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Author SHA1 Message Date
WenjiaoYue
e6fde1456d Added the function of detecting whether the uploaded content is safe and providing prompts (#867)
Signed-off-by: Yue, Wenjiao <wenjiao.yue@intel.com>
2024-09-24 16:29:10 +08:00
796 changed files with 14747 additions and 56660 deletions

8
.github/CODEOWNERS vendored
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@@ -1,17 +1,13 @@
/AgentQnA/ kaokao.lv@intel.com
/AgentQnA/ xuhui.ren@intel.com
/AudioQnA/ sihan.chen@intel.com
/ChatQnA/ liang1.lv@intel.com
/CodeGen/ liang1.lv@intel.com
/CodeTrans/ sihan.chen@intel.com
/DocSum/ letong.han@intel.com
/DocIndexRetriever/ kaokao.lv@intel.com chendi.xue@intel.com
/InstructionTuning xinyu.ye@intel.com
/RerankFinetuning xinyu.ye@intel.com
/MultimodalQnA tiep.le@intel.com
/DocIndexRetriever/ xuhui.ren@intel.com chendi.xue@intel.com
/FaqGen/ xinyao.wang@intel.com
/SearchQnA/ sihan.chen@intel.com
/Translation/ liang1.lv@intel.com
/VisualQnA/ liang1.lv@intel.com
/ProductivitySuite/ hoong.tee.yeoh@intel.com
/VideoQnA huiling.bao@intel.com
/*/ liang1.lv@intel.com

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@@ -1,2 +0,0 @@
ModelIn
modelin

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@@ -1,2 +1,2 @@
Copyright (C) 2024 Intel Corporation
SPDX-License-Identifier: Apache-2.0
SPDX-License-Identifier: Apache-2.0

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@@ -12,10 +12,6 @@ on:
example:
required: true
type: string
services:
default: ""
required: false
type: string
tag:
default: "latest"
required: false
@@ -40,11 +36,6 @@ on:
default: "main"
required: false
type: string
inject_commit:
default: false
required: false
type: string
jobs:
####################################################################################################
# Image Build
@@ -77,10 +68,6 @@ jobs:
git clone https://github.com/vllm-project/vllm.git
cd vllm && git rev-parse HEAD && cd ../
fi
if [[ $(grep -c "vllm-gaudi:" ${docker_compose_path}) != 0 ]]; then
git clone https://github.com/HabanaAI/vllm-fork.git
cd vllm-fork && git checkout 3c39626 && cd ../
fi
git clone https://github.com/opea-project/GenAIComps.git
cd GenAIComps && git checkout ${{ inputs.opea_branch }} && git rev-parse HEAD && cd ../
@@ -90,9 +77,7 @@ jobs:
with:
work_dir: ${{ github.workspace }}/${{ inputs.example }}/docker_image_build
docker_compose_path: ${{ github.workspace }}/${{ inputs.example }}/docker_image_build/build.yaml
service_list: ${{ inputs.services }}
registry: ${OPEA_IMAGE_REPO}opea
inject_commit: ${{ inputs.inject_commit }}
tag: ${{ inputs.tag }}
####################################################################################################
@@ -120,6 +105,7 @@ jobs:
example: ${{ inputs.example }}
hardware: ${{ inputs.node }}
tag: ${{ inputs.tag }}
context: "CD"
secrets: inherit
####################################################################################################

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@@ -14,7 +14,7 @@ on:
test_mode:
required: false
type: string
default: 'compose'
default: 'docker_compose'
outputs:
run_matrix:
description: "The matrix string"

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@@ -20,6 +20,11 @@ on:
description: "Tag to apply to images, default is latest"
required: false
type: string
context:
default: "CI"
description: "CI or CD"
required: false
type: string
jobs:
manifest-test:
@@ -46,7 +51,7 @@ jobs:
- name: Set variables
run: |
echo "IMAGE_REPO=${OPEA_IMAGE_REPO}opea" >> $GITHUB_ENV
echo "IMAGE_REPO=$OPEA_IMAGE_REPO" >> $GITHUB_ENV
echo "IMAGE_TAG=${{ inputs.tag }}" >> $GITHUB_ENV
lower_example=$(echo "${{ inputs.example }}" | tr '[:upper:]' '[:lower:]')
echo "NAMESPACE=$lower_example-$(tr -dc a-z0-9 </dev/urandom | head -c 16)" >> $GITHUB_ENV
@@ -55,6 +60,7 @@ jobs:
echo "continue_test=true" >> $GITHUB_ENV
echo "should_cleanup=false" >> $GITHUB_ENV
echo "skip_validate=true" >> $GITHUB_ENV
echo "CONTEXT=${{ inputs.context }}" >> $GITHUB_ENV
echo "NAMESPACE=$NAMESPACE"
- name: Kubectl install
@@ -90,16 +96,10 @@ jobs:
echo "Validate ${{ inputs.example }} successful!"
else
echo "Validate ${{ inputs.example }} failure!!!"
echo "Check the logs in 'Dump logs when e2e test failed' step!!!"
exit 1
.github/workflows/scripts/k8s-utils.sh dump_all_pod_logs $NAMESPACE
fi
fi
- name: Dump logs when e2e test failed
if: failure()
run: |
.github/workflows/scripts/k8s-utils.sh dump_all_pod_logs $NAMESPACE
- name: Kubectl uninstall
if: always()
run: |

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@@ -118,9 +118,6 @@ jobs:
GOOGLE_CSE_ID: ${{ secrets.GOOGLE_CSE_ID }}
GOOGLE_API_KEY: ${{ secrets.GOOGLE_API_KEY }}
PINECONE_KEY: ${{ secrets.PINECONE_KEY }}
PINECONE_KEY_LANGCHAIN_TEST: ${{ secrets.PINECONE_KEY_LANGCHAIN_TEST }}
SDK_BASE_URL: ${{ secrets.SDK_BASE_URL }}
SERVING_TOKEN: ${{ secrets.SERVING_TOKEN }}
IMAGE_REPO: ${{ inputs.registry }}
IMAGE_TAG: ${{ inputs.tag }}
example: ${{ inputs.example }}
@@ -141,11 +138,7 @@ jobs:
flag=${flag#test_}
yaml_file=$(find . -type f -wholename "*${{ inputs.hardware }}/${flag}.yaml")
echo $yaml_file
container_list=$(cat $yaml_file | grep container_name | cut -d':' -f2)
for container_name in $container_list; do
cid=$(docker ps -aq --filter "name=$container_name")
if [[ ! -z "$cid" ]]; then docker stop $cid && docker rm $cid && sleep 1s; fi
done
docker compose -f $yaml_file stop && docker compose -f $yaml_file rm -f || true
docker system prune -f
docker rmi $(docker images --filter reference="*:5000/*/*" -q) || true

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@@ -1,35 +0,0 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
name: Check Online Document Building
permissions: {}
on:
pull_request:
branches: [main]
paths:
- "**.md"
- "**.rst"
jobs:
build:
runs-on: ubuntu-latest
steps:
- name: Checkout
uses: actions/checkout@v4
with:
path: GenAIExamples
- name: Checkout docs
uses: actions/checkout@v4
with:
repository: opea-project/docs
path: docs
- name: Build Online Document
shell: bash
run: |
echo "build online doc"
cd docs
bash scripts/build.sh

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@@ -11,23 +11,23 @@ on:
required: true
type: string
examples:
default: ""
description: 'List of examples to publish [AgentQnA,AudioQnA,ChatQnA,CodeGen,CodeTrans,DocIndexRetriever,DocSum,FaqGen,InstructionTuning,MultimodalQnA,ProductivitySuite,RerankFinetuning,SearchQnA,Translation,VideoQnA,VisualQnA]'
default: "Translation"
description: 'List of examples to publish [AudioQnA,ChatQnA,CodeGen,CodeTrans,DocSum,FaqGen,SearchQnA,Translation]'
required: false
type: string
images:
default: ""
description: 'List of images to publish [gmcmanager,gmcrouter]'
default: "gmcmanager,gmcrouter"
description: 'List of images to publish [gmcmanager,gmcrouter, ...]'
required: false
type: string
tag:
default: "rc"
description: "Tag to publish, like [1.0rc]"
default: "v0.9"
description: "Tag to publish"
required: true
type: string
publish_tags:
default: "latest,1.x"
description: "Tag list apply to publish images, like [latest,1.0]"
default: "latest,v0.9"
description: 'Tag list apply to publish images'
required: false
type: string

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@@ -11,13 +11,13 @@ on:
required: true
type: string
examples:
default: ""
description: 'List of examples to publish "AgentQnA,AudioQnA,ChatQnA,CodeGen,CodeTrans,DocIndexRetriever,DocSum,FaqGen,InstructionTuning,MultimodalQnA,ProductivitySuite,RerankFinetuning,SearchQnA,Translation,VideoQnA,VisualQnA"'
default: "ChatQnA"
description: 'List of examples to scan [AudioQnA,ChatQnA,CodeGen,CodeTrans,DocSum,FaqGen,SearchQnA,Translation]'
required: false
type: string
images:
default: ""
description: 'List of images to publish "gmcmanager,gmcrouter"'
default: "gmcmanager,gmcrouter"
description: 'List of images to scan [gmcmanager,gmcrouter, ...]'
required: false
type: string
tag:

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@@ -50,11 +50,6 @@ on:
description: 'OPEA branch for image build'
required: false
type: string
inject_commit:
default: true
description: "inject commit to docker images true or false"
required: false
type: string
permissions: read-all
jobs:
@@ -106,5 +101,4 @@ jobs:
test_k8s: ${{ fromJSON(inputs.test_k8s) }}
test_gmc: ${{ fromJSON(inputs.test_gmc) }}
opea_branch: ${{ inputs.opea_branch }}
inject_commit: ${{ inputs.inject_commit }}
secrets: inherit

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@@ -1,13 +1,13 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
name: Freeze OPEA images release tag
name: Freeze OPEA images release tag in readme on manual event
on:
workflow_dispatch:
inputs:
tag:
default: "1.1.0"
default: "latest"
description: "Tag to apply to images"
required: true
type: string
@@ -23,6 +23,10 @@ jobs:
fetch-depth: 0
ref: ${{ github.ref }}
- uses: actions/setup-python@v5
with:
python-version: "3.10"
- name: Set up Git
run: |
git config --global user.name "NeuralChatBot"
@@ -31,10 +35,9 @@ jobs:
- name: Run script
run: |
IFS='.' read -r major minor patch <<< "${{ github.event.inputs.tag }}"
echo "VERSION_MAJOR ${major}" > version.txt
echo "VERSION_MINOR ${minor}" >> version.txt
echo "VERSION_PATCH ${patch}" >> version.txt
find . -name "*.md" | xargs sed -i "s|^docker\ compose|TAG=${{ github.event.inputs.tag }}\ docker\ compose|g"
find . -type f -name "*.yaml" \( -path "*/benchmark/*" -o -path "*/kubernetes/*" \) | xargs sed -i -E 's/(opea\/[A-Za-z0-9\-]*:)latest/\1${{ github.event.inputs.tag }}/g'
find . -type f -name "*.md" \( -path "*/benchmark/*" -o -path "*/kubernetes/*" \) | xargs sed -i -E 's/(opea\/[A-Za-z0-9\-]*:)latest/\1${{ github.event.inputs.tag }}/g'
- name: Commit changes
run: |

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@@ -1,66 +0,0 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
name: Build specific images on manual event
on:
workflow_dispatch:
inputs:
nodes:
default: "gaudi,xeon"
description: "Hardware to run test"
required: true
type: string
example:
default: "ChatQnA"
description: 'Build images belong to which example?'
required: true
type: string
services:
default: "chatqna,chatqna-without-rerank"
description: 'Service list to build'
required: true
type: string
tag:
default: "latest"
description: "Tag to apply to images"
required: true
type: string
opea_branch:
default: "main"
description: 'OPEA branch for image build'
required: false
type: string
inject_commit:
default: true
description: "inject commit to docker images true or false"
required: false
type: string
jobs:
get-test-matrix:
runs-on: ubuntu-latest
outputs:
nodes: ${{ steps.get-matrix.outputs.nodes }}
steps:
- name: Create Matrix
id: get-matrix
run: |
nodes=($(echo ${{ inputs.nodes }} | tr ',' ' '))
nodes_json=$(printf '%s\n' "${nodes[@]}" | sort -u | jq -R '.' | jq -sc '.')
echo "nodes=$nodes_json" >> $GITHUB_OUTPUT
image-build:
needs: get-test-matrix
strategy:
matrix:
node: ${{ fromJson(needs.get-test-matrix.outputs.nodes) }}
fail-fast: false
uses: ./.github/workflows/_example-workflow.yml
with:
node: ${{ matrix.node }}
example: ${{ inputs.example }}
services: ${{ inputs.services }}
tag: ${{ inputs.tag }}
opea_branch: ${{ inputs.opea_branch }}
inject_commit: ${{ inputs.inject_commit }}
secrets: inherit

