Difference between revisions of "Human-in-the-Loop (HITL) Learning"
m |
m (Text replacement - "* Conversational AI ... ChatGPT | OpenAI ... Bing | Microsoft ... Bard | Google ... Claude | Anthropic ... Perplexity ... You ... Ernie | Baidu" to "* Conversational AI ... [[C...) |
||
| (27 intermediate revisions by the same user not shown) | |||
| Line 2: | Line 2: | ||
|title=PRIMO.ai | |title=PRIMO.ai | ||
|titlemode=append | |titlemode=append | ||
| − | |keywords=artificial, intelligence, machine, learning, models | + | |keywords=ChatGPT, artificial, intelligence, machine, learning, GPT-4, GPT-5, NLP, NLG, NLC, NLU, models, data, singularity, moonshot, Sentience, AGI, Emergence, Moonshot, Explainable, TensorFlow, Google, Nvidia, Microsoft, Azure, Amazon, AWS, Hugging Face, OpenAI, Tensorflow, OpenAI, Google, Nvidia, Microsoft, Azure, Amazon, AWS, Meta, LLM, metaverse, assistants, agents, digital twin, IoT, Transhumanism, Immersive Reality, Generative AI, Conversational AI, Perplexity, Bing, You, Bard, Ernie, prompt Engineering LangChain, Video/Image, Vision, End-to-End Speech, Synthesize Speech, Speech Recognition, Stanford, MIT |description=Helpful resources for your journey with artificial intelligence; videos, articles, techniques, courses, profiles, and tools |
| − | |description=Helpful resources for your journey with artificial intelligence; videos, articles, techniques, courses, profiles, and tools | + | |
| + | <!-- Google tag (gtag.js) --> | ||
| + | <script async src="https://www.googletagmanager.com/gtag/js?id=G-4GCWLBVJ7T"></script> | ||
| + | <script> | ||
| + | window.dataLayer = window.dataLayer || []; | ||
| + | function gtag(){dataLayer.push(arguments);} | ||
| + | gtag('js', new Date()); | ||
| + | |||
| + | gtag('config', 'G-4GCWLBVJ7T'); | ||
| + | </script> | ||
}} | }} | ||
| − | [ | + | [https://www.youtube.com/results?search_query=human+loop+active+machine+learning+reinforcement YouTube search...] |
| − | [ | + | [https://www.google.com/search?q=human+loop+active+machine+learning+reinforcement ...Google search] |
* [[Learning Techniques]] | * [[Learning Techniques]] | ||
| − | * [ | + | * [[Reinforcement Learning (RL) from Human Feedback (RLHF)]] |
| − | * [ | + | * [https://en.wikipedia.org/wiki/Human-in-the-loop Human-in-the-loop | Wikipedia] |
| + | * [https://en.wikipedia.org/wiki/Active_learning_(machine_learning) Active Learning | Wikipedia] | ||
* [[Loop]]s | * [[Loop]]s | ||
| − | * [ | + | * [[What is Artificial Intelligence (AI)? | Artificial Intelligence (AI)]] ... [[Generative AI]] ... [[Machine Learning (ML)]] ... [[Deep Learning]] ... [[Neural Network]] ... [[Reinforcement Learning (RL)|Reinforcement]] ... [[Learning Techniques]] |
| − | * [ | + | * [[Conversational AI]] ... [[ChatGPT]] | [[OpenAI]] ... [[Bing/Copilot]] | [[Microsoft]] ... [[Gemini]] | [[Google]] ... [[Claude]] | [[Anthropic]] ... [[Perplexity]] ... [[You]] ... [[phind]] ... [[Ernie]] | [[Baidu]] |
| − | + | * [[Data Science]] ... [[Data Governance|Governance]] ... [[Data Preprocessing|Preprocessing]] ... [[Feature Exploration/Learning|Exploration]] ... [[Data Interoperability|Interoperability]] ... [[Algorithm Administration#Master Data Management (MDM)|Master Data Management (MDM)]] ... [[Bias and Variances]] ... [[Benchmarks]] ... [[Datasets]] | |
| + | * [[Excel]] ... [[LangChain#Documents|Documents]] ... [[Database|Database; Vector & Relational]] ... [[Graph]] ... [[LlamaIndex]] | ||
| + | * [[Artificial General Intelligence (AGI) to Singularity]] ... [[Inside Out - Curious Optimistic Reasoning| Curious Reasoning]] ... [[Emergence]] ... [[Moonshots]] ... [[Explainable / Interpretable AI|Explainable AI]] ... [[Algorithm Administration#Automated Learning|Automated Learning]] | ||
| + | * [https://www.aitrends.com/ai-insider/human-in-the-loop-vs-out-of-the-loop-in-ai-systems-the-case-of-ai-self-driving-cars/ Human In-The-Loop Vs. Out-of-The-Loop in AI Systems: The Case of AI Self-Driving Cars | Lance Eliot - AI Trends] | ||
| + | * [https://www.bmc.com/blogs/hitl-human-in-the-loop/ What Is Human in The Loop (HITL) Machine Learning? | Jonathan Johnson - bmc blogs] | ||
| − | Human-in-the-loop (HITL), basically you can say, is the process of leveraging the power of the machine and human intelligence to create machine learning-based AI models. HITL describes the process when the machine or computer system is unable to solve a problem, needs human intervention like involving in both the training and testing stages of building an algorithm, for creating a continuous feedback loop allowing the algorithm to give every time better results. [ | + | |
