A Forrester Total Economic Impact™ Study Commissioned By Snowflake, October 2024
Organizations increasingly need an easy-to-use and scalable AI and data platform to automate infrastructure management and performance improvements so that teams can focus on completing projects and launching new products, not routine maintenance and tuning. AI is another pivotal moment for cloud; enterprises must undergo yet another refresh to understand the capabilities required and its role in their broader strategy/vision.1
The Snowflake AI Data Cloud provides a unique architecture that supports multiple data types, workloads, languages, and runtimes to connect businesses globally at any scale through a single engine. The Snowflake AI Data Cloud is a fully managed service with automated cluster management, maintenance, and upgrades. Regular performance improvements are also rolled out across all workloads. With Snowflake, organizations can automate costly and complex platform management and performance tuning to focus on accelerating value delivery. Snowflake delivers key business impacts by optimizing workloads across analytics, data engineering, AI/machine learning (ML), and applications to accelerate time to market, thereby driving faster revenue growth for organizations of all sizes.
Snowflake commissioned Forrester Consulting to conduct a Total Economic Impact™ (TEI) study and examine the potential return on investment (ROI) enterprises may realize by deploying the Snowflake AI Data Cloud.2 The purpose of this study is to provide readers with a framework to evaluate the potential financial impact of the Snowflake AI Data Cloud on their organizations.
To better understand the benefits, costs, and risks associated with this investment, Forrester interviewed four representatives with experience using the Snowflake AI Data Cloud. For the purposes of this study, Forrester aggregated the interviewees’ experiences and combined the results into a single composite organization that is a US-based, global organization with $15 billion in annual revenue.
Interviewees said that prior to using the Snowflake AI Data Cloud, their organizations leveraged fragmented on-premises solutions. In these legacy environments, interviewees struggled with infrastructure complexity, high technology and operational costs, data silos, and limited agility, which restricted the scalability and success of their AI and data initiatives.
After the investment in the Snowflake AI Data Cloud, the interviewees consolidated their data solutions. With Snowflake, interviewees increased incremental profit from data-driven innovation, improved operating margins, streamlined data operations, and reduced legacy infrastructure licensing, hardware, and maintenance costs.
Quantified benefits. Three-year, risk-adjusted present value (PV) quantified benefits for the composite organization include:
Unquantified benefits. Benefits that provide value for the composite organization but are not quantified for this study include:
Costs. Three-year, risk-adjusted PV costs for the composite organization include:
The representative interviews and financial analysis found that a composite organization experiences benefits of $24.9 million over three years versus costs of $5.5 million, adding up to a net present value (NPV) of $19.4 million and an ROI of 354%.
Return on investment (ROI)
Benefits PV
Net present value (NPV)
Payback
From the information provided in the interviews, Forrester constructed a Total Economic Impact™ framework for those organizations considering an investment in the Snowflake AI Data Cloud.
The objective of the framework is to identify the cost, benefit, flexibility, and risk factors that affect the investment decision. Forrester took a multistep approach to evaluate the impact that the Snowflake AI Data Cloud can have on an organization.
Interviewed Snowflake stakeholders and Forrester analysts to gather data relative to the Snowflake AI Data Cloud.
Interviewed four representatives at organizations using the Snowflake AI Data Cloud to obtain data about costs, benefits, and risks.
Designed a composite organization based on characteristics of the interviewees’ organizations.
Constructed a financial model representative of the interviews using the TEI methodology and risk-adjusted the financial model based on issues and concerns of the interviewees.
Employed four fundamental elements of TEI in modeling the investment impact: benefits, costs, flexibility, and risks. Given the increasing sophistication of ROI analyses related to IT investments, Forrester’s TEI methodology provides a complete picture of the total economic impact of purchase decisions. Please see Appendix A for additional information on the TEI methodology.
Readers should be aware of the following:
This study is commissioned by Snowflake and delivered by Forrester Consulting. It is not meant to be used as a competitive analysis.