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@@ -1,70 +0,0 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
name: Nightly build/publish latest docker images
on:
schedule:
- cron: "30 13 * * *" # UTC time
workflow_dispatch:
env:
EXAMPLES: "AgentQnA,AudioQnA,ChatQnA,CodeGen,CodeTrans,DocIndexRetriever,DocSum,FaqGen,InstructionTuning,MultimodalQnA,ProductivitySuite,RerankFinetuning,SearchQnA,Translation,VideoQnA,VisualQnA"
TAG: "latest"
PUBLISH_TAGS: "latest"
jobs:
get-build-matrix:
runs-on: ubuntu-latest
outputs:
examples_json: ${{ steps.get-matrix.outputs.examples_json }}
EXAMPLES: ${{ steps.get-matrix.outputs.EXAMPLES }}
TAG: ${{ steps.get-matrix.outputs.TAG }}
PUBLISH_TAGS: ${{ steps.get-matrix.outputs.PUBLISH_TAGS }}
steps:
- name: Create Matrix
id: get-matrix
run: |
examples=($(echo ${EXAMPLES} | tr ',' ' '))
examples_json=$(printf '%s\n' "${examples[@]}" | sort -u | jq -R '.' | jq -sc '.')
echo "examples_json=$examples_json" >> $GITHUB_OUTPUT
echo "EXAMPLES=$EXAMPLES" >> $GITHUB_OUTPUT
echo "TAG=$TAG" >> $GITHUB_OUTPUT
echo "PUBLISH_TAGS=$PUBLISH_TAGS" >> $GITHUB_OUTPUT
build:
needs: get-build-matrix
strategy:
matrix:
example: ${{ fromJSON(needs.get-build-matrix.outputs.examples_json) }}
fail-fast: false
uses: ./.github/workflows/_example-workflow.yml
with:
node: gaudi
example: ${{ matrix.example }}
secrets: inherit
get-image-list:
needs: get-build-matrix
uses: ./.github/workflows/_get-image-list.yml
with:
examples: ${{ needs.get-build-matrix.outputs.EXAMPLES }}
publish:
needs: [get-build-matrix, get-image-list, build]
strategy:
matrix:
image: ${{ fromJSON(needs.get-image-list.outputs.matrix) }}
runs-on: "docker-build-gaudi"
steps:
- uses: docker/login-action@v3.2.0
with:
username: ${{ secrets.DOCKERHUB_USER }}
password: ${{ secrets.DOCKERHUB_TOKEN }}
- name: Image Publish
uses: opea-project/validation/actions/image-publish@main
with:
local_image_ref: ${OPEA_IMAGE_REPO}opea/${{ matrix.image }}:${{ needs.get-build-matrix.outputs.TAG }}
image_name: opea/${{ matrix.image }}
publish_tags: ${{ needs.get-build-matrix.outputs.PUBLISH_TAGS }}

50
.github/workflows/pr-bum_list_check.yml vendored Normal file
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@@ -0,0 +1,50 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
name: Check Requirements
on: [pull_request]
jobs:
check-requirements:
runs-on: ubuntu-latest
steps:
- name: Checkout PR branch
uses: actions/checkout@v4
- name: Save PR requirements
run: |
find . -name "requirements.txt" -exec cat {} \; | \
grep -v '^\s*#' | \
grep -v '^\s*$' | \
grep -v '^\s*-' | \
sed 's/^\s*//' | \
awk -F'[>=<]' '{print $1}' | \
sort -u > pr-requirements.txt
cat pr-requirements.txt
- name: Checkout main branch
uses: actions/checkout@v4
with:
ref: main
path: main-branch
- name: Save main branch requirements
run: |
find ./main-branch -name "requirements.txt" -exec cat {} \; | \
grep -v '^\s*#' | \
grep -v '^\s*$' | \
grep -v '^\s*-' | \
sed 's/^\s*//' | \
awk -F'[>=<]' '{print $1}' | \
sort -u > main-requirements.txt
cat main-requirements.txt
- name: Compare requirements
run: |
comm -23 pr-requirements.txt main-requirements.txt > added-packages.txt
if [ -s added-packages.txt ]; then
echo "New packages found in PR:" && cat added-packages.txt
else
echo "No new packages found😊."
fi

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@@ -12,7 +12,7 @@ on:
- "**/tests/test_gmc**"
- "!**.md"
- "!**.txt"
- "!**/kubernetes/**/manifest/**"
- "!**/kubernetes/**/manifests/**"
concurrency:
group: ${{ github.workflow }}-${{ github.event.pull_request.number || github.ref }}

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@@ -8,9 +8,7 @@ on:
branches: ["main", "*rc"]
types: [opened, reopened, ready_for_review, synchronize] # added `ready_for_review` since draft is skipped
paths:
- "**/Dockerfile**"
- "**.py"
- "**/kubernetes/**/manifest/**"
- "**/kubernetes/**/manifests/**"
- "**/tests/test_manifest**"
- "!**.md"
- "!**.txt"

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@@ -0,0 +1,54 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
name: Manifests Validate
on:
pull_request:
branches: [main]
types: [opened, reopened, ready_for_review, synchronize] # added `ready_for_review` since draft is skipped
paths:
- "**/kubernetes/manifests/**"
- .github/workflows/manifest-validate.yml
workflow_dispatch:
# If there is a new commit, the previous jobs will be canceled
concurrency:
group: ${{ github.workflow }}-${{ github.event.pull_request.number || github.ref }}
cancel-in-progress: true
env:
MANIFEST_DIR: "manifests"
jobs:
manifests-validate:
runs-on: ubuntu-latest
steps:
- name: Checkout out Repo
uses: actions/checkout@v4
with:
fetch-depth: 0
- name: changed files
id: changed_files
run: |
set -xe
changed_folder=$(git diff --name-only ${{ github.event.pull_request.base.sha }} ${{ github.event.pull_request.head.sha }} | \
grep "kubernetes/manifests" | grep -vE '.github|README.md|*.txt|*.sh' | cut -d'/' -f1 | sort -u )
echo "changed_folder: $changed_folder"
if [ -z "$changed_folder" ]; then
echo "No changes in manifests folder"
echo "SKIP=true" >> $GITHUB_OUTPUT
exit 0
fi
echo "SKIP=false" >> $GITHUB_OUTPUT
for folder in $changed_folder; do
folder_str="$folder_str $folder/kubernetes/manifests/"
done
echo "folder_str=$folder_str"
echo "folder_str=$folder_str" >> $GITHUB_ENV
- uses: docker://ghcr.io/yannh/kubeconform:latest
if: steps.changed_files.outputs.SKIP == 'false'
with:
args: "-summary -output json ${{env.folder_str}}"

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@@ -50,40 +50,28 @@ jobs:
- name: Checkout Repo GenAIExamples
uses: actions/checkout@v4
with:
fetch-depth: 0
- name: Check the Validity of Hyperlinks
run: |
cd ${{github.workspace}}
fail="FALSE"
merged_commit=$(git log -1 --format='%H')
changed_files="$(git diff --name-status --diff-filter=ARM ${{ github.event.pull_request.base.sha }} ${merged_commit} | awk '/\.md$/ {print $NF}')"
if [ -n "$changed_files" ]; then
for changed_file in $changed_files; do
# echo $changed_file
url_lines=$(grep -H -Eo '\]\(http[s]?://[^)]+\)' "$changed_file" | grep -Ev 'GenAIExamples/blob/main') || true
if [ -n "$url_lines" ]; then
for url_line in $url_lines; do
# echo $url_line
url=$(echo "$url_line"|cut -d '(' -f2 | cut -d ')' -f1|sed 's/\.git$//')
path=$(echo "$url_line"|cut -d':' -f1 | cut -d'/' -f2-)
response=$(curl -L -s -o /dev/null -w "%{http_code}" "$url")|| true
if [ "$response" -ne 200 ]; then
echo "**********Validation failed, try again**********"
response_retry=$(curl -s -o /dev/null -w "%{http_code}" "$url")
if [ "$response_retry" -eq 200 ]; then
echo "*****Retry successfully*****"
else
echo "Invalid link from ${{github.workspace}}/$path: $url"
fail="TRUE"
fi
fi
done
url_lines=$(grep -Eo '\]\(http[s]?://[^)]+\)' --include='*.md' -r .)
if [ -n "$url_lines" ]; then
for url_line in $url_lines; do
url=$(echo "$url_line"|cut -d '(' -f2 | cut -d ')' -f1|sed 's/\.git$//')
path=$(echo "$url_line"|cut -d':' -f1 | cut -d'/' -f2-)
response=$(curl -L -s -o /dev/null -w "%{http_code}" "$url")
if [ "$response" -ne 200 ]; then
echo "**********Validation failed, try again**********"
response_retry=$(curl -s -o /dev/null -w "%{http_code}" "$url")
if [ "$response_retry" -eq 200 ]; then
echo "*****Retry successfully*****"
else
echo "Invalid link from ${{github.workspace}}/$path: $url"
fail="TRUE"
fi
fi
done
else
echo "No changed .md file."
fi
if [[ "$fail" == "TRUE" ]]; then
@@ -101,8 +89,6 @@ jobs:
- name: Checkout Repo GenAIExamples
uses: actions/checkout@v4
with:
fetch-depth: 0
- name: Checking Relative Path Validity
run: |
@@ -116,34 +102,33 @@ jobs:
branch="https://github.com/opea-project/GenAIExamples/blob/${{ github.event.pull_request.head.ref }}"
fi
link_head="https://github.com/opea-project/GenAIExamples/blob/main"
merged_commit=$(git log -1 --format='%H')
changed_files="$(git diff --name-status --diff-filter=ARM ${{ github.event.pull_request.base.sha }} ${merged_commit} | awk '/\.md$/ {print $NF}')"
png_lines=$(grep -Eo '\]\([^)]+\)' --include='*.md' -r .|grep -Ev 'http')
if [ -n "$png_lines" ]; then
for png_line in $png_lines; do
refer_path=$(echo "$png_line"|cut -d':' -f1 | cut -d'/' -f2-)
png_path=$(echo "$png_line"|cut -d '(' -f2 | cut -d ')' -f1)
if [[ "${png_path:0:1}" == "/" ]]; then
check_path=$png_path
elif [[ "$png_path" == *#* ]]; then
relative_path=$(echo "$png_path" | cut -d '#' -f1)
if [ -n "$relative_path" ]; then
check_path=$(dirname "$refer_path")/$relative_path
png_path=$(echo "$png_path" | awk -F'#' '{print "#" $2}')
else
check_path=$refer_path
fi
check_path=${{github.workspace}}$png_path
elif [[ "${png_path:0:1}" == "#" ]]; then
check_path=${{github.workspace}}/$refer_path$png_path
else
check_path=$(dirname "$refer_path")/$png_path
check_path=${{github.workspace}}/$(dirname "$refer_path")/$png_path
fi
if [ -e "$check_path" ]; then
real_path=$(realpath $check_path)
if [[ "$png_line" == *#* ]]; then
if [ -n "changed_files" ] && echo "$changed_files" | grep -q "^${refer_path}$"; then
url_dev=$branch$(echo "$real_path" | sed 's|.*/GenAIExamples||')$png_path
real_path=$(realpath $check_path)
if [ $? -ne 0 ]; then
echo "Path $png_path in file ${{github.workspace}}/$refer_path does not exist"
fail="TRUE"
else
url=$link_head$(echo "$real_path" | sed 's|.*/GenAIExamples||')
response=$(curl -I -L -s -o /dev/null -w "%{http_code}" "$url")
if [ "$response" -ne 200 ]; then
echo "**********Validation failed, try again**********"
response_retry=$(curl -s -o /dev/null -w "%{http_code}" "$url")
if [ "$response_retry" -eq 200 ]; then
echo "*****Retry successfully*****"
else
echo "Retry failed. Check branch ${{ github.event.pull_request.head.ref }}"
url_dev=$branch$(echo "$real_path" | sed 's|.*/GenAIExamples||')
response=$(curl -I -L -s -o /dev/null -w "%{http_code}" "$url_dev")
if [ "$response" -ne 200 ]; then
echo "**********Validation failed, try again**********"
@@ -155,13 +140,10 @@ jobs:
fail="TRUE"
fi
else
echo "Validation succeed $png_line"
echo "Check branch ${{ github.event.pull_request.head.ref }} successfully."
fi
fi
fi
else
echo "${{github.workspace}}/$refer_path:$png_path does not exist"
fail="TRUE"
fi
done
fi

