Systems | Development | Analytics | API | Testing

How to Mock AI APIs Using proxymock

APIs often represent the cutting edge of the technology space. This is especially true with Artificial Intelligence – as AI has evolved from speculative technology to mass adoption, it has shown up significantly in APIs as a modality and mechanism. However, as with all new technologies, using AI APIs comes with significant challenges.

Managing Cloud Costs in 2025: How to Get the Balance Right

Managing cloud costs in 2025 is challenging. The costs have spiraled out of control, and it’s difficult to get the balance right. So, how exactly did we get here? In this blog, I will share my insights and recommendations based on my experience working with enterprises successfully managing cloud costs.

Agentic AI in Financial Services and Insurance

Many financial services companies are experimenting with AI through pilot programs, but several challenges remain for adoption. Key concerns include data security, the accuracy of large language models (LLMs) and the rigorous scrutiny from regulators regarding AI’s role in financial decision-making. Current use cases are largely internal, with some customer-facing chatbot solutions addressing noncritical service inquiries.

Delivering The Right Message To The Right Person At The Right Time With Help From the AI Data Cloud

2degrees is a full-service telco, infrastructure owner, and energy retailer connecting people and businesses all around New Zealand. The combined business has approximately 1,600 employees who serve 2 million-plus customers.

AI Agent Training: Essential Steps for Business Success

AI agents are transforming business operations by automating processes, improving decision-making and unlocking new efficiencies. However, their effectiveness depends on how well they are trained. AI Agent Training is the structured process of teaching AI models to perform multi-step assignments, make decisions and adapt to real-world scenarios.

Streaming Data Fuels Real-time AI & Analytics: Connect with Confluent Q1 Program Entrants

In today’s fast-moving digital economy, organizations need real-time intelligence to power AI, analytics, and increasingly fast paced decision-making. But to successfully deploy AI and advanced analytics, businesses must operate on trusted, up-to-date data streams that provide an accurate picture of what’s happening right now.

Scale Unstructured Text Analytics with Efficient Batch LLM Inference

Unstructured text is everywhere in business: customer reviews, support tickets, call transcripts, documents. Large language models (LLMs) are transforming how we extract value from this data by running tasks from categorization to summarization and more. While AI has proved that real-time conversations in natural language are possible with LLMs, extracting insights from millions of unstructured data records using these LLMs can be a game changer. This is where batch LLM inference becomes essential.