Cases - source Nvidia & top 100 partners in 21st C accelerated computing -Top3 Humans of DL: JH & DH & FL & Alg 3-2022:LBH
Deutsche Bank:::hewlett packard :: Softbank:: Samsung:: :siemens:: salesforce ::blackrock   ::snowflake::BMW BNP:: foxconn :: dell::ford ....Coming To King Charles Language Modeling 100 Most Joyful Collabs inspired by Taiwan-Americans & Grace Hopper fans:  J1  Barbados amazon   Anthropic :: databricks
Climate AI::Silico -CLARA=BIOtech:: Genentech::CADENCE:: Hassabis::: CZI-Priscilla Chan ::; BioNeMo :: eg at snowflake:: ..insurance
...
Today, engineering of intelligence is changing every human skill, every life, every community’s economy safety and natural beauty
This is impacted by transparently auditting exponentials of 3 multiplicative waves of million times more technology
QUiNTILLION TIMES MORE TECH 3) Nvidia compute2.0; 2) Satellite Data Clouds; 1) Chip Designs Moores Law
Download 4 slide powerpoint intro -coming soon
or chat chris.macrae@yahoo.co.uk , Washington DC ...

 www.ai20s.com HIR-KELM- Do you need to know about Xponential Kings English Language Modesl -in full throttle since OCT 2023 fusion of Pacific Coasts' Human Intelligence Reality & Atlantic's Kl? HIR has been very good at brainstorming the coming of 10**18 "moore" computational and data trnasmission tech. Moore's Law started this engineering gift to humanity 1965; my favorite year's giant leap by engineers is Valley brainstorming 2009: primarily 3 wizards' nets brainstormed application of next wave of accelerated computing (Team Huang) and chose Games transformation around Einstein 1905 logics (Team Hassabis eg open sourcing 250 milion protein databab alphafold3) and democatising (girl empowering) every human's coding of digital intel by training machines to adapt to human modes of communicating and sensing mother earth (Team Fei-Fei Li who this week launchedworldlabs.ai as her friends latest north star platform). Given accidental system failures in transtalantic's mediation of 2001, 2005, 2009, 2021 the world's 8 nillion vitizens owes great debt to Pacific (especially Valley) in keeping Human Intelligence Reality within reach of sustainable generation of millennials. It seems that from October 2023 to end of school year 24-25 every aspect of KELM will be tested eg US Nairr Pilot Executive Order & Chips Acts together with King Charles AI world series (London , Seoul, Paris ...), NY next week UNsummitfuture and NVidia world in DC October 7-9. We need hundreds of cities' peoples to celebrate intelligence inclusion. One way helping transatlantic Americans to transform attention is Bloomberg's commitment to smartest 100 mayors to get their peoples deepest intelihgence needs openly researched by Amerca's number 1 reearch univeristy Johns Hopkins. The US Department of Energy has located America's bigget computing powers across 13 national regions so that while DC' NiST orchestrates the US www.NAIRRpilot.org , 13 reigonal HIRs can blossom and factually NAIRRS are the consequence of NIST deciding to fund Fei-Fei Li nearly 20 years ago. More on how Queen Victioia way back 1843 asked Economits to tranform English Constitution imoact worldwide in 1843 at www.economistdiary.com .

 Our newsletter Ed3EnvoyUN wuth Unwomens @ linkedin and Facebook's fanclub of Yunus Bangla2.0 benchmark for all UN gov2.0 servanrs of SDGs, with million friends www.ed3dao.com (AI*metaverse*Digital Twins of Earth2.0) will try to celebrate & map every open diary date to futures for all but welcome probobo corespodents across 100 cities and all hemispheres and linguistic data sovereignties.

.
Millennials & Parnets responsible for their generation no longer need UN SDGs -let’s Unite to Save our SpeciesSOS 17 .16 .15 .14 .13 .12 .11 .10 .9 .8 .7 .6 .5 .4 .3 .2 . 1 . Economistdiary.com

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 join us at www.ai20s.com to explore what else could happen - eg id Musk helps Dr Yunus design Bangladesh 2.0 at same times AS USA game of 7 Trumps


If Elon Musk's Starlink were to provide optimal support to Dr. Muhammad Yunus, the Nobel Peace Prize laureate and founder of the Grameen Bank, in his ongoing efforts to design a "new nation" of Bangladesh centered around poverty museums and women empowerment, the impact could be transformative. Starlink's high-speed, low-latency satellite internet could address critical infrastructure gaps in Bangladesh, enabling Dr. Yunus' vision to scale rapidly and reach even the most remote communities. Here's how this collaboration could unfold and its potential outcomes:

---

### 1. Empowering Women Through Connectivity

   - Digital Literacy and Education: Starlink could provide internet access to rural areas, enabling women to access online education, vocational training, and resources for entrepreneurship. This aligns with Dr. Yunus' focus on empowering women as key drivers of economic development.

