Anaconda provides access to the foundational open-source Python and R packages used in modern AI, data science, and machine learning. These enterprise-grade solutions enable corporate, research, and academic institutions around the world to harness open-source for competitive advantage and research. Anaconda also provides enterprise-grade security to open-source software through the Premium Repository.
$0
per month
NVIDIA RAPIDS
Score 9.1 out of 10
N/A
NVIDIA RAPIDS is an open source software library for data science and analytics performed across GPUs. Users can run data science workflows with high-speed GPU compute and parallelize data loading, data manipulation, and machine learning for 50X faster end-to-end data science pipelines.
N/A
Pricing
Anaconda
NVIDIA RAPIDS
Editions & Modules
Free Tier
$0
per month
Starter Tier
$9
per month
Business Tier
$50
per month per user
Enterprise Tier
60.00+
per month per user
No answers on this topic
Offerings
Pricing Offerings
Anaconda
NVIDIA RAPIDS
Free Trial
No
No
Free/Freemium Version
Yes
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
Anaconda
NVIDIA RAPIDS
Features
Anaconda
NVIDIA RAPIDS
Platform Connectivity
Comparison of Platform Connectivity features of Product A and Product B
Anaconda
9.3
Ratings
11% above category average
NVIDIA RAPIDS
9.1
Ratings
8% above category average
Connect to Multiple Data Sources
9.80 Ratings
9.60 Ratings
Extend Existing Data Sources
8.00 Ratings
8.80 Ratings
Automatic Data Format Detection
9.70 Ratings
9.00 Ratings
MDM Integration
9.60 Ratings
9.00 Ratings
Data Exploration
Comparison of Data Exploration features of Product A and Product B
Anaconda
8.5
Ratings
2% above category average
NVIDIA RAPIDS
9.4
Ratings
12% above category average
Visualization
9.00 Ratings
9.40 Ratings
Interactive Data Analysis
8.00 Ratings
9.40 Ratings
Data Preparation
Comparison of Data Preparation features of Product A and Product B
Anaconda
9.0
Ratings
10% above category average
NVIDIA RAPIDS
8.9
Ratings
9% above category average
Interactive Data Cleaning and Enrichment
8.80 Ratings
7.80 Ratings
Data Transformations
8.00 Ratings
9.40 Ratings
Data Encryption
9.70 Ratings
9.00 Ratings
Built-in Processors
9.60 Ratings
9.40 Ratings
Platform Data Modeling
Comparison of Platform Data Modeling features of Product A and Product B
Anaconda
9.2
Ratings
9% above category average
NVIDIA RAPIDS
9.2
Ratings
9% above category average
Multiple Model Development Languages and Tools
9.00 Ratings
9.00 Ratings
Automated Machine Learning
8.90 Ratings
9.40 Ratings
Single platform for multiple model development
10.00 Ratings
9.40 Ratings
Self-Service Model Delivery
9.00 Ratings
9.00 Ratings
Model Deployment
Comparison of Model Deployment features of Product A and Product B
I have asked all my juniors to work with Anaconda and Pycharm only, as this is the best combination for now. Coming to use cases: 1. When you have multiple applications using multiple Python variants, it is a really good tool instead of Venv (I never like it). 2. If you have to work on multiple tools and you are someone who needs to work on data analytics, development, and machine learning, this is good. 3. If you have to work with both R and Python, then also this is a good tool, and it provides support for both.
NVIDIA RAPIDS is great for integrated and planned machine learning and deep learning journey. It is excellent if you have big data with defined processes to be improved and monitored. It is less effective if the project is continuously changed and the data are to be prepared and cleaned a lot and [in] many different ways.
Installing packages is very easy with Anaconda. Anaconda comes with 'anaconda navigator', a terminal-like utility from which you can easily install R packages and python libraries.
Launching R and python IDEs as well as Jupyter notebooks from anaconda navigator is simple, and Anaconda makes it very easy to keep these packages up-to-date.
I really like the fact that if you don't want to install the full version of Anaconda, you can opt to install a lightweight version (called Miniconda) that includes less python libraries and only core conda. I've installed it when I didn't want to take up as much disk space as Anaconda requires, but it works just the same.
It's really good at data processing, but needs to grow more in publishing in a way that a non-programmer can interact with. It also introduces confusion for programmers that are familiar with normal Python processes which are slightly different in Anaconda such as virtualenvs.
I am giving this rating because I have been using this tool since 2017, and I was in college at that time. Initially, I hesitated to use it as I was not very aware of the workings of Python and how difficult it is to manage its dependency from project to project. Anaconda really helped me with that. The first machine-learning model that I deployed on the Live server was with Anaconda only. It was so managed that I only installed libraries from the requirement.txt file, and it started working. There was no need to manually install cuda or tensor flow as it was a very difficult job at that time. Graphical data modeling also provides tools for it, and they can be easily saved to the system and used anywhere.
Anaconda provides fast support, and a large number of users moderate its online community. This enables any questions you may have to be answered in a timely fashion, regardless of the topic. The fact that it is based in a Python environment only adds to the size of the online community.
One of the main competitors to Anaconda can be Google products such as Colab. Colab gives you the flexibility to handle large datasets gives it an edge over Anaconda. But again, the ease of access and usability of Anaconda stacks up against Colab. Besides, Anaconda relies more on your machine which makes it safe to use.
RAPIDS GPU accelerates machine learning to make the entire data science and analytics workflows run faster, also helps build databases and machine learning applications effectively. It also allows faster model deployment and iterations to increase machine learning model accuracy. The great value of money.
Positive impact - Multiple options for data presenting , visualizing and sharing. (Eg: R-Markdown).
Positive impact - Ease of access to build complex machine learning models. (I work in NLP, it has multiple built in models to analyze the various contexts).
Positive impact - Conda package let's to deal with external packages which can be used in Jupyter.