McSpikey
Reduce Uncertainty and Gain Clarity for Your Data Initiative
When it comes to launching a data initiative, uncertainty can slow progress, cause hesitation, or lead to missteps. You need a clear understanding of the risks, challenges, and opportunities before committing to a full-scale delivery initiative.
AgileData’s McSpikey Research Spike is a fixed price service designed to provide you with the focused, exploratory analysis you need to validate assumptions, reduce uncertainty, and ensure your data initiative starts off on the right track.
Vision
Is it for me?
For the Data Leader and Data Teams
Who need to reduce uncertainty and gain clarity before embarking on a data initiative
The AgileData “McSpikey” is a fixed price service
That provides exploratory analysis to validate assumptions, identify risks, and clarify the feasibility of your data initiative
Unlike jumping into a full-scale data initiative without fully understanding the potential challenges and complexities
AgileData “McSpikey” will:
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Conduct focused, exploratory research to assess the viability of your data initiative;
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Identify risks and complexities early in the process, helping you make informed decisions;
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Provide actionable insights and recommendations to reduce uncertainty;
- Provide the AgileData Platform at no additional cost for the length of the service;
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Offer a fixed price service with no additional onboarding or ongoing costs.
Validate Your Data Initiative
Before investing significant resources, AgileData’s McSpikey helps you to explore the feasibility of your data initiative, helping you make informed investment decisions.
Identify Risks Early
We’ll identify potential risks, complexities, and roadblocks at the outset, so you can address them before they become costly challenges.
Get Actionable Steps
The research spike doesn’t just highlight potential issues, it provides you with actionable recommendations to reduce uncertainty and guide your next steps.
Clarify the Best Path Forward
With our findings in hand, you’ll have a clear understanding of how to proceed with confidence, ensuring your data initiative is strategically aligned and well-positioned for success.
Validate your Investment Assumptions
With a clearer understanding of the risks and feasibility of your data initiative, you’ll be better equipped to make informed investment decisions.
Reduced Uncertainty
Research spikes help reduce the uncertainty that often accompanies data initiatives, reducing the risk of the unknown impacting the delivery of the initiative.
Time and Cost Savings
By identifying potential issues early and validating assumptions, you’ll avoid costly missteps and delays further down the line.
Fixed Price
The McSpikey Research Spike service is available for a fixed price of 15k, offering a clear and predictable cost to help reduce uncertainty and assess the feasibility of your data initiative with confidence.
Fixed Timeframe
The McSpikey Research Spike is timeboxed to 3 months, to enable regular. We aim to deliver results as quickly as possible, often completing sooner to reduce uncertainty faster.
Agreed Scope
We collaborate using an Innovation Canvas to define the scope of the McSpikey Research Spike and agree on what success looks like upfront, ensuring alignment and clear goals from the start.
Conducted on Your Data
We use your organisation’s data, securely processed and analysed on the AgileData platform, to ensure insights and recommendations are grounded in your actual data landscape.
No Long-Term Commitment
The Research Spike is a focused, fixed price, 3 month engagement designed to provide immediate value, with no ongoing maintenance or additional costs.
15K
Gain Early Confidence in Your Planned Data Initiative
With AgileData’s “McSpikey” service, you can reduce uncertainty, identify risks, and clarify the path forward for your data initiatives. With rapid, focused analysis and actionable recommendations, you can ensure your data initiative is set up for success before committing significant resources.
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