
for_each = container.value.readiness_probe == null ? [] : [container.value.readiness_probe]
content {
port = readiness_probe.value.port
transport = readiness_probe.value.transport
failure_count_threshold = readiness_probe.value.failure_count_threshold
host = readiness_probe.value.host
interval_seconds = readiness_probe.value.interval_seconds
path = readiness_probe.value.path
success_count_threshold = readiness_probe.value.success_count_threshold
timeout = readiness_probe.value.timeout
dynamic "header" {
for_each = readiness_probe.value.header == null ? [] : [readiness_probe.value.header]
content {
name = header.value.name
value = header.value.value
}
}
}
}
dynamic "startup_probe" {
for_each = container.value.startup_probe == null ? [] : [container.value.startup_probe]
content {
port = startup_probe.value.port
transport = startup_probe.value.transport
failure_count_threshold = startup_probe.value.failure_count_threshold
host = startup_probe.value.host
interval_seconds = startup_probe.value.interval_seconds
path = startup_probe.value.path
timeout = startup_probe.value.timeout
dynamic "header" {
for_each = startup_probe.value.header == null ? [] : [startup_probe.value.header]
content {
name = header.value.name
value = header.value.name
}
}
}
}
dynamic "volume_mounts" {
for_each = container.value.volume_mounts == null ? [] : [container.value.volume_mounts]
content {
name = volume_mounts.value.name
path = volume_mounts.value.path
}
}
}
}
dynamic "volume" {
for_each = each.value.template.volume == null ? [] : each.value.template.volume
content {
name = volume.value.name
storage_name = volume.value.storage_name
storage_type = volume.value.storage_type
}
}
}
dynamic "dapr" {
for_each = each.value.dapr == null ? [] : [each.value.dapr]
content {
app_id = dapr.value.app_id
app_port = dapr.value.app_port
app_protocol = dapr.value.app_protocol
}
}
dynamic "identity" {
for_each = each.value.identity == null ? [local.identity] : [each.value.identity]
content {
type = identity.value.type
identity_ids = identity.value.identity_ids
}
}
dynamic "ingress" {
for_each = each.value.ingress == null ? [] : [each.value.ingress]
content {
target_port = ingress.value.target_port
allow_insecure_connections = ingress.value.allow_insecure_connections
external_enabled = ingress.value.external_enabled
transport = ingress.value.transport
dynamic "traffic_weight" {
for_each = ingress.value.traffic_weight == null ? [] : [ingress.value.traffic_weight]
content {
percentage = traffic_weight.value.percentage
label = traffic_weight.value.label
latest_revision = traffic_weight.value.latest_revision
revision_suffix = traffic_weight.value.revision_suffix
}
}
}
}
dynamic "registry" {
for_each = each.value.registry == null ? [local.registry] : concat(each.value.registry, [local.registry])
content {
server = registry.value.server
identity = registry.value.identity
}
}
dynamic "secret" {
for_each = nonsensitive(toset([for pair in lookup(var.container_app_secrets, each.key, []) : pair.name]))
content {
name = secret.key
value = local.container_app_secrets[each.key][secret.key]
}
}
}
As you can notice, the module uses the login server of the Azure Container Registry to create the fully-qualified name of the container image of the current container app.
Each chat application makes use of a DefaultAzureCredential object to acquire a security token from Azure Active Directory and authenticate and authorize with Azure OpenAI Service (AOAI) and Azure Container Registry (ACR) using the credentials of the user-defined managed identity associated to the container app.
You can use a managed identity in a running container app to authenticate and authorize with any service that supports Azure AD authentication. With managed identities:
- Container apps and applications connect to resources with the managed identity. You don't need to manage credentials in your container apps.
- You can use role-based access control to grant specific permissions to a managed identity.
- System-assigned identities are automatically created and managed. They are deleted when your container app or container app is deleted.
- You can add and delete user-assigned identities and assign them to multiple resources. They are independent of your container app or the container app's lifecycle.
- You can use managed identity to authenticate with a private Azure Container Registry without a username and password to pull containers for your Container App.
- You can use managed identity to create connections for Dapr-enabled applications via Dapr components
For more information, see Managed identities in Azure Container Apps. The workloads running in a container app can use the Azure Identity client libraries to acquire a security token from the Azure Active Directory. You can choose one of the following approaches inside your code:
- Use
DefaultAzureCredential
, which will attempt to use theWorkloadIdentityCredential
. - Create a
ChainedTokenCredential
instance that includesWorkloadIdentityCredential
. - Use
WorkloadIdentityCredential
directly.
The following table provides the minimum package version required for each language's client library.
Language | Library | Minimum Version | Example |
---|---|---|---|
.NET | Azure.Identity | 1.9.0 | Link |
Go | azidentity | 1.3.0 | Link |
Java | azure-identity | 1.9.0 | Link |
JavaScript | @azure/identity | 3.2.0 | Link |
Python | azure-identity | 1.13.0 | Link |
NOTE: When using Azure Identity client library with Azure Container Apps, the client ID of the managed identity must be specified. When using the DefaultAzureCredential
, you can explicitly specify the client ID of the container app manged identity in the AZURE_CLIENT_ID
environment variable.
The Simple Chat Application is a large language model-based chatbot that allows users to submit general-purpose questions to a GPT model, which generates and streams back human-like and engaging conversational responses. The following picture shows the welcome screen of the chat application.
You can modify the welcome screen in markdown by editing the chainlit.md
file at the project's root. If you do not want a welcome screen, leave the file empty.
The following picture shows what happens when a user submits a new message in the chat.
Chainlit can render messages in markdown format as shown by the following prompt:
Chainlit also provides classes to support the following elements:
- Audio: The
Audio
class allows you to display an audio player for a specific audio file in the chatbot user interface. You must provide either a URL or a path or content bytes. - Avatar: The
Avatar
class allows you to display an avatar image next to a message instead of the author's name. You need to send the element once. Next,, if an avatar's name matches an author's name, the avatar will be automatically displayed. You must provide either a URL or a path or content bytes. - File: The
File
class allows you to display a button that lets users download the content of the file. You must provide either a URL or a path or content bytes. - Image: The
Image
class is designed to create and handle image elements to be sent and displayed in the chatbot user interface. You must provide either a URL or a path or content bytes. - Pdf: The
Pdf
class allows you to display a PDF hosted remotely or locally in the chatbot UI. This class either takes a URL of a PDF hosted online or the path of a local PDF. - Pyplot: The
Pyplot
class allows you to display a Matplotlib pyplot chart in the chatbot UI. This class takes a pyplot figure. - TaskList: The
TaskList
class allows you to display a task list next to the chatbot UI. - Text: The
Text
class allows you to display a text element in the chatbot UI. This class takes a string and creates a text element that can be sent to the UI. It supports the markdown syntax for formatting text. You must provide either a URL or a path or content bytes.
You can click the user icon on the UI to access the chat settings and choose, for example, between the light and dark theme.
The application is built in Python. Let's take a look at the individual parts of the application code. In the following section, the Python code starts by importing the necessary packages/modules.
