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<NewsItem contentIssues="true" id="72069" important="false" status="posted" url="https://beta.my.umbc.edu/groups/ebiquity/posts/72069">
<Title>A Practitioners Introduction to Deep Learning, 1pm Fri 11/17</Title>
<Body>
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    <p><img src="https://www.csee.umbc.edu/wp-content/uploads/2017/11/deep_learning.png" alt="" style="max-width: 100%; height: auto;"></p>
    <h4>ACM Tech Talk Series</h4>
    <h1><strong>A Practitioner’s Introduction to Deep Learning</strong></h1>
    <h3>Ashwin Kumar Ganesan, PhD student</h3>
    <h3>1:00-2:00pm Friday, 17 November 2017?, ITE325, UMBC</h3>
    <p>In recent years, Deep Neural Networks have been highly successful at performing a number of tasks in computer vision, natural language processing and artificial intelligence in general. The remarkable performance gains have led to universities and industries investing heavily in this space. This investment creates a thriving open source ecosystem of tools &amp; libraries that aid the design of new architectures, algorithm research as well as data collection.</p>
    <p>This talk (and hands-on session) introduce people to some of the basics of machine learning, neural networks and discusses some of the popular neural network architectures. We take a dive into one of the popular libraries, Tensorflow, and an associated abstraction library Keras.</p>
    <p>To participate in the hands-on aspects of the workshop, bring a laptop computer with Python installed and install the following libraries using pip.  For windows or (any other OS) consider doing an installation of anaconda that has all the necessary libraries.</p>
    <ul>
    <li>numpy, scipy &amp; scikit-learn</li>
    <li>tensorflow / tensoflow-gpu (The first one is the GPU version)</li>
    <li>matplotlib for visualizations (if necessary)</li>
    <li>jupyter &amp; ipython (We will use python2.7 in our experiments)</li>
    </ul>
    <p>Following are helpful links:</p>
    <ul>
    <li><a href="https://www.tensorflow.org/install/" rel="nofollow external" class="bo">https://www.tensorflow.org/install/</a></li>
    <li><a href="https://www.scipy.org/install.html" rel="nofollow external" class="bo">https://www.scipy.org/install.html</a></li>
    </ul>
    <p>Contact Nisha Pillai (NPillai1 at umbc.edu) with any questions regarding this event.</p>
    </div>
]]>
</Body>
<Summary>ACM Tech Talk Series   A Practitioner’s Introduction to Deep Learning   Ashwin Kumar Ganesan, PhD student   1:00-2:00pm Friday, 17 November 2017?, ITE325, UMBC   In recent years, Deep Neural...</Summary>
<Website>http://ebiquity.umbc.edu/blogger/2017/11/14/a-practitioners-introduction-to-deep-learning-1pm-fri-1117/</Website>
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<Tag>ai</Tag>
<Tag>data-science</Tag>
<Tag>machine-learning</Tag>
<Tag>talks</Tag>
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<Sponsor>ebiquity research group</Sponsor>
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<PostedAt>Tue, 14 Nov 2017 15:10:41 -0500</PostedAt>
<EditAt>Tue, 14 Nov 2017 15:10:41 -0500</EditAt>
</NewsItem>

<NewsItem contentIssues="true" id="73435" important="false" status="posted" url="https://beta.my.umbc.edu/groups/ebiquity/posts/73435">
<Title>A Practitioners Introduction to Deep Learning, 1pm Fri 11/17</Title>
<Body>
<![CDATA[
    <div class="html-content">
    <p><img src="https://www.csee.umbc.edu/wp-content/uploads/2017/11/deep_learning.png" alt="" style="max-width: 100%; height: auto;"></p>
    <h4>ACM Tech Talk Series</h4>
    <h1><strong>A Practitioner’s Introduction to Deep Learning</strong></h1>
    <h3>Ashwin Kumar Ganesan, PhD student</h3>
    <h3>1:00-2:00pm Friday, 17 November 2017?, ITE325, UMBC</h3>
    <p>In recent years, Deep Neural Networks have been highly successful at performing a number of tasks in computer vision, natural language processing and artificial intelligence in general. The remarkable performance gains have led to universities and industries investing heavily in this space. This investment creates a thriving open source ecosystem of tools &amp; libraries that aid the design of new architectures, algorithm research as well as data collection.</p>