View File

@@ -8,8 +8,8 @@ on:
branches: [ 'main' ]
paths:
- "**.py"
- "**Dockerfile*"
- "**docker_image_build/build.yaml"
- "**Dockerfile"
workflow_dispatch:
concurrency:
group: ${{ github.workflow }}-${{ github.ref }}-on-push
@@ -19,15 +19,17 @@ jobs:
job1:
uses: ./.github/workflows/_get-test-matrix.yml
with:
test_mode: "docker_image_build"
test_mode: "docker_image_build/build.yaml"
image-build:
needs: job1
strategy:
matrix: ${{ fromJSON(needs.job1.outputs.run_matrix) }}
matrix:
example: ${{ fromJSON(needs.job1.outputs.run_matrix).include.*.example }}
node: ["gaudi","xeon"]
fail-fast: false
uses: ./.github/workflows/_example-workflow.yml
with:
node: ${{ matrix.hardware }}
node: ${{ matrix.node }}
example: ${{ matrix.example }}
secrets: inherit

View File

@@ -9,20 +9,12 @@ set -e
changed_files=$changed_files
test_mode=$test_mode
run_matrix="{\"include\":["
hardware_list="xeon gaudi" # current support hardware list
examples=$(printf '%s\n' "${changed_files[@]}" | grep '/' | cut -d'/' -f1 | sort -u)
for example in ${examples}; do
cd $WORKSPACE/$example
if [[ ! $(find . -type f | grep ${test_mode}) ]]; then continue; fi
cd tests
ls -l
if [[ "$test_mode" == "docker_image_build" ]]; then
find_name="test_manifest_on_*.sh"
else
find_name="test_${test_mode}*_on_*.sh"
fi
hardware_list=$(find . -type f -name "${find_name}" | cut -d/ -f2 | cut -d. -f1 | awk -F'_on_' '{print $2}'| sort -u)
echo -e "Test supported hardware list: \n${hardware_list}"
run_hardware=""
if [[ $(printf '%s\n' "${changed_files[@]}" | grep ${example} | cut -d'/' -f2 | grep -E '*.py|Dockerfile*|ui|docker_image_build' ) ]]; then

2
.gitignore vendored
View File

@@ -5,4 +5,4 @@
**/playwright/.cache/
**/test-results/
__pycache__/
__pycache__/

View File

@@ -18,6 +18,8 @@ repos:
SearchQnA/ui/svelte/tsconfig.json|
DocSum/ui/svelte/tsconfig.json
)$
- id: check-yaml
args: [--allow-multiple-documents]
- id: debug-statements
- id: requirements-txt-fixer
- id: trailing-whitespace
@@ -79,7 +81,7 @@ repos:
- id: isort
- repo: https://github.com/PyCQA/docformatter
rev: 06907d0
rev: v1.7.5
hooks:
- id: docformatter
args: [

View File

@@ -1 +1 @@
**/kubernetes/
**/kubernetes/

View File

@@ -1,16 +0,0 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
#
#To anounce the version of the codes, please create a version.txt and have following format.
#VERSION_MAJOR 1
#VERSION_MINOR 0
#VERSION_PATCH 0
VERSION_FILE="version.txt"
if [ -f $VERSION_FILE ]; then
VER_OPEA_MAJOR=$(grep "VERSION_MAJOR" $VERSION_FILE | cut -d " " -f 2)
VER_OPEA_MINOR=$(grep "VERSION_MINOR" $VERSION_FILE | cut -d " " -f 2)
VER_OPEA_PATCH=$(grep "VERSION_PATCH" $VERSION_FILE | cut -d " " -f 2)
export TAG=$VER_OPEA_MAJOR.$VER_OPEA_MINOR
echo OPEA Version:$TAG
fi

View File

@@ -5,73 +5,6 @@
This example showcases a hierarchical multi-agent system for question-answering applications. The architecture diagram is shown below. The supervisor agent interfaces with the user and dispatch tasks to the worker agent and other tools to gather information and come up with answers. The worker agent uses the retrieval tool to generate answers to the queries posted by the supervisor agent. Other tools used by the supervisor agent may include APIs to interface knowledge graphs, SQL databases, external knowledge bases, etc.
![Architecture Overview](assets/agent_qna_arch.png)
The AgentQnA example is implemented using the component-level microservices defined in [GenAIComps](https://github.com/opea-project/GenAIComps). The flow chart below shows the information flow between different microservices for this example.
```mermaid
---
config:
flowchart:
nodeSpacing: 400
rankSpacing: 100
curve: linear
themeVariables:
fontSize: 50px
---
flowchart LR
%% Colors %%
classDef blue fill:#ADD8E6,stroke:#ADD8E6,stroke-width:2px,fill-opacity:0.5
classDef orange fill:#FBAA60,stroke:#ADD8E6,stroke-width:2px,fill-opacity:0.5
classDef orchid fill:#C26DBC,stroke:#ADD8E6,stroke-width:2px,fill-opacity:0.5
classDef invisible fill:transparent,stroke:transparent;
%% Subgraphs %%
subgraph DocIndexRetriever-MegaService["DocIndexRetriever MegaService "]
direction LR
EM([Embedding MicroService]):::blue
RET([Retrieval MicroService]):::blue
RER([Rerank MicroService]):::blue
end
subgraph UserInput[" User Input "]
direction LR
a([User Input Query]):::orchid
Ingest([Ingest data]):::orchid
end
AG_REACT([Agent MicroService - react]):::blue
AG_RAG([Agent MicroService - rag]):::blue
LLM_gen{{LLM Service <br>}}
DP([Data Preparation MicroService]):::blue
TEI_RER{{Reranking service<br>}}
TEI_EM{{Embedding service <br>}}
VDB{{Vector DB<br><br>}}
R_RET{{Retriever service <br>}}
%% Questions interaction
direction LR
a[User Input Query] --> AG_REACT
AG_REACT --> AG_RAG
AG_RAG --> DocIndexRetriever-MegaService
EM ==> RET
RET ==> RER
Ingest[Ingest data] --> DP
%% Embedding service flow
direction LR
AG_RAG <-.-> LLM_gen
AG_REACT <-.-> LLM_gen
EM <-.-> TEI_EM
RET <-.-> R_RET
RER <-.-> TEI_RER
direction TB
%% Vector DB interaction
R_RET <-.-> VDB
DP <-.-> VDB
```
### Why Agent for question answering?
1. Improve relevancy of retrieved context.
@@ -81,122 +14,72 @@ flowchart LR
3. Hierarchical agent can further improve performance.
Expert worker agents, such as retrieval agent, knowledge graph agent, SQL agent, etc., can provide high-quality output for different aspects of a complex query, and the supervisor agent can aggregate the information together to provide a comprehensive answer.
## Deployment with docker
### Roadmap
1. Build agent docker image [Optional]
- v0.9: Worker agent uses open-source websearch tool (duckduckgo), agents use OpenAI GPT-4o-mini as llm backend.
- v1.0: Worker agent uses OPEA retrieval megaservice as tool.
- v1.0 or later: agents use open-source llm backend.
- v1.1 or later: add safeguards
> [!NOTE]
> the step is optional. The docker images will be automatically pulled when running the docker compose commands. This step is only needed if pulling images failed.
## Getting started
First, clone the opea GenAIComps repo.
```
export WORKDIR=<your-work-directory>
cd $WORKDIR
git clone https://github.com/opea-project/GenAIComps.git
```
Then build the agent docker image. Both the supervisor agent and the worker agent will use the same docker image, but when we launch the two agents we will specify different strategies and register different tools.
```
cd GenAIComps
docker build -t opea/agent-langchain:latest --build-arg https_proxy=$https_proxy --build-arg http_proxy=$http_proxy -f comps/agent/langchain/Dockerfile .
```
2. Set up environment for this example </br>
First, clone this repo.
1. Build agent docker image </br>
First, clone the opea GenAIComps repo
```
export WORKDIR=<your-work-directory>
cd $WORKDIR
git clone https://github.com/opea-project/GenAIExamples.git
git clone https://github.com/opea-project/GenAIComps.git
```
Second, set up env vars.
Then build the agent docker image. Both the supervisor agent and the worker agent will use the same docker image, but when we launch the two agents we will specify different strategies and register different tools.
```
# Example: host_ip="192.168.1.1" or export host_ip="External_Public_IP"
export host_ip=$(hostname -I | awk '{print $1}')
# if you are in a proxy environment, also set the proxy-related environment variables
export http_proxy="Your_HTTP_Proxy"
export https_proxy="Your_HTTPs_Proxy"
# Example: no_proxy="localhost, 127.0.0.1, 192.168.1.1"
export no_proxy="Your_No_Proxy"
export TOOLSET_PATH=$WORKDIR/GenAIExamples/AgentQnA/tools/
# for using open-source llms
export HUGGINGFACEHUB_API_TOKEN=<your-HF-token>
export HF_CACHE_DIR=<directory-where-llms-are-downloaded> #so that no need to redownload every time
# optional: OPANAI_API_KEY if you want to use OpenAI models
export OPENAI_API_KEY=<your-openai-key>
cd GenAIComps
docker build -t opea/agent-langchain:latest --build-arg https_proxy=$https_proxy --build-arg http_proxy=$http_proxy -f comps/agent/langchain/Dockerfile .
```
3. Deploy the retrieval tool (i.e., DocIndexRetriever mega-service)
First, launch the mega-service.
```
cd $WORKDIR/GenAIExamples/AgentQnA/retrieval_tool
bash launch_retrieval_tool.sh
```
Then, ingest data into the vector database. Here we provide an example. You can ingest your own data.
```
bash run_ingest_data.sh
```
4. Launch other tools. </br>
2. Launch tool services </br>
In this example, we will use some of the mock APIs provided in the Meta CRAG KDD Challenge to demonstrate the benefits of gaining additional context from mock knowledge graphs.
```
docker run -d -p=8080:8000 docker.io/aicrowd/kdd-cup-24-crag-mock-api:v0
```
5. Launch agent services</br>
We provide two options for `llm_engine` of the agents: 1. open-source LLMs, 2. OpenAI models via API calls.
Deploy it on Gaudi or Xeon respectively
::::{tab-set}
:::{tab-item} Gaudi
:sync: Gaudi
To use open-source LLMs on Gaudi2, run commands below.
3. Set up environment for this example </br>
First, clone this repo
```
cd $WORKDIR/GenAIExamples/AgentQnA/docker_compose/intel/hpu/gaudi
bash launch_tgi_gaudi.sh
bash launch_agent_service_tgi_gaudi.sh
cd $WORKDIR
git clone https://github.com/opea-project/GenAIExamples.git
```
:::
:::{tab-item} Xeon
:sync: Xeon
To use OpenAI models, run commands below.
Second, set up env vars
```
cd $WORKDIR/GenAIExamples/AgentQnA/docker_compose/intel/cpu/xeon
export TOOLSET_PATH=$WORKDIR/GenAIExamples/AgentQnA/tools/
# optional: OPANAI_API_KEY
export OPENAI_API_KEY=<your-openai-key>
```
4. Launch agent services</br>
The configurations of the supervisor agent and the worker agent are defined in the docker-compose yaml file. We currently use openAI GPT-4o-mini as LLM, and we plan to add support for llama3.1-70B-instruct (served by TGI-Gaudi) in a subsequent release.
To use openai llm, run command below.
```
cd docker_compose/intel/cpu/xeon
bash launch_agent_service_openai.sh
```
:::
::::
## Validate services
First look at logs of the agent docker containers:
```
# worker agent
docker logs rag-agent-endpoint
docker logs docgrader-agent-endpoint
```
```
# supervisor agent
docker logs react-agent-endpoint
```
@@ -205,7 +88,7 @@ You should see something like "HTTP server setup successful" if the docker conta
Second, validate worker agent:
```
curl http://${host_ip}:9095/v1/chat/completions -X POST -H "Content-Type: application/json" -d '{
curl http://${ip_address}:9095/v1/chat/completions -X POST -H "Content-Type: application/json" -d '{
"query": "Most recent album by Taylor Swift"
}'
```
@@ -213,11 +96,11 @@ curl http://${host_ip}:9095/v1/chat/completions -X POST -H "Content-Type: applic
Third, validate supervisor agent:
```
curl http://${host_ip}:9090/v1/chat/completions -X POST -H "Content-Type: application/json" -d '{
curl http://${ip_address}:9090/v1/chat/completions -X POST -H "Content-Type: application/json" -d '{
"query": "Most recent album by Taylor Swift"
}'
```
## How to register your own tools with agent
You can take a look at the tools yaml and python files in this example. For more details, please refer to the "Provide your own tools" section in the instructions [here](https://github.com/opea-project/GenAIComps/tree/main/comps/agent/langchain/README.md).
You can take a look at the tools yaml and python files in this example. For more details, please refer to the "Provide your own tools" section in the instructions [here](https://github.com/opea-project/GenAIComps/tree/main/comps/agent/langchain#5-customize-agent-strategy).

