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This project is no longer available for 2021 internships

Curious about other projects we are offering? Take a look at our Ideas List

Find out about the HPCC Systems Summer Internship Program.

Project Description

We want to evaluate the use of Causality algorithms as described in Causal Inference in Statistics by Judea Pearl et al.

Student will collaboratively identify appropriate datasets for testing, and will produce tested production code implementing the selected algorithms.

Completion of this project involves:

  • Survey latest techniques and research for Causal Modeling and Causal Inferencing

  • Develop tools for Causal Modeling  including:
    1. Statistical Independence and Conditional Independence Tests
    2. Causal Modeling representation
    3. Model Identifiability Detection
    4. Interventional Calculus solver
    5. Counterfactual Calculus solver
  • Causal Modeling User Interface
    1. Identify multiple datasets for real-world analysis
    2. Conduct analysis of selected datasets and compare with known ground truth where available
  • Publish paper(s) on the research
  • Test and document code for general release

By the mid term review we would expect you to have:

  • TBC
Mentor

Roger Dev
Contact Details

Backup Mentor: TBD
Contact Details 

Skills needed
  • Proficiency with probability and statistics

  • Understanding of the basic concepts and techniques of Causality and Causal Inference

  • Experience with Machine Learning algorithms

  • Knowledge of ECL. Training manuals and online courses are available on the HPCC Systems website.
  • Knowledge of distributed computing techniques
  • Familiar with HPCC Systems Machine Learning Library
  • Familiar with Data Pre-Processing
  • Familiar with Github
Deliverables
  • Midterm

    • TBC

    End of project

    • TBC
Other resources

 

We want to evaluate the use of Causality algorithms as described in “Causal Inference in Statistics” by Judea Pearl et al.

-        Survey latest techniques and research for Causal Modeling and Causal Inferencing

-        Develop tools for Causal Modeling  including:

o   Statistical Independence and Conditional Independence Tests

o   Causal Modeling representation

o   Model Identifiability Detection

o   Interventional Calculus solver

o   Counterfactual Calculus solver

o   Causal Modeling User Interface

-        Identify multiple datasets for real-world analysis

-        Conduct analysis of selected datasets and compare with known ground truth where available

-        Publish paper(s) on the research

-        Test and document code for general release

 

The successful applicants will demonstrate:

-        Proficiency with probability and statistics

-        Understanding of the basic concepts and techniques of Causality and Causal Inference

-        Experience with Machine Learning algorithms

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