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.
How to use and run Jupyter Notebook: A beginner's guide
Learn how to create your first project with Jupyter Notebook, a popular platform for presenting data science and machine learning work with interactive code, text and visuals. Continue Reading
How and why to run machine learning workloads on Kubernetes
Running ML model development and deployment on Kubernetes is an absolute must in a world where decoupling workloads can optimize resources and cut costs. Continue Reading
How and why to create an AI bill of materials
AIBOMs help developers and security teams by providing a transparent view of AI system components, improving supply chain security and compliance. Use this guide to get started. Continue Reading
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Tips to prevent machine learning scalability problems
Addressing ML scalability challenges involves selecting the right models, planning resource usage and managing network connectivity to support expanding applications and data load. Continue Reading
What is machine learning and how does it work? In-depth guide
Machine learning is a branch of AI focused on building computer systems that learn from data. Continue Reading
Claude vs. ChatGPT: What's the difference?
Compare Anthropic's Claude vs. OpenAI's ChatGPT in terms of features, model options, costs, performance and privacy to decide which generative AI tool better suits your needs.Continue Reading
GPT-4o vs. GPT-4: How do they compare?
OpenAI's GPT-4o promises improved multimodal capabilities and increased efficiency. Explore the differences between GPT-4o and its predecessor, GPT-4.Continue Reading
Generative AI ethics: 8 biggest concerns and risks
As its adoption grows, generative AI is upending business models and forcing ethical issues like customer privacy, brand integrity and worker displacement to the forefront.Continue Reading
How to build the business case for AI initiatives
Building a compelling business case for AI requires attention to business pain points, financial and risk considerations, and collaboration with the CFO.Continue Reading
Data science vs. machine learning: What's the difference?
Data science and machine learning both play crucial roles in AI, but they have some key differences. Compare the two disciplines' goals, required skills and job responsibilities.Continue Reading
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Generative AI vs. predictive AI: Understanding the differences
Generative AI and predictive AI vary in how they handle use cases and unstructured and structured data, respectively. Explore the benefits and limitations of each.Continue Reading
10 popular libraries to use for machine learning projects
Machine learning libraries expedite the development process by providing optimized algorithms, prebuilt models and other support. Learn about 10 widely used ML libraries.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
What are the benefits of an MLOps framework?
While maintaining machine learning models throughout their lifecycles can be challenging, implementing an MLOps framework can enhance collaboration, efficiency and model quality.Continue Reading
Will AI replace cybersecurity jobs?
Although AI can enhance cybersecurity practices like threat detection and vulnerability management, the technology's limitations ensure a continued need for human security pros.Continue Reading
How AI is changing the real estate market
AI tools and systems are becoming an asset for many real estate endeavors. Explore seven top use cases for AI in the real estate industry and challenges to adoption.Continue Reading
Supervised vs. unsupervised learning explained by experts
Learn the characteristics of supervised learning, unsupervised learning and semisupervised learning and how they're applied in machine learning projects.Continue Reading
8 machine learning benefits for businesses
For business leaders, machine learning's predictive capabilities can forecast product demand, reduce equipment downtime and retain customers.Continue Reading
Choosing between a rule-based vs. machine learning system
Deciding between a rule-based vs. machine learning system comes down to complexity and organizational needs. Compare the advantages, drawbacks and use cases for each AI approach.Continue Reading
Top 12 machine learning use cases and business applications
Machine learning applications are increasing the efficiency and improving the accuracy of business functions ranging from decision-making to maintenance to service delivery.Continue Reading
Gemini vs. ChatGPT: What's the difference?
