Quick Context: Steven Holtzen: Modular Exact Inference for Discrete Probabilistic Programs In Fall 2020 and Spring 2021, this was MIT's 18.337J/6.338J: Parallel Computing and Scientific Machine Learning course.

Compiling Probabilistic Programs With Daphne 27665 -

Steven Holtzen: Modular Exact Inference for Discrete Probabilistic Programs In Fall 2020 and Spring 2021, this was MIT's 18.337J/6.338J: Parallel Computing and Scientific Machine Learning course.

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  • Steven Holtzen: Modular Exact Inference for Discrete Probabilistic Programs
  • In Fall 2020 and Spring 2021, this was MIT's 18.337J/6.338J: Parallel Computing and Scientific Machine Learning course.

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Probabilistic Call By Push Value
Steven Holtzen: Modular Exact Inference for Discrete Probabilistic Programs
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MIA: Daniel Huang, Compiling probabilistic programs; Daniel King, What is a compiler?

MIA: Daniel Huang, Compiling probabilistic programs; Daniel King, What is a compiler?

Read more details and related context about MIA: Daniel Huang, Compiling probabilistic programs; Daniel King, What is a compiler?.

Ep. 10 - Learning Probabilistic Models with Daphne Koller

Ep. 10 - Learning Probabilistic Models with Daphne Koller

Read more details and related context about Ep. 10 - Learning Probabilistic Models with Daphne Koller.

Inference Compilation and Universal Probabilistic Programming

Inference Compilation and Universal Probabilistic Programming

Read more details and related context about Inference Compilation and Universal Probabilistic Programming.

From Optimization to Probabilistic Programming

From Optimization to Probabilistic Programming

In Fall 2020 and Spring 2021, this was MIT's 18.337J/6.338J: Parallel Computing and Scientific Machine Learning course.

Tutorial: Probabilistic Programming

Tutorial: Probabilistic Programming

Read more details and related context about Tutorial: Probabilistic Programming.

Inference Compilation and Universal Probabilistic Programming

Inference Compilation and Universal Probabilistic Programming

Read more details and related context about Inference Compilation and Universal Probabilistic Programming.

Modeling human intelligence with Probabilistic Programs and Program Induction

Modeling human intelligence with Probabilistic Programs and Program Induction

The Origins of Common Sense: Modeling human intelligence with

Typed functional probabilistic programming: ready for practical use?

Typed functional probabilistic programming: ready for practical use?

Read more details and related context about Typed functional probabilistic programming: ready for practical use?.

Probabilistic Call By Push Value

Probabilistic Call By Push Value

Christine Tasson, Université Paris Diderot Compositionality.

Steven Holtzen: Modular Exact Inference for Discrete Probabilistic Programs

Steven Holtzen: Modular Exact Inference for Discrete Probabilistic Programs

Steven Holtzen: Modular Exact Inference for Discrete Probabilistic Programs