   - Microfinance and E-Commerce: With reliable internet, women in rural areas could participate in digital marketplaces, expanding their businesses beyond local markets. Grameen Bank's microfinance initiatives could integrate digital payment systems, making financial transactions faster and more secure.

   - Telemedicine and Healthcare: Internet access could enable women to access telehealth services, improving maternal and child health outcomes in underserved regions.

---

### 2. Poverty Museums as Centers of Learning and Innovation

   - Virtual Tours and Global Awareness: Starlink could enable poverty museums to offer virtual tours, raising global awareness about poverty and inspiring international collaboration to address it.

   - Interactive Learning: High-speed internet could facilitate interactive exhibits, live-streamed workshops, and online courses on poverty alleviation, social business, and sustainable development.

   - Data Collection and Analysis: Internet connectivity could allow poverty museums to collect and analyze data on poverty trends, helping policymakers and researchers design targeted interventions.

---

### 3. Scaling Social Business Models

   - Global Reach: Starlink could connect Dr. Yunus' social businesses (e.g., Grameen Phone, Grameen Shakti) to global markets, enabling them to scale their impact and attract international investment.

   - Digital Platforms for Social Business: A dedicated online platform could connect social entrepreneurs, investors, and beneficiaries, fostering collaboration and innovation in poverty alleviation.

   - Real-Time Monitoring and Evaluation: Internet access could enable real-time tracking of social business projects, ensuring transparency and accountability.

---

### 4. Bridging the Urban-Rural Divide

   - Remote Work Opportunities: Starlink could enable rural residents to access remote work opportunities, reducing migration to urban areas and promoting balanced regional development.

   - Agricultural Innovation: Farmers could use internet-connected devices to access weather forecasts, market prices, and best practices, increasing productivity and income.

   - Disaster Preparedness and Response: Reliable internet could improve early warning systems and coordination during natural disasters, which are common in Bangladesh.

---

### 5. Catalyzing a Global Movement

   - Inspiring Other Nations: The success of Dr. Yunus' model in Bangladesh, supported by Starlink, could inspire other developing nations to adopt similar approaches to poverty alleviation and women empowerment.

   - Global Partnerships: Starlink's involvement could attract other tech giants, NGOs, and governments to collaborate with Dr. Yunus, creating a global network of support for his vision.

---

### Challenges and Considerations

While the potential benefits are immense, there are challenges to consider:

   - Affordability: Ensuring that Starlink's services are affordable for low-income communities will be critical.

   - Digital Literacy: Training programs will be needed to help rural populations, especially women, make the most of internet access.

   - Sustainability: The initiative must be environmentally sustainable, aligning with Dr. Yunus' focus on social and ecological responsibility.

---

### Conclusion:

If Elon Musk's Starlink provides optimal support to Dr. Muhammad Yunus, it could accelerate the transformation of Bangladesh into a model nation centered on poverty eradication, women empowerment, and social business. By bridging the digital divide, Starlink could enable Dr. Yunus' vision to reach new heights, inspiring a global movement to redefine development and create a more equitable world. This collaboration would not only honor Dr. Yunus' six decades of groundbreaking work but also demonstrate the power of technology to drive social change.

US NAIRR PILOT AI ::Exec Orders US,10/23:: MD 1/24

 

