Difference between revisions of "Astronomy"
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| − | |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 | + | |
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| − | [ | + | [https://www.youtube.com/results?search_query=NASA+SpaceX+spaceflight+planet+galaxy+space+asteroid+satellite+Dark+Matter+earth+moon+mars+sun+universe+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=NASA+SpaceX+spaceflight+planet+galaxy+space+asteroid+satellite+Dark+Matter+earth+moon+mars+sun+universe+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=NASA+SpaceX+spaceflight+planet+galaxy+space+asteroid+satellite+Dark+Matter+earth+moon+mars+sun+universe+artificial+intelligence+deep+machine+learning ...News search] |
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* [[Case Studies]] | * [[Case Studies]] | ||
| + | ** [[Aerospace]] | ||
| + | ** [[Satellite#Satellite Imagery|Satellite Imagery]] | ||
** [[Drug Discovery]] | ** [[Drug Discovery]] | ||
* [[Image Classification]] | * [[Image Classification]] | ||
| − | * [ | + | * [[Time]] ... [[Time#Positioning, Navigation and Timing (PNT)|PNT]] ... [[Time#Global Positioning System (GPS)|GPS]] ... [[Causation vs. Correlation#Retrocausality| Retrocausality]] ... [[Quantum#Delayed Choice Quantum Eraser|Delayed Choice Quantum Eraser]] ... [[Quantum]] |
| − | + | * [[Time#Deep-Space Positioning System (DPS)|Deep-Space Positioning System (DPS)]] | |
| − | + | * [[Video/Image]] ... [[Vision]] ... [[Enhancement]] ... [[Fake]] ... [[Reconstruction]] ... [[Colorize]] ... [[Occlusions]] ... [[Predict image]] ... [[Image/Video Transfer Learning]] | |
| − | * [ | + | * [https://www.nasa.gov/ National Aeronautics and Space Administration (NASA)] |
| − | * [ | + | * [https://python4astronomers.github.io/ Practical Python for Astronomers | GitHub] |
| + | * [https://open.nasa.gov/ OpenNASA] | ||
| + | * [https://emerj.com/ai-sector-overviews/artificial-intelligence-at-nasa-current-projects-and-applications/ Artificial Intelligence at NASA – Current Projects and Applications - Millicent Abadicio] | ||
| + | * [https://www.nextgov.com/emerging-tech/2022/04/international-space-station-launches-its-first-ai-program-test-astronaut-gloves/364000/ International Space Station Launches AI Program to Test Astronaut Gloves | Brandi Vincent - Nextgov] ...Spaceborne Computer-2 (SBC-2) is providing insights in real-time, an HPE-built edge computing system explicitly for in-space, commercial AI and real-time data processing. The machine taps Microsoft’s Azure Space service. | ||
| + | * [https://astronomy.com/news/2022/07/how-artificial-intelligence-is-changing-astronomy How artificial intelligence is changing astronomy | Ashley Spindler - Astronomy] ... Machine learning has become an essential piece of astronomers’ toolkits | ||
| + | * [https://iopscience.iop.org/article/10.3847/2041-8213/acc32d The Image of the M87 Black Hole Reconstructed with PRIMO | L. Medeiros, D. Psaltis, T. Lauer, & F. Özel - The Astrophysical Journal Letters] ... use of principal-component interferometric modeling (PRIMO), a novel image-reconstruction algorithm that addresses the challenges of millimeter-wave interferometry with sparse arrays by training the algorithm on an extensive suite of simulated images of accreting black holes (Medeiros et al. 2023) | ||
| + | * [https://www.msn.com/en-us/news/technology/ai-software-may-have-just-discovered-aliens-and-it-s-scary/ar-AA1b4ugS AI Software May Have Just Discovered Aliens and It's Scary | Allison Blair - TurboFuture] ... ended up with 8 signals that could be a sign alien life | ||
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| + | <center><b><i>The cosmos is also within us, we're made of star-stuff. We are a way for the cosmos, to know itself.</i></b> - [[Creatives#Carl Sagan|Carl Sagan]]</center> | ||
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| + | <img src="https://38.media.tumblr.com/1477e3ab36c4371692587a46581f03b6/tumblr_nutxxxNDk01rwn6y8o1_1280.gif" width="700"> | ||
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| + | Astronomy is the study of celestial objects and phenomena beyond Earth's atmosphere. It encompasses everything from the smallest particles in space to the largest structures in the universe. In recent years, artificial intelligence (AI) has become an increasingly important tool in astronomy, helping scientists to make sense of the vast amounts of data generated by telescopes and other instruments. One area where AI is being applied in astronomy is in the analysis of star data. By training algorithms to identify patterns in the light emitted by stars, astronomers can use AI to more accurately classify stars and better understand their properties. AI is also being used to search for exoplanets, or planets outside of our solar system. By analyzing data from telescopes like NASA's Kepler and TESS, AI algorithms can detect the subtle changes in starlight that indicate the presence of an orbiting planet. Satellites and spacecraft are another area where AI is proving useful in astronomy. For example, NASA's Mars rovers are equipped with AI algorithms that help them navigate the Martian terrain and avoid obstacles. Similarly, the upcoming James Webb Space Telescope (JWST) will use AI to help optimize its observations, allowing it to detect more distant and faint objects than ever before. The sun and its behavior is also of great interest to astronomers, as its activity can have significant impacts on Earth's climate and technological infrastructure. AI is being used to analyze data from spacecraft like NASA's Solar Dynamics Observatory (SDO) to better understand the sun's magnetic fields and the processes that drive solar flares and other phenomena. In addition to studying celestial objects and phenomena, AI is also being used to detect and analyze gravitational waves, ripples in the fabric of [[Time#Spacetime|spacetime]] caused by the acceleration of massive objects like black holes. The Laser Interferometer Gravitational-Wave Observatory (LIGO) uses AI algorithms to sift through the vast amounts of data generated by its detectors, looking for the telltale signals of gravitational waves. | ||
