Kita semua telah diajar tentang faedah menormalkan data kami. Jadi saya tidak akan menjemukan anda dengan butiran tersebut, tetapi untuk meringkaskannya:
Normalisasi ialah proses menyusun data dalam pangkalan data. Ia termasuk mencipta jadual dan mewujudkan hubungan antara jadual tersebut mengikut peraturan yang direka untuk melindungi data dan menjadikan pangkalan data lebih fleksibel dengan menghapuskan lebihan dan pergantungan yang tidak konsisten.
Microsoft 365 - Perihalan penormalan
Sejujurnya, normalisasi tidak pernah terlintas di fikiran saya sehinggalah baru-baru ini apabila saya terpaksa berurusan dengan berbilang aplikasi warisan yang "sangat dinormalisasi". Dan apabila saya menyebut "sangat dinormalisasi" yang saya maksudkan "Sangat dinormalkan" - sehingga ia tidak masuk akal lagi. Yang mengingatkan saya tentang artikel hebat ini oleh Coding Horror: Maybe Normalizing Isn't Normal.
Masalahnya ialah, melainkan anda benar-benar bernasib baik, anda tidak perlu risau tentang perkara seperti ini. Daripada bercakap tentang ini secara hipotesis, mari kita lihat senario tertentu dan cuba teknik yang berbeza untuk memahami kerumitan topik ini. Sebaik sahaja kita meneliti senario ini, mari bercakap melalui teknikal untuk memahami dengan lebih baik mengapa seni bina yang sangat normal boleh menjadi masalah dan menyemak pengoptimuman yang boleh kita pertimbangkan untuk menambah baik pengalaman kami.
? Anda boleh menyemak kod untuk artikel ini di sini.
Anda sedang mengusahakan sistem pengurusan inventori berasaskan SASS (perisian sebagai perkhidmatan) berskala besar warisan yang mantap. Sistem ini terdiri daripada item inventori, dan setiap item inventori mempunyai kategori, pembekal, gudang dan pelbagai atribut. Pelanggan telah meminta laporan dan laporan ini perlu memaparkan butiran item termasuk nama pembekal dan nama gudang.
Berikut ialah skema yang dipermudahkan, tanpa penyewaan berbilang (hanya untuk memastikan perkara mudah):
Setiap item merujuk masukan dalam kategori, pembekal dan jadual gudang. Atribut untuk setiap item disimpan dalam jadual item_attributes. Ini semua masuk akal dan agak mudah dibuat:
CREATE TABLE items ( id INT AUTO_INCREMENT PRIMARY KEY, name VARCHAR(255) NOT NULL, category_id INT, supplier_id INT, warehouse_id INT, created_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP, updated_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP, FOREIGN KEY (category_id) REFERENCES categories(id), FOREIGN KEY (supplier_id) REFERENCES suppliers(id), FOREIGN KEY (warehouse_id) REFERENCES warehouses(id) ); CREATE TABLE categories ( id INT AUTO_INCREMENT PRIMARY KEY, name VARCHAR(255) NOT NULL, created_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP, updated_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP ); CREATE TABLE suppliers ( id INT AUTO_INCREMENT PRIMARY KEY, name VARCHAR(255) NOT NULL, created_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP, updated_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP ); CREATE TABLE warehouses ( id INT AUTO_INCREMENT PRIMARY KEY, name VARCHAR(255) NOT NULL, location VARCHAR(255) NOT NULL, created_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP, updated_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP ); CREATE TABLE item_attributes ( id INT AUTO_INCREMENT PRIMARY KEY, item_id INT, attribute_name VARCHAR(255) NOT NULL, attribute_value VARCHAR(255) NOT NULL, created_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP, updated_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP, FOREIGN KEY (item_id) REFERENCES items(id) ); -- To illustrate the denormalization strategy mentioned, here’s an example of a denormalized items_denormalized table: CREATE TABLE items_denormalized ( id INT AUTO_INCREMENT PRIMARY KEY, name VARCHAR(255) NOT NULL, category_name VARCHAR(255), supplier_name VARCHAR(255), warehouse_name VARCHAR(255), attribute_name VARCHAR(255), attribute_value VARCHAR(255), created_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP, updated_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP ); CREATE INDEX idx_items_id ON items(id); CREATE INDEX idx_categories_id ON categories(id); CREATE INDEX idx_suppliers_id ON suppliers(id); CREATE INDEX idx_warehouses_id ON warehouses(id); CREATE INDEX idx_item_attributes_item_id ON item_attributes(item_id);
