1 Lecture 4: More SQL Monday, January 13th, 2003.

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Presentation transcript:

1 Lecture 4: More SQL Monday, January 13th, 2003

2 Agenda Finish subqueries, correlated queries. Grouping and aggregation Creating a schema Modifying the database Defining views

3 Subqueries Returning Relations SELECT name FROM Product WHERE price > ALL (SELECT price FROM Purchase WHERE maker=‘Gizmo-Works’) SELECT name FROM Product WHERE price > ALL (SELECT price FROM Purchase WHERE maker=‘Gizmo-Works’) Product ( pname, price, category, maker) Find products that are more expensive than all those produced By “Gizmo-Works” You can also use: s > ALL R s > ANY R EXISTS R

4 Conditions on Tuples SELECT DISTINCT Company.name FROM Company, Product WHERE Company.name= Product.maker AND (Product.name,price) IN (SELECT Purchase.product, Purchase.price) FROM Purchase WHERE Purchase.buyer = “Joe Blow”); SELECT DISTINCT Company.name FROM Company, Product WHERE Company.name= Product.maker AND (Product.name,price) IN (SELECT Purchase.product, Purchase.price) FROM Purchase WHERE Purchase.buyer = “Joe Blow”); May not work in SQL server...

5 Correlated Queries SELECT DISTINCT title FROM Movie AS x WHERE year <> ANY (SELECT year FROM Movie WHERE title = x.title); SELECT DISTINCT title FROM Movie AS x WHERE year <> ANY (SELECT year FROM Movie WHERE title = x.title); Movie (title, year, director, length) Find movies whose title appears more than once. Note (1) scope of variables (2) this can still be expressed as single SFW correlation

6 Complex Correlated Query Product ( pname, price, category, maker, year) Find products (and their manufacturers) that are more expensive than all products made by the same manufacturer before 1972 Powerful, but much harder to optimize ! SELECT DISTINCT pname, maker FROM Product AS x WHERE price > ALL (SELECT price FROM Product AS y WHERE x.maker = y.maker AND y.year < 1972); SELECT DISTINCT pname, maker FROM Product AS x WHERE price > ALL (SELECT price FROM Product AS y WHERE x.maker = y.maker AND y.year < 1972);

7 Aggregation SELECT Avg(price) FROM Product WHERE maker=“Toyota” SELECT Avg(price) FROM Product WHERE maker=“Toyota” SQL supports several aggregation operations: SUM, MIN, MAX, AVG, COUNT

8 Aggregation: Count SELECT Count(*) FROM Product WHERE year > 1995 SELECT Count(*) FROM Product WHERE year > 1995 Except COUNT, all aggregations apply to a single attribute

9 Aggregation: Count COUNT applies to duplicates, unless otherwise stated: SELECT Count(category) same as Count(*) FROM Product WHERE year > 1995 Better: SELECT Count(DISTINCT category) FROM Product WHERE year > 1995

10 Simple Aggregation Purchase(product, date, price, quantity) Example 1: find total sales for the entire database SELECT Sum(price * quantity) FROM Purchase Example 1’: find total sales of bagels SELECT Sum(price * quantity) FROM Purchase WHERE product = ‘bagel’

11 Simple Aggregations Purchase

12 Grouping and Aggregation Usually, we want aggregations on certain parts of the relation. Purchase(product, date, price, quantity) Example 2: find total sales after 10/1 per product. SELECT product, Sum(price*quantity) AS TotalSales FROM Purchase WHERE date > “10/1” GROUPBY product SELECT product, Sum(price*quantity) AS TotalSales FROM Purchase WHERE date > “10/1” GROUPBY product Let’s see what this means…

13 Grouping and Aggregation 1. Compute the FROM and WHERE clauses. 2. Group by the attributes in the GROUPBY 3. Select one tuple for every group (and apply aggregation) SELECT can have (1) grouped attributes or (2) aggregates.

