Online face recognition: Face recognition with the help of AI
Identifying a face in images and videos is a standard task for artificial intelligence systems. Algorithms for online face recognition are trained based on millions of images obtained from the Internet and achieve increasingly reliable results. This not only applies to the assignment of image data to a specific person, but also to facial mood recognition and other relevant information for a wide range of applications.
Read moreInteroperability and the Future of Machine Learning
Artificial Intelligence and its subset Machine Learning are at the heart of innovation for digitally transformed businesses. However, ML, in particular, needs to be highly interoperable for smart technologies to be truly disruptive and innovative at scale.
If there was no interoperability, AI development would be limited and only accessible to big tech. This is because only tech giants have access to the necessary resources and, more importantly, the most data that makes continuous and meaningful learning possible.
Read moreText-to-speech: Listening instead of reading
Text-to-speech or TTS is virtually self-explanatory: With a text-to-speech service, you can convert text into audio. Text is read aloud using voices that imitate human speech. Developers are continually enhancing these programs. Although there are still no applications today in which the machine origin of the spoken word is not discernible, technological progress is seemingly unstoppable. Essentially, with every improvement in technology, these systems will be able to create more and more natural sounding voices.
What are the advantages of text-to-speech systems? Most importantly, visually impaired people can benefit from those systems. In addition, they can be used by companies as a means of expanding their outreach.
The Top 6 Types of Machine Learning Algorithms You Should Know
Machine learning algorithms can be applied to a number of tasks, including decision-making and data mining. It’s critical to select the appropriate machine learning software and hardware for the work at hand because there are a variety of options available. To evaluate how well a machine learning algorithm is performing, a variety of model assessments can be used. The proper machine learning algorithm should be selected for the task at hand after being aware of the limits of each one.
Applications of Natural Language Processing (NLP) and NLP Datasets
Natural Language Processing (NLP) is a branch of Artificial Intelligence. NLP deals with the interaction between humans and computers using natural language.
Datasets for NLP are used to train models that can then be used for various tasks such as text classification, entity recognition, and machine translation.
There are many different applications of NLP. In this article, we will take a look at some of these applications, focusing in particular on the importance of NLP datasets for training applications and datasets for NLP projects.
Data Preprocessing: How To Process Your Data For Optimal Performance
Data preprocessing is one of the early steps of creating and utilizing a machine learning model. In this step, the raw data is prepared to be suitable for feeding to the machine learning model. It is often the first step undertaken when creating a machine learning project, as the availability of clean and well-formatted data is not always possible.
Read moreHow Do Speech Recognition Systems Work: Behind The Scenes Using AI
Speech recognition is becoming a popular “must have” feature. It has been around for over 50 years and has been developed by several companies in the United States, Europe, Japan and China. But what people don’t realize is that a lot of work goes on behind the scenes to make speech recognition systems both possible and practical.
Read moreHandwriting Dataset in the Field of Artificial Intelligence
Despite the popularity of typing, writing by hand is still very common. In fact, a study by Michigan State University found that students who took notes by hand had a better understanding of the material than those who typed their notes. The researchers believe this is because handwriting allows for a more personal connection to the material, which results in a deeper understanding. This emphasis on handwritten notes is even more important in the field of artificial intelligence (AI), where it is crucial to have an intimate understanding of data in order to train AI systems effectively. In this blog post, we will explore one particular handwriting dataset and its applications in the training of AI systems.
Read more6 Real and Innovative Ways to Make Money with Machine Learning
Waves of ML/AI are already impacting industries like Information Technology (IT), Financial Technology (FinTech), Healthcare Technology (HealthTech), Education Technology (EdTech), and others. Companies are more laser-focused on AI value, moving beyond the testing phase and concentrating on rapidly expanding their usage of AI.
Read moreAI in the Food Industry is Transforming the Business
Artificial intelligence (AI) is transforming the industry by automating tasks and making them more efficient. The food industry is one of those fields where AI can make an incredible impact on day-to-day operations–and ultimately transform your business in a major way! Automation will allow us to continue providing a diverse menu, but also make it easier for consumers to find products that align with their tastes. The human touch remains important in all aspects of food service, as well as quality control through data-driven recommendations from intelligent machines.
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