Thursday, August 6, 2020

Develop Machine Learning Programs In Python











About:

Machine Learning is the most growing field in the domain of Computer Science and Engineering. It is involving new algorithms to solve the new problems. It is includes several subdivisions like data preparation and exploration,data representation and transformation,data visualization and presentation and predictive analytics.

Essential Skills We Have:

  1. Skills in Python

    a) Numpy

    b) Pandas

    c) Matplotlib

    d) Seaborn

    e) Scikit-learn

    f) PyTorch
  2. Data Pre-Processing:

    a) Dealing with missing data

    b) Data imputation

    c) Handling categorical data

    d) Encoding class labels for classification problems

    e) Techniques of feature transformation

  3. Data Visualization
  4. Machine Learning
  • Logistic Regression Classifier
  • Linear Regression
  • K-nearest neighbor (KNN)
  • Decision Tree Classifier
  • Random Forest Classifier
  • Support Vector Machine Classifier
  • Neural Networks


  • We analyse the problem and apply data pre-processing to make the data usable.
  • We apply the data visualization techniques to get insights of data.
  • We apply machine learning models to predict the future value/data.


**Contact Us If you need Quality of work*

**Contact Us Before your Placing the Order**

Reviews


Seller's Response:

This seller is knowledgeable and willing to go the extra mile. They accommodated me through every step, and went above and beyond my requests. I had a complex problem. I needed data grab and processing. In fact, I asked them to build upon a code I had started so they had to work behind me. It was not a problem for them and they delivered a great product.

Seller's Response:

Thank you so much sir. It is our duty to provide great work

Seller's Response:

Really great communication and quality work, all on time!

Seller's Response:

Thank you, will keep on providing our great services.

Seller's Response:

Amazing! Great delivery great customer care




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