View File

@@ -1,100 +0,0 @@
# Single node on-prem deployment with Docker Compose on Xeon Scalable processors
This example showcases a hierarchical multi-agent system for question-answering applications. We deploy the example on Xeon. For LLMs, we use OpenAI models via API calls. For instructions on using open-source LLMs, please refer to the deployment guide [here](../../../../README.md).
## Deployment with docker
1. First, clone this repo.
```
export WORKDIR=<your-work-directory>
cd $WORKDIR
git clone https://github.com/opea-project/GenAIExamples.git
```
2. Set up environment for this example </br>
```
# Example: host_ip="192.168.1.1" or export host_ip="External_Public_IP"
export host_ip=$(hostname -I | awk '{print $1}')
# if you are in a proxy environment, also set the proxy-related environment variables
export http_proxy="Your_HTTP_Proxy"
export https_proxy="Your_HTTPs_Proxy"
# Example: no_proxy="localhost, 127.0.0.1, 192.168.1.1"
export no_proxy="Your_No_Proxy"
export TOOLSET_PATH=$WORKDIR/GenAIExamples/AgentQnA/tools/
#OPANAI_API_KEY if you want to use OpenAI models
export OPENAI_API_KEY=<your-openai-key>
```
3. Deploy the retrieval tool (i.e., DocIndexRetriever mega-service)
First, launch the mega-service.
```
cd $WORKDIR/GenAIExamples/AgentQnA/retrieval_tool
bash launch_retrieval_tool.sh
```
Then, ingest data into the vector database. Here we provide an example. You can ingest your own data.
```
bash run_ingest_data.sh
```
4. Launch Tool service
In this example, we will use some of the mock APIs provided in the Meta CRAG KDD Challenge to demonstrate the benefits of gaining additional context from mock knowledge graphs.
```
docker run -d -p=8080:8000 docker.io/aicrowd/kdd-cup-24-crag-mock-api:v0
```
5. Launch `Agent` service
The configurations of the supervisor agent and the worker agent are defined in the docker-compose yaml file. We currently use openAI GPT-4o-mini as LLM, and llama3.1-70B-instruct (served by TGI-Gaudi) in Gaudi example. To use openai llm, run command below.
```
cd $WORKDIR/GenAIExamples/AgentQnA/docker_compose/intel/cpu/xeon
bash launch_agent_service_openai.sh
```
6. [Optional] Build `Agent` docker image if pulling images failed.
```
git clone https://github.com/opea-project/GenAIComps.git
cd GenAIComps
docker build -t opea/agent-langchain:latest -f comps/agent/langchain/Dockerfile .
```
## Validate services
First look at logs of the agent docker containers:
```
# worker agent
docker logs rag-agent-endpoint
```
```
# supervisor agent
docker logs react-agent-endpoint
```
You should see something like "HTTP server setup successful" if the docker containers are started successfully.</p>
Second, validate worker agent:
```
curl http://${host_ip}:9095/v1/chat/completions -X POST -H "Content-Type: application/json" -d '{
"query": "Most recent album by Taylor Swift"
}'
```
Third, validate supervisor agent:
```
curl http://${host_ip}:9090/v1/chat/completions -X POST -H "Content-Type: application/json" -d '{
"query": "Most recent album by Taylor Swift"
}'
```
## How to register your own tools with agent
You can take a look at the tools yaml and python files in this example. For more details, please refer to the "Provide your own tools" section in the instructions [here](https://github.com/opea-project/GenAIComps/tree/main/comps/agent/langchain/README.md).

View File

@@ -2,10 +2,11 @@
# SPDX-License-Identifier: Apache-2.0
services:
worker-rag-agent:
worker-docgrader-agent:
image: opea/agent-langchain:latest
container_name: rag-agent-endpoint
container_name: docgrader-agent-endpoint
volumes:
- ${WORKDIR}/GenAIComps/comps/agent/langchain/:/home/user/comps/agent/langchain/
- ${TOOLSET_PATH}:/home/user/tools/
ports:
- "9095:9095"
@@ -35,9 +36,8 @@ services:
supervisor-react-agent:
image: opea/agent-langchain:latest
container_name: react-agent-endpoint
depends_on:
- worker-rag-agent
volumes:
- ${WORKDIR}/GenAIComps/comps/agent/langchain/:/home/user/comps/agent/langchain/
- ${TOOLSET_PATH}:/home/user/tools/
ports:
- "9090:9090"

View File

@@ -1,16 +1,13 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
pushd "../../../../../" > /dev/null
source .set_env.sh
popd > /dev/null
export TOOLSET_PATH=$WORKDIR/GenAIExamples/AgentQnA/tools/
export ip_address=$(hostname -I | awk '{print $1}')
export recursion_limit_worker=12
export recursion_limit_supervisor=10
export model="gpt-4o-mini-2024-07-18"
export temperature=0
export max_new_tokens=4096
export max_new_tokens=512
export OPENAI_API_KEY=${OPENAI_API_KEY}
export WORKER_AGENT_URL="http://${ip_address}:9095/v1/chat/completions"
export RETRIEVAL_TOOL_URL="http://${ip_address}:8889/v1/retrievaltool"

View File

@@ -1,105 +0,0 @@
# Single node on-prem deployment AgentQnA on Gaudi
This example showcases a hierarchical multi-agent system for question-answering applications. We deploy the example on Gaudi using open-source LLMs,
For more details, please refer to the deployment guide [here](../../../../README.md).
## Deployment with docker
1. First, clone this repo.
```
export WORKDIR=<your-work-directory>
cd $WORKDIR
git clone https://github.com/opea-project/GenAIExamples.git
```
2. Set up environment for this example </br>
```
# Example: host_ip="192.168.1.1" or export host_ip="External_Public_IP"
export host_ip=$(hostname -I | awk '{print $1}')
# if you are in a proxy environment, also set the proxy-related environment variables
export http_proxy="Your_HTTP_Proxy"
export https_proxy="Your_HTTPs_Proxy"
# Example: no_proxy="localhost, 127.0.0.1, 192.168.1.1"
export no_proxy="Your_No_Proxy"
export TOOLSET_PATH=$WORKDIR/GenAIExamples/AgentQnA/tools/
# for using open-source llms
export HUGGINGFACEHUB_API_TOKEN=<your-HF-token>
# Example export HF_CACHE_DIR=$WORKDIR so that no need to redownload every time
export HF_CACHE_DIR=<directory-where-llms-are-downloaded>
```
3. Deploy the retrieval tool (i.e., DocIndexRetriever mega-service)
First, launch the mega-service.
```
cd $WORKDIR/GenAIExamples/AgentQnA/retrieval_tool
bash launch_retrieval_tool.sh
```
Then, ingest data into the vector database. Here we provide an example. You can ingest your own data.
```
bash run_ingest_data.sh
```
4. Launch Tool service
In this example, we will use some of the mock APIs provided in the Meta CRAG KDD Challenge to demonstrate the benefits of gaining additional context from mock knowledge graphs.
```
docker run -d -p=8080:8000 docker.io/aicrowd/kdd-cup-24-crag-mock-api:v0
```
5. Launch `Agent` service
To use open-source LLMs on Gaudi2, run commands below.
```
cd $WORKDIR/GenAIExamples/AgentQnA/docker_compose/intel/hpu/gaudi
bash launch_tgi_gaudi.sh
bash launch_agent_service_tgi_gaudi.sh
```
6. [Optional] Build `Agent` docker image if pulling images failed.
```
git clone https://github.com/opea-project/GenAIComps.git
cd GenAIComps
docker build -t opea/agent-langchain:latest -f comps/agent/langchain/Dockerfile .
```
## Validate services
First look at logs of the agent docker containers:
```
# worker agent
docker logs rag-agent-endpoint
```
```
# supervisor agent
docker logs react-agent-endpoint
```
You should see something like "HTTP server setup successful" if the docker containers are started successfully.</p>
Second, validate worker agent:
```
curl http://${host_ip}:9095/v1/chat/completions -X POST -H "Content-Type: application/json" -d '{
"query": "Most recent album by Taylor Swift"
}'
```
Third, validate supervisor agent:
```
curl http://${host_ip}:9090/v1/chat/completions -X POST -H "Content-Type: application/json" -d '{
"query": "Most recent album by Taylor Swift"
}'
```
## How to register your own tools with agent
You can take a look at the tools yaml and python files in this example. For more details, please refer to the "Provide your own tools" section in the instructions [here](https://github.com/opea-project/GenAIComps/tree/main/comps/agent/langchain/README.md).

View File

@@ -2,9 +2,37 @@
# SPDX-License-Identifier: Apache-2.0
services:
worker-rag-agent:
tgi-server:
image: ghcr.io/huggingface/tgi-gaudi:2.0.5
container_name: tgi-server
ports:
- "8085:80"
volumes:
- ${HF_CACHE_DIR}:/data
environment:
no_proxy: ${no_proxy}
http_proxy: ${http_proxy}
https_proxy: ${https_proxy}
HUGGING_FACE_HUB_TOKEN: ${HUGGINGFACEHUB_API_TOKEN}
HF_HUB_DISABLE_PROGRESS_BARS: 1
HF_HUB_ENABLE_HF_TRANSFER: 0
HABANA_VISIBLE_DEVICES: all
OMPI_MCA_btl_vader_single_copy_mechanism: none
PT_HPU_ENABLE_LAZY_COLLECTIVES: true
ENABLE_HPU_GRAPH: true
LIMIT_HPU_GRAPH: true
USE_FLASH_ATTENTION: true
FLASH_ATTENTION_RECOMPUTE: true
runtime: habana
cap_add:
- SYS_NICE
ipc: host
command: --model-id ${LLM_MODEL_ID} --max-input-length 4096 --max-total-tokens 8192 --sharded true --num-shard ${NUM_SHARDS}
worker-docgrader-agent:
image: opea/agent-langchain:latest
container_name: rag-agent-endpoint
container_name: docgrader-agent-endpoint
depends_on:
- tgi-server
volumes:
# - ${WORKDIR}/GenAIExamples/AgentQnA/docker_image_build/GenAIComps/comps/agent/langchain/:/home/user/comps/agent/langchain/
- ${TOOLSET_PATH}:/home/user/tools/
@@ -13,7 +41,7 @@ services:
ipc: host
environment:
ip_address: ${ip_address}
strategy: rag_agent_llama
strategy: rag_agent
recursion_limit: ${recursion_limit_worker}
llm_engine: tgi
HUGGINGFACEHUB_API_TOKEN: ${HUGGINGFACEHUB_API_TOKEN}
@@ -38,7 +66,8 @@ services:
image: opea/agent-langchain:latest
container_name: react-agent-endpoint
depends_on:
- worker-rag-agent
- tgi-server
- worker-docgrader-agent
volumes:
# - ${WORKDIR}/GenAIExamples/AgentQnA/docker_image_build/GenAIComps/comps/agent/langchain/:/home/user/comps/agent/langchain/
- ${TOOLSET_PATH}:/home/user/tools/
@@ -47,7 +76,7 @@ services:
ipc: host
environment:
ip_address: ${ip_address}
strategy: react_llama
strategy: react_langgraph
recursion_limit: ${recursion_limit_supervisor}
llm_engine: tgi
HUGGINGFACEHUB_API_TOKEN: ${HUGGINGFACEHUB_API_TOKEN}

