Evaluate
Weigh the pros and cons of technologies, products and projects you are considering.
Evaluate
Weigh the pros and cons of technologies, products and projects you are considering.
Pros and cons of conversational AI in healthcare
Conversational AI platforms have well-documented drawbacks, but if they are regulated and used correctly, they can benefit industries such as healthcare. Continue Reading
A guide to artificial intelligence in the enterprise
AI in the enterprise is changing how work is done, but companies must overcome various challenges to derive value from this powerful and rapidly evolving technology. Continue Reading
What is generative AI? Everything you need to know
Generative AI is a type of artificial intelligence technology that can produce various types of content, including text, imagery, audio and synthetic data. Continue Reading
-
How different industries benefit from edge AI
From manufacturing to energy and healthcare, edge AI is promising to various industries. It brings data processing and analysis closer to data sources. Continue Reading
AI vs. machine learning vs. deep learning: Key differences
AI terms are often used interchangeably, but they are not the same. Understand the difference between artificial intelligence, machine learning and deep learning. Continue Reading
How AI changes quality assurance in tech
AI and automation have become more commonplace across business processes. In the tech industry, for example, the use of both can enhance quality assurance.Continue Reading
Top advantages and disadvantages of AI
Is AI good or bad? Many experts worry about unchecked use of the technology, while others believe AI could benefit society with the correct guidelines in place.Continue Reading
AI needs guardrails as generative AI runs rampant
Generative AI hype has businesses eager to adopt it, but they should slow down. Frameworks and guardrails must first be put in place to mitigate generative AI's risks.Continue Reading
15 AI risks businesses must confront and how to address them
These risks associated with implementing AI systems must be acknowledged by organizations that want to use the technology ethically and with as little liability as possible.Continue Reading
ChatGPT in the current manufacturing landscape
Industry leaders in manufacturing must understand the challenges posed by ChatGPT and other generative AI technologies to overcome them and reap AI's benefits.Continue Reading
-
How businesses can measure AI success with KPIs
Organizations can measure the success of AI systems and projects using a few key metrics. The most important AI KPIs are quantitative, yet others are qualitative.Continue Reading
ChatGPT vs. GPT: How are they different?
Although the terms ChatGPT and GPT are both used to talk about generative pre-trained transformers, there are significant technical differences to consider.Continue Reading
Successful generative AI examples worth noting
Industries are using generative AI in various ways to successfully generate new content. Learn about successful examples of this technology and how it's expected to expand.Continue Reading
Generative AI landscape: Potential future trends
Learn more about the growth of generative AI, its impact on other technologies, use cases and 10 trends that will contribute to the technology's development.Continue Reading
Assessing different types of generative AI applications
Learn how industries use generative AI models in content creation and alongside discriminative models to identify, for example, instances of real vs. fake.Continue Reading
Generative AI ethics: 8 biggest concerns
Under the radar for decades, generative AI is upending business models and forcing ethical issues like customer privacy, brand integrity and worker displacement to the forefront.Continue Reading
GAN vs. transformer models: Comparing architectures and uses
Discover the differences between generative adversarial networks and transformers, as well as how the two techniques might combine in the future to provide users with better results.Continue Reading
How construction is an Industry 4.0 application for AI
Industry 4.0 is best known for enhancing the manufacturing sector, but the construction industry is another good use case for AI and related tools.Continue Reading
The 'iPhone moment' for generative AI
Tech companies are now redirecting their attention and resources to develop generative AI. Like the invention of the iPhone, generative AI is now disrupting the tech industry.Continue Reading
Democratization of AI creates benefits and challenges
What happens when you expand the use of AI beyond a circle of experts? To prevent business challenges, leaders must make smart investments in AI tools and training for workers.Continue Reading
No- and low-code AI's role in the enterprise
Low-code tools enable noncoders to build and deploy AI applications. The growing list of these tools ensures that AI development is no longer confined to experts.Continue Reading
GANs vs. VAEs: What is the best generative AI approach?
