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Official Telekinesis SDK for working with Telekinesis APIs.

Project description

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Telekinesis Agentic Skill Library

The Telekinesis Agentic Skill Library is the first large-scale Python library for building agentic robotics, computer vision, and Physical AI systems. It provides:

  • Skills: a broad set of AI algorithms for perception, motion planning, and control.
  • Physical AI Agents: LLM/VLM agents for task planning across industrial, mobile, and humanoid robots.

The library is intended for robotics, computer vision, and research teams that want to:

  • Speed up development by integrating production-grade robotics, computer vision, and AI algorithms
  • Add intelligence to robots with LLM/VLM-driven task planning tied to real perception and control systems
  • Iterate quickly on Physical AI systems using a single, consistent Python library

Learn more about the Telekinesis Agentic Skill Library in the About Telekinesis.

Join our Discord community to add your own skills and be part of the Physical AI revolution!

Release Model

The Telekinesis Agentic Skill Library is currently in active development (pre-1.0).
Modules are introduced incrementally, and the API may evolve between minor releases. To ensure compatibility and access to the latest capabilities, always install or upgrade to the most recent version of the package.

Currently available modules:

  • cornea
  • retina
  • pupil
  • vitreous

Installation

Core SDK

  1. Create an isolated environment so that there is no dependency conflicts. We recommend installing Miniconda environment by following instructions from here.

  2. Create a new conda environment called telekinesis:

    conda create -n telekinesis python=3.11
    
  3. Activate the environment:

    conda activate telekinesis
    
  4. Install the core SDK using pip:

    We currently support Python versions - 3.11, 3.12. Ensure your environment is in the specified Python version.

    pip install telekinesis-ai
    

    Note: The Python module is called telekinesis, while the package published on PyPI is telekinesis-ai.

medulla

medulla is a module in the Telekinesis SDK for connecting to cameras and hardware devices. You can install it as part of telekinesis-ai with:

pip install telekinesis-ai[medulla]

In order to install vendor specific dependencies, please follow the official documentation on https://docs.telekinesis.ai/medulla/overview.html, e.g. for using IDS cameras with medulla:

pip install telekinesis-ai[medulla-ids]

You can find the list of supported vendors in the overview section under supported cameras.

See the official medulla documentation for more details about the installation.

IDS cameras: Installing the ids extras (pip install telekinesis-ai[medulla-ids]) fetches ids_peak, ids_peak_ipl, and ids_peak_icv directly from IDS Imaging Development Systems GmbH's own PyPI distribution. By installing these packages, you become the licensee under the IDS Software Suite License Terms and are bound by its conditions.

Getting Started

Telekinesis SDK requires a free API key to authenticate requests.

Create one at platform.telekinesis.ai. See the Quickstart for more details on the generation of API key.

Continue to Example section to quickly validate the installation.

Example

The following example assumes the API key has been generated and has been set as TELEKINESIS_API_KEY environment variable.

Run a sample python code to quickly test your installation.

This example will fail if TELEKINESIS_API_KEY is not set correctly.

  1. Create a Python file named telekinesis_ai_example.py in a directory of your choice in your system, and copy paste the below:

    import numpy as np
    from telekinesis import vitreous
    
    # Create a cylinder mesh
    cylinder_mesh = vitreous.create_cylinder_mesh(
    		radius=0.01,
    		height=0.02,
    		radial_resolution=20,
    		height_resolution=4,
    		retain_base=False,
    		vertex_tolerance=1e-6,
    		transformation_matrix=np.eye(4, dtype=np.float32),
    		compute_vertex_normals=True,
    	)
    
    # Convert it to point cloud
    point_cloud = vitreous.convert_mesh_to_point_cloud(
    		mesh=cylinder_mesh,
    		num_points=10000,
    		sampling_method="poisson_disk",
    		initial_sampling_factor=5,
    		initial_point_cloud=None,
    		use_triangle_normal=False,
    	)
    print(point_cloud.positions)
    # Use point_cloud in downstream processing or visualize the point cloud with any tool
    
  2. On a terminal, navigate to the directory where the above file named telekinesis_ai_example.py has been created, run the below command:

    python telekinesis_ai_example.py
    

    Expected output: Some logs and random valued point cloud positions in the below format is output

    ...
    ...
    [[-0.00835031 -0.00536731 -0.00429686]
     [ 0.00854885  0.00497764  0.00044501]
     [ 0.00838172  0.00530565  0.00249433]
     ...
     [-0.00280485  0.00955575  0.00949276]
     [-0.00743726 -0.00653076 -0.00238814]
     [ 0.00023231 -0.00996321  0.00887559]]
    

You are now set up to build with Telekinesis.

The recommended way to explore Telekinesis Agentic Skill Library today is via the Telekinesis Examples repository, which contains fully runnable workflows built on top of the SDK.

Resources

Support

For issues and questions:

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