Comprehensive Merkmalsengineering Tools for Every Need

Get access to Merkmalsengineering solutions that address multiple requirements. One-stop resources for streamlined workflows.

Merkmalsengineering

  • A customizable reinforcement learning environment library for benchmarking AI agents on data processing and analytics tasks.
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    What is DataEnvGym?
    DataEnvGym delivers a collection of modular, customizable environments built on the Gym API to facilitate reinforcement learning research in data-driven domains. Researchers and engineers can select from built-in tasks like data cleaning, feature engineering, batch scheduling, and streaming analytics. The framework supports seamless integration with popular RL libraries, standardized benchmarking metrics, and logging tools to track agent performance. Users can extend or combine environments to model complex data pipelines and evaluate algorithms under realistic constraints.
  • Qwak automates data preparation and model creation for machine learning.
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    What is Qwak?
    Qwak is an innovative AI Agent designed to simplify machine learning workflows. It automates key tasks such as data preparation, feature engineering, model selection, and deployment. By leveraging cutting-edge algorithms and a user-friendly interface, Qwak empowers users to build, evaluate, and optimize machine learning models without requiring extensive coding skills. This platform is ideal for data scientists, analysts, and businesses looking to harness AI technology quickly and effectively.
  • AI agent automates quantitative investment strategy creation, backtesting, portfolio optimization, and risk analysis using OpenAI Autogen.
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    What is Autogen Quant Invest Agent?
    Autogen Quant Invest Agent leverages large language models to automate the full quantitative investment pipeline. It connects to data APIs for market, fundamental, and alternative datasets, performs feature engineering and statistical analysis, and formulates algorithmic trading strategies. The agent orchestrates backtesting across historical periods, generates performance reports, and conducts risk assessments including drawdown, Sharpe ratio, and VaR. With customizable modules, users can tune strategy parameters, integrate custom indicators, and automate portfolio rebalancing rules. The framework’s modular chain-of-agents design allows seamless integration with order execution systems or data warehouses. This tool streamlines systematic research, reduces manual scripting, and empowers quantitative analysts to rapidly prototype, evaluate, and deploy investment models.
  • AutoML-Agent automates data preprocessing, feature engineering, model search, hyperparameter tuning, and deployment via LLM-driven workflows for streamlined ML pipelines.
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    What is AutoML-Agent?
    AutoML-Agent provides a versatile Python-based framework that orchestrates every stage of the machine learning lifecycle through an intelligent agent interface. Starting with automated data ingestion, it performs exploratory analysis, missing value handling, and feature engineering using configurable pipelines. Next, it conducts model architecture search and hyperparameter optimization powered by large language models to suggest optimal configurations. The agent then runs experiments in parallel, tracking metrics and visualizations to compare performance. Once the best model is identified, AutoML-Agent streamlines deployment by generating Docker containers or cloud-native artifacts compatible with common MLOps platforms. Users can further customize workflows via plugin modules and monitor model drift over time, ensuring robust, efficient, and reproducible AI solutions in production environments.
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