AI News, Artificial intelligence artificial intelligence

We make AI approachable and actionable for marketers.

Artificial intelligence is getting smarter, faster, and cheaper, bringing the disruptive power of machine learning and cognitive computing to the marketing industry.

Consider how much time your marketing team spends reviewing analytics, creating performance reports, drafting social media updates, determining blog post topics, copywriting, building strategy, and allocating resources.

Since that time, we’ve published more than 400 articles designed to make AI approachable and actionable for marketers, and our founder, Paul Roetzer, has given more than 70 AI presentations at industry conferences and corporate events.

As part of the content strategy, we’ve written Spotlights on 50+ AI-powered marketing technology companies with more than $1 billion in combined funding, which you can learn about through our free, ungated tools—AI Score for Marketers and The Marketing AI Buyer’s Guide.

Our growth has been made possible by a collection of industry benefactors who share our vision for a more intelligently automated future, and support our mission to make AI approachable and actionable for marketers.

Dava Newman: Space Exploration, Space Suits, and Life on Mars | Artificial Intelligence (AI) Podcast

You get $10 and $10 is donated to FIRST, one of my favorite nonprofit organizations that inspires young minds through robotics and STEM education.INFO:Podcast website: Podcasts: episodes playlist: playlist: LINKS:Dava Twitter: Web: - Introduction3:11 - Circumnavigating the globe by boat5:11 - Exploration7:17 - Life on Mars11:07 - Intelligent life in the universe12:25 - Advanced propulsion technology13:32 - The Moon and NASA's Artemis program19:17 - SpaceX21:45 - Science on a CubeSat23:45 - Reusable rockets25:23 - Spacesuit of the future32:01 - AI in Space35:31 - Interplanetary species36:57 - Future of space explorationCONNECT:- Subscribe to this YouTube channel- Twitter: LinkedIn: Facebook: Instagram: Medium: Support on Patreon:

Artificial intelligence for global health

Deep learning, a subset of machine learning based on artificial neural networks, has enabled applications with performance levels approaching those of trained professionals in tasks including the interpretation of medical images and discovery of drug compounds (1).

Health conditions in LMICs and HICs are rapidly converging, as indicated by the recent shift of the global disease burden from infectious diseases to chronic noncommunicable diseases (NCDs, including cancer, cardiovascular disease, and diabetes) (2).

Both contexts also face similar challenges, such as physician burnout due to work-related stress (3), inefficiencies in clinical workflows, inaccuracies in diagnostic tests, and increases in hospital-acquired infections.

With increasing smartphone penetration, patient-facing AI applications may guide lifestyle and nutrition, allow symptom self-assessment, and provide advice during pregnancy or recovery periods—ultimately allowing patients to take control of their health and reducing the burden on limited health systems.

This is particularly important in oncology, where lack of subspecialists may force an oncologist to manage tumors across multiple anatomical sites, and thus deliver care of inferior quality owing to the constantly varying scope of services.

In radiotherapy, for example, semi-automation of the treatment planning process may speed up treatment delivery, increase patient intake, and allow greater focus on the clinical nuances of patient management—all without requiring additional personnel.

The third application area relates to population health and allows public agencies to realize cause-and-effect relationships, appropriately allocate the often limited resources, and ultimately mitigate the progression of epidemics (8).

Automated registry curation, by extracting standard data from free-form text found in radiology and pathology reports, may help reduce labor costs that account for more than 50% of all registry activity expenses (9).

Other applications include identifying hotspots for potential disease outbreaks in unmapped rural areas by utilizing AI-powered analysis of aerial photography and weather patterns, as well as planning and optimizing CHWs' household visiting schedules.

Ethical concerns about the use of AI in health care include undermining patient data privacy protections and exacerbating the existing tension between providing care and generating profit, as well as introducing a third party into the patient-doctor relationship, which changes expectations of confidentiality and responsibility (10).

Data for AI training and validation must be context specific: Computer vision systems may be required to work with legacy data formats (e.g., film versus digital x-ray), whereas developing chatbots will require compiling corpora in local languages.

Infrastructure constraints should be assessed, including the availability of devices for serving AI applications, reliability of internet connectivity and bandwidth, electricity, and the amount and quality of existing digital data, as well as future digitization efforts.

Many of the challenges faced by integrating electronic medical records in LMICs, for example, are likely to also impede AI applications, including limited funding, poor infrastructure for reliably delivering technologies, and discontinuous participation from users (12).

AI-driven interventions should not be evaluated in isolation, nor should they be regarded as a universal panacea: Although sizable initial investments may be required, the marginal cost of providing an existing AI software service to one more user is minuscule, giving it economical scalability.

What Is Artificial Intelligence? | Artificial Intelligence (AI) In 10 Minutes | Edureka

Machine Learning Masters Program: ** This edureka video on Artificial ..

Elon Musk's Last Warning About Artificial Intelligence

Elon Musk Biography: Elon Musk Merchandise: Elon Musk Merchandise Store:

Top 10 Applications Of Artificial Intelligence | Artificial Intelligence Applications | Edureka

Machine Learning Masters Program: ** This Edureka session on Applications Of ..

Artificial Intelligence & the Future - Rise of AI (Elon Musk, Bill Gates, Sundar Pichai)|Simplilearn

Artificial Intelligence (AI) is currently the hottest buzzword in tech. Here is a video on the role of Artificial Intelligence and its scope in the future. We have put ...

Types Of Artificial Intelligence | Artificial Intelligence Explained | What is AI? | Edureka

Machine Learning Engineer Masters Program: ** This Edureka video on "Types Of ..

What is Artificial Intelligence Exactly?

Subscribe here: Check out the previous episode: Become a Patreo

Artificial intelligence & algorithms: pros & cons | DW Documentary (AI documentary)

Developments in artificial intelligence (AI) are leading to fundamental changes in the way we live. Algorithms can already detect Parkinson's disease and cancer ...

Where AI is today and where it's going. | Richard Socher | TEDxSanFrancisco

Richard Socher is an adjunct professor at the Stanford Computer Science Department where he obtained his PhD working on deep learning with Chris Manning ...

Stuart Russell: Long-Term Future of Artificial Intelligence | Artificial Intelligence (AI) Podcast

Stuart Russell is a professor of computer science at UC Berkeley and a co-author of the book that introduced me and millions of other people to AI, called ...

Artificial Intelligence Full Course | Artificial Intelligence Tutorial for Beginners | Edureka

Machine Learning Engineer Masters Program: This Edureka video on "Artificial ..