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Why are there so few women in science? In Breaking into the Lab, Sue Rosser uses the experiences of successful women scientists and engineers to answer the question of why elite institutions have so few women scientists and engineers tenured on their faculties. Women are highly qualified, motivated students, and yet they have drastically higher rates of attrition, and they are shying away from the fields with the greatest demand for workers and the biggest economic payoffs, such as engineering, computer sciences, and the physical sciences. Rosser shows that these continuing trends are not only disappointing, they are urgent: the U.S. can no longer afford to lose the talents of the women scientists and engineers, because it is quickly losing its lead in science and technology. Ultimately, these biases and barriers may lock women out of the new scientific frontiers of innovation and technology transfer, resulting in loss of useful inventions and products to society.
Sex discrimination in science --- Women scientists --- Science
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Conscious and unconscious bias, societal pressures, and discomfort with women’s ambition are issues that women are confronted with in any male-dominated setting, and tech is no exception. Statistically, women are a disproportionately small percentage of the technology industry. How did we get here, what is changing, and what can future generations of women in STEM expect? In Crushing the IT Gender Bias, author Kellyn Pot’Vin-Gorman applies her two decades of experience in tech to these meaningful questions, plus many more. As a mentor and sponsor of women in the database and development communities, Pot’Vin-Gorman uses experience, visualizations of hard data, and industry interviews to describe the many challenges that women face in STEM. She then shows you how to inoculate against them. Small, positive changes like these are similar to a vaccine: they build individual immunity and thus create herd immunity to protect the most vulnerable. This shift is accomplished through increased representation of—and direct exposure to—successful role models in the industry. You’ll get practical advice related to hiring practices, salary negotiations, and barriers to collaboration. After witnessing multiple female peers depart the tech world, Pot’Vin-Gorman has written Crushing the IT Gender Bias to make her voice heard and to start this necessary conversation productively so that women can thrive. Additionally, this book is for male professionals who desire to grow in their understanding and eliminate bias in their environments. Do not be content with mere survival. Read this book, practice the techniques, and, most importantly, learn how to pay it forward. By arming yourself with knowledge and facing bias head-on, you can be the meaningful change that you want to see in the tech industry.
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"Why have Canadian women scientists been written out of the historical record? Who were they? What did they accomplish? What were their life paths? These are some of the questions answered in this authoritative work. Over decades of research, Marianne Ainley identified, tracked down, and interviewed surviving scientists. Creating Complicated Lives weaves the lives and work of these pioneers with the author's own experiences as an immigrant scientific technician and later a feminist historian. Ainley argues that we must look at the lives of women scientists through a new historical lens that takes into account both the advances of science and concurrent debates about the advancement of women. Rather than having linear career trajectories, many women shifted fields, coped with discrimination, and endeavoured to find niches in which they could make significant contributions."--Pub. desc.
Women in science --- Women scientists --- Women in higher education --- Sex discrimination in science --- Science --- Education, Higher --- Minorities in science --- Scientists --- History. --- Canada. --- Canada (Province) --- Canadae --- Ceanada --- Chanada --- Chanadey --- Dominio del Canad --- Dominion of Canada --- Jianada --- Kʻaenada --- Kanada --- Ḳanadah --- Kanadaja --- Kanadas --- Ḳanade --- Kanado --- Kanak --- Province of Canada --- Republica de Canad --- Yn Chanadey --- Dominio del Canadá --- Kaineḍā --- Kanakā --- Republica de Canadá
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Bringing together the latest research among various communities of practice (disciplinary and place based as well as thematically organised), this volume reflects upon the knowledge, experience and practice gained through taking a unique community of practice approach to fostering gender equality in the sectors of research and innovation, and higher education in Europe and beyond. Based on research funded by the European Union, it considers how inter-organisational collaboration can foster change for gender equality through sharing of experiences of Gender Equality Plan implementation and examining the role of measures such as change-monitoring systems. As such, it will appeal to social scientists with interests in organisational change, the sociology of work and gender equality.
Sex discrimination in science --- Sex discrimination in higher education --- Sex discrimination against women --- Women in science --- Research --- Communities of practice --- Science --- Science research --- Scientific research --- Information services --- Learning and scholarship --- Methodology --- Research teams --- Minorities in science --- Discrimination against women --- Subordination of women --- Women, Discrimination against --- Feminism --- Sex discrimination --- Women's rights --- Male domination (Social structure) --- Education, Higher --- Social aspects --- Practice, Communities of --- Social groups --- Organizational learning --- Communities of practice. --- Sex discrimination against women. --- Women in science.
