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PICC Property and Casualty Stock Price Chart

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Sell
43

PPCCY
PICC Property and Casualty

Last Price:
38.79
Seasonality Move:
-1.03%

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  • The current trend is moderately bearish and PPCCY is experiencing slight buying pressure.

PICC Property and Casualty Price Chart Indicators

Moving Averages Level Buy or Sell
8-day SMA: 39.73 Sell
20-day SMA: 39.11 Sell
50-day SMA: 39.36 Sell
200-day SMA: 34.21 Buy
8-day EMA: 39.61 Sell
20-day EMA: 39.32 Sell
50-day EMA: 38.5 Buy
200-day EMA: 34.8 Buy

PICC Property and Casualty Technical Analysis Indicators

Chart Indicators Level Buy or Sell
MACD (12, 26): 0.27 Buy
Relative Strength Index (14 RSI): 48.8 Sell
Chaikin Money Flow: 0 -
Bollinger Bands Level Buy or Sell
Bollinger Bands (25): (37.67 - 40.83) Sell
Bollinger Bands (100): (32.63 - 39.79) Buy

PICC Property and Casualty Technical Analysis

Technical Analysis: Buy or Sell?
8-day SMA:
20-day SMA:
50-day SMA:
200-day SMA:
8-day EMA:
20-day EMA:
50-day EMA:
200-day EMA:
MACD (12, 26):
Relative Strength Index (14 RSI):
Bollinger Bands (25):
Bollinger Bands (100):

Technical Analysis for PICC Property and Casualty Stock

Is PICC Property and Casualty Stock a Buy?

PPCCY Technical Analysis vs Fundamental Analysis

Sell
43
PICC Property and Casualty (PPCCY) is a Sell

Is PICC Property and Casualty a Buy or a Sell?

PICC Property and Casualty Stock Info

Market Cap:
34.51B
Price in USD:
38.79
Share Volume:
318

PICC Property and Casualty 52-Week Range

52-Week High:
45.63
52-Week Low:
27.64
Sell
43
PICC Property and Casualty (PPCCY) is a Sell

PICC Property and Casualty Share Price Forecast

Is PICC Property and Casualty Stock a Buy?

Technical Analysis of PICC Property and Casualty

Should I short PICC Property and Casualty stock?

* PICC Property and Casualty stock forecasts short-term for next days and weeks may differ from long term prediction for next month and year based on timeline differences.