Wednesday, 28 June 2017

Experience Digital Revolution with Machine Learning!





What exactly Machine Learning is?


Machine learning is the science of getting computers to act without being explicitly programmed. It is used so common in a day that you may not know it. Many researchers believe that it is the best way to make progress towards human-level Artificial Intelligence. Just as the humans learn from experiences, so does the computer where data is equivalent in experience. It is the new trend in the industries and a whole lot more. It is transforming both the workplace and home front. 

Machine learning is an automated process that enables software-based systems to analyses huge data sets and recognizes patterns. Using these patterns, the software is able to reprogram and improve itself – without human intervention. Successful consumer brands like Amazon, Netflix and Facebook have efficiently adopted the technology which has helped them to improve their customer experience.

The simplest way to define machine learning is the practice of teaching a computer how to spot patterns and make connections by showing it a massive volume of data. So rather than programming the software to accomplish a particular task, the machine uses Big Data and other sophisticated algorithms to learn how to perform the task itself. Machine learning allows applications to “think” and independently make a forecast or prediction – going beyond what predictive analytics and Big Data analytics can do, and often beyond what humans can do.Madrid Software Trainings is the best Machine Learning Institute in Delhi.

Machine learning works best with Big Data why because the complexity and volumes of such data are quite high.

Many of our day to day activities are done through machine learning such as:
  •  Search engine results
  •  New pricing models
  • Fraud detection
  •  Prognosis of equipment failure
  • Email spam filtering
  • Credit scoring
There are basically two kinds of popular machine learning methods:

  Supervised Learning- Supervised learning is commonly used in applications where historical data predicts likely future events. Supervised learning is where you have input variables (x) and an output variable (Y) and you use an algorithm to learn the mapping function from the input to the output. Some popular examples are linear regression for regression problems, Random forest for classification and regression problems and Support vector machines for classification problems. It can be further grouped into classification and regression. 

  Unsupervised Learning- It is used against data that has no historical labels. The system is not told the "right answer." The algorithm must figure out its own device to discover the data. The goal is to model the underlined structure, explore the data within. Unsupervised learning works well on transactional data. It can be further grouped into cluster and association. Among the popular techniques, singular value decomposition, self-organizing maps, k-means clustering and nearest-neighbor mapping are to name a few. These algorithms are also used to segment text topics, recommend items and identify data outliers.

Advantages to Machine Learning in Business

Spam Detection- Machine learning has been in use for quite some time in detecting spam. Previously, email service providers made use of the old existing, rule-based techniques to filter out spam. However, spam filters are now creating new rules by using neural networks detect spam and phishing messages.

Product Recommendations- Unsupervised learning helps in developing product-based recommendation systems. Most of the e-commerce websites today are making use of machine learning for making the product recommendations. Here, the ML algorithms use customer's purchase history and cross check it with the large product inventory to identify the hidden patterns and then classify similar products together. These products are then suggested to customers, thereby motivating them to purchase.

Maintenance- Manufacturing firms regularly follow preventive and corrective maintenance practices, which are often expensive and inefficient. However, with the introduction of ML, companies in this sector can make use of it to discover meaningful insights and patterns hidden in their factory data. This is known as predictive maintenance. It helps in reducing the risks which are linked with sudden failures and eliminates unnecessary expenses. ML architecture can be built using historical data, work flow visualization tool, flexible analysis environment, and the feedback loop.

Financial Analysis- With large volumes of quantitative and accurate historical data, ML can now be used in financial analysis. ML is already being widely used in finance for portfolio management, algorithmic trading, loan underwriting, and fraud detection.

Cyber Security- ML can be used to increase the security of an organization as cyber security is one of the major issues to be solved in various firms. Here, Ml allows new-generation providers to build smart technologies, which quickly and effectively detect unknown threats.

Increased Customer Satisfaction- ML can help in improving customer loyalty and also ensure the best customer experience. This is made possible by using the previous call records for identifying the customer behavior and based on that the client requirement will be correctly assigned to the most suitable customer service executive. This reduces the cost immensely and the amount of time invested in managing customer relationship. For this reason, major organizations use predictive algorithms to provide their customers with the choice of products they enjoy.

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