Untuk sebarang kerja prestasi yang kami lakukan, adalah penting untuk dapat menghasilkan semula skala yang kami jangkakan untuk mendapatkan idea yang baik tentang prestasi aplikasi kami. Itulah sebabnya saya telah mengumpulkan skrip pembenihan berikut:
require 'faker' def create_records(message, &block) puts "Creating #{message}." starting = Process.clock_gettime(Process::CLOCK_MONOTONIC) yield if block_given? ending = Process.clock_gettime(Process::CLOCK_MONOTONIC) elapsed = ending - starting puts "#{message.capitalize} created. #{elapsed}" end puts 'Truncating database...' ActiveRecord::Tasks::DatabaseTasks.truncate_all puts 'Database truncated.' create_records('categories') do 10.times do Category.create(name: Faker::Book.genre) end end create_records('suppliers') do 25.times do Supplier.create(name: Faker::Company.name) end end create_records('warehouses') do 1000.times do Warehouse.create(name: Faker::Company.name, location: Faker::Address.full_address) end end create_records('items') do categories = Category.all.to_a suppliers = Supplier.all.to_a warehouses = Warehouse.all.to_a items = 100_000.times.map do { name: Faker::Commerce.product_name, category_id: categories.sample.id, supplier_id: suppliers.sample.id, warehouse_id: warehouses.sample.id } end items.each_slice(1000) do |batch| Item.insert_all(batch) end end create_records('item attributes') do items = Item.all # We'll bump this up later to 1_000_000 in order to see # the perf issues come up. item_attributes = 100_000.times.map do { attribute_name: Faker::Lorem.word, attribute_value: Faker::Lorem.word, item_id: items.sample.id } end item_attributes.each_slice(1000) do |batch| ItemAttribute.insert_all(batch) end end create_records('denormalized items') do items_with_associations = Item.includes(:category, :supplier, :warehouse) denormalized_items_attributes = [] items_with_associations.find_each(batch_size: 1000) do |item| denormalized_items_attributes << { name: item.name, item_id: item.id, category_name: item.category.name, category_id: item.category.id, supplier_name: item.supplier.name, supplier_id: item.supplier.id, warehouse_name: item.warehouse.name, warehouse_id: item.warehouse.id, created_at: DateTime.now, updated_at: DateTime.now } end denormalized_items_attributes.each_slice(1000) do |batch| ItemDenormalized.insert_all(batch) end end
Skrip pembenihan ini membantu mencipta rekod untuk semua entiti kami. Anda boleh memperhalusi skrip untuk mencipta lebih banyak atau kurang rekod untuk menguji seni bina. Itulah yang akan kami lakukan dalam beberapa saat.
Sekarang, ingat, ini akan dijalankan pada komputer tempatan anda jadi kami tidak menguji sumber tahap pengeluaran di sini. Mudah-mudahan, anda boleh mempunyai persekitaran tahap pengeluaran untuk bereksperimen dengan strategi yang berbeza, tetapi perkara di sini bukanlah untuk meniru pengeluaran - tetapi dapatkan pemahaman yang baik tentang kerumitan bekerja dengan seni bina yang sangat normal.
Apabila kami menjalankan benih, kami akan mendapat log berikut:
bundle exec rails db:seed Truncating database... Database truncated. Creating categories. Categories created. 3.226257999893278 Creating suppliers. Suppliers created. 0.1299410001374781 Creating warehouses. Warehouses created. 4.184017000021413 Creating items. Items created. 7.629256000043824 Creating item attributes. Item attributes created. 59.715396999847144 Creating denormalized items. Denormalized items created. 12.066422999836504
Baiklah, mari mula menjalankan beberapa pertanyaan.