| + | Human-in-the-loop (HITL), basically you can say, is the process of leveraging the power of the machine and human intelligence to create machine learning-based AI models. HITL describes the process when the machine or computer system is unable to solve a problem, needs human intervention like involving in both the training and testing stages of building an algorithm, for creating a continuous feedback loop allowing the algorithm to give every time better results. [https://medium.com/vsinghbisen/what-is-human-in-the-loop-machine-learning-why-how-used-in-ai-60c7b44eb2c0 What is Human in the Loop Machine Learning: Why & How Used in AI? | Vikram Singh Bisen - Medium] | ||
Example use case: | Example use case: | ||
| Line 27: | Line 42: | ||
* AI functional inexperienced | * AI functional inexperienced | ||
| + | Creating a virtuous feedback loop from your application to the AI services enabling it can help the system improve automatically without significant investment.[https://developer.ibm.com/technologies/artificial-intelligence/blogs/create-an-ai-feedback-loop-with-watson-discovery/ Create an AI feedback loop with Continuous Relevancy Training in Watson Discovery |] [[IBM]] | ||
| + | |||
| + | <img src="https://developer.ibm.com/developer/default/blogs/create-an-ai-feedback-loop-with-watson-discovery/images/blog-figure-1.png" width="600"> | ||
{|<!-- T --> | {|<!-- T --> | ||
| Line 52: | Line 70: | ||
<youtube>jNUp1SO_0YU</youtube> | <youtube>jNUp1SO_0YU</youtube> | ||
<b>Easily Implement Human in the Loop into Your Machine Learning Predictions with [[Amazon]] A2I | <b>Easily Implement Human in the Loop into Your Machine Learning Predictions with [[Amazon]] A2I | ||
| − | </b><br>Companies have millions of documents to process along with various types of documents. Often times, these documents are hard to read or have specific data points which are required to complete the business process. Using [[Amazon]] Augmented AI, you can now implement human reviews to review your machine learning predictions from Amazon Textract, Amazon Rekognition, Amazon SageMaker and many AWS AI/ ML services. In this tech talk, we walk through how to implement human reviews as well as showcase a use case by DealNet Capital on how they were able to reduce review time by 80% implementing [[Amazon]] A2I. Learning Objectives: Learn how to implement human reviews, Understand how [[Amazon]] A2I can work with other machine learning services, Learn how DealNet used [[Amazon]] Textract and [[Amazon]] A2I to process loan applications. To learn more about the services featured in this talk, please visit: | + | </b><br>Companies have millions of documents to process along with various types of documents. Often times, these documents are hard to read or have specific data points which are required to complete the business process. Using [[Amazon]] Augmented AI, you can now implement human reviews to review your machine learning predictions from Amazon Textract, Amazon Rekognition, Amazon SageMaker and many AWS AI/ ML services. In this tech talk, we walk through how to implement human reviews as well as showcase a use case by DealNet Capital on how they were able to reduce review time by 80% implementing [[Amazon]] A2I. Learning Objectives: Learn how to implement human reviews, Understand how [[Amazon]] A2I can work with other machine learning services, Learn how DealNet used [[Amazon]] Textract and [[Amazon]] A2I to process loan applications. To learn more about the services featured in this talk, please visit: https://aws.amazon.com/augmented-ai |
|} | |} | ||
|<!-- M --> | |<!-- M --> | ||
| Line 60: | Line 78: | ||
<youtube>LwbbGsuNpao</youtube> | <youtube>LwbbGsuNpao</youtube> | ||
<b>MLOps #15 - Scaling Human in the Loop Machine Learning with Robert Munro | <b>MLOps #15 - Scaling Human in the Loop Machine Learning with Robert Munro | ||