| + | Finding: Autonomy needs to evolve at a systems level to integrate and harmonize subsystems to make decisions and execute planned operations on remote yet complex planetary science and astrobiology missions. Machine learning/artificial intelligence can support the implementation of autonomy in such environments. [https://nap.nationalacademies.org/catalog/26522/origins-worlds-and-life-a-decadal-strategy-for-planetary-science Origins, Worlds, and Life, A Decadal Strategy for Planetary Science and Astrobiology 2023-2032, (2022) | National Academies of Sciences] ... ~ 780 pages see General Technology Areas; Autonomy, [[Quantum]] Computing and Artificial Intelligence/Machine Learning | ||
| + | * [https://assets.pubpub.org/rjatrlmx/01617915844518.pdf Using Artificial Intelligence to Support Science Prioritization by the Decadal Surveys | Thronson, H., B. Thomas, L. Barbier, and A. Buonomo] | ||
| + | * “By harnessing our collective passion, we can change the course of history.” - Bill Nye, CEO of [https://www.planetary.org/ The Planetary Society] | ||
| − | + | <youtube>0hQgbesdDA8</youtube> | |
| − | + | <youtube>0hQgbesdDA8</youtube> | |
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= Dark Matter = | = Dark Matter = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=Dark+Matter+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=Dark+Matter+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=Dark+Matter+artificial+intelligence+deep+machine+learning ...News search] |
| − | * [ | + | * [https://phys.org/news/2019-05-cosmogan-neural-network-dark.html CosmoGAN: Training a neural network to study dark matter | Kathy Kincade - Lawrence Berkeley National Laboratory] |
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<youtube>lCxYejIzJus</youtube> | <youtube>lCxYejIzJus</youtube> | ||
<b>Dr Francois Lanusse - Exploring the Cosmos with Deep Learning | <b>Dr Francois Lanusse - Exploring the Cosmos with Deep Learning | ||
| − | </b><br>The main challenge of modern Cosmology is to answer pressing questions on the physical nature of dark matter and dark energy, which despite accounting for ~95% of the Universe today remain complete mysteries. This is what motivates a new generation of cosmological surveys which will map the Universe in great detail and on an unprecedented scale, implying a great potential for new discoveries but also new and outstanding challenges at every step of the science analysis, from image processing to the modelling of galaxy physics. In this talk, I will illustrate how recent advances in Deep Learning can be used to address some of these challenges and to exploit this wealth of data in new and exciting ways. A first application is the automated detection of rare astronomical objects, in this case strong gravitational lenses, using deep residual networks. In this typical image classification problem, Deep Learning has the potential of eliminating the need for human visual inspection which would have been intractable at the scale of future surveys. In a second example of application, I will present recent deep generative models and how they can be applied to emulate realistic signals when a proper physical model is lacking. In our specific application, we use deep generative models to produce realistic galaxy images, an essential part of the simulation pipeline necessary to the validation and calibration of our measurements. The last example I will mention is Deep Learning on graphs, more specifically how we use graph convolutional networks to model the properties of galaxies along the cosmic web (the large-scale structure of the Universe) in large-scale cosmological simulations. | + | </b><br>The main challenge of modern Cosmology is to answer pressing questions on the physical nature of dark matter and dark energy, which despite accounting for ~95% of the Universe today remain complete mysteries. This is what motivates a new generation of cosmological surveys which will map the Universe in great detail and on an unprecedented scale, implying a great potential for new discoveries but also new and outstanding challenges at every step of the science analysis, from image processing to the modelling of galaxy physics. In this talk, I will illustrate how recent advances in Deep Learning can be used to address some of these challenges and to exploit this wealth of data in new and exciting ways. A first application is the automated detection of rare astronomical objects, in this case strong gravitational lenses, using deep residual networks. In this typical image classification problem, Deep Learning has the potential of eliminating the need for human visual inspection which would have been intractable at the scale of future surveys. In a second example of application, I will present recent deep [[Generative AI|generative]] models and how they can be applied to emulate realistic signals when a proper physical model is lacking. In our specific application, we use deep [[Generative AI|generative]] models to produce realistic galaxy images, an essential part of the simulation pipeline necessary to the validation and calibration of our measurements. The last example I will mention is Deep Learning on graphs, more specifically how we use graph convolutional networks to model the properties of galaxies along the cosmic web (the large-scale structure of the Universe) in large-scale cosmological simulations. |
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= Galaxy Evolution = | = Galaxy Evolution = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=galaxy+Evolution+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=galaxy+Evolution+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=galaxy+Evolution+artificial+intelligence+deep+machine+learning ...News search] |
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= Galaxies / Stars = | = Galaxies / Stars = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=galaxy+Galaxies+stars+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=galaxy+Galaxies+stars+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=galaxy+Galaxies+stars+artificial+intelligence+deep+machine+learning ...News search] |
