What is machine learning and how does Netflix use it for its recommendation engine?
What is an online recommendation engine?
Think about examples of machine learning you may have encountered in the past such as a website like Netflix that recommends what video you may be interested in watching next?
Are the recommendations ever wrong or unfair? We will give an example and explain how this could be addressed.
Machine learning is a field of artificial intelligence that Netflix uses to create its recommendation algorithm. The goal of machine learning is to teach computers to learn from data and make predictions based on that data. To do this, Netflix employs Machine Learning Engineers, Data Scientists, and software developers to design and build algorithms that can automatically improve over time. The Netflix recommendations engine is just one example of how machine learning can be used to improve the user experience. By understanding what users watch and why, the recommendations engine can provide tailored suggestions that help users find new shows and movies to enjoy. Machine learning is also used for other Netflix features, such as predicting which shows a user might be interested in watching next, or detecting inappropriate content. In a world where data is becoming increasingly important, machine learning will continue to play a vital role in helping Netflix deliver a great experience to its users.
Netflix’s recommendation engine is one of the company’s most valuable assets. By using machine learning, Netflix is able to constantly improve its recommendations for each individual user.
Machine learning engineers, data scientists, and developers work together to build and improve the recommendation engine.
- They start by collecting data on what users watch and how they interact with the Netflix interface.
- This data is then used to train machine learning models.
- The models are constantly being tweaked and improved by the team of engineers.
- The goal is to make sure that each user sees recommendations that are highly relevant to their interests.
Thanks to the work of the team, Netflix’s recommendation engine is constantly getting better at understanding each individual user.
How Does It Work?
In short, Netflix’s recommendation algorithm looks at what you’ve watched in the past and then makes recommendations based on that data. But of course, it’s a bit more complicated than that. The algorithm also looks at data from other users with similar watching habits to yours. This allows Netflix to give you more tailored recommendations.
For example, say you’re a big fan of Friends (who isn’t?). The algorithm knows that a lot of Friends fans also like shows like Cheers, Seinfeld, and The Office. So, if you’re ever feeling nostalgic and in the mood for a sitcom marathon, Netflix will be there to help you out.
But That’s Not All…
Not only does the algorithm take into account what you’ve watched in the past, but it also looks at what you’re currently watching. For example, let’s say you’re halfway through Season 2 of Breaking Bad and you decide to take a break for a few days. When you come back and finish Season 2, the algorithm knows that you’re now interested in similar shows like Dexter and The Wire. And voila! Those shows will now be recommended to you.
Of course, the algorithm isn’t perfect. There are always going to be times when it recommends a show or movie that just doesn’t interest you. But hey, that’s why they have the “thumbs up/thumbs down” feature. Just give those shows the old thumbs down and never think about them again! Problem solved.
Another angle :
When it comes to TV and movie recommendations, there are two main types of data that are being collected and analyzed:
1) demographic data
2) viewing data.
Demographic data is information like your age, gender, location, etc. This data is generally used to group people with similar interests together so that they can be served more targeted recommendations. For example, if you’re a 25-year-old female living in Los Angeles, you might be grouped together with other 25-year-old females living in Los Angeles who have similar viewing habits as you.
Viewing data is exactly what it sounds like—it’s information on what TV shows and movies you’ve watched in the past. This data is used to identify patterns in your viewing habits so that the algorithm can make better recommendations on what you might want to watch next. For example, if you’ve watched a lot of romantic comedies in the past, the algorithm might recommend other romantic comedies that you might like based on those patterns.
Are the Recommendations Ever Wrong or Unfair?
Yes and no. The fact of the matter is that no algorithm is perfect—there will always be some error involved. However, these errors are usually minor and don’t have a major impact on our lives. In fact, we often don’t even notice them!
The bigger issue with machine learning isn’t inaccuracy; it’s bias. Because algorithms are designed by humans, they often contain human biases that can seep into the recommendations they make. For example, a recent study found that Amazon’s algorithms were biased against women authors because the majority of book purchases on the site were made by men. As a result, Amazon’s algorithms were more likely to recommend books written by men over books written by women—regardless of quality or popularity.
