Challenge: Filter High-Opportunity Keywords
Filtering for high-opportunity keywords is a key step in keyword research. By narrowing your focus to keywords with high search volume and low difficulty, you can identify terms that are more likely to bring valuable traffic with less competition. In this challenge, you will use your Python and pandas skills to filter a DataFrame of keyword data, isolating only those keywords that meet specific opportunity criteria.
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Given a pandas DataFrame with columns keyword, search_volume, and difficulty, return a new DataFrame containing only the rows where search_volume is greater than 1000 and difficulty is less than 40.
- Filter rows where the value in
search_volumeis greater than 1000. - Filter rows where the value in
difficultyis less than 40. - Return the resulting DataFrame.
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What are the specific criteria for high-opportunity keywords?
Can you show me how to filter the DataFrame using pandas?
Can you explain what search volume and difficulty mean in this context?
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Challenge: Filter High-Opportunity Keywords
Sveip for å vise menyen
Filtering for high-opportunity keywords is a key step in keyword research. By narrowing your focus to keywords with high search volume and low difficulty, you can identify terms that are more likely to bring valuable traffic with less competition. In this challenge, you will use your Python and pandas skills to filter a DataFrame of keyword data, isolating only those keywords that meet specific opportunity criteria.
Swipe to start coding
Given a pandas DataFrame with columns keyword, search_volume, and difficulty, return a new DataFrame containing only the rows where search_volume is greater than 1000 and difficulty is less than 40.
- Filter rows where the value in
search_volumeis greater than 1000. - Filter rows where the value in
difficultyis less than 40. - Return the resulting DataFrame.
Løsning
Takk for tilbakemeldingene dine!
single