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Andy Chang/

Project - Analyzing Unicorn Companies

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Did you know that the average return from investing in stocks is 10% per year! But who wants to be average?!

You have been asked to support an investment firm by analyzing trends in high-growth companies. They are interested in understanding which industries are producing the highest valuations and the rate at which new high-value companies are emerging. Providing them with this information gives them a competitive insight as to industry trends and how they should structure their portfolio looking forward.

You have been given access to their unicorns database, which contains the following tables:

dates

ColumnDescription
company_idA unique ID for the company.
date_joinedThe date that the company became a unicorn.
year_foundedThe year that the company was founded.

funding

ColumnDescription
company_idA unique ID for the company.
valuationCompany value in US dollars.
fundingThe amount of funding raised in US dollars.
select_investorsA list of key investors in the company.

industries

ColumnDescription
company_idA unique ID for the company.
industryThe industry that the company operates in.

companies

ColumnDescription
company_idA unique ID for the company.
companyThe name of the company.
cityThe city where the company is headquartered.
countryThe country where the company is headquartered.
continentThe continent where the company is headquartered.
Unknown integration
DataFrameavailable as
df
variable
SELECT * FROM companies
This query is taking long to finish...Consider adding a LIMIT clause or switching to Query mode to preview the result.
Unknown integration
DataFrameavailable as
df1
variable
SELECT * FROM industries
This query is taking long to finish...Consider adding a LIMIT clause or switching to Query mode to preview the result.
Unknown integration
DataFrameavailable as
df2
variable
SELECT * from funding
This query is taking long to finish...Consider adding a LIMIT clause or switching to Query mode to preview the result.
Unknown integration
DataFrameavailable as
df3
variable
SELECT * FROM dates
This query is taking long to finish...Consider adding a LIMIT clause or switching to Query mode to preview the result.
Unknown integration
DataFrameavailable as
df4
variable
SELECT
FROM companies
LEFT JOIN dates
USING(company_id)
LEFT JOIN industries
USING(company_id)
This query is taking long to finish...Consider adding a LIMIT clause or switching to Query mode to preview the result.
Unknown integration
DataFrameavailable as
df5
variable
SELECT industry, year_founded AS year, COUNT(*) AS num_unicorns
FROM companies
LEFT JOIN public.dates
USING(company_id)
LEFT JOIN public.industries
USING(company_id)
WHERE year_founded IN (2019, 2020, 2021)
GROUP BY industry, year
ORDER BY year DESC, num_unicorns DESC;
This query is taking long to finish...Consider adding a LIMIT clause or switching to Query mode to preview the result.
Unknown integration
DataFrameavailable as
df6
variable
SELECT industry, COUNT(*) AS num_unicorns
FROM companies
LEFT JOIN public.industries
USING(company_id)
LEFT JOIN public.dates
USING(company_id)
WHERE year_founded IN (2019, 2020, 2021)
GROUP BY industry
ORDER BY num_unicorns DESC
LIMIT 3;
This query is taking long to finish...Consider adding a LIMIT clause or switching to Query mode to preview the result.
Unknown integration
DataFrameavailable as
df8
variable
WITH top_industries AS 
(
		SELECT -- select the top 3 industry by its num_unicorns
			i.industry, COUNT(i.*)
		FROM public.industries AS i
		LEFT JOIN public.dates AS d
		USING(company_id)
		WHERE year_founded IN (2019, 2020, 2021)
		GROUP BY industry
		ORDER BY COUNT(*) DESC
		LIMIT 3
), 

yearly_rankings AS
( 
	SELECT COUNT(i.*) AS num_unicorns, 
		i.industry, 
		EXTRACT(year FROM d.date_joined) AS year,
		AVG(f.valuation) AS average_valuation
	FROM industries AS i 
	INNER JOIN dates AS d 
		USING(company_id)
	INNER JOIN funding AS f 
		USING(company_id)
	GROUP BY industry, year
)

SELECT 
	industry, 
	year, 
	num_unicorns, 
	ROUND(AVG(average_valuation)/1000000000, 2) AS average_valuation_billions
FROM yearly_rankings
WHERE 
	year IN (2019, 2020, 2021) AND
	industry IN (SELECT industry FROM top_industries) -- CTE Common Table Expressions
GROUP BY industry, num_unicorns, year
ORDER BY 
	industry, 
	year DESC;
This query is taking long to finish...Consider adding a LIMIT clause or switching to Query mode to preview the result.