| − | * [ | + | * [https://scitechdaily.com/surprisingly-recent-galaxy-discovered-using-machine-learning-may-be-the-last-generation-galaxy-in-the-long-cosmic-history/ Surprisingly Recent Galaxy Discovered Using Machine Learning – May Be the Last Generation Galaxy in the Long Cosmic History | National Institutes of Natural Sciences] |
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= Object Classification = | = Object Classification = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=galaxy+Galaxies+Classification+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=galaxy+Galaxies+Classification+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=galaxy+Galaxies+Classification+artificial+intelligence+deep+machine+learning ...News search] |
| − | * [ | + | * [https://www.universetoday.com/147501/machine-learning-just-classified-over-half-a-million-galaxies/ Machine Learning Just Classified Over Half a Million Galaxies | Andy Tomaswick - Universe Today] ...scientists trained the algorithm using images of spiral-patterned galaxies similar to the Milky Way. When used on the test set, the algorithm accurately classified 95.7 percent of galaxies. |
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= Black Holes = | = Black Holes = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=Black+Holes+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=Black+Holes+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=Black+Holes+artificial+intelligence+deep+machine+learning ...News search] |
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= <span id="Sun / Solar"></span>Sun / Solar = | = <span id="Sun / Solar"></span>Sun / Solar = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=Sun+Solar+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=Sun+Solar+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=Sun+Solar+artificial+intelligence+deep+machine+learning ...News search] |
* [[Case Studies]] | * [[Case Studies]] | ||
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= Planets = | = Planets = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=planet+planets+space+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=planet+planets+space+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=planet+planets+space+artificial+intelligence+deep+machine+learning ...News search] |
| − | * [ | + | * [https://www.cnn.com/2020/08/26/tech/ai-new-planets-confirmed-intl-hnk-scli-scn/index.html Breakthrough AI identifies 50 new planets from old NASA data | Jessie Yeung - CNN Business] |
| − | ** [ | + | ** [https://exoplanetarchive.ipac.caltech.edu/ NASA Exoplanet Archive] ...A Service of NASA Exoplanet Science Institute |
| − | ** [ | + | ** [https://academic.oup.com/mnras/advance-article-abstract/doi/10.1093/mnras/staa2498/5894933 Exoplanet Validation with Machine Learning: 50 new validated Kepler planets | D. Armstrong, J. Gamper, and T. Damoulas - Oxford Academic] |
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= Earth = | = Earth = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=earth+space+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=earth+space+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=earth+space+artificial+intelligence+deep+machine+learning ...News search] |
* [[Environmental Science]] | * [[Environmental Science]] | ||
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<youtube>DQtV2ikrQxs</youtube> | <youtube>DQtV2ikrQxs</youtube> | ||
<b>Geospatial Machine Learning for Urban Development | <b>Geospatial Machine Learning for Urban Development | ||
| − | </b><br>Ilke Demir, Postdoctoral Research Scientist, Facebook | + | </b><br>Ilke Demir, Postdoctoral Research Scientist, [[Meta|Facebook]] |
Presented at MLconf 2018 | Presented at MLconf 2018 | ||
Abstract: The collective mission of mapping the world is never complete: We need to discover and classify roads, settlements, land types, landmarks, and addresses. The recent proliferation of remote sensing data (overhang images, LiDAR, sensors) enabled automatic extraction of such structures to better understand our world. In this talk, we will first mention the motivation and results of DeepGlobe Satellite Image Challenge[1][2], for road extraction, building detection, and land cover classification. Then we will go into details of an example approach[3] which proposes a complete system to use deep learning for generating street addresses for unmapped developing countries. The approach applies deep learning to extract road vectors from satellite images, then processes the street network to output linear and hierarchical street addresses, by labeling regions, roads, and blocks; based on addressing schemes around the world and coherent with human cognitive system. We will share and demonstrate the motivation and algorithm behind the scenes, then compare them to current open and industrial solutions, and walk through our open source code[4] to generate the addresses for a given bounding box. | Abstract: The collective mission of mapping the world is never complete: We need to discover and classify roads, settlements, land types, landmarks, and addresses. The recent proliferation of remote sensing data (overhang images, LiDAR, sensors) enabled automatic extraction of such structures to better understand our world. In this talk, we will first mention the motivation and results of DeepGlobe Satellite Image Challenge[1][2], for road extraction, building detection, and land cover classification. Then we will go into details of an example approach[3] which proposes a complete system to use deep learning for generating street addresses for unmapped developing countries. The approach applies deep learning to extract road vectors from satellite images, then processes the street network to output linear and hierarchical street addresses, by labeling regions, roads, and blocks; based on addressing schemes around the world and coherent with human cognitive system. We will share and demonstrate the motivation and algorithm behind the scenes, then compare them to current open and industrial solutions, and walk through our open source code[4] to generate the addresses for a given bounding box. | ||