View File

@@ -1,9 +1,6 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
pushd "../../../../../" > /dev/null
source .set_env.sh
popd > /dev/null
WORKPATH=$(dirname "$PWD")/..
# export WORKDIR=$WORKPATH/../../
echo "WORKDIR=${WORKDIR}"
@@ -18,7 +15,7 @@ export LLM_MODEL_ID="meta-llama/Meta-Llama-3.1-70B-Instruct"
export NUM_SHARDS=4
export LLM_ENDPOINT_URL="http://${ip_address}:8085"
export temperature=0.01
export max_new_tokens=4096
export max_new_tokens=512
# agent related environment variables
export TOOLSET_PATH=$WORKDIR/GenAIExamples/AgentQnA/tools/
@@ -30,3 +27,17 @@ export RETRIEVAL_TOOL_URL="http://${ip_address}:8889/v1/retrievaltool"
export CRAG_SERVER=http://${ip_address}:8080
docker compose -f compose.yaml up -d
sleep 5s
echo "Waiting tgi gaudi ready"
n=0
until [[ "$n" -ge 100 ]] || [[ $ready == true ]]; do
docker logs tgi-server &> tgi-gaudi-service.log
n=$((n+1))
if grep -q Connected tgi-gaudi-service.log; then
break
fi
sleep 5s
done
sleep 5s
echo "Service started successfully"

View File

@@ -1,25 +0,0 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
# LLM related environment variables
export HF_CACHE_DIR=${HF_CACHE_DIR}
ls $HF_CACHE_DIR
export HUGGINGFACEHUB_API_TOKEN=${HUGGINGFACEHUB_API_TOKEN}
export LLM_MODEL_ID="meta-llama/Meta-Llama-3.1-70B-Instruct"
export NUM_SHARDS=4
docker compose -f tgi_gaudi.yaml up -d
sleep 5s
echo "Waiting tgi gaudi ready"
n=0
until [[ "$n" -ge 100 ]] || [[ $ready == true ]]; do
docker logs tgi-server &> tgi-gaudi-service.log
n=$((n+1))
if grep -q Connected tgi-gaudi-service.log; then
break
fi
sleep 5s
done
sleep 5s
echo "Service started successfully"

View File

@@ -1,30 +0,0 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
services:
tgi-server:
image: ghcr.io/huggingface/tgi-gaudi:2.0.6
container_name: tgi-server
ports:
- "8085:80"
volumes:
- ${HF_CACHE_DIR}:/data
environment:
no_proxy: ${no_proxy}
http_proxy: ${http_proxy}
https_proxy: ${https_proxy}
HUGGING_FACE_HUB_TOKEN: ${HUGGINGFACEHUB_API_TOKEN}
HF_HUB_DISABLE_PROGRESS_BARS: 1
HF_HUB_ENABLE_HF_TRANSFER: 0
HABANA_VISIBLE_DEVICES: all
OMPI_MCA_btl_vader_single_copy_mechanism: none
PT_HPU_ENABLE_LAZY_COLLECTIVES: true
ENABLE_HPU_GRAPH: true
LIMIT_HPU_GRAPH: true
USE_FLASH_ATTENTION: true
FLASH_ATTENTION_RECOMPUTE: true
runtime: habana
cap_add:
- SYS_NICE
ipc: host
command: --model-id ${LLM_MODEL_ID} --max-input-length 4096 --max-total-tokens 8192 --sharded true --num-shard ${NUM_SHARDS}

View File

@@ -17,12 +17,6 @@ if [ ! -d "$HF_CACHE_DIR" ]; then
fi
ls $HF_CACHE_DIR
function start_tgi(){
echo "Starting tgi-gaudi server"
cd $WORKDIR/GenAIExamples/AgentQnA/docker_compose/intel/hpu/gaudi
bash launch_tgi_gaudi.sh
}
function start_agent_and_api_server() {
echo "Starting CRAG server"
@@ -31,7 +25,6 @@ function start_agent_and_api_server() {
echo "Starting Agent services"
cd $WORKDIR/GenAIExamples/AgentQnA/docker_compose/intel/hpu/gaudi
bash launch_agent_service_tgi_gaudi.sh
sleep 10
}
function validate() {
@@ -50,22 +43,18 @@ function validate() {
function validate_agent_service() {
echo "----------------Test agent ----------------"
# local CONTENT=$(http_proxy="" curl http://${ip_address}:9095/v1/chat/completions -X POST -H "Content-Type: application/json" -d '{
# "query": "Tell me about Michael Jackson song thriller"
# }')
export agent_port="9095"
local CONTENT=$(python3 $WORKDIR/GenAIExamples/AgentQnA/tests/test.py)
local EXIT_CODE=$(validate "$CONTENT" "Thriller" "rag-agent-endpoint")
docker logs rag-agent-endpoint
local CONTENT=$(http_proxy="" curl http://${ip_address}:9095/v1/chat/completions -X POST -H "Content-Type: application/json" -d '{
"query": "Tell me about Michael Jackson song thriller"
}')
local EXIT_CODE=$(validate "$CONTENT" "Thriller" "react-agent-endpoint")
docker logs docgrader-agent-endpoint
if [ "$EXIT_CODE" == "1" ]; then
exit 1
fi
# local CONTENT=$(http_proxy="" curl http://${ip_address}:9090/v1/chat/completions -X POST -H "Content-Type: application/json" -d '{
# "query": "Tell me about Michael Jackson song thriller"
# }')
export agent_port="9090"
local CONTENT=$(python3 $WORKDIR/GenAIExamples/AgentQnA/tests/test.py)
local CONTENT=$(http_proxy="" curl http://${ip_address}:9090/v1/chat/completions -X POST -H "Content-Type: application/json" -d '{
"query": "Tell me about Michael Jackson song thriller"
}')
local EXIT_CODE=$(validate "$CONTENT" "Thriller" "react-agent-endpoint")
docker logs react-agent-endpoint
if [ "$EXIT_CODE" == "1" ]; then
@@ -75,10 +64,6 @@ function validate_agent_service() {
}
function main() {
echo "==================== Start TGI ===================="
start_tgi
echo "==================== TGI started ===================="
echo "==================== Start agent ===================="
start_agent_and_api_server
echo "==================== Agent started ===================="

View File

@@ -1,25 +0,0 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
import os
import requests
def generate_answer_agent_api(url, prompt):
proxies = {"http": ""}
payload = {
"query": prompt,
}
response = requests.post(url, json=payload, proxies=proxies)
answer = response.json()["text"]
return answer
if __name__ == "__main__":
ip_address = os.getenv("ip_address", "localhost")
agent_port = os.getenv("agent_port", "9095")
url = f"http://{ip_address}:{agent_port}/v1/chat/completions"
prompt = "Tell me about Michael Jackson song thriller"
answer = generate_answer_agent_api(url, prompt)
print(answer)

View File

@@ -19,6 +19,7 @@ function stop_crag() {
function stop_agent_docker() {
cd $WORKPATH/docker_compose/intel/hpu/gaudi/
# docker compose -f compose.yaml down
container_list=$(cat compose.yaml | grep container_name | cut -d':' -f2)
for container_name in $container_list; do
cid=$(docker ps -aq --filter "name=$container_name")
@@ -27,21 +28,11 @@ function stop_agent_docker() {
done
}
function stop_tgi(){
cd $WORKPATH/docker_compose/intel/hpu/gaudi/
container_list=$(cat tgi_gaudi.yaml | grep container_name | cut -d':' -f2)
for container_name in $container_list; do
cid=$(docker ps -aq --filter "name=$container_name")
echo "Stopping container $container_name"
if [[ ! -z "$cid" ]]; then docker rm $cid -f && sleep 1s; fi
done
}
function stop_retrieval_tool() {
echo "Stopping Retrieval tool"
local RETRIEVAL_TOOL_PATH=$WORKPATH/../DocIndexRetriever
cd $RETRIEVAL_TOOL_PATH/docker_compose/intel/cpu/xeon/
# docker compose -f compose.yaml down
container_list=$(cat compose.yaml | grep container_name | cut -d':' -f2)
for container_name in $container_list; do
cid=$(docker ps -aq --filter "name=$container_name")
@@ -52,26 +43,25 @@ function stop_retrieval_tool() {
echo "workpath: $WORKPATH"
echo "=================== Stop containers ===================="
stop_crag
stop_tgi
stop_agent_docker
stop_retrieval_tool
cd $WORKPATH/tests
echo "=================== #1 Building docker images===================="
bash step1_build_images.sh
bash 1_build_images.sh
echo "=================== #1 Building docker images completed===================="
echo "=================== #2 Start retrieval tool===================="
bash step2_start_retrieval_tool.sh
bash 2_start_retrieval_tool.sh
echo "=================== #2 Retrieval tool started===================="
echo "=================== #3 Ingest data and validate retrieval===================="
bash step3_ingest_data_and_validate_retrieval.sh
bash 3_ingest_data_and_validate_retrieval.sh
echo "=================== #3 Data ingestion and validation completed===================="
echo "=================== #4 Start agent and API server===================="
bash step4_launch_and_validate_agent_tgi.sh
bash 4_launch_and_validate_agent_tgi.sh
echo "=================== #4 Agent test passed ===================="
echo "=================== #5 Stop agent and API server===================="
@@ -80,6 +70,4 @@ stop_agent_docker
stop_retrieval_tool
echo "=================== #5 Agent and API server stopped===================="
echo y | docker system prune
echo "ALL DONE!"

View File

@@ -25,7 +25,7 @@ get_billboard_rank_date:
args_schema:
rank:
type: int
description: the rank of interest, for example 1 for top 1
description: song name
date:
type: str
description: date

View File

@@ -12,31 +12,16 @@ def search_knowledge_base(query: str) -> str:
print(url)
proxies = {"http": ""}
payload = {
"messages": query,
"text": query,
}
response = requests.post(url, json=payload, proxies=proxies)
print(response)
if "documents" in response.json():
docs = response.json()["documents"]
context = ""
for i, doc in enumerate(docs):
if i == 0:
context = doc
else:
context += "\n" + doc
# print(context)
return context
elif "text" in response.json():
return response.json()["text"]
elif "reranked_docs" in response.json():
docs = response.json()["reranked_docs"]
context = ""
for i, doc in enumerate(docs):
if i == 0:
context = doc["text"]
else:
context += "\n" + doc["text"]
# print(context)
return context
else:
return "Error parsing response from the knowledge base."
docs = response.json()["documents"]
context = ""
for i, doc in enumerate(docs):
if i == 0:
context = doc
else:
context += "\n" + doc
print(context)
return context

View File

@@ -18,7 +18,7 @@ WORKDIR /home/user/
RUN git clone https://github.com/opea-project/GenAIComps.git
WORKDIR /home/user/GenAIComps
RUN pip install --no-cache-dir --upgrade pip setuptools && \
RUN pip install --no-cache-dir --upgrade pip && \
pip install --no-cache-dir -r /home/user/GenAIComps/requirements.txt
COPY ./audioqna.py /home/user/audioqna.py

View File

@@ -1,32 +0,0 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
FROM python:3.11-slim
RUN apt-get update -y && apt-get install -y --no-install-recommends --fix-missing \
libgl1-mesa-glx \
libjemalloc-dev \
git
RUN useradd -m -s /bin/bash user && \
mkdir -p /home/user && \
chown -R user /home/user/
WORKDIR /home/user/
RUN git clone https://github.com/opea-project/GenAIComps.git
WORKDIR /home/user/GenAIComps
RUN pip install --no-cache-dir --upgrade pip setuptools && \
pip install --no-cache-dir -r /home/user/GenAIComps/requirements.txt
COPY ./audioqna_multilang.py /home/user/audioqna_multilang.py
ENV PYTHONPATH=$PYTHONPATH:/home/user/GenAIComps
USER user
WORKDIR /home/user
ENTRYPOINT ["python", "audioqna_multilang.py"]

