From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============8655404159437823310==" MIME-Version: 1.0 From: kbuild test robot Subject: Re: [Intel-gfx] [PATCH v1] drm/i915: Fix wrong CDCLK adjustment changes Date: Mon, 01 Jun 2020 07:41:12 +0800 Message-ID: <202006010753.8l6aBvf0%lkp@intel.com> List-Id: To: kbuild@lists.01.org --===============8655404159437823310== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable CC: kbuild-all(a)lists.01.org In-Reply-To: <20200526094852.6967-1-stanislav.lisovskiy@intel.com> References: <20200526094852.6967-1-stanislav.lisovskiy@intel.com> TO: Stanislav Lisovskiy TO: intel-gfx(a)lists.freedesktop.org CC: chris(a)chris-wilson.co.uk Hi Stanislav, Thank you for the patch! Perhaps something to improve: [auto build test WARNING on drm-tip/drm-tip] [also build test WARNING on drm-intel/drm-intel-next-queued] [cannot apply to drm-intel/for-linux-next v5.7-rc7 next-20200529] [if your patch is applied to the wrong git tree, please drop us a note to h= elp improve the system. BTW, we also suggest to use '--base' option to specify = the base tree in git format-patch, please see https://stackoverflow.com/a/37406= 982] url: https://github.com/0day-ci/linux/commits/Stanislav-Lisovskiy/drm-i9= 15-Fix-wrong-CDCLK-adjustment-changes/20200526-180642 base: git://anongit.freedesktop.org/drm/drm-tip drm-tip :::::: branch date: 6 days ago :::::: commit date: 6 days ago config: i386-randconfig-m021-20200531 (attached as .config) compiler: gcc-9 (Debian 9.3.0-13) 9.3.0 If you fix the issue, kindly add following tag as appropriate Reported-by: kbuild test robot Reported-by: Dan Carpenter smatch warnings: drivers/gpu/drm/i915/display/intel_bw.c:453 skl_bw_calc_min_cdclk() error: = uninitialized symbol 'pipe'. # https://github.com/0day-ci/linux/commit/21b0324886122a396687d977d67eb6ce3= caf2b17 git remote add linux-review https://github.com/0day-ci/linux git remote update linux-review git checkout 21b0324886122a396687d977d67eb6ce3caf2b17 vim +/pipe +453 drivers/gpu/drm/i915/display/intel_bw.c 366b6200f76e0f Jani Nikula 2019-08-06 430 = cd19154608610a Stanislav Lisovskiy 2020-05-20 431 int skl_bw_calc_min_cdc= lk(struct intel_atomic_state *state) cd19154608610a Stanislav Lisovskiy 2020-05-20 432 { cd19154608610a Stanislav Lisovskiy 2020-05-20 433 struct drm_i915_privat= e *dev_priv =3D to_i915(state->base.dev); cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 434 struct intel_bw_state = *new_bw_state =3D NULL; cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 435 struct intel_bw_state = *old_bw_state =3D NULL; cd19154608610a Stanislav Lisovskiy 2020-05-20 436 const struct intel_crt= c_state *crtc_state; cd19154608610a Stanislav Lisovskiy 2020-05-20 437 struct intel_crtc *crt= c; cd19154608610a Stanislav Lisovskiy 2020-05-20 438 int max_bw =3D 0; cd19154608610a Stanislav Lisovskiy 2020-05-20 439 int slice_id; 21b0324886122a Stanislav Lisovskiy 2020-05-26 440 enum pipe pipe; cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 441 int i; cd19154608610a Stanislav Lisovskiy 2020-05-20 442 = cd19154608610a Stanislav Lisovskiy 2020-05-20 443 for_each_new_intel_crt= c_in_state(state, crtc, crtc_state, i) { cd19154608610a Stanislav Lisovskiy 2020-05-20 444 enum plane_id plane_i= d; cd19154608610a Stanislav Lisovskiy 2020-05-20 445 struct intel_dbuf_bw = *crtc_bw; cd19154608610a Stanislav Lisovskiy 2020-05-20 446 = cd19154608610a Stanislav Lisovskiy 2020-05-20 447 new_bw_state =3D inte= l_atomic_get_bw_state(state); cd19154608610a Stanislav Lisovskiy 2020-05-20 448 if (IS_ERR(new_bw_sta= te)) cd19154608610a Stanislav Lisovskiy 2020-05-20 449 return PTR_ERR(new_b= w_state); cd19154608610a Stanislav Lisovskiy 2020-05-20 450 = 21b0324886122a Stanislav Lisovskiy 2020-05-26 451 old_bw_state =3D inte= l_atomic_get_old_bw_state(state); 21b0324886122a Stanislav Lisovskiy 2020-05-26 452 = 21b0324886122a Stanislav Lisovskiy 2020-05-26 @453 crtc_bw =3D &new_bw_s= tate->dbuf_bw[pipe]; cd19154608610a Stanislav Lisovskiy 2020-05-20 454 = cd19154608610a Stanislav Lisovskiy 2020-05-20 455 memset(&crtc_bw->used= _bw, 0, sizeof(crtc_bw->used_bw)); cd19154608610a Stanislav Lisovskiy 2020-05-20 456 = cd19154608610a Stanislav Lisovskiy 2020-05-20 457 for_each_plane_id_on_= crtc(crtc, plane_id) { cd19154608610a Stanislav Lisovskiy 2020-05-20 458 const struct skl_ddb= _entry *plane_alloc =3D cd19154608610a Stanislav Lisovskiy 2020-05-20 459 &crtc_state->wm.skl= .plane_ddb_y[plane_id]; cd19154608610a Stanislav Lisovskiy 2020-05-20 460 const struct skl_ddb= _entry *uv_plane_alloc =3D cd19154608610a Stanislav