Forrester makes no assumptions as to the potential ROI that other organizations will receive. Forrester strongly advises that readers use their own estimates within the framework provided in the study to determine the appropriateness of an investment in the Snowflake AI Data Cloud.
Snowflake reviewed and provided feedback to Forrester, but Forrester maintains editorial control over the study and its findings and does not accept changes to the study that contradict Forrester’s findings or obscure the meaning of the study.
Snowflake provided the customer names for the interviews but did not participate in the interviews.
Consulting Team:
Luca Son
Marianne Friis
| Role | Industry | Region | Annual revenues |
|---|---|---|---|
| Director of data intelligence | Food services | US | $35 billion |
| Director of global data and analytics | Mining | US HQ, Global | $20 billion+ |
| Senior director of data engineering and analytics | Financial services | US HQ, Global | $10 billion |
| Senior manager of data platforms | Energy | UK | $10 billion+ |
Prior to their investment in the Snowflake AI Data Cloud, interviewed decision-makers leveraged multiple on-premises and open-source data solutions. These multiple siloed data warehousing solutions presented common challenges for interviewees’ organizations, including:
The interviewees’ organizations searched for a solution that could:
Based on the interviews, Forrester constructed a TEI framework, a composite company, and an ROI analysis that illustrates the areas financially affected. The composite organization is representative of the four interviewees, and it is used to present the aggregate financial analysis in the next section. The composite organization has the following characteristics:
Description of composite. The composite organization is a US-based organization with global operations that generates $15 billion in annual revenue. The composite has a robust data program that seeks to uncover new insights from AI/ML models to increase revenue and optimize costs.
Deployment characteristics. Prior to the Snowflake AI Data Cloud, the composite organization used multiple on-premises legacy solutions that introduced fragmentation, technological complexity, and high costs. The composite organization begins consolidating its data analytics and AI/ML needs onto the Snowflake AI Data Cloud in Year 1, following a nine-month implementation period. The composite continues to expand usage and proficiency in Snowflake for a year following the initial rollout and achieves a steady, proficient state in Year 2. The composite employs 15 data engineers, 30 data scientists, and 200 business analysts across data teams in various functions who use Snowflake.
| Ref. | Benefit | Year 1 | Year 2 | Year 3 | Total | Present Value |
|---|---|---|---|---|---|---|
| Atr | Incremental profit from data-driven innovation | $1,377,000 | $2,363,850 | $2,978,451 | $6,719,301 | $5,443,168 |
| Btr | Cost savings from improved decision-making and time to innovation | $1,188,000 | $2,970,000 | $3,564,000 | $7,722,000 | $6,212,231 |
| Ctr | Simplified operations and time-to-value savings | $2,419,369 | $3,462,750 | $3,462,750 | $9,344,869 | $7,662,819 |
| Dtr | Infrastructure and database management savings | $1,865,835 | $2,487,780 | $2,487,780 | $6,841,395 | $5,621,336 |
| Total benefits (risk-adjusted) | $6,850,204 | $11,284,380 | $12,492,981 | $30,627,565 | $24,939,554 | |
Evidence and data. Interviewees at organizations that adopted the Snowflake AI Data Cloud said they saw significant top-line revenue growth fueled by data-driven innovation. They optimized key areas such as product marketing and sales, supply chain, and mining production. This led to faster time to value, reduced customer churn, increased market share, and minimized revenue loss via algorithms that avoided stock-outs and expedited shipping costs. Snowflake also enabled their organizations to create new data-sharing products for their customers, generating net-new revenue. This agility and enhanced data insight helped develop new revenue streams and optimize existing ones, directly driving profitability. Interviewees provided the following evidence.