# Import packages
import os
import sys
from openai import AsyncAzureOpenAI
import logging
import chainlit as cl
from azure.identity import DefaultAzureCredential, get_bearer_token_provider
from dotenv import load_dotenv
from dotenv import dotenv_values
# Load environment variables from .env file
if os.path.exists(".env"):
load_dotenv(override=True)
config = dotenv_values(".env")
These are the libraries used by the chat application:
os
: This module provides a way of interacting with the operating system, enabling the code to access environment variables, file paths, etc.sys
: This module provides access to some variables used or maintained by the interpreter and functions that interact with the interpreter.openai
: The OpenAI Python library provides convenient access to the OpenAI API from applications written in Python. It includes a pre-defined set of classes for API resources that initialize themselves dynamically from API responses which makes it compatible with a wide range of versions of the OpenAI API. You can find usage examples for the OpenAI Python library in our API reference and the OpenAI Cookbook.logging
: This module provides flexible logging of messages.chainlit as cl
: This imports the Chainlit library and aliases it ascl
. Chainlit is used to create the UI of the application.from azure.identity import DefaultAzureCredential, get_bearer_token_provider
: when theopenai_type
property value isazure_ad,
aDefaultAzureCredential
object from the Azure Identity client library for Python is used to acquire security token from the Microsoft Entra ID using the credentials of the user-defined managed identity federated with the service account.load_dotenv
anddotenv_values
fromdotenv
: Python-dotenv reads key-value pairs from a.env
file and can set them as environment variables. It helps in the development of applications following the 12-factor principles.
The requirements.txt
file under the src
folder contains the list of packages used by the chat applications. You can restore these packages in your environment using the following command:
pip install -r requirements.txt --upgrade
Next, the code reads the value of the environment variables used to initialize Azure OpenAI objects. In addition, it creates a token provider for Azure OpenAI.
# Read environment variables
temperature = float(os.environ.get("TEMPERATURE", 0.9))
api_base = os.getenv("AZURE_OPENAI_BASE")
api_key = os.getenv("AZURE_OPENAI_KEY")
api_type = os.environ.get("AZURE_OPENAI_TYPE", "azure")
api_version = os.environ.get("AZURE_OPENAI_VERSION", "2023-12-01-preview")
engine = os.getenv("AZURE_OPENAI_DEPLOYMENT")
model = os.getenv("AZURE_OPENAI_MODEL")
system_content = os.getenv(
"AZURE_OPENAI_SYSTEM_MESSAGE", "You are a helpful assistant."
)
max_retries = int(os.getenv("MAX_RETRIES", 5))
timeout = int(os.getenv("TIMEOUT", 30))
debug = os.getenv("DEBUG", "False").lower() in ("true", "1", "t")
# Create Token Provider
token_provider = get_bearer_token_provider(
DefaultAzureCredential(), "https://cognitiveservices.azure.com/.default"
)
Here's a brief explanation of each variable and related environment variable:
temperature
: A float value representing the temperature for Create chat completion method of the OpenAI API. It is fetched from the environment variables with a default value of 0.9.api_base
: The base URL for the OpenAI API.api_key
: The API key for the OpenAI API. The value of this variable can be null when using a user-assigned managed identity to acquire a security token to access Azure OpenAI.api_type
: A string representing the type of the OpenAI API.api_version
: A string representing the version of the OpenAI API.engine
: The engine used for OpenAI API calls.model
: The model used for OpenAI API calls.system_content
: The content of the system message used for OpenAI API calls.max_retries
: The maximum number of retries for OpenAI API calls.timeout
: The timeout in seconds.debug
: When debug is equal totrue
,t
, or1
, the logger writes the chat completion answers.
In the next section, the code creates the AsyncAzureOpenAI
client object used by the application to communicate with the Azure OpenAI Service instance. When the api_type
is equal to azure
, the code initializes the object with the API key. Otherwise, it initializes the azure_ad_token_provider
property to the token provider created earlier. Then the code creates a logger.
# Configure OpenAI
if api_type == "azure":
openai = AsyncAzureOpenAI(
api_version=api_version,
api_key=api_key,
azure_endpoint=api_base,
max_retries=max_retries,
timeout=timeout,
)
else:
openai = AsyncAzureOpenAI(
api_version=api_version,
azure_endpoint=api_base,
azure_ad_token_provider=token_provider,
max_retries=max_retries,
timeout=timeout
)
# Configure a logger
logging.basicConfig(
stream=sys.stdout,
format="[%(asctime)s] {%(filename)s:%(lineno)d} %(levelname)s - %(message)s",
level=logging.INFO,
)
logger = logging.getLogger(__name__)
The backoff time is calculated using the backoff_in_seconds
and attempt
variables. It follows the formula backoff_in_seconds * 2 ** attempt + random.uniform(0, 1)
. This formula increases the backoff time exponentially with each attempt and adds a random value between 0 and 1 to avoid synchronized retries.
Next, the code defines a function called start_chat
that is used to initialize the UI when the user connects to the application or clicks the New Chat
button.
@cl.on_chat_start
async def start_chat():
await cl.Avatar(
name="Chatbot", url="https://cdn-icons-png.flaticon.com/512/8649/8649595.png"
).send()
await cl.Avatar(
name="Error", url="https://cdn-icons-png.flaticon.com/512/8649/8649595.png"
).send()
await cl.Avatar(
name="You",
url="https://media.architecturaldigest.com/photos/5f241de2c850b2a36b415024/master/w_1600%2Cc_limit/Luke-logo.png",
).send()
cl.user_session.set(
"message_history",
[{"role": "system", "content": system_content}],
)
Here is a brief explanation of the function steps:
@cl.on_chat_start
: The on_chat_start decorator registers a callback functionstart_chat()
to be called when the Chainlit chat starts. It is used to set up the chat and send avatars for the Chatbot, Error, and User participants in the chat.cl.Avatar()
: the Avatar class allows you to display an avatar image next to a message instead of the author name. You need to send the element once. Next if the name of an avatar matches the name of an author, the avatar will be automatically displayed. You must provide either a URL or a path or content bytes.cl.user_session.set()
: This API call sets a value in the user_session dictionary. In this case, it initializes themessage_history
in the user's session with a system content message, which indicates the start of the chat.
Finally, the application defines the method called whenever the user sends a new message in the chat.
@cl.on_message
async def on_message(message: cl.Message):
message_history = cl.user_session.get("message_history")
message_history.append({"role": "user", "content": message.content})
logger.info("Question: [%s]", message.content)
# Create the Chainlit response message
msg = cl.Message(content="")
async for stream_resp in await openai.chat.completions.create(
model=model,
messages=message_history,
temperature=temperature,
stream=True,
):
if stream_resp and len(stream_resp.choices) > 0:
token = stream_resp.choices[0].delta.content or ""
await msg.stream_token(token)
if debug:
logger.info("Answer: [%s]", msg.content)
message_history.append({"role": "assistant", "content": msg.content})
await msg.send()
Here is a detailed explanation of the function steps:
@cl.on_message
: The on_message decorator registers a callback functionmain(message: str)
to be called when the user submits a new message in the chat. It is the main function responsible for handling the chat logic.cl.user_session.get()
: This API call retrieves a value from the user's session data stored in the user_session dictionary. In this case, it fetches themessage_history
from the user's session to maintain the chat history.message_history.append()
: This API call appends a new message to themessage_history
list. It is used to add the user's message and the assistant's response to the chat history.cl.Message()
: This API call creates a Chainlit Message object. TheMessage
class is designed to send, stream, edit, or remove messages in the chatbot user interface. In this sample, theMessage
object is used to stream the OpenAI response in the chat.msg.stream_token()
: The stream_token method of the Message class streams a token to the response message. It is used to send the response from the OpenAI Chat API in chunks to ensure real-time streaming in the chat.await openai.chat.completions.create()
: This API call sends a message to the OpenAI Chat API in an asynchronous mode and streams the response. It uses the providedmessage_history
as context for generating the assistant's response.