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= Mars = | = Mars = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=Mars+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=Mars+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=Mars+artificial+intelligence+deep+machine+learning ...News search] |
| − | * [ | + | * [https://interestingengineering.com/nasa-is-developing-an-ai-powered-navigation-system-for-space NASA Is Developing an AI-Powered Navigation System for Space | Kashyap Vyas] |
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= Moon = | = Moon = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=lunar+moon+Mars+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=lunar+moon+Mars+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=lunar+moon+Mars+artificial+intelligence+deep+machine+learning ...News search] |
| − | * [ | + | * [https://gizmodo.com/lunar-rover-footage-upscaled-with-ai-is-as-close-as-you-1844321664 Lunar Rover Footage Upscaled With AI Is as Close as You'll Get to the Experience of Driving on the Moon | Andrew Liszewski - Gizmodo] |
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= <span id="Man-made (artificial) Satellites"></span>Man-made (artificial) Satellites = | = <span id="Man-made (artificial) Satellites"></span>Man-made (artificial) Satellites = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=Satellite+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=Satellite+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=Satellite+artificial+intelligence+deep+machine+learning ...News search] |
* [[Satellite Imagery]] | * [[Satellite Imagery]] | ||
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<youtube>nR68Car7pTg</youtube> | <youtube>nR68Car7pTg</youtube> | ||
<b>Katherine Scott: Machine Learning and AI for Satellite Imaging | <b>Katherine Scott: Machine Learning and AI for Satellite Imaging | ||
| − | </b><br>At the 2017 Hackaday Superconference Katherine Scott sat down with Hackaday to talk about her work at Planet Labs. As Image Analytics Team Lead she stitched together 1.2 Million images taken by cubesats to get a daily picture of the earth, then set about using machine learning, computer vision, and AI to make sense of the changing data. | + | </b><br>At the 2017 Hackaday Superconference Katherine Scott sat down with Hackaday to talk about her work at Planet Labs. As Image [[Analytics]] Team Lead she stitched together 1.2 Million images taken by cubesats to get a daily picture of the earth, then set about using machine learning, computer vision, and AI to make sense of the changing data. |
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= Asteroids = | = Asteroids = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=Asteroid+asteroid+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=Asteroid+asteroid+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=Asteroid+asteroid+artificial+intelligence+deep+machine+learning ...News search] |
| − | * [ | + | * [https://open.nasa.gov/innovation-space/deep-asteroid/ Deep Asteroid | openNASA] |
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<youtube>txunN4gUeig</youtube> | <youtube>txunN4gUeig</youtube> | ||
<b>How to avoid the Asteroid? | Deep Asteroid | <b>How to avoid the Asteroid? | Deep Asteroid | ||
| − | </b><br>Deep asteriod : Predictive model of NEOs’ trajectory using ‘Deep Learning’ and ‘TensorFlow’ | + | </b><br>Deep asteriod : [[Predictive Analytics|Predictive model]] of NEOs’ trajectory using ‘Deep Learning’ and ‘TensorFlow’ |
Idea for NASA Space Challenge 2016 | Idea for NASA Space Challenge 2016 | ||
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= Collision Avoidance in Space = | = Collision Avoidance in Space = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=Collision+Avoidance+satellite+space+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=Collision+Avoidance+satellite+space+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=Collision+Avoidance+satellite+space+artificial+intelligence+deep+machine+learning ...News search] |
| − | * [ | + | * [https://www.seertracking.com/ Artificial Intelligence Solutions to Track and Map Space Debris | Seer Tracking] |
| − | * [ | + | * [https://kelvins.esa.int/collision-avoidance-challenge/challenge/ Spacecraft Collision Avoidance Challenge |] [https://www.esa.int/ European Space Agency (ESA)] |
| − | * [ | + | * [https://kelvins.esa.int/collision-avoidance-challenge/data/ Data: Close encounters between two objects |][https://www.esa.int/ European Space Agency (ESA)] |
| − | * [ | + | * [https://en.wikipedia.org/wiki/Kessler_syndrome Kessler_Syndrome | Wikipedia] ... a theoretical scenario in which the density of objects in low Earth orbit (LEO) due to space pollution is high enough that collisions between objects could cause a cascade in which each collision generates space debris that increases the likelihood of further collisions. |
* [[Evolutionary Computation / Genetic Algorithms | Genetic Programming]] using [[Random Forest (or) Random Decision Forest | random forest]] | * [[Evolutionary Computation / Genetic Algorithms | Genetic Programming]] using [[Random Forest (or) Random Decision Forest | random forest]] | ||
| − | ** [ | + | ** [https://arxiv.org/pdf/1603.06212.pdf Evaluation of a tree-based pipeline optimization tool for automating data science | R. Olson, N. Bartley, R. Urbanowicz, and J. Moore] |
* [[LightGBM]] ...[[Microsoft]]'s gradient boosting framework that uses tree based learning algorithms | * [[LightGBM]] ...[[Microsoft]]'s gradient boosting framework that uses tree based learning algorithms | ||
* [[Manhattan LSTM (MaLSTM)]] a Siamese architecture based on recurrent neural network | * [[Manhattan LSTM (MaLSTM)]] a Siamese architecture based on recurrent neural network | ||
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<b>Challenge:</b> | <b>Challenge:</b> | ||
