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Built for the Claude Code community with Claude Code by @mertduzgun

Independent project, not affiliated with Anthropic

Aman Amith Shastry Scientific Computation Mcp

aman-amith-shastry/scientific_computation_mcp
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Summary

A NumPy-backed server that gives Claude linear algebra and vector calculus operations through a tensor store. You create named matrices and vectors, then run operations like matrix multiplication, QR decomposition, SVD, eigenvalue computation, and basis transformations. The vector calculus tools compute gradients, curls, divergence, and directional derivatives from string expressions, plus there are plotting functions for 2D/3D visualization of vector fields and scalar functions. Good fit when you need symbolic and numerical computation without leaving the chat, especially for educational workflows or quick prototyping of linear transformations. Runs through Smithery's hosted infrastructure, so setup is just dropping config into Claude Desktop.

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Scientific Computation MCP

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Installation Guide

Claude Desktop

Open Claude Desktop's configuration file (claude_desktop_config.json) and add the following:

  • Mac/Linux:
{
  "mcpServers": {
    "numpy_mcp": {
      "command": "npx",
      "args": [
        "-y",
        "@smithery/cli@latest",
        "run",
        "@Aman-Amith-Shastry/scientific_computation_mcp",
        "--key",
        "<YOUR_SMITHERY_API_KEY>"
      ]
    }
  }
}
  • Windows:
{
  "mcpServers": {
    "numpy_mcp": {
      "command": "cmd",
      "args": [
        "/c",
        "npx",
        "-y",
        "@smithery/cli@latest",
        "run",
        "@Aman-Amith-Shastry/scientific_computation_mcp",
        "--key",
        "<YOUR_SMITHERY_API_KEY>"
      ]
    }
  }
}

Or alternatively, run the following command:

npx -y @smithery/cli@latest install @Aman-Amith-Shastry/scientific_computation_mcp --client claude --key <YOUR_SMITHERY_API_KEY>

Restart Claude to load the server properly

Cursor

If you prefer to access the server through Cursor instead, then run the following command:

npx -y @smithery/cli@latest install @Aman-Amith-Shastry/scientific_computation_mcp --client cursor --key <YOUR_SMITHERY_API_KEY>

Components of the Server

Tools

Tensor storage

  • create_tensor: Creates a new tensor based on a given name, shape, and values, and adds it to the tensor store. For the purposes of this server, tensors are vectors and matrices.
  • view_tensor: Display the contents of a tensor from the store .
  • delete_tensor: Deletes a tensor based on its name in the tensor store.

Linear Algebra

  • add_matrices: Adds two matrices with the provided names, if compatible.
  • subtract_matrices: Subtracts two matrices with the provided names, if compatible.
  • multiply_matrices: Multiplies two matrices with the provided names, if compatible.
  • scale_matrix: Scales a matrix of the provided name by a certain factor, in-place by default.
  • matrix_inverse: Computes the inverse of the matrix with the provided name.
  • transpose: Computes the transpose of the inverse of the matrix of the provided name.
  • determinant: Computes the determinant of the matrix of the provided name.
  • rank: Computes the rank (number of pivots) of the matrix of the provided name.
  • compute_eigen: Calculates the eigenvectors and eigenvalues of the matrix of the provided name.
  • qr_decompose: Computes the QR factorization of the matrix of the provided name. The columns of Q are an orthonormal basis for the image of the matrix, and R is upper triangular.
  • svd_decompose: Computes the Singular Value Decomposition of the matrix of the provided name.
  • find_orthonormal_basis: Finds an orthonormal basis for the matrix of the provided name. The vectors returned are all pair-wise orthogonal and are of unit length.
  • change_basis: Computes the matrix of the provided name in the new basis.

Vector Calculus

  • vector_project: Projects a vector in the tensor store to the specified vector in the same vector space
  • vector_dot_product: Computes the dot product of two vectors in the tensor stores based on their provided names.
  • vector_cross_product: Computes the cross product of two vectors in the tensor stores based on their provided names.
  • gradient: Computes the gradient of a multivariable function based on the input function. Example call: gradient("x^2 + 2xyz + zy^3"). Do NOT include the function name (like f(x, y, z) = ...`).
  • curl: Computes the curl of a vector field based on the input vector field. The input string must be formatted as a python list. Example call: curl("[3xy, 2z^4, 2y]"").
  • divergenceComputes the divergence of a vector field based on the input vector field. The input string must be formatted as a python list. Example call: divergence("[3xy, 2z^4, 2y]"").
  • laplacianComputes the laplacian of a scalar function (as the divergence of the gradient) or a vector field (where a component-wise laplacian is computed). If a scalar function is the input, it must be input in the same format as in the gradient tool. If the input is a vector field, it must be input in the same manner as the curl/divergence tools.
  • directional_deriv: Computes the directional derivative of a function in a given direction u By default, the tool normalizes u before computing the directional derivative, as specified by the unit parameter.

Visualization

  • plot_vector_field: Plots a vector field (specified in the same format as in the curl/divergence functions). Currently, only 3d vector fields are supported. A 2d png perspective image of the vector field is returned. By default, the bounds of the graph are from -1 to 1 on each axis.
  • plot_function: Plots a function in 2d or 3d (based on the input variables), specified in the same format as in the gradient tool. Only the variables x and y can be used.
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UpdatedSep 12, 2025
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