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Edureka's Machine Learning Certification Training using Python in Toronto is designed to make you grab the concepts of Machine Learning. This Machine Learning Certification in Toronto will provide a deep understanding of Machine Learning and its mechanism. As a Data Scientist, you will be learning the importance of Machine Learning and its implementation in the python programming language.
Furthermore, in this Machine Learning with Python Training in Toronto, you will be taught Reinforcement Learning, an essential aspect of Artificial Intelligence. You will be able to automate real-life scenarios using Machine Learning Algorithms. Towards the end of this Machine Learning Training, we will be discussing various practical use cases of Machine Learning with Python programming language to enhance your learning experience. Edureka offers the best Machine Learning Training in Toronto for those who want to be the best in Python. Enroll now with Edureka's online Machine Learning Certification in Toronto, Canada, to train industrial experts.
Data Science is a set of techniques that enables computers to learn the desired behavior from data without explicitly being programmed. It employs techniques and theories drawn from many fields within mathematics, statistics, information science, and computer science.
This Machine Learning Certification training in Toronto exposes you to different classes of machine learning algorithms like supervised, unsupervised, and reinforcement algorithms. This ML Training in Toronto imparts you the necessary skills like data pre-processing, dimensional reduction, model evaluation and also exposes you to different machine learning algorithms like regression, clustering, decision trees, random forest, Naive Bayes, and Q-Learning.
Upon completion of this Machine Learning using Python Training in Toronto, you should be able to:
Edureka's Python Machine Learning Training in Toronto is a good fit for the below professionals:
The Python and Machine Learning training prerequisites in Toronto include development experience with Python. Fundamentals of Data Analysis practiced over any data analysis tools like SAS/R will be a plus. However, Python would be more advantageous. You will be provided with complimentary "Python Statistics for Data Science Course" as a self-paced course once you enroll for the Machine Learning Training in Toronto.
Yes, this Machine Learning Training in Toronto is well suited for freshers and experienced professionals. It covers all the machine learning algorithms and concepts from scratch.
The Cost of Machine Learning Training in Toronto is $521
According to Payscale, The average salary of a Machine Learning engineer is C$85299 per year.
The top companies hiring machine learning engineers are Pinterest, Ada Inc., Paytm Labs, etc. You can get the opportunity to work in these companies if you have earned Machine Learning Certification in Toronto. These top companies offer high career development, and growth opportunities are also comparatively high.
Major Industries which use machine learning are Media, Real Estate, telecommunications, and hospitality, which are also essential contributors to the GDP generation of Toronto. Toronto maintains the reputation of being one of the leading wholesale and distribution points for the industrial sector in the Province of Ontario.
Machine Learning Certification
Edureka’s Data Scientist with proficiency in Python Certificate Holders work at 1000s of companies like
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This Machine Learning online course comprises of 34 case studies that will enrich your learning experience. In addition, we also have 3 Projects that will enhance your implementation skills. Below are few case studies which are part of this Machine Learning course online:
Python Machine Learning Training Case Study 1: Maple Leaves Ltd is a start-up company which makes herbs from different types of plants and its leaves. Currently the system they use to classify the trees which they import in a batch is quite manual. A laborer from his experience decides the leaf type and subtype of plant family. They have asked us to automate this process and remove any manual intervention from this process.
You have to classify the plant leaves by various classifiers from different metrics of the leaves and to choose the best classifier for future reference.
Machine Learning Online Training Case Study 2: BookRent is the largest online and offline book rental chain in India. Company charges a fixed fee per month plus rental per book. So, company makes more money when user rent more books.
You as an ML expert and must model recommendation engine so that user gets recommendation of books based on behavior of similar users. This will ensure that users are renting books based on their individual taste. Company is still unprofitable and is looking to improve both revenue and profit. Compare the Error using two approaches – User Based Vs Item Based
Machine Learning Online Training Case Study 3: Handle missing values and fit a decision tree and compare its accuracy with random forest classifier.
Predict the survival of a horse based on various observed medical conditions. Load the data from ‘horses.csv’ and observe whether it contains missing values. Replace the missing values by the most frequent value in each column. Fit a decision tree classifier and observe the accuracy. Fit a random forest classifier and observe the accuracy.
Machine Learning Case Study 4: Principal component analysis using scikit learn.
Load the digits dataset from sklearn and write a helper function to plot the image. Fit a logistic regression model and observe the accuracy. Using scikit learn perform a PCA transformation such that the transformed dataset can explain 95% of the variance in the original dataset. Compare it with a model and also comment on the accuracy. Compute the confusion matrix and count the number of instances that has gone wrong. For each of the wrong sample, plot the digit along with predicted and original label.
Machine Learning Training Case Study 5: Read the datafile “letterCG.data” and set all the numerical attributes as features. Split the data in to train and test sets.
Fit a sequence of AdaBoostClassifier with varying number of weak learners ranging from 1 to 16, keeping the max_depth as 1. Plot the accuracy on test set against the number of weak learners, using decision tree classifier as the base classifier.
Industry: Social Media Problem Statement: You as ML expert have to do analysis and modeling to predict the number of shares of an article given the input parameters.
Actions to be performed: Load the corresponding dataset. Perform data wrangling, visualization of the data and detect the outliers, if any. Use the plotly library in Python to draw useful insights out of data. Perform regression modeling on the dataset as well as decision tree regressor to achieve your goal. Also, use scaling processes, PCA along with boosting techniques to optimize your model to the fullest.
Machine Learning Certification Project #2:
Industry: FMCG Problem Statement: You as an ML expert have to cluster the countries based on various sales data provided to you across years.
Actions to be performed: You have to apply an unsupervised learning technique like K means or Hierarchical clustering so as to get the final solution. But before that, you have to bring the exports (in tons) of all countries down to the same scale across years. Plus, as this solution needs to be repeatable you will have to do PCA so as to get the principal components which explain the max variance.
According to Payscale, the average salary of a Professionals with Machine Learning Certification is $113,358 in a year.
According to Payscale, the average salary for a Machine Learning Engineer is ₹700,699 in India.
You can refer to the below books while taking our course:
A Programmer's Guide to Data Mining by Ron Zacharski.
An Introduction to Statistical Learning With Applications in R by Gareth James Daniela Witten, Trevor Hastie, and Robert Tibshirani.
Deep Learning by Ian Goodfellow, Yoshua Bengio, and Aaron Courville.
Deep Learning with Python by Francois Chollet.
The salary range for Machine Learning Engineer in various countries according to a salary survey by Payscale, Glassdoor, and talent.com:
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