From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============8983801764834096766==" MIME-Version: 1.0 From: kernel test robot Subject: drivers/net/ethernet/freescale/gianfar.c:580 gfar_parse_group() warn: 'grp->regs' not released on lines: 517. Date: Sun, 15 Nov 2020 04:13:10 +0800 Message-ID: <202011150453.FaQeSRVm-lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============8983801764834096766== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: kbuild-all(a)lists.01.org CC: linux-kernel(a)vger.kernel.org TO: Rasmus Villemoes CC: Li Yang CC: Timur Tabi Hi Rasmus, First bad commit (maybe !=3D root cause): tree: https://git.kernel.org/pub/scm/linux/kernel/git/torvalds/linux.git = master head: f01c30de86f1047e9bae1b1b1417b0ce8dcd15b1 commit: 5a35435ef4e6e4bd2aabd6706b146b298a9cffe5 soc: fsl: qe: remove PPC32= dependency from CONFIG_QUICC_ENGINE date: 11 months ago :::::: branch date: 20 hours ago :::::: commit date: 11 months ago config: powerpc64-randconfig-m031-20201113 (attached as .config) compiler: powerpc64-linux-gcc (GCC) 9.3.0 If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot Reported-by: Dan Carpenter smatch warnings: drivers/net/ethernet/freescale/gianfar.c:580 gfar_parse_group() warn: 'grp-= >regs' not released on lines: 517. vim +580 drivers/net/ethernet/freescale/gianfar.c 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 490 = 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 491 static int gfar_parse_group(struct device_node *np, 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 492 struct gfar_private *priv, const char *model) 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 493 { 5fedcc14d40e355 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 494 struct gfar_priv_grp *grp =3D &priv->gfargrp[priv->num_grp= s]; ee873fda3bec7c6 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 495 int i; ee873fda3bec7c6 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 496 = ee873fda3bec7c6 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 497 for (i =3D 0; i < GFAR_NUM_IRQS; i++) { ee873fda3bec7c6 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 498 grp->irqinfo[i] =3D kzalloc(sizeof(struct gfar_irqinfo), ee873fda3bec7c6 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 499 GFP_KERNEL); ee873fda3bec7c6 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 500 if (!grp->irqinfo[i]) ee873fda3bec7c6 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 501 return -ENOMEM; ee873fda3bec7c6 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 502 } 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 503 = 5fedcc14d40e355 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 504 grp->regs =3D of_iomap(np, 0); 5fedcc14d40e355 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 505 if (!grp->regs) 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 506 return -ENOMEM; 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 507 = ee873fda3bec7c6 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 508 gfar_irq(grp, TX)->irq =3D irq_of_parse_and_map(np, 0); 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 509 = 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 510 /* If we aren't the FEC we have multiple interrupts */ 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 511 if (model && strcasecmp(model, "FEC")) { ee873fda3bec7c6 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 512 gfar_irq(grp, RX)->irq =3D irq_of_parse_and_map(np, 1); ee873fda3bec7c6 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 513 gfar_irq(grp, ER)->irq =3D irq_of_parse_and_map(np, 2); fea0f6650979a4f drivers/net/ethernet/freescale/gianfar.c Mark Brown 2= 015-11-26 514 if (!gfar_irq(grp, TX)->irq || fea0f6650979a4f drivers/net/ethernet/freescale/gianfar.c Mark Brown 2= 015-11-26 515 !gfar_irq(grp, RX)->irq || fea0f6650979a4f drivers/net/ethernet/freescale/gianfar.c Mark Brown 2= 015-11-26 516 !gfar_irq(grp, ER)->irq) 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 517 return -EINVAL; 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 518 } 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 519 = 5fedcc14d40e355 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 520 grp->priv =3D priv; 5fedcc14d40e355 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 521 spin_lock_init(&grp->grplock); 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 522 if (priv->mode =3D=3D MQ_MG_MODE) { 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 523 u32 rxq_mask, txq_mask; 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 524 int ret; 71ff9e3df7e1c5d drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-03-07 525 = 71ff9e3df7e1c5d drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-03-07 526 grp->rx_bit_map =3D (DEFAULT_MAPPING >> priv->num_grps); 71ff9e3df7e1c5d drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-03-07 527 grp->tx_bit_map =3D (DEFAULT_MAPPING >> priv->num_grps); 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 528 = 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 529 ret =3D of_property_read_u32(np, "fsl,rx-bit-map", &rxq_m= ask); 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 530 if (!ret) { 71ff9e3df7e1c5d drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-03-07 531 grp->rx_bit_map =3D rxq_mask ? 