Lisovskiy 2020-05-20 461 &crtc_state->wm.skl= .plane_ddb_uv[plane_id]; cd19154608610a Stanislav Lisovskiy 2020-05-20 462 unsigned int data_ra= te =3D crtc_state->data_rate[plane_id]; cd19154608610a Stanislav Lisovskiy 2020-05-20 463 unsigned int dbuf_ma= sk =3D 0; cd19154608610a Stanislav Lisovskiy 2020-05-20 464 = cd19154608610a Stanislav Lisovskiy 2020-05-20 465 dbuf_mask |=3D skl_d= db_dbuf_slice_mask(dev_priv, plane_alloc); cd19154608610a Stanislav Lisovskiy 2020-05-20 466 dbuf_mask |=3D skl_d= db_dbuf_slice_mask(dev_priv, uv_plane_alloc); cd19154608610a Stanislav Lisovskiy 2020-05-20 467 = cd19154608610a Stanislav Lisovskiy 2020-05-20 468 /* cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 469 * FIXME: To calcula= te that more properly we probably cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 470 * need to to split = per plane data_rate into data_rate_y cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 471 * and data_rate_uv = for multiplanar formats in order not cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 472 * to get accounted = those twice if they happen to reside cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 473 * on different slic= es. cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 474 * However for pre-i= cl this would work anyway because cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 475 * we have only sing= le slice and for icl+ uv plane has cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 476 * non-zero data rat= e. cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 477 * So in worst case = those calculation are a bit cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 478 * pessimistic, whic= h shouldn't pose any significant cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 479 * problem anyway. cd19154608610a Stanislav Lisovskiy 2020-05-20 480 */ cd19154608610a Stanislav Lisovskiy 2020-05-20 481 for_each_dbuf_slice_= in_mask(slice_id, dbuf_mask) cd19154608610a Stanislav Lisovskiy 2020-05-20 482 crtc_bw->used_bw[sl= ice_id] +=3D data_rate; cd19154608610a Stanislav Lisovskiy 2020-05-20 483 } 21b0324886122a Stanislav Lisovskiy 2020-05-26 484 } 21b0324886122a Stanislav Lisovskiy 2020-05-26 485 = 21b0324886122a Stanislav Lisovskiy 2020-05-26 486 if (!old_bw_state) 21b0324886122a Stanislav Lisovskiy 2020-05-26 487 return 0; 21b0324886122a Stanislav Lisovskiy 2020-05-26 488 = 21b0324886122a Stanislav Lisovskiy 2020-05-26 489 for_each_pipe(dev_priv= , pipe) { 21b0324886122a Stanislav Lisovskiy 2020-05-26 490 struct intel_dbuf_bw = *crtc_bw; 21b0324886122a Stanislav Lisovskiy 2020-05-26 491 = 21b0324886122a Stanislav Lisovskiy 2020-05-26 492 crtc_bw =3D &new_bw_s= tate->dbuf_bw[pipe]; cd19154608610a Stanislav Lisovskiy 2020-05-20 493 = cd19154608610a Stanislav Lisovskiy 2020-05-20 494 for_each_dbuf_slice(s= lice_id) { cd19154608610a Stanislav Lisovskiy 2020-05-20 495 /* cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 496 * Current experimen= tal observations show that contrary cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 497 * to BSpec we get u= nderruns once we exceed 64 * CDCLK cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 498 * for slices in tot= al. cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 499 * As a temporary me= asure in order not to keep CDCLK cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 500 * bumped up all the= time we calculate CDCLK according cac91e671ad5dc Stanislav Lisovskiy 2020-05-22 501 * to this formula f= or overall bw consumed by slices. cd19154608610a Stanislav Lisovskiy 2020-05-20 502 */ cd19154608610a Stanislav Lisovskiy 2020-05-20 503 max_bw +=3D crtc_bw-= >used_bw[slice_id]; cd19154608610a Stanislav Lisovskiy 2020-05-20 504 } cd19154608610a Stanislav Lisovskiy 2020-05-20 505 } cd19154608610a Stanislav Lisovskiy 2020-05-20 506 = 21b0324886122a Stanislav Lisovskiy 2020-05-26 507 new_bw_state->min_cdcl= k =3D max_bw / 64; cd19154608610a Stanislav Lisovskiy 2020-05-20 508 = cd19154608610a Stanislav Lisovskiy 2020-05-20 509 if (new_bw_state->min_= cdclk !=3D old_bw_state->min_cdclk) { cd19154608610a Stanislav Lisovskiy 2020-05-20 510 int ret =3D intel_ato= mic_lock_global_state(&new_bw_state->base); cd19154608610a Stanislav Lisovskiy 2020-05-20 511 = cd19154608610a Stanislav Lisovskiy 2020-05-20 512 if (ret) cd19154608610a Stanislav Lisovskiy 2020-05-20 513 return ret; cd19154608610a Stanislav Lisovskiy 2020-05-20 514 } cd19154608610a Stanislav Lisovskiy 2020-05-20 515 = cd19154608610a Stanislav Lisovskiy 2020-05-20 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