Energy
Parabole AI
Parabole AI helps large enterprises solve complex industrial optimization challenges using causal AI. Causal AI is a branch of AI where algorithms are rooted in the definition of cause-and-effect relationships between inputs and outputs. While classical AI and machine learning focus on prediction, causal AI works to answer the same questions generatively, with clear structural definitions. Parabole sought to pair domain-specific causal modeling with state-of-the-art compute infrastructure using NVIDIA’s accelerated computing platform to transform real-time AI decision-making at industrial scale for its customers with speed, context, and confidence.
Parabole AI
Gurobi
Simulation / Modelling / Design
Faster Causal AI Analysis
Optimized Models for Linear Programming
Enhanced Data Processing and Graph Generation
In complex industrial environments, it can be extremely difficult to make optimization both scalable and actionable in situations where data is noisy, expertise is fragmented, and objectives are fluid.
Traditional mathematical optimization engines such as Gurobi are powerful, but they require clearly defined variables, constraints, and objectives, which is often not feasible when qualitative data, cross-functional interactions, and external forces like macroeconomics are in play. Parabole TRAIN continuously ingests cross-functional data, validates hypotheses, and refines mathematical models for execution by an optimization engine—enabling dynamic, high-speed optimization at scale. Such optimization at scale needs full-stack accelerated computing.
Making real-time decisions in large, complex industrial settings is tough—especially when data comes from many different systems. That’s why Parabole built the TRAIN platform, a smart solution that fits right into existing workflows without requiring major changes.
Instead of trying every possible option (which takes massive computing power), TRAIN identifies the key factors that truly drive outcomes. It narrows down the choices before running any calculations—making decisions faster and more efficient.
To do this, TRAIN blends science, company knowledge, and real-world data, along with expert input. This helps it test smarter scenarios, reduce trial and error, and cut overall computing time by over 10x.
Parabole AI
Using contextual combined causal graphs, Parabole achieved 10x improvements in speed and relevance to reduce the load on optimization models.
To meet the demands of near-real-time performance, Parabole parallelized core causal modeling operations into thousands of large computation batches. For this, it harnessed NVIDIA’s accelerated computing platform, which provided:
This synergy of causal intelligence, machine learning, and high-performance computing enables TRAIN to deliver continuous, context-aware optimization—not just solving business problems, but solving them very quickly, accurately, and at scale.
“By blending cross-functional expertise with NVIDIA GPU-accelerated computation, we’re not just solving equations—we’re solving real business problems, continuously and contextually at a near-real-time speed.”
Sandip Bhaumik
CTO, Parabole AI
By shifting from CPU-based to GPU-accelerated computation, Parabole achieved a 1,000x speedup in causal model generation and analysis.
This leap in performance was made possible by optimizing platform modules to fully use NVIDIA’s accelerated computing platform, with benchmark tests spanning multiple NVIDIA compute architectures—from the NVIDIA Ampere architecture to the NVIDIA GH200 Grace Hopper Superchip.
Key performance gains in moving from the Ampere architecture to GH200 included:
Overall causal analysis time reduced from ~10 hours to under 1 minute in moving from CPU (64 vCPU x86) to GH200.
These improvements are not just technical feats—they enable real-time decision-making at industrial scale. In one deployment at a large equipment manufacturer, TRAIN’s causal optimization AI agent was used to generate minute-level production plans across a complex plant with multiple machines and product types. The system:
The integration of Parabole’s TRAIN platform, NVIDIA accelerated computing, and the Gurobi Optimization solver is enhancing real-time industrial processes. Together, this collaboration delivers:
This causal, AI–driven framework enables organizations to move beyond traditional, rigid optimization models—delivering faster, more interpretable, and more adaptive decision-making at industrial scale. This novel optimization enabled 5% natural gas savings at a large refinery through real-time energy rule generation and delivered a 66% overall equipment effectiveness (OEE) boost—a metric in manufacturing for machine availability, production speed, and product quality in large manufacturing production lines.
Looking ahead, Parabole is working to expand its methodology into additional domains such as energy and logistics, while enhancing AI model robustness and causal inference accuracy through deeper integration of external and internal data.
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