Modeling and assumptions. Based on the interviews, Forrester assumes the following about the composite organization:
Risks. Forrester recognizes that these results may not be representative of all experiences. The impact of this benefit will vary depending on:
Results. To account for these risks, Forrester adjusted this benefit downward by 15%, yielding a three-year, risk-adjusted total PV (discounted at 10%) of $5,443,000.
| Ref. | Metric | Source | Year 1 | Year 2 | Year 3 | |
|---|---|---|---|---|---|---|
| A1 | Addressable business opportunity to grow with data-driven innovation | Composite+A3PY | $450,000,000 | $463,500,000 | $486,675,000 | |
| A2 | Percentage of revenue increase due to the Snowflake AI Data Cloud | Interviews | 3.0% | 5.0% | 6.0% | |
| A3 | Incremental revenue due to the Snowflake AI Data Cloud | A1*A2 | $13,500,000 | $23,175,000 | $29,200,500 | |
| A4 | Operating margin | Composite | 12% | 12% | 12% | |
| At | Incremental profit from data-driven innovation | A3*A4 | $1,620,000 | $2,781,000 | $3,504,060 | |
| Risk adjustment | ↓15% | |||||
| Atr | Incremental profit from data-driven innovation (risk-adjusted) | $1,377,000 | $2,363,850 | $2,978,451 | ||
| Three-year total: $6,719,301 | Three-year present value: $5,443,168 | |||||
Evidence and data. Interviewees’ organizations experienced improvements in their operating margins by harnessing the Snowflake AI Data Cloud’s advanced analytics and AI/ML models for more-informed decision-making. Specifically, interviewees saw value in areas such as real-time customer insights, which enabled them to make better, data-driven decisions; improved supply chain management, which allowed proactive customer order management and optimized shipping costs; and enhanced productivity for business analysts and non-data teams like accounting, finance, and supply chain. With faster access to accurate, consolidated data, interviewees’ organizations optimized their operations, reduced waste, and increased efficiencies across these departments. This data-driven approach led to notable improvements in their operating margins. Interviewees provided the following evidence.
Modeling and assumptions. Based on the interviews, Forrester assumes the following about the composite organization:
Risks. Forrester recognizes that these results may not be representative of all experiences. The impact of this benefit will vary depending on:
Results. To account for these risks, Forrester adjusted this benefit downward by 10%, yielding a three-year, risk-adjusted total PV (discounted at 10%) of $6,212,000.
| Ref. | Metric | Source | Year 1 | Year 2 | Year 3 | |
|---|---|---|---|---|---|---|
| B1 | Operating expenditures | $15 billion revenue*88% operating expense | $13,200,000,000 | $13,200,000,000 | $13,200,000,000 | |
| B2 | Percentage improvement to operating margin due to the Snowflake AI Data Cloud | Interviews | 0.010% | 0.025% | 0.030% | |
| Bt | Cost savings from improved decision-making and time to innovation | B1*B2 | $1,320,000 | $3,300,000 | $3,960,000 | |
| Risk adjustment | ↓10% | |||||
| Btr | Cost savings from improved decision-making and time to innovation (risk-adjusted) | $1,188,000 | $2,970,000 | $3,564,000 | ||
| Three-year total: $7,722,000 | Three-year present value: $6,212,231 | |||||
Evidence and data. Interviewees told us that the adoption of the Snowflake AI Data Cloud significantly improved productivity across data engineering, data science, and data analysis by streamlining and enhancing these teams’ respective workflows.
Interviewees provided the following evidence.
Modeling and assumptions. Based on the interviews, Forrester assumes the following about the composite organization:
Risks. Forrester recognizes that these results may not be representative of all experiences. The impact of this benefit will vary depending on:
Results. To account for these risks, Forrester adjusted this benefit downward by 10%, yielding a three-year, risk-adjusted total PV (discounted at 10%) of $7,663,000.
