In this read, you will get to know the Human-AI Collaborative approach to building Hybrid Intelligence. Check the researcher’s view on Hybrid Intelligence below!
Hybrid intelligence is a collaboration combining the power and capabilities of human intelligence and artificial intelligence (AI) machines. It is an emerging field that aims to use the connections between humans and machines for better problem-solving and decision-making.
In hybrid intelligence, humans and artificial intelligence systems work together hand in hand, each contributing their abilities. For example, while humans have creativity, intuition, situational awareness, and ethical decision-making, AI systems excel at processing large amounts of data, recognizing patterns, and performing repetitive tasks efficiently and quickly.
The purpose of hybrid intelligence is to use human intelligence and the computing power of machines to solve complex problems that humans or artificial intelligence cannot solve.
Combining human thinking, reasoning and intelligence with the analytical and computational power of intellect, hybrid intelligence aims to achieve excellent results in many areas, including health, finance, education and cybersecurity.
Human-AI collaboration in hybrid intelligence can take many forms, including:
Hybrid intelligence highlights the importance of human-AI collaboration to create more resilient, reliable and human values-based systems. Combining the unique characteristics of humans and machines, hybrid intelligence can solve complex problems and open up new possibilities in many fields.
Artificial intelligence (AI) gradually improves as it learns many “human” tasks, especially repetitive ones, such as medical diagnosis, language translation, or customer service. There are legitimate concerns that AI will eventually supplant human jobs across the economy, but it’s not a near-horizon consequence.
AI has fundamentally changed how a task will be accomplished and who will do it. And while technologies that can automate processes and increase efficiency have received much attention, perhaps the more powerful facet of AI – humans and machines that complement and magnify each other’s talents – hasn’t been as much the focus of scrutiny and scholarship says TCS.
An AI-assisted strategy can accelerate the hunt for disease treatments, provide creative answers to environmental issues, and even start to tackle persistent societal biases. “This is the future of work ethics: advanced human brains collaborate with high-performing artificial intelligence to accomplish difficult tasks, create new possibilities and beautify the world,” says Colin Harper, a tech reporter for Coin Desk.
Click here to read more details on Hybrid Intelligence by TCS!
We define HI as the combination of human and machine intelligence, augmenting human intellect and capabilities instead of replacing them, to make meaningful decisions, perform appropriate actions, and achieve goals that were unreachable by either humans or machines alone.
Developing HI requires fundamentally new solutions to core research problems in AI.
An essential element in our collaboration is the capability to explain motivations, actions, and results. And humans always operate in a setting where norms and values (often implicitly) delineate which goals and actions are desirable or even permissible. We, therefore, unpack the challenge of building HI systems into four research challenges:
Click here to read more detailed aspects of Hybrid Intelligence by IEEE!
April 29, 2022, In 2015, McKinsey acquired QuantumBlack, a sophisticated analytics start-up of more than 30 data scientists, data engineers, and designers based in London. They had made their name in Formula 1 racing, applying data science to help teams gain every possible advantage in performance. Healthcare, transportation, energy, and other industry clients soon followed.
Over the past seven years, the QuantumBlack community has helped McKinsey achieve a number of feats: building and then donating Kedro, an industry-leading developer tool, to the open-source community; being named a Leader in AI; and supporting women in technology through community efforts and mentorship. The team grew quickly, to 400 in 2020, and now has more than 1000 technical practitioners across the globe today.
Along the way, QuantumBlack has been a critical part of many digital and AI transformations across industries. “We have now brought together all of our analytics colleagues under one umbrella called QuantumBlack, AI by McKinsey,” says Alex Singla, “sharing a single culture and strongly defined career pathways, and using common methods and tools.”
For more information on Hybrid Intelligence by Mckinsey, click here!