To: djgpp AT delorie DOT com From: Chak AT taft DOT pvt DOT k12 DOT ct DOT us (Chak) Reply-To: Chak AT taft DOT pvt DOT k12 DOT ct DOT us (Chak) Date: Sat, 20 Dec 1997 10:43:07 GMT Subject: Errors compiling a List in DJGPP Message-ID: <3829915374.10769781@taft.pvt.k12.ct.us> Organization: The Taft School MIME-Version: 1.0 Content-Type: multipart/mixed; boundary="=_-------296291840" Precedence: bulk --=_-------296291840 Content-type: text/enriched; charset=us-ascii Content-transfer-encoding: Quoted-printable I am trying to program a blackjack game. All was going well, but I was usi= ng an array to store the cards and I wanted to use a list instead that woul= d be more compact (have the number of cards stored in it, etc.) I rewrote parts of the code to utilize a list ADT from a textbook (that I a= ltered a bit so it would compile in previous programs). For some reason, t= hough I get a few errors in the list ADT in DJGPP when I try to compile it = with the game. However, I DON'T get any such errors when I compile the sam= e list ADT in DJGPP but with a very simple listtest program. I have attached a zip containing my errors, list files, and the card game. = If anyone can show me how to get the list errors out, I would greatly appr= eciate it. I realize that there are more errors refering to incrementing e= numerated types with ++ and --.. why can't I do that, by the way? In Borla= nd's Turbo C++ that would just give me a warning, but in DJGPP I get errors= .. Note: unzip the zip file with -d to preserve directories. All includes are= relative. Thanks, Dan Chak chak=40taft.pvt.k12.ct.us (please send any responses to this address as wel= l as to the group; I don't subscribe to it anymore) --=_-------296291840 Content-Type: application/x-zip-compressed Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="Danchak.zip" UEsDBBQAAgAIAGtsVSMtbmJyRQQAABkNAAAQAAAATVlIRUFEL0FCU0xJU1QuSMVX224bNxB9 F6B/mMKAYTk1kr5KcQDFl0KAYwe2gxp9CajdWYvtLrklubJVI/32zpB731VioA9dA7ZWnDmc 2zmkD2SiYkzg69fl2l5J66aTA3qXCttf8c/bt8AvINbWGRE5iFJhLUjl0CQiQrbwVhdul+Mc soKMN2KL8DcafZILIzIkW4i0IoQictosvAM/MstTzFA54aRW8CTTFAz+VUiDgNJt0NSmOkcj yPkUNIPluzbiz0CrG5FbWGu3+W/4foPq7afTLrQ3P7u5vru//XJ2v7q5nhOo28CRmIHSVBbp pEgl5d4E0Q2W49BJKKpe/4GRo2paOF/dLa+ubn67OK8rejx4Pn/5eLU6g5vPF7dL3vzueOyp N15StrQVpQmJTlP9JNUjCEo9L+jXVhpXiBSSQvmorPejxsLKXmS52x3BDKrn5OQD3KIrjIJf QCaAbLAATC1SQf3371r+l0Watt0H/gkZjLlvtYzhk/gTuxEE90xvEQQlJR1mtp7PlYo099lh OZwx0l/jWz6dkGmeClp7Hxb9nH6YTsJbOesrx/16pfF08jKdABVxncpozh+hWuKAX+Bb+K4q 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