ChatGPT took early lead among AI-generated chatbots before Google answered with Gemini, formerly Bard. While ChatGPT and Gemini perform similar tasks, there are differences.Continue Reading
Compare 6 top MLOps platforms
Choosing the right MLOps platform means considering features, pricing and ease of integration into your current machine learning environment. Evaluate six leading options.Continue Reading
Planning for GenAI disillusionment
Hype around GenAI will inevitably be followed by generative AI disillusionment. Experts ruminate on how to shorten the trough and prepare for the future.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
Dell AI Factory takes the spotlight at Dell Technologies World
Dell has aligned its entire portfolio behind AI and has expanded critical partnerships to support customers adopting artificial intelligence technologies.Continue Reading
Examining the future of AI and open source software
As AI coding tools gain traction in the enterprise, it remains unclear whether AI-generated code violates open source software licenses -- but legal claims indicate possible risk.Continue Reading
At Red Hat Summit 2024, generative AI goes open source
Analyst Scott Sinclair unpacks this year's Red Hat Summit, where the company launched new AI integration tools and features as part of its open source generative AI strategy.Continue Reading
Beyond algorithms: The rise of data-centric AI
Prioritizing data curation, preparation and engineering -- rather than tweaking model architecture -- could significantly improve AI systems' reliability and trustworthiness.Continue Reading
Best practices for getting started with MLOps
As AI and machine learning become increasingly popular in enterprises, organizations need to learn how to set their initiatives up for success. These MLOps best practices can help.Continue Reading
How to use Perplexity AI: Tutorial, pros and cons
AI-powered search engine Perplexity offers a conversational tone and much-needed source citations -- but it's not perfect. Learn how the tool works and how to start using it.Continue Reading
How to measure the ROI of enterprise AI initiatives
Interest in AI tools and systems has skyrocketed across industries. To ensure their endeavors are worthwhile, businesses are increasingly emphasizing return on investment.Continue Reading
Beyond AI doomerism: Navigating hype vs. reality in AI risk
As AI becomes increasingly widespread, viewpoints featuring both sensationalism and real concern are shaping discussions about the technology and its implications for the future.Continue Reading
Compare proprietary vs. open source for enterprise AI
Unsure whether to choose proprietary or open source AI for your enterprise deployment? Compare the pros and cons of both software models, including how each can benefit businesses.Continue Reading
Google Cloud Next 24 recap: GenAI tools for enterprises
New products introduced at Google Cloud Next stand to provide enterprises with GenAI tools for analytics, data management, AI model building and more.Continue Reading
Evaluate whether your organization needs a chief AI officer
As more businesses start developing comprehensive AI strategies, the new role of chief AI officer, or CAIO, might become the next addition to your organization's executive suite.Continue Reading
Tips for planning a machine learning architecture
When planning a machine learning architecture, organizations must consider factors such as performance, cost and scalability. Review necessary components and best practices.Continue Reading
Everything you need to know about the new EU AI Act
The European Union's new AI Act defines AI regulations based on risk and outlines hefty fines for noncompliance. Explore the details of the AI Act and how it could apply to you.Continue Reading
Compare enterprise generative AI deployment options
To pick the best generative AI deployment model for your organization, examine how cloud and on-premises approaches fit into your security, cost, infrastructure and network needs.Continue Reading
How AI is transforming project management
As the project management field increasingly embraces AI-powered software, the benefits can help organizations thrive -- but only if the risks are properly considered too.Continue Reading
Compare large language models vs. generative AI
While large language models like ChatGPT grab headlines, the generative AI landscape is far more diverse, spanning models that are changing how we create images, audio and video.Continue Reading
GPT-3.5 vs. GPT-4: Biggest differences to consider
GPT-3.5 or GPT-4? With multiple OpenAI language models to choose from, picking the right option for your organization's needs comes down to the details.Continue Reading
AI and compliance: Which rules exist today, and what's next?
