2 edition of **Introduction to learning machines** found in the catalog.

Introduction to learning machines

Jack G. Sheppard

- 315 Want to read
- 10 Currently reading

Published
**1970**
by National Aeronautics and Space Administration; [for sale by the Clearinghouse for Federal Scientific and Technical Information, Springfield, Va.] in Washington
.

Written in English

- Perceptrons.,
- Machine learning.

**Edition Notes**

Statement | by Jack G. Sheppard. |

Series | NASA technical note, NASA TN D-5790 |

Classifications | |
---|---|

LC Classifications | TL521 .A3525 no. 5790, Q327 .A3525 no. 5790 |

The Physical Object | |

Pagination | iv, 23 p. |

Number of Pages | 23 |

ID Numbers | |

Open Library | OL5025395M |

LC Control Number | 73607247 |

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