Search
Close this search box.

The Five Steps for an AI Project: What you’re missing

Embarking on the AI Project Journey: Beyond the Basics In the rapidly evolving realm of artificial intelligence (AI), managing projects effectively is not just a skill—it’s an art form. Navigating through the complexities of AI requires more than just technical know-how; it demands a strategic approach to project management.  This journey sometimes begins with a …

The Five Steps for an AI Project: What you’re missing Read More »

How to apply CRISP-DM to AI and big data projects

Applying CRISP-DM and CPMAI to AI and Big Data Projects In our digital age, where data is as vast as the ocean, every business, big or small, is trying to ride the wave of artificial intelligence (AI) and big data.  These big tech movements, AI & big data, are not just buzzwords; they’re revolutionizing how …

How to apply CRISP-DM to AI and big data projects Read More »

Is the CPMAI Certification worth it?

Is the CPMAI Certification Worth it?  We might be slightly biased, but the answer is absolutely, resoundingly YES! What is CPMAI? A Game-Changer in AI Management The Cognitive Project Management for AI (CPMAI) methodology certification is a vendor-neutral, data-centric, AI-specific, iterative methodology for running and managing AI, ML, and cognitive technology projects.  The CPMAI methodology …

Is the CPMAI Certification worth it? Read More »

Cognitive Project Management for AI – CPMAI At a Glance [Infographic]

AI & Data Best Practices The Cognitive Project Management for AI (CPMAI) methodology provides a step by step approach to AI project management that has seen significant success in enterprise, government, academic, consulting, and technology vendor implementations. This infographic provides an overview of CPMAI at a glance, but read below for more details.   What …

Cognitive Project Management for AI – CPMAI At a Glance [Infographic] Read More »

The Steps for a Machine Learning Project

Simplifying ML Project Management for Maximum Success Are you in charge of a machine learning project and don’t know where to start?  Or maybe you know some of the technology for making machine learning work, but don’t know the steps you should follow to optimize your chances of success.   Leading a Machine Learning (ML) project …

The Steps for a Machine Learning Project Read More »

Synthetic Data Generation Market: Research Snapshot Feb. 2022

Machine learning training data is not always readily available. In many cases, “ground truth” data is unavailable, can be difficult to collect, or is considered private, making its use difficult. Synthetic data is often used in scenarios where there isn’t sufficient training data available to be used in machine learning algorithms, especially in supervised machine …

Synthetic Data Generation Market: Research Snapshot Feb. 2022 Read More »

Data Labeling Market: Research Snapshot Dec. 2021

In order for machine learning systems to be able to create accurate generalizations, they must be trained on data. Advanced forms of machine learning, especially deep learning neural networks, require significant volumes of data to be able to create models with desired levels of accuracy. Customers often don’t have the resources to label large data …

Data Labeling Market: Research Snapshot Dec. 2021 Read More »

Worldwide AI Country Strategies and Competitiveness 2021

The race for competitive advantage in artificial intelligence (AI) is not just the domain of companies and organizations. Countries vie with each other for dominance in the space of AI, seeking competitive advantages for their industrial ecosystem, military and defense, academic institutions, and areas of private and public sector enterprise. Countries that can take advantage …

Worldwide AI Country Strategies and Competitiveness 2021 Read More »

Machine Learning Platforms 2020

Document ID: CGR-MLP20 | Last Updated: Dec. 8, 2020 Machine learning systems are core to enabling each of the seven patterns of AI. Machine learning platforms facilitate and accelerate the development of machine learning models by providing functionality that combines many necessary activities for model development and deployment. In this report, Cognilytica evaluates five major categories …

Machine Learning Platforms 2020 Read More »

Digitization and Digitalization Report (June 2020)

Document ID: CGR-DIG20 | Last Updated: Jun. 23, 2020 Digitization focuses on the capturing and extraction of value from non-digital data by converting it to a usable digital state. Digitalization expands upon the idea of digitization by addressing human-bound processes and processes that have previously been dependent on non-digital information. Digitization and Digitalization are seen …

Digitization and Digitalization Report (June 2020) Read More »

AI Today Podcast #131: AI Around the World: Strategies, Laws, and Regulations (2020)

The pace of worldwide adoption continues to accelerate. Not only are companies and researchers competing with each other for advantage in the world of artificial intelligence and machine learning, so too are entire countries. In this podcast, Cognilytica analysts Kathleen Walch and Ronald Schmelzer go over research on how different countries are approaching AI and …

AI Today Podcast #131: AI Around the World: Strategies, Laws, and Regulations (2020) Read More »

ML Model Management and Operations 2020 (“MLOps”)

Document ID: CGR-MOM20 | Last Updated: Mar. 11, 2020 As the markets for AI shift from those organizations that have the technical expertise required to build models from scratch to those enterprises and organizations looking to consume models built by others, the focus shifts from tooling and platforms focused solely on model development to tools …

ML Model Management and Operations 2020 (“MLOps”) Read More »

AI Today Podcast #130: Future of Cognitive Automation: Interview with Manish Rai, VP, Automation Anywhere

While the Robotic Process Automation (RPA) market is heating up, there are many that say that RPA is not AI per se, but rather a gateway on the path to cognitive automation. Automation Anywhere certainly agrees with this perspective, and in this interview, Manish Rai, VP of Product Marketing at Automation Anywhere shares insights into …

AI Today Podcast #130: Future of Cognitive Automation: Interview with Manish Rai, VP, Automation Anywhere Read More »

Worldwide AI Laws and Regulations 2020

Document ID: CGR-REG20 | Last Updated: Feb. 20, 2020 The pace of adoption for artificial intelligence (AI) and cognitive technologies continues unabated with widespread, worldwide, rapid adoption of AI and its various patterns. As a result, governments around the world are moving quickly to ensure that existing laws, regulations, and legal constructs remain relevant in …

Worldwide AI Laws and Regulations 2020 Read More »

Login Or Register

cropped-CogHeadLogo.png

Register to View Event

cropped-CogHeadLogo.png

Get The Worldwide AI Laws and Regulations 2020

cropped-CogHeadLogo.png

AI Best Practices

Get the Step By Step Checklist for AI Projects

login

Login to register for events. Don’t have an account? Just register for an event and an account will be created for you!