| − | </b><br>Human In The Loop Machine Learning and how to scale it. This conversation talked about the components of Human-in-the-Loop Machine Learning systems and the challenges when scaling them. Most machine learning applications learn from human examples. For example, autonomous vehicles know what a pedestrian looks like because people have spent 1000s of hours labeling “pedestrians” in | + | </b><br>Human In The Loop Machine Learning and how to scale it. This conversation talked about the components of Human-in-the-Loop Machine Learning systems and the challenges when scaling them. Most machine learning applications learn from human examples. For example, autonomous vehicles know what a pedestrian looks like because people have spent 1000s of hours labeling “pedestrians” in [[Video|video]]s; your smart device understands you because people have spent 1000s of hours labeling the intent of speech recordings; and machine translation services work because they are trained on 1000s of sentences that have been manually translated between languages. If you have a machine learning system that is learning from human-feedback in real-time, then there are many components to support and scale, from the machine learning models to the human interfaces and the processes for quality control. Robert Munro is an expert in combining Human and Machine Intelligence, working with Machine Learning approaches to Text, Speech, Image and [[Video]] Processing. Robert has founded several AI companies, building some of the top teams in Artificial Intelligence. He has worked in many diverse environments, from Sierra Leone, Haiti and the Amazon, to London, Sydney and Silicon Valley, in organizations ranging from startups to the United Nations. He has shipped Machine Learning Products at startups and at/with [[Amazon]], [[Google]], [[IBM]] & [[Microsoft]]. Robert has published more than 50 papers on Artificial Intelligence and is a regular speaker about technology in an increasingly connected world. He has a PhD from Stanford University. Robert is the author of Human-in-the-Loop Machine Learning (Manning Publications, 2020) |
|} | |} | ||
|}<!-- B --> | |}<!-- B --> | ||
| Line 67: | Line 85: | ||
{| class="wikitable" style="width: 550px;" | {| class="wikitable" style="width: 550px;" | ||
|| | || | ||
| − | <youtube> | + | <youtube>hQC5O3WTmuo</youtube> |
| − | <b> | + | <b>he REAL potential of generative AI |
| − | </b><br> | + | </b><br>What is a large language model? How can it be used to enhance your business? In this conversation, Ali Rowghani, Managing Director of YC Continuity, talks with Raza Habib, CEO of [[Humanloop]], about the cutting-edge AI powering innovations today—and what the future may hold. They discuss how large language models like Open AI's GPT-3 work, why [[fine-tuning]] is important for customizing models to specific use cases, and the challenges involved with building apps using these models. If you're curious about the ethical implications of AI, Raza shares his predictions about the impact of this quickly developing technology on the industry and the world at large. |
| + | |||
| + | Thanks to Raza and [[Humanloop]] for joining: [[Humanloop|https://humanloop.com]] | ||
|} | |} | ||
|<!-- M --> | |<!-- M --> | ||
| Line 94: | Line 114: | ||
<youtube>rJw7u8qyDf4</youtube> | <youtube>rJw7u8qyDf4</youtube> | ||
<b>Practical Human-in-the-Loop Machine Learning | <b>Practical Human-in-the-Loop Machine Learning | ||
| − | </b><br>Learn more about the AWS Partner Webinar Series at - | + | </b><br>Learn more about the AWS Partner Webinar Series at - https://amzn.to/2s7qWmg. Join us to learn why Human-in-the-Loop training data should be powering your machine learning (ML) projects and how to make it happen. If you’re curious about what human-in-the-loop machine learning actually looks like, join Figure Eight CTO Robert Munro and [[Amazon]] AWS machine learning experts to learn how to effectively incorporate active learning and human-in-the-loop practices in your ML projects to achieve better results. |
|} | |} | ||
|}<!-- B --> | |}<!-- B --> | ||
| Line 103: | Line 123: | ||
<youtube>nj5t1Q_ANlw</youtube> | <youtube>nj5t1Q_ANlw</youtube> | ||
<b>Stanford Seminar - Human in the Loop Reinforcement Learning | <b>Stanford Seminar - Human in the Loop Reinforcement Learning | ||
