Last Update:

Monday, April 21, 2025

Opening Value:

230.26

Highest Value:

232.21

Lowest Value:

222.79

Adj. Closing Value:

227.5

  • The forecast plot shows the forecasted Tesla stock prices for the next 12 months.

  • The plot also shows the 80% prediction interval in dark purple and the 95% prediction interval in light purple.

  • The numeric values for these forecasted values and prediction intervals are shown in the next tab.

The table below shows the forecast values and 80% and 95% prediction intervals for the 12 requested forecasts for the Tesla stock.

Point Forecast Lo 80 Hi 80 Lo 95 Hi 95
Dec 2024 268.46 234.4721 302.4478 216.48005 320.4399
Jan 2025 268.46 220.3939 316.5261 194.94925 341.9707
Feb 2025 268.46 209.5913 327.3287 178.42809 358.4919
Mar 2025 268.46 200.4843 336.4357 164.50011 372.4199
Apr 2025 268.46 192.4608 344.4591 152.22931 384.6907
May 2025 268.46 185.2071 351.7129 141.13566 395.7843
Jun 2025 268.46 178.5366 358.3834 130.93399 405.9860
Jul 2025 268.46 172.3278 364.5922 121.43851 415.4815
Aug 2025 268.46 166.4964 370.4236 112.52017 424.3998
Sep 2025 268.46 160.9810 375.9390 104.08498 432.8350
Oct 2025 268.46 155.7350 381.1850 96.06203 440.8580
Nov 2025 268.46 150.7226 386.1974 88.39619 448.5238
  • In March of 2026, the Tesla stock price is forecasted to be 268 dollars.

  • The width of the 80% prediction interval for this forecast in March of 2026 is 225 dollars.
  • These three residual plots allow the analyst to examine the distribution of the residuals of the modeled time series.

  • Despite increasing volatility, our stock price model is estimated to be 87.3% accurate.

  • This doesn’t guarantee that forecasts will be 87.3% accurate but it does improve our chances of accurate forecasting.


This dashboard was created using Quarto in RStudio, and the R Language and Environment.

The dataset used to create this dashboard was downloaded from Yahoo Finance.

Software Citations

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