14 First compute the FROM-WHERE clauses (date > “10/1”) then GROUP BY product:

15 Then, aggregate SELECT product, Sum(price*quantity) AS TotalSales FROM Purchase WHERE date > “10/1” GROUPBY product SELECT product, Sum(price*quantity) AS TotalSales FROM Purchase WHERE date > “10/1” GROUPBY product

16 GROUP BY v.s. Nested Queries SELECT product, Sum(price*quantity) AS TotalSales FROM Purchase WHERE date > “10/1” GROUP BY product SELECT product, Sum(price*quantity) AS TotalSales FROM Purchase WHERE date > “10/1” GROUP BY product SELECT DISTINCT x.product, (SELECT Sum(y.price*y.quantity) FROM Purchase y WHERE x.product = y.product AND y.date > ‘10/1’) AS TotalSales FROM Purchase x WHERE x.date > “10/1” SELECT DISTINCT x.product, (SELECT Sum(y.price*y.quantity) FROM Purchase y WHERE x.product = y.product AND y.date > ‘10/1’) AS TotalSales FROM Purchase x WHERE x.date > “10/1”

17 Another Example SELECT product, Sum(price * quantity) AS SumSales Max(quantity) AS MaxQuantity FROM Purchase GROUP BY product SELECT product, Sum(price * quantity) AS SumSales Max(quantity) AS MaxQuantity FROM Purchase GROUP BY product For every product, what is the total sales and max quantity sold?

18 HAVING Clause SELECT product, Sum(price * quantity) FROM Purchase WHERE date > “9/1” GROUP BY product HAVING Sum(quantity) > 30 SELECT product, Sum(price * quantity) FROM Purchase WHERE date > “9/1” GROUP BY product HAVING Sum(quantity) > 30 Same query, except that we consider only products that had at least 100 buyers. HAVING clause contains conditions on aggregates.

19 General form of Grouping and Aggregation SELECT S FROM R 1,…,R n WHERE C1 GROUP BY a 1,…,a k HAVING C2 S = may contain attributes a 1,…,a k and/or any aggregates but NO OTHER ATTRIBUTES C1 = is any condition on the attributes in R 1,…,R n C2 = is any condition on aggregate expressions Why ?

20 General form of Grouping and Aggregation SELECT S FROM R 1,…,R n WHERE C1 GROUP BY a 1,…,a k HAVING C2 Evaluation steps: 1.Compute the FROM-WHERE part, obtain a table with all attributes in R 1,…,R n 2.Group by the attributes a 1,…,a k 3.Compute the aggregates in C2 and keep only groups satisfying C2 4.Compute aggregates in S and return the result

21 Aggregation Author(login,name) Document(url, title) Wrote(login,url) Mentions(url,word)

22 Find all authors who wrote at least 10 documents: Attempt 1: with nested queries SELECT DISTINCT Author.name FROM Author WHERE count(SELECT Wrote.url FROM Wrote WHERE Author.login=Wrote.login) > 10 SELECT DISTINCT Author.name FROM Author WHERE count(SELECT Wrote.url FROM Wrote WHERE Author.login=Wrote.login) > 10 This is SQL by a novice

23 Find all authors who wrote at least 10 documents: Attempt 2: SQL style (with GROUP BY) SELECT Author.name FROM Author, Wrote WHERE Author.login=Wrote.login GROUP BY Author.name HAVING count(wrote.url) > 10 SELECT Author.name FROM Author, Wrote WHERE Author.login=Wrote.login GROUP BY Author.name HAVING count(wrote.url) > 10 This is SQL by an expert No need for DISTINCT: automatically from GROUP BY

24 Find all authors who have a vocabulary over words: SELECT Author.name FROM Author, Wrote, Mentions WHERE Author.login=Wrote.login AND Wrote.url=Mentions.url GROUP BY Author.name HAVING count(distinct Mentions.word) > SELECT Author.name FROM Author, Wrote, Mentions WHERE Author.login=Wrote.login AND Wrote.url=Mentions.url GROUP BY Author.name HAVING count(distinct Mentions.word) > Look carefully at the last two queries: you may be tempted to write them as a nested queries, but in SQL we write them best with GROUP BY

