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Real World Auto Machine Learning Bootcamp: Build 14 Projects

Solve Data Science Problems Using Automated -ML, Learn To Use Eval ML, Pycaret, Auto Keras, Auto SK Learn, H20 Auto ML

4.86 / 5.0
714 students9 hours 44 minutes

Created by Pianalytix ., offered on Udemy

bestcourses score™

Student feedback

5.2/10

To make sure that we score courses properly, we pay a lot of attention to the reviews students leave on courses and how many students are taking a course in the first place. This course has a total of 714 students which left 21 reviews at an average rating of 4.86, which is average.

Course length

9/10

We analyze course length to see if courses cover all important aspects of a topic, taking into account how long the course is compared to the category average. This course has a length of 9 hours 44 minutes, which is pretty short. This might not be a bad thing, but we've found that longer courses are often more detailed & comprehensive. The average course length for this entire category is 7 hours 54 minutes.

Overall score

6.1/10

This course currently has a bestcourses score of 6.1/10, which makes it an average course. Overall, there are probably better courses available for this topic on our platform.

Description

Automated machine learning (AutoML) represents a fundamental shift in the way organizations of all sizes approach machine learning and data science. Applying traditional machine learning methods to real-world business problems is time-consuming, resource-intensive, and challenging. It requires experts in several disciplines, including data scientists – some of the most sought-after professionals in the job market right now.

Automated machine learning changes that, making it easier to build and use machine learning models in the real world by running systematic processes on raw data and selecting models that pull the most relevant information from the data – what is often referred to as “the signal in the noise.” Automated machine learning incorporates machine learning best practices from top-ranked data scientists to make data science more accessible across the organization.

“Data science is the transformation of data using mathematics and statistics into valuable insights, decisions, and products”

As data science evolves and gains new “instruments” over time, the core business goal remains focused on finding useful patterns and yielding valuable insights from data. Today, data science is employed across a broad range of industries and aids in various analytical problems. For example, in marketing, exploring customer age, gender, location, and behavior allows for making highly targeted campaigns, evaluating how much customers are prone to make a purchase or leave. In banking, finding outlying client actions aids in detecting fraud. In healthcare, analyzing patients’ medical records can show the probability of having diseases, etc.

The data science landscape encompasses multiple interconnected fields that leverage different techniques and tools.

There’s a difference between data mining and very popular machine learning. Still, machine learning is about creating algorithms to extract valuable insights, it’s heavily focused on continuous use in dynamically changing environments and emphasizes adjustments, retraining, and updating of algorithms based on previous experiences. The goal of machine learning is to constantly adapt to new data and discover new patterns or rules in it. Sometimes it can be realized without human guidance and explicit reprogramming.

Machine learning is the most dynamically developing field of data science today due to a number of recent theoretical and technological breakthroughs. They led to natural language processing, image recognition, or even the generation of new images, music, and texts by machines. Machine learning remains the main “instrument” of building artificial intelligence.

Machine Learning Workflow

Generally, the workflow follows these simple steps:

  1. Collect data. Use your digital infrastructure and other sources to gather as many useful records as possible and unite them into a dataset.

  2. Prepare data. Prepare your data to be processed in the best possible way. Data preprocessing and cleaning procedures can be quite sophisticated, but usually, they aim at filling the missing values and correcting other flaws in data, like different representations of the same values in a column (e.g. December 14, 2016 and 12.14.2016 won’t be treated the same by the algorithm).

  3. Split data. Separate subsets of data to train a model and further evaluate how it performs against new data.

  4. Train a model. Use a subset of historic data to let the algorithm recognize the patterns in it.

  5. Test and validate a model. Evaluate the performance of a model using testing and validation subsets of historic data and understand how accurate the prediction is.

  6. Deploy a model. Embed the tested model into your decision-making framework as a part of an analytics solution or let users leverage its capabilities (e.g. better target your product recommendations).

  7. Iterate. Collect new data after using the model to incrementally improve it.

What you will learn

  • Understand the full product workflow for the machine learning lifecycle.
  • Write clean, maintainable and performant code
  • Have a great intuition of many Auto Machine Learning models
  • Master Machine Learning and use it on the job
  • Learn to perform Classification and Regression modelling

Requirements

  • Knowledge Of Machine Learning
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Frequently asked questions

  • Price: $19.99
  • Platform: Udemy
  • Language: English
  • 9 hours 44 minutes
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bestcourses score: 6.1/10

There might be better courses available for this topic.