Query local or remote data files with natural language queries powered by OpenAI and DuckDB.
Project description
qabot
Query local or remote files with natural language queries powered by
OpenAI's gpt
and duckdb
🦆.
Can query Wikidata, local and remote files.
Installation
Install with pipx:
pipx install qabot
Command Line Usage
$ EXPORT OPENAI_API_KEY=sk-...
$ EXPORT QABOT_MODEL_NAME=gpt-4
$ qabot -w -q "How many Hospitals are there located in Beijing"
Query: How many Hospitals are there located in Beijing
There are 39 hospitals located in Beijing.
Total tokens 1749 approximate cost in USD: 0.05562
Python Usage
from qabot import ask_wikidata, ask_file
print(ask_wikidata("How many hospitals are there in New Zealand?"))
print(ask_file("How many men were aboard the titanic?", 'data/titanic.csv'))
Output:
There are 54 hospitals in New Zealand.
There were 577 male passengers on the Titanic.
Features
Works on local CSV files:
remote CSV files:
$ qabot -f https://duckdb.org/data/holdings.csv -q "Tell me how many Apple holdings I currently have"
🦆 Creating local DuckDB database...
🦆 Loading data...
create view 'holdings' as select * from 'https://duckdb.org/data/holdings.csv';
🚀 Sending query to LLM
🧑 Tell me how many Apple holdings I currently have
🤖 You currently have 32.23 shares of Apple.
This information was obtained by summing up all the Apple ('APPL') shares in the holdings table.
SELECT SUM(shares) as total_shares FROM holdings WHERE ticker = 'APPL'
Even on (public) data stored in S3:
You can even load data from disk/URL via the natural language query:
Load the file 'data/titanic.csv' into a table called 'raw_passengers'. Create a view of the raw passengers table for just the male passengers. What was the average fare for surviving male passengers?
~/Dev/qabot> qabot -q "Load the file 'data/titanic.csv' into a table called 'raw_passengers'. Create a view of the raw passengers table for just the male passengers. What was the average fare for surviving male passengers?" -v
🦆 Creating local DuckDB database...
🤖 Using model: gpt-4-1106-preview. Max LLM/function iterations before answer 20
🚀 Sending query to LLM
🧑 Load the file 'data/titanic.csv' into a table called 'raw_passengers'. Create a view of the raw passengers table for just the male passengers. What was the
average fare for surviving male passengers?
🤖 load_data
{'files': ['data/titanic.csv']}
🦆 Imported with SQL:
["create table 'titanic' as select * from 'data/titanic.csv';"]
🤖 execute_sql
{'query': "CREATE VIEW male_passengers AS SELECT * FROM titanic WHERE Sex = 'male';"}
🦆 No output
🤖 execute_sql
{'query': 'SELECT AVG(Fare) as average_fare FROM male_passengers WHERE Survived = 1;'}
🦆 average_fare
40.82148440366974
🦆 {"summary": "The average fare for surviving male passengers was approximately $40.82.", "detail": "The average fare for surviving male passengers was
calculated by creating a view called `male_passengers` to filter only the male passengers from the `titanic` table, and then running a query to calculate the
average fare for male passengers who survived. The calculated average fare is approximately $40.82.", "query": "CREATE VIEW male_passengers AS SELECT * FROM
titanic WHERE Sex = 'male';\nSELECT AVG(Fare) as average_fare FROM male_passengers WHERE Survived = 1;"}
🚀 Question:
🧑 Load the file 'data/titanic.csv' into a table called 'raw_passengers'. Create a view of the raw passengers table for just the male passengers. What was the
average fare for surviving male passengers?
🤖 The average fare for surviving male passengers was approximately $40.82.
The average fare for surviving male passengers was calculated by creating a view called `male_passengers` to filter only the male passengers from the `titanic`
table, and then running a query to calculate the average fare for male passengers who survived. The calculated average fare is approximately $40.82.
CREATE VIEW male_passengers AS SELECT * FROM titanic WHERE Sex = 'male';
SELECT AVG(Fare) as average_fare FROM male_passengers WHERE Survived = 1;
Quickstart
You need to set the OPENAI_API_KEY
environment variable to your OpenAI API key,
which you can get from here.
Install the qabot
command line tool using pip/pipx:
$ pip install -U qabot
Then run the qabot
command with either local files (-f my-file.csv
) or -w
to query wikidata.
Examples
Local CSV file/s
$ qabot -q "how many passengers survived by gender?" -f data/titanic.csv
🦆 Loading data from files...
Loading data/titanic.csv into table titanic...
Query: how many passengers survived by gender?
Result:
There were 233 female passengers and 109 male passengers who survived.
🚀 any further questions? [y/n] (y): y
🚀 Query: what was the largest family who did not survive?
Query: what was the largest family who did not survive?
Result:
The largest family who did not survive was the Sage family, with 8 members.
🚀 any further questions? [y/n] (y): n
Query WikiData
Use the -w
flag to query wikidata. For best results use a gpt-4
or similar model.
$ EXPORT QABOT_MODEL_NAME=gpt-4
$ qabot -w -q "How many Hospitals are there located in Beijing"
Intermediate steps and database queries
Use the -v
flag to see the intermediate steps and database queries.
Sometimes it takes a long route to get to the answer, but it's interesting to see how it gets there.
qabot -f data/titanic.csv -q "how many passengers survived by gender?" -v
Data accessed via http/s3
Use the -f <url>
flag to load data from a url, e.g. a csv file on s3:
$ qabot -f s3://covid19-lake/enigma-jhu-timeseries/csv/jhu_csse_covid_19_timeseries_merged.csv -q "how many confirmed cases of covid are there?" -v
🦆 Loading data from files...
create table jhu_csse_covid_19_timeseries_merged as select * from 's3://covid19-lake/enigma-jhu-timeseries/csv/jhu_csse_covid_19_timeseries_merged.csv';
Result:
264308334 confirmed cases
Ideas
-
streaming mode to output results as they come in
-
token limits
-
Supervisor agent - assess whether a query is "safe" to run, could ask for user confirmation to run anything that gets flagged.
-
Often we can zero-shot the question and get a single query out - perhaps we try this before the MKL chain
-
test each zeroshot agent individually
-
Generate and pass back assumptions made to the user
-
Add an optional "clarify" tool to the chain that asks the user to clarify the question
-
Create a query checker tool that checks if the query looks valid and/or safe
-
Inject AWS credentials into duckdb so we can access private resources in S3
-
Automatic publishing to pypi. Look at https://blog.pypi.org/posts/2023-04-20-introducing-trusted-publishers/
Project details
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