These sorts of biases can have major impacts on our lives because they can dictate what we see and don’t see online. If we’re only seeing content that reflects our own biases back at us, we’re not getting a well-rounded view of the world—and that can have serious implications for both our personal lives and society as a whole.
One of the benefits of machine learning is that it can help us make better decisions. For example, if you’re trying to decide what movie to watch on Netflix, the site will use your past viewing history to recommend movies that you might like. This is possible because machine learning algorithms are able to identify patterns in data.
Another benefit of machine learning is that it can help us automate tasks. For example, if you’re a cashier and have to scan the barcodes of the items someone is buying, a machine learning algorithm can be used to automatically scan the barcodes and calculate the total cost of the purchase. This can save time and increase efficiency.
The Consequences of Machine Learning
While machine learning can be beneficial, there are also some potential consequences that should be considered. One consequence is that machine learning algorithms can perpetuate bias. For example, if you’re using a machine learning algorithm to recommend movies to people on Netflix, the algorithm might only recommend movies that are similar to ones that people have already watched. This could lead to people only watching movies that confirm their existing beliefs instead of challenged them.
Another consequence of machine learning is that it can be difficult to understand how the algorithms work. This is because the algorithms are usually created by trained experts and then fine-tuned through trial and error. As a result, regular people often don’t know how or why certain decisions are being made by machines. This lack of transparency can lead to mistrust and frustration.
This scene in the Black Panther trailer, is it T’Challa’s funeral?
Recommended New Netflix Movies 2022
- Saul Alvarez outclasses Jermell Charlo to retain undisputed crown | LiveScoreby Samueljosh (Netflix on Medium) on October 1, 2023 at 7:18 pm
Saul Alvarez retained his undisputed super-middleweight crown by outclassing Jermell Charlo.Continue reading on Medium »
- Screen Time Tacticsby Joe Heck (Netflix on Medium) on October 1, 2023 at 6:48 pm
Smartphones allow users to do an array of different things. These devices can be used to take photos, message friends and family, and…Continue reading on Medium »
- What’s your favorite Jim Henson Movie or TV showby /u/Helloimafanoffiction (Movie News and Discussion) on October 1, 2023 at 4:23 pm
Jim Henson is remembered for his amazing puppet work in film and television and creating the Muppets I really enjoyed The Storyteller it had some amazing puppet work and an enjoyable central performance by John Hurt and he has a great dynamic with his dog voiced by Brian Henson For movies I’d go with The Dark Crystal the puppetry is great and it has a fantastic story submitted by /u/Helloimafanoffiction [link] [comments]
- Why is this subreddit now just askreddit for movies?by /u/justjake274 (Movie News and Discussion) on October 1, 2023 at 4:19 pm
Some time in the last few months, r/movies has been entirely consumed by askreddit-style questions like "What's your favorite hidden gem??" or "What actor fell off the map??" These questions have always been present, but were usually interspersed few and far between upcoming movie discussions, light essays, or analysis posts of certain movies/scenes/actors etc. It's not like we were an absolute bastion of intelligent discussion or anything, but there was usually SOME sort of topic established to form an interesting thread around. What is now causing all these unique, seemingly-non-bot posters to suddenly start flooding this particular subreddit with their discussion posts, instead of going to askreddit? Did the whole reddit protest shit change the moderation rules? Has the subreddit been infiltrated by a secret Buzzfeed content farming cabal? I unsubscribed from r/askreddit because I got sick of this shit, but now it's back on r/movies! What is going on?? submitted by /u/justjake274 [link] [comments]
