CSIT-1041: Trending dashboard
[csit.git] / resources / tools / presentation / generator_tables.py
index 12cbee2..29e29d0 100644 (file)
@@ -355,7 +355,7 @@ def table_performance_comparison(table, input_data):
                  format(table.get("title", "")))
 
     # Transform the data
-    data = input_data.filter_data(table)
+    data = input_data.filter_data(table, continue_on_error=True)
 
     # Prepare the header of the tables
     try:
@@ -530,6 +530,130 @@ def table_performance_comparison(table, input_data):
             out_file.write(line)
 
 
+def table_performance_comparison_mrr(table, input_data):
+    """Generate the table(s) with algorithm: table_performance_comparison_mrr
+    specified in the specification file.
+
+    :param table: Table to generate.
+    :param input_data: Data to process.
+    :type table: pandas.Series
+    :type input_data: InputData
+    """
+
+    logging.info("  Generating the table {0} ...".
+                 format(table.get("title", "")))
+
+    # Transform the data
+    data = input_data.filter_data(table, continue_on_error=True)
+
+    # Prepare the header of the tables
+    try:
+        header = ["Test case",
+                  "{0} Throughput [Mpps]".format(table["reference"]["title"]),
+                  "{0} stdev [Mpps]".format(table["reference"]["title"]),
+                  "{0} Throughput [Mpps]".format(table["compare"]["title"]),
+                  "{0} stdev [Mpps]".format(table["compare"]["title"]),
+                  "Change [%]"]
+        header_str = ",".join(header) + "\n"
+    except (AttributeError, KeyError) as err:
+        logging.error("The model is invalid, missing parameter: {0}".
+                      format(err))
+        return
+
+    # Prepare data to the table:
+    tbl_dict = dict()
+    for job, builds in table["reference"]["data"].items():
+        for build in builds:
+            for tst_name, tst_data in data[job][str(build)].iteritems():
+                if tbl_dict.get(tst_name, None) is None:
+                    name = "{0}-{1}".format(tst_data["parent"].split("-")[0],
+                                            "-".join(tst_data["name"].
+                                                     split("-")[1:]))
+                    tbl_dict[tst_name] = {"name": name,
+                                          "ref-data": list(),
+                                          "cmp-data": list()}
+                try:
+                    tbl_dict[tst_name]["ref-data"].\
+                        append(tst_data["result"]["throughput"])
+                except TypeError:
+                    pass  # No data in output.xml for this test
+
+    for job, builds in table["compare"]["data"].items():
+        for build in builds:
+            for tst_name, tst_data in data[job][str(build)].iteritems():
+                try:
+                    tbl_dict[tst_name]["cmp-data"].\
+                        append(tst_data["result"]["throughput"])
+                except KeyError:
+                    pass
+                except TypeError:
+                    tbl_dict.pop(tst_name, None)
+
+    tbl_lst = list()
+    for tst_name in tbl_dict.keys():
+        item = [tbl_dict[tst_name]["name"], ]
+        if tbl_dict[tst_name]["ref-data"]:
+            data_t = remove_outliers(tbl_dict[tst_name]["ref-data"],
+                                     table["outlier-const"])
+            item.append(round(mean(data_t) / 1000000, 2))
+            item.append(round(stdev(data_t) / 1000000, 2))
+        else:
+            item.extend([None, None])
+        if tbl_dict[tst_name]["cmp-data"]:
+            data_t = remove_outliers(tbl_dict[tst_name]["cmp-data"],
+                                     table["outlier-const"])
+            item.append(round(mean(data_t) / 1000000, 2))
+            item.append(round(stdev(data_t) / 1000000, 2))
+        else:
+            item.extend([None, None])
+        if item[1] is not None and item[3] is not None and item[1] != 0:
+            item.append(int(relative_change(float(item[1]), float(item[3]))))
+        if len(item) == 6:
+            tbl_lst.append(item)
+
+    # Sort the table according to the relative change
+    tbl_lst.sort(key=lambda rel: rel[-1], reverse=True)
+
+    # Generate tables:
+    # All tests in csv:
+    tbl_names = ["{0}-1t1c-full{1}".format(table["output-file"],
+                                           table["output-file-ext"]),
+                 "{0}-2t2c-full{1}".format(table["output-file"],
+                                           table["output-file-ext"]),
+                 "{0}-4t4c-full{1}".format(table["output-file"],
+                                           table["output-file-ext"])
+                 ]
+    for file_name in tbl_names:
+        logging.info("      Writing file: '{0}'".format(file_name))
+        with open(file_name, "w") as file_handler:
+            file_handler.write(header_str)
+            for test in tbl_lst:
+                if file_name.split("-")[-2] in test[0]:  # cores
+                    test[0] = "-".join(test[0].split("-")[:-1])
+                    file_handler.write(",".join([str(item) for item in test]) +
+                                       "\n")
+
+    # All tests in txt:
+    tbl_names_txt = ["{0}-1t1c-full.txt".format(table["output-file"]),
+                     "{0}-2t2c-full.txt".format(table["output-file"]),
+                     "{0}-4t4c-full.txt".format(table["output-file"])
+                     ]
+
+    for i, txt_name in enumerate(tbl_names_txt):
+        txt_table = None
+        logging.info("      Writing file: '{0}'".format(txt_name))
+        with open(tbl_names[i], 'rb') as csv_file:
+            csv_content = csv.reader(csv_file, delimiter=',', quotechar='"')
+            for row in csv_content:
+                if txt_table is None:
+                    txt_table = prettytable.PrettyTable(row)
+                else:
+                    txt_table.add_row(row)
+            txt_table.align["Test case"] = "l"
+        with open(txt_name, "w") as txt_file:
+            txt_file.write(str(txt_table))
+
+
 def table_performance_trending_dashboard(table, input_data):
     """Generate the table(s) with algorithm: table_performance_comparison
     specified in the specification file.
@@ -544,14 +668,16 @@ def table_performance_trending_dashboard(table, input_data):
                  format(table.get("title", "")))
 
