Tutorial

Top AI and ML Tools for New Developers to Get Started With

Published on November 6, 2023
Default avatar

By Anish Singh Walia

Sr Technical Writer

Top AI and ML Tools for New Developers to Get Started With

Top AI and ML Tools for New Developers to Get Started With

Introduction

Technology is advancing rapidly, and Artificial Intelligence (AI) and Machine Learning (ML) are at the forefront of technology innovation. New AI tools are being developed regularly, and these AI tools and models are changing how we do things in different industries, and the methods developers use to solve problems and innovate.

If you’re new to this field, you might feel overwhelmed by the variety of tools available. This article will help you choose the right tools to master your skills in the AI/ML field and implement practical solutions such as building your chatbots, image recognition, sentiment analysis, and recommendation systems, and much more. We chose each tool highlighted below based on its simplicity, supportive community, and features, ensuring that you have a stable foundation to start from.

AI and ML are powerful tools that can help solve real-world problems, make work more efficient, and reveal important insights from data that were previously impossible to uncover. However, remember that these tools can be complex and require time and practice to master. For more practical tips and guidance on getting started with AI and using various AI models, check out the Paperspace blog.

1. Paperspace

PaperSpace

Paperspace is an excellent platform to kickstart your AI and ML journey. It offers cloud-based GPU resources at low-cost and ready-to-use deep learning machines, making it easy for beginners to get started without worrying about hardware setup.

You can leverage Paperspace Gradient, i.e., a suite of tools designed to accelerate cloud AI and machine learning. It includes a powerful job runner, first-class support for containers and Jupyter notebooks, and a new set of language integrations.

Paperspace also provides access to popular deep learning frameworks like TensorFlow and PyTorch and integrates Jupyter Notebook, making experimentation and development seamless.

With DigitalOcean’s recent acquisition of Paperspace, businesses now have a prime opportunity to utilize AI and deploy machine learning models in the cloud by utilizing low-cost NVIDIA H100 GPUs, which are among the most powerful GPUs for training any AI/ML model.

Website: Paperspace

2. Papers with code

paperswithcode

Papers with Code is a platform that provides state-of-the-art research papers along with their code implementations on Github, and their datasets contributed either by the authors or the community. The platform’s name gives a clear idea of its purpose. Recently, it has gained popularity and expanded its ecosystem to support machine learning research more comprehensively.

It provides a complete ecosystem for open-source contributors, machine learning engineers, data scientists, researchers, and students to facilitate the sharing of ideas and boost machine learning development.

The mission of Papers with Code is to create a free and open resource with Machine Learning papers, code, datasets, methods, and evaluation tables.

You can browse its State of the Art models to check out the latest advancements happening in this space.

It is an excellent place for new AI/ML developers and engineers to get started.

Website: Papers With Code

3. Tensorflow

TensorFlow

TensorFlow, developed by Google, is one of the most widely embraced open-source libraries for machine learning and deep learning projects. Its user-friendly interface makes it an ideal choice for newcomers. TensorFlow boasts a vast ecosystem of resources, including tutorials, documentation, and a supportive community. You can initiate your AI and ML journey with TensorFlow’s high-level API, Keras, which simplifies the creation and training of neural networks.

Website: TensorFlow

4. PyTorch

PyTorch

PyTorch is another favored deep learning framework, celebrated for its flexibility and dynamic computation graph. Researchers and practitioners alike appreciate its ease of use and excellent debugging capabilities. The PyTorch community is highly active, offering many learning resources and tutorials to facilitate your entry into deep learning.

Website: PyTorch

5. Scikit-Learn

Scikit-Learn

Scikit-Learn is a Python library meticulously designed for simple and efficient machine learning. It is an excellent choice for novices due to its lucid and consistent API. Scikit-Learn offers an array of algorithms encompassing classification, regression, clustering, and more. Comprehensive documentation and illustrative examples help you to be able to grasp and implement these algorithms effectively.

Website: Scikit-Learn

6. Jupyter Notebook

Jupyter Notebook

Jupyter Notebook is an interactive development environment that allows you to craft and disseminate documents that combine live code, equations, visualizations, and narrative text. This tool proves invaluable for exploration and experimentation in AI and ML projects. Jupyter Notebook accommodates multiple programming languages, including Python and R.

