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	    2016</a> | <a href="http://www.inria.fr/en/teams/sierra">Presentation of the Project-Team SIERRA</a> | <a href="http://www.di.ens.fr/sierra/">SIERRA Web Site
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        <div class="Titrepage1">2016 Project-Team Activity Report
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          <div class="ProjetCourtpage1">SIERRA</div>
          <div class="ProjetLongpage1">Statistical Machine Learning and Parsimony<div class="DescriptionTeam"/></div>
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          <span class="definition">Research centre: </span>
          <a href="https://www.inria.fr/centre/paris">Paris</a>
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        <div class="partner"><span class="definition">In partnership with: </span>CNRS, Ecole normale supérieure de Paris<br/><span class="definition">In collaboration with: </span>Département d'Informatique de l'Ecole Normale Supérieure<br/><br/></div>
        <div class="domainepage1"><span class="definition">Field: </span><a href="&#10;&#9;      http://www.inria.fr/en/domains/Applied-Mathematics-Computation-and-Simulation">Applied Mathematics, Computation and Simulation</a><br/><span class="definition">Theme: </span>Optimization, machine learning and statistical methods</div>
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          <span class="definition">Keywords: </span>
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            <a href="/keywords/2016/computing">Computer Science and Digital Science: </a>
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            <li>1.2.8. - Network security</li>
            <li>3.4. - Machine learning and statistics</li>
            <li>5.4. - Computer vision</li>
            <li>6.2. - Scientific Computing, Numerical Analysis &amp; Optimization</li>
            <li>7.1. - Parallel and distributed algorithms</li>
            <li>7.3. - Optimization</li>
            <li>8.2. - Machine learning</li>
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            <li>9.4.5. - Data science</li>
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