     # Transform the data
-    data = input_data.filter_data(table)
+    data = input_data.filter_data(table, continue_on_error=True)
 
     # Prepare the header of the tables
     header = ["Test case",
-              "Thput trend [Mpps]",
-              "Anomaly [Mpps]",
+              "Throughput Trend [Mpps]",
+              "Trend Compliance",
+              "Anomaly Value [Mpps]",
               "Change [%]",
-              "Classification"]
+              "#Outliers"
+              ]
     header_str = ",".join(header) + "\n"
 
     # Prepare data to the table:
@@ -564,55 +690,62 @@ def table_performance_trending_dashboard(table, input_data):
                                             "-".join(tst_data["name"].
                                                      split("-")[1:]))
                     tbl_dict[tst_name] = {"name": name,
-                                          "data": list()}
+                                          "data": dict()}
                 try:
-                    tbl_dict[tst_name]["data"]. \
-                        append(tst_data["result"]["throughput"])
+                    tbl_dict[tst_name]["data"][str(build)] =  \
+                        tst_data["result"]["throughput"]
                 except (TypeError, KeyError):
                     pass  # No data in output.xml for this test
 
     tbl_lst = list()
     for tst_name in tbl_dict.keys():
         if len(tbl_dict[tst_name]["data"]) > 2:
-            sample_lst = tbl_dict[tst_name]["data"]
-            pd_data = pd.Series(sample_lst)
+
+            pd_data = pd.Series(tbl_dict[tst_name]["data"])
             win_size = pd_data.size \
                 if pd_data.size < table["window"] else table["window"]
             # Test name:
             name = tbl_dict[tst_name]["name"]
 
-            # Trend list:
-            trend_lst = list(pd_data.rolling(window=win_size, min_periods=2).
-                             median())
-            # Stdevs list:
-            t_data, _ = find_outliers(pd_data)
-            t_data_lst = list(t_data)
-            stdev_lst = list(t_data.rolling(window=win_size, min_periods=2).
-                             std())
+            median = pd_data.rolling(window=win_size, min_periods=2).median()
+            trimmed_data, _ = find_outliers(pd_data, outlier_const=1.5)
+            stdev_t = pd_data.rolling(window=win_size, min_periods=2).std()
 
