The present application claims the benefit of priority to a Canadian Patent Application Serial Number 2713422 entitled “CHARACTERIZING LAMINATE SHAPE”, filed Sep. 9, 2010 with the Canadian Intellectual Property Office, the content of which is incorporated herein by reference in its entirety.
Aspects of the present invention are directed to a method to characterize a laminate shape and to optimize chip packaging yield.
In chip manufacturing processes, chips are often formed of laminates that are layered upon one another and then bonded to form a package. For these processes to be optimized, the laminates selected for use should have shapes, warpage and/or coplanarity that conform to required predefined shapes, warpage and/or coplanarity since laminates that do not meet the requirements will not reliably fit together. In the case of laminates formed of organic materials (i.e., organic laminates) the predefined shape, warpage and/or coplanarity requirements are particularly important since organic laminates can relatively easily deform due to, for example, temperature dependent warpage during various stages.
Indeed, laminate warpage and, particularly, organic laminate warpage is known to impact assembly yield and performance in chip manufacturing processes and, therefore, efforts have been undertaken to address the issue. Typically, this is accomplished by the organic laminates being selected for use in chip manufacturing processes according to whether they meet a predetermined warpage specification value or, rather, a total laminate warpage value, which are absolute values that describe an amount of warpage exhibited by a particular laminate. A laminate that meets the warpage specification value or exhibits less warpage than the warpage specification value is selected for use and those that do not are discarded.
Unfortunately, the warpage specification value does not contain information about shape characteristics. Thus, it is possible that a laminate will satisfy the warpage specification value but have a shape that is still not suitable for an optimal laminate. That is, laminate selection using the warpage specification value or the total laminate warpage value only impacts the laminate yield and does not necessarily provide optimal laminates for assembly performance. On high end products, however, it is highly desirable to provide laminates with optimal characteristics to achieve highest first pass yield.
In accordance with an aspect of the invention, a method of sorting laminates is provided and includes characterizing first shapes of laminates from measurements taken of each, assembling the laminates to derive a first relationship between the first shapes and yield loss, characterizing second shapes of the laminates from a reduced number of the measurements to derive a second relationship between the second shapes and yield loss, analyzing a change in the derived relationships to determine a least number of the measurements necessary for achieving the yield loss and sorting supplied laminates in accordance with a characterized shape of each, which is obtained from the least number of the measurements taken for each supplied laminate.
In accordance with an aspect of the invention, a system to sort laminates is provided and includes an inspection apparatus to inspect laminates and to generate data in accordance with results of the inspection, a networking unit coupled to the inspection apparatus and a computing device, coupled to the networking unit, to receive the data generated by the inspection apparatus by way of the networking unit, the computing device including a processing unit and a non-transitory computer readable medium on which executable instructions are stored, which, when executed, cause the processing unit to characterize first shapes of the laminates from measurements taken of each, assemble the laminates to derive a first relationship between the first shapes and yield loss, characterize second shapes of the laminates from a reduced number of the measurements to derive a second relationship between the second shapes and yield loss, analyze a change in the derived relationships to determine a least number of the measurements necessary for achieving the yield loss and sort supplied laminates in accordance with a characterized shape of each, which is obtained from the least number of the measurements taken for each supplied laminate.
In accordance with an aspect of the invention, a method of laminate sorting is provided and includes measuring, at an inspection apparatus, each laminate of a sample of laminates at predefined surface positions thereof to determine a shape of each laminate, assembling the sampled laminates and tracking a response variable, performing dimensional reduction for feature extraction, inputting data reflective of the feature extraction into a statistical model, adjusting parameters to the response variable and checking for model accuracy and once the model accuracy is validated by repetitive confirmations, inputting the statistical model into the inspection apparatus for laminate sorting.
The subject matter regarded as the invention is particularly pointed out and distinctly claimed in the claims at the conclusion of the specification. The foregoing and other aspects, features, and advantages of the invention are apparent from the following detailed description taken in conjunction with the accompanying drawings in which:
With reference to
A final form of the specification may be A1*X1+A2*X2+ . . . +AN*XN<C, where A1 . . . AN are scalar weights derived from methods described below, X1 . . . XN are, for example, averaged height measurements at certain locations on the laminate and C is a threshold derived from cost/yield considerations.