| Ref. | Metric | Source | Year 1 | Year 2 | Year 3 |
|---|---|---|---|---|---|
| C1 | Number of data engineers | Composite | 15 | 15 | 15 |
| C2 | Data engineer time savings with the Snowflake AI Data Cloud | Interviews | 25% | 35% | 35% |
| C3 | Fully burdened annual salary for a data engineer | Composite | $162,000 | $162,000 | $162,000 |
| C4 | Data engineer and data scientist productivity recapture rate | TEI Standard | 75% | 75% | 75% |
| C5 | Subtotal: Data engineer time savings with the Snowflake AI Data Cloud | C1*C2*C3*C4 | $455,625 | $637,875 | $637,875 |
| C6 | Number of data scientists | Composite | 30 | 30 | 30 |
| C7 | Data scientist time savings with the Snowflake AI Data Cloud | Interviews | 10% | 20% | 20% |
| C8 | Fully burdened annual salary for a data scientist | Composite | $155,250 | $155,250 | $155,250 |
| C9 | Subtotal: Data scientist productivity lift with the Snowflake AI Data Cloud | C6*C7*C8*C4 | $349,313 | $698,625 | $698,625 |
| C10 | Number of data analysts | Composite | 200 | 200 | 200 |
| C11 | Data analyst time savings with the Snowflake AI Data Cloud | Interviews | 15% | 20% | 20% |
| C12 | Fully burdened annual salary for a data analyst | Composite | $125,550 | $125,550 | $125,550 |
| C13 | Data analyst productivity recapture rate | TEI Standard | 50% | 50% | 50% |
| C14 | Subtotal: Data analyst productivity lift with the Snowflake AI Data Cloud | C10*C11*C12*C13 | $1,883,250 | $2,511,000 | $2,511,000 |
| Ct | Simplified operations and time-to-value savings | C5+C9+C14 | $2,688,188 | $3,847,500 | $3,847,500 |
| Risk adjustment | ↓10% | ||||
| Ctr | Simplified data operations and time-to-value savings (risk-adjusted) | $2,419,369 | $3,462,750 | $3,462,750 | |
| Three-year total: $9,344,869 | Three-year present value: $7,662,819 | ||||
Evidence and data. The Snowflake AI Data Cloud fully managed, cloud-native architecture simplified data operations by eliminating the need for legacy licensing costs, hardware management and refreshes, extensive configuration, planned downtime for upgrades, and other routine maintenance. Interviewees said their organizations retired costly and complex legacy data systems, which previously required extensive resources for maintenance and upgrades. As a result, their organizations reassigned IT and database administrators to other strategic tasks. Interviewees provided the following evidence.
Modeling and assumptions. Based on the interviews, Forrester assumes the following about the composite organization:
Risks. Forrester recognizes that these results may not be representative of all experiences. The impact of this benefit will vary depending on:
Results. To account for these risks, Forrester adjusted this benefit downward by 10%, yielding a three-year, risk-adjusted total PV (discounted at 10%) of $5,621,000.
| Ref. | Metric | Source | Year 1 | Year 2 | Year 3 |
|---|---|---|---|---|---|
| D1 | Legacy infrastructure and software costs | Interviews | $2,100,000 | $2,100,000 | $2,100,000 |
| D2 | Percentage of legacy infrastructure and software decommissioned due to the Snowflake AI Data Cloud | Composite | 75% | 100% | 100% |
| D3 | Subtotal: Avoided infrastructure and software costs | D1*D2 | $1,575,000 | $2,100,000 | $2,100,000 |
| D4 | Reallocated IT and database administrator FTEs required to support legacy systems | Interviews | 6 | 6 | 6 |
| D5 | Fully burdened annual salary for an IT and database administrator FTE | Composite | $110,700 | $110,700 | $110,700 |
| D6 | Subtotal: Avoided administration, maintenance, and support costs | D4*D5*D2 | $498,150 | $664,200 | $664,200 |
| Dt | Infrastructure and database management savings | D3+D6 | $2,073,150 | $2,764,200 | $2,764,200 |
| Risk adjustment | ↓10% | ||||
| Dtr | Infrastructure and database management savings (risk-adjusted) | $1,865,835 | $2,487,780 | $2,487,780 | |
| Three-year total: $6,841,395 | Three-year present value: $5,621,336 | ||||
Interviewees mentioned the following additional benefits that their organizations experienced but were not able to quantify:
The value of flexibility is unique to each customer. There are multiple scenarios in which a customer might implement the Snowflake AI Data Cloud and later realize additional uses and business opportunities, including:
Flexibility would also be quantified when evaluated as part of a specific project (described in more detail in Appendix A).
