Two obvious implications:
The search feature with instant answering will divert traffic away from the content pieces as defined by the human contributions (questions, answers) and will have implications on the motivations of those content providers. It's not so much different from ChatGPT. But there is a difference between writing something that others read or writing something that an algorithm uses to present something that others read. It kind of destroys the sense of direct interaction and could have big effects on the motivation of content providers. There is big danger for you ahead of killing your own content base. Keep this effect in mind!
You talk about helping users crafting high-quality questions. Sorry, but you may be too naive there. If anything, the past has shown how incredibly difficult that is. There is a very, very high risk that you'll fail there, the combination of a confused user and some smug AI could prove deadly. Be very careful there. (I don't say that in small doses with human supervision AI couldn't be helpful with question asking, just that the envisioned approach "should I craft a high-quality question for you sir" may not be feasible). Maybe better start with identifying existing duplicates instead or something similar and much simpler tasks.
The more unclear implication is that I wonder how much garbage (low-quality content) will be produced there (both in AI-powered search and in question asking). Should GenAI be renamed into GarbageAI?
As an addition, here is my self-experiment trying to implement manually the search you seem to envision and learning from it.
Step 1: I need a test question.
I looked at the top scored Python questions (because I have expertise there). I settled for How do I select rows from a DataFrame based on column values? which is not too difficult to answer and with nearly 6 million visits also fairly common. A well implemented search should be able to instantly answer that. I slightly reformulate the question as: "How can I select all rows in a DataFrame where the column values follow a condition in Python?" to make it realistic.
Step 2: Search for the question with Stack Overflow search
Oh. That only gives three results and not the original question I was looking for.
Step 3: Search for the question with Google and restrict results to Stack Overflow
That worked better. The second result is the one I'm looking for.
Step 4: Take the highest voted answers from the first four distinct questions in the search result and merge the text. If some of them are closed, take instead the duplicate target.
I took this, this, this and this answer. I simply selected the text on the displayed webpage in the browser.
Step 5: Ask ChatGPT to summarize the content of these four answers. My (naive?) prompt was "Please summarize the following text:"
The summary consists of 10 bullet points and 269 words.
The given text provides explanations and examples of using pandas DataFrame indexing and selection methods. Here's a summary of the main points:
To select rows based on the condition that any value in the row is greater than a specified value (value = 123
), you can use df[df.gt(value).any(axis=1)]
.
To select rows based on the condition that any value in a specific column is greater than a specified value (value = 123
), you can use df.loc[:, df.gt(value).any(axis=0)]
.
To select rows whose column value equals a scalar (some_value
), use df.loc[df['column_name'] == some_value]
.
To select rows whose column value is in an iterable (some_values
), use df.loc[df['column_name'].isin(some_values)]
.
Combine multiple conditions using the &
operator and remember to use parentheses to ensure proper operator precedence. For example, df.loc[(df['column_name'] >= A) & (df['column_name'] <= B)]
.
To select rows whose column value does not equal a specific value (some_value
), use df.loc[df['column_name'] != some_value]
.
To select rows whose column value is not in an iterable (some_values
), use df.loc[~df['column_name'].isin(some_values)]
.
The provided example creates a pandas DataFrame and demonstrates the usage of the previously explained methods for selecting rows based on specific conditions.
The example also shows how to use df.eq
to check if any value in the DataFrame is equal to 1 and then use df.any(axis=1)
to return True for rows where any of the column values have 1.
If you have a list of columns (myColumns
), you can use df.loc[df[myColumns].all(1)]
to select rows where all the specified columns have non-zero values.
Remember that pandas DataFrame indexing and selection methods provide powerful tools for data manipulation and filtering.
That's a bit too long for a quick and instant answer. I was specifically looking for df.loc[df['column_name'] == X]
or similar. Also the last paragraph is hallucinated (and not very informative). None of the input states that.
Step 6: Try to get a more condensed output
The follow-up prompt "Please give a more condensed output" results in 6 bullet points where 4 original bullet points are merged into one. Followed up by "Please report only the most important information in the text" still results in 5 bullet points:
The most important information in the text is about the different methods for selecting rows in a pandas DataFrame based on specific conditions:
Use df[df.gt(value).any(axis=1)]
to select rows with any value greater than a specified value.
For selecting rows based on specific column values:
- Use
df.loc[df['column_name'] == some_value]
for equal to scalar condition.
- Use
df.loc[df['column_name'].isin(some_values)]
for values in an iterable.
- Use
df.loc[df['column_name'] != some_value]
for not equal to scalar >condition.
- Use
df.loc[~df['column_name'].isin(some_values)]
for values not in an >iterable.