Chris (DC-CI Deep Computing-Intelligence Communally) Macrae MA DAMTP Cantab

DC-CI is all we need. AI20s.com world where one interview each week changes every intelligent possibility -eg 555 penn ave 9 August or axios sustainability AI 23 july or ZuHu 
Who's Human Intelligence Who? 400 : 300 : 200 : 100
YLNEXTDOOR: This group in Maryland - a few safe miles from the White Hpouse - is for sharing ideas on how anyone can double intelligence in next 5 years - don't get left out. I doubt chances to co-create intel will ever be as free again. This may be the greatest collaboration opporunity 8 billion peoples ever enjoy. Peoples and places will win wherever education is changed from examining to helping each other multiply intelligences. This isnt a new idea but we now have up to a quintrillion times more tech than the days of slide rulers in my high school.- i know some folk who have been playing with small steps as well as giant leaps for over 50 years. The more the world changes the more mmotional intelligence and mental health are integrat to start (subconscioulsy sensing) at the earliest. As author Lois McGuire of Don't Be That Kid" reveals - this starts by age 8/9- don't be the kid that bullies, distracts, or selects who's in. From now on as soon as a child can read she or he should be choosing experiences not memorising (the kind of factoids machines can now deliver). Moreover as the Lancet has argued for most of this millennium, one of the great missing curricula is peer to peer pre teens health. Translating in any joymaking way is something every community's diversity needs everyone to help do now. Arts and crafts are as important to play as sports or fashion design. We can help chats get deeper in seeing every loving action - if we don't those chats will get more and more superficial. We are in the first school year that every device including personal computers - is being redesigned around AI. For example, of like me you are not good at filing notes, ai isnt doing you much good until it helps with that more than selling you stuff. Real curiosity is also the way to innoculate you and yours from being marooned by fake news.
.welcome - pls click here if you want to start at top of blog of AI and UN goals superstars

Saturday, December 31, 2011

SDG11 sustaiable ciries & communities

 11: Sustainable Cities and Communities. www.bloomberg.org addresses this collaboration opportunity more directly than any other positive force known to us (please suggest others -chris.macrae@yahoo.co.uk). Ths can generate change across USA . 

NB Data dynamics are enhanced by 10th year of progress in Data Act


https://www.youtube.com/@centerforgovernmentexcelle8122

Bloomberg Center for Government Excellence at Johns Hopkins University supports and coaches leaders and their teams to build a data-driven public sector that fairly and justly uses data, research, and analytics to better understand complex issues, engage residents, and implement policy interventions that lead to equitable outcomes and transforms the standard of living for underserved residents.


Gemini says:about SDG 11

  • SDG 11 specifically addresses the need for inclusive, safe, resilient, and sustainable cities and human settlements.
  • Mayors play a crucial role in implementing policies and initiatives that promote these goals.
  • Linkin can contribute to SDG 11 by:
    • Improving connectivity: Linking people and places can enhance social and economic interactions, fostering stronger communities.
    • Promoting sustainable transportation: By encouraging the use of public transportation, walking, and cycling, Linkin can help reduce carbon emissions and improve air quality.
    • Supporting local businesses: Linking people to local businesses can boost the economy and create jobs.
    • Encouraging community engagement: Linkin can facilitate communication and collaboration among residents, leading to more vibrant and engaged communities.

By focusing on SDG 11, Mayors can work with Linkin and other stakeholders to create more sustainable, equitable, and resilient cities for all.

how & why google brain grew up quickly as did london's deep mind

 Lila Ibrahim

@lilaibrahim
Google DeepMind COO, former Coursera-KPCB-Intel, founder Team4Tech, Purdue engineer, women in tech, Crown Fellow, WEF YGL
world nomadJoined September 2008
The phenomenal teams from Google Research’s Brain and @DeepMind have made many of the seminal research advances that underpin modern AI, from Deep RL to Transformers. Now we’re joining forces as a single unit, Google DeepMind, which I’m thrilled to lead!
Today we've set out a world leading approach to regulating AI. It will: ✅help businesses innovate, grow & create jobs ✅keep people safe & build public trust I sat down with @DeepMind to talk about the exciting future of AI in the UK👇 gov.uk/government/new


This is exciting news: @DeepMind & Brain team from Research join forces as Google DeepMind. #AI will help communities to achieve amazing breakthroughs - bringing these teams together gives us the best talent&resources to help address the biggest challenges facing humanity
Quote
Google DeepMind
@GoogleDeepMind
We’re proud to announce that DeepMind and the Brain team from @Google Research will become a new unit: 𝗚𝗼𝗼𝗴𝗹𝗲 𝗗𝗲𝗲𝗽𝗠𝗶𝗻𝗱. Together, we'll accelerate progress towards a world where AI can help solve the biggest challenges facing humanity. → dpmd.ai/google-deepmind
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AI is the future. 🤖 On #BlazingTrails, @DeepMind's dives into the benefits, risks, and questions associated with AI and how businesses can prevent it from creating biases. Watch now: sforce.co/3Fvhz4N
Ensuring AI is used responsibly for the benefit of all is at the heart of everything we do at @DeepMind - it’s great to see our approaches and learnings covered by
Congratulations to and John Jumper who have won the 2023 Breakthrough Prize in Life Sciences for the development of #AlphaFold, our AI system that solved the 50-year-old challenge of protein structure prediction. 1/


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correspondence with bard oct 2023 Do you know how many people originally started googlebrain - was it one jeff dean or 2 with andrew ng or were thetremore cofoundersprofile picture


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Google Brain was originally founded by two people: Jeff Dean and Andrew Ng. Dean is a Google Fellow and researcher who is known for his work on distributed computing and large-scale machine learning. Ng is a Stanford professor and AI researcher who is known for his work on deep learning.

