|
--- |
|
title: ask.py |
|
app_file: ask.py |
|
sdk: gradio |
|
sdk_version: 5.3.0 |
|
license: mit |
|
pinned: true |
|
short_description: A single Python program as an AI-search engine |
|
--- |
|
# ask.py |
|
|
|
[](LICENSE) |
|
|
|
A single Python program to implement the search-extract-summarize flow, similar to AI search |
|
engines such as Perplexity. |
|
|
|
- You can run it on command line or with a GradIO UI. |
|
- You can control the output behavior, e.g., extract structured data or change output language, |
|
- You can control the search behavior, e.g., restrict to a specific site or date, or just scrape |
|
a specified list of URLs. |
|
- You can run it in a cron job or bash script to automate complex search/data extraction tasks. |
|
|
|
We have a running UI example [in HuggingFace Spaces](https://huggingface.co/spaces/leettools/AskPy). |
|
|
|
 |
|
|
|
> [!NOTE] |
|
> |
|
> - Our main goal is to illustrate the basic concepts of AI search engines with the raw constructs. |
|
> Performance or scalability is not in the scope of this program. |
|
> - We are planning to open source a real search-enabled AI toolset with real DB setup, real document |
|
> pipeline, and real query engine soon. Star and watch this repo for updates! |
|
|
|
> [UPDATE] |
|
> |
|
> - 2024-11-10: add Chonkie as the default chunker |
|
> - 2024-10-28: add extract function as a new output mode |
|
> - 2024-10-25: add hybrid search demo using DuckDB full-text search |
|
> - 2024-10-22: add GradIO integation |
|
> - 2024-10-21: use DuckDB for the vector search and use API for embedding |
|
> - 2024-10-20: allow to specify a list of input urls |
|
> - 2024-10-18: output-language and output-length parameters for LLM |
|
> - 2024-10-18: date-restrict and target-site parameters for seach |
|
|
|
## The search-extract-summarize flow |
|
|
|
Given a query, the program will |
|
|
|
- search Google for the top 10 web pages |
|
- crawl and scape the pages for their text content |
|
- chunk the text content into chunks and save them into a vectordb |
|
- perform a vector search with the query and find the top 10 matched chunks |
|
- [Optional] search using full-text search and combine the results with the vector search |
|
- [Optional] use a reranker to re-rank the top chunks |
|
- use the top chunks as the context to ask an LLM to generate the answer |
|
- output the answer with the references |
|
|
|
Of course this flow is a very simplified version of the real AI search engines, but it is a good |
|
starting point to understand the basic concepts. |
|
|
|
One benefit is that we can manipulate the search function and output format. |
|
|
|
For example, we can: |
|
|
|
- search with date-restrict to only retrieve the latest information. |
|
- search within a target-site to only create the answer from the contents from it. |
|
- ask LLM to use a specific language to answer the question. |
|
- ask LLM to answer with a specific length. |
|
- crawl a specific list of urls and answer based on those contents only. |
|
|
|
## Quick start |
|
|
|
```bash |
|
# recommend to use Python 3.10 or later and use venv or conda to create a virtual environment |
|
% pip install -r requirements.txt |
|
|
|
# modify .env file to set the API keys or export them as environment variables as below |
|
|
|
# right now we use Google search API |
|
% export SEARCH_API_KEY="your-google-search-api-key" |
|
% export SEARCH_PROJECT_KEY="your-google-cx-key" |
|
|
|
# right now we use OpenAI API |
|
% export LLM_API_KEY="your-openai-api-key" |
|
|
|
# By default, the program will start a web UI. See GradIO Deployment section for more info. |
|
# Run the program on command line with -c option |
|
% python ask.py -c -q "What is an LLM agent?" |
|
|
|
# we can specify more parameters to control the behavior such as date_restrict and target_site |
|
% python ask.py --help |
|
Usage: ask.py [OPTIONS] |
|
|
|
Search web for the query and summarize the results. |