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 532 rxq_mask : (DEFAULT_MAPPING >> priv->num_grps); 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 533 } 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 534 = 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 535 ret =3D of_property_read_u32(np, "fsl,tx-bit-map", &txq_m= ask); 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 536 if (!ret) { 71ff9e3df7e1c5d drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-03-07 537 grp->tx_bit_map =3D txq_mask ? 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 538 txq_mask : (DEFAULT_MAPPING >> priv->num_grps); 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 539 } 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 540 = 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 541 if (priv->poll_mode =3D=3D GFAR_SQ_POLLING) { 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 542 /* One Q per interrupt group: Q0 to G0, Q1 to G1 */ 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 543 grp->rx_bit_map =3D (DEFAULT_MAPPING >> priv->num_grps); 559176415cc663f drivers/net/ethernet/freescale/gianfar.c Jingchang Lu 2= 015-03-13 544 grp->tx_bit_map =3D (DEFAULT_MAPPING >> priv->num_grps); 71ff9e3df7e1c5d drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-03-07 545 } 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 546 } else { 5fedcc14d40e355 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 547 grp->rx_bit_map =3D 0xFF; 5fedcc14d40e355 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 013-01-29 548 grp->tx_bit_map =3D 0xFF; 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 549 } 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 550 = 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 551 /* bit_map's MSB is q0 (from q0 to q7) but, for_each_set_b= it parses 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 552 * right to left, so we need to revert the 8 bits to get t= he q index 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 553 */ 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 554 grp->rx_bit_map =3D bitrev8(grp->rx_bit_map); 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 555 grp->tx_bit_map =3D bitrev8(grp->tx_bit_map); 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 556 = 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 557 /* Calculate RSTAT, TSTAT, RQUEUE and TQUEUE values, 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 558 * also assign queues to groups 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 559 */ 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 560 for_each_set_bit(i, &grp->rx_bit_map, priv->num_rx_queues)= { 71ff9e3df7e1c5d drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-03-07 561 if (!grp->rx_queue) 71ff9e3df7e1c5d drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-03-07 562 grp->rx_queue =3D priv->rx_queue[i]; 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 563 grp->num_rx_queues++; 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 564 grp->rstat |=3D (RSTAT_CLEAR_RHALT >> i); 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 565 priv->rqueue |=3D ((RQUEUE_EN0 | RQUEUE_EX0) >> i); 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 566 priv->rx_queue[i]->grp =3D grp; 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 567 } 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 568 = 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 569 for_each_set_bit(i, &grp->tx_bit_map, priv->num_tx_queues)= { 71ff9e3df7e1c5d drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-03-07 570 if (!grp->tx_queue) 71ff9e3df7e1c5d drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-03-07 571 grp->tx_queue =3D priv->tx_queue[i]; 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 572 grp->num_tx_queues++; 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 573 grp->tstat |=3D (TSTAT_CLEAR_THALT >> i); 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 574 priv->tqueue |=3D (TQUEUE_EN0 >> i); 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 575 priv->tx_queue[i]->grp =3D grp; 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 576 } 208627883ecfaa1 drivers/net/ethernet/freescale/gianfar.c Claudiu Manoil 2= 014-02-17 577 = 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 578 priv->num_grps++; 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 579 = 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 @580 return 0; 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 581 } 46ceb60ca80fa07 drivers/net/gianfar.c Sandeep Gopalpet 2= 009-11-02 582 = :::::: The code at line 580 was first introduced by commit :::::: 46ceb60ca80fa07703bc6eb8f4651f900dff5a82 gianfar: Add Multiple group= Support :::::: TO: Sandeep Gopalpet :::::: CC: David S. Miller --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============8983801764834096766== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICOYrsF8AAy5jb25maWcAlFxbc9w2sn7Pr5hyXnZrK15dLMU+W3oASZCDDEnQADi6vLAUeexV RZa0umTjf3+6AV4aIDj2pnYTsbsB4tLo/rrRnJ9/+nnFXl8evl6/3N5c3919W33Z3e+erl92n1af b+92/1plclVLs+KZMG9BuLy9f/3rn48P/909Pd6sTt6evD345enmcLXZPd3v7lbpw/3n2y+v0MHt w/1PP/8E//sZiF8foa+n/1v17U7f/XKH/fzy5eZm9bciTf+++vD2+O0BSKeyzkXRpWkndAecs28D CR66LVdayPrsw8HxwcEoW7K6GFkHpIs10x3TVVdII6eOCEPUpaj5jHXOVN1V7DLhXVuLWhjBSnHF M08wE5olJf8RYVlro9rUSKUnqlAfu3OpNhMlaUWZGVHxjl8Y27eWykx8s1acZTDoXMK/OsM0NrZL XNhdu1s9715eH6dlxOF0vN52TBVdKSphzo6PcEeGgVWNgNcYrs3q9nl1//CCPQytS5mycljXN2+m dpTRsdbISGM7mU6z0mDTnrhmW95tuKp52RVXopnmRjkXV0AfX0bEI6+hTXpSxnPWlqZbS21qVvGz N3+7f7jf/X0chT5nDX2DvtRb0aSR3hupxUVXfWx5S7SEUrFxakqy2Upq3VW8kuqyY8awdE3f1Wpe 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