Below, you can read the complete code of the application.
# Import packages
import os
import sys
from openai import AsyncAzureOpenAI
import logging
import chainlit as cl
from azure.identity import DefaultAzureCredential, get_bearer_token_provider
from dotenv import load_dotenv
from dotenv import dotenv_values
# Load environment variables from .env file
if os.path.exists(".env"):
load_dotenv(override=True)
config = dotenv_values(".env")
# Read environment variables
temperature = float(os.environ.get("TEMPERATURE", 0.9))
api_base = os.getenv("AZURE_OPENAI_BASE")
api_key = os.getenv("AZURE_OPENAI_KEY")
api_type = os.environ.get("AZURE_OPENAI_TYPE", "azure")
api_version = os.environ.get("AZURE_OPENAI_VERSION", "2023-12-01-preview")
engine = os.getenv("AZURE_OPENAI_DEPLOYMENT")
model = os.getenv("AZURE_OPENAI_MODEL")
system_content = os.getenv(
"AZURE_OPENAI_SYSTEM_MESSAGE", "You are a helpful assistant."
)
max_retries = int(os.getenv("MAX_RETRIES", 5))
timeout = int(os.getenv("TIMEOUT", 30))
debug = os.getenv("DEBUG", "False").lower() in ("true", "1", "t")
# Create Token Provider
token_provider = get_bearer_token_provider(
DefaultAzureCredential(), "https://cognitiveservices.azure.com/.default"
)
# Configure OpenAI
if api_type == "azure":
openai = AsyncAzureOpenAI(
api_version=api_version,
api_key=api_key,
azure_endpoint=api_base,
max_retries=max_retries,
timeout=timeout,
)
else:
openai = AsyncAzureOpenAI(
api_version=api_version,
azure_endpoint=api_base,
azure_ad_token_provider=token_provider,
max_retries=max_retries,
timeout=timeout,
)
# Configure a logger
logging.basicConfig(
stream=sys.stdout,
format="[%(asctime)s] {%(filename)s:%(lineno)d} %(levelname)s - %(message)s",
level=logging.INFO,
)
logger = logging.getLogger(__name__)
@cl.on_chat_start
async def start_chat():
await cl.Avatar(
name="Chatbot", url="https://cdn-icons-png.flaticon.com/512/8649/8649595.png"
).send()
await cl.Avatar(
name="Error", url="https://cdn-icons-png.flaticon.com/512/8649/8649595.png"
).send()
await cl.Avatar(
name="You",
url="https://media.architecturaldigest.com/photos/5f241de2c850b2a36b415024/master/w_1600%2Cc_limit/Luke-logo.png",
).send()
cl.user_session.set(
"message_history",
[{"role": "system", "content": system_content}],
)
@cl.on_message
async def on_message(message: cl.Message):
message_history = cl.user_session.get("message_history")
message_history.append({"role": "user", "content": message.content})
logger.info("Question: [%s]", message.content)
# Create the Chainlit response message
msg = cl.Message(content="")
async for stream_resp in await openai.chat.completions.create(
model=model,
messages=message_history,
temperature=temperature,
stream=True,
):
if stream_resp and len(stream_resp.choices) > 0:
token = stream_resp.choices[0].delta.content or ""
await msg.stream_token(token)
if debug:
logger.info("Answer: [%s]", msg.content)
message_history.append({"role": "assistant", "content": msg.content})
await msg.send()
You can run the application locally using the following command. The -w
flag` indicates auto-reload whenever we make changes live in our application code.
chainlit run app.py -w
The Documents QA Chat application allows users to submit up to 10 .pdf
and .docx
documents. The application processes the uploaded documents to create vector embeddings. These embeddings are stored in ChromaDB vector database for efficient retrieval. Users can pose questions about the uploaded documents and view the Chain of Thought, enabling easy exploration of the reasoning process. The completion message contains links to the text chunks in the documents that were used as a source for the response. The following picture shows the chat application interface. As you can see, you can click the Browse
button and choose up to 10 .pdf
and .docx
documents to upload. Alternatively, you can just drag and drop the files over the control area.
After uploading the documents, the application creates and stores embeddings to ChromaDB vector database. During the phase, the UI shows a message Processing <file-1>, <file-2>...
, as shown in the following picture:
When the code finished creating embeddings, the UI is ready to receive user's questions:
As your chat application grows in complexity, understanding the individual steps for generating a specific answer can become challenging. To solve this issue, Chainlit allows you to easily explore the reasoning process right from the user interface using the Chain of Thought. If you are using the LangChain integration, every intermediary step is automatically sent and displayed in the Chainlit UI just clicking and expanding the steps, as shown in the following picture:
To see the text chunks that were used by the large language model to originate the response, you can click the sources links, as shown in the following picture:
In the Chain of Thought, below the step used to invoke the OpenAI chat completion API, you can find an Inspect in prompt playgroung
icon. Clicking on it opens the Prompt Playground dialog which allows you to modify and iterate on the prompt as needed.
As shown in the following picture, you can click and edit the value of the highlighted variables in the user prompt:
You can then click and edit the user question.
Then, you can click the Submit
button to test the effect of your changes, as shown in the following picture.
Let's take a look at the individual parts of the application code. In the following section, the Python code starts by importing the necessary packages/modules.
# Import packages
import os
import io
import sys
import logging
import chainlit as cl
from chainlit.playground.config import AzureChatOpenAI
from pypdf import PdfReader
from docx import Document
from azure.identity import DefaultAzureCredential, get_bearer_token_provider
from dotenv import load_dotenv
from dotenv import dotenv_values
from langchain.embeddings import AzureOpenAIEmbeddings
from langchain.text_splitter import RecursiveCharacterTextSplitter
from langchain.vectorstores.chroma import Chroma
from langchain.chains import RetrievalQAWithSourcesChain
from langchain.chat_models import AzureChatOpenAI
from langchain.prompts.chat import (
ChatPromptTemplate,
SystemMessagePromptTemplate,
HumanMessagePromptTemplate,
)
# Load environment variables from .env file
if os.path.exists(".env"):
load_dotenv(override=True)
config = dotenv_values(".env")
These are the libraries used by the chat application:
os
: This module provides a way of interacting with the operating system, enabling the code to access environment variables, file paths, etc.sys
: This module provides access to some variables used or maintained by the interpreter and functions that interact with the interpreter.time
: This module provides various time-related functions for time manipulation and measurement.openai
: the OpenAI Python library provides convenient access to the OpenAI API from applications written in the Python language. It includes a pre-defined set of classes for API resources that initialize themselves dynamically from API responses, which makes it compatible with a wide range of versions of the OpenAI API. You can find usage examples for the OpenAI Python library in our API reference and the OpenAI Cookbook.logging
: This module provides flexible logging of messages.chainlit as cl
: This imports the Chainlit library and aliases it ascl.
