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DataRobot

Score8.3 out of 10

87 Reviews and Ratings

What is DataRobot?

The DataRobot AI Platform is presented as a solution that accelerates and democratizes data science by automating the end-to-end journey from data to value and allows users to deploy AI applications at scale. DataRobot provides a centrally governed platform that gives users AI to drive business outcomes, that is available on the user's cloud platform-of-choice, on-premise, or as a fully-managed service.

The solutions include tools providing data preparation enabling users to explore and shape data in preparation for machine learning, automate machine learning, deploy, monitor, manage, and govern all AI models (i.e. MLOps), and the ability to generate time series models that predict the future values of a data series based on its history and trend.

DataRobot AI Platform extends the user's data science expertise with automation and aims to give unlimited flexibility for both data science experts and non-technical users to succeed with AI.

Media

Decision Flows
No Code App Builder
AI Apps
Automated Time Series
MLOps
Model Insights
Visual AI
Prediction Explanations
Bias and Fairness
Cloud-Hosted Notebooks
Data Preparation
Location AI

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Risk Manager's Data Robot Assessment

Use Cases and Deployment Scope

I use it for predictive analysis. It helps develop credit risk models to be used for various business operations s (i.e., Products, Credit, and Collections), such as cross-selling, credit limit selling, and collection strategy formulation. On the other hand, it helps perform credit risk analysis to formulate solutions and effective risk management strategies. Manpower can also be maintained while increasing productivity thanks to data robot's capabilities.

Pros

  • Shortlisting of Risk Factors
  • Model Building
  • Exploratory Data Analysis

Cons

  • To show the model performance of train dataset

Return on Investment

  • Increased productivity
  • more accurate forecasting

Great company and team that are vested in your success

Use Cases and Deployment Scope

We use DataRobot for traditional ML/AI use cases from R&D and training to deploying and monitoring. Use cases include churn / acquisition modelling and other propensity models.

Pros

  • AutoML
  • MLOps
  • Speed-to-market

Cons

  • Deeper / better integration with hyperscalers

Return on Investment

  • Increased velocity of model development and deployment 3X
  • Increased revenue through deployment of specific models that have a direct tie to revenue generation.

Alternatives Considered

Vertex AI and RapidMiner

Excellent for moving from willing to able.

Use Cases and Deployment Scope

I used Data Robot to design a machine learning algorithm that profiled employee's work environment and absenteeism behaviour (as well as other market factors) to determine if they matched the profile of those employees who had left before us. We were able to use this information to understand the emerging turnover risk of our employees across our various facilities, managers, states and tenures.

The result allowed us to target our HR initiatives, provide additional training and support to staff and managers, and implement out of the box solutions to newly discovered issues resulting in turnover. It also allowed us to confirm and quantify the impact of different drivers on turnover, which in turn let us prioritise our responses. Finally, we were able to use the models to estimate the impact on turnover and costs a change initiative might cause by looking at the historical impact of initiatives run by our individual sites and/or how difference between a variable had impacted turnover previously.

Having access to data scientists and project management staff to help design, understand, train and utilize, identify use cases and design the change process was the highlight of their service.

Pros

  • Supporting its users to identify and execute on use cases
  • Building internal capability
  • Providing a powerful tool that simplifies the end to end machine learning process.

Cons

  • Some of the UI takes some time to get around (look for orange text)
  • The idea of "machine learning" citizen is a bit of a stretch. But they empower your analysts

Return on Investment

  • Increased Productivity
  • Increased Revenue
  • More accurate forcasting
  • Better understanding of key drivers
  • Better empowered decision making

Risk Modeller's Assessment of DataRobot

Use Cases and Deployment Scope

I am using datarobot to develop Application and Behavioural Credit Scorecards for the Bank. Develop credit risk models to be used for various business operations (i.e., Products, Credit, and Collections), such as cross-selling, credit limit selling, and collection strategy formulation. Develop credit risk models to elevate lending decision-making and enhance risk management at CIMB PH.

Pros

  • Exploratory Data Analysis
  • Shortlisting of Risk Factors
  • Model Building/ Blueprint

Cons

  • Show the model performance of train dataset
  • Do not limit up to five features only when downloading predictions

Return on Investment

  • less time spent on building models
  • increased productivity
  • there are some limitations to consider when using datarobot like interpretability of model results

Other Software Used

Python IDLE

Intelligent Tool for Data Modelling

Use Cases and Deployment Scope

This is used for building data models for scorecard monitoring in our department, Risk Management.

Pros

  • Data Modeling
  • Variable Creation
  • Connectivity with other language such as Python

Cons

  • Showing the actual algorithm, example is in Decision Tree

Return on Investment

  • Increase in productivity
  • More options of models to choose from
  • Easier data preparation

Alternatives Considered

Alteryx

Other Software Used

Jupyter Notebook, Alteryx, Microsoft Excel