View File

@@ -2,63 +2,6 @@
AudioQnA is an example that demonstrates the integration of Generative AI (GenAI) models for performing question-answering (QnA) on audio files, with the added functionality of Text-to-Speech (TTS) for generating spoken responses. The example showcases how to convert audio input to text using Automatic Speech Recognition (ASR), generate answers to user queries using a language model, and then convert those answers back to speech using Text-to-Speech (TTS).
The AudioQnA example is implemented using the component-level microservices defined in [GenAIComps](https://github.com/opea-project/GenAIComps). The flow chart below shows the information flow between different microservices for this example.
```mermaid
---
config:
flowchart:
nodeSpacing: 400
rankSpacing: 100
curve: linear
themeVariables:
fontSize: 50px
---
flowchart LR
%% Colors %%
classDef blue fill:#ADD8E6,stroke:#ADD8E6,stroke-width:2px,fill-opacity:0.5
classDef orange fill:#FBAA60,stroke:#ADD8E6,stroke-width:2px,fill-opacity:0.5
classDef orchid fill:#C26DBC,stroke:#ADD8E6,stroke-width:2px,fill-opacity:0.5
classDef invisible fill:transparent,stroke:transparent;
style AudioQnA-MegaService stroke:#000000
%% Subgraphs %%
subgraph AudioQnA-MegaService["AudioQnA MegaService "]
direction LR
ASR([ASR MicroService]):::blue
LLM([LLM MicroService]):::blue
TTS([TTS MicroService]):::blue
end
subgraph UserInterface[" User Interface "]
direction LR
a([User Input Query]):::orchid
UI([UI server<br>]):::orchid
end
WSP_SRV{{whisper service<br>}}
SPC_SRV{{speecht5 service <br>}}
LLM_gen{{LLM Service <br>}}
GW([AudioQnA GateWay<br>]):::orange
%% Questions interaction
direction LR
a[User Audio Query] --> UI
UI --> GW
GW <==> AudioQnA-MegaService
ASR ==> LLM
LLM ==> TTS
%% Embedding service flow
direction LR
ASR <-.-> WSP_SRV
LLM <-.-> LLM_gen
TTS <-.-> SPC_SRV
```
## Deploy AudioQnA Service
The AudioQnA service can be deployed on either Intel Gaudi2 or Intel Xeon Scalable Processor.

View File

@@ -1,98 +0,0 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
import asyncio
import base64
import os
from comps import AudioQnAGateway, MicroService, ServiceOrchestrator, ServiceType
MEGA_SERVICE_HOST_IP = os.getenv("MEGA_SERVICE_HOST_IP", "0.0.0.0")
MEGA_SERVICE_PORT = int(os.getenv("MEGA_SERVICE_PORT", 8888))
WHISPER_SERVER_HOST_IP = os.getenv("WHISPER_SERVER_HOST_IP", "0.0.0.0")
WHISPER_SERVER_PORT = int(os.getenv("WHISPER_SERVER_PORT", 7066))
GPT_SOVITS_SERVER_HOST_IP = os.getenv("GPT_SOVITS_SERVER_HOST_IP", "0.0.0.0")
GPT_SOVITS_SERVER_PORT = int(os.getenv("GPT_SOVITS_SERVER_PORT", 9088))
LLM_SERVER_HOST_IP = os.getenv("LLM_SERVER_HOST_IP", "0.0.0.0")
LLM_SERVER_PORT = int(os.getenv("LLM_SERVER_PORT", 8888))
def align_inputs(self, inputs, cur_node, runtime_graph, llm_parameters_dict, **kwargs):
print(inputs)
if self.services[cur_node].service_type == ServiceType.ASR:
# {'byte_str': 'UklGRigAAABXQVZFZm10IBIAAAABAAEARKwAAIhYAQACABAAAABkYXRhAgAAAAEA'}
inputs["audio"] = inputs["byte_str"]
del inputs["byte_str"]
elif self.services[cur_node].service_type == ServiceType.LLM:
# convert TGI/vLLM to unified OpenAI /v1/chat/completions format
next_inputs = {}
next_inputs["model"] = "tgi" # specifically clarify the fake model to make the format unified
next_inputs["messages"] = [{"role": "user", "content": inputs["asr_result"]}]
next_inputs["max_tokens"] = llm_parameters_dict["max_tokens"]
next_inputs["top_p"] = llm_parameters_dict["top_p"]
next_inputs["stream"] = inputs["streaming"] # False as default
next_inputs["frequency_penalty"] = inputs["frequency_penalty"]
# next_inputs["presence_penalty"] = inputs["presence_penalty"]
# next_inputs["repetition_penalty"] = inputs["repetition_penalty"]
next_inputs["temperature"] = inputs["temperature"]
inputs = next_inputs
elif self.services[cur_node].service_type == ServiceType.TTS:
next_inputs = {}
next_inputs["text"] = inputs["choices"][0]["message"]["content"]
next_inputs["text_language"] = kwargs["tts_text_language"] if "tts_text_language" in kwargs else "zh"
inputs = next_inputs
return inputs
def align_outputs(self, data, cur_node, inputs, runtime_graph, llm_parameters_dict, **kwargs):
if self.services[cur_node].service_type == ServiceType.TTS:
audio_base64 = base64.b64encode(data).decode("utf-8")
return {"byte_str": audio_base64}
return data
class AudioQnAService:
def __init__(self, host="0.0.0.0", port=8000):
self.host = host
self.port = port
ServiceOrchestrator.align_inputs = align_inputs
ServiceOrchestrator.align_outputs = align_outputs
self.megaservice = ServiceOrchestrator()
def add_remote_service(self):
asr = MicroService(
name="asr",
host=WHISPER_SERVER_HOST_IP,
port=WHISPER_SERVER_PORT,
# endpoint="/v1/audio/transcriptions",
endpoint="/v1/asr",
use_remote_service=True,
service_type=ServiceType.ASR,
)
llm = MicroService(
name="llm",
host=LLM_SERVER_HOST_IP,
port=LLM_SERVER_PORT,
endpoint="/v1/chat/completions",
use_remote_service=True,
service_type=ServiceType.LLM,
)
tts = MicroService(
name="tts",
host=GPT_SOVITS_SERVER_HOST_IP,
port=GPT_SOVITS_SERVER_PORT,
# endpoint="/v1/audio/speech",
endpoint="/",
use_remote_service=True,
service_type=ServiceType.TTS,
)
self.megaservice.add(asr).add(llm).add(tts)
self.megaservice.flow_to(asr, llm)
self.megaservice.flow_to(llm, tts)
self.gateway = AudioQnAGateway(megaservice=self.megaservice, host="0.0.0.0", port=self.port)
if __name__ == "__main__":
audioqna = AudioQnAService(host=MEGA_SERVICE_HOST_IP, port=MEGA_SERVICE_PORT)
audioqna.add_remote_service()