The AI regulatory landscape is still racing to catch up with the fast pace of industry and technological developments, but a few key themes are starting to emerge for businesses.Continue Reading
AI news roundup: OpenAI video model, Nvidia chatbot and more
Explore last week's AI news highlights with analyst Mike Leone's roundup of top developments, including OpenAI's launch of video model Sora and Nvidia's locally running chatbot.Continue Reading
AI news highlights: Gemini Ultra, Cisco-Nvidia partnership
Explore last week's AI highlights with analyst Mike Leone's roundup of top news headlines, including updates to Google's Gemini Ultra and strategic acquisitions and partnerships.Continue Reading
Explore real-world use cases for multimodal generative AI
Multimodal generative AI can integrate and interpret multiple data types within a single model, offering enterprises a new way to improve everyday business processes.Continue Reading
The importance and limitations of open source AI models
Despite rising interest in more transparent, accessible AI, a scarcity of public training data and compute infrastructure presents significant hurdles for open source AI projects.Continue Reading
FTC inquiry, Claypot acquisition and more recent AI news
Enterprise Strategy Group analyst Mike Leone breaks down five of the most significant news developments in generative AI from the past week.Continue Reading
What does generative AI mean for the legal sector?
Generative AI tools such as ChatGPT are entering law practices, promising more efficiency and less time spent on rote tasks. But risks remain around accuracy, ethics and privacy.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
Generative AI vs. machine learning: How are they different?
Generative AI differs from simpler forms of machine learning in several ways, but both can enhance efficiency, personalize customer experiences and drive revenue growth.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
Compare 3 top AI coding tools
AI-powered coding tools GitHub Copilot, Amazon CodeWhisperer and Tabnine take an innovative approach to software development -- but don't count the human developer out just yet.Continue Reading
10 top AI and machine learning trends for 2024
Custom enterprise models, open source AI, multimodal -- learn about the top AI and machine learning trends for 2024 and how they promise to transform the industry.Continue Reading
Compare GPUs vs. CPUs for AI workloads
GPUs are often presented as the vehicle of choice to run AI workloads, but the push is on to expand the number and types of algorithms that can run efficiently on CPUs.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
6 generative AI predictions for 2024
Analyst Mike Leone predicts what's next for generative AI -- from open source to regulatory shifts -- offering a comprehensive view of where the industry is headed in 2024.Continue Reading
Amazon's innovative generative AI moves at re:Invent 2023
Analyst Mike Leone takes a comprehensive look at Amazon's generative AI announcements at this year's re:Invent, including the Q assistant, Bedrock enhancements and chip updates.Continue Reading
How generative AI could change healthcare
Generative AI has joined the ranks of healthcare professionals in early use cases from medical research to patient communications. AI at scale isn't far behind.Continue Reading
The role of precision in crafting generative AI prompts
Enterprise Strategy Group analyst Stephen Catanzano explains how and why to craft precise queries that get actionable, relevant results from generative AI models.Continue Reading
Transformer neural networks are shaking up AI
Introduced in 2017, transformers were a breakthrough in modeling language that enabled generative AI tools such as ChatGPT. Learn how they work and their uses in enterprise settings.Continue Reading
Compare 8 prompt engineering tools
To get the most out of large language models, developers and other users rely on prompt engineering techniques to achieve their desired output. Review 8 tools that can help.Continue Reading
Microsoft Ignite updates pave the way for GenAI innovation
Microsoft's latest products and updates to existing platforms center on using artificial intelligence to improve productivity.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
What are the risks and limitations of generative AI?
As enterprise adoption grows, it's crucial for organizations to build frameworks that address generative AI's limitations and risks, such as model drift, hallucinations and bias.Continue Reading
How generative AI is changing creative work
Text, image and audio generators offer new content creation capabilities, but they raise concerns about originality, ethics and the impact of automation on creative jobs.Continue Reading
How do LLMs like ChatGPT work?