- Looking for the future in the past: How Horror revival brings forth a new age for the genre.by /u/goldensn (Movie News and Discussion) on October 1, 2023 at 4:18 pm
submitted by /u/goldensn [link] [comments]
- What "sound" experience left the biggest impression on you in the theater?by /u/KennaWenna18 (Movie News and Discussion) on October 1, 2023 at 4:10 pm
As we all know, theaters crank the movie volume all the way up - while this can sometimes be overwhelming I also think it can give a unique film experience that wouldn't be as remarkable if you were watching at home. A big moment on my list is the first Batmobile start-up in The Batman (2022). I still remember watching this in theaters and feeling my seat start to rumble from the noise when he first starts the car, I felt genuine excitement and adrenaline as it revved up and it definitely left an impression on me. I watched it again after it released for streaming - I have a decent sound bar setup but it just wasn't the same! What theater moment comes to mind for you? submitted by /u/KennaWenna18 [link] [comments]
- The Hateful Eight: which version is superior?by /u/_bigcozy_ (Movie News and Discussion) on October 1, 2023 at 4:08 pm
Netflix has two versions of Quentin Tarantino’s 2015 film The Hateful Eight. The theatrical version has a runtime of 2h 47m while the extended version is broken down into 4 episodes with “never-before-seen footage” (calculating a runtime of the series is slightly difficult given title and end sequences). The miniseries is the vision of Tarantino himself. Which version do you consider superior and why? Edit: grammar, written before my morning coffee. Edit: more detail via The Verge: Tarantino says the “extended version” has around 25 minutes of new content, and the scenes don’t play out quite the same way. In particular, the episodic format let him show a key sequence from the perspective of different characters. submitted by /u/_bigcozy_ [link] [comments]
- Revolutionizing Your Driving Experience: CarlinKit CarPlay Ai Box 6125 Unveils the Ultimate…by Sheli Sultana (Netflix on Medium) on October 1, 2023 at 3:57 pm
Continue reading on Medium »
- Pee-Wee's Big Adventure - re:Viewby /u/CrossXhunteR (Movie News and Discussion) on October 1, 2023 at 3:50 pm
submitted by /u/CrossXhunteR [link] [comments]
- Netflix CEO and Those ‘Crocodile Tears’by Gayle Leslie (Netflix on Medium) on October 1, 2023 at 3:39 pm
Mandy Moore and the 1¢ residual check.Continue reading on Medium »
- What film still haunts you to this day?by /u/christotnes (Movie News and Discussion) on October 1, 2023 at 3:29 pm
I watched martyrs (2008) after a few beers with my cinephile flatmate expecting a typical horror movie, my god was I wrong… I enjoyed the movie but I had dreams about it for months after. This was 10 years ago and I still think about it every now and then. Thanks to time the imagery has softened but what scenes from movies have stuck with you for years? submitted by /u/christotnes [link] [comments]
- Love Is Blind’s Aaliyah Reveals Her Take on Uche and His Ex — and If She Thinks They Plotted…by Mianch Pk (Netflix on Medium) on October 1, 2023 at 3:27 pm
HomeUche Okoroha Love Is Blind’s Aaliyah Reveals Her Take on Uche and His Ex — and If She Thinks They Plotted TogetherContinue reading on Medium »
- Everyone loves aliceby /u/loxiul (Netflix) on October 1, 2023 at 2:46 pm