View File

@@ -1,4 +1,4 @@
# AudioQnA Accuracy
# AudioQnA accuracy Evaluation
AudioQnA is an example that demonstrates the integration of Generative AI (GenAI) models for performing question-answering (QnA) on audio scene, which contains Automatic Speech Recognition (ASR) and Text-to-Speech (TTS). The following is the piepline for evaluating the ASR accuracy.
@@ -14,7 +14,7 @@ We evaluate the WER (Word Error Rate) metric of the ASR microservice.
### Launch ASR microservice
Launch the ASR microserice with the following commands. For more details please refer to [doc](https://github.com/opea-project/GenAIComps/tree/main/comps/asr/whisper/README.md).
Launch the ASR microserice with the following commands. For more details please refer to [doc](https://github.com/opea-project/GenAIComps/tree/main/comps/asr).
```bash
git clone https://github.com/opea-project/GenAIComps
@@ -36,9 +36,9 @@ Evaluate the performance with the LLM:
```py
# validate the offline model
# python offline_eval.py
# python offline_evaluate.py
# validate the online asr microservice accuracy
python online_eval.py
python online_evaluate.py
```
### Performance Result

View File

@@ -1,5 +0,0 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
python online_eval.py

View File

@@ -1,77 +0,0 @@
# AudioQnA Benchmarking
This folder contains a collection of scripts to enable inference benchmarking by leveraging a comprehensive benchmarking tool, [GenAIEval](https://github.com/opea-project/GenAIEval/blob/main/evals/benchmark/README.md), that enables throughput analysis to assess inference performance.
By following this guide, you can run benchmarks on your deployment and share the results with the OPEA community.
## Purpose
We aim to run these benchmarks and share them with the OPEA community for three primary reasons:
- To offer insights on inference throughput in real-world scenarios, helping you choose the best service or deployment for your needs.
- To establish a baseline for validating optimization solutions across different implementations, providing clear guidance on which methods are most effective for your use case.
- To inspire the community to build upon our benchmarks, allowing us to better quantify new solutions in conjunction with current leading llms, serving frameworks etc.
## Metrics
The benchmark will report the below metrics, including:
- Number of Concurrent Requests
- End-to-End Latency: P50, P90, P99 (in milliseconds)
- End-to-End First Token Latency: P50, P90, P99 (in milliseconds)
- Average Next Token Latency (in milliseconds)
- Average Token Latency (in milliseconds)
- Requests Per Second (RPS)
- Output Tokens Per Second
- Input Tokens Per Second
Results will be displayed in the terminal and saved as CSV file named `1_stats.csv` for easy export to spreadsheets.
## Getting Started
We recommend using Kubernetes to deploy the AudioQnA service, as it offers benefits such as load balancing and improved scalability. However, you can also deploy the service using Docker if that better suits your needs.
### Prerequisites
- Install Kubernetes by following [this guide](https://github.com/opea-project/docs/blob/main/guide/installation/k8s_install/k8s_install_kubespray.md).
- Every node has direct internet access
- Set up kubectl on the master node with access to the Kubernetes cluster.
- Install Python 3.8+ on the master node for running GenAIEval.
- Ensure all nodes have a local /mnt/models folder, which will be mounted by the pods.
- Ensure that the container's ulimit can meet the the number of requests.
```bash
# The way to modify the containered ulimit:
sudo systemctl edit containerd
# Add two lines:
[Service]
LimitNOFILE=65536:1048576
sudo systemctl daemon-reload; sudo systemctl restart containerd
```
## Test Steps
Please deploy AudioQnA service before benchmarking.
### Run Benchmark Test
Before the benchmark, we can configure the number of test queries and test output directory by:
```bash
export USER_QUERIES="[128, 128, 128, 128]"
export TEST_OUTPUT_DIR="/tmp/benchmark_output"
```
And then run the benchmark by:
```bash
bash benchmark.sh -n <node_count>
```
The argument `-n` refers to the number of test nodes.
### Data collection
All the test results will come to this folder `/tmp/benchmark_output` configured by the environment variable `TEST_OUTPUT_DIR` in previous steps.

View File

@@ -1,99 +0,0 @@
#!/bin/bash
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
deployment_type="k8s"
node_number=1
service_port=8888
query_per_node=128
benchmark_tool_path="$(pwd)/GenAIEval"
usage() {
echo "Usage: $0 [-d deployment_type] [-n node_number] [-i service_ip] [-p service_port]"
echo " -d deployment_type AudioQnA deployment type, select between k8s and docker (default: k8s)"
echo " -n node_number Test node number, required only for k8s deployment_type, (default: 1)"
echo " -i service_ip AudioQnA service ip, required only for docker deployment_type"
echo " -p service_port AudioQnA service port, required only for docker deployment_type, (default: 8888)"
exit 1
}
while getopts ":d:n:i:p:" opt; do
case ${opt} in
d )
deployment_type=$OPTARG
;;
n )
node_number=$OPTARG
;;
i )
service_ip=$OPTARG
;;
p )
service_port=$OPTARG
;;
\? )
echo "Invalid option: -$OPTARG" 1>&2
usage
;;
: )
echo "Invalid option: -$OPTARG requires an argument" 1>&2
usage
;;
esac
done
if [[ "$deployment_type" == "docker" && -z "$service_ip" ]]; then
echo "Error: service_ip is required for docker deployment_type" 1>&2
usage
fi
if [[ "$deployment_type" == "k8s" && ( -n "$service_ip" || -n "$service_port" ) ]]; then
echo "Warning: service_ip and service_port are ignored for k8s deployment_type" 1>&2
fi
function main() {
if [[ ! -d ${benchmark_tool_path} ]]; then
echo "Benchmark tool not found, setting up..."
setup_env
fi
run_benchmark
}
function setup_env() {
git clone https://github.com/opea-project/GenAIEval.git
pushd ${benchmark_tool_path}
python3 -m venv stress_venv
source stress_venv/bin/activate
pip install -r requirements.txt
popd
}
function run_benchmark() {
source ${benchmark_tool_path}/stress_venv/bin/activate
export DEPLOYMENT_TYPE=${deployment_type}
export SERVICE_IP=${service_ip:-"None"}
export SERVICE_PORT=${service_port:-"None"}
if [[ -z $USER_QUERIES ]]; then
user_query=$((query_per_node*node_number))
export USER_QUERIES="[${user_query}, ${user_query}, ${user_query}, ${user_query}]"
echo "USER_QUERIES not configured, setting to: ${USER_QUERIES}."
fi
export WARMUP=$(echo $USER_QUERIES | sed -e 's/[][]//g' -e 's/,.*//')
if [[ -z $WARMUP ]]; then export WARMUP=0; fi
if [[ -z $TEST_OUTPUT_DIR ]]; then
if [[ $DEPLOYMENT_TYPE == "k8s" ]]; then
export TEST_OUTPUT_DIR="${benchmark_tool_path}/evals/benchmark/benchmark_output/node_${node_number}"
else
export TEST_OUTPUT_DIR="${benchmark_tool_path}/evals/benchmark/benchmark_output/docker"
fi
echo "TEST_OUTPUT_DIR not configured, setting to: ${TEST_OUTPUT_DIR}."
fi
envsubst < ./benchmark.yaml > ${benchmark_tool_path}/evals/benchmark/benchmark.yaml
cd ${benchmark_tool_path}/evals/benchmark
python benchmark.py
}
main

View File

@@ -1,52 +0,0 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
test_suite_config: # Overall configuration settings for the test suite
examples: ["audioqna"] # The specific test cases being tested, e.g., chatqna, codegen, codetrans, faqgen, audioqna, visualqna
deployment_type: "k8s" # Default is "k8s", can also be "docker"
service_ip: None # Leave as None for k8s, specify for Docker
service_port: None # Leave as None for k8s, specify for Docker
warm_ups: 0 # Number of test requests for warm-up
run_time: 60m # The max total run time for the test suite
seed: # The seed for all RNGs
user_queries: [1, 2, 4, 8, 16, 32, 64, 128] # Number of test requests at each concurrency level
query_timeout: 120 # Number of seconds to wait for a simulated user to complete any executing task before exiting. 120 sec by defeult.
random_prompt: false # Use random prompts if true, fixed prompts if false
collect_service_metric: false # Collect service metrics if true, do not collect service metrics if false
data_visualization: false # Generate data visualization if true, do not generate data visualization if false
llm_model: "Intel/neural-chat-7b-v3-3" # The LLM model used for the test
test_output_dir: "/tmp/benchmark_output" # The directory to store the test output
load_shape: # Tenant concurrency pattern
name: constant # poisson or constant(locust default load shape)
params: # Loadshape-specific parameters
constant: # Poisson load shape specific parameters, activate only if load_shape is poisson
concurrent_level: 4 # If user_queries is specified, concurrent_level is target number of requests per user. If not, it is the number of simulated users
poisson: # Poisson load shape specific parameters, activate only if load_shape is poisson
arrival-rate: 1.0 # Request arrival rate
namespace: "" # Fill the user-defined namespace. Otherwise, it will be default.
test_cases:
audioqna:
asr:
run_test: true
service_name: "asr-svc" # Replace with your service name
llm:
run_test: true
service_name: "llm-svc" # Replace with your service name
parameters:
model_name: "Intel/neural-chat-7b-v3-3"
max_new_tokens: 128
temperature: 0.01
top_k: 10
top_p: 0.95
repetition_penalty: 1.03
streaming: true
llmserve:
run_test: true
service_name: "llm-svc" # Replace with your service name
tts:
run_test: true
service_name: "tts-svc" # Replace with your service name
e2e:
run_test: true
service_name: "audioqna-backend-server-svc" # Replace with your service name

View File

@@ -127,13 +127,9 @@ curl http://${host_ip}:3002/v1/audio/speech \
## 🚀 Test MegaService
Test the AudioQnA megaservice by recording a .wav file, encoding the file into the base64 format, and then sending the
base64 string to the megaservice endpoint. The megaservice will return a spoken response as a base64 string. To listen
to the response, decode the base64 string and save it as a .wav file.
```bash
curl http://${host_ip}:3008/v1/audioqna \
-X POST \
-d '{"audio": "UklGRigAAABXQVZFZm10IBIAAAABAAEARKwAAIhYAQACABAAAABkYXRhAgAAAAEA", "max_tokens":64}' \
-H 'Content-Type: application/json' | sed 's/^"//;s/"$//' | base64 -d > output.wav
-H 'Content-Type: application/json'
```

View File

@@ -41,7 +41,7 @@ services:
environment:
TTS_ENDPOINT: ${TTS_ENDPOINT}
tgi-service:
image: ghcr.io/huggingface/text-generation-inference:2.4.0-intel-cpu
image: ghcr.io/huggingface/text-generation-inference:sha-e4201f4-intel-cpu
container_name: tgi-service
ports:
- "3006:80"

View File

@@ -1,64 +0,0 @@
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
services:
whisper-service:
image: ${REGISTRY:-opea}/whisper:${TAG:-latest}
container_name: whisper-service
ports:
- "7066:7066"
ipc: host
environment:
no_proxy: ${no_proxy}
http_proxy: ${http_proxy}
https_proxy: ${https_proxy}
restart: unless-stopped
command: --language "zh"
gpt-sovits-service:
image: ${REGISTRY:-opea}/gpt-sovits:${TAG:-latest}
container_name: gpt-sovits-service
ports:
- "9880:9880"
ipc: host
environment:
no_proxy: ${no_proxy}
http_proxy: ${http_proxy}
https_proxy: ${https_proxy}
restart: unless-stopped
tgi-service:
image: ghcr.io/huggingface/text-generation-inference:2.4.0-intel-cpu
container_name: tgi-service
ports:
- "3006:80"
volumes:
- "./data:/data"
shm_size: 1g
environment:
no_proxy: ${no_proxy}
http_proxy: ${http_proxy}
https_proxy: ${https_proxy}
HF_TOKEN: ${HUGGINGFACEHUB_API_TOKEN}
command: --model-id ${LLM_MODEL_ID} --cuda-graphs 0
audioqna-xeon-backend-server:
image: ${REGISTRY:-opea}/audioqna-multilang:${TAG:-latest}
container_name: audioqna-xeon-backend-server
ports:
- "3008:8888"
environment:
- no_proxy=${no_proxy}
- https_proxy=${https_proxy}
- http_proxy=${http_proxy}
- MEGA_SERVICE_HOST_IP=${MEGA_SERVICE_HOST_IP}
- LLM_SERVER_HOST_IP=${LLM_SERVER_HOST_IP}
- LLM_SERVER_PORT=${LLM_SERVER_PORT}
- LLM_MODEL_ID=${LLM_MODEL_ID}
- WHISPER_SERVER_HOST_IP=${WHISPER_SERVER_HOST_IP}
- WHISPER_SERVER_PORT=${WHISPER_SERVER_PORT}
- GPT_SOVITS_SERVER_HOST_IP=${GPT_SOVITS_SERVER_HOST_IP}
- GPT_SOVITS_SERVER_PORT=${GPT_SOVITS_SERVER_PORT}
ipc: host
restart: always
networks:
default:
driver: bridge

View File

@@ -1,7 +0,0 @@
#!/usr/bin/env bash
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
pushd "../../../../../" > /dev/null
source .set_env.sh
popd > /dev/null

View File

@@ -79,8 +79,6 @@ export LLM_SERVICE_PORT=3007
## 🚀 Start the MegaService
> **_NOTE:_** Users will need at least three Gaudi cards for AudioQnA.
```bash
cd GenAIExamples/AudioQnA/docker_compose/intel/hpu/gaudi/
docker compose up -d
@@ -129,13 +127,9 @@ curl http://${host_ip}:3002/v1/audio/speech \
## 🚀 Test MegaService
Test the AudioQnA megaservice by recording a .wav file, encoding the file into the base64 format, and then sending the
base64 string to the megaservice endpoint. The megaservice will return a spoken response as a base64 string. To listen
to the response, decode the base64 string and save it as a .wav file.
```bash
curl http://${host_ip}:3008/v1/audioqna \
-X POST \
-d '{"audio": "UklGRigAAABXQVZFZm10IBIAAAABAAEARKwAAIhYAQACABAAAABkYXRhAgAAAAEA", "max_tokens":64}' \
-H 'Content-Type: application/json' | sed 's/^"//;s/"$//' | base64 -d > output.wav
-H 'Content-Type: application/json'
```

View File

@@ -51,7 +51,7 @@ services:
environment:
TTS_ENDPOINT: ${TTS_ENDPOINT}
tgi-service:
image: ghcr.io/huggingface/tgi-gaudi:2.0.6
image: ghcr.io/huggingface/tgi-gaudi:2.0.5
container_name: tgi-gaudi-server
ports:
- "3006:80"

View File

@@ -1,7 +0,0 @@
#!/usr/bin/env bash
# Copyright (C) 2024 Intel Corporation
# SPDX-License-Identifier: Apache-2.0
pushd "../../../../../" > /dev/null
source .set_env.sh
popd > /dev/null

View File

@@ -53,9 +53,3 @@ services:
dockerfile: comps/tts/speecht5/Dockerfile
extends: audioqna
image: ${REGISTRY:-opea}/tts:${TAG:-latest}
gpt-sovits:
build:
context: GenAIComps
dockerfile: comps/tts/gpt-sovits/Dockerfile
extends: audioqna
image: ${REGISTRY:-opea}/gpt-sovits:${TAG:-latest}