| − | </b><br>Emma Brunskill Stanford University Dynamic professionals sharing their industry experience and cutting edge research within the human-computer interaction (HCI) field will be presented in this seminar. Each week, a unique collection of technologists, artists, designers, and activists will discuss a wide range of current and evolving topics pertaining to HCI. Learn more about Stanford's Human-Computer Interaction Group: | + | </b><br>Emma Brunskill Stanford University Dynamic professionals sharing their industry experience and cutting edge research within the human-computer interaction (HCI) field will be presented in this seminar. Each week, a unique collection of technologists, artists, designers, and activists will discuss a wide range of current and evolving topics pertaining to HCI. Learn more about Stanford's Human-Computer Interaction Group: https://hci.stanford.edu |
|} | |} | ||
|<!-- M --> | |<!-- M --> | ||
| Line 111: | Line 131: | ||
<youtube>77FWffYuQu0</youtube> | <youtube>77FWffYuQu0</youtube> | ||
<b>Efficient Deep Learning with Humans in the Loop | <b>Efficient Deep Learning with Humans in the Loop | ||
| − | </b><br>Zachary Lipton (Carnegie Mellon University) | + | </b><br>Zachary Lipton (Carnegie Mellon University) https://simons.berkeley.edu/talks/tba-79 Emerging Challenges in Deep Learning |
|} | |} | ||
|}<!-- B --> | |}<!-- B --> | ||
| Line 120: | Line 140: | ||
<youtube>5RTkhfVIW40</youtube> | <youtube>5RTkhfVIW40</youtube> | ||
<b>Towards ambient intelligence in AI-assisted healthcare spaces - Dr [[Creatives#Fei-Fei Li|Fei-Fei Li]], Stanford University | <b>Towards ambient intelligence in AI-assisted healthcare spaces - Dr [[Creatives#Fei-Fei Li|Fei-Fei Li]], Stanford University | ||
| − | </b><br>Artificial intelligence has begun to impact healthcare in areas including electronic health records, medical images, and genomics. But one aspect of healthcare that has been largely left behind thus far is the physical environments in which healthcare delivery takes place: hospitals, clinics, and assisted living facilities, among others. In this talk I will discuss our work on endowing healthcare spaces with ambient intelligence, using computer vision-based human activity understanding in the healthcare environment to assist clinicians with complex care. I will first present pilot implementations of AI-assisted healthcare spaces where we have equipped the environment with visual sensors. I will then discuss our work on human activity understanding, a core problem in computer vision. I will present deep learning methods for dense and detailed recognition of activities, and efficient action detection, important requirements for ambient intelligence, and I will discuss these in the context of several clinical applications. Finally, I will present work and future directions for integrating this new source of healthcare data into the broader clinical data ecosystem. [[Creatives#Fei-Fei Li|Fei-Fei Li]] is a Professor in the Computer Science Department at Stanford, and the Director of the Stanford Artificial Intelligence Lab. In 2017, she also joined Google Cloud as Chief Scientist of AI and Machine Learning | + | </b><br>Artificial intelligence has begun to impact healthcare in areas including electronic health records, medical images, and genomics. But one aspect of healthcare that has been largely left behind thus far is the physical environments in which healthcare delivery takes place: hospitals, clinics, and assisted living facilities, among others. In this talk I will discuss our work on endowing healthcare spaces with ambient intelligence, using computer vision-based human activity understanding in the healthcare environment to assist clinicians with complex care. I will first present pilot implementations of AI-assisted healthcare spaces where we have equipped the environment with visual sensors. I will then discuss our work on human activity understanding, a core problem in computer vision. I will present deep learning methods for dense and detailed recognition of activities, and efficient action detection, important requirements for ambient intelligence, and I will discuss these in the [[context]] of several clinical applications. Finally, I will present work and future directions for integrating this new source of healthcare data into the broader clinical data ecosystem. [[Creatives#Fei-Fei Li|Fei-Fei Li]] is a Professor in the Computer Science Department at Stanford, and the Director of the Stanford Artificial Intelligence Lab. In 2017, she also joined Google Cloud as Chief Scientist of AI and Machine Learning |
|} | |} | ||
|<!-- M --> | |<!-- M --> | ||
| Line 137: | Line 157: | ||
<youtube>FE1r7_SQq6Y</youtube> | <youtube>FE1r7_SQq6Y</youtube> | ||
