The complex problems in the world of computers and artificial Intelligence need the aid of deep learning tools. The challenges change with time, and so does the analysis pattern. Constant updates on tools and newer perspectives to deal with the problems require hands-on expertise and experience handling deep learning tools. Review the updated list of top tools and the key features of each.
Deep learning is a subset of Machine Learning and part of Artificial Intelligence which is important for computers’ operation learning. The associated deep learning tools are responsible for curating the programs that process the computer’s data and patterns for decision-making. It is capable of predictive analytics through algorithms.
Top 10 Deep Learning Tools
Here are top 10 deep learning tools:
TensorFlow
Keras
PyTorch
OpenNN
CNTK
MXNet
DeeplearningKit
Deeplearning4J
Darknet
PlaidML
TensorFlow
Key Features
TensorFlow provides interface in different languages like Go, Java, and Python.
Seamless processing from Python development to mobile devices deployment
Adaptable to C++ interface, allowing low latency and high-performance applications.
Allows different GPU supports for implementing deep learning models
Comprises of direct interface with ONNX in the standard ONNX format (Open Neural Network Exchange)
Provides robust ecosystem libraries for efficient developments
OpenNN
Key Features
Suited for non-technical experts as it does not require programming to create neural networks
Efficient in speed execution and memory allocation
Allows normalization, feature scaling, and automatic differentiation
The user interface is easily learnable for functionalities like data management
Easy interpretation from neural designer tool
Quick training, thus saving time
CNTK
Key Features
CNTK, or Microsoft Cognitive Toolkit, is also open source deep learning framework available at a commercial scale
Supports different programming languages like C++, C, and Python and is integrated with Microsoft Azure
Allows easy combination of diverse deep learning models such as deep-feed forward neural network, recurrent neural network, and convolutional neural network
Offers model programming language BrainScript
Self-capable of parallelization and differentiation on different serves and GPUs
Evaluation supported by Java Apps
Multi-support is offered to different learning methods such as supervise, reinforcement, unsupervised learning, and generative adversarial networks.
MXNet
Key Features
Offered by Apache, version 7.0 of open source deep learning framework was released in 2016
Assists in symbolic and imperative programming features along with automatic differentiation and gradient optimization features
Efficiency evident by compatibility with dual parameters for Horovod and server for training and performance optimization
Supports multiple programming languages, such as Perl, Scala, Java, C++, R, Clojure and
Contains pre-trained models
Offers detailed and flexible Python APIs
Efficient with scalability options
DeeplearningKit
Key Features
It is the open-source deep learning framework
Compatible with operating systems like OS X, Apple iOS and tvOS
Performs image recognition on Apple devices using convolutional neural networks
Uses Metal for GPU acceleration and Swift for app integration
Deeplearning4J
Key Features
Supports different Java Virtual Machine-based languages like Scala, Kotlin, Clojure and Java
Capable of huge-sized text sets management and performing NLP tasks with vector space and topic model
Cluster-based training supported by Apache Hadoop and Spark
Performs numerous implementations such as deep belief networks, recursive neural tensor network, Boltzmann machine, word2vec, deep autoencoder, denoising autoencoder, doc2vecc, and GloVe
Provides good performance due to framework in CUDA and C
Compatible with GPU and CPU computations
Eases time series prediction, image classification, and NLP
Supports a variety of neural network architectures
Provides Command Line Interface
PlaidML
Key Features
Integrates with operating systems like Windows, MacOS, and Linux
Contains graph compatibility supports for novel platforms and GPUs
Provides modular hardware supports from embedded to new processors
Integrability with multiple deep learning frameworks such as ONNX, TensorFlow, and
Good for experimentation purposes
Allows automatic differentiation and integration with Python
Deep Learning Roles and Salary
Different roles deal with deep learning toolboxes (such as Matlab deep learning toolbox) and require hands-on machine learning with scikit-learn, Keras, and TensorFlow. Their salaries are tabulated as follows:
The emerging requirement for talented and skilled professionals with the right set of knowledge has created room for skilled candidates. Having an exact set of experience with accurately chosen tools is necessary to secure a job. The above-stated deep learning tools are among the currently trending ones in 2024. Do you have them in your skillset? If not, go on to learn and shine in the domain of deep learning. Remember to use your innovative bent of mind to prove your caliber.
Frequently Asked Questions
Q1. Which tools are used for deep learning?
A. Multiple well-known and updated tools, such as TensorFlow, PyTorch, MXnet, and others, are available for deep learning.
Q2. Which tool is best suited for deep learning problems?
A. The choice of deep learning tools depends on the problem, technical expertise, and available resources. Yet, the more generally suited tools are TensorFlow and PyTorch.
Q3. What are ML data tools?
A. The ML tools are those specialized in ML or Machine Learning workflows. They can efficiently handle and process the associated data.
Q4. Is deep learning a tool of AI?
Ans. Deep learning is a subfield of Artificial Intelligence and hence can be considered a tool of AI. It deals with the development and application of Artificial Neural Networks.
We use cookies essential for this site to function well. Please click to help us improve its usefulness with additional cookies. Learn about our use of cookies in our Privacy Policy & Cookies Policy.
Show details
Powered By
Cookies
This site uses cookies to ensure that you get the best experience possible. To learn more about how we use cookies, please refer to our Privacy Policy & Cookies Policy.
brahmaid
It is needed for personalizing the website.
csrftoken
This cookie is used to prevent Cross-site request forgery (often abbreviated as CSRF) attacks of the website
Identityid
Preserves the login/logout state of users across the whole site.
sessionid
Preserves users' states across page requests.
g_state
Google One-Tap login adds this g_state cookie to set the user status on how they interact with the One-Tap modal.
