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Algorithmic Complexity and Plant Genetics

Titel: Algorithmic Complexity and Plant Genetics

Forschungsarbeit , 2014 , 5 Seiten

Autor:in: Professor Bradley Tice (Autor:in)

Biologie - Genetik / Gentechnologie
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Zusammenfassung Leseprobe Details

A paper presenting an algorithmic compression program for compressing linear sequential data associated with plant genetic polymer chains such as DNA and RNA.

Leseprobe


Table of Contents

1. Introduction

2. Compression Algorithm

3. A Compression Algorithm: Some Examples

4. Big Data

5. Plant Genetics

6. Algorithmic Compression and Big Data

7. Conclusion

8. Summary

Research Objectives and Key Topics

This paper presents a specialized compression algorithm designed to handle sequential strings of plant DNA and RNA, aiming to optimize the storage and transmission of large-scale genetic data within the context of biological research and "Big Data" challenges.

  • Theoretical and practical application of data compression for plant genetics.
  • Algorithmic transformation of analog plant genetic code into efficient digital formats.
  • Management of large genomic data pools in biological sciences.
  • Advancements in computational biology for agriculture and seed bank research.
  • Future integration of compression systems in digital network architectures.

Excerpt from the Publication

A Compression Algorithm: Some Examples

If a sequential string of binary characters represent a digital representation of a plants genetic code, a theoretical model of that code, representing a translation from the plants original analog genetic code sequence; an alpha symbol system, can be ‘compressed’ for storage and transmission purposes within a digital and computer communications network.

Example A: The following binary sequential string is a composite of a random sequential binary string.

Example A: [1111100010001110001110000010]

If the linear sequential string of [1] and [0] of Example A is separated into sequentially common sub-groups the following will result:

Sub-group of Example A: [11111] + [000]+[1]+[000]+[111]+[000]+[111]+[00000]+[1]+[0]

The non-random features of the sub-groups are those that have a ‘pattern’ to the sequence of [1] or [0] characters such as these sub-groups:

Non-random sub-groups: [000]+[111]+[000]+[111]

Each is a three character sub-grouping of either [1] or [0] and can be compressed as 0101 and notated as a sub-group of the initial character, either a [1] or a [0], of each sub-group composed of the same 3 characters total.

Summary of Chapters

Introduction: Provides an overview of the compression algorithm developed in 1998, emphasizing its accuracy in handling plant genetic sequences for storage and transmission.

Compression Algorithm: Explains the technical process of subgrouping sequential genetic characters to achieve partial or complete compression without loss of information.

A Compression Algorithm: Some Examples: Illustrates the algorithm's application through binary string examples, demonstrating how patterned sub-groups can be effectively reduced in size.

Big Data: Discusses the necessity of interpreting vast amounts of plant genetic data within the biological sciences to manage large-scale storage challenges.

Plant Genetics: Highlights the agricultural significance of genomic sequencing for food stock improvement and the resulting need for efficient data management tools.

Algorithmic Compression and Big Data: Details the integration of the compression system with modern computational biology to address hardware and software limitations in data processing.

Conclusion: Summarizes the effectiveness of the compression program for both theoretical modeling and practical agricultural applications.

Summary: Reviews the project's impact and the ongoing efforts to refine these techniques for future information systems in scientific research.

Keywords

Algorithmic Compression, Plant Genetics, DNA, RNA, Big Data, Computational Biology, Genetic Code, Sequential Strings, Data Storage, Data Transmission, Bioinformatics, Genomic Sequencing, Food Stock, Digital Format, Information Processing.

Frequently Asked Questions

What is the primary focus of this research?

The paper focuses on an algorithmic compression program designed specifically to process and store sequential strings of plant DNA and RNA efficiently.

What are the core thematic areas?

The core themes include computational biology, genetic data management, Big Data, and the intersection of algorithmic theory with agricultural plant science.

What is the research goal?

The goal is to provide a highly accurate and precise method for compressing large volumes of genomic data to facilitate easier storage and transmission in digital networks.

What scientific methodology is utilized?

The research employs a mathematical algorithm that breaks down sequential binary strings into sub-groups based on patterns to achieve data reduction without losing information.

What does the main body of the work cover?

It covers the theoretical basis of the algorithm, provides worked binary examples, addresses the broader implications for Big Data, and discusses applications in plant genome sequencing.

Which keywords best characterize this work?

Key terms include Algorithmic Compression, Plant Genetics, Big Data, Computational Biology, and Bioinformatics.

How does the algorithm handle non-random vs. random sequences?

The algorithm identifies patterned "non-random" sub-groups to compress them logically, while also providing a notation method for random sequences to ensure overall data reduction.

Why is this technology relevant for agriculture?

It is relevant because the sequencing of high-value crops requires massive data storage; this compression technology makes managing that data more practical and cost-effective.

What future developments does the author mention?

The author is currently working on a "design test" system at Advanced Human Design to refine these compression features for use in more advanced computer information systems.

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Details

Titel
Algorithmic Complexity and Plant Genetics
Autor
Professor Bradley Tice (Autor:in)
Erscheinungsjahr
2014
Seiten
5
Katalognummer
V268096
ISBN (eBook)
9783656591474
ISBN (Buch)
9783656591467
Sprache
Englisch
Schlagworte
algorithmic complexity plant genetics
Produktsicherheit
GRIN Publishing GmbH
Arbeit zitieren
Professor Bradley Tice (Autor:in), 2014, Algorithmic Complexity and Plant Genetics, München, GRIN Verlag, https://www.grin.com/document/268096
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