Chainlit is used to create the UI of the application.AzureChatOpenAI
fromchainlit.playground.config import
: you need to importAzureChatOpenAI
fromchainlit.playground.config
to use the Chainlit Playground.DefaultAzureCredential
fromazure.identity
: when theopenai_type
property value isazure_ad
, aDefaultAzureCredential
object from the Azure Identity client library for Python - version 1.13.0 is used to acquire security token from the Microsoft Entra ID using the credentials of the user-defined managed identity, whose client ID is defined in theAZURE_CLIENT_ID
environment variable.load_dotenv
anddotenv_values
fromdotenv
: Python-dotenv reads key-value pairs from a.env
file and can set them as environment variables. It helps in the development of applications following the 12-factor principles.langchain
: Large language models (LLMs) are emerging as a transformative technology, enabling developers to build applications that they previously could not. However, using these LLMs in isolation is often insufficient for creating a truly powerful app - the real power comes when you can combine them with other sources of computation or knowledge. LangChain library aims to assist in the development of those types of applications.
The requirements.txt
file under the src
folder contains the list of packages used by the chat applications. You can restore these packages in your environment using the following command:
pip install -r requirements.txt --upgrade
Next, the code reads environment variables and configures the OpenAI settings.
# Read environment variables
temperature = float(os.environ.get("TEMPERATURE", 0.9))
api_base = os.getenv("AZURE_OPENAI_BASE")
api_key = os.getenv("AZURE_OPENAI_KEY")
api_type = os.environ.get("AZURE_OPENAI_TYPE", "azure")
api_version = os.environ.get("AZURE_OPENAI_VERSION", "2023-12-01-preview")
chat_completion_deployment = os.getenv("AZURE_OPENAI_DEPLOYMENT")
embeddings_deployment = os.getenv("AZURE_OPENAI_ADA_DEPLOYMENT")
model = os.getenv("AZURE_OPENAI_MODEL")
max_size_mb = int(os.getenv("CHAINLIT_MAX_SIZE_MB", 100))
max_files = int(os.getenv("CHAINLIT_MAX_FILES", 10))
text_splitter_chunk_size = int(os.getenv("TEXT_SPLITTER_CHUNK_SIZE", 1000))
text_splitter_chunk_overlap = int(os.getenv("TEXT_SPLITTER_CHUNK_OVERLAP", 10))
embeddings_chunk_size = int(os.getenv("EMBEDDINGS_CHUNK_SIZE", 16))
max_retries = int(os.getenv("MAX_RETRIES", 5))
retry_min_seconds = int(os.getenv("RETRY_MIN_SECONDS", 1))
retry_max_seconds = int(os.getenv("RETRY_MAX_SECONDS", 5))
timeout = int(os.getenv("TIMEOUT", 30))
debug = os.getenv("DEBUG", "False").lower() in ("true", "1", "t")
# Configure system prompt
system_template = """Use the following pieces of context to answer the users question.
If you don't know the answer, just say that you don't know, don't try to make up an answer.
ALWAYS return a "SOURCES" part in your answer.
The "SOURCES" part should be a reference to the source of the document from which you got your answer.
Example of your response should be:
\`\`\`
The answer is foo
SOURCES: xyz
\`\`\`
Begin!
----------------
{summaries}"""
messages = [
SystemMessagePromptTemplate.from_template(system_template),
HumanMessagePromptTemplate.from_template("{question}"),
]
prompt = ChatPromptTemplate.from_messages(messages)
chain_type_kwargs = {"prompt": prompt}
# Configure a logger
logging.basicConfig(
stream=sys.stdout,
format="[%(asctime)s] {%(filename)s:%(lineno)d} %(levelname)s - %(message)s",
level=logging.INFO,
)
logger = logging.getLogger(__name__)
# Create Token Provider
if api_type == "azure_ad":
token_provider = get_bearer_token_provider(
DefaultAzureCredential(), "https://cognitiveservices.azure.com/.default"
)
# Setting the environment variables for the playground
if api_type == "azure":
os.environ["AZURE_OPENAI_API_KEY"] = api_key
os.environ["AZURE_OPENAI_API_VERSION"] = api_version
os.environ["AZURE_OPENAI_ENDPOINT"] = api_base
os.environ["AZURE_OPENAI_DEPLOYMENT_NAME"] = chat_completion_deployment
Here's a brief explanation of each variable and related environment variable:
temperature
: A float value representing the temperature for Create chat completion method of the OpenAI API. It is fetched from the environment variables with a default value of 0.9.api_base
: The base URL for the OpenAI API.api_key
: The API key for the OpenAI API. The value of this variable can be null when using a user-assigned managed identity to acquire a security token to access Azure OpenAI.api_type
: A string representing the type of the OpenAI API.api_version
: A string representing the version of the OpenAI API.chat_completion_deployment
: the name of the Azure OpenAI GPT model for chat completion.embeddings_deployment
: the name of the Azure OpenAI deployment for embeddings.model
: The model used for chat completion calls (e.g,gpt-35-turbo-16k
).max_size_mb
: the maximum size for the uploaded documents.max_files
: the maximum number of documents that can be uploaded.text_splitter_chunk_size
: the maximum chunk size used by theRecursiveCharacterTextSplitter
object.text_splitter_chunk_overlap
: the maximum chunk overlap used by theRecursiveCharacterTextSplitter
object.embeddings_chunk_size
: the maximum chunk size used by theOpenAIEmbeddings
object.max_retries
: The maximum number of retries for OpenAI API calls.retry_min_seconds
: the minimum number of seconds before a retry.retry_max_seconds
: the maximum number of seconds before a retry.timeout
: The timeout in seconds.system_template
: The content of the system message used for OpenAI API calls.debug
: When debug is equal totrue
,t
, or1
, the logger switches to verbose mode.
Next, the code defines a function called start_chat
that is used to initialize the when the user connects to the application or clicks the New Chat
button.
@cl.on_chat_start
async def start_chat():
# Sending Avatars for Chat Participants
await cl.Avatar(
name="Chatbot",
url="https://cdn-icons-png.flaticon.com/512/8649/8649595.png"
).send()
await cl.Avatar(
name="Error",
url="https://cdn-icons-png.flaticon.com/512/8649/8649595.png"
).send()
await cl.Avatar(
name="You",
url="https://media.architecturaldigest.com/photos/5f241de2c850b2a36b415024/master/w_1600%2Cc_limit/Luke-logo.png"
).send()
Here is a brief explanation of the function steps:
@cl.on_chat_start
: The on_chat_start decorator registers a callback functionstart_chat()
to be called when the Chainlit chat starts. It is used to set up the chat and send avatars for the Chatbot, Error, and User participants in the chat.cl.Avatar()
: the Avatar class allows you to display an avatar image next to a message instead of the author name. You need to send the element once. Next if the name of an avatar matches the name of an author, the avatar will be automatically displayed. You must provide either a URL or a path or content bytes.