Prestasi? Persembahan apa?!
Jadi, katakan saya mahu semua item kecuali dari McDermott-Casper, pembekal yang telah muflis. Selain itu, saya tidak mahu item yang mempunyai atribut enim dan/atau modi yang dikaitkan dengannya:
Kami boleh menulis pertanyaan, dengan ActiveRecord, dengan mudah seperti ini:
excluded_suppliers = Supplier .select('id') .where(name: "McDermott-Casper") .to_sql excluded_attributes = ItemAttribute .select(:item_id) .where(attribute_name: ['enim', 'modi']) .to_sql Item .distinct .select('items.id, items.name, categories.name AS category_name, suppliers.name AS supplier_name, warehouses.name AS warehouse_name') .joins(:category, :supplier, :warehouse) .left_outer_joins(:item_attributes) .where("items.supplier_id NOT IN (#{excluded_suppliers})") .where("items.id NOT IN(#{excluded_attributes})") .to_a
Syarat untuk mengecualikan item berdasarkan senario kami digunakan dalam syarat WHERE sebagai subkueri terbenam, sementara kami menyertai atribut item kategori, pembekal, gudang dan (sambungan luar kiri) untuk memastikan kami hanya mengambil item yang sepadan dengan keadaan kami .
Baiklah, mari kita uji perkara ini:
bundle exec rails c Loading development environment (Rails 7.1.3.4) irb(main):001* excluded_suppliers = irb(main):002> Supplier irb(main):003> .select('id') irb(main):004> .where(name: "McDermott-Casper") irb(main):005> .to_sql => "SELECT \"suppliers\".\"id\" FROM \"suppliers\" WHERE \"suppliers\".\"name\" = 'McDermott-Casper'" irb(main):006* excluded_attributes = irb(main):007> ItemAttribute irb(main):008> .select(:item_id) irb(main):009> .where(attribute_name: ['enim', 'modi']) irb(main):010> .to_sql => "SELECT \"item_attributes\".\"item_id\" FROM \"item_attributes\" WHERE \"item_attributes\".\"attribute_name\" IN ('enim', 'modi')" irb(main):011> Item irb(main):012> .distinct irb(main):013> .select('items.id, items.name, categories.name AS category_name, suppliers.name AS supplier_name, warehouses.name AS warehouse_name') irb(main):014> .joins(:category, :supplier, :warehouse) irb(main):015> .left_outer_joins(:item_attributes) irb(main):016> .where("items.supplier_id NOT IN (#{excluded_suppliers})") irb(main):017> .where("items.id NOT IN(#{excluded_attributes})") irb(main):018> .to_a Item Load (535.5ms) SELECT DISTINCT items.id, items.name, categories.name AS category_name, suppliers.name AS supplier_name, warehouses.name AS warehouse_name FROM "items" INNER JOIN "categories" ON "categories"."id" = "items"."category_id" INNER JOIN "suppliers" ON "suppliers"."id" = "items"."supplier_id" INNER JOIN "warehouses" ON "warehouses"."id" = "items"."warehouse_id" LEFT OUTER JOIN "item_attributes" ON "item_attributes"."item_id" = "items"."id" WHERE (items.supplier_id NOT IN (SELECT "suppliers"."id" FROM "suppliers" WHERE "suppliers"."name" = 'McDermott-Casper')) AND (items.id NOT IN(SELECT "item_attributes"."item_id" FROM "item_attributes" WHERE "item_attributes"."attribute_name" IN ('enim', 'modi'))) =>
Hebat! Kami sedang dalam pengambilan subsaat.