    <p>This talk (and hands-on session) introduce people to some of the basics of machine learning, neural networks and discusses some of the popular neural network architectures. We take a dive into one of the popular libraries, Tensorflow, and an associated abstraction library Keras.</p>
    <p>To participate in the hands-on aspects of the workshop, bring a laptop computer with Python installed and install the following libraries using pip.  For windows or (any other OS) consider doing an installation of anaconda that has all the necessary libraries.</p>
    <ul>
    <li>numpy, scipy &amp; scikit-learn</li>
    <li>tensorflow / tensoflow-gpu (The first one is the GPU version)</li>
    <li>matplotlib for visualizations (if necessary)</li>
    <li>jupyter &amp; ipython (We will use python2.7 in our experiments)</li>
    </ul>
    <p>Following are helpful links:</p>
    <ul>
    <li><a href="https://www.tensorflow.org/install/" rel="nofollow external" class="bo">https://www.tensorflow.org/install/</a></li>
    <li><a href="https://www.scipy.org/install.html" rel="nofollow external" class="bo">https://www.scipy.org/install.html</a></li>
    </ul>
    <p>Contact Nisha Pillai (NPillai1 at umbc.edu) with any questions regarding this event.</p>
    </div>
]]>
</Body>
<Summary>ACM Tech Talk Series   A Practitioner’s Introduction to Deep Learning   Ashwin Kumar Ganesan, PhD student   1:00-2:00pm Friday, 17 November 2017?, ITE325, UMBC   In recent years, Deep Neural...</Summary>
<Website>https://ebiquity.umbc.edu/blogger/2017/11/14/a-practitioners-introduction-to-deep-learning-1pm-fri-1117/</Website>
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<Tag>ai</Tag>
<Tag>data-science</Tag>
<Tag>machine-learning</Tag>
<Tag>talks</Tag>
<Group token="ebiquity">Ebiquity Research Group</Group>
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<Sponsor>ebiquity research group</Sponsor>
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<PostedAt>Tue, 14 Nov 2017 15:10:41 -0500</PostedAt>
</NewsItem>

<NewsItem contentIssues="true" id="71353" important="false" status="posted" url="https://beta.my.umbc.edu/groups/ebiquity/posts/71353">
<Title>Arya Renjan: Multi-observable Session Reputation Scoring System</Title>
<Body>
<![CDATA[
    <div class="html-content">
    <h1><img src="http://ebiquity.umbc.edu/blogger/wp-content/uploads/2017/10/cyber_ml.jpg" style="max-width: 100%; height: auto;"></h1>
    <h1><strong>Multi-observable Session Reputation Scoring System</strong></h1>
    <p><a href="http://knacc.umbc.edu/students/arya-renjan/" rel="nofollow external" class="bo"><strong>Arya Renjan</strong></a></p>
    <p><strong>11:00-12:00 Monday, 23 October 2017, ITE 346</strong></p>
    <p>With increasing adoption of Cloud Computing, cyber attacks have become one of the most effective means for adversaries to inflict damage. To overcome limitations of existing blacklists and whitelists, our research focuses to develop a dynamic reputation scoring model for sessions based on a variety of observable and derived attributes of network traffic. Here we propose a technique to greylist sessions using observables like IP, Domain, URL and File Hash by scoring them numerically based on the events in the session. This enables automatic labeling of possible malicious hosts or users that can help in enriching the existing whitelists or blacklists.</p>
    </div>
]]>
</Body>
<Summary>Multi-observable Session Reputation Scoring System   Arya Renjan   11:00-12:00 Monday, 23 October 2017, ITE 346   With increasing adoption of Cloud Computing, cyber attacks have become one of the...</Summary>
<Website>http://ebiquity.umbc.edu/blogger/2017/10/22/arya-renjan-multi-observable-session-reputation-scoring-system/</Website>
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<Tag>ai</Tag>
<Tag>cybersecurity</Tag>
<Tag>data-science</Tag>
<Tag>ebiquity</Tag>
<Tag>machine-learning</Tag>
<Tag>meetings</Tag>
<Tag>talks</Tag>
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<PostedAt>Sun, 22 Oct 2017 13:19:47 -0400</PostedAt>
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