auto machine learning
Auto Machine Learning (Auto ML) Bootcamp: Build 15 Projects
Automated machine learning (AutoML) represents a fundamental shift in the way organizations of all sizes approach machine learning and data science. Applying traditional machine learning methods to real-world business problems is time-consuming, resource-intensive, and challenging. It requires experts in several disciplines, including data scientists – some of the most sought-after professionals in the job market right now. Automated machine learning changes that, making it easier to build and use machine learning models in the real world by running systematic processes on raw data and selecting models that pull the most relevant information from the data – what is often referred to as "the signal in the noise." Automated machine learning incorporates machine learning best practices from top-ranked data scientists to make data science more accessible across the organization.
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Auto Machine Learning (Auto ML) Bootcamp: Build 15 Projects
Automated machine learning (AutoML) represents a fundamental shift in the way organizations of all sizes approach machine learning and data science. Applying traditional machine learning methods to real-world business problems is time-consuming, resource-intensive, and challenging. It requires experts in several disciplines, including data scientists – some of the most sought-after professionals in the job market right now. Automated machine learning changes that, making it easier to build and use machine learning models in the real world by running systematic processes on raw data and selecting models that pull the most relevant information from the data – what is often referred to as "the signal in the noise." Automated machine learning incorporates machine learning best practices from top-ranked data scientists to make data science more accessible across the organization.
Auto Machine Learning (Auto ML) Bootcamp: Build 15 Projects - AI Summary
Applying traditional machine learning methods to real-world business problems is time-consuming, resource-intensive, and challenging. It requires experts in several disciplines, including data scientists – some of the most sought-after professionals in the job market right now. Manually constructing a machine learning model is a multistep process that requires domain knowledge, mathematical expertise, and computer science skills – which is a lot to ask of one company, let alone one data scientist (provided you can hire and retain one). Automated machine learning enables organizations to use the baked-in knowledge of data scientists without expending time and money to develop the capabilities themselves, simultaneously improving return on investment in data science initiatives and reducing the amount of time it takes to capture value. We'll cover everything you need to know for the full data science and machine learning tech stack required at the world's top companies.
Auto Machine Learning in Financial Services
Hydrogen's head of Data Engineering and Analytics Guy Feldman (PhD) will be leading a roundtable talk on auto-ML and its applications in solving many of the world's challenges within financial services. This roundtable will also introduce the audience to the Hydrogen Ion platform, the first auto-ML library to serve financial services. There will be an opportunity to see a live demo of Ion, provide feedback to Guy and the team, and create free test credentials to be used within your data science department. If you are interested in pitching us a product or service please contact our partnership team directly. This is a meetup for data scientists, product managers, and ML geeks.*