Today, organizations understand the importance of good external data that can be integrated with internal data to train machine learning models. Our Machine Learning Dynamic Insights research showed that external data adds a significant value in gaining competitive advantage, improving customer experience and increasing sales. But getting the right external data for a particular requirement is not always easy. Internal data is usually not enough to train different models because of its narrow scope of usage and lack of relevance. Manual data acquisition methods are resource-intensive and can take weeks or months to get the data ready to feed into models.
In mid-2021, Explorium raised $75 million in its series C funding to expand into new industries and grow the library of data sources. Series C came less than 12 months after Explorium’s series B funding of $31 million, bringing the total investment to $127 million. The company plans to bring external data to analytics processes and add new features to support more use cases.
Organizations are always hunting to gather the best data to gain an analytical edge in the market. Good data is a must when building accurate machine learning models, but is sometimes hard to find for a given model requirement. Finding the right datasets is a complicated and resource-intensive process. Our research also showed some of the common challenges organizations face when applying machine learning, among which accessing and preparing data for training models tops the list. Data access and preparation is getting somewhat easier through automation, but is still a daunting and time-consuming process. Using an external data platform such as Explorium can enable organizations to integrate third-party data into analytics, business intelligence and machine learning models to increase operational efficiency.
Organizations looking to incorporate external data in analytics and machine learning processes should consider Explorium for data enrichment. Its data management platform enables data scientists and business analysts to increase operational efficiency by accelerating machine learning models.
Regards,
David Menninger