MUID
Used by Microsoft Clarity, to store and track visits across websites.
_clck
Used by Microsoft Clarity, Persists the Clarity User ID and preferences, unique to that site, on the browser. This ensures that behavior in subsequent visits to the same site will be attributed to the same user ID.
_clsk
Used by Microsoft Clarity, Connects multiple page views by a user into a single Clarity session recording.
SRM_I
Collects user data is specifically adapted to the user or device. The user can also be followed outside of the loaded website, creating a picture of the visitor's behavior.
SM
Use to measure the use of the website for internal analytics
CLID
The cookie is set by embedded Microsoft Clarity scripts. The purpose of this cookie is for heatmap and session recording.
SRM_B
Collected user data is specifically adapted to the user or device. The user can also be followed outside of the loaded website, creating a picture of the visitor's behavior.
_gid
This cookie is installed by Google Analytics. The cookie is used to store information of how visitors use a website and helps in creating an analytics report of how the website is doing. The data collected includes the number of visitors, the source where they have come from, and the pages visited in an anonymous form.
_ga_#
Used by Google Analytics, to store and count pageviews.
_gat_#
Used by Google Analytics to collect data on the number of times a user has visited the website as well as dates for the first and most recent visit.
collect
Used to send data to Google Analytics about the visitor's device and behavior. Tracks the visitor across devices and marketing channels.
AEC
cookies ensure that requests within a browsing session are made by the user, and not by other sites.
G_ENABLED_IDPS
use the cookie when customers want to make a referral from their gmail contacts; it helps auth the gmail account.
test_cookie
This cookie is set by DoubleClick (which is owned by Google) to determine if the website visitor's browser supports cookies.
_we_us
this is used to send push notification using webengage.
WebKlipperAuth
used by webenage to track auth of webenagage.
ln_or
Linkedin sets this cookie to registers statistical data on users' behavior on the website for internal analytics.
JSESSIONID
Use to maintain an anonymous user session by the server.
li_rm
Used as part of the LinkedIn Remember Me feature and is set when a user clicks Remember Me on the device to make it easier for him or her to sign in to that device.
AnalyticsSyncHistory
Used to store information about the time a sync with the lms_analytics cookie took place for users in the Designated Countries.
lms_analytics
Used to store information about the time a sync with the AnalyticsSyncHistory cookie took place for users in the Designated Countries.
liap
Cookie used for Sign-in with Linkedin and/or to allow for the Linkedin follow feature.
visit
allow for the Linkedin follow feature.
li_at
often used to identify you, including your name, interests, and previous activity.
s_plt
Tracks the time that the previous page took to load
lang
Used to remember a user's language setting to ensure LinkedIn.com displays in the language selected by the user in their settings
s_tp
Tracks percent of page viewed
AMCV_14215E3D5995C57C0A495C55%40AdobeOrg
Indicates the start of a session for Adobe Experience Cloud
s_pltp
Provides page name value (URL) for use by Adobe Analytics
s_tslv
Used to retain and fetch time since last visit in Adobe Analytics
li_theme
Remembers a user's display preference/theme setting
li_theme_set
Remembers which users have updated their display / theme preferences
We do not use cookies of this type.
_gcl_au
Used by Google Adsense, to store and track conversions.
SID
Save certain preferences, for example the number of search results per page or activation of the SafeSearch Filter. Adjusts the ads that appear in Google Search.
SAPISID
Save certain preferences, for example the number of search results per page or activation of the SafeSearch Filter. Adjusts the ads that appear in Google Search.
__Secure-#
Save certain preferences, for example the number of search results per page or activation of the SafeSearch Filter. Adjusts the ads that appear in Google Search.
APISID
Save certain preferences, for example the number of search results per page or activation of the SafeSearch Filter. Adjusts the ads that appear in Google Search.
SSID
Save certain preferences, for example the number of search results per page or activation of the SafeSearch Filter. Adjusts the ads that appear in Google Search.
HSID
Save certain preferences, for example the number of search results per page or activation of the SafeSearch Filter. Adjusts the ads that appear in Google Search.
DV
These cookies are used for the purpose of targeted advertising.
NID
These cookies are used for the purpose of targeted advertising.
1P_JAR
These cookies are used to gather website statistics, and track conversion rates.
OTZ
Aggregate analysis of website visitors
_fbp
This cookie is set by Facebook to deliver advertisements when they are on Facebook or a digital platform powered by Facebook advertising after visiting this website.
fr
Contains a unique browser and user ID, used for targeted advertising.
bscookie
Used by LinkedIn to track the use of embedded services.
lidc
Used by LinkedIn for tracking the use of embedded services.
bcookie
Used by LinkedIn to track the use of embedded services.
aam_uuid
Use these cookies to assign a unique ID when users visit a website.
UserMatchHistory
These cookies are set by LinkedIn for advertising purposes, including: tracking visitors so that more relevant ads can be presented, allowing users to use the 'Apply with LinkedIn' or the 'Sign-in with LinkedIn' functions, collecting information about how visitors use the site, etc.
li_sugr
Used to make a probabilistic match of a user's identity outside the Designated Countries
MR
Used to collect information for analytics purposes.
ANONCHK
Used to store session ID for a users session to ensure that clicks from adverts on the Bing search engine are verified for reporting purposes and for personalisation
We do not use cookies of this type.
Cookie declaration last updated on 24/03/2023 by Analytics Vidhya.
Cookies are small text files that can be used by websites to make a user's experience more efficient. The law states that we can store cookies on your device if they are strictly necessary for the operation of this site. For all other types of cookies, we need your permission. This site uses different types of cookies. Some cookies are placed by third-party services that appear on our pages. Learn more about who we are, how you can contact us, and how we process personal data in our Privacy Policy.