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Aesthetics --- Benjamin, Walter --- Benjamin, Walter, --- Philosophy --- Benjamin, Walter, - 1892-1940 - Philosophy --- Benjamin, Walter, - 1892-1940
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Holocaust, Jewish (1939-1945) --- War crime trials --- Causes --- Trials (War crimes) --- Trials (Crimes against humanity) --- Trials (Genocide) --- Trials --- Catastrophe, Jewish (1939-1945) --- Destruction of the Jews (1939-1945) --- Extermination, Jewish (1939-1945) --- Holocaust, Nazi --- Ḥurban (1939-1945) --- Ḥurbn (1939-1945) --- Jewish Catastrophe (1939-1945) --- Jewish Holocaust (1939-1945) --- Jews --- Nazi Holocaust --- Nazi persecution of Jews --- Shoʾah (1939-1945) --- Genocide --- World War, 1939-1945 --- Kindertransports (Rescue operations) --- Nazi persecution --- Persecutions --- Atrocities --- Jewish resistance --- Arendt, Hannah, --- Eichmann, Adolf, --- Krumey, Richard, --- Clemente, Ricardo, --- Rudiger, Hans, --- Klementz, Richard, --- Klementz, Ricardo, --- Steinburg, Kurt, --- Eichmann, Karl Friedrich, --- Eichmann, Adolf Friedrich, --- Ajhman, Adolf, --- Klement, Rikardo, --- Eichmann, Karl Adolf, --- Aikhman, Adolf, --- Ėĭkhman, Adolʹf, --- Eichmann, Adolph, --- Eichmann, Otto Adolf, --- אייכמן, אדולף, --- אײכמאן, אדאָלף, --- Holocaust, Nazi (Jewish Holocaust) --- Nazi Holocaust (Jewish Holocaust) --- Nazi persecution (1939-1945) --- Holocaust, Jewish (1939-1945) - Causes - Congresses. --- War crime trials - Jerusalem - Congresses. --- Arendt, Hannah
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Finance --- Money --- Banks and banking --- Economics --- Economic theory --- Political economy --- Social sciences --- Economic man --- Agricultural banks --- Banking --- Banking industry --- Commercial banks --- Depository institutions --- Financial institutions --- Currency --- Monetary question --- Money, Primitive --- Specie --- Standard of value --- Exchange --- Value --- Coinage --- Currency question --- Gold --- Silver --- Silver question --- Wealth --- Funding --- Funds --- Banks and banking. --- Economics. --- Finance. --- Money.
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There is no doubt science is currently suffering from a credibility crisis. This thought-provoking book argues that, ironically, science's credibility is being undermined by tools created by scientists themselves. Scientific disinformation and damaging conspiracy theories are rife because of the internet that science created, the scientific demand for empirical evidence and statistical significance leads to data torturing and confirmation bias, and data mining is fuelled by the technological advances in Big Data and the development of ever-increasingly powerfulcomputers. Using a wide range of entertaining examples, this fascinating book examines the impacts of society's growing distrust of science, and ultimately provides constructive suggestions for restoring the credibility of the scientific community. [Publisher]
Science --- Communication in science --- Data mining --- Evidence --- Trust --- Communication in science. --- Data mining. --- Evidence. --- Trust. --- Sciences et société. --- Information scientifique. --- Exploration de données. --- Évidence. --- Confiance. --- Social aspects. --- Sciences et société. --- Exploration de données. --- Évidence.
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"The AI delusion demonstrates why we should not be intimidated into thinking that computers are infallible, that data-mining is knowledge discovery, or that black boxes should be trusted"--Back dust jacket.
Computers --- Data mining --- Artificial intelligence --- Big data
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Statistics --- Probabilities --- Statistique --- Probabilités
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Data science has never had more influence on the world. Large companies are now seeing the benefit of employing data scientists to interpret the vast amounts of data that now exists. However, the field is so new and is evolving so rapidly that the analysis produced can be haphazard at best. 'The 9 Pitfalls of Data Science' shows us real-world examples of what can go wrong. Written to be an entertaining read, this invaluable guide investigates the all too common mistakes of data scientists - who can be plagued by lazy thinking, whims, hunches, and prejudices - and indicates how they have been at the root of many disasters, including the Great Recession.
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