The following code is used to initialize the large language model (LLM) chain used to reply to questions on the content of the uploaded documents.
# Initialize the file list to None
files = None
# Wait for the user to upload a file
while files == None:
files = await cl.AskFileMessage(
content=f"Please upload up to {max_files} `.pdf` or `.docx` files to begin.",
accept=[
"application/pdf",
"application/vnd.openxmlformats-officedocument.wordprocessingml.document",
],
max_size_mb=max_size_mb,
max_files=max_files,
timeout=86400,
raise_on_timeout=False,
).send()
The AskFileMessage API call prompts the user to upload up to a specified number of .pdf
or .docx
files. The uploaded files are stored in the files
variable. The process continues until the user uploads files. For more information, see AskFileMessage.
The following code processes each uploaded file by extracting its content.
- The text content of each file is stored in the list
all_texts
. - This code performs text processing and chunking. It checks the file extension to read the file content accordingly, depending on if it's a
.pdf
or a.docx
document. - The text content is split into smaller chunks using the RecursiveCharacterTextSplitter LangChain object.
- Metadata is created for each chunk and stored in the
metadatas
list.
# Create a message to inform the user that the files are being processed
content = ""
if len(files) == 1:
content = f"Processing `{files[0].name}`..."
else:
files_names = [f"`{f.name}`" for f in files]
content = f"Processing {', '.join(files_names)}..."
logger.info(content)
msg = cl.Message(content=content, author="Chatbot")
await msg.send()
# Create a list to store the texts of each file
all_texts = []
# Process each file uplodaded by the user
for file in files:
# Read file contents
with open(file.path, "rb") as uploaded_file:
file_contents = uploaded_file.read()
logger.info("[%d] bytes were read from %s", len(file_contents), file.path)
# Create an in-memory buffer from the file content
bytes = io.BytesIO(file_contents)
# Get file extension
extension = file.name.split(".")[-1]
# Initialize the text variable
text = ""
# Read the file
if extension == "pdf":
reader = PdfReader(bytes)
for i in range(len(reader.pages)):
text += reader.pages[i].extract_text()
if debug:
logger.info("[%s] read from %s", text, file.path)
elif extension == "docx":
doc = Document(bytes)
paragraph_list = []
for paragraph in doc.paragraphs:
paragraph_list.append(paragraph.text)
if debug:
logger.info("[%s] read from %s", paragraph.text, file.path)
text = "\n".join(paragraph_list)
# Split the text into chunks
text_splitter = RecursiveCharacterTextSplitter(
chunk_size=text_splitter_chunk_size,
chunk_overlap=text_splitter_chunk_overlap,
)
texts = text_splitter.split_text(text)
# Add the chunks and metadata to the list
all_texts.extend(texts)
# Create a metadata for each chunk
metadatas = [{"source": f"{i}-pl"} for i in range(len(all_texts))]
The next piece of code performs the following steps:
- It creates an AzureOpenAIEmbeddings configured to use the embeddings model in the Azure OpenAI Service to create embeddings from text chunks.
- It creates a ChromaDB vector database using the
OpenAIEmbeddings
object, the text chunks list, and the metadata list. - It creates an AzureChatOpenAI LangChain object based on the GPR model hosted in Azure OpenAI Service.
- It creates a chain using the RetrievalQAWithSourcesChain.from_chain_type API call uses previously created models and stores them as retrievers.
- It stores the metadata and text chunks in the user session using the
cl.user_session.set()
API call. - It creates a message to inform the user that the files are ready for queries, and finally returns the
chain
. - The
cl.user_session.set("chain", chain)
call stores the LLM chain in the user_session dictionary for later use.
# Create a Chroma vector store
if api_type == "azure":
embeddings = AzureOpenAIEmbeddings(
openai_api_version=api_version,
openai_api_type=api_type,
openai_api_key=api_key,
azure_endpoint=api_base,
azure_deployment=embeddings_deployment,
max_retries=max_retries,
retry_min_seconds=retry_min_seconds,
retry_max_seconds=retry_max_seconds,
chunk_size=embeddings_chunk_size,
timeout=timeout,
)
else:
embeddings = AzureOpenAIEmbeddings(
openai_api_version=api_version,
openai_api_type=api_type,
azure_endpoint=api_base,
azure_ad_token_provider=token_provider,
azure_deployment=embeddings_deployment,
max_retries=max_retries,
retry_min_seconds=retry_min_seconds,
retry_max_seconds=retry_max_seconds,
chunk_size=embeddings_chunk_size,
timeout=timeout,
)
# Create a Chroma vector store
db = await cl.make_async(Chroma.from_texts)(
all_texts, embeddings, metadatas=metadatas
)
# Create an AzureChatOpenAI llm
if api_type == "azure":
llm = AzureChatOpenAI(
openai_api_type=api_type,
openai_api_version=api_version,
openai_api_key=api_key,
azure_endpoint=api_base,
temperature=temperature,
azure_deployment=chat_completion_deployment,
streaming=True,
max_retries=max_retries,
timeout=timeout,
)
else:
llm = AzureChatOpenAI(
openai_api_type=api_type,
openai_api_version=api_version,
azure_endpoint=api_base,
api_key=api_key,
temperature=temperature,
azure_deployment=chat_completion_deployment,
azure_ad_token_provider=token_provider,
streaming=True,
max_retries=max_retries,
timeout=timeout,
)
# Create a chain that uses the Chroma vector store
chain = RetrievalQAWithSourcesChain.from_chain_type(
llm=llm,
chain_type="stuff",
retriever=db.as_retriever(),
return_source_documents=True,
chain_type_kwargs=chain_type_kwargs,
)
# Save the metadata and texts in the user session
cl.user_session.set("metadatas", metadatas)
cl.user_session.set("texts", all_texts)
# Create a message to inform the user that the files are ready for queries
content = ""
if len(files) == 1:
content = f"`{files[0].name}` processed. You can now ask questions!"
logger.info(content)
else:
files_names = [f"`{f.name}`" for f in files]
content = f"{', '.join(files_names)} processed. You can now ask questions."
logger.info(content)
msg.content = content
msg.author = "Chatbot"
await msg.update()
# Store the chain in the user session
cl.user_session.set("chain", chain)
The following code handles the communication with the OpenAI API and incorporates retrying logic in case the API calls fail due to specific errors.
@cl.on_message
: The on_message decorator registers a callback functionmain(message: str)
to be called when the user submits a new message in the chat. It is the main function responsible for handling the chat logic.cl.user_session.get("chain")
: this call retrieves the LLM chain from the user_session dictionary.cl.AsyncLangchainCallbackHandler
: this call creates a LangChain callback handler.await chain.acall
: The asynchronous call to the RetrievalQAWithSourcesChain.acall executes the LLM chain with the user message as an input.
@cl.on_message
async def main(message: cl.Message):
# Retrieve the chain from the user session
chain = cl.user_session.get("chain")
# Create a callback handler
cb = cl.AsyncLangchainCallbackHandler()
# Get the response from the chain
response = await chain.acall(message.content, callbacks=[cb])
logger.info("Question: [%s]", message.content)
The code below extracts the answers and sources from the API response and formats them to be sent as a message.
