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Core technologies and tools for AI, big data, and cloud computing

O'Reilly on Data

Recent improvements in tools and technologies has meant that techniques like deep learning are now being used to solve common problems, including forecasting, text mining and language understanding, and personalization. AI and machine learning in the enterprise. Deep Learning. Foundational data technologies.

Big Data 209
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You Can Optimize GPT If You Understand its Limitations!

Smarten

In this article, we will discuss GPT, its roots and its limitations, in order to provide insight into where this technology is today and how it can be used now to inform and support apps, software products and technology services. GPT, or Generative Pre-Trained Transformer, is a Large Language Model (LLM).

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Top 5 BI tools of 2019: Comparison and How to decide

FineReport

With business intelligence(BI) tools play a more critical role in the enterprises, the technology is poised for an oversized effect in the coming year. BI software assists businesses with data display and analytics to help companies discover the situations, market challenges, as well as the chance. From Google. Pro: Fast speed.

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Deep Learning Tools Could Compound Returns on Technical Analysis Trading

Smart Data Collective

Artificial intelligence is upending the financial management industry in spectacular ways. The majority of machine learning and deep learning solutions have focused on fundamental analysis of securities. Will deep learning and AI finally make technical analysis a mainstream financial management strategy?

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Becoming a machine learning company means investing in foundational technologies

O'Reilly on Data

Here are some typical ways organizations begin using machine learning: Build upon existing analytics use cases: e.g., one can use existing data sources for business intelligence and analytics, and use them in an ML application. Modernize existing applications such as recommenders, search ranking, time series forecasting, etc.