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Our products are used to:

_reduce the uncertainty of Machine Learning models,

_prioritize enterprise data efforts,

_support experts in the ML loop,

_improve the quality of ML models, especially in multi-class settings with complex ontologies,

_reduce data footprint and compactify ML models so as to be used by the Internet of Things applications,

_improve gaming experience via more challenging and realistic AI in games,

_create intelligent advisory systems from pre-compiled building blocks.

product InfoFrames Scalable, Compactable & Faster AI | ML on summaries

InfoFrames is a suite of effective algorithms summarizing data, as well as effective implementations of AI-ML methods that can work on these summaries. 
InfoFrames is an offer to the organisations that have invested heavily in data management and processing, and which are considering or implementing AI-ML solutions. These will be companies for whom the essential functionality of the IT infrastructure and tools they use can quickly utilize predictive models, perform effective query-by-example searches and speed up computations. 

Features: COMPRESSION  |  DATA SUMMARIES  | FAST SEARCH

01 Summarizing Data

tools for creating different kinds of summaries for different kinds of datasets, such as tabular data (multi-column, multi-array) streams and series (e.g. sensory data, web sessions), images and their sequences (e.g. satellite photos, video recordings).

02 Feature extraction methods

operating on summaries of the above-mentioned data types.

03 Machine Learning methods

(e.g. neural networks, statistical and symbolic methods, etc.) operating on summaries of the above-mentioned data types.

04 Compactification

of Machine Learning models - to enable IoT applications

Project information

Info Frames is developing next to Small Big Data project.

Small Big Data
Development of innovative methods for creating summaries of very large data sets in order to improve the effectiveness of machine learning algorithms for large-scale problems.

Application number: POIR.01.01.01-00-0570/19

Value of the project: 11 484 818,46 zł

Donation: 8 269 944.49 zł

Beneficiary: Small Big Data Sp. z o. o.

Project duration: 01.03.2020 – 31.10.2022

Project realised as a part of: Działania 1.1 Poddziałania 1.1.1 Programu Operacyjnego Inteligentny Rozwój 2014-2020 współfinansowanego ze środków Europejskiego Funduszu Rozwoju Regionalnego

Project purpose: The goal of this project is to develop software that supports an innovative approach to compress very large, rapidly growing data sets, along with new versions of known machine learning algorithms (hereinafter referred to as AI-ML algorithms or methods), working directly on previously compressed (summarized, granulated) data, many times faster than the counterparts of these algorithms would work on the original data. In order to develop a solution that will best meet the market needs, cooperation with commercial organizations is planned in the course of the project, consisting in examining the operation of the developed algorithms on specific data sets that are an emanation of the real problems of these organizations. As a result of such action, it will be possible on the one hand to optimize the developed algorithms for specific business and technological problems, and on the other – to create the most general algorithms that work for all sorts of problems. The research and development work in the project will primarily involve the development of effective algorithms for summarizing data, as well as effective implementations of AI-ML methods that can work on such summaries. The result of our project will be aimed at companies that have incurred very large investments in data management and processing, and which are considering or implementing AI-ML initiatives. These will be companies for whom the crucial functionality of the IT infrastructure and tools they use is the ability to quickly calculate / recalculate predictive models, etc.

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