Path: csiph.com!v102.xanadu-bbs.net!xanadu-bbs.net!news.mixmin.net!goblin1!goblin2!goblin.stu.neva.ru!newsfeed.xs4all.nl!newsfeed2.news.xs4all.nl!xs4all!post.news.xs4all.nl!not-for-mail Return-Path: X-Original-To: python-list@python.org Delivered-To: python-list@mail.python.org X-Spam-Status: OK 0.014 X-Spam-Evidence: '*H*': 0.97; '*S*': 0.00; 'python.': 0.02; '16,': 0.03; 'subject:Python': 0.06; 'explicit': 0.07; 'subject:file': 0.07; '24,': 0.16; 'columns': 0.16; 'email addr:gmail.com;': 0.16; 'equation': 0.16; 'liu': 0.16; 'subject: \n ': 0.16; 'subject:array': 0.16; 'subject:integration': 0.16; 'wrote:': 0.18; 'all,': 0.19; 'numerical': 0.19; 'email addr:gmail.com>': 0.22; 'python?': 0.22; 'skip:+ 20': 0.22; 'ph.d.': 0.24; 'subject:like': 0.24; 'germany': 0.24; 'question': 0.24; 'help!': 0.26; 'second': 0.26; 'values': 0.27; 'header:In-Reply-To:1': 0.27; 'to:2**1': 0.27; 'am,': 0.29; 'message-id:@mail.gmail.com': 0.30; 'url:mailman': 0.30; 'phone:': 0.31; 'file': 0.32; 'url:python': 0.33; 'fri,': 0.33; 'but': 0.35; 'received:google.com': 0.35; 'url:listinfo': 0.36; 'thanks': 0.36; 'possible': 0.36; 'url:org': 0.36; 'integration': 0.37; 'mobile:': 0.37; 'two': 0.37; 'to:addr:python-list': 0.38; 'to:addr:python.org': 0.39; 'mailing': 0.39; 'url:mail': 0.40; 'first': 0.61; 'email addr:gmail.com': 0.63; 'subject:The': 0.64; 'skip:+ 10': 0.65; 'dear': 0.65; 'to:addr:gmail.com': 0.65; 'virus:src="cid:': 0.66; 'content-type:multipart/related': 0.67; 'below:': 0.68; 'containing': 0.69; 'respect': 0.70; 'business': 0.70; 'equation,': 0.84; 'filename:fname piece:B': 0.93; 'filename:fname piece:': 0.95 DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:in-reply-to:references:date:message-id:subject:from:to :content-type; bh=YnXxZcpxo3nPJ0q11pbiR9ary3y4hFiggvA6uOlhRKo=; b=xoh6eZcqGexeZzyv7xj2BmoqVsq5ka3tmlBvw4sLfvA1bGhKVHLHr8I4dP2Vn8ItKz 61Fmyw+nWa3do3MrXKtSGq+WOzG2kw+zoyDCzw3vF5+ESx4khZx8CXLAk9kL/01sHJT8 FK0O2myA8GibjiVytS7LtYLPG7U6Wg6LySKV7AwNQaOZ44c2C5tBMBau9GjGk2ATuuf7 2JIpWso/tl7Ewu5y6rEa1n6dWon9IWvhOORI2nsUyIic+GzyIcrWNVVswBxpJmgnzd8S ItNQWp5r0n+Qr94TMmbKDIpbOfeiQG5tMHw1Yr6BjGiSskeNvtQfyrPQmya/XpG/BUlO U+1w== MIME-Version: 1.0 X-Received: by 10.140.101.212 with SMTP id u78mr4422243qge.32.1400257925477; Fri, 16 May 2014 09:32:05 -0700 (PDT) In-Reply-To: References: Date: Fri, 16 May 2014 09:32:05 -0700 Subject: Re: The possibility integration in Python without an equation, just an array-like file From: "Ernest Bonat, Ph.D." To: Enlong Liu , python-list@python.org Content-Type: multipart/related; boundary=001a11c16cfe3e239404f986f4b0 X-Mailman-Approved-At: Fri, 16 May 2014 19:41:11 +0200 X-BeenThere: python-list@python.org X-Mailman-Version: 2.1.15 Precedence: list List-Id: General discussion list for the Python programming language List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , Newsgroups: comp.lang.python Message-ID: Lines: 428 NNTP-Posting-Host: 2001:888:2000:d::a6 X-Trace: 1400262072 news.xs4all.nl 2864 [2001:888:2000:d::a6]:41871 X-Complaints-To: abuse@xs4all.nl Xref: csiph.com comp.lang.python:71665 --001a11c16cfe3e239404f986f4b0 Content-Type: multipart/alternative; boundary=001a11c16cfe3e239204f986f4af --001a11c16cfe3e239204f986f4af Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: quoted-printable Hi Enlong You may try standard numerical integration solutions based on the E and T(E) columns data provided. Ernest Bonat, Ph.D. On Fri, May 16, 2014 at 1:49 AM, Enlong Liu wrote: > Dear All, > > I have a question about the integration with Python. The equation is as > below: > and I want to get values of I with respect of V. E_F is known. But for > T(E), I don't have explicit equation, but a .dat file containing > two columns, the first is E, and the second is T(E). It is also in the > attachment for reference. So is it possible to do integration in Python? > > Thanks a lot for your help! > > Best regards, > =E2=80=8B > > -- > Faculty of Engineering@K.U. Leuven > BIOTECH@TU Dresden > Email: liuenlong20@gmail.com; enlong.liu@student.kuleuven.be; > enlong.liu@biotech.tu-dresden.de > Mobile Phone: +4917666191322 > Mailing Address: Zi. 0108R, Budapester Stra=C3=9Fe 24, 01069, Dresden, Ge= rmany > > -- > https://mail.python.org/mailman/listinfo/python-list > > --=20 Thanks Ernest Bonat, Ph.D. Senior Software Engineer Senior Business Statistics Analyst Mobile: 503.730.4556 Email: ernest.bonat@gmail.com --001a11c16cfe3e239204f986f4af Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable
Hi Enlong

You may try standard numerical integ= ration solutions based on the E and T(E) columns data provided.

Ernest Bonat, Ph.D.

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