Table Partitioning: If a single table is too large for the index, it may be a good idea to split the table (for example) per month of data. Your queries now must specify the month to select the right table(s), but each table gets its own index, instead of having one massive index, returning speed to normal.
@NostraDavid26 ай бұрын
It doesn't have to be per month - you can also select per year or day, and it doesn't have to be per date either: You could split it per category or name as well.
@The-KP6 ай бұрын
aka- Archiving data unlikely to be retrieved during normal operations, if it significantly reduces rowcount.
@raptyaxa57716 ай бұрын
Isn't that sharding?
@gtizzle1016 ай бұрын
@@raptyaxa5771partitions stay on the same server
@saitaro6 ай бұрын
@@raptyaxa5771 Shards are separate servers.
@mavistrasilvania6 ай бұрын
🎯 Key points for quick navigation: 00:00 *📈 Scaling database importance* - Why scaling is necessary as applications grow - Effects of increased load on performance - Importance of maintaining smooth operations for good user experience 01:09 *📊 Indexing for database performance* - Indexes help locate information quickly in a database - B+ tree indexes are common and efficient for various queries - Balancing indexing for improved performance without slowing down write operations 02:07 *📑 Materialized views benefits and considerations* - Materialized views store pre-computed data for faster access - Balancing data refresh frequency with performance benefits is essential - Efficiency gains from materialized views in complex query scenarios 03:01 *⬆️ Denormalization advantages and drawbacks* - Denormalization simplifies data retrieval and speeds up queries - Consistency challenges with managing redundant data during updates - Impact of denormalization on complex query executions 03:56 *💻 Vertical scaling for immediate performance improvement* - Adding resources to an existing database server to handle increased load - Addressing limitations and cost considerations of vertical scaling - The importance of redundant database configuration in vertical scaling 05:04 *🚀 Caching to reduce database load and improve response times* - Storing frequently accessed data in a faster storage layer - Addressing cache invalidation challenges for maintaining data accuracy - Implementing caching at various levels for improved performance 06:14 *🔄 Database replication for availability and fault tolerance* - Creating copies of primary databases on different servers - Configuring synchronous and asynchronous replication for data consistency - Challenges of managing data consistency and overhead with replication 07:08 *🔀 Sharding for efficient distribution of database workload* - Splitting a large database into smaller, manageable pieces called shards - Effective scalability by distributing workload across multiple servers - Challenges and benefits of horizontal scaling through sharding techniques Made with HARPA AI
@hnfsrj6 ай бұрын
This video dropped when I was considering researching this topic. Awesome !!
@GambillDataEngineering2 ай бұрын
Great job addressing the top strategies for scaling and efficiency! Denormalization and effective data modeling is critical for scaling data in your data warehouse!
@wsh4and6 ай бұрын
You have to give us another tutorial to create those slick animations, please :). Great video btw
@TheShantanu13955 ай бұрын
Data archival is also an excellent technique when the system scales and table size increases apart from partitioning as discussed in some other comments as it decreases overall load on the system. It's better to shard the db, partition it, and archive the older partitions.
@szabolcstoth48986 ай бұрын
Thanks! That was informative
@SergioAlonso-pancutan6 ай бұрын
I would like to have a big enterprise to assign this man as my CTO
@VelNatCar6 ай бұрын
Very useful information. Can I ask what tool you use for design diagrams? Thanks
@adilsheikh99166 ай бұрын
thanks for another excellent video....every time I see such videos to make the applications faster, I just wonder that are we pushing the hardware/software limits or we are reducing our patience & sanity limits.
Thank you Alex. wonderful video. Additionally, I believe elastic search is good option as well for scaling reads...if eventual consistency between primary db and elastic search be maintained
@rafid__5 ай бұрын
He is Sahn Lam, not Alex
@MrAtomUniverse6 ай бұрын
What software do you use to make the video?
@a1988ditya6 ай бұрын
Wat abt partitioning of tables eg in postgres, tey help immensely
@sanaefilali-t1y6 ай бұрын
hello bytebytego can you make a series of videos explaining reverse engineering web APIs, automation
@patrickvandijk40782 ай бұрын
Typo at 3:04: Recude complex joins, should be Reduce
@shahar386 ай бұрын
Thanks for this great video, could you share which software or framework you use to create the animations?