| − | Today, active collision avoidance among orbiting satellites has become a routine task in space operations, relying on validated, accurate and timely space surveillance data. For a typical satellite in Low Earth Orbit, hundreds of alerts are issued every week corresponding to possible close encounters between a satellite and another space object (in the form of conjunction data messages CDMs). After automatic processing and filtering, there remain about 2 actionable alerts per spacecraft and week, requiring detailed follow-up by an analyst. On average, at the European Space Agency, more than one collision avoidance manoeuvre is performed per satellite and year. In this challenge, you are tasked to build a model to predict the final collision risk estimate between a given satellite and a space object (e.g. another satellite, space debris, etc). To do so, you will have access to a database of real-world conjunction data messages (CDMs) carefully prepared at ESA. Learn more about the challenge and the data. | + | Today, active collision avoidance among orbiting satellites has become a routine task in space operations, relying on validated, accurate and timely space surveillance data. For a typical satellite in Low Earth Orbit, hundreds of alerts are issued every week corresponding to possible close encounters between a satellite and another space object (in the form of conjunction data messages CDMs). After automatic processing and filtering, there remain about 2 actionable alerts per spacecraft and week, requiring detailed follow-up by an analyst. On average, at the European Space Agency, more than one collision avoidance manoeuvre is performed per satellite and year. In this challenge, you are tasked to build a model to predict the final collision risk estimate between a given satellite and a space object (e.g. another satellite, space debris, etc). To do so, you will have access to a [[database]] of real-world conjunction data messages (CDMs) carefully prepared at ESA. Learn more about the challenge and the data. |
<b>Results:</b> | <b>Results:</b> | ||
| − | Spacecraft collision avoidance procedures have become an essential part of satellite operations. Complex and constantly updated estimates of the collision risk between orbiting objects inform the various operators who can then plan risk mitigation measures. Such measures could be aided by the development of suitable machine learning models predicting, for example, the evolution of the collision risk in time. ...This paper describes the design and results of the competition and discusses the challenges and lessons learned when applying machine learning methods to this problem domain. [ | + | Spacecraft collision avoidance procedures have become an essential part of satellite operations. Complex and constantly updated estimates of the collision risk between orbiting objects inform the various operators who can then plan risk mitigation measures. Such measures could be aided by the development of suitable machine learning models predicting, for example, the evolution of the collision risk in time. ...This paper describes the design and results of the competition and discusses the challenges and lessons learned when applying machine learning methods to this problem domain. [https://arxiv.org/pdf/2008.03069.pdf Spacecraft Collision Avoidance Challenge: design and results of a machine learning competition | T. Uriot, D. Izzo, L. Simoes, R. Abay, N. Einecke, S. Rebhan, J. Martinez-Heras, F. Letizia, J. Siminski, and K. Merz] |
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= Astropy Project = | = Astropy Project = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=Astropy+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=Astropy+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=Astropy+artificial+intelligence+deep+machine+learning ...News search] |
| − | * [ | + | * [https://www.astropy.org/ Astropy Project] ...a community effort to develop a common core package for Astronomy in Python and foster an ecosystem of interoperable astronomy packages. |
{|<!-- T --> | {|<!-- T --> | ||
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= Simulation = | = Simulation = | ||
| − | [ | + | [https://www.youtube.com/results?search_query=Simulation+modelling+galaxy+space+universe+artificial+intelligence+deep+machine+learning Youtube search...] |
| − | [ | + | [https://www.google.com/search?q=Simulation+modelling+galaxy+space+universe+artificial+intelligence+deep+machine+learning ...Google search] |
| − | [ | + | [https://news.google.com/search?q=Simulation+modelling+galaxy+space+universe+artificial+intelligence+deep+machine+learning ...News search] |
| − | * Using generative modeling to investigate the physical changes that galaxies undergo as they evolve. (The software they used treats the latent space somewhat differently from the way a generative adversarial network treats it, so it is not technically a GAN, though similar.) . [ | + | * Using [[Generative AI|generative]] modeling to investigate the physical changes that galaxies undergo as they evolve. (The software they used treats the [[latent]] space somewhat differently from the way a [[Generative AI|generative]] adversarial network treats it, so it is not technically a GAN, though similar.) . [https://www.quantamagazine.org/how-artificial-intelligence-is-changing-science-20190311/ How Artificial Intelligence Is Changing Science | Dan Falk - Quanta Magazine] |
| − | * [ | + | * [https://www.impactlab.net/2019/07/18/worldss-first-ai-universe-simulator-knows-thing-it-shouldnt/ Worlds’s first AI universe simulator knows things it shouldn’t | Thomas Frey] |
| − | * [[Metaverse]] | + | * [[Immersive Reality]] ... [[Metaverse]] ... [[Omniverse]] ... [[Transhumanism]] ... [[Religion]] |
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<youtube>5_O0QOrEz6E</youtube> | <youtube>5_O0QOrEz6E</youtube> | ||
| − | <b>Deep Generative Modeling for HEP, Cosmology and Fluid Dynamics | + | <b>Deep [[Generative AI|Generative]] Modeling for HEP, Cosmology and Fluid Dynamics |
| − | </b><br>Karthik Kashinath of NERSC discusses using deep generative modeling for HEP, cosmology and fluid dynamics | + | </b><br>Karthik Kashinath of NERSC discusses using deep [[Generative AI|generative]] modeling for HEP, cosmology and fluid dynamics |
