A Study on Unroutable Placement Recognition - PowerPoint PPT Presentation

1 / 27
About This Presentation
Title:

A Study on Unroutable Placement Recognition

Description:

Title: PowerPoint Presentation Last modified by: whliu Created Date: 1/1/1601 12:00:00 AM Document presentation format: On-screen Show (4:3) Other titles – PowerPoint PPT presentation

Number of Views:52
Avg rating:3.0/5.0
Slides: 28
Provided by: ispdCcsli
Category:

less

Transcript and Presenter's Notes

Title: A Study on Unroutable Placement Recognition


1
A Study on Unroutable Placement Recognition
  • ISPD 2014
  • Wen-Hao Liu1,2, Tzu-Kai Chien2,and Ting-Chi
    Wang2
  • 1Cadence Design Systems
  • 2National Tsing Hua University, Taiwan

2
Outline
  • Introduction
  • Unroutable Region Recognition
  • Window-based Layout Scanning
  • Window Dimension Determination
  • Lower Bound of Total Overflow Identification
  • Experimental Results
  • Conclusions

2
3
Motivation
  • Routing is difficult and time-consuming

hours
days
  • Routability estimation is critical

This placement is routable or not?
4
Motivation
  • If we can know a placement is unroutable earlier,
    we can avoid wasting time on routing the design.
  • Recently, many routability estimation works are
    published, but no one can guarantee a design must
    be unroutable

Get an feasible routing result
Impossible
4
5
Objective
  • ISPD11, DAC12, and ICCAD12 placement contests
    release many placement results to public domain
  • For some hard-to-route placements, no global
    router has been able to obtain overflow-free
    routing results so far
  • This work attempts to recognize these placements
    are routable or not to global routers

6
Global Routing Model
  • A placement will be modeled into a 3D grid graph
  • The goal of global routing is to identify global
    routing paths to connect each pin of each net
  • The objective of global routing is to minimize
    overflows and wirelength

7
Outline
  • Introduction
  • Unroutable Region Recognition
  • Window-based Layout Scanning
  • Window Dimension Determination
  • Lower Bound of Total Overflow Identification
  • Experimental Results
  • Conclusions

7
8
Unroutable Region
  • If any unroutable region exist, the placement
    must have no overflow-free routing result
  • Given a region R
  • S(R) the set of the outgoing nets of R
  • c(R) total capacity of the bridge edges of R
  • If S(R)gtc(R), R is unroutable because overflow
    must happen

Outgoing net
Intra net
bridge edge
8
9
Window-based Layout Scanning
  • We propose a window-based layout scanning
    algorithm to find out unroutable regions
  • This method can find out every region whose
    dimensions are not larger than the sliding window
  • How to decide the window dimension is critical

R1
R5
R3
R6
R7
W 3 H 3
R8
R4
R2
R9
9
10
Sliding Window Scanning
  • Use a sliding window to scan the entire layout
  • Explore every possible rectangular region at the
    bottom-left corner in the sliding window

.
10
11
Fast Unroutable Region Determination
  • If S(R)gtc(R), we can recognize that R is
    unroutable. However, how to obtain S(R) and
    c(R) faster is an issue
  • A lookup table is built so that querying c(R) can
    be done in a constant time
  • S(R3) S(R1)?S(R2)-I(R3), where R3 comprises R1
    and R2, I(R3) is the set of intra nets in R3

R1
R2
R3
Intra net
11
12
Building S(R)
  • We explore each rectangular region in a
    particular order
  • When a region is processed, its sub-regions are
    processed already
  • Thus, the outgoing net set of a region can be
    obtained by merging the outgoing net set of its
    sub-regions

12
13
Outline
  • Introduction
  • Unroutable Region Recognition
  • Window-based Layout Scanning
  • Window Dimension Determination
  • Lower Bound of Total Overflow Identification
  • Experimental Results
  • Conclusions

13
14
Window Dimension Determination
  • Different widths and heights of a sliding window
    will largely impact the recognition rate of
    unroutable regions
  • We propose a two-stage method to decide a width w
    and a height h for the sliding window such that w
    x h ? Amax
  • Region sampling, and then dimension selection