The use of generative AI is taking off across industries. Two popular approaches are GANs, which are used to generate multimedia, and VAEs, used more for signal analysis.Continue Reading
10 top AI and machine learning trends for 2023
Multi-modal learning, ChatGPT, the industrial metaverse -- learn about the top trends in AI for 2023 and how they promise to transform how business gets done.Continue Reading
The rise of automation and governance in MLOps
MLOps can make many of an organization's operations more efficient, but only when its automation capabilities are paired with effective governance strategies.Continue Reading
4 main types of artificial intelligence: Explained
AI technology can exceed human performance in many areas, but it is still no match for the human brain. Learn about the four main types of AI.Continue Reading
The top 5 benefits of AI in banking and finance
The strategic deployment of AI in banking and finance can bring substantial benefits. Learn about how AI tools are transforming financial services and the risks to be mindful of.Continue Reading
AI use cases in banking create opportunities, improve systems
AI has become increasingly more common in the banking industry and has found a home sifting through data, improving back-end systems and assisting with customer service.Continue Reading
Data, analytics and AI predictions for 2023
The expansion of big data, analytics and artificial intelligence we saw in 2022 will continue into the new year and present both new opportunities and challenges for organizations.Continue Reading
AI examples that can be used effectively in agriculture
AI technologies can be utilized in agriculture for increased visibility into factors affecting crops, increased efficiency and minimized risk.Continue Reading
Unlocking the potential of white box machine learning algorithms
Transparent, explainable machine learning algorithms have demonstrated benefits and use cases. Although white box AI is nascent and largely unknown, it's worth exploring further.Continue Reading
Evaluating multimodal AI applications for industries
Various industries, including healthcare and media, are currently making use of multimodal AI applications and have determined that the benefits outweigh drawbacks.Continue Reading
Augmented analytics, decision intelligence power modern BI
Business intelligence is rapidly evolving, and businesses would be best equipped to handle today's data analytics challenges with both augmented analytics and decision intelligence.Continue Reading
How businesses can benefit from conversational AI applications
Conversational AI tools have traditionally been limited in scope, but as they become more humanlike, businesses have realized their potential and applied them to more use cases.Continue Reading
Why banks need MLOps for digital transformation
Financial institutions should look to MLOps to ease the development, deployment and management of machine learning models. MLOps is often ignored, yet banking will benefit from it.Continue Reading
The future of data science: Career outlook and industry trends
The future of data science as a profession is unclear, as new technologies change the responsibilities of data scientists. It may also soon change the nature of the job.Continue Reading
Hybrid AI examples demonstrate its business value
As businesses weigh the potential benefits of implementing AI systems, hybrid AI examples demonstrate the technology's practical value for businesses.Continue Reading
Stochastic processes have various real-world uses
The breadth of stochastic point process applications now includes cellular networks, sensor networks and data science education. Data scientist Vincent Granville explains how.Continue Reading
What is AI governance and why do you need it?
AI governance is a new discipline given the recent expansion of AI. It's different from standard IT governance practices in that it's concerned with the responsible use of AI.Continue Reading
Interpretability and explainability can lead to more reliable ML
Interpretability and explainability as machine learning concepts make algorithms more trustworthy and reliable. Author Serg Masís assesses their practical value in this Q&A.Continue Reading
How cloud RPA is key to automation's future
Companies have traditionally used robotic process automation (RPA) as on-premises software but are now embracing cloud RPA as its business benefits are outweighing the drawbacks.Continue Reading
Why TinyML use cases are taking off
TinyML technology can successfully collect and analyze data in real scenarios, as demonstrated in various use cases.Continue Reading
How warehouse automation robotics transformed the supply chain
To maximize efficiency in warehouses and ameliorate supply chain issues, companies are turning to automation technology, leading them to embrace warehouse automation robotics.Continue Reading
Will autonomous vehicles transform the supply chain?
Autonomous vehicles are being road tested and companies are predicting added value if these vehicles become integrated in supply chains, but certain obstacles must be overcome.Continue Reading
How neural network training methods are modeled after the human brain
Training neural nets to mirror the human brain enables deep learning models to apply learning to data they've never seen before.Continue Reading
ML model optimization with ensemble learning, retraining
Making ML models better post-deployment can be accomplished. Learn the ins and outs of two key techniques: ensemble learning and frequent model retraining.Continue Reading
What is data science? The ultimate guide
Data science is the process of using advanced analytics techniques and scientific principles to analyze data and extract valuable information for business decision-making, strategic planning and other uses.Continue Reading
Solving the AI black box problem through transparency
Ethical AI black box problems complicate user trust in the decision-making of algorithms. As AI looks to the future, experts urge developers to take a glass box approach.Continue Reading
3 ways to evaluate and improve machine learning models
