Yaripo Engineer · Industrial Technical Track
UF 6 · Enrollment open

Industrial Forecasting with Foundation Models

Most operations have an abundance of signals but a shortage of clean data. This course teaches you to anticipate failures and asset behavior with foundation time-series models — even without the perfect dataset that will never arrive on time.

14 hours
Engineers · Maintenance · Reliability · Data science
Online · Asynchronous
Yaripo Certificate
14h
total duration
4
modules
1
real forecasting prototype
UF 6
access price
// The operational context

Abundance of signals.
Shortage of clean failure labels.

Most industrial operations have historians full of signals: temperature, vibration, pressure, current, cycles. The problem is not the volume of data — it is that most of those signals carry no reliable failure labels, events of interest are rare, and the datasets that do exist are heterogeneous, with gaps, sensor changes, and periods of abnormal operation that no one documented. Waiting for the perfect dataset delays an operation's predictive capability by years, not months.

Classical machine-learning approaches for time series — ARIMA, statistical models, recurrent networks trained from scratch — require exactly what most operations do not have: clean, sufficient, and consistent data. Foundation time-series models change that equation. Amazon Chronos, Google TimesFM, and equivalent approaches are pretrained models capable of making reasonable predictions in zero-shot or few-shot mode — without an extensive history, without perfect labels, without months of training.

But applying them correctly in an industrial context requires understanding their limits: when they make sense, what metrics matter for operations, how to prepare multivariate signals with gaps and drift, and how to integrate predictions into real maintenance decisions. This course is designed for that context: real assets, noisy signals, and organizations in regulated markets that cannot wait years to capture predictive value.

// Course curriculum

What you will build

Four modules spanning the fundamentals of new forecasting models through integration with real maintenance and operational decisions.

What changed in forecasting with foundation models

From classical per-asset models to models pretrained on millions of series. What Amazon Chronos, Google TimesFM, and equivalent approaches are. When they make sense in an industrial context and when classical approaches remain competitive. Conceptual architecture of foundation time-series models.

3 hours
Preparing operational signals

Multivariate series, sampling frequency, time windows, and signal quality. Handling missing values, sensor drift, and rare events. Relevant contextual variables in industrial assets: operating cycles, scheduled maintenance, environmental conditions. When to normalize and when not to.

4 hours
Modeling strategy without a perfect history

Zero-shot forecasting: applying pretrained models without your own training data. Few-shot: how many examples are enough. Benchmark against ARIMA, Prophet, and classical statistical methods on real industrial signals. Metrics that actually matter in operations: not generic MAE, but anticipation error and false alarm rate.

4 hours
Practical use for maintenance and operational decisions

Early deviation detection: how to turn a prediction into an actionable alert. Integration with monitoring systems, maintenance planning, and work orders. Limits of the approach and criteria for knowing when a predictive model is ready for production. Analytical maturity roadmap for industrial assets.

3 hours
// Upon completion

What you will be able to do

Prototype forecasting with real data

Apply foundation time-series models to your own industrial signals — with incomplete, heterogeneous data and without a perfect history — and evaluate results with metrics that matter in operations.

Detect deviations before failure

Turn asset behavior predictions into actionable alerts for predictive maintenance. Define anticipation thresholds relevant to the process — not just statistical metrics without operational context.

Decide when to scale to production

Concrete criteria to evaluate whether a predictive model is ready to integrate into real operational decisions — and an analytical maturity roadmap for expanding coverage to multiple assets without losing precision.

// Instructor

Who teaches this course

Andrés Parra, Founder & CEO of Yaripo
Andrés Parra
Founder & CEO · Yaripo SpA

Seven years leading data ecosystems at BCI, work at Canadian ad-tech firm illumin, with stints at the IDB, PDVSA, Falabella, and Walmart across five countries. Founded Yaripo with the mission of closing the gap between AI strategy and real implementation at mid-size organizations with critical operations.

MBA · Universidad de Chile
Computer Engineer · UCV Venezuela
7 years in data transformation in banking · BCI Chile
IDB Consultant · National Statistics System

Yaripo designs this course from the opposite bias to the academic: noisy signals, imperfect histories, and organizations in regulated markets that cannot wait two years to build the ideal dataset before capturing predictive value. While most forecasting training offerings work with clean, well-labeled benchmark datasets, Yaripo grounds the content in real assets — with sensor drift, rare events, data gaps, and integration constraints imposed by existing maintenance systems.

// Frequently asked questions

What engineers ask before enrolling

They are models pretrained on large volumes of time series from diverse domains, capable of making predictions in new contexts without requiring training from scratch. Examples include Amazon Chronos and Google TimesFM. Unlike classical models (ARIMA, Prophet), they can operate in zero-shot or few-shot mode, making them useful when a long, labeled history is not available.
Yes. Module 3 is specifically designed for that scenario: zero-shot and few-shot forecasting, handling missing values, drift, and rare events. Foundation models have better tolerance for imperfect data than classical approaches, although the course covers when that tolerance has limits and what to do when the history is insufficient even for them.
In predictive maintenance, the goal is to detect behavioral changes before failure — not to predict an exact value, but to identify deviations from an operational baseline. In demand forecasting, the goal is to estimate a future value within a bounded error margin. The course covers both applications and the relevant metrics for each in an industrial context.
Knowledge of Python and familiarity with DataFrame-type data structures (pandas) are required. No prior experience in machine learning or time-series models is needed. The course works with publicly available libraries and covers the necessary fundamentals from module 1.
Foundation models are especially useful when there is no long, clean history, when rapid prototyping across multiple assets is needed, or when the cost of training and maintaining per-asset models is prohibitive. Classical models remain competitive when abundant, well-labeled data is available. Module 3 includes a benchmark between both approaches with metrics relevant to operations.
// Program access

Your assets are already talking.
This course teaches you to listen before the failure.

14 hours. 4 modules. A working forecasting prototype built on real signals from your operation — without waiting for the perfect dataset.

UF 6
Full access · Yaripo Certificate · SENCE eligible

Enrollment at academia.yaripo.cl · Online asynchronous format · SENCE tax-credit compatible