| Ref. | Cost | Initial | Year 1 | Year 2 | Year 3 | Total | Present Value |
|---|---|---|---|---|---|---|---|
| Etr | Cost of the Snowflake AI Data Cloud | $0 | $1,260,000 | $1,680,000 | $1,680,000 | $4,620,000 | $3,796,093 |
| Ftr | Implementation, training, and ongoing costs | $1,152,396 | $217,941 | $217,941 | $217,941 | $1,806,219 | $1,694,383 |
| Total costs (risk-adjusted) | $1,152,396 | $1,477,941 | $1,897,941 | $1,897,941 | $6,426,219 | $5,490,476 | |
Evidence and data. The cost of using the Snowflake AI Data Cloud is based on a consumption-based pricing model, where organizations pay for the storage and compute resources they use. Storage costs are charged per terabyte per month, while compute costs are typically measured in credits. Interviewees found Snowflake’s pricing to be cost-effective for scalable, on-demand usage. Interviewees dedicated ongoing effort and resources to optimizing costs; these are captured in the next section. With optimization to Snowflake’s cost models and internal optimization efforts, several interviewees experienced decreasing costs year over year for the same amount of credits.
Modeling and assumptions. Based on the interviews, Forrester assumes the following about the composite organization:
Risks. Forrester recognizes that these results may not be representative of all experiences. The impact of this benefit will vary depending on:
Results. To account for these risks, Forrester adjusted this cost upward by 5%, yielding a three-year, risk-adjusted total PV (discounted at 10%) of $3,796,000.
| Ref. | Metric | Source | Initial | Year 1 | Year 2 | Year 3 | |
|---|---|---|---|---|---|---|---|
| E1 | The Snowflake AI Data Cloud licensing cost | Composite | $1,200,000 | $1,600,000 | $1,600,000 | ||
| Et | Cost of the Snowflake AI Data Cloud | E1 | $1,200,000 | $1,600,000 | $1,600,000 | ||
| Risk adjustment | ↑5% | ||||||
| Etr | Cost of the Snowflake AI Data Cloud (risk-adjusted) | $0 | $1,260,000 | $1,680,000 | $1,680,000 | ||
| Three-year total: $4,620,000 | Three-year present value: $3,796,093 | ||||||
Evidence and data. Interviewees noted that the implementation costs encompassed several key areas. Initially, interviewees incurred internal labor costs associated with the migration and implementation efforts needed to move existing data, set up data pipelines, and configure the platform to meet organizational needs. Additionally, data engineers, data scientists, and business analysts needed training in order to effectively use the Snowflake AI Data Cloud’s features and optimize their workflows. The ongoing management of the platform also required dedicated resources to monitor performance, manage data storage and compute resources, and ensure security and compliance. Furthermore, interviewees dedicated continuous cost-optimization efforts to managing costs and operations effectively.
Modeling and assumptions. Based on the interviews, Forrester assumes the following about the composite organization:
Risks. Forrester recognizes that these results may not be representative of all experiences. The impact of this benefit will vary depending on:
Results. To account for these risks, Forrester adjusted this cost upward by 5%, yielding a three-year, risk-adjusted total PV (discounted at 10%) of $1,694,000.
