Helping our customers to leverage AI for their business.


At Fenix Alliance we are helping our customers to build for their users a wide range of solutions that learn and form conclusions with imperfect data.


For over 10 years we've been empowering organizations throgh solutions that interpret the meaning of data, including text, voice, and images.


We seek to unchain everyone's capabilities through solutions that interact with people in natural ways, delivering power across channels.

Understanding How AI Models are Created

In order to understand the value that Fenix Alliance's AI & Cognitive Services Practice provides its important to at least have a high level understanding of how Artificial Intelligence models are created.

The following steps summarizes the high-level phases that lead to the creation of useful predictive AI model. For a detailed look at the model building process, please contact our technical support team.

AI Model Creation Process

Prepare Data

In the Prepare Data phase, the data is collected from sources and prepared for use in training the model. During this phase, the data may be cleaned and de-duplicated, the contents of the data is understood and the data that is the most informative in predicting the outcome is selected.This work is often referred to as data wrangling. Typically the data wrangling is performed by either the data developer or data scientist who have wrote the programs that collect and prepare the data.

AI Model Creation Process

Build Model

Once our data looks fine, the Build Model phase begins, where a subset of the prepared data (which contains both the input and the outcome) is fed into a machine learning or deep learning algorithm to train the model. Then performance of the model is measured against another subset of the prepared data (referred to as the test or evaluation data set), and the model is evaluated on how well it performed in predicting the outcomes described in the test data set.

AI Model Creation Process

Deploy Model

Assuming the model performed adequately, then the model is saved to a file ready for deployment. In the deploy model phase, the created model file is typically copied to a location where it can be used by the AI application for making predictions. This step is typically performed by one or more of our developers, or more specifically, DevOps engineers who are responsible for making sure the model is always deployed correctly into production and ready to be consumed.

Subscribe to our Newsletter

Join our newsletter and get updates about our RoadMap, relevant information and the best promotions on technology in your inbox! We hate and fight spam too; so, please don't worry about this.

Talk to Andy, Our virtual Agent. Preview

Andy is a key member of our Alliance family. It is an intelligent digital assistant that is currently being built to help you manage your entire Alliance ID account capabilities as well as to provide support and information for those questions you may have. He can also help you create and route a new support case for you to be reached by one of our human assistants.

Open chat with Andy, our support bot
Open live chat with a human support agent
Live Chat Support is available from 8 AM to 6 PM (GMT-5)

Our solutions and your business, reaching beyond expectations.

Whether you need Support, a special service or a full service package, our experts will be happy to advise you at any time.