View File

@@ -7,14 +7,14 @@
## Deploy On Xeon
```
cd GenAIExamples/AudioQnA/kubernetes/intel/cpu/xeon/manifest
cd GenAIExamples/AudioQnA/kubernetes/intel/cpu/xeon/manifests
export HUGGINGFACEHUB_API_TOKEN="YourOwnToken"
sed -i "s/insert-your-huggingface-token-here/${HUGGINGFACEHUB_API_TOKEN}/g" audioqna.yaml
kubectl apply -f audioqna.yaml
```
## Deploy On Gaudi
```
cd GenAIExamples/AudioQnA/kubernetes/intel/hpu/gaudi/manifest
cd GenAIExamples/AudioQnA/kubernetes/intel/hpu/gaudi/manifests
export HUGGINGFACEHUB_API_TOKEN="YourOwnToken"
sed -i "s/insert-your-huggingface-token-here/${HUGGINGFACEHUB_API_TOKEN}/g" audioqna.yaml
kubectl apply -f audioqna.yaml

View File

@@ -4,7 +4,7 @@ This document outlines the deployment process for a AudioQnA application utilizi
The AudioQnA Service leverages a Kubernetes operator called genai-microservices-connector(GMC). GMC supports connecting microservices to create pipelines based on the specification in the pipeline yaml file in addition to allowing the user to dynamically control which model is used in a service such as an LLM or embedder. The underlying pipeline language also supports using external services that may be running in public or private cloud elsewhere.
Install GMC in your Kubernetes cluster, if you have not already done so, by following the steps in Section "Getting Started" at [GMC Install](https://github.com/opea-project/GenAIInfra/tree/main/microservices-connector/README.md). Soon as we publish images to Docker Hub, at which point no builds will be required, simplifying install.
Install GMC in your Kubernetes cluster, if you have not already done so, by following the steps in Section "Getting Started" at [GMC Install](https://github.com/opea-project/GenAIInfra/tree/main/microservices-connector). Soon as we publish images to Docker Hub, at which point no builds will be required, simplifying install.
The AudioQnA application is defined as a Custom Resource (CR) file that the above GMC operator acts upon. It first checks if the microservices listed in the CR yaml file are running, if not starts them and then proceeds to connect them. When the AudioQnA pipeline is ready, the service endpoint details are returned, letting you use the application. Should you use "kubectl get pods" commands you will see all the component microservices, in particular `asr`, `tts`, and `llm`.
@@ -25,7 +25,7 @@ The AudioQnA uses the below prebuilt images if you choose a Xeon deployment
Should you desire to use the Gaudi accelerator, two alternate images are used for the embedding and llm services.
For Gaudi:
- tgi-service: ghcr.io/huggingface/tgi-gaudi:2.0.6
- tgi-service: ghcr.io/huggingface/tgi-gaudi:2.0.5
- whisper-gaudi: opea/whisper-gaudi:latest
- speecht5-gaudi: opea/speecht5-gaudi:latest

View File

@@ -247,7 +247,7 @@ spec:
- envFrom:
- configMapRef:
name: audio-qna-config
image: "ghcr.io/huggingface/text-generation-inference:2.4.0-intel-cpu"
image: "ghcr.io/huggingface/text-generation-inference:sha-e4201f4-intel-cpu"
name: llm-dependency-deploy-demo
securityContext:
capabilities:

View File

@@ -271,7 +271,7 @@ spec:
- envFrom:
- configMapRef:
name: audio-qna-config
image: ghcr.io/huggingface/tgi-gaudi:2.0.6
image: ghcr.io/huggingface/tgi-gaudi:2.0.5
name: llm-dependency-deploy-demo
securityContext:
capabilities:

View File

@@ -22,7 +22,7 @@ function build_docker_images() {
service_list="audioqna whisper-gaudi asr llm-tgi speecht5-gaudi tts"
docker compose -f build.yaml build ${service_list} --no-cache > ${LOG_PATH}/docker_image_build.log
docker pull ghcr.io/huggingface/tgi-gaudi:2.0.6
docker pull ghcr.io/huggingface/tgi-gaudi:2.0.5
docker images && sleep 1s
}
@@ -100,7 +100,7 @@ function validate_megaservice() {
#
# sed -i "s/localhost/$ip_address/g" playwright.config.ts
#
## conda install -c conda-forge nodejs=22.6.0 -y
## conda install -c conda-forge nodejs -y
# npm install && npm ci && npx playwright install --with-deps
# node -v && npm -v && pip list
#

View File

@@ -22,7 +22,7 @@ function build_docker_images() {
service_list="audioqna whisper asr llm-tgi speecht5 tts"
docker compose -f build.yaml build ${service_list} --no-cache > ${LOG_PATH}/docker_image_build.log
docker pull ghcr.io/huggingface/tgi-gaudi:2.0.6
docker pull ghcr.io/huggingface/tgi-gaudi:2.0.5
docker images && sleep 1s
}
@@ -90,7 +90,7 @@ function validate_megaservice() {
#
# sed -i "s/localhost/$ip_address/g" playwright.config.ts
#
## conda install -c conda-forge nodejs=22.6.0 -y
## conda install -c conda-forge nodejs -y
# npm install && npm ci && npx playwright install --with-deps
# node -v && npm -v && pip list
#

View File

@@ -23,4 +23,4 @@ RUN npm run build
EXPOSE 5173
# Run the front-end application in preview mode
CMD ["npm", "run", "preview", "--", "--port", "5173", "--host", "0.0.0.0"]
CMD ["npm", "run", "preview", "--", "--port", "5173", "--host", "0.0.0.0"]

View File

@@ -79,4 +79,4 @@ a.btn {
.w-12\/12 {
width: 100%
}
}

View File

@@ -89,4 +89,4 @@
<stop offset="1" stop-color="#3300FF" stop-opacity="0.2" />
</linearGradient>
</defs>
</svg>
</svg>

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@@ -89,4 +89,4 @@
<stop offset="1" stop-color="#f3f4f6" stop-opacity="0" />
</linearGradient>
</defs>
</svg>
</svg>

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@@ -76,4 +76,4 @@
<stop offset="1" stop-color="#9CFFED" stop-opacity="0" />
</linearGradient>
</defs>
</svg>
</svg>

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@@ -76,4 +76,4 @@
<stop offset="1" stop-color="#6141E1" stop-opacity="0" />
</linearGradient>
</defs>
</svg>
</svg>

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@@ -89,4 +89,4 @@
<stop offset="1" stop-color="#3300FF" stop-opacity="0" />
</linearGradient>
</defs>
</svg>
</svg>

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@@ -3,4 +3,4 @@
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d="M512 1024a512 512 0 1 1 512-512 512 512 0 0 1-512 512z m0-896a384 384 0 1 0 384 384A384 384 0 0 0 512 128z m128 576h-256a64 64 0 0 1-64-64v-256a64 64 0 0 1 64-64h256a64 64 0 0 1 64 64v256a64 64 0 0 1-64 64z"
fill="#d81e06" p-id="3104"></path>
</svg>
</svg>

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@@ -1 +1 @@
<svg t="1713431562066" class="icon" viewBox="0 0 1024 1024" version="1.1" xmlns="http://www.w3.org/2000/svg" p-id="6399" width="32" height="32"><path d="M592 768h-160c-26.6 0-48-21.4-48-48V384h-175.4c-35.6 0-53.4-43-28.2-68.2L484.6 11.4c15-15 39.6-15 54.6 0l304.4 304.4c25.2 25.2 7.4 68.2-28.2 68.2H640v336c0 26.6-21.4 48-48 48z m432-16v224c0 26.6-21.4 48-48 48H48c-26.6 0-48-21.4-48-48V752c0-26.6 21.4-48 48-48h272v16c0 61.8 50.2 112 112 112h160c61.8 0 112-50.2 112-112v-16h272c26.6 0 48 21.4 48 48z m-248 176c0-22-18-40-40-40s-40 18-40 40 18 40 40 40 40-18 40-40z m128 0c0-22-18-40-40-40s-40 18-40 40 18 40 40 40 40-18 40-40z" p-id="6400" fill="#ffffff"></path></svg>
<svg t="1713431562066" class="icon" viewBox="0 0 1024 1024" version="1.1" xmlns="http://www.w3.org/2000/svg" p-id="6399" width="32" height="32"><path d="M592 768h-160c-26.6 0-48-21.4-48-48V384h-175.4c-35.6 0-53.4-43-28.2-68.2L484.6 11.4c15-15 39.6-15 54.6 0l304.4 304.4c25.2 25.2 7.4 68.2-28.2 68.2H640v336c0 26.6-21.4 48-48 48z m432-16v224c0 26.6-21.4 48-48 48H48c-26.6 0-48-21.4-48-48V752c0-26.6 21.4-48 48-48h272v16c0 61.8 50.2 112 112 112h160c61.8 0 112-50.2 112-112v-16h272c26.6 0 48 21.4 48 48z m-248 176c0-22-18-40-40-40s-40 18-40 40 18 40 40 40 40-18 40-40z m128 0c0-22-18-40-40-40s-40 18-40 40 18 40 40 40 40-18 40-40z" p-id="6400" fill="#ffffff"></path></svg>

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@@ -6,4 +6,4 @@
<path
d="M864 479.776 864 352c0-17.664-14.304-32-32-32s-32 14.336-32 32l0 127.776c0 160.16-129.184 290.464-288 290.464-158.784 0-288-130.304-288-290.464L224 352c0-17.664-14.336-32-32-32s-32 14.336-32 32l0 127.776c0 184.608 140.864 336.48 320 352.832L480 896 288 896c-17.664 0-32 14.304-32 32s14.336 32 32 32l448 0c17.696 0 32-14.304 32-32s-14.304-32-32-32l-192 0 0-63.36C723.136 816.256 864 664.384 864 479.776z"
fill="#707070" p-id="2962"></path>
</svg>
</svg>

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@@ -1,8 +0,0 @@
*.safetensors
*.bin
*.model
*.log
docker_compose/intel/cpu/xeon/data
docker_compose/intel/hpu/gaudi/data
inputs/
outputs/

View File

@@ -1,105 +0,0 @@
# AvatarChatbot Application
The AvatarChatbot service can be effortlessly deployed on either Intel Gaudi2 or Intel XEON Scalable Processors.
## AI Avatar Workflow
The AI Avatar example is implemented using both megaservices and the component-level microservices defined in [GenAIComps](https://github.com/opea-project/GenAIComps). The flow chart below shows the information flow between different megaservices and microservices for this example.
```mermaid
---
config:
flowchart:
nodeSpacing: 100
rankSpacing: 100
curve: linear
themeVariables:
fontSize: 42px
---
flowchart LR
classDef blue fill:#ADD8E6,stroke:#ADD8E6,stroke-width:2px,fill-opacity:0.5
classDef thistle fill:#D8BFD8,stroke:#ADD8E6,stroke-width:2px,fill-opacity:0.5
classDef orange fill:#FBAA60,stroke:#ADD8E6,stroke-width:2px,fill-opacity:0.5
classDef orchid fill:#C26DBC,stroke:#ADD8E6,stroke-width:2px,fill-opacity:0.5
classDef invisible fill:transparent,stroke:transparent;
style AvatarChatbot-Megaservice stroke:#000000
subgraph AvatarChatbot-Megaservice["AvatarChatbot Megaservice"]
direction LR
ASR([ASR Microservice]):::blue
LLM([LLM Microservice]):::blue
TTS([TTS Microservice]):::blue
animation([Animation Microservice]):::blue
end
subgraph UserInterface["User Interface"]
direction LR
invis1[ ]:::invisible
USER1([User Audio Query]):::orchid
USER2([User Image/Video Query]):::orchid
UI([UI server<br>]):::orchid
end
GW([AvatarChatbot GateWay<br>]):::orange
subgraph .
direction LR
X([OPEA Microservice]):::blue
Y{{Open Source Service}}:::thistle
Z([OPEA Gateway]):::orange
Z1([UI]):::orchid
end
WHISPER{{Whisper service}}:::thistle
TGI{{LLM service}}:::thistle
T5{{Speecht5 service}}:::thistle
WAV2LIP{{Wav2Lip service}}:::thistle
%% Connections %%
direction LR
USER1 -->|1| UI
UI -->|2| GW
GW <==>|3| AvatarChatbot-Megaservice
ASR ==>|4| LLM ==>|5| TTS ==>|6| animation
direction TB
ASR <-.->|3'| WHISPER
LLM <-.->|4'| TGI
TTS <-.->|5'| T5
animation <-.->|6'| WAV2LIP
USER2 -->|1| UI
UI <-.->|6'| WAV2LIP
```
## Deploy AvatarChatbot Service
The AvatarChatbot service can be deployed on either Intel Gaudi2 AI Accelerator or Intel Xeon Scalable Processor.
### Deploy AvatarChatbot on Gaudi
Refer to the [Gaudi Guide](./docker_compose/intel/hpu/gaudi/README.md) for instructions on deploying AvatarChatbot on Gaudi, and on setting up an UI for the application.
### Deploy AvatarChatbot on Xeon
Refer to the [Xeon Guide](./docker_compose/intel/cpu/xeon/README.md) for instructions on deploying AvatarChatbot on Xeon.
## Supported Models
### ASR
The default model is [openai/whisper-small](https://huggingface.co/openai/whisper-small). It also supports all models in the Whisper family, such as `openai/whisper-large-v3`, `openai/whisper-medium`, `openai/whisper-base`, `openai/whisper-tiny`, etc.
To replace the model, please edit the `compose.yaml` and add the `command` line to pass the name of the model you want to use:
```yaml
services:
whisper-service:
...
command: --model_name_or_path openai/whisper-tiny
```
### TTS
The default model is [microsoft/SpeechT5](https://huggingface.co/microsoft/speecht5_tts). We currently do not support replacing the model. More models under the commercial license will be added in the future.
### Animation
The default model is [Rudrabha/Wav2Lip](https://github.com/Rudrabha/Wav2Lip) and [TencentARC/GFPGAN](https://github.com/TencentARC/GFPGAN). We currently do not support replacing the model. More models under the commercial license such as [OpenTalker/SadTalker](https://github.com/OpenTalker/SadTalker) will be added in the future.

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