Training performance evaluation, prediction performance evaluation and baseline modeling can refine machine learning models. Learn how they work together to improve predictions.Continue Reading
5 ways AI bias hurts your business
A biased AI system can lead businesses to produce skewed, harmful and even racist predictions. It's important for enterprises to understand the power and risks of AI bias.Continue Reading
Wrangling data with feature discretization, standardization
A variety of techniques help make data useful in machine learning algorithms. This article looks into two such data-wrangling techniques: discretization and standardization.Continue Reading
Top 9 types of machine learning algorithms, with cheat sheet
Machine learning can assist enterprises by quickly modeling large data sets. Choosing the right algorithm depends on the desired outcome and the makeup of your data science team.Continue Reading
Designing and building artificial intelligence infrastructure
Building an artificial intelligence infrastructure requires a serious look at storage, networking and AI data needs, combined with deliberate and strategic planning.Continue Reading
8 considerations for buying versus building AI
Business leaders should consider their employees' technical expertise, technology budgets and regulatory needs, among other factors, when deciding to build or buy AI.Continue Reading
Data scientists vs. machine learning engineers
The positions of data scientist and machine learning engineer are in high demand and are important for enterprises that want to make use of their data and use AI.Continue Reading
Moving beyond NLP to make chatbots smarter
Machine reasoning could help chatbots better understand context, which is crucial to understanding human emotions and formulating emotionally relevant responses.Continue Reading
5 reasons NLP for chatbots improves performance
Experts say chatbots need some level of natural language processing capability in order to become truly conversational. Without language capabilities, bots are simple order takers.Continue Reading
Transformer neural networks are shaking up AI
Transformers are revolutionizing the field of natural language processing with an approach known as attention. That's just the beginning for this new type of neural network.Continue Reading
In-depth guide to machine learning in the enterprise
Enterprises are adopting machine learning technologies at rapid rates. In this machine learning guide, we break down what you need to know about this transformative technology.Continue Reading
Synthetic data for machine learning combats privacy, bias issues
Synthetic data generation for machine learning can combat bias and privacy concerns while democratizing AI for smaller companies with data set issues.Continue Reading
CNN vs. RNN: How are they different?
Convolutional neural networks and recurrent neural nets underlie many of the AI applications that drive business value. Learn about CNNs vs. RNNs in this primer.Continue Reading
Supervised vs. unsupervised learning: Use in business
Learn how LinkedIn, Zillow and others choose between supervised learning, unsupervised learning and semi-supervised learning for their machine learning projects.Continue Reading
Businesses pivot back to AI adoption after year of slow growth
AI adoption has taken a step back when it comes to enterprise IT spending priority, but it remains a steady investment for enterprises across industries.Continue Reading
Artificial general intelligence in business holds promise
While AGI in business remains unattainable today, truly intelligent systems, chatbots and predictive analytics are potential use cases enterprises should keep their eyes on.Continue Reading
Training GANs relies on calibrating 2 unstable neural networks
Understanding the complexities and theory of dueling neural networks can carve out a path to successful GAN training.Continue Reading
Artificial general intelligence examples remain out of reach
Artificial general intelligence remains largely an aspiration goal of researchers, but as technologies advance, so too does the dream become more realistic.Continue Reading
Defining enterprise AI: From ETL to modern AI infrastructure
The promise of enterprise AI is built on old ETL technologies, and it relies on an AI infrastructure effectively integrating and processing loads of data.Continue Reading
KDD in data mining assists data prep for machine learning
While data scientists are often familiar with data mining, the deeper knowledge discovery in databases (KDD) procedure can help prepare data to train machine learning algorithms.Continue Reading
AI trends in 2020 marked by expectation shift and GPT-3
In the past year, AI hyperscalers got serious about their machine learning platforms, expectations were reset and transformer networks empowered the GPT-3 language model.Continue Reading
AI ROI questions to ask and the hidden costs of AI
While ROI can be difficult to show with AI projects, it is crucial for AI teams to anticipate costs and prove each investment is worth the enterprise's time.Continue Reading
How AI adoption by industry is being impacted by COVID-19
While COVID-19 has impacted budgets and businesses plans, some industries are seeing improved processes and consumer relationships due to new investments in AI and automation.Continue Reading
Reality check: Analysts check in on the AI hype cycle
AI applications still come with significant hype, but with a targeted approach, organizations can get the most out of their applications.Continue Reading
Why AI adoption in the enterprise continues to lag
In this episode of 'Today I Learned About Data,' we discuss AI adoption in the enterprise, and it's been slower than many have predicted.Continue Reading
8 examples of AI personalization across industries
Through AI content personalization, organizations can build unique profiles of users and customers and tailor their products, advertisements and services to better fit them.Continue Reading
Bayesian networks applications are fueling enterprise support
Cloud-based infrastructure has opened the door for enterprises to take advantage of the versatile predictive capability of Bayesian networks technology.Continue Reading