Website: Jupyter Notebook

7. IBM Watson Studio

IBM Watson Studio

IBM Watson Studio is a cloud-based platform rendering tools and services tailored for data scientists and AI developers. It simplifies the AI and ML development process by offering pre-configured environments, collaborative features, and access to IBM’s AI services. IBM Watson Studio is a commendable choice for those who wish to experiment with AI without grappling with infrastructure complexities.

Website: IBM Watson Studio

8. Hugging Face

Hugging Face

Hugging Face offers an array of AI tools, including Transformers, a library dedicated to state-of-the-art Natural Language Processing (NLP) models. It is celebrated for its simplicity and accessibility, making it a prime choice for beginners exploring NLP tasks. Hugging Face’s extensive community support and pre-trained models facilitate rapid experimentation and learning.

Website: Hugging Face

Conclusion

Now that you have an array of handpicked and the most powerful AI and ML tools. let’s explore some tips for expanding your AI and ML journey as a newcomer.

Some Tips for Getting Started in AI/ML

  1. Learn the Fundamentals: Begin with the basics of AI and ML, encompassing supervised learning, unsupervised learning, and neural networks. Online courses and tutorials abound, providing accessible entry points into these concepts.

  2. Hands-On Practice: Don’t just read about AI and ML—apply what you learn. Engage in small projects and progressively increase their complexity. Experimentation serves as the key to comprehending these technologies.

  3. Explore Datasets: Familiarize yourself with datasets pertinent to your interests. Platforms like Kaggle present a treasure trove of datasets and host data science competitions that hone your skills.

  4. Join the Community: Engage with AI and ML communities on platforms like PaperSpace, DigitalOcean, GitHub, Stack Overflow, and Reddit. Learning from seasoned developers and partaking in discussions can expedite your growth.

  5. Stay Informed: AI and ML are dynamic domains. Follow blogs, attend webinars, read white papers, and peruse research papers to stay abreast of the latest advancements.

Conclusion

Starting your journey in AI and ML as a newcomer can be a thrilling and fulfilling experience. You can build a strong foundation for growth by utilizing tools like PaperSpace, PaperSpace Gradient, TensorFlow, PyTorch, Scikit-Learn, Jupyter Notebook, IBM Watson Studio, and Hugging Face.

Remember that learning is a continuous process, so maintain your curiosity, practice diligently, and enjoy the ride. Please look at each tool’s official documentation for installation guidelines and detailed tutorials.

Starting your journey in AI and ML as a newcomer can be a thrilling and fulfilling experience. You can build a strong foundation for growth by utilizing tools like Paperspace, TensorFlow, PyTorch, Scikit-Learn, Jupyter Notebook, IBM Watson Studio, Google Colab, and Hugging Face.

Remember that learning is a continuous process, so maintain your curiosity, practice diligently, and enjoy the ride. Please look at each tool’s official documentation for installation guidelines and detailed tutorials.


About the authors
Default avatar

Sr Technical Writer



Default avatar
anegrette

editor


Still looking for an answer?

Ask a questionSearch for more help

Was this helpful?
 
1 Comments


This textbox defaults to using Markdown to format your answer.

You can type !ref in this text area to quickly search our full set of tutorials, documentation & marketplace offerings and insert the link!

Great article, thank you for sharing! I’d recommend Luxand.cloud ai-powered face recognition API. They provide free API for developers.

Try DigitalOcean for free

Click below to sign up and get $200 of credit to try our products over 60 days!

Sign up

Join the Tech Talk
Success! Thank you! Please check your email for further details.

Please complete your information!

Get our biweekly newsletter

Sign up for Infrastructure as a Newsletter.

Hollie's Hub for Good

Working on improving health and education, reducing inequality, and spurring economic growth? We'd like to help.

Become a contributor

Get paid to write technical tutorials and select a tech-focused charity to receive a matching donation.

Welcome to the developer cloud

DigitalOcean makes it simple to launch in the cloud and scale up as you grow — whether you're running one virtual machine or ten thousand.

Learn more
DigitalOcean Cloud Control Panel