<b>Active Learning and Annotation | <b>Active Learning and Annotation | ||
| − | </b><br>The "active learning" model is motivated by scenarios in which it is easy to amass vast quantities of unlabeled data (images and | + | </b><br>The "active learning" model is motivated by scenarios in which it is easy to amass vast quantities of unlabeled data (images and [[Video|video]]s off the web, speech signals from microphone recordings, and so on) but costly to obtain their labels. Like supervised learning, the goal is ultimately to learn a classifier. But the labels of training points are hidden, and each of them can be revealed only at a cost. The idea is to query just a few labels that are especially informative about the decision boundary, and thereby to obtain an accurate classifier at significantly lower cost than regular supervised learning. There are two distinct ways of conceptualizing active learning, which lead to rather different querying strategies. The first treats active learning as an efficient search through a hypothesis space of candidates, while the second has to do with exploiting cluster or neighborhood structure in data. This talk will show how each view leads to active learning algorithms that can be made efficient and practical, and have provable label complexity bounds that are in some cases exponentially lower than for supervised learning. |
|} | |} | ||
|<!-- M --> | |<!-- M --> | ||
| Line 169: | Line 189: | ||
= <span id="Augmented Intelligence"></span>Augmented Intelligence = | = <span id="Augmented Intelligence"></span>Augmented Intelligence = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=Augmented+Intelligence+Amplification YouTube search...] |
| − | [ | + | [https://www.google.com/search?q=Augmented+Intelligence+Amplification ...Google search] |
| − | * [ | + | * [https://en.wikipedia.org/wiki/Intelligence_amplification Intelligence amplification (IA) refers to the effective use of information technology in augmenting human intelligence. The idea was first proposed in the 1950s and 1960s by cybernetics and early computer pioneers. IA is sometimes contrasted with AI | Wikipedia] |
| − | * [ | + | * [https://www.auraquantic.com/what-is-augmented-intelligence/ What is Augmented Intelligence and why should you know about it? | Kirsty Roberts - aura quantic] |
{|<!-- T --> | {|<!-- T --> | ||
| Line 189: | Line 209: | ||
<youtube>26_U--eHn34</youtube> | <youtube>26_U--eHn34</youtube> | ||
<b>Augmented Intelligence - A Marriage between Machine and Human | Simon Stiebellehner | <b>Augmented Intelligence - A Marriage between Machine and Human | Simon Stiebellehner | ||
| − | </b><br>The marriage of human and machine is commonly referred to as “augmented intelligence”. It is a logical and highly valuable intermediate step on our path to complete automation of significant parts of our lives. Augmented intelligence technologies leverage artificial intelligence to support humans’ decision processes. A concrete case of highly evolved augmented intelligence could be detecting cancer on medical images, computing confidence scores of these predictions, forwarding critical/low-confidence cases to a professional together with an explanation of what the system may have found suspicious, the professional then may return his feedback to the system for it to continue learning. The benefits of such systems are twofold. First, augmented intelligence builds trust through supporting humans without taking away their decision-making power. Trust in machine intelligence is an important prerequisite to more extensive automation. Second, it is important to recognize that both, machines and humans, have different strengths. Whilst machines excel at processing data at a high pace and at recognizing patterns they have frequently seen before, humans are able to learn well based on very few samples and are more flexible in their thinking and perception. Therefore, ideally, these strengths are combined to achieve synergies. However, making this marriage of machine and human a happy one is not trivial. Visit the largest developer playground in Europe! | + | </b><br>The marriage of human and machine is commonly referred to as “augmented intelligence”. It is a logical and highly valuable intermediate step on our path to complete automation of significant parts of our lives. Augmented intelligence technologies leverage artificial intelligence to support humans’ decision processes. A