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OCEAN
BNPP ECPI GLB ESG BLUE ECONOMY UCITS ETF
OCEAN
Euronext Milan
OCEAN
Euronext Milan
OCEAN
Euronext Milan
OCEAN
Euronext Milan
Market closed
Market closed
No trades
See on Supercharts
Overview
Analysis
Discussions
Technicals
Seasonals
OCEAN
chart
Price
NAV
More
Full chart
1 day
0.04%
5 days
0.20%
1 month
−1.46%
6 months
−0.21%
Year to date
11.21%
1 year
24.65%
5 years
51.86%
All time
51.86%
Key stats
Assets under management (AUM)
172.22 M
EUR
Fund flows (1Y)
−33.66 M
EUR
Dividend yield (indicated)
—
Discount/Premium to NAV
−1.3%
About BNPP ECPI GLB ESG BLUE ECONOMY UCITS ETF
Issuer
BNP Paribas SA
Brand
BNP Paribas
Expense ratio
0.30%
Home page
easy.bnpparibas.lu
Inception date
Sep 14, 2020
Index tracked
ECPI Global ESG Blue Economy - EUR
Management style
Passive
ISIN
LU2194447293
Acts as an Umbrella Fund
Show more
Classification
Asset Class
Equity
Category
Size and style
Focus
Total market
Niche
Broad-based
Strategy
ESG
Weighting scheme
Equal
Selection criteria
Principles-based
OCEAN
analysis
What's in the fund
Exposure type
Stocks
Bonds, Cash & Other
Consumer Non-Durables
Transportation
Utilities
Industrial Services
Producer Manufacturing
Stock breakdown by region
2%
32%
50%
14%
Technicals
Summarizing what the indicators are
suggesting.
Oscillators
Neutral
Sell
Buy
Strong sell
Strong buy
Strong sell
Sell
Neutral
Buy
Strong buy
Oscillators
Neutral
Sell
Buy
Strong sell
Strong buy
Strong sell
Sell
Neutral
Buy
Strong buy
Summary
Neutral
Sell
Buy
Strong sell
Strong buy
Strong sell
Sell
Neutral
Buy
Strong buy
Summary
Neutral
Sell
Buy
Strong sell
Strong buy
Strong sell
Sell
Neutral
Buy
Strong buy
Summary
Neutral
Sell
Buy
Strong sell
Strong buy
Strong sell
Sell
Neutral
Buy
Strong buy
Moving Averages
Neutral
Sell
Buy
Strong sell
Strong buy
Strong sell
Sell
Neutral
Buy
Strong buy
Moving Averages
Neutral
Sell
Buy
Strong sell
Strong buy
Strong sell
Sell
Neutral
Buy
Strong buy
Seasonals
Displays a symbol's price movements over previous years to identify recurring trends.