AI expert Ronald Kneusel explains how transformer neural networks and extensive pretraining enable large language models like GPT-4 to develop versatile text generation abilities.Continue Reading
Successful generative AI examples and tools worth noting
Industries are using generative AI in various ways to generate new content. Learn about successful examples of this technology and notable tools in use.Continue Reading
The data privacy risks of third-party enterprise AI services
Using off-the-shelf enterprise AI can both increase productivity and expose internal data to third parties. Learn best practices for assessing and mitigating data privacy risk.Continue Reading
10 realistic business use cases for ChatGPT
Many business use cases for ChatGPT are emerging, but organizations must decide which best fit their specific needs. Consider 10 pragmatic example applications.Continue Reading
Explore 14 real-world use cases for adaptive AI
Adaptive AI's ability to alter its code in response to changing circumstances is useful in dynamic, complex environments. Discover potential business use cases for this technology.Continue Reading
The future of generative AI: How will it impact the enterprise?
Learn how generative AI will affect organizations in terms of capabilities, enterprise workflows and ethics, and how the technology will shape enterprise use cases.Continue Reading
Evaluate model options for enterprise AI use cases
To successfully implement AI initiatives, enterprises must understand which AI models will best fit their business use cases. Unpack common forms of AI and best practices.Continue Reading
Assessing the environmental impact of large language models
Large language models like ChatGPT consume massive amounts of energy and water during training and after deployment. Learn how to understand and reduce their environmental impact.Continue Reading
The readiness of AI and LLM technology
Generative AI technology has already disrupted how enterprises work. While many companies are uneasy with the fast-evolving technology, that's expected to change.Continue Reading
Google extends generative AI leadership at Google Cloud Next
Industry analyst Mike Leone unpacks the wave of generative AI announcements at the recent Google Cloud Next conference, including updates to Vertex and Duet.Continue Reading
Generative AI in business: Fast uptake, earmarked funding
More than half of IT and business decision-makers said they have generative AI on the near-term adoption track, according to a report from TechTarget's Enterprise Strategy Group.Continue Reading
8 areas for creating and refining generative AI metrics
When gauging the success of generative AI initiatives, metrics should be agreed upon upfront and focus on the performance of the model and the value it delivers.Continue Reading
10 top resources to build an ethical AI framework
Several standards, tools and techniques are available to help navigate the nuances and complexities in establishing a generative AI ethics framework that supports responsible AI.Continue Reading
Prompt engineering vs. fine-tuning: What's the difference?
Prompt engineering and fine-tuning are both practices used to optimize AI output. But the two use different techniques and have distinct roles in model training.Continue Reading
Compare 3 AI writing tools for enterprise use cases
AI writing tools target enterprise use cases, but aren't ready to replace a human writer just yet. Explore three popular options for content creation: Writer, Jasper and ChatGPT.Continue Reading
Evaluate the risks and benefits of AI in cybersecurity
Incorporating AI in cybersecurity can bolster organizations' defenses, but it's essential to consider risks such as cost, strain on resources and model bias before implementation.Continue Reading
New skills in demand as generative AI reshapes tech roles
With generative AI adoption on the rise, employers are prioritizing creativity and problem-solving alongside technical skills for roles in software development and data science.Continue Reading
Pros and cons of ChatGPT for finance and banking
While LLMs show promise in the financial industry, responsible implementation requires proceeding with caution. Explore potential use cases and considerations to keep in mind.Continue Reading
IT observability tool proliferation fuels AIOps deployments
Enterprise Strategy Group's Jon Brown discusses the latest findings in his newly released report on observability in IT and application infrastructures and integrating AIOps.Continue Reading
Tracking recent generative AI news from 9 big tech companies
Analyst Mike Leone breaks down the latest generative AI announcements and products from big tech, spanning conversational AI, developer tools, industry partnerships and more.Continue Reading
AI existential risk: Is AI a threat to humanity?
What should enterprises make of the recent warnings about AI's threat to humanity? AI experts and ethicists offer opinions and practical advice for managing AI risk.Continue Reading
HPE goes all-in on supercomputing in the cloud
Given the popularity of large language model technology, tech vendors such as HPE are now looking to give customers offerings to help them train these models.Continue Reading
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
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
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
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
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