I went on netflix and began watching a film I found called everyone loves alice about five minutes into the film a scene with the girls spy on the boys in the showers happens and to my surprise I end up seeing a bunch of naked pre pubescent boys willies and a close up of one of the boys penises all completely uncensored. The film is over 20 years old and that may have been acceptable then but I think netflix should have censored it or at the very least put something saying it showed full frontal of pre pubescent boys to warn people. I don't know if I should have marked this as a spoiler since it happens so early in the film but if I'm wrong I'm sorry. submitted by /u/loxiul [link] [comments]
- 7 Award-Winning K-Dramas Available on Netflix in October 2023by /u/IllustriousMight2071 (Netflix) on October 1, 2023 at 2:20 pm
submitted by /u/IllustriousMight2071 [link] [comments]
- Most obvious instances of a woman’s character written by a manby /u/SkywalkersAlt (Movie News and Discussion) on October 1, 2023 at 2:10 pm
I was watching Draft Day last night with Kevin Costner. Jennifer Garner plays what felt like to me to be a very clear man’s ideal woman. I’m not talking at all about how she knows the game of football very well or that she’s attractive but talking about how she interacts with her “man.” She treats him like he’s on a pedestal, the way she interacts and responds to him and supports him and lifts him up. It had me curious what other instances there are of women’s character in movies that are very clearly written by a man. Where the actions taken, things they say, etc… seem out of touch with reality but more so just fit a man’s ideal of how a woman should act and behave. submitted by /u/SkywalkersAlt [link] [comments]
- The complete schedule of horror films on Turner Classic Movies in Octoberby /u/Amaruq93 (Movie News and Discussion) on October 1, 2023 at 2:09 pm
Trailer for October Sunday, October 1, 2023 2:00am – Godzilla (1954) 4:00am – Godzilla Raids Again (1955) 11:45am – Black Narcissus (1947) Monday, October 2, 2023 2:00am – The X from Outer Space (1967) 4:00am – Genocide (1968) Tuesday, October 3, 2023 8:00pm – Shadow of a Doubt (1943) 10:00pm – Dressed to Kill (1980) Wednesday, October 4, 2023 12:00am – Cat People (1942) 1:30am – The Hunger (1983) 3:15am – Frankenstein Created Woman (1967) 5:00am – The Wasp Woman (1960) Saturday, October 7, 2023 1:45am – Dr. Jekyll and Mr. Hyde (1941) 3:45am – The Picture of Dorian Grey (1945) 5:45am – The Tell-Tale Heart (1941) 7:00pm – Arsenic and Old Lace (1944) Monday, October 9, 2023 8:00am – It! (1967) 9:45am – The Mummy’s Shroud (1967) 11:30am – Mystery of the Wax Museum (1933) 1:00pm – Crack-Up (1946) Tuesday, October 10, 2023 6:00am – King Kong (1933) 8:00am – Son of Kong (1933) 9:15am – Kongo (1932) 10:45am – The Death Kiss (1933) 12:15pm – Doctor X (1932) 1:45pm – The Walking Dead (1936) 3:00pm – The Vampire Bat (1933) 4:15pm – I Walked with a Zombie (1943) 5:30pm – Isle of the Dead (1945) 6:45pm – The Leopard Man (1943) 8:00pm – Cape Fear (1962) 10:00pm – The Night of the Hunter (1955) 11:45pm – From Beyond the Grave (1973) Wednesday, October 11, 2023 1:30am – Blacula (1972) 3:15am – House of Dark Shadows (1970) Friday, October 13, 2023 6:00am – Hausu (1977) 7:45am – Mark of the Vampire (1935) 9:00am – Night of Dark Shadows (1971) 10:45am – Death Curse of Tartu (1966) 12:30pm – The Curse of the Cat People (1944) 1:45pm – The Ghost Ship (1943) 3:00pm – Two on a Guillotine (1965) 5:00pm – Tormented (1960) 6:30pm – The Terror (1963) 8:00pm – Gaslight (1944) Tuesday, October 17, 2023 3:00am – King Kong (1933) 10:00pm – Hush...Hush, Sweet Charlotte (1964) Wednesday, October 18, 2023 12:30am – Poltergeist (1982) 2:30am – The Blob (1988) 4:15am – Village of the Damned (1960) 5:45am – Children of the Damned (1964) Thursday, October 19, 2023 4:00pm – Freaks (1932) 5:15pm – The Devil-Doll (1936) 6:45pm – Mark of the Vampire (1935) Friday, October 20, 2023 8:00pm – The Ghost and Mrs. Muir (1947) 10:00pm – The House of the Seven Gables (1940) 11:45pm – The Uninvited (1944) Saturday, October 