1 / 10

Quick Guide To Machine Learning: What It Is And How It Works?

Machine learning tailors your feed to your precise interests and behavioral patterns. If you use a smartphone, machine learning is what lets you search for keywords in your photo app, allowing the device to know which pictures are of u201ctreesu201d and which ones are of u201ccats.u201d <br>To know More:- https://www.clarifai.com/blog/quick-guide-to-machine-learning

ClarifaiInc
Download Presentation

Quick Guide To Machine Learning: What It Is And How It Works?

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Quick Guide To Machine Learning: What It Is And How It Works? Email ID-info@clarifai.com

  2. About Clarifai • Clarifai is accelerating the progress of humanity with continually improving AI. • Founded in 2013 by Matthew Zeiler, a foremost expert in machine learning, Clarifai has been a market leader since winning the top five places in image classification at the ImageNet 2013 competition. • Recognized by leading industry analysts for our award-winning platform, Clarifai offers an end-to-end solution for modeling unstructured data for the entire AI lifecycle. Our powerful image, video, and text recognition solutions are built on the most advanced machine learning platform and made easily accessible via API, device SDK, and on-premise, empowering businesses all over the world to build a new generation of intelligent applications. https://www.clarifai.com/blog/quick-guide-to-machine-learning

  3. Machine learning is all around you You’re likely reading this article because some algorithm brought you to it. Maybe it was through a search engine like Google, who now uses ML to tailor search results. Or think about a social platform like Facebook, machine learning tailors your feed to your precise interests and behavioral patterns. If you use a smartphone, machine learning is what lets you search for keywords in your photo app, allowing the device to know which pictures are of “trees” and which ones are of “cats.” Google’s photo app even proactively combines similar photos in time and subject matter to periodically offer pre-made movies for you.When you buy something online, machine learning likely leads you to find that specific item, and then your credit card company uses machine learning to decide if the transaction is fraudulent. The stock market is chock full of ML algorithms trading with other ML algorithms. Now, customer service uses helpful little chatbots willing to automate every journey of your customer support experience. Since the world is full of these machines that have somehow studied their way into usefulness, let’s see how they work. https://www.clarifai.com/blog/quick-guide-to-machine-learning

  4. Machine Learning vs. Programming Computer programs have traditionally been built upon rules-based logic that provide computers with very specific instructions about what they should be doing. This rules-based approach usually contains a complex system of conditional statements, like “if this, then that.” For example, a video game might contain instructions to shoot a laser when a given button is pressed. Even the device you’re using to read this blog article is full of rules-based logic.But there are limitations to this rules-based approach. For one, it’s not very intelligent. With rules-based programming, you have to provide explicit instructions for absolutely everything you want your computer to do. It turns out that this is a very painstaking process, and for complex problems like interpreting images or understanding natural human language, the rules-based approach to programming has made relatively little progress over the years.The fact is that many problems are too difficult to program using regular programming. Enter machine learning. It focuses on the use of data and algorithms to imitate the way that humans learn, gradually improving its accuracy, just as a human does when learning something new. With ML, computers are given huge amounts of “training” data which they use to learn how to perform a given task. https://www.clarifai.com/blog/quick-guide-to-machine-learning

  5. How Does Machine Learning Work? The beginning phases of Machine Learning saw tests including speculations of PCs perceiving designs in information and gaining from them. Today, in the wake of expanding upon those basic tests, AI is more mind boggling. While Machine learning calculations have been around for quite a while, the capacity to apply complex calculations to enormous information applications all the more quickly and viably is a later turn of events. Having the option to do these things with some level of refinement can set an organization in front of its rivals. ML is a type of man-made brainpower (AI) that helps PCs to think along these lines to how people do: Learning and developing past encounters. It works by investigating information and recognizing designs and includes insignificant human mediation. Practically any errand that can be finished with an information characterized example or set of rules can be robotized with AI. This permits organizations to change measures that were beforehand an option exclusively for people to perform—think reacting to client support calls, accounting, and investigating resumes.  https://www.clarifai.com/blog/quick-guide-to-machine-learning

  6. The three main types of machine learning models Supervised learning This is the type of machine learning that is most similar to the way humans learn. You give the computer a bunch of labelled training data, and the data acts as the teacher telling it what to learn. For example, you can give it 1,000 photos of houses and tell it “these are houses,” and another 1,000 photos without houses, and tell it “these are not houses,” machine learning algorithms can identify patterns in data. As similar photos are fed into the algorithm, it will begin to understand whether a house is present it or not. In other words, historic data contains correct answers, and the task of the algorithm is to find them in the new data. Common use cases for supervised learning are predicting future trends in prices, sales and stock trading based on past data. https://www.clarifai.com/blog/quick-guide-to-machine-learning

  7. Unsupervised learning This type of machine learning looks at a big set of unlabelled and unclassified data and makes inferences on it based on its structure. Basically, the machine is left on its own to find patterns in the data. It groups unsorted information according to similarities and differences even though there are no categories provided. It’s commonly used in the fields of digital marketing and advertising and is essentially useful in recommender systems. Amazon and Netflix make very effective use of machine learning to power product recommender systems. They use ML to look at data to find patterns of similarities of peoples’ preferences for products and media consumption. You’ve likely seen this as “People who viewed this product, also viewed this one.” Reinforcement learning In reinforcement learning, computers are trained on a reward and punishment mechanism. RL is a complex and challenging method, but can deliver impressive results for some use cases by learning via interaction and feedback; trial and error. The machine is rewarded for correct moves and punished for the wrong ones. In doing so, the agent tries to minimize wrong moves and maximize the right ones.The machine can begin to perceive and interpret its environment and take actions and interact with it. One remarkable application of reinforcement learning is AlphaGo Zero, a model that drives the game “Go.” Using reinforcement learning, AlphaGo Zero was able to learn the game of Go from scratch. It learned by playing against itself, and after 40 days of self-training, Alpha Go Zero was able to outperform a previous iteration of Alpha Go — one which had defeated the world champion. https://www.clarifai.com/blog/quick-guide-to-machine-learning

  8. The Future Machine learning is expected to grow in the U.S. alone from what was $1.03 billion USD in 2016 to $8.81 billion USD by 2022. Machine learning driven solutions are present in countless customer experiences, and their competitive edge is increasing as big players like Google, IBM and Microsoft continue to make advancements in this field. https://www.clarifai.com/blog/quick-guide-to-machine-learning

  9. Conclusion Machine learning adoption is growing steadily. Be it video-detection systems in road transportation, self-driving cars, 3D printing in manufacturing, facial recognition, healthcare, and advanced sensors in defense and logistics, computer vision technology is being used extensively. In the present world, machine learning can bring immense financial gains in business. However, this is just the tip of the iceberg. This technology has immense potential in the future.  Check out Clarifai, the leading deep learning platform for computer vision, natural language processing, and automatic speech recognition. https://www.clarifai.com/blog/quick-guide-to-machine-learning

  10. Email ID-info@clarifai.comWebsite URL-https://www.clarifai.com/Facebook Id- https://www.facebook.com/Clarifai Thankyou! Thank You

More Related