@nickyn2864 ай бұрын
Illistrator and After effects
@jasperanelechukwu5 ай бұрын
Thank you. Very informative 👏
@cyberginx46136 ай бұрын
Hello Sir!!, big fan of your content, very knowledgeable, a quick question what tool do you use to simulate all the workflow diagrams for understanding considering all architectural diagrams
@Arabe_ai-w8d6 ай бұрын
I want to Ask you what IS thé softwar you use to create this beautifull presentation
@desmondwilson34165 ай бұрын
Is it even legal to make content this good!?
@OkayestOfDads4 ай бұрын
Reported him for too high quality of animation and generally too helpful of content. You can to! 😂
@martink.74973 ай бұрын
0:35 - more users → more unstable = fewer users → more stable So it is a self-balancing DB, problem solved :D
@abdulmaliknurudeen73316 ай бұрын
Keep up the Good work
@rpf235436 ай бұрын
Your animations are amazing!
@a1988ditya6 ай бұрын
I must say , but content is very shallow no depth at all
@OkayestOfDads4 ай бұрын
@a1988ditya It's meant to be high level. Their newsletter, bytebytego site and training programs, and book go into greater depth.
@omninspire6 ай бұрын
Always informative. Thanks
@nfaza806 ай бұрын
7 Ineffable Paradigms for Augmenting Database Scalability **1. Indexation: The Cryptic Codex of Data Retrieval** Analogous to the esoteric indices of an arcane grimoire, database indices facilitate the expeditious exhumation of information sans the necessity of scrutinizing every infinitesimal datum. * **Modus Operandi:** Indices constitute labyrinthine data structures that warehouse specific column values and indicate the corresponding rows within the tabular labyrinth. * **Exemplification:** In a repository of clientele, indexing the 'customer identifier' permits swift chronological excavation of transactional history, circumventing a comprehensive perusal of the tabular expanse. * **Taxonomies:** * **B-tree Index:** The most ubiquitous typology, suitable for a wide spectrum of inquiries, including range-bound interrogations. Proffers rapid insertion, deletion, and lookup operations within its arboreal structure. * **Advantages:** Substantially diminishes the temporal duration required for query execution. * **Disadvantages:** * May decelerate write operations as the index necessitates perpetual recalibration with each infinitesimal data transmutation. * Ascertaining the optimal equilibrium and selecting appropriate fields for indexation is a Herculean task crucial for peak performance. **2. Materialized Views: Platonic Ideals of Pre-computed Data** Materialized views constitute the pre-calculated quintessence of intricate queries, warehoused in a realm of expeditious access. * **Modus Operandi:** A materialized view entombs the query outcome, undergoing periodic metamorphosis to reflect the most recent data transmutations. * **Exemplification:** In a Business Intelligence pantheon, a materialized view can enshrine daily sales reports, generated from a voluminous dataset of Cyclopean proportions. In lieu of perpetually interrogating the entire dataset, the report can be instantaneously manifested from the view's crystallized form. * **Advantages:** Substantially enhances performance by mitigating the Sisyphean computational burden. * **Disadvantages:** * Necessitates periodic rejuvenation to maintain data congruence, a process of Promethean resource consumption. * Striking a Delphic balance between refresh frequency and performance benefits is crucial. **3. Denormalization: The Faustian Bargain of Data Redundancy** Denormalization entails the introduction of deliberate redundancy, a Mephistophelian pact of warehousing data in multiple loci to accelerate retrieval. * **Modus Operandi:** Redundant data is appended to tables with Borgesian duplication, circumventing the need for complex joins across multiple tabular realms. * **Exemplification:** Social media Leviathans frequently denormalize data to warehouse user posts and information within the same tabular expanse, expediting the Herculean task of feed generation. * **Advantages:** Substantially augments read performance by simplifying the labyrinthine process of query execution. * **Disadvantages:** * Augments storage requisites with Brobdingnagian voracity. * Necessitates meticulous, Sisyphean management of updates to maintain congruence