25 INTERSECT and EXCEPT: Not in SQL Server (SELECT R.A, R.B FROM R) INTERSECT (SELECT S.A, S.B FROM S) (SELECT R.A, R.B FROM R) INTERSECT (SELECT S.A, S.B FROM S) SELECT R.A, R.B FROM R WHERE EXISTS(SELECT * FROM S WHERE R.A=S.A and R.B=S.B) SELECT R.A, R.B FROM R WHERE EXISTS(SELECT * FROM S WHERE R.A=S.A and R.B=S.B) (SELECT R.A, R.B FROM R) EXCEPT (SELECT S.A, S.B FROM S) (SELECT R.A, R.B FROM R) EXCEPT (SELECT S.A, S.B FROM S) SELECT R.A, R.B FROM R WHERE NOT EXISTS(SELECT * FROM S WHERE R.A=S.A and R.B=S.B) SELECT R.A, R.B FROM R WHERE NOT EXISTS(SELECT * FROM S WHERE R.A=S.A and R.B=S.B)

26 Null Values and Outerjoins If x=Null then 4*(3-x)/7 is still NULL If x=Null then x=“Joe” is UNKNOWN In SQL there are three boolean values: FALSE = 0 UNKNOWN = 0.5 TRUE = 1

27 Null Values and Outerjoins C1 AND C2 = min(C1, C2) C1 OR C2 = max(C1, C2) NOT C1 = 1 – C1 Rule in SQL: include only tuples that yield TRUE SELECT * FROM Person WHERE (age < 25) AND (height > 6 OR weight > 190) SELECT * FROM Person WHERE (age < 25) AND (height > 6 OR weight > 190) E.g. age=20 height=NULL weight=200

28 Null Values and Outerjoins Unexpected behavior: Some Persons are not included ! SELECT * FROM Person WHERE age = 25 SELECT * FROM Person WHERE age = 25

29 Null Values and Outerjoins Can test for NULL explicitly: –x IS NULL –x IS NOT NULL Now it includes all Persons SELECT * FROM Person WHERE age = 25 OR age IS NULL SELECT * FROM Person WHERE age = 25 OR age IS NULL

30 Null Values and Outerjoins Explicit joins in SQL: Product(name, category) Purchase(prodName, store) Same as: But Products that never sold will be lost ! SELECT Product.name, Purchase.store FROM Product JOIN Purchase ON Product.name = Purchase.prodName SELECT Product.name, Purchase.store FROM Product JOIN Purchase ON Product.name = Purchase.prodName SELECT Product.name, Purchase.store FROM Product, Purchase WHERE Product.name = Purchase.prodName SELECT Product.name, Purchase.store FROM Product, Purchase WHERE Product.name = Purchase.prodName

31 Null Values and Outerjoins Left outer joins in SQL: Product(name, category) Purchase(prodName, store) SELECT Product.name, Purchase.store FROM Product LEFT OUTER JOIN Purchase ON Product.name = Purchase.prodName SELECT Product.name, Purchase.store FROM Product LEFT OUTER JOIN Purchase ON Product.name = Purchase.prodName

32 NameCategory Gizmogadget CameraPhoto OneClickPhoto ProdNameStore GizmoWiz CameraRitz CameraWiz NameStore GizmoWiz CameraRitz CameraWiz OneClickNULL ProductPurchase

33 Outer Joins Left outer join: –Include the left tuple even if there’s no match Right outer join: –Include the right tuple even if there’s no match Full outer join: –Include the both left and right tuples even if there’s no match

34 Modifying the Database Three kinds of modifications Insertions Deletions Updates Sometimes they are all called “updates”

35 Insertions General form: Missing attribute  NULL. May drop attribute names if give them in order. INSERT INTO R(A1,…., An) VALUES (v1,…., vn) INSERT INTO Purchase(buyer, seller, product, store) VALUES (‘Joe’, ‘Fred’, ‘wakeup-clock-espresso-machine’, ‘The Sharper Image’) INSERT INTO Purchase(buyer, seller, product, store) VALUES (‘Joe’, ‘Fred’, ‘wakeup-clock-espresso-machine’, ‘The Sharper Image’) Example: Insert a new purchase to the database:

36 Insertions INSERT INTO PRODUCT(name) SELECT DISTINCT Purchase.product FROM Purchase WHERE Purchase.date > “10/26/01” INSERT INTO PRODUCT(name) SELECT DISTINCT Purchase.product FROM Purchase WHERE Purchase.date > “10/26/01” The query replaces the VALUES keyword. Here we insert many tuples into PRODUCT

37 Insertion: an Example prodName is foreign key in Product.name Suppose database got corrupted and we need to fix it: namelistPricecategory gizmo100gadgets prodNamebuyerNameprice cameraJohn200 gizmoSmith80 cameraSmith225 Task: insert in Product all prodNames from Purchase Product Product(name, listPrice, category) Purchase(prodName, buyerName, price) Product(name, listPrice, category) Purchase(prodName, buyerName, price) Purchase

38 Insertion: an Example INSERT INTO Product(name) SELECT DISTINCT prodName FROM Purchase WHERE prodName NOT IN (SELECT name FROM Product) INSERT INTO Product(name) SELECT DISTINCT prodName FROM Purchase WHERE prodName NOT IN (SELECT name FROM Product) namelistPricecategory gizmo100Gadgets camera--

39 Insertion: an Example INSERT INTO Product(name, listPrice) SELECT DISTINCT prodName, price FROM Purchase WHERE prodName NOT IN (SELECT name FROM Product) INSERT INTO Product(name, listPrice) SELECT DISTINCT prodName, price FROM Purchase WHERE prodName NOT IN (SELECT name FROM Product) namelistPricecategory gizmo100Gadgets camera200- camera ??225 ??- Depends on the implementation

40 Deletions DELETE FROM PURCHASE WHERE seller = ‘Joe’ AND product = ‘Brooklyn Bridge’ DELETE FROM PURCHASE WHERE seller = ‘Joe’ AND product = ‘Brooklyn Bridge’ Factoid about SQL: there is no way to delete only a single occurrence of a tuple that appears twice in a relation. Example:

41 Updates UPDATE PRODUCT SET price = price/2 WHERE Product.name IN (SELECT product FROM Purchase WHERE Date =‘Oct, 25, 1999’); UPDATE PRODUCT SET price = price/2 WHERE Product.name IN (SELECT product FROM Purchase WHERE Date =‘Oct, 25, 1999’); Example:

42 Data Definition in SQL So far we have see the Data Manipulation Language, DML Next: Data Definition Language (DDL) Data types: Defines the types. Data definition: defining the schema. Create tables Delete tables Modify table schema Indexes: to improve performance

43 Data Types in SQL Characters: –CHAR(20)-- fixed length –VARCHAR(40)-- variable length Numbers: –INT, REAL plus variations Times and dates: –DATE, DATETIME (SQL Server only) To reuse domains: CREATE DOMAIN address AS VARCHAR(55)

44 Creating Tables CREATE TABLE Person( name VARCHAR(30), social-security-number INT, age SHORTINT, city VARCHAR(30), gender BIT(1), Birthdate DATE ); CREATE TABLE Person( name VARCHAR(30), social-security-number INT, age SHORTINT, city VARCHAR(30), gender BIT(1), Birthdate DATE ); Example:

45 Deleting or Modifying a Table Deleting: ALTER TABLE Person ADD phone CHAR(16); ALTER TABLE Person DROP age; ALTER TABLE Person ADD phone CHAR(16); ALTER TABLE Person DROP age; Altering: (adding or removing an attribute). What happens when you make changes to the schema? Example: DROP Person; Example: Exercise with care !!