- The
answer
andsources
are obtained from theresponse
dictionary. - The sources are then processed to find corresponding texts in the user session metadata (
metadatas
) and createsource_elements
usingcl.Text()
. cl.Message().send()
: the Message API creates and displays a message containing the answer and sources, if available.- The last command sets the
AZURE_OPENAI_API_KEY
environment variable to a security key to access Azure OpenAI returned by the token provider. This key is used by the Chainlit playground.
# Get the answer and sources from the response
answer = response["answer"]
sources = response["sources"].strip()
source_elements = []
if debug:
logger.info("Answer: [%s]", answer)
# Get the metadata and texts from the user session
metadatas = cl.user_session.get("metadatas")
all_sources = [m["source"] for m in metadatas]
texts = cl.user_session.get("texts")
if sources:
found_sources = []
# Add the sources to the message
for source in sources.split(","):
source_name = source.strip().replace(".", "")
# Get the index of the source
try:
index = all_sources.index(source_name)
except ValueError:
continue
text = texts[index]
found_sources.append(source_name)
# Create the text element referenced in the message
source_elements.append(cl.Text(content=text, name=source_name))
if found_sources:
answer += f"\nSources: {', '.join(found_sources)}"
else:
answer += "\nNo sources found"
await cl.Message(content=answer, elements=source_elements).send()
# Setting the AZURE_OPENAI_API_KEY environment variable for the playground
if api_type == "azure_ad":
os.environ["AZURE_OPENAI_API_KEY"] = token_provider()
Below, you can read the complete code of the application.
# Import packages
import os
import io
import sys
import logging
import chainlit as cl
from chainlit.playground.config import AzureChatOpenAI
from pypdf import PdfReader
from docx import Document
from azure.identity import DefaultAzureCredential, get_bearer_token_provider
from dotenv import load_dotenv
from dotenv import dotenv_values
from langchain.embeddings import AzureOpenAIEmbeddings
from langchain.text_splitter import RecursiveCharacterTextSplitter
from langchain.vectorstores.chroma import Chroma
from langchain.chains import RetrievalQAWithSourcesChain
from langchain.chat_models import AzureChatOpenAI
from langchain.prompts.chat import (
ChatPromptTemplate,
SystemMessagePromptTemplate,
HumanMessagePromptTemplate,
)
# Load environment variables from .env file
if os.path.exists(".env"):
load_dotenv(override=True)
config = dotenv_values(".env")
# Read environment variables
temperature = float(os.environ.get("TEMPERATURE", 0.9))
api_base = os.getenv("AZURE_OPENAI_BASE")
api_key = os.getenv("AZURE_OPENAI_KEY")
api_type = os.environ.get("AZURE_OPENAI_TYPE", "azure")
api_version = os.environ.get("AZURE_OPENAI_VERSION", "2023-12-01-preview")
chat_completion_deployment = os.getenv("AZURE_OPENAI_DEPLOYMENT")
embeddings_deployment = os.getenv("AZURE_OPENAI_ADA_DEPLOYMENT")
model = os.getenv("AZURE_OPENAI_MODEL")
max_size_mb = int(os.getenv("CHAINLIT_MAX_SIZE_MB", 100))
max_files = int(os.getenv("CHAINLIT_MAX_FILES", 10))
max_files = int(os.getenv("CHAINLIT_MAX_FILES", 10))
text_splitter_chunk_size = int(os.getenv("TEXT_SPLITTER_CHUNK_SIZE", 1000))
text_splitter_chunk_overlap = int(os.getenv("TEXT_SPLITTER_CHUNK_OVERLAP", 10))
embeddings_chunk_size = int(os.getenv("EMBEDDINGS_CHUNK_SIZE", 16))
max_retries = int(os.getenv("MAX_RETRIES", 5))
retry_min_seconds = int(os.getenv("RETRY_MIN_SECONDS", 1))
retry_max_seconds = int(os.getenv("RETRY_MAX_SECONDS", 5))
timeout = int(os.getenv("TIMEOUT", 30))
debug = os.getenv("DEBUG", "False").lower() in ("true", "1", "t")
# Configure system prompt
system_template = """Use the following pieces of context to answer the users question.
If you don't know the answer, just say that you don't know, don't try to make up an answer.
ALWAYS return a "SOURCES" part in your answer.
The "SOURCES" part should be a reference to the source of the document from which you got your answer.
Example of your response should be:
\`\`\`
The answer is foo
SOURCES: xyz
\`\`\`
Begin!
----------------
{summaries}"""
messages = [
SystemMessagePromptTemplate.from_template(system_template),
HumanMessagePromptTemplate.from_template("{question}"),
]
prompt = ChatPromptTemplate.from_messages(messages)
chain_type_kwargs = {"prompt": prompt}
# Configure a logger
logging.basicConfig(
stream=sys.stdout,
format="[%(asctime)s] {%(filename)s:%(lineno)d} %(levelname)s - %(message)s",
level=logging.INFO,
)
logger = logging.getLogger(__name__)
# Create Token Provider
if api_type == "azure_ad":
token_provider = get_bearer_token_provider(
DefaultAzureCredential(), "https://cognitiveservices.azure.com/.default"
)
# Setting the environment variables for the playground
if api_type == "azure":
os.environ["AZURE_OPENAI_API_KEY"] = api_key
os.environ["AZURE_OPENAI_API_VERSION"] = api_version
os.environ["AZURE_OPENAI_ENDPOINT"] = api_base
os.environ["AZURE_OPENAI_DEPLOYMENT_NAME"] = chat_completion_deployment
@cl.on_chat_start
async def start():
await cl.Avatar(
name="Chatbot", url="https://cdn-icons-png.flaticon.com/512/8649/8649595.png"
).send()
await cl.Avatar(
name="Error", url="https://cdn-icons-png.flaticon.com/512/8649/8649595.png"
).send()
await cl.Avatar(
name="You",
url="https://media.architecturaldigest.com/photos/5f241de2c850b2a36b415024/master/w_1600%2Cc_limit/Luke-logo.png",
).send()
# Initialize the file list to None
files = None
# Wait for the user to upload a file
while files == None:
files = await cl.AskFileMessage(
content=f"Please upload up to {max_files} `.pdf` or `.docx` files to begin.",
accept=[
"application/pdf",
"application/vnd.openxmlformats-officedocument.wordprocessingml.document",
],
max_size_mb=max_size_mb,
max_files=max_files,
timeout=86400,
raise_on_timeout=False,
).send()
# Create a message to inform the user that the files are being processed
content = ""
if len(files) == 1:
content = f"Processing `{files[0].name}`..."
else:
files_names = [f"`{f.name}`" for f in files]
content = f"Processing {', '.join(files_names)}..."