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Conscious and unconscious bias, societal pressures, and discomfort with women’s ambition are issues that women are confronted with in any male-dominated setting, and tech is no exception. Statistically, women are a disproportionately small percentage of the technology industry. How did we get here, what is changing, and what can future generations of women in STEM expect? In Crushing the IT Gender Bias, author Kellyn Pot’Vin-Gorman applies her two decades of experience in tech to these meaningful questions, plus many more. As a mentor and sponsor of women in the database and development communities, Pot’Vin-Gorman uses experience, visualizations of hard data, and industry interviews to describe the many challenges that women face in STEM. She then shows you how to inoculate against them. Small, positive changes like these are similar to a vaccine: they build individual immunity and thus create herd immunity to protect the most vulnerable. This shift is accomplished through increased representation of—and direct exposure to—successful role models in the industry. You’ll get practical advice related to hiring practices, salary negotiations, and barriers to collaboration. After witnessing multiple female peers depart the tech world, Pot’Vin-Gorman has written Crushing the IT Gender Bias to make her voice heard and to start this necessary conversation productively so that women can thrive. Additionally, this book is for male professionals who desire to grow in their understanding and eliminate bias in their environments. Do not be content with mere survival. Read this book, practice the techniques, and, most importantly, learn how to pay it forward. By arming yourself with knowledge and facing bias head-on, you can be the meaningful change that you want to see in the tech industry.
Women in technology. --- Computers and women. --- Database management. --- Data base management --- Data services (Database management) --- Database management services --- DBMS (Computer science) --- Generalized data management systems --- Services, Database management --- Systems, Database management --- Systems, Generalized database management --- Electronic data processing --- Women and computers --- Women --- Technology --- Culture. --- Gender. --- Business. --- Database Management. --- Culture and Gender. --- Business and Management, general. --- Trade --- Economics --- Management --- Commerce --- Industrial management --- Cultural sociology --- Culture --- Sociology of culture --- Civilization --- Popular culture --- Social aspects --- Management science. --- Quantitative business analysis --- Problem solving --- Operations research --- Statistical decision --- Women in computer science. --- Women in information science. --- Sex discrimination in science.
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Sex and Gender Bias in Technology and Artificial Intelligence: Biomedicine and Healthcare Applications details the integration of sex and gender as critical factors in innovative technologies (artificial intelligence, digital medicine, natural language processing, robotics) for biomedicine and healthcare applications. By systematically reviewing existing scientific literature, a multidisciplinary group of international experts analyze diverse aspects of the complex relationship between sex and gender, health and technology, providing a perspective overview of the pressing need of an ethically-informed science. The reader is guided through the latest implementations and insights in technological areas of accelerated growth, putting forward the neglected and overlooked aspects of sex and gender in biomedical research and healthcare solutions that leverage artificial intelligence, biosensors, and personalized medicine approaches to predict and prevent disease outcomes. The reader comes away with a critical understanding of this fundamental issue for the sake of better future technologies and more effective clinical approaches.
Sex discrimination in science. --- Sex discrimination in medicine. --- Artificial intelligence --- Sex Factors. --- Sexism --- Biomedical Research --- Research Design --- Data Adjustment --- Data Reporting --- Design, Experimental --- Designs, Experimental --- Error Sources --- Experimental Designs --- Matched Groups --- Methodology, Research --- Problem Formulation --- Research Methodology --- Research Proposal --- Research Strategy --- Research Technics --- Research Techniques --- Scoring Methods --- Experimental Design --- Adjustment, Data --- Adjustments, Data --- Data Adjustments --- Design, Research --- Designs, Research --- Error Source --- Formulation, Problem --- Formulations, Problem --- Group, Matched --- Groups, Matched --- Matched Group --- Method, Scoring --- Methods, Scoring --- Problem Formulations --- Proposal, Research --- Proposals, Research --- Reporting, Data --- Research Designs --- Research Proposals --- Research Strategies --- Research Technic --- Research Technique --- Scoring Method --- Source, Error --- Sources, Error --- Strategies, Research --- Strategy, Research --- Technic, Research --- Technics, Research --- Technique, Research --- Techniques, Research --- Research --- Clinical Trials Data Monitoring Committees --- Experimental Medicine --- Investigational Medicine --- Investigative Medicine --- Research, Biomedical --- Research, Medical --- Medical Research --- Medicine, Experimental --- Medicine, Investigational --- Medicine, Investigative --- Animals, Laboratory --- Gender Issues --- Sex Discrimination --- Gender Bias --- Gender Discrimination --- Sex Bias --- Sexual Discrimination --- Bias, Gender --- Bias, Sex --- Discrimination, Gender --- Discrimination, Sex --- Discrimination, Sexual --- Factor, Sex --- Factors, Sex --- Sex Factor --- AI (Artificial intelligence) --- Artificial thinking --- Electronic brains --- Intellectronics --- Intelligence, Artificial --- Intelligent machines --- Machine intelligence --- Thinking, Artificial --- Bionics --- Cognitive science --- Digital computer simulation --- Electronic data processing --- Logic machines --- Machine theory --- Self-organizing systems --- Simulation methods --- Fifth generation computers --- Neural computers --- Medicine --- Sexism in medicine --- Science --- Moral and ethical aspects. --- methods --- Sexism. --- Sex bias --- Attitude (Psychology) --- Prejudices --- Sex (Psychology) --- Social perception --- Sex role --- Sex factors in disease. --- Biology --- Sex Factors --- Artificial Intelligence --- Technology Assessment, Biomedical --- Research.
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