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Machine Learning Approaches for Malware Detection (NSF)
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Statistical Learning Approaches for Malware Detection (NSF)
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Machine Learning Approaches for Mlware Detection (NSF)
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Machine Learning Approaches for Malware Detection (NSF)
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Machine Learning Approaches for Mlware Detection (NSF)
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High-throughput Phenotyping on Electronic Health Records
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High-throughput Phenotyping on Electronic Health Records
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High-throughput Phenotyping on Electronic Health Records
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High-throughput Phenotyping on Electronic Health Records
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High-throughput Phenotyping on Electronic Health Records
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High-throughput Phenotyping on Electronic Health Records
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Base-calling algorithms for Next-generation DNA Sequencing Systems
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Algorithms for Haplotype Assembly from Next-Generation Sequencing Data (NSF)
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http://www.nsf.gov/awardsearch/showAward?AWD_ID=1320175 Inverse problems from cascades: Structure, causation and opinions (NSF)
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Inverse problems from cascades: Structure, causation and opinions (NSF)
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Inverse problems from cascades: Structure, causation and opinions (NSF)
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http://www.nsf.gov/awardsearch/showAward?AWD_ID=1320175 Inverse problems from cascades: Structure, causation and opinions (NSF)
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New Erasure Codes for Big Data Storage
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New Erasure Codes for Big Data Storage
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New Approaches to Robustness in High Dimensions (NSF)
Networks and Statistical Inference: New connections and algorithms (NSF)
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Base-calling algorithms for Next-generation DNA Sequencing Systems
Cancer Cocktail Optimization Using In-Vitro Testing Datasets
High-throughput Phenotyping on Electronic Health Records
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New Erasure Codes for Big Data Storage
High-throughput Phenotyping on Electronic Health Records
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Base-calling algorithms for Next-generation DNA Sequencing Systems
Cancer Cocktail Optimization Using In-Vitro Testing Datasets
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Networks and Statistical Inference: New connections and algorithms (NSF)
New Approaches to Robustness in High Dimensions (NSF)
New Erasure Codes for Big Data Storage
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Inverse problems from cascades: Structure, causation and opinions
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Inverse problems from cascades: Structure, causation and opinions (NSF)
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New Approaches to Robustness in High Dimensions (NSF)
Networks and Statistical Inference: New connections and algorithms (NSF)
Inverse problems from cascades: Structure, causation and opinions
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High-throughput Phenotyping on Electronic Health Records
http://www.sunlab.org/index.php/research/phenotyping/
Monotonic Retargeting: A Scalable Learning Framework for Determining Order
http://www.ideal.ece.utexas.edu/projects/mr.html
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High-throughput Phenotyping on Electronic Health Records
Monotonic Retargeting: A Scalable Learning Framework for Determining Order
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http://www.sunlab.org/index.php/research/phenotyping/
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http://www.sunlab.org/index.php/research/phenotyping/
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http://www.sunlab.org/index.php/research/phenotyping/
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http://www.sunlab.org/index.php/research/phenotyping/
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New Erasure Codes for Big Data Storage [Dimakis]
High-throughput Phenotyping on Electronic Health Records [Ghosh]
http://www.sunlab.org/index.php/research/phenotyping/
Monotonic Retargeting: A Scalable Learning Framework for Determining Order [Ghosh]
http://www.ideal.ece.utexas.edu/projects/mr.html
Base-calling algorithms for Next-generation DNA Sequencing Systems [Vikalo]
Cancer Cocktail Optimization Using In-Vitro Testing Datasets [Vishwanath]
to:
New Erasure Codes for Big Data Storage
High-throughput Phenotyping on Electronic Health Records
http://www.sunlab.org/index.php/research/phenotyping/
Monotonic Retargeting: A Scalable Learning Framework for Determining Order
http://www.ideal.ece.utexas.edu/projects/mr.html
Base-calling algorithms for Next-generation DNA Sequencing Systems
Cancer Cocktail Optimization Using In-Vitro Testing Datasets
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Examples of current research projects pertaining to Big Data Analytics include
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Examples of current research projects involving Big Data Analytics include
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http://www.sunlab.org/index.php/research/phenotyping/
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http://www.ideal.ece.utexas.edu/projects/mr.html
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Examples of current research projects pertaining to Big Data Analytics include
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Cancer Cocktail Optimization Using In-Vitro Testing Datasets [Vishwanath]
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Cancer Cocktail Optimization Using In-Vitro Testing Datasets [Vishwanath]
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Projects
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New erasure codes for big data storage
Dimakis
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New Erasure Codes for Big Data Storage [Dimakis]
High-throughput Phenotyping on Electronic Health Records [Ghosh]
Monotonic Retargeting: A Scalable Learning Framework for Determining Order [Ghosh]
Base-calling algorithms for Next-generation DNA Sequencing Systems [Vikalo]
Cancer Cocktail Optimization Using In-Vitro Testing Datasets [Vishwanath]
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New erasure codes for big data storage
Dimakis
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