             rel_change_lst = [None, ]
             classification_lst = [None, ]
-            for idx in range(1, len(trend_lst)):
+            median_lst = [None, ]
+            sample_lst = [None, ]
+            first = True
+            for build_nr, value in pd_data.iteritems():
+                if first:
+                    first = False
+                    continue
                 # Relative changes list:
-                if not isnan(sample_lst[idx]) \
-                        and not isnan(trend_lst[idx])\
-                        and trend_lst[idx] != 0:
+                if not isnan(value) \
+                        and not isnan(median[build_nr]) \
+                        and median[build_nr] != 0:
                     rel_change_lst.append(
-                        int(relative_change(float(trend_lst[idx]),
-                                            float(sample_lst[idx]))))
+                        int(relative_change(float(median[build_nr]),
+                                            float(value))))
                 else:
                     rel_change_lst.append(None)
+
                 # Classification list:
-                if isnan(t_data_lst[idx]) or isnan(stdev_lst[idx]):
+                if isnan(trimmed_data[build_nr]) \
+                        or isnan(median[build_nr]) \
+                        or isnan(stdev_t[build_nr]) \
+                        or isnan(value):
                     classification_lst.append("outlier")
-                elif sample_lst[idx] < (trend_lst[idx] - 3*stdev_lst[idx]):
+                elif value < (median[build_nr] - 3 * stdev_t[build_nr]):
                     classification_lst.append("regression")
-                elif sample_lst[idx] > (trend_lst[idx] + 3*stdev_lst[idx]):
+                elif value > (median[build_nr] + 3 * stdev_t[build_nr]):
                     classification_lst.append("progression")
                 else:
                     classification_lst.append("normal")
+                sample_lst.append(value)
+                median_lst.append(median[build_nr])
 
-            last_idx = len(sample_lst) - 1
+            last_idx = len(classification_lst) - 1
             first_idx = last_idx - int(table["evaluated-window"])
             if first_idx < 0:
                 first_idx = 0
@@ -623,8 +756,22 @@ def table_performance_trending_dashboard(table, input_data):
                 classification = "outlier"
             elif "progression" in classification_lst[first_idx:]:
                 classification = "progression"
-            else:
+            elif "normal" in classification_lst[first_idx:]:
                 classification = "normal"
+            else:
+                classification = None
+
+            nr_outliers = 0
+            consecutive_outliers = 0
+            failure = False
+            for item in classification_lst[first_idx:]:
+                if item == "outlier":
+                    nr_outliers += 1
+                    consecutive_outliers += 1
+                    if consecutive_outliers == 3:
+                        failure = True
+                else:
+                    consecutive_outliers = 0
 
             idx = len(classification_lst) - 1
             while idx:
@@ -632,22 +779,28 @@ def table_performance_trending_dashboard(table, input_data):
                     break
                 idx -= 1
 
-            trend = round(float(trend_lst[-2]) / 1000000, 2) \
-                if not isnan(trend_lst[-2]) else ''
+            if failure:
+                classification = "failure"
+            elif classification == "outlier":
+                classification = "normal"
+
+            trend = round(float(median_lst[-1]) / 1000000, 2) \
+                if not isnan(median_lst[-1]) else ''
             sample = round(float(sample_lst[idx]) / 1000000, 2) \
                 if not isnan(sample_lst[idx]) else ''
             rel_change = rel_change_lst[idx] \
                 if rel_change_lst[idx] is not None else ''
             tbl_lst.append([name,
                             trend,
-                            sample,
-                            rel_change,
-                            classification])
+                            classification,
+                            '-' if classification == "normal" else sample,
+                            '-' if classification == "normal" else rel_change,
+                            nr_outliers])
 
     # Sort the table according to the classification
     tbl_sorted = list()
-    for classification in ("regression", "outlier", "progression", "normal"):
-        tbl_tmp = [item for item in tbl_lst if item[4] == classification]
+    for classification in ("failure", "regression", "progression", "normal"):
+        tbl_tmp = [item for item in tbl_lst if item[2] == classification]
         tbl_tmp.sort(key=lambda rel: rel[0])
         tbl_sorted.extend(tbl_tmp)
 
@@ -706,7 +859,7 @@ def table_performance_trending_dashboard_html(table, input_data):
     # Table header:
     tr = ET.SubElement(dashboard, "tr", attrib=dict(bgcolor="#6699ff"))
     for idx, item in enumerate(csv_lst[0]):
-        alignment = "left" if idx == 0 else "right"
+        alignment = "left" if idx == 0 else "center"
         th = ET.SubElement(tr, "th", attrib=dict(align=alignment))
         th.text = item
 
@@ -719,10 +872,10 @@ def table_performance_trending_dashboard_html(table, input_data):
         for c_idx, item in enumerate(row):
             alignment = "left" if c_idx == 0 else "center"
             td = ET.SubElement(tr, "td", attrib=dict(align=alignment))
-            if c_idx == 4:
+            if c_idx == 2:
                 if item == "regression":
                     td.set("bgcolor", "#eca1a6")
-                elif item == "outlier":
+                elif item == "failure":
                     td.set("bgcolor", "#d6cbd3")
                 elif item == "progression":
                     td.set("bgcolor", "#bdcebe")