diff --git a/02_activities/assignments/DC_Cohort/Assignment2.md b/02_activities/assignments/DC_Cohort/Assignment2.md index be0eff3a5..aaa393f1b 100644 --- a/02_activities/assignments/DC_Cohort/Assignment2.md +++ b/02_activities/assignments/DC_Cohort/Assignment2.md @@ -56,7 +56,23 @@ The store wants to keep customer addresses. Propose two architectures for the CU **HINT:** search type 1 vs type 2 slowly changing dimensions. ``` -Your answer... +Type 1 = overwrite old data with new data +Customer_Address_Type-1 +customer_id +customer_address +customer_province +customer_postal_code +customer_updated_at + +Type 2 = preserves historical changes by creating a new record for each change +Customer_Address_Type-1 +customer_id +customer_address +customer_province +customer_postal_code +effective_date +end_date +is_current ``` *** @@ -191,5 +207,5 @@ Consider, for example, concepts of labour, bias, LLM proliferation, moderating c ``` -Your thoughts... +The article was very illuminating and provided me more context and insight to how neural nets are developed. We are not often sharing or talking about this side of AI, particularly in my field of health systems research. It feels like it’s branded to us to only know the ‘user interface’ side and not about the backend/internal structures, especially because it’s labelled as the ‘next best thing for healthcare’. I perceive this as a major ethical issue where there is a lack of transparency on AI development in my field, in media, and general rhetoric of it all. It has become a ‘black box’. I will admit, when I first heard about AI years ago, I viewed it as a positive impact to the world and jumped on the bandwagon of “this will fix the healthcare system”. But it was only really when I had conversations with different people where I started to have a more critical lens on AI. I discuss with my husband often (who’s background is in theoretical particle physics and now computational neuroscience), where he shared more about what AI actually is and the research behind it (just like how the article frames it actually). And it was also when I had brief conversations with my older sister (who’s background is in political science and history, with an affinity to learning about environmental impacts), where she shared the environmental and labor concerns related to AI. And finally in my part-time research work, I get the opportunity to observe roundtables where some senior decision-makers in health (think ministers of health and CEOs of hospitals), and they talk about how our infrastructure (e.g., workforce delivery, literal data infrastructures because we still use fax in Canada) needs to be further developed before we even start to think about how we embed AI into the workflows of healthcare. This is where I started to have a more critical perspective on AI, and what it can actually do, the potential consequences, and what it actually means for health systems research. This brings up another issue highlighted in the article where there have been ethical concerns with the training sets, including the labour force and the way images are labelled. For the latter, that’s a major concern because it will have downstream effects to how AI is used in healthcare. Healthcare is sadly already marred with discrimination and systemic racism, and with training sets that are biased, there could have dire consequences to the quality of patient care. Not only is it about patient demographic characteristics but imagine a clinical decision support system that is developed but it’s been trained to ignore certain symptoms or fail flag to doctors about certain conditions related to a patient (e.g., misinterpreting symptoms among marginalized populations, especially women). Positively, there are groups who are aware of the ethical concerns around AI use in healthcare, yet there needs to be better oversight and transparency of how the back-end of AI has been developed. Overall, the article brings up valid concerns, and I wish we had more discourse publicly and openly about how these systems continue to perpetuate very human challenges (because it is built by us after all!), especially because of the way the population continues to embed AI into their everyday lives. ``` diff --git a/02_activities/assignments/DC_Cohort/assignment2.sql b/02_activities/assignments/DC_Cohort/assignment2.sql index 4079c18ae..14ea38de6 100644 --- a/02_activities/assignments/DC_Cohort/assignment2.sql +++ b/02_activities/assignments/DC_Cohort/assignment2.sql @@ -22,10 +22,10 @@ The `||` values concatenate the columns into strings. Edit the appropriate columns -- you're making two edits -- and the NULL rows will be fixed. All the other rows will remain the same. */ --QUERY 1 - - - - +SELECT +product_name || ', ' || COALESCE(product_size, '') || ' (' || COALESCE(product_qty_type, 'unit') || ')' +FROM product; + --END QUERY @@ -40,9 +40,15 @@ each new market date for each customer, or select only the unique market dates p HINT: One of these approaches uses ROW_NUMBER() and one uses DENSE_RANK(). Filter the visits to dates before April 29, 2022. */ --QUERY 2 - - - +SELECT + customer_id, + market_date, + dense_rank () OVER ( + PARTITION BY customer_id + ORDER BY market_date + ) AS visit_number + FROM customer_purchases + WHERE market_date <'2022-04-29'; --END QUERY @@ -52,9 +58,20 @@ then write another query that uses