across the database's multifarious facets. * Can engender complexities and potential issues of Gordian proportions if not handled with Solomonic wisdom. **4. Vertical Scaling: Promethean Augmentation of Silicon Titans** Vertical scaling, or "scaling up," involves the Titanic augmentation of resources to your extant database server, a process akin to bestowing godlike powers upon mortal silicon. * **Modus Operandi:** Upgrading hardware such as CPU, RAM, or storage capacity of the existing server to Olympian proportions. * **Exemplification:** An online marketplace experiencing Promethean growth upgrades its database server to contend with increased load and transaction volume of Biblical proportions. * **Advantages:** * Relatively straightforward to implement, akin to granting Herculean strength to Atlas. * Provides immediate performance enhancements without necessitating Daedalian modifications to application architecture. * **Disadvantages:** * Limited scalability due to the Procrustean constraints of hardware limitations and pecuniary considerations. * Fails to address redundancy; a single server failure can still precipitate a database apocalypse. **5. Caching: The Mnemosyne's Embrace of Ephemeral Data** Caching, the art of storing frequently accessed data in Mnemosyne's bosom, provides a stratum of expeditious retrieval and mitigated database encumbrance. * **Modus Operandi:** Frequently accessed data is ensconced in a cache (in-memory or application-level), diminishing the Sisyphean necessity to perpetually query the database. * **Exemplification:** A streaming service of Amazonian proportions caches movie metadata to expedite title display, mitigating the Herculean database load. * **Advantages:** * Drastically reduces response times for frequently accessed data to near-instantaneous levels. * Enhances user experience to heights of Elysian bliss. * **Disadvantages:** * Necessitates a cache invalidation strategy of Delphic complexity to ensure data congruence. * Stale cache data can lead to the Cassandra-like prophecy of inaccurate information. **6. Replication: The Hydra-headed Proliferation of Data Simulacra** Replication involves the creation of Hydra-like copies of the primary database on disparate servers to enhance availability, distribute load with Herculean efficiency, and augment fault tolerance to Olympian levels. * **Modus Operandi:** Data undergoes mitotic division from the primary database to replica servers. * **Taxonomies:** * **Synchronous Replication:** Ensures immediate data congruence but introduces latency akin to Achilles' pursuit of the tortoise. * **Asynchronous Replication:** Proffers superior performance but may engender temporary incongruities, a Schrödinger's cat of data states. * **Advantages:** * Enhances read performance and availability to near-omniscient levels. * Augments fault tolerance with Promethean resilience. * **Disadvantages:** * Augments storage and maintenance overhead to Brobdingnagian proportions. * Introduces complexity in maintaining data congruence, particularly in distributed systems of Borgesian intricacy. **7. Sharding: The Alexandrian Solution to the Gordian Knot of Data Magnitude** Sharding involves the bifurcation of a voluminous database into smaller, more manageable segments called shards, distributed across multiple servers with Alexandrian precision. * **Modus Operandi:** Each shard contains a subset of the data predicated on a specific sharding key, akin to dividing the world among Olympian deities. * **Exemplification:** Instagram, that Panopticon of digital narcissism, shards its database by user ID, distributing data across a multitude of servers with the efficiency of Daedalus's labyrinth, achieving a load balancing feat worthy of Atlas himself. * **Advantages:** * Permits horizontal scaling by appending more servers, akin to adding new realms to Yggdrasil. * Substantially enhances both read and write performance to near-lightspeed efficiency. * **Disadvantages:** * Introduces complexity in database design and management that would perplex even the Sphinx. * Selecting the appropriate sharding key is a task of Delphic importance, crucial for equitable data distribution. * Querying and re-sharding can be complex and resource-intensive, a Herculean labor that would make Sisyphus weep.
