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Data / ML, Engineering

Introducing Orbit, An Open Source Package for Time Series Inference and Forecasting

May 14, 2021 / Global
Featured image for Introducing Orbit, An Open Source Package for Time Series Inference and Forecasting
Figure 1 A quadrant chart for some time series related packages. The x-axis represents the ability for generalization and tooling, while the y-axis represents the completeness of specific model implementations.
Figure 2 An animation to dynamically show the back-testing process in Orbit with the expanding window scheme.
Figure 3 An overview of Bayesian time series modeling workflow
Figure 4 A deeper look at the Orbit class relationship
Figure 5 Actual v.s. Fitted plot generated by Orbit. Black points represent the actual training data points, and orange ones the actual testing data points. The cyan lines represent the prediction results along with the confidence intervals.
Figure 6 A set of diagnostic plots for fitted Orbit models.
Table 1 Model average SMAPE comparison. Note that the one with the best SMAPE metric for each data set is highlighted in bold. The values within parentheses are standard deviations.
Edwin Ng

Edwin Ng

Edwin Ng is a Senior Applied Scientist at Uber where he leads the team to build statistical and machine learning models to support measurement and strategic decisions in marketing. He was one of the speakers in the 40th International Symposium on Forecasting and AdKDD 2021 where he presented probabilistics forecasting and its applications in marketing.

Yifeng Wu

Yifeng Wu

Yifeng Wu is an Applied Scientist on the Marketing Data Science team. Yifeng works on building the creative optimization platform and real time bidding strategies on display channels using causal inference. Yifeng is a contributor to Orbit.

Jing Pan

Jing Pan

Jing Pan is a data scientist in the Marketing Data Science team. She is focusing on the targeting, personalization, optimization and causal inference for marketing.

Ariel Jiang

Ariel Jiang

Ariel Jiang is an Applied Scientist on Uber’s Marketing Data Science team. She works on planning and forecasting, marginal benefit, and experimentation.

Steve Yang

Steve Yang

Steve Yang is a former data scientist at Uber. Currently, Steve works on causal inference and optimization problems at Facebook Reality Labs. As a full stack data scientist, Steve’s work includes translating business problems into statistical and machine learning tasks, engineering data pipelines, deploying statistical Python packages, and productionizing models.

Posted by Edwin Ng, Lindsey Elkin, Yifeng Wu, Jing Pan, Ariel Jiang, Steve Yang