this one as a subquery (or temp table) and fi only the customer’s most recent visit. HINT: Do not use the previous visit dates filter. */ --QUERY 3 - - - +SELECT + customer_id, + market_date +FROM ( + SELECT DISTINCT + customer_id, + market_date, + DENSE_RANK() OVER ( + PARTITION BY customer_id + ORDER BY market_date DESC + ) AS visit_number_reverse + FROM customer_purchases +) AS ranked_visits +WHERE visit_number_reverse = 1; --END QUERY @@ -65,9 +82,16 @@ customer_purchases table that indicates how many different times that customer h You can make this a running count by including an ORDER BY within the PARTITION BY if desired. Filter the visits to dates before April 29, 2022. */ --QUERY 4 - - - +SELECT + customer_id, + product_id, + market_date, + COUNT(product_id) OVER ( + PARTITION BY customer_id, product_id + ORDER BY market_date + ) AS product_purchase_count +FROM customer_purchases +WHERE market_date < '2022-04-29'; --END QUERY @@ -84,18 +108,25 @@ Remove any trailing or leading whitespaces. Don't just use a case statement for Hint: you might need to use INSTR(product_name,'-') to find the hyphens. INSTR will help split the column. */ --QUERY 5 - - - +SELECT + product_name, + CASE + WHEN INSTR(product_name, '-') > 0 + THEN TRIM(SUBSTR(product_name, INSTR (product_name, '-') + 1)) + ELSE NULL + END AS description +FROM product; --END QUERY /* 2. Filter the query to show any product_size value that contain a number with REGEXP. */ --QUERY 6 - - - +SELECT + product_name, + product_size +FROM product +WHERE product_size REGEXP '[0-9]'; --END QUERY @@ -110,9 +141,36 @@ HINT: There are a possibly a few ways to do this query, but if you're struggling 3) Query the second temp table twice, once for the best day, once for the worst day, with a UNION binding them. */ --QUERY 7 +WITH sales_by_date AS ( +SELECT + market_date, + SUM(quantity*cost_to_customer_per_qty) AS total_sales +FROM customer_purchases +GROUP BY market_date +), +ranked_sales AS ( +SELECT + market_date, + total_sales, + RANK() OVER (ORDER BY total_sales DESC) AS top_rank, + RANK() OVER (ORDER BY total_sales ASC) AS bottom_rank +FROM sales_by_date +) +SELECT + market_date, + total_sales, + 'Highest Sales' AS sales_category +FROM ranked_sales +WHERE top_rank = 1 +UNION - +SELECT + market_date, + total_sales, + 'Lowest Sales' AS sales_category +FROM ranked_sales +WHERE bottom_rank = 1; --END QUERY @@ -131,9 +189,28 @@ Think a bit about the row counts: how many distinct vendors, product names are t How many customers are there (y). Before your final group by you should have the product of those two queries (x*y). */ --QUERY 8 - - - +SELECT + v.vendor_name, + p.product_name, + 5*COUNT (c.customer_id)*vi.original_price AS potential_revenue +FROM ( + SELECT DISTINCT + vendor_id, + product_id, + original_price + FROM vendor_inventory +) vi +JOIN vendor v + ON vi.vendor_id = v.vendor_id +JOIN product p + ON vi.product_id = p.product_id +CROSS JOIN ( + SELECT customer_id + FROM customer +) c +GROUP BY + v.vendor_name, + p.product_name; --END QUERY @@ -144,9 +221,12 @@ This table will contain only products where the `product_qty_type = 'unit'`. It should use all of the columns from the product table, as well as a new column for the `CURRENT_TIMESTAMP`. Name the timestamp column `snapshot_timestamp`. */ --QUERY 9 - - - +CREATE TABLE product_units AS +SELECT + *, + CURRENT_TIMESTAMP AS snapshot_timestamp +FROM product +WHERE product_qty_type = 'unit'; --END QUERY @@ -154,10 +234,20 @@ Name the timestamp column `snapshot_timestamp`. */ /*2. Using `INSERT`, add a new row to the product_units table (with an updated timestamp). This can be any product you desire (e.g. add another record for Apple Pie). */ --QUERY 10 - - - - +INSERT INTO product_units ( + product_id, + product_name, + product_size, + product_qty_type, + snapshot_timestamp +) +VALUES ( + 999, + 'Apple Pie', + '1 pie', + 'unit', + CURRENT_TIMESTAMP +); --END QUERY @@ -166,8 +256,9 @@ This can be any product you desire (e.g. add another record for Apple Pie). */ HINT: If you don't specify a WHERE clause, you are going to have a bad time.*/ --QUERY 11 - - +DELETE FROM product_units +WHERE product_name = 'Apple Pie' +AND product_id <> 999; --END QUERY @@ -190,11 +281,16 @@ Finally, make sure you have a WHERE statement to update the right row, you'll need to use product_units.product_id to refer to the correct row within the product_units table. When you have all of these components, you can run the update statement. */ --QUERY 12 +ALTER TABLE product_units +ADD current_quantity INT; - - +UPDATE product_units +SET current_quantity = coalesce (( + SELECT quantity + FROM vendor_inventory + WHERE vendor_inventory.product_id = product_units.product_id + ORDER BY market_date DESC + LIMIT 1 +), 0); --END QUERY - - - diff --git a/02_activities/assignments/DC_Cohort/bookstore_logical_model_1.jpg b/02_activities/assignments/DC_Cohort/bookstore_logical_model_1.jpg new file mode 100644 index 000000000..adb08e9b7 Binary files /dev/null and b/02_activities/assignments/DC_Cohort/bookstore_logical_model_1.jpg differ diff --git a/02_activities/assignments/DC_Cohort/bookstore_logical_model_2.jpg b/02_activities/assignments/DC_Cohort/bookstore_logical_model_2.jpg new file mode 100644 index 000000000..a7ba56d90 Binary files /dev/null and b/02_activities/assignments/DC_Cohort/bookstore_logical_model_2.jpg differ