46 Default Values Specifying default values: CREATE TABLE Person( name VARCHAR(30), social-security-number INT, age SHORTINT DEFAULT 100, city VARCHAR(30) DEFAULT ‘Seattle’, gender CHAR(1) DEFAULT ‘?’, Birthdate DATE CREATE TABLE Person( name VARCHAR(30), social-security-number INT, age SHORTINT DEFAULT 100, city VARCHAR(30) DEFAULT ‘Seattle’, gender CHAR(1) DEFAULT ‘?’, Birthdate DATE The default of defaults: NULL

47 Indexes REALLY important to speed up query processing time. Suppose we have a relation Person (name, age, city) Sequential scan of the file Person may take long SELECT * FROM Person WHERE name = “Smith” SELECT * FROM Person WHERE name = “Smith”

48 Create an index on name: B+ trees have fan-out of 100s: max 4 levels ! Indexes AdamBettyCharles….Smith….

49 Creating Indexes CREATE INDEX nameIndex ON Person(name) Syntax:

50 Creating Indexes Indexes can be created on more than one attribute: CREATE INDEX doubleindex ON Person (age, city) SELECT * FROM Person WHERE age = 55 AND city = “Seattle” SELECT * FROM Person WHERE city = “Seattle” Helps in: But not in: Example:

51 Creating Indexes Indexes can be useful in range queries too: B+ trees help in: Why not create indexes on everything? CREATE INDEX ageIndex ON Person (age) SELECT * FROM Person WHERE age > 25 AND age < 28

52 Defining Views Views are relations, except that they are not physically stored. For presenting different information to different users Employee(ssn, name, department, project, salary) Payroll has access to Employee, others only to Developers CREATE VIEW Developers AS SELECT name, project FROM Employee WHERE department = “Development” CREATE VIEW Developers AS SELECT name, project FROM Employee WHERE department = “Development”

53 A Different View Person(name, city) Purchase(buyer, seller, product, store) Product(name, maker, category) We have a new virtual table: Seattle-view(buyer, seller, product, store) CREATE VIEW Seattle-view AS SELECT buyer, seller, product, store FROM Person, Purchase WHERE Person.city = “Seattle” AND Person.name = Purchase.buyer CREATE VIEW Seattle-view AS SELECT buyer, seller, product, store FROM Person, Purchase WHERE Person.city = “Seattle” AND Person.name = Purchase.buyer

54 A Different View SELECT name, store FROM Seattle-view, Product WHERE Seattle-view.product = Product.name AND Product.category = “shoes” SELECT name, store FROM Seattle-view, Product WHERE Seattle-view.product = Product.name AND Product.category = “shoes” We can later use the view:

55 What Happens When We Query a View ? SELECT name, Seattle-view.store FROM Seattle-view, Product WHERE Seattle-view.product = Product.name AND Product.category = “shoes” SELECT name, Seattle-view.store FROM Seattle-view, Product WHERE Seattle-view.product = Product.name AND Product.category = “shoes” SELECT name, Purchase.store FROM Person, Purchase, Product WHERE Person.city = “Seattle” AND Person.name = Purchase.buyer AND Purchase.poduct = Product.name AND Product.category = “shoes” SELECT name, Purchase.store FROM Person, Purchase, Product WHERE Person.city = “Seattle” AND Person.name = Purchase.buyer AND Purchase.poduct = Product.name AND Product.category = “shoes”

56 Types of Views Virtual views: –Used in databases –Computed only on-demand – slow at runtime –Always up to date Materialized views –Used in data warehouses –Precomputed offline – fast at runtime –May have stale data

57 Updating Views How can I insert a tuple into a table that doesn’t exist? Employee(ssn, name, department, project, salary) CREATE VIEW Developers AS SELECT name, project FROM Employee WHERE department = “Development” CREATE VIEW Developers AS SELECT name, project FROM Employee WHERE department = “Development” INSERT INTO Developers VALUES(“Joe”, “Optimizer”) INSERT INTO Employee VALUES(NULL, “Joe”, NULL, “Optimizer”, NULL) If we make the following insertion: It becomes:

58 Non-Updatable Views CREATE VIEW Seattle-view AS SELECT seller, product, store FROM Person, Purchase WHERE Person.city = “Seattle” AND Person.name = Purchase.buyer CREATE VIEW Seattle-view AS SELECT seller, product, store FROM Person, Purchase WHERE Person.city = “Seattle” AND Person.name = Purchase.buyer How can we add the following tuple to the view? (“Joe”, “Shoe Model 12345”, “Nine West”) We need to add “Joe” to Person first, but we don’t have all its attributes