Hyperscale Average Inventory from 2010 to 2026

GPUS Stock   0.35  0.01  2.78%   
Hyperscale Data Average Inventory yearly trend continues to be comparatively stable with very little volatility. Average Inventory is likely to outpace its year average in 2026. Average Inventory is the average amount of inventory Hyperscale Data holds over a certain period, which is used to calculate inventory turnover and efficiency in managing stock levels. View All Fundamentals
 
Average Inventory  
First Reported
2010-12-31
Previous Quarter
3.4 M
Current Value
3.6 M
Quarterly Volatility
939.3 K
 
Credit Downgrade
 
Yuan Drop
 
Covid
Check Hyperscale Data financial statements over time to gain insight into future company performance. You can evaluate financial statements to find patterns among Hyperscale Data's main balance sheet or income statement drivers, such as Depreciation And Amortization of 31.6 M, Interest Expense of 23.8 M or Total Revenue of 128.8 M, as well as many indicators such as Price To Sales Ratio of 0.0539, Dividend Yield of 0.95 or PTB Ratio of 0.67. Hyperscale financial statements analysis is a perfect complement when working with Hyperscale Data Valuation or Volatility modules.
  
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Latest Hyperscale Data's Average Inventory Growth Pattern

Below is the plot of the Average Inventory of Hyperscale Data over the last few years. It is the average amount of inventory a company holds over a certain period, which is used to calculate inventory turnover and efficiency in managing stock levels. Hyperscale Data's Average Inventory historical data analysis aims to capture in quantitative terms the overall pattern of either growth or decline in Hyperscale Data's overall financial position and show how it may be relating to other accounts over time.
Average Inventory10 Years Trend
Slightly volatile
   Average Inventory   
       Timeline  

Hyperscale Average Inventory Regression Statistics

Arithmetic Mean2,511,963
Geometric Mean2,351,206
Coefficient Of Variation37.39
Mean Deviation786,084
Median2,871,318
Standard Deviation939,286
Sample Variance882.3B
Range3.2M
R-Value0.43
Mean Square Error770.4B
R-Squared0.18
Significance0.09
Slope79,204
Total Sum of Squares14.1T

Hyperscale Average Inventory History

20263.6 M
20253.4 M
20202.9 M
20192.9 M
20182.6 M
20111.6 M
20104.7 M

About Hyperscale Data Financial Statements

Hyperscale Data shareholders use historical fundamental indicators, such as Average Inventory, to determine how well the company is positioned to perform in the future. Although Hyperscale Data investors may analyze each financial statement separately, they are all interrelated. The changes in Hyperscale Data's assets and liabilities, for example, are also reflected in the revenues and expenses on on Hyperscale Data's income statement. Understanding these patterns can help investors time the market effectively. Please read more on our fundamental analysis page.
Last ReportedProjected for Next Year
Average Inventory3.4 M3.6 M

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Additional Tools for Hyperscale Stock Analysis

When running Hyperscale Data's price analysis, check to measure Hyperscale Data's market volatility, profitability, liquidity, solvency, efficiency, growth potential, financial leverage, and other vital indicators. We have many different tools that can be utilized to determine how healthy Hyperscale Data is operating at the current time. Most of Hyperscale Data's value examination focuses on studying past and present price action to predict the probability of Hyperscale Data's future price movements. You can analyze the entity against its peers and the financial market as a whole to determine factors that move Hyperscale Data's price. Additionally, you may evaluate how the addition of Hyperscale Data to your portfolios can decrease your overall portfolio volatility.