21, 2023 1:30am – The Haunting (1963) 3:45am – The Woman in White (1948) 5:45am – Sylvia and the Phantom (1946) Sunday, October 22, 2023 2:00pm – The Bad Seed (1956) 4:15pm – The Nanny (1965) 6:00pm – Wait Until Dark (1967) Monday, October 23, 2023 12:30am – The Mysterious Island (1929) Tuesday, October 24, 2023 8:00pm – Magic (1978) Wednesday, October 25, 2023 12:00am – The Abominable Dr. Phibes (1971) 1:45am – Dr. Phibes Rides Again (1972) 6:45pm – Mark of the Vampire (1935) 3:30am – House of Wax (1953) 5:15am – House on Haunted Hill (1958) 6:30am – The Bat (1959) 8:00pm – Soylent Green (1973) 10:00pm – The Omega Man (1971) Thursday, October 26, 2023 4:00am – The Awakening (1980) Friday, October 27, 2023 8:00pm – Frankenstein (1931) 9:30pm – Bride of Frankenstein (1935) 11:00pm – Horror of Dracula (1958) Saturday, October 28, 2023 12:30am – House of Usher (1960) 2:00am – Phantom of the Rue Morgue (1954) 3:30am – The Phantom of the Opera (1925) 5:00am – Dr. Jekyll and Mr. Hyde (1932) 6:45am – Cat People (1942) 12:00pm – Sweeney Todd: The Demon Barber of Fleet Street (1982) Sunday, October 29, 2023 2:30am – Agatha (1979) 4:15am – The Last of Sheila (1973) 8:00pm – Hold That Ghost (1941) 9:45pm – The Laurel-Hardy Murder Case (1930) 10:30pm – The Bowery Boys Meet the Monsters (1954) TCM Terror-Thon Monday, October 30, 2023 12:00am – Dr. Jekyll and Mr. Hyde (1920) 2:00am – Cure (1997) 4:15am – Kuroneko (1968) 6:00am – Chamber of Horrors (1966) 7:45am – Freaks (1932) 9:00am – Mad Love (1935) 10:30am – White Zombie (1932) 11:45am – Dr. Jekyll and Mr. Hyde (1941) 1:45pm – The Body Snatcher (1945) 3:15pm – The Seventh Victim (1943) 6:15pm – The Devil’s Bride (1968) 8:00pm – Burn Witch Burn (1962) 9:45pm – The Devil’s Own (1966) 11:30pm – The Conquerer Worm (1962) Tuesday, October 31, 2023 1:15am – Suspiria (1977) 3:00am – The Crimson Cult (1968) 4:45am – The Plague of the Zombies (1966) 6:30am – Rasputin–The Mad Monk (1966) 8:15am – Taste the Blood of Dracula (1970) 10:00am – The Mummy (1959) 11:45am – Creature from the Black Lagoon (1954) 1:15pm – The Invisible Man (1933) 2:30pm – The Black Cat (1934) 3:45pm – Frankenstein (1931) 5:00pm – Bride of Frankenstein (1935) 6:30pm – The Wolf Man (1941) 10:00pm – When a Stranger Calls (1979) 11:45pm – Black Sabbath (1963) 1:30am – Carnival of Souls (1962) 3:00am – Night of the Living Dead (1968) 4:45am – Spider Baby (1964) submitted by /u/Amaruq93 [link] [comments]
- What’s your favorite Richard Harris performanceby /u/Helloimafanoffiction (Movie News and Discussion) on October 1, 2023 at 2:05 pm
Often remembered as one of Ireland’s greatest actors Richard Harris gave many fantastic performances throughout his career which won him much acclaim Now my favorite performance of his would be Bull McCabe in The Field he brought emotion and nuance to the character that I feel only Harris could bring even in some of his more questionable moments you still understand McCabe submitted by /u/Helloimafanoffiction [link] [comments]
- Netflix is the goatby /u/xSamuraiDom (Netflix) on October 1, 2023 at 1:07 pm
I love Netflix, even tho Netflix has been getting quite a bit of hate in the last few years, this year seems to be especially strong for them. I just came across this picture and I thought I had to share it, it's just so humorous given the context submitted by /u/xSamuraiDom [link] [comments]
- One Piece Live Action vs. One Piece Manga and Animeby Sahana (Netflix on Medium) on October 1, 2023 at 12:42 pm
A Tale of Adventure and ChoicesContinue reading on Medium »
- A Bronx Tale: Robert De Niro and Chazz Palminteri's Gangster Drama at 30by /u/Bennett1984 (Movie News and Discussion) on October 1, 2023 at 12:41 pm
submitted by /u/Bennett1984 [link] [comments]
World’s Top 10 Youtube channels in 2022
T-Series, Cocomelon, Set India, PewDiePie, MrBeast, Kids Diana Show, Like Nastya, WWE, Zee Music Company, Vlad and Niki