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| − | <b> | + | <b>.... |
| − | </b><br> | + | </b><br>.... |
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<youtube>09OMoGqHexQ</youtube> | <youtube>09OMoGqHexQ</youtube> | ||
<b>Landing a SpaceX Falcon Heavy Rocket | <b>Landing a SpaceX Falcon Heavy Rocket | ||
| − | </b><br>Can we land a SpaceX Falcon Heavy Rocket in simulation using machine learning? Yes! Reinforcement learning is a technique that lets an agent learn how best to act in an environment using rewards as its signal. [[OpenAI]] released a library called Gym that lets us train AI agents really easily. We'll use a combination of the [[TensorFlow]] and gym libraries to build an RL agent capable of landing a rocket perfectly. The specific technique we're using is called proximal policy optimization, this is an actor-critic algorithm that is really popular. Lets get started! | + | </b><br>Can we land a SpaceX Falcon Heavy Rocket in simulation using machine learning? Yes! Reinforcement learning is a technique that lets an [[Agents|agent]] learn how best to act in an environment using rewards as its signal. [[OpenAI]] released a library called Gym that lets us train AI [[Agents|agents]] really easily. We'll use a combination of the [[TensorFlow]] and gym libraries to build an RL [[Agents|agent]] capable of landing a rocket perfectly. The specific technique we're using is called proximal policy optimization, this is an actor-critic algorithm that is really popular. Lets get started! |
|} | |} | ||
|}<!-- B --> | |}<!-- B --> | ||
| + | |||
| + | = Apollo Computers = | ||
| + | * [https://en.wikipedia.org/wiki/Apollo_Guidance_Computer Apollo Guidance Computer (AGC) | Wikipedia] | ||
| + | |||
| + | The Apollo 11 mission utilized several onboard computers for navigation, guidance, and control: | ||
| + | |||
| + | * <b>Apollo Guidance Computer (AGC)</b>: The AGC was the main computer system responsible for guiding and controlling the spacecraft. It was designed by MIT Instrumentation Laboratory and built by Raytheon. The AGC was one of the earliest digital computers and used core rope [[memory]] for its software. | ||
| + | |||
| + | * <b>Apollo Command Module (CM) Computer</b>: The command module, where the astronauts lived during the mission, was equipped with its own computer. This computer was responsible for various functions related to navigation, guidance, and communication. | ||
| + | |||
| + | * <b>Lunar Module (LM) Computer</b>: The lunar module, used for landing on the moon, also had its own computer. The LM computer played a critical role in the descent and landing phase of the mission. | ||
| + | |||
| + | <youtube>ndvmFlg1WmE</youtube> | ||
| + | <youtube>ULGi3UkgW30</youtube> | ||
| + | |||
| + | == 1201 1202 Error == | ||
| + | The "Apollo 1202 Error" refers to a critical error that occurred during the Apollo 11 moon landing mission on July 20, 1969. The error code "1202" was a program alarm that appeared on the guidance computer of the lunar module just seconds before Neil Armstrong was about to touch down on the lunar surface. The error was triggered by an overloaded guidance computer, which was receiving more data than it could process <i><b>due to a radar switch being in the wrong position</b></i>. Despite the error, the mission controllers at NASA's Mission Control Center in Houston, Texas, and the astronauts aboard the lunar module proceeded with the landing. The guidance computer's software and the quick thinking of the mission controllers allowed them to resolve the issue and continue with the descent. Armstrong manually piloted the lunar module to a safe landing spot with only about 30 seconds of fuel remaining. He famously radioed back to Mission Control, "Houston, Tranquility Base here. The Eagle has landed." The Apollo 11 mission was a historic achievement, as it marked the first time humans successfully landed on the moon and returned safely to Earth. The 1202 Error is a reminder of the challenges and ingenuity involved in such complex and pioneering endeavors. [[Creatives#Margaret Elaine Hamilton|Margaret Hamilton]] was the Director of the Software Engineering Division of MIT Instrumentation Laboratory, which was responsible for developing the software for the Apollo guidance and navigation systems. [[Creatives#Margaret Elaine Hamilton|Margaret Hamilton's]] team had designed the software with a priority system that allowed the computer to handle essential tasks first and manage the overload gracefully. The software's ability to prioritize critical functions and manage non-essential tasks helped prevent a mission abort. [[Creatives#Margaret Elaine Hamilton|Margaret Hamilton's]] innovative approach to software development, which included concepts like error recovery and priority-based processing, played a crucial role in the success of the Apollo 11 landing. Her work and the efforts of her team demonstrated the importance of robust software engineering in complex and high-stakes missions. | ||
| + | |||
| + | <youtube>cmAc7t7tAlc</youtube> | ||
Latest revision as of 13:37, 28 December 2025
Youtube search... ...Google search ...News search
- Case Studies
- Image Classification
- Time ... PNT ... GPS ... Retrocausality ... Delayed Choice Quantum Eraser ... Quantum
- Deep-Space Positioning System (DPS)
- Video/Image ... Vision ... Enhancement ... Fake ... Reconstruction ... Colorize ... Occlusions ... Predict image ... Image/Video Transfer Learning
- National Aeronautics and Space Administration (NASA)
- Practical Python for Astronomers | GitHub
- OpenNASA
- Artificial Intelligence at NASA – Current Projects and Applications - Millicent Abadicio
- International Space Station Launches AI Program to Test Astronaut Gloves | Brandi Vincent - Nextgov ...Spaceborne Computer-2 (SBC-2) is providing insights in real-time, an HPE-built edge computing system explicitly for in-space, commercial AI and real-time data processing. The machine taps Microsoft’s Azure Space service.