logger.info(content)
msg = cl.Message(content=content, author="Chatbot")
await msg.send()
# Create a list to store the texts of each file
all_texts = []
# Process each file uplodaded by the user
for file in files:
# Read file contents
with open(file.path, "rb") as uploaded_file:
file_contents = uploaded_file.read()
logger.info("[%d] bytes were read from %s", len(file_contents), file.path)
# Create an in-memory buffer from the file content
bytes = io.BytesIO(file_contents)
# Get file extension
extension = file.name.split(".")[-1]
# Initialize the text variable
text = ""
# Read the file
if extension == "pdf":
reader = PdfReader(bytes)
for i in range(len(reader.pages)):
text += reader.pages[i].extract_text()
if debug:
logger.info("[%s] read from %s", text, file.path)
elif extension == "docx":
doc = Document(bytes)
paragraph_list = []
for paragraph in doc.paragraphs:
paragraph_list.append(paragraph.text)
if debug:
logger.info("[%s] read from %s", paragraph.text, file.path)
text = "\n".join(paragraph_list)
# Split the text into chunks
text_splitter = RecursiveCharacterTextSplitter(
chunk_size=text_splitter_chunk_size,
chunk_overlap=text_splitter_chunk_overlap,
)
texts = text_splitter.split_text(text)
# Add the chunks and metadata to the list
all_texts.extend(texts)
# Create a metadata for each chunk
metadatas = [{"source": f"{i}-pl"} for i in range(len(all_texts))]
# Create a Chroma vector store
if api_type == "azure":
embeddings = AzureOpenAIEmbeddings(
openai_api_version=api_version,
openai_api_type=api_type,
openai_api_key=api_key,
azure_endpoint=api_base,
azure_deployment=embeddings_deployment,
max_retries=max_retries,
retry_min_seconds=retry_min_seconds,
retry_max_seconds=retry_max_seconds,
chunk_size=embeddings_chunk_size,
timeout=timeout,
)
else:
embeddings = AzureOpenAIEmbeddings(
openai_api_version=api_version,
openai_api_type=api_type,
azure_endpoint=api_base,
azure_ad_token_provider=token_provider,
azure_deployment=embeddings_deployment,
max_retries=max_retries,
retry_min_seconds=retry_min_seconds,
retry_max_seconds=retry_max_seconds,
chunk_size=embeddings_chunk_size,
timeout=timeout,
)
# Create a Chroma vector store
db = await cl.make_async(Chroma.from_texts)(
all_texts, embeddings, metadatas=metadatas
)
# Create an AzureChatOpenAI llm
if api_type == "azure":
llm = AzureChatOpenAI(
openai_api_type=api_type,
openai_api_version=api_version,
openai_api_key=api_key,
azure_endpoint=api_base,
temperature=temperature,
azure_deployment=chat_completion_deployment,
streaming=True,
max_retries=max_retries,
timeout=timeout,
)
else:
llm = AzureChatOpenAI(
openai_api_type=api_type,
openai_api_version=api_version,
azure_endpoint=api_base,
api_key=api_key,
temperature=temperature,
azure_deployment=chat_completion_deployment,
azure_ad_token_provider=token_provider,
streaming=True,
max_retries=max_retries,
timeout=timeout,
)
# Create a chain that uses the Chroma vector store
chain = RetrievalQAWithSourcesChain.from_chain_type(
llm=llm,
chain_type="stuff",
retriever=db.as_retriever(),
return_source_documents=True,
chain_type_kwargs=chain_type_kwargs,
)
# Save the metadata and texts in the user session
cl.user_session.set("metadatas", metadatas)
cl.user_session.set("texts", all_texts)
# Create a message to inform the user that the files are ready for queries
content = ""
if len(files) == 1:
content = f"`{files[0].name}` processed. You can now ask questions!"
logger.info(content)
else:
files_names = [f"`{f.name}`" for f in files]
content = f"{', '.join(files_names)} processed. You can now ask questions."
logger.info(content)
msg.content = content
msg.author = "Chatbot"
await msg.update()
# Store the chain in the user session
cl.user_session.set("chain", chain)
@cl.on_message
async def main(message: cl.Message):
# Retrieve the chain from the user session
chain = cl.user_session.get("chain")
# Create a callback handler
cb = cl.AsyncLangchainCallbackHandler()
# Get the response from the chain
response = await chain.acall(message.content, callbacks=[cb])
logger.info("Question: [%s]", message.content)
# Get the answer and sources from the response
answer = response["answer"]
sources = response["sources"].strip()
source_elements = []
if debug:
logger.info("Answer: [%s]", answer)
# Get the metadata and texts from the user session
metadatas = cl.user_session.get("metadatas")
all_sources = [m["source"] for m in metadatas]
texts = cl.user_session.get("texts")
if sources:
found_sources = []
# Add the sources to the message
for source in sources.split(","):
source_name = source.strip().replace(".", "")
# Get the index of the source
try:
index = all_sources.index(source_name)
except ValueError:
continue
text = texts[index]
found_sources.append(source_name)
# Create the text element referenced in the message
source_elements.append(cl.Text(content=text, name=source_name))
if found_sources:
answer += f"\nSources: {', '.join(found_sources)}"
else:
answer += "\nNo sources found"
await cl.Message(content=answer, elements=source_elements).send()
# Setting the AZURE_OPENAI_API_KEY environment variable for the playground
if api_type == "azure_ad":
os.environ["AZURE_OPENAI_API_KEY"] = token_provider()
You can run the application locally using the following command. The -w
flag` indicates auto-reload whenever we make changes live in our application code.
chainlit run app.py -w
You can use the src/01-build-docker-images.sh
Bash script to build the Docker container image for each container app.
#!/bin/bash
# Variables
source ./00-variables.sh
# Use a for loop to build the docker images using the array index
for index in ${!images[@]}; do
# Build the docker image
docker build -t ${images[$index]}:$tag -f Dockerfile --build-arg FILENAME=${filenames[$index]} --build-arg PORT=$port .
done
Before running any script in the src
folder, make sure to customize the value of the variables inside the 00-variables.sh
file located in the same folder. This file is embedded in all the scripts and contains the following variables:
# Variables
# Azure Container Registry
prefix="Blue"
acrName="${prefix}Registry"
acrResourceGrougName="${prefix}RG"
location="EastUS"
# Python Files
docAppFile="doc.py"
chatAppFile="chat.py"
# Docker Images
docImageName="doc"
chatImageName="chat"
tag="v1"
port="8000"
# Arrays
images=($docImageName $chatImageName)
filenames=($docAppFile $chatAppFile)
The Dockerfile
under the src
folder is parametric and can be used to build the container images for both chat applications.
# app/Dockerfile
# # Stage 1 - Install build dependencies
# A Dockerfile must start with a FROM instruction that sets the base image for the container.
# The Python images come in many flavors, each designed for a specific use case.
# The python:3.11-slim image is a good base image for most applications.
# It is a minimal image built on top of Debian Linux and includes only the necessary packages to run Python.
# The slim image is a good choice because it is small and contains only the packages needed to run Python.
# For more information, see:
# * https://hub.docker.com/_/python
# * https://docs.streamlit.io/knowledge-base/tutorials/deploy/docker
FROM python:3.11-slim AS builder
# The WORKDIR instruction sets the working directory for any RUN, CMD, ENTRYPOINT, COPY and ADD instructions that follow it in the Dockerfile.
