Operator-ready prompt for reuse, tuning, and workspace runs.
This item is set up for developers who want to inspect the original language, fork it into Workspace, and adapt the evidence model without losing the source prompt structure.
Implementation handoffs, eval setup, and prompt tuning where you need the original structure intact.
Inspect first, copy once, then fork into Workspace when you want variants, notes, and model settings attached to the same run.
Swap domain facts, examples, and any hard-coded entities for your own context.
Tighten the evidence or verification requirement if this is headed toward production.
Decide which failure mode you want to evaluate first before you branch the prompt.
This prompt already carries implementation detail, tool context, and a final-output instruction. Keep that structure intact when you tune it, or your comparison runs get noisy fast.
Open this prompt inside Workspace when you want a live iteration loop.
Copy for quick reuse, or run it in Workspace to keep prompt variants, model settings, and prompt-history changes in one place.
Structured source with 1 active lines to adapt.
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Prompt content
Original prompt text with formatting preserved for inspection and clean copy.
Integrate Cohere Command R+ to enhance your optimization framework. Demonstrate how the LLM can interpret a natural language query (e.g., 'What if energy prices surge by 2x during evening peak?') to generate a hypothetical scenario or suggest adjustments to optimization parameters (e.g., weighting factors for different cost components). Provide examples of prompts and the LLM's responses, showing how these insights can feed back into the MPC.
Adaptation plan
Keep the source stable, then branch your edits in a predictable order so the next prompt run is easier to evaluate.
Hold the task contract and output shape stable so generated implementations remain comparable.
Update libraries, interfaces, and environment assumptions to match the stack you actually run.
Test failure handling, edge cases, and any code paths that depend on hidden context or secrets.
Copy once for a pristine source snapshot, then move the prompt into Workspace when you want variants, run history, and side-by-side tuning without losing the original.
Prompt diagnostics
Quick signals for how structured this prompt already is and where adaptation work is likely to happen first.
This prompt is mostly narrative and instruction-driven, so you can adapt examples and output constraints first without disturbing the structure.
C&I Battery Dispatch Optimization with LLM-Assisted Strategy Generation
Develop an AI-powered system to optimize battery energy storage dispatch for Commercial & Industrial (C&I) customers. The system must minimize electricity costs, primarily focusing on demand charge reduction and energy arbitrage, while maximizing the self-consumption of rooftop solar PV. This involves forecasting C&I load profiles, solar generation, and electricity market prices. Leverage advanced machine learning techniques for robust forecasting and an optimization engine (e.g., Model Predictive Control) for optimal battery dispatch. Integrate a Large Language Model (LLM) to assist in scenario generation, refine optimization objectives based on natural language input, and provide actionable insights for C&I energy managers. The solution should be deployable via a cloud-based MLOps platform.
Use the challenge page to recover the original task boundaries before you tune the prompt. That keeps your variants grounded in the same evaluation target instead of drifting into a different problem.