Combine multiple conditions using &
with parentheses: df.loc[(df['column_name'] >= A) & (df['column_name'] <= B)]
.
To select rows where any value in the DataFrame is equal to 1, use df[df.eq(1).any(axis=1)]
.
For selecting rows where all specified columns have non-zero values, use df.loc[df[myColumns].all(1)]
.
It's still too much, although I would in principle say that bullet point two is very helpful.
Step 7: Control: Ask ChatGPT directly
That gives
To select all rows in a DataFrame where the column values follow a specific condition in Python, you can use boolean indexing or the .loc[]
method. Here's how you can do it:
Suppose you have a DataFrame named df
, and you want to select rows where a specific column, say column_name
, satisfies a condition, such as being greater than a certain value threshold
.
- Using Boolean Indexing:
# Assuming 'df' is your DataFrame and 'column_name' is the column you want to filter >on.
# 'threshold' is the value used for filtering.
# Boolean indexing to filter rows based on the condition
filtered_df = df[df['column_name'] > threshold]
- Using
.loc[]
:
# Assuming 'df' is your DataFrame and 'column_name' is the column you want to filter >on.
# 'threshold' is the value used for filtering.
# Use .loc[] method to select rows based on the condition
filtered_df = df.loc[df['column_name'] > threshold]
Both methods will return a new DataFrame called filtered_df
, containing only the >rows where the values in the specified column meet the given condition. The original >DataFrame df
remains unchanged.
You can replace 'column_name'
with the name of the column you want to use for the >condition, and threshold
with the specific value you want to use as the condition.
My conclusions (from N=1 with some adhoc prompts)
The summaries are very verbose. It's difficult to reduce the output to say only the most important information. With the right prompt that may be possible.
- The lack of links in AI generated output (to documentation for example) is a drawback compared to human-created content.
- The direct ChatGPT output isn't so much worse. Does it really give a benefit of using SO answers and summarizing them over using ChatGPT directly?
- There may be some garbage in it, but for such popular questions actually not that much. For more specialized question it could be much worse however.
- But even here my impression is that I would rather like to read the human-written answers because they are higher quality and give better context. Better search is helpful. An AI written summary of human-written content? Doubtful.
P.S.: With the prompt "Limit the response to 50 words or less, I get 56 words (just the most important pieces).
Methods for selecting rows in a pandas DataFrame:
df[df.gt(value).any(axis=1)]
for values greater than a specified value.
df.loc[df['column_name'] == some_value]
for equal values.
df.loc[df['column_name'].isin(some_values)]
for values in an iterable.
df.loc[df['column_name'] != some_value]
for values not equal to a scalar.
df[df.eq(1).any(axis=1)]
for values equal to 1 in the DataFrame.
df.loc[df[myColumns].all(1)]
for rows with non-zero values in specified columns.
And with "limit the response to 20 words or less" I get
Methods for selecting rows in pandas DataFrame: > df[df.gt(value).any(axis=1)]
, df.loc[df['column_name'] == some_value]
, and more.
which might be something valuable for people interested in a quick piece of information.
P.S. Could comments be meaningfully included in a summary, especially if they partly contradict the content was a question by camille in a comment. Here is my self-trial with Should I use the datetime or timestamp data type in MySQL? The top most answer by blivet has highly scored comments by MattBianco and OZ_. If I ask ChatGPT to summarize the answer or to summarize the answer including both comments, the results are different and if answer text and comment text is both used, content from the content is used although the quality is difficult to access. It depends on the shortening and some context is presumably lost.
Just the summary of the answer
Timestamps in MySQL are used to track record changes and can be updated whenever the record changes. For storing a specific value, use a datetime field. If choosing between a UNIX timestamp or MySQL datetime field, prefer the native DATETIME format for easy calculations within MySQL and converting to a UNIX timestamp when querying with PHP.
Summary of answer and comments
Timestamps in MySQL are commonly used to track record changes but should be used carefully. For specific values, it's better to opt for a datetime field. Choose the native DATETIME format over UNIX timestamps, as it allows calculations within MySQL and simplifies format conversion when queried with PHP. DATETIME represents a date and time in a calendar, while TIMESTAMP represents a well-defined point in time, making it crucial for applications handling time zones. One downside of TIMESTAMP is its limited valid range, and queries with native datetime won't be cached, while those with timestamps will be.
While in principle taking highly voted comments into account is not a problem, the quality of the outcome may vary.
len()
orupper()
or something, but there are no links to documentation telling them how to use these functions. Sure, for built-ins like those, it's pretty self-explanatory, but start getting into anything more advanced and the AI's "answer" is pretty useless.