Distributed Order Management
Optimize order fulfilment across multiple inventory sources, locations and partners.
Optimize order fulfilment across multiple inventory sources, locations and partners.
Gain real-time visibility of inventory across all fulfilment points and partner.
Simplify tax management and compliance with a powerful omni-channel commerce framework.
Manage products and orders in different online marketplaces from a single dashboard.
Overachieve on customer satisfaction metrics with powerful add-ons that enable a complete omni-channel commerce experience.
Reduce total costs and get to market faster with best-in-class technology and support.
Keros provides a modern and customer-friendly solution for order and return management.
Keros enables you to easily support different order fulfillment methods, including click and collect and ship to store.
Keros manages order fulfilment across physical and digital retail channels, warehouse locations and partners.
Keros provides a solution for consistent product and order management across multiple digital marketplaces.
Keros includes best-in-class functionality for addressing tax and invoicing challenges.
Keros enables brands to increase consumer loyalty by offering shopping convenience and flexibility.
K-Commerce enables brands to quickly create personalized and full-featured digital shopping experiences.
Keros enables brands to create “endless aisles” that bridge digital and retail shopping channels.
Keros consulting services to support customers in successfully implementing their digital commerce and order management strategies.
KEROS OMNI-CHANNEL CAPABILITIES
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Contact usLorem Ipsum is simply dummy text of the printing and typesetting industry. Lorem Ipsum has been the industry's standard dummy text ever since the 1500s, when an unknown printer took a galley of type and scrambled it to make a type specimen book. It has survived not only five centuries, but also the leap into electronic typesetting, remaining essentially unchanged.
Contact usData is at the centre of every AI engine. And data preparation is one of the most critical phases.
It starts with collecting data such as stock prices, fundamental data, indexes futures, currencies, interest rates, macroeconomic indicators, analysts' estimates, and technical indicators from our data providers.
During the data preparation step, our Quants and Data Engineers validate, identify and rectify inconsistencies, and deal with outliers, anomalies, structural changes and any missing data. After the data preparation, the data is clean and ready to be transformed and engineered to create features.
Why is it important?
Data preparation helps us to get the most out of the
data. In this step, the quality and the quantity of data influence directly how good our
predictive model will be. Without this phase, we can end up spending a lot of time looking
at bad AI results. The better the data, the more outstanding the results.
What is the output?
Output: clean datasets, ready to be used to train the
AI models.
In our case, for each investment product (Equities, Futures, Commodities),
there is a different dataset containing features.
INTRO: This step may be considered the heart of the Axyon IRIS technology stack.
💡If our products were cars, this is the step where we produce the engines. Here, our Machine Learning Team will use our proprietary AutoML engine as a factory to train and optimize forecasting models, based on multiple state-of-the-art AI technologies.
More specifically, the clean dataset generated in the previous step will be used to train supervised machine learning models with the goal to forecast the ranking of target financial assets in terms of expected return.
💡This is analogous to how you would slowly learn a new language by attempting to translate short random sentences and receiving feedback from a teacher: you would slowly learn what works and what doesn’t, and gradually improve at this task.
During the training, each ML model learns how to rank financial assets based on the expected relative performance over a given time horizon after processing millions of historical data points. Besides optimizing individual models, our Platform is able to automatically tune hyperparameters** and perform feature selection, thanks to advanced Evolutionary Computation*** techniques.
**Hyperparameter tuning means adjusting the parameters that the model cannot learn and need to be provided before training.
***Evolutionary Computation (EC) is the technique used in complex optimization on problems that have too many variables for traditional algorithms to consider.
Models are then evaluated in terms of proprietary metrics assessing both their accuracy and, crucially, robustness to several scenarios that may occur. Finally, an ensemble of the best models is automatically created and deployed to our model registry for live usage. We also generate out-of-sample historical predictions for unbiased model evaluation and analysis in this step.
Processing large amounts of data is very computationally demanding. Therefore, our Platform relies on a flexible and scalable workload management system which automatically summons accelerated computation nodes on the cloud (supporting multiple providers) or on connected HPC (high-performance computer) resources.
