Accéder au contenu principal

Remplissez les détails pour débloquer le webinaire

En continuant, vous acceptez nos Conditions d'utilisation, notre Politique de confidentialité et le fait que vos données sont stockées aux États-Unis.

Haut-parleurs

Pour les entreprises

Formation de 2 personnes ou plus ?

Donnez à votre équipe l’accès à la bibliothèque DataCamp complète, avec des rapports centralisés, des missions, des projets et bien plus encore
Essayer DataCamp Pour Les EntreprisesPour une solution sur mesure , réservez une démo.

AI for Visual Data: Computer Vision in Business

October 2023
Partager

Visual data is becoming increasingly important for business as AI allows you to extract more value from it. However, working with this type of data has a lot of challenges, and mistakes can be expensive. In this webinar, three computer vision executives discuss the best ways to get value from your visual data.

Throughout this session, you’ll learn about high value use-cases for image & video data, best practices for managing and analyzing visual data, and an overview of the latest cutting edge innovations in computer vision.

Key Takeaways:

  • Learn about high value use cases for image and video data.
  • Learn best practices for analyzing and managing visual data.
  • Learn about cutting edge innovations in computer vision.

Additional Resources

[BLOG] What is Image Recognition?

[PODCAST] Expanding the Scope of Generative AI in the Enterprise with Bal Heroor, CEO and Principal at Mactores

Summary

Image and video data in data science have seen significant advancements, making visual data essential for businesses. This webinar brings together experts like Sanjay Pichai from AcroData, Vishakha Guptakledhat from Aperture Data, and Natan from DESI to explore the increasing importance of visual data in various sectors and the problems that come with it. Applications extend from agriculture and manufacturing to retail and autonomous vehicles, demonstrating the versatility of computer vision. The shift from classical computer vision to deep learning has improved the ability to recognize any object, not specific ones. Data scientists and machine learning engineers play an important role in solving issues related to visual data, emphasizing the need for data quality and bias avoidance. Image classification is recommended as a starting point for organizations entering this field. As companies scale up their visual data projects, they face problems in managing and ensuring bias-free data. The webinar emphasizes the need for skill development in Python, data management, and the use of tools like PyTorch and Hugging Face for deep learning, encouraging a practical approach to learning and experimenting with visual data.

Key Takeaways:

  • Visual data is increasingly important across sectors due to AI advancements.
  • Moving from classical computer vision to deep learning improves object recognition capabilities.
  • Data quality and bias are significant challenges in deploying visual data solutions.
  • Image classification is a recommended starting point for organizations new to computer vision.
  • Practical learning in Python and deep learning tools is essential for skill development in this field.

Deep Dives

Importance of Visual Data in Business Use Cases

Visual data has become an integral component i ...
Lire La Suite

n various sectors, transforming traditional operations and enabling new capabilities. In agriculture, for instance, drones and satellite imagery are employed to monitor crop health, detect pests, and optimize pesticide usage. Retailers utilize visual data for inventory management, cashierless checkouts, and personalized shopper insights. In manufacturing, visual data aids in quality inspection and worker safety by identifying defects on production lines. The medical sector leverages visual data for faster and more precise diagnoses through medical imaging. This shift towards visual data-driven operations is supported by advancements in AI and machine learning, allowing businesses to extract actionable insights and enhance efficiency.

Transitioning from Classical Computer Vision to Deep Learning

The evolution from classical computer vision to deep learning represents a significant leap forward in the field. Classical approaches relied on handcrafted features and custom models, which were effective for specific tasks but lacked versatility. In contrast, deep learning models learn from vast datasets, enabling them to handle a wider range of scenarios and recognize a broader spectrum of objects. As Sanjay Pichai noted, "Deep learning techniques, with neural networks at their core, have revolutionized how we approach visual data." This shift has been particularly impactful in autonomous vehicles and robotics, where diverse and changing environments require adaptable and sturdy models.

Challenges and Best Practices in Managing Visual Data

Ensuring high-quality, unbiased data is a fundamental challenge in visual data projects. Data scientists must carefully curate datasets to prevent biases that could skew model outputs and lead to unfair outcomes. Natan emphasized the importance of maintaining consistent data distributions across training and validation sets, highlighting the potential for bias if certain classes or features are underrepresented. As companies scale their visual data initiatives, they must also address issues related to data storage, labeling, and privacy. This requires a concerted effort across teams, from data engineers to machine learning practitioners, to ensure that the data used in training models is representative and ethically sourced.

Getting Started with Image Classification

For organizations new to computer vision, image classification offers a manageable entry point. The process involves training models to categorize images into predefined classes, a task that can be tackled with ready-made models like YOLO. As Vishakha Guptakledhat pointed out, "Image classification is relatively simple, but it's an essential first step in understanding the potential of visual data." Companies can start by experimenting with small datasets and gradually scale up as they refine their models and processes. This approach allows organizations to gain insights into their data and develop the necessary infrastructure to support more complex computer vision tasks in the future.


Connexe

webinar

Using AI in Robotics

In this session, you'll learn about common uses of AI in the robotics field, best practices for making use of AI in robotics, and what skills you need to make use of AI for robotics.

webinar

Designing Data & AI Products

In this webinar, you'll learn about the fundamentals of design, how good design can help your data product, and how data and design teams can work together.

webinar

Radar Data & AI Literacy Edition: Laying the Foundations: Scoping Generative AI Use Cases from Vision to Business Impact

In this session, Albert Esplugas provides a comprehensive overview of the top generative AI use cases across business areas and industries.

webinar

Best Practices for Developing Generative AI Products

In this webinar, you'll learn about the most important business use cases for AI assistants, how to adopt and manage AI assistants, and how to ensure data privacy and security while using AI assistants.

webinar

Building AI Skills with DataCamp

Discover how DataCamp can help you future-proof your career and business with new AI-focused courses.

webinar

Artificial Intelligence for Business Leaders

We'll answer the questions about AI that you've been too afraid to ask.

Hands-on learning experience

Companies using DataCamp achieve course completion rates 6X higher than traditional online course providers

Learn More

Upskill your teams in data science and analytics

Learn More

Join 5,000+ companies and 80% of the Fortune 1000 who use DataCamp to upskill their teams.

Don’t just take our word for it.