Baiklah. Mari lihat apa yang berlaku apabila kita menambah bilangan atribut dalam sistem kepada…katakan sejuta. Kita boleh melakukan ini dengan menjalankan kod berikut, yang diekstrak daripada skrip benih:
items = Item.all # We'll bump this up later to 1_000_000 in order to see # the perf issues come up. item_attributes = 900_000.times.map do { attribute_name: Faker::Lorem.word, attribute_value: Faker::Lorem.word, item_id: items.sample.id } end item_attributes.each_slice(1000) do |batch| ItemAttribute.insert_all(batch) end
Sekarang perlu diingat bahawa di atas mempunyai 1,187 rekod atribut item yang sepadan dengan enim atau modi.
irb(main):001* excluded_suppliers = irb(main):002> Supplier irb(main):003> .select('id') irb(main):004> .where(name: "McDermott-Casper") irb(main):005> .to_sql irb(main):006> => "SELECT \"suppliers\".\"id\" FROM \"suppliers\" WHERE \"suppliers\".\"name\" = 'McDermott-Casper'" irb(main):007* excluded_attributes = irb(main):008> ItemAttribute irb(main):009> .select(:item_id) irb(main):010> .where(attribute_name: ['enim', 'modi']) irb(main):011> .to_sql irb(main):012> => "SELECT \"item_attributes\".\"item_id\" FROM \"item_attributes\" WHERE \"item_attributes\".\"attribute_name\" IN ('enim', 'modi')" irb(main):013> Item irb(main):014> .distinct irb(main):015> .select('items.id, items.name, categories.name AS category_name, suppliers.name AS supplier_name, warehouses.name AS warehouse_name') irb(main):016> .joins(:category, :supplier, :warehouse) irb(main):017> .left_outer_joins(:item_attributes) irb(main):018> .where("items.supplier_id NOT IN (#{excluded_suppliers})") irb(main):019> .where("items.id NOT IN(#{excluded_attributes})") irb(main):020> .to_a irb(main):021> Item Load (3002.4ms) SELECT DISTINCT items.id,
Wah! Ok. Kini kami berada di 3s.
Masalah hanya akan menjadi lebih teruk apabila lebih banyak item ditambahkan pada sistem dari semasa ke semasa dan berkaitan item_attributes akan terus memberi kesan kepada pertanyaan khusus ini. Apabila 900,000 lagi atribut ditambah terdapat peningkatan bilangan rekod yang sepadan dengan enim atau modi. Malah kami telah meningkat daripada 1,187 kepada 12,154 rekod.
This kind of scale is completely normal and really shouldn’t be unexpected. As the number of attributes for items can increase significantly over time in an inventory management system for all sorts of reasons. Ok, so more records were added - of course performance would be impacted. What exactly is happening?
Is normalization really the issue here?
I’m going to remove the joins to categories and warehouses:
irb(main):029> Item irb(main):030> .distinct irb(main):031> .select('items.id, items.name, suppliers.name AS supplier_name') irb(main):032> .joins(:supplier) irb(main):033> .left_outer_joins(:item_attributes) irb(main):034> .where("items.supplier_id NOT IN (#{excluded_suppliers})") irb(main):035> .where("items.id NOT IN(#{excluded_attributes})") irb(main):036> .to_a irb(main):037> Item Load (1938.4ms) SELECT DISTINCT items.id, items.name, suppliers.name AS supplier_name FROM "items" INNER JOIN "suppliers" ON "suppliers"."id" = "items"."supplier_id" LEFT OUTER JOIN "item_attributes" ON "item_attributes"."item_id" = "items"."id" WHERE (items.supplier_id NOT IN (SELECT "suppliers"."id" FROM "suppliers" WHERE "suppliers"."name" = 'McDermott-Casper')) AND (items.id NOT IN(SELECT "item_attributes"."item_id" FROM "item_attributes" WHERE "item_attributes"."attribute_name" IN ('enim', 'modi'))) =>
Ok, so yeah, we get a ~30% improvement just removing the join. Let's run an explain on these and try to understand what's going on.