concrete case of highly evolved augmented intelligence could be detecting cancer on medical images, computing confidence scores of these predictions, forwarding critical/low-confidence cases to a professional together with an explanation of what the system may have found suspicious, the professional then may return his feedback to the system for it to continue learning. The benefits of such systems are twofold. First, augmented intelligence builds trust through supporting humans without taking away their decision-making power. Trust in machine intelligence is an important prerequisite to more extensive automation. Second, it is important to recognize that both, machines and humans, have different strengths. Whilst machines excel at processing data at a high pace and at recognizing patterns they have frequently seen before, humans are able to learn well based on very few samples and are more flexible in their thinking and perception. Therefore, ideally, these strengths are combined to achieve synergies. However, making this marriage of machine and human a happy one is not trivial. Visit the largest developer playground in Europe! https://www.wearedevelopers.com/ [[Meta|Facebook]]: https://www.facebook.com/wearedevelopers |
|} | |} | ||
|}<!-- B --> | |}<!-- B --> | ||
| Line 206: | Line 226: | ||
<youtube>eBqeIKx93A8</youtube> | <youtube>eBqeIKx93A8</youtube> | ||
<b>AI, Human Augmentation, and the Future of Intelligence on Earth | David Brin | Talks at Google | <b>AI, Human Augmentation, and the Future of Intelligence on Earth | David Brin | Talks at Google | ||
| − | </b><br>Futurist, astrophysicist, and best-selling science fiction author David Brin takes us 30 years into the future to explore how developments at companies in fields such as AI and human augmentation will help propel humanity forward… though with some cautions along the way. Brin’s best-selling science fiction novels include The Postman (filmed in 1997), Startide Rising (Nebula Award winner), The Uplift War (Hugo Award winner), and Earth. His non-fiction work, The Transparent Society, won the American Library Association's Freedom of Speech Award for exploring 21st Century concerns about security, secrecy, accountability, and privacy. Brin holds a PhD in Physics from the University of California at San Diego, a masters in optics, and an undergraduate degree in astrophysics from Caltech. Moderated by James Freedman. Get the book here: https://goo.gle/2P1qKjz | + | </b><br>Futurist, astrophysicist, and best-selling science fiction author David Brin takes us 30 years into the future to explore how developments at companies in fields such as AI and human augmentation will help propel humanity forward… though with some cautions along the way. Brin’s best-selling science fiction novels include The Postman (filmed in 1997), Startide Rising (Nebula Award winner), The Uplift War (Hugo Award winner), and Earth. His non-fiction work, The Transparent Society, won the American Library Association's Freedom of Speech Award for exploring 21st Century concerns about security, secrecy, accountability, and [[privacy]]. Brin holds a PhD in Physics from the University of California at San Diego, a masters in optics, and an undergraduate degree in astrophysics from Caltech. Moderated by James Freedman. Get the book here: https://goo.gle/2P1qKjz |
|} | |} | ||
|}<!-- B --> | |}<!-- B --> | ||
| Line 224: | Line 244: | ||
<b>Augmented Intelligence | <b>Augmented Intelligence | ||
</b><br>How can machines and humans come together to achieve new feats? | </b><br>How can machines and humans come together to achieve new feats? | ||
| − | Subscribe for regular science videos: | + | Subscribe for regular science videos: https://bit.ly/RiSubscRibe |