- How artificial intelligence is changing astronomy | Ashley Spindler - Astronomy ... Machine learning has become an essential piece of astronomers’ toolkits
- The Image of the M87 Black Hole Reconstructed with PRIMO | L. Medeiros, D. Psaltis, T. Lauer, & F. Özel - The Astrophysical Journal Letters ... use of principal-component interferometric modeling (PRIMO), a novel image-reconstruction algorithm that addresses the challenges of millimeter-wave interferometry with sparse arrays by training the algorithm on an extensive suite of simulated images of accreting black holes (Medeiros et al. 2023)
- AI Software May Have Just Discovered Aliens and It's Scary | Allison Blair - TurboFuture ... ended up with 8 signals that could be a sign alien life
Astronomy is the study of celestial objects and phenomena beyond Earth's atmosphere. It encompasses everything from the smallest particles in space to the largest structures in the universe. In recent years, artificial intelligence (AI) has become an increasingly important tool in astronomy, helping scientists to make sense of the vast amounts of data generated by telescopes and other instruments. One area where AI is being applied in astronomy is in the analysis of star data. By training algorithms to identify patterns in the light emitted by stars, astronomers can use AI to more accurately classify stars and better understand their properties. AI is also being used to search for exoplanets, or planets outside of our solar system. By analyzing data from telescopes like NASA's Kepler and TESS, AI algorithms can detect the subtle changes in starlight that indicate the presence of an orbiting planet. Satellites and spacecraft are another area where AI is proving useful in astronomy. For example, NASA's Mars rovers are equipped with AI algorithms that help them navigate the Martian terrain and avoid obstacles. Similarly, the upcoming James Webb Space Telescope (JWST) will use AI to help optimize its observations, allowing it to detect more distant and faint objects than ever before. The sun and its behavior is also of great interest to astronomers, as its activity can have significant impacts on Earth's climate and technological infrastructure. AI is being used to analyze data from spacecraft like NASA's Solar Dynamics Observatory (SDO) to better understand the sun's magnetic fields and the processes that drive solar flares and other phenomena. In addition to studying celestial objects and phenomena, AI is also being used to detect and analyze gravitational waves, ripples in the fabric of spacetime caused by the acceleration of massive objects like black holes. The Laser Interferometer Gravitational-Wave Observatory (LIGO) uses AI algorithms to sift through the vast amounts of data generated by its detectors, looking for the telltale signals of gravitational waves.
Finding: Autonomy needs to evolve at a systems level to integrate and harmonize subsystems to make decisions and execute planned operations on remote yet complex planetary science and astrobiology missions. Machine learning/artificial intelligence can support the implementation of autonomy in such environments. Origins, Worlds, and Life, A Decadal Strategy for Planetary Science and Astrobiology 2023-2032, (2022) | National Academies of Sciences ... ~ 780 pages see General Technology Areas; Autonomy, Quantum Computing and Artificial Intelligence/Machine Learning
- Using Artificial Intelligence to Support Science Prioritization by the Decadal Surveys | Thronson, H., B. Thomas, L. Barbier, and A. Buonomo
- “By harnessing our collective passion, we can change the course of history.” - Bill Nye, CEO of The Planetary Society
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Contents
Dark Matter
Youtube search... ...Google search ...News search
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Galaxy Evolution
Youtube search... ...Google search ...News search
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Galaxies / Stars
Youtube search... ...Google search ...News search
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Object Classification
Youtube search... ...Google search ...News search
- Machine Learning Just Classified Over Half a Million Galaxies | Andy Tomaswick - Universe Today ...scientists trained the algorithm using images of spiral-patterned galaxies similar to the Milky Way. When used on the test set, the algorithm accurately classified 95.7 percent of galaxies.
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Black Holes
Youtube search... ...Google search ...News search
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Sun / Solar
Youtube search... ...Google search ...News search
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Planets
Youtube search... ...Google search ...News search
- Breakthrough AI identifies 50 new planets from old NASA data | Jessie Yeung - CNN Business
- NASA Exoplanet Archive ...A Service of NASA Exoplanet Science Institute
- Exoplanet Validation with Machine Learning: 50 new validated Kepler planets | D. Armstrong, J. Gamper, and T. Damoulas - Oxford Academic
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Earth
Youtube search... ...Google search ...News search
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Mars
Youtube search... ...Google search ...News search
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Moon
Youtube search... ...Google search ...News search
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Man-made (artificial) Satellites
Youtube search... ...Google search ...News search
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Asteroids
Youtube search... ...Google search ...News search
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Collision Avoidance in Space
Youtube search... ...Google search ...News search
- Artificial Intelligence Solutions to Track and Map Space Debris | Seer Tracking
- Spacecraft Collision Avoidance Challenge | European Space Agency (ESA)
- Data: Close encounters between two objects |European Space Agency (ESA)
- Kessler_Syndrome | Wikipedia ... a theoretical scenario in which the density of objects in low Earth orbit (LEO) due to space pollution is high enough that collisions between objects could cause a cascade in which each collision generates space debris that increases the likelihood of further collisions.