Unique (cost=80266.89..84016.89 rows=250000 width=99) -> Sort (cost=80266.89..80891.89 rows=250000 width=99) Sort Key: items.id, items.name, categories.name, suppliers.name, warehouses.name -> Hash Join (cost=20105.00..44177.93 rows=250000 width=99) Hash Cond: (items.warehouse_id = warehouses.id) -> Hash Join (cost=20066.50..43480.40 rows=250000 width=89) Hash Cond: (items.supplier_id = suppliers.id) -> Hash Join (cost=20030.63..42785.86 rows=250000 width=78) Hash Cond: (items.category_id = categories.id) -> Hash Right Join (cost=19998.80..42094.91 rows=250000 width=54) Hash Cond: (item_attributes.item_id = items.id) -> Seq Scan on item_attributes (cost=0.00..19471.00 rows=1000000 width=8) -> Hash (cost=19686.30..19686.30 rows=25000 width=54) -> Seq Scan on items (cost=16933.30..19686.30 rows=25000 width=54) Filter: ((NOT (hashed SubPlan 1)) AND (NOT (hashed SubPlan 2))) SubPlan 1 -> Seq Scan on suppliers suppliers_1 (cost=0.00..24.38 rows=1 width=8) " Filter: ((name)::text = 'McDermott-Casper'::text)" SubPlan 2 -> Gather (cost=1000.00..16878.93 rows=11996 width=8) Workers Planned: 2 -> Parallel Seq Scan on item_attributes item_attributes_1 (cost=0.00..14679.33 rows=4998 width=8) " Filter: ((attribute_name)::text = ANY ('{enim,modi}'::text[]))" -> Hash (cost=19.70..19.70 rows=970 width=40) -> Seq Scan on categories (cost=0.00..19.70 rows=970 width=40) -> Hash (cost=21.50..21.50 rows=1150 width=27) -> Seq Scan on suppliers (cost=0.00..21.50 rows=1150 width=27) -> Hash (cost=26.00..26.00 rows=1000 width=26) -> Seq Scan on warehouses (cost=0.00..26.00 rows=1000 width=26)
The plan above is telling us the output of each join is funneled into the next one:
(items <> warehouses) -> (items <> suppliers) -> (items <> categories)
Because of the multiple joins, we essentially increase the performance impact as more data is spread out across your database, e.g. normalization.
Now, let’s look at the plan after we remove the joins:
Unique (cost=73750.91..76250.91 rows=250000 width=49) -> Sort (cost=73750.91..74375.91 rows=250000 width=49) Sort Key: items.id, items.name, suppliers.name -> Hash Join (cost=20034.68..42789.45 rows=250000 width=49) Hash Cond: (items.supplier_id = suppliers.id) -> Hash Right Join (cost=19998.80..42094.91 rows=250000 width=38) Hash Cond: (item_attributes.item_id = items.id) -> Seq Scan on item_attributes (cost=0.00..19471.00 rows=1000000 width=8) -> Hash (cost=19686.30..19686.30 rows=25000 width=38) -> Seq Scan on items (cost=16933.30..19686.30 rows=25000 width=38) Filter: ((NOT (hashed SubPlan 1)) AND (NOT (hashed SubPlan 2))) SubPlan 1 -> Seq Scan on suppliers suppliers_1 (cost=0.00..24.38 rows=1 width=8) " Filter: ((name)::text = 'McDermott-Casper'::text)" SubPlan 2 -> Gather (cost=1000.00..16878.93 rows=11996 width=8) Workers Planned: 2 -> Parallel Seq Scan on item_attributes item_attributes_1 (cost=0.00..14679.33 rows=4998 width=8) " Filter: ((attribute_name)::text = ANY ('{enim,modi}'::text[]))" -> Hash (cost=21.50..21.50 rows=1150 width=27) -> Seq Scan on suppliers (cost=0.00..21.50 rows=1150 width=27)
Ok, so we get a better query plan. Less joins, less data to scan and therefore more performance. However, doing this won't meet the requirements. Remember, the report needs the names of the associated suppliers and warehouses. Let's see what happens when we denormalize the data and simplify the lookup process.