|
|
|
Options: |
|
-q, --query TEXT Query to search |
|
-o, --output-mode [answer|extract] |
|
Output mode for the answer, default is a |
|
simple answer |
|
-d, --date-restrict INTEGER Restrict search results to a specific date |
|
range, default is no restriction |
|
-s, --target-site TEXT Restrict search results to a specific site, |
|
default is no restriction |
|
--output-language TEXT Output language for the answer |
|
--output-length INTEGER Output length for the answer |
|
--url-list-file TEXT Instead of doing web search, scrape the |
|
target URL list and answer the query based |
|
on the content |
|
--extract-schema-file TEXT Pydantic schema for the extract mode |
|
--inference-model-name TEXT Model name to use for inference |
|
--hybrid-search Use hybrid search mode with both vector |
|
search and full-text search |
|
-c, --run-cli Run as a command line tool instead of |
|
launching the Gradio UI |
|
-l, --log-level [DEBUG|INFO|WARNING|ERROR] |
|
Set the logging level [default: INFO] |
|
--help Show this message and exit. |
|
``` |
|
|
|
## Libraries and APIs used |
|
|
|
- [Google Search API](https://developers.google.com/custom-search/v1/overview) |
|
- [OpenAI API](https://beta.openai.com/docs/api-reference/completions/create) |
|
- [Jinja2](https://jinja.palletsprojects.com/en/3.0.x/) |
|
- [bs4](https://www.crummy.com/software/BeautifulSoup/bs4/doc/) |
|
- [DuckDB](https://github.com/duckdb/duckdb) |
|
- [GradIO](https://github.com/gradio-app/gradio) |
|
- [Chonkie](https://github.com/bhavnicksm/chonkie) |
|
|
|
## GradIO Deployment |
|
|
|
> [!NOTE] |
|
> Original GradIO app-sharing document [here](https://www.gradio.app/guides/sharing-your-app). |
|
|
|
### Quick test and sharing |
|
|
|
By default, the program will start a web UI and share through GradIO. |
|
|
|
```bash |
|
% python ask.py |
|
* Running on local URL: http://127.0.0.1:7860 |
|
* Running on public URL: https://77c277af0330326587.gradio.live |
|
|
|
# you can also specify SHARE_GRADIO_UI to only run locally |
|
% export SHARE_GRADIO_UI=False |
|
% python ask.py |
|
* Running on local URL: http://127.0.0.1:7860 |
|
``` |
|
|
|
### To share a more permanent link using HuggingFace Spaces |
|
|
|
- First, you need to [create a free HuggingFace account](https://huggingface.co/welcome). |
|
- Then in your [settings/token page](https://huggingface.co/settings/tokens), create a new token with Write permissions. |
|
- In your terminal, run the following commands in you app directory to deploy your program to |
|
HuggingFace Spaces: |
|
|
|
```bash |
|
% pip install gradio |
|
% gradio deploy |
|
Creating new Spaces Repo in '/home/you/ask.py'. Collecting metadata, press Enter to accept default value. |
|
Enter Spaces app title [ask.py]: ask.py |
|
Enter Gradio app file [ask.py]: |
|
Enter Spaces hardware (cpu-basic, cpu-upgrade, t4-small, t4-medium, l4x1, l4x4, zero-a10g, a10g-small, a10g-large, a10g-largex2, a10g-largex4, a100-large, v5e-1x1, v5e-2x2, v5e-2x4) [cpu-basic]: |
|
Any Spaces secrets (y/n) [n]: y |
|
Enter secret name (leave blank to end): SEARCH_API_KEY |
|
Enter secret value for SEARCH_API_KEY: YOUR_SEARCH_API_KEY |
|
Enter secret name (leave blank to end): SEARCH_PROJECT_KEY |
|
Enter secret value for SEARCH_API_KEY: YOUR_SEARCH_PROJECT_KEY |
|
Enter secret name (leave blank to end): LLM_API_KEY |
|
Enter secret value for LLM_API_KEY: YOUR_LLM_API_KEY |
|
Enter secret name (leave blank to end): |
|
Create Github Action to automatically update Space on 'git push'? [n]: n |
|
Space available at https://huggingface.co/spaces/your_user_name/ask.py |
|
``` |
|
|
|
Now you can use the HuggingFace space app to run your queries. |
|
|
|
## Use Cases |
|
|
|
- [Search like Perplexity](demos/search_and_answer.md) |
|
- [Only use the latest information from a specific site](demos/search_on_site_and_date.md) |
|
- [Extract information from web search results](demos/search_and_extract.md) |