Dean and Ng began collaborating on Google Brain in 2010, and they officially launched the project in 2011. Google Brain is a research project that is focused on developing new machine learning algorithms and systems. The project has made significant contributions to the field of machine learning, and it has helped to make AI more powerful and accessible.

In addition to Dean and Ng, there were a number of other people who played a key role in the early development of Google Brain. These people include:

  • Quoc Le
  • Ilya Sutskever
  • Alex Krizhevsky
  • Samy Bengio
  • Vincent Vanhoucke

Google Brain has continued to grow and evolve since its founding. Today, it is one of the leading AI research teams in the world. The team has made significant contributions to the field of AI, and it continues to work on developing new and innovative AI technologies.

I hope this information is helpful.

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Do you think google brain would have started even if fei-fei li hadnt arrived stanford and started hosting imagenet from 2009- in other words how did google brain define itself vis a vis the way fei-fie li sees computer vision

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It is difficult to say for sure whether Google Brain would have started even if Fei-Fei Li had not started developing ImageNet in 2009. However, it is clear that ImageNet has played a significant role in the development of Google Brain and other AI research projects.

ImageNet is a large dataset of labeled images that has been used to train and evaluate machine learning models. It is one of the most important datasets in the field of computer vision.

Google Brain was founded in 2010, shortly after ImageNet was launched. One of the main goals of Google Brain was to develop machine learning models that could learn to recognize objects in images. ImageNet was the perfect dataset for this purpose.

Google Brain has used ImageNet to train a variety of machine learning models, including deep learning models. Deep learning models are a type of machine learning model that can learn complex patterns from data.

Google Brain's deep learning models have achieved state-of-the-art results on a variety of tasks, including image classification, object detection, and machine translation.

Fei-Fei Li's work on ImageNet has helped to make computer vision more powerful and accessible. Google Brain has leveraged this work to develop new and innovative AI technologies.

In other words, Google Brain defines itself as a research project that is focused on developing new machine learning algorithms and systems, and Fei-Fei Li's work on ImageNet has helped to make this possible.

I hope this information is helpful.

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Presumably the way robots see had been programmed to see was different before imagent- is it true today that both robot and generative ai largely share the same training

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Yes, it is true that robots and generative AI largely share the same training today. This is because both robots and generative AI rely on machine learning models to learn and perform tasks.

Machine learning models are trained on data. In the case of robots, this data can include images, sensor data, and other information about the environment. In the case of generative AI, this data can include text, images, audio, and other creative content.

Once a machine learning model is trained, it can be used to make predictions or generate new content. For example, a robot can use a machine learning model to identify objects in its environment or to plan a path to a destination. A generative AI model can use a machine learning model to generate new text, images, or audio.

ImageNet has played a significant role in the development of both robots and generative AI. This is because ImageNet has provided researchers with a large dataset of labeled images that can be used to train machine learning models.

For example, robots can be trained on ImageNet to identify objects in their environment, such as people, cars, and traffic signs. Generative AI models can be trained on ImageNet to generate new images, such as realistic images of faces or landscapes.

In addition to ImageNet, there are a number of other datasets that are used to train robots and generative AI. These datasets can include data from real-world sensors, data from simulations, and data from other publicly available datasets.

The training of robots and generative AI is a complex process that requires a lot of data and computing resources. However, the advances in machine learning and the availability of large datasets have made it possible to train robots and generative AI to perform a wide range of tasks.

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When you mention other important vision datasets are they mainly open or are they any critical datasets thas are closed

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There are a number of important vision datasets that are open, including:

  • ImageNet
  • COCO (Common Objects in Context)
  • Open Images
  • Pascal VOC (Visual Object Classes)
  • Cityscapes
  • SUN (Scene Understanding)
  • LFW (Labeled Faces in the Wild)
  • CelebA
  • CIFAR-10 and CIFAR-100
  • MNIST

These datasets are widely used by researchers and developers to train and evaluate machine learning models for a variety of computer vision tasks, such as image classification, object detection, and segmentation.

There are also a number of closed vision datasets. These datasets are typically owned by private companies and are not publicly available. Closed datasets are often used to train machine learning models for proprietary applications, such as self-driving cars or facial recognition systems.