irb(main):074* excluded_suppliers = irb(main):075> Supplier irb(main):076> .select('id') irb(main):077> .where(name: "McDermott-Casper") irb(main):078> .to_sql irb(main):079> irb(main):080* excluded_attributes = irb(main):081> ItemAttribute irb(main):082> .select(:item_id) irb(main):083> .where(attribute_name: ['enim', 'modi']) irb(main):084> .to_sql irb(main):085> irb(main):086> ItemDenormalized irb(main):087> .distinct irb(main):088> .select('items_denormalized.id as id, items_denormalized.category_name as category_name, items_denormalized.supplier_name as supplier_name, items_denormalized.warehouse_name as warehouse_name') irb(main):089> .joins(:supplier) irb(main):090> .left_outer_joins(:item_attributes) irb(main):091> .where("items_denormalized.supplier_id NOT IN (#{excluded_suppliers})") irb(main):092> .where("items_denormalized.item_id NOT IN(#{excluded_attributes})") irb(main):093> .to_a irb(main):094> ItemDenormalized Load (1107.3ms) SELECT DISTINCT items_denormalized.id as id,
In this example, the lookup on the denormalized table performed similarly to when we removed the joins (1107.3ms v. 1938.4ms). The difference is that we have the category and warehouse names. Denormalization does introduce multiple complexities that need to be handled; such as redundancy and integrity of the data, e.g. what happens when categories are updated? or when warehouses are deleted?
Putting that aside though, we see that denormalization handles certain scenarios well when it comes to performance. We should consider it's benefits when building applications that will inevitably need to scale. In our example above, we can see with just a million records, we start to run into some performance bottlenecks.
Let's think through what bottlenecks start to come into play after running through the examples above.
Highly normalized schemas often require complex queries with multiple joins, which can be slow and resource-intensive.
SELECT DISTINCT items.id, items.name, categories.name AS category_name, suppliers.name AS supplier_name, warehouses.name AS warehouse_name FROM "items" INNER JOIN "categories" ON "categories"."id" = "items"."category_id" INNER JOIN "suppliers" ON "suppliers"."id" = "items"."supplier_id" INNER JOIN "warehouses" ON "warehouses"."id" = "items"."warehouse_id" LEFT OUTER JOIN "item_attributes" ON "item_attributes"."item_id" = "items"."id" WHERE (items.supplier_id NOT IN( SELECT "suppliers"."id" FROM "suppliers" WHERE "suppliers"."name" = 'McDermott-Casper')) AND(items.id NOT IN( SELECT "item_attributes"."item_id" FROM "item_attributes" WHERE "item_attributes"."attribute_name" IN('enim', 'modi')));
I wouldn't consider the above too complex, however, the conditions that execute subqueries can start to get complex when joining on joins. This happens a lot in large scale applications that have evolved over time. Again, normalization is great in an ideal world - but it is also important to understand what other complexities it introduces.
Each table lookup can lead to additional I/O operations, slowing down the overall query performance. When we start to talk through IO operations in the database, it's important to know, high level, why this is an important part of the puzzle. So let's dive into some issues that come up at scale.
Read/Write: Each join that involves disk-based temporary tables or large data sets will increase the number of disk reads and writes. This can cause a significant I/O load, especially in applications where the behavior is quite active (jobs, high traffic, etc.).
Buffer Pool Pressure: Joins can put pressure on the MySQL buffer pool, especially with larger data sets. When the buffer pool is full, MySQL has to evict pages to make room for new data, causing additional disk I/O.
Temporary Tables: MySQL may create temporary tables to hold intermediate results during complex join operations. These temporary tables can be stored in memory or on disk, depending on their size. Disk-based temporary tables increase I/O operations, leading to slower performance.
In a highly concurrent environment, frequent access and updates across multiple tables can lead to lock contention and further degrade performance.
Lock Types: MySQL uses different types of locks (e.g., shared, exclusive) depending on the operation. Complex queries with multiple joins can require various locks, leading to contention if different parts of the query need the same resources.
