Select Page
cleareye.ai

Streamlining Trade Finance Operations: Cleareye.ai Chooses Datavolo for Multimodal Data Pipelines

In the ever-evolving landscape of trade finance, digitization and compliance automation are paramount for efficiency and regulatory adherence. Enter Cleareye.ai, a pioneering force in the industry. Their digital workbench, ClearTrade®, revolutionizes trade finance operations by digitizing vast volumes of data from trade finance documents and automating checks against industry requirements such as UCP, ISBP, URC, and URDG. Additionally, their Compliance module streamlines regulatory compliance checks by automating red flag and TBML assessments.

To deploy their cutting-edge technology across diverse, highly regulated customer environments, including major cloud vendors like AWS, GCP, and Azure, as well as on-premises setups, Cleareye.ai sought an enterprise-grade solution for multi-modal data capture, transformation, and continuous delivery. Recognizing the critical nature of this requirement, Cleareye.ai turned to Datavolo, powered by Apache NiFi, as their data pipeline solution of choice.

Datavolo‘s extensive expertise in managing unstructured data pipelines with Apache NiFi, coupled with its latest features tailored for modern data challenges, made it the obvious choice for Cleareye.ai. With Datavolo, Cleareye.ai gains a robust and flexible data pipeline solution that meets the stringent demands of the highly regulated trade finance industry. This strategic partnership underscores Cleareye.ai’s commitment to driving digital transformation and operational excellence in trade finance, setting a new standard for efficiency and compliance in the sector.

“Choosing Datavolo was an easy choice as working with their team and technology was able to 10x the speed by which we deliver new features to our customers.” said Chandrasekhar, Chief Technology Officer of Cleareye.ai.  “We work with highly regulated customers, as does Datavolo, and that expertise is invaluable.”

Cleareye.ai Contact: [email protected]

Datavolo Contact: [email protected]

About Cleareye.ai
Cleareye.ai is an advanced Artificial Intelligence & Machine Learning platform that enables banks to launch products at a rapid pace. Headquartered in California with offices in New York, Bahrain and India, the company aims to simplify banking. The platform leverages technology breakthroughs with a fully automated document processing layer, unified ML lifecycle management, data management, model governance and dynamic rules engine leveraging NLP. This will transform banks into hyper agile organizations, that customers want to bank with and deliver exceptional customer service, drive short term gains and long-term growth, and generate insights to sustain momentum at digital scale. Cleareye.ai was founded by leaders in global technology, representing decades of entrepreneurial and digital systems experience in banking. For more information visit https://cleareye.ai/

cleareye.ai

Top Related Posts

Building GenAI enterprise applications with Vectara and Datavolo

The Vectara and Datavolo integration and partnership When building GenAI apps that are meant to give users rich answers to complex questions or act as an AI assistant (chatbot), we often use Retrieval Augmented Generation (RAG) and want to ground the responses on...

Datavolo Announces Over $21M in Funding!

Datavolo Raises Over $21 Million in Funding from General Catalyst and others to Solve Multimodal Data Pipelines for AI Phoenix, AZ, April 2, 2024 – Datavolo, the leader in multimodal data pipelines for AI, announced today that it has raised over $21 million in...

Fueling your Chatbots with Slack

The true power of chatbots is not in how much the large language model (LLM) powering it understands. It’s the ability to provide relevant, organization-specific information to the LLM so that it can provide a natural language interface to vast amounts of data. That...

Datavolo Architecture Viewpoint

The Evolving AI Stack Datavolo is going to play in three layers of the evolving AI stack: data pipelines, orchestration, and observability & governance. The value of any stack is determined by the app layer, as we saw with Windows, iOS, and countless other...

ETL is dead, long live ETL (for multimodal data)

Why did ELT become the most effective pattern for structured data? A key innovation in the past decade that unlocked the modern data stack was the decoupling of storage and compute enabled by cloud data warehouses as well as cloud data platforms like Databricks. This...

FlowGen Improvements (already!)

In the past week, since Datavolo released its Flow Generation capability, we've witnessed fantastic adoption as users have eagerly requested flows from the Flow Generation bot. We're excited to share that we have recently upgraded our models, enhancing both the power...

The Evolution of AI Engineering and Datavolo’s Role

Humility is the first lesson In the machine learning era of software engineering, one persistent truth has emerged: engineers are increasingly submitting to the will of the machine. A significant milestone in the transition from classical machine learning to deep...

Introducing our GenAI NiFi Flow Builder!

Hey everyone, it's been an incredible journey over the past ten years since we open-sourced Apache NiFi. Right from the beginning, our mission with NiFi was crystal clear: to make it easier for all of you to gather data from...

Field CTO Perspectives: Why Datavolo and Why Now?

Setting the Stage There are a few times in our lives when we feel the ground shifting under our feet due to seismic shifts in technology. You know these paradigm shifts are truly seismic when they lead to broader changes in society–the web, search engines, mobile, and...