Why is it important?
This is important for two reasons:
(i) a big part of Axyon’s R&D effort is dedicated to the improvement of financial AI modelling, hence this step is where our technology really shines;
(ii) the resulting AI models and their forecasting ability will be one of the key ingredients in the construction of our AI-powered investment strategies in later phases.
Once trained, our AI models will be ready to answer the key question:
"How
will asset XYZ perform over the next month compared to other assets?"
How long does this phase take?
In general, training ML models can take
from seconds on a laptop to months on a large-scale GPU cluster. It depends on the
complexity of the model and dataset.
In our case, it may take from a few days up to about a week, depending on the size of the target investment universe.
Our Machine Learning Team is actively working to improve the ML model training process, with the goal of training more accurate models, faster.
What is the output?
This step produces optimised AI-based forecasting
models, which will be deployed as a key component of the end product.
After the model deployment, our proprietary AutoML engine produces AI-predictive signals that allow investors to access AI algorithms insights.
The signals are transformed into rankings based on the assets' predictive performances given a time horizon. Those AI signals are then monitored and analysed to determine whether or not they have helped address the client’s business needs.
Why is it important?
This is important to evaluate the overall quality
and stability of the signals and to understand the relationship between known investing
factors and ML signals.
What is the output?
Output: reports that contain detailed information
about the historical signals
The final outputs of the model discovery process are relative performance rankings that can be used to build different investment strategies (according to the client's requirements).
These rankings identify predicted outperformers and underperformers within a given investment universe and time horizon.
The first way to integrate AI into an existing process is directly trading a fully-fledged AI-based strategy.
To build such a strategy, an investor could transform the daily ranking into target portfolio weights that guide the portfolio allocation. As an example, a portfolio manager could choose to create a long-only strategy that every week puts equal weight on each of the top 30 assets of the AI-generated ranking.
A different alternative to integrating AI into an existing process is treating AI signals and rankings as an alternative alpha-generating data source. This approach can be illustrated using predictive rankings for overweight or underweight assets already traded by discretionary asset managers.
Contact usThe final outputs of the model discovery process are relative performance rankings that can be used to build different investment strategies (according to the client's requirements).
These rankings identify predicted outperformers and underperformers within a given investment universe and time horizon.
The first way to integrate AI into an existing process is directly trading a fully-fledged AI-based strategy.
To build such a strategy, an investor could transform the daily ranking into target portfolio weights that guide the portfolio allocation. As an example, a portfolio manager could choose to create a long-only strategy that every week puts equal weight on each of the top 30 assets of the AI-generated ranking.
A different alternative to integrating AI into an existing process is treating AI signals and rankings as an alternative alpha-generating data source. This approach can be illustrated using predictive rankings for overweight or underweight assets already traded by discretionary asset managers.
Contact usThe final outputs of the model discovery process are relative performance rankings that can be used to build different investment strategies (according to the client's requirements).
These rankings identify predicted outperformers and underperformers within a given investment universe and time horizon.
The first way to integrate AI into an existing process is directly trading a fully-fledged AI-based strategy.
To build such a strategy, an investor could transform the daily ranking into target portfolio weights that guide the portfolio allocation. As an example, a portfolio manager could choose to create a long-only strategy that every week puts equal weight on each of the top 30 assets of the AI-generated ranking.
A different alternative to integrating AI into an existing process is treating AI signals and rankings as an alternative alpha-generating data source. This approach can be illustrated using predictive rankings for overweight or underweight assets already traded by discretionary asset managers.
Contact usThe final outputs of the model discovery process are relative performance rankings that can be used to build different investment strategies (according to the client's requirements).
These rankings identify predicted outperformers and underperformers within a given investment universe and time horizon.
The first way to integrate AI into an existing process is directly trading a fully-fledged AI-based strategy.
To build such a strategy, an investor could transform the daily ranking into target portfolio weights that guide the portfolio allocation. As an example, a portfolio manager could choose to create a long-only strategy that every week puts equal weight on each of the top 30 assets of the AI-generated ranking.