@zarkojakimovski24266 ай бұрын
Sounds more like database scaling strategies by Socrates, Plato, Aristoteles et al. 😊
@fyraveloson80543 ай бұрын
clustering can be used as well
@richardduncan34036 ай бұрын
Nice succinct summary:)
@hyperborean723 ай бұрын
"vertical scaling does not address redundancy" - here is a mistake, it does not address resilience (or fault tolerance)
@vnit4security6 ай бұрын
Nice tut 🎉🎉
@gaborbence69436 ай бұрын
this, is amazing thank you
@victormungai6 ай бұрын
Is it possible to combine two or more strategies?
@sultan_of_oop6 ай бұрын
yes
@Winnetou176 ай бұрын
Regarding the strategies of this video, you can do all of them at the same time.
@raj_kundalia6 ай бұрын
Thank you!
@jordyvu9993 ай бұрын
Love your content ! Just clarify a bit on Denormalization, denormalization is we don’t apply normalization techniques (2NF,3NF,..) into db, that means we accept redundancies in db storage but it’s much efficient in queries (no need to join other tables).
@Netfox_3 ай бұрын
In a traditional RBS when talking specifically about schema design yes your correct (taking me back to my relational calc days). Speaking more generally about distributed systems denormalization is a general team meaning just having multiple views of the same data normally backed by a specific SOT (source of truth), I consider putting distinct read models into my stack as denormalization. (Redis / Elastic / etc).
@jordyvu9993 ай бұрын
@@Netfox_thank for sharing
@rishiraj25485 ай бұрын
great thanks
@danzaharescu26326 ай бұрын
What about partitioning ?
@yatinarora12526 ай бұрын
That's shardinng
@MrJonnis136 ай бұрын
Very nice
@anilsworld20004 ай бұрын
This video is very informative. Can you help us to understand ho to develop database for multiple user webapp ?
@svorskemattias3 ай бұрын
Indexing, materialized views and denormalization are all conceptually the same thing
@loopaal5 ай бұрын
golden!!
@SupriYanto-fn9vk5 ай бұрын
Thanks
@blindyogi49976 ай бұрын
My god, this guy
@abuDA-bt6ei3 ай бұрын
Mf’s love their diagrams and PowerPoint presentations about database scaling. I got an idea, actually do it. Show us how you’d shard and partition a db for real.. no more theory, no more diagrams, no more explanations. I’m starting to think no one can actually do it in reality and people just like talking about it..
@AniketSingh-nx4ds2 ай бұрын
Lol literally have examples out there like instagram, pinterest etc
@robgreen0226 ай бұрын
Just stick all the data on a single big HD. Problem solved! 😋😋
@yatinarora12526 ай бұрын
But the scaling problem will occur will become single point of failure
@m.awadsyahid23926 ай бұрын
@@yatinarora1252 then, you can focus only on that single point of failure.
@Winnetou176 ай бұрын
Single big High definition ? I'm not sure if all my data can fit into a 1280x720 ...
@moonfire50696 ай бұрын
You must be trolling lol
@jordyvu9993 ай бұрын
single point of failure 😂, risk if your kids or your wife throw it in garbage, let alone flooding or storm :))
@ol_suhАй бұрын
13 And no man hath ascended up to heaven, but he that came down from heaven, even the Son of man which is in heaven. 14 And as Moses lifted up the serpent in the wilderness, even so must the Son of man be lifted up: 15 That whosoever believeth in him should not perish, but have eternal life. 16 For God so loved the world, that he gave his only begotten Son, that whosoever believeth in him should not perish, but have everlasting life. 17 For God sent not his Son into the world to condemn the world; but that the world through him might be saved. 18 He that believeth on him is not condemned: but he that believeth not is condemned already, because he hath not believed in the name of the only begotten Son of God. 19 And this is the condemnation, that light is come into the world, and men loved darkness rather than light, because their deeds were evil. 20 For every one that doeth evil hateth the light, neither cometh to the light, lest his deeds should be reproved. 21 But he that doeth truth cometh to the light, that his deeds may be made manifest, that they are wrought in God. (Jn.3:13-21)
@dulonmahadi18375 ай бұрын
vhai tora namaj, porda thik moto korisss
@youaresowealthy73336 ай бұрын
建议不要露脸,没必要
@phamvanminh15103 ай бұрын
What is the name of tool that he draw his dynamic diagrams....please🥲