Technology is becoming more and more advanced but cannot prosper on its own, the human brain and the experience that humans have is not easily taught, from removing bias to introducing emotional intelligence. Join a panel of experts as they discuss how machines, humans and processes are coming together to create powerful new insights. James Hewitt is a speaker, author & performance scientist. His areas of expertise include the ‘future of work’, human wellbeing & performance in a digitally disrupted world & methods to facilitate more sustainable high-performance for knowledge workers. Karina Vold specializes in Philosophy of Mind and Philosophy of Cognitive Science. She received her bachelor’s degree in Philosophy and Political Science from the University of Toronto and her PhD in Philosophy from McGill University. An award from the Social Sciences and Humanities Research Council of Canada helped support her doctoral research. She has been a visiting scholar at Ruhr University, a fellow at Duke University, and a lecturer at Carleton University. Martha Imprialou is a Principal Data Scientist at QuantumBlack. | Technology is becoming more and more advanced but cannot prosper on its own, the human brain and the experience that humans have is not easily taught, from removing bias to introducing emotional intelligence. Join a panel of experts as they discuss how machines, humans and processes are coming together to create powerful new insights. James Hewitt is a speaker, author & performance scientist. His areas of expertise include the ‘future of work’, human wellbeing & performance in a digitally disrupted world & methods to facilitate more sustainable high-performance for knowledge workers. Karina Vold specializes in Philosophy of Mind and Philosophy of Cognitive Science. She received her bachelor’s degree in Philosophy and Political Science from the University of Toronto and her PhD in Philosophy from McGill University. An award from the Social Sciences and Humanities Research Council of Canada helped support her doctoral research. She has been a visiting scholar at Ruhr University, a fellow at Duke University, and a lecturer at Carleton University. Martha Imprialou is a Principal Data Scientist at QuantumBlack. | ||
| − | Watch the Q&A: | + | Watch the Q&A: https://youtu.be/WNHy6Fqc4xg This event was supported by QuantumBlack and was filmed in the Ri at 16 May 2018. |
|} | |} | ||
|}<!-- B --> | |}<!-- B --> | ||
Latest revision as of 12:05, 16 March 2024
YouTube search... ...Google search
- Learning Techniques
- Reinforcement Learning (RL) from Human Feedback (RLHF)
- Human-in-the-loop | Wikipedia
- Active Learning | Wikipedia
- Loops
- Artificial Intelligence (AI) ... Generative AI ... Machine Learning (ML) ... Deep Learning ... Neural Network ... Reinforcement ... Learning Techniques
- Conversational AI ... ChatGPT | OpenAI ... Bing/Copilot | Microsoft ... Gemini | Google ... Claude | Anthropic ... Perplexity ... You ... phind ... Ernie | Baidu
- Data Science ... Governance ... Preprocessing ... Exploration ... Interoperability ... Master Data Management (MDM) ... Bias and Variances ... Benchmarks ... Datasets
- Excel ... Documents ... Database; Vector & Relational ... Graph ... LlamaIndex
- Artificial General Intelligence (AGI) to Singularity ... Curious Reasoning ... Emergence ... Moonshots ... Explainable AI ... Automated Learning
- Human In-The-Loop Vs. Out-of-The-Loop in AI Systems: The Case of AI Self-Driving Cars | Lance Eliot - AI Trends
- What Is Human in The Loop (HITL) Machine Learning? | Jonathan Johnson - bmc blogs
Human-in-the-loop (HITL), basically you can say, is the process of leveraging the power of the machine and human intelligence to create machine learning-based AI models. HITL describes the process when the machine or computer system is unable to solve a problem, needs human intervention like involving in both the training and testing stages of building an algorithm, for creating a continuous feedback loop allowing the algorithm to give every time better results. What is Human in the Loop Machine Learning: Why & How Used in AI? | Vikram Singh Bisen - Medium
Example use case:
- Limited data for use
- Uncomprehensive data
- Interpretation required
- High liability mistakes
- Rare objectives
- Uncommon objectives
- AI functional inexperienced
Creating a virtuous feedback loop from your application to the AI services enabling it can help the system improve automatically without significant investment.Create an AI feedback loop with Continuous Relevancy Training in Watson Discovery | IBM
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
Augmented Intelligence
YouTube search... ...Google search
- Intelligence amplification (IA) refers to the effective use of information technology in augmenting human intelligence. The idea was first proposed in the 1950s and 1960s by cybernetics and early computer pioneers. IA is sometimes contrasted with AI | Wikipedia
- What is Augmented Intelligence and why should you know about it? | Kirsty Roberts - aura quantic
|
|
|
|
|
|