Unroutable regions
Sliding windows whose areas are not larger than 9
2
3
4
4
3
Best Dimension
2
14
15
Region Sampling
  • The goal of this stage is to identify a set of
    sampling regions with higher weights
  • The weight of a region is the ratio of S(R) to
    c(R)
  • Sampling process
  • Select n regions whose size is 1x1 with the
    highest weights
  • Expand each selected region iteratively until any
    extension would make its area exceed Amax
  • Insert the final expanded region and the regions
    whose weights are larger than 1 into the sampling
    region set

15
16
Width and Height Selection
  • The goal of the next stage is to decide the
    windows dimension such that the total weight of
    the sampling regions covered by the sliding
    window is maximized and w x h ? Amax
  • We present a dynamic programming algorithm to
    solve this problem

Amax lt 30
OurAlgorithm
6
5
16
17
Outline
  • Introduction
  • Unroutable Region Recognition
  • Window-based Layout Scanning
  • Window Dimension Determination
  • Lower Bound of Total Overflow (LBTO)
    Identification
  • Experimental Results
  • Conclusions

17
18
LBTO Identification
  • The intrinsic overflow of unroutable region R is
    S(R) c(R)
  • If every unroutable region is independent, we can
    add up the intrinsic overflow of every region to
    obtain the LBTO
  • If more than one region shares a bridge edge, we
    only count the intrinsic overflow of one of the
    regions

R1
R3
R4
R2
18
19
LBTO Identification
  • Build a conflict graph, a conflict edge between
    vi and vj means that Ri and Rj share at least a
    bridge edge
  • The weight of vi denotes the intrinsic overflow
    of Ri
  • Solve the maximum-weight independent set problem
    on the conflict graph to identify LBTO

v1
v3
v2
v7
v5
v4
v9
v6
v8
19
20
Outline
  • Introduction
  • Unroutable Region Recognition
  • Window-based Layout Scanning
  • Window Dimension Determination
  • Lower Bound of Total Overflow Identification
  • Experimental Results
  • Conclusions

20
21
Unroutable Placement Recognition
  • Select 23 hard-to-route placements from ISPD08
    global routing and ISPD11 placement contests
  • So far no global router can obtain overflow-free
    routing results for these hard-to-route testcases

Wins W x H 5 x 5 15 x 15 30 x 30 50 x 50 100 x 100
Uroutable placements 3 11 13 15 16
Unroutable regions 0.2 x 104 2.5 x 104 11.9 x 104 30.3 x 104 137.1 x 104
Time (sec) 5.62 90 638 3014 25374
running with 16 threads on 2.4GHz Intel
Xeon-based Linux server with 96GB memory
21
22
Window Dimension Determination
  • We manually set different widths and heights for
    the sliding window such that its area is 900 to
    see the difference of recognition rates
  • Then, we use the proposed method to automatically
    determine the window dimension to compare with
    the manual method

WindowsW x H 15 x 60 20 x 45 30 x 30 45 x 20 60 x 15 Auto.
Uroutable placements 11 12 13 12 11 13
Unroutable regions 13 x 104 14.6 x 104 11.9 x 104 6.5 x 104 3.7 x 104 14.8 x 104
22
23
LBTO Identification
  • Use NCTUgr to route unroutable placements to see
    the gap between the total overflow identified by
    NCTUgr and the lower bound of total overflow
    (LBTO) identified by this work

The placements withsmall total overflow gap
The placements withlarge total overflow gap
23
24
Outline
  • Introduction
  • Unroutable Region Recognition
  • Window-based Layout Scanning
  • Window Dimension Determination
  • Lower Bound of Total Overflow Identification
  • Experimental Results
  • Conclusions

24
25
Conclusions
  • We propose a window-based layout scanning
    algorithm to recognize unroutable regions
  • The proposed two-stage method can identify a good
    window dimension for the sliding window
  • Region sampling
  • Window dimension selection
  • This work uses a maximum-weight independent set
    algorithm to identify the lower bound of total
    overflow for unroutable layouts

25
26
(No Transcript)
27
Solving MWIS Problem
  • We adopt a heuristic algorithm to solve MWIS
    problem
  • Sort nodes based on the following scoring
    function in a nonincreasing order
  • Select each unmarked node one-by-one and mark its
    neighbors.
  • If a node is marked, it will not be selected.
  • If more powerful MWIS algorithm is adopted,
    tighter LBTO can be obtained

(a is set to 0.1 )
27
Write a Comment
User Comments (0)
About PowerShow.com