Row-Level vs. Table-Level Locks: InnoDB uses row-level locking, which is generally more efficient than table-level locking used by MyISAM. However, even row-level locks can cause contention if multiple transactions try to modify the same rows simultaneously.
Increased Lock Duration: Queries involving joins on joins often take longer to execute. The longer a transaction holds locks, the higher the chance of contention with other transactions.
Lock Escalation: Although InnoDB uses row-level locking, high contention can sometimes cause lock escalation, where the database engine escalates to table-level locks to manage the contention, leading to broader performance issues. This is typically due to non-existent and/or lacking indexes.
Lock Waits: When a transaction needs a lock held by another transaction, it must wait, leading to increased query execution time and potential timeouts.
Deadlocks: Complex queries with multiple joins increase the risk of deadlocks, where two or more transactions are waiting for each other’s locks, causing the database to automatically roll back one of the transactions to resolve the deadlock, typically the "victim" is rolled back.
To mitigate performance issues in highly normalized architectures, consider the following strategies:
The process for denormalizing data involves adding redundant data to tables to reduce the number of joins required. While this increases storage requirements and the risk of data anomalies, it can significantly improve read performance.
SELECT i.id, i.name, i.category_name, i.supplier_name, i.warehouse_name, i.attribute_value FROM items_denormalized i WHERE i.id = ?
In this example, the items_denormalized table combines data from the categories, suppliers, warehouses, and item_attributes tables, eliminating the need for multiple joins.
Proper indexing can dramatically improve query performance. Ensure that all columns used in joins and WHERE clauses are indexed. Remember, an index is super important to prevent full table locks. Keep in mind, that even this will not help if temporary tables are created with your joins, which will NOT have indexes.
CREATE INDEX idx_items_id ON items(id); CREATE INDEX idx_categories_id ON categories(id); CREATE INDEX idx_suppliers_id ON suppliers(id); CREATE INDEX idx_warehouses_id ON warehouses(id); CREATE INDEX idx_item_attributes_item_id ON item_attributes(item_id);
Implement caching mechanisms to store frequently accessed data in memory, reducing the need for repeated database queries. There are multiple strategies for implementing caching, which will be covered in a different post, but these strategies can range from utilizing summary tables, to integrating different technologies that can store results temporarily.
# Example using Ruby on Rails with Redis cache item = Rails.cache.fetch("item_#{id}", expires_in: 12.hours) do Item.includes(:category, :supplier, :warehouse, :item_attributes).find(id) end
Analyze and optimize your queries to ensure they are as efficient as possible. Use tools like MySQL’s EXPLAIN ANALYZE statement to understand the execution plan and identify bottlenecks.
EXPLAIN SELECT i.id, i.name, c.name AS category, s.name AS supplier, w.name AS warehouse, ia.attribute_value FROM items i JOIN categories c ON i.category_id = c.id JOIN suppliers s ON i.supplier_id = s.id JOIN warehouses w ON i.warehouse_id = w.id JOIN item_attributes ia ON i.id = ia.item_id WHERE i.id = 1;
Normalization is a powerful technique for maintaining data integrity, but it can lead to performance challenges in large-scale applications. Knowing the tradeoffs here can help you scale your application in the long term, considering denormalization as just another strategy to help scale. If denormalization is not favorable; consider reviewing indices (including composites), result caching and query optimization to improve performance. Thank you for reading and please reach out if you have any questions!
Microsoft 365 - Description of the database normalization basics
Coding Horror - Maybe Normalizing Isn't Normal
informIT - When You Can't Change a SQL Database Design
PureStorage - Denormalized vs. Normalized Data.
MySQL - Buffer Pool
MySQL - InnoDB Disk I/O
MySQL - Internal Temporary Table Use in MySQL
MySQL - Locks Set by Different SQL Statements in InnoDB
Percona - Understanding Hash Joins in MySQL 8
Percona - Horizontal Scaling in MySQL – Sharding Followup
PlanetScale - How to Scale your Database and when to Shard MySQL
Awesome - Database Design
Awesome - MySQL
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