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Statistician Resume

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Baltimore, MD

SUMMARY:

  • Certificate in Predictive Analytics and Ph.D.in Statistics, proven expertise in building and validating predictive models.
  • Strong knowledge of machine learning techniques (e.g. clustering, classification, regression, neural networks, multivariate statistics etc.), with the ability to generate insight from large complex data.
  • 5 years of experience in variety of programming languages (including SAS/ R / SPSS / SQL). Background in computational statistics, mathematical modelling / machine learning (firm understanding of underlying mathematics and statistics).
  • Building predictive models and translating specifications to real - world decisions using more than 50K observations and machine learning tools (Rapid Miner, R, Tableau and SAS Enterprise Miner software).
  • Purchase probability using decision tree model: produce English rules to determine likelihood of purchase.
  • Risk prediction of credit cards holder using logistic regression model: produce odds of default payment.
  • Credit risk prediction using neural network: predict the “DO NOT LEND” category.
  • Predictive model for churn analysis using neural network: capture percent of churners and design effective plan for retention.
  • Customer profiling in geographical neighborhood using stochastic gradient boosting model: customer segmentation.
  • Classification of women’s choice of contraception using neural network and random forest models: high degree of accuracy achieved with random forest.
  • World development report text mining: frequent term extraction, visualization, clustering and topic modeling.
  • KPI Dashboard using Tableau: determine success rate by team and region, identify geographic expansion to boost revenue.
  • Frequent pattern mining using W-FP Growth modeling: deliver association rules with high confidence and high support.
  • Prediction of customer spending using linear regression model: score prospect customers, identify dominant attribute to guide high-end advertisement.

TECHNICAL SKILLS:

Software Skills: SQL, SAS/BASE, SAS/MACRO, SAS/SQL, SAS/EG, SAS/EM, SAS Forecast Studio, R, SPSS, Mplus, Iveware, Lisrel, RapidMiner, Tableau, Hadoop, MapReduce, Minitab, Excel, MS Access, Web design, MS Office Suites.

EXPERIENCE:

Statistician

Confidential, Baltimore, MD

Responsibilities:

  • Extract using SQL, transform and load large complex call center data from relational database Server.
  • Monitor outliers, evaluate trend.
  • Filter, analyze, interpret and write reports.
  • Merge multiple related data sets into consolidated data marts for analytical modeling, scoring, and summarization
  • Analyze data using SAS programming, data manipulation, management, and reporting.
  • Analyze data using R programming.
  • Provide statistical support and interact with research staff, at the center.
  • Collaborate with faculty for peer-reviewed publications.
  • Direct the planning, design, production and management of data as part of PCMH model.
  • Collaborate with database manager and other project staff.
  • Meet regularly with informatics team to monitor and evaluate the data collection, data quality and recommend improvement.
  • Maintain strong commitment to accuracy, detail, confidentiality and timeliness of completion.
  • Introduction to R
  • Statistics and R programming for Researchers

Statistical Consultant

Confidential

Responsibilities:

  • Advise clients on data collection. Perform data extraction, data cleaning, data transformation, exploratory analysis, data modeling, model selection, and residual diagnostics analysis with different data structure: univariate, multivariate, cross-sectional, repeated measures; with different variable type: discrete, continuous, and categorical.
  • Apply data mining techniques: Decision Tree, Random forest, Association analysis, Neural Network, Discriminant Analysis, Text Mining, and Clustering.
  • Build statistical models: Linear, Generalized Linear, Mixed effect, Hierarchical Linear, Non-linear, Latent Growth, Categorical, Complex survey design.
  • Report results with tables, graphs, and layman’s interpretation.

Assistant Professor of Statistics .

Confidential, Rochester, NY

Responsibilities:

  • Teach basic and advanced statistical topics; online course management and Instructional tools.
  • Teach micro-array data analysis with R and Bioconductor packages to students with major in Bioinformatics and Biology.
  • Mentor graduate and undergraduate students for thesis and research.
  • Collaborate with other faculty for peer-reviewed publication.

Lecturer

Confidential, Ann Arbor, MI

Responsibilities:

  • Teach and coordinate multiple sections of undergraduate statistics large class course
  • Mentor and supervise graduate student teaching assistants.
  • Write and manage a course website

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