Draft:Graphite Note
Submission declined on 23 October 2024 by SafariScribe (talk).
Where to get help
How to improve a draft
You can also browse Wikipedia:Featured articles and Wikipedia:Good articles to find examples of Wikipedia's best writing on topics similar to your proposed article. Improving your odds of a speedy review To improve your odds of a faster review, tag your draft with relevant WikiProject tags using the button below. This will let reviewers know a new draft has been submitted in their area of interest. For instance, if you wrote about a female astronomer, you would want to add the Biography, Astronomy, and Women scientists tags. Editor resources
|
Graphite Note is an innovative SaaS no-code machine learning and predictive analytics platform designed to simplify the use of machine learning for business analytics. It caters primarily to users without a data science background, enabling them to generate insights and make data-driven decisions without the need for coding.
Graphite Note was founded in October 2020 by Hrvoje Smolic and Vinnie Lynch. Hrvoje serves as the CEO, while Vinnie holds the position of Chief Revenue Officer (CRO) at the company. The headquarters of Graphite Note are located in Killarney, Ireland, serving as the central hub for the company’s operations. However, Graphite Note’s reach extends far beyond Ireland, with a global customer base that spans multiple continents. The company caters to clients from a wide range of industries, including manufacturing, retail, finance, and technology, leveraging its SaaS platform to deliver advanced, no-code machine learning solutions.
In summary, Graphite Note stands out as a powerful tool for businesses aiming to harness the potential of predictive analytics and machine learning without the complexities typically associated with these technologies.
Graphite Note Key Features
[edit]- Automated Machine Learning - Graphite Note automates the process of building and deploying machine learning models, making it accessible for non-technical users.
- Data Storytelling: This platform allows users to create narratives around their data, facilitating easier communication of complex insights within teams.
- Predictive Analytics: Users can perform various predictive tasks such as time-series forecasting, customer segmentation, and churn analysis.
- User-Friendly Interface: The no-code design allows users to connect to their data and train models quickly, transforming raw data into actionable insights in minutes.
- Collaboration Tools: Graphite Note includes features that support team collaboration, making it easier to share findings and insights.
Target Audience
[edit]Graphite Note serves a diverse range of businesses including freelancers, startups, small to medium-sized enterprises (SMBs), and larger corporations across various industries such as technology, retail, and media. Its design is particularly beneficial for those looking to leverage AI without extensive technical expertise.
Partner Network
[edit]Graphite Note has built a strong network of partners around the world, enabling it to offer its services to an even broader audience. This partner network ensures that the platform is accessible to businesses of all sizes, helping them harness the power of machine learning for accurate business predictions and operational efficiency. Through its global presence and partnerships, Graphite Note is able to support its mission of democratizing machine learning and making predictive analytics easy and accessible to companies worldwide.
References
[edit]- https://graphite-note.com/about-us/, Graphite Note company page, retrieved 16th October 2024.
- https://www.businesspost.ie/article/graphite-note-targets-revenue-of-e1m-with-crystal-ball-analytics/, Business post, retrieved 16th October 2024.
- https://cybertrend-intra.com/article/cybertrend-and-graphite-note-partner-to-empower-indonesian-businesses-with-no-code-predictive-analytics/, Cybertrend Company page, retrieved 16th October 2024.
- in-depth (not just brief mentions about the subject or routine announcements)
- reliable
- secondary
- strictly independent of the subject
Make sure you add references that meet all four of these criteria before resubmitting. Learn about mistakes to avoid when addressing this issue. If no additional references exist, the subject is not suitable for Wikipedia.