A different alternative to integrating AI into an existing process is treating AI signals and rankings as an alternative alpha-generating data source. This approach can be illustrated using predictive rankings for overweight or underweight assets already traded by discretionary asset managers.
Contact usThe final outputs of the model discovery process are relative performance rankings that can be used to build different investment strategies (according to the client's requirements).
These rankings identify predicted outperformers and underperformers within a given investment universe and time horizon.
The first way to integrate AI into an existing process is directly trading a fully-fledged AI-based strategy.
To build such a strategy, an investor could transform the daily ranking into target portfolio weights that guide the portfolio allocation. As an example, a portfolio manager could choose to create a long-only strategy that every week puts equal weight on each of the top 30 assets of the AI-generated ranking.
A different alternative to integrating AI into an existing process is treating AI signals and rankings as an alternative alpha-generating data source. This approach can be illustrated using predictive rankings for overweight or underweight assets already traded by discretionary asset managers.
Contact usThe final outputs of the model discovery process are relative performance rankings that can be used to build different investment strategies (according to the client's requirements).
These rankings identify predicted outperformers and underperformers within a given investment universe and time horizon.
The first way to integrate AI into an existing process is directly trading a fully-fledged AI-based strategy.
To build such a strategy, an investor could transform the daily ranking into target portfolio weights that guide the portfolio allocation. As an example, a portfolio manager could choose to create a long-only strategy that every week puts equal weight on each of the top 30 assets of the AI-generated ranking.
A different alternative to integrating AI into an existing process is treating AI signals and rankings as an alternative alpha-generating data source. This approach can be illustrated using predictive rankings for overweight or underweight assets already traded by discretionary asset managers.
Contact usThe final outputs of the model discovery process are relative performance rankings that can be used to build different investment strategies (according to the client's requirements).
These rankings identify predicted outperformers and underperformers within a given investment universe and time horizon.
The first way to integrate AI into an existing process is directly trading a fully-fledged AI-based strategy.
To build such a strategy, an investor could transform the daily ranking into target portfolio weights that guide the portfolio allocation. As an example, a portfolio manager could choose to create a long-only strategy that every week puts equal weight on each of the top 30 assets of the AI-generated ranking.
A different alternative to integrating AI into an existing process is treating AI signals and rankings as an alternative alpha-generating data source. This approach can be illustrated using predictive rankings for overweight or underweight assets already traded by discretionary asset managers.
Contact usThe final outputs of the model discovery process are relative performance rankings that can be used to build different investment strategies (according to the client's requirements).
These rankings identify predicted outperformers and underperformers within a given investment universe and time horizon.
The first way to integrate AI into an existing process is directly trading a fully-fledged AI-based strategy.
To build such a strategy, an investor could transform the daily ranking into target portfolio weights that guide the portfolio allocation. As an example, a portfolio manager could choose to create a long-only strategy that every week puts equal weight on each of the top 30 assets of the AI-generated ranking.
A different alternative to integrating AI into an existing process is treating AI signals and rankings as an alternative alpha-generating data source. This approach can be illustrated using predictive rankings for overweight or underweight assets already traded by discretionary asset managers.
Contact usThe final outputs of the model discovery process are relative performance rankings that can be used to build different investment strategies (according to the client's requirements).
These rankings identify predicted outperformers and underperformers within a given investment universe and time horizon.
The first way to integrate AI into an existing process is directly trading a fully-fledged AI-based strategy.
To build such a strategy, an investor could transform the daily ranking into target portfolio weights that guide the portfolio allocation. As an example, a portfolio manager could choose to create a long-only strategy that every week puts equal weight on each of the top 30 assets of the AI-generated ranking.
A different alternative to integrating AI into an existing process is treating AI signals and rankings as an alternative alpha-generating data source. This approach can be illustrated using predictive rankings for overweight or underweight assets already traded by discretionary asset managers.
Contact usThe native integration between BigCommerce
and K-OMS allows to benefit of the entire
omnichannel capabilities