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Introduction

Introduction

 Hello Fellow Internet User! How has your day been? If you're like me, you're thinking "Um...good or bad or something in between. It is still a great time to be alive!" Welcome to this blog!  Data Science is everywhere! Because data is everywhere! Data Science is fascinating as it is our very human yearning to know  what all of this data tells us . If not out of curiosity then to find out how those stories can help us in various endeavours. Science and Engineering can also benefit from Data Science, maybe even recursively ;-) This blog is meant to bring together a curated set of advancements on how Data Science has been used to further science and engineering endeavours. Apart from drawing your attention to the substance of these advancements, I shall add my own commentary. Should be a fun ride! Hope you enjoy it! Joie de vivre pour toi! Rahul PS: I am open to comments and suggestions. Please let me know what you think of this blog, its posts or anything else of relev

Crater Detection

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Courtesy: James Stuby (NASA) / Wikimedia Commons A crater is a structure or geological formation that is produced as a result of impact of a smaller body upon a larger heavenly body. Craters are found on all solid heavenly bodies such as Earth, the Moon, Mars, Mercury, Venus etc.  Studying craters is important because they are time capsules to how our Solar System evolved and gives us clues to the past, present and future of the evolution of planetary bodies without humans setting foot on them. Crater densities have been correlated with surface age and crater counts have been used used to estimate the relative age of the lunar surface. There are many other uses to studying craters, so it is important to be able to detect craters quickly in an automated fashion. This research uses a novel method of detecting craters by using multiple co-registered data sources: optical images, digital elevation maps (DEMs) and slope maps of the lunar surface. The method uses a deep learning architecture

Ancient Inscriptions

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  Credit: Acropolis Museum/Socratis Mavrommatis Ancient civilizations have held fascination for historians and anthropologists ever since humans became curious about the past. Deciphering life in civilizations past meant that excavated tools, vessels, assorted items, inscriptions etc. had to be unearthed and examined. The most informative of these would be the inscriptions on scrolls, papyri, stone, metal, or pottery. A lot of these inscriptions are incomplete due to damage and large chunks of the inscribed text are often illegible. Determining where the texts originated from can be a challenge since they may have been moved multiple times. Dating these texts is another challenge as radiocarbon dating and similar methods can't be used since they can damage the priceless artifacts. Enter AI. Researchers from DeepMind collaborated with researchers from the University of Oxford to develop Pythia , an ancient-text restoration system based on Deep Learning. The database used was of the 

AI and the Mass of Galaxy Clusters

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The Coma Cluster contains more than 1,000 galaxies. Scientists have long been frustrated by large uncertainties in its mass. Credit: PSC  A galaxy, as you may know, is a huge collection of stars that has a certain overall shape and which moves as a unit across the cosmos. Even larger groupings such as galaxy clusters  exist. The individual galaxies in a cluster move about relative to each other and revolve around their common center of mass. Their velocities relative to our observation point can be gleaned from measurements of their red-shifts or blue-shifts.  Estimation of the mass of galaxy clusters is still fraught with uncertainties. It is not yet clear how to determine the three-dimensional structure of galaxy clusters which reduces further the confidence of estimating the mass.  But why estimate the mass? It is now known that stars in a galaxy revolve around the center of mass of the galaxy. But their velocities exceed the calculated velocity based on the detectable mass of the

AI can help predict Skin Cancer Recurrence

  Hello! Today we have an entry in the field of medicine. What is skin cancer recurrence? An early-stage skin cancer type called  melanoma  is treatable if diagnosed early enough. Most melanoma deaths in the US occur because of recurrence of the disease which was early stage at the time of diagnosis. However, recurrence is not detected until the cancer starts to spread; called symptomatic metastatic progression. This is where prognostic tools can be helpful for regular surveillance and quick action to stave off mortality and ensure health. Also, identifying high-risk patients can help in determining who should receive special therapies and treatments. Enter Machine Learning. A team led by investigators at Massachusetts General Hospital performed two types Machine Learning prediction with nine different models: Melanoma Recurrence Classification: Where the prediction would be a probability that melanoma recurrence would occur. Time-To-Event Melanoma Recurrence Risk Prediction: Where the

AI Can Help Identify Heart Disease...

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      (Credit: Retinal scan courtesy UK Biobank) Artificial Intelligence can now identify patients with a high risk of heart attack just by an eye scan that can be taken at an optician or eye clinic. Sounds too good to be true? The size and pumping efficiency of the left ventricle (one of the four chambers) of the heart is linked to risk of heart attack. An oversized left-ventricle leads to higher risk of heart disease. In turn, the retinal scans are linked to the size and pumping efficiency of the left ventricle. Currently, risk of heart disease can be determined through expensive diagnostic tests using MRI and ECG which are available only in a hospital setting. These tests are also unavailable in less well-resourced healthcare systems in developing countries and unnecessarily increase healthcare costs in developed countries.  Retinal scans on the other hand are comparatively cheap and available in many optician practices. Patients who are found to be at high risk of heart disease c

AI Helps find Earth-like Habitable Exo-planets

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    (Photo credit: BBC) Are We Alone?  It is a question that humans have had ever since we realized there are other worlds, other planets out there in the cosmos. The implications of the answer to this question are staggering no matter what that answer is. In pursuit of an answer scientists have been searching for planets that could potentially harbor life. Planets that are outside of our solar system are termed Exoplanets. The exploratory pursuit is to find "earth-like" exoplanets because these would have the greatest chance of harboring life as we know it. Determining the habitability of exoplanets is not an easy task. Existing ML methods such as Metric-based quantification (using metrics like surface temperature) or Supervised Learning (based mainly on estimated surface temperature) are not reliable enough.  Astronomers from the Indian Institute of Astrophysics along with astronomers from BITS Pilani and Goa campus designed an anomaly detection method to identify potential

AI helps in Drug Discovery

  Drug development for the treatment of various diseases is the cornerstone of medicine for human health. Drug development is an expensive and time-consuming process. Most drugs developed up to the human-trials stage end up having no effect at all or too many side-effects. These drugs are thus discarded resulting in wasted time, money and effort. The cost of these drugs end up on the price tags of drugs that do become successful. Before drug development can even take place the drug discovery process must occur. Briefly, drug discovery involves a process of finding promising drug-like molecules that can bind or "dock" properly onto certain protein targets. After successfully docking to the protein, the binding drug, also known as the ligand, can stop a protein from functioning. If this happens to an essential protein of a bacterium, it can kill the bacterium, conferring protection to the human body. Drug discovery, the process of discovering new candidate medications, involves

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