Appen
Appen helps businesses improve their AI and machine learning models.
π·οΈ Price not available
- Overview
- Pricing
- Features
- Pros
- Cons
Overviewβ
Appen is a global company that specializes in data collection and data annotation. They provide high-quality training data to help AI and machine learning systems perform better. With a large crowd of contributors around the world, Appen ensures that the data used for training AI models is both accurate and diverse.
Founded in 1996, Appen has built a robust platform that connects businesses needing data with people who can create it. Their services range from collecting unstructured data to annotating images, audio, and text. This makes them a valuable partner for companies looking to enhance their AI capabilities.
The importance of training data cannot be overstated. Good training data is essential for making AI reliable and effective. Appen understands this need and fills the gap by providing tailored solutions to fit any project size. Businesses can rely on their extensive experience and flexible approach to meet their specific data needs.
Pricingβ
Plan | Price | Description |
---|---|---|
Appen Data Annotation Platform | SaaS subscription pricing dependent on use case and data type | The industryβs most advanced AI-assisted data annotation platform used to collect and annotate data for training both computer vision and natural language processing AI models. |
Managed Services | Bespoke based on customer needs | Customized solutions to meet our customers' unique needs. We harness expertise within our team including Linguists, AI/ ML specialists and Project Managers to deliver your projects on time and on budget. |
Key Featuresβ
π― Global Crowd: Appen has a diverse crowd of contributors from around the world, ensuring a wide range of data sources.
π― Data Collection: They specialize in gathering unstructured data for various industries, helping businesses find the information they need.
π― Data Annotation: Appen provides detailed annotation services, making raw data usable for AI training.
π― Flexible Solutions: They offer customized data services to fit projects of all sizes, from small startups to large enterprises.
π― Quality Control: Appen employs strict quality checks to ensure the accuracy and relevance of the data supplied.
π― Multiple Data Types: Services include text, audio, and image data, catering to all aspects of AI model development.
π― Rapid Turnaround: Appen understands the fast pace of technology and aims for quick delivery timelines for data projects.
π― Expert Support: Their team provides guidance and support throughout the data preparation process.
Prosβ
βοΈ High Quality Data: The quality of the data collected is typically very high, which is crucial for AI success.
βοΈ Diverse Contributors: The global crowd enhances the richness and diversity of the data.
βοΈ Tailored Services: Appen can customize their offerings to align with the specific needs of different businesses.
βοΈ Established Reputation: With years in the industry, Appen has a proven track record of success.
βοΈ Comprehensive Solutions: They provide a broad range of services, which saves businesses time finding multiple vendors.
Consβ
β Cost: Appen can sometimes be more expensive compared to other data collection services.
β Complex Processes: Some businesses may find the onboarding and data preparation process complicated.
β Variable Quality: While they strive for high quality, some projects may experience variability in data quality.
β Dependency on Contributors: The quality can be influenced by the performance of individual contributors.
β Time Intensive: For large projects, the data collection process can take a significant amount of time.
Manage projects with Workfeed
Workfeed is the project management platform that helps small teams move faster and make more progress than they ever thought possible.
Get Started - It's FREE* No credit card required
Frequently Asked Questionsβ
Here are some frequently asked questions about Appen. If you have any other questions, feel free to contact us.