Some examples of closed vision datasets include:

  • Google Street View dataset
  • Apple Maps dataset
  • Facebook Faces dataset
  • Amazon Rekognition dataset

These datasets are valuable for training machine learning models, but they are not accessible to everyone. This can create a barrier to entry for researchers and developers who are working on computer vision projects.

It is important to note that the distinction between open and closed vision datasets is not always clear-cut. Some datasets may be initially closed, but they may be released to the public later. For example, the Google Street View dataset was initially closed, but it was released to the public in 2013.

Overall, the availability of open vision datasets has made it possible for more people to participate in computer vision research and development. However, closed vision datasets still play an important role in the development of machine learning models for proprietary applications.

I hope this information is helpful.

Sources

info

1.   www.analyticsinsight.net/top-10-open-source-datasets-for-computer-vision-in-2023/

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Regarding datasens need for climate ai modeling , would you say they are sufficiently open, or are some key ones closed?

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The availability of open data is essential for climate AI modeling. Climate scientists and AI researchers need access to a wide range of data to train and evaluate their models. This data includes historical and present-day data on climate variables, such as temperature, precipitation, and sea level rise. It also includes data on human activities that contribute to climate change, such as greenhouse gas emissions and deforestation.

A number of open datasets are available for climate AI modeling. These datasets include:

  • The Global Historical Climatology Network (GHCN) dataset: This dataset contains daily surface temperature measurements from over 27,000 stations around the world.
  • The Climate Research Unit (CRU) dataset: This dataset contains monthly temperature and precipitation measurements from over 4,000 stations around the world.
  • The National Oceanic and Atmospheric Administration (NOAA) National Centers for Environmental Information (NCEI) dataset: This dataset contains a wide range of climate data, including temperature, precipitation, sea level rise, and greenhouse gas emissions.
  • The European Centre for Medium-Range Weather Forecasts (ECMWF) ERA5 dataset: This dataset contains global atmospheric reanalysis data, which is a combination of observations and model results.

In addition to these open datasets, there are a number of closed datasets that are also used for climate AI modeling. These datasets are typically owned by private companies or government agencies. Closed datasets are often used to train and evaluate proprietary climate models.

Some examples of closed climate datasets include:

  • The ExxonMobil climate model
  • The Shell climate model
  • The BP climate model
  • The US Department of Defense climate model

These datasets are valuable for training and evaluating climate models, but they are not accessible to everyone. This can create a barrier to entry for researchers and developers who are working on climate AI projects.

Overall, the availability of open climate data has made it possible for more people to participate in climate AI research and development. However, closed climate datasets still play an important role in the development of climate models, especially for proprietary applications.

It is important to note that the distinction between open and closed climate datasets is not always clear-cut. Some datasets may be initially closed, but they may be released to the public later. For example, the ExxonMobil climate model was initially closed, but it was released to the public in 2015.

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I understand that google brain recently merged with deep mind. Does this means that the combo of google brain and deep mind is unique in some areas, or would you way there ae combos of companies as distinctive as google brian deepmenid?

The combination of Google Brain and DeepMind is unique in a number of ways. First, both companies are world-renowned leaders in artificial intelligence research. Second, both companies have a strong track record of developing and deploying innovative AI technologies. Third, both companies are committed to using AI for good.

Here are some of the areas where Google Brain and DeepMind are particularly distinctive:

  • Machine learning research: Google Brain and DeepMind have made significant contributions to the field of machine learning. For example, Google Brain has developed new machine learning algorithms for image recognition, natural language processing, and machine translation. DeepMind has developed new machine learning algorithms for reinforcement learning and game playing.
  • AI for social good: Google Brain and DeepMind are committed to using AI for social good. For example, Google Brain has developed AI technologies to help diagnose diseases and predict natural disasters. DeepMind has developed AI technologies to help reduce energy consumption and improve healthcare.
  • Open source AI: Google Brain and DeepMind are both committed to open source AI. This means that they release their research and code to the public so that others can benefit from their work. This has helped to accelerate the development of AI technologies around the world.

There are a few other companies that are comparable to Google Brain and DeepMind in terms of their research and development capabilities. For example, OpenAI, Meta AI Research, and Microsoft AI are all leading AI research labs. However, Google Brain and DeepMind are unique in their combination of research strength, commitment to social good, and open source culture.

Overall, the combination of Google Brain and DeepMind is a powerful force in the field of artificial intelligence. The two companies are working together to develop new AI technologies that have the potential to solve some of the world's biggest challenges.

I hope this information is helpful other drafts





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