AI and machine learning are enabling data-driven organizations to accelerate their journey to insights and decisions. With all the latest advancements, AI is no longer limited to only those with deep expertise or a cache of data scientists, and many organizations can now adopt AI and machine learning for better competitive advantage.
Machine learning (ML) is the process of using mathematical models of data to help a computer learn without direct instruction. It’s considered a subset of artificial intelligence (AI). Machine learning uses algorithms to identify patterns within data, and those patterns are then used to create a data model that can make predictions. With increased data and experience, the results of machine learning are more accurate—much like how humans improve with more practice.
Ask Amy a Question!
Amy is the Go to Market Manager for our ISV Solution and has worked with our community of ISVs across a number of projects. She is well placed to answer any query you might have!
Machine learning is most beneficial to ISVs in scenarios where the data is always changing, the nature of the request or task is always shifting, or coding a solution would be effectively impossible. Machine learning has many applications and the possibilities are endless.
Machine learning can help identify a pattern or structure within both structured and unstructured data, helping to identify the story the data is telling.
Adaptive interfaces, targeted content, chatbots, and voice-enabled virtual assistants are all examples of how machine learning can help optimize the customer experience.
Machine learning can mine customer-related data to help identify patterns and behaviors, letting you optimize product recommendations and provide the best customer experience possible.
Machine learning is excellent at data mining and can take it a step further, improving its abilities over time
As fraud tactics constantly change, machine learning keeps pace—monitoring and identifying new patterns to catch attempts before they’re successful.
One machine learning application is process automation, which can free up time and resources, allowing your team to focus on what matters most.
Azure Machine Learning can help ISVs build and deploy models with machine learning operations (MLOps) capabilities in order to streamline the machine learning lifecycle and help automate it. It also integrates with Azure Synapse Analytics, enterprise data warehousing, and big data analytics. Azure Machine Learning and Azure Synapse Analytics integrated can enable collaboration between data engineers and data scientists, so they can build models with ease, enrich data, and generate positive outcomes with that data.
With seamless integrations and advanced capabilities, Azure Machine Learning and Azure Synapse Analytics make it easier for ISVs to build a machine learning practice to achieve their objectives. And organizations can accelerate their success by augmenting analytics with machine learning through a multi-stage maturity approach
Learn how to train, deploy, & manage machine learning models, use AutoML, and run pipelines at scale with Azure Machine Learning. Sign up for our Azure Data Analytics and Machine Learning Bootcamp today!