Updated template description (#4744)

### What problem does this PR solve?



### Type of change


- [x] Documentation Update
This commit is contained in:
writinwaters 2025-02-06 17:14:13 +08:00 committed by GitHub
parent fe9e9a644f
commit e786f596e2
No known key found for this signature in database
GPG Key ID: B5690EEEBB952194
5 changed files with 7 additions and 7 deletions

View File

@ -1,7 +1,7 @@
{
"id": 10,
"title": "Research Report Generator",
"description": "This generator can produce a research report based on the given title and language. It decomposes into sub-titles and queries to search engine from different angles, and generates sections based on search engine results and comprehension of the sub-titles.",
"title": "Research report generator",
"description": "A report generator that creates a research report from a given title, in the specified target language. It generates queries from the input title, then uses these to create subtitles and sections, compiling everything into a comprehensive report.",
"canvas_type": "chatbot",
"dsl": {
"answer": [],

View File

@ -23,7 +23,7 @@ Please note that some of your settings may consume a significant amount of time.
- In the **Prompt Engine** tab of your **Chat Configuration** dialogue, disabling **Multi-turn optimization** will reduce the time required to get an answer from the LLM.
- In the **Prompt Engine** tab of your **Chat Configuration** dialogue, leaving the **Rerank model** field empty will significantly decrease retrieval time.
- In the **Assistant Setting** tab of your **Chat Configuration** dialogue, disabling **Keyword analysis** will reduce the time to get get an answer from the LLM.
- In the **Assistant Setting** tab of your **Chat Configuration** dialogue, disabling **Keyword analysis** will reduce the time to receive an answer from the LLM.
- When chatting with your chat assistant, click the light bulb icon above the *current* dialogue and scroll down the popup window to view the time taken for each task:
![enlighten](https://github.com/user-attachments/assets/fedfa2ee-21a7-451b-be66-20125619923c)

View File

@ -35,7 +35,7 @@ A guide explaining how to build a RAGFlow Docker image from its source code. By
This image is approximately 2 GB in size and relies on external LLM and embedding services.
:::tip NOTE
While we also test RAGFlow on ARM64 platforms, we do not plan to maintain RAGFlow Docker images for ARM. However, you can build an image yourself on a `linux/arm64` or `darwin/arm64` host machine as well.
While we also test RAGFlow on ARM64 platforms, we do not maintain RAGFlow Docker images for ARM. However, you can build an image yourself on a `linux/arm64` or `darwin/arm64` host machine as well.
:::
```bash
@ -51,7 +51,7 @@ docker build --build-arg LIGHTEN=1 -f Dockerfile -t infiniflow/ragflow:nightly-s
This image is approximately 9 GB in size. As it includes embedding models, it relies on external LLM services only.
:::tip NOTE
While we also test RAGFlow on ARM64 platforms, we do not plan to maintain RAGFlow Docker images for ARM. However, you can build an image yourself on a `linux/arm64` or `darwin/arm64` host machine.
While we also test RAGFlow on ARM64 platforms, we do not maintain RAGFlow Docker images for ARM. However, you can build an image yourself on a `linux/arm64` or `darwin/arm64` host machine.
:::
```bash

View File

@ -18,7 +18,7 @@ This quick start guide describes a general process from:
- Establishing an AI chat based on your datasets.
:::danger IMPORTANT
We officially support x86 CPU and Nvidia GPU, and this document offers instructions on deploying RAGFlow using Docker on x86 platforms. While we also test RAGFlow on ARM64 platforms, we do not plan to maintain RAGFlow Docker images for ARM.
We officially support x86 CPU and Nvidia GPU, and this document offers instructions on deploying RAGFlow using Docker on x86 platforms. While we also test RAGFlow on ARM64 platforms, we do not maintain RAGFlow Docker images for ARM.
If you are on an ARM platform, follow [this guide](https://ragflow.io/docs/dev/build_docker_image) to build a RAGFlow Docker image.
:::

View File

@ -274,7 +274,7 @@ Released on May 31, 2024.
- Supports ARM64 platforms.
:::danger IMPORTANT
While we also test RAGFlow on ARM64 platforms, we do not plan to maintain RAGFlow Docker images for ARM.
While we also test RAGFlow on ARM64 platforms, we do not maintain RAGFlow Docker images for ARM.
If you are on an ARM platform, follow [this guide](https://ragflow.io/docs/dev/build_docker_image) to build a RAGFlow Docker image.
:::