- Genetic Programming using random forest
- LightGBM ...Microsoft's gradient boosting framework that uses tree based learning algorithms
- Manhattan LSTM (MaLSTM) a Siamese architecture based on recurrent neural network
- Monte Carlo Cross-Validation
Challenge:
Today, active collision avoidance among orbiting satellites has become a routine task in space operations, relying on validated, accurate and timely space surveillance data. For a typical satellite in Low Earth Orbit, hundreds of alerts are issued every week corresponding to possible close encounters between a satellite and another space object (in the form of conjunction data messages CDMs). After automatic processing and filtering, there remain about 2 actionable alerts per spacecraft and week, requiring detailed follow-up by an analyst. On average, at the European Space Agency, more than one collision avoidance manoeuvre is performed per satellite and year. In this challenge, you are tasked to build a model to predict the final collision risk estimate between a given satellite and a space object (e.g. another satellite, space debris, etc). To do so, you will have access to a database of real-world conjunction data messages (CDMs) carefully prepared at ESA. Learn more about the challenge and the data.
Results:
Spacecraft collision avoidance procedures have become an essential part of satellite operations. Complex and constantly updated estimates of the collision risk between orbiting objects inform the various operators who can then plan risk mitigation measures. Such measures could be aided by the development of suitable machine learning models predicting, for example, the evolution of the collision risk in time. ...This paper describes the design and results of the competition and discusses the challenges and lessons learned when applying machine learning methods to this problem domain. Spacecraft Collision Avoidance Challenge: design and results of a machine learning competition | T. Uriot, D. Izzo, L. Simoes, R. Abay, N. Einecke, S. Rebhan, J. Martinez-Heras, F. Letizia, J. Siminski, and K. Merz
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Astropy Project
Youtube search... ...Google search ...News search
- Astropy Project ...a community effort to develop a common core package for Astronomy in Python and foster an ecosystem of interoperable astronomy packages.
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Simulation
Youtube search... ...Google search ...News search
- Using generative modeling to investigate the physical changes that galaxies undergo as they evolve. (The software they used treats the latent space somewhat differently from the way a generative adversarial network treats it, so it is not technically a GAN, though similar.) . How Artificial Intelligence Is Changing Science | Dan Falk - Quanta Magazine
- Worlds’s first AI universe simulator knows things it shouldn’t | Thomas Frey
- Immersive Reality ... Metaverse ... Omniverse ... Transhumanism ... Religion
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Apollo Computers
The Apollo 11 mission utilized several onboard computers for navigation, guidance, and control:
- Apollo Guidance Computer (AGC): The AGC was the main computer system responsible for guiding and controlling the spacecraft. It was designed by MIT Instrumentation Laboratory and built by Raytheon. The AGC was one of the earliest digital computers and used core rope memory for its software.
- Apollo Command Module (CM) Computer: The command module, where the astronauts lived during the mission, was equipped with its own computer. This computer was responsible for various functions related to navigation, guidance, and communication.
- Lunar Module (LM) Computer: The lunar module, used for landing on the moon, also had its own computer. The LM computer played a critical role in the descent and landing phase of the mission.
1201 1202 Error
The "Apollo 1202 Error" refers to a critical error that occurred during the Apollo 11 moon landing mission on July 20, 1969. The error code "1202" was a program alarm that appeared on the guidance computer of the lunar module just seconds before Neil Armstrong was about to touch down on the lunar surface. The error was triggered by an overloaded guidance computer, which was receiving more data than it could process due to a radar switch being in the wrong position. Despite the error, the mission controllers at NASA's Mission Control Center in Houston, Texas, and the astronauts aboard the lunar module proceeded with the landing. The guidance computer's software and the quick thinking of the mission controllers allowed them to resolve the issue and continue with the descent. Armstrong manually piloted the lunar module to a safe landing spot with only about 30 seconds of fuel remaining. He famously radioed back to Mission Control, "Houston, Tranquility Base here. The Eagle has landed." The Apollo 11 mission was a historic achievement, as it marked the first time humans successfully landed on the moon and returned safely to Earth. The 1202 Error is a reminder of the challenges and ingenuity involved in such complex and pioneering endeavors. Margaret Hamilton was the Director of the Software Engineering Division of MIT Instrumentation Laboratory, which was responsible for developing the software for the Apollo guidance and navigation systems. Margaret Hamilton's team had designed the software with a priority system that allowed the computer to handle essential tasks first and manage the overload gracefully. The software's ability to prioritize critical functions and manage non-essential tasks helped prevent a mission abort. Margaret Hamilton's innovative approach to software development, which included concepts like error recovery and priority-based processing, played a crucial role in the success of the Apollo 11 landing. Her work and the efforts of her team demonstrated the importance of robust software engineering in complex and high-stakes missions.