// Part 2 and 3 about a really dumb investment strategy
//======================================================
//object CW6b { // for purposes of generating a jar
//two test portfolios
val blchip_portfolio = List("GOOG", "AAPL", "MSFT", "IBM", "FB", "AMZN", "BIDU")
val rstate_portfolio = List("PLD", "PSA", "AMT", "AIV", "AVB", "BXP", "CCI",
"DLR", "EQIX", "EQR", "ESS", "EXR", "FRT", "HCP")
import io.Source
import scala.util._
// (1) The function below takes a stock symbol and a year as arguments.
// It should read the corresponding CSV-file and reads the January
// data from the given year. The data should be collected in a list of
// strings for each line in the CSV-file.
def get_january_data(symbol: String, year: Int) : List[String] =
Source.fromFile(symbol ++ ".csv")("ISO-8859-1").getLines.toList.filter(_.startsWith(year.toString))
//test cases
//blchip_portfolio.map(get_january_data(_, 2018))
//rstate_portfolio.map(get_january_data(_, 2018))
//get_january_data("GOOG", 1980)
//get_january_data("GOOG", 2010)
//get_january_data("FB", 2014)
//get_january_data("PLD", 1980)
//get_january_data("EQIX", 2010)
//get_january_data("ESS", 2014)
// (2) From the output of the get_january_data function, the next function
// should extract the first line (if it exists) and the corresponding
// first trading price in that year with type Option[Double]. If no line
// is generated by get_january_data then the result is None; Some if
// there is a price.
def get_first_price(symbol: String, year: Int) : Option[Double] = {
val data = Try(Some(get_january_data(symbol, year).head)) getOrElse None
data.map(_.split(",").toList(1).toDouble)
}
//test cases
//get_first_price("GOOG", 1980)
//get_first_price("GOOG", 2010)
//get_first_price("FB", 2014)
/*
for (i <- 1978 to 2018) {
println(blchip_portfolio.map(get_first_price(_, i)))
}
for (i <- 1978 to 2018) {
println(rstate_portfolio.map(get_first_price(_, i)))
}
*/
// (3) Complete the function below that obtains all first prices
// for the stock symbols from a portfolio (list of strings) and
// for the given range of years. The inner lists are for the
// stock symbols and the outer list for the years.
def get_prices(portfolio: List[String], years: Range): List[List[Option[Double]]] =
for (year <- years.toList) yield
for (symbol <- portfolio) yield get_first_price(symbol, year)
//test cases
//val p_fb = get_prices(List("FB"), 2012 to 2014)
//val p = get_prices(List("GOOG", "AAPL"), 2010 to 2012)
//val tt = get_prices(List("BIDU"), 2004 to 2008)
//==============================================
// Do not change anything below, unless you want
// to submit the file for the advanced part 3!
//==============================================
// (4) The function below calculates the change factor (delta) between
// a price in year n and a price in year n + 1.
def get_delta(price_old: Option[Double], price_new: Option[Double]) : Option[Double] = {
(price_old, price_new) match {
case (Some(x), Some(y)) => Some((y - x) / x)
case _ => None
}
}
// (5) The next function calculates all change factors for all prices (from a
// portfolio). The input to this function are the nested lists created by
// get_prices above.
def get_deltas(data: List[List[Option[Double]]]): List[List[Option[Double]]] =
for (i <- (0 until (data.length - 1)).toList) yield
for (j <- (0 until (data(0).length)).toList) yield get_delta(data(i)(j), data(i + 1)(j))
// test case using the prices calculated above
//val d = get_deltas(p)
//val ttd = get_deltas(tt)
// (6) Write a function that given change factors, a starting balance and an index,
// calculates the yearly yield, i.e. new balance, according to our dumb investment
// strategy. Index points to a year in the data list.
def yearly_yield(data: List[List[Option[Double]]], balance: Long, index: Int): Long = {
val somes = data(index).flatten
val somes_length = somes.length
if (somes_length == 0) balance
else {
val portion: Double = balance.toDouble / somes_length.toDouble
balance + (for (x <- somes) yield (x * portion)).sum.toLong
}
}
// (7) Write a function compound_yield that calculates the overall balance for a
// range of years where in each year the yearly profit is compounded to the new
// balances and then re-invested into our portfolio. For this use the function and
// results generated under (6). The function investment calls compound_yield
// with the appropriate deltas and the first index.
def compound_yield(data: List[List[Option[Double]]], balance: Long, index: Int): Long = {
if (index >= data.length) balance else {
val new_balance = yearly_yield(data, balance, index)
compound_yield(data, new_balance, index + 1)
}
}
def investment(portfolio: List[String], years: Range, start_balance: Long): Long = {
compound_yield(get_deltas(get_prices(portfolio, years)), start_balance, 0)
}
//test cases for the two portfolios given above
//println("Real data: " + investment(rstate_portfolio, 1978 to 2018, 100))
//println("Blue data: " + investment(blchip_portfolio, 1978 to 2018, 100))
//}