# If the WORKDIR doesn’t exist, it will be created even if it’s not used in any subsequent Dockerfile instruction.
# For more information, see: https://docs.docker.com/engine/reference/builder/#workdir
WORKDIR /app
# Set environment variables.
# The ENV instruction sets the environment variable <key> to the value <value>.
# This value will be in the environment of all “descendant” Dockerfile commands and can be replaced inline in many as well.
# For more information, see: https://docs.docker.com/engine/reference/builder/#env
ENV PYTHONDONTWRITEBYTECODE 1
ENV PYTHONUNBUFFERED 1
# Install git so that we can clone the app code from a remote repo using the RUN instruction.
# The RUN comand has 2 forms:
# * RUN <command> (shell form, the command is run in a shell, which by default is /bin/sh -c on Linux or cmd /S /C on Windows)
# * RUN ["executable", "param1", "param2"] (exec form)
# The RUN instruction will execute any commands in a new layer on top of the current image and commit the results.
# The resulting committed image will be used for the next step in the Dockerfile.
# For more information, see: https://docs.docker.com/engine/reference/builder/#run
RUN apt-get update && apt-get install -y \
build-essential \
curl \
software-properties-common \
git \
&& rm -rf /var/lib/apt/lists/*
# Create a virtualenv to keep dependencies together
RUN python -m venv /opt/venv
ENV PATH="/opt/venv/bin:$PATH"
# Clone the requirements.txt which contains dependencies to WORKDIR
# COPY has two forms:
# * COPY <src> <dest> (this copies the files from the local machine to the container's own filesystem)
# * COPY ["<src>",... "<dest>"] (this form is required for paths containing whitespace)
# For more information, see: https://docs.docker.com/engine/reference/builder/#copy
COPY requirements.txt .
# Install the Python dependencies
RUN pip install --no-cache-dir --no-deps -r requirements.txt
# Stage 2 - Copy only necessary files to the runner stage
# The FROM instruction initializes a new build stage for the application
FROM python:3.11-slim
# Define the filename to copy as an argument
ARG FILENAME
# Deefine the port to run the application on as an argument
ARG PORT=8000
# Set an environment variable
ENV FILENAME=${FILENAME}
# Sets the working directory to /app
WORKDIR /app
# Copy the virtual environment from the builder stage
COPY --from=builder /opt/venv /opt/venv
# Set environment variables
ENV PATH="/opt/venv/bin:$PATH"
# Clone the $FILENAME containing the application code
COPY $FILENAME .
# Copy the chainlit.md file to the working directory
COPY chainlit.md .
# Copy the .chainlit folder to the working directory
COPY ./.chainlit ./.chainlit
# The EXPOSE instruction informs Docker that the container listens on the specified network ports at runtime.
# For more information, see: https://docs.docker.com/engine/reference/builder/#expose
EXPOSE $PORT
# The ENTRYPOINT instruction has two forms:
# * ENTRYPOINT ["executable", "param1", "param2"] (exec form, preferred)
# * ENTRYPOINT command param1 param2 (shell form)
# The ENTRYPOINT instruction allows you to configure a container that will run as an executable.
# For more information, see: https://docs.docker.com/engine/reference/builder/#entrypoint
CMD chainlit run $FILENAME --port=$PORT
You can use the src/02-run-docker-container.sh
Bash script to test the containers for the sender
, processor
, and receiver
applications.
#!/bin/bash
# Variables
source ./00-variables.sh
# Print the menu
echo "===================================="
echo "Run Docker Container (1-3): "
echo "===================================="
options=(
"Doc"
"Chat"
)
name=""
# Select an option
COLUMNS=0
select option in "${options[@]}"; do
case $option in
"Doc")
docker run -it \
--rm \
-p $port:$port \
-e AZURE_OPENAI_BASE=$AZURE_OPENAI_BASE \
-e AZURE_OPENAI_KEY=$AZURE_OPENAI_KEY \
-e AZURE_OPENAI_MODEL=$AZURE_OPENAI_MODEL \
-e AZURE_OPENAI_DEPLOYMENT=$AZURE_OPENAI_DEPLOYMENT \
-e AZURE_OPENAI_ADA_DEPLOYMENT=$AZURE_OPENAI_ADA_DEPLOYMENT \
-e AZURE_OPENAI_VERSION=$AZURE_OPENAI_VERSION \
-e AZURE_OPENAI_TYPE=$AZURE_OPENAI_TYPE \
-e TEMPERATURE=$TEMPERATURE \
--name $docImageName \
$docImageName:$tag
break
;;
"Chat")
docker run -it \
--rm \
-p $port:$port \
-e AZURE_OPENAI_BASE=$AZURE_OPENAI_BASE \
-e AZURE_OPENAI_KEY=$AZURE_OPENAI_KEY \
-e AZURE_OPENAI_MODEL=$AZURE_OPENAI_MODEL \
-e AZURE_OPENAI_DEPLOYMENT=$AZURE_OPENAI_DEPLOYMENT \
-e AZURE_OPENAI_VERSION=$AZURE_OPENAI_VERSION \
-e AZURE_OPENAI_TYPE=$AZURE_OPENAI_TYPE \
-e TEMPERATURE=$TEMPERATURE \
--name $chatImageName \
$chatImageName:$tag
break
;;
"Quit")
exit
;;
*) echo "invalid option $REPLY" ;;
esac
done
You can use the src/03-push-docker-image.sh
Bash script to push the Docker container images for the sender
, processor
, and receiver
applications to the Azure Container Registry (ACR).
#!/bin/bash
# Variables
source ./00-variables.sh
# Login to ACR
az acr login --name $acrName
# Retrieve the ACR login server. Each container image needs to be tagged with the login server of the registry.
loginServer=$(az acr show --name $acrName --query loginServer --output tsv)
# Use a for loop to tag and push the local docker images to the Azure Container Registry
for index in ${!images[@]}; do
# Tag the local sender image with the loginServer of ACR
docker tag ${images[$index],,}:$tag $loginServer/${images[$index],,}:$tag
# Push the container image to ACR
docker push $loginServer/${images[$index],,}:$tag
done
Azure Container Apps provides several built-in observability features that together give you a holistic view of your container app’s health throughout its application lifecycle. These features help you monitor and diagnose the state of your app to improve performance and respond to trends and critical problems.
You can use the Log Stream
panel on the Azure Portal to see the logs generated by a container app, as shown in the following screenshot.
Alternatively, you can click open the Logs
panel, as shown in the following screenshot, and use a Kusto Query Language (KQL) query to filter, project, and retrieve only the desired data.
You can use the Azure portal to list the deployed resources in the resource group, as shown in the following picture:
You can also use Azure CLI to list the deployed resources in the resource group:
az resource list --resource-group <resource-group-name>
You can also use the following PowerShell cmdlet to list the deployed resources in the resource group:
Get-AzResource -ResourceGroupName <resource-group-name>
You can delete the resource group using the following Azure CLI command when you no longer need the resources you created. This will remove all the Azure resources.
az group delete --name <resource-group-name>
Alternatively, you can use the following PowerShell cmdlet to delete the resource group and all the Azure resources.
Remove-AzResourceGroup -Name <resource-group-name>