With reference to
The computing device 40 includes a processing unit 41 and a non-transitory computer readable medium 42. The computing device 40 is coupled to and disposed in signal communication with the networking unit 30 to thereby receive the laminate shape data generated by the inspection apparatus 20. The non-transitory computer readable medium 42 has executable instructions stored thereon, which, when executed, cause the processing unit 41 to characterize first shapes of the laminates 11, 12, 13, . . . from measurements taken of each, assemble the laminates 11, 12, 13, . . . to derive a first relationship between the first shapes and yield loss, characterize second shapes of the laminates 11, 12, 13, . . . from a reduced number of the measurements to derive a second relationship between the second shapes and yield loss, analyze a change in the derived relationships to determine a least number of the measurements necessary for achieving the yield loss, and sort supplied laminates in accordance with a characterized shape of each, which is obtained from the least number of the measurements taken for each supplied laminate. These operations will be described further below and will relate to laminate 11 as being representative of each of the laminates 11, 12, 13, . . . .
With reference to
With reference to
With this in mind, it is possible to derive a first relationship between the first shapes of the laminates 11, 12, 13, . . . and yield loss where the yield loss is predefined in accordance with, for example, a cost/benefit analysis or a similar type of analysis, such as operational or functional analyses.
With reference to
Once the second relationship is derived, the first and second relationships can be compared with one another such that any change in the derived relationships can be analyzed to determine a least number of the measurements necessary for achieving the yield loss. This analysis may include one or more logical regression techniques and/or a determination of whether a difference between the first and second relationships is within a predefined threshold. That is, if the first and second relationships are substantially similar to one another, it can be determined that a further reduction of the number of measurements is possible without sacrificing model accuracy. By contrast, if the relationships are substantially different, the difference is an indication that larger numbers of measurements are needed to achieve a desired model accuracy.
With the least number of measurements required established, a supply of to this point unmeasured laminates may be sorted in accordance with a characterized shape of each, where the characterized shape is obtained from the least number of the measurements taken for each supplied laminate and the sorting includes sorting usable from unusable ones of the supplied laminates. Additionally, in accordance with further embodiments, an accuracy of the sorting operation may be evaluated by comparing the characterized shape of each of the supplied laminates with a predefined shape. Still further, the analyzing of the change in the derived relationships may then be modified based on a result of the evaluation.
As shown in
At this point, given a sample size, n, and a number, k, of positive response variable, R, the following data pre-processing operations are undertaken. Each laminate is partitioned in an 1×w grid (520), where 1 and w are chosen such that 1×w<k. For example, 1 may be chosen as being an integer part of √{square root over (k/r)} and the choice for w becomes obvious. A constraint to this operation is to avoid degeneracy in the model that will select relevant features. Next, height readings are averaged locally (530) (i.e., the 1×w grid is divided into subsets) to obtain a lower count (1×w) of possible values. These values are the predictors to be used in the model.
Once operations 520 and 530 are completed, model selection begins (540) and is based on repeated trials of logistic regression on the bootstrapped data set. Then, based on a predefined percentage, say 95%, a 95% bootstrapped confidence interval (CI) is produced (550). From this CI, significant predictors are retained or selected (560) from which the weights, A1 . . . AN, and the heights, X1 . . . XN, are produced (561). Once the predictors are selected, linear combinations of predictors with the weight, A1 . . . AN, and the height, X1 . . . XN, coefficients may be written (570) such that an explanatory variable (i.e., the “logit”) can be derived. From the explanatory variable, a receiver operating characteristic (ROC) curve can be generated, AUC can be computed and a threshold (specification) value of C can be established in accordance with risk/reward and/or cost/yield improvement analysis (580).
While the disclosure has been described with reference to exemplary embodiments, it will be understood by those skilled in the art that various changes may be made and equivalents may be substituted for elements thereof without departing from the scope of the disclosure. In addition, many modifications may be made to adapt a particular situation or material to the teachings of the disclosure without departing from the essential scope thereof. Therefore, it is intended that the disclosure not be limited to the particular exemplary embodiment disclosed as the best mode contemplated for carrying out this disclosure, but that the disclosure will include all embodiments falling within the scope of the appended claims.
Number | Date | Country | Kind |
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2713422 | Sep 2010 | CA | national |