Author: Haroon Khalil
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Unsupervised machine learning algorithm
Unsupervised learning is a machine learning model that finds the hint in the unlabeled data. So, in the previous example to identify what the circle is, what the triangle is, and what the square is, it looks at the dimensions of the figure or preferably it looks together at the number of corners. Several models…
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Supervised machine learning algorithm
Supervised learning is a method used to enable machines to classify/predict object problems or situations based on the data fed to the machine. Example Suppose we take data of circle, triangle and square labels in the labeled data. We have a training model and we know the answer. It is very important in supervised learning…
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Machine learning methods
In machine learning agriculture, it learns through agricultural processes to derive methods. In machine learning we have those types of datasets which depend on examples. An individual example is also used in examples of datasets. Characteristics of these datasets are known as variables or helpers. These features can also be described as numerical, binary and…
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Development of different areas through machine learning
Machine learning is developing with technologies of big data and other fast computer devices. In the field of agriculture, machine learning is creating some new opportunities to understand the different types of data processes related to environmental functions. Machine learning can be converted to a scientific formulation which will give the capability to learn without…
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Development of machine learning
Machine learning technology is growing day by day in different sectors for analysis and prediction with the help of training data. So, training data are a key factor for machine learning. It tells us about the use of AI, so it is also used in agriculture. Before applying any data for prediction through machine learning,…
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Requirement for agriculture
Data For any analysis, data are important. Data analysis, machine learning and AI involve one common and important feature called “data”. If we do not have data, then we cannot train a model. Big enterprises spend money in big quantities to collect the data. Data can be in any form such as value, text, picture,…
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Technology in agriculture
The agricultural industry has a vast role in technology. The innovation of technology makes agriculture modernized. Various machinery and tools have helped farmers to play a vital role in developing the economy of a country (Figures 5.7 and 5.8).
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Knowledge of machine learning
Machine learning enables the system with the capability to automatically explore, enhance and improve according to different situations without being programmed. Machine learning is centered on the development of intelligent computer programs that can process the data and utilize it further. Machine learning is powered by statistics, calculus, linear algebra and probability statistics. Calculus tells…
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Fundamentals of farming seasons for better yields
A fundamental for seasons of farming is 1 year. Farming season has the following fundamentals for better yields of crop, likewise temperature and moisture as conditions should be suitable for better yield of the crop. Under farming season, appropriate climate change especially helps farmers for farming plants and grow crops. Raining seasons depend on the temperature…
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Types and branches of agriculture
Some general types of agriculture around the world are shown in Figure 5.5. Following are the branches of agriculture: In agriculture, the most important is the yield of the crops. For a better yield of crops, farmers are using a yield prediction. Yield prediction is the most important and popular topic in precision agriculture. It is…