| Ref. | Metric | Source | Initial | Year 1 | Year 2 | Year 3 | |
|---|---|---|---|---|---|---|---|
| F1 | Total FTEs supporting migration and implementation | Composite | 10 | ||||
| F2 | Total hours spent on change management and migration training per FTE | 9 months*160 hours | 1,440 | ||||
| F3 | Fully burdened hourly rate for migration personnel FTEs | Composite | $67 | ||||
| F4 | Subtotal: Internal migration costs | F1*F2*F3 | $964,800 | ||||
| F5 | Training hours for data engineers | 16 hours*15 FTEs*fully burdened hourly rate of $78 | $18,720 | ||||
| F6 | Training hours for data scientists | 8 hours*30 FTEs *fully burdened hourly rate of $75 | $18,000 | ||||
| F7 | Training hours for business analysts | 8 hours*200 FTEs*fully burdened hourly rate of $60 | $96,000 | ||||
| F8 | Subtotal: Training costs | F5+F6+F7 | $132,720 | ||||
| F9 | Ongoing support FTEs | Interviews | 1.5 | 1.5 | 1.5 | ||
| F10 | Fully burdened hourly rate for a support FTE | Composite | $138,375 | $138,375 | $138,375 | ||
| F11 | Subtotal: Ongoing support costs | F9*F10 | $207,563 | $207,563 | $207,563 | ||
| Ft | Implementation, training, and ongoing costs | F4+F8+F11 | $1,097,520 | $207,563 | $207,563 | $207,563 | |
| Risk adjustment | ↑5% | ||||||
| Ftr | Implementation, training, and ongoing costs (risk-adjusted) | $1,152,396 | $217,941 | $217,941 | $217,941 | ||
| Three-year total: $1,806,219 | Three-year present value: $1,694,383 | ||||||
The financial results calculated in the Benefits and Costs sections can be used to determine the ROI, NPV, and payback period for the composite organization’s investment. Forrester assumes a yearly discount rate of 10% for this analysis.
These risk-adjusted ROI, NPV, and payback period values are determined by applying risk-adjustment factors to the unadjusted results in each Benefit and Cost section.
| Initial | Year 1 | Year 2 | Year 3 | Total | Present Value | |
|---|---|---|---|---|---|---|
| Total costs | ($1,152,396) | ($1,477,941) | ($1,897,941) | ($1,897,941) | ($6,426,219) | ($5,490,476) |
| Total benefits | $0 | $6,850,204 | $11,284,380 | $12,492,981 | $30,627,565 | $24,939,554 |
| Net benefits | ($1,152,396) | $5,372,263 | $9,386,439 | $10,595,040 | $24,201,346 | $19,449,078 |
| ROI | 354% | |||||
| Payback period (months) | <6 | |||||
Total Economic Impact is a methodology developed by Forrester Research that enhances a company’s technology decision-making processes and assists vendors in communicating the value proposition of their products and services to clients. The TEI methodology helps companies demonstrate, justify, and realize the tangible value of IT initiatives to both senior management and other key business stakeholders.
Benefits represent the value delivered to the business by the product. The TEI methodology places equal weight on the measure of benefits and the measure of costs, allowing for a full examination of the effect of the technology on the entire organization.
Costs consider all expenses necessary to deliver the proposed value, or benefits, of the product. The cost category within TEI captures incremental costs over the existing environment for ongoing costs associated with the solution.
Flexibility represents the strategic value that can be obtained for some future additional investment building on top of the initial investment already made. Having the ability to capture that benefit has a PV that can be estimated.
Risks measure the uncertainty of benefit and cost estimates given: 1) the likelihood that estimates will meet original projections and 2) the likelihood that estimates will be tracked over time. TEI risk factors are based on “triangular distribution.”
The initial investment column contains costs incurred at “time 0” or at the beginning of Year 1 that are not discounted. All other cash flows are discounted using the discount rate at the end of the year. PV calculations are calculated for each total cost and benefit estimate. NPV calculations in the summary tables are the sum of the initial investment and the discounted cash flows in each year. Sums and present value calculations of the Total Benefits, Total Costs, and Cash Flow tables may not exactly add up, as some rounding may occur.
1 Source: The Rise Of The AI Cloud, Forrester Research, Inc., March 7, 2024.
2 Total Economic Impact is a methodology developed by Forrester Research that enhances a company’s technology decision-making processes and assists vendors in communicating the value proposition of their products and services to clients. The TEI methodology helps companies demonstrate, justify, and realize the tangible value of IT initiatives to both senior management and other key business stakeholders.
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