How AI can be used in agriculture: Applications and benefits
The use of agricultural AI optimizes the farming industry by decreasing workloads, analyzing harvesting data and improving accuracy through seasonal forecasting.Continue Reading
How 5G and artificial intelligence may influence each other
5G and AI can be combined to improve the network speed, responsiveness and efficiencies of organizations in the enterprise, but the former needs more time to mature.Continue Reading
Enterprise and home find use for intelligent virtual assistants
Intelligent virtual assistants have the capacity to augment employees, as well as improve convenience in homes, but only time will see their limitations resolved.Continue Reading
Advantages of AI in agriculture include increased efficiency
Artificial intelligence has the capacity to improve the supply chain and agricultural industry by improving demand forecasting and increasing productivity.Continue Reading
Explore the foundations of artificial neural network modeling
Dive into Giuseppe Bonaccorso's recent book 'Mastering Machine Learning Algorithms' with a chapter excerpt on modeling neural networks.Continue Reading
Combining AI and predictive analytics crucial for the enterprise
Predictive analytics, when combined with artificial intelligence, can assist organizations with their risk management, as well as their planning and optimization.Continue Reading
Future of autonomous vehicles depends on driver attitudes
Getting the public behind the idea of an autonomous vehicle means peeling back the black box nature of AI and proving the safety of self-driving technology.Continue Reading
Bias in machine learning examples: Policing, banking, COVID-19
Human bias, missing data, data selection, data confirmation, hidden variables and unexpected crises can contribute to distorted machine learning models, outcomes and insights.Continue Reading
Machine learning limitations marked by data demands
Machine learning has impressive capabilities in the enterprise, but with high-data requirements and struggles with explainability, it remains unable to reach widespread use.Continue Reading
4 ways AI and digital transformation enable deeper automation
Organizations that are going beyond the enterprise adoption of digitization are entering a new wave of AI-enabled digital transformation.Continue Reading
Reimagining creativity and AI to boost enterprise adoption
AI has yet to reach the point of creativity but continues to advance, while assisting humans in the production of their own creative works and improvement of their organizations.Continue Reading
Autoencoders' example uses augment data for machine learning
Autoencoders are neural networks that serve machine learning models -- from denoising to dimensionality reduction. Seven use cases explore the practical application of autoencoder technology.Continue Reading
Future of AI in video games focuses on the human connection
The future of gameplay is reliant on the usage and perfection of Emotional AI and its ability to create and emulate realistic and human relationships.Continue Reading
Applications of generative adversarial networks hold promise
Generative adversarial networks are tied to fake online content known as 'deepfakes,' but GANs can help data-poor enterprises supplement their data needs.Continue Reading
14 best machine learning platforms for 2020
Turn ever-growing volumes of data into enterprise insights with the right platform for machine learning. Learn more about the vendors and products in this cutting-edge market.Continue Reading
5 major benefits of machine learning in the enterprise
Businesses are inserting machine learning into processes wherever possible. Here are a few of the ways machine learning users are benefiting from machine learning.Continue Reading
How to choose between a rules-based vs. machine learning system
Debating rules-based systems over machine learning comes down to the complexity of the task at hand. Machine learning dominates complex tasks, but requires more long-term expertise.Continue Reading
Artificial intelligence content writing ramps up publishing
To ease the burden that is associated with content production, AI in content production has been deployed to augment writers' work and to help monitor and measure post engagement.Continue Reading
Deep learning's role in the evolution of machine learning
Machine learning has continued to evolve since its beginnings some seven decades ago. Learn how deep learning has catalyzed a new phase in the evolution of machine learning.Continue Reading
AI web scraping augments data collection
Web scraping automates the data gathering process and refines the data pipeline, but it requires careful attention to choosing the right tools, languages and programs.Continue Reading
Machine learning for fraud prevention keeps TrafficGuard agile
TrafficGuard uses machine learning to prevent ad fraud but has faced the challenges that come along with it. Full-scale commitment and investment have eased those obstacles.Continue Reading
10 common uses for machine learning applications in business
Machine learning applications are unlocking value across business functions. Here are 10 examples of how machine learning applications are being used in business.Continue Reading
Hospital IoT highlighted by AI use cases and wearable devices
AI in healthcare can provide patients and doctors with better care and support through prescriptive analytics, wearable devices and illness detection.Continue Reading
5 AI technologies in business that are making a big impact
Learn how image recognition, speech recognition, chatbots, natural language generation and sentiment analysis are changing how businesses operate.Continue Reading
Cloud computing for machine learning offers on-demand tools
Automated machine learning and MLaaS tools are now being developed for the cloud, and enterprises need better workflows and infrastructure to successfully integrate the technology.Continue Reading
AI document processing remains a subtle but powerful use case
Artificial intelligence has found strong use cases in content summarization and document categorization within the medical, marketing and legal fields.Continue Reading