Microsoft's Azure Machine Learning is and end-to-end data science and analytics solution that helps professional data scientists to prepare data, develop experiments, and deploy models in the cloud. It replaces the Azure Machine Learning Workbench.
$0
per month
Jupyter Notebook
Score 8.5 out of 10
N/A
Jupyter Notebook is an open-source web application that allows users to create and share documents containing live code, equations, visualizations and narrative text. Uses include: data cleaning and transformation, numerical simulation, statistical modeling, data visualization, and machine learning. It supports over 40 programming languages, and notebooks can be shared with others using email, Dropbox, GitHub and the Jupyter Notebook Viewer. It is used with JupyterLab, a web-based IDE for…
N/A
Pricing
Azure Machine Learning
Jupyter Notebook
Editions & Modules
Studio Pricing - Free
$0.00
per month
Production Web API - Dev/Test
$0.00
per month
Studio Pricing - Standard
$9.99
per ML studio workspace/per month
Production Web API - Standard S1
$100.13
per month
Production Web API - Standard S2
$1000.06
per month
Production Web API - Standard S3
$9999.98
per month
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Offerings
Pricing Offerings
Azure Machine Learning
Jupyter Notebook
Free Trial
No
No
Free/Freemium Version
No
No
Premium Consulting/Integration Services
No
No
Entry-level Setup Fee
No setup fee
No setup fee
Additional Details
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More Pricing Information
Community Pulse
Azure Machine Learning
Jupyter Notebook
Features
Azure Machine Learning
Jupyter Notebook
Platform Connectivity
Comparison of Platform Connectivity features of Product A and Product B
Azure Machine Learning
-
Ratings
Jupyter Notebook
9.0
22 Ratings
7% above category average
Connect to Multiple Data Sources
00 Ratings
10.022 Ratings
Extend Existing Data Sources
00 Ratings
10.021 Ratings
Automatic Data Format Detection
00 Ratings
8.514 Ratings
MDM Integration
00 Ratings
7.415 Ratings
Data Exploration
Comparison of Data Exploration features of Product A and Product B
Azure Machine Learning
-
Ratings
Jupyter Notebook
7.0
22 Ratings
18% below category average
Visualization
00 Ratings
6.022 Ratings
Interactive Data Analysis
00 Ratings
8.022 Ratings
Data Preparation
Comparison of Data Preparation features of Product A and Product B
Azure Machine Learning
-
Ratings
Jupyter Notebook
9.5
22 Ratings
16% above category average
Interactive Data Cleaning and Enrichment
00 Ratings
10.021 Ratings
Data Transformations
00 Ratings
10.022 Ratings
Data Encryption
00 Ratings
8.514 Ratings
Built-in Processors
00 Ratings
9.314 Ratings
Platform Data Modeling
Comparison of Platform Data Modeling features of Product A and Product B
Azure Machine Learning
-
Ratings
Jupyter Notebook
9.3
22 Ratings
10% above category average
Multiple Model Development Languages and Tools
00 Ratings
10.021 Ratings
Automated Machine Learning
00 Ratings
9.218 Ratings
Single platform for multiple model development
00 Ratings
10.022 Ratings
Self-Service Model Delivery
00 Ratings
8.020 Ratings
Model Deployment
Comparison of Model Deployment features of Product A and Product B
I've created a number of daisy chain notebooks for different workflows, and every time, I create my workflows with other users in mind. Jupiter Notebook makes it very easy for me to outline my thought process in as granular a way as I want without using innumerable small. inline comments.
User friendliness: This is by far the most user friendly tool I've seen in analytics. You don't need to know how to code at all! Just create a few blocks, connect a few lines and you are capable of running a boosted decision tree with a very high R squared!
Speed: Azure ML is a cloud based tool, so processing is not made with your computer, making the reliability and speed top notch!
Cost: If you don't know how to code, this is by far the cheapest machine learning tool out there. I believe it costs less than $15/month. If you know how to code, then R is free.
Connectivity: It is super easy to embed R or Python codes on Azure ML. So if you want to do more advanced stuff, or use a model that is not yet available on Azure ML, you can simply paste the code on R or Python there!
Microsoft environment: Many many companies rely on the Microsoft suite. And Azure ML connects perfectly with Excel, CSV and Access files.
Need more Hotkeys for creating a beautiful notebook. Sometimes we need to download other plugins which messes [with] its default settings.
Not as powerful as IDE, which sometimes makes [the] job difficult and allows duplicate code as it get confusing when the number of lines increases. Need a feature where [an] error comes if duplicate code is found or [if a] developer tries the same function name.
Jupyter is highly simplistic. It took me about 5 mins to install and create my first "hello world" without having to look for help. The UI has minimalist options and is quite intuitive for anyone to become a pro in no time. The lightweight nature makes it even more likeable.
It is easier to learn, it has a very cost effective license for use, it has native build and created for Azure cloud services, and that makes it perfect when compared against the alternatives. As a Microsoft tool, it has been built to contain many visual features and improved usability even for non-specialist users.
With Jupyter Notebook besides doing data analysis and performing complex visualizations you can also write machine learning algorithms with a long list of libraries that it supports. You can make better predictions, observations etc. with it which can help you achieve better business decisions and save cost to the company. It stacks up better as we know Python is more widely used than R in the industry and can be learnt easily. Unlike PyCharm jupyter notebooks can be used to make documentations and exported in a variety of formats.
Productivity: Instead of coding and recoding, Azure ML helped my organization to get to meaningful results faster;
Cost: Azure ML can save hundreds (or even thousands) of dollars for an organization, since the license costs around $15/month per seat.
Focus on insights and not on statistics: Since running a model is so easy, analysts can focus more on recommendations and insights, rather than statistical details