HUATAI-PINEBRIDGE FUND MANAGEMENT CHINA-KOREA SEMICOND INDEX ETFHUATAI-PINEBRIDGE FUND MANAGEMENT CHINA-KOREA SEMICOND INDEX ETFHUATAI-PINEBRIDGE FUND MANAGEMENT CHINA-KOREA SEMICOND INDEX ETF

HUATAI-PINEBRIDGE FUND MANAGEMENT CHINA-KOREA SEMICOND INDEX ETF

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Key stats


Assets under management (AUM)
Fund flows (1Y)
Dividend yield (indicated)
Discount/Premium to NAV
−2.0%
Shares outstanding
Expense ratio
0.95%

About HUATAI-PINEBRIDGE FUND MANAGEMENT CHINA-KOREA SEMICOND INDEX ETF


Issuer
Huatai-PineBridge Fund Management Co., Ltd.
Brand
Huatai
Home page
Inception date
Nov 2, 2022
Structure
Open-Ended Fund
Index tracked
CSI Korea Exchange China-Korea Semiconductor Index - CNY - Benchmark TR Gross
Replication method
Physical
Management style
Passive
ISIN
CNE100005TB2
Tightly track the index performance of the target, and pursue the minimization of tracking deviation and tracking err. The Fund strives to control the daily average tracking deviation within 0.35%, and the annualized tracking err within 4%.

Classification


Asset Class
Equity
Category
Sector
Focus
Information technology
Niche
Semiconductors
Geography
China
Weighting scheme
Market cap
Selection criteria
Market cap
What's in the fund
Exposure type
StocksBonds, Cash & Other
Electronic Technology
Producer Manufacturing
Corporate
Stock breakdown by region
2%97%
Summarizing what the indicators are suggesting.
Oscillators
Neutral
SellBuy
Strong sellStrong buy
Strong sellSellNeutralBuyStrong buy
Oscillators
Neutral
SellBuy
Strong sellStrong buy
Strong sellSellNeutralBuyStrong buy
Summary
Neutral
SellBuy
Strong sellStrong buy
Strong sellSellNeutralBuyStrong buy
Summary
Neutral
SellBuy
Strong sellStrong buy
Strong sellSellNeutralBuyStrong buy
Summary
Neutral
SellBuy
Strong sellStrong buy
Strong sellSellNeutralBuyStrong buy
Moving Averages
Neutral
SellBuy
Strong sellStrong buy
Strong sellSellNeutralBuyStrong buy
Moving Averages
Neutral
SellBuy
Strong sellStrong buy
Strong sellSellNeutralBuyStrong buy
Displays a symbol's price movements over previous years to identify recurring trends.