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Using near-infrared spectroscopy (NIRS) and machine learning to determine oleic acid content from peanut raw grains

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Estimating peanut fatty acid using NIRS and machine learning

Overview

This project is a part of the Avisa Project at ICRISAT.

-- Project Status: [Active]

Objective

The purpose of this project is estimate peanut grain oleic acid content using near-infrared spectroscopy and machine learning/deep learning. Calibration models have been developed will be deployed as rapid phenotyping tools for peanut breeders.

Partner

Methods Used

  • Inferential Statistics
  • Machine Learning
  • Deep learning
  • Data augmentation
  • Data Visualization
  • Predictive Modeling
  • etc.

Technologies

  • Python
  • Pandas, jupyter, Numpy
  • Scipy, Matplotlib
  • Scikit-Learn
  • Keras
  • Tensorflow
  • etc.

Project Description

"AI pipeline"

  • Measure oleic acid content on 300 samples of peanut
  • Scan the same samples to record spectroscopic data covering more than 1000
  • Augment data by creating some distortions
  • Preprocess the data (filtering, derivating, smoothing, etc)
  • Develop ML/DL model architecture
  • Train the model
  • Make predictions
  • Deploy the model

Needs of this project

  • frontend development for deployment
  • data exploration/descriptive statistics
  • data processing/cleaning
  • statistical modeling
  • writeup/reporting
  • etc. (be as specific as possible)

Getting Started

  1. Clone this repo (for help see this tutorial).

  2. Raw Data is being kept here within this repo.

    If using offline data mention that and how they may obtain the data from the froup)

  3. Data processing/transformation scripts are being kept [here](Repo folder containing data processing scripts/notebooks)

  4. etc...

If your project is well underway and setup is fairly complicated (ie. requires installation of many packages) create another "setup.md" file and link to it here

  1. Follow setup [instructions](Link to file)

Featured Notebooks/Analysis/Deliverables

Contributing Members

Maintener: Adama Ndour

Others

Name Slack Handle
Adama Ndour @adamavip
Krithika Anbazhagan @krithika

Contact

Reach out me

email

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Using near-infrared spectroscopy (NIRS) and machine learning to determine oleic acid content from peanut raw grains

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